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626 Commits

Author SHA1 Message Date
01efc7ef78 [ci] fix wheel names for arm wheels (#24898)
Signed-off-by: simon-mo <simon.mo@hey.com>
2025-10-07 13:40:13 -07:00
26b999c71a [CI Failure] Fix test_flashinfer_cutlass_mxfp4_mxfp8_fused_moe (#24750)
Signed-off-by: mgoin <mgoin64@gmail.com>
2025-09-13 09:30:00 -07:00
da3fa78dc9 [Compilation Bug] Fix Inductor Graph Output with Shape Issue (#24772)
Signed-off-by: yewentao256 <zhyanwentao@126.com>
2025-09-12 23:03:56 -07:00
bbb70036cb Enable conversion of multimodal models to pooling tasks (#24451)
Signed-off-by: Max de Bayser <mbayser@br.ibm.com>
2025-09-12 23:02:15 -07:00
89da8d9d09 [Qwen3Next] Fixes the cuda graph capture conditions under large batch sizes (#24660) (#24667)
Signed-off-by: Tao He <linzhu.ht@alibaba-inc.com>
2025-09-12 23:01:49 -07:00
01085b134d [Qwen3-Next] MoE configs for H100 TP=1,2 and TP2/EP (#24739)
Signed-off-by: elvircrn <elvircrn@gmail.com>
2025-09-12 23:01:25 -07:00
66160a9943 [BugFix] Fix Qwen3-Next PP (#24709)
Signed-off-by: Nick Hill <nhill@redhat.com>
2025-09-12 23:00:28 -07:00
eaca762c18 [Qwen3-Next] MoE configs for H20 TP=1,2,4,8 (#24707)
Signed-off-by: Jee Jee Li <pandaleefree@gmail.com>
2025-09-12 23:00:09 -07:00
880c741bb6 [Bugfix] fixes the causal_conv1d_update kernel update non-speculative decoding cases (#24680)
Signed-off-by: Tao He <linzhu.ht@alibaba-inc.com>
Co-authored-by: Cyrus Leung <tlleungac@connect.ust.hk>
2025-09-11 18:16:43 -07:00
40b6c9122b [V1] feat:add engine v1 tracing (#20372)
Signed-off-by: Mu Huai <tianbowen.tbw@antgroup.com>
Signed-off-by: Ye Zhang <zhysishu@gmail.com>
Signed-off-by: RichardoMu <44485717+RichardoMrMu@users.noreply.github.com>
Signed-off-by: simon-mo <simon.mo@hey.com>
Signed-off-by: Aaron Pham <contact@aarnphm.xyz>
Signed-off-by: 22quinn <33176974+22quinn@users.noreply.github.com>
Co-authored-by: Mu Huai <tianbowen.tbw@antgroup.com>
Co-authored-by: Ye Zhang <zhysishu@gmail.com>
Co-authored-by: Benjamin Bartels <benjamin@bartels.dev>
Co-authored-by: simon-mo <simon.mo@hey.com>
Co-authored-by: 瑜琮 <ly186375@antfin.com>
Co-authored-by: Aaron Pham <contact@aarnphm.xyz>
Co-authored-by: 22quinn <33176974+22quinn@users.noreply.github.com>
2025-09-11 17:10:39 -07:00
2e6bc46821 [Startup] Make DeepGEMM warmup scale with max-num-batched-tokens (#24693)
Signed-off-by: Lucas Wilkinson <lwilkins@redhat.com>
2025-09-11 20:10:19 -04:00
fcba05c435 [Bug] Fix Layer weight_block_size Assertion Issue (#24674)
Signed-off-by: yewentao256 <zhyanwentao@126.com>
2025-09-11 19:47:59 -04:00
7a30fa8708 [Doc] Clarify cudagraph capture size logic and default behavior in scheduler (#18698)
Signed-off-by: Zazzle516 <2405677060@qq.com>
Signed-off-by: Harry Mellor <19981378+hmellor@users.noreply.github.com>
Co-authored-by: Harry Mellor <19981378+hmellor@users.noreply.github.com>
2025-09-11 23:18:09 +00:00
f82f7a8990 [Qwen3-Next] MOE configs for H100 TP4 (#24699)
Signed-off-by: Chen Zhang <zhangch99@outlook.com>
2025-09-11 15:45:52 -07:00
c3aea10dc8 [Perf] Use upstream CUTLASS for SM90 Block FP8 kernel (#23280)
Signed-off-by: mgoin <mgoin64@gmail.com>
Co-authored-by: Wentao Ye <44945378+yewentao256@users.noreply.github.com>
2025-09-11 15:43:14 -07:00
d4fd2768ef [Bugfix][Attention] Fix FlashInfer MLA block size logic (#24692)
Signed-off-by: Matthew Bonanni <mbonanni001@gmail.com>
2025-09-11 22:39:42 +00:00
7a70a71892 [Qwen3-Next] Add B200 MoE configs for Qwen3-next (#24698)
Signed-off-by: Vadim Gimpelson <vadim.gimpelson@gmail.com>
2025-09-11 15:34:58 -07:00
7d4651997a [CI/Build] Add bc-linter to vLLM CI (#21234)
Signed-off-by: zhewenli <zhewenli@meta.com>
2025-09-11 15:34:36 -07:00
569bf1c9c0 [Qwen3-Next] MoE configs for H200 TP=1,2,4 (#24695)
Signed-off-by: Woosuk Kwon <woosuk@thinkingmachines.ai>
2025-09-11 14:38:16 -07:00
1ec20355f5 [Bugfix] Set VLLM_ALLREDUCE_USE_SYMM_MEM default to False (#24696)
Signed-off-by: yewentao256 <zhyanwentao@126.com>
2025-09-11 14:32:27 -07:00
e42af78b18 [flashinfer] [kernel] support for fp8 kv cache for trtllm prefill attention (#24197)
Signed-off-by: Xiaozhu <mxz297@gmail.com>
2025-09-11 14:20:09 -07:00
074854b24f [Kernel][B200] mxfp4 fused cutlass moe (#23696)
Signed-off-by: Duncan Moss <djm.moss@gmail.com>
Signed-off-by: Michael Goin <mgoin64@gmail.com>
Signed-off-by: mgoin <mgoin64@gmail.com>
Co-authored-by: Robert Shaw <114415538+robertgshaw2-redhat@users.noreply.github.com>
Co-authored-by: Michael Goin <mgoin64@gmail.com>
2025-09-11 17:04:56 -04:00
79ac59f32e Update Spec Decode metrics to include drafted and accepted token throughput (#24127)
Signed-off-by: Andrew Xia <axia@meta.com>
2025-09-11 19:58:43 +00:00
b971f91504 [BugFix] Fix tokenize asyncio task leak (#24677)
Signed-off-by: Nick Hill <nhill@redhat.com>
2025-09-11 19:44:04 +00:00
c733bd5e87 [Qwen3-Next] Add MoE Config for H200 (#24688)
Signed-off-by: Woosuk Kwon <woosuk@thinkingmachines.ai>
2025-09-11 12:40:15 -07:00
a892b259b4 [Doc] Remove Useless Comments (#24687)
Signed-off-by: yewentao256 <zhyanwentao@126.com>
2025-09-11 12:25:47 -07:00
127ded0a9e [Ultravox] Use wrapped_model_config to instantiate inner model (#24679)
Signed-off-by: Peter Salas <peter@fixie.ai>
2025-09-11 18:52:24 +00:00
bb2b5126da [VLM] Migrate remain DP-supported ViT models to use disable_tp (#24363)
Signed-off-by: Isotr0py <mozf@mail2.sysu.edu.cn>
2025-09-11 18:30:41 +00:00
361ae27f8a [Docs] Fix formatting of transcription doc (#24676)
Signed-off-by: Harry Mellor <19981378+hmellor@users.noreply.github.com>
2025-09-11 11:18:06 -07:00
e26fef8397 fix some typos (#24616)
Signed-off-by: co63oc <co63oc@users.noreply.github.com>
2025-09-11 10:48:46 -07:00
c1eda615ba Fix model name included in responses (#24663)
Signed-off-by: Harry Mellor <19981378+hmellor@users.noreply.github.com>
2025-09-11 10:47:51 -07:00
4aa23892d6 [Bugfix] Fix platform-specific routing in CustomOp implementations (#24444)
Signed-off-by: Konrad Zawora <kzawora@habana.ai>
2025-09-11 17:15:01 +00:00
1fdd5c42d7 [Kernels] Enable Torch Symmetric Memory All-Reduce By Default (#24111)
Signed-off-by: ilmarkov <markovilya197@gmail.com>
Co-authored-by: Michael Goin <mgoin64@gmail.com>
2025-09-11 09:45:31 -07:00
bcbe2a4d9e [VLM] Optimize GLM4.5-V-style video processing to only decode necessary frames (#24161)
Signed-off-by: Isotr0py <mozf@mail2.sysu.edu.cn>
2025-09-11 09:44:34 -07:00
51d41265ad [Docs] Fix typos in EP deployment doc (#24669)
Signed-off-by: Harry Mellor <19981378+hmellor@users.noreply.github.com>
2025-09-11 09:07:23 -07:00
4984a291d5 [Doc] Fix Markdown Pre-commit Error (#24670)
Signed-off-by: yewentao256 <zhyanwentao@126.com>
2025-09-11 09:05:59 -07:00
404c85ca72 [Docs] Add transcription support to model (#24664)
Signed-off-by: NickLucche <nlucches@redhat.com>
2025-09-11 07:39:01 -07:00
817beef7f3 [Bugifx] Fix qwen-next packed_modules_mapping (#24656)
Signed-off-by: Jee Jee Li <pandaleefree@gmail.com>
2025-09-11 22:26:17 +08:00
4f6593b058 [HybridKVCache][Platform] Add support_hybrid_kv_cache for platform (#24646)
Signed-off-by: MengqingCao <cmq0113@163.com>
2025-09-11 21:47:58 +08:00
94e6b2d55f Allow users to specify kv cache memory size (#21489)
Signed-off-by: Boyuan Feng <boyuan@meta.com>
Signed-off-by: Harry Mellor <19981378+hmellor@users.noreply.github.com>
Co-authored-by: Harry Mellor <19981378+hmellor@users.noreply.github.com>
2025-09-11 13:41:07 +00:00
fd1ce98cdd [CI] Split mteb test from Language Models Test (#24634)
Signed-off-by: wang.yuqi <noooop@126.com>
2025-09-11 06:37:51 -07:00
d11ec124a0 [Bench] Add qwen-next in benchmark_moe.py (#24661)
Signed-off-by: Jee Jee Li <pandaleefree@gmail.com>
2025-09-11 21:29:43 +08:00
f510715882 [build] add torch to tool.uv no-build-isolation-package (#24303)
Signed-off-by: youkaichao <youkaichao@gmail.com>
Signed-off-by: Harry Mellor <19981378+hmellor@users.noreply.github.com>
Co-authored-by: Harry Mellor <19981378+hmellor@users.noreply.github.com>
2025-09-11 13:19:44 +00:00
f946197473 [Docs] Fixes a typo in the qwen3next model name. (#24654)
Signed-off-by: Tao He <linzhu.ht@alibaba-inc.com>
2025-09-11 19:35:14 +08:00
0cd72a7b72 [XPU] add missing dependency tblib for XPU CI (#24639)
Signed-off-by: Fanli Lin <fanli.lin@intel.com>
2025-09-11 11:22:33 +00:00
5f5271f1ee Move LoRAConfig from config/__init__.py to config/lora.py (#24644)
Signed-off-by: Harry Mellor <19981378+hmellor@users.noreply.github.com>
2025-09-11 11:01:38 +00:00
d6249d0699 Fix typing for safetensors_load_strategy (#24641)
Signed-off-by: Harry Mellor <19981378+hmellor@users.noreply.github.com>
2025-09-11 10:41:39 +00:00
25bb9e8c65 [CI Failure] fix models/language/pooling/test_auto_prefix_cache_support.py (#24636)
Signed-off-by: wang.yuqi <noooop@126.com>
2025-09-11 03:31:23 -07:00
a1213fae5f [Misc] Add @NickLucche to codeowners (#24647)
Signed-off-by: NickLucche <nlucches@redhat.com>
2025-09-11 17:18:09 +08:00
a8b0361c92 [CI] Split pooling from entrypoints Test (#24632)
Signed-off-by: wang.yuqi <noooop@126.com>
2025-09-11 01:53:09 -07:00
ed5ae4aace [Bugfix] Fix _synced_weight_loader (#24565)
Signed-off-by: Kyuyeun Kim <kyuyeunk@google.com>
2025-09-11 16:52:33 +08:00
0fc36463e0 [CI]Add transformers_utils to Async Engine, Inputs, Utils, Worker Test (#24615)
Signed-off-by: Xingyu Liu <charlotteliu12x@gmail.com>
2025-09-11 01:52:10 -07:00
d14c4ebf08 [Docs] Use 1-2-3 list for deploy steps in deployment/frameworks/ (#24633)
Signed-off-by: windsonsea <haifeng.yao@daocloud.io>
2025-09-11 01:50:12 -07:00
ba6011027d [Docs] Update V1 doc to reflect whisper support (#24606)
Signed-off-by: Russell Bryant <rbryant@redhat.com>
2025-09-11 01:50:08 -07:00
85df8afdae [Docs] Revise frameworks/anything-llm.md (#24489)
Signed-off-by: windsonsea <haifeng.yao@daocloud.io>
2025-09-11 01:50:05 -07:00
6aeb1dab4a [Bugfix] Fix incorrect import of CacheConfig (#24631)
Signed-off-by: DarkLight1337 <tlleungac@connect.ust.hk>
2025-09-11 01:48:25 -07:00
e93f4cc9e3 Add the support for the qwen3 next model (a hybrid attention model). (#24526)
Signed-off-by: Tao He <linzhu.ht@alibaba-inc.com>
Co-authored-by: Jee Jee Li <pandaleefree@gmail.com>
2025-09-11 15:32:09 +08:00
2048c4e379 [torchao] Support quantization configs using module swap (#21982)
Signed-off-by: Jerry Zhang <jerryzh168@gmail.com>
2025-09-10 23:53:24 -07:00
d13360183a Remove redundant all gather + split (#23441)
Co-authored-by: Chenxi Yang <cxyang@meta.com>
Co-authored-by: Lu Fang <30275821+houseroad@users.noreply.github.com>
2025-09-10 23:45:07 -07:00
9bd831f501 [Model] New model support for Motif-1-Tiny (#23414)
Signed-off-by: ca1207 <ca1207zzz@gmail.com>
Signed-off-by: TaehyunKim <73943231+ca1207@users.noreply.github.com>
Co-authored-by: WyldeCat <skan1543@gmail.com>
Co-authored-by: Jee Jee Li <pandaleefree@gmail.com>
2025-09-10 23:29:40 -07:00
e2b1f863aa [Doc]: fixing doc typos (#24635)
Signed-off-by: Didier Durand <durand.didier@gmail.com>
2025-09-10 23:19:28 -07:00
41329a0ff9 [Core] feat: Add --safetensors-load-strategy flag for faster safetensors loading from Lustre (#24469)
Signed-off-by: Shiqi Sheng <shengshiqi@google.com>
Signed-off-by: shengshiqi-google <160179165+shengshiqi-google@users.noreply.github.com>
Co-authored-by: gemini-code-assist[bot] <176961590+gemini-code-assist[bot]@users.noreply.github.com>
2025-09-10 23:10:01 -07:00
ee0bc5e1b4 Enable --profile in 'vllm bench throughput' (#24575)
Signed-off-by: Tomas Ruiz <tomas.ruiz.te@gmail.com>
2025-09-10 23:06:19 -07:00
3d1393f6fc Kimi K2 Fused MoE kernels Optimization configs (#24597)
Signed-off-by: Saman Keon <samanamp@outlook.com>
2025-09-10 23:06:16 -07:00
8a894084d2 [Engine][Chore] use local variable and remove output var assignment (#24554)
Signed-off-by: Guy Stone <guys@spotify.com>
2025-09-10 23:05:42 -07:00
e2d8c27f68 [BugFix] Fix pipeline parallel (#24621)
Signed-off-by: Nick Hill <nhill@redhat.com>
2025-09-10 23:05:30 -07:00
29799ddacc [Bugfix] Add missing VIT backend dispatch on CPU (#24623)
Signed-off-by: jiang1.li <jiang1.li@intel.com>
2025-09-10 22:28:41 -07:00
f17a6aa4ec [Ultravox] Fix Gemma instantiation, support quantization via --hf-overrides (#24131)
Signed-off-by: Peter Salas <peter@fixie.ai>
2025-09-10 22:25:34 -07:00
6c8deacd72 [Bug] [Spec Decode] Fix model_initialization test and mismatch in aux_hidden_layers (#24613)
Signed-off-by: wwl2755 <wangwenlong2755@gmail.com>
Signed-off-by: Roger Wang <hey@rogerw.io>
Signed-off-by: Cyrus Leung <cyrus.tl.leung@gmail.com>
Co-authored-by: Roger Wang <hey@rogerw.io>
Co-authored-by: Cyrus Leung <cyrus.tl.leung@gmail.com>
2025-09-10 21:23:18 -07:00
55b823ba0f Add @chaunceyjiang to codeowner for reasoning Reasoning and Tool parser (#24406)
Signed-off-by: chaunceyjiang <chaunceyjiang@gmail.com>
2025-09-11 04:23:04 +00:00
8c5a747246 [distributed] update known issues (#24624)
Signed-off-by: youkaichao <youkaichao@gmail.com>
2025-09-11 11:09:38 +08:00
5931b7e5d9 [Models][Quantization] Add quantization configuration update in Voxtral model (#24122)
Signed-off-by: Alexandre Marques <almarque@redhat.com>
Co-authored-by: gemini-code-assist[bot] <176961590+gemini-code-assist[bot]@users.noreply.github.com>
Co-authored-by: Michael Goin <mgoin64@gmail.com>
2025-09-10 19:13:56 -07:00
cc99baf14d [Misc] Make timeout passable in init_distributed_environment (#24522)
Signed-off-by: jberkhahn <jaberkha@us.ibm.com>
2025-09-10 15:41:12 -07:00
dcb28a332b [Kernel] Flashinfer MLA (trtllm-gen) decode kernel integration (#21078)
Signed-off-by: hjjq <hanjieq@nvidia.com>
Signed-off-by: Michael Goin <mgoin64@gmail.com>
Signed-off-by: mgoin <mgoin64@gmail.com>
Co-authored-by: Michael Goin <mgoin64@gmail.com>
2025-09-10 15:31:10 -07:00
fba7856581 [Perf] Warmup FlashInfer attention during startup (#23439)
Signed-off-by: mgoin <mgoin64@gmail.com>
Signed-off-by: Michael Goin <mgoin64@gmail.com>
Signed-off-by: Luka Govedič <lgovedic@redhat.com>
Co-authored-by: Luka Govedič <lgovedic@redhat.com>
Co-authored-by: Luka Govedič <ProExpertProg@users.noreply.github.com>
Co-authored-by: Matthew Bonanni <mbonanni001@gmail.com>
2025-09-10 15:03:17 -07:00
b5e383cd8b [gpt-oss] raise error for flashinfer backend without trtllm (#24482)
Signed-off-by: Chen Zhang <zhangch99@outlook.com>
2025-09-10 14:33:13 -07:00
9a161307f5 [torch.compile][ROCm][V1] Enable attention output FP8 fusion for V1 attention backends (#19767)
Signed-off-by: Gregory Shtrasberg <Gregory.Shtrasberg@amd.com>
Signed-off-by: Luka Govedič <lgovedic@redhat.com>
Co-authored-by: Luka Govedič <lgovedic@redhat.com>
Co-authored-by: Luka Govedič <ProExpertProg@users.noreply.github.com>
2025-09-10 13:59:55 -07:00
37e8182bfe [v1] Add Whisper model support (encoder-decoder) (#21088)
Signed-off-by: Russell Bryant <rbryant@redhat.com>
Co-authored-by: NickLucche <nlucches@redhat.com>
2025-09-10 13:53:35 -07:00
4db4426404 [CI] Fail subprocess tests with root-cause error (#23795)
Signed-off-by: Nick Hill <nhill@redhat.com>
2025-09-10 13:53:21 -07:00
a0933c3bd6 [Bugfix] Enable FP8 KV cache for FlashInfer and Triton backend on non-sm100 GPUs (#24577)
Signed-off-by: Thien Tran <gau.nernst@yahoo.com.sg>
2025-09-10 12:33:41 -07:00
09e68bce34 [Misc] update log level debug to warning when process port is used by (#24226)
Signed-off-by: rongfu.leng <rongfu.leng@daocloud.io>
Co-authored-by: Cyrus Leung <tlleungac@connect.ust.hk>
2025-09-10 11:32:57 -07:00
9fb74c27a7 [Core] Support configuration parsing plugin (#24277)
Signed-off-by: Xingyu Liu <charlotteliu12x@gmail.com>
Signed-off-by: Xingyu Liu <38244988+charlotte12l@users.noreply.github.com>
Co-authored-by: gemini-code-assist[bot] <176961590+gemini-code-assist[bot]@users.noreply.github.com>
2025-09-10 11:32:43 -07:00
4032949630 [Bugfix] Fix DeepEP config for DP4TP4 (#23619)
Signed-off-by: Ming Yang <minos.future@gmail.com>
2025-09-10 10:37:56 -07:00
08abfa78ec [Bugfix] fix modelopt exclude_modules name mapping (#24178)
Signed-off-by: Tomer Asida <57313761+tomeras91@users.noreply.github.com>
Co-authored-by: Cyrus Leung <tlleungac@connect.ust.hk>
2025-09-10 10:20:46 -07:00
2bef2d1405 [Logging] allow config logging stream (#24336)
Signed-off-by: Shiyan Deng <dsy842974287@meta.com>
2025-09-10 15:02:01 +00:00
36cacd0958 [Doc] Add documentation for GLM-4.5 series models: tool-calling and reasoning parser (#24589)
Signed-off-by: WangErXiao <863579016@qq.com>
2025-09-10 07:50:55 -07:00
bb3eb80d92 [Core] Split LoRA layers (#24574)
Signed-off-by: Jee Jee Li <pandaleefree@gmail.com>
2025-09-10 07:47:51 -07:00
fcc0a3130a [CI] Fix tensorizer test assertion (#24545)
Signed-off-by: Peter Schuurman <psch@google.com>
2025-09-10 06:57:36 -07:00
736569da8d [Platform] Custom ops support for LMhead and LogitsProcessor (#23564)
Signed-off-by: zzhx1 <zzh_201018@outlook.com>
2025-09-10 06:26:31 -07:00
2eb9986a2d [BugFix] python collect_env.py and vllm collect-env compatibility with uv venv (#24066)
Signed-off-by: Kay Yan <kay.yan@daocloud.io>
2025-09-10 21:25:33 +08:00
ccee371e86 [Docs] Fix warnings in mkdocs build (continued) (#24092)
Signed-off-by: Zerohertz <ohg3417@gmail.com>
Co-authored-by: Harry Mellor <19981378+hmellor@users.noreply.github.com>
Co-authored-by: Wentao Ye <44945378+yewentao256@users.noreply.github.com>
2025-09-10 06:23:28 -07:00
c0bd6a684a Fix Auto_Round Quatization Loading on SM75 and Lower GPUs (#24217)
Signed-off-by: RoadToNowhereX <37441177+RoadToNowhereX@users.noreply.github.com>
Co-authored-by: Wentao Ye <44945378+yewentao256@users.noreply.github.com>
2025-09-10 06:22:31 -07:00
3144d90217 fix some typos (#24167)
Signed-off-by: co63oc <co63oc@users.noreply.github.com>
Co-authored-by: Russell Bryant <rbryant@redhat.com>
2025-09-10 06:21:23 -07:00
2f5e5c18de [CI/Build] bump timm dependency (#24189)
Signed-off-by: Daniele Trifirò <dtrifiro@redhat.com>
Co-authored-by: Russell Bryant <rbryant@redhat.com>
2025-09-10 06:20:59 -07:00
bd98842c8a [CI] Add PPL test for generation models (#24485)
Signed-off-by: wang.yuqi <noooop@126.com>
2025-09-10 06:16:39 -07:00
d6069887c6 [rocm] enable torchao quantization for rocm (#24400)
Signed-off-by: Lifan Shen <lifans@meta.com>
2025-09-10 06:16:21 -07:00
492196ed0e [CI/Build] split true unit tests to Entrypoints Unit Tests (#24418)
Signed-off-by: Ye (Charlotte) Qi <yeq@meta.com>
2025-09-10 06:16:07 -07:00
f4f1a8df22 [BugFix] Ensure integrity of reused CPU tensors during async scheduling (#24527)
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2025-09-10 21:15:14 +08:00
0b9a612fa3 [BugFix][easy] Fix flaky test test_gpt_oss_multi_turn_chat (#24549)
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2025-09-10 21:14:55 +08:00
4c04eef706 [BugFix][Multi Modal] Fix TensorSchema shape mismatch in Molmo (#24559)
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2025-09-10 06:14:27 -07:00
f36355abfd Move LoadConfig from config/__init__.py to config/load.py (#24566)
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2025-09-10 06:14:18 -07:00
9e3c3a7df2 [LoRA]: Add LoRA support to Mistral's Voxtral models (#24517)
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2025-09-10 06:12:03 -07:00
6cbd41909e Feature/vit attention unification# 23880 (#23978)
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2025-09-10 06:10:14 -07:00
72d30108a0 Support for NemotronH Nano VLM (#23644)
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2025-09-10 06:10:06 -07:00
8b83b93739 [Docs] Document the extra memory footprint overhead when using EPLB (#24537)
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2025-09-10 06:09:49 -07:00
9dbefd88e9 [Docs] Improve organisation of API Reference nav (#24569)
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2025-09-10 06:08:21 -07:00
7c195d43da [ROCm][Bugfix] Fix Aiter RMSNorm (#23412)
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2025-09-10 21:08:03 +08:00
0ae43dbf8c [Attention] add DCP support for FLASH_ATTN_MLA backend (#24453)
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2025-09-10 17:19:26 +08:00
267c80d31f [Model] Limit CPU threads for image transformations in InternVL to reduce cpu contention. (#24519)
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2025-09-10 16:45:44 +08:00
77f62613f9 Consolidate rendering parameters into RenderConfig dataclass (#24543)
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2025-09-10 08:44:47 +00:00
feaf202e93 [Bugfix] Guard _may_reorder_batch for encoder-only models on CPU (#24319) (#24348)
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2025-09-10 14:24:42 +08:00
91130ae376 [docs] promo pytorch conf and ray summit (#24562)
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2025-09-09 23:24:20 -07:00
e40827280b [Docs] Enable relative links in examples to function when rendered in the docs (#24041)
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2025-09-09 21:40:45 -07:00
4377b1ae3b [Bugfix] Update Run:AI Model Streamer Loading Integration (#23845)
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2025-09-09 21:37:17 -07:00
009d689b0c [Core] Simplify and unify mm uuid handling & auto-generated mm hash overrides processing. (#24271)
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2025-09-09 21:36:09 -07:00
Wei
0efdb5c3ba [gpt-oss] Cache permute indices for faster MXFP4 MoE layer loading (#24154)
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2025-09-10 04:27:53 +00:00
53b42f4102 [BugFix][Spec Decode] Fix out-of-range index triggered by eagle3; re-enable test for LlamaForCausalLMEagle3 (#24392)
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2025-09-09 21:24:23 -07:00
309d7aa401 [P/D] MultiConnector supports shutdown (#24425)
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2025-09-09 21:24:11 -07:00
b4a01aaf95 [KV Connector] More async support for get_num_new_matched_tokens (#23620)
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2025-09-09 21:23:37 -07:00
83dd28aae4 [CI] Adjust threshold for flaky ngram spec decoding test (#24528)
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2025-09-09 21:07:33 -07:00
f88e84016f [BugFix] Fix async core engine client finalizer (#24540)
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2025-09-09 21:07:13 -07:00
3c2156b3af [Hardware][Apple-CPU] Enable native bfloat16 on Apple Silicon (M2 and later) (#24129)
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2025-09-10 03:50:21 +00:00
7e7db04310 [CI] Retry flaky fp8 cutlass mla tests (#24536)
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2025-09-09 20:33:10 -07:00
41f160b974 Add @heheda12345 to CODEOWNERS of KVCacheManager related code (#24546)
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2025-09-10 03:30:32 +00:00
dc625ea6b8 [Perf] Convert np array to torch tensor to index into block table for attn chunking (#24474)
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2025-09-09 20:01:06 -07:00
b23fb78623 [Bugfix] Fix for 24530. Fix naive all2all shared expert overlap. (#24538) 2025-09-09 17:53:53 -07:00
561f38dc3c [Bugfix] Improve EPLB config validation error message (#24524)
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2025-09-10 00:32:36 +00:00
73e688cb79 [ROCm][Feature] Enable Pipeline Parallelism with Ray Compiled Graph on ROCm (#24275)
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2025-09-09 23:27:35 +00:00
fb1a8f932a [Benchmark] Add option to skip oversampling in benchmark (#24457)
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2025-09-09 22:00:17 +00:00
0dc9cbb527 [Benchmark] Update bench doc with mtbench, blazedit, spec bench (#24450)
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2025-09-09 21:15:41 +00:00
b5fb3005a8 [Log] Use a relative path in debug-level logs to distinguish files with identical names (#23846)
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2025-09-09 16:46:35 -04:00
15de5ff9ea [Feature] Disallow FlashMLA on Blackwell (#24521)
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2025-09-09 14:59:34 -04:00
b8a93076d3 [CI] execute all piecewise compilation tests together (#24502)
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2025-09-09 11:05:25 -07:00
c3f9773b2c [TPU] Fix tpu structured decoding in mixed batches (#24458)
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2025-09-09 11:04:25 -07:00
3707cb2505 [Docs] Gemma3n transcriptions endpoint support (#24512)
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2025-09-09 11:03:32 -07:00
920ed46b09 [Misc] bump outlines_core to fix the version conflicts with outlines >= 1.2.0 (#24368)
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2025-09-09 10:59:46 -07:00
15cb047e25 Extend renderer with embedding support and integrate completion endpoint (#24405)
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2025-09-10 01:46:46 +08:00
9ad0688e43 [Bugfix] Fix hidden_size for multimodal classification model (#24501)
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2025-09-09 10:37:25 -07:00
b9a1c4c8a2 [ROCm][CI/Build] Sync ROCm dockerfiles with the ROCm fork (#24279)
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2025-09-09 12:21:56 -04:00
1aa427fdc1 [Kernels] Add Flash Linear Attention Kernels (#24518)
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2025-09-10 00:04:41 +08:00
1c63a16b65 [Core] Run garbage collector after CUDA graph capture to fix throughput regression (#24128)
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2025-09-09 10:38:10 -04:00
922d3b401b [Bugfix] Handle the edge case in detokenizer where processed tokens contain both stop str and eos token (#23938)
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2025-09-09 07:30:24 -07:00
19332c0479 [Model] Systematic support for fp32 head, pooling models part (#23810)
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2025-09-09 07:29:50 -07:00
a55cf41a09 [Compilation][WideEP] Enable Piecewise CUDAGraph for DeepEPHT (#24123) 2025-09-09 10:21:10 -04:00
6fb2788163 [CI/Build][Doc] Fully deprecate old bench scripts for serving / throughput / latency (#24411)
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2025-09-09 10:02:35 +00:00
3d2a2de8f7 [RL] fast weight update with zmq + ipc handles (#24295)
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2025-09-09 16:57:46 +08:00
1116590b16 [gpt-oss] Validate gpt-oss python tool during initialization (#23856)
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2025-09-09 08:37:48 +00:00
ccb97338af [Misc] Add Codex settings to gitignore (#24493)
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2025-09-09 01:25:44 -07:00
45c9cb5835 [Misc] Add claude settings to gitignore (#24492)
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2025-09-09 01:14:45 -07:00
e283976f3a [Performance][MM] Building the inverse permutation in O(n) time in Qwen2_5_VisionTransformer (#24443)
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2025-09-09 00:24:11 -07:00
46876dff32 [Doc]: fixing typos to improve docs (#24480)
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2025-09-08 23:06:04 -07:00
1823a00d67 [Misc] Support bench serve long context (#24373)
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2025-09-08 22:53:10 -07:00
ed16d0f26f [Doc] mention fpdb for multiprocess breakpoints (#24452)
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2025-09-08 21:46:45 -07:00
0cdd213641 [Misc] Improve Worker process title and logging prefix (#22205)
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2025-09-08 21:43:48 -07:00
948dd3443b [Bugfix] Fix Apertus HF repo name (#24447)
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2025-09-08 21:40:29 -07:00
b2f7745774 Add data_parallel_size to VllmConfig string representation (#24298)
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2025-09-08 21:35:18 -07:00
82dfb12e52 [Core] Use sha256 bytes instead of BlockHash to reduce GC overhead (#23673)
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2025-09-08 21:34:37 -07:00
bba1042c6f [Flashinfer] Support Flashinfer TRTLLM FP8-qkv BF16/FP16-out Attention Kernel (#23647)
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2025-09-08 20:53:07 -07:00
b6fbc15634 [BugFix][Model] Fix Ernie4.5-VL hanging on long inputs (#24074)
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2025-09-09 11:37:16 +08:00
3e0d4a3475 Move KVTransferConfig from config/__init__.py to config/kv_transfer.py (#24434)
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2025-09-08 20:30:32 -07:00
562663a044 Bump actions/github-script from 7.0.1 to 8.0.0 (#24413)
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2025-09-09 03:12:44 +00:00
ed1623a88a Bump actions/stale from 9.1.0 to 10.0.0 (#24412)
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2025-09-09 03:11:20 +00:00
13b89bd823 [doc] update vllm serve cli args documentation (#24329)
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2025-09-09 03:07:58 +00:00
22a0070530 Bump actions/setup-python from 5.4.0 to 6.0.0 (#24414)
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2025-09-09 02:54:58 +00:00
170129eb28 [gpt-oss] Harmony changes with container tool support (#23386)
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2025-09-08 19:03:50 -07:00
955c624915 [Bugfix][Wide EP] Fix redundant work when using DeepEP, TP Attn, and EP MoE (#24134)
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2025-09-08 19:01:51 -07:00
4f87abdcc6 Update reviewers for modelopt related files (#24468) 2025-09-09 01:53:13 +00:00
6910b56da2 [CI] Add nightly multiarch manifests to dockerhub (#24102)
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2025-09-09 01:18:09 +00:00
e10fef0883 [Hardware][IBM Z] Fix Outlines Core issue for s390x (#24034)
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2025-09-08 16:50:34 -07:00
e680723eba [Bugfix] Disable the statslogger if the api_server_count is greater than 1 (#22227)
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2025-09-08 15:28:03 -07:00
620db1fc58 [Attention] FlashAttention MLA cudagraph support (#23958)
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2025-09-08 22:05:26 +00:00
41183c1fe0 [Spec Decode] Fix offline spec_decode.py (#24257)
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2025-09-08 20:44:13 +00:00
43d9ad03ba [Model loader]: support multi-thread model weight loading (#23928)
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2025-09-08 18:49:39 +00:00
7be141b2c5 [CI] Enable encoder model compilation test (#24442)
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2025-09-08 11:48:06 -07:00
8d7f39b48c [Model] Remove quantized mixtral (#24437)
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2025-09-08 11:02:14 -07:00
cd08636926 [Spec Decode][Benchmark] Add Blitzedit dataset (#23605)
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2025-09-08 10:32:52 -07:00
3feeeb9fea [Spec Decode][Benchmark] Add Spec Bench Dataset for benchmarking (#23563)
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2025-09-08 10:32:42 -07:00
6f4a82f8b5 [Model] Enable BNB support for qwen2_5_omni_thinker (#24420)
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2025-09-08 09:37:08 -07:00
c44797a4d6 [Docs]add eplb_config param use docs (#24213)
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2025-09-08 09:36:57 -07:00
55be93baf5 [Doc]: fix 2 hyperlinks leading to Ray site after they changed Ray's doc structure (#24438)
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2025-09-08 09:36:54 -07:00
717fc00e98 [Docs] Move feature compatibility tables to README (#24431)
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2025-09-08 06:45:14 -07:00
01dfb5e982 [Frontend] User-provided uuids for medias in chat. (RFC #22044) (#23449)
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2025-09-08 06:42:20 -07:00
03dd652c16 Move KVEventsConfig from config/__init__.py to config/kv_events.py (#24433)
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2025-09-08 06:41:27 -07:00
9cd76b71ab [Misc] Terratorch related fixes (#24337)
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2025-09-08 06:40:26 -07:00
e041314184 [Bugfix] Fix mamba2 prefill chunking (#23279)
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2025-09-08 11:42:41 +00:00
5e537f45b4 [Bugfix] Fix get_quant_config when using modelscope (#24421)
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2025-09-08 11:03:02 +00:00
c2a8b08fcd [Doc] Fix issues in integrations/llamastack.md (#24428)
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2025-09-08 02:28:32 -07:00
f4962a6d55 [Doc]: fix typos in Python comments (#24417)
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2025-09-08 00:22:16 -07:00
2f0b833a05 [Docs] Fix a tip indentation and typo (#24419)
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2025-09-08 00:19:40 -07:00
425b04b8f4 [gpt-oss][Responses API] Fix the function call id format (#24409)
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2025-09-08 06:49:52 +00:00
60f0843ef8 [Model] Remove unnecessary CUDA sync of Qwen2VL image and video preprocess (#24334)
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2025-09-07 23:11:12 -07:00
8a46602606 [Model] Remove unnecessary CUDA sync of GLM-4.1V image and video preprocess (#24332)
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2025-09-07 23:10:54 -07:00
61aa4b2901 [P/D] Add a shutdown method to the Connector API (#22699)
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2025-09-07 23:07:00 -07:00
8c892b1831 [Doc] Fix UTF-8 encoding issues in documentation generation on Windows (#24361)
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2025-09-07 22:33:52 -07:00
3bca396f79 [CI/Build] Fix local image inputs in test_pixtral.py (#24401)
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2025-09-08 03:31:35 +00:00
3a3e91bdfe [CI/Build] Disable flaky test_structured_output tests (#24404)
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2025-09-08 02:51:59 +00:00
b3d7e3c845 [Sampler] Support returning all prompt logprobs (#23868)
Signed-off-by: Xingyu Liu <charlotteliu12x@gmail.com>
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2025-09-07 19:34:31 -07:00
67841317d1 [xpu] upgrade ipex/python3.12 for xpu (#23830)
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2025-09-08 02:07:16 +00:00
86173ad593 [Kernel] Support decode context parallelism on Blackwell with CUTLASS MLA (#24385)
Signed-off-by: Ming Yang <minos.future@gmail.com>
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2025-09-08 09:27:12 +08:00
795b6951cd Add @luccafong to codeowner for spec decode (#24397)
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2025-09-08 08:30:27 +08:00
2e5d21378d Skip MM Encoder for non-first PP ranks (#24387)
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2025-09-07 09:38:35 -07:00
0661cb9df3 Add renderer-based prompt processing for embedding and classification endpoints (#24356)
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2025-09-07 08:26:48 +00:00
105d3d62ef [TPU] Remove TopKTopPSampler dependency for TPU sampler (#24391)
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2025-09-07 01:12:36 -07:00
62f66be1f7 [Bugfix] Fix Qwen3-coder moe tuned config (#24072)
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2025-09-07 05:19:46 +00:00
81c53ef55c [Misc] collect flashinfer version in collect_env.py (#24378)
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2025-09-07 03:30:41 +00:00
75334956c2 QWEN3 Thinking Fused MoE kernels Optimization configs (#24330)
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2025-09-07 03:18:54 +00:00
77aec83b8c [Benchmark] add benchmark for custom activation op (#23908)
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2025-09-06 20:12:05 -07:00
e67597545b [CI][Fix] deterministic seed for flaky CI runs on structured outputs (#24380)
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2025-09-07 11:10:40 +08:00
37a6fa95fd Migrate Qwen2 inputs to TensorSchema (#23475)
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2025-09-06 20:07:31 -07:00
558f0907dc [attention][DCP] use AttentionImpl.need_to_return_lse_for_decode (#24372)
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2025-09-07 01:18:59 +00:00
4172235ab7 [V0 deprecation] Deprecate V0 Neuron backend (#21159)
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2025-09-06 16:15:18 -07:00
848562bd49 break execute_model in gpu_model_runner into sub-functions for custom scopes (#24265)
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2025-09-06 14:02:47 -07:00
e68dc2f014 [Bugfix] Fix unstable silu_mul+nvfp4 quant fusion test (#24370)
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2025-09-06 20:39:34 +00:00
a3645ed94d [Frontend][Responses API] Support reporting tool output tokens and fix reasoning token count (#24285)
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2025-09-06 13:27:15 -07:00
fb691ee4e7 [Fix] [gpt-oss] fix non-tool calling path for chat completion (#24324) 2025-09-06 19:10:32 +00:00
6024d115cd Lora bias(enable_lora_bias) deprecate warning (#24339)
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2025-09-07 00:42:19 +08:00
7555d6b34a [Bugfix] Fix test_mixtral_moe (#24371) 2025-09-06 09:32:03 -07:00
00a4e56d8d [Bugfix] Fix broken deepseek fp8 TP weights loading (#24367)
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2025-09-06 09:23:12 -07:00
0eadaeff7e [Bugfix] Avoid uninitialized usage of azp_val when AZP is false. (#24335)
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2025-09-06 08:17:03 -07:00
0077c8634e Add @benchislett to codeowner for spec decode and structured outputs (#24362)
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2025-09-06 22:03:35 +08:00
b121ca22ad [CI] Disable flaky structured output test from CI (#24366)
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2025-09-06 13:31:56 +00:00
eddaafc1c7 [Multimodal] Improve max video embedding length estimation in V1 (#24312)
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2025-09-06 02:33:19 -07:00
305a1cc0d2 refactor: Turn GPUModelRunner.inputs_embeds to a CpuGpuBuffer (#24345)
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2025-09-05 23:01:23 -07:00
6d6c6b05d3 [New Model]: google/embeddinggemma-300m (#24318)
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2025-09-05 22:58:36 -07:00
53b19ccdd5 [Core] Allow disabling TP sharding for parallel Linear layer (#23024)
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2025-09-05 22:53:58 -07:00
6432739ef1 [Bugfix] Catch and log invalid token ids in detokenizer (#24351)
Signed-off-by: Nick Hill <nhill@redhat.com>
2025-09-05 22:30:22 -07:00
ac201a0eaf [Feature] Support Decode Context Parallel (DCP) for MLA (#23734)
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2025-09-06 13:24:05 +08:00
3c529fc994 [KV Sharing] Raise error if using eagle with fast prefill (#24350)
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2025-09-05 20:22:40 -07:00
35bf193864 [Doc]: fix typos in Python comments (#24294)
Signed-off-by: Didier Durand <durand.didier@gmail.com>
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2025-09-05 19:41:12 -07:00
35efa70297 Add @22quinn as code reviewer for RL related components (#24346) 2025-09-06 01:56:15 +00:00
cee182b297 [Perf][V1] Fully overlap model execution (#23569)
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2025-09-05 18:20:17 -07:00
c954c6629c [CI] Add timeouts to tests (#24260)
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2025-09-05 17:26:22 -07:00
9dfbeb41e5 [RFC] allow cancelation after shutdown in blocking collective_rpc (#23390)
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2025-09-05 14:14:18 -07:00
eedb2a2a10 [Bugfix] Fix silu_mul+quant fusion test (#24341)
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2025-09-05 20:13:42 +00:00
23a6c5280e [gpt-oss][Bugfix]Fix streamableparser for missing handling of certain token_ids (#24306)
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2025-09-05 10:26:00 -07:00
7812bcf278 [docs] add shenzhen meetup (#24326)
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2025-09-05 22:48:42 +08:00
006e7a34ae Adding int4 and int8 models for CPU benchmarking (#23709)
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2025-09-05 20:08:50 +08:00
e599e2c65e [XPU][P/D] Add XPU support in NixlConnector (#22436)
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2025-09-04 21:03:12 -07:00
c29fb540ff [gpt-oss] tool parser supports for /chat/completions [1/n] (#22386)
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2025-09-04 20:39:12 -07:00
65e038931d [Frontend] Skip unnecessary detokenization when token_id is requested (#24236)
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2025-09-04 23:04:12 +00:00
886ccbe5ba [CI/Build] Reduce the number of redundant cases to test for LoRA (#24276)
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2025-09-04 21:58:44 +00:00
adc3ddb430 [Bugfix][Misc] Fix silu_and_mul_nvfp4_quant issue and extract common utils for nvfp4 kernel source files (#23727)
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2025-09-04 14:25:45 -07:00
60b755cbcb [Misc] Have AsyncLLM custom_stat_loggers extend default logger list (#20952)
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2025-09-04 14:25:30 -07:00
482e52f56c QWEN3 Coder Fused MoE kernels Optimization configs (#24266)
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2025-09-04 20:33:43 +00:00
78336a0c3e Upgrade FlashInfer to v0.3.0 (#24086)
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2025-09-04 09:49:20 -07:00
94866d7c93 [Misc] Slight improve deepgemm print (#24085)
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2025-09-04 16:06:51 +00:00
83609ca91d [Doc]: fix typos in Python comments (#24173)
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2025-09-04 08:52:17 -07:00
e41a0fa377 [Perf] Freeze core engine proc heap after init (#24008)
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2025-09-04 22:55:23 +08:00
37241077d5 [Misc] Removed force_fp8_e4m3fnuz from FP8LinearOp (#23725)
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2025-09-04 09:25:40 -04:00
c9f7081f9c [LoRA]: Add lora support to qwen-2.5-omni (#24231) 2025-09-04 05:50:50 -07:00
16ded21eeb [XPU] support Triton Attention backend on Intel GPU (#24149)
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2025-09-04 20:41:08 +08:00
2b30afa442 Use hidden_size_per_head as head_size fallback (#24221)
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2025-09-04 12:59:16 +01:00
eafa8dcde6 [Model] Add pp support for hunyuan (#24212)
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2025-09-04 03:58:26 -07:00
6c7af8110a [Doc] Update vLLM Singapore Meetup info (#24234)
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2025-09-04 02:58:18 -07:00
8f423e5f43 [Feature][Response API] Add streaming support for non-harmony (#23741)
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2025-09-04 17:49:06 +08:00
369a079568 [Hardware][Apple-CPU] Disable OneDNN build for Apple Silicon (#24200)
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2025-09-04 02:48:25 -07:00
402759d472 [Attention] FlashAttn MLA (#14258)
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2025-09-04 02:47:59 -07:00
2c301ee2eb [Bugfix] Fix Incremental Detokenization with tokenizers == 0.22.0 (#24159)
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2025-09-04 02:47:08 -07:00
whx
3efb9f4d95 [Attention][Platform] Refactor MLA to support Custom Op (#23332)
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2025-09-04 02:46:37 -07:00
04f3c35cff Improve flexibility of auto_tune.sh execution. (#23766)
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2025-09-04 09:41:41 +00:00
51d5e9be7d [Core][Model] Terratorch backend integration (#23513)
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2025-09-04 00:22:41 -07:00
e7fc70016f [Model] Add MiDashengLM model support (#23652)
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2025-09-04 00:08:09 -07:00
12e1e63cc5 [Misc] Enhance output readability of helper script (#24214)
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2025-09-04 06:38:26 +00:00
57b1ce94f7 [CPU] Refactor CPU unquantized linear (#24150)
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2025-09-04 14:28:45 +08:00
cb55ad86fe Migrate ultravox inputs to TensorSchema (#23503)
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2025-09-04 06:09:11 +00:00
712b273f65 [Refactor] Introduce basic Renderer for completion-style request (#24010)
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2025-09-04 05:21:12 +00:00
e919d6f549 [Kernel][Bugfix] Fix grouped topk cu (#24146)
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2025-09-04 12:37:37 +08:00
a38f8bd54c [Feature][Responses API]Support MCP tools with streaming mode + background mode (#23927)
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2025-09-04 04:05:10 +00:00
b5ee1e3261 Remove deprecated PyNcclConnector (#24151)
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2025-09-03 22:49:16 +00:00
36c260dad6 [Feature][gpt-oss] Add support for num_cached_tokens and num_reasoning_tokens tracking (#23460)
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2025-09-03 21:08:47 +00:00
a43a3f1770 [Bugfix][DP] DP distribution does not require ray[default] (#23822)
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2025-09-03 13:21:36 -07:00
6adaed42f4 [Feature][P/D]: Optimize NIXL Connector xfer Launch (#23887)
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2025-09-03 19:14:30 +00:00
a742322092 [Attention] Blackwell FP8 MLA support with CUTLASS_MLA backend (#23289)
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2025-09-03 14:05:24 -04:00
731a6940e3 Migrate whisper inputs to TensorSchema (#23505)
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2025-09-03 18:04:00 +00:00
e9b92dcd89 [Kernels] Overlap shared experts with send/recv (#23273)
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2025-09-03 12:35:18 -04:00
fa4311d85f [V1] v1 engine + full CUDA graph support for PLaMo2 (#23998)
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2025-09-03 08:24:02 -07:00
6d80ae83e1 [Bugfix] Fixing division by zero in triton_attn if query_heads/kv_heads > 16 (#23424)
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2025-09-03 15:01:09 +00:00
4ba0c587ba FIX: Add libnuma-dev to Dockerfile for dev stage (#20388)
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2025-09-03 07:17:20 -07:00
6997a25ac6 [Model] Remove useless code from MiniMax implementation (#23982)
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2025-09-03 11:27:04 +00:00
28f350e147 Support add_generation_prompt in embeddings endpoint with chat request (#23931)
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2025-09-03 10:47:55 +00:00
51383bd472 [CI] Accelerate mteb test by setting SentenceTransformers mteb score to a constant (#24088)
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2025-09-03 17:23:56 +08:00
9c99e4871f [Misc] Clean up deadcode for legacy processing pipeline (#24153)
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2025-09-03 08:34:29 +00:00
70549c1245 [CI/Build] Serve images used by multimodal tests through local HTTP Server (#23907)
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2025-09-03 16:13:11 +08:00
f0c503f66e [Nixl] Heterogeneous TP support FlashInfer (#20189)
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2025-09-03 15:19:54 +08:00
f38035c123 [distributed][rl] remove nccl cumem env var override (#24141)
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2025-09-03 06:45:25 +00:00
426cc8629f [BugFix] Fix routed_scaling_factor double mul for dots1 and glm4 MoE models (#24132)
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2025-09-03 04:57:59 +00:00
e81d4e69c1 [Misc] Add check for dual_chunk_attention (#24070)
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2025-09-03 04:19:14 +00:00
02d411fdb2 [Doc]: fix typos in Python comments (#24115)
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2025-09-02 21:14:07 -07:00
d7e1e59972 [Doc]: fix typos in Python comments (#24093)
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2025-09-02 21:05:45 -07:00
c4ed78b14f [Compile] Fix Compile Warning for w4a8_mm_entry.cu (#23660)
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2025-09-02 20:45:52 -07:00
1bd007f234 fix some typos (#24071)
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2025-09-02 20:44:50 -07:00
136d853e65 [V1] Wrapper which plumbs request-level logits processors into vLLM batch-level logits processing (#23656)
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2025-09-03 02:52:51 +00:00
e32a0e8678 Upgrade xgrammar to 0.1.23 (#22988)
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2025-09-03 02:32:59 +00:00
42dc59dbac Update release pipeline post PyTorch 2.8.0 update (#24073)
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2025-09-03 10:09:19 +08:00
862f2ef893 [XPU] Fix the bug of LoRA logits on the XPU platform (#24081)
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2025-09-03 08:21:18 +08:00
2fd1a40a54 [CI/Build] Disable SiluMul NVFP4 quant fusion tests (#24121)
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2025-09-02 16:50:28 -07:00
930a24144c [Bug] R1 Accuracy: Fix routed_scaling_factor Double Mul Issue (#24119)
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2025-09-02 22:22:30 +00:00
457e471971 [AMD][Kernel][Bugfix] Cast offsets tensor bn to tl.int64 to avoid GPU segfault (#23692)
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2025-09-02 22:13:57 +00:00
d328f7894f [CI] Enable all hf transformers baselines in test_hybrid (#23936)
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2025-09-02 20:15:06 +00:00
98aee612aa [Log] Only Print Profiler Results on Rank 0 (#23370)
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2025-09-02 18:53:34 +00:00
598bd74cf8 Fix weights loading for Apertus (#24100)
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2025-09-02 18:34:28 +00:00
2417798471 [Metrics] Deprecate TPOT in favor of ITL (#24110)
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2025-09-02 18:10:10 +00:00
9480ae24e3 [Bugfix] Fix packed_factor missing attribute error (#23902)
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2025-09-02 10:56:31 -07:00
f399182e8c Run ruff format on a few files. (#24075)
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2025-09-02 17:55:32 +00:00
1c41310584 [Bugfix] Fix transform_config parsing in Compressed Tensors (#23945)
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2025-09-02 13:54:10 -04:00
c83c4ff815 [Benchmark] Add support for local hf dataset path in benchmark (#23999)
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2025-09-02 17:49:16 +00:00
0e1759cd54 [docs] add SYS_NICE cap & security-opt for docker/k8s (#24017)
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2025-09-02 17:27:20 +00:00
e66ed3e675 [CI Failure] Skip failing nvfp4 silu test (#23959)
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2025-09-02 13:18:15 -04:00
e0653f6c0b [Model] Classification models support logit_bias / sigmoid_normalize (#24031)
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2025-09-02 16:48:57 +00:00
38ba061f6f [BugFix] Fix EXAONE4 rotary embeddings (#23918)
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2025-09-02 14:40:55 +00:00
0a74e9d0f2 [Gemma3n] Fix audio batching (#24052)
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2025-09-02 22:23:35 +08:00
8bd5844989 correct LWS deployment yaml (#23104)
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2025-09-02 12:04:59 +00:00
ce30dca5c4 [CI]: reduce HTTP calls inside entrypoints openai tests (#23646)
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2025-09-02 10:49:32 +00:00
2f0bab3f26 [Model] Support dp on ViT on GLM-4.5V (#23168)
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2025-09-02 10:48:18 +00:00
fad73be1a5 [Doc]: fix typos in Python comments (#24077)
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2025-09-02 02:38:55 -07:00
56d04089ef Migrate Interns1 inputs to TensorSchema (#23510)
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2025-09-02 04:35:45 +00:00
7be0cb8e9e [XPU][Feature] fp8 online quantization support for XPU (#23148)
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2025-09-02 04:06:53 +00:00
1fa1d6a9a0 Migrate OvisImagePatchInputs to TensorSchema (#22024)
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2025-09-02 12:01:36 +08:00
d59c986444 Remove runtime checks based on pooling params (#24051)
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2025-09-02 11:54:37 +08:00
04d0c60770 [Bugfix] Fix the issue that Blip2ForConditionalGeneration' object has… (#24028)
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2025-09-02 11:54:20 +08:00
2b41cbbf03 [V1][Mamba1] - FP32 SSM Kernel Support (#23506)
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2025-09-01 20:53:00 -07:00
0235103cbb [Doc]: fix typos in Python comments (#24042)
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2025-09-01 19:07:45 -07:00
a344a5aa0a [bugfix]fix MTP hidden states (#24056)
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2025-09-01 21:09:37 +00:00
5685370271 [Chore][V0 Deprecation] Move LogProb to a separate file (#24055)
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2025-09-01 12:07:53 -07:00
a0e0efd6bd [Model] Support DP for ViT on Kimi-VL-A3B-Thinking-2506 (#23817)
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2025-09-01 16:56:56 +00:00
cf91a89dd2 [docs][misc] IOProcessor plugins fixes (#24046)
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2025-09-01 09:17:41 -07:00
39a22dcaac [Misc] Minor code simplification for spec decode (#24053)
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2025-09-01 08:54:01 -07:00
41c80698b3 Document multi-proc method selection for profiling (#23802)
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2025-09-01 06:28:26 -07:00
7c8271cd1e [Model]: support KeyeVL-1_5-8B (#23838)
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2025-09-01 03:50:27 -07:00
3e330fcb21 [Doc]: Fix CPU install docs: force torch-backend=cpu to avoid GPU torchvision errors (#24033)
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2025-09-01 03:34:52 -07:00
d46934b229 [Frontend] Gemma3n audio transcriptions/translations endpoint (#23735)
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2025-09-01 18:07:46 +08:00
107284959a [Doc]: fix typos in Python comments (#24026)
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2025-09-01 09:38:20 +00:00
dc1a53186d [Kernel] Update DeepGEMM to latest commit (#23915)
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2025-09-01 02:38:04 -07:00
55602bb2e6 [Frontend] Update the warning log when using VLLM_ALLOW_LONG_MAX_MODEL_LEN (#20904)
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2025-09-01 08:50:25 +00:00
d7fbc6ddac [Misc] Enable V1 FP16 inference on pre-Ampere GPUs (#24022)
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2025-09-01 08:12:22 +00:00
5438967fbc [Misc] add hash_function doc string (#24014)
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2025-08-31 23:11:20 -07:00
422e793fa6 [Bugfix] Add support for <tool_call> format in streaming mode for XLAM Tool Parser (#22769)
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2025-09-01 14:07:54 +08:00
1cb39dbcdd [Misc] IO Processor plugins for pooling models (#22820)
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2025-08-31 23:07:12 -07:00
437c3ce026 Migrate Phi4 inputs to TensorSchema (#23471)
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2025-09-01 14:05:59 +08:00
499b074bfd [Misc] refactor code by import as for torch._inductor.config (#23677)
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2025-09-01 14:05:42 +08:00
ff0e59d83a [CI/Build] Improve Tensor Schema tests speed by avoid engine core initialization (#23357)
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2025-08-31 22:52:20 -07:00
b55713683c [Misc] Move fast prefill logic to separate method (#24013)
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2025-09-01 05:40:38 +00:00
acc1a6e10a Fix the bug related to loading GPTP INT3 weights. (#23328)
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2025-09-01 05:39:57 +00:00
8c742a66d1 [Misc] Avoid redundant copy for encoder-only models (#24012)
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2025-09-01 04:02:43 +00:00
183a70967a [BUGFIX] GPTQ quantization compatibility for Qwen3 MOE models (AutoGPTQ and AutoRound-GPTQ) (#23994)
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2025-09-01 03:33:40 +00:00
14b4326b94 v1: Support KV events from connectors (#19737)
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2025-09-01 01:13:21 +00:00
752d2e1c36 [Minor] Fix some random typos in comments (#24009)
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2025-08-31 16:42:17 -07:00
81eea3d348 vllm fix check on max vocab size (#22471)
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2025-08-31 20:57:05 +08:00
9701352e4b [Doc]: fix typos in Python comments (#24001)
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2025-08-31 08:21:59 +00:00
749be00a98 [Core][Multimodal] Allow passing multi_modal_uuids as multimodal identifiers. (#23394)
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2025-08-30 18:01:22 -07:00
5b8077b8ac Fix wrong truncate_prompt_tokens type hint (#22761)
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2025-08-30 20:39:38 +00:00
038e9be4eb [LoRA] Much faster startup when LoRA is enabled (#23777)
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2025-08-30 15:37:39 +00:00
68a349114f [Misc] enhance type hint for rearrange return value (#23519)
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2025-08-30 06:43:33 -07:00
e80bca309e [Refactor] refactor freezing_value/cuda_event initialize outside try finally (#23758)
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2025-08-30 06:42:25 -07:00
fb4983e112 [Misc] add reorder_batch AttentionMetadataBuilder (#23798)
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2025-08-30 06:41:45 -07:00
379ea2823a Add LoRA support for DeepSeek models (V2, V3, R1-0528) (#23971)
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2025-08-30 06:40:02 -07:00
3a6acad431 [Model] Enable encoder DP for MiniCPM-V (#23948)
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2025-08-30 06:31:26 -07:00
5490d633ce [UT] fix unify_kv_cache_configs when kv cache config needs sort (#23843) 2025-08-30 11:22:14 +00:00
628d00cd7b [Bugfix] Fix test_lora_resolvers.py (#23984)
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2025-08-30 11:16:11 +00:00
4071c76cf3 [V1] [Hybrid] Move MiniMaxLinearAttention into layers/mamba (#23831)
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2025-08-30 00:16:15 -07:00
f1bddbd852 [Core] Cleanup TPU model runner for MM (#23894)
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2025-08-30 00:14:58 -07:00
9748c5198b [CI] Fix broken compile tests due to unsupported SiluMul+Nvfp4Quant fusion (#23973)
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2025-08-30 00:14:43 -07:00
ee52a32705 [CI] Move testing image from remote URL to S3 (#23980)
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2025-08-29 21:41:25 -07:00
8fb85b7bb6 Add routed_scaling_factor to MoE grouped topk (#23123)
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2025-08-29 21:36:48 -07:00
5b31cb1781 [Bugfix] Fix --config arg expansion called from api_server.py (#23944)
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2025-08-29 21:36:39 -07:00
d660c98c1b [CI] Fix unavailable image remote URL (#23966)
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2025-08-29 15:40:04 -07:00
5674a40366 [Misc] Make download_weights_from_hf more reliable (#23863)
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2025-08-29 12:37:24 -07:00
8c3e199998 Revert gemma3n fast prefill changes (#23897)
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2025-08-29 12:16:57 -07:00
1c26b42296 [Docs] [V1] [Hybrid] Add new documentation re: contributing mamba-based models (#23824)
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2025-08-29 18:47:58 +00:00
b7adf94c4a Tuned H100/H200 triton fp8 block configs for fused_qkv_a_proj (#23939)
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2025-08-29 10:28:35 -07:00
4d7fe40fc0 [RL][BugFix] Fix missing tokenizer error for token-in-token-out (#23904)
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2025-08-30 01:09:55 +08:00
0dc9532065 [BUGFIX ] fix undefined silu_and_mul_nvfp4_quant (#23929)
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2025-08-29 09:36:39 -07:00
72a69132dc [CI] Add aiter to matching list of issue auto labeller for rocm tag (#23942)
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2025-08-29 15:29:21 +00:00
d90d8eb674 [BugFix] Async scheduling and PP compatibility with DP (#23770)
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2025-08-29 08:17:27 -07:00
0a2f4c0793 [Models] Use in-place adds in Idefics2Vision (#23932)
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2025-08-29 07:42:57 -07:00
1cf3753b90 [MODEL] Apertus and XIELU (#23068)
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2025-08-29 20:29:18 +08:00
4f7cde7272 Adds json_count_leaves utility function (#23899)
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2025-08-29 05:28:13 -07:00
67c14906aa Update PyTorch to 2.8.0 (#20358)
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2025-08-29 18:57:35 +08:00
69f46359dd [Multimodal] Consolidate mm inputs into MultiModalFeatureSpec (#23779)
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2025-08-29 18:36:57 +08:00
d9e00dbd1f [Performance] V1 Classify Models E2E Performance Optimization (#23541)
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2025-08-29 03:12:32 -07:00
ad39106b16 [CPU] Enable data parallel for CPU backend (#23903)
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2025-08-29 02:19:58 -07:00
2554b27baa [V0 Deprecation] Remove pooling model support in V0 (#23434)
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2025-08-29 00:04:02 -07:00
934bebf192 Better errors for Transformers backend missing features (#23759)
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2025-08-29 07:01:40 +00:00
885ca6d31d [Misc] Fix warnings for mistral model (#23552)
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2025-08-29 06:58:48 +00:00
2d0afcc9dc [mrope][Qwen2-VL] Fix edge case where getting index of image/video token can potentially throw in default vl mrope implementation. (#23895)
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2025-08-28 23:29:13 -07:00
b4f9e9631c [CI/Build] Clean up LoRA test (#23890)
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2025-08-28 23:28:35 -07:00
05d839c19e Fix(async): Add support for truncate_prompt_tokens in AsyncLLM (#23800) 2025-08-28 22:55:06 -07:00
6597d7a456 [Platform] import activation_quant_fusion for CUDA only (#23882)
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2025-08-28 22:54:16 -07:00
5264015d74 [BugFix][AMD][Deepseek] fix a dtype mismatch error for deepseek running on AMD (#23864)
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2025-08-28 22:54:12 -07:00
98ac0cb32d [Bugfix] Use ReplicatedLinear for SequenceClassification head (#23836)
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2025-08-29 04:41:20 +00:00
c8b3b299c9 [tests] Improve speed and reliability of test_transcription_api_correctness (#23854)
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2025-08-29 04:25:33 +00:00
006477e60b [ROCm][Fix] Fix rocm build caused by #23791 (#23847)
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2025-08-28 19:52:27 -07:00
de533ab2a1 [Models] Improve iteration over layers (#19497)
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2025-08-29 09:26:34 +08:00
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d3da2eea54 [Doc]: fix typos in Python scripts (#23828)
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142ac08030 [Frontend] Optimize beam search performance by limiting concurrency (#23599)
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3210264421 [Frontend] Add --log-error-stack to print stack trace for error response (#22960)
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2025-08-27 04:58:59 +00:00
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Wei
fecbb7c782 [Bugfix][gpt-oss] passing the cache config in gpt-oss (#23613)
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2025-08-26 18:47:08 -07:00
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2025-08-26 18:23:26 -07:00
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c7c80af084 fix pynccl reduce_scatter (#23648)
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2025-08-26 18:21:11 -07:00
6891205b16 [Feature][Responses API] Support MCP tool in background mode (#23494)
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2025-08-26 18:06:10 -07:00
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2025-08-27 00:29:52 +00:00
714872f1a9 [Compile] Fix Cmake Warning (#23689)
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2025-08-26 23:48:32 +00:00
5f1af97f86 [V1] [Hybrid] Enable Full CUDA graph by default for hybrid models in V1 (#22594)
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2025-08-26 22:56:16 +00:00
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2025-08-26 22:26:46 +00:00
2f13319f47 Enhance the pre-notification policy (#23532)
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2025-08-26 20:41:36 +00:00
d696f86e7b [doc] Hybrid KV Cache Manager design doc (#22688)
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2025-08-26 20:19:05 +00:00
9816b81f5f [Model] Enable video support for InternVL3.5 models (#23658)
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2025-08-26 19:46:52 +00:00
c37c0af990 [Misc] Fix comments in tests/kernels/quantization (#23675)
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2025-08-26 19:31:20 +00:00
9715f7bb0f [Bugfix] Fix incorrect original shape in hashing (#23672)
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2025-08-26 19:01:25 +00:00
98aa16ff41 [v1] Add cross-attention KV cache support for encoder-decoder models (#23664)
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227e231b55 [Docs] [V1] [Hybrid] Update docs to remove FlashInfer constraint for hybrid models (#23665)
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2025-08-26 18:33:16 +00:00
730d0ac8b9 [Docs] Fix warnings in mkdocs build (#23649)
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2025-08-26 18:19:23 +00:00
9b0187003e [Bugfix] Fix cuda event usage with CPU model runner (#23643)
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2025-08-26 17:10:42 +00:00
44ac25eae2 [CI] [Doc]: Add GH Action for auto labeling issues with rocm tag (#20988)
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2025-08-26 16:20:13 +00:00
7ea22e42d5 [Misc] Add override for allreduce fusion thresholds (#23639)
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2025-08-26 15:53:04 +00:00
9d4183dd2e [model] support qwen2audio embedding input (#23625)
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2025-08-26 23:48:08 +08:00
513298f1b4 [Bugfix] fix bf16 multimodal model hash (#23623)
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2025-08-26 23:47:50 +08:00
379f828fba [Docs] Reduce requirements for docs build (#23651)
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2025-08-26 15:43:28 +00:00
1fdc732419 [ROCm] Starting to add AMD code reviewers for ROCm components (#23496)
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2025-08-26 07:32:37 -07:00
f58675bfb3 [CPU] add cpu fused moe pytorch native implementation (#23146)
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2025-08-26 14:09:17 +00:00
7c04779afa [Doc]: fix various spelling issues in multiple files (#23636)
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2025-08-26 14:05:29 +00:00
f66673a39d [Kernel] Added flashinfer fp8 per-tensor gemms (#22895)
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2025-08-26 06:54:04 -07:00
b78bed1bc5 [Hardware][Mac] Fix the installation fail for Apple Silicon (CPU) (#23565)
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2025-08-26 13:04:25 +00:00
164b2273c8 [Docs] Fix broken links to docs/api/summary.md (#23637)
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2025-08-26 13:00:18 +00:00
2b4fc9bd9b Support FlashAttention Backend for Hybrid SSM Models (#23299)
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2025-08-26 12:41:52 +00:00
ebd5a77bb5 feat: add usage to TranscriptionResponse (text and json response_format) (#23576)
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2025-08-26 05:26:26 -07:00
384dd1b0a8 [Bugfix] Add missing enable_log_outputs parameter to init_app_state function (#23634)
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2025-08-26 12:13:15 +00:00
fdeb3dac13 [Model] fix DeepSeek e_score_correction_bias dtype to fp32 (#23640)
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2025-08-26 20:09:47 +08:00
d52358c1e0 [Perf] Remove duplicated NVFP4 blockscales to save memory (#23379)
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2025-08-26 19:16:33 +08:00
6ace2f72b0 Fix writing benchmark results with tuple keys (#23633)
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2025-08-26 19:16:09 +08:00
b00e69f8ca Fix nits from #20059 (#23548)
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2025-08-26 03:27:20 -07:00
50fede6634 [V1] Enable V1 for compute capability < 8.0 + FP32 (#23614)
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2025-08-26 03:00:18 -07:00
b5d34af328 [Bugfix] Fix scheduling when repeated images in one request (#23544)
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2025-08-26 09:46:28 +00:00
9b5f64238f [Bugfix] Fix Qwen25VL packed_modules_mapping (#23604)
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2025-08-26 01:09:14 -07:00
ff77764f86 Fix CLI parameter documentation inconsistency in pooling_models.md (#23630) 2025-08-26 01:05:37 -07:00
bfc1edc9f5 [Docs] Fix titles for multi-file examples that are rendered in the docs (#23573)
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2025-08-26 00:16:44 -07:00
3ecbb14b81 [Benchmarks] add benchmark for embedding models (#23000)
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2025-08-25 23:57:08 -07:00
7d67a9d9f9 [mypy] Fix incorrect type hint for EAGLE3 support (#23617)
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2025-08-25 23:50:17 -07:00
959783fb99 [fix] fix seed-oss-parser (#23560)
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2025-08-25 23:16:36 -07:00
ce0e9dbd43 [CI/Build] Fix typo in #23561 (#23616)
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2025-08-25 23:13:03 -07:00
b395b3b0a3 [Disagg][Perf] Use CUDA event sync instead of blocking tolist to avoid unintentional copy ops blocking across different CUDA streams, improving disagg TTIT/TTFT (#22760)
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2025-08-25 21:06:00 -07:00
6fad29b11b Remove graph_pool as member of VllmBackend and argument to CUDAGraphWrapper (#23385)
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2025-08-25 19:34:15 -07:00
6fd45e7b8a [CI/Build] Use vLLM client's user agent to fetch images (#23561)
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2025-08-25 19:34:12 -07:00
56dcf4e7e9 [Bug] Fix DeepGEMM Env Control (#23591)
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2025-08-25 18:41:21 -07:00
ae067888d6 Update Flashinfer to 0.2.14.post1 (#23537)
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2025-08-25 18:30:44 -07:00
906e461ed6 [CI Fix] Pin deepep and pplx tags in tools/ep_kernels/, gate multigpu tests (#23568)
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2025-08-25 18:29:00 -07:00
2a97ffc33d [Misc] Add release note draft to PR template (#23598)
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2025-08-25 16:44:51 -07:00
efc88cf64a [Misc] Simplify FlashInfer attention metadata (#23585)
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2025-08-25 15:42:29 -07:00
7b6a837275 [Docs] Update Documentation of Cohere Command-A Models (#23584)
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2025-08-25 21:53:52 +00:00
c34c82b7fe [TPU][Bugfix] Fixes prompt_token_ids error in tpu tests. (#23574)
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2025-08-25 14:29:16 -07:00
8a044754bd [XPU] Delay BF16 check to worker init for spawn compatibility (#22979)
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2025-08-25 13:09:26 -07:00
9188ae7cb5 [Bugfix][V1][P/D]Fix the issue where repeated requests for the same input produce abnormal outputs for P2pNcclConnector (#23403)
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2025-08-25 12:57:08 -07:00
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2025-08-25 11:47:52 -07:00
2a167b2eeb [test][RL] Add sleep level 2 test and fix reload with sleep mode (#23521)
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2025-08-26 00:25:52 +08:00
0ff902f3b4 [Refactor] Refactor persistent buffers with CpuGpuBuffer (#23515)
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2025-08-25 08:44:48 -07:00
a9082a4d14 [Bugfix] Fix Qwen3 MoE GPTQ inference (#23490)
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2025-08-25 06:40:20 -07:00
e0329ed4b4 Updates to Flex + VLLm integration (#21416)
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2025-08-25 09:32:42 -04:00
6879cd80ae [Refactor] Pass tokenizer explicitly instead of binding to prompt update (#23542)
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2025-08-25 06:31:57 -07:00
e269be2ba2 [Doc] Add caution for API server scale-out (#23550)
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2025-08-25 06:14:15 -07:00
5c4b6e66fe [Attention] Unify mamba and attention backend selection (#23171)
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2025-08-25 09:09:36 +00:00
d0a4a3f645 [misc] add shanghai meetup (#23535)
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2025-08-25 17:00:03 +08:00
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2025-08-25 08:34:54 +00:00
0cb7b065c3 Feature/benchmark/random mm data/images (#23119)
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2025-08-25 01:28:35 -07:00
2da02dd0d8 [Fix] DeepSeek V3.1 tool parser error message (#23492)
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2025-08-25 00:56:39 -07:00
d765cf01fe [Core][Multimodal] Track encode cache entries by mm_hash and enable embedding sharing between requests (#22711)
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2025-08-25 00:41:17 -07:00
712d0f88d8 [Refactor] Dynamic target and content for prompt updates (#23411)
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2025-08-24 23:39:58 -07:00
49ab23b3cc [gpt-oss] use reasoning channel for reasoning text in serving_chat (#22920)
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2025-08-25 06:29:34 +00:00
c9abb10489 [Bugfix] Fix Dense module loading for sentence-transformers embedding models (simplified V2) (#23408)
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2025-08-25 05:39:24 +00:00
787cdb3829 Migrate DonutImagePixelInputs to TensorSchema (#23509)
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2025-08-25 05:02:15 +00:00
a5203d04df Migrate skyworkr1v inputs to TensorSchema (#23499)
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2025-08-25 04:43:21 +00:00
99f8094400 Migrate tarsier inputs to TensorSchema (#23500)
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2025-08-25 04:42:36 +00:00
170e8ea9ea [Misc] Unified linear print info (#23516)
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2025-08-24 20:13:51 -07:00
a71e4765cc [Bugfix] Fix Qwen2.5-VL quantized model weights loading (#23512)
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2025-08-25 10:40:22 +08:00
39971db3aa Frontend: Adding LM Format Enforcer support to V1 engine (#22564)
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2025-08-24 19:31:22 -07:00
504d914314 [Perf] Add Triton config for DeepSeek V3 FP8 EP32 H200 (#23504)
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2025-08-24 18:06:35 -07:00
47455c424f [Doc: ]fix various typos in multiple files (#23487)
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2025-08-25 00:04:04 +00:00
c7fc6b1354 fix incompatibililty with non cuda platform for nvfp4 (#23478)
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2025-08-24 15:35:41 -07:00
ad78868450 [Misc] Remove unused slot_mapping buffer (#23502)
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2025-08-24 14:03:36 -07:00
e2db1164a1 [Model] Enable BLOOM on V1 (#23488)
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2025-08-24 13:30:47 +00:00
416f05929a [New Model]Donut model (#23229)
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2025-08-24 12:52:24 +00:00
5e021b4981 (Misc): add missing test for zero truncation size. (#23457)
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2025-08-24 18:12:47 +08:00
1b9b16649c [Misc] update dict parse to EPLBConfig from json dumps to dict unpacking (#23305)
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2025-08-24 08:06:34 +00:00
e76e233540 [kernel] Support W4A8 on Hopper (#23198)
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2025-08-24 06:18:04 +00:00
a75277285b Migrate Paligemma inputs to TensorSchema (#23470)
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2025-08-24 04:56:56 +00:00
9dc30b7068 [Bugfix] Add strong reference to CUDA pluggable allocator callbacks (#23477)
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2025-08-24 12:56:17 +08:00
053278a5dc Migrate Pixtral inputs to TensorSchema (#23472)
Signed-off-by: Benji Beck <benjibeck@meta.com>
2025-08-24 04:55:53 +00:00
c55c028998 [gpt-oss] Streaming Output for Python Tool (#23409)
Signed-off-by: zjy0516 <riverclouds.zhu@qq.com>
2025-08-24 04:42:38 +00:00
65197a5fb3 [Misc] Modify CacheConfig import (#23459)
Signed-off-by: Jee Jee Li <pandaleefree@gmail.com>
2025-08-23 06:05:27 +00:00
b8f17f5d98 Support DeepSeek-V3.1 tool call (#23454)
Signed-off-by: Xu Wenqing <xuwq1993@qq.com>
2025-08-23 05:50:16 +00:00
d9a55204ba fix(tests): Correct unreachable assertion in truncation test (#23425)
Signed-off-by: AzizCode92 <azizbenothman76@gmail.com>
2025-08-23 05:23:54 +00:00
b4e9fd811f Revert "[PERF] Use faster way of decode in tokenizer: avoid useless list-to-list conversion (#20000)" (#23396)
Signed-off-by: DarkLight1337 <tlleungac@connect.ust.hk>
2025-08-23 04:16:48 +00:00
308fa287a8 Add glm4.5v tp2,4 fp8 config on H100_80GB (#23443)
Co-authored-by: Chenxi Yang <cxyang@meta.com>
2025-08-23 02:54:19 +00:00
fa78de9dc3 Quantization: support FP4 quantized models on AMD CDNA2/CDNA3 GPUs (#22527)
Signed-off-by: feng <fengli1702@gmail.com>
Signed-off-by: Michael Goin <mgoin64@gmail.com>
Co-authored-by: Michael Goin <mgoin64@gmail.com>
2025-08-22 20:53:21 -06:00
f6818a92cb [UX] Move Dockerfile DeepGEMM install to tools/install_deepgemm.sh (#23360)
Signed-off-by: mgoin <mgoin64@gmail.com>
2025-08-22 20:52:50 -06:00
23c939fd30 [Model] Support DP for ViT on MiniCPM-V-4 (#23327)
Signed-off-by: ycyaw66 <497410282@qq.com>
Co-authored-by: ycyaw66 <497410282@qq.com>
2025-08-23 02:14:41 +00:00
add1adfec7 [BugFix] Fix MinPLogitsProcessor.update_states() (#23401)
Signed-off-by: Nick Hill <nhill@redhat.com>
2025-08-23 08:22:11 +08:00
c80c53a30f [BugFix] Fix batch updates for pooling models (#23398)
Signed-off-by: Nick Hill <nhill@redhat.com>
2025-08-23 08:20:41 +08:00
24d0c9e6ed [NVIDIA][torch.compile] Support Flashinfer TRTLLM FP8-q/kv NVFP4-out Attention Kernel (#22703)
Signed-off-by: elvischenv <219235043+elvischenv@users.noreply.github.com>
Co-authored-by: Luka Govedič <ProExpertProg@users.noreply.github.com>
2025-08-22 22:09:05 +00:00
cc7ae5e7ca [BugFix][AMD][Quantization] Fix torch.compile issue where wvSplitKQ not being called when it should when using quantized FP8 model (#22281)
Signed-off-by: Randall Smith <Randall.Smith@amd.com>
2025-08-22 21:47:57 +00:00
0313cf854d [PERF] PyTorch Symmetric Memory All-Reduce (#20759)
Signed-off-by: ilmarkov <imarkov@redhat.com>
Signed-off-by: ilmarkov <markovilya197@gmail.com>
Signed-off-by: Michael Goin <mgoin64@gmail.com>
Co-authored-by: ilmarkov <imarkov@redhat.com>
Co-authored-by: Michael Goin <mgoin64@gmail.com>
2025-08-22 15:39:08 -06:00
0483fabc74 [CI/Build] add EP dependencies to docker (#21976)
Co-authored-by: Simon Mo <simon.mo@hey.com>
2025-08-22 13:34:40 -07:00
da65bec309 add an env var for path to pre-downloaded flashinfer cubin files (#22675) 2025-08-22 19:25:45 +00:00
4645024d3a [Quantization] Allow GGUF quantization to skip unquantized layer (#23188)
Signed-off-by: Isotr0py <mozf@mail2.sysu.edu.cn>
2025-08-22 13:04:22 -06:00
cd7a3df26f [Bugfix] Fix broken Florence-2 model (#23426)
Signed-off-by: 汪志鹏 <wangzhipeng628@gmail.com>
Signed-off-by: Isotr0py <mozf@mail2.sysu.edu.cn>
Co-authored-by: 汪志鹏 <wangzhipeng628@gmail.com>
2025-08-22 17:50:52 +00:00
32d2b4064f [Model] Add Ovis2.5 PP support (#23405)
Signed-off-by: Isotr0py <mozf@mail2.sysu.edu.cn>
2025-08-22 17:46:34 +00:00
22cf679aad [Doc]: fix various typos in multiple files (#23179)
Signed-off-by: Didier Durand <durand.didier@gmail.com>
2025-08-22 10:38:46 -07:00
b6d7d34fc6 Add unit tests for batched guided and non-guided requests (#23389)
Signed-off-by: Yong Hoon Shin <yhshin@meta.com>
2025-08-22 10:31:24 -07:00
341923b982 fix(tests): Ensure reliable CUDA cache clearing in MoE test (#23416)
Signed-off-by: AzizCode92 <azizbenothman76@gmail.com>
Signed-off-by: Michael Goin <mgoin64@gmail.com>
Co-authored-by: Michael Goin <mgoin64@gmail.com>
Co-authored-by: gemini-code-assist[bot] <176961590+gemini-code-assist[bot]@users.noreply.github.com>
2025-08-22 17:20:59 +00:00
424fb7a5d2 [BugFix] Fix the issue where image embeddings were incorrectly split.… (#23366)
Signed-off-by: bppps <bpppsaka@gmail.com>
Co-authored-by: zouyu.zzx <zouyu.zzx@alibaba-inc.com>
Co-authored-by: bppps <bpppsaka@gmail.com>
2025-08-22 16:56:46 +00:00
88491c1b6b [Speculators][Speculative Decoding] Fix Qwen 2 Eagle3 Support (#23337) 2025-08-22 16:39:19 +00:00
613a23b57f [Bugfix]: Installing dev environment due to pydantic incompatible version (#23353)
Signed-off-by: Martin Hickey <martin.hickey@ie.ibm.com>
2025-08-22 16:22:29 +00:00
51a215300b [Fix] Bump triton version in rocm-build requirements (#21630)
Signed-off-by: Burkhard Ringlein <ngl@zurich.ibm.com>
2025-08-22 15:13:39 +00:00
ebe14621e3 [Bug fix] Dynamically setting the backend variable for genai_perf_tests in the run-nightly-benchmark script (#23375)
Signed-off-by: Naman Lalit <nl2688@nyu.edu>
2025-08-22 15:12:28 +00:00
325aa3dee9 [Misc] local import code clean (#23420)
Signed-off-by: Andy Xie <andy.xning@gmail.com>
2025-08-22 14:01:35 +00:00
a073be6d87 [Doc] Update the doc for log probs + prefix caching (#23399)
Signed-off-by: Chen Zhang <zhangch99@outlook.com>
Co-authored-by: gemini-code-assist[bot] <176961590+gemini-code-assist[bot]@users.noreply.github.com>
2025-08-22 13:20:39 +00:00
695e7adcd2 [misc] Remove outdate comment about runai_model_streamer (#23421)
Signed-off-by: carlory <baofa.fan@daocloud.io>
2025-08-22 13:08:53 +00:00
281710ef9a [Attention] Allow V1 flash_attn to support cross-attention (#23297)
Signed-off-by: Russell Bryant <rbryant@redhat.com>
2025-08-22 12:10:16 +00:00
808d2e9aa0 [Misc] Move M-RoPE init logic to _init_mrope_positions (#23422)
Signed-off-by: Woosuk Kwon <woosuk.kwon@berkeley.edu>
2025-08-22 03:07:22 -07:00
285178b3b8 [V0 Deprecation] Remove V0 LoRA test (#23418)
Signed-off-by: Jee Jee Li <pandaleefree@gmail.com>
2025-08-22 09:56:51 +00:00
88016c372a [Bugfix] Fix pooling models on CPU backend (#23392)
Signed-off-by: jiang1.li <jiang1.li@intel.com>
2025-08-22 09:47:17 +00:00
998720859c Migrate MiniCPMOAudioInputs to TensorSchema (#21847)
Signed-off-by: Benji Beck <benjibeck@meta.com>
Co-authored-by: gemini-code-assist[bot] <176961590+gemini-code-assist[bot]@users.noreply.github.com>
2025-08-22 16:43:29 +08:00
0ba1b54ac6 [gpt-oss] add input/output usage in responses api when harmony context is leveraged (#22667)
Signed-off-by: Guillaume Calmettes <gcalmettes@scaleway.com>
2025-08-22 08:32:24 +00:00
53415653ff [P/D][Nixl] Make kv cache register compatible with hybrid memory allocator (#23079)
Signed-off-by: sfeng33 <4florafeng@gmail.com>
2025-08-21 22:30:48 -07:00
17373dcd93 [Attention] Refactor AttentionMetadata Preparation for Encoder-only Models (#23154)
Signed-off-by: Chen Zhang <zhangch99@outlook.com>
2025-08-22 05:05:59 +00:00
5964069367 [New Model] Add Seed-Oss model (#23241)
Signed-off-by: jiabin.00 <jiabin.00@bytedance.com>
Signed-off-by: Jee Jee Li <pandaleefree@gmail.com>
Co-authored-by: Jee Jee Li <pandaleefree@gmail.com>
2025-08-22 04:58:10 +00:00
de9c085e17 [Misc] Add gemma3 chat template with pythonic-style function calling (#17149)
Signed-off-by: Philip Chung <philip.f.chung@gmail.com>
2025-08-21 21:06:50 -07:00
111692bb8c [CI] Add end-to-end V1 min_tokens test coverage (#22495)
Signed-off-by: Arjun Reddy <189282188+arjunbreddy22@users.noreply.github.com>
Co-authored-by: Arjun Reddy <189282188+arjunbreddy22@users.noreply.github.com>
2025-08-21 22:04:07 -06:00
394591e343 [Feature] Enable DeepGEMM Linear on B200; 1.5% E2E throughput improvement (#23351)
Signed-off-by: yewentao256 <zhyanwentao@126.com>
2025-08-21 21:01:08 -07:00
3ac849665d [CI/Build] Skip Idefics3 and SmolVLM generation test again (#23356)
Signed-off-by: Isotr0py <mozf@mail2.sysu.edu.cn>
2025-08-22 03:39:46 +00:00
0b9cc56fac Migrate MllamaImagePixelInputs to TensorSchema (#22020)
Signed-off-by: Benji Beck <benjibeck@meta.com>
Co-authored-by: Cyrus Leung <tlleungac@connect.ust.hk>
2025-08-22 11:28:49 +08:00
8896eb72eb [Deprecation] Remove prompt_token_ids arg fallback in LLM.generate and LLM.embed (#18800)
Signed-off-by: DarkLight1337 <tlleungac@connect.ust.hk>
2025-08-22 10:56:57 +08:00
19fe1a0510 [Kernel] Add FP8 support with FlashMLA backend (#22668)
Signed-off-by: Matthew Bonanni <mbonanni001@gmail.com>
2025-08-22 02:26:32 +00:00
480bdf5a7b [Core] Support custom executor qualname (#23314)
Signed-off-by: 22quinn <33176974+22quinn@users.noreply.github.com>
2025-08-22 09:40:54 +08:00
5368f76855 [Feature][Responses API] Support logprobs(non-stream) (#23319)
Signed-off-by: Kebe <mail@kebe7jun.com>
2025-08-21 23:09:16 +00:00
8ef6b8a38c Always use cache mounts when installing vllm to avoid populating pip cache in the image. Also remove apt cache. (#23270)
Signed-off-by: Valentyn Tymofieiev <valentyn@google.com>
2025-08-21 18:01:03 -04:00
3bbe11cc13 [Perf] Small optimizations for silu_mul_fp8_quant_deep_gemm (#23265)
Signed-off-by: mgoin <mgoin64@gmail.com>
2025-08-21 17:56:15 -04:00
c5041f899f [CI] improve pr comments bot (#23380) 2025-08-21 14:49:03 -07:00
8b5fe6eb51 [CI] Clean up actions: remove helm, publish workflows and improve pr … (#23377) 2025-08-21 14:29:04 -07:00
800349c2a5 [Structured Outputs] Refactor bitmask construction into get_grammar_bitmask (#23361)
Signed-off-by: Woosuk Kwon <woosuk.kwon@berkeley.edu>
2025-08-21 20:53:33 +00:00
044931f97b Make sure that vectorize_with_alignment produced vectorized global loads (#23182) 2025-08-21 20:06:54 +00:00
1d353b6352 [Core] Always use tensor cores for Flashinfer Decode Wrapper (#23214)
Signed-off-by: Pavani Majety <pmajety@nvidia.com>
2025-08-21 16:02:11 -04:00
3496274663 [Misc] Convert VLLM_TORCH_PROFILER_DIR path to absolute (#23191)
Signed-off-by: Andy Xie <andy.xning@gmail.com>
2025-08-21 15:49:09 -04:00
8a19303173 [BugFix][gpt-oss] Fix Chat Completion with Multiple Output Message (#23318)
Signed-off-by: Chen Zhang <zhangch99@outlook.com>
2025-08-21 10:31:11 -07:00
603fbbbce0 [Misc] Misc code cleanup/simplification (#23304)
Signed-off-by: Nick Hill <nhill@redhat.com>
2025-08-21 17:22:55 +00:00
10f535c086 [Bugfix] Fix port conflict by obtaining a list of open ports upfront (#21894)
Signed-off-by: Ming Yang <minos.future@gmail.com>
2025-08-21 10:22:18 -07:00
1159 changed files with 70710 additions and 29597 deletions

View File

@ -5,11 +5,11 @@ import os
import sys
import zipfile
# Read the VLLM_MAX_SIZE_MB environment variable, defaulting to 400 MiB
# Note that we have 400 MiB quota, please use it wisely.
# See https://github.com/pypi/support/issues/3792 .
# Read the VLLM_MAX_SIZE_MB environment variable, defaulting to 450 MiB
# Note that we have 800 MiB quota, please use it wisely.
# See https://github.com/pypi/support/issues/6326 .
# Please also sync the value with the one in Dockerfile.
VLLM_MAX_SIZE_MB = int(os.environ.get("VLLM_MAX_SIZE_MB", 400))
VLLM_MAX_SIZE_MB = int(os.environ.get("VLLM_MAX_SIZE_MB", 450))
def print_top_10_largest_files(zip_file):

View File

@ -2,7 +2,7 @@
# We can use this script to compute baseline accuracy on GSM for transformers.
#
# Make sure you have lm-eval-harness installed:
# pip install lm-eval==0.4.4
# pip install git+https://github.com/EleutherAI/lm-evaluation-harness.git@206b7722158f58c35b7ffcd53b035fdbdda5126d#egg=lm-eval[api]
usage() {
echo``

View File

@ -3,7 +3,7 @@
# We use this for fp8, which HF does not support.
#
# Make sure you have lm-eval-harness installed:
# pip install lm-eval==0.4.4
# pip install git+https://github.com/EleutherAI/lm-evaluation-harness.git@206b7722158f58c35b7ffcd53b035fdbdda5126d#egg=lm-eval[api]
usage() {
echo``

View File

@ -141,7 +141,7 @@ When run, benchmark script generates results under `benchmark/results` folder, a
`compare-json-results.py` compares two `benchmark_results.json` files and provides performance ratio e.g. for Output Tput, Median TTFT and Median TPOT.
If only one benchmark_results.json is passed, `compare-json-results.py` compares different TP and PP configurations in the benchmark_results.json instead.
Here is an example using the script to compare result_a and result_b with Model, Dataset name, input/output lenght, max concurrency and qps.
Here is an example using the script to compare result_a and result_b with Model, Dataset name, input/output length, max concurrency and qps.
`python3 compare-json-results.py -f results_a/benchmark_results.json -f results_b/benchmark_results.json`
| | Model | Dataset Name | Input Len | Output Len | # of max concurrency | qps | results_a/benchmark_results.json | results_b/benchmark_results.json | perf_ratio |

View File

@ -17,7 +17,7 @@ Latest reproduction guilde: [github issue link](https://github.com/vllm-project/
- SGLang: `lmsysorg/sglang:v0.3.2-cu121`
- LMDeploy: `openmmlab/lmdeploy:v0.6.1-cu12`
- TensorRT-LLM: `nvcr.io/nvidia/tritonserver:24.07-trtllm-python-py3`
- *NOTE: we uses r24.07 as the current implementation only works for this version. We are going to bump this up.*
- *NOTE: we use r24.07 as the current implementation only works for this version. We are going to bump this up.*
- Check [nightly-pipeline.yaml](nightly-pipeline.yaml) for the concrete docker images, specs and commands we use for the benchmark.
- Hardware
- 8x Nvidia A100 GPUs

View File

@ -218,7 +218,7 @@ if __name__ == "__main__":
"--xaxis",
type=str,
default="# of max concurrency.",
help="column name to use as X Axis in comparision graph",
help="column name to use as X Axis in comparison graph",
)
args = parser.parse_args()

View File

@ -382,7 +382,7 @@ run_genai_perf_tests() {
client_command="genai-perf profile \
-m $model \
--service-kind openai \
--backend vllm \
--backend "$backend" \
--endpoint-type chat \
--streaming \
--url localhost:$port \

View File

@ -1,6 +1,6 @@
[
{
"test_name": "serving_llama8B_tp1_sharegpt",
"test_name": "serving_llama8B_bf16_tp1_sharegpt",
"qps_list": ["inf"],
"max_concurrency_list": [12, 16, 24, 32, 64, 128, 200],
"server_environment_variables": {
@ -32,7 +32,7 @@
}
},
{
"test_name": "serving_llama8B_tp2_sharegpt",
"test_name": "serving_llama8B_bf16_tp2_sharegpt",
"qps_list": ["inf"],
"max_concurrency_list": [12, 16, 24, 32, 64, 128, 200],
"server_environment_variables": {
@ -64,7 +64,7 @@
}
},
{
"test_name": "serving_llama8B_tp4_sharegpt",
"test_name": "serving_llama8B_bf16_tp4_sharegpt",
"qps_list": ["inf"],
"max_concurrency_list": [12, 16, 24, 32, 64, 128, 200],
"server_environment_variables": {
@ -96,7 +96,7 @@
}
},
{
"test_name": "serving_llama8B_tp1_random_128_128",
"test_name": "serving_llama8B_bf16_tp1_random_128_128",
"qps_list": ["inf"],
"max_concurrency_list": [12, 16, 24, 32, 64, 128, 200, 1000],
"server_environment_variables": {
@ -131,7 +131,7 @@
}
},
{
"test_name": "serving_llama8B_tp2_random_128_128",
"test_name": "serving_llama8B_bf16_tp2_random_128_128",
"qps_list": ["inf"],
"max_concurrency_list": [12, 16, 24, 32, 64, 128, 200, 1000],
"server_environment_variables": {
@ -166,7 +166,7 @@
}
},
{
"test_name": "serving_llama8B_tp4_random_128_128",
"test_name": "serving_llama8B_bf16_tp4_random_128_128",
"qps_list": ["inf"],
"max_concurrency_list": [12, 16, 24, 32, 64, 128, 200, 1000],
"server_environment_variables": {
@ -198,5 +198,413 @@
"random-output-len": 128,
"num_prompts": 1000
}
},
{
"test_name": "serving_llama8B_int8_tp1_sharegpt",
"qps_list": ["inf"],
"max_concurrency_list": [12, 16, 24, 32, 64, 128, 200],
"server_environment_variables": {
"VLLM_RPC_TIMEOUT": 100000,
"VLLM_ALLOW_LONG_MAX_MODEL_LEN": 1,
"VLLM_ENGINE_ITERATION_TIMEOUT_S": 120,
"VLLM_CPU_SGL_KERNEL": 1,
"VLLM_CPU_KVCACHE_SPACE": 40
},
"server_parameters": {
"model": "RedHatAI/Meta-Llama-3.1-8B-Instruct-quantized.w8a8",
"tensor_parallel_size": 1,
"dtype": "bfloat16",
"distributed_executor_backend": "mp",
"block_size": 128,
"trust_remote_code": "",
"disable_log_stats": "",
"enforce_eager": "",
"max_num_batched_tokens": 2048,
"max_num_seqs": 256,
"load_format": "dummy"
},
"client_parameters": {
"model": "RedHatAI/Meta-Llama-3.1-8B-Instruct-quantized.w8a8",
"backend": "vllm",
"dataset_name": "sharegpt",
"dataset_path": "./ShareGPT_V3_unfiltered_cleaned_split.json",
"num_prompts": 200
}
},
{
"test_name": "serving_llama8B_int8_tp2_sharegpt",
"qps_list": ["inf"],
"max_concurrency_list": [12, 16, 24, 32, 64, 128, 200],
"server_environment_variables": {
"VLLM_RPC_TIMEOUT": 100000,
"VLLM_ALLOW_LONG_MAX_MODEL_LEN": 1,
"VLLM_ENGINE_ITERATION_TIMEOUT_S": 120,
"VLLM_CPU_SGL_KERNEL": 1,
"VLLM_CPU_KVCACHE_SPACE": 40
},
"server_parameters": {
"model": "RedHatAI/Meta-Llama-3.1-8B-Instruct-quantized.w8a8",
"tensor_parallel_size": 2,
"dtype": "bfloat16",
"distributed_executor_backend": "mp",
"block_size": 128,
"trust_remote_code": "",
"disable_log_stats": "",
"enforce_eager": "",
"max_num_batched_tokens": 2048,
"max_num_seqs": 256,
"load_format": "dummy"
},
"client_parameters": {
"model": "RedHatAI/Meta-Llama-3.1-8B-Instruct-quantized.w8a8",
"backend": "vllm",
"dataset_name": "sharegpt",
"dataset_path": "./ShareGPT_V3_unfiltered_cleaned_split.json",
"num_prompts": 200
}
},
{
"test_name": "serving_llama8B_int8_tp4_sharegpt",
"qps_list": ["inf"],
"max_concurrency_list": [12, 16, 24, 32, 64, 128, 200],
"server_environment_variables": {
"VLLM_RPC_TIMEOUT": 100000,
"VLLM_ALLOW_LONG_MAX_MODEL_LEN": 1,
"VLLM_ENGINE_ITERATION_TIMEOUT_S": 120,
"VLLM_CPU_SGL_KERNEL": 1,
"VLLM_CPU_KVCACHE_SPACE": 40
},
"server_parameters": {
"model": "RedHatAI/Meta-Llama-3.1-8B-Instruct-quantized.w8a8",
"tensor_parallel_size": 4,
"dtype": "bfloat16",
"distributed_executor_backend": "mp",
"block_size": 128,
"trust_remote_code": "",
"disable_log_stats": "",
"enforce_eager": "",
"max_num_batched_tokens": 2048,
"max_num_seqs": 256,
"load_format": "dummy"
},
"client_parameters": {
"model": "RedHatAI/Meta-Llama-3.1-8B-Instruct-quantized.w8a8",
"backend": "vllm",
"dataset_name": "sharegpt",
"dataset_path": "./ShareGPT_V3_unfiltered_cleaned_split.json",
"num_prompts": 200
}
},
{
"test_name": "serving_llama8B_int8_tp1_random_128_128",
"qps_list": ["inf"],
"max_concurrency_list": [12, 16, 24, 32, 64, 128, 200, 1000],
"server_environment_variables": {
"VLLM_RPC_TIMEOUT": 100000,
"VLLM_ALLOW_LONG_MAX_MODEL_LEN": 1,
"VLLM_ENGINE_ITERATION_TIMEOUT_S": 120,
"VLLM_CPU_SGL_KERNEL": 1,
"VLLM_CPU_KVCACHE_SPACE": 40
},
"server_parameters": {
"model": "RedHatAI/Meta-Llama-3.1-8B-Instruct-quantized.w8a8",
"tensor_parallel_size": 1,
"dtype": "bfloat16",
"distributed_executor_backend": "mp",
"block_size": 128,
"trust_remote_code": "",
"enable_chunked_prefill": "",
"disable_log_stats": "",
"enforce_eager": "",
"max_num_batched_tokens": 2048,
"max_num_seqs": 256,
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View File

@ -1,6 +1,6 @@
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"max_num_batched_tokens": 2048,
"max_num_seqs": 256,
"load_format": "dummy"
},
"client_parameters": {
"model": "RedHatAI/Meta-Llama-3.1-8B-Instruct-quantized.w8a8",
"backend": "vllm",
"dataset_name": "random",
"random-input-len": 128,
"random-output-len": 128,
"ignore-eos": "",
"num_prompts": 1000
}
},
{
"test_name": "serving_llama8B_int8_tp2pp3_random_128_128",
"qps_list": ["inf"],
"max_concurrency_list": [12, 16, 24, 32, 64, 128, 200, 1000],
"server_environment_variables": {
"VLLM_RPC_TIMEOUT": 100000,
"VLLM_ALLOW_LONG_MAX_MODEL_LEN": 1,
"VLLM_ENGINE_ITERATION_TIMEOUT_S": 120,
"VLLM_CPU_SGL_KERNEL": 1,
"VLLM_CPU_KVCACHE_SPACE": 40
},
"server_parameters": {
"model": "RedHatAI/Meta-Llama-3.1-8B-Instruct-quantized.w8a8",
"tensor_parallel_size": 2,
"pipeline_parallel_size": 3,
"dtype": "bfloat16",
"distributed_executor_backend": "mp",
"block_size": 128,
"trust_remote_code": "",
"enable_chunked_prefill": "",
"disable_log_stats": "",
"enforce_eager": "",
"max_num_batched_tokens": 2048,
"max_num_seqs": 256,
"load_format": "dummy"
},
"client_parameters": {
"model": "RedHatAI/Meta-Llama-3.1-8B-Instruct-quantized.w8a8",
"backend": "vllm",
"dataset_name": "random",
"random-input-len": 128,
"random-output-len": 128,
"ignore-eos": "",
"num_prompts": 1000
}
},
{
"test_name": "serving_llama8B_int4_pp1_sharegpt",
"qps_list": ["inf"],
"max_concurrency_list": [12, 16, 24, 32, 64, 128, 200],
"server_environment_variables": {
"VLLM_RPC_TIMEOUT": 100000,
"VLLM_ALLOW_LONG_MAX_MODEL_LEN": 1,
"VLLM_ENGINE_ITERATION_TIMEOUT_S": 120,
"VLLM_CPU_SGL_KERNEL": 1,
"VLLM_CPU_KVCACHE_SPACE": 40
},
"server_parameters": {
"model": "hugging-quants/Meta-Llama-3.1-8B-Instruct-AWQ-INT4",
"quantization": "awq",
"pipeline_parallel_size": 1,
"dtype": "bfloat16",
"distributed_executor_backend": "mp",
"block_size": 128,
"trust_remote_code": "",
"disable_log_stats": "",
"enforce_eager": "",
"max_num_batched_tokens": 2048,
"max_num_seqs": 256,
"load_format": "dummy"
},
"client_parameters": {
"model": "hugging-quants/Meta-Llama-3.1-8B-Instruct-AWQ-INT4",
"backend": "vllm",
"dataset_name": "sharegpt",
"dataset_path": "./ShareGPT_V3_unfiltered_cleaned_split.json",
"num_prompts": 200
}
},
{
"test_name": "serving_llama8B_int4_tp2_sharegpt",
"qps_list": ["inf"],
"max_concurrency_list": [12, 16, 24, 32, 64, 128, 200],
"server_environment_variables": {
"VLLM_RPC_TIMEOUT": 100000,
"VLLM_ALLOW_LONG_MAX_MODEL_LEN": 1,
"VLLM_ENGINE_ITERATION_TIMEOUT_S": 120,
"VLLM_CPU_SGL_KERNEL": 1,
"VLLM_CPU_KVCACHE_SPACE": 40
},
"server_parameters": {
"model": "hugging-quants/Meta-Llama-3.1-8B-Instruct-AWQ-INT4",
"quantization": "awq",
"tensor_parallel_size": 2,
"dtype": "bfloat16",
"distributed_executor_backend": "mp",
"block_size": 128,
"trust_remote_code": "",
"disable_log_stats": "",
"enforce_eager": "",
"max_num_batched_tokens": 2048,
"max_num_seqs": 256,
"load_format": "dummy"
},
"client_parameters": {
"model": "hugging-quants/Meta-Llama-3.1-8B-Instruct-AWQ-INT4",
"backend": "vllm",
"dataset_name": "sharegpt",
"dataset_path": "./ShareGPT_V3_unfiltered_cleaned_split.json",
"num_prompts": 200
}
},
{
"test_name": "serving_llama8B_int4_pp3_sharegpt",
"qps_list": ["inf"],
"max_concurrency_list": [12, 16, 24, 32, 64, 128, 200],
"server_environment_variables": {
"VLLM_RPC_TIMEOUT": 100000,
"VLLM_ALLOW_LONG_MAX_MODEL_LEN": 1,
"VLLM_ENGINE_ITERATION_TIMEOUT_S": 120,
"VLLM_CPU_SGL_KERNEL": 1,
"VLLM_CPU_KVCACHE_SPACE": 40
},
"server_parameters": {
"model": "hugging-quants/Meta-Llama-3.1-8B-Instruct-AWQ-INT4",
"quantization": "awq",
"pipeline_parallel_size": 3,
"dtype": "bfloat16",
"distributed_executor_backend": "mp",
"block_size": 128,
"trust_remote_code": "",
"disable_log_stats": "",
"enforce_eager": "",
"max_num_batched_tokens": 2048,
"max_num_seqs": 256,
"load_format": "dummy"
},
"client_parameters": {
"model": "hugging-quants/Meta-Llama-3.1-8B-Instruct-AWQ-INT4",
"backend": "vllm",
"dataset_name": "sharegpt",
"dataset_path": "./ShareGPT_V3_unfiltered_cleaned_split.json",
"num_prompts": 200
}
},
{
"test_name": "serving_llama8B_int4_tp2pp3_sharegpt",
"qps_list": ["inf"],
"max_concurrency_list": [12, 16, 24, 32, 64, 128, 200],
"server_environment_variables": {
"VLLM_RPC_TIMEOUT": 100000,
"VLLM_ALLOW_LONG_MAX_MODEL_LEN": 1,
"VLLM_ENGINE_ITERATION_TIMEOUT_S": 120,
"VLLM_CPU_SGL_KERNEL": 1,
"VLLM_CPU_KVCACHE_SPACE": 40
},
"server_parameters": {
"model": "hugging-quants/Meta-Llama-3.1-8B-Instruct-AWQ-INT4",
"quantization": "awq",
"tensor_parallel_size": 2,
"pipeline_parallel_size": 3,
"dtype": "bfloat16",
"distributed_executor_backend": "mp",
"block_size": 128,
"trust_remote_code": "",
"disable_log_stats": "",
"enforce_eager": "",
"max_num_batched_tokens": 2048,
"max_num_seqs": 256,
"load_format": "dummy"
},
"client_parameters": {
"model": "hugging-quants/Meta-Llama-3.1-8B-Instruct-AWQ-INT4",
"backend": "vllm",
"dataset_name": "sharegpt",
"dataset_path": "./ShareGPT_V3_unfiltered_cleaned_split.json",
"num_prompts": 200
}
},
{
"test_name": "serving_llama8B_int4_pp1_random_128_128",
"qps_list": ["inf"],
"max_concurrency_list": [12, 16, 24, 32, 64, 128, 200, 1000],
"server_environment_variables": {
"VLLM_RPC_TIMEOUT": 100000,
"VLLM_ALLOW_LONG_MAX_MODEL_LEN": 1,
"VLLM_ENGINE_ITERATION_TIMEOUT_S": 120,
"VLLM_CPU_SGL_KERNEL": 1,
"VLLM_CPU_KVCACHE_SPACE": 40
},
"server_parameters": {
"model": "hugging-quants/Meta-Llama-3.1-8B-Instruct-AWQ-INT4",
"quantization": "awq",
"pipeline_parallel_size": 1,
"dtype": "bfloat16",
"distributed_executor_backend": "mp",
"block_size": 128,
"trust_remote_code": "",
"enable_chunked_prefill": "",
"disable_log_stats": "",
"enforce_eager": "",
"max_num_batched_tokens": 2048,
"max_num_seqs": 256,
"load_format": "dummy"
},
"client_parameters": {
"model": "hugging-quants/Meta-Llama-3.1-8B-Instruct-AWQ-INT4",
"backend": "vllm",
"dataset_name": "random",
"random-input-len": 128,
"random-output-len": 128,
"ignore-eos": "",
"num_prompts": 1000
}
},
{
"test_name": "serving_llama8B_int4_tp2_random_128_128",
"qps_list": ["inf"],
"max_concurrency_list": [12, 16, 24, 32, 64, 128, 200, 1000],
"server_environment_variables": {
"VLLM_RPC_TIMEOUT": 100000,
"VLLM_ALLOW_LONG_MAX_MODEL_LEN": 1,
"VLLM_ENGINE_ITERATION_TIMEOUT_S": 120,
"VLLM_CPU_SGL_KERNEL": 1,
"VLLM_CPU_KVCACHE_SPACE": 40
},
"server_parameters": {
"model": "hugging-quants/Meta-Llama-3.1-8B-Instruct-AWQ-INT4",
"quantization": "awq",
"tensor_parallel_size": 2,
"dtype": "bfloat16",
"distributed_executor_backend": "mp",
"block_size": 128,
"trust_remote_code": "",
"enable_chunked_prefill": "",
"disable_log_stats": "",
"enforce_eager": "",
"max_num_batched_tokens": 2048,
"max_num_seqs": 256,
"load_format": "dummy"
},
"client_parameters": {
"model": "hugging-quants/Meta-Llama-3.1-8B-Instruct-AWQ-INT4",
"backend": "vllm",
"dataset_name": "random",
"random-input-len": 128,
"random-output-len": 128,
"ignore-eos": "",
"num_prompts": 1000
}
},
{
"test_name": "serving_llama8B_int4_pp3_random_128_128",
"qps_list": ["inf"],
"max_concurrency_list": [12, 16, 24, 32, 64, 128, 200, 1000],
"server_environment_variables": {
"VLLM_RPC_TIMEOUT": 100000,
"VLLM_ALLOW_LONG_MAX_MODEL_LEN": 1,
"VLLM_ENGINE_ITERATION_TIMEOUT_S": 120,
"VLLM_CPU_SGL_KERNEL": 1,
"VLLM_CPU_KVCACHE_SPACE": 40
},
"server_parameters": {
"model": "hugging-quants/Meta-Llama-3.1-8B-Instruct-AWQ-INT4",
"quantization": "awq",
"pipeline_parallel_size": 3,
"dtype": "bfloat16",
"distributed_executor_backend": "mp",
"block_size": 128,
"trust_remote_code": "",
"enable_chunked_prefill": "",
"disable_log_stats": "",
"enforce_eager": "",
"max_num_batched_tokens": 2048,
"max_num_seqs": 256,
"load_format": "dummy"
},
"client_parameters": {
"model": "hugging-quants/Meta-Llama-3.1-8B-Instruct-AWQ-INT4",
"backend": "vllm",
"dataset_name": "random",
"random-input-len": 128,
"random-output-len": 128,
"ignore-eos": "",
"num_prompts": 1000
}
},
{
"test_name": "serving_llama8B_int4_tp2pp3_random_128_128",
"qps_list": ["inf"],
"max_concurrency_list": [12, 16, 24, 32, 64, 128, 200, 1000],
"server_environment_variables": {
"VLLM_RPC_TIMEOUT": 100000,
"VLLM_ALLOW_LONG_MAX_MODEL_LEN": 1,
"VLLM_ENGINE_ITERATION_TIMEOUT_S": 120,
"VLLM_CPU_SGL_KERNEL": 1,
"VLLM_CPU_KVCACHE_SPACE": 40
},
"server_parameters": {
"model": "hugging-quants/Meta-Llama-3.1-8B-Instruct-AWQ-INT4",
"quantization": "awq",
"tensor_parallel_size": 2,
"pipeline_parallel_size": 3,
"dtype": "bfloat16",
"distributed_executor_backend": "mp",
"block_size": 128,
"trust_remote_code": "",
"enable_chunked_prefill": "",
"disable_log_stats": "",
"enforce_eager": "",
"max_num_batched_tokens": 2048,
"max_num_seqs": 256,
"load_format": "dummy"
},
"client_parameters": {
"model": "hugging-quants/Meta-Llama-3.1-8B-Instruct-AWQ-INT4",
"backend": "vllm",
"dataset_name": "random",
"random-input-len": 128,
"random-output-len": 128,
"ignore-eos": "",
"num_prompts": 1000
}
}
]

View File

@ -1,21 +1,22 @@
steps:
# aarch64 + CUDA builds
- label: "Build arm64 wheel - CUDA 12.8"
id: build-wheel-arm64-cuda-12-8
# aarch64 + CUDA builds. PyTorch 2.8 aarch64 + CUDA wheel is only available on CUDA 12.9
- label: "Build arm64 wheel - CUDA 12.9"
depends_on: ~
id: build-wheel-arm64-cuda-12-9
agents:
queue: arm64_cpu_queue_postmerge
commands:
# #NOTE: torch_cuda_arch_list is derived from upstream PyTorch build files here:
# https://github.com/pytorch/pytorch/blob/main/.ci/aarch64_linux/aarch64_ci_build.sh#L7
- "DOCKER_BUILDKIT=1 docker build --build-arg max_jobs=16 --build-arg USE_SCCACHE=1 --build-arg GIT_REPO_CHECK=1 --build-arg CUDA_VERSION=12.8.1 --build-arg torch_cuda_arch_list='8.7 9.0 10.0+PTX' --tag vllm-ci:build-image --target build --progress plain -f docker/Dockerfile ."
- "DOCKER_BUILDKIT=1 docker build --build-arg max_jobs=16 --build-arg USE_SCCACHE=1 --build-arg GIT_REPO_CHECK=1 --build-arg CUDA_VERSION=12.9.1 --build-arg VLLM_MAIN_CUDA_VERSION=12.9 --build-arg torch_cuda_arch_list='8.7 9.0 10.0+PTX 12.0' --tag vllm-ci:build-image --target build --progress plain -f docker/Dockerfile ."
- "mkdir artifacts"
- "docker run --rm -v $(pwd)/artifacts:/artifacts_host vllm-ci:build-image bash -c 'cp -r dist /artifacts_host && chmod -R a+rw /artifacts_host'"
- "bash .buildkite/scripts/upload-wheels.sh"
env:
DOCKER_BUILDKIT: "1"
# x86 + CUDA builds
- label: "Build wheel - CUDA 12.8"
depends_on: ~
id: build-wheel-cuda-12-8
agents:
queue: cpu_queue_postmerge
@ -27,12 +28,8 @@ steps:
env:
DOCKER_BUILDKIT: "1"
- block: "Build CUDA 12.6 wheel"
key: block-build-cu126-wheel
depends_on: ~
- label: "Build wheel - CUDA 12.6"
depends_on: block-build-cu126-wheel
depends_on: ~
id: build-wheel-cuda-12-6
agents:
queue: cpu_queue_postmerge
@ -44,44 +41,61 @@ steps:
env:
DOCKER_BUILDKIT: "1"
# Note(simon): We can always build CUDA 11.8 wheel to ensure the build is working.
# However, this block can be uncommented to save some compute hours.
# - block: "Build CUDA 11.8 wheel"
# key: block-build-cu118-wheel
- label: "Build wheel - CUDA 11.8"
# depends_on: block-build-cu118-wheel
id: build-wheel-cuda-11-8
# x86 + CUDA builds
- label: "Build wheel - CUDA 12.9"
depends_on: ~
id: build-wheel-cuda-12-9
agents:
queue: cpu_queue_postmerge
commands:
- "DOCKER_BUILDKIT=1 docker build --build-arg max_jobs=16 --build-arg USE_SCCACHE=1 --build-arg GIT_REPO_CHECK=1 --build-arg CUDA_VERSION=11.8.0 --build-arg torch_cuda_arch_list='7.0 7.5 8.0 8.9 9.0+PTX' --tag vllm-ci:build-image --target build --progress plain -f docker/Dockerfile ."
- "DOCKER_BUILDKIT=1 docker build --build-arg max_jobs=16 --build-arg USE_SCCACHE=1 --build-arg GIT_REPO_CHECK=1 --build-arg CUDA_VERSION=12.9.1 --build-arg torch_cuda_arch_list='7.0 7.5 8.0 8.9 9.0+PTX' --tag vllm-ci:build-image --target build --progress plain -f docker/Dockerfile ."
- "mkdir artifacts"
- "docker run --rm -v $(pwd)/artifacts:/artifacts_host vllm-ci:build-image bash -c 'cp -r dist /artifacts_host && chmod -R a+rw /artifacts_host'"
- "bash .buildkite/scripts/upload-wheels.sh"
env:
DOCKER_BUILDKIT: "1"
- block: "Build release image"
- label: "Build release image (x86)"
depends_on: ~
key: block-release-image-build
- label: "Build release image"
depends_on: block-release-image-build
id: build-release-image
id: build-release-image-x86
agents:
queue: cpu_queue_postmerge
commands:
- "aws ecr-public get-login-password --region us-east-1 | docker login --username AWS --password-stdin public.ecr.aws/q9t5s3a7"
- "DOCKER_BUILDKIT=1 docker build --build-arg max_jobs=16 --build-arg USE_SCCACHE=1 --build-arg GIT_REPO_CHECK=1 --build-arg CUDA_VERSION=12.8.1 --build-arg FLASHINFER_AOT_COMPILE=true --build-arg INSTALL_KV_CONNECTORS=true --tag public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT --target vllm-openai --progress plain -f docker/Dockerfile ."
- "DOCKER_BUILDKIT=1 docker build --build-arg max_jobs=16 --build-arg USE_SCCACHE=1 --build-arg GIT_REPO_CHECK=1 --build-arg CUDA_VERSION=12.8.1 --build-arg FLASHINFER_AOT_COMPILE=true --build-arg INSTALL_KV_CONNECTORS=true --tag public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT-$(uname -m) --target vllm-openai --progress plain -f docker/Dockerfile ."
- "docker push public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT-$(uname -m)"
# re-tag to default image tag and push, just in case arm64 build fails
- "docker tag public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT-$(uname -m) public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT"
- "docker push public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT"
# PyTorch 2.8 aarch64 + CUDA wheel is only available on CUDA 12.9
- label: "Build release image (arm64)"
depends_on: ~
id: build-release-image-arm64
agents:
queue: arm64_cpu_queue_postmerge
commands:
- "aws ecr-public get-login-password --region us-east-1 | docker login --username AWS --password-stdin public.ecr.aws/q9t5s3a7"
- "DOCKER_BUILDKIT=1 docker build --build-arg max_jobs=16 --build-arg USE_SCCACHE=1 --build-arg GIT_REPO_CHECK=1 --build-arg CUDA_VERSION=12.9.1 --build-arg torch_cuda_arch_list='8.7 9.0 10.0+PTX 12.0' --build-arg INSTALL_KV_CONNECTORS=true --tag public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT-$(uname -m) --target vllm-openai --progress plain -f docker/Dockerfile ."
- "docker push public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT-$(uname -m)"
# Add job to create multi-arch manifest
- label: "Create multi-arch manifest"
depends_on:
- build-release-image-x86
- build-release-image-arm64
id: create-multi-arch-manifest
agents:
queue: cpu_queue_postmerge
commands:
- "aws ecr-public get-login-password --region us-east-1 | docker login --username AWS --password-stdin public.ecr.aws/q9t5s3a7"
- "docker manifest create public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT-x86_64 public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT-aarch64 --amend"
- "docker manifest push public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT"
- label: "Annotate release workflow"
depends_on:
- build-release-image
- create-multi-arch-manifest
- build-wheel-cuda-12-8
- build-wheel-cuda-12-6
- build-wheel-cuda-11-8
id: annotate-release-workflow
agents:
queue: cpu_queue_postmerge
@ -128,18 +142,24 @@ steps:
env:
DOCKER_BUILDKIT: "1"
- block: "Build Neuron release image"
key: block-neuron-release-image-build
depends_on: ~
- label: "Build and publish Neuron release image"
depends_on: block-neuron-release-image-build
- label: "Build and publish nightly multi-arch image to DockerHub"
depends_on:
- create-multi-arch-manifest
if: build.env("NIGHTLY") == "1"
agents:
queue: neuron-postmerge
queue: cpu_queue_postmerge
commands:
- "aws ecr-public get-login-password --region us-east-1 | docker login --username AWS --password-stdin public.ecr.aws/q9t5s3a7"
- "DOCKER_BUILDKIT=1 docker build --build-arg max_jobs=16 --build-arg GIT_REPO_CHECK=1 --tag public.ecr.aws/q9t5s3a7/vllm-neuron-release-repo:$(buildkite-agent meta-data get release-version) --tag public.ecr.aws/q9t5s3a7/vllm-neuron-release-repo:latest --progress plain -f docker/Dockerfile.neuron ."
- "docker push public.ecr.aws/q9t5s3a7/vllm-neuron-release-repo:latest"
- "docker push public.ecr.aws/q9t5s3a7/vllm-neuron-release-repo:$(buildkite-agent meta-data get release-version)"
- "docker pull public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT"
- "docker tag public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT vllm/vllm-openai:nightly"
- "docker tag public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT vllm/vllm-openai:nightly-$BUILDKITE_COMMIT"
- "docker push vllm/vllm-openai:nightly"
- "docker push vllm/vllm-openai:nightly-$BUILDKITE_COMMIT"
# Clean up old nightly builds (keep only last 14)
- "bash .buildkite/scripts/cleanup-nightly-builds.sh"
plugins:
- docker-login#v3.0.0:
username: vllmbot
password-env: DOCKERHUB_TOKEN
env:
DOCKER_BUILDKIT: "1"

View File

@ -14,18 +14,33 @@ buildkite-agent annotate --style 'info' --context 'release-workflow' << EOF
To download the wheel:
\`\`\`
aws s3 cp s3://vllm-wheels/${RELEASE_VERSION}/vllm-${RELEASE_VERSION}-cp38-abi3-manylinux1_x86_64.whl .
aws s3 cp s3://vllm-wheels/${RELEASE_VERSION}/vllm-${RELEASE_VERSION}-cp38-abi3-manylinux2014_aarch64.whl .
aws s3 cp s3://vllm-wheels/${RELEASE_VERSION}+cu126/vllm-${RELEASE_VERSION}+cu126-cp38-abi3-manylinux1_x86_64.whl .
aws s3 cp s3://vllm-wheels/${RELEASE_VERSION}+cu118/vllm-${RELEASE_VERSION}+cu118-cp38-abi3-manylinux1_x86_64.whl .
aws s3 cp s3://vllm-wheels/${RELEASE_VERSION}+cu129/vllm-${RELEASE_VERSION}+cu129-cp38-abi3-manylinux1_x86_64.whl .
\`\`\`
To download and upload the image:
\`\`\`
docker pull public.ecr.aws/q9t5s3a7/vllm-release-repo:${BUILDKITE_COMMIT}
docker tag public.ecr.aws/q9t5s3a7/vllm-release-repo:${BUILDKITE_COMMIT} vllm/vllm-openai
docker tag vllm/vllm-openai vllm/vllm-openai:latest
docker tag vllm/vllm-openai vllm/vllm-openai:v${RELEASE_VERSION}
docker push vllm/vllm-openai:latest
docker push vllm/vllm-openai:v${RELEASE_VERSION}
docker pull public.ecr.aws/q9t5s3a7/vllm-release-repo:${BUILDKITE_COMMIT}-x86_64
docker pull public.ecr.aws/q9t5s3a7/vllm-release-repo:${BUILDKITE_COMMIT}-aarch64
docker tag public.ecr.aws/q9t5s3a7/vllm-release-repo:${BUILDKITE_COMMIT}-x86_64 vllm/vllm-openai:x86_64
docker tag vllm/vllm-openai:x86_64 vllm/vllm-openai:latest-x86_64
docker tag vllm/vllm-openai:x86_64 vllm/vllm-openai:v${RELEASE_VERSION}-x86_64
docker push vllm/vllm-openai:latest-x86_64
docker push vllm/vllm-openai:v${RELEASE_VERSION}-x86_64
docker tag public.ecr.aws/q9t5s3a7/vllm-release-repo:${BUILDKITE_COMMIT}-aarch64 vllm/vllm-openai:aarch64
docker tag vllm/vllm-openai:aarch64 vllm/vllm-openai:latest-aarch64
docker tag vllm/vllm-openai:aarch64 vllm/vllm-openai:v${RELEASE_VERSION}-aarch64
docker push vllm/vllm-openai:latest-aarch64
docker push vllm/vllm-openai:v${RELEASE_VERSION}-aarch64
docker manifest create vllm/vllm-openai:latest vllm/vllm-openai:latest-x86_64 vllm/vllm-openai:latest-aarch64 --amend
docker manifest create vllm/vllm-openai:v${RELEASE_VERSION} vllm/vllm-openai:v${RELEASE_VERSION}-x86_64 vllm/vllm-openai:v${RELEASE_VERSION}-aarch64 --amend
docker manifest push vllm/vllm-openai:latest
docker manifest push vllm/vllm-openai:v${RELEASE_VERSION}
\`\`\`
EOF

View File

@ -0,0 +1,97 @@
#!/bin/bash
set -ex
# Clean up old nightly builds from DockerHub, keeping only the last 14 builds
# This script uses DockerHub API to list and delete old tags with "nightly-" prefix
# DockerHub API endpoint for vllm/vllm-openai repository
REPO_API_URL="https://hub.docker.com/v2/repositories/vllm/vllm-openai/tags"
# Get DockerHub token from environment
if [ -z "$DOCKERHUB_TOKEN" ]; then
echo "Error: DOCKERHUB_TOKEN environment variable is not set"
exit 1
fi
# Function to get all tags from DockerHub
get_all_tags() {
local page=1
local all_tags=""
while true; do
local response=$(curl -s -H "Authorization: Bearer $DOCKERHUB_TOKEN" \
"$REPO_API_URL?page=$page&page_size=100")
# Get both last_updated timestamp and tag name, separated by |
local tags=$(echo "$response" | jq -r '.results[] | select(.name | startswith("nightly-")) | "\(.last_updated)|\(.name)"')
if [ -z "$tags" ]; then
break
fi
all_tags="$all_tags$tags"$'\n'
page=$((page + 1))
done
# Sort by timestamp (newest first) and extract just the tag names
echo "$all_tags" | sort -r | cut -d'|' -f2
}
delete_tag() {
local tag_name="$1"
echo "Deleting tag: $tag_name"
local delete_url="https://hub.docker.com/v2/repositories/vllm/vllm-openai/tags/$tag_name"
local response=$(curl -s -X DELETE -H "Authorization: Bearer $DOCKERHUB_TOKEN" "$delete_url")
if echo "$response" | jq -e '.detail' > /dev/null 2>&1; then
echo "Warning: Failed to delete tag $tag_name: $(echo "$response" | jq -r '.detail')"
else
echo "Successfully deleted tag: $tag_name"
fi
}
# Get all nightly- prefixed tags, sorted by last_updated timestamp (newest first)
echo "Fetching all tags from DockerHub..."
all_tags=$(get_all_tags)
if [ -z "$all_tags" ]; then
echo "No tags found to clean up"
exit 0
fi
# Count total tags
total_tags=$(echo "$all_tags" | wc -l)
echo "Found $total_tags tags"
# Keep only the last 14 builds (including the current one)
tags_to_keep=14
tags_to_delete=$((total_tags - tags_to_keep))
if [ $tags_to_delete -le 0 ]; then
echo "No tags need to be deleted (only $total_tags tags found, keeping $tags_to_keep)"
exit 0
fi
echo "Will delete $tags_to_delete old tags, keeping the newest $tags_to_keep"
# Get tags to delete (skip the first $tags_to_keep tags)
tags_to_delete_list=$(echo "$all_tags" | tail -n +$((tags_to_keep + 1)))
if [ -z "$tags_to_delete_list" ]; then
echo "No tags to delete"
exit 0
fi
# Delete old tags
echo "Deleting old tags..."
while IFS= read -r tag; do
if [ -n "$tag" ]; then
delete_tag "$tag"
# Add a small delay to avoid rate limiting
sleep 1
fi
done <<< "$tags_to_delete_list"
echo "Cleanup completed successfully"

View File

@ -164,7 +164,6 @@ if [[ $commands == *" entrypoints/llm "* ]]; then
--ignore=entrypoints/llm/test_chat.py \
--ignore=entrypoints/llm/test_accuracy.py \
--ignore=entrypoints/llm/test_init.py \
--ignore=entrypoints/llm/test_generate_multiple_loras.py \
--ignore=entrypoints/llm/test_prompt_validation.py "}
fi

View File

@ -25,8 +25,8 @@ numactl -C "$CORE_RANGE" -N "$NUMA_NODE" docker build --tag cpu-test-"$NUMA_NODE
numactl -C "$CORE_RANGE" -N "$NUMA_NODE" docker build --build-arg VLLM_CPU_DISABLE_AVX512="true" --tag cpu-test-"$NUMA_NODE"-avx2 --target vllm-test -f docker/Dockerfile.cpu .
# Run the image, setting --shm-size=4g for tensor parallel.
docker run -itd --cpuset-cpus="$CORE_RANGE" --cpuset-mems="$NUMA_NODE" --entrypoint /bin/bash -v ~/.cache/huggingface:/root/.cache/huggingface --privileged=true -e HF_TOKEN --env VLLM_CPU_KVCACHE_SPACE=4 --env VLLM_CPU_CI_ENV=1 -e E2E_OMP_THREADS="$OMP_CORE_RANGE" --shm-size=4g --name cpu-test-"$NUMA_NODE" cpu-test-"$NUMA_NODE"
docker run -itd --cpuset-cpus="$CORE_RANGE" --cpuset-mems="$NUMA_NODE" --entrypoint /bin/bash -v ~/.cache/huggingface:/root/.cache/huggingface --privileged=true -e HF_TOKEN --env VLLM_CPU_KVCACHE_SPACE=4 --env VLLM_CPU_CI_ENV=1 -e E2E_OMP_THREADS="$OMP_CORE_RANGE" --shm-size=4g --name cpu-test-"$NUMA_NODE"-avx2 cpu-test-"$NUMA_NODE"-avx2
docker run -itd --cpuset-cpus="$CORE_RANGE" --cpuset-mems="$NUMA_NODE" --entrypoint /bin/bash -v ~/.cache/huggingface:/root/.cache/huggingface --privileged=true -e HF_TOKEN --env VLLM_CPU_KVCACHE_SPACE=16 --env VLLM_CPU_CI_ENV=1 -e E2E_OMP_THREADS="$OMP_CORE_RANGE" --shm-size=4g --name cpu-test-"$NUMA_NODE" cpu-test-"$NUMA_NODE"
docker run -itd --cpuset-cpus="$CORE_RANGE" --cpuset-mems="$NUMA_NODE" --entrypoint /bin/bash -v ~/.cache/huggingface:/root/.cache/huggingface --privileged=true -e HF_TOKEN --env VLLM_CPU_KVCACHE_SPACE=16 --env VLLM_CPU_CI_ENV=1 -e E2E_OMP_THREADS="$OMP_CORE_RANGE" --shm-size=4g --name cpu-test-"$NUMA_NODE"-avx2 cpu-test-"$NUMA_NODE"-avx2
function cpu_tests() {
set -e
@ -49,23 +49,23 @@ function cpu_tests() {
# Run kernel tests
docker exec cpu-test-"$NUMA_NODE" bash -c "
set -e
pytest -v -s tests/kernels/test_onednn.py"
pytest -x -v -s tests/kernels/test_onednn.py"
# Run basic model test
docker exec cpu-test-"$NUMA_NODE" bash -c "
set -e
# Note: disable until supports V1
# pytest -v -s tests/kernels/attention/test_cache.py -m cpu_model
# pytest -v -s tests/kernels/attention/test_mla_decode_cpu.py -m cpu_model
# pytest -x -v -s tests/kernels/attention/test_cache.py -m cpu_model
# pytest -x -v -s tests/kernels/attention/test_mla_decode_cpu.py -m cpu_model
# Note: disable Bart until supports V1
pytest -v -s tests/models/language/generation -m cpu_model \
pytest -x -v -s tests/models/language/generation -m cpu_model \
--ignore=tests/models/language/generation/test_bart.py
VLLM_CPU_SGL_KERNEL=1 pytest -v -s tests/models/language/generation -m cpu_model \
VLLM_CPU_SGL_KERNEL=1 pytest -x -v -s tests/models/language/generation -m cpu_model \
--ignore=tests/models/language/generation/test_bart.py
pytest -v -s tests/models/language/pooling -m cpu_model
pytest -v -s tests/models/multimodal/generation \
pytest -x -v -s tests/models/language/pooling -m cpu_model
pytest -x -v -s tests/models/multimodal/generation \
--ignore=tests/models/multimodal/generation/test_mllama.py \
--ignore=tests/models/multimodal/generation/test_pixtral.py \
-m cpu_model"
@ -73,33 +73,49 @@ function cpu_tests() {
# Run compressed-tensor test
docker exec cpu-test-"$NUMA_NODE" bash -c "
set -e
pytest -s -v \
pytest -x -s -v \
tests/quantization/test_compressed_tensors.py::test_compressed_tensors_w8a8_logprobs[False-10-32-neuralmagic/Llama-3.2-1B-quantized.w8a8]"
# Note: disable it until supports V1
# Run AWQ test
# docker exec cpu-test-"$NUMA_NODE" bash -c "
# set -e
# VLLM_USE_V1=0 pytest -s -v \
# VLLM_USE_V1=0 pytest -x -s -v \
# tests/quantization/test_ipex_quant.py"
# Run multi-lora tests
docker exec cpu-test-"$NUMA_NODE" bash -c "
set -e
pytest -s -v \
pytest -x -s -v \
tests/lora/test_qwen2vl.py"
# online serving
# online serving: tp+pp
docker exec cpu-test-"$NUMA_NODE" bash -c '
set -e
VLLM_CPU_OMP_THREADS_BIND=$E2E_OMP_THREADS VLLM_CPU_SGL_KERNEL=1 vllm serve meta-llama/Llama-3.2-3B-Instruct -tp=2 -pp=2 &
server_pid=$!
timeout 600 bash -c "until curl localhost:8000/v1/models; do sleep 1; done" || exit 1
vllm bench serve \
--backend vllm \
--dataset-name random \
--model meta-llama/Llama-3.2-3B-Instruct \
--num-prompts 20 \
--endpoint /v1/completions'
--endpoint /v1/completions
kill -s SIGTERM $server_pid &'
# online serving: tp+dp
docker exec cpu-test-"$NUMA_NODE" bash -c '
set -e
VLLM_CPU_OMP_THREADS_BIND=$E2E_OMP_THREADS VLLM_CPU_SGL_KERNEL=1 vllm serve meta-llama/Llama-3.2-3B-Instruct -tp=2 -dp=2 &
server_pid=$!
timeout 600 bash -c "until curl localhost:8000/v1/models; do sleep 1; done" || exit 1
vllm bench serve \
--backend vllm \
--dataset-name random \
--model meta-llama/Llama-3.2-3B-Instruct \
--num-prompts 20 \
--endpoint /v1/completions
kill -s SIGTERM $server_pid &'
}
# All of CPU tests are expected to be finished less than 40 mins.

View File

@ -1,64 +0,0 @@
#!/bin/bash
# This script build the Neuron docker image and run the API server inside the container.
# It serves a sanity check for compilation and basic model usage.
set -e
set -v
image_name="neuron/vllm-ci"
container_name="neuron_$(tr -dc A-Za-z0-9 < /dev/urandom | head -c 10; echo)"
HF_CACHE="$(realpath ~)/huggingface"
mkdir -p "${HF_CACHE}"
HF_MOUNT="/root/.cache/huggingface"
HF_TOKEN=$(aws secretsmanager get-secret-value --secret-id "ci/vllm-neuron/hf-token" --region us-west-2 --query 'SecretString' --output text | jq -r .VLLM_NEURON_CI_HF_TOKEN)
NEURON_COMPILE_CACHE_URL="$(realpath ~)/neuron_compile_cache"
mkdir -p "${NEURON_COMPILE_CACHE_URL}"
NEURON_COMPILE_CACHE_MOUNT="/root/.cache/neuron_compile_cache"
# Try building the docker image
aws ecr-public get-login-password --region us-east-1 | docker login --username AWS --password-stdin public.ecr.aws
# prune old image and containers to save disk space, and only once a day
# by using a timestamp file in tmp.
if [ -f /tmp/neuron-docker-build-timestamp ]; then
last_build=$(cat /tmp/neuron-docker-build-timestamp)
current_time=$(date +%s)
if [ $((current_time - last_build)) -gt 86400 ]; then
# Remove dangling images (those that are not tagged and not used by any container)
docker image prune -f
# Remove unused volumes / force the system prune for old images as well.
docker volume prune -f && docker system prune -f
echo "$current_time" > /tmp/neuron-docker-build-timestamp
fi
else
date "+%s" > /tmp/neuron-docker-build-timestamp
fi
docker build -t "${image_name}" -f docker/Dockerfile.neuron .
# Setup cleanup
remove_docker_container() {
docker image rm -f "${image_name}" || true;
}
trap remove_docker_container EXIT
# Run the image
docker run --rm -it --device=/dev/neuron0 --network bridge \
-v "${HF_CACHE}:${HF_MOUNT}" \
-e "HF_HOME=${HF_MOUNT}" \
-e "HF_TOKEN=${HF_TOKEN}" \
-v "${NEURON_COMPILE_CACHE_URL}:${NEURON_COMPILE_CACHE_MOUNT}" \
-e "NEURON_COMPILE_CACHE_URL=${NEURON_COMPILE_CACHE_MOUNT}" \
--name "${container_name}" \
${image_name} \
/bin/bash -c "
set -e; # Exit on first error
python3 /workspace/vllm/examples/offline_inference/neuron.py;
python3 -m pytest /workspace/vllm/tests/neuron/1_core/ -v --capture=tee-sys;
for f in /workspace/vllm/tests/neuron/2_core/*.py; do
echo \"Running test file: \$f\";
python3 -m pytest \$f -v --capture=tee-sys;
done
"

View File

@ -61,7 +61,7 @@ echo "Results will be stored in: $RESULTS_DIR"
echo "--- Installing Python dependencies ---"
python3 -m pip install --progress-bar off git+https://github.com/thuml/depyf.git \
&& python3 -m pip install --progress-bar off pytest pytest-asyncio tpu-info \
&& python3 -m pip install --progress-bar off lm_eval[api]==0.4.4 \
&& python3 -m pip install --progress-bar off "lm-eval @ git+https://github.com/EleutherAI/lm-evaluation-harness.git@206b7722158f58c35b7ffcd53b035fdbdda5126d" \
&& python3 -m pip install --progress-bar off hf-transfer
echo "--- Python dependencies installed ---"
export VLLM_USE_V1=1

View File

@ -61,7 +61,7 @@ echo "Results will be stored in: $RESULTS_DIR"
echo "--- Installing Python dependencies ---"
python3 -m pip install --progress-bar off git+https://github.com/thuml/depyf.git \
&& python3 -m pip install --progress-bar off pytest pytest-asyncio tpu-info \
&& python3 -m pip install --progress-bar off lm_eval[api]==0.4.4 \
&& python3 -m pip install --progress-bar off "lm-eval @ git+https://github.com/EleutherAI/lm-evaluation-harness.git@206b7722158f58c35b7ffcd53b035fdbdda5126d" \
&& python3 -m pip install --progress-bar off hf-transfer
echo "--- Python dependencies installed ---"
export VLLM_USE_V1=1

View File

@ -30,9 +30,12 @@ docker run \
bash -c '
set -e
echo $ZE_AFFINITY_MASK
VLLM_USE_V1=1 python3 examples/offline_inference/basic/generate.py --model facebook/opt-125m --block-size 64 --enforce-eager
VLLM_USE_V1=1 python3 examples/offline_inference/basic/generate.py --model facebook/opt-125m --block-size 64 --enforce-eager -tp 2 --distributed-executor-backend ray
VLLM_USE_V1=1 python3 examples/offline_inference/basic/generate.py --model facebook/opt-125m --block-size 64 --enforce-eager -tp 2 --distributed-executor-backend mp
pip install tblib==3.1.0
python3 examples/offline_inference/basic/generate.py --model facebook/opt-125m --block-size 64 --enforce-eager
python3 examples/offline_inference/basic/generate.py --model facebook/opt-125m --block-size 64 -O3 -O.cudagraph_mode=NONE
python3 examples/offline_inference/basic/generate.py --model facebook/opt-125m --block-size 64 --enforce-eager -tp 2 --distributed-executor-backend ray
python3 examples/offline_inference/basic/generate.py --model facebook/opt-125m --block-size 64 --enforce-eager -tp 2 --distributed-executor-backend mp
VLLM_ATTENTION_BACKEND=TRITON_ATTN_VLLM_V1 python3 examples/offline_inference/basic/generate.py --model facebook/opt-125m --block-size 64 --enforce-eager
cd tests
pytest -v -s v1/core
pytest -v -s v1/engine

View File

@ -58,14 +58,15 @@ python3 .buildkite/generate_index.py --wheel "$normal_wheel"
aws s3 cp "$wheel" "s3://vllm-wheels/$BUILDKITE_COMMIT/"
aws s3 cp "$normal_wheel" "s3://vllm-wheels/$BUILDKITE_COMMIT/"
if [[ $normal_wheel == *"cu118"* ]]; then
# if $normal_wheel matches cu118, do not upload the index.html
echo "Skipping index files for cu118 wheels"
elif [[ $normal_wheel == *"cu126"* ]]; then
if [[ $normal_wheel == *"cu126"* ]]; then
# if $normal_wheel matches cu126, do not upload the index.html
echo "Skipping index files for cu126 wheels"
elif [[ $normal_wheel == *"cu128"* ]]; then
# if $normal_wheel matches cu128, do not upload the index.html
echo "Skipping index files for cu128 wheels"
else
# only upload index.html for cu128 wheels (default wheels)
# only upload index.html for cu129 wheels (default wheels) as it
# is available on both x86 and arm64
aws s3 cp index.html "s3://vllm-wheels/$BUILDKITE_COMMIT/vllm/index.html"
aws s3 cp "s3://vllm-wheels/nightly/index.html" "s3://vllm-wheels/$BUILDKITE_COMMIT/index.html"
fi
@ -74,14 +75,15 @@ fi
aws s3 cp "$wheel" "s3://vllm-wheels/nightly/"
aws s3 cp "$normal_wheel" "s3://vllm-wheels/nightly/"
if [[ $normal_wheel == *"cu118"* ]]; then
# if $normal_wheel matches cu118, do not upload the index.html
echo "Skipping index files for cu118 wheels"
elif [[ $normal_wheel == *"cu126"* ]]; then
if [[ $normal_wheel == *"cu126"* ]]; then
# if $normal_wheel matches cu126, do not upload the index.html
echo "Skipping index files for cu126 wheels"
elif [[ $normal_wheel == *"cu128"* ]]; then
# if $normal_wheel matches cu128, do not upload the index.html
echo "Skipping index files for cu128 wheels"
else
# only upload index.html for cu128 wheels (default wheels)
# only upload index.html for cu129 wheels (default wheels) as it
# is available on both x86 and arm64
aws s3 cp index.html "s3://vllm-wheels/nightly/vllm/index.html"
fi

View File

@ -41,7 +41,8 @@ steps:
commands:
- bash standalone_tests/pytorch_nightly_dependency.sh
- label: Async Engine, Inputs, Utils, Worker Test # 24min
- label: Async Engine, Inputs, Utils, Worker Test # 36min
timeout_in_minutes: 50
mirror_hardwares: [amdexperimental]
source_file_dependencies:
- vllm/
@ -53,6 +54,7 @@ steps:
- tests/utils_
- tests/worker
- tests/standalone_tests/lazy_imports.py
- tests/transformers_utils
commands:
- python3 standalone_tests/lazy_imports.py
- pytest -v -s mq_llm_engine # MQLLMEngine
@ -62,8 +64,10 @@ steps:
- pytest -v -s multimodal
- pytest -v -s utils_ # Utils
- pytest -v -s worker # Worker
- pytest -v -s transformers_utils # transformers_utils
- label: Python-only Installation Test
- label: Python-only Installation Test # 10min
timeout_in_minutes: 20
mirror_hardwares: [amdexperimental]
source_file_dependencies:
- tests/standalone_tests/python_only_compile.sh
@ -71,7 +75,8 @@ steps:
commands:
- bash standalone_tests/python_only_compile.sh
- label: Basic Correctness Test # 30min
- label: Basic Correctness Test # 20min
timeout_in_minutes: 30
mirror_hardwares: [amdexperimental]
fast_check: true
torch_nightly: true
@ -88,7 +93,8 @@ steps:
- pytest -v -s basic_correctness/test_cpu_offload.py
- VLLM_TEST_ENABLE_ARTIFICIAL_PREEMPT=1 pytest -v -s basic_correctness/test_preemption.py
- label: Core Test # 10min
- label: Core Test # 22min
timeout_in_minutes: 35
mirror_hardwares: [amdexperimental]
fast_check: true
source_file_dependencies:
@ -98,7 +104,19 @@ steps:
commands:
- pytest -v -s core
- label: Entrypoints Test (LLM) # 40min
- label: Entrypoints Unit Tests # 5min
timeout_in_minutes: 10
working_dir: "/vllm-workspace/tests"
fast_check: true
source_file_dependencies:
- vllm/entrypoints
- tests/entrypoints/
commands:
- pytest -v -s entrypoints/openai/tool_parsers
- pytest -v -s entrypoints/ --ignore=entrypoints/llm --ignore=entrypoints/openai --ignore=entrypoints/offline_mode --ignore=entrypoints/test_chat_utils.py --ignore=entrypoints/pooling
- label: Entrypoints Integration Test (LLM) # 30min
timeout_in_minutes: 40
mirror_hardwares: [amdexperimental]
working_dir: "/vllm-workspace/tests"
fast_check: true
@ -109,13 +127,13 @@ steps:
- tests/entrypoints/offline_mode
commands:
- export VLLM_WORKER_MULTIPROC_METHOD=spawn
- pytest -v -s entrypoints/llm --ignore=entrypoints/llm/test_lazy_outlines.py --ignore=entrypoints/llm/test_generate.py --ignore=entrypoints/llm/test_generate_multiple_loras.py --ignore=entrypoints/llm/test_collective_rpc.py
- pytest -v -s entrypoints/llm --ignore=entrypoints/llm/test_lazy_outlines.py --ignore=entrypoints/llm/test_generate.py --ignore=entrypoints/llm/test_collective_rpc.py
- pytest -v -s entrypoints/llm/test_lazy_outlines.py # it needs a clean process
- pytest -v -s entrypoints/llm/test_generate.py # it needs a clean process
- pytest -v -s entrypoints/llm/test_generate_multiple_loras.py # it needs a clean process
- VLLM_USE_V1=0 pytest -v -s entrypoints/offline_mode # Needs to avoid interference with other tests
- label: Entrypoints Test (API Server) # 40min
- label: Entrypoints Integration Test (API Server) # 100min
timeout_in_minutes: 130
mirror_hardwares: [amdexperimental]
working_dir: "/vllm-workspace/tests"
fast_check: true
@ -127,10 +145,24 @@ steps:
commands:
- export VLLM_WORKER_MULTIPROC_METHOD=spawn
- PYTHONPATH=/vllm-workspace pytest -v -s entrypoints/openai/test_collective_rpc.py # PYTHONPATH is needed to import custom Worker extension
- pytest -v -s entrypoints/openai --ignore=entrypoints/openai/test_chat_with_tool_reasoning.py --ignore=entrypoints/openai/test_oot_registration.py --ignore=entrypoints/openai/test_tensorizer_entrypoint.py --ignore=entrypoints/openai/correctness/ --ignore=entrypoints/openai/test_collective_rpc.py
- pytest -v -s entrypoints/openai --ignore=entrypoints/openai/test_chat_with_tool_reasoning.py --ignore=entrypoints/openai/test_oot_registration.py --ignore=entrypoints/openai/test_tensorizer_entrypoint.py --ignore=entrypoints/openai/correctness/ --ignore=entrypoints/openai/test_collective_rpc.py --ignore=entrypoints/openai/tool_parsers/
- pytest -v -s entrypoints/test_chat_utils.py
- label: Distributed Tests (4 GPUs) # 10min
- label: Entrypoints Integration Test (Pooling)
timeout_in_minutes: 50
mirror_hardwares: [amdexperimental]
working_dir: "/vllm-workspace/tests"
fast_check: true
torch_nightly: true
source_file_dependencies:
- vllm/
- tests/entrypoints/pooling
commands:
- export VLLM_WORKER_MULTIPROC_METHOD=spawn
- pytest -v -s entrypoints/pooling
- label: Distributed Tests (4 GPUs) # 35min
timeout_in_minutes: 50
mirror_hardwares: [amdexperimental]
working_dir: "/vllm-workspace/tests"
num_gpus: 4
@ -173,7 +205,8 @@ steps:
- VLLM_ALLOW_INSECURE_SERIALIZATION=1 RAY_DEDUP_LOGS=0 python3 rlhf_colocate.py
- popd
- label: EPLB Algorithm Test
- label: EPLB Algorithm Test # 5min
timeout_in_minutes: 15
working_dir: "/vllm-workspace/tests"
source_file_dependencies:
- vllm/distributed/eplb
@ -182,6 +215,7 @@ steps:
- pytest -v -s distributed/test_eplb_algo.py
- label: EPLB Execution Test # 5min
timeout_in_minutes: 15
working_dir: "/vllm-workspace/tests"
num_gpus: 4
source_file_dependencies:
@ -190,13 +224,14 @@ steps:
commands:
- pytest -v -s distributed/test_eplb_execute.py
- label: Metrics, Tracing Test # 10min
- label: Metrics, Tracing Test # 12min
timeout_in_minutes: 20
mirror_hardwares: [amdexperimental]
num_gpus: 2
source_file_dependencies:
- vllm/
- tests/metrics
- tests/tracing
- tests/v1/tracing
commands:
- pytest -v -s metrics
- "pip install \
@ -209,7 +244,8 @@ steps:
##### fast check tests #####
##### 1 GPU test #####
- label: Regression Test # 5min
- label: Regression Test # 7min
timeout_in_minutes: 20
mirror_hardwares: [amdexperimental]
source_file_dependencies:
- vllm/
@ -219,7 +255,8 @@ steps:
- pytest -v -s test_regression.py
working_dir: "/vllm-workspace/tests" # optional
- label: Engine Test # 10min
- label: Engine Test # 25min
timeout_in_minutes: 40
mirror_hardwares: [amdexperimental]
source_file_dependencies:
- vllm/
@ -234,7 +271,29 @@ steps:
# OOM in the CI unless we run this separately
- pytest -v -s tokenization
- label: V1 Test
- label: V1 Test e2e + engine # 30min
timeout_in_minutes: 45
mirror_hardwares: [amdexperimental]
source_file_dependencies:
- vllm/
- tests/v1
commands:
# TODO: accuracy does not match, whether setting
# VLLM_USE_FLASHINFER_SAMPLER or not on H100.
- pytest -v -s v1/e2e
- pytest -v -s v1/engine
- label: V1 Test entrypoints # 35min
timeout_in_minutes: 50
mirror_hardwares: [amdexperimental]
source_file_dependencies:
- vllm/
- tests/v1
commands:
- pytest -v -s v1/entrypoints
- label: V1 Test others # 42min
timeout_in_minutes: 60
mirror_hardwares: [amdexperimental]
source_file_dependencies:
- vllm/
@ -242,8 +301,7 @@ steps:
commands:
# split the test to avoid interference
- pytest -v -s v1/core
- pytest -v -s v1/engine
- pytest -v -s v1/entrypoints
- pytest -v -s v1/executor
- pytest -v -s v1/sample
- pytest -v -s v1/logits_processors
- pytest -v -s v1/worker
@ -255,14 +313,12 @@ steps:
- pytest -v -s v1/test_utils.py
- pytest -v -s v1/test_oracle.py
- pytest -v -s v1/test_metrics_reader.py
# TODO: accuracy does not match, whether setting
# VLLM_USE_FLASHINFER_SAMPLER or not on H100.
- pytest -v -s v1/e2e
# Integration test for streaming correctness (requires special branch).
- pip install -U git+https://github.com/robertgshaw2-redhat/lm-evaluation-harness.git@streaming-api
- pytest -v -s entrypoints/openai/correctness/test_lmeval.py::test_lm_eval_accuracy_v1_engine
- label: Examples Test # 25min
- label: Examples Test # 30min
timeout_in_minutes: 45
mirror_hardwares: [amdexperimental]
working_dir: "/vllm-workspace/examples"
source_file_dependencies:
@ -280,14 +336,14 @@ steps:
- python3 offline_inference/vision_language_pooling.py --seed 0
- python3 offline_inference/vision_language_multi_image.py --seed 0
- VLLM_USE_V1=0 python3 others/tensorize_vllm_model.py --model facebook/opt-125m serialize --serialized-directory /tmp/ --suffix v1 && python3 others/tensorize_vllm_model.py --model facebook/opt-125m deserialize --path-to-tensors /tmp/vllm/facebook/opt-125m/v1/model.tensors
- python3 offline_inference/encoder_decoder.py
- python3 offline_inference/encoder_decoder_multimodal.py --model-type whisper --seed 0
- python3 offline_inference/basic/classify.py
- python3 offline_inference/basic/embed.py
- python3 offline_inference/basic/score.py
- VLLM_USE_V1=0 python3 offline_inference/profiling.py --model facebook/opt-125m run_num_steps --num-steps 2
- label: Platform Tests (CUDA)
- label: Platform Tests (CUDA) # 4min
timeout_in_minutes: 15
mirror_hardwares: [amdexperimental]
source_file_dependencies:
- vllm/
@ -295,7 +351,8 @@ steps:
commands:
- pytest -v -s cuda/test_cuda_context.py
- label: Samplers Test # 36min
- label: Samplers Test # 56min
timeout_in_minutes: 75
mirror_hardwares: [amdexperimental]
source_file_dependencies:
- vllm/model_executor/layers
@ -306,15 +363,23 @@ steps:
- pytest -v -s samplers
- VLLM_USE_FLASHINFER_SAMPLER=1 pytest -v -s samplers
- label: LoRA Test %N # 15min each
- label: LoRA Test %N # 20min each
timeout_in_minutes: 30
mirror_hardwares: [amdexperimental]
source_file_dependencies:
- vllm/lora
- tests/lora
command: pytest -v -s lora --shard-id=$$BUILDKITE_PARALLEL_JOB --num-shards=$$BUILDKITE_PARALLEL_JOB_COUNT --ignore=lora/test_chatglm3_tp.py --ignore=lora/test_llama_tp.py
commands:
- pytest -v -s lora \
--shard-id=$$BUILDKITE_PARALLEL_JOB \
--num-shards=$$BUILDKITE_PARALLEL_JOB_COUNT \
--ignore=lora/test_chatglm3_tp.py \
--ignore=lora/test_llama_tp.py \
--ignore=lora/test_llm_with_multi_loras.py
parallelism: 4
- label: PyTorch Compilation Unit Tests
- label: PyTorch Compilation Unit Tests # 15min
timeout_in_minutes: 30
mirror_hardwares: [amdexperimental]
torch_nightly: true
source_file_dependencies:
@ -330,7 +395,8 @@ steps:
- pytest -v -s compile/test_fusion_all_reduce.py
- pytest -v -s compile/test_decorator.py
- label: PyTorch Fullgraph Smoke Test # 9min
- label: PyTorch Fullgraph Smoke Test # 15min
timeout_in_minutes: 30
mirror_hardwares: [amdexperimental]
torch_nightly: true
source_file_dependencies:
@ -338,13 +404,10 @@ steps:
- tests/compile
commands:
- pytest -v -s compile/test_basic_correctness.py
# these tests need to be separated, cannot combine
- pytest -v -s compile/piecewise/test_simple.py
- pytest -v -s compile/piecewise/test_toy_llama.py
- pytest -v -s compile/piecewise/test_full_cudagraph.py
- pytest -v -s compile/piecewise/test_multiple_graphs.py
- pytest -v -s compile/piecewise/
- label: PyTorch Fullgraph Test # 18min
- label: PyTorch Fullgraph Test # 20min
timeout_in_minutes: 30
mirror_hardwares: [amdexperimental]
torch_nightly: true
source_file_dependencies:
@ -353,7 +416,8 @@ steps:
commands:
- pytest -v -s compile/test_full_graph.py
- label: Kernels Core Operation Test
- label: Kernels Core Operation Test # 48min
timeout_in_minutes: 75
mirror_hardwares: [amdexperimental]
source_file_dependencies:
- csrc/
@ -361,7 +425,8 @@ steps:
commands:
- pytest -v -s kernels/core
- label: Kernels Attention Test %N
- label: Kernels Attention Test %N # 23min
timeout_in_minutes: 35
mirror_hardwares: [amdexperimental]
source_file_dependencies:
- csrc/attention/
@ -372,7 +437,8 @@ steps:
- pytest -v -s kernels/attention --shard-id=$$BUILDKITE_PARALLEL_JOB --num-shards=$$BUILDKITE_PARALLEL_JOB_COUNT
parallelism: 2
- label: Kernels Quantization Test %N
- label: Kernels Quantization Test %N # 64min
timeout_in_minutes: 90
mirror_hardwares: [amdexperimental]
source_file_dependencies:
- csrc/quantization/
@ -382,18 +448,21 @@ steps:
- pytest -v -s kernels/quantization --shard-id=$$BUILDKITE_PARALLEL_JOB --num-shards=$$BUILDKITE_PARALLEL_JOB_COUNT
parallelism: 2
- label: Kernels MoE Test %N
- label: Kernels MoE Test %N # 40min
timeout_in_minutes: 60
mirror_hardwares: [amdexperimental]
source_file_dependencies:
- csrc/quantization/cutlass_w8a8/moe/
- csrc/moe/
- tests/kernels/moe
- vllm/model_executor/layers/fused_moe/
- vllm/distributed/device_communicators/
commands:
- pytest -v -s kernels/moe --shard-id=$$BUILDKITE_PARALLEL_JOB --num-shards=$$BUILDKITE_PARALLEL_JOB_COUNT
parallelism: 2
- label: Kernels Mamba Test
- label: Kernels Mamba Test # 31min
timeout_in_minutes: 45
mirror_hardwares: [amdexperimental]
source_file_dependencies:
- csrc/mamba/
@ -401,7 +470,8 @@ steps:
commands:
- pytest -v -s kernels/mamba
- label: Tensorizer Test # 11min
- label: Tensorizer Test # 14min
timeout_in_minutes: 25
mirror_hardwares: [amdexperimental]
source_file_dependencies:
- vllm/model_executor/model_loader
@ -413,7 +483,8 @@ steps:
- pytest -v -s tensorizer_loader
- pytest -v -s entrypoints/openai/test_tensorizer_entrypoint.py
- label: Model Executor Test
- label: Model Executor Test # 7min
timeout_in_minutes: 20
mirror_hardwares: [amdexperimental]
source_file_dependencies:
- vllm/model_executor
@ -423,7 +494,8 @@ steps:
- export VLLM_WORKER_MULTIPROC_METHOD=spawn
- pytest -v -s model_executor
- label: Benchmarks # 9min
- label: Benchmarks # 11min
timeout_in_minutes: 20
mirror_hardwares: [amdexperimental]
working_dir: "/vllm-workspace/.buildkite"
source_file_dependencies:
@ -431,7 +503,8 @@ steps:
commands:
- bash scripts/run-benchmarks.sh
- label: Benchmarks CLI Test # 10min
- label: Benchmarks CLI Test # 7min
timeout_in_minutes: 20
mirror_hardwares: [amdexperimental]
source_file_dependencies:
- vllm/
@ -439,7 +512,8 @@ steps:
commands:
- pytest -v -s benchmarks/
- label: Quantization Test
- label: Quantization Test # 70min
timeout_in_minutes: 90
mirror_hardwares: [amdexperimental]
source_file_dependencies:
- csrc/
@ -447,11 +521,16 @@ steps:
- tests/quantization
commands:
# temporary install here since we need nightly, will move to requirements/test.in
# after torchao 0.12 release
- pip install --pre torchao --index-url https://download.pytorch.org/whl/nightly/cu126
# after torchao 0.12 release, and pin a working version of torchao nightly here
# since torchao nightly is only compatible with torch nightly currently
# https://github.com/pytorch/ao/issues/2919, we'll have to skip new torchao tests for now
# we can only upgrade after this is resolved
- pip install --pre torchao==0.13.0.dev20250814 --index-url https://download.pytorch.org/whl/nightly/cu128
- VLLM_TEST_FORCE_LOAD_FORMAT=auto pytest -v -s quantization
- label: LM Eval Small Models # 53min
timeout_in_minutes: 75
mirror_hardwares: [amdexperimental]
source_file_dependencies:
- csrc/
@ -459,7 +538,8 @@ steps:
commands:
- pytest -s -v evals/gsm8k/test_gsm8k_correctness.py --config-list-file=configs/models-small.txt --tp-size=1
- label: OpenAI API correctness
- label: OpenAI API correctness # 22min
timeout_in_minutes: 30
mirror_hardwares: [amdexperimental]
source_file_dependencies:
- csrc/
@ -468,7 +548,8 @@ steps:
commands: # LMEval+Transcription WER check
- pytest -s entrypoints/openai/correctness/
- label: Encoder Decoder tests # 5min
- label: Encoder Decoder tests # 12min
timeout_in_minutes: 20
mirror_hardwares: [amdexperimental]
source_file_dependencies:
- vllm/
@ -476,7 +557,8 @@ steps:
commands:
- pytest -v -s encoder_decoder
- label: OpenAI-Compatible Tool Use # 20 min
- label: OpenAI-Compatible Tool Use # 23 min
timeout_in_minutes: 35
mirror_hardwares: [amdexperimental]
fast_check: false
source_file_dependencies:
@ -489,7 +571,8 @@ steps:
##### models test #####
- label: Basic Models Test # 24min
- label: Basic Models Test # 57min
timeout_in_minutes: 75
mirror_hardwares: [amdexperimental]
torch_nightly: true
source_file_dependencies:
@ -502,7 +585,8 @@ steps:
- pytest -v -s models/test_vision.py
- pytest -v -s models/test_initialization.py
- label: Language Models Test (Standard)
- label: Language Models Test (Standard) # 35min
timeout_in_minutes: 45
mirror_hardwares: [amdexperimental]
torch_nightly: true
source_file_dependencies:
@ -513,6 +597,7 @@ steps:
- pytest -v -s models/language -m core_model
- label: Language Models Test (Hybrid) # 35 min
timeout_in_minutes: 45
mirror_hardwares: [amdexperimental]
torch_nightly: true
source_file_dependencies:
@ -525,7 +610,8 @@ steps:
- uv pip install --system --no-build-isolation 'git+https://github.com/Dao-AILab/causal-conv1d@v1.5.2'
- pytest -v -s models/language/generation -m hybrid_model
- label: Language Models Test (Extended Generation) # 1hr20min
- label: Language Models Test (Extended Generation) # 80min
timeout_in_minutes: 110
mirror_hardwares: [amdexperimental]
optional: true
source_file_dependencies:
@ -536,7 +622,18 @@ steps:
- pip install 'git+https://github.com/Dao-AILab/causal-conv1d@v1.5.0.post8'
- pytest -v -s models/language/generation -m '(not core_model) and (not hybrid_model)'
- label: Language Models Test (PPL)
timeout_in_minutes: 110
mirror_hardwares: [amdexperimental]
optional: true
source_file_dependencies:
- vllm/
- tests/models/language/generation_ppl_test
commands:
- pytest -v -s models/language/generation_ppl_test
- label: Language Models Test (Extended Pooling) # 36min
timeout_in_minutes: 50
mirror_hardwares: [amdexperimental]
optional: true
source_file_dependencies:
@ -545,16 +642,27 @@ steps:
commands:
- pytest -v -s models/language/pooling -m 'not core_model'
- label: Multi-Modal Processor Test
- label: Language Models Test (MTEB)
timeout_in_minutes: 110
mirror_hardwares: [amdexperimental]
optional: true
source_file_dependencies:
- vllm/
- tests/models/language/pooling_mteb_test
commands:
- pytest -v -s models/language/pooling_mteb_test
- label: Multi-Modal Processor Test # 44min
timeout_in_minutes: 60
source_file_dependencies:
- vllm/
- tests/models/multimodal
commands:
- pip install git+https://github.com/TIGER-AI-Lab/Mantis.git
- pytest -v -s models/multimodal/processing --ignore models/multimodal/processing/test_tensor_schema.py
- pytest -v -s models/multimodal/processing/test_tensor_schema.py
- pytest -v -s models/multimodal/processing
- label: Multi-Modal Models Test (Standard)
- label: Multi-Modal Models Test (Standard) # 60min
timeout_in_minutes: 80
mirror_hardwares: [amdexperimental]
torch_nightly: true
source_file_dependencies:
@ -564,7 +672,7 @@ steps:
- pip install git+https://github.com/TIGER-AI-Lab/Mantis.git
- pip freeze | grep -E 'torch'
- pytest -v -s models/multimodal -m core_model --ignore models/multimodal/generation/test_whisper.py --ignore models/multimodal/processing
- cd .. && pytest -v -s tests/models/multimodal/generation/test_whisper.py -m core_model # Otherwise, mp_method="spawn" doesn't work
- cd .. && VLLM_WORKER_MULTIPROC_METHOD=spawn pytest -v -s tests/models/multimodal/generation/test_whisper.py -m core_model # Otherwise, mp_method="spawn" doesn't work
- label: Multi-Modal Models Test (Extended) 1
mirror_hardwares: [amdexperimental]
@ -596,7 +704,8 @@ steps:
- pip install git+https://github.com/TIGER-AI-Lab/Mantis.git
- pytest -v -s models/multimodal/generation/test_common.py -m 'split(group=1) and not core_model'
- label: Quantized Models Test
- label: Quantized Models Test # 45 min
timeout_in_minutes: 60
mirror_hardwares: [amdexperimental]
source_file_dependencies:
- vllm/model_executor/layers/quantization
@ -626,7 +735,8 @@ steps:
- python3 examples/offline_inference/audio_language.py --model-type whisper
- python3 examples/offline_inference/vision_language.py --model-type qwen2_5_vl
- label: Blackwell Test
- label: Blackwell Test # 38 min
timeout_in_minutes: 60
working_dir: "/vllm-workspace/"
gpu: b200
# optional: true
@ -648,11 +758,14 @@ steps:
# num_heads2 broken by https://github.com/flashinfer-ai/flashinfer/issues/1353
- pytest -v -s tests/kernels/attention/test_flashinfer.py -k 'not num_heads2'
- pytest -v -s tests/kernels/attention/test_flashinfer_trtllm_attention.py
- pytest -v -s tests/kernels/test_cutlass_mla_decode.py
- pytest -v -s tests/kernels/attention/test_cutlass_mla_decode.py
- pytest -v -s tests/kernels/attention/test_flashinfer_mla_decode.py
# Quantization
- pytest -v -s tests/kernels/quantization/test_cutlass_scaled_mm.py -k 'fp8'
- pytest -v -s tests/kernels/quantization/test_nvfp4_quant.py
- pytest -v -s tests/kernels/quantization/test_silu_nvfp4_quant_fusion.py
- pytest -v -s tests/kernels/quantization/test_nvfp4_scaled_mm.py
- pytest -v -s tests/kernels/quantization/test_flashinfer_scaled_mm.py
- pytest -v -s tests/kernels/quantization/test_flashinfer_nvfp4_scaled_mm.py
- pytest -v -s tests/kernels/moe/test_nvfp4_moe.py
- pytest -v -s tests/kernels/moe/test_mxfp4_moe.py
@ -660,11 +773,13 @@ steps:
- pytest -v -s tests/compile/test_fusion_all_reduce.py
- pytest -v -s tests/compile/test_fusion_attn.py::test_attention_quant_pattern
- pytest -v -s tests/kernels/moe/test_flashinfer.py
- pytest -v -s tests/compile/test_silu_mul_quant_fusion.py
##### 1 GPU test #####
##### multi gpus test #####
- label: Distributed Comm Ops Test # 7min
timeout_in_minutes: 20
mirror_hardwares: [amdexperimental]
working_dir: "/vllm-workspace/tests"
num_gpus: 2
@ -676,6 +791,7 @@ steps:
- pytest -v -s distributed/test_shm_broadcast.py
- label: 2 Node Tests (4 GPUs in total) # 16min
timeout_in_minutes: 30
mirror_hardwares: [amdexperimental]
working_dir: "/vllm-workspace/tests"
num_gpus: 2
@ -699,7 +815,8 @@ steps:
- NUM_NODES=2 torchrun --nnodes 2 --nproc-per-node=2 --rdzv_backend=c10d --rdzv_endpoint=192.168.10.10 distributed/test_node_count.py | grep 'Node count test passed'
- python3 ../examples/offline_inference/data_parallel.py --dp-size=2 --tp-size=1 --node-size=2 --node-rank=1 --master-addr=192.168.10.10 --master-port=12345 --enforce-eager --trust-remote-code
- label: Distributed Tests (2 GPUs) # 40min
- label: Distributed Tests (2 GPUs) # 110min
timeout_in_minutes: 150
mirror_hardwares: [amdexperimental]
working_dir: "/vllm-workspace/tests"
num_gpus: 2
@ -730,7 +847,8 @@ steps:
# Avoid importing model tests that cause CUDA reinitialization error
- pytest models/test_transformers.py -v -s -m 'distributed(num_gpus=2)'
- pytest models/language -v -s -m 'distributed(num_gpus=2)'
- pytest models/multimodal -v -s -m 'distributed(num_gpus=2)'
- pytest models/multimodal -v -s -m 'distributed(num_gpus=2)' --ignore models/multimodal/generation/test_whisper.py
- VLLM_WORKER_MULTIPROC_METHOD=spawn pytest models/multimodal/generation/test_whisper.py -v -s -m 'distributed(num_gpus=2)'
# test sequence parallel
- pytest -v -s distributed/test_sequence_parallel.py
# this test fails consistently.
@ -740,6 +858,7 @@ steps:
- pytest -v -s models/multimodal/generation/test_maverick.py
- label: Plugin Tests (2 GPUs) # 40min
timeout_in_minutes: 60
mirror_hardwares: [amdexperimental]
working_dir: "/vllm-workspace/tests"
num_gpus: 2
@ -752,6 +871,11 @@ steps:
- pytest -v -s plugins_tests/test_platform_plugins.py
- pip uninstall vllm_add_dummy_platform -y
# end platform plugin tests
# begin io_processor plugins test, all the code in between uses the prithvi_io_processor plugin
- pip install -e ./plugins/prithvi_io_processor_plugin
- pytest -v -s plugins_tests/test_io_processor_plugins.py
- pip uninstall prithvi_io_processor_plugin -y
# end io_processor plugins test
# other tests continue here:
- pytest -v -s plugins_tests/test_scheduler_plugins.py
- pip install -e ./plugins/vllm_add_dummy_model
@ -760,7 +884,8 @@ steps:
- pytest -v -s models/test_oot_registration.py # it needs a clean process
- pytest -v -s plugins/lora_resolvers # unit tests for in-tree lora resolver plugins
- label: Pipeline Parallelism Test # 45min
- label: Pipeline + Context Parallelism Test # 45min
timeout_in_minutes: 60
mirror_hardwares: [amdexperimental]
working_dir: "/vllm-workspace/tests"
num_gpus: 4
@ -773,8 +898,10 @@ steps:
commands:
- pytest -v -s distributed/test_pp_cudagraph.py
- pytest -v -s distributed/test_pipeline_parallel.py
# - pytest -v -s distributed/test_context_parallel.py # TODO: enable it on Hopper runners or add triton MLA support
- label: LoRA TP Test (Distributed)
- label: LoRA TP Test (Distributed) # 17 min
timeout_in_minutes: 30
mirror_hardwares: [amdexperimental]
num_gpus: 4
source_file_dependencies:
@ -788,13 +915,15 @@ steps:
# requires multi-GPU testing for validation.
- pytest -v -s -x lora/test_chatglm3_tp.py
- pytest -v -s -x lora/test_llama_tp.py
- pytest -v -s -x lora/test_multi_loras_with_tp.py
- pytest -v -s -x lora/test_llm_with_multi_loras.py
- label: Weight Loading Multiple GPU Test # 33min
timeout_in_minutes: 45
mirror_hardwares: [amdexperimental]
working_dir: "/vllm-workspace/tests"
num_gpus: 2
optional: true
source_file_dependencies:
- vllm/
- tests/weight_loading
@ -842,3 +971,10 @@ steps:
commands:
- export VLLM_WORKER_MULTIPROC_METHOD=spawn
- pytest -s -v test_lm_eval_correctness.py --config-list-file=configs/models-large.txt --tp-size=4
- label: Qwen MoE EP Test # optional
gpu: h200
optional: true
num_gpus: 2
commands:
- CUDA_VISIBLE_DEVICES=1,2 VLLM_ALL2ALL_BACKEND=deepep_high_throughput VLLM_USE_DEEP_GEMM=1 VLLM_LOGGING_LEVEL=DEBUG python3 /vllm-workspace/examples/offline_inference/data_parallel.py --model Qwen/Qwen1.5-MoE-A2.7B --tp-size=1 --dp-size=2 --max-model-len 2048

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@ -0,0 +1,24 @@
# doc: https://github.com/pytorch/test-infra/blob/main/tools/stronghold/docs/bc_linter_config.md
version: 1
paths:
# We temporarily disable globally, and will only enable with `annotations.include`
# include:
# - "vllm/v1/attetion/*.py"
# - "vllm/v1/core/*.py"
exclude:
- "**/*.py"
scan:
functions: true # check free functions and methods
classes: true # check classes/dataclasses
public_only: true # ignore names starting with "_" at any level
annotations:
include: # decorators that forceinclude a symbol
- name: "bc_linter_include" # matched by simple name or dotted suffix
propagate_to_members: false # for classes, include methods/inner classes
exclude: # decorators that forceexclude a symbol
- name: "bc_linter_skip" # matched by simple name or dotted suffix
propagate_to_members: true # for classes, exclude methods/inner classes
excluded_violations: [] # e.g. ["ParameterRenamed", "FieldTypeChanged"]

40
.github/CODEOWNERS vendored
View File

@ -5,18 +5,21 @@
/vllm/attention/backends/abstract.py @WoosukKwon @zhuohan123 @youkaichao @alexm-redhat @comaniac @njhill
/vllm/core @zhuohan123 @youkaichao @alexm-redhat @comaniac @njhill
/vllm/engine/llm_engine.py @zhuohan123 @youkaichao @alexm-redhat @comaniac @njhill
/vllm/executor/executor_base.py @zhuohan123 @youkaichao @alexm-redhat @comaniac @njhill
/vllm/worker/worker_base.py @zhuohan123 @youkaichao @alexm-redhat @comaniac @njhill
/vllm/executor/executor_base.py @zhuohan123 @youkaichao @alexm-redhat @comaniac @njhill @22quinn
/vllm/worker/worker_base.py @zhuohan123 @youkaichao @alexm-redhat @comaniac @njhill @22quinn
/vllm/worker/worker.py @zhuohan123 @youkaichao @alexm-redhat @comaniac @njhill
/vllm/model_executor/layers/sampler.py @zhuohan123 @youkaichao @alexm-redhat @comaniac @njhill
/vllm/model_executor/layers/sampler.py @zhuohan123 @youkaichao @alexm-redhat @comaniac @njhill @NickLucche
/vllm/model_executor/layers/quantization @mgoin @robertgshaw2-redhat @tlrmchlsmth @yewentao256
/vllm/model_executor/layers/mamba @tdoublep
/vllm/multimodal @DarkLight1337 @ywang96
/vllm/model_executor/model_loader @22quinn
/vllm/multimodal @DarkLight1337 @ywang96 @NickLucche
/vllm/v1/sample @22quinn @houseroad
/vllm/vllm_flash_attn @LucasWilkinson
/vllm/lora @jeejeelee
/vllm/reasoning @aarnphm
/vllm/entrypoints @aarnphm
/vllm/reasoning @aarnphm @chaunceyjiang
/vllm/entrypoints @aarnphm @chaunceyjiang
/vllm/compilation @zou3519 @youkaichao @ProExpertProg
/vllm/distributed/kv_transfer @NickLucche
CMakeLists.txt @tlrmchlsmth @LucasWilkinson
# Any change to the VllmConfig changes can have a large user-facing impact,
@ -25,8 +28,11 @@ CMakeLists.txt @tlrmchlsmth @LucasWilkinson
# vLLM V1
/vllm/v1 @WoosukKwon @robertgshaw2-redhat @njhill @ywang96 @comaniac @alexm-redhat
/vllm/v1/structured_output @mgoin @russellb @aarnphm
/vllm/v1/structured_output @mgoin @russellb @aarnphm @benchislett
/vllm/v1/spec_decode @benchislett @luccafong
/vllm/v1/attention/backends/triton_attn.py @tdoublep
/vllm/v1/core @heheda12345
/vllm/v1/kv_cache_interface.py @heheda12345
# Test ownership
/.buildkite/lm-eval-harness @mgoin @simon-mo
@ -34,18 +40,20 @@ CMakeLists.txt @tlrmchlsmth @LucasWilkinson
/tests/distributed/test_multi_node_assignment.py @youkaichao
/tests/distributed/test_pipeline_parallel.py @youkaichao
/tests/distributed/test_same_node.py @youkaichao
/tests/entrypoints @DarkLight1337 @robertgshaw2-redhat @simon-mo @aarnphm
/tests/entrypoints @DarkLight1337 @robertgshaw2-redhat @simon-mo @aarnphm @NickLucche
/tests/kernels @tlrmchlsmth @WoosukKwon @yewentao256
/tests/models @DarkLight1337 @ywang96
/tests/multimodal @DarkLight1337 @ywang96
/tests/multimodal @DarkLight1337 @ywang96 @NickLucche
/tests/prefix_caching @comaniac @KuntaiDu
/tests/quantization @mgoin @robertgshaw2-redhat @yewentao256
/tests/test_inputs.py @DarkLight1337 @ywang96
/tests/v1/entrypoints/llm/test_struct_output_generate.py @mgoin @russellb @aarnphm
/tests/v1/structured_output @mgoin @russellb @aarnphm
/tests/v1/core @heheda12345
/tests/weight_loading @mgoin @youkaichao @yewentao256
/tests/lora @jeejeelee
/tests/models/language/generation/test_hybrid.py @tdoublep
/tests/v1/kv_connector/nixl_integration @NickLucche
# Docs
/docs @hmellor
@ -67,6 +75,9 @@ mkdocs.yaml @hmellor
/vllm/attention/backends/dual_chunk_flash_attn.py @sighingnow
/vllm/model_executor/models/qwen* @sighingnow
# MTP-specific files
/vllm/model_executor/models/deepseek_mtp.py @luccafong
# Mistral-specific files
/vllm/model_executor/models/mistral*.py @patrickvonplaten
/vllm/model_executor/models/mixtral*.py @patrickvonplaten
@ -79,4 +90,15 @@ mkdocs.yaml @hmellor
/vllm/attention/ops/chunked_prefill_paged_decode.py @tdoublep
/vllm/attention/ops/triton_unified_attention.py @tdoublep
# ROCm related: specify owner with write access to notify AMD folks for careful code review
/docker/Dockerfile.rocm* @gshtras
/vllm/v1/attention/backends/rocm*.py @gshtras
/vllm/v1/attention/backends/mla/rocm*.py @gshtras
/vllm/attention/ops/rocm*.py @gshtras
/vllm/model_executor/layers/fused_moe/rocm*.py @gshtras
# TPU
/vllm/v1/worker/tpu* @NickLucche
/vllm/platforms/tpu.py @NickLucche
/vllm/v1/sample/tpu @NickLucche
/vllm/tests/v1/tpu @NickLucche

View File

@ -7,8 +7,6 @@ PLEASE FILL IN THE PR DESCRIPTION HERE ENSURING ALL CHECKLIST ITEMS (AT THE BOTT
## Test Result
## (Optional) Documentation Update
---
<details>
<summary> Essential Elements of an Effective PR Description Checklist </summary>
@ -17,6 +15,7 @@ PLEASE FILL IN THE PR DESCRIPTION HERE ENSURING ALL CHECKLIST ITEMS (AT THE BOTT
- [ ] The test plan, such as providing test command.
- [ ] The test results, such as pasting the results comparison before and after, or e2e results
- [ ] (Optional) The necessary documentation update, such as updating `supported_models.md` and `examples` for a new model.
- [ ] (Optional) Release notes update. If your change is user facing, please update the release notes draft in the [Google Doc](https://docs.google.com/document/d/1YyVqrgX4gHTtrstbq8oWUImOyPCKSGnJ7xtTpmXzlRs/edit?tab=t.0).
</details>
**BEFORE SUBMITTING, PLEASE READ <https://docs.vllm.ai/en/latest/contributing>** (anything written below this line will be removed by GitHub Actions)

14
.github/mergify.yml vendored
View File

@ -273,6 +273,20 @@ pull_request_rules:
users:
- "sangstar"
- name: assign reviewer for modelopt changes
conditions:
- or:
- files~=^vllm/model_executor/layers/quantization/modelopt\.py$
- files~=^vllm/model_executor/layers/quantization/__init__\.py$
- files~=^tests/models/quantization/test_modelopt\.py$
- files~=^tests/quantization/test_modelopt\.py$
- files~=^tests/models/quantization/test_nvfp4\.py$
- files~=^docs/features/quantization/modelopt\.md$
actions:
assign:
users:
- "Edwardf0t1"
- name: remove 'needs-rebase' label when conflict is resolved
conditions:
- -conflict

21
.github/scale-config.yml vendored Normal file
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@ -0,0 +1,21 @@
# scale-config.yml:
# Powers what instance types are available for GHA auto-scaled
# runners. Runners listed here will be available as self hosted
# runners, configuration is directly pulled from the main branch.
# runner_types:
# runner_label:
# instance_type: m4.large
# os: linux
# # min_available defaults to the global cfg in the ALI Terraform
# min_available: undefined
# # when max_available value is not defined, no max runners is enforced
# max_available: undefined
# disk_size: 50
# is_ephemeral: true
runner_types:
linux.2xlarge:
disk_size: 150
instance_type: c5.2xlarge
is_ephemeral: true
os: linux

View File

@ -10,7 +10,7 @@ jobs:
runs-on: ubuntu-latest
steps:
- name: Add label
uses: actions/github-script@60a0d83039c74a4aee543508d2ffcb1c3799cdea # v7.0.1
uses: actions/github-script@ed597411d8f924073f98dfc5c65a23a2325f34cd # v8.0.0
with:
script: |
github.rest.issues.addLabels({

27
.github/workflows/bc-lint.yml vendored Normal file
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@ -0,0 +1,27 @@
name: BC Lint
on:
pull_request:
types:
- opened
- synchronize
- reopened
jobs:
bc_lint:
if: github.repository_owner == 'vllm-project'
runs-on: ubuntu-latest
steps:
- name: Run BC Lint Action
uses: pytorch/test-infra/.github/actions/bc-lint@main
with:
repo: ${{ github.event.pull_request.head.repo.full_name }}
base_sha: ${{ github.event.pull_request.base.sha }}
head_sha: ${{ github.event.pull_request.head.sha }}
suppression: ${{ contains(github.event.pull_request.labels.*.name, 'suppress-bc-linter') }}
docs_link: 'https://github.com/pytorch/test-infra/wiki/BC-Linter'
config_dir: .github
concurrency:
group: ${{ github.workflow }}-${{ github.event.pull_request.number || github.sha }}
cancel-in-progress: true

View File

@ -16,7 +16,7 @@ jobs:
uses: actions/checkout@11bd71901bbe5b1630ceea73d27597364c9af683 # v4.2.2
- name: Set up Python
uses: actions/setup-python@42375524e23c412d93fb67b49958b491fce71c38 # v5.4.0
uses: actions/setup-python@e797f83bcb11b83ae66e0230d6156d7c80228e7c # v6.0.0
with:
python-version: '3.12'

309
.github/workflows/issue_autolabel.yml vendored Normal file
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@ -0,0 +1,309 @@
name: Label issues based on keywords
on:
issues:
types: [opened, edited, reopened]
permissions:
issues: write # needed so the workflow can add labels
contents: read
concurrency:
group: issue-labeler-${{ github.event.issue.number }}
cancel-in-progress: true
jobs:
add-labels:
runs-on: ubuntu-latest
steps:
- name: Label issues based on keywords
uses: actions/github-script@ed597411d8f924073f98dfc5c65a23a2325f34cd # v8.0.0
with:
script: |
// Configuration: Add new labels and keywords here
const labelConfig = {
rocm: {
// Keyword search - matches whole words only (with word boundaries)
keywords: [
{
term: "composable kernel",
searchIn: "both"
},
{
term: "rccl",
searchIn: "body" // only search in body
},
{
term: "migraphx",
searchIn: "title" // only search in title
},
{
term: "hipgraph",
searchIn: "both"
},
{
term: "ROCm System Management Interface",
searchIn: "body"
},
],
// Substring search - matches anywhere in text (partial matches)
substrings: [
{
term: "VLLM_ROCM_",
searchIn: "both"
},
{
term: "aiter",
searchIn: "title"
},
{
term: "rocm",
searchIn: "title"
},
{
term: "amd",
searchIn: "title"
},
{
term: "hip-",
searchIn: "both"
},
{
term: "gfx",
searchIn: "both"
},
{
term: "cdna",
searchIn: "both"
},
{
term: "rdna",
searchIn: "both"
},
{
term: "torch_hip",
searchIn: "body" // only in body
},
{
term: "_hip",
searchIn: "both"
},
{
term: "hip_",
searchIn: "both"
},
// ROCm tools and libraries
{
term: "hipify",
searchIn: "both"
},
],
// Regex patterns - for complex pattern matching
regexPatterns: [
{
pattern: "\\bmi\\d{3}[a-z]*\\b",
description: "AMD GPU names (mi + 3 digits + optional letters)",
flags: "gi",
searchIn: "both" // "title", "body", or "both"
}
],
},
};
// Helper function to create regex based on search type
function createSearchRegex(term, type) {
// Escape special regex characters in the term
const escapedTerm = term.replace(/[.*+?^${}()|[\]\\]/g, '\\$&');
switch (type) {
case 'keyword':
// Word boundary search - matches whole words only
return new RegExp(`\\b${escapedTerm}\\b`, "gi");
case 'substring':
// Substring search - matches anywhere in the text
return new RegExp(escapedTerm, "gi");
default:
throw new Error(`Unknown search type: ${type}`);
}
}
// Helper function to find matching terms in text with line information
function findMatchingTermsWithLines(text, searchTerms = [], searchType = 'keyword', searchLocation = '') {
const matches = [];
const lines = text.split('\n');
for (const termConfig of searchTerms) {
let regex;
let term, searchIn, pattern, description, flags;
// Handle different input formats (string or object)
if (typeof termConfig === 'string') {
term = termConfig;
searchIn = 'both'; // default
} else {
term = termConfig.term;
searchIn = termConfig.searchIn || 'both';
pattern = termConfig.pattern;
description = termConfig.description;
flags = termConfig.flags;
}
// Skip if this term shouldn't be searched in the current location
if (searchIn !== 'both' && searchIn !== searchLocation) {
continue;
}
// Create appropriate regex
if (searchType === 'regex') {
regex = new RegExp(pattern, flags || "gi");
} else {
regex = createSearchRegex(term, searchType);
}
const termMatches = [];
// Check each line for matches
lines.forEach((line, lineIndex) => {
const lineMatches = line.match(regex);
if (lineMatches) {
lineMatches.forEach(match => {
termMatches.push({
match: match,
lineNumber: lineIndex + 1,
lineContent: line.trim(),
searchType: searchType,
searchLocation: searchLocation,
originalTerm: term || pattern,
description: description,
// Show context around the match in the line
context: line.length > 100 ?
line.substring(Math.max(0, line.toLowerCase().indexOf(match.toLowerCase()) - 30),
line.toLowerCase().indexOf(match.toLowerCase()) + match.length + 30) + '...'
: line.trim()
});
});
}
});
if (termMatches.length > 0) {
matches.push({
term: term || (description || pattern),
searchType: searchType,
searchLocation: searchLocation,
searchIn: searchIn,
pattern: pattern,
matches: termMatches,
count: termMatches.length
});
}
}
return matches;
}
// Helper function to check if label should be added
async function processLabel(labelName, config) {
const body = context.payload.issue.body || "";
const title = context.payload.issue.title || "";
core.notice(`Processing label: ${labelName}`);
core.notice(`Issue Title: "${title}"`);
core.notice(`Issue Body length: ${body.length} characters`);
let shouldAddLabel = false;
let allMatches = [];
let reason = '';
const keywords = config.keywords || [];
const substrings = config.substrings || [];
const regexPatterns = config.regexPatterns || [];
core.notice(`Searching with ${keywords.length} keywords, ${substrings.length} substrings, and ${regexPatterns.length} regex patterns`);
// Search in title
if (title.trim()) {
core.notice(`Searching in title: "${title}"`);
const titleKeywordMatches = findMatchingTermsWithLines(title, keywords, 'keyword', 'title');
const titleSubstringMatches = findMatchingTermsWithLines(title, substrings, 'substring', 'title');
const titleRegexMatches = findMatchingTermsWithLines(title, regexPatterns, 'regex', 'title');
allMatches.push(...titleKeywordMatches, ...titleSubstringMatches, ...titleRegexMatches);
}
// Search in body
if (body.trim()) {
core.notice(`Searching in body (${body.length} characters)`);
const bodyKeywordMatches = findMatchingTermsWithLines(body, keywords, 'keyword', 'body');
const bodySubstringMatches = findMatchingTermsWithLines(body, substrings, 'substring', 'body');
const bodyRegexMatches = findMatchingTermsWithLines(body, regexPatterns, 'regex', 'body');
allMatches.push(...bodyKeywordMatches, ...bodySubstringMatches, ...bodyRegexMatches);
}
if (allMatches.length > 0) {
core.notice(`Found ${allMatches.length} matching term(s):`);
for (const termMatch of allMatches) {
const locationText = termMatch.searchLocation === 'title' ? 'title' : 'body';
const searchInText = termMatch.searchIn === 'both' ? 'both' : termMatch.searchIn;
if (termMatch.searchType === 'regex') {
core.notice(` 📍 Regex: "${termMatch.term}" (pattern: ${termMatch.pattern}) found ${termMatch.count} time(s) in ${locationText} (configured to search in: ${searchInText}):`);
} else {
core.notice(` 📍 Term: "${termMatch.term}" (${termMatch.searchType} search) found ${termMatch.count} time(s) in ${locationText} (configured to search in: ${searchInText}):`);
}
// Show details for each match
termMatch.matches.forEach((match, index) => {
core.notice(` ${index + 1}. Line ${match.lineNumber} in ${match.searchLocation}: "${match.match}" [${match.searchType}]`);
if (match.description) {
core.notice(` Description: ${match.description}`);
}
core.notice(` Context: ${match.context}`);
if (match.lineContent !== match.context) {
core.notice(` Full line: ${match.lineContent}`);
}
});
}
shouldAddLabel = true;
const totalMatches = allMatches.reduce((sum, t) => sum + t.count, 0);
const titleMatches = allMatches.filter(t => t.searchLocation === 'title').reduce((sum, t) => sum + t.count, 0);
const bodyMatches = allMatches.filter(t => t.searchLocation === 'body').reduce((sum, t) => sum + t.count, 0);
const keywordMatches = allMatches.filter(t => t.searchType === 'keyword').reduce((sum, t) => sum + t.count, 0);
const substringMatches = allMatches.filter(t => t.searchType === 'substring').reduce((sum, t) => sum + t.count, 0);
const regexMatches = allMatches.filter(t => t.searchType === 'regex').reduce((sum, t) => sum + t.count, 0);
reason = `Found ${totalMatches} total matches (${titleMatches} in title, ${bodyMatches} in body) - ${keywordMatches} keyword matches, ${substringMatches} substring matches, ${regexMatches} regex matches`;
}
core.notice(`Final decision: ${shouldAddLabel ? 'ADD LABEL' : 'DO NOT ADD LABEL'}`);
core.notice(`Reason: ${reason || 'No matching terms found'}`);
if (shouldAddLabel) {
const existingLabels = context.payload.issue.labels.map(l => l.name);
if (!existingLabels.includes(labelName)) {
await github.rest.issues.addLabels({
owner: context.repo.owner,
repo: context.repo.repo,
issue_number: context.issue.number,
labels: [labelName],
});
core.notice(`Label "${labelName}" added. ${reason}`);
return true;
}
core.notice(`Label "${labelName}" already present.`);
return false;
}
core.notice(`No matching terms found for label "${labelName}".`);
return false;
}
// Process all configured labels
const processLabels = Object.entries(labelConfig)
.map(([labelName, config]) => processLabel(labelName, config));
const labelsAdded = await Promise.all(processLabels);
const numLabelsAdded = labelsAdded.reduce((x, y) => x + y, 0);
core.notice(`Processing complete. ${numLabelsAdded} label(s) added.`);

View File

@ -1,89 +0,0 @@
name: Lint and Deploy Charts
on: pull_request
concurrency:
group: ${{ github.workflow }}-${{ github.ref }}
cancel-in-progress: true
permissions:
contents: read
jobs:
lint-and-deploy:
runs-on: ubuntu-latest
steps:
- name: Checkout
uses: actions/checkout@11bd71901bbe5b1630ceea73d27597364c9af683 # v4.2.2
with:
fetch-depth: 0
- name: Set up Helm
uses: azure/setup-helm@b9e51907a09c216f16ebe8536097933489208112 # v4.3.0
with:
version: v3.14.4
#Python is required because ct lint runs Yamale and yamllint which require Python.
- uses: actions/setup-python@42375524e23c412d93fb67b49958b491fce71c38 # v5.4.0
with:
python-version: '3.13'
- name: Set up chart-testing
uses: helm/chart-testing-action@0d28d3144d3a25ea2cc349d6e59901c4ff469b3b # v2.7.0
with:
version: v3.10.1
- name: Run chart-testing (lint)
run: ct lint --target-branch ${{ github.event.repository.default_branch }} --chart-dirs examples/online_serving/chart-helm --charts examples/online_serving/chart-helm
- name: Setup minio
run: |
docker network create vllm-net
docker run -d -p 9000:9000 --name minio --net vllm-net \
-e "MINIO_ACCESS_KEY=minioadmin" \
-e "MINIO_SECRET_KEY=minioadmin" \
-v /tmp/data:/data \
-v /tmp/config:/root/.minio \
minio/minio server /data
export AWS_ACCESS_KEY_ID=minioadmin
export AWS_SECRET_ACCESS_KEY=minioadmin
export AWS_EC2_METADATA_DISABLED=true
mkdir opt-125m
cd opt-125m && curl -O -Ls "https://huggingface.co/facebook/opt-125m/resolve/main/{pytorch_model.bin,config.json,generation_config.json,merges.txt,special_tokens_map.json,tokenizer_config.json,vocab.json}" && cd ..
aws --endpoint-url http://127.0.0.1:9000/ s3 mb s3://testbucket
aws --endpoint-url http://127.0.0.1:9000/ s3 cp opt-125m/ s3://testbucket/opt-125m --recursive
- name: Create kind cluster
uses: helm/kind-action@a1b0e391336a6ee6713a0583f8c6240d70863de3 # v1.12.0
- name: Build the Docker image vllm cpu
run: docker buildx build -f docker/Dockerfile.cpu -t vllm-cpu-env .
- name: Configuration of docker images, network and namespace for the kind cluster
run: |
docker pull amazon/aws-cli:2.6.4
kind load docker-image amazon/aws-cli:2.6.4 --name chart-testing
kind load docker-image vllm-cpu-env:latest --name chart-testing
docker network connect vllm-net "$(docker ps -aqf "name=chart-testing-control-plane")"
kubectl create ns ns-vllm
- name: Run chart-testing (install)
run: |
export AWS_ACCESS_KEY_ID=minioadmin
export AWS_SECRET_ACCESS_KEY=minioadmin
sleep 30 && kubectl -n ns-vllm logs -f "$(kubectl -n ns-vllm get pods | awk '/deployment/ {print $1;exit}')" &
helm install --wait --wait-for-jobs --timeout 5m0s --debug --create-namespace --namespace=ns-vllm test-vllm examples/online_serving/chart-helm -f examples/online_serving/chart-helm/values.yaml --set secrets.s3endpoint=http://minio:9000 --set secrets.s3bucketname=testbucket --set secrets.s3accesskeyid=$AWS_ACCESS_KEY_ID --set secrets.s3accesskey=$AWS_SECRET_ACCESS_KEY --set resources.requests.cpu=1 --set resources.requests.memory=4Gi --set resources.limits.cpu=2 --set resources.limits.memory=5Gi --set image.env[0].name=VLLM_CPU_KVCACHE_SPACE --set image.env[1].name=VLLM_LOGGING_LEVEL --set image.env[2].name=VLLM_CPU_CI_ENV --set-string image.env[0].value="1" --set-string image.env[1].value="DEBUG" --set-string image.env[2].value="1" --set-string extraInit.s3modelpath="opt-125m/" --set-string 'resources.limits.nvidia\.com/gpu=0' --set-string 'resources.requests.nvidia\.com/gpu=0' --set-string image.repository="vllm-cpu-env"
- name: curl test
run: |
kubectl -n ns-vllm port-forward service/test-vllm-service 8001:80 &
sleep 10
CODE="$(curl -v -f --location http://localhost:8001/v1/completions \
--header "Content-Type: application/json" \
--data '{
"model": "opt-125m",
"prompt": "San Francisco is a",
"max_tokens": 7,
"temperature": 0
}'):$CODE"
echo "$CODE"

View File

@ -17,7 +17,7 @@ jobs:
runs-on: ubuntu-latest
steps:
- uses: actions/checkout@11bd71901bbe5b1630ceea73d27597364c9af683 # v4.2.2
- uses: actions/setup-python@42375524e23c412d93fb67b49958b491fce71c38 # v5.4.0
- uses: actions/setup-python@e797f83bcb11b83ae66e0230d6156d7c80228e7c # v6.0.0
with:
python-version: "3.12"
- run: echo "::add-matcher::.github/workflows/matchers/actionlint.json"

View File

@ -1,111 +0,0 @@
# This workflow will upload a Python Package to Release asset
# For more information see: https://help.github.com/en/actions/language-and-framework-guides/using-python-with-github-actions
name: Create Release
on:
push:
tags:
- v*
# Needed to create release and upload assets
permissions:
contents: write
jobs:
release:
# Retrieve tag and create release
name: Create Release
runs-on: ubuntu-latest
outputs:
upload_url: ${{ steps.create_release.outputs.upload_url }}
steps:
- name: Checkout
uses: actions/checkout@11bd71901bbe5b1630ceea73d27597364c9af683 # v4.2.2
- name: Extract branch info
shell: bash
run: |
echo "release_tag=${GITHUB_REF#refs/*/}" >> "$GITHUB_ENV"
- name: Create Release
id: create_release
uses: actions/github-script@60a0d83039c74a4aee543508d2ffcb1c3799cdea # v7.0.1
env:
RELEASE_TAG: ${{ env.release_tag }}
with:
github-token: "${{ secrets.GITHUB_TOKEN }}"
script: |
const script = require('.github/workflows/scripts/create_release.js')
await script(github, context, core)
# NOTE(simon): No longer build wheel using GitHub Actions. See buildkite's release workflow.
# wheel:
# name: Build Wheel
# runs-on: ${{ matrix.os }}
# needs: release
# strategy:
# fail-fast: false
# matrix:
# os: ['ubuntu-20.04']
# python-version: ['3.9', '3.10', '3.11', '3.12']
# pytorch-version: ['2.4.0'] # Must be the most recent version that meets requirements/cuda.txt.
# cuda-version: ['11.8', '12.1']
# steps:
# - name: Checkout
# uses: actions/checkout@11bd71901bbe5b1630ceea73d27597364c9af683 # v4.2.2
# - name: Setup ccache
# uses: hendrikmuhs/ccache-action@ed74d11c0b343532753ecead8a951bb09bb34bc9 # v1.2.14
# with:
# create-symlink: true
# key: ${{ github.job }}-${{ matrix.python-version }}-${{ matrix.cuda-version }}
# - name: Set up Linux Env
# if: ${{ runner.os == 'Linux' }}
# run: |
# bash -x .github/workflows/scripts/env.sh
# - name: Set up Python
# uses: actions/setup-python@0b93645e9fea7318ecaed2b359559ac225c90a2b # v5.3.0
# with:
# python-version: ${{ matrix.python-version }}
# - name: Install CUDA ${{ matrix.cuda-version }}
# run: |
# bash -x .github/workflows/scripts/cuda-install.sh ${{ matrix.cuda-version }} ${{ matrix.os }}
# - name: Install PyTorch ${{ matrix.pytorch-version }} with CUDA ${{ matrix.cuda-version }}
# run: |
# bash -x .github/workflows/scripts/pytorch-install.sh ${{ matrix.python-version }} ${{ matrix.pytorch-version }} ${{ matrix.cuda-version }}
# - name: Build wheel
# shell: bash
# env:
# CMAKE_BUILD_TYPE: Release # do not compile with debug symbol to reduce wheel size
# run: |
# bash -x .github/workflows/scripts/build.sh ${{ matrix.python-version }} ${{ matrix.cuda-version }}
# wheel_name=$(find dist -name "*whl" -print0 | xargs -0 -n 1 basename)
# asset_name=${wheel_name//"linux"/"manylinux1"}
# echo "wheel_name=${wheel_name}" >> "$GITHUB_ENV"
# echo "asset_name=${asset_name}" >> "$GITHUB_ENV"
# - name: Upload Release Asset
# uses: actions/upload-release-asset@e8f9f06c4b078e705bd2ea027f0926603fc9b4d5 # v1.0.2
# env:
# GITHUB_TOKEN: ${{ secrets.GITHUB_TOKEN }}
# with:
# upload_url: ${{ needs.release.outputs.upload_url }}
# asset_path: ./dist/${{ env.wheel_name }}
# asset_name: ${{ env.asset_name }}
# asset_content_type: application/*
# (Danielkinz): This last step will publish the .whl to pypi. Warning: untested
# - name: Publish package
# uses: pypa/gh-action-pypi-publish@release/v1.8
# with:
# repository-url: https://test.pypi.org/legacy/
# password: ${{ secrets.PYPI_API_TOKEN }}
# skip-existing: true

View File

@ -9,19 +9,46 @@ jobs:
runs-on: ubuntu-latest
steps:
- name: Remind to run full CI on PR
uses: actions/github-script@60a0d83039c74a4aee543508d2ffcb1c3799cdea # v7.0.1
uses: actions/github-script@ed597411d8f924073f98dfc5c65a23a2325f34cd # v8.0.0
with:
script: |
github.rest.issues.createComment({
owner: context.repo.owner,
repo: context.repo.repo,
issue_number: context.issue.number,
body: '👋 Hi! Thank you for contributing to the vLLM project.\n\n' +
'💬 Join our developer Slack at https://slack.vllm.ai to discuss your PR in #pr-reviews, coordinate on features in #feat- channels, or join special interest groups in #sig- channels.\n\n' +
'Just a reminder: PRs would not trigger full CI run by default. Instead, it would only run `fastcheck` CI which starts running only a small and essential subset of CI tests to quickly catch errors. You can run other CI tests on top of those by going to your `fastcheck` build on Buildkite UI (linked in the PR checks section) and unblock them. If you do not have permission to unblock, ping `simon-mo` or `khluu` to add you in our Buildkite org.\n\n' +
'Once the PR is approved and ready to go, your PR reviewer(s) can run CI to test the changes comprehensively before merging.\n\n' +
'To run CI, PR reviewers can either: Add `ready` label to the PR or enable auto-merge.\n\n' +
'🚀'
})
try {
// Get the PR author
const prAuthor = context.payload.pull_request.user.login;
// Check if this is the author's first PR in this repository
// Use GitHub's search API to find all PRs by this author
const { data: searchResults } = await github.rest.search.issuesAndPullRequests({
q: `repo:${context.repo.owner}/${context.repo.repo} type:pr author:${prAuthor}`,
per_page: 100
});
const authorPRCount = searchResults.total_count;
console.log(`Found ${authorPRCount} PRs by ${prAuthor}`);
// Only post comment if this is the first PR (only one PR by this author)
if (authorPRCount === 1) {
console.log(`Posting welcome comment for first-time contributor: ${prAuthor}`);
await github.rest.issues.createComment({
owner: context.repo.owner,
repo: context.repo.repo,
issue_number: context.issue.number,
body: '👋 Hi! Thank you for contributing to the vLLM project.\n\n' +
'💬 Join our developer Slack at https://slack.vllm.ai to discuss your PR in #pr-reviews, coordinate on features in #feat- channels, or join special interest groups in #sig- channels.\n\n' +
'Just a reminder: PRs would not trigger full CI run by default. Instead, it would only run `fastcheck` CI which starts running only a small and essential subset of CI tests to quickly catch errors. \n\n' +
'You ask your reviewers to trigger select CI tests on top of `fastcheck` CI. \n\n' +
'Once the PR is approved and ready to go, your PR reviewer(s) can run CI to test the changes comprehensively before merging.\n\n' +
'To run CI, PR reviewers can either: Add `ready` label to the PR or enable auto-merge.\n\n' +
'If you have any questions, please reach out to us on Slack at https://slack.vllm.ai.\n\n' +
'🚀'
});
} else {
console.log(`Skipping comment for ${prAuthor} - not their first PR (${authorPRCount} PRs found)`);
}
} catch (error) {
console.error('Error checking PR history or posting comment:', error);
// Don't fail the workflow, just log the error
}
env:
GITHUB_TOKEN: ${{ secrets.GITHUB_TOKEN }}

View File

@ -13,7 +13,7 @@ jobs:
actions: write
runs-on: ubuntu-latest
steps:
- uses: actions/stale@5bef64f19d7facfb25b37b414482c7164d639639 # v9.1.0
- uses: actions/stale@3a9db7e6a41a89f618792c92c0e97cc736e1b13f # v10.0.0
with:
# Increasing this value ensures that changes to this workflow
# propagate to all issues and PRs in days rather than months

8
.gitignore vendored
View File

@ -177,6 +177,14 @@ cython_debug/
# VSCode
.vscode/
# Claude
CLAUDE.md
.claude/
# Codex
AGENTS.md
.codex/
# DS Store
.DS_Store

View File

@ -21,7 +21,7 @@ repos:
- id: ruff-format
files: ^(.buildkite|benchmarks|examples)/.*
- repo: https://github.com/crate-ci/typos
rev: v1.34.0
rev: v1.35.5
hooks:
- id: typos
- repo: https://github.com/PyCQA/isort

View File

@ -1 +1,2 @@
collect_env.py
vllm/model_executor/layers/fla/ops/*.py

View File

@ -30,7 +30,7 @@ install(CODE "set(CMAKE_INSTALL_LOCAL_ONLY TRUE)" ALL_COMPONENTS)
# Supported python versions. These versions will be searched in order, the
# first match will be selected. These should be kept in sync with setup.py.
#
set(PYTHON_SUPPORTED_VERSIONS "3.9" "3.10" "3.11" "3.12", "3.13")
set(PYTHON_SUPPORTED_VERSIONS "3.9" "3.10" "3.11" "3.12" "3.13")
# Supported AMD GPU architectures.
set(HIP_SUPPORTED_ARCHS "gfx906;gfx908;gfx90a;gfx942;gfx950;gfx1030;gfx1100;gfx1101;gfx1200;gfx1201")
@ -45,8 +45,8 @@ set(HIP_SUPPORTED_ARCHS "gfx906;gfx908;gfx90a;gfx942;gfx950;gfx1030;gfx1100;gfx1
# requirements.txt files and should be kept consistent. The ROCm torch
# versions are derived from docker/Dockerfile.rocm
#
set(TORCH_SUPPORTED_VERSION_CUDA "2.7.1")
set(TORCH_SUPPORTED_VERSION_ROCM "2.7.0")
set(TORCH_SUPPORTED_VERSION_CUDA "2.8.0")
set(TORCH_SUPPORTED_VERSION_ROCM "2.8.0")
#
# Try to find python package with an executable that exactly matches
@ -541,6 +541,7 @@ if(VLLM_GPU_LANG STREQUAL "CUDA")
if(${CMAKE_CUDA_COMPILER_VERSION} VERSION_GREATER_EQUAL 12.8 AND FP4_ARCHS)
set(SRCS
"csrc/quantization/fp4/nvfp4_quant_kernels.cu"
"csrc/quantization/fp4/activation_nvfp4_quant_fusion_kernels.cu"
"csrc/quantization/fp4/nvfp4_scaled_mm_sm120_kernels.cu")
set_gencode_flags_for_srcs(
SRCS "${SRCS}"
@ -559,6 +560,7 @@ if(VLLM_GPU_LANG STREQUAL "CUDA")
if(${CMAKE_CUDA_COMPILER_VERSION} VERSION_GREATER_EQUAL 12.8 AND FP4_ARCHS)
set(SRCS
"csrc/quantization/fp4/nvfp4_quant_kernels.cu"
"csrc/quantization/fp4/activation_nvfp4_quant_fusion_kernels.cu"
"csrc/quantization/fp4/nvfp4_experts_quant.cu"
"csrc/quantization/fp4/nvfp4_scaled_mm_kernels.cu"
"csrc/quantization/fp4/nvfp4_blockwise_moe_kernel.cu")
@ -750,6 +752,33 @@ if(VLLM_GPU_LANG STREQUAL "CUDA")
"found in CUDA target architectures")
endif()
endif()
# Only build W4A8 kernels if we are building for something compatible with sm90a
cuda_archs_loose_intersection(W4A8_ARCHS "9.0a" "${CUDA_ARCHS}")
if(${CMAKE_CUDA_COMPILER_VERSION} VERSION_GREATER_EQUAL 12.0 AND W4A8_ARCHS)
set(SRCS
"csrc/quantization/cutlass_w4a8/w4a8_mm_entry.cu")
set_gencode_flags_for_srcs(
SRCS "${SRCS}"
CUDA_ARCHS "${W4A8_ARCHS}")
list(APPEND VLLM_EXT_SRC "${SRCS}")
message(STATUS "Building W4A8 kernels for archs: ${W4A8_ARCHS}")
else()
if (NOT ${CMAKE_CUDA_COMPILER_VERSION} VERSION_GREATER_EQUAL 12.0
AND W4A8_ARCHS)
message(STATUS "Not building W4A8 kernels as CUDA Compiler version is "
"not >= 12.0, we recommend upgrading to CUDA 12.0 or "
"later if you intend on running w4a16 quantized models on "
"Hopper.")
else()
message(STATUS "Not building W4A8 kernels as no compatible archs "
"found in CUDA target architectures")
endif()
endif()
# if CUDA endif
endif()
@ -790,7 +819,9 @@ set(VLLM_MOE_EXT_SRC
"csrc/moe/topk_softmax_kernels.cu")
if(VLLM_GPU_LANG STREQUAL "CUDA")
list(APPEND VLLM_MOE_EXT_SRC "csrc/moe/moe_wna16.cu")
list(APPEND VLLM_MOE_EXT_SRC
"csrc/moe/moe_wna16.cu"
"csrc/moe/grouped_topk_kernels.cu")
endif()
if(VLLM_GPU_LANG STREQUAL "CUDA")

View File

@ -2,7 +2,6 @@ include LICENSE
include requirements/common.txt
include requirements/cuda.txt
include requirements/rocm.txt
include requirements/neuron.txt
include requirements/cpu.txt
include CMakeLists.txt

View File

@ -14,18 +14,25 @@ Easy, fast, and cheap LLM serving for everyone
| <a href="https://docs.vllm.ai"><b>Documentation</b></a> | <a href="https://blog.vllm.ai/"><b>Blog</b></a> | <a href="https://arxiv.org/abs/2309.06180"><b>Paper</b></a> | <a href="https://x.com/vllm_project"><b>Twitter/X</b></a> | <a href="https://discuss.vllm.ai"><b>User Forum</b></a> | <a href="https://slack.vllm.ai"><b>Developer Slack</b></a> |
</p>
---
Join us at the [PyTorch Conference, October 22-23](https://events.linuxfoundation.org/pytorch-conference/) and [Ray Summit, November 3-5](https://www.anyscale.com/ray-summit/2025) in San Francisco for our latest updates on vLLM and to meet the vLLM team! Register now for the largest vLLM community events of the year!
---
*Latest News* 🔥
- [2025/08] We hosted [vLLM Beijing Meetup](https://mp.weixin.qq.com/s/dgkWg1WFpWGO2jCdTqQHxA) focusing on large-scale LLM deployment! Please find the meetup slides [here](https://drive.google.com/drive/folders/1Pid6NSFLU43DZRi0EaTcPgXsAzDvbBqF) and the recording [here](https://www.chaspark.com/#/live/1166916873711665152).
- [2025/05] We hosted [NYC vLLM Meetup](https://lu.ma/c1rqyf1f)! Please find the meetup slides [here](https://docs.google.com/presentation/d/1_q_aW_ioMJWUImf1s1YM-ZhjXz8cUeL0IJvaquOYBeA/edit?usp=sharing).
- [2025/08] We hosted [vLLM Shenzhen Meetup](https://mp.weixin.qq.com/s/k8ZBO1u2_2odgiKWH_GVTQ) focusing on the ecosystem around vLLM! Please find the meetup slides [here](https://drive.google.com/drive/folders/1Ua2SVKVSu-wp5vou_6ElraDt2bnKhiEA).
- [2025/08] We hosted [vLLM Singapore Meetup](https://www.sginnovate.com/event/vllm-sg-meet). We shared V1 updates, disaggregated serving and MLLM speedups with speakers from Embedded LLM, AMD, WekaIO, and A*STAR. Please find the meetup slides [here](https://drive.google.com/drive/folders/1ncf3GyqLdqFaB6IeB834E5TZJPLAOiXZ?usp=sharing).
- [2025/08] We hosted [vLLM Shanghai Meetup](https://mp.weixin.qq.com/s/pDmAXHcN7Iqc8sUKgJgGtg) focusing on building, developing, and integrating with vLLM! Please find the meetup slides [here](https://drive.google.com/drive/folders/1OvLx39wnCGy_WKq8SiVKf7YcxxYI3WCH).
- [2025/05] vLLM is now a hosted project under PyTorch Foundation! Please find the announcement [here](https://pytorch.org/blog/pytorch-foundation-welcomes-vllm/).
- [2025/01] We are excited to announce the alpha release of vLLM V1: A major architectural upgrade with 1.7x speedup! Clean code, optimized execution loop, zero-overhead prefix caching, enhanced multimodal support, and more. Please check out our blog post [here](https://blog.vllm.ai/2025/01/27/v1-alpha-release.html).
<details>
<summary>Previous News</summary>
- [2025/08] We hosted [vLLM Korea Meetup](https://luma.com/cgcgprmh) with Red Hat and Rebellions! We shared the latest advancements in vLLM along with project spotlights from the vLLM Korea community. Please find the meetup slides [here](https://drive.google.com/file/d/1bcrrAE1rxUgx0mjIeOWT6hNe2RefC5Hm/view).
- [2025/08] We hosted [vLLM Beijing Meetup](https://mp.weixin.qq.com/s/dgkWg1WFpWGO2jCdTqQHxA) focusing on large-scale LLM deployment! Please find the meetup slides [here](https://drive.google.com/drive/folders/1Pid6NSFLU43DZRi0EaTcPgXsAzDvbBqF) and the recording [here](https://www.chaspark.com/#/live/1166916873711665152).
- [2025/05] We hosted [NYC vLLM Meetup](https://lu.ma/c1rqyf1f)! Please find the meetup slides [here](https://docs.google.com/presentation/d/1_q_aW_ioMJWUImf1s1YM-ZhjXz8cUeL0IJvaquOYBeA/edit?usp=sharing).
- [2025/04] We hosted [Asia Developer Day](https://www.sginnovate.com/event/limited-availability-morning-evening-slots-remaining-inaugural-vllm-asia-developer-day)! Please find the meetup slides from the vLLM team [here](https://docs.google.com/presentation/d/19cp6Qu8u48ihB91A064XfaXruNYiBOUKrBxAmDOllOo/edit?usp=sharing).
- [2025/03] We hosted [vLLM x Ollama Inference Night](https://lu.ma/vllm-ollama)! Please find the meetup slides from the vLLM team [here](https://docs.google.com/presentation/d/16T2PDD1YwRnZ4Tu8Q5r6n53c5Lr5c73UV9Vd2_eBo4U/edit?usp=sharing).
- [2025/03] We hosted [the first vLLM China Meetup](https://mp.weixin.qq.com/s/n77GibL2corAtQHtVEAzfg)! Please find the meetup slides from vLLM team [here](https://docs.google.com/presentation/d/1REHvfQMKGnvz6p3Fd23HhSO4c8j5WPGZV0bKYLwnHyQ/edit?usp=sharing).

View File

@ -42,4 +42,9 @@ For certain security issues of CRITICAL, HIGH, or MODERATE severity level, we ma
* If you wish to be added to the prenotification group, please send an email copying all the members of the [vulnerability management team](https://docs.vllm.ai/en/latest/contributing/vulnerability_management.html). Each vendor contact will be analyzed on a case-by-case basis.
* Organizations and vendors who either ship or use vLLM, are eligible to join the prenotification group if they meet at least one of the following qualifications
* Substantial internal deployment leveraging the upstream vLLM project.
* Established internal security teams and comprehensive compliance measures.
* Active and consistent contributions to the upstream vLLM project.
* We may withdraw organizations from receiving future prenotifications if they release fixes or any other information about issues before they are public. Group membership may also change based on policy refinements for who may be included.

View File

@ -59,6 +59,12 @@ become available.
<td style="text-align: center;"></td>
<td><code>synthetic</code></td>
</tr>
<tr>
<td><strong>RandomMultiModal (Image/Video)</strong></td>
<td style="text-align: center;">🟡</td>
<td style="text-align: center;">🚧</td>
<td><code>synthetic</code> </td>
</tr>
<tr>
<td><strong>Prefix Repetition</strong></td>
<td style="text-align: center;"></td>
@ -89,6 +95,24 @@ become available.
<td style="text-align: center;"></td>
<td><code>lmms-lab/LLaVA-OneVision-Data</code>, <code>Aeala/ShareGPT_Vicuna_unfiltered</code></td>
</tr>
<tr>
<td><strong>HuggingFace-MTBench</strong></td>
<td style="text-align: center;"></td>
<td style="text-align: center;"></td>
<td><code>philschmid/mt-bench</code></td>
</tr>
<tr>
<td><strong>HuggingFace-Blazedit</strong></td>
<td style="text-align: center;"></td>
<td style="text-align: center;"></td>
<td><code>vdaita/edit_5k_char</code>, <code>vdaita/edit_10k_char</code></td>
</tr>
<tr>
<td><strong>Spec Bench</strong></td>
<td style="text-align: center;"></td>
<td style="text-align: center;"></td>
<td><code>wget https://raw.githubusercontent.com/hemingkx/Spec-Bench/refs/heads/main/data/spec_bench/question.jsonl</code></td>
</tr>
<tr>
<td><strong>Custom</strong></td>
<td style="text-align: center;"></td>
@ -104,7 +128,12 @@ become available.
🚧: to be supported
**Note**: HuggingFace dataset's `dataset-name` should be set to `hf`
**Note**: HuggingFace dataset's `dataset-name` should be set to `hf`.
For local `dataset-path`, please set `hf-name` to its Hugging Face ID like
```bash
--dataset-path /datasets/VisionArena-Chat/ --hf-name lmarena-ai/VisionArena-Chat
```
## 🚀 Example - Online Benchmark
@ -228,6 +257,43 @@ vllm bench serve \
--num-prompts 2048
```
### Spec Bench Benchmark with Speculative Decoding
``` bash
VLLM_USE_V1=1 vllm serve meta-llama/Meta-Llama-3-8B-Instruct \
--speculative-config $'{"method": "ngram",
"num_speculative_tokens": 5, "prompt_lookup_max": 5,
"prompt_lookup_min": 2}'
```
[SpecBench dataset](https://github.com/hemingkx/Spec-Bench)
Run all categories:
``` bash
# Download the dataset using:
# wget https://raw.githubusercontent.com/hemingkx/Spec-Bench/refs/heads/main/data/spec_bench/question.jsonl
vllm bench serve \
--model meta-llama/Meta-Llama-3-8B-Instruct \
--dataset-name spec_bench \
--dataset-path "<YOUR_DOWNLOADED_PATH>/data/spec_bench/question.jsonl" \
--num-prompts -1
```
Available categories include `[writing, roleplay, reasoning, math, coding, extraction, stem, humanities, translation, summarization, qa, math_reasoning, rag]`.
Run only a specific category like "summarization":
``` bash
vllm bench serve \
--model meta-llama/Meta-Llama-3-8B-Instruct \
--dataset-name spec_bench \
--dataset-path "<YOUR_DOWNLOADED_PATH>/data/spec_bench/question.jsonl" \
--num-prompts -1
--spec-bench-category "summarization"
```
### Other HuggingFaceDataset Examples
```bash
@ -284,6 +350,18 @@ vllm bench serve \
--num-prompts 80
```
`vdaita/edit_5k_char` or `vdaita/edit_10k_char`:
``` bash
vllm bench serve \
--model Qwen/QwQ-32B \
--dataset-name hf \
--dataset-path vdaita/edit_5k_char \
--num-prompts 90 \
--blazedit-min-distance 0.01 \
--blazedit-max-distance 0.99
```
### Running With Sampling Parameters
When using OpenAI-compatible backends such as `vllm`, optional sampling
@ -683,7 +761,7 @@ python -m vllm.entrypoints.openai.api_server \
Send requests with images:
```bash
python benchmarks/benchmark_serving.py \
vllm bench serve \
--backend openai-chat \
--model Qwen/Qwen2.5-VL-7B-Instruct \
--dataset-name sharegpt \
@ -710,7 +788,7 @@ python -m vllm.entrypoints.openai.api_server \
Send requests with videos:
```bash
python benchmarks/benchmark_serving.py \
vllm bench serve \
--backend openai-chat \
--model Qwen/Qwen2.5-VL-7B-Instruct \
--dataset-name sharegpt \
@ -722,4 +800,75 @@ python benchmarks/benchmark_serving.py \
--endpoint /v1/chat/completion
```
### Synthetic Random Images (random-mm)
Generate synthetic image inputs alongside random text prompts to stress-test vision models without external datasets.
Notes:
- Works only with online benchmark via the OpenAI backend (`--backend openai-chat`) and endpoint `/v1/chat/completions`.
- Video sampling is not yet implemented.
Start the server (example):
```bash
vllm serve Qwen/Qwen2.5-VL-3B-Instruct \
--dtype bfloat16 \
--max-model-len 16384 \
--limit-mm-per-prompt '{"image": 3, "video": 0}' \
--mm-processor-kwargs max_pixels=1003520
```
Benchmark. It is recommended to use the flag `--ignore-eos` to simulate real responses. You can set the size of the output via the arg `random-output-len`.
Ex.1: Fixed number of items and a single image resolution, enforcing generation of approx 40 tokens:
```bash
vllm bench serve \
--backend openai-chat \
--model Qwen/Qwen2.5-VL-3B-Instruct \
--endpoint /v1/chat/completions \
--dataset-name random-mm \
--num-prompts 100 \
--max-concurrency 10 \
--random-prefix-len 25 \
--random-input-len 300 \
--random-output-len 40 \
--random-range-ratio 0.2 \
--random-mm-base-items-per-request 2 \
--random-mm-limit-mm-per-prompt '{"image": 3, "video": 0}' \
--random-mm-bucket-config '{(224, 224, 1): 1.0}' \
--request-rate inf \
--ignore-eos \
--seed 42
```
The number of items per request can be controlled by passing multiple image buckets:
```bash
--random-mm-base-items-per-request 2 \
--random-mm-num-mm-items-range-ratio 0.5 \
--random-mm-limit-mm-per-prompt '{"image": 4, "video": 0}' \
--random-mm-bucket-config '{(256, 256, 1): 0.7, (720, 1280, 1): 0.3}' \
```
Flags specific to `random-mm`:
- `--random-mm-base-items-per-request`: base number of multimodal items per request.
- `--random-mm-num-mm-items-range-ratio`: vary item count uniformly in the closed integer range [floor(n·(1r)), ceil(n·(1+r))]. Set r=0 to keep it fixed; r=1 allows 0 items.
- `--random-mm-limit-mm-per-prompt`: per-modality hard caps, e.g. '{"image": 3, "video": 0}'.
- `--random-mm-bucket-config`: dict mapping (H, W, T) → probability. Entries with probability 0 are removed; remaining probabilities are renormalized to sum to 1. Use T=1 for images. Set any T>1 for videos (video sampling not yet supported).
Behavioral notes:
- If the requested base item count cannot be satisfied under the provided per-prompt limits, the tool raises an error rather than silently clamping.
How sampling works:
- Determine per-request item count k by sampling uniformly from the integer range defined by `--random-mm-base-items-per-request` and `--random-mm-num-mm-items-range-ratio`, then clamp k to at most the sum of per-modality limits.
- For each of the k items, sample a bucket (H, W, T) according to the normalized probabilities in `--random-mm-bucket-config`, while tracking how many items of each modality have been added.
- If a modality (e.g., image) reaches its limit from `--random-mm-limit-mm-per-prompt`, all buckets of that modality are excluded and the remaining bucket probabilities are renormalized before continuing.
This should be seen as an edge case, and if this behavior can be avoided by setting `--random-mm-limit-mm-per-prompt` to a large number. Note that this might result in errors due to engine config `--limit-mm-per-prompt`.
- The resulting request contains synthetic image data in `multi_modal_data` (OpenAI Chat format). When `random-mm` is used with the OpenAI Chat backend, prompts remain text and MM content is attached via `multi_modal_data`.
</details>

View File

@ -31,6 +31,12 @@ cd vllm
You must set the following variables at the top of the script before execution.
Note: You can also override the default values below via environment variables when running the script.
```bash
MODEL=meta-llama/Llama-3.3-70B-Instruct SYSTEM=TPU TP=8 DOWNLOAD_DIR='' INPUT_LEN=128 OUTPUT_LEN=2048 MAX_MODEL_LEN=2300 MIN_CACHE_HIT_PCT=0 MAX_LATENCY_ALLOWED_MS=100000000000 NUM_SEQS_LIST="128 256" NUM_BATCHED_TOKENS_LIST="1024 2048 4096" VLLM_LOGGING_LEVEL=DEBUG bash auto_tune.sh
```
| Variable | Description | Example Value |
| --- | --- | --- |
| `BASE` | **Required.** The absolute path to the parent directory of your vLLM repository directory. | `"$HOME"` |

View File

@ -5,25 +5,41 @@
TAG=$(date +"%Y_%m_%d_%H_%M")
SCRIPT_DIR=$( cd -- "$( dirname -- "${BASH_SOURCE[0]}" )" &> /dev/null && pwd )
BASE="$SCRIPT_DIR/../../.."
MODEL="meta-llama/Llama-3.1-8B-Instruct"
SYSTEM="TPU"
TP=1
DOWNLOAD_DIR=""
INPUT_LEN=4000
OUTPUT_LEN=16
MAX_MODEL_LEN=4096
MIN_CACHE_HIT_PCT=0
MAX_LATENCY_ALLOWED_MS=100000000000
NUM_SEQS_LIST="128 256"
NUM_BATCHED_TOKENS_LIST="512 1024 2048 4096"
VLLM_LOGGING_LEVEL=${VLLM_LOGGING_LEVEL:-INFO}
BASE=${BASE:-"$SCRIPT_DIR/../../.."}
MODEL=${MODEL:-"meta-llama/Llama-3.1-8B-Instruct"}
SYSTEM=${SYSTEM:-"TPU"}
TP=${TP:-1}
DOWNLOAD_DIR=${DOWNLOAD_DIR:-""}
INPUT_LEN=${INPUT_LEN:-4000}
OUTPUT_LEN=${OUTPUT_LEN:-16}
MAX_MODEL_LEN=${MAX_MODEL_LEN:-4096}
MIN_CACHE_HIT_PCT=${MIN_CACHE_HIT_PCT:-0}
MAX_LATENCY_ALLOWED_MS=${MAX_LATENCY_ALLOWED_MS:-100000000000}
NUM_SEQS_LIST=${NUM_SEQS_LIST:-"128 256"}
NUM_BATCHED_TOKENS_LIST=${NUM_BATCHED_TOKENS_LIST:-"512 1024 2048 4096"}
LOG_FOLDER="$BASE/auto-benchmark/$TAG"
RESULT="$LOG_FOLDER/result.txt"
PROFILE_PATH="$LOG_FOLDER/profile"
echo "result file: $RESULT"
echo "model: $MODEL"
echo "====================== AUTO TUNE PARAMETERS ===================="
echo "SCRIPT_DIR=$SCRIPT_DIR"
echo "BASE=$BASE"
echo "MODEL=$MODEL"
echo "SYSTEM=$SYSTEM"
echo "TP=$TP"
echo "DOWNLOAD_DIR=$DOWNLOAD_DIR"
echo "INPUT_LEN=$INPUT_LEN"
echo "OUTPUT_LEN=$OUTPUT_LEN"
echo "MAX_MODEL_LEN=$MAX_MODEL_LEN"
echo "MIN_CACHE_HIT_PCT=$MIN_CACHE_HIT_PCT"
echo "MAX_LATENCY_ALLOWED_MS=$MAX_LATENCY_ALLOWED_MS"
echo "NUM_SEQS_LIST=$NUM_SEQS_LIST"
echo "NUM_BATCHED_TOKENS_LIST=$NUM_BATCHED_TOKENS_LIST"
echo "VLLM_LOGGING_LEVEL=$VLLM_LOGGING_LEVEL"
echo "RESULT_FILE=$RESULT"
echo "====================== AUTO TUNEPARAMETERS ===================="
rm -rf $LOG_FOLDER
rm -rf $PROFILE_PATH
@ -213,7 +229,7 @@ run_benchmark() {
pkill -if vllm
sleep 10
printf '=%.0s' $(seq 1 20)
echo "===================="
return 0
}

View File

@ -57,7 +57,7 @@ def invoke_main() -> None:
"--num-iteration",
type=int,
default=1000,
help="Number of iterations to run to stablize final data readings",
help="Number of iterations to run to stabilize final data readings",
)
parser.add_argument(
"--allocate-blocks",

View File

@ -403,7 +403,7 @@ class RandomDataset(BenchmarkDataset):
# [6880, 6881] -> ['Ġcalls', 'here'] ->
# [1650, 939, 486] -> ['Ġcall', 'sh', 'ere']
# To avoid uncontrolled change of the prompt length,
# the encoded sequence is truncated before being decode again.
# the encoded sequence is truncated before being decoded again.
total_input_len = prefix_len + int(input_lens[i])
re_encoded_sequence = tokenizer.encode(prompt, add_special_tokens=False)[
:total_input_len

View File

@ -1,191 +1,17 @@
# SPDX-License-Identifier: Apache-2.0
# SPDX-FileCopyrightText: Copyright contributors to the vLLM project
"""Benchmark the latency of processing a single batch of requests."""
import argparse
import dataclasses
import json
import os
import time
from typing import Any, Optional
import numpy as np
from tqdm import tqdm
from typing_extensions import deprecated
import vllm.envs as envs
from benchmark_utils import convert_to_pytorch_benchmark_format, write_to_json
from vllm import LLM, SamplingParams
from vllm.engine.arg_utils import EngineArgs
from vllm.inputs import PromptType
from vllm.sampling_params import BeamSearchParams
from vllm.utils import FlexibleArgumentParser
def save_to_pytorch_benchmark_format(
args: argparse.Namespace, results: dict[str, Any]
) -> None:
pt_records = convert_to_pytorch_benchmark_format(
args=args,
metrics={"latency": results["latencies"]},
extra_info={k: results[k] for k in ["avg_latency", "percentiles"]},
)
if pt_records:
pt_file = f"{os.path.splitext(args.output_json)[0]}.pytorch.json"
write_to_json(pt_file, pt_records)
@deprecated(
"benchmark_latency.py is deprecated and will be removed in a "
"future version. Please use 'vllm bench latency' instead.",
)
def main(args: argparse.Namespace):
print(args)
engine_args = EngineArgs.from_cli_args(args)
# NOTE(woosuk): If the request cannot be processed in a single batch,
# the engine will automatically process the request in multiple batches.
llm = LLM(**dataclasses.asdict(engine_args))
assert llm.llm_engine.model_config.max_model_len >= (
args.input_len + args.output_len
), (
"Please ensure that max_model_len is greater than"
" the sum of input_len and output_len."
)
sampling_params = SamplingParams(
n=args.n,
temperature=1.0,
top_p=1.0,
ignore_eos=True,
max_tokens=args.output_len,
detokenize=not args.disable_detokenize,
)
print(sampling_params)
dummy_prompt_token_ids = np.random.randint(
10000, size=(args.batch_size, args.input_len)
)
dummy_prompts: list[PromptType] = [
{"prompt_token_ids": batch} for batch in dummy_prompt_token_ids.tolist()
]
def llm_generate():
if not args.use_beam_search:
llm.generate(dummy_prompts, sampling_params=sampling_params, use_tqdm=False)
else:
llm.beam_search(
dummy_prompts,
BeamSearchParams(
beam_width=args.n,
max_tokens=args.output_len,
ignore_eos=True,
),
)
def run_to_completion(profile_dir: Optional[str] = None):
if profile_dir:
llm.start_profile()
llm_generate()
llm.stop_profile()
else:
start_time = time.perf_counter()
llm_generate()
end_time = time.perf_counter()
latency = end_time - start_time
return latency
print("Warming up...")
for _ in tqdm(range(args.num_iters_warmup), desc="Warmup iterations"):
run_to_completion(profile_dir=None)
if args.profile:
profile_dir = envs.VLLM_TORCH_PROFILER_DIR
print(f"Profiling (results will be saved to '{profile_dir}')...")
run_to_completion(profile_dir=profile_dir)
return
# Benchmark.
latencies = []
for _ in tqdm(range(args.num_iters), desc="Profiling iterations"):
latencies.append(run_to_completion(profile_dir=None))
latencies = np.array(latencies)
percentages = [10, 25, 50, 75, 90, 99]
percentiles = np.percentile(latencies, percentages)
print(f"Avg latency: {np.mean(latencies)} seconds")
for percentage, percentile in zip(percentages, percentiles):
print(f"{percentage}% percentile latency: {percentile} seconds")
# Output JSON results if specified
if args.output_json:
results = {
"avg_latency": np.mean(latencies),
"latencies": latencies.tolist(),
"percentiles": dict(zip(percentages, percentiles.tolist())),
}
with open(args.output_json, "w") as f:
json.dump(results, f, indent=4)
save_to_pytorch_benchmark_format(args, results)
def create_argument_parser():
parser = FlexibleArgumentParser(
description="Benchmark the latency of processing a single batch of "
"requests till completion."
)
parser.add_argument("--input-len", type=int, default=32)
parser.add_argument("--output-len", type=int, default=128)
parser.add_argument("--batch-size", type=int, default=8)
parser.add_argument(
"--n",
type=int,
default=1,
help="Number of generated sequences per prompt.",
)
parser.add_argument("--use-beam-search", action="store_true")
parser.add_argument(
"--num-iters-warmup",
type=int,
default=10,
help="Number of iterations to run for warmup.",
)
parser.add_argument(
"--num-iters", type=int, default=30, help="Number of iterations to run."
)
parser.add_argument(
"--profile",
action="store_true",
help="profile the generation process of a single batch",
)
parser.add_argument(
"--output-json",
type=str,
default=None,
help="Path to save the latency results in JSON format.",
)
parser.add_argument(
"--disable-detokenize",
action="store_true",
help=(
"Do not detokenize responses (i.e. do not include "
"detokenization time in the latency measurement)"
),
)
parser = EngineArgs.add_cli_args(parser)
# V1 enables prefix caching by default which skews the latency
# numbers. We need to disable prefix caching by default.
parser.set_defaults(enable_prefix_caching=False)
return parser
import sys
if __name__ == "__main__":
parser = create_argument_parser()
args = parser.parse_args()
if args.profile and not envs.VLLM_TORCH_PROFILER_DIR:
raise OSError(
"The environment variable 'VLLM_TORCH_PROFILER_DIR' is not set. "
"Please set it to a valid path to use torch profiler."
)
main(args)
print("""DEPRECATED: This script has been moved to the vLLM CLI.
Please use the following command instead:
vllm bench latency
For help with the new command, run:
vllm bench latency --help
Alternatively, you can run the new command directly with:
python -m vllm.entrypoints.cli.main bench latency --help
""")
sys.exit(1)

View File

@ -77,7 +77,7 @@ def invoke_main() -> None:
"--num-iteration",
type=int,
default=100,
help="Number of iterations to run to stablize final data readings",
help="Number of iterations to run to stabilize final data readings",
)
parser.add_argument(
"--num-req", type=int, default=128, help="Number of requests in the batch"

File diff suppressed because it is too large Load Diff

View File

@ -998,7 +998,7 @@ def create_argument_parser():
"--percentile-metrics",
type=str,
default="ttft,tpot,itl",
help="Comma-separated list of selected metrics to report percentils. "
help="Comma-separated list of selected metrics to report percentiles. "
"This argument specifies the metrics to report percentiles. "
'Allowed metric names are "ttft", "tpot", "itl", "e2el". '
'Default value is "ttft,tpot,itl".',

View File

@ -1,742 +1,17 @@
# SPDX-License-Identifier: Apache-2.0
# SPDX-FileCopyrightText: Copyright contributors to the vLLM project
"""Benchmark offline inference throughput."""
import argparse
import dataclasses
import json
import os
import random
import time
import warnings
from typing import Any, Optional, Union
import torch
import uvloop
from tqdm import tqdm
from transformers import AutoModelForCausalLM, AutoTokenizer, PreTrainedTokenizerBase
from typing_extensions import deprecated
from benchmark_dataset import (
AIMODataset,
BurstGPTDataset,
ConversationDataset,
InstructCoderDataset,
RandomDataset,
SampleRequest,
ShareGPTDataset,
SonnetDataset,
VisionArenaDataset,
)
from benchmark_utils import convert_to_pytorch_benchmark_format, write_to_json
from vllm.engine.arg_utils import AsyncEngineArgs, EngineArgs
from vllm.entrypoints.openai.api_server import (
build_async_engine_client_from_engine_args,
)
from vllm.inputs import TextPrompt, TokensPrompt
from vllm.lora.request import LoRARequest
from vllm.outputs import RequestOutput
from vllm.sampling_params import BeamSearchParams
from vllm.utils import FlexibleArgumentParser, merge_async_iterators
def run_vllm(
requests: list[SampleRequest],
n: int,
engine_args: EngineArgs,
disable_detokenize: bool = False,
) -> tuple[float, Optional[list[RequestOutput]]]:
from vllm import LLM, SamplingParams
llm = LLM(**dataclasses.asdict(engine_args))
assert all(
llm.llm_engine.model_config.max_model_len
>= (request.prompt_len + request.expected_output_len)
for request in requests
), (
"Please ensure that max_model_len is greater than the sum of"
" prompt_len and expected_output_len for all requests."
)
# Add the requests to the engine.
prompts: list[Union[TextPrompt, TokensPrompt]] = []
sampling_params: list[SamplingParams] = []
for request in requests:
prompts.append(
TokensPrompt(
prompt_token_ids=request.prompt["prompt_token_ids"],
multi_modal_data=request.multi_modal_data,
)
if "prompt_token_ids" in request.prompt
else TextPrompt(
prompt=request.prompt, multi_modal_data=request.multi_modal_data
)
)
sampling_params.append(
SamplingParams(
n=n,
temperature=1.0,
top_p=1.0,
ignore_eos=True,
max_tokens=request.expected_output_len,
detokenize=not disable_detokenize,
)
)
lora_requests: Optional[list[LoRARequest]] = None
if engine_args.enable_lora:
lora_requests = [request.lora_request for request in requests]
use_beam_search = False
outputs = None
if not use_beam_search:
start = time.perf_counter()
outputs = llm.generate(
prompts, sampling_params, lora_request=lora_requests, use_tqdm=True
)
end = time.perf_counter()
else:
assert lora_requests is None, "BeamSearch API does not support LoRA"
prompts = [request.prompt for request in requests]
# output_len should be the same for all requests.
output_len = requests[0].expected_output_len
for request in requests:
assert request.expected_output_len == output_len
start = time.perf_counter()
llm.beam_search(
prompts,
BeamSearchParams(
beam_width=n,
max_tokens=output_len,
ignore_eos=True,
),
)
end = time.perf_counter()
return end - start, outputs
def run_vllm_chat(
requests: list[SampleRequest],
n: int,
engine_args: EngineArgs,
disable_detokenize: bool = False,
) -> tuple[float, list[RequestOutput]]:
"""
Run vLLM chat benchmark. This function is recommended ONLY for benchmarking
multimodal models as it properly handles multimodal inputs and chat
formatting. For non-multimodal models, use run_vllm() instead.
"""
from vllm import LLM, SamplingParams
llm = LLM(**dataclasses.asdict(engine_args))
assert all(
llm.llm_engine.model_config.max_model_len
>= (request.prompt_len + request.expected_output_len)
for request in requests
), (
"Please ensure that max_model_len is greater than the sum of "
"prompt_len and expected_output_len for all requests."
)
prompts = []
sampling_params: list[SamplingParams] = []
for request in requests:
prompts.append(request.prompt)
sampling_params.append(
SamplingParams(
n=n,
temperature=1.0,
top_p=1.0,
ignore_eos=True,
max_tokens=request.expected_output_len,
detokenize=not disable_detokenize,
)
)
start = time.perf_counter()
outputs = llm.chat(prompts, sampling_params, use_tqdm=True)
end = time.perf_counter()
return end - start, outputs
async def run_vllm_async(
requests: list[SampleRequest],
n: int,
engine_args: AsyncEngineArgs,
disable_frontend_multiprocessing: bool = False,
disable_detokenize: bool = False,
) -> float:
from vllm import SamplingParams
async with build_async_engine_client_from_engine_args(
engine_args,
disable_frontend_multiprocessing=disable_frontend_multiprocessing,
) as llm:
model_config = await llm.get_model_config()
assert all(
model_config.max_model_len
>= (request.prompt_len + request.expected_output_len)
for request in requests
), (
"Please ensure that max_model_len is greater than the sum of"
" prompt_len and expected_output_len for all requests."
)
# Add the requests to the engine.
prompts: list[Union[TextPrompt, TokensPrompt]] = []
sampling_params: list[SamplingParams] = []
lora_requests: list[Optional[LoRARequest]] = []
for request in requests:
prompts.append(
TokensPrompt(
prompt_token_ids=request.prompt["prompt_token_ids"],
multi_modal_data=request.multi_modal_data,
)
if "prompt_token_ids" in request.prompt
else TextPrompt(
prompt=request.prompt, multi_modal_data=request.multi_modal_data
)
)
sampling_params.append(
SamplingParams(
n=n,
temperature=1.0,
top_p=1.0,
ignore_eos=True,
max_tokens=request.expected_output_len,
detokenize=not disable_detokenize,
)
)
lora_requests.append(request.lora_request)
generators = []
start = time.perf_counter()
for i, (prompt, sp, lr) in enumerate(
zip(prompts, sampling_params, lora_requests)
):
generator = llm.generate(prompt, sp, lora_request=lr, request_id=f"test{i}")
generators.append(generator)
all_gens = merge_async_iterators(*generators)
async for i, res in all_gens:
pass
end = time.perf_counter()
return end - start
def run_hf(
requests: list[SampleRequest],
model: str,
tokenizer: PreTrainedTokenizerBase,
n: int,
max_batch_size: int,
trust_remote_code: bool,
disable_detokenize: bool = False,
) -> float:
llm = AutoModelForCausalLM.from_pretrained(
model, torch_dtype=torch.float16, trust_remote_code=trust_remote_code
)
if llm.config.model_type == "llama":
# To enable padding in the HF backend.
tokenizer.pad_token = tokenizer.eos_token
llm = llm.cuda()
pbar = tqdm(total=len(requests))
start = time.perf_counter()
batch: list[str] = []
max_prompt_len = 0
max_output_len = 0
for i in range(len(requests)):
prompt = requests[i].prompt
prompt_len = requests[i].prompt_len
output_len = requests[i].expected_output_len
# Add the prompt to the batch.
batch.append(prompt)
max_prompt_len = max(max_prompt_len, prompt_len)
max_output_len = max(max_output_len, output_len)
if len(batch) < max_batch_size and i != len(requests) - 1:
# Check if we can add more requests to the batch.
next_prompt_len = requests[i + 1].prompt_len
next_output_len = requests[i + 1].expected_output_len
if (
max(max_prompt_len, next_prompt_len)
+ max(max_output_len, next_output_len)
) <= 2048:
# We can add more requests to the batch.
continue
# Generate the sequences.
input_ids = tokenizer(batch, return_tensors="pt", padding=True).input_ids
llm_outputs = llm.generate(
input_ids=input_ids.cuda(),
do_sample=True,
num_return_sequences=n,
temperature=1.0,
top_p=1.0,
use_cache=True,
max_new_tokens=max_output_len,
)
if not disable_detokenize:
# Include the decoding time.
tokenizer.batch_decode(llm_outputs, skip_special_tokens=True)
pbar.update(len(batch))
# Clear the batch.
batch = []
max_prompt_len = 0
max_output_len = 0
end = time.perf_counter()
return end - start
def run_mii(
requests: list[SampleRequest],
model: str,
tensor_parallel_size: int,
output_len: int,
) -> float:
from mii import client, serve
llm = serve(model, tensor_parallel=tensor_parallel_size)
prompts = [request.prompt for request in requests]
start = time.perf_counter()
llm.generate(prompts, max_new_tokens=output_len)
end = time.perf_counter()
client = client(model)
client.terminate_server()
return end - start
def save_to_pytorch_benchmark_format(
args: argparse.Namespace, results: dict[str, Any]
) -> None:
pt_records = convert_to_pytorch_benchmark_format(
args=args,
metrics={
"requests_per_second": [results["requests_per_second"]],
"tokens_per_second": [results["tokens_per_second"]],
},
extra_info={
k: results[k] for k in ["elapsed_time", "num_requests", "total_num_tokens"]
},
)
if pt_records:
# Don't use json suffix here as we don't want CI to pick it up
pt_file = f"{os.path.splitext(args.output_json)[0]}.pytorch.json"
write_to_json(pt_file, pt_records)
def get_requests(args, tokenizer):
# Common parameters for all dataset types.
common_kwargs = {
"dataset_path": args.dataset_path,
"random_seed": args.seed,
}
sample_kwargs = {
"tokenizer": tokenizer,
"lora_path": args.lora_path,
"max_loras": args.max_loras,
"num_requests": args.num_prompts,
"input_len": args.input_len,
"output_len": args.output_len,
}
if args.dataset_path is None or args.dataset_name == "random":
sample_kwargs["range_ratio"] = args.random_range_ratio
sample_kwargs["prefix_len"] = args.prefix_len
dataset_cls = RandomDataset
elif args.dataset_name == "sharegpt":
dataset_cls = ShareGPTDataset
if args.backend == "vllm-chat":
sample_kwargs["enable_multimodal_chat"] = True
elif args.dataset_name == "sonnet":
assert tokenizer.chat_template or tokenizer.default_chat_template, (
"Tokenizer/model must have chat template for sonnet dataset."
)
dataset_cls = SonnetDataset
sample_kwargs["prefix_len"] = args.prefix_len
sample_kwargs["return_prompt_formatted"] = True
elif args.dataset_name == "burstgpt":
dataset_cls = BurstGPTDataset
elif args.dataset_name == "hf":
common_kwargs["no_stream"] = args.no_stream
if args.dataset_path in VisionArenaDataset.SUPPORTED_DATASET_PATHS:
dataset_cls = VisionArenaDataset
common_kwargs["dataset_subset"] = None
common_kwargs["dataset_split"] = "train"
sample_kwargs["enable_multimodal_chat"] = True
elif args.dataset_path in InstructCoderDataset.SUPPORTED_DATASET_PATHS:
dataset_cls = InstructCoderDataset
common_kwargs["dataset_split"] = "train"
elif args.dataset_path in ConversationDataset.SUPPORTED_DATASET_PATHS:
dataset_cls = ConversationDataset
common_kwargs["dataset_subset"] = args.hf_subset
common_kwargs["dataset_split"] = args.hf_split
sample_kwargs["enable_multimodal_chat"] = True
elif args.dataset_path in AIMODataset.SUPPORTED_DATASET_PATHS:
dataset_cls = AIMODataset
common_kwargs["dataset_subset"] = None
common_kwargs["dataset_split"] = "train"
else:
raise ValueError(f"Unknown dataset name: {args.dataset_name}")
# Remove None values
sample_kwargs = {k: v for k, v in sample_kwargs.items() if v is not None}
return dataset_cls(**common_kwargs).sample(**sample_kwargs)
@deprecated(
"benchmark_throughput.py is deprecated and will be removed in a "
"future version. Please use 'vllm bench throughput' instead.",
)
def main(args: argparse.Namespace):
if args.seed is None:
args.seed = 0
print(args)
random.seed(args.seed)
# Sample the requests.
tokenizer = AutoTokenizer.from_pretrained(
args.tokenizer, trust_remote_code=args.trust_remote_code
)
requests = get_requests(args, tokenizer)
is_multi_modal = any(request.multi_modal_data is not None for request in requests)
request_outputs: Optional[list[RequestOutput]] = None
if args.backend == "vllm":
if args.async_engine:
elapsed_time = uvloop.run(
run_vllm_async(
requests,
args.n,
AsyncEngineArgs.from_cli_args(args),
args.disable_frontend_multiprocessing,
args.disable_detokenize,
)
)
else:
elapsed_time, request_outputs = run_vllm(
requests,
args.n,
EngineArgs.from_cli_args(args),
args.disable_detokenize,
)
elif args.backend == "hf":
assert args.tensor_parallel_size == 1
elapsed_time = run_hf(
requests,
args.model,
tokenizer,
args.n,
args.hf_max_batch_size,
args.trust_remote_code,
args.disable_detokenize,
)
elif args.backend == "mii":
elapsed_time = run_mii(
requests, args.model, args.tensor_parallel_size, args.output_len
)
elif args.backend == "vllm-chat":
elapsed_time, request_outputs = run_vllm_chat(
requests, args.n, EngineArgs.from_cli_args(args), args.disable_detokenize
)
else:
raise ValueError(f"Unknown backend: {args.backend}")
if request_outputs:
# Note: with the vllm and vllm-chat backends,
# we have request_outputs, which we use to count tokens.
total_prompt_tokens = 0
total_output_tokens = 0
for ro in request_outputs:
if not isinstance(ro, RequestOutput):
continue
total_prompt_tokens += (
len(ro.prompt_token_ids) if ro.prompt_token_ids else 0
)
total_output_tokens += sum(len(o.token_ids) for o in ro.outputs if o)
total_num_tokens = total_prompt_tokens + total_output_tokens
else:
total_num_tokens = sum(r.prompt_len + r.expected_output_len for r in requests)
total_output_tokens = sum(r.expected_output_len for r in requests)
total_prompt_tokens = total_num_tokens - total_output_tokens
if is_multi_modal and args.backend != "vllm-chat":
print(
"\033[91mWARNING\033[0m: Multi-modal request with "
f"{args.backend} backend detected. The "
"following metrics are not accurate because image tokens are not"
" counted. See vllm-project/vllm/issues/9778 for details."
)
# TODO(vllm-project/vllm/issues/9778): Count multi-modal token length.
# vllm-chat backend counts the image tokens now
print(
f"Throughput: {len(requests) / elapsed_time:.2f} requests/s, "
f"{total_num_tokens / elapsed_time:.2f} total tokens/s, "
f"{total_output_tokens / elapsed_time:.2f} output tokens/s"
)
print(f"Total num prompt tokens: {total_prompt_tokens}")
print(f"Total num output tokens: {total_output_tokens}")
# Output JSON results if specified
if args.output_json:
results = {
"elapsed_time": elapsed_time,
"num_requests": len(requests),
"total_num_tokens": total_num_tokens,
"requests_per_second": len(requests) / elapsed_time,
"tokens_per_second": total_num_tokens / elapsed_time,
}
with open(args.output_json, "w") as f:
json.dump(results, f, indent=4)
save_to_pytorch_benchmark_format(args, results)
def validate_args(args):
"""
Validate command-line arguments.
"""
# === Deprecation and Defaulting ===
if args.dataset is not None:
warnings.warn(
"The '--dataset' argument will be deprecated in the next release. "
"Please use '--dataset-name' and '--dataset-path' instead.",
stacklevel=2,
)
args.dataset_path = args.dataset
if not getattr(args, "tokenizer", None):
args.tokenizer = args.model
# === Backend Validation ===
valid_backends = {"vllm", "hf", "mii", "vllm-chat"}
if args.backend not in valid_backends:
raise ValueError(f"Unsupported backend: {args.backend}")
# === Dataset Configuration ===
if not args.dataset and not args.dataset_path:
print("When dataset path is not set, it will default to random dataset")
args.dataset_name = "random"
if args.input_len is None:
raise ValueError("input_len must be provided for a random dataset")
# === Dataset Name Specific Checks ===
# --hf-subset and --hf-split: only used
# when dataset_name is 'hf'
if args.dataset_name != "hf" and (
getattr(args, "hf_subset", None) is not None
or getattr(args, "hf_split", None) is not None
):
warnings.warn(
"--hf-subset and --hf-split will be ignored \
since --dataset-name is not 'hf'.",
stacklevel=2,
)
elif args.dataset_name == "hf":
if args.dataset_path in (
VisionArenaDataset.SUPPORTED_DATASET_PATHS.keys()
| ConversationDataset.SUPPORTED_DATASET_PATHS
):
assert args.backend == "vllm-chat", (
f"{args.dataset_path} needs to use vllm-chat as the backend."
) # noqa: E501
elif args.dataset_path in (
InstructCoderDataset.SUPPORTED_DATASET_PATHS
| AIMODataset.SUPPORTED_DATASET_PATHS
):
assert args.backend == "vllm", (
f"{args.dataset_path} needs to use vllm as the backend."
) # noqa: E501
else:
raise ValueError(f"{args.dataset_path} is not supported by hf dataset.")
# --random-range-ratio: only used when dataset_name is 'random'
if args.dataset_name != "random" and args.random_range_ratio is not None:
warnings.warn(
"--random-range-ratio will be ignored since \
--dataset-name is not 'random'.",
stacklevel=2,
)
# --prefix-len: only used when dataset_name is 'random', 'sonnet', or not
# set.
if (
args.dataset_name not in {"random", "sonnet", None}
and args.prefix_len is not None
):
warnings.warn(
"--prefix-len will be ignored since --dataset-name\
is not 'random', 'sonnet', or not set.",
stacklevel=2,
)
# === LoRA Settings ===
if getattr(args, "enable_lora", False) and args.backend != "vllm":
raise ValueError("LoRA benchmarking is only supported for vLLM backend")
if getattr(args, "enable_lora", False) and args.lora_path is None:
raise ValueError("LoRA path must be provided when enable_lora is True")
# === Backend-specific Validations ===
if args.backend == "hf" and args.hf_max_batch_size is None:
raise ValueError("HF max batch size is required for HF backend")
if args.backend != "hf" and args.hf_max_batch_size is not None:
raise ValueError("HF max batch size is only for HF backend.")
if (
args.backend in {"hf", "mii"}
and getattr(args, "quantization", None) is not None
):
raise ValueError("Quantization is only for vLLM backend.")
if args.backend == "mii" and args.dtype != "auto":
raise ValueError("dtype must be auto for MII backend.")
if args.backend == "mii" and args.n != 1:
raise ValueError("n must be 1 for MII backend.")
if args.backend == "mii" and args.tokenizer != args.model:
raise ValueError("Tokenizer must be the same as the model for MII backend.")
# --data-parallel is not supported currently.
# https://github.com/vllm-project/vllm/issues/16222
if args.data_parallel_size > 1:
raise ValueError(
"Data parallel is not supported in offline benchmark, "
"please use benchmark serving instead"
)
def create_argument_parser():
parser = FlexibleArgumentParser(description="Benchmark the throughput.")
parser.add_argument(
"--backend",
type=str,
choices=["vllm", "hf", "mii", "vllm-chat"],
default="vllm",
)
parser.add_argument(
"--dataset-name",
type=str,
choices=["sharegpt", "random", "sonnet", "burstgpt", "hf"],
help="Name of the dataset to benchmark on.",
default="sharegpt",
)
parser.add_argument(
"--no-stream",
action="store_true",
help="Do not load the dataset in streaming mode.",
)
parser.add_argument(
"--dataset",
type=str,
default=None,
help="Path to the ShareGPT dataset, will be deprecated in\
the next release. The dataset is expected to "
"be a json in form of list[dict[..., conversations: "
"list[dict[..., value: <prompt_or_response>]]]]",
)
parser.add_argument(
"--dataset-path", type=str, default=None, help="Path to the dataset"
)
parser.add_argument(
"--input-len",
type=int,
default=None,
help="Input prompt length for each request",
)
parser.add_argument(
"--output-len",
type=int,
default=None,
help="Output length for each request. Overrides the "
"output length from the dataset.",
)
parser.add_argument(
"--n", type=int, default=1, help="Number of generated sequences per prompt."
)
parser.add_argument(
"--num-prompts", type=int, default=1000, help="Number of prompts to process."
)
parser.add_argument(
"--hf-max-batch-size",
type=int,
default=None,
help="Maximum batch size for HF backend.",
)
parser.add_argument(
"--output-json",
type=str,
default=None,
help="Path to save the throughput results in JSON format.",
)
parser.add_argument(
"--async-engine",
action="store_true",
default=False,
help="Use vLLM async engine rather than LLM class.",
)
parser.add_argument(
"--disable-frontend-multiprocessing",
action="store_true",
default=False,
help="Disable decoupled async engine frontend.",
)
parser.add_argument(
"--disable-detokenize",
action="store_true",
help=(
"Do not detokenize the response (i.e. do not include "
"detokenization time in the measurement)"
),
)
# LoRA
parser.add_argument(
"--lora-path",
type=str,
default=None,
help="Path to the LoRA adapters to use. This can be an absolute path, "
"a relative path, or a Hugging Face model identifier.",
)
parser.add_argument(
"--prefix-len",
type=int,
default=None,
help=f"Number of prefix tokens to be used in RandomDataset "
"and SonnetDataset. For RandomDataset, the total input "
"length is the sum of prefix-len (default: "
f"{RandomDataset.DEFAULT_PREFIX_LEN}) and a random context length "
"sampled from [input_len * (1 - range_ratio), "
"input_len * (1 + range_ratio)]. For SonnetDataset, "
f"prefix_len (default: {SonnetDataset.DEFAULT_PREFIX_LEN}) "
"controls how much of the input is fixed lines versus "
"random lines, but the total input length remains approximately "
"input_len tokens.",
)
# random dataset
parser.add_argument(
"--random-range-ratio",
type=float,
default=None,
help=f"Range ratio (default : {RandomDataset.DEFAULT_RANGE_RATIO}) "
"for sampling input/output length, "
"used only for RandomDataset. Must be in the range [0, 1) to "
"define a symmetric sampling range "
"[length * (1 - range_ratio), length * (1 + range_ratio)].",
)
# hf dtaset
parser.add_argument(
"--hf-subset", type=str, default=None, help="Subset of the HF dataset."
)
parser.add_argument(
"--hf-split", type=str, default=None, help="Split of the HF dataset."
)
parser = AsyncEngineArgs.add_cli_args(parser)
return parser
import sys
if __name__ == "__main__":
parser = create_argument_parser()
args = parser.parse_args()
if args.tokenizer is None:
args.tokenizer = args.model
validate_args(args)
main(args)
print("""DEPRECATED: This script has been moved to the vLLM CLI.
Please use the following command instead:
vllm bench throughput
For help with the new command, run:
vllm bench throughput --help
Alternatively, you can run the new command directly with:
python -m vllm.entrypoints.cli.main bench throughput --help
""")
sys.exit(1)

View File

@ -62,7 +62,7 @@ benchmark() {
--max-model-len 10000 \
--gpu-memory-utilization 0.6 \
--kv-transfer-config \
'{"kv_connector":"PyNcclConnector","kv_role":"kv_producer","kv_rank":0,"kv_parallel_size":2,"kv_buffer_size":5e9}' &
'{"kv_connector":"P2pNcclConnector","kv_role":"kv_producer","kv_rank":0,"kv_parallel_size":2,"kv_buffer_size":5e9}' &
CUDA_VISIBLE_DEVICES=1 python3 \
@ -72,7 +72,7 @@ benchmark() {
--max-model-len 10000 \
--gpu-memory-utilization 0.6 \
--kv-transfer-config \
'{"kv_connector":"PyNcclConnector","kv_role":"kv_consumer","kv_rank":1,"kv_parallel_size":2,"kv_buffer_size":5e9}' &
'{"kv_connector":"P2pNcclConnector","kv_role":"kv_consumer","kv_rank":1,"kv_parallel_size":2,"kv_buffer_size":5e9}' &
wait_for_server 8100
wait_for_server 8200

View File

@ -69,7 +69,7 @@ launch_disagg_prefill() {
--max-model-len 10000 \
--gpu-memory-utilization 0.6 \
--kv-transfer-config \
'{"kv_connector":"PyNcclConnector","kv_role":"kv_producer","kv_rank":0,"kv_parallel_size":2,"kv_buffer_size":5e9}' &
'{"kv_connector":"P2pNcclConnector","kv_role":"kv_producer","kv_rank":0,"kv_parallel_size":2,"kv_buffer_size":5e9}' &
CUDA_VISIBLE_DEVICES=1 python3 \
-m vllm.entrypoints.openai.api_server \
@ -78,7 +78,7 @@ launch_disagg_prefill() {
--max-model-len 10000 \
--gpu-memory-utilization 0.6 \
--kv-transfer-config \
'{"kv_connector":"PyNcclConnector","kv_role":"kv_consumer","kv_rank":1,"kv_parallel_size":2,"kv_buffer_size":5e9}' &
'{"kv_connector":"P2pNcclConnector","kv_role":"kv_consumer","kv_rank":1,"kv_parallel_size":2,"kv_buffer_size":5e9}' &
wait_for_server 8100
wait_for_server 8200

View File

@ -0,0 +1,145 @@
# SPDX-License-Identifier: Apache-2.0
# SPDX-FileCopyrightText: Copyright contributors to the vLLM project
import torch
from vllm.model_executor.layers.quantization.utils.fp8_utils import (
apply_w8a8_block_fp8_linear,
)
from vllm.model_executor.layers.quantization.utils.w8a8_utils import (
CUTLASS_BLOCK_FP8_SUPPORTED,
)
from vllm.platforms import current_platform
from vllm.triton_utils import triton as vllm_triton
assert current_platform.is_cuda(), (
"Only support benchmarking w8a8 block fp8 kernel on CUDA device."
)
# DeepSeek-V3 weight shapes
DEEPSEEK_V3_SHAPES = [
(512 + 64, 7168),
(2112, 7168),
((128 + 64) * 128, 7168),
(128 * (128 + 128), 512),
(7168, 16384),
(7168, 18432),
(18432 * 2, 7168),
(24576, 1536),
(12288, 7168),
(4096, 7168),
(7168, 2048),
]
def build_w8a8_block_fp8_runner(M, N, K, block_size, device, use_cutlass):
"""Build runner function for w8a8 block fp8 matmul."""
factor_for_scale = 1e-2
fp8_info = torch.finfo(torch.float8_e4m3fn)
fp8_max, fp8_min = fp8_info.max, fp8_info.min
# Create random FP8 tensors
A_ref = (torch.rand(M, K, dtype=torch.bfloat16, device=device) - 0.5) * 2 * fp8_max
B_ref = (torch.rand(N, K, dtype=torch.bfloat16, device=device) - 0.5) * 2 * fp8_max
B = B_ref.clamp(min=fp8_min, max=fp8_max).to(torch.float8_e4m3fn)
# Create scales
block_n, block_k = block_size[0], block_size[1]
n_tiles = (N + block_n - 1) // block_n
k_tiles = (K + block_k - 1) // block_k
Bs = (
torch.rand(n_tiles, k_tiles, dtype=torch.float32, device=device)
* factor_for_scale
)
# SM90 CUTLASS requires row-major format for scales
if use_cutlass and current_platform.is_device_capability(90):
Bs = Bs.T.contiguous()
def run():
if use_cutlass:
return apply_w8a8_block_fp8_linear(
A_ref, B, block_size, Bs, cutlass_block_fp8_supported=True
)
else:
return apply_w8a8_block_fp8_linear(
A_ref, B, block_size, Bs, cutlass_block_fp8_supported=False
)
return run
# Determine available providers
available_providers = ["torch-bf16", "w8a8-block-fp8-triton"]
plot_title = "BF16 vs W8A8 Block FP8 GEMMs"
if CUTLASS_BLOCK_FP8_SUPPORTED:
available_providers.append("w8a8-block-fp8-cutlass")
@vllm_triton.testing.perf_report(
vllm_triton.testing.Benchmark(
x_names=["batch_size"],
x_vals=[1, 16, 64, 128, 256, 512, 1024, 2048, 4096, 8192, 16384],
x_log=False,
line_arg="provider",
line_vals=available_providers,
line_names=available_providers,
ylabel="TFLOP/s (larger is better)",
plot_name="BF16 vs W8A8 Block FP8 GEMMs",
args={},
)
)
def benchmark_tflops(batch_size, provider, N, K, block_size=(128, 128)):
M = batch_size
device = "cuda"
quantiles = [0.5, 0.2, 0.8]
if provider == "torch-bf16":
a = torch.randn((M, K), device=device, dtype=torch.bfloat16)
b = torch.randn((N, K), device=device, dtype=torch.bfloat16)
ms, min_ms, max_ms = vllm_triton.testing.do_bench_cudagraph(
lambda: torch.nn.functional.linear(a, b), quantiles=quantiles
)
elif provider == "w8a8-block-fp8-triton":
run_w8a8_triton = build_w8a8_block_fp8_runner(
M, N, K, block_size, device, use_cutlass=False
)
ms, min_ms, max_ms = vllm_triton.testing.do_bench_cudagraph(
lambda: run_w8a8_triton(), quantiles=quantiles
)
elif provider == "w8a8-block-fp8-cutlass":
run_w8a8_cutlass = build_w8a8_block_fp8_runner(
M, N, K, block_size, device, use_cutlass=True
)
ms, min_ms, max_ms = vllm_triton.testing.do_bench_cudagraph(
lambda: run_w8a8_cutlass(), quantiles=quantiles
)
else:
raise ValueError(f"Unknown provider: {provider}")
to_tflops = lambda t_ms: (2 * M * N * K) * 1e-12 / (t_ms * 1e-3)
return to_tflops(ms), to_tflops(max_ms), to_tflops(min_ms)
if __name__ == "__main__":
block_size = (128, 128)
for N, K in DEEPSEEK_V3_SHAPES:
print(f"\nBenchmarking DeepSeek-V3, N={N} K={K}")
print(f"TFLOP/s comparison (block_size={block_size}):")
benchmark_tflops.run(
print_data=True,
# show_plots=False,
# save_path=f"bench_w8a8_block_fp8_tflops_n{N}_k{K}",
N=N,
K=K,
block_size=block_size,
)
print("\nBenchmark finished!")

View File

@ -0,0 +1,104 @@
# SPDX-License-Identifier: Apache-2.0
# SPDX-FileCopyrightText: Copyright contributors to the vLLM project
# benchmark custom activation op performance
import itertools
import torch
import vllm.model_executor.layers.activation # noqa F401
from vllm.model_executor.custom_op import CustomOp
from vllm.platforms import current_platform
from vllm.triton_utils import triton
from vllm.utils import STR_DTYPE_TO_TORCH_DTYPE, FlexibleArgumentParser
batch_size_range = [1, 16, 32, 64, 128]
seq_len_range = [1, 16, 64, 128, 256, 512, 1024, 2048, 4096]
intermediate_size = [3072, 9728, 12288]
configs = list(itertools.product(batch_size_range, seq_len_range, intermediate_size))
def benchmark_activation(
batch_size: int,
seq_len: int,
intermediate_size: int,
provider: str,
func_name: str,
dtype: torch.dtype,
):
device = "cuda"
num_tokens = batch_size * seq_len
dim = intermediate_size
current_platform.seed_everything(42)
torch.set_default_device(device)
if func_name == "gelu_and_mul":
layer = CustomOp.op_registry[func_name](approximate="none")
elif func_name == "gelu_and_mul_tanh":
layer = CustomOp.op_registry["gelu_and_mul"](approximate="tanh")
elif func_name == "fatrelu_and_mul":
threshold = 0.5
layer = CustomOp.op_registry[func_name](threshold)
else:
layer = CustomOp.op_registry[func_name]()
x = torch.randn(num_tokens, dim, dtype=dtype, device=device)
compiled_layer = torch.compile(layer.forward_native)
if provider == "custom":
fn = lambda: layer(x)
elif provider == "compiled":
fn = lambda: compiled_layer(x)
ms, min_ms, max_ms = triton.testing.do_bench_cudagraph(
fn, quantiles=[0.5, 0.2, 0.8]
)
return ms, max_ms, min_ms
if __name__ == "__main__":
parser = FlexibleArgumentParser(description="Benchmark the custom activation op.")
parser.add_argument(
"--func-name",
type=str,
choices=[
"mul_and_silu",
"silu_and_mul",
"gelu_and_mul",
"gelu_and_mul_tanh",
"fatrelu_and_mul",
"swigluoai_and_mul",
"gelu_new",
"gelu_fast",
"quick_gelu",
],
default="silu_and_mul",
)
parser.add_argument(
"--dtype", type=str, choices=["half", "bfloat16", "float"], default="bfloat16"
)
args = parser.parse_args()
assert args
func_name = args.func_name
dtype = STR_DTYPE_TO_TORCH_DTYPE[args.dtype]
perf_report = triton.testing.perf_report(
triton.testing.Benchmark(
x_names=["batch_size", "seq_len", "intermediate_size"],
x_vals=configs,
line_arg="provider",
line_vals=["custom", "compiled"],
line_names=["Custom OP", "Compiled"],
styles=[("blue", "-"), ("green", "-")],
ylabel="ms",
plot_name=f"{func_name}-op-performance",
args={},
)
)
perf_report(
lambda batch_size, seq_len, intermediate_size, provider: benchmark_activation(
batch_size, seq_len, intermediate_size, provider, func_name, dtype
)
).run(print_data=True)

View File

@ -0,0 +1,486 @@
#!/usr/bin/env python3
# SPDX-License-Identifier: Apache-2.0
# SPDX-FileCopyrightText: Copyright contributors to the vLLM project
"""
Benchmark script for device communicators:
CustomAllreduce (oneshot, twoshot), PyNcclCommunicator,
and SymmMemCommunicator (multimem, two-shot).
Usage:
torchrun --nproc_per_node=<N> benchmark_device_communicators.py [options]
Example:
torchrun --nproc_per_node=2 benchmark_device_communicators.py
--sequence-lengths 512 1024 2048 --num-warmup 10 --num-trials 100
"""
import json
import os
import time
from contextlib import nullcontext
from typing import Callable, Optional
import torch
import torch.distributed as dist
from torch.distributed import ProcessGroup
from vllm.distributed.device_communicators.custom_all_reduce import CustomAllreduce
from vllm.distributed.device_communicators.pynccl import PyNcclCommunicator
from vllm.distributed.device_communicators.symm_mem import SymmMemCommunicator
from vllm.logger import init_logger
from vllm.utils import FlexibleArgumentParser
logger = init_logger(__name__)
# Default sequence lengths to benchmark
DEFAULT_SEQUENCE_LENGTHS = [128, 512, 1024, 2048, 4096, 8192]
# Fixed hidden size and dtype for all benchmarks
HIDDEN_SIZE = 8192
BENCHMARK_DTYPE = torch.bfloat16
# CUDA graph settings
CUDA_GRAPH_CAPTURE_CYCLES = 10
class CommunicatorBenchmark:
"""Benchmark class for testing device communicators."""
def __init__(
self,
rank: int,
world_size: int,
device: torch.device,
cpu_group: ProcessGroup,
sequence_lengths: list[int],
):
self.rank = rank
self.world_size = world_size
self.device = device
self.cpu_group = cpu_group
# Calculate max_size_override based on largest sequence length
max_seq_len = max(sequence_lengths)
max_tensor_elements = max_seq_len * HIDDEN_SIZE
self.max_size_override = max_tensor_elements * BENCHMARK_DTYPE.itemsize + 1
# Initialize communicators
self.custom_allreduce = None
self.pynccl_comm = None
self.symm_mem_comm = None
self.symm_mem_comm_multimem = None
self.symm_mem_comm_two_shot = None
self._init_communicators()
def _init_communicators(self):
"""Initialize all available communicators."""
try:
self.custom_allreduce = CustomAllreduce(
group=self.cpu_group,
device=self.device,
max_size=self.max_size_override,
)
if not self.custom_allreduce.disabled:
logger.info("Rank %s: CustomAllreduce initialized", self.rank)
else:
logger.info("Rank %s: CustomAllreduce disabled", self.rank)
except Exception as e:
logger.warning(
"Rank %s: Failed to initialize CustomAllreduce: %s", self.rank, e
)
self.custom_allreduce = None
try:
self.pynccl_comm = PyNcclCommunicator(
group=self.cpu_group, device=self.device
)
if not self.pynccl_comm.disabled:
logger.info("Rank %s: PyNcclCommunicator initialized", self.rank)
else:
logger.info("Rank %s: PyNcclCommunicator disabled", self.rank)
self.pynccl_comm = None
except Exception as e:
logger.warning(
"Rank %s: Failed to initialize PyNcclCommunicator: %s", self.rank, e
)
self.pynccl_comm = None
# Initialize variants for SymmMemCommunicator
try:
self.symm_mem_comm_multimem = SymmMemCommunicator(
group=self.cpu_group,
device=self.device,
force_multimem=True,
max_size_override=self.max_size_override,
)
if not self.symm_mem_comm_multimem.disabled:
logger.info(
"Rank %s: SymmMemCommunicator (multimem) initialized", self.rank
)
else:
self.symm_mem_comm_multimem = None
except Exception as e:
logger.warning(
"Rank %s: Failed to initialize SymmMemCommunicator (multimem): %s",
self.rank,
e,
)
self.symm_mem_comm_multimem = None
try:
self.symm_mem_comm_two_shot = SymmMemCommunicator(
group=self.cpu_group,
device=self.device,
force_multimem=False,
max_size_override=self.max_size_override,
)
if not self.symm_mem_comm_two_shot.disabled:
logger.info(
"Rank %s: SymmMemCommunicator (two_shot) initialized", self.rank
)
else:
self.symm_mem_comm_two_shot = None
except Exception as e:
logger.warning(
"Rank %s: Failed to initialize SymmMemCommunicator (two_shot): %s",
self.rank,
e,
)
self.symm_mem_comm_two_shot = None
def benchmark_allreduce(
self, sequence_length: int, num_warmup: int, num_trials: int
) -> dict[str, float]:
"""Benchmark allreduce operations for all available communicators."""
results = {}
# Define communicators with their benchmark functions
communicators = []
if self.custom_allreduce is not None:
comm = self.custom_allreduce
# CustomAllreduce one-shot
communicators.append(
(
"ca_1stage",
lambda t, c=comm: c.custom_all_reduce(t),
lambda t, c=comm: c.should_custom_ar(t),
comm.capture(),
"1stage", # env variable value
)
)
# CustomAllreduce two-shot
communicators.append(
(
"ca_2stage",
lambda t, c=comm: c.custom_all_reduce(t),
lambda t, c=comm: c.should_custom_ar(t),
comm.capture(),
"2stage", # env variable value
)
)
if self.pynccl_comm is not None:
comm = self.pynccl_comm
communicators.append(
(
"pynccl",
lambda t, c=comm: c.all_reduce(t),
lambda t: True, # Always available if initialized
nullcontext(),
None, # no env variable needed
)
)
if self.symm_mem_comm_multimem is not None:
comm = self.symm_mem_comm_multimem
communicators.append(
(
"symm_mem_multimem",
lambda t, c=comm: c.all_reduce(t),
lambda t, c=comm: c.should_use_symm_mem(t),
nullcontext(),
None, # no env variable needed
)
)
if self.symm_mem_comm_two_shot is not None:
comm = self.symm_mem_comm_two_shot
communicators.append(
(
"symm_mem_two_shot",
lambda t, c=comm: c.all_reduce(t),
lambda t, c=comm: c.should_use_symm_mem(t),
nullcontext(),
None, # no env variable needed
)
)
# Benchmark each communicator
for name, allreduce_fn, should_use_fn, context, env_var in communicators:
# Set environment variable if needed
if env_var is not None:
os.environ["VLLM_CUSTOM_ALLREDUCE_ALGO"] = env_var
else:
# Clear the environment variable to avoid interference
os.environ.pop("VLLM_CUSTOM_ALLREDUCE_ALGO", None)
latency = self.benchmark_allreduce_single(
sequence_length,
allreduce_fn,
should_use_fn,
context,
num_warmup,
num_trials,
)
if latency is not None:
results[name] = latency
return results
def benchmark_allreduce_single(
self,
sequence_length: int,
allreduce_fn: Callable[[torch.Tensor], Optional[torch.Tensor]],
should_use_fn: Callable[[torch.Tensor], bool],
context,
num_warmup: int,
num_trials: int,
) -> Optional[float]:
"""Benchmark method with CUDA graph optimization."""
try:
# Create test tensor (2D: sequence_length x hidden_size)
tensor = torch.randn(
sequence_length, HIDDEN_SIZE, dtype=BENCHMARK_DTYPE, device=self.device
)
if not should_use_fn(tensor):
return None
torch.cuda.synchronize()
stream = torch.cuda.Stream()
with torch.cuda.stream(stream):
graph_input = tensor.clone()
# Warmup before capture
for _ in range(3):
allreduce_fn(graph_input)
# Capture the graph using context manager
with context:
graph = torch.cuda.CUDAGraph()
with torch.cuda.graph(graph):
for _ in range(CUDA_GRAPH_CAPTURE_CYCLES):
allreduce_fn(graph_input)
torch.cuda.synchronize()
for _ in range(num_warmup):
graph.replay()
torch.cuda.synchronize()
torch.cuda.synchronize()
start_time = time.perf_counter()
for _ in range(num_trials):
graph.replay()
torch.cuda.synchronize()
end_time = time.perf_counter()
# Convert to ms and divide by CUDA_GRAPH_CAPTURE_CYCLES
return (
(end_time - start_time) / num_trials / CUDA_GRAPH_CAPTURE_CYCLES * 1000
)
except Exception as e:
logger.error("CUDA graph benchmark failed: %s", e)
raise RuntimeError(
f"CUDA graph benchmark failed for communicator: {e}"
) from e
def _calculate_speedup_info(comm_results: dict[str, float]) -> str:
"""Calculate speedup information for a single tensor size."""
if not comm_results:
return "N/A"
# Find the fastest communicator
fastest_comm = min(comm_results.keys(), key=lambda k: comm_results[k])
fastest_time = comm_results[fastest_comm]
# Calculate speedup vs PyNccl if available
if "pynccl" in comm_results:
pynccl_time = comm_results["pynccl"]
speedup = pynccl_time / fastest_time
return f"{fastest_comm} ({speedup:.2f}x)"
else:
return f"{fastest_comm} (N/A)"
def print_results(
results: dict[str, dict[str, float]], sequence_lengths: list[int], world_size: int
):
"""Print benchmark results in a formatted table."""
print(f"\n{'=' * 130}")
print("Device Communicator Benchmark Results")
print(
f"World Size: {world_size}, Data Type: {BENCHMARK_DTYPE}, "
f"Hidden Size: {HIDDEN_SIZE}"
)
print(f"{'=' * 130}")
# Get all communicator names
all_comms = set()
for size_results in results.values():
all_comms.update(size_results.keys())
all_comms = sorted(list(all_comms))
# Print header
header = f"{'Tensor Shape':<20}{'Tensor Size':<15}"
for comm in all_comms:
header += f"{comm:<20}"
header += f"{'Best (Speedup vs PyNccl)':<30}"
print(header)
print("-" * len(header))
# Print results for each sequence length
for seq_len in sequence_lengths:
if seq_len in results:
# Calculate tensor size in elements and bytes
tensor_elements = seq_len * HIDDEN_SIZE
tensor_bytes = tensor_elements * BENCHMARK_DTYPE.itemsize
# Format tensor size (MB)
tensor_size_mb = tensor_bytes / (1024 * 1024)
tensor_size_str = f"{tensor_size_mb:.2f} MB"
# Format tensor shape
tensor_shape = f"({seq_len}, {HIDDEN_SIZE})"
row = f"{tensor_shape:<20}{tensor_size_str:<15}"
for comm in all_comms:
if comm in results[seq_len]:
row += f"{results[seq_len][comm]:<20.3f}"
else:
row += f"{'N/A':<20}"
# Calculate speedup information
speedup_info = _calculate_speedup_info(results[seq_len])
row += f"{speedup_info:<30}"
print(row)
print(f"{'=' * 130}")
print("All times are in milliseconds (ms) per allreduce operation")
print("Speedup column shows: fastest_algorithm (speedup_vs_pynccl)")
def main():
parser = FlexibleArgumentParser(description="Benchmark device communicators")
parser.add_argument(
"--sequence-lengths",
type=int,
nargs="+",
default=DEFAULT_SEQUENCE_LENGTHS,
help="Sequence lengths to benchmark (tensor shape: seq_len x hidden_size)",
)
parser.add_argument(
"--num-warmup", type=int, default=5, help="Number of warmup iterations"
)
parser.add_argument(
"--num-trials", type=int, default=50, help="Number of benchmark trials"
)
parser.add_argument("--output-json", type=str, help="Output results to JSON file")
args = parser.parse_args()
# Initialize distributed
if not dist.is_initialized():
dist.init_process_group(backend="gloo")
rank = dist.get_rank()
world_size = dist.get_world_size()
# Set device
device = torch.device(f"cuda:{rank}")
torch.cuda.set_device(device)
# Get CPU process group
cpu_group = dist.new_group(backend="gloo")
# Disable USE_SYMM_MEM to avoid affecting the max_sizes
# in symm_mem and custom_all_reduce for benchmark
os.environ["VLLM_ALLREDUCE_USE_SYMM_MEM"] = "0"
# Initialize benchmark
benchmark = CommunicatorBenchmark(
rank, world_size, device, cpu_group, args.sequence_lengths
)
# Run benchmarks
all_results = {}
for seq_len in args.sequence_lengths:
if rank == 0:
logger.info(
"Benchmarking sequence length: %s (tensor shape: %s x %s)",
seq_len,
seq_len,
HIDDEN_SIZE,
)
results = benchmark.benchmark_allreduce(
sequence_length=seq_len,
num_warmup=args.num_warmup,
num_trials=args.num_trials,
)
all_results[seq_len] = results
# Synchronize between ranks
dist.barrier()
# Print results (only rank 0)
if rank == 0:
print_results(all_results, args.sequence_lengths, world_size)
# Save to JSON if requested
if args.output_json:
# Add speedup information to results
enhanced_results = {}
for seq_len, comm_results in all_results.items():
enhanced_results[seq_len] = {
"timings": comm_results,
"speedup_info": _calculate_speedup_info(comm_results),
}
output_data = {
"world_size": world_size,
"dtype": str(BENCHMARK_DTYPE),
"hidden_size": HIDDEN_SIZE,
"sequence_lengths": args.sequence_lengths,
"num_warmup": args.num_warmup,
"num_trials": args.num_trials,
"cuda_graph_capture_cycles": CUDA_GRAPH_CAPTURE_CYCLES,
"results": enhanced_results,
}
with open(args.output_json, "w") as f:
json.dump(output_data, f, indent=2)
logger.info("Results saved to %s", args.output_json)
# Cleanup
if cpu_group != dist.group.WORLD:
dist.destroy_process_group(cpu_group)
if __name__ == "__main__":
main()

View File

@ -637,7 +637,7 @@ def bench_optype(
# Clear LoRA optimization hash-maps.
_LORA_A_PTR_DICT.clear()
_LORA_B_PTR_DICT.clear()
# Run bench function so that _LORA_A_PTR_DICT and _LORA_B_PTR_DICT are setup
# Run bench function so that _LORA_A_PTR_DICT and _LORA_B_PTR_DICT are set up
for kwargs in kwargs_list:
op_type.bench_fn()(**kwargs)
torch.cuda.synchronize()

View File

@ -284,6 +284,25 @@ def machete_create_bench_fn(
)
def cutlass_w4a8_create_bench_fn(
bt: BenchmarkTensors, out_type=torch.dtype, schedule=None
) -> Callable:
w_q = bt.w_q.t().contiguous().t() # make col major
w_q = ops.cutlass_encode_and_reorder_int4b(w_q)
# expects fp8 scales
w_s = ops.cutlass_pack_scale_fp8(bt.w_g_s.to(torch.float8_e4m3fn))
return lambda: ops.cutlass_w4a8_mm(
a=bt.a,
b_q=w_q,
b_group_scales=w_s,
b_group_size=bt.group_size,
b_channel_scales=bt.w_ch_s,
a_token_scales=bt.w_tok_s,
maybe_schedule=schedule,
)
# impl
# bench
@ -385,6 +404,20 @@ def bench(
)
)
# cutlass w4a8
if types.act_type == torch.float8_e4m3fn and group_size == 128:
timers.append(
bench_fns(
label,
sub_label,
f"cutlass w4a8 ({name_type_string})",
[
cutlass_w4a8_create_bench_fn(bt, out_type=types.output_type)
for bt in benchmark_tensors
],
)
)
if sweep_schedules:
global _SWEEP_SCHEDULES_RESULTS

View File

@ -419,8 +419,10 @@ class BenchmarkWorker:
)
# NOTE(woosuk): The current naming convention uses w2.shape[2], which
# is the intermediate size after silu_and_mul.
block_n = block_quant_shape[0] if block_quant_shape else None
block_k = block_quant_shape[1] if block_quant_shape else None
op_config = get_moe_configs(
num_experts, shard_intermediate_size // 2, dtype_str
num_experts, shard_intermediate_size // 2, dtype_str, block_n, block_k
)
if op_config is None:
config = get_default_config(
@ -430,6 +432,7 @@ class BenchmarkWorker:
hidden_size,
topk,
dtype_str,
block_quant_shape,
)
else:
config = op_config[min(op_config.keys(), key=lambda x: abs(x - num_tokens))]
@ -591,7 +594,11 @@ def main(args: argparse.Namespace):
E = config.n_routed_experts
topk = config.num_experts_per_tok
intermediate_size = config.moe_intermediate_size
elif config.architectures[0] in ("Qwen2MoeForCausalLM", "Qwen3MoeForCausalLM"):
elif config.architectures[0] in (
"Qwen2MoeForCausalLM",
"Qwen3MoeForCausalLM",
"Qwen3NextForCausalLM",
):
E = config.num_experts
topk = config.num_experts_per_tok
intermediate_size = config.moe_intermediate_size
@ -675,7 +682,11 @@ def main(args: argparse.Namespace):
is_fp16 = not (use_fp8_w8a8 or use_int8_w8a16)
search_space = get_configs_compute_bound(is_fp16, block_quant_shape)
print(f"Start tuning over {len(search_space)} configurations...")
if use_deep_gemm:
raise ValueError(
"Tuning with --use-deep-gemm is not supported as it only tunes Triton "
"kernels. Please remove the flag."
)
start = time.time()
configs = _distribute(
"tune",

View File

@ -0,0 +1,155 @@
# SPDX-License-Identifier: Apache-2.0
# SPDX-FileCopyrightText: Copyright contributors to the vLLM project
import itertools
import torch
from vllm import _custom_ops as vllm_ops
from vllm.triton_utils import triton
def polynorm_naive(
x: torch.Tensor,
weight: torch.Tensor,
bias: torch.Tensor,
eps: float = 1e-6,
):
orig_shape = x.shape
x = x.view(-1, x.shape[-1])
def norm(x, eps: float):
return x / torch.sqrt(x.pow(2).mean(-1, keepdim=True) + eps)
x = x.float()
return (
(
weight[0] * norm(x**3, eps)
+ weight[1] * norm(x**2, eps)
+ weight[2] * norm(x, eps)
+ bias
)
.to(weight.dtype)
.view(orig_shape)
)
def polynorm_vllm(
x: torch.Tensor,
weight: torch.Tensor,
bias: torch.Tensor,
eps: float = 1e-6,
):
orig_shape = x.shape
x = x.view(-1, x.shape[-1])
out = torch.empty_like(x)
vllm_ops.poly_norm(out, x, weight, bias, eps)
output = out
output = output.view(orig_shape)
return output
def calculate_diff(batch_size, seq_len, hidden_dim):
dtype = torch.bfloat16
x = torch.randn(batch_size, seq_len, hidden_dim, dtype=dtype, device="cuda")
weight = torch.ones(3, dtype=dtype, device="cuda")
bias = torch.ones(1, dtype=dtype, device="cuda")
output_naive = polynorm_naive(x, weight, bias)
output_vllm = polynorm_vllm(x, weight, bias)
if torch.allclose(output_naive, output_vllm, atol=1e-2, rtol=1e-2):
print("✅ All implementations match")
else:
print("❌ Implementations differ")
batch_size_range = [2**i for i in range(0, 7, 2)]
seq_length_range = [2**i for i in range(6, 11, 1)]
dim_range = [2048, 4096]
configs = list(itertools.product(dim_range, batch_size_range, seq_length_range))
def get_benchmark():
@triton.testing.perf_report(
triton.testing.Benchmark(
x_names=["dim", "batch_size", "seq_len"],
x_vals=[list(_) for _ in configs],
line_arg="provider",
line_vals=["naive", "vllm"],
line_names=["Naive", "vLLM"],
styles=[("blue", "-"), ("red", "-")],
ylabel="us",
plot_name="polynorm-perf",
args={},
)
)
def benchmark(dim, batch_size, seq_len, provider):
dtype = torch.bfloat16
hidden_dim = dim * 4
x = torch.randn(batch_size, seq_len, hidden_dim, dtype=dtype, device="cuda")
weight = torch.ones(3, dtype=dtype, device="cuda")
bias = torch.ones(1, dtype=dtype, device="cuda")
quantiles = [0.5, 0.2, 0.8]
if provider == "naive":
ms, min_ms, max_ms = triton.testing.do_bench(
lambda: polynorm_naive(x, weight, bias),
quantiles=quantiles,
)
else:
ms, min_ms, max_ms = triton.testing.do_bench(
lambda: polynorm_vllm(x, weight, bias),
quantiles=quantiles,
)
return 1000 * ms, 1000 * max_ms, 1000 * min_ms
return benchmark
if __name__ == "__main__":
import argparse
parser = argparse.ArgumentParser()
parser.add_argument(
"--batch-size",
type=int,
default=4,
help="Batch size",
)
parser.add_argument(
"--seq-len",
type=int,
default=128,
help="Sequence length",
)
parser.add_argument(
"--hidden-dim",
type=int,
default=8192,
help="Intermediate size of MLP",
)
parser.add_argument(
"--save-path",
type=str,
default="./configs/polnorm/",
help="Path to save polnorm benchmark results",
)
args = parser.parse_args()
# Run correctness test
calculate_diff(
batch_size=args.batch_size,
seq_len=args.seq_len,
hidden_dim=args.hidden_dim,
)
benchmark = get_benchmark()
# Run performance benchmark
benchmark.run(print_data=True, save_path=args.save_path)

View File

@ -0,0 +1,77 @@
#!/usr/bin/env python3
# SPDX-License-Identifier: Apache-2.0
# SPDX-FileCopyrightText: Copyright contributors to the vLLM project
import time
import torch
from vllm.model_executor.layers.fused_moe.batched_deep_gemm_moe import (
silu_mul_fp8_quant_deep_gemm,
)
from vllm.platforms import current_platform
def benchmark(E, T, H, G=128, runs=50):
current_platform.seed_everything(42)
y = torch.randn((E, T, 2 * H), dtype=torch.bfloat16, device="cuda")
tokens_per_expert = torch.randint(
T // 2, T, size=(E,), dtype=torch.int32, device="cuda"
)
# Warmup
for _ in range(10):
silu_mul_fp8_quant_deep_gemm(y, tokens_per_expert, group_size=G)
torch.cuda.synchronize()
# Benchmark
torch.cuda.synchronize()
start = time.perf_counter()
for _ in range(runs):
silu_mul_fp8_quant_deep_gemm(y, tokens_per_expert, group_size=G)
torch.cuda.synchronize()
avg_time = (time.perf_counter() - start) / runs * 1000
# Calculate actual work done (only count valid tokens)
actual_tokens = tokens_per_expert.sum().item()
actual_elements = actual_tokens * H
# GFLOPS: operations per element = exp + 3 muls + 1 div + quantization ops ≈ 8 ops
ops_per_element = 8
total_ops = actual_elements * ops_per_element
gflops = total_ops / (avg_time / 1000) / 1e9
# Memory bandwidth: bfloat16 inputs (2 bytes), fp8 output (1 byte), scales (4 bytes)
input_bytes = actual_tokens * 2 * H * 2 # 2*H bfloat16 inputs
output_bytes = actual_tokens * H * 1 # H fp8 outputs
scale_bytes = actual_tokens * (H // G) * 4 # scales in float32
total_bytes = input_bytes + output_bytes + scale_bytes
memory_bw = total_bytes / (avg_time / 1000) / 1e9
return avg_time, gflops, memory_bw
configs = [
(8, 32, 1024),
(16, 64, 2048),
(32, 128, 4096),
# DeepSeekV3 Configs
(256, 16, 7168),
(256, 32, 7168),
(256, 64, 7168),
(256, 128, 7168),
(256, 256, 7168),
(256, 512, 7168),
(256, 1024, 7168),
]
print(f"GPU: {torch.cuda.get_device_name()}")
print(f"{'Config':<20} {'Time(ms)':<10} {'GFLOPS':<10} {'GB/s':<10}")
print("-" * 50)
for E, T, H in configs:
try:
time_ms, gflops, gbps = benchmark(E, T, H)
print(f"E={E:3d},T={T:4d},H={H:4d} {time_ms:8.3f} {gflops:8.1f} {gbps:8.1f}")
except Exception:
print(f"E={E:3d},T={T:4d},H={H:4d} FAILED")

View File

@ -9,8 +9,11 @@ from typing import Optional
import flashinfer
import torch
from vllm.utils import round_up
FLOAT32_BYTES = torch.finfo(torch.float).bits // 8
FP8_DTYPE = torch.float8_e4m3fn
FP4_DTYPE = torch.uint8
def to_float8(x, dtype=torch.float8_e4m3fn):
@ -61,13 +64,13 @@ def benchmark_decode(
else:
raise ValueError(f"Invalid kv_layout: {kv_layout}")
query = torch.randn(batch_size, num_qo_heads, head_size, dtype=dtype)
# Always using 1.0 scale to reflect the real perf in benchmarking
q_scale = 1.0
ref_query = torch.randn(batch_size, num_qo_heads, head_size, dtype=dtype)
if q_quant_dtype == FP8_DTYPE:
query, q_scale = to_float8(query)
ref_query = query.to(dtype) * q_scale
query, _ = to_float8(ref_query)
else:
q_scale = 1.0
ref_query = query
query = ref_query
kv_lens = torch.randint(1, max_seq_len, (batch_size,), dtype=torch.int32)
kv_lens[-1] = max_seq_len
@ -75,14 +78,13 @@ def benchmark_decode(
seq_lens = kv_lens
max_seq_len = torch.max(seq_lens).item()
kv_cache = torch.randn(kv_cache_shape, dtype=dtype)
# Always using 1.0 scale to reflect the real perf in benchmarking
k_scale = v_scale = 1.0
ref_kv_cache = torch.randn(kv_cache_shape, dtype=dtype)
if kv_quant_dtype == FP8_DTYPE:
kv_cache, kv_scale = to_float8(kv_cache)
ref_kv_cache = kv_cache.to(dtype) * kv_scale
kv_cache, _ = to_float8(ref_kv_cache)
else:
kv_scale = 1.0
ref_kv_cache = kv_cache
k_scale = v_scale = kv_scale
kv_cache = ref_kv_cache
max_num_blocks_per_seq = (max_seq_len + block_size - 1) // block_size
block_tables = torch.randint(
@ -110,7 +112,7 @@ def benchmark_decode(
wrapper = flashinfer.BatchDecodeWithPagedKVCacheWrapper(
workspace_buffer,
kv_layout,
use_tensor_cores=((num_qo_heads // num_kv_heads) > 4),
use_tensor_cores=True,
)
wrapper.plan(
kv_indptr,
@ -142,11 +144,31 @@ def benchmark_decode(
return sum(times) / len(times), torch.std(torch.tensor(times))
o_scale = 1.0
o_sf_scale = None
output_baseline = torch.empty(ref_query.shape, dtype=dtype)
output_trtllm = torch.empty(query.shape, dtype=o_quant_dtype)
if o_quant_dtype == FP4_DTYPE:
o_sf_scale = 500.0
output_trtllm = flashinfer.utils.FP4Tensor(
torch.empty(query.shape[:-1] + (query.shape[-1] // 2,), dtype=torch.uint8),
torch.empty(
(
round_up(query.shape[0], 128),
round_up(query.shape[1] * query.shape[2] // 16, 4),
),
dtype=torch.float8_e4m3fn,
),
)
else:
output_trtllm = torch.empty(query.shape, dtype=o_quant_dtype)
def baseline_decode():
return wrapper.run(ref_query, ref_kv_cache, out=output_baseline)
return wrapper.run(
ref_query,
ref_kv_cache,
k_scale=k_scale,
v_scale=v_scale,
out=output_baseline,
)
def trtllm_decode():
return flashinfer.decode.trtllm_batch_decode_with_kv_cache(
@ -158,6 +180,7 @@ def benchmark_decode(
max_seq_len=max_seq_len,
bmm1_scale=q_scale * k_scale * sm_scale,
bmm2_scale=v_scale / o_scale,
o_sf_scale=o_sf_scale,
out=output_trtllm,
)
@ -236,7 +259,9 @@ if __name__ == "__main__":
# (q_quant_dtype, kv_quant_dtype, o_quant_dtype)
(None, None, None),
(None, FP8_DTYPE, None),
(FP8_DTYPE, FP8_DTYPE, None),
(FP8_DTYPE, FP8_DTYPE, FP8_DTYPE),
(FP8_DTYPE, FP8_DTYPE, FP4_DTYPE),
]
for quant_dtype in quant_dtypes:

View File

@ -9,8 +9,11 @@ from typing import Optional
import flashinfer
import torch
from vllm.utils import round_up
FLOAT32_BYTES = torch.finfo(torch.float).bits // 8
FP8_DTYPE = torch.float8_e4m3fn
FP4_DTYPE = torch.uint8
def to_float8(x, dtype=torch.float8_e4m3fn):
@ -72,13 +75,15 @@ def benchmark_prefill(
]
)
query = torch.randn(torch.sum(q_lens).item(), num_qo_heads, head_size, dtype=dtype)
# Always using 1.0 scale to reflect the real perf in benchmarking
q_scale = 1.0
ref_query = torch.randn(
torch.sum(q_lens).item(), num_qo_heads, head_size, dtype=dtype
)
if q_quant_dtype == FP8_DTYPE:
query, q_scale = to_float8(query)
ref_query = query.to(dtype) * q_scale
query, _ = to_float8(ref_query)
else:
q_scale = 1.0
ref_query = query
query = ref_query
kv_lens = torch.randint(0, max_kv_len, (batch_size,), dtype=torch.int32)
kv_lens[-1] = max_kv_len
@ -86,14 +91,13 @@ def benchmark_prefill(
seq_lens = kv_lens + q_lens
max_seq_len = torch.max(seq_lens).item()
kv_cache = torch.randn(kv_cache_shape, dtype=dtype)
# Always using 1.0 scale to reflect the real perf in benchmarking
k_scale = v_scale = 1.0
ref_kv_cache = torch.randn(kv_cache_shape, dtype=dtype)
if kv_quant_dtype == FP8_DTYPE:
kv_cache, kv_scale = to_float8(kv_cache)
ref_kv_cache = kv_cache.to(dtype) * kv_scale
kv_cache, _ = to_float8(ref_kv_cache)
else:
kv_scale = 1.0
ref_kv_cache = kv_cache
k_scale = v_scale = kv_scale
kv_cache = ref_kv_cache
max_num_blocks_per_seq = (max_seq_len + block_size - 1) // block_size
block_tables = torch.randint(
@ -152,11 +156,31 @@ def benchmark_prefill(
return sum(times) / len(times), torch.std(torch.tensor(times))
o_scale = 1.0
o_sf_scale = None
output_baseline = torch.empty(ref_query.shape, dtype=dtype)
output_trtllm = torch.empty(query.shape, dtype=o_quant_dtype)
if o_quant_dtype == FP4_DTYPE:
o_sf_scale = 500.0
output_trtllm = flashinfer.utils.FP4Tensor(
torch.empty(query.shape[:-1] + (query.shape[-1] // 2,), dtype=torch.uint8),
torch.empty(
(
round_up(query.shape[0], 128),
round_up(query.shape[1] * query.shape[2] // 16, 4),
),
dtype=torch.float8_e4m3fn,
),
)
else:
output_trtllm = torch.empty(query.shape, dtype=o_quant_dtype)
def baseline_prefill():
return wrapper.run(ref_query, ref_kv_cache, out=output_baseline)
return wrapper.run(
ref_query,
ref_kv_cache,
k_scale=k_scale,
v_scale=v_scale,
out=output_baseline,
)
def trtllm_prefill():
return flashinfer.prefill.trtllm_batch_context_with_kv_cache(
@ -172,6 +196,7 @@ def benchmark_prefill(
batch_size=batch_size,
cum_seq_lens_q=q_indptr,
cum_seq_lens_kv=kv_indptr,
o_sf_scale=o_sf_scale,
out=output_trtllm,
)
@ -249,7 +274,9 @@ if __name__ == "__main__":
quant_dtypes = [
# (q_quant_dtype, kv_quant_dtype, o_quant_dtype)
(None, None, None),
(FP8_DTYPE, FP8_DTYPE, None),
(FP8_DTYPE, FP8_DTYPE, FP8_DTYPE),
(FP8_DTYPE, FP8_DTYPE, FP4_DTYPE),
]
for quant_dtype in quant_dtypes:

View File

@ -11,8 +11,8 @@ from datetime import datetime
from typing import Any
import torch
import tqdm
import triton
from tqdm import tqdm
from vllm.model_executor.layers.quantization.utils.fp8_utils import (
_w8a8_block_fp8_matmul,
@ -141,6 +141,7 @@ def get_weight_shapes(tp_size):
# cannot TP
total = [
(512 + 64, 7168),
(2112, 7168),
((128 + 64) * 128, 7168),
(128 * (128 + 128), 512),
(7168, 16384),

View File

@ -95,4 +95,10 @@ WEIGHT_SHAPES = {
([2048, 2816], 1),
([1408, 2048], 0),
],
"CohereLabs/c4ai-command-a-03-2025": [
([12288, 14336], 1),
([12288, 12288], 0),
([12288, 73728], 1),
([36864, 12288], 0),
],
}

View File

@ -962,7 +962,7 @@ async def main_mp(
# At this point all the clients finished,
# collect results (TTFT, TPOT, etc.) from all the clients.
# This needs to happens before calling join on the clients
# This needs to happen before calling join on the clients
# (result_queue should be emptied).
while not result_queue.empty():
client_metrics.append(result_queue.get())

View File

@ -1,6 +1,7 @@
include(FetchContent)
set(CMAKE_CXX_STANDARD_REQUIRED ON)
set(CMAKE_CXX_STANDARD 17)
set(CMAKE_CXX_EXTENSIONS ON)
set(CMAKE_EXPORT_COMPILE_COMMANDS ON)
@ -87,6 +88,7 @@ is_avx512_disabled(AVX512_DISABLED)
if (MACOSX_FOUND AND CMAKE_SYSTEM_PROCESSOR STREQUAL "arm64")
message(STATUS "Apple Silicon Detected")
set(APPLE_SILICON_FOUND TRUE)
set(ENABLE_NUMA OFF)
check_sysctl(hw.optional.neon ASIMD_FOUND)
check_sysctl(hw.optional.arm.FEAT_BF16 ARM_BF16_FOUND)
@ -188,7 +190,7 @@ else()
set(USE_ACL OFF)
endif()
if ((AVX512_FOUND AND NOT AVX512_DISABLED) OR ASIMD_FOUND OR POWER9_FOUND OR POWER10_FOUND OR POWER11_FOUND)
if ((AVX512_FOUND AND NOT AVX512_DISABLED) OR (ASIMD_FOUND AND NOT APPLE_SILICON_FOUND) OR POWER9_FOUND OR POWER10_FOUND OR POWER11_FOUND)
FetchContent_Declare(
oneDNN
GIT_REPOSITORY https://github.com/oneapi-src/oneDNN.git

View File

@ -19,7 +19,7 @@ else()
FetchContent_Declare(
flashmla
GIT_REPOSITORY https://github.com/vllm-project/FlashMLA.git
GIT_TAG 0e43e774597682284358ff2c54530757b654b8d1
GIT_TAG a757314c04eedd166e329e846c820eb1bdd702de
GIT_PROGRESS TRUE
CONFIGURE_COMMAND ""
BUILD_COMMAND ""
@ -37,13 +37,14 @@ cuda_archs_loose_intersection(FLASH_MLA_ARCHS "9.0a" "${CUDA_ARCHS}")
if(${CMAKE_CUDA_COMPILER_VERSION} VERSION_GREATER 12.3 AND FLASH_MLA_ARCHS)
set(FlashMLA_SOURCES
${flashmla_SOURCE_DIR}/csrc/flash_api.cpp
${flashmla_SOURCE_DIR}/csrc/kernels/splitkv_mla.cu
${flashmla_SOURCE_DIR}/csrc/kernels/get_mla_metadata.cu
${flashmla_SOURCE_DIR}/csrc/kernels/mla_combine.cu
${flashmla_SOURCE_DIR}/csrc/kernels/get_mla_metadata.cu)
${flashmla_SOURCE_DIR}/csrc/kernels/splitkv_mla.cu
${flashmla_SOURCE_DIR}/csrc/kernels_fp8/flash_fwd_mla_fp8_sm90.cu)
set(FlashMLA_INCLUDES
${flashmla_SOURCE_DIR}/csrc/cutlass/include
${flashmla_SOURCE_DIR}/csrc/include)
${flashmla_SOURCE_DIR}/csrc)
set_gencode_flags_for_srcs(
SRCS "${FlashMLA_SOURCES}"

View File

@ -38,7 +38,7 @@ else()
FetchContent_Declare(
vllm-flash-attn
GIT_REPOSITORY https://github.com/vllm-project/flash-attention.git
GIT_TAG 57b4e68b9f9d94750b46de8f8dbd2bfcc86edd4f
GIT_TAG ee4d25bd84e0cbc7e0b9b9685085fd5db2dcb62a
GIT_PROGRESS TRUE
# Don't share the vllm-flash-attn build between build types
BINARY_DIR ${CMAKE_BINARY_DIR}/vllm-flash-attn

View File

@ -36,12 +36,14 @@ limitations under the License.
#if !defined(CUDA_VERSION) || CUDA_VERSION < 12040
void sm100_cutlass_mla_decode(
torch::Tensor const& out,
torch::Tensor const& lse,
torch::Tensor const& q_nope,
torch::Tensor const& q_pe,
torch::Tensor const& kv_c_and_k_pe_cache,
torch::Tensor const& seq_lens,
torch::Tensor const& page_table,
torch::Tensor const& workspace,
double sm_scale,
int64_t num_kv_splits) {
TORCH_CHECK(false, "CUDA version must be >= 12.4 for cutlass_mla_decode");
}
@ -64,11 +66,11 @@ struct IsPersistent {
static const bool value = v;
};
template <typename T, bool IsPaged128, typename PersistenceOption = IsPersistent<true>>
template <typename T, typename TOut, bool IsPaged128, typename PersistenceOption = IsPersistent<true>>
struct MlaSm100 {
using Element = T;
using ElementAcc = float;
using ElementOut = T;
using ElementOut = TOut;
using TileShape = Shape<_128, _128, Shape<_512, _64>>;
using TileShapeH = cute::tuple_element_t<0, TileShape>;
@ -99,6 +101,7 @@ struct MlaSm100 {
template <typename T>
typename T::Fmha::Arguments args_from_options(
at::Tensor const& out,
at::Tensor const& lse,
at::Tensor const& q_nope,
at::Tensor const& q_pe,
at::Tensor const& kv_c_and_k_pe_cache,
@ -162,7 +165,10 @@ typename T::Fmha::Arguments args_from_options(
stride_PT,
page_count_total,
page_size},
{static_cast<ElementOut*>(out.data_ptr()), stride_O, static_cast<ElementAcc*>(nullptr), stride_LSE},
{static_cast<ElementOut*>(out.data_ptr()),
stride_O,
static_cast<ElementAcc*>(lse.defined() ? lse.data_ptr() : nullptr),
stride_LSE},
hw_info,
// TODO(trevor-m): Change split_kv back to -1 when
// https://github.com/NVIDIA/cutlass/issues/2274 is fixed. Split_kv=1 will
@ -178,9 +184,10 @@ typename T::Fmha::Arguments args_from_options(
return arguments;
}
template <typename Element, bool IsPaged128, typename PersistenceOption>
template <typename Element, typename ElementOut, bool IsPaged128, typename PersistenceOption>
void runMla(
at::Tensor const& out,
at::Tensor const& lse,
at::Tensor const& q_nope,
at::Tensor const& q_pe,
at::Tensor const& kv_c_and_k_pe_cache,
@ -190,9 +197,9 @@ void runMla(
double sm_scale,
int64_t num_kv_splits,
cudaStream_t stream) {
using MlaSm100Type = MlaSm100<Element, IsPaged128, PersistenceOption>;
using MlaSm100Type = MlaSm100<Element, ElementOut, IsPaged128, PersistenceOption>;
typename MlaSm100Type::Fmha fmha;
auto arguments = args_from_options<MlaSm100Type>(out, q_nope, q_pe, kv_c_and_k_pe_cache, seq_lens, page_table, sm_scale, num_kv_splits);
auto arguments = args_from_options<MlaSm100Type>(out, lse, q_nope, q_pe, kv_c_and_k_pe_cache, seq_lens, page_table, sm_scale, num_kv_splits);
CUTLASS_CHECK(fmha.can_implement(arguments));
@ -214,6 +221,7 @@ void runMla(
void sm100_cutlass_mla_decode(
torch::Tensor const& out,
torch::Tensor const& lse,
torch::Tensor const& q_nope,
torch::Tensor const& q_pe,
torch::Tensor const& kv_c_and_k_pe_cache,
@ -233,14 +241,14 @@ void sm100_cutlass_mla_decode(
DISPATCH_BOOL(page_size == 128, IsPaged128, [&] {
DISPATCH_BOOL(num_kv_splits <= 1, NotManualSplitKV, [&] {
if (in_dtype == at::ScalarType::Half) {
runMla<cutlass::half_t, IsPaged128, IsPersistent<NotManualSplitKV>>(
out, q_nope, q_pe, kv_c_and_k_pe_cache, seq_lens, page_table, workspace, sm_scale, num_kv_splits, stream);
runMla<cutlass::half_t, cutlass::half_t, IsPaged128, IsPersistent<NotManualSplitKV>>(
out, lse, q_nope, q_pe, kv_c_and_k_pe_cache, seq_lens, page_table, workspace, sm_scale, num_kv_splits, stream);
} else if (in_dtype == at::ScalarType::BFloat16) {
runMla<cutlass::bfloat16_t, IsPaged128, IsPersistent<NotManualSplitKV>>(
out, q_nope, q_pe, kv_c_and_k_pe_cache, seq_lens, page_table, workspace, sm_scale, num_kv_splits, stream);
runMla<cutlass::bfloat16_t, cutlass::bfloat16_t, IsPaged128, IsPersistent<NotManualSplitKV>>(
out, lse, q_nope, q_pe, kv_c_and_k_pe_cache, seq_lens, page_table, workspace, sm_scale, num_kv_splits, stream);
} else if (in_dtype == at::ScalarType::Float8_e4m3fn) {
runMla<cutlass::float_e4m3_t, IsPaged128, IsPersistent<NotManualSplitKV>>(
out, q_nope, q_pe, kv_c_and_k_pe_cache, seq_lens, page_table, workspace, sm_scale, num_kv_splits, stream);
runMla<cutlass::float_e4m3_t, cutlass::bfloat16_t, IsPaged128, IsPersistent<NotManualSplitKV>>(
out, lse, q_nope, q_pe, kv_c_and_k_pe_cache, seq_lens, page_table, workspace, sm_scale, num_kv_splits, stream);
} else {
TORCH_CHECK(false, "Unsupported input data type of MLA");
}
@ -253,7 +261,7 @@ void sm100_cutlass_mla_decode(
int64_t sm100_cutlass_mla_get_workspace_size(int64_t max_seq_len, int64_t num_batches, int64_t sm_count, int64_t num_kv_splits) {
// Workspace size depends on ElementAcc and ElementLSE (same as ElementAcc)
// which are float, so Element type here doesn't matter.
using MlaSm100Type = MlaSm100<cutlass::half_t, true>;
using MlaSm100Type = MlaSm100<cutlass::half_t, cutlass::half_t, true>;
// Get split kv. Requires problem shape and sm_count only.
typename MlaSm100Type::Fmha::Arguments arguments;

View File

@ -40,7 +40,17 @@ void concat_and_cache_mla(torch::Tensor& kv_c, torch::Tensor& k_pe,
void convert_fp8(torch::Tensor& dst_cache, torch::Tensor& src_cache,
const double scale, const std::string& kv_cache_dtype);
void gather_cache(
void gather_and_maybe_dequant_cache(
torch::Tensor const& src_cache, // [NUM_BLOCKS, BLOCK_SIZE, ENTRIES...]
torch::Tensor const& dst, // [TOT_TOKENS, ENTRIES...]
torch::Tensor const& block_table, // [BATCH, BLOCK_INDICES]
torch::Tensor const& cu_seq_lens, // [BATCH+1]
int64_t batch_size, const std::string& kv_cache_dtype,
torch::Tensor const& scale,
std::optional<torch::Tensor> seq_starts = std::nullopt);
// TODO(hc): cp_gather_cache need support scaled kvcahe in the future.
void cp_gather_cache(
torch::Tensor const& src_cache, // [NUM_BLOCKS, BLOCK_SIZE, ENTRIES...]
torch::Tensor const& dst, // [TOT_TOKENS, ENTRIES...]
torch::Tensor const& block_table, // [BATCH, BLOCK_INDICES]

View File

@ -1,6 +1,7 @@
#include <torch/all.h>
#include <ATen/cuda/CUDAContext.h>
#include <c10/cuda/CUDAGuard.h>
#include <c10/cuda/CUDAException.h>
#include "cuda_utils.h"
#include "cuda_compat.h"
@ -624,9 +625,9 @@ void convert_fp8(torch::Tensor& dst_cache, torch::Tensor& src_cache,
namespace vllm {
// grid is launched with dimensions (batch, num_splits)
template <typename scalar_t>
__global__ void gather_cache(
const scalar_t* __restrict__ src_cache, // [NUM_BLOCKS, BLOCK_SIZE,
template <typename scalar_t, typename cache_t, Fp8KVCacheDataType kv_dt>
__global__ void gather_and_maybe_dequant_cache(
const cache_t* __restrict__ src_cache, // [NUM_BLOCKS, BLOCK_SIZE,
// ENTRIES...]
scalar_t* __restrict__ dst, // [TOT_TOKENS, ENTRIES...]
const int32_t* __restrict__ block_table, // [BATCH, BLOCK_INDICES]
@ -634,6 +635,7 @@ __global__ void gather_cache(
const int32_t block_size, const int32_t entry_size,
const int64_t block_table_stride, const int64_t cache_block_stride,
const int64_t cache_entry_stride, const int64_t dst_entry_stride,
const float* __restrict__ scale,
const int32_t* __restrict__ seq_starts) { // Optional: starting offsets per
// batch
@ -675,10 +677,16 @@ __global__ void gather_cache(
if (partial_block_size) full_blocks_end -= 1;
}
auto copy_entry = [&](const scalar_t* __restrict__ _src,
auto copy_entry = [&](const cache_t* __restrict__ _src,
scalar_t* __restrict__ _dst) {
for (int i = threadIdx.x; i < entry_size; i += blockDim.x)
_dst[i] = _src[i];
for (int i = threadIdx.x; i < entry_size; i += blockDim.x) {
if constexpr (kv_dt == Fp8KVCacheDataType::kAuto) {
_dst[i] = static_cast<scalar_t>(_src[i]);
} else {
_dst[i] =
fp8::scaled_convert<scalar_t, cache_t, kv_dt>(_src[i], *scale);
}
}
};
for (int pid = split_start; pid < full_blocks_end; ++pid) {
@ -705,8 +713,144 @@ __global__ void gather_cache(
} // namespace vllm
// Macro to dispatch the kernel based on the data type.
#define CALL_GATHER_CACHE(CPY_DTYPE) \
vllm::gather_cache<CPY_DTYPE><<<grid, block, 0, stream>>>( \
// SCALAR_T is the data type of the destination tensor.
// CACHE_T is the stored data type of kv-cache.
// KV_DTYPE is the real data type of kv-cache.
#define CALL_GATHER_CACHE(SCALAR_T, CACHE_T, KV_DTYPE) \
vllm::gather_and_maybe_dequant_cache<SCALAR_T, CACHE_T, KV_DTYPE> \
<<<grid, block, 0, stream>>>( \
reinterpret_cast<CACHE_T*>(src_cache.data_ptr()), \
reinterpret_cast<SCALAR_T*>(dst.data_ptr()), \
block_table.data_ptr<int32_t>(), cu_seq_lens.data_ptr<int32_t>(), \
block_size, entry_size, block_table_stride, cache_block_stride, \
cache_entry_stride, dst_entry_stride, \
reinterpret_cast<const float*>(scale.data_ptr()), seq_starts_ptr);
// Gather sequences from the cache into the destination tensor.
// - cu_seq_lens contains the cumulative sequence lengths for each batch
// - block_table contains the cache block indices for each sequence
// - Optionally, seq_starts (if provided) offsets the starting block index by
// (seq_starts[bid] / page_size)
void gather_and_maybe_dequant_cache(
torch::Tensor const& src_cache, // [NUM_BLOCKS, BLOCK_SIZE, ENTRIES...]
torch::Tensor const& dst, // [TOT_TOKENS, ENTRIES...]
torch::Tensor const& block_table, // [BATCH, BLOCK_INDICES]
torch::Tensor const& cu_seq_lens, // [BATCH+1]
int64_t batch_size, const std::string& kv_cache_dtype,
torch::Tensor const& scale,
std::optional<torch::Tensor> seq_starts = std::nullopt) {
at::cuda::OptionalCUDAGuard device_guard(src_cache.device());
const cudaStream_t stream = at::cuda::getCurrentCUDAStream();
int32_t block_size = src_cache.size(1);
int32_t entry_size = src_cache.flatten(2, -1).size(2);
TORCH_CHECK(block_table.dtype() == torch::kInt32,
"block_table must be int32");
TORCH_CHECK(cu_seq_lens.dtype() == torch::kInt32,
"cu_seq_lens must be int32");
if (seq_starts.has_value()) {
TORCH_CHECK(seq_starts.value().dtype() == torch::kInt32,
"seq_starts must be int32");
}
TORCH_CHECK(src_cache.device() == dst.device(),
"src_cache and dst must be on the same device");
TORCH_CHECK(src_cache.device() == block_table.device(),
"src_cache and block_table must be on the same device");
TORCH_CHECK(src_cache.device() == cu_seq_lens.device(),
"src_cache and cu_seq_lens must be on the same device");
if (seq_starts.has_value()) {
TORCH_CHECK(src_cache.device() == seq_starts.value().device(),
"src_cache and seq_starts must be on the same device");
}
int64_t block_table_stride = block_table.stride(0);
int64_t cache_block_stride = src_cache.stride(0);
int64_t cache_entry_stride = src_cache.stride(1);
int64_t dst_entry_stride = dst.stride(0);
// Decide on the number of splits based on the batch size.
int num_splits = batch_size > 128 ? 2 : batch_size > 64 ? 4 : 16;
dim3 grid(batch_size, num_splits);
dim3 block(1024);
const int32_t* seq_starts_ptr =
seq_starts.has_value() ? seq_starts.value().data_ptr<int32_t>() : nullptr;
DISPATCH_BY_KV_CACHE_DTYPE(dst.dtype(), kv_cache_dtype, CALL_GATHER_CACHE);
}
namespace vllm {
template <typename scalar_t>
// Note(hc): The cp_gather_cache allows seq_starts to no longer be divisible by
// block_size.
__global__ void cp_gather_cache(
const scalar_t* __restrict__ src_cache, // [NUM_BLOCKS, BLOCK_SIZE,
// ENTRY_SIZE]
scalar_t* __restrict__ dst, // [TOT_TOKENS, ENTRY_SIZE]
const int32_t* __restrict__ block_table, // [BATCH, BLOCK_INDICES]
const int32_t* __restrict__ cu_seq_lens, // [BATCH+1]
const int32_t block_size, const int32_t entry_size,
const int64_t block_table_stride, const int64_t cache_block_stride,
const int64_t cache_entry_stride, const int64_t dst_entry_stride,
const int32_t* __restrict__ seq_starts // Optional: starting offsets per
// batch
) {
const int64_t bid = blockIdx.x; // Batch ID
const int32_t num_splits = gridDim.y;
const int32_t split = blockIdx.y;
const int32_t seq_start = cu_seq_lens[bid];
const int32_t seq_end = cu_seq_lens[bid + 1];
const int32_t seq_len = seq_end - seq_start;
const int32_t tot_slots = seq_len;
const int32_t split_slots = cuda_utils::ceil_div(tot_slots, num_splits);
const int32_t split_start = split * split_slots;
const int32_t split_end = min((split + 1) * split_slots, tot_slots);
const bool is_active_split = (split_start < tot_slots);
if (!is_active_split) return;
// Adjust the pointer for the block_table for this batch.
// If seq_starts is provided, compute an offset based on it
const int32_t batch_offset = bid * block_table_stride;
int32_t offset = split_start;
if (seq_starts != nullptr) {
offset += seq_starts[bid];
}
int32_t offset_div = offset / block_size;
offset = offset % block_size;
const int32_t* batch_block_table = block_table + batch_offset;
// Adjust dst pointer based on the cumulative sequence lengths.
dst += seq_start * dst_entry_stride;
auto copy_entry = [&](const scalar_t* __restrict__ _src,
scalar_t* __restrict__ _dst) {
for (int i = threadIdx.x; i < entry_size; i += blockDim.x)
_dst[i] = _src[i];
};
for (int pid = split_start; pid < split_end; ++pid) {
auto block_id = batch_block_table[offset_div];
auto block_start_ptr = src_cache + block_id * cache_block_stride;
auto block_dst_ptr = dst + pid * dst_entry_stride;
copy_entry(block_start_ptr + offset * cache_entry_stride, block_dst_ptr);
offset += 1;
// bump to next block
if (offset == block_size) {
offset_div += 1;
offset = 0;
}
}
}
} // namespace vllm
// Macro to dispatch the kernel based on the data type.
#define CALL_CP_GATHER_CACHE(CPY_DTYPE) \
vllm::cp_gather_cache<CPY_DTYPE><<<grid, block, 0, stream>>>( \
reinterpret_cast<CPY_DTYPE*>(src_cache.data_ptr()), \
reinterpret_cast<CPY_DTYPE*>(dst.data_ptr()), \
block_table.data_ptr<int32_t>(), cu_seq_lens.data_ptr<int32_t>(), \
@ -716,9 +860,9 @@ __global__ void gather_cache(
// Gather sequences from the cache into the destination tensor.
// - cu_seq_lens contains the cumulative sequence lengths for each batch
// - block_table contains the cache block indices for each sequence
// - Optionally, seq_starts (if provided) offsets the starting block index by
// (seq_starts[bid] / page_size)
void gather_cache(
// - Optionally, seq_starts (if provided) offsets the starting slot index by
// seq_starts[bid]
void cp_gather_cache(
torch::Tensor const& src_cache, // [NUM_BLOCKS, BLOCK_SIZE, ENTRIES...]
torch::Tensor const& dst, // [TOT_TOKENS, ENTRIES...]
torch::Tensor const& block_table, // [BATCH, BLOCK_INDICES]
@ -769,11 +913,11 @@ void gather_cache(
seq_starts.has_value() ? seq_starts.value().data_ptr<int32_t>() : nullptr;
if (dtype_bits == 32) {
CALL_GATHER_CACHE(uint32_t);
CALL_CP_GATHER_CACHE(uint32_t);
} else if (dtype_bits == 16) {
CALL_GATHER_CACHE(uint16_t);
CALL_CP_GATHER_CACHE(uint16_t);
} else if (dtype_bits == 8) {
CALL_GATHER_CACHE(uint8_t);
CALL_CP_GATHER_CACHE(uint8_t);
} else {
TORCH_CHECK(false, "Unsupported data type width: ", dtype_bits);
}

View File

@ -22,6 +22,23 @@ void release_dnnl_matmul_handler(int64_t handler) {
delete ptr;
}
DNNLScratchPadManager::DNNLScratchPadManager() : size_(0), ptr_(nullptr) {
this->realloc(allocation_unit * 128);
}
void DNNLScratchPadManager::realloc(size_t new_size) {
new_size = round(new_size);
if (new_size > size_) {
ptr_ = std::aligned_alloc(64, new_size);
size_ = new_size;
}
}
DNNLScratchPadManager* DNNLScratchPadManager::get_dnnl_scratchpad_manager() {
static DNNLScratchPadManager manager;
return &manager;
}
template <typename KT, typename VT>
class DNNLPrimitiveCache {
public:
@ -166,6 +183,23 @@ struct hash<W8A8MatMulPrimitiveHandler::MSizeCacheKey> {
hash<int>()(static_cast<int>(val.bias_type));
}
};
template <>
struct hash<MatMulPrimitiveHandler::ClassMatmulCacheKey> {
size_t operator()(
const MatMulPrimitiveHandler::ClassMatmulCacheKey& val) const {
return hash<dnnl_dim_t>()(val.b_n_size) ^ hash<dnnl_dim_t>()(val.b_k_size);
}
};
template <>
struct hash<MatMulPrimitiveHandler::MSizeCacheKey> {
size_t operator()(const MatMulPrimitiveHandler::MSizeCacheKey& val) const {
return hash<dnnl_dim_t>()(val.a_m_size) ^
hash<dnnl_dim_t>()(val.a_m_stride) ^ hash<bool>()(val.use_bias) ^
hash<int>()(static_cast<int>(val.bias_type));
}
};
} // namespace std
bool operator==(const W8A8MatMulPrimitiveHandler::ClassMatmulCacheKey& l,
@ -181,6 +215,17 @@ bool operator==(const W8A8MatMulPrimitiveHandler::MSizeCacheKey& l,
l.bias_type == r.bias_type;
}
bool operator==(const MatMulPrimitiveHandler::ClassMatmulCacheKey& l,
const MatMulPrimitiveHandler::ClassMatmulCacheKey& r) {
return l.b_n_size == r.b_n_size && l.b_k_size == r.b_k_size;
}
bool operator==(const MatMulPrimitiveHandler::MSizeCacheKey& l,
const MatMulPrimitiveHandler::MSizeCacheKey& r) {
return l.a_m_size == r.a_m_size && l.a_m_stride == r.a_m_stride &&
l.use_bias == r.use_bias && l.bias_type == r.bias_type;
}
static std::shared_ptr<W8A8MatMulPrimitiveHandler::MSizeCache>
get_w8a8_class_primitive_cache(
const W8A8MatMulPrimitiveHandler::ClassMatmulCacheKey& key,
@ -239,6 +284,11 @@ void W8A8MatMulPrimitiveHandler::execute(ExecArgs& args) {
}
dnnl::matmul matmul = get_matmul_cache(args);
auto&& [scratchpad_storage, scratchpad_mem_desc] = get_runtime_memory_ptr(5);
scratchpad_storage->set_data_handle(
DNNLScratchPadManager::get_dnnl_scratchpad_manager()->get_data<void>());
matmul.execute(default_stream(), memory_cache_);
default_stream().wait();
}
@ -257,6 +307,8 @@ dnnl::matmul W8A8MatMulPrimitiveHandler::get_matmul_cache(
return m_size_cache_->get_or_create(key, [&]() {
dnnl::matmul::primitive_desc desc = this->create_primitive_desc(key, false);
auto manager = DNNLScratchPadManager::get_dnnl_scratchpad_manager();
manager->realloc(desc.scratchpad_desc().get_size());
return dnnl::matmul(desc);
});
}
@ -300,6 +352,11 @@ void W8A8MatMulPrimitiveHandler::init_runtime_memory_cache(const Args& args) {
dnnl::memory({{b_n_size_}, dnnl::memory::data_type::f32, {1}},
default_engine(), nullptr);
set_runtime_memory_ptr(4, memory_cache_[DNNL_ARG_BIAS].get());
memory_cache_[DNNL_ARG_SCRATCHPAD] =
dnnl::memory({{b_n_size_}, dnnl::memory::data_type::f32, {1}},
default_engine(), nullptr);
set_runtime_memory_ptr(5, memory_cache_[DNNL_ARG_SCRATCHPAD].get());
}
dnnl::matmul::primitive_desc W8A8MatMulPrimitiveHandler::create_primitive_desc(
@ -319,6 +376,9 @@ dnnl::matmul::primitive_desc W8A8MatMulPrimitiveHandler::create_primitive_desc(
dnnl::memory::format_tag::ab);
dnnl::primitive_attr attr;
attr.set_scratchpad_mode(dnnl::scratchpad_mode::user);
// For PER_TOKEN, scales will be applied in outside epilogue
if (a_qs_ == QuantizationStrategy::PER_TENSOR) {
attr.set_scales_mask(DNNL_ARG_SRC, 0);
@ -344,3 +404,120 @@ dnnl::matmul::primitive_desc W8A8MatMulPrimitiveHandler::create_primitive_desc(
attr);
}
}
MatMulPrimitiveHandler::MatMulPrimitiveHandler(const Args& args)
: DNNLMatMulPrimitiveHandler(
static_cast<DNNLMatMulPrimitiveHandler::Args>(args), args.ab_type),
m_size_cache_(nullptr) {
assert(ab_type_ == dnnl::memory::data_type::f32 ||
ab_type_ == dnnl::memory::data_type::bf16 ||
ab_type_ == dnnl::memory::data_type::f16);
prepack_weight(args.b_ptr,
create_primitive_desc(
MSizeCacheKey{.a_m_size = DNNL_RUNTIME_DIM_VAL,
.a_m_stride = DNNL_RUNTIME_DIM_VAL,
.use_bias = false,
.bias_type = dnnl::memory::data_type::undef},
true)
.weights_desc());
init_runtime_memory_cache(args);
}
static std::shared_ptr<MatMulPrimitiveHandler::MSizeCache>
get_matul_class_primitive_cache(
const MatMulPrimitiveHandler::ClassMatmulCacheKey& key,
int64_t cache_size) {
static MatMulPrimitiveHandler::ClassMatmulCache cache(128);
assert(cache_size > 0);
return cache.get_or_create(key, [&]() {
return std::make_shared<MatMulPrimitiveHandler::MSizeCache>(cache_size);
});
}
void MatMulPrimitiveHandler::execute(ExecArgs& args) {
auto&& [a_storage, a_mem_desc] = get_runtime_memory_ptr(0);
auto&& [c_storage, c_mem_desc] = get_runtime_memory_ptr(1);
a_storage->set_data_handle((void*)args.a_ptr);
a_mem_desc->dims[0] = args.a_m_size;
a_mem_desc->format_desc.blocking.strides[0] = args.a_m_stride;
c_storage->set_data_handle((void*)args.c_ptr);
c_mem_desc->dims[0] = args.a_m_size;
if (args.use_bias) {
auto&& [bias_storage, bias_mem_desc] = get_runtime_memory_ptr(2);
bias_storage->set_data_handle((void*)args.bias_ptr);
}
dnnl::matmul matmul = get_matmul_cache(args);
auto&& [scratchpad_storage, scratchpad_mem_desc] = get_runtime_memory_ptr(3);
scratchpad_storage->set_data_handle(
DNNLScratchPadManager::get_dnnl_scratchpad_manager()->get_data<void>());
matmul.execute(default_stream(), memory_cache_);
default_stream().wait();
}
dnnl::matmul MatMulPrimitiveHandler::get_matmul_cache(
const MSizeCacheKey& key) {
if (m_size_cache_.get() == nullptr) {
ClassMatmulCacheKey key = {.b_n_size = b_n_size_, .b_k_size = b_k_size_};
m_size_cache_ = get_matul_class_primitive_cache(key, primitive_cache_size_);
}
return m_size_cache_->get_or_create(key, [&]() {
dnnl::matmul::primitive_desc desc = this->create_primitive_desc(key, false);
auto manager = DNNLScratchPadManager::get_dnnl_scratchpad_manager();
manager->realloc(desc.scratchpad_desc().get_size());
return dnnl::matmul(desc);
});
}
dnnl::matmul::primitive_desc MatMulPrimitiveHandler::create_primitive_desc(
const MSizeCacheKey& key, bool first_time) {
dnnl::memory::desc a_md;
dnnl::memory::desc b_md;
if (first_time) {
a_md = dnnl::memory::desc({key.a_m_size, b_k_size_}, b_type_,
dnnl::memory::format_tag::ab);
b_md = dnnl::memory::desc({b_k_size_, b_n_size_}, b_type_,
dnnl::memory::format_tag::any);
} else {
a_md = dnnl::memory::desc({key.a_m_size, b_k_size_}, b_type_,
{key.a_m_stride, 1});
b_md = b_target_mem_desc_;
}
dnnl::memory::desc c_md({key.a_m_size, b_n_size_}, c_type_,
dnnl::memory::format_tag::ab);
dnnl::primitive_attr attr;
attr.set_scratchpad_mode(dnnl::scratchpad_mode::user);
if (key.use_bias) {
dnnl::memory::desc bias_md({1, b_n_size_}, key.bias_type, {b_n_size_, 1});
return dnnl::matmul::primitive_desc(default_engine(), a_md, b_md, bias_md,
c_md, attr);
} else {
return dnnl::matmul::primitive_desc(default_engine(), a_md, b_md, c_md,
attr);
}
}
void MatMulPrimitiveHandler::init_runtime_memory_cache(const Args& args) {
memory_cache_[DNNL_ARG_SRC] = dnnl::memory(
{{1, b_k_size_}, b_type_, {b_k_size_, 1}}, default_engine(), nullptr);
set_runtime_memory_ptr(0, memory_cache_[DNNL_ARG_SRC].get());
memory_cache_[DNNL_ARG_DST] =
dnnl::memory({{1, b_n_size_}, c_type_, dnnl::memory::format_tag::ab},
default_engine(), nullptr);
set_runtime_memory_ptr(1, memory_cache_[DNNL_ARG_DST].get());
memory_cache_[DNNL_ARG_BIAS] =
dnnl::memory({{b_n_size_}, dnnl::memory::data_type::f32, {1}},
default_engine(), nullptr);
set_runtime_memory_ptr(2, memory_cache_[DNNL_ARG_BIAS].get());
memory_cache_[DNNL_ARG_SCRATCHPAD] =
dnnl::memory({{b_n_size_}, dnnl::memory::data_type::f32, {1}},
default_engine(), nullptr);
set_runtime_memory_ptr(3, memory_cache_[DNNL_ARG_SCRATCHPAD].get());
}

View File

@ -59,6 +59,30 @@ constexpr inline dnnl::memory::data_type get_dnnl_type() {
return DNNLType<std::decay_t<T>>::type;
}
class DNNLScratchPadManager {
public:
static constexpr size_t allocation_unit = 4 * 1024 * 1024; // 4KB
static DNNLScratchPadManager* get_dnnl_scratchpad_manager();
DNNLScratchPadManager();
template <typename T>
T* get_data() {
return reinterpret_cast<T*>(ptr_);
}
static size_t round(size_t size) {
return ((size + allocation_unit - 1) / allocation_unit) * allocation_unit;
}
void realloc(size_t new_size);
private:
size_t size_;
void* ptr_;
};
class DNNLMatMulPrimitiveHandler {
public:
virtual ~DNNLMatMulPrimitiveHandler() = default;
@ -166,4 +190,54 @@ class W8A8MatMulPrimitiveHandler : public DNNLMatMulPrimitiveHandler {
std::shared_ptr<MSizeCache> m_size_cache_;
};
class MatMulPrimitiveHandler : public DNNLMatMulPrimitiveHandler {
public:
struct Args : public DNNLMatMulPrimitiveHandler::Args {
dnnl::memory::data_type ab_type;
};
struct ClassMatmulCacheKey {
dnnl_dim_t b_n_size;
dnnl_dim_t b_k_size;
friend bool operator==(const ClassMatmulCacheKey& l,
const ClassMatmulCacheKey& r);
};
struct MSizeCacheKey {
dnnl_dim_t a_m_size;
dnnl_dim_t a_m_stride;
bool use_bias;
dnnl::memory::data_type bias_type;
friend bool operator==(const MSizeCacheKey& l, const MSizeCacheKey& r);
};
using MSizeCache = DNNLPrimitiveCache<MSizeCacheKey, dnnl::matmul>;
using ClassMatmulCache =
DNNLPrimitiveCache<ClassMatmulCacheKey, std::shared_ptr<MSizeCache>>;
struct ExecArgs : public MSizeCacheKey {
const void* a_ptr;
const void* bias_ptr;
void* c_ptr;
};
public:
MatMulPrimitiveHandler(const Args& args);
void execute(ExecArgs& args);
private:
dnnl::matmul::primitive_desc create_primitive_desc(const MSizeCacheKey& key,
bool first_time);
void init_runtime_memory_cache(const Args& args);
dnnl::matmul get_matmul_cache(const MSizeCacheKey& key);
private:
std::shared_ptr<MSizeCache> m_size_cache_;
};
#endif

View File

@ -145,7 +145,8 @@ void dynamic_scaled_int8_quant_impl(const scalar_t* input, int8_t* output,
}
}
float scale_val, azp_val;
float scale_val;
float azp_val = 0.0f;
if constexpr (AZP) {
float max_scalar = max_value.reduce_max();
float min_scalar = min_value.reduce_min();
@ -379,6 +380,7 @@ void onednn_scaled_mm(
exec_args.a_ptr = a.data_ptr<int8_t>();
exec_args.a_m_size = a.size(0);
exec_args.bias_ptr = nullptr;
exec_args.bias_type = get_dnnl_type<void>();
exec_args.use_bias = false;
exec_args.a_scales_ptr = nullptr;
exec_args.a_zero_points_ptr = nullptr;
@ -492,3 +494,56 @@ void dynamic_scaled_int8_quant(
}
});
}
int64_t create_onednn_mm_handler(const torch::Tensor& b,
int64_t primitive_cache_size) {
TORCH_CHECK(b.dim() == 2);
MatMulPrimitiveHandler::Args args;
args.primitive_cache_size = primitive_cache_size;
args.b_k_size = b.size(0);
args.b_k_stride = b.stride(0);
args.b_n_size = b.size(1);
args.b_n_stride = b.stride(1);
args.b_ptr = b.data_ptr();
VLLM_DISPATCH_FLOATING_TYPES(b.scalar_type(), "create_onednn_mm_handler",
[&] {
args.c_type = get_dnnl_type<scalar_t>();
args.ab_type = get_dnnl_type<scalar_t>();
});
return reinterpret_cast<int64_t>(new MatMulPrimitiveHandler(args));
}
void onednn_mm(torch::Tensor& c, // [M, OC], row-major
const torch::Tensor& a, // [M, IC], row-major
const std::optional<torch::Tensor>& bias, int64_t handler) {
CPU_KERNEL_GUARD_IN(onednn_mm)
TORCH_CHECK(a.dim() == 2);
TORCH_CHECK(a.stride(-1) == 1);
TORCH_CHECK(c.is_contiguous());
MatMulPrimitiveHandler* ptr =
reinterpret_cast<MatMulPrimitiveHandler*>(handler);
MatMulPrimitiveHandler::ExecArgs exec_args;
exec_args.a_m_size = a.size(0);
exec_args.a_m_stride = a.stride(0);
VLLM_DISPATCH_FLOATING_TYPES(a.scalar_type(), "onednn_mm", [&] {
if (bias.has_value()) {
exec_args.use_bias = true;
exec_args.bias_type = get_dnnl_type<scalar_t>();
exec_args.bias_ptr = bias->data_ptr<scalar_t>();
} else {
exec_args.use_bias = false;
exec_args.bias_type = get_dnnl_type<void>();
exec_args.bias_ptr = nullptr;
}
exec_args.a_ptr = a.data_ptr<scalar_t>();
exec_args.c_ptr = c.data_ptr<scalar_t>();
ptr->execute(exec_args);
});
}

View File

@ -21,6 +21,12 @@ void onednn_scaled_mm(torch::Tensor& c, const torch::Tensor& a,
const std::optional<torch::Tensor>& bias,
int64_t handler);
int64_t create_onednn_mm_handler(const torch::Tensor& b,
int64_t primitive_cache_size);
void onednn_mm(torch::Tensor& c, const torch::Tensor& a,
const std::optional<torch::Tensor>& bias, int64_t handler);
void mla_decode_kvcache(torch::Tensor& out, torch::Tensor& query,
torch::Tensor& kv_cache, double scale,
torch::Tensor& block_tables, torch::Tensor& seq_lens);
@ -153,6 +159,18 @@ TORCH_LIBRARY_EXPAND(TORCH_EXTENSION_NAME, ops) {
ops.def("release_dnnl_matmul_handler(int handler) -> ()",
&release_dnnl_matmul_handler);
// Create oneDNN GEMM handler
ops.def(
"create_onednn_mm_handler(Tensor b, int "
"primitive_cache_size) -> int",
&create_onednn_mm_handler);
// oneDNN GEMM
ops.def(
"onednn_mm(Tensor! c, Tensor a, Tensor? bias, "
"int handler) -> ()");
ops.impl("onednn_mm", torch::kCPU, &onednn_mm);
// Create oneDNN W8A8 handler
ops.def(
"create_onednn_scaled_mm_handler(Tensor b, Tensor b_scales, ScalarType "

View File

@ -15,6 +15,8 @@ typedef __hip_bfloat16 nv_bfloat16;
#include <map>
#include <unordered_map>
#include <vector>
#include <cstdlib>
#include <cstring>
namespace vllm {
#define CUDACHECK(cmd) \
@ -555,22 +557,47 @@ class CustomAllreduce {
size /= d;
auto bytes = size * sizeof(typename packed_t<T>::P);
int blocks = std::min(block_limit, (size + threads - 1) / threads);
// Check environment variable once
const char* env_algo = std::getenv("VLLM_CUSTOM_ALLREDUCE_ALGO");
bool force_1stage = false;
bool force_2stage = false;
if (env_algo != nullptr) {
if (std::strcmp(env_algo, "1stage") == 0 ||
std::strcmp(env_algo, "oneshot") == 0) {
force_1stage = true;
} else if (std::strcmp(env_algo, "2stage") == 0 ||
std::strcmp(env_algo, "twoshot") == 0) {
force_2stage = true;
} else {
throw std::runtime_error(
"Invalid VLLM_CUSTOM_ALLREDUCE_ALGO: " + std::string(env_algo) +
". Valid values: 1stage, oneshot, 2stage, twoshot");
}
}
#define KL(ngpus, name) \
name<T, ngpus><<<blocks, threads, 0, stream>>>(ptrs, sg_, self_sg_, output, \
rank_, size);
#define REDUCE_CASE(ngpus) \
case ngpus: { \
if (world_size_ == 2) { \
KL(ngpus, cross_device_reduce_1stage); \
} else if (fully_connected_) { \
if ((world_size_ <= 4 && bytes < 512 * 1024) || \
(world_size_ <= 8 && bytes < 256 * 1024)) { \
KL(ngpus, cross_device_reduce_1stage); \
} else { \
KL(ngpus, cross_device_reduce_2stage); \
} \
} \
break; \
#define REDUCE_CASE(ngpus) \
case ngpus: { \
if (force_1stage) { \
KL(ngpus, cross_device_reduce_1stage); \
} else if (force_2stage) { \
KL(ngpus, cross_device_reduce_2stage); \
} else { \
if (world_size_ == 2) { \
KL(ngpus, cross_device_reduce_1stage); \
} else if (fully_connected_) { \
if ((world_size_ <= 4 && bytes < 512 * 1024) || \
(world_size_ <= 8 && bytes < 256 * 1024)) { \
KL(ngpus, cross_device_reduce_1stage); \
} else { \
KL(ngpus, cross_device_reduce_2stage); \
} \
} \
} \
break; \
}
switch (world_size_) {

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@ -1,123 +0,0 @@
// Modified from: cutlass/gemm/collective/builders/sm90_gmma_builder.inl
// clang-format off
#pragma once
#include "cutlass/gemm/collective/builders/sm90_gmma_builder.inl"
#include "cutlass_extensions/gemm/collective/sm90_mma_tma_gmma_ss_warpspecialized_fp8_blockwise_scaling.hpp"
/////////////////////////////////////////////////////////////////////////////////////////////////
namespace cutlass::gemm::collective {
/////////////////////////////////////////////////////////////////////////////////////////////////
// GMMA_TMA_WS_SS (BlockScaled Builders)
template <
class ElementA,
class GmemLayoutATag,
int AlignmentA,
class ElementB,
class GmemLayoutBTag,
int AlignmentB,
class ElementAccumulator,
class TileShape_MNK,
class ClusterShape_MNK,
class StageCountType,
int ScaleGranularityM
>
struct CollectiveBuilder<
arch::Sm90,
arch::OpClassTensorOp,
ElementA,
GmemLayoutATag,
AlignmentA,
ElementB,
GmemLayoutBTag,
AlignmentB,
ElementAccumulator,
TileShape_MNK,
ClusterShape_MNK,
StageCountType,
KernelTmaWarpSpecializedCooperativeFP8BlockScaledSubGroupMAccum<ScaleGranularityM>,
cute::enable_if_t<
not detail::is_use_rmem_A<ElementA, GmemLayoutATag, ElementB, GmemLayoutBTag>()>
> {
using KernelScheduleType = KernelTmaWarpSpecializedCooperativeFP8BlockScaledSubGroupMAccum<ScaleGranularityM>;
static_assert(is_static<TileShape_MNK>::value);
static_assert(is_static<ClusterShape_MNK>::value);
#ifndef CUTLASS_SM90_COLLECTIVE_BUILDER_SUPPORTED
static_assert(cutlass::detail::dependent_false<ElementA>, "Unsupported Toolkit for SM90 Collective Builder\n");
#endif
static_assert(detail::is_aligned<ElementA, AlignmentA, ElementB, AlignmentB, detail::tma_alignment_bytes>(),
"Should meet TMA alignment requirement\n");
static constexpr bool IsArrayOfPointersGemm = (cute::is_any_of_v<KernelScheduleType,
KernelPtrArrayTmaWarpSpecializedCooperative,
KernelPtrArrayTmaWarpSpecializedPingpong>);
static constexpr bool IsFP8Input = detail::is_input_fp8<ElementA, ElementB>();
static_assert((!IsFP8Input || !IsArrayOfPointersGemm),
"KernelTmaWarpSpecializedCooperativeFP8BlockScaledAccum is only compatible with FP8 Blocked Scaled version right now.");
// For fp32 types, map to tf32 MMA value type
using ElementAMma = cute::conditional_t<cute::is_same_v<ElementA, float>, tfloat32_t, ElementA>;
using ElementBMma = cute::conditional_t<cute::is_same_v<ElementB, float>, tfloat32_t, ElementB>;
static constexpr cute::GMMA::Major GmmaMajorA = detail::gmma_ss_tag_to_major_A<ElementAMma, GmemLayoutATag>();
static constexpr cute::GMMA::Major GmmaMajorB = detail::gmma_ss_tag_to_major_B<ElementBMma, GmemLayoutBTag>();
static constexpr bool IsCooperative = cute::is_any_of_v<KernelScheduleType,
KernelTmaWarpSpecializedCooperative,
KernelPtrArrayTmaWarpSpecializedCooperative,
KernelTmaWarpSpecializedCooperativeFP8BlockScaledSubGroupMAccum<ScaleGranularityM>>;
using AtomLayoutMNK = cute::conditional_t<IsCooperative,
Layout<Shape<_2,_1,_1>>, Layout<Shape<_1,_1,_1>>>;
using TiledMma = decltype(cute::make_tiled_mma(cute::GMMA::ss_op_selector<
ElementAMma, ElementBMma, ElementAccumulator, TileShape_MNK, GmmaMajorA, GmmaMajorB>(), AtomLayoutMNK{}));
using GmemTiledCopyA = decltype(detail::sm90_cluster_shape_to_tma_atom(shape<1>(ClusterShape_MNK{})));
using GmemTiledCopyB = decltype(detail::sm90_cluster_shape_to_tma_atom(shape<0>(ClusterShape_MNK{})));
using SmemLayoutAtomA = decltype(detail::ss_smem_selector<
GmmaMajorA, ElementAMma, decltype(cute::get<0>(TileShape_MNK{})), decltype(cute::get<2>(TileShape_MNK{}))>());
using SmemLayoutAtomB = decltype(detail::ss_smem_selector<
GmmaMajorB, ElementBMma, decltype(cute::get<1>(TileShape_MNK{})), decltype(cute::get<2>(TileShape_MNK{}))>());
static constexpr size_t TensorMapStorage = IsArrayOfPointersGemm ? sizeof(cute::TmaDescriptor) * 2 /* for A and B */ : 0;
static constexpr int KernelSmemCarveout = static_cast<int>(TensorMapStorage);
static constexpr int PipelineStages = detail::compute_stage_count_or_override<detail::sm90_smem_capacity_bytes - KernelSmemCarveout,
ElementAMma, ElementBMma, TileShape_MNK>(StageCountType{});
using DispatchPolicy = MainloopSm90TmaGmmaWarpSpecializedBlockScalingSubGroupMFP8<PipelineStages, ClusterShape_MNK, KernelScheduleType, ScaleGranularityM>;
using SmemCopyAtomA = void;
using SmemCopyAtomB = void;
using CollectiveOp = CollectiveMma<
DispatchPolicy,
TileShape_MNK,
ElementA,
TagToStrideA_t<GmemLayoutATag>,
ElementB,
TagToStrideB_t<GmemLayoutBTag>,
TiledMma,
GmemTiledCopyA,
SmemLayoutAtomA,
SmemCopyAtomA,
cute::identity,
GmemTiledCopyB,
SmemLayoutAtomB,
SmemCopyAtomB,
cute::identity
>;
};
/////////////////////////////////////////////////////////////////////////////////////////////////
} // namespace cutlass::gemm::collective
/////////////////////////////////////////////////////////////////////////////////////////////////

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@ -1,183 +0,0 @@
// clang-format off
// adapted from: https://github.com/soundOfDestiny/cutlass/blob/a4208aa6958864923505cade9c63eb2a6daf16e5/include/cutlass/gemm/collective/fp8_accumulation.hpp
/***************************************************************************************************
* Copyright (c) 2023 - 2024 NVIDIA CORPORATION & AFFILIATES. All rights reserved.
* SPDX-License-Identifier: BSD-3-Clause
*
* Redistribution and use in source and binary forms, with or without
* modification, are permitted provided that the following conditions are met:
*
* 1. Redistributions of source code must retain the above copyright notice, this
* list of conditions and the following disclaimer.
*
* 2. Redistributions in binary form must reproduce the above copyright notice,
* this list of conditions and the following disclaimer in the documentation
* and/or other materials provided with the distribution.
*
* 3. Neither the name of the copyright holder nor the names of its
* contributors may be used to endorse or promote products derived from
* this software without specific prior written permission.
*
* THIS SOFTWARE IS PROVIDED BY THE COPYRIGHT HOLDERS AND CONTRIBUTORS "AS IS"
* AND ANY EXPRESS OR IMPLIED WARRANTIES, INCLUDING, BUT NOT LIMITED TO, THE
* IMPLIED WARRANTIES OF MERCHANTABILITY AND FITNESS FOR A PARTICULAR PURPOSE ARE
* DISCLAIMED. IN NO EVENT SHALL THE COPYRIGHT HOLDER OR CONTRIBUTORS BE LIABLE
* FOR ANY DIRECT, INDIRECT, INCIDENTAL, SPECIAL, EXEMPLARY, OR CONSEQUENTIAL
* DAMAGES (INCLUDING, BUT NOT LIMITED TO, PROCUREMENT OF SUBSTITUTE GOODS OR
* SERVICES; LOSS OF USE, DATA, OR PROFITS; OR BUSINESS INTERRUPTION) HOWEVER
* CAUSED AND ON ANY THEORY OF LIABILITY, WHETHER IN CONTRACT, STRICT LIABILITY,
* OR TORT (INCLUDING NEGLIGENCE OR OTHERWISE) ARISING IN ANY WAY OUT OF THE USE
* OF THIS SOFTWARE, EVEN IF ADVISED OF THE POSSIBILITY OF SUCH DAMAGE.
*
**************************************************************************************************/
#pragma once
#include "cute/algorithm/clear.hpp"
#include "cute/tensor.hpp"
//////////////////////////////////////////////////////////////////////////////
///////////////////////////////////FP8 Accumulation///////////////////////////
//////////////////////////////////////////////////////////////////////////////
/// This class provides API to promote (add) or scale (multiply_add) the results
/// from the tensor core accumulators to the main accumulators when the number
/// of MMAs reaches the max number of MMA interval specified by user, after that
/// the tensor core accumulators are zeroed.
//////////////////////////////////////////////////////////////////////////////
namespace cutlass::gemm::collective {
template <
class EngineAccum,
class LayoutAccum>
struct GmmaFP8AccumulationWithScale {
using TensorAccum = cute::Tensor<EngineAccum, LayoutAccum>;
using ElementAccumulator = typename EngineAccum::value_type;
static_assert(is_static<LayoutAccum>::value, "Accumulator Layout should be static");
static_assert(is_rmem<TensorAccum>::value , "Accumulator tensor must be rmem resident.");
private:
TensorAccum& accum_;
TensorAccum accum_temp_;
uint32_t accum_promotion_interval_; // defines the max num of executed MMAs after which accum should be promoted.
uint32_t mma_count_per_mainloop_iteration_; // num of MMAs per k_tile of mainloop
uint32_t mma_count_; // current executed MMAs
uint32_t reset_accum_flag_; // accum needs to be zeroed or not.
// promote or `add` the partial accumulators to main accumulator (FADD).
CUTLASS_DEVICE
void promote_core() {
warpgroup_wait<0>();
CUTLASS_PRAGMA_UNROLL
for (int i = 0; i < size(accum_); ++i) {
accum_(i) += accum_temp_(i);
}
}
// `multiply` scale the partial accumulators and `add` to main accumulator (FFMA).
template <
class EngineScale,
class LayoutScale>
CUTLASS_DEVICE
void scale_core(const cute::Tensor<EngineScale, LayoutScale> &scale) {
using TensorScale = cute::Tensor<EngineScale, LayoutScale>;
static_assert(is_static<LayoutScale>::value, "Scale Layout should be static");
static_assert(is_rmem<TensorScale>::value , "Scale tensor must be rmem resident.");
static_assert(LayoutAccum{}.shape() == LayoutScale{}.shape(), "Accumulator and scale must have same shape.");
warpgroup_wait<0>();
CUTLASS_PRAGMA_UNROLL
for (int i = 0; i < size(accum_); ++i) {
accum_(i) += accum_temp_(i) * scale(i);
}
}
public:
CUTLASS_DEVICE
GmmaFP8AccumulationWithScale(
TensorAccum &accum,
uint32_t accum_promotion_interval,
uint32_t mma_count_per_mainloop_iteration)
: accum_(accum),
accum_promotion_interval_(accum_promotion_interval),
mma_count_per_mainloop_iteration_(mma_count_per_mainloop_iteration),
mma_count_(0),
reset_accum_flag_(0)
{
accum_temp_ = cute::make_fragment_like(accum);
}
//
// Methods (Common)
//
CUTLASS_DEVICE
TensorAccum& operator()() {
return accum_temp_;
}
/// prepare the MMA accumulators when initialization or zeroing is required.
CUTLASS_DEVICE
bool prepare_if_needed() {
return reset_accum_flag_;
}
//
// Methods (for FADD version)
//
/// promote (add) the results from the MMA accumulators to main accumulator if needed.
CUTLASS_DEVICE
void promote_if_needed() {
mma_count_ += mma_count_per_mainloop_iteration_;
reset_accum_flag_ = __shfl_sync(0xffffffff, mma_count_ == accum_promotion_interval_, 0);
if (reset_accum_flag_) {
promote_core();
mma_count_ = 0;
}
}
/// promote (add) the residue results from the MMA accumulators to main accumulator if needed.
CUTLASS_DEVICE
void promote_residue_if_needed() {
if (__shfl_sync(0xffffffff, mma_count_ > 0, 0)) {
promote_core();
}
}
//
// Methods (for FFMA version)
//
/// scale (multiply_add) the results from the MMA accumulators to main accumulator if needed.
template <
class EngineScale,
class LayoutScale>
CUTLASS_DEVICE
void scale_if_needed(const cute::Tensor<EngineScale, LayoutScale> &scale) {
mma_count_ += mma_count_per_mainloop_iteration_;
reset_accum_flag_ = __shfl_sync(0xffffffff, mma_count_ == accum_promotion_interval_, 0);
if (reset_accum_flag_) {
scale_core(scale);
mma_count_ = 0;
}
}
/// scale (multiply_add) the residue results from the MMA accumulators to main accumulator if needed.
template <
class EngineScale,
class LayoutScale>
CUTLASS_DEVICE
void scale_residue_if_needed(const cute::Tensor<EngineScale, LayoutScale> &scale) {
if (__shfl_sync(0xffffffff, mma_count_ > 0, 0)) {
scale_core(scale);
}
}
};
} // namespace cutlass::gemm::collective

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@ -1,729 +0,0 @@
// clang-format off
// Adapted (Heavily) from: https://github.com/soundOfDestiny/cutlass/blob/9d997ce0dea4c5fa1a617db6b7ff29aa9235822c/include/cutlass/gemm/collective/sm90_mma_tma_gmma_ss_warpspecialized_fp8_blockwise_scaling.hpp
/***************************************************************************************************
* Copyright (c) 2023 - 2024 NVIDIA CORPORATION & AFFILIATES. All rights reserved.
* SPDX-License-Identifier: BSD-3-Clause
*
* Redistribution and use in source and binary forms, with or without
* modification, are permitted provided that the following conditions are met:
*
* 1. Redistributions of source code must retain the above copyright notice, this
* list of conditions and the following disclaimer.
*
* 2. Redistributions in binary form must reproduce the above copyright notice,
* this list of conditions and the following disclaimer in the documentation
* and/or other materials provided with the distribution.
*
* 3. Neither the name of the copyright holder nor the names of its
* contributors may be used to endorse or promote products derived from
* this software without specific prior written permission.
*
* THIS SOFTWARE IS PROVIDED BY THE COPYRIGHT HOLDERS AND CONTRIBUTORS "AS IS"
* AND ANY EXPRESS OR IMPLIED WARRANTIES, INCLUDING, BUT NOT LIMITED TO, THE
* IMPLIED WARRANTIES OF MERCHANTABILITY AND FITNESS FOR A PARTICULAR PURPOSE ARE
* DISCLAIMED. IN NO EVENT SHALL THE COPYRIGHT HOLDER OR CONTRIBUTORS BE LIABLE
* FOR ANY DIRECT, INDIRECT, INCIDENTAL, SPECIAL, EXEMPLARY, OR CONSEQUENTIAL
* DAMAGES (INCLUDING, BUT NOT LIMITED TO, PROCUREMENT OF SUBSTITUTE GOODS OR
* SERVICES; LOSS OF USE, DATA, OR PROFITS; OR BUSINESS INTERRUPTION) HOWEVER
* CAUSED AND ON ANY THEORY OF LIABILITY, WHETHER IN CONTRACT, STRICT LIABILITY,
* OR TORT (INCLUDING NEGLIGENCE OR OTHERWISE) ARISING IN ANY WAY OUT OF THE USE
* OF THIS SOFTWARE, EVEN IF ADVISED OF THE POSSIBILITY OF SUCH DAMAGE.
*
**************************************************************************************************/
#pragma once
#include "cutlass/cutlass.h"
#include "cutlass/gemm/dispatch_policy.hpp"
#include "cutlass/trace.h"
#include "cutlass/numeric_types.h"
#include "cute/arch/cluster_sm90.hpp"
#include "cute/arch/copy_sm80.hpp"
#include "cute/arch/copy_sm90.hpp"
#include "cute/algorithm/functional.hpp"
#include "cute/atom/mma_atom.hpp"
#include "cute/algorithm/gemm.hpp"
#include "cute/numeric/arithmetic_tuple.hpp"
#include "cutlass_extensions/gemm/dispatch_policy.hpp"
#include "cutlass_extensions/gemm/collective/fp8_accumulation.hpp"
/////////////////////////////////////////////////////////////////////////////////////////////////
namespace cutlass::gemm::collective {
using namespace cute;
/////////////////////////////////////////////////////////////////////////////////////////////////
// WarpSpecialized Mainloop
template <
int Stages,
class ClusterShape,
class KernelSchedule,
int ScaleGranularityM_,
class TileShape_,
class ElementA_,
class StrideA_,
class ElementB_,
class StrideB_,
class TiledMma_,
class GmemTiledCopyA_,
class SmemLayoutAtomA_,
class SmemCopyAtomA_,
class TransformA_,
class GmemTiledCopyB_,
class SmemLayoutAtomB_,
class SmemCopyAtomB_,
class TransformB_>
struct CollectiveMma<
MainloopSm90TmaGmmaWarpSpecializedBlockScalingSubGroupMFP8<Stages, ClusterShape, KernelSchedule, ScaleGranularityM_>,
TileShape_,
ElementA_,
StrideA_,
ElementB_,
StrideB_,
TiledMma_,
GmemTiledCopyA_,
SmemLayoutAtomA_,
SmemCopyAtomA_,
TransformA_,
GmemTiledCopyB_,
SmemLayoutAtomB_,
SmemCopyAtomB_,
TransformB_>
{
//
// Type Aliases
//
using DispatchPolicy = MainloopSm90TmaGmmaWarpSpecializedBlockScalingSubGroupMFP8<Stages, ClusterShape, KernelSchedule, ScaleGranularityM_>;
using TileShape = TileShape_;
using ElementA = ElementA_;
using StrideA = StrideA_;
using ElementB = ElementB_;
using StrideB = StrideB_;
using TiledMma = TiledMma_;
using ElementAccumulator = typename TiledMma::ValTypeC;
using ElementBlockScale = ElementAccumulator;
using GmemTiledCopyA = GmemTiledCopyA_;
using GmemTiledCopyB = GmemTiledCopyB_;
using SmemLayoutAtomA = SmemLayoutAtomA_;
using SmemLayoutAtomB = SmemLayoutAtomB_;
using SmemCopyAtomA = SmemCopyAtomA_;
using SmemCopyAtomB = SmemCopyAtomB_;
using TransformA = TransformA_;
using TransformB = TransformB_;
using ArchTag = typename DispatchPolicy::ArchTag;
using CtaShape_MNK = decltype(shape_div(TileShape{}, ClusterShape{}));
using MainloopPipeline = cutlass::PipelineTmaAsync<DispatchPolicy::Stages>;
using PipelineState = cutlass::PipelineState<DispatchPolicy::Stages>;
using PipelineParams = typename MainloopPipeline::Params;
// Two threads per CTA are producers (1 for operand tile and 32 for scales)
static constexpr int NumProducerThreadEvents = 33;
static constexpr int ScaleGranularityM = ScaleGranularityM_ == 0 ? size<0>(TileShape{}) : ScaleGranularityM_;
static constexpr int ScaleMsPerTile = size<0>(TileShape{}) / ScaleGranularityM;
static_assert(cute::rank(SmemLayoutAtomA{}) == 2, "SmemLayoutAtom must be rank 2 (M/N, K)");
static_assert((size<0>(TileShape{}) % size<0>(SmemLayoutAtomA{})) == 0, "SmemLayoutAtom must evenly divide tile shape.");
static_assert((size<2>(TileShape{}) % size<1>(SmemLayoutAtomA{})) == 0, "SmemLayoutAtom must evenly divide tile shape.");
static_assert(cute::rank(SmemLayoutAtomB{}) == 2, "SmemLayoutAtom must be rank 2 (M/N, K)");
static_assert((size<1>(TileShape{}) % size<0>(SmemLayoutAtomB{})) == 0, "SmemLayoutAtom must evenly divide tile shape.");
static_assert((size<2>(TileShape{}) % size<1>(SmemLayoutAtomB{})) == 0, "SmemLayoutAtom must evenly divide tile shape.");
static_assert((size<0>(TileShape{}) % ScaleGranularityM) == 0, "FP8 scaling granularity must evenly divide tile shape along M.");
// Tile along modes in a way that maximizes the TMA box size.
using SmemLayoutA = decltype(tile_to_shape(
SmemLayoutAtomA{},
make_shape(shape<0>(TileShape{}), shape<2>(TileShape{}), Int<DispatchPolicy::Stages>{}),
cute::conditional_t< ::cutlass::gemm::detail::is_major<0,StrideA>(), Step<_2,_1,_3>, Step<_1,_2,_3>>{}));
using SmemLayoutB = decltype(tile_to_shape(
SmemLayoutAtomB{},
make_shape(shape<1>(TileShape{}), shape<2>(TileShape{}), Int<DispatchPolicy::Stages>{}),
cute::conditional_t< ::cutlass::gemm::detail::is_major<0,StrideB>(), Step<_2,_1,_3>, Step<_1,_2,_3>>{}));
// Block scaling gmem-to-smem copy atom
using SmemBlockScalingCopyAtomA = Copy_Atom<SM80_CP_ASYNC_CACHEALWAYS<ElementBlockScale>, ElementBlockScale>;
using SmemBlockScalingCopyAtomB = Copy_Atom<SM80_CP_ASYNC_CACHEALWAYS<ElementBlockScale>, ElementBlockScale>;
// Block scaling smem layout
using SmemLayoutScaleA = Layout<Shape<Int<ScaleMsPerTile>, Int<DispatchPolicy::Stages>>>;
using SmemLayoutScaleB = Layout<Shape<Int<DispatchPolicy::Stages>>, Stride<_1>>; // `ScaleNsPerTile` is always 1.
static_assert(DispatchPolicy::Stages >= 2, "Specialization requires Stages set to value 1 or more.");
static_assert(cute::is_base_of<cute::GMMA::DescriptorIterator, typename TiledMma::FrgTypeA>::value &&
cute::is_base_of<cute::GMMA::DescriptorIterator, typename TiledMma::FrgTypeB>::value,
"MMA atom must source both A and B operand from smem_desc for this mainloop.");
static_assert(cute::is_same_v<GmemTiledCopyA, SM90_TMA_LOAD> || cute::is_same_v<GmemTiledCopyA, SM90_TMA_LOAD_MULTICAST>,
"GmemTiledCopy - invalid SM90 TMA copy atom specified.");
static_assert(cute::is_same_v<GmemTiledCopyB, SM90_TMA_LOAD> || cute::is_same_v<GmemTiledCopyB, SM90_TMA_LOAD_MULTICAST>,
"GmemTiledCopy - invalid SM90 TMA copy atom specified.");
static_assert(cute::is_same_v<ElementAccumulator, ElementBlockScale>,
"ElementAccumulator and ElementBlockScale should be same datatype");
struct SharedStorage
{
struct TensorStorage : cute::aligned_struct<128> {
cute::array_aligned<typename TiledMma::ValTypeA, cute::cosize_v<SmemLayoutA>> smem_A; // mxk
cute::array_aligned<typename TiledMma::ValTypeB, cute::cosize_v<SmemLayoutB>> smem_B; // nxk
cute::array_aligned<ElementBlockScale, cute::cosize_v<SmemLayoutScaleA>> smem_scale_A; // ScaleMsPerTile x k
cute::array_aligned<ElementBlockScale, cute::cosize_v<SmemLayoutScaleB>> smem_scale_B; // 1xk
} tensors;
using PipelineStorage = typename MainloopPipeline::SharedStorage;
PipelineStorage pipeline;
};
using TensorStorage = typename SharedStorage::TensorStorage;
using PipelineStorage = typename SharedStorage::PipelineStorage;
// Host side kernel arguments
struct Arguments {
ElementA const* ptr_A;
StrideA dA;
ElementB const* ptr_B;
StrideB dB;
ElementBlockScale const* ptr_scale_A;
ElementBlockScale const* ptr_scale_B;
};
// Device side kernel params
struct Params {
// Assumption: StrideA is congruent with Problem_MK
using TMA_A = decltype(make_tma_copy_A_sm90(
GmemTiledCopyA{},
make_tensor(static_cast<ElementA const*>(nullptr), repeat_like(StrideA{}, int32_t(0)), StrideA{}),
SmemLayoutA{}(_,_,0),
TileShape{},
ClusterShape{}));
// Assumption: StrideB is congruent with Problem_NK
using TMA_B = decltype(make_tma_copy_B_sm90(
GmemTiledCopyB{},
make_tensor(static_cast<ElementB const*>(nullptr), repeat_like(StrideB{}, int32_t(0)), StrideB{}),
SmemLayoutB{}(_,_,0),
TileShape{},
ClusterShape{}));
TMA_A tma_load_a;
TMA_B tma_load_b;
uint32_t tma_transaction_bytes = TmaTransactionBytes;
uint32_t tma_transaction_bytes_mk = TmaTransactionBytesMK;
uint32_t tma_transaction_bytes_nk = TmaTransactionBytesNK;
// Block scaling factors for A and B
ElementBlockScale const* ptr_scale_A;
ElementBlockScale const* ptr_scale_B;
};
//
// Methods
//
template <class ProblemShape>
static constexpr Params
to_underlying_arguments(ProblemShape const& problem_shape, Arguments const& args, void* workspace) {
(void) workspace;
// Optionally append 1s until problem shape is rank-4 (MNKL), in case it is only rank-3 (MNK)
auto problem_shape_MNKL = append<4>(problem_shape, 1);
auto [M,N,K,L] = problem_shape_MNKL;
auto ptr_A = reinterpret_cast<ElementA const*>(args.ptr_A);
auto ptr_B = reinterpret_cast<ElementB const*>(args.ptr_B);
Tensor tensor_a = make_tensor(ptr_A, make_layout(make_shape(M,K,L), args.dA));
Tensor tensor_b = make_tensor(ptr_B, make_layout(make_shape(N,K,L), args.dB));
typename Params::TMA_A tma_load_a = make_tma_copy_A_sm90(
GmemTiledCopyA{},
tensor_a,
SmemLayoutA{}(_,_,cute::Int<0>{}),
TileShape{},
ClusterShape{});
typename Params::TMA_B tma_load_b = make_tma_copy_B_sm90(
GmemTiledCopyB{},
tensor_b,
SmemLayoutB{}(_,_,cute::Int<0>{}),
TileShape{},
ClusterShape{});
uint32_t transaction_bytes_mk = TmaTransactionBytesMK;
uint32_t transaction_bytes_nk = TmaTransactionBytesNK;
uint32_t transaction_bytes = transaction_bytes_mk + transaction_bytes_nk;
return {
tma_load_a,
tma_load_b,
transaction_bytes,
transaction_bytes_mk,
transaction_bytes_nk,
args.ptr_scale_A,
args.ptr_scale_B
};
}
template<class ProblemShape>
static bool
can_implement(
ProblemShape const& problem_shape,
[[maybe_unused]] Arguments const& args) {
constexpr int tma_alignment_bits = 128;
auto problem_shape_MNKL = append<4>(problem_shape, 1);
auto [M,N,K,L] = problem_shape_MNKL;
bool implementable = true;
constexpr int min_tma_aligned_elements_A = tma_alignment_bits / cutlass::sizeof_bits<ElementA>::value;
implementable = implementable && cutlass::detail::check_alignment<min_tma_aligned_elements_A>(cute::make_shape(M,K,L), StrideA{});
constexpr int min_tma_aligned_elements_B = tma_alignment_bits / cutlass::sizeof_bits<ElementB>::value;
implementable = implementable && cutlass::detail::check_alignment<min_tma_aligned_elements_B>(cute::make_shape(N,K,L), StrideB{});
if (!implementable) {
CUTLASS_TRACE_HOST(" CAN IMPLEMENT: Problem Size doesn't meet the minimum alignment requirements for TMA.\n");
}
return implementable;
}
static constexpr int K_PIPE_MAX = DispatchPolicy::Stages;
static constexpr int K_PIPE_MMAS = 1;
static constexpr uint32_t TmaTransactionBytesMK =
cutlass::bits_to_bytes(size<0>(SmemLayoutA{}) * size<1>(SmemLayoutA{}) * static_cast<uint32_t>(sizeof_bits<ElementA>::value));
static constexpr uint32_t TmaTransactionBytesNK =
cutlass::bits_to_bytes(size<0>(SmemLayoutB{}) * size<1>(SmemLayoutB{}) * static_cast<uint32_t>(sizeof_bits<ElementB>::value));
static constexpr uint32_t TmaTransactionBytes = TmaTransactionBytesMK + TmaTransactionBytesNK;
/// Issue Tma Descriptor Prefetch -- ideally from a single thread for best performance
CUTLASS_DEVICE
static void prefetch_tma_descriptors(Params const& mainloop_params)
{
cute::prefetch_tma_descriptor(mainloop_params.tma_load_a.get_tma_descriptor());
cute::prefetch_tma_descriptor(mainloop_params.tma_load_b.get_tma_descriptor());
}
/// Set up the data needed by this collective for load and mma.
/// Returns a tuple of tensors. The collective and the kernel layer have the contract
/// Returned tuple must contain at least two elements, with the first two elements being:
/// gA_mkl - The tma tensor, A after a local tile so it has shape (BLK_M,BLK_K,m,k,l)
/// gB_nkl - The tma tensor, B after a local tile so it has shape (BLK_N,BLK_K,n,k,l)
template <class ProblemShape_MNKL>
CUTLASS_DEVICE auto
load_init(ProblemShape_MNKL const& problem_shape_MNKL, Params const& mainloop_params) const {
using X = Underscore;
// Separate out problem shape for convenience
auto [M,N,K,L] = problem_shape_MNKL;
// TMA requires special handling of strides to deal with coord codomain mapping
// Represent the full tensors -- get these from TMA
Tensor mA_mkl = mainloop_params.tma_load_a.get_tma_tensor(make_shape(M,K,L)); // (m,k,l)
Tensor mB_nkl = mainloop_params.tma_load_b.get_tma_tensor(make_shape(N,K,L)); // (n,k,l)
// Make tiled views, defer the slice
Tensor gA_mkl = local_tile(mA_mkl, TileShape{}, make_coord(_,_,_), Step<_1, X,_1>{}); // (BLK_M,BLK_K,m,k,l)
Tensor gB_nkl = local_tile(mB_nkl, TileShape{}, make_coord(_,_,_), Step< X,_1,_1>{}); // (BLK_N,BLK_K,n,k,l)
constexpr auto scales_m = Int<ScaleMsPerTile>{};
auto tM = get<2>(gA_mkl.shape());
auto tN = get<2>(gB_nkl.shape());
auto tK = get<3>(gA_mkl.shape());
// Make the tiled views of scale tensors
auto scaleA_shape = make_shape(M / ScaleGranularityM, tK, L); // (scale_m,k,l)
auto scaleA_layout = make_ordered_layout(scaleA_shape, Step<_0, _1, _2>{});
auto scaleB_shape = make_shape(tN, tK, L); // (n,k,l)
auto scaleB_layout = make_ordered_layout(scaleB_shape, Step<_1, _0, _2>{});
// Note that mScaleA_mkl and mScaleB_nkl are already blocked tiled in the `m` host and
// gScaleA_mkl and gScaleB_nkl in `g` global memory are same as mScaleA_mkl and mScaleB_nkl.
Tensor mScaleA_mkl = make_tensor(make_gmem_ptr(mainloop_params.ptr_scale_A), scaleA_layout); // (scale_m,k,l)
Tensor mScaleB_nkl = make_tensor(make_gmem_ptr(mainloop_params.ptr_scale_B), scaleB_layout); // (n,k,l)
return cute::make_tuple(gA_mkl, gB_nkl, mScaleA_mkl, mScaleB_nkl);
}
/// Perform a collective-scoped matrix multiply-accumulate
/// Producer Perspective
template <
class TensorA, class TensorB,
class TensorScaleA, class TensorScaleB,
class KTileIterator, class BlockCoord
>
CUTLASS_DEVICE void
load(
Params const& mainloop_params,
MainloopPipeline pipeline,
PipelineState smem_pipe_write,
cute::tuple<TensorA, TensorB, TensorScaleA, TensorScaleB> const& load_inputs,
BlockCoord const& blk_coord,
KTileIterator k_tile_iter, int k_tile_count,
int thread_idx,
uint32_t block_rank_in_cluster,
TensorStorage& shared_tensors) {
int lane_predicate = cute::elect_one_sync();
// Blockscaling: Tma loads for load_input and CpAsync for load_scale
Tensor sA = make_tensor(make_smem_ptr(shared_tensors.smem_A.data()), SmemLayoutA{}); // (BLK_M,BLK_K,PIPE)
Tensor sB = make_tensor(make_smem_ptr(shared_tensors.smem_B.data()), SmemLayoutB{}); // (BLK_N,BLK_K,PIPE)
Tensor sScaleA = make_tensor(cute::make_smem_ptr(shared_tensors.smem_scale_A.data()), SmemLayoutScaleA{}); // (ScaleMsPerTile,k)
Tensor sScaleB = make_tensor(cute::make_smem_ptr(shared_tensors.smem_scale_B.data()), SmemLayoutScaleB{}); // (k)
//
// Prepare the TMA loads for A and B
//
constexpr uint32_t cluster_shape_x = get<0>(ClusterShape());
uint2 cluster_local_block_id = {block_rank_in_cluster % cluster_shape_x, block_rank_in_cluster / cluster_shape_x};
Tensor gA_mkl = get<0>(load_inputs);
Tensor gB_nkl = get<1>(load_inputs);
auto block_tma_a = mainloop_params.tma_load_a.get_slice(cluster_local_block_id.y);
auto block_tma_b = mainloop_params.tma_load_b.get_slice(cluster_local_block_id.x);
// Partition the inputs based on the current block coordinates.
auto [m_coord, n_coord, k_coord, l_coord] = blk_coord;
Tensor gA = gA_mkl(_,_,m_coord,_,l_coord); // (BLK_M,BLK_K,k)
Tensor gB = gB_nkl(_,_,n_coord,_,l_coord); // (BLK_N,BLK_K,k)
// Block scaling: load_scale has scaling tensors in global memory which are not tiled
Tensor mScaleA_mkl = get<2>(load_inputs);
Tensor mScaleB_nkl = get<3>(load_inputs);
auto scales_m = get<0>(mScaleA_mkl.shape());
Tensor cScaleA_mkl = make_identity_tensor(mScaleA_mkl.shape());
Tensor gScaleA = local_tile(
mScaleA_mkl, make_tile(Int<ScaleMsPerTile>{}),
make_coord(m_coord,_,l_coord)); // (ScaleMsPerTile,k,1)
Tensor cScaleA = local_tile(
cScaleA_mkl, make_tile(Int<ScaleMsPerTile>{}),
make_coord(m_coord,_,l_coord));
Tensor gScaleB = mScaleB_nkl(n_coord,_,l_coord); // (1,k,1)
// TODO: test `scale_copy_a` with `ScaleMsPerTile` < 128
TiledCopy scale_copy_a = make_tiled_copy(SmemBlockScalingCopyAtomA{},
Layout<Shape<_32>>{}, Layout<Shape<_1>>{}); // (1,1,1)
TiledCopy scale_copy_b = make_tiled_copy(SmemBlockScalingCopyAtomB{},
Layout<Shape<_1>>{}, Layout<Shape<_1>>{}); // (1,1,1)
ThrCopy thr_scale_copy_a = scale_copy_a.get_slice(threadIdx.x);
ThrCopy thr_scale_copy_b = scale_copy_b.get_slice(threadIdx.x);
Tensor tAgA_ScaleA = thr_scale_copy_a.partition_S(gScaleA);
Tensor tAcA_ScaleA = thr_scale_copy_a.partition_S(cScaleA);
Tensor tAsA_ScaleA = thr_scale_copy_a.partition_D(sScaleA);
Tensor tBgB_ScaleB = thr_scale_copy_b.partition_S(gScaleB);
Tensor tBsB_ScaleB = thr_scale_copy_b.partition_D(sScaleB);
// Applies the mapping from block_tma_a
Tensor tAgA = block_tma_a.partition_S(gA); // (TMA,TMA_M,TMA_K,k)
Tensor tAsA = block_tma_a.partition_D(sA); // (TMA,TMA_M,TMA_K,PIPE)
Tensor tBgB = block_tma_b.partition_S(gB); // (TMA,TMA_N,TMA_K,k)
Tensor tBsB = block_tma_b.partition_D(sB); // (TMA,TMA_N,TMA_K,PIPE)
uint16_t mcast_mask_a = 0;
uint16_t mcast_mask_b = 0;
// Issue TmaLoads for GEMM operands A/B and CpAsync for scale tensors
// Maps the tile -> block, value
if constexpr (cute::is_same_v<GmemTiledCopyA, SM90_TMA_LOAD_MULTICAST>) {
auto block_layout = Layout<typename DispatchPolicy::ClusterShape>{}; // (m,n) -> block_id
for (int n = 0; n < size<1>(block_layout); ++n) {
mcast_mask_a |= (uint16_t(1) << block_layout(cluster_local_block_id.x,n,Int<0>{}));
}
}
if constexpr (cute::is_same_v<GmemTiledCopyB, SM90_TMA_LOAD_MULTICAST>) {
auto block_layout = Layout<typename DispatchPolicy::ClusterShape>{}; // (m,n) -> block_id
for (int m = 0; m < size<0>(block_layout); ++m) {
mcast_mask_b |= (uint16_t(1) << block_layout(m,cluster_local_block_id.y,Int<0>{}));
}
}
// Allocate predicate tensors for a_scales (since we can't guarantee that
// all scales are valid, since we could have a partial tiles along M)
Tensor tApA_ScaleA = make_tensor<bool>(shape(tAsA_ScaleA(_,_,0)));
#pragma unroll
for (int i = 0; i < size(tApA_ScaleA); ++i) {
tApA_ScaleA(i) = get<0>(tAcA_ScaleA(i)) < scales_m;
}
// Mainloop
CUTLASS_PRAGMA_NO_UNROLL
for ( ; k_tile_count > 0; --k_tile_count) {
// LOCK smem_pipe_write for _writing_
pipeline.producer_acquire(smem_pipe_write);
//
// Copy gmem to smem for *k_tile_iter
//
int write_stage = smem_pipe_write.index();
using BarrierType = typename MainloopPipeline::ProducerBarrierType;
BarrierType* tma_barrier = pipeline.producer_get_barrier(smem_pipe_write);
// Copy operands A and B from global memory to shared memory
if (lane_predicate) copy(mainloop_params.tma_load_a.with(*tma_barrier, mcast_mask_a), tAgA(_,_,_,*k_tile_iter), tAsA(_,_,_,write_stage));
if (lane_predicate) copy(mainloop_params.tma_load_b.with(*tma_barrier, mcast_mask_b), tBgB(_,_,_,*k_tile_iter), tBsB(_,_,_,write_stage));
// Copy scale tensors from global memory to shared memory
copy_if(scale_copy_a, tApA_ScaleA, tAgA_ScaleA(_,_,*k_tile_iter), tAsA_ScaleA(_,_,write_stage));
copy(scale_copy_b, tBgB_ScaleB(_,*k_tile_iter), tBsB_ScaleB(_,write_stage));
pipeline.producer_commit(smem_pipe_write, cutlass::arch::cpasync_barrier_arrive_noinc);
++k_tile_iter;
// Advance smem_pipe_write
++smem_pipe_write;
}
}
/// Perform a Producer Epilogue to prevent early exit of blocks in a Cluster
CUTLASS_DEVICE void
load_tail(
MainloopPipeline pipeline,
PipelineState smem_pipe_write) {
int lane_predicate = cute::elect_one_sync();
// Issue the epilogue waits
if (lane_predicate) {
/* This helps avoid early exit of blocks in Cluster
* Waits for all stages to either be released (all
* Consumer UNLOCKs), or if the stage was never used
* then would just be acquired since the phase was
* still inverted from make_producer_start_state
*/
pipeline.producer_tail(smem_pipe_write);
}
}
/// Perform a collective-scoped matrix multiply-accumulate
/// Consumer Perspective
template <
class FrgTensorC
>
CUTLASS_DEVICE void
mma(MainloopPipeline pipeline,
PipelineState smem_pipe_read,
FrgTensorC& accum,
int k_tile_count,
int thread_idx,
TensorStorage& shared_tensors,
Params const& mainloop_params) {
static_assert(is_rmem<FrgTensorC>::value, "C tensor must be rmem resident.");
static_assert(cute::rank(SmemLayoutA{}) == 3, "Smem layout must be rank 3.");
static_assert(cute::rank(SmemLayoutB{}) == 3, "Smem layout must be rank 3.");
static_assert(cute::is_void_v<SmemCopyAtomA>,
"SM90 GMMA mainloops cannot have a non-void copy atom for smem sourced instructions.");
static_assert(cute::is_void_v<SmemCopyAtomB>,
"SM90 GMMA mainloops cannot have a non-void copy atom for smem sourced instructions.");
Tensor sA = make_tensor(make_smem_ptr(shared_tensors.smem_A.data()), SmemLayoutA{}); // (BLK_M,BLK_K,PIPE)
Tensor sB = make_tensor(make_smem_ptr(shared_tensors.smem_B.data()), SmemLayoutB{}); // (BLK_N,BLK_K,PIPE)
// Block scaling
Tensor sScaleAViewAsC = make_tensor(cute::make_smem_ptr(shared_tensors.smem_scale_A.data()),
Layout<
Shape<Shape<Int<ScaleGranularityM>, Int<ScaleMsPerTile>>, cute::tuple_element_t<1, TileShape>, Int<DispatchPolicy::Stages>>,
Stride<Stride<_0, _1>, _0, Int<ScaleMsPerTile>>
>{}); // ((ScaleGranularityM,ScaleMsPerTile),n,k)
Tensor sScaleB = make_tensor(cute::make_smem_ptr(shared_tensors.smem_scale_B.data()), SmemLayoutScaleB{}); // (k)
//
// Define C accumulators and A/B partitioning
//
// Layout of warp group to thread mapping
static_assert(stride<0>(typename TiledMma::ALayout{}) == 0 and
stride<0>(typename TiledMma::BLayout{}) == 0 and
size<0>(typename TiledMma::ALayout{}) == NumThreadsPerWarpGroup and
size<0>(typename TiledMma::BLayout{}) == NumThreadsPerWarpGroup,
"Stride of the first mode must be 0 and the size of the mode must be NumThreadsPerWarpGroup");
constexpr int MmaWarpGroups = size(TiledMma{}) / NumThreadsPerWarpGroup;
Layout warp_group_thread_layout = make_layout(Int<MmaWarpGroups>{},
Int<NumThreadsPerWarpGroup>{});
int warp_group_idx = __shfl_sync(0xFFFFFFFF, thread_idx / NumThreadsPerWarpGroup, 0);
TiledMma tiled_mma;
auto thread_mma = tiled_mma.get_slice(warp_group_thread_layout(warp_group_idx));
Tensor tCsScaleAViewAsC = tiled_mma.get_slice(thread_idx).partition_C(sScaleAViewAsC); // (MMA,MMA_M,MMA_N,PIPE), `thread_mma` above is correct when partitioning A and B, but it is not correct when partitioning C.
Tensor tCsA = thread_mma.partition_A(sA); // (MMA,MMA_M,MMA_K,PIPE)
Tensor tCsB = thread_mma.partition_B(sB); // (MMA,MMA_N,MMA_K,PIPE)
// Allocate "fragments/descriptors"
Tensor tCrA = thread_mma.make_fragment_A(tCsA); // (MMA,MMA_M,MMA_K,PIPE)
Tensor tCrB = thread_mma.make_fragment_B(tCsB); // (MMA,MMA_N,MMA_K,PIPE)
CUTE_STATIC_ASSERT_V(size<1>(tCsA) == size<1>(accum)); // M
CUTE_STATIC_ASSERT_V(size<1>(tCsB) == size<2>(accum)); // N
CUTE_STATIC_ASSERT_V(size<2>(tCsA) == size<2>(tCsB)); // K
CUTE_STATIC_ASSERT_V(size<3>(tCsA) == size<3>(tCsB)); // PIPE
CUTE_STATIC_ASSERT_V(Int<DispatchPolicy::Stages>{} == size<2>(sA)); // PIPE
CUTE_STATIC_ASSERT_V(Int<DispatchPolicy::Stages>{} == size<2>(sB)); // PIPE
//
// PIPELINED MAIN LOOP
//
static_assert((0 <= K_PIPE_MMAS) && (K_PIPE_MMAS < K_PIPE_MAX),
"ERROR : Incorrect number of MMAs in flight");
// We release buffers to producer warps(dma load) with some mmas in flight
PipelineState smem_pipe_release = smem_pipe_read;
// Per block scale values for operand A and B
using RegLayoutScaleAViewAsC = decltype(make_layout_like(tCsScaleAViewAsC(_, _, _, 0).layout())); // `make_layout_like` makes a compact layout.
using RegLayoutScaleAEssential = decltype(filter_zeros(RegLayoutScaleAViewAsC{}.stride(), RegLayoutScaleAViewAsC{}.shape())); // an interface to traverse the underlying storage for the compact layout mentioned above
Tensor tCrScaleAViewAsC = make_tensor<ElementBlockScale>(RegLayoutScaleAViewAsC{}); // (MMA,MMA_M,MMA_N)
ElementBlockScale scale_b;
// Prologue GMMAs
int prologue_mma_count = min(K_PIPE_MMAS, k_tile_count);
tiled_mma.accumulate_ = GMMA::ScaleOut::Zero;
GmmaFP8AccumulationWithScale accumulation(accum, size<2>(TileShape{}) / size<2>(typename TiledMma::AtomShape_MNK{}), size<2>(tCrA));
warpgroup_fence_operand(accumulation());
CUTLASS_PRAGMA_UNROLL
for (int k_tile_prologue = prologue_mma_count; k_tile_prologue > 0; --k_tile_prologue)
{
// WAIT on smem_pipe_read until its data are available (phase bit flips from rdPhaseBit value)
auto barrier_token = pipeline.consumer_try_wait(smem_pipe_read);
pipeline.consumer_wait(smem_pipe_read, barrier_token);
if (accumulation.prepare_if_needed()) {
tiled_mma.accumulate_ = GMMA::ScaleOut::Zero;
}
int read_stage = smem_pipe_read.index();
// Load per block scale values from shared memory to registers.
scale_b = sScaleB[read_stage];
CUTLASS_PRAGMA_UNROLL
for (int i = 0; i < size(RegLayoutScaleAEssential{}); i++) {
tCrScaleAViewAsC.data()[i] = tCsScaleAViewAsC(_, _, _, read_stage)(idx2crd(i, RegLayoutScaleAEssential{}));
}
if constexpr (ScaleMsPerTile == 1) {
static_assert(size(RegLayoutScaleAEssential{}) == 1);
tCrScaleAViewAsC.data()[0] = __shfl_sync(0xffffffff, tCrScaleAViewAsC.data()[0] * scale_b, 0); // `tCrScaleAViewAsC.data()[0]` are all same in a warp group when `ScaleMsPerTile == 1`.
} else {
CUTLASS_PRAGMA_UNROLL
for (int i = 0; i < size(RegLayoutScaleAEssential{}); i++) {
tCrScaleAViewAsC.data()[i] = tCrScaleAViewAsC.data()[i] * scale_b;
}
}
warpgroup_arrive();
// Unroll the K mode manually to set scale D to 1
CUTLASS_PRAGMA_UNROLL
for (int k_block = 0; k_block < size<2>(tCrA); ++k_block) {
// (V,M,K) x (V,N,K) => (V,M,N)
cute::gemm(tiled_mma, tCrA(_,_,k_block,read_stage), tCrB(_,_,k_block,read_stage), accumulation());
tiled_mma.accumulate_ = GMMA::ScaleOut::One;
}
warpgroup_commit_batch();
// Block scale the accumulators with reg tensor `tCrScaleAViewAsC`
accumulation.scale_if_needed(tCrScaleAViewAsC);
++smem_pipe_read;
}
warpgroup_fence_operand(accumulation());
// Mainloop GMMAs
k_tile_count -= prologue_mma_count;
CUTLASS_PRAGMA_NO_UNROLL
for ( ; k_tile_count > 0; --k_tile_count)
{
// WAIT on smem_pipe_read until its data are available (phase bit flips from rdPhaseBit value)
auto barrier_token = pipeline.consumer_try_wait(smem_pipe_read);
pipeline.consumer_wait(smem_pipe_read, barrier_token);
//
// Compute on k_tile
//
int read_stage = smem_pipe_read.index();
// Load per block scale values from shared memory to registers (at most twice per block along M and exactly once per block along N)
scale_b = sScaleB[read_stage];
CUTLASS_PRAGMA_UNROLL
for (int i = 0; i < size(RegLayoutScaleAEssential{}); i++) {
tCrScaleAViewAsC.data()[i] = tCsScaleAViewAsC(_, _, _, read_stage)(idx2crd(i, RegLayoutScaleAEssential{}));
}
if constexpr (ScaleMsPerTile == 1) {
static_assert(size(RegLayoutScaleAEssential{}) == 1);
tCrScaleAViewAsC.data()[0] = __shfl_sync(0xffffffff, tCrScaleAViewAsC.data()[0] * scale_b, 0); // `tCrScaleAViewAsC.data()[0]` are all same in a warp group when `ScaleMsPerTile == 1`.
} else {
CUTLASS_PRAGMA_UNROLL
for (int i = 0; i < size(RegLayoutScaleAEssential{}); i++) {
tCrScaleAViewAsC.data()[i] = tCrScaleAViewAsC.data()[i] * scale_b;
}
}
if (accumulation.prepare_if_needed()) {
tiled_mma.accumulate_ = GMMA::ScaleOut::Zero;
}
warpgroup_fence_operand(accumulation());
warpgroup_arrive();
// Unroll the K mode manually to set scale D to 1
CUTLASS_PRAGMA_UNROLL
for (int k_block = 0; k_block < size<2>(tCrA); ++k_block) {
// (V,M,K) x (V,N,K) => (V,M,N)
cute::gemm(tiled_mma, tCrA(_,_,k_block,read_stage), tCrB(_,_,k_block,read_stage), accumulation());
tiled_mma.accumulate_ = GMMA::ScaleOut::One;
}
warpgroup_commit_batch();
/// Wait on the GMMA barrier for K_PIPE_MMAS (or fewer) outstanding to ensure smem_pipe_write is consumed
warpgroup_wait<K_PIPE_MMAS>();
warpgroup_fence_operand(accumulation());
// Block scale the accumulators with reg tensor `tCrScaleAViewAsC`
accumulation.scale_if_needed(tCrScaleAViewAsC);
pipeline.consumer_release(smem_pipe_release); // UNLOCK smem_pipe_release, done _computing_ on it
// Advance smem_pipe_read and smem_pipe_release
++smem_pipe_read;
++smem_pipe_release;
}
accumulation.scale_residue_if_needed(tCrScaleAViewAsC);
warpgroup_fence_operand(accumulation());
}
/// Perform a Consumer Epilogue to release all buffers
CUTLASS_DEVICE void
mma_tail(MainloopPipeline pipeline, PipelineState smem_pipe_release, int k_tile_count) {
// Prologue GMMAs
int prologue_mma_count = min(K_PIPE_MMAS, k_tile_count);
k_tile_count -= prologue_mma_count;
smem_pipe_release.advance(k_tile_count);
// Wait on all GMMAs to complete
warpgroup_wait<0>();
for (int count = 0; count < prologue_mma_count; ++count) {
pipeline.consumer_release(smem_pipe_release); // UNLOCK smem_pipe_release, done _computing_ on it
++smem_pipe_release;
}
}
};
/////////////////////////////////////////////////////////////////////////////////////////////////
} // namespace cutlass::gemm::collective
/////////////////////////////////////////////////////////////////////////////////////////////////

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@ -1,39 +0,0 @@
#pragma once
#include "cutlass/gemm/dispatch_policy.hpp"
namespace cutlass::gemm {
//////////////////////////////////////////////////////////////////////////////
// FP8 related policies (including Blocked Scaled Accumulation)
// `ScaleGranularityM` specifies scaling granularity along M, while zero-value
// `ScaleGranularityM` indicates that scaling granularity is
// `size<0>(TileShape_MNK{})` along M.
template <int ScaleGranularityM = 0>
struct KernelTmaWarpSpecializedCooperativeFP8BlockScaledSubGroupMAccum
: KernelTmaWarpSpecializedCooperative {};
// n-buffer in smem (Hopper TMA), pipelined with Hopper GMMA and TMA, Warp
// specialized dynamic schedule For FP8 kernels with Block Scaling
template <int Stages_, class ClusterShape_ = Shape<_1, _1, _1>,
class KernelSchedule = KernelTmaWarpSpecialized,
int ScaleGranularityM =
0 // `ScaleGranularityM` specifies scaling granularity along M,
// while zero-value `ScaleGranularityM` indicates that scaling
// granularity is `size<0>(TileShape_MNK{})` along M.
>
struct MainloopSm90TmaGmmaWarpSpecializedBlockScalingSubGroupMFP8
: MainloopSm90TmaGmmaWarpSpecialized<Stages_, ClusterShape_,
KernelSchedule> {
static_assert(
cute::is_same_v<
KernelSchedule,
KernelTmaWarpSpecializedCooperativeFP8BlockScaledSubGroupMAccum<
ScaleGranularityM>>,
"KernelSchedule must be one of the warp specialized policies");
};
//////////////////////////////////////////////////////////////////////////////
} // namespace cutlass::gemm

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@ -1,6 +1,6 @@
#pragma once
#include "cutlass_extensions/gemm/collective/collective_builder.hpp"
#include "cutlass/gemm/collective/collective_builder.hpp"
namespace cutlass::gemm::collective {
using namespace cute;

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@ -19,6 +19,13 @@
#define VLLM_DISPATCH_FLOATING_TYPES(TYPE, NAME, ...) \
AT_DISPATCH_SWITCH(TYPE, NAME, VLLM_DISPATCH_CASE_FLOATING_TYPES(__VA_ARGS__))
#define VLLM_DISPATCH_CASE_HALF_TYPES(...) \
AT_DISPATCH_CASE(at::ScalarType::Half, __VA_ARGS__) \
AT_DISPATCH_CASE(at::ScalarType::BFloat16, __VA_ARGS__)
#define VLLM_DISPATCH_HALF_TYPES(TYPE, NAME, ...) \
AT_DISPATCH_SWITCH(TYPE, NAME, VLLM_DISPATCH_CASE_HALF_TYPES(__VA_ARGS__))
// ROCm devices might use either fn or fnuz, so set up dispatch table for both.
// A host-based check at runtime will create a preferred FP8 type for ROCm
// such that the correct kernel is dispatched.

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@ -140,6 +140,211 @@ fused_add_rms_norm_kernel(
}
}
/* Function specialization in the case of FP16/BF16 tensors.
Additional optimizations we can make in this case are
packed and vectorized operations, which help with the
memory latency bottleneck.
_f16VecPN struct extends _f16Vec to add operations specifically required for
polynomial normalization (poly norm).
The original _f16Vec does not include the sum-of-powers computation or
in-place polynomial normalization logic. */
template <typename scalar_t, int width>
struct alignas(16) _f16VecPN : _f16Vec<scalar_t, width> {
using Base = _f16Vec<scalar_t, width>;
using Converter = typename Base::Converter;
using T1 = typename Base::T1;
using T2 = typename Base::T2;
using Base::data;
__device__ auto sum_pows() const {
float s2 = 0.0f, s4 = 0.0f, s6 = 0.0f;
#pragma unroll
for (int i = 0; i < width; i += 2) {
float2 z = Converter::convert(T2{data[i], data[i + 1]});
float x2 = z.x * z.x;
float x4 = x2 * x2;
float x6 = x4 * x2;
float y2 = z.y * z.y;
float y4 = y2 * y2;
float y6 = y4 * y2;
s2 += x2 + y2;
s4 += x4 + y4;
s6 += x6 + y6;
}
return std::make_tuple(s2, s4, s6);
}
__device__ void poly_norm_inplace(const float w2_inv_std,
const float w1_inv_std2,
const float w0_inv_std3, const float bias) {
#pragma unroll
for (int i = 0; i < width; i += 2) {
float2 z = Converter::convert(T2{data[i], data[i + 1]});
float x2 = z.x * z.x;
float x3 = x2 * z.x;
z.x = w2_inv_std * z.x + w1_inv_std2 * x2 + w0_inv_std3 * x3 + bias;
float y2 = z.y * z.y;
float y3 = y2 * z.y;
z.y = w2_inv_std * z.y + w1_inv_std2 * y2 + w0_inv_std3 * y3 + bias;
auto out = Converter::convert(z);
data[i] = out.x;
data[i + 1] = out.y;
}
}
};
template <typename scalar_t, int width>
__global__ std::enable_if_t<(width > 0) && _typeConvert<scalar_t>::exists>
poly_norm_kernel(scalar_t* __restrict__ out, // [..., hidden_size]
const scalar_t* __restrict__ input, // [..., hidden_size]
const scalar_t* __restrict__ weight, // [3]
const scalar_t* __restrict__ bias, // [1]
const float epsilon, const int hidden_size) {
// Sanity checks on our vector struct and type-punned pointer arithmetic
static_assert(std::is_pod_v<_f16VecPN<scalar_t, width>>);
static_assert(sizeof(_f16VecPN<scalar_t, width>) == sizeof(scalar_t) * width);
/* These and the argument pointers are all declared `restrict` as they are
not aliased in practice. Argument pointers should not be dereferenced
in this kernel as that would be undefined behavior */
auto* __restrict__ input_v =
reinterpret_cast<const _f16VecPN<scalar_t, width>*>(input);
const int vec_hidden_size = hidden_size / width;
float variance = 0.0f;
float variance2 = 0.0f;
float variance3 = 0.0f;
for (int idx = threadIdx.x; idx < vec_hidden_size; idx += blockDim.x) {
int id = blockIdx.x * vec_hidden_size + idx;
_f16VecPN<scalar_t, width> temp = input_v[id];
auto [x2, x4, x6] = temp.sum_pows();
variance += x2;
variance2 += x4;
variance3 += x6;
}
float3 thread_variances = make_float3(variance, variance2, variance3);
struct SumOp {
__device__ float3 operator()(const float3& a, const float3& b) const {
return make_float3(a.x + b.x, a.y + b.y, a.z + b.z);
}
};
using BlockReduce = cub::BlockReduce<float3, 1024>;
__shared__ typename BlockReduce::TempStorage reduceStore;
float3 block_variances =
BlockReduce(reduceStore).Reduce(thread_variances, SumOp{}, blockDim.x);
variance = block_variances.x;
variance2 = block_variances.y;
variance3 = block_variances.z;
__shared__ float s_w2_inv_std;
__shared__ float s_w1_inv_std2;
__shared__ float s_w0_inv_std3;
__shared__ float s_bias;
if (threadIdx.x == 0) {
float w0 = (float)weight[0];
float w1 = (float)weight[1];
float w2 = (float)weight[2];
s_bias = (float)bias[0];
s_w2_inv_std = w2 * rsqrtf(variance / hidden_size + epsilon);
s_w1_inv_std2 = w1 * rsqrtf(variance2 / hidden_size + epsilon);
s_w0_inv_std3 = w0 * rsqrtf(variance3 / hidden_size + epsilon);
}
__syncthreads();
auto* __restrict__ out_v = reinterpret_cast<_f16VecPN<scalar_t, width>*>(out);
for (int idx = threadIdx.x; idx < vec_hidden_size; idx += blockDim.x) {
int id = blockIdx.x * vec_hidden_size + idx;
_f16VecPN<scalar_t, width> temp = input_v[id];
temp.poly_norm_inplace(s_w2_inv_std, s_w1_inv_std2, s_w0_inv_std3, s_bias);
out_v[id] = temp;
}
}
/* Generic poly_norm_kernel
The width field is not used here but necessary for other specializations.
*/
template <typename scalar_t, int width>
__global__ std::enable_if_t<(width == 0) || !_typeConvert<scalar_t>::exists>
poly_norm_kernel(scalar_t* __restrict__ out, // [..., hidden_size]
const scalar_t* __restrict__ input, // [..., hidden_size]
const scalar_t* __restrict__ weight, // [3]
const scalar_t* __restrict__ bias, // [1]
const float epsilon, const int hidden_size) {
float variance = 0.0f;
float variance2 = 0.0f;
float variance3 = 0.0f;
for (int idx = threadIdx.x; idx < hidden_size; idx += blockDim.x) {
float x = (float)input[blockIdx.x * hidden_size + idx];
float x2 = x * x;
float x4 = x2 * x2;
float x6 = x4 * x2;
variance += x2;
variance2 += x4;
variance3 += x6;
}
float3 thread_variances = make_float3(variance, variance2, variance3);
struct SumOp {
__device__ float3 operator()(const float3& a, const float3& b) const {
return make_float3(a.x + b.x, a.y + b.y, a.z + b.z);
}
};
using BlockReduce = cub::BlockReduce<float3, 1024>;
__shared__ typename BlockReduce::TempStorage reduceStore;
float3 block_variances =
BlockReduce(reduceStore).Reduce(thread_variances, SumOp{}, blockDim.x);
variance = block_variances.x;
variance2 = block_variances.y;
variance3 = block_variances.z;
__shared__ float s_w2_inv_std;
__shared__ float s_w1_inv_std2;
__shared__ float s_w0_inv_std3;
__shared__ float s_bias;
if (threadIdx.x == 0) {
float w0 = (float)weight[0];
float w1 = (float)weight[1];
float w2 = (float)weight[2];
s_bias = (float)bias[0];
s_w2_inv_std = w2 * rsqrtf(variance / hidden_size + epsilon);
s_w1_inv_std2 = w1 * rsqrtf(variance2 / hidden_size + epsilon);
s_w0_inv_std3 = w0 * rsqrtf(variance3 / hidden_size + epsilon);
}
__syncthreads();
for (int idx = threadIdx.x; idx < hidden_size; idx += blockDim.x) {
float x = (float)input[blockIdx.x * hidden_size + idx];
float x2 = x * x;
float x3 = x2 * x;
out[blockIdx.x * hidden_size + idx] =
(scalar_t)(x * s_w2_inv_std + x2 * s_w1_inv_std2 + x3 * s_w0_inv_std3 +
s_bias);
}
}
} // namespace vllm
void rms_norm(torch::Tensor& out, // [..., hidden_size]
@ -219,3 +424,49 @@ void fused_add_rms_norm(torch::Tensor& input, // [..., hidden_size]
LAUNCH_FUSED_ADD_RMS_NORM(0);
}
}
#define LAUNCH_FUSED_POLY_NORM(width) \
VLLM_DISPATCH_FLOATING_TYPES(input.scalar_type(), "poly_norm_kernel", [&] { \
vllm::poly_norm_kernel<scalar_t, width><<<grid, block, 0, stream>>>( \
out.data_ptr<scalar_t>(), input.data_ptr<scalar_t>(), \
weight.data_ptr<scalar_t>(), bias.data_ptr<scalar_t>(), epsilon, \
hidden_size); \
});
void poly_norm(torch::Tensor& out, // [..., hidden_size]
torch::Tensor& input, // [..., hidden_size]
torch::Tensor& weight, // [3]
torch::Tensor& bias, // [1]
double epsilon) {
TORCH_CHECK(out.is_contiguous());
TORCH_CHECK(input.is_contiguous());
TORCH_CHECK(out.data_ptr() != input.data_ptr());
int hidden_size = input.size(-1);
int num_tokens = input.numel() / hidden_size;
dim3 grid(num_tokens);
/* This kernel is memory-latency bound in many scenarios.
When num_tokens is large, a smaller block size allows
for increased block occupancy on CUs and better latency
hiding on global mem ops. */
const int max_block_size = (num_tokens < 256) ? 1024 : 256;
dim3 block(std::min(hidden_size, max_block_size));
const at::cuda::OptionalCUDAGuard device_guard(device_of(input));
const cudaStream_t stream = at::cuda::getCurrentCUDAStream();
/*If the tensor types are FP16/BF16, try to use the optimized kernel
with packed + vectorized ops.
Max optimization is achieved with a width-8 vector of FP16/BF16s
since we can load at most 128 bits at once in a global memory op.
However, this requires each tensor's data to be aligned to 16
bytes.
*/
auto inp_ptr = reinterpret_cast<std::uintptr_t>(input.data_ptr());
auto out_ptr = reinterpret_cast<std::uintptr_t>(out.data_ptr());
bool ptrs_are_aligned = inp_ptr % 16 == 0 && out_ptr % 16 == 0;
if (ptrs_are_aligned && hidden_size % 8 == 0) {
LAUNCH_FUSED_POLY_NORM(8);
} else {
LAUNCH_FUSED_POLY_NORM(0);
}
}

View File

@ -27,11 +27,12 @@
template<int kNThreads_, int kNItems_, int kNRows_, bool kIsEvenLen_,
bool kIsVariableB_, bool kIsVariableC_,
bool kHasZ_, bool kVarlen_, typename input_t_, typename weight_t_>
bool kHasZ_, bool kVarlen_, typename input_t_, typename weight_t_, typename state_t_>
struct Selective_Scan_fwd_kernel_traits {
static_assert(kNItems_ % 4 == 0);
using input_t = input_t_;
using weight_t = weight_t_;
using state_t = state_t_;
static constexpr int kNThreads = kNThreads_;
// Setting MinBlocksPerMP to be 3 (instead of 2) for 128 threads improves occupancy.
static constexpr int kMinBlocks = kNThreads < 128 ? 5 : 3;
@ -132,7 +133,7 @@ void selective_scan_fwd_kernel(SSMParamsBase params) {
input_t *Bvar = reinterpret_cast<input_t *>(params.B_ptr) + sequence_start_index * params.B_batch_stride + group_id * params.B_group_stride;
weight_t *C = reinterpret_cast<weight_t *>(params.C_ptr) + dim_id * kNRows * params.C_d_stride;
input_t *Cvar = reinterpret_cast<input_t *>(params.C_ptr) + sequence_start_index * params.C_batch_stride + group_id * params.C_group_stride;
input_t *ssm_states = reinterpret_cast<input_t *>(params.ssm_states_ptr) +
typename Ktraits::state_t *ssm_states = reinterpret_cast<typename Ktraits::state_t *>(params.ssm_states_ptr) +
cache_index * params.ssm_states_batch_stride +
dim_id * kNRows * params.ssm_states_dim_stride;
@ -261,7 +262,7 @@ void selective_scan_fwd_kernel(SSMParamsBase params) {
if (threadIdx.x == 0) {
smem_running_prefix[state_idx] = prefix_op.running_prefix;
if (chunk == n_chunks - 1) {
ssm_states[state_idx * params.ssm_states_dstate_stride] = input_t(prefix_op.running_prefix.y);
ssm_states[state_idx * params.ssm_states_dstate_stride] = typename Ktraits::state_t(prefix_op.running_prefix.y);
}
}
#pragma unroll
@ -310,7 +311,7 @@ void selective_scan_fwd_kernel(SSMParamsBase params) {
}
}
template<int kNThreads, int kNItems, typename input_t, typename weight_t>
template<int kNThreads, int kNItems, typename input_t, typename weight_t, typename state_t>
void selective_scan_fwd_launch(SSMParamsBase &params, cudaStream_t stream) {
// Only kNRows == 1 is tested for now, which ofc doesn't differ from previously when we had each block
// processing 1 row.
@ -321,7 +322,7 @@ void selective_scan_fwd_launch(SSMParamsBase &params, cudaStream_t stream) {
BOOL_SWITCH(params.seqlen % (kNThreads * kNItems) == 0, kIsEvenLen, [&] {
BOOL_SWITCH(params.z_ptr != nullptr , kHasZ, [&] {
BOOL_SWITCH(params.query_start_loc_ptr != nullptr , kVarlen, [&] {
using Ktraits = Selective_Scan_fwd_kernel_traits<kNThreads, kNItems, kNRows, kIsEvenLen, kIsVariableB, kIsVariableC, kHasZ, kVarlen, input_t, weight_t>;
using Ktraits = Selective_Scan_fwd_kernel_traits<kNThreads, kNItems, kNRows, kIsEvenLen, kIsVariableB, kIsVariableC, kHasZ, kVarlen, input_t, weight_t, state_t>;
constexpr int kSmemSize = Ktraits::kSmemSize + kNRows * MAX_DSTATE * sizeof(typename Ktraits::scan_t);
dim3 grid(params.batch, params.dim / kNRows);
auto kernel = &selective_scan_fwd_kernel<Ktraits>;
@ -341,59 +342,78 @@ void selective_scan_fwd_launch(SSMParamsBase &params, cudaStream_t stream) {
});
}
template<typename input_t, typename weight_t>
template<typename input_t, typename weight_t, typename state_t>
void selective_scan_fwd_cuda(SSMParamsBase &params, cudaStream_t stream) {
#ifndef USE_ROCM
if (params.seqlen <= 128) {
selective_scan_fwd_launch<32, 4, input_t, weight_t>(params, stream);
selective_scan_fwd_launch<32, 4, input_t, weight_t, state_t>(params, stream);
} else if (params.seqlen <= 256) {
selective_scan_fwd_launch<32, 8, input_t, weight_t>(params, stream);
selective_scan_fwd_launch<32, 8, input_t, weight_t, state_t>(params, stream);
} else if (params.seqlen <= 512) {
selective_scan_fwd_launch<32, 16, input_t, weight_t>(params, stream);
selective_scan_fwd_launch<32, 16, input_t, weight_t, state_t>(params, stream);
} else if (params.seqlen <= 1024) {
selective_scan_fwd_launch<64, 16, input_t, weight_t>(params, stream);
selective_scan_fwd_launch<64, 16, input_t, weight_t, state_t>(params, stream);
} else {
selective_scan_fwd_launch<128, 16, input_t, weight_t>(params, stream);
selective_scan_fwd_launch<128, 16, input_t, weight_t, state_t>(params, stream);
}
#else
if (params.seqlen <= 256) {
selective_scan_fwd_launch<64, 4, input_t, weight_t>(params, stream);
selective_scan_fwd_launch<64, 4, input_t, weight_t, state_t>(params, stream);
} else if (params.seqlen <= 512) {
selective_scan_fwd_launch<64, 8, input_t, weight_t>(params, stream);
selective_scan_fwd_launch<64, 8, input_t, weight_t, state_t>(params, stream);
} else if (params.seqlen <= 1024) {
selective_scan_fwd_launch<64, 16, input_t, weight_t>(params, stream);
selective_scan_fwd_launch<64, 16, input_t, weight_t, state_t>(params, stream);
} else {
selective_scan_fwd_launch<128, 16, input_t, weight_t>(params, stream);
selective_scan_fwd_launch<128, 16, input_t, weight_t, state_t>(params, stream);
}
#endif
}
template void selective_scan_fwd_cuda<at::BFloat16, float>(SSMParamsBase &params, cudaStream_t stream);
template void selective_scan_fwd_cuda<at::Half, float>(SSMParamsBase &params, cudaStream_t stream);
template void selective_scan_fwd_cuda<float, float>(SSMParamsBase &params, cudaStream_t stream);
template void selective_scan_fwd_cuda<at::BFloat16, float, at::BFloat16>(SSMParamsBase &params, cudaStream_t stream);
template void selective_scan_fwd_cuda<at::BFloat16, float, float>(SSMParamsBase &params, cudaStream_t stream);
template void selective_scan_fwd_cuda<at::Half, float, at::Half>(SSMParamsBase &params, cudaStream_t stream);
template void selective_scan_fwd_cuda<at::Half, float, float>(SSMParamsBase &params, cudaStream_t stream);
template void selective_scan_fwd_cuda<float, float, float>(SSMParamsBase &params, cudaStream_t stream);
#define CHECK_SHAPE(x, ...) TORCH_CHECK(x.sizes() == torch::IntArrayRef({__VA_ARGS__}), #x " must have shape (" #__VA_ARGS__ ")")
#define DISPATCH_WTYPE_ITYPE_FLOAT_AND_HALF_AND_BF16(ITYPE, NAME, ...) \
#define DISPATCH_WTYPE_ITYPE_FLOAT_AND_HALF_AND_BF16(ITYPE, STYPE, NAME, ...) \
if (ITYPE == at::ScalarType::Half) { \
using input_t = at::Half; \
using weight_t = float; \
__VA_ARGS__(); \
if (STYPE == at::ScalarType::Half) { \
using state_t = at::Half; \
__VA_ARGS__(); \
} else if (STYPE == at::ScalarType::Float) { \
using state_t = float; \
__VA_ARGS__(); \
} else { \
AT_ERROR(#NAME, " not implemented for state type '", toString(STYPE), "'"); \
} \
} else if (ITYPE == at::ScalarType::BFloat16) { \
using input_t = at::BFloat16; \
using weight_t = float; \
__VA_ARGS__(); \
if (STYPE == at::ScalarType::BFloat16) { \
using state_t = at::BFloat16; \
__VA_ARGS__(); \
} else if (STYPE == at::ScalarType::Float) { \
using state_t = float; \
__VA_ARGS__(); \
} else { \
AT_ERROR(#NAME, " not implemented for state type '", toString(STYPE), "'"); \
} \
} else if (ITYPE == at::ScalarType::Float) { \
using input_t = float; \
using weight_t = float; \
using state_t = float; \
__VA_ARGS__(); \
} else { \
AT_ERROR(#NAME, " not implemented for input type '", toString(ITYPE), "'"); \
}
template<typename input_t, typename weight_t>
template<typename input_t, typename weight_t, typename state_t>
void selective_scan_fwd_cuda(SSMParamsBase &params, cudaStream_t stream);
void set_ssm_params_fwd(SSMParamsBase &params,
@ -648,7 +668,9 @@ void selective_scan_fwd(const torch::Tensor &u, const torch::Tensor &delta,
// Right now u has BHL layout and delta has HBL layout, and we want out to have HBL layout
at::Tensor out = delta;
TORCH_CHECK(ssm_states.scalar_type() == input_type);
// ssm_states can now be either the same as input_type or float32
auto state_type = ssm_states.scalar_type();
TORCH_CHECK(state_type == input_type || state_type == at::ScalarType::Float);
TORCH_CHECK(ssm_states.is_cuda());
TORCH_CHECK(ssm_states.stride(-1) == 1);
@ -670,7 +692,7 @@ void selective_scan_fwd(const torch::Tensor &u, const torch::Tensor &delta,
const at::cuda::OptionalCUDAGuard device_guard(device_of(u));
auto stream = at::cuda::getCurrentCUDAStream().stream();
DISPATCH_WTYPE_ITYPE_FLOAT_AND_HALF_AND_BF16(u.scalar_type(), "selective_scan_fwd", [&] {
selective_scan_fwd_cuda<input_t, weight_t>(params, stream);
DISPATCH_WTYPE_ITYPE_FLOAT_AND_HALF_AND_BF16(u.scalar_type(), ssm_states.scalar_type(), "selective_scan_fwd", [&] {
selective_scan_fwd_cuda<input_t, weight_t, state_t>(params, stream);
});
}

View File

@ -0,0 +1,758 @@
/*
* Adapted from
* https://github.com/NVIDIA/TensorRT-LLM/blob/v0.21.0/cpp/tensorrt_llm/kernels/noAuxTcKernels.cu
* Copyright (c) 2025, The vLLM team.
* SPDX-FileCopyrightText: Copyright (c) 1993-2024 NVIDIA CORPORATION &
* AFFILIATES. All rights reserved. SPDX-License-Identifier: Apache-2.0
*
* Licensed under the Apache License, Version 2.0 (the "License");
* you may not use this file except in compliance with the License.
* You may obtain a copy of the License at
*
* http://www.apache.org/licenses/LICENSE-2.0
*
* Unless required by applicable law or agreed to in writing, software
* distributed under the License is distributed on an "AS IS" BASIS,
* WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
* See the License for the specific language governing permissions and
* limitations under the License.
*/
#include <c10/cuda/CUDAStream.h>
#include <torch/all.h>
#include <cuda_fp16.h>
#include <cuda_bf16.h>
#include <cooperative_groups.h>
#include <cooperative_groups/reduce.h>
namespace cg = cooperative_groups;
namespace vllm {
namespace moe {
constexpr float kNegInfinity = INFINITY * -1;
constexpr unsigned FULL_WARP_MASK = 0xffffffff;
constexpr int32_t WARP_SIZE = 32;
constexpr int32_t BLOCK_SIZE = 512;
constexpr int32_t NUM_WARPS_PER_BLOCK = BLOCK_SIZE / WARP_SIZE;
namespace warp_topk {
template <int size, typename T>
__host__ __device__ constexpr T round_up_to_multiple_of(T len) {
if (len == 0) {
return 0;
}
return ((len - 1) / size + 1) * size;
}
template <typename T>
constexpr __host__ __device__ bool isPowerOf2(T v) {
return (v && !(v & (v - 1)));
}
template <bool greater, typename T>
__forceinline__ __device__ bool is_better_than(T val, T baseline) {
return (val > baseline && greater) || (val < baseline && !greater);
}
template <bool greater, typename T, typename idxT>
__forceinline__ __device__ bool is_better_than(T val, T baseline, idxT index,
idxT baseline_index) {
bool res = (val > baseline && greater) || (val < baseline && !greater);
if (val == baseline) {
res = (index < baseline_index && greater) ||
(index < baseline_index && !greater);
}
return res;
}
template <typename T, typename idxT>
int calc_smem_size_for_block_wide(int num_of_warp, int64_t k) {
int64_t cache_topk = (sizeof(T) + sizeof(idxT)) * num_of_warp * k;
int64_t n = std::max<int>(num_of_warp / 2 * k, num_of_warp * WARP_SIZE);
return max(cache_topk,
round_up_to_multiple_of<256>(n * sizeof(T)) + n * sizeof(idxT));
}
template <int size, bool ascending, bool reverse, typename T, typename idxT,
bool is_stable>
struct BitonicMerge {
// input should be a bitonic sequence, and sort it to be a monotonic sequence
__device__ static void merge(T* __restrict__ val_arr,
idxT* __restrict__ idx_arr) {
static_assert(isPowerOf2(size));
static_assert(size >= 2 * WARP_SIZE);
constexpr int arr_len = size / WARP_SIZE;
constexpr int stride = arr_len / 2;
for (int i = 0; i < stride; ++i) {
int const other_i = i + stride;
T& val = val_arr[i];
T& other_val = val_arr[other_i];
bool is_better;
if constexpr (is_stable) {
is_better = is_better_than<ascending>(val, other_val, idx_arr[i],
idx_arr[other_i]);
} else {
is_better = is_better_than<ascending>(val, other_val);
}
if (is_better) {
T tmp = val;
val = other_val;
other_val = tmp;
idxT tmp2 = idx_arr[i];
idx_arr[i] = idx_arr[other_i];
idx_arr[other_i] = tmp2;
}
}
BitonicMerge<size / 2, ascending, reverse, T, idxT, is_stable>::merge(
val_arr, idx_arr);
BitonicMerge<size / 2, ascending, reverse, T, idxT, is_stable>::merge(
val_arr + arr_len / 2, idx_arr + arr_len / 2);
}
};
template <int size, bool ascending, typename T, typename idxT, bool is_stable>
struct BitonicSort {
__device__ static void sort(T* __restrict__ val_arr,
idxT* __restrict__ idx_arr) {
static_assert(isPowerOf2(size));
static_assert(size >= 2 * WARP_SIZE);
constexpr int arr_len = size / WARP_SIZE;
BitonicSort<size / 2, true, T, idxT, is_stable>::sort(val_arr, idx_arr);
BitonicSort<size / 2, false, T, idxT, is_stable>::sort(
val_arr + arr_len / 2, idx_arr + arr_len / 2);
BitonicMerge<size, ascending, ascending, T, idxT, is_stable>::merge(
val_arr, idx_arr);
}
};
template <bool ascending, typename T, typename idxT, bool is_stable>
struct BitonicSort<32, ascending, T, idxT, is_stable> {
__device__ static void sort(T* __restrict__ val_arr,
idxT* __restrict__ idx_arr) {
int const lane = threadIdx.x % WARP_SIZE;
// ascending doesn't matter before merging since all we need is a bitonic
// sequence
for (int stage = 0; stage < 4; ++stage) {
for (int stride = (1 << stage); stride > 0; stride /= 2) {
bool reverse = (lane >> stage) & 2;
bool is_second = lane & stride;
T other = __shfl_xor_sync(FULL_WARP_MASK, *val_arr, stride);
idxT other_idx = __shfl_xor_sync(FULL_WARP_MASK, *idx_arr, stride);
bool is_better;
if constexpr (is_stable) {
if constexpr (ascending) {
is_better = ((*val_arr > other) ||
((*val_arr == other) && (*idx_arr < other_idx))) !=
(reverse != is_second);
} else {
is_better = ((*val_arr > other) ||
((*val_arr == other) && (*idx_arr > other_idx))) !=
(reverse != is_second);
}
} else {
is_better = (*val_arr != other &&
(*val_arr > other) != (reverse != is_second));
}
if (is_better) {
*val_arr = other;
*idx_arr = other_idx;
}
}
}
BitonicMerge<32, ascending, ascending, T, idxT, is_stable>::merge(val_arr,
idx_arr);
}
};
template <bool ascending, bool reverse, typename T, typename idxT,
bool is_stable>
struct BitonicMerge<32, ascending, reverse, T, idxT, is_stable> {
__device__ static void merge(T* __restrict__ val_arr,
idxT* __restrict__ idx_arr) {
int const lane = threadIdx.x % WARP_SIZE;
for (int stride = WARP_SIZE / 2; stride > 0; stride /= 2) {
bool is_second = lane & stride;
T& val = *val_arr;
T other = __shfl_xor_sync(FULL_WARP_MASK, val, stride);
idxT& idx = *idx_arr;
idxT other_idx = __shfl_xor_sync(FULL_WARP_MASK, idx, stride);
bool is_better;
if constexpr (is_stable) {
if constexpr (ascending) {
is_better = ((*val_arr > other) ||
((*val_arr == other) && (*idx_arr < other_idx))) ==
(reverse != is_second); // for min
} else {
is_better = ((*val_arr > other) ||
((*val_arr == other) && (*idx_arr > other_idx))) ==
(reverse != is_second); // for max
}
} else {
is_better =
(val != other && ((val > other) == (ascending != is_second)));
}
if (is_better) {
val = other;
idx = other_idx;
}
}
}
};
template <int capacity, bool greater, typename T, typename idxT, bool is_stable>
class WarpSort {
public:
__device__ WarpSort(idxT k, T dummy)
: lane_(threadIdx.x % WARP_SIZE), k_(k), dummy_(dummy) {
static_assert(capacity >= WARP_SIZE && isPowerOf2(capacity));
for (int i = 0; i < max_arr_len_; ++i) {
val_arr_[i] = dummy_;
idx_arr_[i] = 0;
}
}
// load and merge k sorted values
__device__ void load_sorted(T const* __restrict__ in,
idxT const* __restrict__ in_idx, idxT start) {
idxT idx = start + WARP_SIZE - 1 - lane_;
for (int i = max_arr_len_ - 1; i >= 0; --i, idx += WARP_SIZE) {
if (idx < start + k_) {
T t = in[idx];
bool is_better;
if constexpr (is_stable) {
is_better =
is_better_than<greater>(t, val_arr_[i], in_idx[idx], idx_arr_[i]);
} else {
is_better = is_better_than<greater>(t, val_arr_[i]);
}
if (is_better) {
val_arr_[i] = t;
idx_arr_[i] = in_idx[idx];
}
}
}
BitonicMerge<capacity, greater, !greater, T, idxT, is_stable>::merge(
val_arr_, idx_arr_);
}
__device__ void dump(T* __restrict__ out, idxT* __restrict__ out_idx) const {
for (int i = 0; i < max_arr_len_; ++i) {
idxT out_i = i * WARP_SIZE + lane_;
if (out_i < k_) {
out[out_i] = val_arr_[i];
out_idx[out_i] = idx_arr_[i];
}
}
}
__device__ void dumpIdx(idxT* __restrict__ out_idx) const {
for (int i = 0; i < max_arr_len_; ++i) {
idxT out_i = i * WARP_SIZE + lane_;
if (out_i < k_) {
out_idx[out_i] = idx_arr_[i];
}
}
}
protected:
static constexpr int max_arr_len_ = capacity / WARP_SIZE;
T val_arr_[max_arr_len_];
idxT idx_arr_[max_arr_len_];
int const lane_;
idxT const k_;
T const dummy_;
}; // end class WarpSort
template <int capacity, bool greater, typename T, typename idxT, bool is_stable>
class WarpSelect : public WarpSort<capacity, greater, T, idxT, is_stable> {
public:
__device__ WarpSelect(idxT k, T dummy)
: WarpSort<capacity, greater, T, idxT, is_stable>(k, dummy),
k_th_(dummy),
k_th_lane_((k - 1) % WARP_SIZE) {
extern __shared__ char smem_buf[]; // extern __shared__ T smem_buf[];
int const num_of_warp = blockDim.x / WARP_SIZE;
int const warp_id = threadIdx.x / WARP_SIZE;
val_smem_ = reinterpret_cast<T*>(smem_buf);
val_smem_ += warp_id * WARP_SIZE;
idx_smem_ = reinterpret_cast<idxT*>(
smem_buf +
round_up_to_multiple_of<256>(num_of_warp * sizeof(T) * WARP_SIZE));
idx_smem_ += warp_id * WARP_SIZE;
}
__device__ void add(T const* in, idxT start, idxT end) {
idxT const end_for_fullwarp =
round_up_to_multiple_of<WARP_SIZE>(end - start) + start;
for (idxT i = start + lane_; i < end_for_fullwarp; i += WARP_SIZE) {
T val = (i < end) ? in[i] : dummy_;
add(val, i);
}
}
__device__ void add(T val, idxT idx) {
bool do_add;
if constexpr (is_stable) {
do_add = is_better_than<greater>(val, k_th_, idx, k_th_idx_);
} else {
do_add = is_better_than<greater>(val, k_th_);
}
uint32_t mask = __ballot_sync(FULL_WARP_MASK, do_add);
if (mask == 0) {
return;
}
int pos = smem_buf_len_ + __popc(mask & ((0x1u << lane_) - 1));
if (do_add && pos < WARP_SIZE) {
val_smem_[pos] = val;
idx_smem_[pos] = idx;
do_add = false;
}
smem_buf_len_ += __popc(mask);
if (smem_buf_len_ >= WARP_SIZE) {
__syncwarp();
merge_buf_(val_smem_[lane_], idx_smem_[lane_]);
smem_buf_len_ -= WARP_SIZE;
}
if (do_add) {
pos -= WARP_SIZE;
val_smem_[pos] = val;
idx_smem_[pos] = idx;
}
__syncwarp();
}
__device__ void done() {
if (smem_buf_len_) {
T val = (lane_ < smem_buf_len_) ? val_smem_[lane_] : dummy_;
idxT idx = (lane_ < smem_buf_len_) ? idx_smem_[lane_] : 0;
merge_buf_(val, idx);
}
// after done(), smem is used for merging results among warps
__syncthreads();
}
private:
__device__ void set_k_th_() {
k_th_ = __shfl_sync(FULL_WARP_MASK, val_arr_[max_arr_len_ - 1], k_th_lane_);
if constexpr (is_stable) {
k_th_idx_ =
__shfl_sync(FULL_WARP_MASK, idx_arr_[max_arr_len_ - 1], k_th_lane_);
}
}
__device__ void merge_buf_(T val, idxT idx) {
BitonicSort<WARP_SIZE, greater, T, idxT, is_stable>::sort(&val, &idx);
T& old = val_arr_[max_arr_len_ - 1];
bool is_better;
if constexpr (is_stable) {
is_better =
is_better_than<greater>(val, old, idx, idx_arr_[max_arr_len_ - 1]);
} else {
is_better = is_better_than<greater>(val, old);
}
if (is_better) {
old = val;
idx_arr_[max_arr_len_ - 1] = idx;
}
BitonicMerge<capacity, greater, !greater, T, idxT, is_stable>::merge(
val_arr_, idx_arr_);
set_k_th_();
}
using WarpSort<capacity, greater, T, idxT, is_stable>::max_arr_len_;
using WarpSort<capacity, greater, T, idxT, is_stable>::val_arr_;
using WarpSort<capacity, greater, T, idxT, is_stable>::idx_arr_;
using WarpSort<capacity, greater, T, idxT, is_stable>::lane_;
using WarpSort<capacity, greater, T, idxT, is_stable>::k_;
using WarpSort<capacity, greater, T, idxT, is_stable>::dummy_;
T* val_smem_;
idxT* idx_smem_;
int smem_buf_len_ = 0;
T k_th_;
idxT k_th_idx_;
int const k_th_lane_;
}; // end class WarpSelect
} // namespace warp_topk
template <typename T_OUT, typename T_IN>
__device__ inline T_OUT cuda_cast(T_IN val) {
return val;
}
template <>
__device__ inline float cuda_cast<float, __nv_bfloat16>(__nv_bfloat16 val) {
return __bfloat162float(val);
}
template <typename T>
__device__ void topk_with_k2(T* output, T const* input,
cg::thread_block_tile<32> const& tile,
int32_t const lane_id,
int const num_experts_per_group) {
// Get the top2 per thread
T largest = -INFINITY;
T second_largest = -INFINITY;
if (num_experts_per_group > WARP_SIZE) {
for (int i = lane_id; i < num_experts_per_group; i += WARP_SIZE) {
T value = input[i];
if (value > largest) {
second_largest = largest;
largest = value;
} else if (value > second_largest) {
second_largest = value;
}
}
} else {
for (int i = lane_id; i < num_experts_per_group; i += WARP_SIZE) {
largest = input[i];
}
}
__syncwarp(); // Ensure all threads have valid data before reduction
// Get the top2 warpwise
T max1 = cg::reduce(tile, largest, cg::greater<T>());
T max2 = max1;
bool equal_to_max1 = (max1 == largest);
int count_max1 = __popc(__ballot_sync(FULL_WARP_MASK, equal_to_max1));
if (count_max1 == 1) {
largest = (largest == max1) ? second_largest : largest;
max2 = cg::reduce(tile, largest, cg::greater<T>());
}
if (lane_id == 0) {
*output = max1 + max2;
}
}
template <typename T>
__global__ void topk_with_k2_kernel(T* output, T* input,
int64_t const num_tokens,
int64_t const num_cases,
int64_t const n_group,
int64_t const num_experts_per_group) {
int32_t warp_id = threadIdx.x / WARP_SIZE;
int32_t lane_id = threadIdx.x % WARP_SIZE;
int32_t case_id = blockIdx.x * NUM_WARPS_PER_BLOCK + warp_id;
if (case_id < num_cases) {
input += case_id * num_experts_per_group;
output += case_id;
cg::thread_block block = cg::this_thread_block();
cg::thread_block_tile<32> tile = cg::tiled_partition<32>(block);
#if (defined(__CUDA_ARCH__) && (__CUDA_ARCH__ >= 900))
asm volatile("griddepcontrol.wait;");
#endif
topk_with_k2(output, input, tile, lane_id, num_experts_per_group);
}
#if (defined(__CUDA_ARCH__) && (__CUDA_ARCH__ >= 900))
asm volatile("griddepcontrol.launch_dependents;");
#endif
}
template <typename T, typename IdxT>
__global__ void group_idx_and_topk_idx_kernel(
T* scores, T const* group_scores, T* topk_values, IdxT* topk_indices,
T* scores_with_bias, int64_t const num_tokens, int64_t const n_group,
int64_t const topk_group, int64_t const topk, int64_t const num_experts,
int64_t const num_experts_per_group, bool renormalize,
double routed_scaling_factor) {
int32_t warp_id = threadIdx.x / WARP_SIZE;
int32_t lane_id = threadIdx.x % WARP_SIZE;
int32_t case_id =
blockIdx.x * NUM_WARPS_PER_BLOCK + warp_id; // one per token
scores_with_bias += case_id * num_experts;
scores += case_id * num_experts;
group_scores += case_id * n_group;
topk_values += case_id * topk;
topk_indices += case_id * topk;
int32_t align_num_experts_per_group =
warp_topk::round_up_to_multiple_of<WARP_SIZE>(num_experts_per_group);
cg::thread_block block = cg::this_thread_block();
cg::thread_block_tile<32> tile = cg::tiled_partition<32>(block);
extern __shared__ char smem_buf[]; // NOTE: reuse the shared memory here to
// store the target topk idx
int32_t* s_topk_idx = reinterpret_cast<int32_t*>(smem_buf);
T* s_topk_value =
reinterpret_cast<T*>(s_topk_idx + NUM_WARPS_PER_BLOCK * topk) +
warp_id * topk;
s_topk_idx += warp_id * topk;
T value = kNegInfinity;
T topk_group_value = kNegInfinity;
int32_t num_equalto_topkth_group;
#if (defined(__CUDA_ARCH__) && (__CUDA_ARCH__ >= 900))
asm volatile("griddepcontrol.wait;"); // I think all prolog can be put before
// acqbulk because it's ptr arithmetic
#endif
if (case_id < num_tokens) {
// calculate group_idx
int32_t target_num_min = WARP_SIZE - n_group + topk_group;
if (lane_id < n_group &&
(isfinite(cuda_cast<float, T>(
group_scores[lane_id])))) // The check is necessary to avoid
// abnormal input
{
value = group_scores[lane_id];
}
int count_equal_to_top_value = WARP_SIZE - n_group;
int pre_count_equal_to_top_value = 0;
// Use loop to find the largset top_group
while (count_equal_to_top_value < target_num_min) {
__syncwarp(); // Ensure all threads have valid data before reduction
topk_group_value = cg::reduce(tile, value, cg::greater<T>());
if (value == topk_group_value) {
value = kNegInfinity;
}
pre_count_equal_to_top_value = count_equal_to_top_value;
count_equal_to_top_value = __popc(__ballot_sync(
FULL_WARP_MASK, (value == cuda_cast<T, float>(kNegInfinity))));
}
num_equalto_topkth_group = target_num_min - pre_count_equal_to_top_value;
}
__syncthreads();
warp_topk::WarpSelect</*capability*/ WARP_SIZE, /*greater*/ true, T, int32_t,
/* is_stable */ true>
queue((int32_t)topk, -INFINITY);
int count_equalto_topkth_group = 0;
bool if_proceed_next_topk =
(topk_group_value != cuda_cast<T, float>(kNegInfinity));
if (case_id < num_tokens && if_proceed_next_topk) {
for (int i_group = 0; i_group < n_group; i_group++) {
if ((group_scores[i_group] > topk_group_value) ||
((group_scores[i_group] == topk_group_value) &&
(count_equalto_topkth_group < num_equalto_topkth_group))) {
int32_t offset = i_group * num_experts_per_group;
for (int32_t i = lane_id; i < align_num_experts_per_group;
i += WARP_SIZE) {
T candidates =
(i < num_experts_per_group) && isfinite(cuda_cast<float, T>(
scores_with_bias[offset + i]))
? scores_with_bias[offset + i]
: cuda_cast<T, float>(kNegInfinity);
queue.add(candidates, offset + i);
}
if (group_scores[i_group] == topk_group_value) {
count_equalto_topkth_group++;
}
}
}
queue.done();
__syncwarp();
// Get the topk_idx
queue.dumpIdx(s_topk_idx);
__syncwarp();
}
// Load the valid score value
// Calculate the summation
float topk_sum = 1e-20;
if (case_id < num_tokens && if_proceed_next_topk) {
for (int i = lane_id;
i < warp_topk::round_up_to_multiple_of<WARP_SIZE>(topk);
i += WARP_SIZE) {
T value =
i < topk
? scores[s_topk_idx[i]]
: cuda_cast<T, float>(0.0f); // Load the valid value of expert
if (i < topk) {
s_topk_value[i] = value;
}
topk_sum += reduce(tile, cuda_cast<float, T>(value), cg::plus<float>());
}
}
__syncthreads();
if (case_id < num_tokens) {
if (if_proceed_next_topk) {
for (int i = lane_id; i < topk; i += WARP_SIZE) {
float value;
if (renormalize) {
value = cuda_cast<float, T>(s_topk_value[i]) / topk_sum *
routed_scaling_factor;
} else {
value = cuda_cast<float, T>(s_topk_value[i]) * routed_scaling_factor;
}
topk_indices[i] = s_topk_idx[i];
topk_values[i] = cuda_cast<T, float>(value);
}
} else {
for (int i = lane_id; i < topk; i += WARP_SIZE) {
topk_indices[i] = i;
topk_values[i] = cuda_cast<T, float>(1.0f / topk);
}
}
// Note: when if_proceed_next_topk==false, choose the first 8 experts as the
// default result.
}
#if (defined(__CUDA_ARCH__) && (__CUDA_ARCH__ >= 900))
asm volatile("griddepcontrol.launch_dependents;");
#endif
}
template <typename T, typename IdxT>
void invokeNoAuxTc(T* scores, T* group_scores, T* topk_values,
IdxT* topk_indices, T* scores_with_bias,
int64_t const num_tokens, int64_t const num_experts,
int64_t const n_group, int64_t const topk_group,
int64_t const topk, bool const renormalize,
double const routed_scaling_factor, bool enable_pdl = false,
cudaStream_t const stream = 0) {
int64_t num_cases = num_tokens * n_group;
int64_t topk_with_k2_num_blocks = (num_cases - 1) / NUM_WARPS_PER_BLOCK + 1;
auto* kernel_instance1 = &topk_with_k2_kernel<T>;
cudaLaunchConfig_t config;
config.gridDim = topk_with_k2_num_blocks;
config.blockDim = BLOCK_SIZE;
config.dynamicSmemBytes = 0;
config.stream = stream;
cudaLaunchAttribute attrs[1];
attrs[0].id = cudaLaunchAttributeProgrammaticStreamSerialization;
attrs[0].val.programmaticStreamSerializationAllowed = enable_pdl;
config.numAttrs = 1;
config.attrs = attrs;
cudaLaunchKernelEx(&config, kernel_instance1, group_scores, scores_with_bias,
num_tokens, num_cases, n_group, num_experts / n_group);
int64_t topk_with_k_group_num_blocks =
(num_tokens - 1) / NUM_WARPS_PER_BLOCK + 1;
size_t dynamic_smem_in_bytes =
warp_topk::calc_smem_size_for_block_wide<T, int32_t>(NUM_WARPS_PER_BLOCK,
topk);
auto* kernel_instance2 = &group_idx_and_topk_idx_kernel<T, IdxT>;
config.gridDim = topk_with_k_group_num_blocks;
config.blockDim = BLOCK_SIZE;
config.dynamicSmemBytes = dynamic_smem_in_bytes;
config.stream = stream;
attrs[0].id = cudaLaunchAttributeProgrammaticStreamSerialization;
attrs[0].val.programmaticStreamSerializationAllowed = enable_pdl;
config.numAttrs = 1;
config.attrs = attrs;
cudaLaunchKernelEx(&config, kernel_instance2, scores, group_scores,
topk_values, topk_indices, scores_with_bias, num_tokens,
n_group, topk_group, topk, num_experts,
num_experts / n_group, renormalize, routed_scaling_factor);
}
#define INSTANTIATE_NOAUX_TC(T, IdxT) \
template void invokeNoAuxTc<T, IdxT>( \
T * scores, T * group_scores, T * topk_values, IdxT * topk_indices, \
T * scores_with_bias, int64_t const num_tokens, \
int64_t const num_experts, int64_t const n_group, \
int64_t const topk_group, int64_t const topk, bool const renormalize, \
double const routed_scaling_factor, bool enable_pdl, \
cudaStream_t const stream);
INSTANTIATE_NOAUX_TC(float, int32_t);
INSTANTIATE_NOAUX_TC(half, int32_t);
INSTANTIATE_NOAUX_TC(__nv_bfloat16, int32_t);
} // end namespace moe
} // namespace vllm
std::tuple<torch::Tensor, torch::Tensor> grouped_topk(
torch::Tensor const& scores, torch::Tensor const& scores_with_bias,
int64_t n_group, int64_t topk_group, int64_t topk, bool renormalize,
double routed_scaling_factor) {
auto data_type = scores_with_bias.scalar_type();
auto input_size = scores_with_bias.sizes();
int64_t num_tokens = input_size[0];
int64_t num_experts = input_size[1];
TORCH_CHECK(input_size.size() == 2, "scores_with_bias must be a 2D Tensor");
TORCH_CHECK(num_experts % n_group == 0,
"num_experts should be divisible by n_group");
TORCH_CHECK(n_group <= 32,
"n_group should be smaller than or equal to 32 for now");
TORCH_CHECK(topk <= 32, "topk should be smaller than or equal to 32 for now");
torch::Tensor group_scores = torch::empty(
{num_tokens, n_group}, torch::dtype(data_type).device(torch::kCUDA));
torch::Tensor topk_values = torch::empty(
{num_tokens, topk}, torch::dtype(data_type).device(torch::kCUDA));
torch::Tensor topk_indices = torch::empty(
{num_tokens, topk}, torch::dtype(torch::kInt32).device(torch::kCUDA));
auto stream = c10::cuda::getCurrentCUDAStream(scores_with_bias.get_device());
switch (data_type) {
case torch::kFloat16:
// Handle Float16
vllm::moe::invokeNoAuxTc<half, int32_t>(
reinterpret_cast<half*>(scores.mutable_data_ptr()),
reinterpret_cast<half*>(group_scores.mutable_data_ptr()),
reinterpret_cast<half*>(topk_values.mutable_data_ptr()),
reinterpret_cast<int32_t*>(topk_indices.mutable_data_ptr()),
reinterpret_cast<half*>(scores_with_bias.data_ptr()), num_tokens,
num_experts, n_group, topk_group, topk, renormalize,
routed_scaling_factor, false, stream);
break;
case torch::kFloat32:
// Handle Float32
vllm::moe::invokeNoAuxTc<float, int32_t>(
reinterpret_cast<float*>(scores.mutable_data_ptr()),
reinterpret_cast<float*>(group_scores.mutable_data_ptr()),
reinterpret_cast<float*>(topk_values.mutable_data_ptr()),
reinterpret_cast<int32_t*>(topk_indices.mutable_data_ptr()),
reinterpret_cast<float*>(scores_with_bias.data_ptr()), num_tokens,
num_experts, n_group, topk_group, topk, renormalize,
routed_scaling_factor, false, stream);
break;
case torch::kBFloat16:
// Handle BFloat16
vllm::moe::invokeNoAuxTc<__nv_bfloat16, int32_t>(
reinterpret_cast<__nv_bfloat16*>(scores.mutable_data_ptr()),
reinterpret_cast<__nv_bfloat16*>(group_scores.mutable_data_ptr()),
reinterpret_cast<__nv_bfloat16*>(topk_values.mutable_data_ptr()),
reinterpret_cast<int32_t*>(topk_indices.mutable_data_ptr()),
reinterpret_cast<__nv_bfloat16*>(scores_with_bias.data_ptr()),
num_tokens, num_experts, n_group, topk_group, topk, renormalize,
routed_scaling_factor, false, stream);
break;
default:
// Handle other data types
throw std::invalid_argument(
"Invalid dtype, only supports float16, float32, and bfloat16");
break;
}
return {topk_values, topk_indices};
}

View File

@ -22,6 +22,11 @@ torch::Tensor moe_wna16_gemm(torch::Tensor input, torch::Tensor output,
torch::Tensor num_tokens_post_pad, int64_t top_k,
int64_t BLOCK_SIZE_M, int64_t BLOCK_SIZE_N,
int64_t BLOCK_SIZE_K, int64_t bit);
std::tuple<torch::Tensor, torch::Tensor> grouped_topk(
torch::Tensor const& scores, torch::Tensor const& scores_with_bias,
int64_t n_group, int64_t topk_group, int64_t topk, bool renormalize,
double routed_scaling_factor);
#endif
bool moe_permute_unpermute_supported();

View File

@ -573,7 +573,7 @@ void topk_softmax(
stream);
}
else {
assert(topk_indices.scalar_type() == at::ScalarType::Int64);
TORCH_CHECK(topk_indices.scalar_type() == at::ScalarType::Long);
vllm::moe::topkGatingSoftmaxKernelLauncher(
gating_output.data_ptr<float>(),
topk_weights.data_ptr<float>(),

View File

@ -78,6 +78,12 @@ TORCH_LIBRARY_EXPAND(TORCH_EXTENSION_NAME, m) {
"output_tensor) -> ()");
m.impl("shuffle_rows", torch::kCUDA, &shuffle_rows);
// Apply grouped topk routing to select experts.
m.def(
"grouped_topk(Tensor scores, Tensor scores_with_bias, int n_group, int "
"topk_group, int topk, bool renormalize, float "
"routed_scaling_factor) -> (Tensor, Tensor)");
m.impl("grouped_topk", torch::kCUDA, &grouped_topk);
#endif
}

View File

@ -92,6 +92,9 @@ void rms_norm(torch::Tensor& out, torch::Tensor& input, torch::Tensor& weight,
void fused_add_rms_norm(torch::Tensor& input, torch::Tensor& residual,
torch::Tensor& weight, double epsilon);
void poly_norm(torch::Tensor& out, torch::Tensor& input, torch::Tensor& weight,
torch::Tensor& bias, double epsilon);
void apply_repetition_penalties_(torch::Tensor& logits,
const torch::Tensor& prompt_mask,
const torch::Tensor& output_mask,
@ -130,6 +133,13 @@ void silu_and_mul(torch::Tensor& out, torch::Tensor& input);
void silu_and_mul_quant(torch::Tensor& out, torch::Tensor& input,
torch::Tensor& scale);
#ifndef USE_ROCM
void silu_and_mul_nvfp4_quant(torch::Tensor& out,
torch::Tensor& output_block_scale,
torch::Tensor& input,
torch::Tensor& input_global_scale);
#endif
void mul_and_silu(torch::Tensor& out, torch::Tensor& input);
void gelu_and_mul(torch::Tensor& out, torch::Tensor& input);

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@ -0,0 +1,424 @@
//
// Based off of:
// https://github.com/NVIDIA/cutlass/blob/main/examples/55_hopper_mixed_dtype_gemm/55_hopper_int4_fp8_gemm.cu
//
#include <ATen/cuda/CUDAContext.h>
#include <c10/cuda/CUDAGuard.h>
#include <torch/all.h>
#include "cutlass_extensions/torch_utils.hpp"
#include "core/registration.h"
#include "cutlass/cutlass.h"
#include <limits>
#include "cute/tensor.hpp"
#include "cutlass/gemm/collective/collective_builder.hpp"
#include "cutlass/epilogue/collective/collective_builder.hpp"
#include "cutlass/gemm/device/gemm_universal_adapter.h"
#include "cutlass/gemm/kernel/gemm_universal.hpp"
#include "cutlass/util/packed_stride.hpp"
#include "cutlass/util/mixed_dtype_utils.hpp"
#include "cutlass_extensions/common.hpp"
#include "cutlass_extensions/epilogue/scaled_mm_epilogues_c3x.hpp"
namespace vllm::cutlass_w4a8 {
using namespace cute;
// -------------------------------------------------------------------------------------
// Static configuration shared across all instantiations
// -------------------------------------------------------------------------------------
using MmaType = cutlass::float_e4m3_t; // A/scale element type
using QuantType = cutlass::int4b_t; // B element type (packed int4)
static int constexpr TileShapeK = 128 * 8 / sizeof_bits<MmaType>::value;
static int constexpr ScalePackSize = 8; // pack 8 scale elements together
static int constexpr PackFactor = 8; // 8 4-bit packed into int32
// A matrix configuration
using ElementA = MmaType; // Element type for A matrix operand
using LayoutA = cutlass::layout::RowMajor; // Layout type for A matrix operand
using LayoutA_Transpose =
typename cutlass::layout::LayoutTranspose<LayoutA>::type;
constexpr int AlignmentA =
128 / cutlass::sizeof_bits<
ElementA>::value; // Memory access granularity/alignment of A
// matrix in units of elements (up to 16 bytes)
using StrideA = cutlass::detail::TagToStrideA_t<LayoutA>;
// B matrix configuration
using ElementB = QuantType; // Element type for B matrix operand
using LayoutB =
cutlass::layout::ColumnMajor; // Layout type for B matrix operand
using LayoutB_Transpose =
typename cutlass::layout::LayoutTranspose<LayoutB>::type;
constexpr int AlignmentB =
128 / cutlass::sizeof_bits<
ElementB>::value; // Memory access granularity/alignment of B
// matrix in units of elements (up to 16 bytes)
using StrideB = cutlass::detail::TagToStrideB_t<LayoutB>;
// Define the CuTe layout for reordered quantized tensor B
// LayoutAtomQuant places values that will be read by the same thread in
// contiguous locations in global memory. It specifies the reordering within a
// single warp's fragment
using LayoutAtomQuant =
decltype(cutlass::compute_memory_reordering_atom<MmaType>());
using LayoutB_Reordered = decltype(cute::tile_to_shape(
LayoutAtomQuant{}, Layout<Shape<int, int, int>, StrideB>{}));
// Group-wise scales
using ElementScale = MmaType;
using LayoutScale = cutlass::layout::RowMajor;
// Per-tok, per-chan scales
using ElementSChannel = float;
// C/D matrix configuration
using ElementC =
cutlass::bfloat16_t; // Element type for C and D matrix operands
using LayoutC =
cutlass::layout::RowMajor; // Layout type for C and D matrix operands
constexpr int AlignmentC =
128 / cutlass::sizeof_bits<
ElementC>::value; // Memory access granularity/alignment of C
// matrix in units of elements (up to 16 bytes)
using ElementD = ElementC;
using LayoutD = LayoutC;
constexpr int AlignmentD = 128 / cutlass::sizeof_bits<ElementD>::value;
// Core kernel configurations
using ElementAccumulator = float; // Element type for internal accumulation
using ElementCompute = float; // Element type for epilogue computation
using ArchTag = cutlass::arch::Sm90; // Tag indicating the minimum SM that
// supports the intended feature
using OperatorClass = cutlass::arch::OpClassTensorOp; // Operator class tag
using KernelSchedule =
cutlass::gemm::KernelTmaWarpSpecializedCooperative; // Kernel to launch
// based on the default
// setting in the
// Collective Builder
using EpilogueSchedule = cutlass::epilogue::TmaWarpSpecializedCooperative;
using EpilogueTileType = cutlass::epilogue::collective::EpilogueTileAuto;
// ----------------------------------------------------------------------------
// Kernel template — Tile/Cluster shapes
// ----------------------------------------------------------------------------
template <class TileShape_MN, class ClusterShape_MNK>
struct W4A8GemmKernel {
using TileShape =
decltype(cute::append(TileShape_MN{}, cute::Int<TileShapeK>{}));
using ClusterShape = ClusterShape_MNK;
// Epilogue per-tok, per-chan scales
using ChTokScalesEpilogue =
typename vllm::c3x::ScaledEpilogue<ElementAccumulator, ElementD,
TileShape>;
using EVTCompute = typename ChTokScalesEpilogue::EVTCompute;
using CollectiveEpilogue =
typename cutlass::epilogue::collective::CollectiveBuilder<
ArchTag, OperatorClass, TileShape, ClusterShape, EpilogueTileType,
ElementAccumulator, ElementSChannel,
// Transpose layout of D here since we use explicit swap + transpose
// the void type for C tells the builder to allocate 0 smem for the C
// matrix. We can enable this if beta == 0 by changing ElementC to
// void below.
ElementC, typename cutlass::layout::LayoutTranspose<LayoutC>::type,
AlignmentC, ElementD,
typename cutlass::layout::LayoutTranspose<LayoutD>::type, AlignmentD,
EpilogueSchedule, // This is the only epi supporting the required
// swap + transpose.
EVTCompute>::CollectiveOp;
// The Scale information must get paired with the operand that will be scaled.
// In this example, B is scaled so we make a tuple of B's information and the
// scale information.
using CollectiveMainloopShuffled =
typename cutlass::gemm::collective::CollectiveBuilder<
ArchTag, OperatorClass,
cute::tuple<ElementB, cutlass::Array<ElementScale, ScalePackSize>>,
LayoutB_Reordered, AlignmentB, ElementA, LayoutA_Transpose,
AlignmentA, ElementAccumulator, TileShape, ClusterShape,
cutlass::gemm::collective::StageCountAutoCarveout<static_cast<int>(
sizeof(typename CollectiveEpilogue::SharedStorage))>,
KernelSchedule>::CollectiveOp;
using GemmKernelShuffled = cutlass::gemm::kernel::GemmUniversal<
Shape<int, int, int, int>, // Indicates ProblemShape
CollectiveMainloopShuffled, CollectiveEpilogue>;
using GemmShuffled =
cutlass::gemm::device::GemmUniversalAdapter<GemmKernelShuffled>;
using StrideC = typename GemmKernelShuffled::StrideC;
using StrideD = typename GemmKernelShuffled::StrideD;
using StrideS = typename CollectiveMainloopShuffled::StrideScale;
static torch::Tensor mm(torch::Tensor const& A,
torch::Tensor const& B, // already packed
torch::Tensor const& group_scales, // already packed
int64_t group_size,
torch::Tensor const& channel_scales,
torch::Tensor const& token_scales,
std::optional<at::ScalarType> const& maybe_out_type) {
// TODO: param validation
int m = A.size(0);
int k = A.size(1);
int n = B.size(1);
// safely cast group_size to int
TORCH_CHECK(group_size > 0 && group_size <= std::numeric_limits<int>::max(),
"group_size out of supported range for int: ", group_size);
int const group_size_int = static_cast<int>(group_size);
// Allocate output
const at::cuda::OptionalCUDAGuard device_guard(device_of(A));
auto device = A.device();
auto stream = at::cuda::getCurrentCUDAStream(device.index());
torch::Tensor D =
torch::empty({m, n}, torch::TensorOptions()
.dtype(equivalent_scalar_type_v<ElementD>)
.device(device));
// prepare arg pointers
auto A_ptr = static_cast<MmaType const*>(A.const_data_ptr());
auto B_ptr = static_cast<QuantType const*>(B.const_data_ptr());
auto D_ptr = static_cast<ElementD*>(D.data_ptr());
// can we avoid hardcode the 8 here
auto S_ptr =
static_cast<cutlass::Array<ElementScale, ScalePackSize> const*>(
group_scales.const_data_ptr());
// runtime layout for B
auto shape_B = cute::make_shape(n, k, 1);
LayoutB_Reordered layout_B_reordered =
cute::tile_to_shape(LayoutAtomQuant{}, shape_B);
// strides
int const scale_k = cutlass::ceil_div(k, group_size_int);
StrideA stride_A =
cutlass::make_cute_packed_stride(StrideA{}, cute::make_shape(m, k, 1));
// Reverse stride here due to swap and transpose
StrideD stride_D =
cutlass::make_cute_packed_stride(StrideD{}, cute::make_shape(n, m, 1));
StrideS stride_S = cutlass::make_cute_packed_stride(
StrideS{}, cute::make_shape(n, scale_k, 1));
// Create a structure of gemm kernel arguments suitable for invoking an
// instance of Gemm auto arguments =
// args_from_options<GemmShuffled>(options);
/// Populates a Gemm::Arguments structure from the given arguments
/// Swap the A and B tensors, as well as problem shapes here.
using Args = typename GemmShuffled::Arguments;
using MainloopArguments = typename GemmKernelShuffled::MainloopArguments;
using EpilogueArguments = typename GemmKernelShuffled::EpilogueArguments;
MainloopArguments mainloop_arguments{
B_ptr, layout_B_reordered, A_ptr, stride_A,
S_ptr, stride_S, group_size_int};
EpilogueArguments epilogue_arguments{
ChTokScalesEpilogue::prepare_args(channel_scales, token_scales),
nullptr,
{}, // no C
D_ptr,
stride_D};
Args arguments{cutlass::gemm::GemmUniversalMode::kGemm,
{n, m, k, 1}, // shape
mainloop_arguments,
epilogue_arguments};
// Workspace
size_t workspace_size = GemmShuffled::get_workspace_size(arguments);
torch::Tensor workspace =
torch::empty(workspace_size,
torch::TensorOptions().dtype(torch::kU8).device(device));
// Run GEMM
GemmShuffled gemm;
CUTLASS_CHECK(gemm.can_implement(arguments));
CUTLASS_CHECK(gemm.initialize(arguments, workspace.data_ptr(), stream));
CUTLASS_CHECK(gemm.run(stream));
return D;
}
};
// ----------------------------------------------------------------------------
// Kernel instantiations and dispatch logic
// ----------------------------------------------------------------------------
using Kernel_256x128_1x1x1 =
W4A8GemmKernel<Shape<_256, _128>, Shape<_1, _1, _1>>;
using Kernel_256x64_1x1x1 = W4A8GemmKernel<Shape<_256, _64>, Shape<_1, _1, _1>>;
using Kernel_256x32_1x1x1 = W4A8GemmKernel<Shape<_256, _32>, Shape<_1, _1, _1>>;
using Kernel_256x16_1x1x1 = W4A8GemmKernel<Shape<_256, _16>, Shape<_1, _1, _1>>;
using Kernel_128x256_2x1x1 =
W4A8GemmKernel<Shape<_128, _256>, Shape<_2, _1, _1>>;
using Kernel_128x256_1x1x1 =
W4A8GemmKernel<Shape<_128, _256>, Shape<_1, _1, _1>>;
using Kernel_128x128_1x1x1 =
W4A8GemmKernel<Shape<_128, _128>, Shape<_1, _1, _1>>;
using Kernel_128x64_1x1x1 = W4A8GemmKernel<Shape<_128, _64>, Shape<_1, _1, _1>>;
using Kernel_128x32_1x1x1 = W4A8GemmKernel<Shape<_128, _32>, Shape<_1, _1, _1>>;
using Kernel_128x16_1x1x1 = W4A8GemmKernel<Shape<_128, _16>, Shape<_1, _1, _1>>;
torch::Tensor mm_dispatch(torch::Tensor const& A,
torch::Tensor const& B, // already packed
torch::Tensor const& group_scales, // already packed
int64_t group_size,
torch::Tensor const& channel_scales,
torch::Tensor const& token_scales,
std::optional<at::ScalarType> const& maybe_out_type,
const std::string& schedule) {
if (schedule == "256x128_1x1x1") {
return Kernel_256x128_1x1x1::mm(A, B, group_scales, group_size,
channel_scales, token_scales,
maybe_out_type);
} else if (schedule == "256x64_1x1x1") {
return Kernel_256x64_1x1x1::mm(A, B, group_scales, group_size,
channel_scales, token_scales,
maybe_out_type);
} else if (schedule == "256x32_1x1x1") {
return Kernel_256x32_1x1x1::mm(A, B, group_scales, group_size,
channel_scales, token_scales,
maybe_out_type);
} else if (schedule == "256x16_1x1x1") {
return Kernel_256x16_1x1x1::mm(A, B, group_scales, group_size,
channel_scales, token_scales,
maybe_out_type);
} else if (schedule == "128x256_2x1x1") {
return Kernel_128x256_2x1x1::mm(A, B, group_scales, group_size,
channel_scales, token_scales,
maybe_out_type);
} else if (schedule == "128x256_1x1x1") {
return Kernel_128x256_1x1x1::mm(A, B, group_scales, group_size,
channel_scales, token_scales,
maybe_out_type);
} else if (schedule == "128x128_1x1x1") {
return Kernel_128x128_1x1x1::mm(A, B, group_scales, group_size,
channel_scales, token_scales,
maybe_out_type);
} else if (schedule == "128x64_1x1x1") {
return Kernel_128x64_1x1x1::mm(A, B, group_scales, group_size,
channel_scales, token_scales,
maybe_out_type);
} else if (schedule == "128x32_1x1x1") {
return Kernel_128x32_1x1x1::mm(A, B, group_scales, group_size,
channel_scales, token_scales,
maybe_out_type);
} else if (schedule == "128x16_1x1x1") {
return Kernel_128x16_1x1x1::mm(A, B, group_scales, group_size,
channel_scales, token_scales,
maybe_out_type);
}
TORCH_CHECK(false, "Unknown W4A8 schedule: ", schedule);
return {};
}
torch::Tensor mm(torch::Tensor const& A,
torch::Tensor const& B, // already packed
torch::Tensor const& group_scales, // already packed
int64_t group_size, torch::Tensor const& channel_scales,
torch::Tensor const& token_scales,
std::optional<at::ScalarType> const& maybe_out_type,
std::optional<std::string> maybe_schedule) {
// requested a specific schedule
if (maybe_schedule) {
return mm_dispatch(A, B, group_scales, group_size, channel_scales,
token_scales, maybe_out_type, *maybe_schedule);
}
std::string schedule;
int M = A.size(0);
int K = A.size(1);
int N = B.size(1);
// heuristic
if (M <= 16) {
schedule = (K == 16384 && N == 18432) ? "256x16_1x1x1" : "128x16_1x1x1";
} else if (M <= 32) {
schedule = (K == 16384 && N == 18432) ? "256x32_1x1x1" : "128x32_1x1x1";
} else if (M <= 64) {
if (K == 16384 && N == 18432)
schedule = "256x64_1x1x1";
else if (N <= 8192 && K <= 8192)
schedule = "128x32_1x1x1";
else
schedule = "128x64_1x1x1";
} else if (M <= 128) {
if (K == 16384 && N == 18432)
schedule = "256x128_1x1x1";
else if (N <= 8192)
schedule = "128x64_1x1x1";
else
schedule = "128x128_1x1x1";
} else if (M <= 256) {
if (N <= 4096)
schedule = "128x64_1x1x1";
else if (N <= 8192)
schedule = "128x128_1x1x1";
else
schedule = "128x256_1x1x1";
} else if (M <= 512 && N <= 4096) {
schedule = "128x128_1x1x1";
} else if (M <= 1024) {
schedule = "128x256_1x1x1";
} else {
schedule = "128x256_2x1x1";
}
return mm_dispatch(A, B, group_scales, group_size, channel_scales,
token_scales, maybe_out_type, schedule);
}
// ----------------------------------------------------------------------------
// Pre-processing utils
// ----------------------------------------------------------------------------
torch::Tensor pack_scale_fp8(torch::Tensor const& scales) {
TORCH_CHECK(scales.dtype() == torch::kFloat8_e4m3fn);
TORCH_CHECK(scales.is_contiguous());
TORCH_CHECK(scales.is_cuda());
auto packed_scales = torch::empty(
{scales.numel() * ScalePackSize},
torch::TensorOptions().dtype(scales.dtype()).device(scales.device()));
auto scales_ptr = static_cast<MmaType const*>(scales.const_data_ptr());
auto packed_scales_ptr =
static_cast<cutlass::Array<ElementScale, ScalePackSize>*>(
packed_scales.data_ptr());
cutlass::pack_scale_fp8(scales_ptr, packed_scales_ptr, scales.numel());
return packed_scales;
}
torch::Tensor encode_and_reorder_int4b(torch::Tensor const& B) {
TORCH_CHECK(B.dtype() == torch::kInt32);
TORCH_CHECK(B.dim() == 2);
torch::Tensor B_packed = torch::empty_like(B);
int k = B.size(0) * PackFactor; // logical k
int n = B.size(1);
auto B_ptr = static_cast<QuantType const*>(B.const_data_ptr());
auto B_packed_ptr = static_cast<QuantType*>(B_packed.data_ptr());
auto shape_B = cute::make_shape(n, k, 1);
auto layout_B = make_layout(shape_B, LayoutRight{}); // row major
LayoutB_Reordered layout_B_reordered =
cute::tile_to_shape(LayoutAtomQuant{}, shape_B);
cutlass::unified_encode_int4b(B_ptr, B_packed_ptr, n * k);
cutlass::reorder_tensor(B_packed_ptr, layout_B, layout_B_reordered);
return B_packed;
}
TORCH_LIBRARY_IMPL_EXPAND(TORCH_EXTENSION_NAME, CUDA, m) {
m.impl("cutlass_w4a8_mm", &mm);
m.impl("cutlass_pack_scale_fp8", &pack_scale_fp8);
m.impl("cutlass_encode_and_reorder_int4b", &encode_and_reorder_int4b);
}
} // namespace vllm::cutlass_w4a8

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@ -14,9 +14,6 @@
#include "cutlass/epilogue/dispatch_policy.hpp"
#include "cutlass/epilogue/collective/collective_builder.hpp"
#include "cutlass_extensions/gemm/dispatch_policy.hpp"
#include "cutlass_extensions/gemm/collective/collective_builder.hpp"
#include "cutlass_gemm_caller.cuh"
namespace vllm {

View File

@ -14,9 +14,6 @@
#include "cutlass/epilogue/dispatch_policy.hpp"
#include "cutlass/epilogue/collective/collective_builder.hpp"
#include "cutlass_extensions/gemm/dispatch_policy.hpp"
#include "cutlass_extensions/gemm/collective/collective_builder.hpp"
#include "cutlass_gemm_caller.cuh"
namespace vllm {

View File

@ -13,27 +13,18 @@
#include "cutlass/epilogue/dispatch_policy.hpp"
#include "cutlass/epilogue/collective/collective_builder.hpp"
#include "cutlass_extensions/gemm/dispatch_policy.hpp"
#include "cutlass_extensions/gemm/collective/collective_builder.hpp"
#include "cutlass_gemm_caller.cuh"
namespace vllm {
using namespace cute;
template <typename SchedulerType, typename OutType, int GroupSizeM_,
int GroupSizeN_, int GroupSizeK_, int TileSizeM_ = 128,
class ClusterShape = Shape<_1, _2, _1>>
// clang-format off
template <class OutType, int ScaleGranularityM,
int ScaleGranularityN, int ScaleGranularityK,
class MmaTileShape, class ClusterShape,
class EpilogueScheduler, class MainloopScheduler>
struct cutlass_3x_gemm_fp8_blockwise {
using GroupSizeM = Int<GroupSizeM_>;
using GroupSizeN = Int<GroupSizeN_>;
using GroupSizeK = Int<GroupSizeK_>;
using TileSizeM = Int<TileSizeM_>;
static_assert(TileSizeM_ % GroupSizeM_ == 0,
"TileSizeM must be a multiple of GroupSizeM");
using ElementAB = cutlass::float_e4m3_t;
using ElementA = ElementAB;
@ -45,52 +36,67 @@ struct cutlass_3x_gemm_fp8_blockwise {
static constexpr int AlignmentB = 128 / cutlass::sizeof_bits<ElementB>::value;
using ElementD = OutType;
using StrideD = Stride<int64_t, Int<1>, Int<0>>;
using LayoutD = cutlass::layout::RowMajor;
static constexpr int AlignmentD = 128 / cutlass::sizeof_bits<ElementD>::value;
using ElementC = void;
using StrideC = StrideD;
using ElementC = void; // TODO: support bias
using LayoutC = LayoutD;
static constexpr int AlignmentC = AlignmentD;
using ElementAccumulator = float;
using ElementBlockScale = float;
using ElementCompute = float;
using ElementBlockScale = float;
using ScaleConfig = cutlass::detail::Sm90BlockwiseScaleConfig<
ScaleGranularityM, ScaleGranularityN, ScaleGranularityK>;
using LayoutSFA = decltype(ScaleConfig::deduce_layoutSFA());
using LayoutSFB = decltype(ScaleConfig::deduce_layoutSFB());
using ArchTag = cutlass::arch::Sm90;
using OperatorClass = cutlass::arch::OpClassTensorOp;
using TileShape = Shape<TileSizeM, GroupSizeN, GroupSizeK>;
using KernelSchedule = cutlass::gemm::
KernelTmaWarpSpecializedCooperativeFP8BlockScaledSubGroupMAccum<
GroupSizeM_>;
using EpilogueSchedule = cutlass::epilogue::TmaWarpSpecializedCooperative;
using EpilogueTileType = cutlass::epilogue::collective::EpilogueTileAuto;
static constexpr auto RoundStyle = cutlass::FloatRoundStyle::round_to_nearest;
using ElementScalar = float;
using DefaultOperation = cutlass::epilogue::fusion::LinearCombination<ElementD, ElementCompute, ElementC, ElementScalar, RoundStyle>;
using CollectiveEpilogue = typename cutlass::epilogue::collective::CollectiveBuilder<
ArchTag,
OperatorClass,
MmaTileShape,
ClusterShape,
cutlass::epilogue::collective::EpilogueTileAuto,
ElementAccumulator,
ElementCompute,
ElementC,
LayoutC,
AlignmentC,
ElementD,
LayoutD,
AlignmentD,
EpilogueScheduler,
DefaultOperation
>::CollectiveOp;
using StoreEpilogueCompute = typename cutlass::epilogue::fusion::Sm90EVT<
cutlass::epilogue::fusion::Sm90AccFetch>;
using CollectiveEpilogue =
typename cutlass::epilogue::collective::CollectiveBuilder<
ArchTag, OperatorClass, TileShape, ClusterShape, EpilogueTileType,
ElementAccumulator, ElementCompute, ElementC, StrideC, AlignmentC,
ElementD, StrideD, AlignmentD, EpilogueSchedule,
StoreEpilogueCompute>::CollectiveOp;
using CollectiveMainloop =
typename cutlass::gemm::collective::CollectiveBuilder<
ArchTag, OperatorClass, ElementA, LayoutA, AlignmentA, ElementB,
LayoutB, AlignmentB, ElementAccumulator, TileShape, ClusterShape,
cutlass::gemm::collective::StageCountAutoCarveout<static_cast<int>(
sizeof(typename CollectiveEpilogue::SharedStorage))>,
KernelSchedule>::CollectiveOp;
using CollectiveMainloop = typename cutlass::gemm::collective::CollectiveBuilder<
ArchTag,
OperatorClass,
ElementA,
cute::tuple<LayoutA, LayoutSFA>,
AlignmentA,
ElementB,
cute::tuple<LayoutB, LayoutSFB>,
AlignmentB,
ElementAccumulator,
MmaTileShape,
ClusterShape,
cutlass::gemm::collective::StageCountAutoCarveout<static_cast<int>(sizeof(typename CollectiveEpilogue::SharedStorage))>,
MainloopScheduler
>::CollectiveOp;
using KernelType = enable_sm90_or_later<cutlass::gemm::kernel::GemmUniversal<
Shape<int, int, int, int>, CollectiveMainloop, CollectiveEpilogue,
SchedulerType>>;
Shape<int, int, int, int>, CollectiveMainloop, CollectiveEpilogue>>;
struct GemmKernel : public KernelType {};
using StrideA = typename GemmKernel::StrideA;
using StrideB = typename GemmKernel::StrideB;
};
template <typename Gemm>
@ -99,76 +105,54 @@ void cutlass_gemm_caller_blockwise(torch::Tensor& out, torch::Tensor const& a,
torch::Tensor const& a_scales,
torch::Tensor const& b_scales) {
using GemmKernel = typename Gemm::GemmKernel;
using StrideA = typename Gemm::GemmKernel::StrideA;
using StrideB = typename Gemm::GemmKernel::StrideB;
using StrideD = typename Gemm::GemmKernel::StrideD;
using StrideC = typename Gemm::GemmKernel::StrideC;
using LayoutSFA = typename Gemm::LayoutSFA;
using LayoutSFB = typename Gemm::LayoutSFB;
using ScaleConfig = typename Gemm::ScaleConfig;
using ElementAB = typename Gemm::ElementAB;
using ElementD = typename Gemm::ElementD;
auto prob_shape = c3x::get_problem_shape(a, b);
int32_t m = get<0>(prob_shape), n = get<1>(prob_shape),
k = get<2>(prob_shape);
int32_t m = a.size(0), n = b.size(1), k = a.size(1);
int64_t lda = a.stride(0);
int64_t ldb = b.stride(1);
int64_t ldc = out.stride(0);
TORCH_CHECK(m % 4 == 0, "m must be divisible by 4");
using StrideA = Stride<int64_t, Int<1>, int64_t>;
using StrideB = Stride<int64_t, Int<1>, int64_t>;
using StrideC = typename Gemm::StrideC;
StrideA a_stride;
StrideB b_stride;
StrideC c_stride;
a_stride =
cutlass::make_cute_packed_stride(StrideA{}, cute::make_shape(m, k, 1));
b_stride =
cutlass::make_cute_packed_stride(StrideB{}, cute::make_shape(n, k, 1));
c_stride =
cutlass::make_cute_packed_stride(StrideC{}, cute::make_shape(m, n, 1));
StrideA a_stride{lda, Int<1>{}, 0};
StrideB b_stride{ldb, Int<1>{}, 0};
StrideC c_stride{ldc, Int<1>{}, Int<0>{}};
LayoutSFA layout_SFA =
ScaleConfig::tile_atom_to_shape_SFA(make_shape(m, n, k, 1));
LayoutSFB layout_SFB =
ScaleConfig::tile_atom_to_shape_SFB(make_shape(m, n, k, 1));
auto a_ptr = static_cast<ElementAB*>(a.data_ptr());
auto b_ptr = static_cast<ElementAB*>(b.data_ptr());
auto a_scales_ptr = static_cast<float*>(a_scales.data_ptr());
auto b_scales_ptr = static_cast<float*>(b_scales.data_ptr());
// Check is the t is contiguous and is 1D or 2D with one of the dimensions
// being 1 (i.e. a row or column vector)
auto is_contiguous_vector = [](const torch::Tensor& t) {
auto t_sizes = t.sizes();
return t.is_contiguous() &&
(t.dim() == 1 ||
(t.dim() == 2 &&
*std::min_element(t_sizes.begin(), t_sizes.end()) == 1));
};
// TODO(lucas): lets clean-up the kernel so that we pass in Strides so
// we don't have to deal with enforcing implicit layouts
TORCH_CHECK(a_scales.size(0) == m / Gemm::GroupSizeM::value);
TORCH_CHECK(a_scales.size(1) == k / Gemm::GroupSizeK::value);
TORCH_CHECK(a_scales.stride(0) == 1 || is_contiguous_vector(a_scales),
"a_scales must be M major");
TORCH_CHECK(b_scales.size(0) == k / Gemm::GroupSizeK::value);
TORCH_CHECK(b_scales.size(1) == n / Gemm::GroupSizeN::value);
TORCH_CHECK(b_scales.stride(0) == 1 || is_contiguous_vector(b_scales),
"b_scales must be K major");
typename GemmKernel::MainloopArguments mainloop_args{
a_ptr, a_stride, b_ptr, b_stride, a_scales_ptr, b_scales_ptr};
auto mainloop_args = [&](){
return typename GemmKernel::MainloopArguments{
a_ptr, a_stride, b_ptr, b_stride,
a_scales_ptr, layout_SFA, b_scales_ptr, layout_SFB
};
}();
auto prob_shape = cute::make_shape(m, n, k, 1);
auto c_ptr = static_cast<ElementD*>(out.data_ptr());
typename GemmKernel::EpilogueArguments epilogue_args{
{}, c_ptr, c_stride, c_ptr, c_stride};
typename GemmKernel::TileSchedulerArguments scheduler;
static constexpr bool UsesStreamKScheduler =
cute::is_same_v<typename GemmKernel::TileSchedulerTag,
cutlass::gemm::StreamKScheduler>;
if constexpr (UsesStreamKScheduler) {
using DecompositionMode = typename cutlass::gemm::kernel::detail::
PersistentTileSchedulerSm90StreamKParams::DecompositionMode;
using ReductionMode = typename cutlass::gemm::kernel::detail::
PersistentTileSchedulerSm90StreamKParams::ReductionMode;
scheduler.decomposition_mode = DecompositionMode::StreamK;
scheduler.reduction_mode = ReductionMode::Nondeterministic;
}
c3x::cutlass_gemm_caller<GemmKernel>(a.device(), prob_shape, mainloop_args,
epilogue_args, scheduler);
epilogue_args);
}
template <typename OutType>
@ -177,18 +161,12 @@ void cutlass_gemm_blockwise_sm90_fp8_dispatch(torch::Tensor& out,
torch::Tensor const& b,
torch::Tensor const& a_scales,
torch::Tensor const& b_scales) {
auto k = a.size(1);
auto n = b.size(1);
if (k > 3 * n) {
cutlass_gemm_caller_blockwise<cutlass_3x_gemm_fp8_blockwise<
cutlass::gemm::StreamKScheduler, OutType, 1, 128, 128>>(
out, a, b, a_scales, b_scales);
} else {
cutlass_gemm_caller_blockwise<cutlass_3x_gemm_fp8_blockwise<
cutlass::gemm::PersistentScheduler, OutType, 1, 128, 128>>(
out, a, b, a_scales, b_scales);
}
// TODO: better heuristics
cutlass_gemm_caller_blockwise<cutlass_3x_gemm_fp8_blockwise<
OutType, 1, 128, 128, Shape<_128, _128, _128>,
Shape<_1, _2, _1>, cutlass::epilogue::TmaWarpSpecializedCooperative,
cutlass::gemm::KernelTmaWarpSpecializedCooperativeFP8BlockScaledAccum>>(
out, a, b, a_scales, b_scales);
}
} // namespace vllm

View File

@ -32,7 +32,7 @@ void dispatch_scaled_mm(torch::Tensor& c, torch::Tensor const& a,
TORCH_CHECK(a_scales.dim() == 2, "a scale must be 2d tensor.");
TORCH_CHECK(b_scales.dim() == 2, "b scale must be 2d tensor.");
int32_t version_num = get_sm_version_num();
if (version_num >= 100) {
if (version_num >= 90) {
TORCH_CHECK(
a.size(0) == a_scales.size(0) &&
cuda_utils::ceil_div(a.size(1), int64_t(128)) == a_scales.size(1),
@ -41,32 +41,6 @@ void dispatch_scaled_mm(torch::Tensor& c, torch::Tensor const& a,
cuda_utils::ceil_div(b.size(0), int64_t(128)) == b_scales.size(0) &&
cuda_utils::ceil_div(b.size(1), int64_t(128)) == b_scales.size(1),
"b_scale_group_shape must be [128, 128].");
} else {
// TODO: Remove this after using cutlass sm90 blockwise scaling gemm
// kernel, or introducing ceil_div to the load_init() of mainloop.
using GroupShape = std::array<int64_t, 2>;
auto make_group_shape = [](torch::Tensor const& x,
torch::Tensor const& s) -> GroupShape {
TORCH_CHECK(s.dim() == 2, "cutlass_scaled_mm group scales must be 2D");
return {cuda_utils::ceil_div(x.size(0), s.size(0)),
cuda_utils::ceil_div(x.size(1), s.size(1))};
};
GroupShape a_scale_group_shape = make_group_shape(a, a_scales);
GroupShape b_scale_group_shape = make_group_shape(b, b_scales);
// 1x128 per-token group scales for activations
// 128x128 blockwise scales for weights
TORCH_CHECK((a_scale_group_shape == GroupShape{1, 128} &&
b_scale_group_shape == GroupShape{128, 128} &&
a.dtype() == torch::kFloat8_e4m3fn &&
b.dtype() == torch::kFloat8_e4m3fn),
"cutlass_scaled_mm only supports datatype float8_e4m3fn.\n"
"a_scale_group_shape must be [1, 128]. Got: [",
a_scale_group_shape[0], ", ", a_scale_group_shape[1],
"]\n"
"b_scale_group_shape must be [128, 128]. Got: [",
b_scale_group_shape[0], ", ", b_scale_group_shape[1], "]");
}
TORCH_CHECK(!bias, "Bias not yet supported blockwise scaled_mm");

View File

@ -0,0 +1,212 @@
/*
* Copyright (c) 2025, NVIDIA CORPORATION. All rights reserved.
*
* Licensed under the Apache License, Version 2.0 (the "License");
* you may not use this file except in compliance with the License.
* You may obtain a copy of the License at
*
* http://www.apache.org/licenses/LICENSE-2.0
*
* Unless required by applicable law or agreed to in writing, software
* distributed under the License is distributed on an "AS IS" BASIS,
* WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
* See the License for the specific language governing permissions and
* limitations under the License.
*/
#include <torch/all.h>
#include <cuda_runtime_api.h>
#include <cuda_runtime.h>
#include <ATen/cuda/CUDAContext.h>
#include <c10/cuda/CUDAGuard.h>
#include <cuda_fp8.h>
#include "dispatch_utils.h"
#include "cuda_utils.h"
#include "nvfp4_utils.cuh"
namespace vllm {
template <class Type>
__inline__ __device__ PackedVec<Type> compute_silu(PackedVec<Type>& vec,
PackedVec<Type>& vec2) {
PackedVec<Type> result;
#pragma unroll
for (int i = 0; i < CVT_FP4_ELTS_PER_THREAD / 2; ++i) {
if constexpr (std::is_same_v<Type, half>) {
half2 val(0.5f, 0.5f);
half2 t0 = __hmul2(vec.elts[i], val);
half2 t1 = __hfma2(h2tanh(t0), val, val);
half2 t2 = __hmul2(vec.elts[i], t1);
result.elts[i] = __hmul2(t2, vec2.elts[i]);
} else {
__nv_bfloat162 val(0.5f, 0.5f);
__nv_bfloat162 t0 = __hmul2(vec.elts[i], val);
__nv_bfloat162 t1 = __hfma2(h2tanh(t0), val, val);
__nv_bfloat162 t2 = __hmul2(vec.elts[i], t1);
result.elts[i] = __hmul2(t2, vec2.elts[i]);
}
}
return result;
}
// Quantizes the provided PackedVec into the uint32_t output
template <class Type, bool UE8M0_SF = false>
__device__ uint32_t silu_and_cvt_warp_fp16_to_fp4(PackedVec<Type>& vec,
PackedVec<Type>& vec2,
float SFScaleVal,
uint8_t* SFout) {
PackedVec<Type> out_silu = compute_silu(vec, vec2);
// Get absolute maximum values among the local 8 values.
auto localMax = __habs2(out_silu.elts[0]);
// Local maximum value.
#pragma unroll
for (int i = 1; i < CVT_FP4_ELTS_PER_THREAD / 2; i++) {
localMax = __hmax2(localMax, __habs2(out_silu.elts[i]));
}
// Get the absolute maximum among all 16 values (two threads).
localMax = __hmax2(__shfl_xor_sync(uint32_t(-1), localMax, 1), localMax);
// Get the final absolute maximum values.
float vecMax = float(__hmax(localMax.x, localMax.y));
// Get the SF (max value of the vector / max value of e2m1).
// maximum value of e2m1 = 6.0.
// TODO: use half as compute data type.
float SFValue = SFScaleVal * (vecMax * reciprocal_approximate_ftz(6.0f));
// 8 bits representation of the SF.
uint8_t fp8SFVal;
// Write the SF to global memory (STG.8).
if constexpr (UE8M0_SF) {
// Extract the 8 exponent bits from float32.
// float 32bits = 1 sign bit + 8 exponent bits + 23 mantissa bits.
uint32_t tmp = reinterpret_cast<uint32_t&>(SFValue) >> 23;
fp8SFVal = tmp & 0xff;
// Convert back to fp32.
reinterpret_cast<uint32_t&>(SFValue) = tmp << 23;
} else {
// Here SFValue is always positive, so E4M3 is the same as UE4M3.
__nv_fp8_e4m3 tmp = __nv_fp8_e4m3(SFValue);
reinterpret_cast<__nv_fp8_e4m3&>(fp8SFVal) = tmp;
// Convert back to fp32.
SFValue = float(tmp);
}
// Get the output scale.
// Recipe: final_scale = reciprocal(fp32(fp8(SFValue * SFScaleVal))) *
// reciprocal(SFScaleVal))
float outputScale =
SFValue != 0 ? reciprocal_approximate_ftz(
SFValue * reciprocal_approximate_ftz(SFScaleVal))
: 0.0f;
if (SFout) {
// Write the SF to global memory (STG.8).
*SFout = fp8SFVal;
}
// Convert the input to float.
float2 fp2Vals[CVT_FP4_ELTS_PER_THREAD / 2];
#pragma unroll
for (int i = 0; i < CVT_FP4_ELTS_PER_THREAD / 2; i++) {
if constexpr (std::is_same_v<Type, half>) {
fp2Vals[i] = __half22float2(out_silu.elts[i]);
} else {
fp2Vals[i] = __bfloat1622float2(out_silu.elts[i]);
}
fp2Vals[i].x *= outputScale;
fp2Vals[i].y *= outputScale;
}
// Convert to e2m1 values.
uint32_t e2m1Vec = fp32_vec_to_e2m1(fp2Vals);
// Write the e2m1 values to global memory.
return e2m1Vec;
}
// Use UE4M3 by default.
template <class Type, bool UE8M0_SF = false>
__global__ void __launch_bounds__(1024, 4)
silu_and_cvt_fp16_to_fp4(int32_t numRows, int32_t numCols, Type const* in,
float const* SFScale, uint32_t* out,
uint32_t* SFout) {
using PackedVec = PackedVec<Type>;
static constexpr int CVT_FP4_NUM_THREADS_PER_SF =
(CVT_FP4_SF_VEC_SIZE / CVT_FP4_ELTS_PER_THREAD);
static_assert(sizeof(PackedVec) == sizeof(Type) * CVT_FP4_ELTS_PER_THREAD,
"Vec size is not matched.");
// Get the global scaling factor, which will be applied to the SF.
// Note SFScale is the same as next GEMM's alpha, which is
// (448.f / (Alpha_A / 6.f)).
float const SFScaleVal = SFScale == nullptr ? 1.0f : SFScale[0];
// Input tensor row/col loops.
for (int rowIdx = blockIdx.x; rowIdx < numRows; rowIdx += gridDim.x) {
for (int colIdx = threadIdx.x; colIdx < numCols / CVT_FP4_ELTS_PER_THREAD;
colIdx += blockDim.x) {
int64_t inOffset =
rowIdx * (numCols * 2 / CVT_FP4_ELTS_PER_THREAD) + colIdx;
int64_t inOffset2 = rowIdx * (numCols * 2 / CVT_FP4_ELTS_PER_THREAD) +
numCols / CVT_FP4_ELTS_PER_THREAD + colIdx;
PackedVec in_vec = reinterpret_cast<PackedVec const*>(in)[inOffset];
PackedVec in_vec2 = reinterpret_cast<PackedVec const*>(in)[inOffset2];
// Get the output tensor offset.
// Same as inOffset because 8 elements are packed into one uint32_t.
int64_t outOffset = rowIdx * (numCols / CVT_FP4_ELTS_PER_THREAD) + colIdx;
;
auto& out_pos = out[outOffset];
auto sf_out =
cvt_quant_to_fp4_get_sf_out_offset<uint32_t,
CVT_FP4_NUM_THREADS_PER_SF>(
rowIdx, colIdx, numCols, SFout);
out_pos = silu_and_cvt_warp_fp16_to_fp4<Type, UE8M0_SF>(
in_vec, in_vec2, SFScaleVal, sf_out);
}
}
}
} // namespace vllm
void silu_and_mul_nvfp4_quant_sm1xxa(torch::Tensor& output, // [..., d]
torch::Tensor& output_sf,
torch::Tensor& input, // [..., 2 * d]
torch::Tensor& input_sf) {
int32_t m = input.size(0);
int32_t n = input.size(1) / 2;
TORCH_CHECK(n % 16 == 0, "The N dimension must be multiple of 16.");
TORCH_CHECK(input.scalar_type() == at::ScalarType::Half ||
input.scalar_type() == at::ScalarType::BFloat16,
"Unsupported input data type for quantize_to_fp4.");
int multiProcessorCount =
get_device_attribute(cudaDevAttrMultiProcessorCount, -1);
auto input_sf_ptr = static_cast<float const*>(input_sf.data_ptr());
auto sf_out = static_cast<int32_t*>(output_sf.data_ptr());
auto output_ptr = static_cast<int64_t*>(output.data_ptr());
const at::cuda::OptionalCUDAGuard device_guard(device_of(input));
auto stream = at::cuda::getCurrentCUDAStream(input.get_device());
dim3 block(std::min(int(n / ELTS_PER_THREAD), 1024));
int const numBlocksPerSM = 2048 / block.x;
dim3 grid(std::min(int(m), multiProcessorCount * numBlocksPerSM));
VLLM_DISPATCH_HALF_TYPES(
input.scalar_type(), "silu_and_mul_nvfp4_quant_kernel", [&] {
using cuda_type = vllm::CUDATypeConverter<scalar_t>::Type;
auto input_ptr = static_cast<cuda_type const*>(input.data_ptr());
vllm::silu_and_cvt_fp16_to_fp4<cuda_type><<<grid, block, 0, stream>>>(
m, n, input_ptr, input_sf_ptr,
reinterpret_cast<uint32_t*>(output_ptr),
reinterpret_cast<uint32_t*>(sf_out));
});
}

View File

@ -1,3 +1,19 @@
/*
* Copyright (c) 2025, NVIDIA CORPORATION. All rights reserved.
*
* Licensed under the Apache License, Version 2.0 (the "License");
* you may not use this file except in compliance with the License.
* You may obtain a copy of the License at
*
* http://www.apache.org/licenses/LICENSE-2.0
*
* Unless required by applicable law or agreed to in writing, software
* distributed under the License is distributed on an "AS IS" BASIS,
* WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
* See the License for the specific language governing permissions and
* limitations under the License.
*/
#include <torch/all.h>
#include <cutlass/arch/arch.h>

View File

@ -1,247 +1,42 @@
/*
* Copyright (c) 2025, NVIDIA CORPORATION. All rights reserved.
*
* Licensed under the Apache License, Version 2.0 (the "License");
* you may not use this file except in compliance with the License.
* You may obtain a copy of the License at
*
* http://www.apache.org/licenses/LICENSE-2.0
*
* Unless required by applicable law or agreed to in writing, software
* distributed under the License is distributed on an "AS IS" BASIS,
* WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
* See the License for the specific language governing permissions and
* limitations under the License.
*/
#include <torch/all.h>
#include <cuda_runtime_api.h>
#include <cuda_runtime.h>
#include <ATen/cuda/CUDAContext.h>
#include <c10/cuda/CUDAGuard.h>
#include <cuda_runtime.h>
#include <cuda_fp8.h>
#include "dispatch_utils.h"
template <typename T>
struct TypeConverter {
using Type = half2;
}; // keep for generality
#include "nvfp4_utils.cuh"
template <>
struct TypeConverter<half2> {
using Type = half;
};
template <>
struct TypeConverter<half> {
using Type = half2;
};
template <>
struct TypeConverter<__nv_bfloat162> {
using Type = __nv_bfloat16;
};
template <>
struct TypeConverter<__nv_bfloat16> {
using Type = __nv_bfloat162;
};
#define ELTS_PER_THREAD 8
constexpr int CVT_FP4_ELTS_PER_THREAD = 8;
constexpr int CVT_FP4_SF_VEC_SIZE = 16;
// Convert 8 float32 values into 8 e2m1 values (represented as one uint32_t).
inline __device__ uint32_t fp32_vec_to_e2m1(float (&array)[8]) {
#if defined(__CUDA_ARCH__) && (__CUDA_ARCH__ >= 1000)
uint32_t val;
asm volatile(
"{\n"
".reg .b8 byte0;\n"
".reg .b8 byte1;\n"
".reg .b8 byte2;\n"
".reg .b8 byte3;\n"
"cvt.rn.satfinite.e2m1x2.f32 byte0, %2, %1;\n"
"cvt.rn.satfinite.e2m1x2.f32 byte1, %4, %3;\n"
"cvt.rn.satfinite.e2m1x2.f32 byte2, %6, %5;\n"
"cvt.rn.satfinite.e2m1x2.f32 byte3, %8, %7;\n"
"mov.b32 %0, {byte0, byte1, byte2, byte3};\n"
"}"
: "=r"(val)
: "f"(array[0]), "f"(array[1]), "f"(array[2]), "f"(array[3]),
"f"(array[4]), "f"(array[5]), "f"(array[6]), "f"(array[7]));
return val;
#else
return 0;
#endif
}
// Convert 4 float2 values into 8 e2m1 values (represented as one uint32_t).
inline __device__ uint32_t fp32_vec_to_e2m1(float2 (&array)[4]) {
#if defined(__CUDA_ARCH__) && (__CUDA_ARCH__ >= 1000)
uint32_t val;
asm volatile(
"{\n"
".reg .b8 byte0;\n"
".reg .b8 byte1;\n"
".reg .b8 byte2;\n"
".reg .b8 byte3;\n"
"cvt.rn.satfinite.e2m1x2.f32 byte0, %2, %1;\n"
"cvt.rn.satfinite.e2m1x2.f32 byte1, %4, %3;\n"
"cvt.rn.satfinite.e2m1x2.f32 byte2, %6, %5;\n"
"cvt.rn.satfinite.e2m1x2.f32 byte3, %8, %7;\n"
"mov.b32 %0, {byte0, byte1, byte2, byte3};\n"
"}"
: "=r"(val)
: "f"(array[0].x), "f"(array[0].y), "f"(array[1].x), "f"(array[1].y),
"f"(array[2].x), "f"(array[2].y), "f"(array[3].x), "f"(array[3].y));
return val;
#else
return 0;
#endif
}
// Fast reciprocal.
inline __device__ float reciprocal_approximate_ftz(float a) {
float b;
asm volatile("rcp.approx.ftz.f32 %0, %1;\n" : "=f"(b) : "f"(a));
return b;
}
template <class SFType, int CVT_FP4_NUM_THREADS_PER_SF>
__device__ uint8_t* cvt_quant_to_fp4_get_sf_out_offset(int rowIdx, int colIdx,
int numCols,
SFType* SFout) {
#if defined(__CUDA_ARCH__) && (__CUDA_ARCH__ >= 1000)
static_assert(CVT_FP4_NUM_THREADS_PER_SF == 1 ||
CVT_FP4_NUM_THREADS_PER_SF == 2);
// One pair of threads write one SF to global memory.
// TODO: stage through smem for packed STG.32
// is it better than STG.8 from 4 threads ?
if (threadIdx.x % CVT_FP4_NUM_THREADS_PER_SF == 0) {
// SF vector index (16 elements share one SF in the K dimension).
int32_t kIdx = colIdx / CVT_FP4_NUM_THREADS_PER_SF;
int32_t mIdx = rowIdx;
// SF layout [numMTiles, numKTiles, 32 (mTile), 4 (mTile), 4(kTile)]
// --> index [mTileIdx, kTileIdx, outerMIdx, innerMIdx, innerKIdx]
int32_t mTileIdx = mIdx / (32 * 4);
// SF vector size 16.
int factor = CVT_FP4_SF_VEC_SIZE * 4;
int32_t numKTiles = (numCols + factor - 1) / factor;
int64_t mTileStride = numKTiles * 32 * 4 * 4;
int32_t kTileIdx = (kIdx / 4);
int64_t kTileStride = 32 * 4 * 4;
// M tile layout [32, 4] is column-major.
int32_t outerMIdx = (mIdx % 32);
int64_t outerMStride = 4 * 4;
int32_t innerMIdx = (mIdx % (32 * 4)) / 32;
int64_t innerMStride = 4;
int32_t innerKIdx = (kIdx % 4);
int64_t innerKStride = 1;
// Compute the global offset.
int64_t SFOffset = mTileIdx * mTileStride + kTileIdx * kTileStride +
outerMIdx * outerMStride + innerMIdx * innerMStride +
innerKIdx * innerKStride;
return reinterpret_cast<uint8_t*>(SFout) + SFOffset;
}
#endif
return nullptr;
}
// Define a 16 bytes packed data type.
template <class Type>
struct PackedVec {
typename TypeConverter<Type>::Type elts[4];
};
template <>
struct PackedVec<__nv_fp8_e4m3> {
__nv_fp8x2_e4m3 elts[8];
};
// Quantizes the provided PackedVec into the uint32_t output
template <class Type, bool UE8M0_SF = false>
__device__ uint32_t cvt_warp_fp16_to_fp4(PackedVec<Type>& vec, float SFScaleVal,
uint8_t* SFout) {
#if defined(__CUDA_ARCH__) && (__CUDA_ARCH__ >= 1000)
// Get absolute maximum values among the local 8 values.
auto localMax = __habs2(vec.elts[0]);
// Local maximum value.
#pragma unroll
for (int i = 1; i < CVT_FP4_ELTS_PER_THREAD / 2; i++) {
localMax = __hmax2(localMax, __habs2(vec.elts[i]));
}
// Get the absolute maximum among all 16 values (two threads).
localMax = __hmax2(__shfl_xor_sync(uint32_t(-1), localMax, 1), localMax);
// Get the final absolute maximum values.
float vecMax = float(__hmax(localMax.x, localMax.y));
// Get the SF (max value of the vector / max value of e2m1).
// maximum value of e2m1 = 6.0.
// TODO: use half as compute data type.
float SFValue = SFScaleVal * (vecMax * reciprocal_approximate_ftz(6.0f));
// 8 bits representation of the SF.
uint8_t fp8SFVal;
// Write the SF to global memory (STG.8).
if constexpr (UE8M0_SF) {
// Extract the 8 exponent bits from float32.
// float 32bits = 1 sign bit + 8 exponent bits + 23 mantissa bits.
uint32_t tmp = reinterpret_cast<uint32_t&>(SFValue) >> 23;
fp8SFVal = tmp & 0xff;
// Convert back to fp32.
reinterpret_cast<uint32_t&>(SFValue) = tmp << 23;
} else {
// Here SFValue is always positive, so E4M3 is the same as UE4M3.
__nv_fp8_e4m3 tmp = __nv_fp8_e4m3(SFValue);
reinterpret_cast<__nv_fp8_e4m3&>(fp8SFVal) = tmp;
// Convert back to fp32.
SFValue = float(tmp);
}
// Get the output scale.
// Recipe: final_scale = reciprocal(fp32(fp8(SFValue * SFScaleVal))) *
// reciprocal(SFScaleVal))
float outputScale =
SFValue != 0 ? reciprocal_approximate_ftz(
SFValue * reciprocal_approximate_ftz(SFScaleVal))
: 0.0f;
if (SFout) {
// Write the SF to global memory (STG.8).
*SFout = fp8SFVal;
}
// Convert the input to float.
float2 fp2Vals[CVT_FP4_ELTS_PER_THREAD / 2];
#pragma unroll
for (int i = 0; i < CVT_FP4_ELTS_PER_THREAD / 2; i++) {
if constexpr (std::is_same_v<Type, half>) {
fp2Vals[i] = __half22float2(vec.elts[i]);
} else {
fp2Vals[i] = __bfloat1622float2(vec.elts[i]);
}
fp2Vals[i].x *= outputScale;
fp2Vals[i].y *= outputScale;
}
// Convert to e2m1 values.
uint32_t e2m1Vec = fp32_vec_to_e2m1(fp2Vals);
// Write the e2m1 values to global memory.
return e2m1Vec;
#else
return 0;
#endif
}
namespace vllm {
// Use UE4M3 by default.
template <class Type, bool UE8M0_SF = false, bool SMALL_NUM_EXPERTS = false>
__global__ void
#if defined(__CUDA_ARCH__) && (__CUDA_ARCH__ >= 1000)
__launch_bounds__(512, 4) cvt_fp16_to_fp4(
#else
cvt_fp16_to_fp4(
#endif
int32_t numRows, int32_t numCols, Type const* in, float const* SFScale,
uint32_t* out, uint32_t* SFout, uint32_t* input_offset_by_experts,
uint32_t* output_scale_offset_by_experts, int n_experts, bool low_latency) {
#if defined(__CUDA_ARCH__) && (__CUDA_ARCH__ >= 1000)
__global__ void __launch_bounds__(512, 4)
cvt_fp16_to_fp4(int32_t numRows, int32_t numCols, Type const* in,
float const* SFScale, uint32_t* out, uint32_t* SFout,
uint32_t* input_offset_by_experts,
uint32_t* output_scale_offset_by_experts, int n_experts,
bool low_latency) {
using PackedVec = PackedVec<Type>;
static constexpr int CVT_FP4_NUM_THREADS_PER_SF =
(CVT_FP4_SF_VEC_SIZE / CVT_FP4_ELTS_PER_THREAD);
@ -299,8 +94,8 @@ cvt_fp16_to_fp4(
&input_offset_by_experts[chunk_start + 12]));
local_offsets[16] = __ldca(&input_offset_by_experts[chunk_start + 16]);
// Check against the 16 loaded offsets
#pragma unroll
// Check against the 16 loaded offsets
#pragma unroll
for (int i = 0; i < 16; i++) {
if (rowIdx >= local_offsets[i] && rowIdx < local_offsets[i + 1]) {
rowIdx_in_expert = rowIdx - local_offsets[i];
@ -330,21 +125,15 @@ cvt_fp16_to_fp4(
out_pos = cvt_warp_fp16_to_fp4<Type, UE8M0_SF>(in_vec, SFScaleVal, sf_out);
}
#endif
}
// Kernel for LARGE_M_TOPK = true (large m_topk optimized version)
template <class Type, bool UE8M0_SF = false, bool SMALL_NUM_EXPERTS = false>
__global__ void
#if defined(__CUDA_ARCH__) && (__CUDA_ARCH__ >= 1000)
__launch_bounds__(1024, 4) cvt_fp16_to_fp4(
#else
cvt_fp16_to_fp4(
#endif
int32_t numRows, int32_t numCols, Type const* in, float const* SFScale,
uint32_t* out, uint32_t* SFout, uint32_t* input_offset_by_experts,
uint32_t* output_scale_offset_by_experts, int n_experts) {
#if defined(__CUDA_ARCH__) && (__CUDA_ARCH__ >= 1000)
__global__ void __launch_bounds__(1024, 4)
cvt_fp16_to_fp4(int32_t numRows, int32_t numCols, Type const* in,
float const* SFScale, uint32_t* out, uint32_t* SFout,
uint32_t* input_offset_by_experts,
uint32_t* output_scale_offset_by_experts, int n_experts) {
using PackedVec = PackedVec<Type>;
static constexpr int CVT_FP4_NUM_THREADS_PER_SF =
(CVT_FP4_SF_VEC_SIZE / CVT_FP4_ELTS_PER_THREAD);
@ -425,7 +214,6 @@ cvt_fp16_to_fp4(
out_pos = cvt_warp_fp16_to_fp4<Type, UE8M0_SF>(in_vec, SFScaleVal, sf_out);
}
#endif
}
template <typename T>
@ -501,6 +289,8 @@ void quant_impl(void* output, void* output_scale, void* input,
}
}
} // namespace vllm
/*Quantization entry for fp4 experts quantization*/
#define CHECK_TH_CUDA(x, m) TORCH_CHECK(x.is_cuda(), m, "must be a CUDA tensor")
#define CHECK_CONTIGUOUS(x, m) \
@ -560,23 +350,17 @@ void scaled_fp4_experts_quant_sm100a(
// 4 means 4 fp8 values are packed into one int32
TORCH_CHECK(output_scale.size(1) * 4 == padded_k);
auto in_dtype = input.dtype();
const at::cuda::OptionalCUDAGuard device_guard(device_of(input));
const cudaStream_t stream =
at::cuda::getCurrentCUDAStream(input.get_device());
if (in_dtype == at::ScalarType::Half) {
quant_impl<half>(output.data_ptr(), output_scale.data_ptr(),
input.data_ptr(), input_global_scale.data_ptr(),
input_offset_by_experts.data_ptr(),
output_scale_offset_by_experts.data_ptr(), m_topk, k,
n_experts, stream);
} else if (in_dtype == at::ScalarType::BFloat16) {
quant_impl<__nv_bfloat16>(output.data_ptr(), output_scale.data_ptr(),
input.data_ptr(), input_global_scale.data_ptr(),
input_offset_by_experts.data_ptr(),
output_scale_offset_by_experts.data_ptr(), m_topk,
k, n_experts, stream);
} else {
TORCH_CHECK(false, "Expected input data type to be half or bfloat16");
}
VLLM_DISPATCH_HALF_TYPES(
input.scalar_type(), "nvfp4_experts_quant_kernel", [&] {
using cuda_type = vllm::CUDATypeConverter<scalar_t>::Type;
vllm::quant_impl<cuda_type>(
output.data_ptr(), output_scale.data_ptr(), input.data_ptr(),
input_global_scale.data_ptr(), input_offset_by_experts.data_ptr(),
output_scale_offset_by_experts.data_ptr(), m_topk, k, n_experts,
stream);
});
}

View File

@ -32,6 +32,14 @@ void scaled_fp4_experts_quant_sm100a(
torch::Tensor const& output_scale_offset_by_experts);
#endif
#if (defined(ENABLE_NVFP4_SM100) && ENABLE_NVFP4_SM100) || \
(defined(ENABLE_NVFP4_SM120) && ENABLE_NVFP4_SM120)
void silu_and_mul_nvfp4_quant_sm1xxa(torch::Tensor& output,
torch::Tensor& output_sf,
torch::Tensor& input,
torch::Tensor& input_sf);
#endif
void scaled_fp4_quant(torch::Tensor& output, torch::Tensor const& input,
torch::Tensor& output_sf, torch::Tensor const& input_sf) {
#if (defined(ENABLE_NVFP4_SM100) && ENABLE_NVFP4_SM100) || \
@ -54,3 +62,13 @@ void scaled_fp4_experts_quant(
TORCH_CHECK_NOT_IMPLEMENTED(false,
"No compiled nvfp4 experts quantization kernel");
}
void silu_and_mul_nvfp4_quant(torch::Tensor& output, torch::Tensor& output_sf,
torch::Tensor& input, torch::Tensor& input_sf) {
#if (defined(ENABLE_NVFP4_SM100) && ENABLE_NVFP4_SM100) || \
(defined(ENABLE_NVFP4_SM120) && ENABLE_NVFP4_SM120)
return silu_and_mul_nvfp4_quant_sm1xxa(output, output_sf, input, input_sf);
#endif
TORCH_CHECK_NOT_IMPLEMENTED(
false, "No compiled silu_and_mul nvfp4 quantization kernel");
}

View File

@ -23,245 +23,18 @@
#include <c10/cuda/CUDAGuard.h>
#include <cuda_fp8.h>
#include "dispatch_utils.h"
#include "cuda_utils.h"
#include "nvfp4_utils.cuh"
// Get type2 from type or vice versa (applied to half and bfloat16)
template <typename T>
struct TypeConverter {
using Type = half2;
}; // keep for generality
template <>
struct TypeConverter<half2> {
using Type = half;
};
template <>
struct TypeConverter<half> {
using Type = half2;
};
template <>
struct TypeConverter<__nv_bfloat162> {
using Type = __nv_bfloat16;
};
template <>
struct TypeConverter<__nv_bfloat16> {
using Type = __nv_bfloat162;
};
#define ELTS_PER_THREAD 8
constexpr int CVT_FP4_ELTS_PER_THREAD = 8;
constexpr int CVT_FP4_SF_VEC_SIZE = 16;
// Convert 8 float32 values into 8 e2m1 values (represented as one uint32_t).
inline __device__ uint32_t fp32_vec_to_e2m1(float (&array)[8]) {
#if defined(__CUDA_ARCH__) && (__CUDA_ARCH__ >= 1000)
uint32_t val;
asm volatile(
"{\n"
".reg .b8 byte0;\n"
".reg .b8 byte1;\n"
".reg .b8 byte2;\n"
".reg .b8 byte3;\n"
"cvt.rn.satfinite.e2m1x2.f32 byte0, %2, %1;\n"
"cvt.rn.satfinite.e2m1x2.f32 byte1, %4, %3;\n"
"cvt.rn.satfinite.e2m1x2.f32 byte2, %6, %5;\n"
"cvt.rn.satfinite.e2m1x2.f32 byte3, %8, %7;\n"
"mov.b32 %0, {byte0, byte1, byte2, byte3};\n"
"}"
: "=r"(val)
: "f"(array[0]), "f"(array[1]), "f"(array[2]), "f"(array[3]),
"f"(array[4]), "f"(array[5]), "f"(array[6]), "f"(array[7]));
return val;
#else
return 0;
#endif
}
// Convert 4 float2 values into 8 e2m1 values (represented as one uint32_t).
inline __device__ uint32_t fp32_vec_to_e2m1(float2 (&array)[4]) {
#if defined(__CUDA_ARCH__) && (__CUDA_ARCH__ >= 1000)
uint32_t val;
asm volatile(
"{\n"
".reg .b8 byte0;\n"
".reg .b8 byte1;\n"
".reg .b8 byte2;\n"
".reg .b8 byte3;\n"
"cvt.rn.satfinite.e2m1x2.f32 byte0, %2, %1;\n"
"cvt.rn.satfinite.e2m1x2.f32 byte1, %4, %3;\n"
"cvt.rn.satfinite.e2m1x2.f32 byte2, %6, %5;\n"
"cvt.rn.satfinite.e2m1x2.f32 byte3, %8, %7;\n"
"mov.b32 %0, {byte0, byte1, byte2, byte3};\n"
"}"
: "=r"(val)
: "f"(array[0].x), "f"(array[0].y), "f"(array[1].x), "f"(array[1].y),
"f"(array[2].x), "f"(array[2].y), "f"(array[3].x), "f"(array[3].y));
return val;
#else
return 0;
#endif
}
// Fast reciprocal.
inline __device__ float reciprocal_approximate_ftz(float a) {
float b;
asm volatile("rcp.approx.ftz.f32 %0, %1;\n" : "=f"(b) : "f"(a));
return b;
}
template <class SFType, int CVT_FP4_NUM_THREADS_PER_SF>
__device__ uint8_t* cvt_quant_to_fp4_get_sf_out_offset(int rowIdx, int colIdx,
int numCols,
SFType* SFout) {
#if defined(__CUDA_ARCH__) && (__CUDA_ARCH__ >= 1000)
static_assert(CVT_FP4_NUM_THREADS_PER_SF == 1 ||
CVT_FP4_NUM_THREADS_PER_SF == 2);
// One pair of threads write one SF to global memory.
// TODO: stage through smem for packed STG.32
// is it better than STG.8 from 4 threads ?
if (threadIdx.x % CVT_FP4_NUM_THREADS_PER_SF == 0) {
// SF vector index (16 elements share one SF in the K dimension).
int32_t kIdx = colIdx / CVT_FP4_NUM_THREADS_PER_SF;
int32_t mIdx = rowIdx;
// SF layout [numMTiles, numKTiles, 32 (mTile), 4 (mTile), 4(kTile)]
// --> index [mTileIdx, kTileIdx, outerMIdx, innerMIdx, innerKIdx]
int32_t mTileIdx = mIdx / (32 * 4);
// SF vector size 16.
int factor = CVT_FP4_SF_VEC_SIZE * 4;
int32_t numKTiles = (numCols + factor - 1) / factor;
int64_t mTileStride = numKTiles * 32 * 4 * 4;
int32_t kTileIdx = (kIdx / 4);
int64_t kTileStride = 32 * 4 * 4;
// M tile layout [32, 4] is column-major.
int32_t outerMIdx = (mIdx % 32);
int64_t outerMStride = 4 * 4;
int32_t innerMIdx = (mIdx % (32 * 4)) / 32;
int64_t innerMStride = 4;
int32_t innerKIdx = (kIdx % 4);
int64_t innerKStride = 1;
// Compute the global offset.
int64_t SFOffset = mTileIdx * mTileStride + kTileIdx * kTileStride +
outerMIdx * outerMStride + innerMIdx * innerMStride +
innerKIdx * innerKStride;
return reinterpret_cast<uint8_t*>(SFout) + SFOffset;
}
#endif
return nullptr;
}
// Define a 16 bytes packed data type.
template <class Type>
struct PackedVec {
typename TypeConverter<Type>::Type elts[4];
};
template <>
struct PackedVec<__nv_fp8_e4m3> {
__nv_fp8x2_e4m3 elts[8];
};
// Quantizes the provided PackedVec into the uint32_t output
template <class Type, bool UE8M0_SF = false>
__device__ uint32_t cvt_warp_fp16_to_fp4(PackedVec<Type>& vec, float SFScaleVal,
uint8_t* SFout) {
#if defined(__CUDA_ARCH__) && (__CUDA_ARCH__ >= 1000)
// Get absolute maximum values among the local 8 values.
auto localMax = __habs2(vec.elts[0]);
// Local maximum value.
#pragma unroll
for (int i = 1; i < CVT_FP4_ELTS_PER_THREAD / 2; i++) {
localMax = __hmax2(localMax, __habs2(vec.elts[i]));
}
// Get the absolute maximum among all 16 values (two threads).
localMax = __hmax2(__shfl_xor_sync(uint32_t(-1), localMax, 1), localMax);
// Get the final absolute maximum values.
float vecMax = float(__hmax(localMax.x, localMax.y));
// Get the SF (max value of the vector / max value of e2m1).
// maximum value of e2m1 = 6.0.
// TODO: use half as compute data type.
float SFValue = SFScaleVal * (vecMax * reciprocal_approximate_ftz(6.0f));
// 8 bits representation of the SF.
uint8_t fp8SFVal;
// Write the SF to global memory (STG.8).
if constexpr (UE8M0_SF) {
// Extract the 8 exponent bits from float32.
// float 32bits = 1 sign bit + 8 exponent bits + 23 mantissa bits.
uint32_t tmp = reinterpret_cast<uint32_t&>(SFValue) >> 23;
fp8SFVal = tmp & 0xff;
// Convert back to fp32.
reinterpret_cast<uint32_t&>(SFValue) = tmp << 23;
} else {
// Here SFValue is always positive, so E4M3 is the same as UE4M3.
__nv_fp8_e4m3 tmp = __nv_fp8_e4m3(SFValue);
reinterpret_cast<__nv_fp8_e4m3&>(fp8SFVal) = tmp;
// Convert back to fp32.
SFValue = float(tmp);
}
// Get the output scale.
// Recipe: final_scale = reciprocal(fp32(fp8(SFValue * SFScaleVal))) *
// reciprocal(SFScaleVal))
float outputScale =
SFValue != 0 ? reciprocal_approximate_ftz(
SFValue * reciprocal_approximate_ftz(SFScaleVal))
: 0.0f;
if (SFout) {
// Write the SF to global memory (STG.8).
*SFout = fp8SFVal;
}
// Convert the input to float.
float2 fp2Vals[CVT_FP4_ELTS_PER_THREAD / 2];
#pragma unroll
for (int i = 0; i < CVT_FP4_ELTS_PER_THREAD / 2; i++) {
if constexpr (std::is_same_v<Type, half>) {
fp2Vals[i] = __half22float2(vec.elts[i]);
} else {
fp2Vals[i] = __bfloat1622float2(vec.elts[i]);
}
fp2Vals[i].x *= outputScale;
fp2Vals[i].y *= outputScale;
}
// Convert to e2m1 values.
uint32_t e2m1Vec = fp32_vec_to_e2m1(fp2Vals);
// Write the e2m1 values to global memory.
return e2m1Vec;
#else
return 0;
#endif
}
namespace vllm {
// Use UE4M3 by default.
template <class Type, bool UE8M0_SF = false>
__global__ void
#if defined(__CUDA_ARCH__) && (__CUDA_ARCH__ >= 1000)
__launch_bounds__(512, 4) cvt_fp16_to_fp4(
#else
cvt_fp16_to_fp4(
#endif
int32_t numRows, int32_t numCols, Type const* in, float const* SFScale,
uint32_t* out, uint32_t* SFout) {
#if defined(__CUDA_ARCH__) && (__CUDA_ARCH__ >= 1000)
__global__ void __launch_bounds__(512, 4)
cvt_fp16_to_fp4(int32_t numRows, int32_t numCols, Type const* in,
float const* SFScale, uint32_t* out, uint32_t* SFout) {
using PackedVec = PackedVec<Type>;
static constexpr int CVT_FP4_NUM_THREADS_PER_SF =
(CVT_FP4_SF_VEC_SIZE / CVT_FP4_ELTS_PER_THREAD);
@ -293,7 +66,6 @@ cvt_fp16_to_fp4(
cvt_warp_fp16_to_fp4<Type, UE8M0_SF>(in_vec, SFScaleVal, sf_out);
}
}
#endif
}
template <typename T>
@ -332,6 +104,8 @@ template void invokeFP4Quantization(int m, int n, __nv_bfloat16 const* input,
int multiProcessorCount,
cudaStream_t stream);
} // namespace vllm
void scaled_fp4_quant_sm1xxa(torch::Tensor const& output,
torch::Tensor const& input,
torch::Tensor const& output_sf,
@ -340,6 +114,9 @@ void scaled_fp4_quant_sm1xxa(torch::Tensor const& output,
int32_t n = input.size(1);
TORCH_CHECK(n % 16 == 0, "The N dimension must be multiple of 16.");
TORCH_CHECK(input.scalar_type() == at::ScalarType::Half ||
input.scalar_type() == at::ScalarType::BFloat16,
"Unsupported input data type for quantize_to_fp4.");
int multiProcessorCount =
get_device_attribute(cudaDevAttrMultiProcessorCount, -1);
@ -353,24 +130,10 @@ void scaled_fp4_quant_sm1xxa(torch::Tensor const& output,
// We don't support e8m0 scales at this moment.
bool useUE8M0 = false;
switch (input.scalar_type()) {
case torch::kHalf: {
auto input_ptr = reinterpret_cast<half const*>(input.data_ptr());
invokeFP4Quantization(m, n, input_ptr, input_sf_ptr, output_ptr, sf_out,
useUE8M0, multiProcessorCount, stream);
break;
}
case torch::kBFloat16: {
auto input_ptr = reinterpret_cast<__nv_bfloat16 const*>(input.data_ptr());
invokeFP4Quantization(m, n, input_ptr, input_sf_ptr, output_ptr, sf_out,
useUE8M0, multiProcessorCount, stream);
break;
}
default: {
std::cerr << "Observing: " << input.scalar_type()
<< " for the input datatype which is invalid";
throw std::runtime_error(
"Unsupported input data type for quantize_to_fp4.");
}
}
VLLM_DISPATCH_HALF_TYPES(input.scalar_type(), "nvfp4_quant_kernel", [&] {
using cuda_type = vllm::CUDATypeConverter<scalar_t>::Type;
auto input_ptr = static_cast<cuda_type const*>(input.data_ptr());
vllm::invokeFP4Quantization(m, n, input_ptr, input_sf_ptr, output_ptr,
sf_out, useUE8M0, multiProcessorCount, stream);
});
}

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