* Correctly fix init
Co-authored-by: BUI Van Tuan <buivantuan07@gmail.com>
* add back the block, breaking BC but this is correct author's code
* override the test for params needing it
---------
Co-authored-by: BUI Van Tuan <buivantuan07@gmail.com>
* No more Tuple, List, Dict
* make fixup
* More style fixes
* Docstring fixes with regex replacement
* Trigger tests
* Redo fixes after rebase
* Fix copies
* [test all]
* update
* [test all]
* update
* [test all]
* make style after rebase
* Patch the hf_argparser test
* Patch the hf_argparser test
* style fixes
* style fixes
* style fixes
* Fix docstrings in Cohere test
* [test all]
---------
Co-authored-by: ydshieh <ydshieh@users.noreply.github.com>
* Moved the sources to the right
* small Changes
* Some Changes to moonshine
* Added the install to pipline
* updated the monshine model card
* Update docs/source/en/model_doc/moonshine.md
Co-authored-by: Steven Liu <59462357+stevhliu@users.noreply.github.com>
* Update docs/source/en/model_doc/moonshine.md
Co-authored-by: Steven Liu <59462357+stevhliu@users.noreply.github.com>
* Update docs/source/en/model_doc/moonshine.md
Co-authored-by: Steven Liu <59462357+stevhliu@users.noreply.github.com>
* Update docs/source/en/model_doc/moonshine.md
Co-authored-by: Steven Liu <59462357+stevhliu@users.noreply.github.com>
* Updated Documentation According to changes
* Fixed the model with the commits
* Changes to the roc_bert
* Final Update to the branch
* Adds Quantizaiton to the model
* Finsihed Fixing the Roc_bert docs
* Fixed Moshi
* Fixed Problems
* Fixed Problems
* Fixed Problems
* Fixed Problems
* Fixed Problems
* Fixed Problems
* Added the install to pipline
* updated the monshine model card
* Update docs/source/en/model_doc/moonshine.md
Co-authored-by: Steven Liu <59462357+stevhliu@users.noreply.github.com>
* Update docs/source/en/model_doc/moonshine.md
Co-authored-by: Steven Liu <59462357+stevhliu@users.noreply.github.com>
* Update docs/source/en/model_doc/moonshine.md
Co-authored-by: Steven Liu <59462357+stevhliu@users.noreply.github.com>
* Updated Documentation According to changes
* Fixed the model with the commits
* Fixed the problems
* Final Fix
* Final Fix
* Final Fix
* Update roc_bert.md
---------
Co-authored-by: Your Name <sohamprabhu@Mac.fios-router.home>
Co-authored-by: Your Name <sohamprabhu@Sohams-MacBook-Air.local>
Co-authored-by: Steven Liu <59462357+stevhliu@users.noreply.github.com>
* init
* chore: various changes to LightGlue
* chore: various changes to LightGlue
* chore: various changes to LightGlue
* chore: various changes to LightGlue
* Fixed dynamo bug and image padding tests
* refactor: applied refactoring changes from SuperGlue's concat, batch and stack functions to LightGlue file
* tests: removed sdpa support and changed expected values
* chore: added some docs and refactoring
* chore: fixed copy to superpoint.image_processing_superpoint.convert_to_grayscale
* feat: adding batch implementation
* feat: added validation for preprocess and post process method to LightGlueImageProcessor
* chore: changed convert_lightglue_to_hf script to comply with new standard
* chore: changed lightglue test values to match new lightglue config pushed to hub
* chore: simplified convert_lightglue_to_hf conversion map
* feat: adding batching implementation
* chore: make style
* feat: added threshold to post_process_keypoint_matching method
* fix: added missing instructions that turns keypoints back to absolute coordinate before matching forward
* fix: added typehint and docs
* chore: make style
* [run-slow] lightglue
* fix: add matches different from -1 to compute valid matches in post_process_keypoint_matching
* tests: added CUDA proof tests similar to SuperGlue
* chore: various changes to modeling_lightglue.py
- Added "Copies from" statements for copied functions from modeling_superglue.py
- Added missing docstrings
- Removed unused functions or classes
- Removed unnecessary statements
- Added missing typehints
- Added comments to the main forward method
* chore: various changes to convert_lightglue_to_hf.py
- Added model saving
- Added model reloading
* chore: fixed imports in lightglue files
* [run-slow] lightglue
* chore: make style
* [run-slow] lightglue
* Apply suggestions from code review
Co-authored-by: Pavel Iakubovskii <qubvel@gmail.com>
* [run-slow] lightglue
* chore: Applied some suggestions from review
- Added missing typehints
- Refactor "cuda" to device variable
- Variable renaming
- LightGlue output order changed
- Make style
* fix: added missing grayscale argument in image processor in case use of SuperPoint keypoint detector
* fix: changed lightglue HF repo to lightglue_superpoint with grayscale default to True
* refactor: make keypoints `(batch_size, num_keypoints, keypoint_dim)` through forward and unsqueeze only before attention layer
* refactor: refactor do_layer_keypoint_pruning
* tests: added tests with no early stop and keypoint pruning
* refactor: various refactoring to modeling_lightglue.py
- Removed unused functions
- Renamed variables for consistency
- Added comments for clarity
- Set methods to private in LightGlueForKeypointMatching
- Replaced tensor initialization to list then concatenation
- Used more pythonic list comprehension for repetitive instructions
* refactor: added comments and renamed filter_matches to get_matches_from_scores
* tests: added copied from statement with superglue tests
* docs: added comment to prepare_keypoint_matching_output function in tests
* [run-slow] lightglue
* refactor: reordered _concat_early_stopped_outputs in LightGlue class
* [run-slow] lightglue
* docs: added lightglue.md model doc
* docs: added Optional typehint to LightGlueKeypointMatchingOutput
* chore: removed pad_images function
* chore: set do_grayscale default value to True in LightGlueImageProcessor
* Apply suggestions from code review
Co-authored-by: Pavel Iakubovskii <qubvel@gmail.com>
* Apply suggestions from code review
Co-authored-by: Pavel Iakubovskii <qubvel@gmail.com>
* docs: added missing LightGlueConfig typehint in nn.Module __init__ methods
* docs: removed unnecessary code in docs
* docs: import SuperPointConfig only from a TYPE_CHECKING context
* chore: use PretrainedConfig arguments `num_hidden_layers` and `num_attention_heads` instead of `num_layers` and `num_heads`
* chore: added organization as arg in convert_lightglue_to_hf.py script
* refactor: set device variable
* chore: added "gelu" in LightGlueConfig as hidden_act parameter
* docs: added comments to reshape.flip.reshape instruction to perform cross attention
* refactor: used batched inference for keypoint detector forward pass
* fix: added fix for SDPA tests
* docs: fixed docstring for LightGlueImageProcessor
* [run-slow] lightglue
* refactor: removed unused line
* refactor: added missing arguments in LightGlueConfig init method
* docs: added missing LightGlueConfig typehint in init methods
* refactor: added checkpoint url as default variable to verify models output only if it is the default url
* fix: moved print message inside if statement
* fix: added log assignment r removal in convert script
* fix: got rid of confidence_thresholds as registered buffers
* refactor: applied suggestions from SuperGlue PR
* docs: changed copyright to 2025
* refactor: modular LightGlue
* fix: removed unnecessary import
* feat: added plot_keypoint_matching method to LightGlueImageProcessor with matplotlib soft dependency
* fix: added missing import error for matplotlib
* Updated convert script to push on ETH org
* fix: added missing licence
* fix: make fix-copies
* refactor: use cohere apply_rotary_pos_emb function
* fix: update model references to use ETH-CVG/lightglue_superpoint
* refactor: add and use intermediate_size attribute in config to inherit CLIPMLP for LightGlueMLP
* refactor: explicit variables instead of slicing
* refactor: use can_return_tuple decorator in LightGlue model
* fix: make fix-copies
* docs: Update model references in `lightglue.md` to use the correct pretrained model from ETH-CVG
* Refactor LightGlue configuration and processing classes
- Updated type hints for `keypoint_detector_config` in `LightGlueConfig` to use `SuperPointConfig` directly.
- Changed `size` parameter in `LightGlueImageProcessor` to be optional.
- Modified `position_embeddings` in `LightGlueAttention` and `LightGlueAttentionBlock` to be optional tuples.
- Cleaned up import statements across multiple files for better readability and consistency.
* refactor: Update LightGlue configuration to enforce eager attention implementation
- Added `attn_implementation="eager"` to `keypoint_detector_config` in `LightGlueConfig` and `LightGlueAttention` classes.
- Removed unnecessary logging related to attention implementation fallback.
- Cleaned up import statements for better readability.
* refactor: renamed message into attention_output
* fix: ensure device compatibility in LightGlueMatchAssignmentLayer descriptor normalization
- Updated the normalization of `m_descriptors` to use the correct device for the tensor, ensuring compatibility across different hardware setups.
* refactor: removed Conv layers from init_weights since LightGlue doesn't have any
* refactor: replace add_start_docstrings with auto_docstring in LightGlue models
- Updated LightGlue model classes to utilize the new auto_docstring utility for automatic documentation generation.
- Removed legacy docstring handling to streamline the code and improve maintainability.
* refactor: simplify LightGlue image processing tests by inheriting from SuperGlue
- Refactored `LightGlueImageProcessingTester` and `LightGlueImageProcessingTest` to inherit from their SuperGlue counterparts, reducing code duplication.
- Removed redundant methods and properties, streamlining the test setup and improving maintainability.
* test: forced eager attention implementation to LightGlue model tests
- Updated `LightGlueModelTester` to include `attn_implementation="eager"` in the model configuration.
- This change aligns the test setup with the recent updates in LightGlue configuration for eager attention.
* refactor: update LightGlue model references
* fix: import error
* test: enhance LightGlue image processing tests with setup method
- Added a setup method in `LightGlueImageProcessingTest` to initialize `LightGlueImageProcessingTester`.
- Included a docstring for `LightGlueImageProcessingTester` to clarify its purpose.
* refactor: added LightGlue image processing implementation to modular file
* refactor: moved attention blocks into the transformer layer
* fix: added missing import
* fix: added missing import in __all__ variable
* doc: added comment about enforcing eager attention because of SuperPoint
* refactor: added SuperPoint eager attention comment and moved functions to the closest they are used
---------
Co-authored-by: Steven Bucaille <steven.bucaille@buawei.com>
Co-authored-by: Pavel Iakubovskii <qubvel@gmail.com>
Earlier PR put executorch specific sdpa and mask function in the export function. This prevent any customization that can be done to sdpa, prior to export. By moving this to __init__, we still keep the original behavior but allow users like optimum-executorch to override sdpa by setting model.config._attn_implementation.
* fixing the problem align_to_words=True leading to duplicate solutions
* adding tests
* some fixes
* some fixes
* changing the handle_duplicate_answers=False by default
* some fixese
* some fixes
* make the duplicate handling the default behaviour and merge duplicates
* make the duplicate handling the default behaviour
* adding model and conversion scripts
* add imports to test vjepa conversion
* fix imports and make conversion work
* fix computation for short side
* replace attention with library attention function
* cleanup more attention classes
* remove config overrides
* add test cases, fix some of the failing ones
* fix the model outputs
* fix outputs of the model per review
* fix too big model test case
* fix styling __init__.py
* fix initialization test
* remove all asserts per review
* update sorting unsorting logic as per feedback
* remove is_video per review
* remove another is_video segment
* remove unwanted stuff
* small fixes
* add docstrings for the model
* revert adding vjepa2 config here
* update styling
* add config docstrings (wip)
* fix dpr issue
* removed test failing issues
* update styles
* merge predictor configs into main config
* remove processing code, add video processor
* remove permute which is not necessary now
* fix styles
* updated vjepa2 to be in video_processing_auto
* update comment for preprocessing
* test integration test and fix the outputs
* update test values, change test to look at repeated frames for a given image
* add a simple video processing test
* refactoring pixel_values_videos and upload ckpts to original
* fix torch_fx test cases
* remove unused config
* add all config docstrings
* add more integration tests
* add basic doc
* revert unwanted styling changes
* working make fixup
* Fix model_type in config
* Add ForVideoClassification model
* update attention implementation to fit new hf standards
* fix the preprocessing logic, ensure it matches the original model
* remove use_rope logic, cleanup
* fix docstrings
* Further cleanup, update doc
* Fix model prefix
* fix get_vision_features
* VJEPA2Embeddings style refactor
* nit, style comment
* change modules default values
* Only `str` activation in config
* GradientCheckpointingLayer
* fixup
* fix conversion script
* Remove return_dict
* remove None return typehint
* Refactor VJEPA2Layer, remove use_SiLU
* Fix fx tests
* dpr -> drop_path_rates
* move *ModelOutput on top
* format docs bit
* update docs
* update docs
* update doc example
* remove prune_heads from model
* remove unused config params
* refactor embed signature
* Add vjepa to docs
* Fix config docstring
* attention head
* update defaults
* Update docs/source/en/model_doc/vjepa2.md
Co-authored-by: Pedro Cuenca <pedro@huggingface.co>
* Update docs/source/en/model_doc/vjepa2.md
Co-authored-by: Pedro Cuenca <pedro@huggingface.co>
* Fix import
* Min refactoring
* Update HUB_SOURCE and HUB_REPO in conversion script
* Add missing headers
* VJEPA -> V-JEPA in docs
* Add image to doc
* fix style
* fix init weights
* change checkpoint name in modeling tests
* Initial cls head setup
* remove rop attention from head (not needed)
* remove swigluffn - not needed
* Add siglip layer
* Replace with siglip layer
* Rename Siglip - VJEPA2
* remove unused modules
* remove siglip mlp
* nit
* remove MLP
* Refactor head cross attention
* refactor VJEPA2HeadCrossAttentionLayer
* nit renaming
* fixup
* remove commented code
* Add cls head params to config
* depth from config
* move pooler + classifier to the model
* Update for cls model signature
* move layers, rename a bit
* fix docs
* update weights init
* remove typehint for init
* add to auto-mapping
* enable tests
* Add conversion script
* fixup
* add to docs
* fix docs
* nit
* refactor for mapping
* clean
* Add integration test
* Fixing multi gpu test
* update not-split-modules
* update video cls test tolerance
* Increase test_inference_image tolerance
* Update no-split modules for multi gpu
* Apply suggestions from code review
* fixing multi-gpu
* fix docstring
* Add cls snippet to docs
* Update checkpoint
* Refactor DBRX tests to use CausalLMModelTest base classes
- Changed DbrxModelTester to inherit from CausalLMModelTester
- Changed DbrxModelTest to inherit from CausalLMModelTest
- Removed duplicate methods that are already in base classes
- Added required class attributes for model classes
- Updated pipeline_model_mapping to include feature-extraction
- Kept DBRX-specific configuration and test methods
- Disabled RoPE tests as DBRX's rotary embedding doesn't accept config parameter
This refactoring reduces code duplication and follows the pattern established
in other causal LM model tests like Gemma.
* Apply style fixes
* Trigger tests
* Refactor DBRX test
* Make sure the DBRX-specific settings are handled
* Use the attribute_map
* Fix attribute map
---------
Co-authored-by: openhands <openhands@all-hands.dev>
Co-authored-by: github-actions[bot] <github-actions[bot]@users.noreply.github.com>
* Unbreak optimum-executorch
* use static cache if has layer_types but no sliding_window
* revert view on kv_arange
---------
Co-authored-by: Guang Yang <guangyang@fb.com>
* remove it from all py files
* remove it from the doc
* remove it from examples
* style
* remove traces of _fast_init
* Update test_peft_integration.py
* CIs
* apply updates smolVLM (still needs workaround for chat template)
* add other models
* dump qwen omni for now, come back later
* port qwen omni from their impl
* wait, all qwens sample videos in same way!
* clean up
* make smolvlm backwards compatible and fix padding
* dix some tests
* fox smolvlm tests
* more clean up and test fixing
* delete unused arg
* fix
* address comments
* style
* fix test
* chore(pixtral): emit block attention mask when using flash attention
Since flash_attention_2 relies solely on position_ids, emitting the block attention mask avoids unnecessary memory usage and prevents OOM on large inputs.
* remove unnecessary attention_mask assignment
* Update Pegasus model card
* Fix transformers-cli command
* Update code examples to use bfloat16
* Reverted code examples to use float16
* Fix typo, update checkpoints link
* Update str formatting in code examples
* Apply suggestions from code review
Co-authored-by: Steven Liu <59462357+stevhliu@users.noreply.github.com>
* Fix typo
* Remove inaccurate badges
* Revert badge removal
* Apply suggestions from code review
Co-authored-by: Steven Liu <59462357+stevhliu@users.noreply.github.com>
* Include cache_implementation argument in quantization example
---------
Co-authored-by: Steven Liu <59462357+stevhliu@users.noreply.github.com>
* adding model and conversion scripts
* add imports to test vjepa conversion
* fix imports and make conversion work
* fix computation for short side
* replace attention with library attention function
* cleanup more attention classes
* remove config overrides
* add test cases, fix some of the failing ones
* fix the model outputs
* fix outputs of the model per review
* fix too big model test case
* fix styling __init__.py
* fix initialization test
* remove all asserts per review
* update sorting unsorting logic as per feedback
* remove is_video per review
* remove another is_video segment
* remove unwanted stuff
* small fixes
* add docstrings for the model
* revert adding vjepa2 config here
* update styling
* add config docstrings (wip)
* fix dpr issue
* removed test failing issues
* update styles
* merge predictor configs into main config
* remove processing code, add video processor
* remove permute which is not necessary now
* fix styles
* updated vjepa2 to be in video_processing_auto
* update comment for preprocessing
* test integration test and fix the outputs
* update test values, change test to look at repeated frames for a given image
* add a simple video processing test
* refactoring pixel_values_videos and upload ckpts to original
* fix torch_fx test cases
* remove unused config
* add all config docstrings
* add more integration tests
* add basic doc
* revert unwanted styling changes
* working make fixup
* Fix model_type in config
* update attention implementation to fit new hf standards
* fix the preprocessing logic, ensure it matches the original model
* remove use_rope logic, cleanup
* fix docstrings
* Further cleanup, update doc
* Fix model prefix
* fix get_vision_features
* VJEPA2Embeddings style refactor
* nit, style comment
* change modules default values
* Only `str` activation in config
* GradientCheckpointingLayer
* fixup
* fix conversion script
* Remove return_dict
* remove None return typehint
* Refactor VJEPA2Layer, remove use_SiLU
* Fix fx tests
* dpr -> drop_path_rates
* move *ModelOutput on top
* format docs bit
* update docs
* update docs
* update doc example
* remove prune_heads from model
* remove unused config params
* refactor embed signature
* Add vjepa to docs
* Fix config docstring
* update defaults
* Update docs/source/en/model_doc/vjepa2.md
Co-authored-by: Pedro Cuenca <pedro@huggingface.co>
* Update docs/source/en/model_doc/vjepa2.md
Co-authored-by: Pedro Cuenca <pedro@huggingface.co>
* Fix import
* Min refactoring
* Update HUB_SOURCE and HUB_REPO in conversion script
* Add missing headers
* VJEPA -> V-JEPA in docs
* Add image to doc
* fix style
* fix init weights
* change checkpoint name in modeling tests
---------
Co-authored-by: Koustuv Sinha <koustuv.sinha@mail.mcgill.ca>
Co-authored-by: yonigozlan <yoni.gozlan@huggingface.co>
Co-authored-by: Yoni Gozlan <74535834+yonigozlan@users.noreply.github.com>
Co-authored-by: Koustuv Sinha <koustuvsinha@gmail.com>
Co-authored-by: Pedro Cuenca <pedro@huggingface.co>
* fix: Add method to retrieve image features in PaliGemmaForConditionalGeneration
* feat: Add get_image_features method to multiple models for image feature extraction
* fix: reformat the files with ruff.
* feat: Add methods for packing and retrieving image and video features across multiple models
modified:
- modeling_chameleon.py
- modeling_llava_next.py
- modular_llava_next_video.py
- modeling_qwen2_vl.py
and generate the:
- modeling_llava_next_video.py
- modeling_llava_onevision.py
- modeling_qwen2_5_vl.py
* feat: Implement get_image_features method in Aria, Mistral3, and VipLlava models with updated parameters
* fix: reformatted the code with fix-style
* Created model card for xlm-roberta-xl
* Update XLM-RoBERTa-XL model card with improved descriptions and usage examples
* Minor option labeling fix
* Added MaskedLM version of XLM RoBERTa XL to model card
* Added quantization example for XLM RoBERTa XL model card
* minor fixes to xlm roberta xl model card
* Minor fixes to mask format in xlm roberta xl model card
* Update XLM-RoBERTa model documentation with enhanced usage examples and improved layout
* Added CLI command example and quantization example for XLM RoBERTa model card.
* Minor change to transformers CLI and quantization example for XLM roberta model card
* Created model card for XLM model
* Revised model card structure and content of XLM model
* Update XLM model documentation with improved examples and code snippets for predicting <mask> tokens using Pipeline and AutoModel.
* Fix typo in LLaVa documentation
In exactly one section, LlavaImageProcessor was spelt wrongly as LLavaImageProcessor, which throws off copy-pasting the section.
* Fix LlavaImageProcessor url to make it valid (and copypaste-able)
Earlier, the URL contained the entire HF prefix. This commit removes that to ensure that the code block can be copied and run as is.
* mlm_probability in DataCollatorForLanguageModeling should be validated only when mlm is True (#38522)
* Change mlm_probability to Optional in DataCollatorForLanguageModeling (#38537)
---------
Co-authored-by: eak <eak@ivalua.com>
* added fast image processor for ZoeDepth and expanded tests accordingly
* added fast image processor for ZoeDepth and expanded tests accordingly, hopefully fixed repo consistency issue too now
* final edits for zoedept fast image processor
* final minor edit for zoedepth fast imate procesor
Fix "RuntimeError: Expected all tensors to be on the same device,
but found at least two devices, cuda:0 and cpu" error running the
following roformer tests on GPUs (CUDA or XPU):
```
tests/models/roformer/test_modeling_roformer.py::RoFormerSinusoidalPositionalEmbeddingTest::test_basic
tests/models/roformer/test_modeling_roformer.py::RoFormerSelfAttentionRotaryPositionEmbeddingTest::test_apply_rotary_position_embeddings
```
Signed-off-by: Dmitry Rogozhkin <dmitry.v.rogozhkin@intel.com>
* Fix: resolve import order and duplicate import (ruff I001, F811)
* Format: clean up Dinov2 test file with ruff formatter
* Add _no_split_modules = ['Dinov2Layer'] to enable device_map='auto'
* Revert dinov2_with_registers _no_split_modules to original state
* Remove redundant device_map test as suggested
* Remove unused import after deleting test
* removed import torch and the redundant test function
* Update tests/models/dinov2/test_modeling_dinov2.py
---------
Co-authored-by: Marc Sun <57196510+SunMarc@users.noreply.github.com>
* Fix multiple devices error on Janus
* Fix AttributeError on Janus BOI token
* Initialize lm first in Janus to get correct device map
* Added expectations for Janus test_model_generate_images
* Fixed JanusVisionEncoderLayer being split across devices
* Code formatting
* Adding modeling file
* Reverted changes out of scope for this PR
* feat: add colqwen2 (wip)
* tests: fix test_attention_outputs
* tests: reduce hidden size to accelerate tests
* tests: fix `test_attention_outputs` 🥳
* fix: fix wrong parent class for `ColQwen2ForRetrievalOutput`
* fix: minor typing and style changes
* chore: run `make style`
* feat: remove redundant `max_num_visual_tokens` attribute in `ColQwen2Processor`
* tests: tweak comments
* style: apply ruff formatter
* feat: move default values for `visual_prompt_prefix` and `query_prefix`
* docs: update ColQwen2 model card
* docs: tweak model cards
* docs: add required example config checkpoint
* tests: update expected scores in integration test
* docs: tweak quickstart snippets
* fix: address PR comments
* tests: fix colqwen2 tests + tweak comment in colpali test
* tests: unskip useful tests
* fix: fix bug when `visual_prompt_prefix` or `query_prefix` is an empty string
* fix: fix ColPali outputs when `return_dict == False`
* fix: fix issue with PaliGemma output not being a dict
* docs: set default dtype to bfloat16 in quickstart snippets
* fix: fix error when `return_dict=False` in ColPali and ColQwen2
* tests: fix special tokens not being replaced in input_ids
* style: fix lint
* fix: `ColQwen2Processor`'s `padding_side` is now set from `processor_config.json`
* fix: remove unused `padding_side` in ColQwen2 model
* docs: update ColQwen2's model doc
* fix: fix harcoded vlm backbone class in ColQwen2Config
* fix: remove `padding_side` from ColQwen2Processor as should fed from kwargs
* docs: fix typo in model docstring
* docs: add illuin mention in model docs
* fix: let `padding_size` be handled by `tokenizer_config.json`
* docs: add colpali reference url in colqwen2's model doc
* docs: add Hf mention in model docs
* docs: add late interaction mention in model docs
* docs: tweak colqwen2 model doc
* docs: update reference checkpoint for ColPali to v1.3
* docs: simplify quickstart snippets
* docs: remove redundant `.eval()`
* refactor: use `can_return_tuple` decorator for ColPali and ColQwen2
* docs: fix copyright date
* docs: add missing copyright in tests
* fix: raise error when `initializer_range` is not in config
* docs: remove redundant `.eval()` in colpali doc
* fix: fix `get_text_config` now that Qwen2VL has a proper `text_config` attribute
See https://github.com/huggingface/transformers/pull/37268 for details about changes in Qwen2VL's config.
* fix: add missing `initializer_range` attribute in `ColQwen2Config`
* fix: use `get_text_config` in `resize_token_embeddings`
* update colwen2 with auto_docstring
* docs: fix wrong copyright year
* chore: remove `raise` as `initializer_range` has a default value in `ColQwen2Config`
* refactor: merge `inner_forward` into `forward`
* Refactor colqwen2 after refactoring of qwen2VL, use modular for modeling code
* protect torch import in modular to protect in processing
* protect torch import in modular to protect in processing
* tests: fix hf model path in ColQwen2 integration test
* docs: clarify `attn_implementation` and add comments
* docs: add fallback snippet for using offline PIL dummy images
* docs: temporarily revert attn_implementation to `None` while sdpa is not fixed
* docs: tweaks in colpali/colqwen2 quick start snippets
* fix: add missing flags to enable SDPA/Flex Attention in ColQwen2 model
* fix: add missing changes in modular file
* fix modeling tests
---------
Co-authored-by: yonigozlan <yoni.gozlan@huggingface.co>
* Update Loss Functions to Accept Tensor num_items_in_batch
* Fix device mismatch by moving num_items_in_batch to loss device in fixed_cross_entropy
* fix the ruff check
* delete the unused if stat
* fix the type problem
transformers.enable_full_determinism enables deterministic
flash attention using `FLASH_ATTENTION_DETERMINISTIC`
800510c67b/src/transformers/trainer_utils.py (L79)
However, current checks use a global variable `deterministic_g`,
which will do the environment variable check as soon as importing,
this will cause issues as users can call
`transformers.enable_full_determinism` after
`transformers.modeling_flash_attention_utils` is imported. This
behavior is introduced in
https://github.com/huggingface/transformers/pull/33932/files#r1806668579
to fix the graph break.
As a result, this PR implement fixes by delaying the environment variable
check to the first time when `_flash_attention_forward` is executed, so
that we can fix this issue and we won't introduce a graph break.
Signed-off-by: Hollow Man <hollowman@opensuse.org>
* A shallow copy in groundingdino
Fixes#37333
* Supprimer une ligne vide dans la classe GroundingDinoForObjectDetection
* Translate comments in the GroundingDinoForObjectDetection class from French to English
* make it go brrrr
* date time
* update
* fix
* up
* uppp
* up
* no number i
* udpate
* fix
* [paligemma] fix processor with suffix (#38365)
fix pg processor
* [video utils] group and reorder by number of frames (#38374)
fix
* Fix convert to original state dict for VLMs (#38385)
* fix convert to original state dict
* fix
* lint
* Update modeling_utils.py
* update
* warn
* no verbose
* fginal
* ouft
* style
---------
Co-authored-by: Raushan Turganbay <raushan@huggingface.co>
Co-authored-by: hoshi-hiyouga <hiyouga@buaa.edu.cn>
* Use dict comprehension to create dict
* Fix type annotation
Union[Any] doesn't really make any sense
* Remove methods that are already implemented in the `UserDict` parent
class
* updates
* fixup
* fix tests
* fix test
* fix
* let it be here for now, till monday
* two more fixes
* persimmon
* fixup
* fix
* fixup
* make sure fuyu runs now that LM has new attn API
* fixup + tests
* qwen vl uses new mask interface as well
* qwen image features format
* update
* remove image_sizes
* address comments
* i am dumb...
* feat: add cache retention for requests
* fix: propagate `manual_eviction` param & refactor `finish_request`
`finish_request` now only takes `request_id: str` as an input rather
than the full `RequestState`, which was not needed and simplifies
calling from `ContinuousBatchingManager::evict_request_from_cache`
* refactor: pop req from `active_requests`
* Apply style fixes
---------
Co-authored-by: github-actions[bot] <github-actions[bot]@users.noreply.github.com>
Support tensor-valued _extra_state values
TransformerEngine uses the pytorch get/set_extra_state API to store FP8
layer config information as bytes Tensor in the _extra_state entry in
the state dict. With recent changes to from_pretrained, this
functionality has broken and loading a model that uses this API doesn't
appear to work. This PR fixes the save/load pretrained functions for
extra state entries that use a pytorch tensor, and adds a (currently
x-failing) test for a dictionary extra state.
Signed-off-by: Peter St. John <pstjohn@nvidia.com>
* start refactoring whisper
* revert for now
* first step
* carry over attn fixes
* check if this works
* whisper has an off by one somewhere - cutting mask in any interface
* make it based on interface
* remove some tests that were skipped but now work
* some fixes for whisper tests
* interface changes
* change the order of fix
* some attention adjustments for eager + TP
* fix scaling
* mask changes
* why does whisper contain those extra seq lens?
* fix from config for fa2 as input_ids is invalid
* fix another test
* another fix
* disable flex attn due to compile issues
* copies and refactor for qwen audio since it somewhat relies on whisper
* fix scaling and smaller things
* retrigger
* new new interface version + more fixups
* adjust qwen
* add comment
* forgot this one
* change copies as whisper cuts on the mask
* add guard
* add flex attention
* switch to new mask function + add skips for torchscript
* remove old api with cache position
* last changes?
* trigger ci
* standardize
* fix tests
* batch update some processors, not final yet
* oke, now I tested that everything indeed runs. Still needs prettification
* emu3
* fixup
* gemma3 but it doesn't generate anything
* fuyu
* update
* why?
* Update src/transformers/models/aya_vision/processing_aya_vision.py
Co-authored-by: Arthur <48595927+ArthurZucker@users.noreply.github.com>
* address comments
* bc
* why do we need to guard import this every time?
* i hate guarded imports
* i am blind
---------
Co-authored-by: Arthur <48595927+ArthurZucker@users.noreply.github.com>
* Firstly: Better detection of when we're a custom class
* Trigger tests
* Let's break everything
* make fixup
* fix mistaken line doubling
* Let's try to get rid of it from config classes at least
* Let's try to get rid of it from config classes at least
* Fixup image processor
* no more circular import
* Let's go back to setting `_auto_class` again
* Let's go back to setting `_auto_class` again
* stash commit
* Revert the irrelevant changes until we figure out AutoConfig
* Change tests since we're breaking expectations
* make fixup
* do the same for all custom classes
* Cleanup for feature extractor tests
* Cleanup tokenization tests too
* typo
* Fix tokenizer tests
* make fixup
* fix image processor test
* make fixup
* Remove warning from register_for_auto_class
* Stop adding model info to auto map entirely
* Remove todo
* Remove the other todo
* Let's start slapping _auto_class on models why not
* Let's start slapping _auto_class on models why not
* Make sure the tests know what's up
* Make sure the tests know what's up
* Completely remove add_model_info_to_*
* Start adding _auto_class to models
* Start adding _auto_class to models
* Add a flaky decorator
* Add a flaky decorator and import
* stash commit
* More message cleanup
* make fixup
* fix indent
* Fix trust_remote_code prompts
* make fixup
* correct indentation
* Reincorporate changes into dynamic_module_utils
* Update call to trust_remote_code
* make fixup
* Fix video processors too
* Fix video processors too
* Remove is_flaky additions
* make fixup
* let's try a non-regex solution
* make fixup
* Slight adjustment
* Let's just use the original code with a check
* slight tweak to conditional
* slight tweak to conditional
* Update roformer model card
* fix example purpose description
* fix model description according to the comments
* revert changes for autodoc
* remove unneeded tags
* fix review issues
* fix hfoption
---------
Co-authored-by: Steven Liu <59462357+stevhliu@users.noreply.github.com>
* docs(swinv2): Update SwinV2 model card to new standard format
* docs(swinv2): Apply review suggestions
Incorporates feedback from @stevhliu to:
- Enhance the introductory paragraph with more details about scaling and SimMIM.
- Generalize the tip from "image classification tasks" to "vision tasks".
Co-authored-by: Steven Liu <59462357+stevhliu@users.noreply.github.com>
---------
Co-authored-by: Steven Liu <59462357+stevhliu@users.noreply.github.com>
* stash commit
* Experiment 1: Try just Gemma
* Experiment 1: Just try Gemma
* make fixup
* Trigger tests
* stash commit
* Try adding Gemma3 as well
* make fixup
* Correct attrib names
* Correct pipeline model mapping
* Add in all_model_classes for Gemma1 again
* Move the pipeline model mapping around again
* make fixup
* Revert Gemma3 changes since it's a VLM
* Let's try Falcon
* Correct attributes
* Correct attributes
* Let's try just overriding get_config() for now
* Do Nemotron too
* And Llama!
* Do llama/persimmon
* Correctly skip tests
* Fix Persimmon
* Include Phimoe
* Fix Gemma2
* Set model_tester_class correctly
* Add GLM
* More models!
* models models models
* make fixup
* Add Qwen3 + Qwen3MoE
* Correct import
* make fixup
* Add the QuestionAnswering classes
* Add the QuestionAnswering classes
* Move pipeline mapping to the right place
* Jetmoe too
* Stop RoPE testing models with no RoPE
* Fix up JetMOE a bit
* Fix up JetMOE a bit
* Can we just force pad_token_id all the time?
* make fixup
* fix starcoder2
* Move pipeline mapping
* Fix RoPE skipping
* Fix RecurrentGemma tests
* Fix Falcon tests
* Add MoE attributes
* Fix values for RoPE testing
* Make sure we set bos_token_id and eos_token_id in an appropriate range
* make fixup
* Fix GLM4
* Add mamba attributes
* Revert bits of JetMOE
* Re-add the JetMOE skips
* Update tests/causal_lm_tester.py
Co-authored-by: Arthur <48595927+ArthurZucker@users.noreply.github.com>
* Add licence
---------
Co-authored-by: Arthur <48595927+ArthurZucker@users.noreply.github.com>
* Get parallel loader working. Include tests.
* Update the tests for parallel loading
* Rename env variables.
* Add docs for parallel model weight loading.
* Touch up parallel model loading docs.
* Touch up parallel model loading docs again.
* Edit comment in test_modeling_utils_parallel_loading.py
* Make sure HF_PARALLEL_LOADING_WORKERS is spelled correctly in modeling_utils.py
* Correct times for parallelized loading, previous times were for a "hot" filesystem
* Update parallel model loading so the spawn method is encapsulated. DRY up the code by leveraging get_submodule.
* Update docs on model loading parallelism so that details on setting the multiprocessing start method are removed, now that the package handles this step internally.
* Fix style on model loading parallelism changes.
* Merge latest version of master's modeling_utils.
* Removed unused variable.
* Fix argument packing for the parallel loader.
* Fix state dict being undefined in the parallel model loader.
* Rename variables used in parallel model loading for clarity. Use get_module_from_name().
* Switch to the use of threads for parallel model loading.
* Update docs for parallel loading.
* Remove the use of json.loads when evaluating HF_ENABLE_PARALLEL_LOADING. Prefer simple casting.
* Move parallelized shard loading into its own function.
* Remove use of is_true(). Favor checking env var true values for HF_ENABLE_PARALLEL_LOADING.
* Update copyright to 2025 in readme for paralell model loading.
* Remove garbage collection line in load_shard_file, implicit garbage collection already occurs.
* Run formatter on modeling_utils.py
* Apply style fixes
* Delete tests/utils/test_modeling_utils_parallel_loading.py
---------
Co-authored-by: github-actions[bot] <github-actions[bot]@users.noreply.github.com>
Co-authored-by: Cyril Vallez <cyril.vallez@huggingface.co>
* refactor to rm property can_save_slow_tokenizer, it can be done within the if of save_vocab
* move property to fast
* revert if
* check if vocab_file is attr
* fix check for sp
* fix if condition
* fix if condition
* fix if condition
* stash for now
* initial commit
* small updated
* up
* up
* works!
* nits and fixes
* don't loop too much
* finish working example
* update
* fix the small freeblocks issue
* feat: stream inputs to continuous batch
* fix: update attn from `eager` to `sdpa`
* refactor: fmt
* refactor: cleanup unnecessary code
* feat: add `update` fn to `PagedAttentionCache`
* feat: broken optimal block size computation
* fix: debugging invalid cache logic
* fix: attention mask
* refactor: use custom prompts for example
* feat: add streaming output
* fix: prefill split
refactor: add doc strings and unsound/redundant logic
fix: compute optimal blocks logic
* fix: send decoded tokens when `prefilling_split` -> `decoding`
* refactor: move logic to appropriate parent class
* fix: remove truncation as we split prefilling anyways
refactor: early return when we have enough selected requests
* feat: add paged attention forward
* push Ggraoh>
* add paged sdpa
* update
* btter mps defaults
* feat: add progress bar for `generate_batch`
* feat: add opentelemetry metrics (ttft + batch fill %age)
* feat: add tracing
* Add cuda graphs (#38059)
* draft cudagraphs addition
* nits
* styling
* update
* fix
* kinda draft of what it should look like
* fixes
* lol
* not sure why inf everywhere
* can generate but output is shit
* some fixes
* we should have a single device synch
* broken outputs but it does run
* refactor
* updates
* updates with some fixes
* fix mask causality
* another commit that casts after
* add error
* simplify example
* update
* updates
* revert llama changes
* fix merge conflicts
* fix: tracing and metrics
* my updates
* update script default values
* fix block allocation issue
* fix prefill split attnetion mask
* no bugs
* add paged eager
* fix
* update
* style
* feat: add pytorch traces
* fix
* fix
* refactor: remove pytorch profiler data
* style
* nits
* cleanup
* draft test file
* fix
* fix
* fix paged and graphs
* small renamings
* cleanups and push
* refactor: move tracing and metrics logic to utils
* refactor: trace more blocks of code
* nits
* nits
* update
* to profile or not to profile
* refactor: create new output object
* causal by default
* cleanup but generations are still off for IDK what reason
* simplifications but not running still
* this does work.
* small quality of life updates
* nits
* updaet
* fix the scheduler
* fix warning
* ol
* fully fixed
* nits
* different generation parameters
* nice
* just style
* feat: add cache memory usage
* feat: add kv cache free memory
* feat: add active/waiting count & req latency
* do the sampling
* fix: synchronize CUDA only if available and improve error handling in ContinuousBatchingManager
* fix on mps
* feat: add dashboard & histogram buckets
* perf: improve waiting reqs data structures
* attempt to compile, but we should only do it on mps AFAIK
* feat: decouple scheduling logic
* just a draft
* c;eanup and fixup
* optional
* style
* update
* update
* remove the draft documentation
* fix import as well
* update
* fix the test
* style doomed
---------
Co-authored-by: Luc Georges <luc.sydney.georges@gmail.com>
* starting attn refactor for encoder decoder models via bart (eager + sdpa)
* flash attention works, remove unnecessary code
* flex attention support for bart!, gotta check if the renaming is not too aggressive
* some comments
* skip flex grad test for standalone as done with the other test
* revert flex attn rename (for now), sdpa simplify, and todos
* more todos
* refactor mask creation for reuse
* modular attempt at biogpt
* first batch of other models
* fix attn dropout
* fix autoformer copies
* hubert
* another batch of models
* copies/style + last round of bart models --> whisper next?
* remove unnecessary _reshape function and remove copy to whisper
* add skip for decoder-only models out of enc-dec (same as in bart)
* bring back licences
* remove comment, added to pr read instead
* mostly docs
* disable sew flex attn as it's unclear attn mask for now
* oops
* test fixes for enc-dec
* torch fx fixes + try at flex attn
* skip on mbart
* some more fixes
* musicgen skip / delete old attn class logic + sdpa compose compile skip
* disable flex attn for musicgen, not worth the effort
* more fixes and style
* flex attention test for dropout and encoder decoder that dont have main input names
* informer fixes
* the weirdest thing I've encountered yet...
* style
* remove empty tensor attempt, found core root in previous commits
* disable time series due to tests being very text centric on inputs
* add speech to text to be ignoring the other attns, also due to tests
* update docs
* remaining issues resolved ?
* update docs for current state --> nllb moe and pegasus x sdpa is questionable :D
* some models have not set the is_causal flag...
* change dtype in softmax tol old behaviour + some modular fixes
* I hate it but it is what it is
* fixes from main for bart
* forgot this one
* some model fixes
* style
* current status
* marian works now
* fixing some copies
* some copy fixes + time series x informer
* last models possibly and fixes on style/copies
* some post merge fixes
* more fixes
* make attention interface callable and move warnings there
* style lol
* add comment to "unsupported"
* remove callable interface and change interface warnings + some copies
* fix
* ternary is ugly af, make it simpler
* how did that happen
* fix flex attn test
* failing the test
* no more fallback! fixing copies next
* style + attn fixed
* fixing copies and mask creation
* wrong copy
* fixup tests and disable flex attn for now
* fixup last tests?
* docs(swin): Update Swin model card to standard format
* docs(swin): Refine link to Microsoft organization for Swin models
Apply suggestion from @stevhliu in PR #37628.
This change updates the link pointing to the official Microsoft Swin Transformer checkpoints on the Hugging Face Hub.
The link now directs users specifically to the Microsoft organization page, filtered for Swin models, providing a clearer and more canonical reference compared to the previous general search link.
Co-authored-by: Steven Liu <59462357+stevhliu@users.noreply.github.com>
* docs(swin): Clarify padding description and link to backbone docs
Apply suggestion from @stevhliu in PR #37628.
This change introduces two improvements to the Swin model card:
1. Refines the wording describing how Swin handles input padding for better clarity.
2. Adds an internal documentation link to the general "backbones" page when discussing Swin's capability as a backbone model.
These updates enhance readability and improve navigation within the Transformers documentation.
Co-authored-by: Steven Liu <59462357+stevhliu@users.noreply.github.com>
* docs(swin): Change Swin paper link to huggingface.co/papers as suggested
Co-authored-by: Steven Liu <59462357+stevhliu@users.noreply.github.com>
---------
Co-authored-by: Steven Liu <59462357+stevhliu@users.noreply.github.com>
* _get_padding_size module
* do not patchify images when processing multi image
* modify llava onevision image processor fast
* tensor to list of tensors
* backward compat
* reuse pad_to_square in llave & some clarification
* add to doc
* fix: consider no image cases (text only or video)
* add integration test
* style & repo_consistency
* accept custom device_mesh
* fix device_map
* assert that num_heads % tp_size == 0
* todo.
* ReplicateParallel
* handle tied weights
* handle dtensor in save_pretrained with safe_serialization
* tp test works
* doesnt work
* fix shard_and_distribute_module's rank should be local_rank
* tp=4 is correct
* dp+tp is broken
* todo allreduce with dtensors on another dim is annoying
* workaround to sync dp grads when using dtensors
* loading a checkpoint works
* wandb and compare losses with different tp/dp
* cleaning
* cleaning
* .
* .
* logs
* CP2 DP2 no mask works after commenting attn_mask and is_causal from scaled_dot_product_attention
* DP=2 TP=2 now works even with tied embeddings
* model.parameters() and model.module.parameters() are empty..
* reformat sanity_check_tensor_sync
* set atol=1e-4 for CP to pass
* try populate _parameters from named_modules
* refactors
TP2 DP2 works
CP2 DP2 works
* is_causal=True and pack sequences, no attn mask, and preshuffle dataset
* fix packing
* CP=4 doesn't work
* fix labels and position_ids for CP
* DP CP works with transformers 🥳🥳🥳
* refactor
* add example cp
* fixup
* revert sdpa changes
* example cleared
* add CP, DP to the mesh init
* nit
* clean
* use `ALL_PARALLEL_STYLES`
* style
* FSDP works
* log on 1 rank
* .
* fix?
* FSDP1 also has .parameters() bug
* reported gradnorm when using FSDP1 is wrong, but loss is correct so it's okay
* .
* style and fixup
* move stuff around
* fix tests
* style
* let's make it a check
* add missing licences
* warning should be an info
* tp plan should not be NONE
* test all
* god damn it
* test all
---------
Co-authored-by: nouamanetazi <nouamane98@gmail.com>
* add seq_idx and fa kwargs
* update tests
* docs and grad ckpt support
* fmt
* better names
* test_raise_missing_padding_free_kwarg_errs
* + seq_idx in doc strings
* padding free training docs
* add link to pr plots
* raise err on attn_mask with padding free
* rm raising missing padding free err test
* BambaFlashAttentionKwargs
* run modular util for modular_granitemoehybrid.py
* accept custom device_mesh
* fix device_map
* assert that num_heads % tp_size == 0
* todo.
* ReplicateParallel
* handle tied weights
* handle dtensor in save_pretrained with safe_serialization
* tp test works
* doesnt work
* fix shard_and_distribute_module's rank should be local_rank
* tp=4 is correct
* dp+tp is broken
* todo allreduce with dtensors on another dim is annoying
* workaround to sync dp grads when using dtensors
* loading a checkpoint works
* wandb and compare losses with different tp/dp
* cleaning
* cleaning
* .
* .
* logs
* CP2 DP2 no mask works after commenting attn_mask and is_causal from scaled_dot_product_attention
* DP=2 TP=2 now works even with tied embeddings
* model.parameters() and model.module.parameters() are empty..
* reformat sanity_check_tensor_sync
* set atol=1e-4 for CP to pass
* try populate _parameters from named_modules
* refactors
TP2 DP2 works
CP2 DP2 works
* is_causal=True and pack sequences, no attn mask, and preshuffle dataset
* fix packing
* CP=4 doesn't work
* fix labels and position_ids for CP
* DP CP works with transformers 🥳🥳🥳
* refactor
* add example cp
* fixup
* revert sdpa changes
* example cleared
* add CP, DP to the mesh init
* nit
* clean
* use `ALL_PARALLEL_STYLES`
* style
* FSDP works
* log on 1 rank
* .
* fix?
* FSDP1 also has .parameters() bug
* reported gradnorm when using FSDP1 is wrong, but loss is correct so it's okay
* .
* style and fixup
* move stuff around
* fix tests
* style
* let's make it a check
* warning should be an info
---------
Co-authored-by: Arthur Zucker <arthur.zucker@gmail.com>
When preparing the causal attention mask at this point the mask comes
in as a float tensor with min value as a masked value.
It is not correct to convert it to bool and treat it as a bool mask as
this inverts the mask.
`torch.nn.functional.scaled_dot_product_attention` expects that a masked value is `False`.
I suspect that the `sdpa` implementation variant may not have been
thoroughly tested and that is why this error was not caught earlier.
Co-authored-by: Arthur <48595927+ArthurZucker@users.noreply.github.com>
Add Llama4TextModel to AutoModel mapping
using Llama4TextConfig on AutoModel.from_config raises a ValueError when it is expected to instantiate a Llama4TextModel
bnb quant tests: remove obsolete trust_remote_code test
The MPT model is now natively integrated in Transformers and no longer requires trust_remote_code=True. This removes the failing test_get_keys_to_not_convert_trust_remote_code and related usage, which depended on remote code and caused CI issues due to missing dependencies (e.g., triton_pre_mlir).
* Update modular_qwen2_5_omni.py
fix the error when loading quantized model by AuotAWQ.
* Update modeling_qwen2_5_omni.py
sync code to modular_qwen2_5_omni.py
* pipeline generation defaults
* add max_new_tokens=20 in test pipelines
* pop all kwargs that are used to parameterize generation config
* add class attr that tell us whether a pipeline calls generate
* tmp commit
* pt text gen pipeline tests passing
* remove failing tf tests
* fix text gen pipeline mixin test corner case
* update text_to_audio pipeline tests
* trigger tests
* a few more tests
* skips
* some more audio tests
* not slow
* broken
* lower severity of generation mode errors
* fix all asr pipeline tests
* nit
* skip
* image to text pipeline tests
* text2test pipeline
* last pipelines
* fix flaky
* PR comments
* handle generate attrs more carefully in models that cant generate
* same as above
* tmp commit (imports broken)
* working version; update tests
* remove line break
* shorter msg
* dola checks need num_beams=1; other minor PR comments
* update early trainer failing on bad gen config
* make fixup
* test msg
* Fix ModuleNotFoundError torchao.prototype.low_bit_optim since torchao v 0.11.0
* Fix space on blank line
* update torchao's AdamW4bit and AdamW8bit import for v0.11.0
* Apply style fixes
---------
Co-authored-by: github-actions[bot] <github-actions[bot]@users.noreply.github.com>
* add args support to fast image processors
* add comment for clarity
* fix-copies
* Handle child class args passed as both args or kwargs in call and preprocess functions
* revert support args passed as kwargs in overwritten preprocess
* fix image processor errors
* Add flash-attention-2 backend for ESM-2
Signed-off-by: Peter St. John <pstjohn@nvidia.com>
* update extended_attention_mask for fa2
Signed-off-by: Peter St. John <pstjohn@nvidia.com>
* add test_flash_attn_2_equivalence test
Signed-off-by: Peter St. John <pstjohn@nvidia.com>
---------
Signed-off-by: Peter St. John <pstjohn@nvidia.com>
* enable optional RMS in BitLinear
* Fix naming
* Import RMS from Llama using config.*
* make fix-copies
* ran CI loop
* remove default BitNetQuantConfig values
* Fix BitNetQuantConfig to be Optional
* Fix config docstrings to match Optoinal
* Edit docstrings to match standards
---------
Co-authored-by: steinmetzc <codysteinmetz7@gmail.com>
Co-authored-by: codys12 <steinmetzc@dh-mgmt4.hpc.msoe.edu>
Co-authored-by: Mohamed Mekkouri <93391238+MekkCyber@users.noreply.github.com>
* Include output embedding as well with `include_embedding` flag
Summary:
att
Test Plan:
python tests/quantization/torchao_integration/test_torchao.py -k test_include_embedding
Reviewers:
Subscribers:
Tasks:
Tags:
* format
* rename include_embedding to include_input_output_embeddings
---------
Co-authored-by: Mohamed Mekkouri <93391238+MekkCyber@users.noreply.github.com>
* disable deepspeed when setting up fake trainer
* Apply style fixes
---------
Co-authored-by: Marc Sun <57196510+SunMarc@users.noreply.github.com>
Co-authored-by: github-actions[bot] <github-actions[bot]@users.noreply.github.com>
* mvp
* remove trust_remote_code
* generate_from_hub
* handle requirements; docs
* english
* doc PR suggestions
* Apply suggestions from code review
Co-authored-by: Steven Liu <59462357+stevhliu@users.noreply.github.com>
* changed remote code path to generate/generate.py
* model repo has custom generate -> override base generate
* check for proper inheritance
* some doc updates (missing: tag-related docs)
* update docs to model repo
* nit
* nit
* nits
* Update src/transformers/dynamic_module_utils.py
* Apply suggestions from code review
* Update docs/source/en/generation_strategies.md
Co-authored-by: Pedro Cuenca <pedro@huggingface.co>
* trust remote code is required
* use new import utils for requirements version parsing
* use org examples
* add tests
* Apply suggestions from code review
Co-authored-by: Manuel de Prada Corral <6536835+manueldeprada@users.noreply.github.com>
* ascii file structure; tag instructions on readme.md
---------
Co-authored-by: Steven Liu <59462357+stevhliu@users.noreply.github.com>
Co-authored-by: Pedro Cuenca <pedro@huggingface.co>
Co-authored-by: Manuel de Prada Corral <6536835+manueldeprada@users.noreply.github.com>
* init vilt image processor fast
* Refactor image processor tests to use loop for all processors
* Add ViltImageProcessorFast with PyTorch-based optimized image processing
* Change made automatically by make fixup command
* Change made automatically by make fix-copies command
* Fix type hints in ViltImageProcessorFast for Python compatibility
* Define constants for image resizing based on COCO dataset aspect ratio
* Add missing property initializations to ViltImageProcessorFast
* Extract resize logic into dedicated method in ViltImageProcessorFast
* Extract padding logic into dedicated method
* Implement shape-based image grouping for optimized processing in Vilt
* Update test suite to verify ViltImageProcessorFast attributes
* Move variable declarations to _preprocess method parameters
* Remove unused parameters
* Rename _resize method to resize to override existing function
* Remove whitespace
* Remove unnecessary type check and conversion for stacked_images
* Remove redundant loop and apply padding directly to stacked images
* Refactor pad function to return images and mask as tuple instead of dict
* Add tests comparing padding masks in slow and fast implementations
* Update ViltImageProcessor tests to ensure compatibility between slow and fast implementations
* Replace add_start_docstrings with auto_docstring in ViltImageProcessorFast
* Move docstrings of custom args to ViltFastImageProcessorKwargs
* Use reorder_images function for both masks and images
---------
Co-authored-by: Yoni Gozlan <74535834+yonigozlan@users.noreply.github.com>
* fix llava processor to calculate unpad size correctly
* repo consistency
* Revert "repo consistency" & "setUp in llava family"
This reverts commit 26a50af8db5b15bb6b700db3d53342fe69579d8e.
* add edge case test for padding & unpadding
* compute unpadding size from original size
* make test config explicit
* Revert "compute unpadding size from original size"
This reverts commit 752cd27ad9710ab056c17a9986760c4651975540.
* Revert "add edge case test for padding & unpadding"
This reverts commit ccbd094d69c3f8f6a259159164284f60ba835bce.
* revert unpad logic
* remove irrelevant tests
* model test
* remove processor from model test
---------
Co-authored-by: jaycha <jaycha@ncsoft.com>
* chore(qwen2): display warning log only when sliding window attention is enabled
* Align modeling_qwen2.py and modular_qwen2.py
---------
Co-authored-by: Matt <Rocketknight1@users.noreply.github.com>
* accept arbitrary kwargs
* move user commands to a separate fn
* work with generation config files
* rm cmmt
* docs
* base generate flag doc section
* nits
* nits
* nits
* no <br>
* better basic args description
* initial design
* update all video processors
* add tests
* need to add qwen2-vl (not tested yet)
* add qwen2-vl in auto map
* fix copies
* isort
* resolve confilicts kinda
* nit:
* qwen2-vl is happy now
* qwen2-5 happy
* other models are happy
* fix copies
* fix tests
* add docs
* CI green now?
* add more tests
* even more changes + tests
* doc builder fail
* nit
* Update src/transformers/models/auto/processing_auto.py
Co-authored-by: Pavel Iakubovskii <qubvel@gmail.com>
* small update
* imports correctly
* dump, otherwise this is getting unmanagebale T-T
* dump
* update
* another update
* update
* tests
* move
* modular
* docs
* test
* another update
* init
* remove flakiness in tests
* fixup
* clean up and remove commented lines
* docs
* skip this one!
* last fix after rebasing
* run fixup
* delete slow files
* remove unnecessary tests + clean up a bit
* small fixes
* fix tests
* more updates
* docs
* fix tests
* update
* style
* fix qwen2-5-vl
* fixup
* fixup
* unflatten batch when preparing
* dump, come back soon
* add docs and fix some tests
* how to guard this with new dummies?
* chat templates in qwen
* address some comments
* remove `Fast` suffix
* fixup
* oops should be imported from transforms
* typo in requires dummies
* new model added with video support
* fixup once more
* last fixup I hope
* revert image processor name + comments
* oh, this is why fetch test is failing
* fix tests
* fix more tests
* fixup
* add new models: internvl, smolvlm
* update docs
* imprt once
* fix failing tests
* do we need to guard it here again, why?
* new model was added, update it
* remove testcase from tester
* fix tests
* make style
* not related CI fail, lets' just fix here
* mark flaky for now, filas 15 out of 100
* style
* maybe we can do this way?
* don't download images in setup class
---------
Co-authored-by: Pavel Iakubovskii <qubvel@gmail.com>
Do not erase a cache_position initialization passed explicitly to generate(), if there is one.
But: Let initialization replace cache_position if it's set to None. I assume that if the value is explicitly passed but None, we should initialize anyway.
* update models
* why rename
* return attn weights when sdpa
* fixes
* fix attn implementation composite
* fix moshi
* add message
* add typings
* use explicitly all flags for each attn type
* fix some tests
* import what is needed
* kosmos on main has ew attention already, yay
* new models in main, run fixup
* won't fix kosmos yet
* fix-copies
* clean up after rebasing
* fix tests
* style
* dont cast attns to fp32
* did we update ruff? oke, let's just do what it asks
* fix pixtral after rebase
* Add ALL_ATTENTION_FUNCTIONS compatibility for Pixtral model
* Fix invalid operand type
* Allow image_sizes to be optional in forward pass to fit tests
Disallow using sdpa and output_attentions
* Disallow using sdpa with output_attentions
* Delete useless comments, use eager attention from smolvlm, use pattern from mistral
* add _supports_attention_backend
* use kwargs instead of position_ids
---------
Co-authored-by: aurelien.lac <aurelien.lac@lighton.ai>
* Add fast image processor support for Swin2SR
* Add Swin2SR tests of fast image processing
* Update docs and remove unnecessary test func
* Fix docstring formatting
* Skip fast vs slow processing test
---------
Co-authored-by: Yoni Gozlan <74535834+yonigozlan@users.noreply.github.com>
* i guessreverted all CdGen classes
* style
* llava onevision
* fix copies
* fix some tests
* some more tests
* dump
* skip these
* nevermind, i am dumb
* revert fix not needed
* fixup
* fixup
* another fixup
* more fixup to make ci finally happy
* fixup after rebasing
* fix qwen tests
* add internVL + typos here and there
* image token index -> id
* style
* fix init weights
* revert blip-2 not supported
* address comments
* fix copies
* revert blip2 test file as well
* as discussed internally, revert back CdGen models
* fix some tests
* fix more tests for compile
* CI red
* fix copies
* enumerate explicitly allowed models
* address comments
* fix tests
* fixup
* style again
* add tests for new model class
* another fixup ( x _ x )
* [fixup] unused attributes can be removed post-deprecation
* Enable granite speech 3.3 tests
* skip sdpa test for granite speech
* Explicitly move model to device
* Use granite speech 2b in tests
---------
Co-authored-by: Yih-Dar <2521628+ydshieh@users.noreply.github.com>
* args keep_torch_compile=False in _save and _wwrap_method
* Fix FSDP execution on evaluation for torch_compile mode
* add test trainer FSDP + Torch Compile
* fix quality code
* make style
* Revert " make style"
This reverts commit 77e797f8829c50992cc21496be3d9a3e480e1c97.
* make style
* [fix] one pixel should be added when length is odd
* [fix] add vision_aspect_ratio args & typo
* [fix] style
* [fix] do not fix fast file directly
* [fix] convert using modular
* remove duplicate codes
* match unpad logic with pad logic
* test odd-sized images for llava & aria
* test unpad odd-sized padding for llava family
* fix style
* add kwarg to onvision modular
* move vision_aspect_ratio from image_processor to processor
(llava_onevision)
* add num_tokens_to_discard to the forward of Dinov2ForImageClassification
* redefine forward in modular file, remove change to modeling_dinov2 file
* run make fixup
---------
Co-authored-by: Pavel Iakubovskii <qubvel@gmail.com>
Implements last migrations for generation from `config.vocab_size` to `config.get_text_config().vocab.size`
In doing so, we enable multimodal models to fully leverage all existing generation features.
* Let notification service succeed even when artifacts and reported jobs on github have mismatch
* Use default trace msg if no trace msg available
* Add pop_default helper fn
* style
Summary:
Currently when we try to quantize input_embedding for some models, the output embedding
(lm_head) will also be quantized the same way, since they are tied, and this may not be what
we want. To break the tie, we added the option to allow people to
1. load unquantized weight
2. tie weights
3. quantize
so that the tie will be broken
Test Plan:
```
from transformers import (
AutoModelForCausalLM,
AutoProcessor,
AutoTokenizer,
TorchAoConfig,
)
from torchao.quantization.quant_api import (
IntxWeightOnlyConfig,
Int8DynamicActivationIntxWeightConfig,
AOPerModuleConfig
)
from torchao.quantization.granularity import PerGroup, PerAxis
import torch
model_id = "microsoft/Phi-4-mini-instruct"
embedding_config = IntxWeightOnlyConfig(
weight_dtype=torch.int8,
granularity=PerAxis(0),
)
linear_config = Int8DynamicActivationIntxWeightConfig(
weight_dtype=torch.int4,
weight_granularity=PerGroup(32),
weight_scale_dtype=torch.bfloat16,
)
quant_config = AOPerModuleConfig({"_default": linear_config, "model.embed_tokens": embedding_config})
quantization_config = TorchAoConfig(quant_type=quant_config, include_embedding=True, untie_embedding_weights=True)
quantized_model = AutoModelForCausalLM.from_pretrained(model_id, torch_dtype=torch.float32, device_map="auto", quantization_config=quantization_config)
tokenizer = AutoTokenizer.from_pretrained(model_id)
print(quantized_model)
print("embed_tokens.weight:", quantized_model.model.embed_tokens.weight)
print("lm head weight:", quantized_model.lm_head.weight)
from transformers.modeling_utils import find_tied_parameters
print(find_tied_parameters(quantized_model))
```
Reviewers:
Subscribers:
Tasks:
Tags:
Co-authored-by: Mohamed Mekkouri <93391238+MekkCyber@users.noreply.github.com>
* rm already deprecated padding max length
* truncate_strategy AS AN ARG is already deprecated for a few years
* fix
* rm test_padding_to_max_length
* rm pad_to_max_length=True in other tests
* rm from common
* missed fnet
* Support `AOPerModuleConfig` and include_embedding
Summary:
This PR adds support per module configuration for torchao
Also added per module quantization examples:
1. Quantizing different layers with different quantization configs
2. Skip quantization for certain layers
Test Plan:
python tests/quantization/torchao_integration/test_torchao.py -k test_include_embedding
python tests/quantization/torchao_integration/test_torchao.py -k test_per_module_config_skip
Reviewers:
Subscribers:
Tasks:
Tags:
* format
* format
* inlcude embedding remove input embedding from module not to convert
* more docs
* Update docs/source/en/quantization/torchao.md
Co-authored-by: Mohamed Mekkouri <93391238+MekkCyber@users.noreply.github.com>
* Update src/transformers/quantizers/quantizer_torchao.py
Co-authored-by: Mohamed Mekkouri <93391238+MekkCyber@users.noreply.github.com>
* Update src/transformers/quantizers/quantizer_torchao.py
Co-authored-by: Mohamed Mekkouri <93391238+MekkCyber@users.noreply.github.com>
---------
Co-authored-by: Mohamed Mekkouri <93391238+MekkCyber@users.noreply.github.com>
Support FlaxPreTrainedModel to load model checkpoint from subfolder in local directory as safetensors format
Signed-off-by: Yan Zhao <zhao.y4@northeastern.edu>
* Unhardcode use_chunked_attention, fix no_rope_layers
* Go back to exhaustive list of bools
* Conversion and modeling updates
* Fix rope
* Unhardcode rope
* Fix context length
* style
* Minor updates to conversion
* Use StaticCache
* Minor simplification
* DynamicCache 🤦
* Style
* Style
* No more red flaky tests in the CI!
* Remove the CircleCI logic as well
* Revert most changes including is_flaky behaviour
* make fixup
* Move to a more sensible place
* Mark a flaky test that failed on this PR!
* correct import
* update
* update
* update
* update
---------
Co-authored-by: ydshieh <ydshieh@users.noreply.github.com>
* Fix check of unecessary packages (issue #37626)
* Reformat using ruff
* And a condition to avoind the risk of matching a random object in `import_utils`
* Reformat
* copy the last changes from broken PR
* small format
* some fixes and refactoring after review
* format
* add config attr for loss
* some fixes and refactoring
* fix copies
* fix style
* add test for d-fine resnet
* fix decoder layer prop
* fix dummies
* format init
* remove extra print
* refactor modeling, move resnet into separate folder
* fix resnet config
* change resnet on hgnet_v2, add clamp into decoder
* fix init
* fix config doc
* fix init
* fix dummies
* fix config docs
* fix hgnet_v2 config typo
* format modular
* add image classification for hgnet, some refactoring
* format tests
* fix dummies
* fix init
* fix style
* fix init for hgnet v2
* fix index.md, add init rnage for hgnet
* fix conversion
* add missing attr to encoder
* add loss for d-fine, add additional output for rt-detr decoder
* tests and docs fixes
* fix rt_detr v2 conversion
* some fixes for loos and decoder output
* some fixes for loss
* small fix for converted modeling
* add n model config, some todo comments for modular
* convert script adjustments and fixes, small refact
* remove extra output for rt_detr
* make some outputs optionsl, fix conversion
* some posr merge fixes
* small fix
* last field fix
* fix not split for hgnet_v2
* disable parallelism test for hgnet_v2 image classification
* skip multi gpu for d-fine
* adjust after merge init
* remove extra comment
* fix repo name references
* small fixes for tests
* Fix checkpoint path
* Fix consistency
* Fixing docs
---------
Co-authored-by: Pavel Iakubovskii <qubvel@gmail.com>
* added fast image processor for VitMatte including updated and new tests, fixed a bug in the slow image processor that processed images incorrectly for input format ChannelDimension.FIRST in which case the trimaps were not added in the correct dimension, this bug was also reflected in the tests through incorretly shaped trimaps being passed
* final edits for fast vitmatte image processor and tests
* final edits for fast vitmatte image processor and tests
---------
Co-authored-by: Yoni Gozlan <74535834+yonigozlan@users.noreply.github.com>
* added the configuartion for sam_hq
* added the modeelling for sam_hq
* added the sam hq mask decoder with hq features
* added the code for the samhq
* added the code for the samhq
* added the code for the samhq
* Delete src/transformers/models/sam_hq/modelling_sam_hq.py
* added the code for the samhq
* added the code for the samhq
* added the chnages for the modeelling
* added the code for sam hq for image processing
* added code for the sam hq model
* added the required changes
* added the changes
* added the key mappings for the sam hq
* adding the working code of samhq
* added the required files
* adding the pt object
* added the push to hub account
* added the args for the sam maks decoder
* added the args for the sam hq vision config
* aded the some more documentation
* removed the unecessary spaces
* all required chnages
* removed the image processor
* added the required file
* added the changes for the checkcopies
* added the code for modular file
* added the changes for the __init file
* added the code for the interm embeds
* added the code for sam hq
* added the changes for modular file
* added the test file
* added the changes required
* added the changes required
* added the code for the
* added the cl errors
* added the changes
* added the required changes
* added the some code
* added the code for the removing image processor
* added the test dimensins
* added the code for the removing extra used variables
* added the code for modeluar file hf_mlp for a better name
* removed abbrevaation in core functionality
* removed abbrevaation in core functionality
* .contiguous() method is often used to ensure that the tensor is stored in a contiguous block of memory
* added the code which is after make fixup
* added some test for the intermediate embeddings test
* added the code for the torch support in sam hq
* added the code for the updated modular file
* added the changes for documentations as mentioned
* removed the heading
* add the changes for the code
* first mentioned issue resolved
* added the changes code to processor
* added the easy loading to init file
* added the changes to code
* added the code to changes
* added the code to work
* added the code for sam hq
* added the code for sam hq
* added the code for the point pad value
* added the small test for the image embeddings and intermediate embedding
* added the code
* added the code
* added the code for the tests
* added the code
* added ythe code for the processor file
* added the code
* added the code
* added the code
* added the code
* added the code
* added the code for tests and some checks
* added some code
* added the code
* added the code
* added some code
* added some code
* added the changes for required
* added the code
* added the code
* added the code
* added the code
* added the code
* added the code
* added the code
* added the code
* added the code
* added the code
* added some changes
* added some changes
* removed spaces and quality checks
* added some code
* added some code
* added some code
* added code quality checks
* added the checks for quality checks
* addded some code which fixes test_inference_mask_generation_no_point
* added code for the test_inference_mask_generation_one_point_one_bb
* added code for the test_inference_mask_generation_one_point_one_bb_zero
* added code for the test_inference_mask_generation_one_box
* added some code in modelling for testing
* added some code which sort maks with high score
* added some code
* added some code
* added some code for the move KEYS_TO_MODIFY_MAPPING
* added some code for the unsqueeze removal
* added some code for the unsqueeze removal
* added some code
* added some code
* add some code
* added some code
* added some code
* added some testign values changed
* added changes to code in sam hq for readbility purpose
* added pre commit checks
* added the fix samvisionmodel for compatibilty
* added the changes made on sam by cyyever
* fixed the tests for samhq
* added some the code
* added some code related to init file issue during merge conflicts
* remobved the merge conflicts
* added changes mentioned by aruther and mobap
* added changes mentioned by aruther and mobap
* solving quality checks
* added the changes for input clearly
* added the changes
* added changes in mask generation file rgearding model inputs and sam hq quargs in processor file
* added changes in processor file
* added the Setup -> setupclass conversion
* added the code mentioned for processor
* added changes for the code
* added some code
* added some code
* added some code
---------
Co-authored-by: Pablo Montalvo <39954772+molbap@users.noreply.github.com>
Two PEFT tests are actually failing:
tests/peft_integration/test_peft_integration.py::PeftIntegrationTester::test_delete_adapter
tests/peft_integration/test_peft_integration.py::PeftIntegrationTester::test_peft_pipeline_no_warning
This must have been going on for some time but was apparently never
noticed. The cause is that the tests themselves are faulty, the PEFT
integration is correct in these cases.
test_delete_adapter
The first faulty test was introduced by #34650. AFAICT, it should never
have passed in the first place, the PEFT integration logic was not
changed in the meantime. At this point, the logs for the PR CI are gone,
so I'm not sure if the test passed back then or not.
test_peft_pipeline_no_warning
This test was introduced in #36783 and should also never have passed, as
the self.assertNoLogs context manager only returns None, thus the assert
should never have worked (mea culpa for suggesting this code snippet).
Here too, the CI logs are deleted by now, so I can't check if the test
already failed back then.
* Fix wrong position_ids shape in doc
Supported by ClvpDecoder.forward, line 1212--1215:
src/transformers/models/clvp/modeling_clvp.py:
1212 if inputs_embeds is None:
1213 inputs_embeds = self.input_embeds_layer(input_ids)
1214 position_embeds = self.position_embeds_layer(position_ids)
1215 inputs_embeds = inputs_embeds + position_embeds
* Fix possibly wrong input_ids shape in doc
Since 'input_ids_length' was mentioned immediately after the shape `(batch_size, sequence_length)`, it doesn't make sense to me for `input_ids` to have such shape---IMO it ought to have shape `(batch_size, input_ids_length)` instead.
* Fix possibly wrong inputs_embeds shape in doc
Supported by CTRLModel.forward, line 448--449:
src/transformers/models/ctrl/modeling_ctrl.py:
448 if inputs_embeds is None:
449 inputs_embeds = self.w(input_ids)
This commit is introduced due to commit 6f36b56497828642b65f54ea26aa4064186de57a.
* Fix possibly wrong token_type_ids shape in doc
Supported by CTRLModel.forward, line 441--460:
src/transformers/models/ctrl/modeling_ctrl.py:
441 if token_type_ids is not None:
442 token_type_ids = token_type_ids.view(-1, input_shape[-1])
443 token_type_embeds = self.w(token_type_ids)
444 token_type_embeds *= np.sqrt(self.d_model_size)
445 else:
446 token_type_embeds = 0
447
448 if inputs_embeds is None:
449 inputs_embeds = self.w(input_ids)
450 # inputs_embeds = embedded.unsqueeze(0) if len(input_ids.shape)<2 else embedded
451 seq_len = input_shape[-1]
452 mask = torch.triu(torch.ones(seq_len + past_length, seq_len + past_length), 1).to(device)
453
454 inputs_embeds *= np.sqrt(self.d_model_size)
455
456 # `self.pos_encoding` won't be sent to the correct device along the model, so we do it manually.
457 self.pos_encoding = self.pos_encoding.to(device)
458 pos_embeds = self.pos_encoding[position_ids, :]
459
460 hidden_states = inputs_embeds + pos_embeds + token_type_embeds
This commit is introduced due to commit 6f36b56497828642b65f54ea26aa4064186de57a.
* Fix possibly wrong position_ids shape in doc
Supported by CTRLModel.forward, line 448--460:
src/transformers/models/ctrl/modeling_ctrl.py:
448 if inputs_embeds is None:
449 inputs_embeds = self.w(input_ids)
450 # inputs_embeds = embedded.unsqueeze(0) if len(input_ids.shape)<2 else embedded
451 seq_len = input_shape[-1]
452 mask = torch.triu(torch.ones(seq_len + past_length, seq_len + past_length), 1).to(device)
453
454 inputs_embeds *= np.sqrt(self.d_model_size)
455
456 # `self.pos_encoding` won't be sent to the correct device along the model, so we do it manually.
457 self.pos_encoding = self.pos_encoding.to(device)
458 pos_embeds = self.pos_encoding[position_ids, :]
459
460 hidden_states = inputs_embeds + pos_embeds + token_type_embeds
This commit is introduced due to commit 6f36b56497828642b65f54ea26aa4064186de57a.
* Fix wrong token_type_ids shape in doc
Supported by TFCTRLMainLayer.call, line 376--394:
src/transformers/models/ctrl/modeling_tf_ctrl.py:
376 if token_type_ids is not None:
377 token_type_ids = tf.reshape(token_type_ids, [-1, shape_list(token_type_ids)[-1]])
378 token_type_embeds = self.w(token_type_ids)
379 token_type_embeds *= tf.math.sqrt(tf.cast(self.d_model_size, dtype=token_type_embeds.dtype))
380 else:
381 token_type_embeds = tf.constant(0.0)
382 position_ids = tf.reshape(position_ids, [-1, shape_list(position_ids)[-1]])
383
384 if inputs_embeds is None:
385 check_embeddings_within_bounds(input_ids, self.w.input_dim)
386 inputs_embeds = self.w(input_ids)
387 seq_len = input_shape[-1]
388 mask = 1 - tf.linalg.band_part(tf.ones((seq_len, seq_len)), -1, 0)
389
390 inputs_embeds *= tf.math.sqrt(tf.cast(self.d_model_size, inputs_embeds.dtype))
391
392 pos_embeds = tf.gather(self.pos_encoding, position_ids)
393 pos_embeds = tf.cast(pos_embeds, dtype=token_type_embeds.dtype)
394 hidden_states = inputs_embeds + pos_embeds + token_type_embeds
* Fix wrong position_ids shape in doc
Supported by TFCTRLMainLayer.call, line 384--394:
src/transformers/models/ctrl/modeling_tf_ctrl.py:
384 if inputs_embeds is None:
385 check_embeddings_within_bounds(input_ids, self.w.input_dim)
386 inputs_embeds = self.w(input_ids)
387 seq_len = input_shape[-1]
388 mask = 1 - tf.linalg.band_part(tf.ones((seq_len, seq_len)), -1, 0)
389
390 inputs_embeds *= tf.math.sqrt(tf.cast(self.d_model_size, inputs_embeds.dtype))
391
392 pos_embeds = tf.gather(self.pos_encoding, position_ids)
393 pos_embeds = tf.cast(pos_embeds, dtype=token_type_embeds.dtype)
394 hidden_states = inputs_embeds + pos_embeds + token_type_embeds
* Fix wrong inputs_embeds shape in doc
Supported by TFCTRLMainLayer.call, line 384--394:
src/transformers/models/ctrl/modeling_tf_ctrl.py:
384 if inputs_embeds is None:
385 check_embeddings_within_bounds(input_ids, self.w.input_dim)
386 inputs_embeds = self.w(input_ids)
387 seq_len = input_shape[-1]
388 mask = 1 - tf.linalg.band_part(tf.ones((seq_len, seq_len)), -1, 0)
389
390 inputs_embeds *= tf.math.sqrt(tf.cast(self.d_model_size, inputs_embeds.dtype))
391
392 pos_embeds = tf.gather(self.pos_encoding, position_ids)
393 pos_embeds = tf.cast(pos_embeds, dtype=token_type_embeds.dtype)
394 hidden_states = inputs_embeds + pos_embeds + token_type_embeds
* Fix wrong inputs_embeds shape in doc
Supported by ClvpDecoder.forward, line 1212--1213:
src/transformers/models/clvp/modeling_clvp.py:
1212 if inputs_embeds is None:
1213 inputs_embeds = self.input_embeds_layer(input_ids)
* Fix wrong position_ids shape in doc
Supported by FlaxGemmaPreTrainedModel.__call__, line 502--508:
src/transformers/models/gemma/modeling_flax_gemma.py:
502 batch_size, sequence_length = input_ids.shape
503
504 if position_ids is None:
505 if past_key_values is not None:
506 raise ValueError("Make sure to provide `position_ids` when passing `past_key_values`.")
507
508 position_ids = jnp.broadcast_to(jnp.arange(sequence_length)[None, :], (batch_size, sequence_length))
* Fix wrong position_ids shape in doc
Supported by FlaxGPT2PreTrainedModel.__call__, line 482--488:
src/transformers/models/gpt2/modeling_flax_gpt2.py:
482 batch_size, sequence_length = input_ids.shape
483
484 if position_ids is None:
485 if past_key_values is not None:
486 raise ValueError("Make sure to provide `position_ids` when passing `past_key_values`.")
487
488 position_ids = jnp.broadcast_to(jnp.arange(sequence_length)[None, :], (batch_size, sequence_length))
* Fix wrong position_ids shape in doc
Supported by GPT2Model.forward, line 918--921:
src/transformers/models/gpt2/modeling_gpt2.py:
918 if inputs_embeds is None:
919 inputs_embeds = self.wte(input_ids)
920 position_embeds = self.wpe(position_ids)
921 hidden_states = inputs_embeds + position_embeds.to(inputs_embeds.device)
* Fix wrong inputs_embeds shape in doc
Supported by GPT2Model.forward, line 918--919:
src/transformers/models/gpt2/modeling_gpt2.py:
918 if inputs_embeds is None:
919 inputs_embeds = self.wte(input_ids)
* Fix wrong labels shape in doc
Supported by GPT2LMHeadModel.forward, line 1156--1157:
src/transformers/models/gpt2/modeling_gpt2.py:
1156 Labels for language modeling. Note that the labels **are shifted** inside the model, i.e. you can set
1157 `labels = input_ids` Indices are selected in `[-100, 0, ..., config.vocab_size]` All labels set to `-100`
* Fix wrong labels shape in doc
Supported by GPT2DoubleHeadsModel.forward, line 1314--1315:
src/transformers/models/gpt2/modeling_gpt2.py:
1314 Labels for language modeling. Note that the labels **are shifted** inside the model, i.e. you can set
1315 `labels = input_ids`. Indices are selected in `[-100, 0, ..., config.vocab_size - 1]`. All labels set to
* Fix wrong token_type_ids shape in doc
Supported by TFGPT2MainLayer.call, line 486--500:
src/transformers/models/gpt2/modeling_tf_gpt2.py:
486 if inputs_embeds is None:
487 check_embeddings_within_bounds(input_ids, self.config.vocab_size)
488 inputs_embeds = self.wte(input_ids)
489
490 position_embeds = self.wpe(position_ids)
491
492 if token_type_ids is not None:
493 token_type_ids = tf.reshape(token_type_ids, [-1, shape_list(token_type_ids)[-1]])
494 token_type_embeds = self.wte(token_type_ids)
495 else:
496 token_type_embeds = tf.constant(0.0)
497
498 position_embeds = tf.cast(position_embeds, dtype=inputs_embeds.dtype)
499 token_type_embeds = tf.cast(token_type_embeds, dtype=inputs_embeds.dtype)
500 hidden_states = inputs_embeds + position_embeds + token_type_embeds
* Fix wrong position_ids shape in doc
Supported by TFGPT2MainLayer.call, line 486--500:
src/transformers/models/gpt2/modeling_tf_gpt2.py:
486 if inputs_embeds is None:
487 check_embeddings_within_bounds(input_ids, self.config.vocab_size)
488 inputs_embeds = self.wte(input_ids)
489
490 position_embeds = self.wpe(position_ids)
491
492 if token_type_ids is not None:
493 token_type_ids = tf.reshape(token_type_ids, [-1, shape_list(token_type_ids)[-1]])
494 token_type_embeds = self.wte(token_type_ids)
495 else:
496 token_type_embeds = tf.constant(0.0)
497
498 position_embeds = tf.cast(position_embeds, dtype=inputs_embeds.dtype)
499 token_type_embeds = tf.cast(token_type_embeds, dtype=inputs_embeds.dtype)
500 hidden_states = inputs_embeds + position_embeds + token_type_embeds
* Fix wrong inputs_embeds shape in doc
Supported by TFGPT2MainLayer.call, line 486--488:
src/transformers/models/gpt2/modeling_tf_gpt2.py:
486 if inputs_embeds is None:
487 check_embeddings_within_bounds(input_ids, self.config.vocab_size)
488 inputs_embeds = self.wte(input_ids)
* Fix wrong position_ids shape in doc
Supported by GPTBigCodeModel.forward, line 962--965:
src/transformers/models/gpt_bigcode/modeling_gpt_bigcode.py:
962 if inputs_embeds is None:
963 inputs_embeds = self.wte(input_ids)
964 position_embeds = self.wpe(position_ids)
965 hidden_states = inputs_embeds + position_embeds.to(inputs_embeds.device)
* Fix wrong inputs_embeds shape in doc
Supported by GPTBigCodeModel.forward, line 962--963:
src/transformers/models/gpt_bigcode/modeling_gpt_bigcode.py:
962 if inputs_embeds is None:
963 inputs_embeds = self.wte(input_ids)
* Fix wrong labels shape in doc
Supported by GPTBigCodeForCausalLM.forward, line 1158--1159:
src/transformers/models/gpt_bigcode/modeling_gpt_bigcode.py:
1158 Labels for language modeling. Note that the labels **are shifted** inside the model, i.e. you can set
1159 `labels = input_ids` Indices are selected in `[-100, 0, ..., config.vocab_size]` All labels set to `-100`
* Fix wrong position_ids shape in doc
Supported by FlaxGPTNeoModule.__call__, line 549--552:
src/transformers/models/gpt_neo/modeling_flax_gpt_neo.py:
549 input_embeds = self.wte(input_ids.astype("i4"))
550 position_embeds = self.wpe(position_ids.astype("i4"))
551
552 hidden_states = input_embeds + position_embeds
* Fix wrong position_ids shape in doc
Supported by GPTNeoModel.forward, line 685--720:
src/transformers/models/gpt_neo/modeling_gpt_neo.py:
685 if inputs_embeds is None:
686 inputs_embeds = self.wte(input_ids)
687
688 # kept for BC (non `Cache` `past_key_values` inputs)
689 return_legacy_cache = False
690 if use_cache and not isinstance(past_key_values, Cache):
691 return_legacy_cache = True
692 if past_key_values is None:
693 past_key_values = DynamicCache()
694 else:
695 past_key_values = DynamicCache.from_legacy_cache(past_key_values)
696 logger.warning_once(
697 "We detected that you are passing `past_key_values` as a tuple of tuples. This is deprecated and "
698 "will be removed in v4.47. Please convert your cache or use an appropriate `Cache` class "
699 "(https://huggingface.co/docs/transformers/kv_cache#legacy-cache-format)"
700 )
701
702 seq_length = inputs_embeds.shape[1]
703 if cache_position is None:
704 past_seen_tokens = past_key_values.get_seq_length() if past_key_values is not None else 0
705 cache_position = torch.arange(past_seen_tokens, past_seen_tokens + seq_length, device=inputs_embeds.device)
706
707 if position_ids is None:
708 position_ids = cache_position.unsqueeze(0)
709
710 causal_mask = self._update_causal_mask(
711 attention_mask, inputs_embeds, cache_position, past_key_values, output_attentions
712 )
713
714 # Prepare head mask if needed
715 # 1.0 in head_mask indicate we keep the head
716 # attention_probs has shape bsz x num_heads x N x N
717 # head_mask has shape n_layer x batch x num_heads x N x N
718 head_mask = self.get_head_mask(head_mask, self.config.num_layers)
719 position_embeds = self.wpe(position_ids)
720 hidden_states = inputs_embeds + position_embeds
* Fix wrong inputs_embeds shape in doc
Supported by GPTNeoModel.forward, line 685--686:
src/transformers/models/gpt_neo/modeling_gpt_neo.py:
685 if inputs_embeds is None:
686 inputs_embeds = self.wte(input_ids)
* Fix wrong labels shape in doc
Supported by GPTNeoForCausalLM.forward, line 968--969:
src/transformers/models/gpt_neo/modeling_gpt_neo.py:
968 Labels for language modeling. Note that the labels **are shifted** inside the model, i.e. you can set
969 `labels = input_ids` Indices are selected in `[-100, 0, ..., config.vocab_size]` All labels set to `-100`
* Fix wrong position_ids shape in doc
Supported by FlaxGPTJPreTrainedModel.__call__, line 455--461:
src/transformers/models/gptj/modeling_flax_gptj.py:
455 batch_size, sequence_length = input_ids.shape
456
457 if position_ids is None:
458 if past_key_values is not None:
459 raise ValueError("Make sure to provide `position_ids` when passing `past_key_values`.")
460
461 position_ids = jnp.broadcast_to(jnp.arange(sequence_length)[None, :], (batch_size, sequence_length))
* Fix wrong token_type_ids shape in doc
Supported by TFGPTJMainLayer.call, line 482--493:
src/transformers/models/gptj/modeling_tf_gptj.py:
482 if inputs_embeds is None:
483 check_embeddings_within_bounds(input_ids, self.wte.vocab_size)
484 inputs_embeds = self.wte(input_ids, mode="embedding")
485
486 if token_type_ids is not None:
487 token_type_ids = tf.reshape(token_type_ids, [-1, shape_list(token_type_ids)[-1]])
488 token_type_embeds = self.wte(token_type_ids, mode="embedding")
489 else:
490 token_type_embeds = tf.constant(0.0)
491
492 token_type_embeds = tf.cast(token_type_embeds, dtype=inputs_embeds.dtype)
493 hidden_states = inputs_embeds + token_type_embeds
* Fix wrong position_ids shape in doc
Supported by TFGPTJMainLayer.call, line 434--449:
src/transformers/models/gptj/modeling_tf_gptj.py:
434 elif input_ids is not None:
435 input_shape = shape_list(input_ids)
436 input_ids = tf.reshape(input_ids, [-1, input_shape[-1]])
437 elif inputs_embeds is not None:
438 input_shape = shape_list(inputs_embeds)[:-1]
439 else:
440 raise ValueError("You have to specify either input_ids or inputs_embeds")
441
442 if past_key_values is None:
443 past_length = 0
444 past_key_values = [None] * len(self.h)
445 else:
446 past_length = shape_list(past_key_values[0][0])[-2]
447
448 if position_ids is None:
449 position_ids = tf.expand_dims(tf.range(past_length, input_shape[-1] + past_length), axis=0)
* Fix wrong inputs_embeds shape in doc
Supported by TFGPTJMainLayer.call, line 482--484:
src/transformers/models/gptj/modeling_tf_gptj.py:
482 if inputs_embeds is None:
483 check_embeddings_within_bounds(input_ids, self.wte.vocab_size)
484 inputs_embeds = self.wte(input_ids, mode="embedding")
* Fix wrong labels shape in doc
Supported by TFGPTJForCausalLM.call, line 812--813:
src/transformers/models/gptj/modeling_tf_gptj.py:
812 Labels for language modeling. Note that the labels **are shifted** inside the model, i.e. you can set
813 `labels = input_ids` Indices are selected in `[-100, 0, ..., config.vocab_size]` All labels set to `-100`
* Fix possibly wrong input_ids shape in doc
Since 'input_ids_length' was mentioned immediately after the shape `(batch_size, sequence_length)`, it doesn't make sense to me for `input_ids` to have such shape---IMO it ought to have shape `(batch_size, input_ids_length)` instead.
* Fix possibly wrong token_type_ids shape in doc
Supported by ImageGPTModel.forward, line 773--780:
src/transformers/models/imagegpt/modeling_imagegpt.py:
773 if inputs_embeds is None:
774 inputs_embeds = self.wte(input_ids)
775 position_embeds = self.wpe(position_ids)
776 hidden_states = inputs_embeds + position_embeds.to(inputs_embeds.device)
777
778 if token_type_ids is not None:
779 token_type_embeds = self.wte(token_type_ids)
780 hidden_states = hidden_states + token_type_embeds
This commit is introduced due to commit 8e594a4143cca79f165b99e4ed4c9f3a90047bf3.
* Fix possibly wrong position_ids shape in doc
Supported by ImageGPTModel.forward, line 773--776:
src/transformers/models/imagegpt/modeling_imagegpt.py:
773 if inputs_embeds is None:
774 inputs_embeds = self.wte(input_ids)
775 position_embeds = self.wpe(position_ids)
776 hidden_states = inputs_embeds + position_embeds.to(inputs_embeds.device)
This commit is introduced due to commit 8e594a4143cca79f165b99e4ed4c9f3a90047bf3.
* Fix possibly wrong inputs_embeds shape in doc
Supported by ImageGPTModel.forward, line 773--774:
src/transformers/models/imagegpt/modeling_imagegpt.py:
773 if inputs_embeds is None:
774 inputs_embeds = self.wte(input_ids)
This commit is introduced due to commit 8e594a4143cca79f165b99e4ed4c9f3a90047bf3.
* Fix possibly wrong labels shape in doc
Supported by ImageGPTForCausalImageModeling.forward, line 923--924:
src/transformers/models/imagegpt/modeling_imagegpt.py:
923 Labels for language modeling. Note that the labels **are shifted** inside the model, i.e. you can set
924 `labels = input_ids` Indices are selected in `[-100, 0, ..., config.vocab_size]` All labels set to `-100`
This commit is introduced due to commit 8e594a4143cca79f165b99e4ed4c9f3a90047bf3.
* Fix possibly wrong labels shape in doc
Supported by ImageGPTModel.forward, line 665--666:
src/transformers/models/imagegpt/modeling_imagegpt.py:
665 Labels for language modeling. Note that the labels **are shifted** inside the model, i.e. you can set
666 `labels = input_ids` Indices are selected in `[-100, 0, ..., config.vocab_size]` All labels set to `-100`
This commit is introduced due to commit 8e594a4143cca79f165b99e4ed4c9f3a90047bf3.
* Fix wrong position_ids shape in doc
Supported by FlaxLlamaPreTrainedModel.__call__, line 484--490:
src/transformers/models/llama/modeling_flax_llama.py:
484 batch_size, sequence_length = input_ids.shape
485
486 if position_ids is None:
487 if past_key_values is not None:
488 raise ValueError("Make sure to provide `position_ids` when passing `past_key_values`.")
489
490 position_ids = jnp.broadcast_to(jnp.arange(sequence_length)[None, :], (batch_size, sequence_length))
* Fix wrong position_ids shape in doc
Supported by FlaxMistralPreTrainedModel.__call__, line 478--484:
src/transformers/models/mistral/modeling_flax_mistral.py:
478 batch_size, sequence_length = input_ids.shape
479
480 if position_ids is None:
481 if past_key_values is not None:
482 raise ValueError("Make sure to provide `position_ids` when passing `past_key_values`.")
483
484 position_ids = jnp.broadcast_to(jnp.arange(sequence_length)[None, :], (batch_size, sequence_length))
* Fix qwen2_5 get_rope_index tensor device locations
* simpler fix
* edit right file for modular model
* add a test
* try normalizing type to fix non-video
* fix some imports
* add a video forward test with dummy input
* skip compilation on cpu offload
* add test
* better logic
* docstring
* boolean logic
* add disk offload check
* warn users if compilation options are set but compilation doesn happen
* fix test
---------
Co-authored-by: Marc Sun <57196510+SunMarc@users.noreply.github.com>
* Init `SinusoidsPositionEmbedding` with float to avoid precision problem
* fix hidden_state for talker
* Update modular_qwen2_5_omni.py
* Move hidden processing out from thinker
* fixup
---------
Co-authored-by: lvyuanjun.lyj <lvyuanjun.lyj@alibaba-inc.com>
* fast image processor template for MobileNetV1 via transformers-cli
* Add fast image processors and unify tests for slow/fast image processor classes
* added loop over image_processor_list for all tests and removed boilerplate comments.
---------
Co-authored-by: Yoni Gozlan <74535834+yonigozlan@users.noreply.github.com>
* support poolformer fast image processor
* support test for crop_pct=None
* run make style
* Apply suggestions from code review
* rename test
---------
Co-authored-by: Yoni Gozlan <74535834+yonigozlan@users.noreply.github.com>
* tokenize inputs directly in apply_chat_template
* refactor processing
* revert changes processing llava
* Update docs
* fix issue with str being iterable
* add test chat text only
* change function name
- Since the `get_text_config` references an instance variable within
the class (`self.thinker_config`), the `get_text_config` method
should not be a classmethod.
- Before this fix, users were getting the following error:
'''
AttributeError: type object 'Qwen2_5OmniConfig' has no attribute 'thinker_config'
'''
* new card for mbart and mbart50
* removed comment BADGES
* Update mBart overview
Co-authored-by: Steven Liu <59462357+stevhliu@users.noreply.github.com>
* fix typo (MBart to mBart)
Co-authored-by: Steven Liu <59462357+stevhliu@users.noreply.github.com>
* maybe fix typo
* update typo and combine notes
* changed notes
* changed the example sentence
* fixed grammatical error and removed some lines from notes example
* missed one word
* removed documentation resources and added some lines of example code back in notes.
---------
Co-authored-by: Steven Liu <59462357+stevhliu@users.noreply.github.com>
* fix: RecurrentGemma crashes during inference for inputs longer than sliding window width
* fix recurrentgemma tests; add long test bigger than context window
* Restructure torchao quantization examples
Summary:
Mainly structured the examples by hardwares and then listed
the recommended quantization methods for each hardware H100 GPU, A100 GPU and CPU
Also added example for push_to_hub
Test Plan:
not required
Reviewers:
Subscribers:
Tasks:
Tags:
* update
* drop float8 cpu
* address comments and simplify
* small update
* link update
* minor update
* Set default value for output_attentions parameter in Gemma2 and Gemma3 models
* update
* fix
* fix
---------
Co-authored-by: chenin <wangzhichen@encosmart.com>
* [fix] make legacy bnb code work
* [fix] use get with default instead of getter
* add test for bnb 8bit optim skip embed
* [fix] style
* add require annotation of bnb
---------
Co-authored-by: jaycha <jaycha@ncsoft.com>
Co-authored-by: Marc Sun <57196510+SunMarc@users.noreply.github.com>
* fix: qwen2.5 omni modular get_rope_index
* test: add test for qwen2.5 omni rope index (video with audio input)
* style
* expected_position_ids readability
* fix: use spatial_merge_size = 1 in unit test
Update generation_strategies.md
The prompt text shown in the example does not match what is inside the generated output. As the generated output always include the prompt, the correct prompt should be "Hugging Face is an open-source company".
* initial commit
* add convert internvl
* add first end-to-end working internvl
* nit prompt and image proc
* add working chat template
* add conversion llama-based models
* add tests
* pass all tests
* fix isort
* fix modular after main merge
* add video processing for internvl
* add support for interlaced images and videos
* Remove processing and config from modular, add more tests
* add llama model tests
* Modify processor for compatibility with refactored got ocr image processor
* add comments in processor
* Add docs and nits
* change video processing to use custom sample_indices_fn
* rebase and fix tests
* add processor tests
* Add changes Raushan review
* Use the new attention interface for the vision model
* nits
* add support for custom video_load_backend
* remove mention to InternVLTokenizer
* refactor vision model to simplify logic
* refactor processor for better readibility
* fix copies
* fix require av processor test
* refactor internVL vision
* Update processor and fix processing tests
* fix docstring
* update convert_weights for internvl3
* change image processor to fast by default
* remove do_center_crop=True in convert_weights
* force use_cache to True
* push_to_hub before reloading
* fix internVLVision for larger models
* update convert weight for qk norm
* fix convert_weights
* fix eos_token_id in convert
* update docs and integration tests
* make modifs after review
* fix wrong k_norm and reduce modular
* change image_token_index to image_token_id
* change checkpoint to OpenGVLab org
* last nits
* explicitely del self.num_key_value_groups
* add extra special tokens
* fix issue that some example with no trainer use accelerator.end_training in a wrong way
* reformat code
---------
Co-authored-by: Marc Sun <57196510+SunMarc@users.noreply.github.com>
* use only `xxx_token_id` for multimodal tokens
* update modeling files as well
* fixup
* why fixup doesn't fix modular docstring first?
* janus, need to update configs in the hub still
* last fixup
* Iterative generation using input embeds
* Add Janus model
* discard changes
* Janus imports
* Refactor config and processor
* Added Vision tower of Janus
* Import Janus Image processor
* Vision tower fixes
* Refactor code
* Added VQ Model
* Complete model integration
* temp conversion script
* processor refactor
* Adding files to facilitate pulling
* Fixes after debugging
* Skip test for these models
* Add Janus Model
* discard changes
* Janus imports
* Refactor config and processor
* Added Vision tower of Janus
* Import Janus Image processor
* Vision tower fixes
* Refactor code
* Added VQ Model
* Complete model integration
* temp conversion script
* processor refactor
* Adding files to facilitate pulling
* Fixes after debugging
* Refactor to Text config
* ✨ Added generate function
* Saving intermediate convert file. Still need to read configs from the hub and convert them to our format.
* Adding version that reads from the JSON files. Still have to tweak some parameters manually.
* relative imports
* Initial tests
* Refactor image processor
* Seemingly working version of the conversion script, will need to test further.
* Adding command message
* Fixing conflicting JanusTextConfig class
* Incorporating some of the discussed changes.
* Small fix to create dir.
* Removing system from JINJA template
* Adding draft processor tests
* style fixes
* Minor fixes and enhancement
* added generation config
* Initial tests
* Small modifications, tests are now passing.
* Small changes I noticed while reading code.
* more fixes
* Added JanusModel class
* Small merge adaptations
* Small merge adaptations
* Image processing tests passing
* More tests and fixes
* Convert script updated and refactored
* Tests and cleanup
* make style
* Postprocessing for image generation
* generate refactor
* fixes
* - Passing tests that write a part of the model to cpu (e.g. test_cpu_offload)
- Passing tests of dispatching SDPA
- Only gradient checkpointing tests are left.
* Removing temporary code
* Changes
* Writing change to modular
* Added JanusVisionModel. SDPA dispatch tests pass more robustly. Gradient checkpoint tests are next
* Gradient checkpoint tests passing
* Removing debug code
* Major generate refactor 😮💨
* Temp changes for testing
* Green quality CI
* 2 out of 4 integration tests passing
* breadcrumbs
* Usage Examples
* Regenerate modeling after merge
* dirty code
* JanusIntegrationTest are passing
* breadcrumbs
* happy CI
* fixes
* Changing template
* nits
* Text generation logits matching original codebase at 100% precision
* Remove ./tmp from git tracking
* Remove ./tmp from git tracking
* Checkpointing changes after reviewing
* Fixing code in docstrings
* CHanging comments and small bug in convert file
* Fixing bug in image_token_id for 7B version
* Removing line that was added by both of us
* Pushing changes after discussion. Only one left is to change the key mapping for convert file.
* Updating module file
* New convert file using dict. Tested that it is equivalent to the old one by:
- comparing keys in a script
- comparing checksums of the output files between version generated with the current convert script and those generated with the old script. This is a more reliable test.
* revert changes
* mistake
* consistency change for CI
* make style
* doc fixes
* more fixes
* experimenting with masking out pad token
* checkpoint
* Batched generation with multi-images working for 1B models. Will test 7B next.
* Device fix.
* Writing changes to modular, previous ones were written to modeling just for quick testing.
* Using passed processor attention mask (only in modeling for now)
* Matching performance done in the non-standard way
* Working version of batched generation. Will change how some args are passed to make it more similar to language case
* More compliant version of the code
* Removed duplicated `_prepare_4d_causal_attention_mask_with_cache_position`
* Updating modular file, making masked filling with paddings more efficient
* Slightly more efficient version
* Modifying JanusVisionModel to be a wrapper
* Fixing test to comply with new names
* Modular overhaul
* More refactoring
* - Changing JanusVisionModel back
- Changing forward pass
- Adding boi token to the comparison
* - Removing whole context model_ids
- Using inherited implementation of prepare_inputs_for_generation
* Moving the way boi token is passed to the model
* Fixing sdpa test
* Minor changes
* testing changes
* Minor fix
* - Adding postprocessing test
- checking values of generated image on integration test
* changes
* Removing pooled attention vision module, fixing convert script as a consequence
* More changes
* Fixes
* Draft after merge
* Bug fixes
* More bug fix
* Fixing docs
* Nits
* Refactor return dict
* Moving image post processing test to main processor post process
* Passing guidance_scale as kwarg
* make style
* 🔥 refactor
* make style
* Update and green CI
* Nits and tests update
* up
* Added MID block
* fix
* Dead code
* update testcase
* update
* model_id change
* init_weight changes
---------
Co-authored-by: hsilva664 <metallic-silver@hotmail.com>
* Fix mamba2 grouped support in bamba torch path
* patch zamba2 and mamba2
* Add a unit test for grouped SSD
* add comment for the new unit test
* add output_size arg value to repeat_interleave calls
* Add comment
* added efficientnet image preprocessor but tests fail
* ruff checks pass
* ruff formatted
* properly pass rescale_offset through the functions
* - corrected indentation, ordering of methods
- reshape test passes when casted to float64
- equivalence test doesn't pass
* all tests now pass
- changes order of rescale, normalize acc to slow
- rescale_offset defaults to False acc to slow
- resample was causing difference in fast and slow. Changing test to bilinear resolves this difference
* ruff reformat
* F.InterpolationMode.NEAREST_EXACT gives TypeError: Object of type InterpolationMode is not JSON serializable
* fixes offset not being applied when do_rescale and do_normalization are both true
* - using nearest_exact sampling
- added tests for rescale + normalize
* resolving reviews
---------
Co-authored-by: Yoni Gozlan <74535834+yonigozlan@users.noreply.github.com>
* update
* apply suggestion
* fix tests for main branch
* remove unused logger
* add special tokens in tests
* nit
* fix more tests
* fix test
* pg also
Make Ignored Columns Value Error More Informative
Included forward method signature columns in the ValueError so end users will know what columns are expected to be passed to the model in addition to those which are ignored.
* initial documentation
* rename mask to attention_mask
* smaller tests
* fixup
* fix copies
* move to time series section
* sort docs
* isort fix
* batch_size is not a configuration
* rename to TimesFMModelForPrediction
* initial script
* add check_outputs
* remove dropout_rate
* works with torch.Tensor inputs
* rename script
* fix docstrings
* fix freq when window_size is given
* add loss
* fix _quantile_loss
* formatting
* fix isort
* add weight init
* add support for sdpa and flash_attention_2
* fixes for flash_attention
* formatting
* remove flash_attention
* fix tests
* fix file name
* fix quantile loss
* added initial TimesFMModelIntegrationTests
* fix formatting
* fix import order
* fix _quantile_loss
* add doc for SDPA
* use timesfm 2.0
* bug fix in timesfm decode function.
* compare mean forecasts
* refactor type hints, use CamelCase
* consolidate decode func
* more readable code for weight conversion
* fix-copies
* simpler init
* renaem TimesFmMLP
* use T5LayerNorm
* fix tests
* use initializer_range
* TimesFmModel instead of TimesFmDecoder
* TimesFmPositionalEmbedding takes config for its init
* 2.0-500m-pytorch default configs
* use TimesFmModel
* fix formatting
* ignore TimesFmModel for testing
* fix docstring
* override generate as its not needed
* add doc strings
* fix logging
* add docstrings to output data classes
* initial copy from t5
* added config and attention layers
* add TimesFMPositionalEmbedding
* calcuate scale_factor once
* add more configs and TimesFMResidualBlock
* fix input_dims
* standardize code format with black
* remove unneeded modules
* TimesFM Model
* order of imports
* copy from Google official implementation
* remove covariate forecasting
* Adapting TimesFM to HF format
* restructing in progress
* adapted to HF convention
* timesfm test
* the model runs
* fixing unit tests
* fixing unit tests in progress
* add post_init
* do not change TimesFMOutput
* fixing unit tests
* all unit tests passed
* remove timesfm_layers
* add intermediate_size and initialize with config
* initial documentation
* rename mask to attention_mask
* smaller tests
* fixup
* fix copies
* move to time series section
* sort docs
* isort fix
* batch_size is not a configuration
* rename to TimesFMModelForPrediction
* initial script
* add check_outputs
* remove dropout_rate
* works with torch.Tensor inputs
* rename script
* fix docstrings
* fix freq when window_size is given
* add loss
* fix _quantile_loss
* formatting
* fix isort
* add weight init
* add support for sdpa and flash_attention_2
* fixes for flash_attention
* formatting
* remove flash_attention
* fix tests
* fix file name
* fix quantile loss
* added initial TimesFMModelIntegrationTests
* fix formatting
* fix import order
* fix _quantile_loss
* add doc for SDPA
* use timesfm 2.0
* bug fix in timesfm decode function.
* compare mean forecasts
* refactor type hints, use CamelCase
* consolidate decode func
* more readable code for weight conversion
* fix-copies
* simpler init
* renaem TimesFmMLP
* use T5LayerNorm
* fix tests
* use initializer_range
* TimesFmModel instead of TimesFmDecoder
* TimesFmPositionalEmbedding takes config for its init
* 2.0-500m-pytorch default configs
* use TimesFmModel
* fix formatting
* ignore TimesFmModel for testing
* fix docstring
* override generate as its not needed
* add doc strings
* fix logging
* add docstrings to output data classes
* add _CHECKPOINT_FOR_DOC
* fix comments
* Revert "fix comments"
This reverts commit 8deeb3e191b3671bc1d74dbfe77b736a066c3d34.
* add _prepare_4d_attention_mask
* we do not have generative model classes
* use Cache
* return past_key_values
* modules initialized with config only
* update year
* Update docs/source/en/model_doc/timesfm.md
Co-authored-by: Steven Liu <59462357+stevhliu@users.noreply.github.com>
* add layer_idx to cache
* modular timesfm
* fix test
* unwrap sequential class
* fix toctree
* remove TimesFmOnnxConfig
* fix modular
* remove TimesFmStackedDecoder
* split qkv layer into individual layers
* rename projection layers
* use ALL_ATTENTION_FUNCTIONS
* is_causal is True
* rename config
* does not support flash_attn_2
* formatting
* fix typo in docsstring
* rename inputs
* add time series mapping
* Update src/transformers/models/olmo2/modeling_olmo2.py
* Update src/transformers/models/moonshine/modeling_moonshine.py
* use updated arguments
* fix class name
* add MODEL_FOR_TIME_SERIES_PREDICTION_MAPPING
* isort
* consolidate _preprocess into forward
* fix a typo
* fix a typo
* fix toc
* fix modular
* remove aaserts
* use self.config._attn_implementation
* move to _postprocess_output
* remove timesfm_get_large_negative_number
* use view unstead of multiple unsqueeze
* make helpers static methods of the Model
* use to_tuple
* use to_tuple if not return_dict
* remove unused intitialization block as its incorporated in nn.Linear
* remove unused num_key_value_groups
* use the same convention as the masking method
* update modular
* do not use unsqueeze
* use view instead of unsqueeze
* use buffer for inv_timescales
* formatting
* modular conversion
* remove unneeded intialization
* add missing docstrings
* remove cache
* use simple_eager_attention_forward
* support tp_plan
* support for flex and flash attention masks
* Revert "support for flex and flash attention masks"
This reverts commit def36c4fcf31599b3f4937c9334b7da1a20132c3.
* fix device
* fix tests on gpu
* remove unsued large model test
* removed unneeded comments
* add example usage
* fix style
* add import
* Update docs/source/en/model_doc/timesfm.md
Co-authored-by: Cyril Vallez <cyril.vallez@gmail.com>
* inherit from LlamaRMSNorm
* use can_return_tuple decorator
* remvoe return_dict
* fix year
* Update docs/source/en/model_doc/timesfm.md
Co-authored-by: Cyril Vallez <cyril.vallez@gmail.com>
* pretrained does not inherit from GenerationMixin
* use model for integration test
---------
Co-authored-by: Kashif Rasul <kashif.rasul@gmail.com>
Co-authored-by: Rajat Sen <rsen91@gmail.com>
Co-authored-by: Steven Liu <59462357+stevhliu@users.noreply.github.com>
Co-authored-by: Cyril Vallez <cyril.vallez@gmail.com>
Co-authored-by: Cyril Vallez <cyril.vallez@huggingface.co>
* fix: Restore explicit error surfacing for unexpected hub exceptions
Prior to PR #36033, unexpected exceptions (e.g., ModuleNotFoundError) during hub model loading were not swallowed silently. They either matched specific except blocks or were raised.
After #36033, a catch-all except Exception block was introduced without a fallback else, causing unknown errors to be silently ignored and leading to misleading downstream behavior.
This commit adds an `else: raise e` to ensure only explicitly handled exceptions are suppressed. All others are surfaced, restoring pre-4.50 behavior and aiding in debugging and dependency visibility.
Co-authored-by: Cyril Vallez <cyril.vallez@huggingface.co>
* Add MLCD model
* Update codes for auto-mapping
* Add test scripts for MLCD
* Update doc for MLCD model
* Fix import error
* Fix import error
* Fix CI error for attention_outputs
* Fix code style for CI
* Fix code style for CI
* Fix code style for CI
* Fix code style for CI
* Fix code style for CI
* Fix CI error for initialization
* Fix code style for CI
* Fix code style for CI
* Reformat codes and docs for CI test
* Reformat codes and docs for CI test
* Remove unused attributes for CI test
* Fix style for CI test
* List MLCD in flash_attn doc
* Fix: typos, modulars, refactors from suggestions
* Refactoring convert_mlcd_weights_to_hf.py from suggestions
* Fix: docs conflicts
* Fix error for CI test
* Fix style for CI test
* Add integration test for MLCD
* Refactoring by class inheritance
* Fix: refactor attention interface, adjust codes
* Fix: merging conflicts
* Fix: merging conflicts
* Fix: style for CI test
* Fix: style for CI test
* Fix: set test_resize_embeddings to be False
* Fix: initializer for CI test
* Fix: conflicts, CI test, warning and refactoring
* Fix: merging conflicts
* Refactor
* Update docs
* Fix mistakes
* Remove unused args and fix multi-gpu error
* Revert position_embeddings
* Solve conflicts
* Solve conflicts
* Remove dummy
* Update _init_weights
* Update _init_weights
* Update _init_weights for CI test
* fix BlockMask handling when using flex_attention for llama/mistral/gemma2
* fix attention_mask types
* revert type hints and fixup
* remove unnecessary assertion
* support fast image processor layoutlmv3
* make style
* add warning and update test
* make style
* Update src/transformers/models/layoutlmv3/image_processing_layoutlmv3_fast.py
* Update image_processing_auto.py
---------
Co-authored-by: Yoni Gozlan <74535834+yonigozlan@users.noreply.github.com>
* support flava fast image processor
* run style and quality
* update test
* update according to reviews
* make style
* update comment on BICUBIC
* make style
---------
Co-authored-by: Yoni Gozlan <74535834+yonigozlan@users.noreply.github.com>
* First pass at speech granite
Add encoder / projector, rename things
* Combine into one model file with causal lm outputs for forward
* Add loss calc
* Fix config loading
Signed-off-by: Alex-Brooks <Alex.brooks@ibm.com>
* Split new / old loading logic
* Use transformers integration for loading peft adapters
* Add generation wrapper for selective lora enablement
* Add note for qformer encoder automodel
* Guard torch/audio imports in feature extractor
* Handle granite speech autoclasses
* Handle optional deps in package structure for granite speech
* Add granite pretrained model def for init
* Add dummy objects for torch/torchaudio
* Add tests for granite speech processor
* Minor formatting fixes and refactoring
* Add options for falling back to config in forward
* Tentative model docstrings for granite speech
* Fix config type
* Remove legacy load
* Allow non-lora variants for granite speech
* Override weight tying for llm
* Use text config instead of llm config
* Add output embeddings getter to fix weight tying
* Fix relative imports
* computing the number of audio features, based on the raw audio sequence.
* collating audio inputs, and keeping the original lengths.
* asserted we have text. otherwise we can't specify the audio special token.
* assering the number of audio-symbols/audios match correctly.
running get validated_audios only when audio is present
* indentation bugfix + supporting different feature lengths when expanding audio.
* redundant, done in _get_validated_text
* adapting the tests:
- we must have text (not either audio or text)
- _get_num_audio_features takes a list of raw lengths, provided it insetad.
* Minor cleanup, remove unused import
* Add more tests for batch feature processing
* Allow setting offset in rel position embeddings
* Add config option for warning if peft is not installed w/ lora
* Port blip2 qformer code into granite speech
* Add sad test for numpy arr processing
* Allow numpy arrays / tuples in granite speech processor
* Fix config type for projector
* - pad instead of creating a zeros tensor, to keep the original dtype/device (support bfloat16)
- cast input_features to the model dtype (support bfloat16)
* merge Blip2QFormerConfig to GraniteSpeechProjectorConfig
* prevent a crash when re-saving/loading the model (line 109)
* consider additional edge cases during preprocessing.
* consider additional edge cases during preprocessing.
* add features mask for batched inference (bugfix)
* Minor refactor, remove multiaudio processor tests
* Add set input/output embeddings for granite speech
* Fix feature dim check in processor test
* Pop input features in embed test for granite speech
* Small fixes for test edge cases
Add granite speech to seq2seq causal lm mapping names
* Add small tests for granite speech model
* Fix data parallelism test
* Standardize model class names
* Fix check for copies
* Fix misaligned init check
* Skip granite speech in checkpoint check
* Use default for tie_word_embeddings in granite speech
* Fix non documentation granite speech repo issues
* Fix comments and docstring checks
* Add placeholder docs for granite speech
* Fix test naming collision
* Code formatting
* Rerun torch dummy obj regen
* Fix save pretrained for granite speech
* Import sorting
* Fix tests typo
* Remove offset hack
* Pass args through encoder config
* Remove unused prune heads from blip2
* removing einsum. replaced with explicit multiplication (relative positional encodings) and sdpa attention.
* remove Sequential from ConformerFeedForward and ConformerConvModule. + fix for sdpa attention
* remove GraniteSpeechConformerScale
* rename to hidden_states
* rename conformer layers to self.layers, remove the first linear from the list to keep the list homogenous.
* move pre-norm to the attention/feedforward blocks (avoid complex module wrapping)
* adding pre_norm into forward
* feature extractor refactoring to resemble how it's done in phi4multimodal.
* rename feature_extractor to audio_processor
* bugfix: input_feature_mask fix to get the exact number tokens.
* Fix pytest decorator in processor test
* Add (disabled) integration tests for granite speech
* Fix handling of optional feature masking
* Loosen validation in processing for vLLM compatability
* Formatting fixes
* Update init structure to mirror llama
* Make granite speech projector generic
* Update test config to reflect generic projector
* Formatting fixes
* Fix typos, add license
* Fix undefined var in input processing
* Cleanup and expose ctc encoder
* Add missing config docstrings
* Better var names, type hints, etc
* Set attn context size in init
* Add max pos emb to encoder config
* Cleanup feature extractor
* Add granite speech architecture details
* Remove granite speech qformer ref
* Add paper link, explicit calc for qkv
* Calculate padding directly in depthwise conv1d init
* Raise value error instead of asserting
* Reorder class defs (classes used at top)
* Precompute relpos distances
* Run formatting
* Pass attention distances through forward
* Apply suggestions from code review
Co-authored-by: eustlb <94853470+eustlb@users.noreply.github.com>
* Add todo for using common batch feature extraction
* Rename audios/features
* Ensure chat template may be provided to processor
* Move granite speech docs to audio models
* Add todos for input proc refactoring
* Fix import order
* Guard torch import
* Use relative imports
* Require torch backend for processor in granite speech
* Add backend guards in feature extractor
---------
Signed-off-by: Alex-Brooks <Alex.brooks@ibm.com>
Co-authored-by: Avihu Dekel <avihu.dekel@ibm.com>
Co-authored-by: eustlb <94853470+eustlb@users.noreply.github.com>
* Add saving in the new format (but no loading yet!)
* Add saving in the new format (but no loading yet!)
* A new approach to template files!
* make fixup
* make fixup, set correct dir
* Some progress but need to rework for cached_file
* Rework loading handling again
* Small fixes
* Looks like it's working now!
* make fixup
* Working!
* make fixup
* make fixup
* Add TODO so I don't miss it
* Cleaner control flow with one less indent
* Copy the new logic to processing_utils as well
* Proper support for dicts of templates
* make fixup
* define the file/dir names in a single place
* Update the processor chat template reload test as well
* Add processor loading of multiple templates
* Flatten correctly to match tokenizers
* Better support when files are empty sometimes
* Stop creating those empty templates
* Revert changes now we don't have empty templates
* Revert changes now we don't have empty templates
* Don't support separate template files on the legacy path
* Rework/simplify loading code
* Make sure it's always a chat_template key in chat_template.json
* Update processor handling of multiple templates
* Add a full save-loading test to the tokenizer tests as well
* Correct un-flattening
* New test was incorrect
* Correct error/offline handling
* Better exception handling
* More error handling cleanup
* Add skips for test failing on main
* Reorder to fix errors
* make fixup
* clarify legacy processor file docs and location
* Update src/transformers/processing_utils.py
Co-authored-by: Lucain <lucainp@gmail.com>
* Update src/transformers/processing_utils.py
Co-authored-by: Lucain <lucainp@gmail.com>
* Update src/transformers/processing_utils.py
Co-authored-by: Lucain <lucainp@gmail.com>
* Update src/transformers/processing_utils.py
Co-authored-by: Lucain <lucainp@gmail.com>
* Rename to _jinja and _legacy
* Stop saving multiple templates in the legacy format
* Cleanup the processing code
* Cleanup the processing code more
* make fixup
* make fixup
* correct reformatting
* Use correct dir name
* Fix import location
* Use save_jinja_files instead of save_raw_chat_template_files
* Correct the test for saving multiple processor templates
* Fix type hint
* Update src/transformers/utils/hub.py
Co-authored-by: Julien Chaumond <julien@huggingface.co>
* Patch llava_onevision test
* Update src/transformers/processing_utils.py
Co-authored-by: Julien Chaumond <julien@huggingface.co>
* Update src/transformers/tokenization_utils_base.py
Co-authored-by: Julien Chaumond <julien@huggingface.co>
* Refactor chat template saving out into a separate function
* Update tests for the new default
* Don't do chat template saving logic when chat template isn't there
* Ensure save_jinja_files is propagated to tokenizer correctly
* Trigger tests
* Update more tests to new default
* Trigger tests
---------
Co-authored-by: Lucain <lucainp@gmail.com>
Co-authored-by: Julien Chaumond <julien@huggingface.co>
* the fix that did not get in
* add kernels
* full graph does not work
* simpler is better
* Update src/transformers/integrations/hub_kernels.py
Co-authored-by: Daniël de Kok <me@danieldk.eu>
* Update src/transformers/integrations/fbgemm_fp8.py
Co-authored-by: Daniël de Kok <me@danieldk.eu>
* Update src/transformers/integrations/hub_kernels.py
Co-authored-by: Daniël de Kok <me@danieldk.eu>
* fixup
---------
Co-authored-by: Daniël de Kok <me@danieldk.eu>
Corrects the file path used to locate the CUDA kernels
for the Deformable Attention module. This ensures that
the kernels are loaded correctly, resolving potential
errors during module initialization and usage.
Previously, the identity function was used for dropped tokens
with a weight from the expert that was not applied to the hidden states.
This was misleading, because dropping means, the expert weight is zero.
Instead of trying to fix the weight, we take an easier approach by initializing with zeros.
Fixes issue https://github.com/huggingface/transformers/issues/37017
* add classifier head to donut
* add to transformers __init__
* add to auto model
* fix typo
* add loss for image classification
* add checkpoint
* remove no needed import
* reoder import
* format
* consistency
* add test of classifier
* add doc
* try ignore
* update loss for all swin models
* fix tests and some clean up
* make one general test for each modality
* remove redundant merging of kwargs
* edge cases
* dont enforce slow when reloading
* fix gemma3 tests
* has to adapt llama 4 after rebase
* remove also from overriden tests
* should be green now
* debugging improvements
* add debugging details
* add more debugging details
* debug more
* the fix that did not get in
* First fix flex
* fix query offset
* fix flex first
* fix device mask creation for speed
* small mask creation sdpa
* Update flex_attention.py
* remove chunked prefill from HybridChunkedCache
* never seen such a fucked up merged
* clean up layers + output
* add summary json file
* Efficient general cache
* Update cache_utils.py
* cleanup
* fix?
* fix!
* oups typo
* not everywhere
* more fixes
* revert unrelated changes
* Fix but ugly for now -> should use pad instead
* oups
* re-initialize the cache
* Use pad to simplify
* style
* correct slicing
---------
Co-authored-by: Pablo <pablo.montalvo.leroux@gmail.com>
Co-authored-by: Cyril Vallez <cyril.vallez@gmail.com>
* add peft model in constant
* add test
* fix formating
* make fixup execute
* change code
* check by self.task
* add test
* fixup test code
* fix minor typo
* fix pipeline test
* apply maintainers reqests
* add changed
* Revert "add changed"
This reverts commit 0a0166a1fe80556115a49fbf0c2132de0f4f85c9.
* update with NEW MODEL class called GLM4
* update
* Update glm4.md
* Name
* style
* fix copies
* fixup test
---------
Co-authored-by: Yuxuan Zhang <2448370773@qq.com>
fix conversion script no_rope_layers
`no_rope_layers` should either be a list of NoPE layers or None, such that it is created in the config from the `no_rope_layer_interval`
Co-authored-by: Pedro Cuenca <pedro@huggingface.co>
* Preserve requires_grad in pre quantized model
Summary:
discovered this when running lm-eval for some models, current
code will set requires_grad to True always
Test Plan:
lm_eval --model hf --model_args pretrained=jerryzh168/phi4-torchao-gguf-q4_k --tasks hellaswag --device cuda:0 --batch_size 8
Reviewers:
Subscribers:
Tasks:
Tags:
* ruff format
---------
Co-authored-by: Mohamed Mekkouri <93391238+MekkCyber@users.noreply.github.com>
* More limited setup -> setupclass conversion
* make fixup
* Trigger tests
* Fixup UDOP
* Missed a spot
* tearDown -> tearDownClass where appropriate
* Couple more class fixes
* Fixups for UDOP and VisionTextDualEncoder
* Ignore errors when removing the tmpdir, in case it already got cleaned up somewhere
* CLIP fixes
* More correct classmethods
* Wav2Vec2Bert fixes
* More methods become static
* More class methods
* More class methods
* Revert changes for integration tests / modeling files
* Use a different tempdir for tests that actually write to it
* Remove addClassCleanup and just use teardownclass
* Remove changes in modeling files
* Cleanup get_processor_dict() for got_ocr2
* Fix regression on Wav2Vec2BERT test that was masked by this before
* Rework tests that modify the tmpdir
* make fix-copies
* revert clvp modeling test changes
* Fix CLIP processor test
* make fix-copies
* Skip non-selected experts for mixtral and qwen2_moe
* Fix: tensor tolist()
* WIP: tokenization test
* fix modular source of truth
* nits
---------
Co-authored-by: Arthur Zucker <arthur.zucker@gmail.com>
Co-authored-by: Arthur <48595927+ArthurZucker@users.noreply.github.com>
* update for fixes
* more fixes
* fuxix dynamic cache?
* style
* fix both traiining and generating. Eager seems alright
* dynamic does not work
* fix most cases, use_cache or not, eager or not, no default cache (ex: not training but you want to get cache states)
* should be final fixes
* fix more stuff no cat
* style
* fix
* style
* final sytle
* qualityeioiwhjfaopsejdpofqsdjkfjha;wesdhgfkjlqsw.denghjkaswednkgs
* fix
* revert
* Improved Model card for Gemma2
* Made changes in gemma2 as suggested
* Made more changes in the doc (adding image, notes, closing hfoptions)
* minor fixes
---------
Co-authored-by: Steven Liu <59462357+stevhliu@users.noreply.github.com>
* Update Model card for gpt2
* Update link for gpt2 space
* fixes docs based on suggestions
* Add transformers-cli and quantization example for GPT-2
* Remove resources and flash attention docs and fix typos
* enable tests/models/llama/test_modeling_llama.py::LlamaIntegrationTest::test_model_7b_logits and tests/models/llama/test_modeling_llama.py::LlamaIntegrationTest::test_model_7b_logits_bf16 on xpu
Signed-off-by: YAO Matrix <matrix.yao@intel.com>
* switch to use Expectations
Signed-off-by: YAO Matrix <matrix.yao@intel.com>
* fix style
Signed-off-by: YAO Matrix <matrix.yao@intel.com>
* extract gen bits from architecture and use it
Signed-off-by: YAO Matrix <matrix.yao@intel.com>
* add cross refererence
Signed-off-by: YAO Matrix <matrix.yao@intel.com>
* fix style
Signed-off-by: YAO Matrix <matrix.yao@intel.com>
---------
Signed-off-by: YAO Matrix <matrix.yao@intel.com>
Co-authored-by: Marc Sun <57196510+SunMarc@users.noreply.github.com>
* Updated model card for distilbert
* Updated the distilbert model card
* Updated model card for distilbert
* Updated the distilbert model card
* Addressed code review comments
* Addressed review comments
* fix pipeline
---------
Co-authored-by: Steven Liu <59462357+stevhliu@users.noreply.github.com>
* github why you do this
* fix
* make fixup
* disable cpu offload test
* fixup
* tmp reworks
* git branch movement
* make fixup
* add require_fsdp_v2_version
* dep issues
* update ruff and fixup
enable 2 types of case on XPU 1. test_resize_tokens_embeddings_with_deepspeed_multi_gpu 2. test_resize_embeddings_untied_with_deepspeed_multi_gpu
Signed-off-by: YAO Matrix <matrix.yao@intel.com>
* More ReDOS fixes!
* Slight regex cleanup
* Cleanup regex replacement
* Drop that regex entirely too
* The regex didn't match config.json, let's make sure we don't either
* Cleanup allowed_value_chars a little
* Cleanup the import search
* Catch multi-condition blocks too
* Trigger tests
* Trigger tests
* Remove unnecessary masked_fill in deberta models
* Enable some code when exporting but not compiling
* add missing import
* style
* replace if by torch.cond
* style
* use numel
* style
* add unit tests
* style
* change empty value for dynamic cache
* replace != [] by numel()
* fix import issue
* style
* Update Siglip attention implementation
* Update tests for Siglip
* Remove one level of indentation
* Update test to be more specific
* Fixup
* Idefics2
* Idefics3
* Emu3
* SmolVLM
* Phi4 (just init small update)
* Idefics2 (test fix)
* Update siglip2 tests
* Update eager
* trigger
* Clean up
* Transfer inputs to device in test
* Fixing test
* Fixing test
* Revert contiguous
* Remove unused is_flash_attn_2_available
* Move flaky to specific models
* fix XPU UT error case brough by RNG difference btw XPU and CUDA
Signed-off-by: YAO Matrix <matrix.yao@intel.com>
* enable tests/models/llama/test_modeling_llama.py::LlamaIntegrationTest::test_model_7b_logits and tests/models/llama/test_modeling_llama.py::LlamaIntegrationTest::test_model_7b_logits_bf16 on xpu
Signed-off-by: YAO Matrix <matrix.yao@intel.com>
* Revert "enable tests/models/llama/test_modeling_llama.py::LlamaIntegrationTest::test_model_7b_logits and tests/models/llama/test_modeling_llama.py::LlamaIntegrationTest::test_model_7b_logits_bf16 on xpu"
This reverts commit 3ef83a4f0204642daa45fda56e8aca1afed24b4f.
---------
Signed-off-by: YAO Matrix <matrix.yao@intel.com>
* Initial commit for Qwen3
* fix and add tests for qwen3 & qwen3_moe
* rename models for tests.
* fix
* fix
* fix and add docs.
* fix model name in docs.
* simplify modular and fix configuration issues
* Fix the red CI: ruff was updated
* revert ruff, version was wrong
* fix qwen3moe.
* fix
* make sure MOE can load
* fix copies
---------
Co-authored-by: Arthur Zucker <arthur.zucker@gmail.com>
* init commit
* style
* take comments into account
* add deepseekv3 modeling
* remove redundant code
* apply make style
* apply fix-copies
* make format
* add init files
* rename deepseekv3 into deepseek_v3 based on its model_type
* rename deepseekv3 into deepseek_v3 based on its model_type
* deepseek-v3 not deepseek_v3
* set model_type as deepseek_v3
* use default docs
* apply make
* fill type and docstring
* add rope_config_validation
* use custom DeepseekV3MLP
* hold code only for checkpoints congifuration; remove redundant
* revise rope yarn for DeepSeek variation
* rename DeepSeek-V3
* some refactoring
* revise load_hook to work properly; make moe func trainable; use llama instead of mixtral
* fix attention forward
* use -1 for not-changing dim when to use exapnd
* refactor DeepseekV3TopkRouter
* use reshape_for_rope instead of load_hook; revise attention forward for TP; rename q_head_dim with qk_head_dim
* register pre_hook and hook both
* make style
* use n_shared_experts
* Update src/transformers/models/deepseek_v3/configuration_deepseek_v3.py
Co-authored-by: Arthur <48595927+ArthurZucker@users.noreply.github.com>
* add test file
* update modeling_file according to modular file
* make style
* add mapping for DeepseekV3ForSequenceClassification
* remove aux_loss_alpha
* add deepseek_v3 for perf
* add deepseek_v3
* rename test as deepseekv3
* use tiny-deepseek-v3
* remove DeepseekV3ForSequenceClassification
* cache before padding
* remote output_router_logits
* Revert "remote output_router_logits"
This reverts commit f264f800d04950390db8413b9efb24cef8186330.
* remove output_router_logits
* make e_score_correction_bias as buffer
* skip tests not compatible
* make style
* make e_score_correction_bias as buffer
* use rope_interleave instead of load_hook
* skip tests not compatible with MLA
* add doc for rope_interleave
* fix typo
* remove torch.no_grad for selecting topk
* fix post merge issue
* mrege with main and simplify
* nits
* final
* small fixes
* fix
* support TP better
* stash
* changes currently requires
* remove synch
* more fixes for TP
* temp fix for TP : some attention layers's FP8 scales are too small + shared is local colwise and anything is local if FP8 because weights are used
* updates to have generation work!
* push most of the changes
* reorder functions + call for contributions!
* update readme
* nits
* update
* ruff was updated on main
* merge with main and fix copies
* revert unrelated changes
* route all tokens to all experts when testing to avoid no gradient iddues
* finish fixing all tests
* fixup
* nit
* clean config
* last readme changes
* nit
* do cnit
* typo
* last nit
* one more one more
---------
Co-authored-by: Arthur Zucker <arthur.zucker@gmail.com>
Co-authored-by: Arthur <48595927+ArthurZucker@users.noreply.github.com>
Co-authored-by: arthur@huggingface.co <arthur@ip-26-0-165-131.ec2.internal>
* Add image_token_id and video_token_id handling in Llava processors
* fix: image to video
* fix: correct image and video token ID handling in Llava processors
* fix: improve image and video token ID handling in Llava processors
* Optimize to_py_obj for python-native numeric lists and scalars
* Fix bug that tuple is not converted to list
* Try np.array for more robust type checking
* Apply review and add tests for to_py_obj
* Updated docker files to use uv pip install as uv is blazingly fast.
* Removed -y flag for uv pip uninstall.
* Passed --no-build-isolation flag
---------
Co-authored-by: Yih-Dar <2521628+ydshieh@users.noreply.github.com>
* add audio chat templates
* update
* update
* nit
* green ci
* we dont care about the order anymore
* clean up after rebase
* overriden tests rename
* rename shieldgemma also
* one more rename
* require_read_token
* removde images/videos
* retrigger CI flaky
* chore: fix typos in test codes
* chore: fix typos in test codes
* chore: fix typos in test codes
* chore: fix typos in test codes
* chore: fix typos in test codes
* chore: fix typos in test codes
* chore: fix typos in test codes
* chore: fix typos in test codes
* chore: format codes
* Added support for seed in `DataCollatorForWholeWordMask`, and also wrote tests.
Also fixed bugs where the code hardcoded values for mask replacement probability and random replacement probability, instead of using the values passed by the user.
* formatting issues
* Used better way to generate seed in TF. Made tests more consistent.
tests: fix asyncio.wait() usage for python>=3.7
Passing coroutings directly to `asyncio.wait()` is deprecated since
python 3.8 and removed starting from python 3.11. Instead, it's required
to explicitly wrap coroutine in the task with `asyncio.create_task()` which
first appeared in python 3.7.
We step into this issue running the following Transformers tests on a
system with python 3.11 or later (for example, Ubuntu 24.04 has python 3.12):
* `tests/trainer/test_trainer_distributed.py`
* `tests/extended/test_trainer_ext.py`
The error will be:
```
src/transformers/testing_utils.py:2380: in execute_subprocess_async
result = loop.run_until_complete(
/usr/lib/python3.12/asyncio/base_events.py:687: in run_until_complete
return future.result()
src/transformers/testing_utils.py:2368: in _stream_subprocess
await asyncio.wait(
...
E TypeError: Passing coroutines is forbidden, use tasks explicitly.
```
See: https://docs.python.org/3.10/library/asyncio-task.html#asyncio.wait
See: https://docs.python.org/3.10/library/asyncio-task.html#asyncio.wait
See: https://docs.python.org/3.7/library/asyncio-task.html#asyncio.create_task
Signed-off-by: Dmitry Rogozhkin <dmitry.v.rogozhkin@intel.com>
Co-authored-by: Yih-Dar <2521628+ydshieh@users.noreply.github.com>
* process flattened images in fast image proc
* process flattened images in low proc and add tests
* remove print
* add unbalanced batch test pas image proc
* fix integration tests
* Use `deformable_detr` kernel from the Hub
Remove the `deformable_detr` kernel from `kernels/` and use the
pre-built kernel from the Hub instead.
* Add license header
* Add `kernels` as an extra `hub-kernels`
Also add it to `testing`, so that the kernel replacement gets tested
when using CUDA in CI.
* supersede paligemma forward to shift pos id indexing
* fix prepare_inputs_ as well
* fix modular error
---------
Co-authored-by: Arthur <48595927+ArthurZucker@users.noreply.github.com>
* Make ViT Pooler configurable, so that it is possible to pick the activation function and the number of channels in the output
* Add documentation and allow functions as activations (instead of just string)
* formatting change
* Use ACT2FN
* Formatting change
* Formatting changes
* force pooler_act to be string
* force pooler_act to be string
* Add configs to OBJECTS_TO_IGNORE to make check_docstrings happy
* Making the same change in ijepa to make check_modular_conversion happy
* Add IJepaConfig to make CI happy
* rename pooler_size to pooler_output_size as defined in the config
* typo
* revert change to ignore variable
* Ran utils/check_docstrings.py --fix_and_overwrite
* revert unrelated change
* remove redundant defaults
* rename self.act -> self.activation
* tanh activation function in mapping
* chore: fix typos in the tests
* chore: fix typos in the tests
* chore: fix typos in the tests
* chore: fix typos in the tests
* chore: fix typos in the tests
* chore: fix typos in the tests
* chore: fix typos in the tests
* chore: fix typos in the tests
* chore: fix typos in the tests
* chore: fix typos in the tests
* chore: fix typos in the tests
* chore: fix typos in the tests
* chore: fix typos in the tests
* fix: format codes
* chore: fix copy mismatch issue
* fix: format codes
* chore: fix copy mismatch issue
* chore: fix copy mismatch issue
* chore: fix copy mismatch issue
* chore: restore previous words
* chore: revert unexpected changes
The _fsdp_qlora_plugin_updates checks for LoraConfig but other PEFT
methods can also support quantized models, e.g. VeRA. Therefore, the
isinstance check is now looking for PeftConfig in general.
Moreover, the fsdp_plugin variable may be undefined in the 2nd if
condition, leading to an `UnboundLocalError` error. This is fixed by not
assigning the variable at all.
I checked for tests that may need updating but only found
test_fsdp_config_transformers_auto_wrap associated with this change.
AFAICT, this test does not cover the changed code, since the test does
not start the training loop. Therefore, I haven't updated any tests. LMK
if/how this fix should be tested.
Co-authored-by: Marc Sun <57196510+SunMarc@users.noreply.github.com>
* no image
* test
* revert jax version updates
* make fixup
* update autodoc path for model_addition_debugger
* shieldgemma2
* add missing pages to toctree
* draft of model tracer visualiser
* add context manager in addition to decorator
* add debug utils to init
* move model debugging utils to dedicated file
* add documentation
* protect some imports
* format
* move and protect imports
* format
* doc: improve errors in case of broken dummy imports.
* format
* use automatic torch backend
* update doc
* fix backend
* (TEMP) move to dummies while backend wait
* update documentation
* doc
* add prompt depth anything model by modular transformer
* add prompt depth anything docs and imports
* update code style according transformers doc
* update code style: import order issue is fixed by custom_init_isort
* fix depth shape from B,1,H,W to B,H,W which is as the same as Depth Anything
* move prompt depth anything to vision models in _toctree.yml
* update backbone test; there is no need for resnet18 backbone test
* update init file & pass RUN_SLOW tests
* update len(prompt_depth) to prompt_depth.shape[0]
Co-authored-by: Joshua Lochner <admin@xenova.com>
* fix torch_int/model_doc
* fix typo
* update PromptDepthAnythingImageProcessor
* fix typo
* fix typo for prompt depth anything doc
* update promptda overview image link of huggingface repo
* fix some typos in promptda doc
* Update image processing to include pad_image, prompt depth position, and related explanations for better clarity and functionality.
* add copy disclaimer for prompt depth anything image processing
* fix some format typos in image processing and conversion scripts
* fix nn.ReLU(False) to nn.ReLU()
* rename residual layer as it's a sequential layer
* move size compute to a separate line/variable for easier debug in modular prompt depth anything
* fix modular format for prompt depth anything
* update modular prompt depth anything
* fix scale to meter and some internal funcs warp
* fix code style in image_processing_prompt_depth_anything.py
* fix issues in image_processing_prompt_depth_anything.py
* fix issues in image_processing_prompt_depth_anything.py
* fix issues in prompt depth anything
* update converting script similar to mllamma
* update testing for modeling prompt depth anything
* update testing for image_processing_prompt_depth_anything
* fix assertion in image_processing_prompt_depth_anything
* Update src/transformers/models/prompt_depth_anything/modular_prompt_depth_anything.py
Co-authored-by: Pavel Iakubovskii <qubvel@gmail.com>
* Update src/transformers/models/prompt_depth_anything/modular_prompt_depth_anything.py
Co-authored-by: Pavel Iakubovskii <qubvel@gmail.com>
* Update src/transformers/models/prompt_depth_anything/image_processing_prompt_depth_anything.py
Co-authored-by: Pavel Iakubovskii <qubvel@gmail.com>
* Update src/transformers/models/prompt_depth_anything/image_processing_prompt_depth_anything.py
Co-authored-by: Pavel Iakubovskii <qubvel@gmail.com>
* Update src/transformers/models/prompt_depth_anything/image_processing_prompt_depth_anything.py
Co-authored-by: Pavel Iakubovskii <qubvel@gmail.com>
* Update docs/source/en/model_doc/prompt_depth_anything.md
Co-authored-by: Pavel Iakubovskii <qubvel@gmail.com>
* Update docs/source/en/model_doc/prompt_depth_anything.md
Co-authored-by: Pavel Iakubovskii <qubvel@gmail.com>
* update some testing
* fix testing
* fix
* add return doc for forward of prompt depth anything
* Update src/transformers/models/prompt_depth_anything/modular_prompt_depth_anything.py
Co-authored-by: Pavel Iakubovskii <qubvel@gmail.com>
* Update tests/models/prompt_depth_anything/test_modeling_prompt_depth_anything.py
Co-authored-by: Pavel Iakubovskii <qubvel@gmail.com>
* fix prompt depth order
* fix format for testing prompt depth anything
* fix minor issues in prompt depth anything doc
* fix format for modular prompt depth anything
* revert format for modular prompt depth anything
* revert format for modular prompt depth anything
* update format for modular prompt depth anything
* fix parallel testing errors
* fix doc for prompt depth anything
* Add header
* Fix imports
* Licence header
---------
Co-authored-by: Joshua Lochner <admin@xenova.com>
Co-authored-by: Pavel Iakubovskii <qubvel@gmail.com>
* Remove deprecated arguments for jax.numpy.clip.
* Remove deprecated arguments for jax.numpy.clip.
* Update jax version to 0.4.27 to 0.4.38.
* Avoid use of deprecated xla_bridge.get_backend().platform
Co-authored-by: Jake Vanderplas <jakevdp@google.com>
---------
Co-authored-by: Jake Vanderplas <jakevdp@google.com>
* feat: Saving tokenizer in collator when processing_class is None
* chore: Style issue
* chore: Typo
* dbg: Check why test failed
* dbg: Remove logics and another test failed which successed before, so should be the stablibility issue
* test: Init unit-test
* chore: Style
* chore: Add err log
* fix: Case
* Update tests/trainer/test_trainer.py
Co-authored-by: Marc Sun <57196510+SunMarc@users.noreply.github.com>
* chore: Try to use get_regression_trainer
* fix: Impl and style
* fix: Style
* fix: Case
* fix: Import err
* fix: Missed import
* fix: Import block un-sorted problem
* fix: Try another tokenizer
* fix: Test logic
* chore: Light updates
* chore: Reformat
---------
Co-authored-by: Marc Sun <57196510+SunMarc@users.noreply.github.com>
* Disable inductor config setter by default
This is hard to debug and should be off by default
* remove default settings in autoquant too
* Add info to torchao.md about recommended settings
* satisfying Ruff format
Summary:
Test Plan:
Reviewers:
Subscribers:
Tasks:
Tags:
---------
Co-authored-by: Marc Sun <57196510+SunMarc@users.noreply.github.com>
* Just import torch AdamW instead
* Update docs too
* Make AdamW undocumented
* make fixup
* Add a basic wrapper class
* Add it back to the docs
* Just remove AdamW entirely
* Remove some AdamW references
* Drop AdamW from the public init
* make fix-copies
* Cleanup some references
* make fixup
* Delete lots of transformers.AdamW references
* Remove extra references to adamw_hf
* fix "Cannot copy out of meta tensor; no data!" issue for BartForConditionalGeneration model
* follow Marc's suggestion to use _tie_weights to fix
Signed-off-by: Yao, Matrix <matrix.yao@intel.com>
* fix review comments.
Signed-off-by: N <matrix.yao@intel.com>
* fix quality
Signed-off-by: N <matrix.yao@intel.com>
---------
Signed-off-by: Yao, Matrix <matrix.yao@intel.com>
Signed-off-by: N <matrix.yao@intel.com>
* Add expectation classes + tests
* Use typing Union instead of |
* Use bits to track score in properties cmp method
* Add exceptions and tests + comments
* Remove compute cap minor as it is not needed currently
* Simplify. Remove Properties class
* Add example Exceptions usage
* Expectations as dict subclass
* Update example Exceptions usage
* Refactor. Improve type name. Document score fn.
* Rename to DeviceProperties.
Mistaken use of De Morgan's law. Fixed "not (X or Y)"
to correct "not (X and Y)" check to raise a ValueError.
Added corresponding test to check "positive int or None" condition.
Co-authored-by: Yih-Dar <2521628+ydshieh@users.noreply.github.com>
* fall back to eager if output_attentions
* improve relative position embeddings
* run modular on got_ocr2
* run-slow: sam
* fix run-length encoding
* fix tf processor errors
* update tf_sam
* fix compile error
* re-run tests
* Try working around the processor registration bugs
* oops
* Update error message
* Clarify error
* Docstring docstring docstring
* The extra content is indexed by config class, so let's grab some values out of there
* Commit my confusion as a TODO
* Resolve my confusion
* Cleanup and mostly revert to the original
* Better autoclass fallback
* Don't nest f-strings you lunatic
* Clearer error message
* Less getattr()
* Revert a lot of changes to try a different approach!
* Try the global registry
* Check the dynamic list as well as the transformers root
* Move the dynamic list somewhere safer
* Move the dynamic list somewhere even safer
* More import cleanup
* Simplify all the register_for_auto_class methods
* Set _auto_class in the register() methods
* Stop setting the cls attribute in register()
* Restore specifying the model class for Model derivatives only
* Fix accidentally taking the .__class__ of a class
* Revert register_for_auto_class changes
* Fix get_possibly_dynamic_module
* No more ALL_CUSTOM_CLASSES
* Fix up get_possibly_dynamic_module as well
* Revert unnecessary formatting changes
* Trigger tests
* Set best_model_checkpoint only when ckpt exists.
Rather than set it explicitly without checking if the checkpoint directory even exists as before, now we moved the setting logic inside of _save_checkpoint and are only setting it if it exists.
* Added best_global_step to TrainerState.
* Added tests for best_model_checkpoint.
* Fixed hard-coded values in test to prevent fail.
* Added helper func and removed hard-coded best_step.
* Added side effect patch generator for _eval.
* Added evaluate side effect func.
* Removed erroneous patching.
* Fixed minor bug.
* Applied Ruff.
* Fixed Ruff problem in make style.
* Used Trainer.set_initial_training_values.
* add support for fast image processors in add-new-model-like
* fix header not found add-fast-image-processor-cli
* Encourage adding fast image processor
* nit
* start improve doc
* update docs
* make requested modifs
Corrects the type annotation to match actual usage. The variable was typed as
Dict[str, Dict[str, Callable]] but is actually used as Dict[str, Callable]
where keys are attention mechanism names and values are the corresponding
attention functions directly. This change makes the type annotation consistent
with how the dictionary is used in the codebase.
* refactor siglip2 fast image processor, add unused_kwargs in base fast image processor
* nits
* change unused_kwargs default to None
* update siglip2 fast image proc
* Don't accidentally mutate the base_model_tp_plan
* Co-authored by: Joao Gante <joaofranciscocardosogante@gmail.com>
* Trigger tests
* Marking grad accum test as slow
* Add a flaky decorator
* Add a flaky decorator
* Use cyril's codeblock
* Don't copy() when it's None
* Use cyril's new codeblock
* make fixup
* test
* fix
* fix
* skip some and run some first
* test fsdp
* fix
* patches for generate
* test distributed
* copy
* don't test distributed loss for hpu
* require fp16 and run first
* changes from marc's PR fixing zero3
* better alternative
* return True when fp16 support on gaudi without creating bridge
* fix
* fix tested dtype in deepspeed inference test
* test
* fix
* test
* fix
* skip
* require fp16
* run first fsdp
* Apply suggestions from code review
* address comments
* address comments and refactor test
* reduce precison
* avoid doing gaudi1 specific stuff in the genreation loop
* document test_gradient_accumulation_loss_alignment_with_model_loss test a bit more
* Fix converter
* [Broken] Adds Gemma 3 to Hugging Face Transformers
* Consolidating Config and Processor params across impls
* Sorting out configuration parameters. Adds qk_norm before RoPE. Still not sure if RoPE is right.
* Additional plumbing for CausalLM and ConditionalGeneration variants
* incomplete draft of Orbax conversion script
* More complete checkpoint conversion
* Supporting Gemma 3 1B checkpoints
* Updating RoPE for multiple frequencies
* Adjustments to rotary embedder
* Proof of life for text-only operation
* Updating the conversion script to handle multimodal projection weights
* Fixing tet-only conversions
* Cleaner conversion script with multimodal support and a simpler processor
* Additional refatcors to the Gemma3Processor
* Simplified Processor to work over text representations
* Updated conversion script to join text and vision embeddings at converion time
* Logging for debugging
* Update src/transformers/models/gemma2/modeling_gemma2.py
Co-authored-by: Joshua Lochner <admin@xenova.com>
* Removed extraneous Config params
* Switching to fast tokenizer for checkpoint conversions
* isolating siglip for performance tetsing
* Minor changes for debugging tests against baselines
* Adding average pooling for soft tokens
* Updating processor code to enable simpler embedding interleaving for arbitrary number of images in prompts
* Updating conversion script for ShieldGemma 2 conversion compatibility
* Allow disable_compile to be provided as a kwarg
* Refresh from modular
* Updated conversion script and corrected sliding window
* Fix type mismatch in cache_position (#4)
* Fix dtype (#5)
* Fix type mismatch in cache_position
* Actually fix in the modular file
Co-authored-by: Aritra Roy Gosthipaty <aritra.born2fly@gmail.com>
---------
Co-authored-by: Aritra Roy Gosthipaty <aritra.born2fly@gmail.com>
* fixes for embedding table overflow and missing image_soft_token_mask from Gemma3Processor
* Adding 2D pooling for image embeddings
* Revert "Adding 2D pooling for image embeddings"
This reverts commit 65350cf531296f050b2078a5b8e46f61642b2648.
* Gemma3 average pooling changed from 1D to 2D
* Major refactor to Gemma3MultimodalInputProjection
* Updating Gemm 3 Auto* registrations
* Add option to save Gemma 3 chat template with tokenizer during weights conversion
* Removing unused imports
* Moving out-of-vocab handling from Gemma3Processor to Gemma3ForConditionalGeneration
* Removing duplicate config property
* Removing final logit softcapping and 1-indexing of position ids
* Fixing image processor config and none --> None typo
* Fixing sliding window size for 1B
* Updating image_mean and image_std in Image Processor
* Attention masking changed to lower triangular
* Moving image special tokens to conversion script
* Mirror image processor defaults from conversion script into Gemma3ProcessorKwargs
* Remove special token variables from symbol space
* Moving image soft token mask computation from Gemma3Processor to Gemma3ForConditionalGeneration
* tie lm_head and embedding weights
Co-authored-by: Matthew Douglas <38992547+matthewdouglas@users.noreply.github.com>
* Correct tied weights in Gemma3CausalLM
* iterative bidirectional attention
* resolving merge conflicts
* Reverting to Gemma 2 HybridCache with sldiing window support and a sliding_window_pattern of 6
* Correcting RoPE scaling
* clean up first pass, dummy model geenration works
* final clean up before fixing tests
* causal lm test works, so fine
* Fix conversion
* Update src/transformers/models/gemma3/processing_gemma3.py
* model tests are happy
* processor tests are happy
* image processing tests added
* fixup
* Fix pre-processing in conversion
* Inputs merging
* Do not normalize vision embeddings
* Apply Ryan's (and team) changes to attention
* token type ids + mask
* template
* move embed scale, add rope scale, fix tests
* Add chat template to tokenizer
* Use prefix for causal model loading
* use existing code for sliding mask from gemma2
* self.embed_tokens already normalizes
* Correcting Gemma3TextConfig parameters in conversion script
* typo, modular overwrites my fixes
* enable device map for text model
* Conversion updates
* ultra nit: no einsums
* update image token
* copy deepcopy config + some docs
* add some test, still WIP
* Refactoring --include_chat_tempalte logic in converter
* Update src/transformers/models/gemma3/modular_gemma3.py
Co-authored-by: Xuan-Son Nguyen <thichthat@gmail.com>
* Add eos tokens for instruct models
* dump so i can work on dgx
* Removing add_bos by default
* dump
* add fast im proc
* docs for PaS + fixup
* another fixup
* one more fixup
* fix tests
* Inverting prior BOS change
* ultra nit
* Reverting to Tokenizer saved with add_bos_token=True and chat template starting with BOS
* resize embeds, remove sqrt, add slow test outputs
* FA2 but quality is meh
* nit
* skip FA2, no idea what happened
* last bit for green CI
* please, green CI for docs
* T_T
* Fix for Gemma3 logits
* Support both options for system prompt
* Update src/transformers/models/gemma3/image_processing_gemma3_fast.py
Co-authored-by: Pedro Cuenca <pedro@huggingface.co>
* Update docs/source/en/model_doc/gemma3.md
Co-authored-by: Pedro Cuenca <pedro@huggingface.co>
* Update docs/source/en/model_doc/gemma3.md
Co-authored-by: Pedro Cuenca <pedro@huggingface.co>
* Update docs/source/en/model_doc/gemma3.md
Co-authored-by: Pedro Cuenca <pedro@huggingface.co>
* Update docs/source/en/model_doc/gemma3.md
Co-authored-by: Pedro Cuenca <pedro@huggingface.co>
* Update docs/source/en/model_doc/gemma3.md
Co-authored-by: Pedro Cuenca <pedro@huggingface.co>
* Docs updates now that assets are live
* Style fixes
---------
Co-authored-by: Joshua Lochner <admin@xenova.com>
Co-authored-by: Pedro Cuenca <pedro@huggingface.co>
Co-authored-by: Aritra Roy Gosthipaty <aritra.born2fly@gmail.com>
Co-authored-by: Mayank Chaturvedi <imayank@google.com>
Co-authored-by: Matthew Douglas <38992547+matthewdouglas@users.noreply.github.com>
Co-authored-by: raushan <raushan@huggingface.co>
Co-authored-by: Raushan Turganbay <raushan.turganbay@alumni.nu.edu.kz>
Co-authored-by: Xuan-Son Nguyen <thichthat@gmail.com>
Co-authored-by: Lysandre <hi@lysand.re>
* fix: handle input_channel_dim == channels_last
Signed-off-by: Travis Johnson <tsjohnso@us.ibm.com>
* fix: default PIL images to channels_last
Signed-off-by: Travis Johnson <tsjohnso@us.ibm.com>
* Apply suggestions from code review
Co-authored-by: Pavel Iakubovskii <qubvel@gmail.com>
* fixup from review batch
Signed-off-by: Travis Johnson <tsjohnso@us.ibm.com>
* test: add 1x1 PIL image to ambiguous channel test
Signed-off-by: Travis Johnson <tsjohnso@us.ibm.com>
* fix(mllama): avoid 0 dimension for image with impractical aspect ratio
Signed-off-by: Travis Johnson <tsjohnso@us.ibm.com>
---------
Signed-off-by: Travis Johnson <tsjohnso@us.ibm.com>
Co-authored-by: Pavel Iakubovskii <qubvel@gmail.com>
* chore: fix typos in language models
* chore: fix typos in mistral model
* chore: fix model copy from issue
* chore: fix model copy from issue
* chore: fix model copy from issue
* chore: fix model copy from issue
* chore: fix model copy from issue
Fixed 2 issues regarding `tests/trainer/test_data_collator.py::TFDataCollatorIntegrationTest::test_all_mask_replacement`:
1. I got the error `RuntimeError: "bernoulli_tensor_cpu_p_" not implemented for 'Long'`. This is because the `mask_replacement_prob=1` and `torch.bernoulli` doesn't accept this type (which would be a `torch.long` dtype instead. I fixed this by manually casting the probability arguments in the `__post_init__` function of `DataCollatorForLanguageModeling`.
2. I also got the error `tensorflow.python.framework.errors_impl.InvalidArgumentError: cannot compute Equal as input #1(zero-based) was expected to be a int64 tensor but is a int32 tensor [Op:Equal]` due to the line `tf.reduce_all((batch["input_ids"] == inputs) | (batch["input_ids"] == tokenizer.mask_token_id))` in `test_data_collator.py`. This occurs because the type of the `inputs` variable is `tf.int32`. Solved this by manually casting it to `tf.int64` in the test, as the expected return type of `batch["input_ids"]` is `tf.int64`.
* First draft of github action on PR opening for auto-assigning reviewers
* fix missing import
* Don't reassign reviewers if we already have them
* Temporarily comment out the opened line so we can test the script
* Correct path for codeowners file
* Update workflow permissions
* Update workflow permissions
* Update debug logs
* Strip inline comments
* Remove prefix
* Request reviews instead of assigning
* Request reviews instead of assigning
* Add TODO
* Use pull-request-target instead
* Update the script
* Set back to pull_request for testing
* Set to pull_request_target, testing works!
* Add licence
* Tighten up one of the globs
* Refactor things to be a bit less convoluted
* Only assign reviewers when marked ready for review
* Export base streamer.
Previously, the base streamer class was not exported so the set of available streamers was fixed to 3 streamer classes.
This change makes it so that customers may extend the default base streamer class.
* make fixup
---------
Co-authored-by: Joao Gante <joaofranciscocardosogante@gmail.com>
Co-authored-by: Joao Gante <joao@huggingface.co>
* avoid errors when the size of `input_ids` passed to PrefixConstrainedLogitsProcessor is zero
* use more reasonable process
* avoid early return
---------
Co-authored-by: Joao Gante <joaofranciscocardosogante@gmail.com>
* add swanlab integration
* feat(integrate): add SwanLab as an optional experiment tracking tool in transformers
- Integrated SwanLab into the transformers library as an alternative for experiment tracking.
- Users can now log training metrics, hyperparameters, and other experiment details to SwanLab by setting `report_to="swanlab"` in the `TrainingArguments`.
- Added necessary dependencies and documentation for SwanLab integration.
* Fix the spelling error of SwanLabCallback in callback.md
* Apply suggestions from code review
Co-authored-by: Marc Sun <57196510+SunMarc@users.noreply.github.com>
* Fix typo in comment
* Fix typo in comment
* Fix typos and update comments
* fix annotation
* chore: opt some comments
---------
Co-authored-by: Marc Sun <57196510+SunMarc@users.noreply.github.com>
Co-authored-by: AAssets <20010618@qq.com>
Co-authored-by: ZeYi Lin <944270057@qq.com>
Co-authored-by: KAAANG <79990647+SAKURA-CAT@users.noreply.github.com>
* initial commit
* small fix
* move stuff to image processing file
* remove stuff in validate turn and fix return tensor
* remove liquid stuff
* in the process of addressing comments
* changes to get the right tokenization
* new __init__ works
* fixing defulat std and mean
* works
* small testing scipt -- to be deleted before merge
* remove redundant code
* addressing comments
* fix inits, add docs templates
* refactor processor, switch to gotocr image processor
* remove image proc from init
* refactor to working llava-style architecture
* Change AyaVisionModel to AyaVisionForConditionalGeneration
* add tests
* fixups
* update doc
* Adding logits_to_keep explicitly in ayavision forward to enable compatibility with cohere model
* better variable names + remove code paths
* Updates to aya_vision.md
* address comments
* adding copied from
* make style and remove unused projector_hidden_act from config
* sort init
* include usage of fast image proc and proc on cuda in doc
* update checkpoint iin test processor
* update checkpoint in test processor 2
* remove test_model and update docstring
* skip failing tests
---------
Co-authored-by: Saurabh Dash <saurabh@cohere.com>
Co-authored-by: yonigozlan <yoni.gozlan@huggingface.co>
* Fix edge case for continue_final_message
* lstrip() correctly
* Add regression test
* Add a clearer error message when the final message is not present
* Add a clearer error message when the final message is not present
* Fix massive bug!
* Fix pipeline-peft interaction
* once again you have committed a debug breakpoint
* Remove extra testing line
* Add a test to check adapter loading
* Correct adapter path
* make fixup
* Remove unnecessary check
* Make check a little more stringent
transformers/image_processing_utils.py:41: UserWarning: The following named arguments are not valid for `SamImageProcessor.preprocess` and were ignored: 'point_pad_value'
* refactor image processor slow got ocr
* add working image processor fast
* fix fast image processor, update doc
* use one big loop for processing patches
* test
* docstring
* prepare distributed cache data
* fix cat dim
* test mvp
* add test checks
* like this?
* working test and solution
* nit
* nit
* add shape info
* clean code
* oups
* fix merge
* yups
* fix if
* now you can play
* fix shape issue
* try non blocking
* fix
* updates
* up
* updates
* fix most of thetests
* update
* update
* small updates
* up
* fix the remaining bug?
* update
* rename when you read from the file
* buffer issues
* current status
* cleanup
* properly allocate dumb memory
* update a small bug
* fix colwise rep issue
* fix keep in float 32 that was keeping everything in float 32
* typo
* more fixes with keep_in_fp32_modules as we use to serach on it
* fix ROPE dtype for TP
* remove what's breaking the tests
* updates
* update and fixes
* small cleanup after merging
* allocate 2x to be safe
* style, auto
* update
* yup nit
* fix
* remove slow as fuck torch api :(
* work
* fixup
* update
* brting the fix back
* fix and update
* fixes
Co-authored-by: Marc Sun <57196510+SunMarc@users.noreply.github.com>
* updates because some suggestions were wrong 👀
* update?
* fuck this bloated function
* typo
* fix the dumb prefix thing once and forall
* fixes here and there
* updates
* remove prints
* fix strict cases
* styel
* properly fix keys on load!
* update
* fix base model prefix issue
* style
* update
* fix all?
* remoce 1 print
* fix the final etsts
* fixup
* last nits
* fix the detach issue which cause a 2x slowdown
* fixup
* small fixes
* ultra nit
* fix
* fix
---------
Co-authored-by: Marc Sun <57196510+SunMarc@users.noreply.github.com>
* fix: prevent model access error during Optuna hyperparameter tuning
The `transformers.integrations.integration_utils.run_hp_search_optuna` function releases model memory and sets trainer.model to None after each trial. This causes an AttributeError when subsequent Trainer.train calls attempt to access the model before reinitialization. This is only an issue when `fp16_full_eval` or `bf16_full_eval` flags are enabled.
* Update src/transformers/trainer.py
Co-authored-by: Marc Sun <57196510+SunMarc@users.noreply.github.com>
---------
Co-authored-by: Marc Sun <57196510+SunMarc@users.noreply.github.com>
* size tuple
* delete original input_size
* use zip
* process the other case
* Update src/transformers/models/vitdet/modeling_vitdet.py
Co-authored-by: Pavel Iakubovskii <qubvel@gmail.com>
* [VITDET] Test non-square image
* [Fix] Make Quality
* make fix style
* Update src/transformers/models/vitdet/modeling_vitdet.py
---------
Co-authored-by: Pavel Iakubovskii <qubvel@gmail.com>
* tests: revert change of torch_require_multi_gpu to be device agnostic
The 11c27dd33 modified `torch_require_multi_gpu()` to be device agnostic
instead of being CUDA specific. This broke some tests which are rightfully
CUDA specific, such as:
* `tests/trainer/test_trainer_distributed.py::TestTrainerDistributed`
In the current Transformers tests architecture `require_torch_multi_accelerator()`
should be used to mark multi-GPU tests agnostic to device.
This change addresses the issue introduced by 11c27dd33 and reverts
modification of `torch_require_multi_gpu()`.
Fixes: 11c27dd33 ("Enable BNB multi-backend support (#31098)")
Signed-off-by: Dmitry Rogozhkin <dmitry.v.rogozhkin@intel.com>
* fix bug: modification of frozen set
---------
Signed-off-by: Dmitry Rogozhkin <dmitry.v.rogozhkin@intel.com>
Co-authored-by: Titus von Koeller <9048635+Titus-von-Koeller@users.noreply.github.com>
Co-authored-by: Yih-Dar <2521628+ydshieh@users.noreply.github.com>
* Disable warnings for stacked compressors
* Introduce two new hooks in HfQuantizer lifecycle
to allow updates to missing and unexpected keys
* Update missing and unexpected keys
for stacked compressors
* Add tests
* Fix: run_compressed cases
* Fix: uncompressed cases
* Rename compressed_tensor folder to compressed_tensors
Move RunCompressedTest to the same file
Update tests to unittest
* Fix potential regex catastrophic backtracking in NougatTokenizerFast
The original regex pattern in tokenization_nougat_fast.py was vulnerable to
catastrophic backtracking due to greedy quantifiers and nested alternations.
This commit replaces it with a more efficient pattern that:
1. Uses explicit character classes instead of dot (.)
2. Handles whitespace more precisely
3. Avoids unnecessary backtracking
4. Supports both lowercase and uppercase roman numerals
5. Maintains the same functionality while being more robust
* Try another regex
* Trying deepseek's answer
* Start with a simplification
* Another simplification
* Just rewrite the whole function myself
* Fix gptneox and gptsan
* Simplify the regex even further
* Tighten up the price regex a little
* Add possessive version of the regex
* Fix regex
* Much cleaner regexes
---------
Co-authored-by: openhands <openhands@all-hands.dev>
* fix: prevent second save in the end of training
* fix: prevent second save in the end of training
* test: added test for no duplicate save on epoch save strategy
* fix: removed TrainerControl
* chore: style formatting
---------
Co-authored-by: JaktensTid <jaktenstid1@gmail.com>
* Add dithering to the `Speech2TextFeatureExtractor` API.
- in kaldi : 4a8b7f6732/src/feat/feature-window.cc (L145)
- with dithering without a seed, the features become non-deterministic due
to small Gaussian noise added to the audio (i.e. 2 runs lead to little
different outputs)
* update the PR
- add dithering also for WhisperFeatureExtractor
- not adding to Wav2Vec2FeatureExtractor (no FBANK computation)
* add unit-tests for dithering, fix docstrings
* ruff
* utils/check_copies.py --fix_and_overwrite
* update code, add seed to unit-test
* adding explanation of dithering
* Fix XGLM loss computation (PyTorch and TensorFlow)
* Update expected output string in XGLM sample test
This updates the expected output string of test_xglm_sample for torch
2.0 to the correct one and removes the one for torch 1.13.1 + cu116
(transformers moved to torch 2.0 with PR #35358).
* Update expected output IDs in XGLM generation test
**Summary:** TorchAoConfig optionally contains a
`torchao.dtypes.Layout` object which is a dataclass and not
JSON serializable, and so the following fails:
```
import json
from torchao.dtypes import TensorCoreTiledLayout
from transformers import TorchAoConfig
config = TorchAoConfig("int4_weight_only", layout=TensorCoreTiledLayout())
config.to_json_string()
json.dumps(config.to_dict())
```
This also causes `quantized_model.save_pretrained(...)` to
fail because the first step of this call is to JSON serialize
the config. Fixes https://github.com/pytorch/ao/issues/1704.
**Test Plan:**
python tests/quantization/torchao_integration/test_torchao.py -k test_json_serializable
Co-authored-by: Mohamed Mekkouri <93391238+MekkCyber@users.noreply.github.com>
Co-authored-by: Marc Sun <57196510+SunMarc@users.noreply.github.com>
* archive_file may not be specified
When loading a pre-trained model from a gguf file, resolved_archive_file may not be set. Guard against that case in the safetensors availability check.
* Remap partial disk offload to cpu for GGUF files
GGUF files don't support disk offload so attempt to remap them to the CPU when device_map is auto. If device_map is anything else but None, raise a NotImplementedError.
* Don't remap auto device_map and raise RuntimeError
If device_map=auto and modules are selected for disk offload, don't attempt to map them to any other device. Raise a runtime error when a GGUF model is configured to map any modules to disk.
---------
Co-authored-by: Marc Sun <57196510+SunMarc@users.noreply.github.com>
* allow processor to preprocess conversation + video metadata
* allow callable
* add test
* fix test
* nit: fix
* add metadata frames_indices
* Update src/transformers/processing_utils.py
Co-authored-by: Pablo Montalvo <39954772+molbap@users.noreply.github.com>
* Update src/transformers/processing_utils.py
Co-authored-by: Pablo Montalvo <39954772+molbap@users.noreply.github.com>
* port updates from Orr and add one more test
* Update src/transformers/processing_utils.py
Co-authored-by: Pablo Montalvo <39954772+molbap@users.noreply.github.com>
* typo
* as dataclass
* style
* docstring + maek sure tests green
---------
Co-authored-by: Pablo Montalvo <39954772+molbap@users.noreply.github.com>
* Optimize Qwen2VL vision model by precomputing cos/sin embeds before ViT blocks
* Make rotary_pos_emb optional & fix type
* Adapt pre-computed cos/sin to Qwen2.5VL
* More concise
* tmp commit
* move tests to the right class
* remove ALL all_generative_model_classes = ...
* skip tf roberta
* skip InstructBlipForConditionalGenerationDecoderOnlyTest
* videollava
* reduce diff
* reduce diff
* remove on vlms
* fix a few more
* manual rebase bits
* more manual rebase
* remove all manual generative model class test entries
* fix up to ernie
* a few more removals
* handle remaining cases
* recurrent gemma
* it's better here
* make fixup
* tf idefics is broken
* tf bert + generate is broken
* don't touch tf :()
* don't touch tf :(
* make fixup
* better comments for test skips
* revert tf changes
* remove empty line removal
* one more
* missing one
* Add implementation for DataCollatorForMultipleChoice based on docs.
* Add DataCollatorForMultipleChoice to import structure.
* Remove custom DataCollatorForMultipleChoice implementations from example scripts.
* Remove custom implementations of DataCollatorForMultipleChoice from docs in English, Spanish, Japanese and Korean.
* Refactor torch version of DataCollatorForMultipleChoice to be more easily understandable.
* Apply suggested changes and run make fixup.
* fix copies, style and fixup
* add missing documentation
* nits
* fix docstring
* style
* nits
* isort
---------
Co-authored-by: Arthur <48595927+ArthurZucker@users.noreply.github.com>
Co-authored-by: Arthur Zucker <arthur.zucker@gmail.com>
* update env command to log deepspeed version
* suppress deepspeed import logging
* Add reminder to include configs to repro description in bug report.
* make fixup
* [WIP] update import utils for deepspeed
* Change to using is_deepspeed_available() from integrations.
* make fixup
* change order of unmasking of tokens
* library import
* class setup
* test function
* refactor
* add commit message
* test modified
* explict initiliasation of weights + made model smaller
* removed sepete testing file
* fixup
* fixup core
* test attention mask with token types
* tests fixup
* removed PaliGemmaAttentionMaskTest class
---------
Co-authored-by: sambhavnoobcoder <indosambahv@gmail.com>
* Adding option to save/reload scaler
* Removing duplicate variable
* Adding save/reload test
* Small fixes on deterministic algorithm call
* Moving LLM test to another file to isolate its environment
* Moving back to old file and using subprocess to run test isolated
* Reverting back accidental change
* Reverting back accidental change
* milti-gpu: fix inputs_embeds + position_embeds
Fixing the following errors in few models:
```
> hidden_states = inputs_embeds + pos_embeds
E RuntimeError: Expected all tensors to be on the same device, but found at least two devices, xpu:2 and xpu:3!
```
Fixes: #35762
Signed-off-by: Dmitry Rogozhkin <dmitry.v.rogozhkin@intel.com>
* multi-gpu: fix tensor device placements for various models
Fixes: #35762
Signed-off-by: Dmitry Rogozhkin <dmitry.v.rogozhkin@intel.com>
* Apply make fix-copies
Signed-off-by: Dmitry Rogozhkin <dmitry.v.rogozhkin@intel.com>
---------
Signed-off-by: Dmitry Rogozhkin <dmitry.v.rogozhkin@intel.com>
* feat: added warning to Trainer when label_names is not specified for PeftModel
* Update trainer.py
* feat: peft detectw ith `_is_peft_model`
* Update src/transformers/trainer.py
Co-authored-by: Benjamin Bossan <BenjaminBossan@users.noreply.github.com>
* Applied formatting in trainer.py
---------
Co-authored-by: Benjamin Bossan <BenjaminBossan@users.noreply.github.com>
* add RAdamScheduleFree optimizer
* revert schedulefree version to the minimum requirement
* refine is_schedulefree_available so that it can take min_version
* refine documents
---------
Co-authored-by: Arthur <48595927+ArthurZucker@users.noreply.github.com>
* make output_dir optional
* inintaied a basic testing module to validate and verify the changes
* Test output_dir default to 'tmp_trainer' when unspecified.
* test existing functionality of output_dir.
* test that output dir only created when needed
* final check
* added doc string and changed the tmp_trainer to trainer_output
* amke style fixes to test file.
* another round of fixup
---------
Co-authored-by: sambhavnoobcoder <indosambahv@gmail.com>
* Remove unused `max_size` variable in processor which was always `None` and triggered unnecessary deprecated warning
* Remove unused `max_size` variable in processor which was always `None` and triggered unnecessary deprecated warning
* Remove deprecated warnings and eliminate `max_size` usage
* Test use `int` as argument for `size`
Add a test to ensure test can pass successfully and backward compatibility
* The test pipelines still use `max_size`
Remove `max_size` from test pipelines and replace by `size` by a `Dict` with `'shortest_edge'` `'longest_edge'` as keys
* Reformatting
* Reformatting
* Revert "Reformatting"
This reverts commit c3040acee75440357cffd1f60c9d29ff5b2744b8.
* Revert "Reformatting"
This reverts commit ac4522e5c9a02d2d0c298295026db68ea26453df.
* Revert "The test pipelines still use `max_size`"
This reverts commit eaed96f041ffc32459536e1524d87f7a12ddee29.
* Revert "Test use `int` as argument for `size`"
This reverts commit 1925ee38c7c5eabb11832316712df1d4ba8043d0.
* Revert "Remove deprecated warnings and eliminate `max_size` usage"
This reverts commit d8e7e6ff9025931468fc1f3827cda1fa391003d5.
* Change version `4.26` to "a future version"
* Reformatting
* Revert "Change version `4.26` to "a future version""
This reverts commit 2b53f9e4
* Add is_torch_greater_or_equal test decorator
* Add common test for torch.export
* Fix bit
* Fix focalnet
* Fix imagegpt
* Fix seggpt
* Fix swin2sr
* Enable torch.export test for vision models
* Enable test for video models
* Remove json
* Enable for hiera
* Enable for ijepa
* Fix detr
* Fic conditional_detr
* Fix maskformer
* Enable test maskformer
* Fix test for deformable detr
* Fix custom kernels for export in rt-detr and deformable-detr
* Enable test for all DPT
* Remove custom test for deformable detr
* Simplify test to use only kwargs for export
* Add comment
* Move compile_compatible_method_lru_cache to utils
* Fix beit export
* Fix deformable detr
* Fix copies data2vec<->beit
* Fix typos, update test to work with dict
* Add seed to the test
* Enable test for vit_mae
* Fix beit tests
* [run-slow] beit, bit, conditional_detr, data2vec, deformable_detr, detr, focalnet, imagegpt, maskformer, rt_detr, seggpt, swin2sr
* Add vitpose test
* Add textnet test
* Add dinov2 with registers
* Update tests/test_modeling_common.py
* Switch to torch.testing.assert_close
* Fix masformer
* Remove save-load from test
* Add dab_detr
* Add depth_pro
* Fix and test RT-DETRv2
* Fix dab_detr
* Revert "Fix OS err (#36094)"
This reverts commit ba29a439adbe6f371710d0514659127264ae24b3.
* Revert "Save checkpoint to temporary directory to handle partial saves during failures (#35580)"
This reverts commit 20d17358c468b7aefca9e54c3461eb88d1ee34f9.
* Add support for constant learning rate with cooldown
* Add support for constant learning rate with cooldown
* Add support for constant learning rate with cooldown
* Add support for constant learning rate with cooldown
* Add support for constant learning rate with cooldown
* Add support for constant learning rate with cooldown
* Add support for constant learning rate with cooldown
* Add more warmup and cooldown methods to 'get_wsc_schedule'
* Add more warmup and cooldown methods to 'get_wsc_schedule'
* Add more warmup and cooldown methods to 'get_wsc_schedule'
* Add more warmup and cooldown methods to 'get_wsc_schedule'
* Add more warmup and decay methods to 'get_wsd_schedule'
* support num_training_steps and num_stable_steps for get_wsd_schedule
* support num_training_steps and num_stable_steps for get_wsd_schedule
* get wsd scheduler before the `num_training_steps` decision
* fix code_quality
* Update stable branch logic
* fix code_quality
* Move stable stage decide to `get_wsd_schedule`
* Update docstring of `get_wsd_schedule`
* Update `num_train_steps` to optional
* Update `num_train_steps` to optional
* Update docstring of `get_wsd_schedule`
* Update src/transformers/optimization.py
Co-authored-by: Marc Sun <57196510+SunMarc@users.noreply.github.com>
---------
Co-authored-by: Marc Sun <57196510+SunMarc@users.noreply.github.com>
* implement config and model building blocks
* refactor model architechture
* update model outputs
* update init param to include use_fov_model
* update param name in config
* fix hidden_states and attentions outputs for fov
* sort config
* complete minor todos
* update patching
* update config for encoder
* fix config
* use correct defaults in config
* update merge for compatibility with different image size
* restructure encoder for custom configuration
* make fov model compatible with custom config
* replace word "decoder" with "fusion"
* weight conversion script
* fix fov squeeze
* update conversion script (without test)
* upload ruff image processing
* create fast image processing
* use torch interpolation for image processing
* complete post_process_depth_estimation
* config: fix imports and sort args
* apply inference in weight conversion
* use mllama script instead for weight conversion
* clean weight conversion script
* add depth-pro status in other files
* fill docstring in config
* formatting
* more formatting
* formatting with ruff
* formatting with style
* fix copied classes
* add examples; update weight convert script
* fix using check_table.py and isort
* fix config docstring
* add depth pro to sdpa docs
* undo unintentional changes in configuration_gemma.py
* minor fixes
* test image processing
* fixes and tests
* more fixes
* use output states from image_encoder instead
* Revert "use output states from image_encoder instead"
This reverts commit 2408ec54e4f27d2abbecdb8374e58f34d91d8e96.
* make embeddings dynamic
* reshape output hidden states and attentions as part of computation graph
* fix ruff formating
* fix docstring failure
* use num_fov_head_layers in tests
* update doc
* check consistency with config
* ruff formatting
* update test case
* fix ruff formatting
* add tests for fov
* use interpolation in postprocess
* run and fix slow tests locally
* use scaled_images_features for image and fov encoder
* return fused_hidden_states in fusion stage
* fix example
* fix ruff
* fix copyright license for all files
* add __all__ for each file
* minor fixes
- fix download spell
- add push_to_hub option
- fix Optional type hinting
- apply single loop for DepthProImageProcessor.preprocess
* return list in post_process_depth_estimation
* minor fixes
- capitalize start of docstring
- use ignore copy
- fix examples
- move docstring templates and custom output classes to top
- remove "-> None" typehinting from __init__
- type hinting for forward passes
- fix docstrings for custom output classes
* fix "ruff check"
* update upsample and projection
* major changes: (image size and merge optimization)
- add support for images of any size
- optimize merge operation
- remove image_size from config
- use full names instead of B, C, H, W
- remove interpolation from fusion stage
- add interpolation after merge
- move validations to config
- update integration test
- add type hints for functions
* fix push_to_hub option in weights conversion
* remove image_size in weights conversion
* major changes in the architecture
- remove all DepthProViT modules and support different backbones using the AutoModel API
- set default use_fov_model to False
- validate parameters in configuration
- update interpolate function: use "nearest" for faster computation
- update reshape_feature function: remove all special tokens, possible from different backbones
- update merge function: use padding from config instead of merge_out_size
- remove patch_to_batch and batch_to_patch conversions for now
- calculate out_size dynamically in the encoder
- leave head_mask calculation to the backbone
- fix bugs with merge
- add more comments
- update tests
* placeholder for unused config attributes
* improve docs amid review
* minor change in docs
* further optimize merge
* fix formatting
* remove unused patch/batch convertion functions
* use original F.interpolate
* improve function naming
* minor chages
- use torch_int instead of int
- use proper for newly initialized tensors
- use user provided return_dict for patch_encoder
- use if-else block instead in self.use_fov_model
* rearchitect upsample block for improved modularity
* update upsample keys in weight conversion
* improve padding in merge_patches
* use double-loop for merge
* update comments
* create feature_extractor, reduce some forward code
* introduce config.use_mask_token in dinov2
* minor fixes
* minor fixes for onnx
* update __init__ to latest format
* remove DepthProConfig.to_dict()
* major changes in backbone
* update config in weight conversion
* formatting
* converted model is fp32
* improve naming and docs for feature_extractor->reconstruct_feature_maps
* minor fixes; amid review
* create intermediate vars in func call
* use torch.testing.assert_close
* use ModuleList instead of Sequential and ModuleDict
* update docs
* include fov in integraiton tests
* update docs
* improve initialization of convolution layers
* fix unused fov keys
* update tests
* ruff format
* fix test, amid kaimming initialization
* add depthpro to toctree
* add residual layer to _no_split_modules
* architecture rework
* Update src/transformers/models/depth_pro/image_processing_depth_pro.py
Co-authored-by: Pavel Iakubovskii <qubvel@gmail.com>
* Update src/transformers/models/depth_pro/image_processing_depth_pro_fast.py
Co-authored-by: Pavel Iakubovskii <qubvel@gmail.com>
* update docs
* improve merge_patches
* use flatten with fov_output
* ruff formatting
* update resources section in docs
Co-authored-by: Pavel Iakubovskii <qubvel@gmail.com>
* fix typo "final_kernal_size"
Co-authored-by: Pavel Iakubovskii <qubvel@gmail.com>
* fix output typehint for DepthProDepthEstimator
Co-authored-by: Pavel Iakubovskii <qubvel@gmail.com>
* residual operation in 2 steps
Co-authored-by: Pavel Iakubovskii <qubvel@gmail.com>
* use image_size instead of global patch_size in interpolation
* replace all Sequential with ModuleList
* update fov
* update heads
* fix and update conversion script for heads
* ruff formatting
* remove float32 conversion
* use "Fov" instead of "FOV" in class names
* use "Fov" instead of "FOV" in config docs
* remove prune_heads
* update fusion stage
* use device in examples
* update processor
* ruff fixes
* add do_rescale in image_processor_dict
* skip test: test_fast_is_faster_than_slow
* ruff formatting
* DepthProImageProcessorFast in other files
* revert antialias removal
* add antialias in BaseImageProcessorFast
* Revert "revert antialias removal"
This reverts commit 5caa0bd8f9f7463b98410c04e6cfe8fef3adee18.
* Revert "add antialias in BaseImageProcessorFast"
This reverts commit 3ae1134780ae236872985523d9c0a444eabcc179.
* update processor for grouping and antialias
* try test_fast_is_faster_than_slow without "skip" or "flanky"
* update checkpoint
* update checkpoint
* use @is_flanky for processor test
* update checkpoint to "apple/DepthPro-hf"
---------
Co-authored-by: Pavel Iakubovskii <qubvel@gmail.com>
* Fix StopStringCriteria to handle tokens above len(tokenizer)
This fixes#35244 by clipping token IDs to be within the tokenizer's vocabulary size before performing the embedding lookup. This prevents index errors when model.config.vocab_size > len(tokenizer).
The fix:
1. Adds a clamp operation to ensure token IDs are within bounds
2. Adds a test case to verify the behavior
* Use self.stop_strings instead of stop_strings
* Handle clipping correctly
* make fixup
* Update test to the new embedding vecs
* Use much bigger values in the mismatch test
* Typo fix
* Slight simplification
---------
Co-authored-by: openhands <openhands@all-hands.dev>
* Save state
* Make a failing test
* Better test
* mpt -> done, many more to go
* Rm extranious
* Bamba
* Bert
* big_bird
* biogpt
* bloom
* codegen
* ctrl
* data2vec
* dbrx
* Through up to Dbrx
* electra
* ernie
* falcon
* Fuyu/persimmon
* Include noop kwargs to base models
* Rebase
* Skip musigen
* Refactor/skip mllama
* Revert makefile
* Rm file
* Fix PT failing, need to modify rest of loss funcs to not resize
* Propagate some
* Continue
* More
* More options
* Mostly fixed
* Proved that it's the same
* Bloom is good
* Make ability to override loss func possible
* Fixup
* Clean
* Fix xglm
* Quality tests
* Skip OCR2
* Make specific loss for xglm
* Make order the same/line up 1:1
* xglm
* Skip fx output loss bloom model
* Didn't pass in pad_token_id
* Fix quality
* Nail in edge case of torch dtype
* Rm unused func
* Apply suggestions from code review
Co-authored-by: Benjamin Bossan <BenjaminBossan@users.noreply.github.com>
* Refactor tests to only mock what we need, don't introduce injection functions
* SetUp/TearDown
* Do super
---------
Co-authored-by: Benjamin Bossan <BenjaminBossan@users.noreply.github.com>
* added condition for top_k Doc mismatch fix
* initilation of test file for top_k changes
* added test for returning all labels
* added test for few labels
* tests/test_audio_classification_top_k.py
* final fix
* ruff fix
---------
Co-authored-by: sambhavnoobcoder <indosambahv@gmail.com>
* Fix how we compute the final non-padding token for Gemma (and probably other models)
* .size() -> .shape[]
* Propagating changes to other models
* Propagating changes to other models
* Change it for all ForSequenceClassification models
* Fix batch dim
* More TF fixes
* Copy the TF fix around as well
* Correct layer name for TFCTRL
* Cleaner .to()
* Clean up the nested if-else
* Use argmax() instead of .max().values
* add init and base image processing functions
* add add_fast_image_processor to transformers-cli
* add working fast image processor clip
* add fast image processor to doc, working tests
* remove "to be implemented" SigLip
* fix unprotected import
* fix unprotected vision import
* update ViTImageProcessorFast
* increase threshold slow fast ewuivalence
* add fast img blip
* add fast class in tests with cli
* improve cli
* add fast image processor convnext
* add LlavaPatchingMixin and fast image processor for llava_next and llava_onevision
* add device kwarg to ImagesKwargs for fast processing on cuda
* cleanup
* fix unprotected import
* group images by sizes and add batch processing
* Add batch equivalence tests, skip when center_crop is used
* cleanup
* update init and cli
* fix-copies
* refactor convnext, cleanup base
* fix
* remove patching mixins, add piped torchvision transforms for ViT
* fix unbatched processing
* fix f strings
* protect imports
* change llava onevision to class transforms (test)
* fix convnext
* improve formatting (following Pavel review)
* fix handling device arg
* improve cli
* fix
* fix inits
* Add distinction between preprocess and _preprocess, and support for arbitrary kwargs through valid_extra_kwargs
* uniformize qwen2_vl fast
* fix docstrings
* add add fast image processor llava
* remove min_pixels max_pixels from accepted size
* nit
* nit
* refactor fast image processors docstrings
* cleanup and remove fast class transforms
* update add fast image processor transformers cli
* cleanup docstring
* uniformize pixtral fast and make _process_image explicit
* fix prepare image structure llava next/onevision
* Use typed kwargs instead of explicit args
* nit fix import Unpack
* clearly separate pops and gets in base preprocess. Use explicit typed kwargs
* make qwen2_vl preprocess arguments hashable
* initial commit
* encoder+decoder layer changes WIP
* architecture checks
* working version of detection + segmentation
* fix modeling outputs
* fix return dict + output att/hs
* found the position embedding masking bug
* pre-training version
* added iamge processors
* typo in init.py
* iterupdate set to false
* fixed num_labels in class_output linear layer bias init
* multihead attention shape fixes
* test improvements
* test update
* dab-detr model_doc update
* dab-detr model_doc update2
* test fix:test_retain_grad_hidden_states_attentions
* config file clean and renaming variables
* config file clean and renaming variables fix
* updated convert_to_hf file
* small fixes
* style and qulity checks
* return_dict fix
* Merge branch main into add_dab_detr
* small comment fix
* skip test_inputs_embeds test
* image processor updates + image processor test updates
* check copies test fix update
* updates for check_copies.py test
* updates for check_copies.py test2
* tied weights fix
* fixed image processing tests and fixed shared weights issues
* added numpy nd array option to get_Expected_values method in test_image_processing_dab_detr.py
* delete prints from test file
* SafeTensor modification to solve HF Trainer issue
* removing the safetensor modifications
* make fix copies and hf uplaod has been added.
* fixed index.md
* fixed repo consistency
* styel fix and dabdetrimageprocessor docstring update
* requested modifications after the first review
* Update src/transformers/models/dab_detr/image_processing_dab_detr.py
Co-authored-by: Pavel Iakubovskii <qubvel@gmail.com>
* repo consistency has been fixed
* update copied NestedTensor function after main merge
* Update src/transformers/models/dab_detr/modeling_dab_detr.py
Co-authored-by: Pavel Iakubovskii <qubvel@gmail.com>
* temp commit
* temp commit2
* temp commit 3
* unit tests are fixed
* fixed repo consistency
* updated expected_boxes varible values based on related notebook results in DABDETRIntegrationTests file.
* temporarialy config modifications and repo consistency fixes
* Put dilation parameter back to config
* pattern embeddings have been added to the rename_keys method
* add dilation comment to config + add as an exception in check_config_attributes SPECIAL CASES
* delete FeatureExtractor part from docs.md
* requested modifications in modeling_dab_detr.py
* [run_slow] dab_detr
* deleted last segmentation code part, updated conversion script and changed the hf path in test files
* temp commit of requested modifications
* temp commit of requested modifications 2
* updated config file, resolved codepaths and refactored conversion script
* updated decodelayer block types and refactored conversion script
* style and quality update
* small modifications based on the request
* attentions are refactored
* removed loss functions from modeling file, added loss function to lossutils, tried to move the MLP layer generation to config but it failed
* deleted imageprocessor
* fixed conversion script + quality and style
* fixed config_att
* [run_slow] dab_detr
* changing model path in conversion file and in test file
* fix Decoder variable naming
* testing the old loss function
* switched back to the new loss function and testing with the odl attention functions
* switched back to the new last good result modeling file
* moved back to the version when I asked the review
* missing new line at the end of the file
* old version test
* turn back to newest mdoel versino but change image processor
* style fix
* style fix after merge main
* [run_slow] dab_detr
* [run_slow] dab_detr
* added device and type for head bias data part
* [run_slow] dab_detr
* fixed model head bias data fill
* changed test_inference_object_detection_head assertTrues to torch test assert_close
* fixes part 1
* quality update
* self.bbox_embed in decoder has been restored
* changed Assert true torch closeall methods to torch testing assertclose
* modelcard markdown file has been updated
* deleted intemediate list from decoder module
---------
Co-authored-by: Pavel Iakubovskii <qubvel@gmail.com>
* First commit
* Finish model implementation
* First commit
* Finish model implementation
* Register zamba2
* generated modeling and configuration
* generated modeling and configuration
* added hybrid cache
* fix attention_mask in mamba
* dropped unused loras
* fix flash2
* config docstrings
* fix config and fwd pass
* make fixup fixes
* text_modeling_zamba2
* small fixes
* make fixup fixes
* Fix modular model converter
* added inheritances in modular, renamed zamba cache
* modular rebase
* new modular conversion
* fix generated modeling file
* fixed import for Zamba2RMSNormGated
* modular file cleanup
* make fixup and model tests
* dropped inheritance for Zamba2PreTrainedModel
* make fixup and unit tests
* Add inheritance of rope from GemmaRotaryEmbedding
* moved rope to model init
* drop del self.self_attn and del self.feed_forward
* fix tests
* renamed lora -> adapter
* rewrote adapter implementation
* fixed tests
* Fix torch_forward in mamba2 layer
* Fix torch_forward in mamba2 layer
* Fix torch_forward in mamba2 layer
* Dropped adapter in-place sum
* removed rope from attention init
* updated rope
* created get_layers method
* make fixup fix
* make fixup fixes
* make fixup fixes
* update to new attention standard
* update to new attention standard
* make fixup fixes
* minor fixes
* cache_position
* removed cache_position postion_ids use_cache
* remove config from modular
* removed config from modular (2)
* import apply_rotary_pos_emb from llama
* fixed rope_kwargs
* Instantiate cache in Zamba2Model
* fix cache
* fix @slow decorator
* small fix in modular file
* Update docs/source/en/model_doc/zamba2.md
Co-authored-by: Arthur <48595927+ArthurZucker@users.noreply.github.com>
* several minor fixes
* inherit mamba2decoder fwd and drop position_ids in mamba
* removed docstrings from modular
* reinstate zamba2 attention decoder fwd
* use regex for tied keys
* Revert "use regex for tied keys"
This reverts commit 9007a522b1f831df6d516a281c0d3fdd20a118f5.
* use regex for tied keys
* add cpu to slow forward tests
* dropped config.use_shared_mlp_adapter
* Update docs/source/en/model_doc/zamba2.md
Co-authored-by: Arthur <48595927+ArthurZucker@users.noreply.github.com>
* re-convert from modular
* extended Zamba2RMSNormGated to n_groups>1
* removed einops import
* set _supports_sdpa = True
* add use_mem_eff_path flag for fused mamba2 fwd
* added docstring for use_mem_eff_ath flag
---------
Co-authored-by: root <root@node-2.us-southcentral1-a.compute.internal>
Co-authored-by: Arthur <48595927+ArthurZucker@users.noreply.github.com>
* layernorm_decay_fix
* W293 fix
* ruff format fix
* black format
* ruff format
* erase last layer
* add test_get_parameter_names_rmsnorm
* rmsnorm fix
* apply_chat_template: consistent return_tensors behaviour with return_assistant_tokens_mask flag
* test_chat_template_return_assistant_tokens_mask: support tokenizers with no attention mask
* test_chat_template_return_assistant_tokens_mask: skip tokenizers with no padding token
* test_chat_template_return_assistant_tokens_mask: force tokenizer padding_side=right
---------
Co-authored-by: Eduard Allakhverdov <goncharova@airi.net>
Co-authored-by: d.tarasov <d.tarasov@airi.net>
* Handle empty change indices in RLE conversion for masks
* [test] Add unit tests for RLE encoding of masks in SamProcessor
* [test] Update RLE conversion tests to use TensorFlow implementation
* [test] Fix formatting in SamProcessorTest according to check_code_quality action
* [test] Fix formatting in SamProcessorTest according to check_code_quality
* [test] Refactored rle test cases into one test and used tf tensors in tf test cases
* [test] Fix: removed self parameter from refactored methods
* [test] Removed nested methods in run-length encoding tests for PyTorch and TensorFlow
* [test] Added description to individual to run-length encoding tests for PyTorch and TensorFlow.
* initial POC
* - batch mix feature
* fix tests
* fix tests
* make style
* do not skip and instead fix tests
* update
* return back the test
* correct text with the correct ckpt
* start
* So far: 30%
* Small fix
* Continuing update
* Continuing
* Forgot to check if not None
* Continuing refactor
* Fix if else
* Fix ref
* Should make tests pass
* Keep grad norm same
* Document
* Apply suggestions from code review
Co-authored-by: Marc Sun <57196510+SunMarc@users.noreply.github.com>
* Err instead of info for logging RNG state error
* Seperate out to func
---------
Co-authored-by: Marc Sun <57196510+SunMarc@users.noreply.github.com>
* Support for generate_argument: return_dict_in_generate=True, instead of returning a error
* fix: call test with return_dict_in_generate=True
* fix: Only import torch if it is present
* update: Encapsulate output_dict changes
* fix: added back original comments
---------
Co-authored-by: Joao Gante <joaofranciscocardosogante@gmail.com>
* correctly slice
* check mask
* Update modular_gemma2.py
* fix
* add tests
* fix typo
* finally fix mask slicing
* Finally correctly slice in all cases!!
* add test for all attention functions
* small fix in tests
* trick around dynamo tracing issue
* last update
* more robust
* kwargs propagation
* make it explicit for checkpointing
* apply modular
* Add some tp plans!
* More tp plans!
* Add it in the comment
* style
* Update configuration_mixtral.py
* Update configuration_phi.py
* update the layout according to special archs
* fix mixtral
* style
* trigger CIs
* trigger CIs
* CIs
* olmo2
---------
Co-authored-by: Arthur <48595927+ArthurZucker@users.noreply.github.com>
* Added `segmentation_maps` support for DPT image processor
* Added tests for dpt image processor
* Moved preprocessing into separate functions
* Added # Copied from statements
* Fixed # Copied from statements
* Added `segmentation_maps` support for DPT image processor
* Added tests for dpt image processor
* Moved preprocessing into separate functions
* Added # Copied from statements
* Fixed # Copied from statements
* First commit
* Finish model implementation
* First commit
* Finish model implementation
* Register zamba2
* generated modeling and configuration
* generated modeling and configuration
* added hybrid cache
* fix attention_mask in mamba
* dropped unused loras
* fix flash2
* config docstrings
* fix config and fwd pass
* make fixup fixes
* text_modeling_zamba2
* small fixes
* make fixup fixes
* Fix modular model converter
* added inheritances in modular, renamed zamba cache
* modular rebase
* new modular conversion
* fix generated modeling file
* fixed import for Zamba2RMSNormGated
* modular file cleanup
* make fixup and model tests
* dropped inheritance for Zamba2PreTrainedModel
* make fixup and unit tests
* Add inheritance of rope from GemmaRotaryEmbedding
* moved rope to model init
* drop del self.self_attn and del self.feed_forward
* fix tests
* renamed lora -> adapter
* rewrote adapter implementation
* fixed tests
* Fix torch_forward in mamba2 layer
* Fix torch_forward in mamba2 layer
* Fix torch_forward in mamba2 layer
* Dropped adapter in-place sum
* removed rope from attention init
* updated rope
* created get_layers method
* make fixup fix
* make fixup fixes
* make fixup fixes
* update to new attention standard
* update to new attention standard
* make fixup fixes
* minor fixes
* cache_position
* removed cache_position postion_ids use_cache
* remove config from modular
* removed config from modular (2)
* import apply_rotary_pos_emb from llama
* fixed rope_kwargs
* Instantiate cache in Zamba2Model
* fix cache
* fix @slow decorator
* small fix in modular file
* Update docs/source/en/model_doc/zamba2.md
Co-authored-by: Arthur <48595927+ArthurZucker@users.noreply.github.com>
* several minor fixes
* inherit mamba2decoder fwd and drop position_ids in mamba
* removed docstrings from modular
* reinstate zamba2 attention decoder fwd
* use regex for tied keys
* Revert "use regex for tied keys"
This reverts commit 9007a522b1f831df6d516a281c0d3fdd20a118f5.
* use regex for tied keys
* add cpu to slow forward tests
* dropped config.use_shared_mlp_adapter
* Update docs/source/en/model_doc/zamba2.md
Co-authored-by: Arthur <48595927+ArthurZucker@users.noreply.github.com>
* re-convert from modular
---------
Co-authored-by: root <root@node-2.us-southcentral1-a.compute.internal>
Co-authored-by: Arthur <48595927+ArthurZucker@users.noreply.github.com>
* use torch.testing.assertclose instead to get more details about error in cis
* fix
* style
* test_all
* revert for I bert
* fixes and updates
* more image processing fixes
* more image processors
* fix mamba and co
* style
* less strick
* ok I won't be strict
* skip and be done
* up
* Fix test_pipelines_video_classification that was always failing
* Update video pipeline docstring to reflect actual return type
---------
Co-authored-by: Louis Groux <louis.cal.groux@gmail.com>
Works for fine-tuned or exported models:
```py
from transformers import AutoModelForImageClassification
checkpoint = "timm/vit_base_patch16_224.augreg2_in21k_ft_in1k"
model = AutoModelForImageClassification.from_pretrained(checkpoint)
model.push_to_hub("pcuenq/tw1")
```
The uploaded model will now show snippets for both the timm and the
transformers libraries.
* fix "test_chat_template_dict" in llava_onevision
* Update src/transformers/models/llava_next_video/processing_llava_next_video.py
Co-authored-by: Pavel Iakubovskii <qubvel@gmail.com>
* get one video calles once
---------
Co-authored-by: Pavel Iakubovskii <qubvel@gmail.com>
* added bugfix in modular converter to keep modular assignments for docstrings, expected outputs etc.
* revert stracoder2 docstring copying, add forward in EMU3 to enable docstring assingment, remove verbatim assignments in modular converter
* added _FOR_DOC in assignments to keep, corrected wrong checkpoint name in ijepa's configuration
This is a continuation of 217c47e31bc0cd442443e5b4a62c8bc2785d53ee but
for another module. This issue was spotted in nixpkgs (again) when
building lm-eval package that used a different path in transformers
library to reach the same failure.
Related: #35133
transformers.image_transforms.normalize documents and checks for the wrong type for std and mean arguments
Co-authored-by: Louis Groux <louis.cal.groux@gmail.com>
* Initial commit with template code generated by transformers-cli
* Multiple additions to SuperGlue implementation :
- Added the SuperGlueConfig
- Added the SuperGlueModel and its implementation
- Added basic weight conversion script
- Added new ImageMatchingOutput dataclass
* Few changes for SuperGlue
* Multiple changes :
- Added keypoint detection config to SuperGlueConfig
- Completed convert_superglue_to_pytorch and succesfully run inference
* Reverted unintentional change
* Multiple changes :
- Added SuperGlue to a bunch of places
- Divided SuperGlue into SuperGlueForImageMatching and SuperGlueModel
- Added testing images
* Moved things in init files
* Added docs (to be finished depending on the final implementation)
* Added necessary imports and some doc
* Removed unnecessary import
* Fixed make fix-copies bug and ran it
* Deleted SuperGlueModel
Fixed convert script
* Added SuperGlueImageProcessor
* Changed SuperGlue to support batching pairs of images and modified ImageMatchingOutput in consequences
* Changed convert_superglue_to_hf.py script to experiment different ways of reading an image and seeing its impact on performances
* Added initial tests for SuperGlueImageProcessor
* Added AutoModelForImageMatching in missing places and tests
* Fixed keypoint_detector_output instructions
* Fix style
* Adapted to latest main changes
* Added integration test
* Fixed bugs to pass tests
* Added keypoints returned by keypoint detector in the output of SuperGlue
* Added doc to SuperGlue
* SuperGlue returning all attention and hidden states for a fixed number of keypoints
* Make style
* Changed SuperGlueImageProcessor tests
* Revert "SuperGlue returning all attention and hidden states for a fixed number of keypoints"
Changed tests accordingly
This reverts commit 5b3b669c
* Added back hidden_states and attentions masked outputs with tests
* Renamed ImageMatching occurences into KeypointMatching
* Changed SuperGlueImageProcessor to raise error when batch_size is not even
* Added docs and clarity to hidden state and attention grouping function
* Fixed some code and done refactoring
* Fixed typo in SuperPoint output doc
* Fixed some of the formatting and variable naming problems
* Removed useless function call
* Removed AutoModelForKeypointMatching
* Fixed SuperGlueImageProcessor to only accept paris of images
* Added more fixes to SuperGlueImageProcessor
* Simplified the batching of attention and hidden states
* Simplified stack functions
* Moved attention instructions into class
* Removed unused do_batch_norm argument
* Moved weight initialization to the proper place
* Replaced deepcopy for instantiation
* Fixed small bug
* Changed from stevenbucaille to magic-leap repo
* Renamed London Bridge images to Tower Bridge
* Fixed formatting
* Renamed remaining "london" to "tower"
* Apply suggestions from code review
Small changes in the docs
Co-authored-by: amyeroberts <22614925+amyeroberts@users.noreply.github.com>
* Added AutoModelForKeypointMatching
* Changed images used in example
* Several changes to image_processing_superglue and style
* Fixed resample type hint
* Changed SuperGlueImageProcessor and added test case for list of 2 images
* Changed list_of_tuples implementation
* Fix in dummy objects
* Added normalize_keypoint, log_sinkhorn_iterations and log_optimal_transport docstring
* Added missing docstring
* Apply suggestions from code review
Co-authored-by: amyeroberts <22614925+amyeroberts@users.noreply.github.com>
* Apply suggestions from code review
Co-authored-by: amyeroberts <22614925+amyeroberts@users.noreply.github.com>
* Moved forward block at bottom
* Added docstring to forward method
* Added docstring to match_image_pair method
* Changed test_model_common_attributes to test_model_get_set_embeddings test method signature
* Removed AutoModelForKeypointMatching
* Removed image fixtures and added load_dataset
* Added padding of images in SuperGlueImageProcessor
* Cleaned up convert_superglue_to_hf script
* Added missing docs and fixed unused argument
* Fixed SuperGlueImageProcessor tests
* Transposed all hidden states from SuperGlue to reflect the standard (..., seq_len, feature_dim) shape
* Added SuperGlueForKeypointMatching back to modeling_auto
* Fixed image processor padding test
* Changed SuperGlue docs
* changes:
- Abstraction to batch, concat and stack of inconsistent tensors
- Changed conv1d's to linears to match standard attention implementations
- Renamed all tensors to be tensor0 and not tensor_0 and be consistent
- Changed match image pair to run keypoint detection on all image first, create batching tensors and then filling these tensors matches after matches
- Various changes in docs, etc
* Changes to SuperGlueImageProcessor:
- Reworked the input image pairs checking function and added tests accordingly
- Added Copied from statements
- Added do_grayscale tag (also for SuperPointImageProcessor)
- Misc changes for better code
* Formatting changes
* Reverted conv1d to linear conversion because of numerical differences
* fix: changed some code to be more straightforward (e.g. filtering keypoints) and converted plot from opencv to matplotlib
* fix: removed unnecessary test
* chore: removed commented code and added back hidden states transpositions
* chore: changed from "inconsistent" to "ragged" function names as suggested
Co-authored-by: amyeroberts <22614925+amyeroberts@users.noreply.github.com>
* docs: applied suggestions
Co-authored-by: amyeroberts <22614925+amyeroberts@users.noreply.github.com>
* docs: updated to display matched output
* chore: applied suggestion for check_image_pairs_input function
Co-authored-by: amyeroberts <22614925+amyeroberts@users.noreply.github.com>
* chore: changed check_image_pairs_input function name to validate_and_format_image_pairs and used validate_preprocess_arguments function
* tests: simplified tests for image input format and shapes
* feat: converted SuperGlue's use of Conv1d with kernel_size of 1 with Linear layers. Changed tests and conversion script accordingly
* feat: several changes to address comments
Conversion script:
- Reverted fuse batchnorm to linear conversion
- Changed all 'nn.Module' to respective SuperGlue models
- Changed conversion script to use regex mapping and match other recent scripts
Modeling SuperGlue:
- Added batching with mask and padding to attention
- Removed unnecessary concat, stack and batch ragged pairs functions
- Reverted batchnorm layer
- Renamed query, key, value and merge layers into q, k, v, out proj
- Removed Union of different Module into nn.Module in _init_weights method typehint
- Changed several method's signature to combine image0 and image1 inputs with appropriate doc changes
- Updated SuperGlue's doc with torch.no_grad()
Updated test to reflect changes in SuperGlue model
* refactor: changed validate_and_format_image_pairs function with clarity
* refactor: changed from one SuperGlueMLP class to a list of SuperGlueMLP class
* fix: fixed forgotten init weight change from last commit
* fix: fixed rebase mistake
* fix: removed leftover commented code
* fix: added typehint and changed some of arguments default values
* fix: fixed attribute default values for SuperGlueConfig
* feat: added SuperGlueImageProcessor post process keypoint matching method with tests
* fix: fixed SuperGlue attention and hidden state tuples aggregation
* chore: fixed mask optionality and reordered tensor reshapes to be cleaner
* chore: fixed docs and error message returned in validate_and_format_image_pairs function
* fix: fixed returned keypoints to be the ones that SuperPoint returns
* fix: fixed check on number of image sizes for post process compared to the pairs in outputs of SuperGlue
* fix: fixed check on number of image sizes for post process compared to the pairs in outputs of SuperGlue (bis)
* fix: Changed SuperGlueMultiLayerPerceptron instantiation to avoid if statement
* fix: Changed convert_superglue_to_hf script to reflect latest SuperGlue changes and got rid of nn.Modules
* WIP: implement Attention from an existing class (like BERT)
* docs: Changed docs to include more appealing matching plot
* WIP: Implement Attention
* chore: minor typehint change
* chore: changed convert superglue script by removing all classes and apply conv to linear conversion in state dict + rearrange keys to comply with changes in model's layers organisation
* Revert "Fixed typo in SuperPoint output doc"
This reverts commit 2120390e827f94fcd631c8e5728d9a4980f4a503.
* chore: added comments in SuperGlueImageProcessor
* chore: changed SuperGlue organization HF repo to magic-leap-community
* [run-slow] refactor: small change in layer instantiation
* [run-slow] chore: replaced remaining stevenbucaille org to magic-leap-community
* [run-slow] chore: make style
* chore: update image matching fixture dataset HF repository
* [run-slow] superglue
* tests: overwriting test_batching_equivalence
* [run-slow] superglue
* tests: changed test to cope with value changing depending on cuda version
* [run-slow] superglue
* tests: changed matching_threshold value
* [run-slow] superglue
* [run-slow] superglue
* tests: changed tests for integration
* [run-slow] superglue
* fix: Changed tensor view and permutations to match original implementation results
* fix: updated convert script and integration test to include last change in model
* fix: increase tolerance for CUDA variances
* Apply suggestions from code review
Co-authored-by: Pavel Iakubovskii <qubvel@gmail.com>
* [run-slow] superglue
* chore: removed blank whitespaces
* [run-slow] superglue
* Revert SuperPoint image processor accident changes
* [run-slow] superglue
* refactor: reverted copy from BERT class
* tests: lower the tolerance in integration tests for SuperGlue
* [run-slow] superglue
* chore: set do_grayscale to False in SuperPoint and SuperGlue image processors
* [run-slow] superglue
* fix: fixed imports in SuperGlue files
* chore: changed do_grayscale SuperGlueImageProcessing default value to True
* docs: added typehint to post_process_keypoint_matching method in SuperGlueImageProcessor
* fix: set matching_threshold default value to 0.0 instead of 0.2
* feat: added matching_threshold to post_process_keypoint_matching method
* docs: update superglue.md to include matching_threshold parameter
* docs: updated SuperGlueConfig docstring for matching_threshold default value
* refactor: removed unnecessary parameters in SuperGlueConfig
* fix: changed from matching_threshold to threshold
* fix: re-revert changes to make SuperGlue attention classes copies of BERT
* [run-slow] superglue
* fix: added missing device argument in post_processing method
* [run-slow] superglue
* fix: add matches different from -1 to compute valid matches in post_process_keypoint_matching (and docstring)
* fix: add device to image_sizes tensor instantiation
* tests: added checks on do_grayscale test
* chore: reordered and added Optional typehint to KeypointMatchingOutput
* LightGluePR suggestions:
- use `post_process_keypoint_matching` as default docs example
- add `post_process_keypoint_matching` in autodoc
- add `SuperPointConfig` import under TYPE_CHECKING condition
- format SuperGlueConfig docstring
- add device in convert_superglue_to_hf
- Fix typo
- Fix KeypointMatchingOutput docstring
- Removed unnecessary line
- Added missing SuperGlueConfig in __init__ methods
* LightGluePR suggestions:
- use batching to get keypoint detection
* refactor: processing images done in 1 for loop instead of 4
* fix: use @ instead of torch.einsum for scores computation
* style: added #fmt skip to long tensor values
* refactor: rollbacked validate_and_format_image_pairs valid and invalid case to more simple ones
* refactor: prepare_imgs
* refactor: simplified `validate_and_format_image_pairs`
* docs: fixed doc
---------
Co-authored-by: steven <steven.bucaillle@gmail.com>
Co-authored-by: amyeroberts <22614925+amyeroberts@users.noreply.github.com>
Co-authored-by: Steven Bucaille <steven.bucaille@buawei.com>
Co-authored-by: Pavel Iakubovskii <qubvel@gmail.com>
* Convert more checkpoints
* Update docs, convert huge variant
* Update model name
* Update src/transformers/models/vitpose/modeling_vitpose.py
Co-authored-by: Pavel Iakubovskii <qubvel@gmail.com>
* Remove print statements
* Update docs/source/en/model_doc/vitpose.md
Co-authored-by: Steven Liu <59462357+stevhliu@users.noreply.github.com>
* Link to collection
---------
Co-authored-by: Pavel Iakubovskii <qubvel@gmail.com>
Co-authored-by: Steven Liu <59462357+stevhliu@users.noreply.github.com>
`return unittest.skip()` used in the `test_model_parallel_beam_search` in
skip condition for xpu did not actually mark test to be skipped running
under pytest:
* 148 passed, 1 skipped
Other tests use `self.skipTest()`. Reusing this approach and moving the
condition outside the loop (since it does not depend on it) allows to skip
for xpu correctly:
* 148 skipped
Secondly, `device_map="auto"` is now implemented for XPU for IPEX>=2.5 and
torch>=2.6, so we can now enable these tests for XPU for new IPEX/torch
versions.
Fixes: 1ea3ad1ae ("[tests] use `torch_device` instead of `auto` for model testing (#29531)")
Signed-off-by: Dmitry Rogozhkin <dmitry.v.rogozhkin@intel.com>
* Restore is_torch_greater_or_equal_than for backward compatibility
Signed-off-by: Tyler Michael Smith <tyler@neuralmagic.com>
* review comments
Signed-off-by: Tyler Michael Smith <tyler@neuralmagic.com>
---------
Signed-off-by: Tyler Michael Smith <tyler@neuralmagic.com>
* Add input ids to model output
* Add text preprocessing for processor
* Fix snippet
* Add test for equivalence
* Add type checking guard
* Fixing typehint
* Fix test for added `input_ids` in output
* Add deprecations and "text_labels" to output
* Adjust tests
* Fix test
* Update code examples
* Minor docs and code improvement
* Remove one-liner functions and rename class to CamelCase
* Update docstring
* Fixup
* An attempt to fix#29554. Include 'LayerNorm.' in gamma/beta rename scope, reduce number of characters searched on every load considerably.
* Fix fix on load issue
* Fix gamma/beta warning test
* A style complaint
* Improve efficiency of weight norm key rename. Add better comments about weight norm and layer norm renaming.
* Habitual elif redunant with the return
* Replace deprecated batch_size with max_batch_size
- Functionality remains the same, because property getter batch_size(self) returned max_batch_size anyways.
- This change just avoids an unnecessary warning about deprecation.
* Use max_batch_size instead of deprecated batch_size with HybridCache
* Use max_batch_size instead of deprecated batch_size with HybridCache
- Change generated code to match original source
* DataCollatorForLanguageModeling class was updated with new parameters that provides more control over the token masking and relacing
* DataCollatorForLanguageModeling class was updated with new parameters that provides more control over the token masking and relacing
* Addressed review comments, modified the docstring and made a test for the DataCollatorForLanguageModeling
* Update README.md
* Update README.md
* Update README.md
* Update README.md
* Update README.md
* Update README.md
* Update README.md
* Update README.md
* Update README.md
* Update README.md
* Update README.md
* Update README.md
* Update README.md
* Update README.md
* Update README.md
* Update README.md
Enhanced installation section with troubleshooting, GPU setup, and OS-specific details.
* Update README.md
Enhanced installation section with troubleshooting, GPU setup, and OS-specific details.
* Update installation.md
Updated installation.md to include virtual environment and GPU setup instructions.
* Update installation.md
Updated installation.md to include virtual environment and GPU setup instructions.
* Update installation.md
Updated installation.md to include virtual environment, troubleshooting and GPU setup instructions.
* Update installation.md
* Update installation.md
* Update installation.md
* Update installation.md
Updated installation.md to include virtual environment, troubleshooting functions and GPU setup instructions.
* Update installation.md
Updated installation.md to include virtual environment, troubleshooting functions and GPU setup instructions.
* Update installation.md
Updated installation.md to include virtual environment, troubleshooting functions and GPU setup instructions.
* Update README.md
Removed numbering from README.md.
* Update README.md
Removed unnecessary "a)" formatting as per maintainer feedback.
* Update README.md
Added blank lines around code snippets for better readability.
* Update README.md
Removed the line "b) Install a backend framework:" from README.md as per feedback.
* Update README.md
Simplified "For Windows:" to "Windows" in README.md as per feedback as well as "For macOS/Linux:" to "macOS/Linux"
* Update README.md
Removed unnecessary heading and retained valid code snippet.
* Update README.md
Removed unnecessary heading "d) Optional: Install from source for the latest updates" as per feedback.
* Update README.md
Removed "GPU Setup (Optional)" section to align with minimal design feedback.
* Update installation.md
Removed "Create and Activate a Virtual Environment" section from installation.md as per feedback.
* Update installation.md
Adjusted "Troubleshooting" to a second-level heading and added an introductory line as per feedback.
* Update installation.md
Updated troubleshooting section with simplified headings and formatted code blocks as per feedback.
* Update installation.md
Integrated GPU setup instructions into the "Install with pip" section for better content flow.
* Update README.md
Removed Troubleshooting section from README.md for minimalism as per maintainer feedback.
* Update torchao.md: use auto-compilation
* Update torchao.md: indicate updating transformers to the latest
---------
Co-authored-by: Marc Sun <57196510+SunMarc@users.noreply.github.com>
* Add the helium model.
* Add a missing helium.
* And add another missing helium.
* Use float for the rmsnorm mul.
* Add the Helium tokenizer converter.
* Add the pad token as suggested by Arthur.
* Update the RMSNorm + some other tweaks.
* Fix more rebase issues.
* fix copies and style
* fixes and add helium.md
* add missing tests
* udpate the backlink
* oups
* style
* update init, and expected results
* small fixes
* match test outputs
* style fixup, fix doc builder
* add dummies and we should be good to go!z
* update sdpa and fa2 documentation
---------
Co-authored-by: laurent <laurent.mazare@gmail.com>
* Removed duplicate class field definition.
* Removed duplicate code in try-except block.
---------
Co-authored-by: Pablo Montalvo <39954772+molbap@users.noreply.github.com>
* model can convert to HF and be loaded back
* nit
* works in single batch generation but hallucinates
* use the image tokens
* add image generation
* now it works
* add tests
* update
* add modulare but it doesn't work for porting docstring :(
* skip some tests
* add slow tests
* modular removed the import?
* guess this works
* update
* update
* fix copies
* fix test
* fix copies
* update
* docs
* fix tests
* last fix tests?
* pls
* repo consistency
* more style
* style
* remove file
* address comments
* tiny bits
* update after the new modular
* fix tests
* add one more cond in check attributes
* decompose down/up/mid blocks
* allow static cache generation in VLMs
* nit
* fix copies
* Update docs/source/en/model_doc/emu3.md
Co-authored-by: Steven Liu <59462357+stevhliu@users.noreply.github.com>
* Update docs/source/en/model_doc/emu3.md
Co-authored-by: Steven Liu <59462357+stevhliu@users.noreply.github.com>
* Update docs/source/en/model_doc/emu3.md
Co-authored-by: Steven Liu <59462357+stevhliu@users.noreply.github.com>
* Update docs/source/en/model_doc/emu3.md
Co-authored-by: Steven Liu <59462357+stevhliu@users.noreply.github.com>
* Update docs/source/en/model_doc/emu3.md
Co-authored-by: Steven Liu <59462357+stevhliu@users.noreply.github.com>
* Update docs/source/en/model_doc/emu3.md
Co-authored-by: Steven Liu <59462357+stevhliu@users.noreply.github.com>
* Update docs/source/en/model_doc/emu3.md
Co-authored-by: Steven Liu <59462357+stevhliu@users.noreply.github.com>
* Update docs/source/en/model_doc/emu3.md
Co-authored-by: Steven Liu <59462357+stevhliu@users.noreply.github.com>
* fix VAE upsampling
* Update src/transformers/models/emu3/modular_emu3.py
Co-authored-by: Arthur <48595927+ArthurZucker@users.noreply.github.com>
* address comments
* state overwritten stuff explicitly
* fix copies
* add the flag for flex attn
---------
Co-authored-by: Steven Liu <59462357+stevhliu@users.noreply.github.com>
Co-authored-by: Arthur <48595927+ArthurZucker@users.noreply.github.com>
* Introduce 5 integration tests for the 4 model classes + torch export
* ModernBert: reuse GemmaRotaryEmbedding via modular
* Revert #35589, keep rope_kwargs; rely on them in modular_modernbert
* Revert "Revert #35589, keep rope_kwargs; rely on them in modular_modernbert"
This reverts commit 11b44b9ee83e199cbfb7c5ba2d11f7a7fdbba2d3.
* Don't set rope_kwargs; override 'self.rope_init_fn' call instead
* bug fixes
* organize imports
* wrap cpu warning in reference_compile
* Avoid needing repad_logits_with_grad, always repad with grads when training
I'm not 100% that the conditional with "or labels is None" makes sense though - not sure what the intention is there. Perhaps we can remove that?
* Revert "Avoid needing repad_logits_with_grad, always repad with grads when training"
This reverts commit cedcb4e89bcea199a1135a0933e71f534b656239.
* Fix grammar: keep -> keeps
* Propagate grammar fix with modular_model_converter
---------
Co-authored-by: Tom Aarsen <Cubiegamedev@gmail.com>
Co-authored-by: Tom Aarsen <37621491+tomaarsen@users.noreply.github.com>
* Ensure that add_prefix_space is propagated to backend_tokenizer.pre_tokenizer
in PreTrainedTokenizerFast, rather than relying on subclasses to take care of this.
* Simplify setting self.add_prefix_space, ensure pre_tok exists
* Wrap in try-except to catch 'Custom PreTokenizer cannot be serialized'
862d1a346a/bindings/python/src/pre_tokenizers.rs (L672) produces the Exception. They're triggered by the roformer tests, as the RoFormerTokenizerFast uses a custom PreTokenizer.
* Propagate add_prefix_space in T5TokenizerFast to superclass
* look-ahead negation
* re add examples by default
* Fix the bug in topological sort
* Update create_dependency_mapping.py
* start adding test
* finalize test
* more tests
* style
* style
* update modular_modernbert -- add inputs_embeds param to ModernBertModel
* Fix implementation issues; extend to other classes; docstring
First of all, the inputs_embeds shouldn't fully replace `self.embeddings(input_ids)`, because this call also does layer normalization and dropout. So, now both input_ids and inputs_embeds is passed to the ModernBertEmbeddings, much like how BertEmbeddings is implemented.
I also added `inputs_embeds` to the docstring, and propagated the changes to the other model classes.
I also introduced an error if input_ids and input_embeds are both or neither provided.
Lastly, I fixed an issue with device being based solely on input_ids with attention_mask.
* Propagate inputs_embeds to ModernBertForMaskedLM correctly
Also reintroduce inputs_embeds test
---------
Co-authored-by: Tom Aarsen <Cubiegamedev@gmail.com>
* setup loss_type in config at model init time
ensures no additional graph break introduced when torch.compile'ed
fixes#34615
Signed-off-by: ChanderG <mail@chandergovind.org>
* lookup loss mapping at init time instead of manual setup
Signed-off-by: ChanderG <mail@chandergovind.org>
* remove redundant lookup at loss_function time
* overwride losstype at init time
---------
Signed-off-by: ChanderG <mail@chandergovind.org>
Co-authored-by: Arthur Zucker <arthur.zucker@gmail.com>
* update codecarbon
* replace directly-specified-test-dirs with tmp_dir
* pass tmp_dir to all get_regression_trainer
* test_trainer.py: Use tmp_dir consistently for all output_dir arguments
* fix some with...as tmp_dir blocks
* reflect the comments to improve test_trainer.py
* refresh .gitignore
* update conversion script
* update for bias again
* remove pdv
* use my dir
* Update how we initialize the tokenizer
* Convert in bfloat16
* Undo that one again
* fix config dump
* .to() was broken for BatchMixFeature
* quick debug breakpoint
* put the breakpoint in the right place
* Add a config flag for the multimodal projector bias
* Add a config flag for the multimodal projector bias
* Conversion script can load chat templates
* Indent config for comparison
* Stop clobbering the config
* Re-enable the config clobber
* Get rid of the config manual save - it has no effect!
* Handle adapter bias correctly
* Default vision transformer activation to silu
* Remove legacy processing path
* One commit with all the debug breakpoints before I delete them all, in case I need to revert
* Update conversion
* Remove vLLM debugging instrumentation
* Drop xformers
* Remove debug enumerates
* make fixup
* make fixup
* Break copied from in pixtral
* Propagate multimodal_projector_bias change
* Propagate multimodal_projector_bias change
* Remove debug device .to()
* Restore attention weights output
* Fix Pixtral test
* Drop image_seq_length
* Drop image_seq_length
* Put the legacy processing code back
* Add the bias option to the llava_next_video config
* Add the bias option to the llava_next_video config
* Make certain args required in converter
* Make certain args required in converter
* typo
* make fixup
* Reverting some dtype changes since it seems to work without them
---------
Co-authored-by: arthur@huggingface.co <arthur@ip-26-0-166-244.ec2.internal>
Co-authored-by: Matt <rocketknight1@gmail.com>
Co-authored-by: Matt <Rocketknight1@users.noreply.github.com>
* Updated docstring for _determine_best_metric.
* Updated docstring for metric_for_best_model.
* Added test case for save strategy.
* Updated incorrect test case.
* Changed eval_strategy to match save_strategy.
* Separated test cases for metric.
* Allow load_best_model when save_strategy == "best".
* Updated docstring for metric_for_best_model.
* fix: processing odd number of frames
* feat: add test case
* update: test one frame
* feat: support custom patch size
* fix: test with videos
* revert: change on patch repeat
* fix: much wow
* update: fixups
* fixup pls
* ruff fixup
* fix typo at least
* add audio_token attribute to proc
* expand input_ids
* and legacy and expanded input_ids
* test update
* split lines
* add possibility not to provide eos and bos audio tokens
* raise errors
* test incorrect number of audio tokens
* add example
* fmt
* typo
* first adding diffllama
* add Diff Attention and other but still with errors
* complate make attention Diff-Attention
* fix some bugs which may be caused by transformer-cli while adding model
* fix a bug caused by forgetting KV cache...
* Update src/transformers/models/diffllama/modeling_diffllama.py
You don't need to divide by 2 if we use same number of attention heads as llama. instead you can just split in forward.
Co-authored-by: Minho Ryu <ryumin93@gmail.com>
* Update src/transformers/models/diffllama/modeling_diffllama.py
fit to changeing "num_heads // 2" place
Co-authored-by: Minho Ryu <ryumin93@gmail.com>
* Update src/transformers/models/diffllama/modeling_diffllama.py
new codes are more meaningful than before
Co-authored-by: Minho Ryu <ryumin93@gmail.com>
* Update src/transformers/models/diffllama/modeling_diffllama.py
new codes are more meaningful than before
Co-authored-by: Minho Ryu <ryumin93@gmail.com>
* Update src/transformers/models/diffllama/modeling_diffllama.py
fit to changeing "num_heads // 2" place
Co-authored-by: Minho Ryu <ryumin93@gmail.com>
* Update src/transformers/models/diffllama/modeling_diffllama.py
fix 2times divide by sqrt(self.head_dim)
Co-authored-by: Minho Ryu <ryumin93@gmail.com>
* Update src/transformers/models/diffllama/modeling_diffllama.py
fix 2times divide by sqrt(self.head_dim)
Co-authored-by: Minho Ryu <ryumin93@gmail.com>
* Update src/transformers/models/diffllama/modeling_diffllama.py
fit to changeing "num_heads // 2" place.
and more visible
Co-authored-by: Minho Ryu <ryumin93@gmail.com>
* I found Attention missed implemented from paper still on e072544a3bfc69b8a903e062729f861108ffecd3.
* re-implemented
* adding groupnorm
Co-authored-by: Minho Ryu <ryumin93@gmail.com>
* align with transformers code style
Co-authored-by: Minho Ryu <ryumin93@gmail.com>
* fix typo
Co-authored-by: Minho Ryu <ryumin93@gmail.com>
* adding groupnorm
Co-authored-by: Minho Ryu <ryumin93@gmail.com>
* change SdpaAttention to DiffSdpaAttention
Co-authored-by: Minho Ryu <ryumin93@gmail.com>
* fix bug
* Update src/transformers/models/diffllama/modeling_diffllama.py
resolve "not same outputs" problem
Co-authored-by: Minho Ryu <ryumin93@gmail.com>
* fix bugs of places of "GroupNorm with scale" and etc
* Revert "fix bugs of places of "GroupNorm with scale" and etc"
This reverts commit 26307d92f6acd55e9fe89f2facff350f05760960.
* simplify multiple of attention (matmul) operations into one by repeating value_states
Co-authored-by: Minho Ryu <ryumin93@gmail.com>
* simplify multiple of attention (matmul) operations into one by repeating value_states
Co-authored-by: Minho Ryu <ryumin93@gmail.com>
* simplify multiple of attention (matmul) operations into one by repeating value_states
Co-authored-by: Minho Ryu <ryumin93@gmail.com>
* remove missed type
* add diffllama model_doc
* apply make style/quality
* apply review comment about model
* apply review comment about test
* place diffllama alphabetically on the src/transformers/__init__.py
* fix forgot code
* Supports parameters that are not initialized with standard deviation 0 in the conventional method
* add DiffLlamaConfig to CONFIG_CLASSES_TO_IGNORE_FOR_DOCSTRING_CHECKPOINT_CHECK on utils/check_config_docstrings.py
* remove unused property of config
* add to supported model list
* add to spda supported model list
* fix copyright, remove pretraining_tensor_parallel, and modify for initialization test
* remove unused import and etc.
* empty commit
* empty commit
* empty commit
* apply modular transformers but with bugs
* revert prev commit
* create src/transformers/model/diffllama/modular_diffllama.py
* run utils/modular_model_converter.py
* empty commit
* leaner modular diffllama
* remove more and more in modular_diffllama.pt
* remove more and more in modular_diffllama.pt
* resolve missing docstring entries
* force reset
* convert modular
---------
Co-authored-by: Minho Ryu <ryumin93@gmail.com>
`parallelize()` API is deprecated in favor of accelerate's `device_map="auto"`
and therefore is not accepting new features. At the same time `parallelize()`
implementation is currently CUDA-specific. This commit marks respective
ci tests with `@require_torch_gpu`.
Fixes: #35252
Signed-off-by: Dmitry Rogozhkin <dmitry.v.rogozhkin@intel.com>
* added logic for deleting adapters once loaded
* updated to the latest version of transformers, merged utility function into the source
* updated with missing check
* added peft version check
* Apply suggestions from code review
Co-authored-by: Anton Vlasjuk <73884904+vasqu@users.noreply.github.com>
* changes according to reviewer
* added test for deleting adapter(s)
* styling changes
* styling changes in test
* removed redundant code
* formatted my contributions with ruff
* optimized error handling
* ruff formatted with correct config
* resolved formatting issues
---------
Co-authored-by: Anton Vlasjuk <73884904+vasqu@users.noreply.github.com>
* Make kwargs uniform for SAM
* Remove unused attribute
* Make point_pad_value part of image_kwargs
* Update annotations
* Code review - use existing methods
* Use ProcessorTesterMixin
* Do not add ProcessorTesterMixin everywhere
* Improve modular transformers documentation
- Adds hints to general contribution guides
- Lists which utils scripts are available to generate single-files from modular files and check their content
* Show commands in copyable code cells
---------
Co-authored-by: Joel Koch <joel@bitcrowd.net>
* bugfix: torch.export failure caused by `_make_causal_mask`
Recent changes in torch dynamo prevent mutations on tensors converted with aten::_to_copy. To address this, we can clone such tensor before performing in-place operation `masked_fill_` only when the code is being compiled by torch dynamo.
(relevant issue: https://github.com/pytorch/pytorch/issues/127571)
* chore: use `is_torchdynamo_compiling` instead of `torch._dynamo.is_compiling`
* fixup mamba2 - caching and several other small fixes
* fixup cached forward
* correct fix this time
* fixup cache - we do not need to extend the attn mask it's handled by generate (gives total ids + mask at each step)
* remove unnecessary (un)squeeze
* fixup cache position
* simplify a few things
* [run-slow] mamba2
* multi gpu attempt two
* [run-slow] mamba2
* [run-slow] mamba2
* [run-slow] mamba2
* [run-slow] mamba2
* add newer slow path fix
* [run-slow] mamba2
* initial cut of modernbert for transformers
* small bug fixes
* fixes
* Update import
* Use compiled mlp->mlp_norm to match research implementation
* Propagate changes in modular to modeling
* Replace duplicate attn_out_dropout in favor of attention_dropout
cc @warner-benjamin let me know if the two should remain separate!
* Update BOS to CLS and EOS to SEP
Please confirm @warner-benjamin
* Set default classifier bias to False, matching research repo
* Update tie_word_embeddings description
* Fix _init_weights for ForMaskedLM
* Match base_model_prefix
* Add compiled_head to match research repo outputs
* Fix imports for ModernBertForMaskedLM
* Just use "gelu" default outright for classifier
* Fix config name typo: initalizer -> initializer
* Remove some unused parameters in docstring. Still lots to edit there!
* Compile the embeddings forward
Not having this resulted in very slight differences - so small it wasn't even noticed for the base model, only for the large model.
But the tiny difference for large propagated at the embedding layer through the rest of the model, leading to notable differences of ~0.0084 average per value, up to 0.2343 for the worst case.
* Add drafts for ForSequenceClassification/ForTokenClassification
* Add initial SDPA support (not exactly equivalent to FA2 yet!)
During testing, FA2 and SDPA still differ by about 0.0098 per value in the token embeddings. It still predicts the correct mask fills, but I'd like to get it fully 1-1 if possible.
* Only use attention dropout if training
* Add initial eager attention support (also not equivalent to FA2 yet!)
Frustratingly, I also can't get eager to be equivalent to FA2 (or sdpa), but it does get really close, i.e. avg ~0.010 difference per value.
Especially if I use fp32 for both FA2&eager, avg ~0.0029 difference per value
The fill-mask results are good with eager.
* Add initial tests, output_attentions, output_hidden_states, prune_heads
Tests are based on BERT, not all tests pass yet: 23 failed, 79 passed, 100 skipped
* Remove kwargs from ModernBertForMaskedLM
Disable sparse_prediction by default to match the normal HF, can be enabled via config
* Remove/adjust/skip improper tests; warn if padding but no attn mask
* Run formatting etc.
* Run python utils/custom_init_isort.py
* FlexAttention with unpadded sequences(matches FA2 within bf16 numerics)
* Reformat init_weights based on review
* self -> module in attention forwards
* Remove if config.tie_word_embeddings
* Reformat output projection on a different line
* Remove pruning
* Remove assert
* Call contiguous() to simplify paths
* Remove prune_qkv_linear_layer
* Format code
* Keep as kwargs, only use if needed
* Remove unused codepaths & related config options
* Remove 3d attn_mask test; fix token classification tuple output
* Reorder: attention_mask above position_ids, fixes gradient checkpointing
* Fix usage if no FA2 or torch v2.5+
* Make torch.compile/triton optional
Should we rename 'compile'? It's a bit vague
* Separate pooling options into separate functions (cls, mean) - cls as default
* Simplify _pad_modernbert_output, remove unused labels path
* Update tied weights to remove decoder.weight, simplify decoder loading
* Adaptively set config.compile based on hf_device_map/device/resize, etc.
* Update ModernBertConfig docstring
* Satisfy some consistency checks, add unfinished docs
* Only set compile to False if there's more than 1 device
* Add docstrings for public ModernBert classes
* Dont replace docstring returns - ends up being duplicate
* Fix mistake in toctree
* Reformat toctree
* Patched FlexAttention, SDPA, Eager with Local Attention
* Implement FA2 -> SDPA -> Eager attn_impl defaulting, crucial
both to match the original performance, and to get the highest inference speed without requiring users to manually pick FA2
* Patch test edge case with Idefics3 not working with 'attn_implementation="sdpa"'
* Repad all_hidden_states as well
* rename config.compile to reference_compile
* disable flex_attention since it crashes
* Update modernbert.md
* Using dtype min to mask in eager
* Fully remove flex attention for now
It's only compatible with the nightly torch 2.6, so we'll leave it be for now. It's also slower than eager/sdpa.
Also, update compile -> reference_compile in one more case
* Call contiguous to allow for .view()
* Copyright 2020 -> 2024
Co-authored-by: Arthur <48595927+ArthurZucker@users.noreply.github.com>
* Update/simplify __init__ structure
Co-authored-by: Arthur <48595927+ArthurZucker@users.noreply.github.com>
* Remove "... if dropout_prob > 0 else identity"
As dropout with 0.0 should be efficient like identity
* re-use existing pad/unpad functions instead of creating new ones
* remove flexattention method
* Compute attention_mask and local_attention_mask once in modeling
* Simplify sequence classification prediction heads, only CLS now
Users can make custom heads if they feel like it
Also removes the unnecessary pool parameter
* Simplify module.training in eager attn
* Also export ModernBertPreTrainedModel
* Update the documentation with links to finetuning scripts
* Explain local_attention_mask parameter in docstring
* Simplify _autoset_attn_implementation, rely on super()
* Keep "in" to initialize Prediction head
Doublechecked with Benjamin that it's correct/what we used for pretraining
* add back mean pooling
* Use the pooling head in TokenClassification
* update copyright
* Reset config._attn_implementation_internal on failure
* Allow optional attention_mask in ForMaskedLM head
* fix failing run_slow tests
* Add links to the paper
* Remove unpad_no_grad, always pad/unpad without gradients
* local_attention_mask -> sliding_window_mask
* Revert "Use the pooling head in TokenClassification"
This reverts commit 99c38badd1dbce01d7aef41095fbf2f5cce87279.
There was no real motivation, no info on whether having this bigger head does anything useful.
* Simplify pooling, 2 options via if-else
---------
Co-authored-by: Tom Aarsen <37621491+tomaarsen@users.noreply.github.com>
Co-authored-by: Tom Aarsen <Cubiegamedev@gmail.com>
Co-authored-by: Said Taghadouini <taghadouinisaid@gmail.com>
Co-authored-by: Benjamin Clavié <ben@clavie.eu>
Co-authored-by: Antoine Chaffin <ant54600@hotmail.fr>
Co-authored-by: Arthur <48595927+ArthurZucker@users.noreply.github.com>
* docs: fix typo quickstart snippet in ColPali's model card
* docs: clean the ColPali's model card
* docs: make the `ColPaliForRetrieval`'s docstring more concise
* docs: add missing bash command used to convert weights for `vidore/colpali-v1.3-hf`
* initial commit for PR
Co-authored-by: Gabe Goodhart <gabe.l.hart@gmail.com>
* rename dynamic cache
Signed-off-by: Yu Chin Fabian Lim <flim@sg.ibm.com>
* add more unit tests
Signed-off-by: Yu Chin Fabian Lim <flim@sg.ibm.com>
* add integration test
Signed-off-by: Yu Chin Fabian Lim <flim@sg.ibm.com>
* add integration test
Signed-off-by: Yu Chin Fabian Lim <flim@sg.ibm.com>
* Add modular bamba file
* Remove trainer changes from unrelated PR
* Modify modular and cofig to get model running
* Fix some CI errors and beam search
* Fix a plethora of bugs from CI/docs/etc
* Add bamba to models with special caches
* Updat to newer mamba PR for mamba sublayer
* fix test_left_padding_compatibility
Signed-off-by: Yu Chin Fabian Lim <flim@sg.ibm.com>
* fix style
Signed-off-by: Yu Chin Fabian Lim <flim@sg.ibm.com>
* fix remaining tests
Signed-off-by: Yu Chin Fabian Lim <flim@sg.ibm.com>
* missed this test
Signed-off-by: Yu Chin Fabian Lim <flim@sg.ibm.com>
* ran make style
Signed-off-by: Yu Chin Fabian Lim <flim@sg.ibm.com>
* move slow tag to integration obj
Signed-off-by: Yu Chin Fabian Lim <flim@sg.ibm.com>
* make style
Signed-off-by: Yu Chin Fabian Lim <flim@sg.ibm.com>
* address comments
Signed-off-by: Yu Chin Fabian Lim <flim@sg.ibm.com>
* fix modular
Signed-off-by: Yu Chin Fabian Lim <flim@sg.ibm.com>
* left out one part of modular
Signed-off-by: Yu Chin Fabian Lim <flim@sg.ibm.com>
* change model
Signed-off-by: Yu Chin Fabian Lim <flim@sg.ibm.com>
* Make Rotary modular as well
* Update bamba.md
Added overview, update Model inference card and added config
* Update bamba.md
* Update bamba.md
* Update bamba.md
Minor fixes
* Add docs for config and model back
Signed-off-by: Antoni Viros i Martin <aviros@ibm.com>
* Add warning when using fast kernels
* replaced generate example
Signed-off-by: Yu Chin Fabian Lim <flim@sg.ibm.com>
* Address comments from PR
Signed-off-by: Antoni Viros i Martin <aviros@ibm.com>
* Propagate attention fixes
Signed-off-by: Antoni Viros i Martin <aviros@ibm.com>
* Fix attention interfaces to the new API
Signed-off-by: Antoni Viros i Martin <aviros@ibm.com>
* Fix API for decoder layer
Signed-off-by: Antoni Viros i Martin <aviros@ibm.com>
* Remove extra weights
Signed-off-by: Antoni Viros i Martin <aviros@ibm.com>
---------
Signed-off-by: Yu Chin Fabian Lim <flim@sg.ibm.com>
Signed-off-by: Antoni Viros i Martin <aviros@ibm.com>
Co-authored-by: Gabe Goodhart <gabe.l.hart@gmail.com>
Co-authored-by: Antoni Viros i Martin <aviros@ibm.com>
Co-authored-by: divya-kumari32 <72085811+divya-kumari32@users.noreply.github.com>
Co-authored-by: Antoni Viros <ani300@gmail.com>
* feat: add `benchmarks_entrypoint.py`
Adding `benchmarks_entrypoint.py` file, which will be run from the
benchmarks CI.
This python script will list all python files from the `benchmark/`
folder and run the included `run_benchmark` function, allowing people to
add new benchmarks scripts.
* feat: add `MetricsRecorder`
* feat: update dashboard
* fix: add missing arguments to `MetricsRecorder`
* feat: update dash & add datasource + `default.yml`
* fix: move responsibility to create `MetricsRecorder` in bench script
* fix: update incorrect datasource UID
* fix: incorrect variable values
* debug: benchmark entrypoint script
* refactor: update log level
* fix: update broken import
* feat: add debug log in `MetricsRecorder`
* debug: set log level to debug
* fix: set connection `autocommit` to `True`
* do not remove decoder_input_ids for the first segment
* do not remove eos token in generate_with_fallback
* when removing padding tokens, do not remove eos token
* remove eos token in generate (and not in generate_with_fallback!)
* reconciliate short-from/ long-form behavior
* correct avg_logprobs calculation
* handle eos token in segments
* handle decoder_input_ids and eos token in _prepare_decoder_input_ids
* fix incorrect time precision
* always remove eos token
* always remove decoder_input_ids
* no need to handle decoder_inputs_ids and eos token
* no need to remove decoder_input_ids
* no need to handle eos token
* fix num_beams in _retrieve_logit_processors
* remove todo unconsistency
* no need to add eos token
* last_timestamp_pos should indeed be timestamp token pos
* patch generate to enable compatibility with GenerationTesterMixin tests
* adapt test_generate_continue_from_past_key_values
* adapt test_prompt_lookup_decoding_matches_greedy_search
* adapt generic GenerationMixin tests to whisper's generate
* fix speculative decoding
* fix
* [run-slow] whisper
* change HF_HUB_TOKEN for require_read_token
* [run-slow] whisper
* prioritize kwargs over generation_config
* remove unnecessary args
* [run-slow] whisper
* update tests
* [run-slow] whisper
* add comment
* update test
* [run-slow] whisper
* update test + revert require_read_token
* docstring updates
* revert tokenizer decode args change
* do not use a patch + docstring updates
* [run-slow] whisper
* make
* [run-slow] whisper
* add a flag to force unique call to generate
* test update
* [run-slow] whisper
* add force_unique_generate_call arg
* do not use a patch
* correct the timestamps for the pad tokens
* docstring update
* docstring update
* docstring update
* upodate TF tests
* add require_read_token
* [run-slow] whisper
* test reset dynamo
* [run-slow] whisper
* fix
* [run-slow] whisper
* avoid iterating twice on current_segments
* [run-slow] whisper
* [run-slow] whisper
---------
Co-authored-by: Eustache Le Bihan <eustlb@users.noreply.huggingface.co>
Co-authored-by: ydshieh <ydshieh@users.noreply.github.com>
* feat: add support for sdpa and gradient checkpointing
* fix: ruff format
* fix: config sdpa
* fix: sdpa layer naming convention
* fix: update test_eager_matches_sdpa_inference to handle vision_hidden_states
* test: skip incompatible tests and fix loading issue with sdpa
- Updated tests to skip cases flash and dynamic compile.
- Minor adjustment to ensure correct loading of model with sdpa for dispatch test.
* style: apply Ruff formatting
* ruff fix again after rebase
* [run-slow] sam
* [run-slow] sam
* refactor: Address review comments and improve sub-config handling in SAM model tests
- Added attributes for sub_configs as per PR #34410.
- Enabled tests for configs, ensuring the composite model (SAM) has several sub-configs in the main config.
- Added class attribute _is_composite=True to the tester class
- test_sdpa_can_dispatch_composite_models added
* [run-slow] sam
* style: ruff
* [run-slow] sam
* style: ruff again ...
* [run-slow] sam
* Add Falcon3 documentation
* Update Falcon3 documentation
* Change Falcon to Falcon3
* Update docs and run make fix-copies
* Add blog post and huggingface models links
* refactor image_processing_auto logic
* fix fast image processor tests
* Fix tests fast vit image processor
* Add safeguard when use_fast True and torchvision not available
* change default use_fast back to None, add warnings
* remove debugging print
* call get_image_processor_class_from_name once
* don't use no_sync when deepspeed doesn't support it for certain zero stages
* chore: lint
* fix no_sync context for deepspeed across all zero types
* chore: lint
* add more cases
* fix method not found in unittest
Signed-off-by: Lin, Fanli <fanli.lin@intel.com>
* fix more cases
* add more models
* add all
* no unittest.case
* remove for oneformer
* fix style
---------
Signed-off-by: Lin, Fanli <fanli.lin@intel.com>
* draft, run model as compreszed/uncompressed mode
* draft
* run run_compressed=False
* run_compressed as attr
* set run_compressed=False using quantization_config
* remove redundant line
* make is_qat_trainable dependent on run_compressed status
* add tests
* lint
* full in docstring
* add decompress
* comments
* decompress if model is compresssed and not run_compressed
* apply_quant_config logic fix -- populate statedict properly
* comments
* remove non compressed model
* make is_compressed as property
* cosmetic
* run apply_quant_config for non-compressed models -- popualte scales and zeropoints
* add pahtway for decompressing sparse models
* typo on is_quantization_compressed
* lint
* fix typo
* fix(utils): Support the newest Union type in chat template
* fix(utils/chat_template): Backward compatibility for the newest Union type
* Update src/transformers/utils/chat_template_utils.py
Co-authored-by: Matt <Rocketknight1@users.noreply.github.com>
---------
Co-authored-by: Matt <Rocketknight1@users.noreply.github.com>
* Add files
* Init
* Add TimmWrapperModel
* Fix up
* Some fixes
* Fix up
* Remove old file
* Sort out import orders
* Fix some model loading
* Compatible with pipeline and trainer
* Fix up
* Delete test_timm_model_1/config.json
* Remove accidentally commited files
* Delete src/transformers/models/modeling_timm_wrapper.py
* Remove empty imports; fix transformations applied
* Tidy up
* Add image classifcation model to special cases
* Create pretrained model; enable device_map='auto'
* Enable most tests; fix init order
* Sort imports
* [run-slow] timm_wrapper
* Pass num_classes into timm.create_model
* Remove train transforms from image processor
* Update timm creation with pretrained=False
* Fix gamma/beta issue for timm models
* Fixing gamma and beta renaming for timm models
* Simplify config and model creation
* Remove attn_implementation diff
* Fixup
* Docstrings
* Fix warning msg text according to test case
* Fix device_map auto
* Set dtype and device for pixel_values in forward
* Enable output hidden states
* Enable tests for hidden_states and model parallel
* Remove default scriptable arg
* Refactor inner model
* Update timm version
* Fix _find_mismatched_keys function
* Change inheritance for Classification model (fix weights loading with device_map)
* Minor bugfix
* Disable save pretrained for image processor
* Rename hook method for loaded keys correction
* Rename state dict keys on save, remove `timm_model` prefix, make checkpoint compatible with `timm`
* Managing num_labels <-> num_classes attributes
* Enable loading checkpoints in Trainer to resume training
* Update error message for output_hidden_states
* Add output hidden states test
* Decouple base and classification models
* Add more test cases
* Add save-load-to-timm test
* Fix test name
* Fixup
* Add do_pooling
* Add test for do_pooling
* Fix doc
* Add tests for TimmWrapperModel
* Add validation for `num_classes=0` in timm config + test for DINO checkpoint
* Adjust atol for test
* Fix docs
* dev-ci
* dev-ci
* Add tests for image processor
* Update docs
* Update init to new format
* Update docs in configuration
* Fix some docs in image processor
* Improve docs for modeling
* fix for is_timm_checkpoint
* Update code examples
* Fix header
* Fix typehint
* Increase tolerance a bit
* Fix Path
* Fixing model parallel tests
* Disable "parallel" tests
* Add comment for metadata
* Refactor AutoImageProcessor for timm wrapper loading
* Remove custom test_model_outputs_equivalence
* Add require_timm decorator
* Fix comment
* Make image processor work with older timm versions and tensor input
* Save config instead of whole model in image processor tests
* Add docstring for `image_processor_filename`
* Sanitize kwargs for timm image processor
* Fix doc style
* Update check for tensor input
* Update normalize
* Remove _load_timm_model function
---------
Co-authored-by: Amy Roberts <22614925+amyeroberts@users.noreply.github.com>
Original issue: https://github.com/huggingface/peft/issues/2256
There is a potential error when using load_best_model_at_end=True with a
prompt learning PEFT method. This is because Trainer uses load_adapter
under the hood but with some prompt learning methods, there is an
optimization on the saved model to remove parameters that are not
required for inference, which in turn requires a change to the model
architecture. This is why load_adapter will fail in such cases and users
should instead set load_best_model_at_end=False and use
PeftModel.from_pretrained. As this is not obvious, we now intercept the
error and add a helpful error message.
* add "Translating Benchmarks.md to Chinese "
* Removed all the English original text (which was previously kept as comments in the document) and refined some of the Chinese expressions.
* Support BatchNorm in Hubert pos_conv_emb as in fairseq
* Correct the new defaults (#34377)
* Correct the new defaults
* CIs
* add check
* Update utils.py
* Update utils.py
* Add the max_length in generate test checking shape without passing length
* style
* CIs
* fix fx CI issue
* [auto. ping] Avoid sending empty info + add more team members (#34383)
* update
* update
---------
Co-authored-by: ydshieh <ydshieh@users.noreply.github.com>
* Fix glm (#34388)
* Fix duplicated
* fix import
* Use non nested images and batched text Idefics2/3 (#34222)
* add support for non nested images and add tests
* add tests error scenario
* fix style
* added single and no image to error tests
* Fix onnx non-expotable inplace aten op (#34376)
* fix onnx non-expotable inplace op
* mistral, qwen2, qwen2_vl, starcoder2
* fixup copies
* Fix right padding in LLaVA models (#34305)
* fix right pad llavas
* device mismatch
* no filter (#34391)
* no filter
* no filter
* no filter
---------
Co-authored-by: ydshieh <ydshieh@users.noreply.github.com>
* SynthID: better example (#34372)
* better example
* Update src/transformers/generation/configuration_utils.py
* Update src/transformers/generation/logits_process.py
* nits
* Tests: upgrade `test_eager_matches_sdpa_generate` (#34386)
* Fix bnb training test failure (#34414)
* Fix bnb training test: compatibility with OPTSdpaAttention
* Avoid check expected exception when it is on CUDA (#34408)
* update
* update
---------
Co-authored-by: ydshieh <ydshieh@users.noreply.github.com>
* Fix typos in agents_advanced.md (#34405)
* [docs] Cache implementations (#34325)
cache
* [run-slow] hubert
* Support BatchNorm in Hubert pos_conv_emb as in fairseq
Add conversion integration test, and make batchnorm explicit variable
* Support BatchNorm in Hubert pos_conv_emb as in fairseq
fix make fixup styling changes
* [run-slow] hubert
* Support BatchNorm in Hubert pos_conv_emb as in fairseq
* [run-slow] hubert
* Support BatchNorm in Hubert pos_conv_emb as in fairseq
Add conversion integration test, and make batchnorm explicit variable
* Support BatchNorm in Hubert pos_conv_emb as in fairseq
fix make fixup styling changes
* [run-slow] hubert
* [run-slow] hubert
---------
Co-authored-by: Cyril Vallez <cyril.vallez@huggingface.co>
Co-authored-by: Yih-Dar <2521628+ydshieh@users.noreply.github.com>
Co-authored-by: ydshieh <ydshieh@users.noreply.github.com>
Co-authored-by: Yoni Gozlan <74535834+yonigozlan@users.noreply.github.com>
Co-authored-by: Ilyas Moutawwakil <57442720+IlyasMoutawwakil@users.noreply.github.com>
Co-authored-by: Raushan Turganbay <raushan@huggingface.co>
Co-authored-by: Joao Gante <joaofranciscocardosogante@gmail.com>
Co-authored-by: Matthew Douglas <38992547+matthewdouglas@users.noreply.github.com>
Co-authored-by: Rudy Delouya <rudy.delouya@gmail.com>
Co-authored-by: Steven Liu <59462357+stevhliu@users.noreply.github.com>
Co-authored-by: Yoach Lacombe <52246514+ylacombe@users.noreply.github.com>
In method `Trainer#get_batch_samples`, the return values should be a
list of batch samples and an integer indicating the number of items that
exist in the batch. However, this was not actually a case and what was
returned instead of an integer, was a tensor with one element. In the
multi-GPU setup, this tensor is placed in a different device than the
loss tensor, causing the loss function to raise a `RuntimeError`.
The problem arises from
5d7739f15a/src/transformers/trainer.py (L5139-L5144),
where the outer `sum` operates over a list of tensors which means that
the final result is also a tensor. To counter this issue, a new check
(after the accelerator gathering) has been added in order to convert a
potential tensor to an integer before returning the
`num_items_in_batch`.
* Option to set 'non_blocking' for to(device) operation for performance improvements. Defaults to 'false', thus no behavioral changes.
* Enabling non_blocking in to() operation of BatchFeature.
* Improved docstring on utilization of non_blocking
* Force non_blocking as keyword argument
Co-authored-by: Pavel Iakubovskii <qubvel@gmail.com>
---------
Co-authored-by: Daniel Bogdoll <dbogdoll@umich.edu>
Co-authored-by: Pavel Iakubovskii <qubvel@gmail.com>
* fix GA bugs and add unit test
* narrow down model loss unit test diff gap
* format code to make ruff happy
* send num_items_in_batch argument to decoder
* fix GA loss bug in BertLMHeadModel
* use TinyStories-33M to narrow down diff gap
* fotmat code
* missing .config
* avoid add extra args
---------
Co-authored-by: kangsheng <kangsheng@meituan.com>
* update modular and add examples
* style
* improve example comments
* style
* fix small logic issue for imports
* fix relative order issue when files do not make sense
* Improve comments
* trigger CIs
* gpt neox flex attention + refactor
* some formatting
* small fix on dropout
* add assertion on flex attn test
* flaky ci :(
* add head mask support
* style
* handle dtype, replace torch where
* fixup flex with output attns
* code review and several other fixes
* Update src/transformers/modeling_utils.py
Co-authored-by: Arthur <48595927+ArthurZucker@users.noreply.github.com>
* style
* remove unnecessary comment
* remove incorrect comment
* make flex attn check more agnostic tor versions and centralized
* change peft input dtype check to value since q and k could be affected by other stuff like RoPE
* i forgor
* flaky
* code review and small fixes
* Update src/transformers/models/gpt_neox/modeling_gpt_neox.py
Co-authored-by: Arthur <48595927+ArthurZucker@users.noreply.github.com>
---------
Co-authored-by: Arthur <48595927+ArthurZucker@users.noreply.github.com>
* add base tp plan for qwen2 and qwen2moe
* add parallel tp for starcoder2
* fix modular conversion
* add infer dim for qkv states
* Update src/transformers/models/qwen2_moe/configuration_qwen2_moe.py
---------
Co-authored-by: Arthur <48595927+ArthurZucker@users.noreply.github.com>
* Fixed typo in multi gpu docs and OLMoE version
* Fixed typos in docs for agents, agents advanced, knowledge distillation, and image feature extraction
* Fixed incorrect usage of model.image_guided_detection in zero shot object detection docs
* Use torch.nn.attention.sdpa_kernel instead of deprecated torch.backends.cuda.sdp_kernel
Signed-off-by: Dmitry Rogozhkin <dmitry.v.rogozhkin@intel.com>
* Fix test_eager_matches_sdpa_inference for XPU backend
As of PyTorch 2.5 XPU backend supports only torch.nn.attention.SDPBackend.MATH
which is implemented on PyTorch level using aten operators and is device
agnostic with respect to implementation of each aten operator. Thus, we can
reuse CUDA (or CPU) MATH weights for XPU.
Fixes: #34888
Signed-off-by: Dmitry Rogozhkin <dmitry.v.rogozhkin@intel.com>
* Use torch.amp.autocast instead of deprecated torch.cuda.amp.autocast in nemotron
Signed-off-by: Dmitry Rogozhkin <dmitry.v.rogozhkin@intel.com>
---------
Signed-off-by: Dmitry Rogozhkin <dmitry.v.rogozhkin@intel.com>
* [PEFT] Set eval mode when loading PEFT adapter
Resolves#34469
When calling model.load_adapter to load a PEFT adapter, by default the
adapter should be set to eval mode. This is now correctly done. Users
can still pass is_trainable=True to load the adapter in training mode.
* Linter
* Initial draft
* Add .jinja file loading for processors
* Add processor saving of naked chat template files
* make fixup
* Add save-load test for tokenizers
* Add save-load test for tokenizers
* stash commit
* Try popping the file
* make fixup
* Pop the arg correctly
* Pop the arg correctly
* Add processor test
* Fix processor code
* stash commit
* Processor clobbers child tokenizer's chat template
* Processor clobbers child tokenizer's chat template
* make fixup
* Split processor/tokenizer files to avoid interactions
* fix test
* Expand processor tests
* Rename arg to "save_raw_chat_template" across all classes
* Update processor warning
* Move templates to single file
* Move templates to single file
* Improve testing for processor/tokenizer clashes
* Improve testing for processor/tokenizer clashes
* Extend saving test
* Test file priority correctly
* make fixup
* Don't pop the chat template file before the slow tokenizer gets a look
* Remove breakpoint
* make fixup
* Fix error
* change apply_rotary_pos_emb
* upload for glm-edge
* remove useless part
* follow the suggestion
* fix
* format
* format
* test
* format again
* format again
* remove modular change
* remove modular change
* this apply_rotary_pos_emb need modify?
* fix with this
* format
* format
* ruff check
* modify modular_glm failed
* remove partial_rotary_factor of function partial_rotary_factor
* fix wrong change of examples/research_projects
* revert
* remove line 118
* use q_rot
* fix test_tiny_timestamp_generation
* fix test_large_timestamp_generation
* fix test_whisper_shortform_single_batch_prev_cond
* fix test_whisper_shortform_multi_batch_hard_prev_cond
* return_timestamps necessary with long form
* fix test_default_multilingual_transcription_long_form
* fix test_tiny_token_timestamp_generation_longform
* fix test_whisper_longform_multi_batch_hard
* Update tests/models/whisper/test_modeling_whisper.py
Co-authored-by: Yoach Lacombe <52246514+ylacombe@users.noreply.github.com>
* fix typo
* do not expect special tokens
* fix test_whisper_longform_single_batch_beam
* fix test_whisper_longform_multi_batch_hard_prev_cond
* update test_whisper_longform_multi_batch_hard_prev_cond
* update test_whisper_longform_multi_batch_hard_prev_cond
* these tests does not make sense anymore
* this test does not make sense anymore
* make fixup
* suggested nits
* add test with forced_decoder_ids
* this test does not make sense anymore
* change assert for unittest test cases
* make fixup
* test with prompt_ids and task and language
* fix unittest test case call
* fix test_tiny_generation
* fix test_tiny_en_generation
* fix test_tiny_en_batched_generation
* fix test_tiny_longform_timestamps_generation
* fix test_tiny_timestamp_generation
* fix test_large_generation
* fix test_large_batched_generation
* fix test_large_generation_multilingual
* fix test_large_timestamp_generation
* fix test_large_timestamp_generation
* fix test_tiny_token_timestamp_generation_longform
* fix test_tiny_en_batched_generation
* make fixup
* [run-slow] whisper
---------
Co-authored-by: Yoach Lacombe <52246514+ylacombe@users.noreply.github.com>
The old AWQ version is failing with the latest (unreleased)
transformers, giving the error:
> ImportError: cannot import name 'shard_checkpoint' from
'transformers.modeling_utils'
This has been resolved in awq v0.2.7:
https://github.com/casper-hansen/AutoAWQ/pull/644
* allow unused parameter passthrough when chunking in asr pipelines
* format code
* format
* run fixup
* update tests
* update parameters to pipline in test
* updates parametrs in tests
* change spelling in gitignore
* revert .gitignore to main
* add git ignore of devcontainer folder
* assert asr output follows expected inference output type
* run fixup
* Remove .devcontainer from .gitignore
* remove compliance check
* CI Skip EETQ tests while package is broken
EETQ tries to import the shard_checkpoint function from transformers but
the function has been removed. Therefore, trying to use EETQ currently
results in an import error. This fix results in EETQ tests being skipped
if there is an import error.
The issue has been reported to EETQ:
https://github.com/NetEase-FuXi/EETQ/issues/34
* Raise helpful error when trying to use eetq
* Forget to raise the error in else clause
Maintained examples (not research project or legacy):
- Flax: @sanchit-gandhi
- Flax: @Rocketknight1
- PyTorch: See Models above and tag the person corresponding to the modality of the example.
- TensorFlow: @Rocketknight1
@ -106,6 +112,7 @@ body:
label:Reproduction
description:|
Please provide a code sample that reproduces the problem you ran into. It can be a Colab link or just a code snippet.
Please include relevant config information with your code, for example your Trainers, TRL, Peft, and DeepSpeed configs.
If you have code snippets, error messages, stack traces please provide them here as well.
Important! Use code tags to correctly format your code. See https://help.github.com/en/github/writing-on-github/creating-and-highlighting-code-blocks#syntax-highlighting
Do not use screenshots, as they are hard to read and (more importantly) don't allow others to copy-and-paste your code.
* Add your translations to the folder called `<languageCode>` inside the [source folder](https://github.com/huggingface/transformers/tree/main/docs/source).
* Register your translation in `<languageCode>/_toctree.yml`; please follow the order of the [English version](https://github.com/huggingface/transformers/blob/main/docs/source/en/_toctree.yml).
* Once you're finished, open a pull request and tag this issue by including #issue-number in the description, where issue-number is the number of this issue. Please ping @stevhliu and @MKhalusova for review.
* Once you're finished, open a pull request and tag this issue by including #issue-number in the description, where issue-number is the number of this issue. Please ping @stevhliu for review.
* 🙋 If you'd like others to help you with the translation, you can also post in the 🤗 [forums](https://discuss.huggingface.co/).
RUN_SLOW:yes# For gated repositories, we still need to agree to share information on the Hub repo. page in order to get access. # This token is created under the bot `hf-transformers-bot`.
SIGOPT_API_TOKEN:${{ secrets.SIGOPT_API_TOKEN }}
TF_FORCE_GPU_ALLOW_GROWTH:true
RUN_PT_TF_CROSS_TESTS:1
HF_HOME:/mnt/cache
TRANSFORMERS_IS_CI:yes
OMP_NUM_THREADS:8
MKL_NUM_THREADS:8
RUN_SLOW:yes# For gated repositories, we still need to agree to share information on the Hub repo. page in order to get access. # This token is created under the bot `hf-transformers-bot`.
name:Self-hosted runner scale set (AMD mi300 scheduled CI caller)
# Note: For every job in this workflow, the name of the runner scale set is finalized in the runner yaml i.e. huggingface/hf-workflows/.github/workflows/transformers_amd_ci_scheduled_arc_scale_set.yaml
# For example, 1gpu scale set: amd-mi300-ci-1gpu
# 2gpu scale set: amd-mi300-ci-2gpu
on:
workflow_run:
workflows:["Self-hosted runner (AMD scheduled CI caller)"]
# Important note: each job (run_tests_single_gpu, run_tests_multi_gpu, run_examples_gpu, run_pipelines_torch_gpu) requires all the previous jobs before running.
# This is done so that we avoid parallelizing the scheduled tests, to leave available
# runners for the push CI that is running on the same machine.
RUN_SLOW:yes# For gated repositories, we still need to agree to share information on the Hub repo. page in order to get access. # This token is created under the bot `hf-transformers-bot`.
SIGOPT_API_TOKEN:${{ secrets.SIGOPT_API_TOKEN }}
TF_FORCE_GPU_ALLOW_GROWTH:true
HF_HOME:/mnt/cache
TRANSFORMERS_IS_CI:yes
OMP_NUM_THREADS:8
MKL_NUM_THREADS:8
RUN_SLOW:yes# For gated repositories, we still need to agree to share information on the Hub repo. page in order to get access. # This token is created under the bot `hf-transformers-bot`.
SIGOPT_API_TOKEN:${{ secrets.SIGOPT_API_TOKEN }}
TF_FORCE_GPU_ALLOW_GROWTH:true
CUDA_VISIBLE_DEVICES:0,1
RUN_PT_TF_CROSS_TESTS:1
jobs:
get_runner:
@ -36,7 +35,7 @@ jobs:
shell:bash
run:|
if [[ "${{ github.event.inputs.num_gpus }}" == "single" && "${{ github.event.inputs.runner_type }}" == "t4" ]]; then
This AGENTS.md file provides guidance for code agents working with this codebase.
## Core Project Structure
-`/src/transformers`: This contains the core source code for the library
-`/models`: Code for individual models. Models inherit from base classes in the root `/src/transformers` directory.
-`/tests`: This contains the core test classes for the library. These are usually inherited rather than directly run.
-`/models`: Tests for individual models. Model tests inherit from common tests in the root `/tests` directory.
-`/docs`: This contains the documentation for the library, including guides, tutorials, and API references.
## Coding Conventions for Hugging Face Transformers
- PRs should be as brief as possible. Bugfix PRs in particular can often be only one or two lines long, and do not need large comments, docstrings or new functions in this case. Aim to minimize the size of the diff.
- When writing tests, they should be added to an existing file. The only exception is for PRs to add a new model, when a new test directory should be created for that model.
- Code style is enforced in the CI. You can install the style tools with `pip install -e .[quality]`. You can then run `make fixup` to apply style and consistency fixes to your code.
## Copying and inheritance
Many models in the codebase have similar code, but it is not shared by inheritance because we want each model file to be self-contained.
We use two mechanisms to keep this code in sync:
- "Copied from" syntax. Functions or entire classes can have a comment at the top like this: `# Copied from transformers.models.llama.modeling_llama.rotate_half` or `# Copied from transformers.models.t5.modeling_t5.T5LayerNorm with T5->MT5`
These comments are actively checked by the style tools, and copies will automatically be updated when the base code is updated. If you need to update a copied function, you should
either update the base function and use `make fixup` to propagate the change to all copies, or simply remove the `# Copied from` comment if that is inappropriate.
- "Modular" files. These files briefly define models by composing them using inheritance from other models. They are not meant to be used directly. Instead, the style tools
automatically generate a complete modeling file, like `modeling_bert.py`, from the modular file like `modular_bert.py`. If a model has a modular file, the modeling file
should never be edited directly! Instead, changes should be made in the modular file, and then you should run `make fixup` to update the modeling file automatically.
When adding new models, you should prefer `modular` style.
## Testing
After making changes, you should usually run `make fixup` to ensure any copies and modular files are updated, and then test all affected models. This includes both
the model you made the changes in and any other models that were updated by `make fixup`. Tests can be run with `pytest tests/models/[name]/test_modeling_[name].py`
If your changes affect code in other classes like tokenizers or processors, you should run those tests instead, like `test_processing_[name].py` or `test_tokenization_[name].py`.
In order to run tests, you may need to install dependencies. You can do this with `pip install -e .[testing]`. You will probably also need to `pip install torch accelerate` if your environment does not already have them.
@ -78,7 +78,7 @@ Once you've confirmed the bug hasn't already been reported, please include the f
To get the OS and software versions automatically, run the following command:
```bash
transformers-cli env
transformers env
```
You can also run the same command from the root of the repository:
@ -221,10 +221,10 @@ You'll need **[Python 3.9](https://github.com/huggingface/transformers/blob/main
[Checks on a Pull Request](https://huggingface.co/docs/transformers/pr_checks) guide.
If you're modifying documents under the `docs/source` directory, make sure the documentation can still be built. This check will also run in the CI when you open a pull request. To run a local check
make sure you install the documentation builder:
make sure you install the [documentation builder](https://github.com/huggingface/doc-builder).
```bash
pip install ".[docs]"
pip install hf-doc-builder
```
Run the following command from the root of the repository:
Like the slow tests, there are other environment variables available which are not enabled by default during testing:
- `RUN_CUSTOM_TOKENIZERS`: Enables tests for custom tokenizers.
- `RUN_PT_FLAX_CROSS_TESTS`: Enables tests for PyTorch + Flax integration.
- `RUN_PT_TF_CROSS_TESTS`: Enables tests for TensorFlow + PyTorch integration.
More environment variables and additional information can be found in the [testing_utils.py](https://github.com/huggingface/transformers/blob/main/src/transformers/testing_utils.py).
@ -26,7 +26,7 @@ There are two main venues to receive support: [the forums](https://discuss.huggi
[The user forums](https://discuss.huggingface.co/) are supported by the wide community of the library users and backed up by developers when needed.
If you have a difficulty with deploying this library or some questions, or you'd like to discuss a new feature, please first consider discussing those things at the forums. Only when you feel your subject matter has been crystalized and you still need support from the library developers do proceed to file an [issue](https://github.com/huggingface/transformers/issues).
If you have a difficulty with deploying this library or some questions, or you'd like to discuss a new feature, please first consider discussing those things at the forums. Only when you feel your subject matter has been crystallized and you still need support from the library developers do proceed to file an [issue](https://github.com/huggingface/transformers/issues).
In particular all "Please explain" questions or objectively very user-specific feature requests belong to the forums. Here are some example of such questions:
@ -263,9 +263,9 @@ You are not required to read the following guidelines before opening an issue. H
But if you're replying to a comment that happened some comments back it's always a good practice to quote just the relevant lines you're replying it. The `>` is used for quoting, or you can always use the menu to do so. For example your editor box will look like:
```
> How big is your gpu cluster?
> How big is your GPU cluster?
Our cluster is made of 256 gpus.
Our cluster is made of 256 GPUs.
```
If you are addressing multiple comments, quote the relevant parts of each before your answer. Some people use the same comment to do multiple replies, others separate them into separate comments. Either way works. The latter approach helps for linking to a specific comment.
<ahref="https://huggingface.com/models"><imgalt="Checkpoints on Hub"src="https://img.shields.io/endpoint?url=https://huggingface.co/api/shields/models&color=brightgreen"></a>
🤗 Transformers provides thousands of pretrained models to perform tasks on different modalities such as text, vision, and audio.
These models can be applied on:
Transformers acts as the model-definition framework for state-of-the-art machine learning models in text, computer
vision, audio, video, and multimodal model, for both inference and training.
* 📝 Text, for tasks like text classification, information extraction, question answering, summarization, translation, and text generation, in over 100 languages.
* 🖼️ Images, for tasks like image classification, object detection, and segmentation.
* 🗣️ Audio, for tasks like speech recognition and audio classification.
It centralizes the model definition so that this definition is agreed upon across the ecosystem. `transformers` is the
pivot across frameworks: if a model definition is supported, it will be compatible with the majority of training
and adjacent modeling libraries (llama.cpp, mlx, ...) which leverage the model definition from `transformers`.
Transformer models can also perform tasks on **several modalities combined**, such as table question answering, optical character recognition, information extraction from scanned documents, video classification, and visual question answering.
We pledge to help support new state-of-the-art models and democratize their usage by having their model definition be
simple, customizable, and efficient.
🤗 Transformers provides APIs to quickly download and use those pretrained models on a given text, fine-tune them on your own datasets and then share them with the community on our [model hub](https://huggingface.co/models). At the same time, each python module defining an architecture is fully standalone and can be modified to enable quick research experiments.
There are over 1M+ Transformers [model checkpoints](https://huggingface.co/models?library=transformers&sort=trending) on the [Hugging Face Hub](https://huggingface.com/models) you can use.
🤗 Transformers is backed by the three most popular deep learning libraries — [Jax](https://jax.readthedocs.io/en/latest/), [PyTorch](https://pytorch.org/) and [TensorFlow](https://www.tensorflow.org/) — with a seamless integration between them. It's straightforward to train your models with one before loading them for inference with the other.
Explore the [Hub](https://huggingface.com/) today to find a model and use Transformers to help you get started right away.
## Online demos
## Installation
You can test most of our models directly on their pages from the [model hub](https://huggingface.co/models). We also offer [private model hosting, versioning, & an inference API](https://huggingface.co/pricing) for public and private models.
Transformers works with Python 3.9+ [PyTorch](https://pytorch.org/get-started/locally/) 2.1+, [TensorFlow](https://www.tensorflow.org/install/pip) 2.6+, and [Flax](https://flax.readthedocs.io/en/latest/) 0.4.1+.
Here are a few examples:
Create and activate a virtual environment with [venv](https://docs.python.org/3/library/venv.html) or [uv](https://docs.astral.sh/uv/), a fast Rust-based Python package and project manager.
In Natural Language Processing:
- [Masked word completion with BERT](https://huggingface.co/google-bert/bert-base-uncased?text=Paris+is+the+%5BMASK%5D+of+France)
- [Named Entity Recognition with Electra](https://huggingface.co/dbmdz/electra-large-discriminator-finetuned-conll03-english?text=My+name+is+Sarah+and+I+live+in+London+city)
- [Text generation with Mistral](https://huggingface.co/mistralai/Mistral-7B-Instruct-v0.2)
- [Natural Language Inference with RoBERTa](https://huggingface.co/FacebookAI/roberta-large-mnli?text=The+dog+was+lost.+Nobody+lost+any+animal)
- [Summarization with BART](https://huggingface.co/facebook/bart-large-cnn?text=The+tower+is+324+metres+%281%2C063+ft%29+tall%2C+about+the+same+height+as+an+81-storey+building%2C+and+the+tallest+structure+in+Paris.+Its+base+is+square%2C+measuring+125+metres+%28410+ft%29+on+each+side.+During+its+construction%2C+the+Eiffel+Tower+surpassed+the+Washington+Monument+to+become+the+tallest+man-made+structure+in+the+world%2C+a+title+it+held+for+41+years+until+the+Chrysler+Building+in+New+York+City+was+finished+in+1930.+It+was+the+first+structure+to+reach+a+height+of+300+metres.+Due+to+the+addition+of+a+broadcasting+aerial+at+the+top+of+the+tower+in+1957%2C+it+is+now+taller+than+the+Chrysler+Building+by+5.2+metres+%2817+ft%29.+Excluding+transmitters%2C+the+Eiffel+Tower+is+the+second+tallest+free-standing+structure+in+France+after+the+Millau+Viaduct)
- [Question answering with DistilBERT](https://huggingface.co/distilbert/distilbert-base-uncased-distilled-squad?text=Which+name+is+also+used+to+describe+the+Amazon+rainforest+in+English%3F&context=The+Amazon+rainforest+%28Portuguese%3A+Floresta+Amaz%C3%B4nica+or+Amaz%C3%B4nia%3B+Spanish%3A+Selva+Amaz%C3%B3nica%2C+Amazon%C3%ADa+or+usually+Amazonia%3B+French%3A+For%C3%AAt+amazonienne%3B+Dutch%3A+Amazoneregenwoud%29%2C+also+known+in+English+as+Amazonia+or+the+Amazon+Jungle%2C+is+a+moist+broadleaf+forest+that+covers+most+of+the+Amazon+basin+of+South+America.+This+basin+encompasses+7%2C000%2C000+square+kilometres+%282%2C700%2C000+sq+mi%29%2C+of+which+5%2C500%2C000+square+kilometres+%282%2C100%2C000+sq+mi%29+are+covered+by+the+rainforest.+This+region+includes+territory+belonging+to+nine+nations.+The+majority+of+the+forest+is+contained+within+Brazil%2C+with+60%25+of+the+rainforest%2C+followed+by+Peru+with+13%25%2C+Colombia+with+10%25%2C+and+with+minor+amounts+in+Venezuela%2C+Ecuador%2C+Bolivia%2C+Guyana%2C+Suriname+and+French+Guiana.+States+or+departments+in+four+nations+contain+%22Amazonas%22+in+their+names.+The+Amazon+represents+over+half+of+the+planet%27s+remaining+rainforests%2C+and+comprises+the+largest+and+most+biodiverse+tract+of+tropical+rainforest+in+the+world%2C+with+an+estimated+390+billion+individual+trees+divided+into+16%2C000+species)
- [Translation with T5](https://huggingface.co/google-t5/t5-base?text=My+name+is+Wolfgang+and+I+live+in+Berlin)
In Computer Vision:
- [Image classification with ViT](https://huggingface.co/google/vit-base-patch16-224)
- [Object Detection with DETR](https://huggingface.co/facebook/detr-resnet-50)
- [Semantic Segmentation with SegFormer](https://huggingface.co/nvidia/segformer-b0-finetuned-ade-512-512)
- [Panoptic Segmentation with Mask2Former](https://huggingface.co/facebook/mask2former-swin-large-coco-panoptic)
- [Depth Estimation with Depth Anything](https://huggingface.co/docs/transformers/main/model_doc/depth_anything)
- [Video Classification with VideoMAE](https://huggingface.co/docs/transformers/model_doc/videomae)
- [Universal Segmentation with OneFormer](https://huggingface.co/shi-labs/oneformer_ade20k_dinat_large)
In Audio:
- [Automatic Speech Recognition with Whisper](https://huggingface.co/openai/whisper-large-v3)
- [Keyword Spotting with Wav2Vec2](https://huggingface.co/superb/wav2vec2-base-superb-ks)
- [Audio Classification with Audio Spectrogram Transformer](https://huggingface.co/MIT/ast-finetuned-audioset-10-10-0.4593)
In Multimodal tasks:
- [Table Question Answering with TAPAS](https://huggingface.co/google/tapas-base-finetuned-wtq)
- [Visual Question Answering with ViLT](https://huggingface.co/dandelin/vilt-b32-finetuned-vqa)
- [Image captioning with LLaVa](https://huggingface.co/llava-hf/llava-1.5-7b-hf)
- [Zero-shot Image Classification with SigLIP](https://huggingface.co/google/siglip-so400m-patch14-384)
- [Document Question Answering with LayoutLM](https://huggingface.co/impira/layoutlm-document-qa)
- [Zero-shot Video Classification with X-CLIP](https://huggingface.co/docs/transformers/model_doc/xclip)
- [Zero-shot Object Detection with OWLv2](https://huggingface.co/docs/transformers/en/model_doc/owlv2)
- [Zero-shot Image Segmentation with CLIPSeg](https://huggingface.co/docs/transformers/model_doc/clipseg)
- [Automatic Mask Generation with SAM](https://huggingface.co/docs/transformers/model_doc/sam)
## 100 projects using Transformers
Transformers is more than a toolkit to use pretrained models: it's a community of projects built around it and the
Hugging Face Hub. We want Transformers to enable developers, researchers, students, professors, engineers, and anyone
else to build their dream projects.
In order to celebrate the 100,000 stars of transformers, we have decided to put the spotlight on the
community, and we have created the [awesome-transformers](./awesome-transformers.md) page which lists 100
incredible projects built in the vicinity of transformers.
If you own or use a project that you believe should be part of the list, please open a PR to add it!
## Serious about AI in your organisation? Build faster with the Hugging Face Enterprise Hub.
<imgalt="Hugging Face Enterprise Hub"src="https://github.com/user-attachments/assets/247fb16d-d251-4583-96c4-d3d76dda4925">
</a><br>
## Quick tour
To immediately use a model on a given input (text, image, audio, ...), we provide the `pipeline` API. Pipelines group together a pretrained model with the preprocessing that was used during that model's training. Here is how to quickly use a pipeline to classify positive versus negative texts:
```python
>>>fromtransformersimportpipeline
# Allocate a pipeline for sentiment-analysis
>>>classifier=pipeline('sentiment-analysis')
>>>classifier('We are very happy to introduce pipeline to the transformers repository.')
[{'label':'POSITIVE','score':0.9996980428695679}]
```py
# venv
python-mvenv.my-env
source.my-env/bin/activate
# uv
uvvenv.my-env
source.my-env/bin/activate
```
The second line of code downloads and caches the pretrained model used by the pipeline, while the third evaluates it on the given text. Here, the answer is "positive" with a confidence of 99.97%.
Install Transformers in your virtual environment.
Many tasks have a pre-trained `pipeline` ready to go, in NLP but also in computer vision and speech. For example, we can easily extract detected objects in an image:
Here, we get a list of objects detected in the image, with a box surrounding the object and a confidence score. Here is the original image on the left, with the predictions displayed on the right:
Install Transformers from source if you want the latest changes in the library or are interested in contributing. However, the *latest* version may not be stable. Feel free to open an [issue](https://github.com/huggingface/transformers/issues) if you encounter an error.
Get started with Transformers right away with the [Pipeline](https://huggingface.co/docs/transformers/pipeline_tutorial) API. The `Pipeline` is a high-level inference class that supports text, audio, vision, and multimodal tasks. It handles preprocessing the input and returns the appropriate output.
Instantiate a pipeline and specify model to use for text generation. The model is downloaded and cached so you can easily reuse it again. Finally, pass some text to prompt the model.
pipeline("the secret to baking a really good cake is ")
[{'generated_text':'the secret to baking a really good cake is 1) to use the right ingredients and 2) to follow the recipe exactly. the recipe for the cake is as follows: 1 cup of sugar, 1 cup of flour, 1 cup of milk, 1 cup of butter, 1 cup of eggs, 1 cup of chocolate chips. if you want to make 2 cakes, how much sugar do you need? To make 2 cakes, you will need 2 cups of sugar.'}]
```
To chat with a model, the usage pattern is the same. The only difference is you need to construct a chat history (the input to `Pipeline`) between you and the system.
> [!TIP]
> You can also chat with a model directly from the command line.
> ```shell
> transformers chat Qwen/Qwen2.5-0.5B-Instruct
> ```
```py
importtorch
fromtransformersimportpipeline
chat=[
{"role":"system","content":"You are a sassy, wise-cracking robot as imagined by Hollywood circa 1986."},
{"role":"user","content":"Hey, can you tell me any fun things to do in New York?"}
You can learn more about the tasks supported by the `pipeline` API in [this tutorial](https://huggingface.co/docs/transformers/task_summary).
```py
fromtransformersimportpipeline
In addition to `pipeline`, to download and use any of the pretrained models on your given task, all it takes is three lines of code. Here is the PyTorch version:
```python
>>> from transformers import AutoTokenizer, AutoModel
The tokenizer is responsible for all the preprocessing the pretrained model expects and can be called directly on a single string (as in the above examples) or a list. It will output a dictionary that you can use in downstream code or simply directly pass to your model using the ** argument unpacking operator.
</details>
The model itself is a regular [Pytorch `nn.Module`](https://pytorch.org/docs/stable/nn.html#torch.nn.Module) or a [TensorFlow `tf.keras.Model`](https://www.tensorflow.org/api_docs/python/tf/keras/Model) (depending on your backend) which you can use as usual. [This tutorial](https://huggingface.co/docs/transformers/training) explains how to integrate such a model into a classic PyTorch or TensorFlow training loop, or how to use our `Trainer` API to quickly fine-tune on a new dataset.
## Why should I use transformers?
## Why should I use Transformers?
1. Easy-to-use state-of-the-art models:
- High performance on natural language understanding & generation, computer vision, and audio tasks.
- Low barrier to entry for educators and practitioners.
- High performance on natural language understanding & generation, computer vision, audio, video, and multimodal tasks.
- Low barrier to entry for researchers, engineers, and developers.
- Few user-facing abstractions with just three classes to learn.
- A unified API for using all our pretrained models.
1. Lower compute costs, smaller carbon footprint:
- Researchers can share trained models instead of always retraining.
- Practitioners can reduce compute time and production costs.
- Dozens of architectures with over 400,000 pretrained models across all modalities.
- Share trained models instead of training from scratch.
- Reduce compute time and production costs.
- Dozens of model architectures with 1M+ pretrained checkpoints across all modalities.
1. Choose the right framework for every part of a model's lifetime:
1. Choose the right framework for every part of a models lifetime:
- Train state-of-the-art models in 3 lines of code.
- Move a single model between TF2.0/PyTorch/JAX frameworks at will.
- Seamlessly pick the right framework for training, evaluation, and production.
- Move a single model between PyTorch/JAX/TF2.0 frameworks at will.
- Pick the right framework for training, evaluation, and production.
1. Easily customize a model or an example to your needs:
- We provide examples for each architecture to reproduce the results published by its original authors.
- Model internals are exposed as consistently as possible.
- Model files can be used independently of the library for quick experiments.
<imgalt="Hugging Face Enterprise Hub"src="https://github.com/user-attachments/assets/247fb16d-d251-4583-96c4-d3d76dda4925">
</a><br>
## Why shouldn't I use Transformers?
- This library is not a modular toolbox of building blocks for neural nets. The code in the model files is not refactored with additional abstractions on purpose, so that researchers can quickly iterate on each of the models without diving into additional abstractions/files.
- The training API is not intended to work on any model but is optimized to work with the models provided by the library. For generic machine learning loops, you should use another library (possibly, [Accelerate](https://huggingface.co/docs/accelerate)).
- While we strive to present as many use cases as possible, the scripts in our [examples folder](https://github.com/huggingface/transformers/tree/main/examples) are just that: examples. It is expected that they won't work out-of-the-box on your specific problem and that you will be required to change a few lines of code to adapt them to your needs.
- The training API is optimized to work with PyTorch models provided by Transformers. For generic machine learning loops, you should use another library like [Accelerate](https://huggingface.co/docs/accelerate).
- The [example scripts]((https://github.com/huggingface/transformers/tree/main/examples)) are only *examples*. They may not necessarily work out-of-the-box on your specific use case and you'll need to adapt the code for it to work.
## Installation
## 100 projects using Transformers
### With pip
Transformers is more than a toolkit to use pretrained models, it's a community of projects built around it and the
Hugging Face Hub. We want Transformers to enable developers, researchers, students, professors, engineers, and anyone
else to build their dream projects.
This repository is tested on Python 3.9+, Flax 0.4.1+, PyTorch 1.11+, and TensorFlow 2.6+.
In order to celebrate Transformers 100,000 stars, we wanted to put the spotlight on the
community with the [awesome-transformers](./awesome-transformers.md) page which lists 100
incredible projects built with Transformers.
You should install 🤗 Transformers in a [virtual environment](https://docs.python.org/3/library/venv.html). If you're unfamiliar with Python virtual environments, check out the [user guide](https://packaging.python.org/guides/installing-using-pip-and-virtual-environments/).
If you own or use a project that you believe should be part of the list, please open a PR to add it!
First, create a virtual environment with the version of Python you're going to use and activate it.
## Example models
Then, you will need to install at least one of Flax, PyTorch, or TensorFlow.
Please refer to [TensorFlow installation page](https://www.tensorflow.org/install/), [PyTorch installation page](https://pytorch.org/get-started/locally/#start-locally) and/or [Flax](https://github.com/google/flax#quick-install) and [Jax](https://github.com/google/jax#installation) installation pages regarding the specific installation command for your platform.
You can test most of our models directly on their [Hub model pages](https://huggingface.co/models).
When one of those backends has been installed, 🤗 Transformers can be installed using pip as follows:
Expand each modality below to see a few example models for various use cases.
```bash
pip install transformers
```
<details>
<summary>Audio</summary>
If you'd like to play with the examples or need the bleeding edge of the code and can't wait for a new release, you must [install the library from source](https://huggingface.co/docs/transformers/installation#installing-from-source).
- Audio classification with [Whisper](https://huggingface.co/openai/whisper-large-v3-turbo)
- Automatic speech recognition with [Moonshine](https://huggingface.co/UsefulSensors/moonshine)
- Keyword spotting with [Wav2Vec2](https://huggingface.co/superb/wav2vec2-base-superb-ks)
- Speech to speech generation with [Moshi](https://huggingface.co/kyutai/moshiko-pytorch-bf16)
- Text to audio with [MusicGen](https://huggingface.co/facebook/musicgen-large)
- Text to speech with [Bark](https://huggingface.co/suno/bark)
### With conda
</details>
🤗 Transformers can be installed using conda as follows:
<details>
<summary>Computer vision</summary>
```shell script
conda install conda-forge::transformers
```
- Automatic mask generation with [SAM](https://huggingface.co/facebook/sam-vit-base)
- Depth estimation with [DepthPro](https://huggingface.co/apple/DepthPro-hf)
- Image classification with [DINO v2](https://huggingface.co/facebook/dinov2-base)
- Keypoint detection with [SuperGlue](https://huggingface.co/magic-leap-community/superglue_outdoor)
- Keypoint matching with [SuperGlue](https://huggingface.co/magic-leap-community/superglue)
- Object detection with [RT-DETRv2](https://huggingface.co/PekingU/rtdetr_v2_r50vd)
- Pose Estimation with [VitPose](https://huggingface.co/usyd-community/vitpose-base-simple)
- Universal segmentation with [OneFormer](https://huggingface.co/shi-labs/oneformer_ade20k_swin_large)
- Video classification with [VideoMAE](https://huggingface.co/MCG-NJU/videomae-large)
> **_NOTE:_** Installing `transformers` from the `huggingface` channel is deprecated.
</details>
Follow the installation pages of Flax, PyTorch or TensorFlow to see how to install them with conda.
<details>
<summary>Multimodal</summary>
> **_NOTE:_** On Windows, you may be prompted to activate Developer Mode in order to benefit from caching. If this is not an option for you, please let us know in [this issue](https://github.com/huggingface/huggingface_hub/issues/1062).
- Audio or text to text with [Qwen2-Audio](https://huggingface.co/Qwen/Qwen2-Audio-7B)
- Document question answering with [LayoutLMv3](https://huggingface.co/microsoft/layoutlmv3-base)
- Image or text to text with [Qwen-VL](https://huggingface.co/Qwen/Qwen2.5-VL-3B-Instruct)
- OCR-based document understanding with [GOT-OCR2](https://huggingface.co/stepfun-ai/GOT-OCR-2.0-hf)
- Table question answering with [TAPAS](https://huggingface.co/google/tapas-base)
- Unified multimodal understanding and generation with [Emu3](https://huggingface.co/BAAI/Emu3-Gen)
- Vision to text with [Llava-OneVision](https://huggingface.co/llava-hf/llava-onevision-qwen2-0.5b-ov-hf)
- Visual question answering with [Llava](https://huggingface.co/llava-hf/llava-1.5-7b-hf)
- Visual referring expression segmentation with [Kosmos-2](https://huggingface.co/microsoft/kosmos-2-patch14-224)
## Model architectures
</details>
**[All the model checkpoints](https://huggingface.co/models)** provided by 🤗 Transformers are seamlessly integrated from the huggingface.co [model hub](https://huggingface.co/models), where they are uploaded directly by [users](https://huggingface.co/users) and [organizations](https://huggingface.co/organizations).
<details>
<summary>NLP</summary>
Current number of checkpoints: 
- Masked word completion with [ModernBERT](https://huggingface.co/answerdotai/ModernBERT-base)
- Named entity recognition with [Gemma](https://huggingface.co/google/gemma-2-2b)
- Question answering with [Mixtral](https://huggingface.co/mistralai/Mixtral-8x7B-v0.1)
- Summarization with [BART](https://huggingface.co/facebook/bart-large-cnn)
- Translation with [T5](https://huggingface.co/google-t5/t5-base)
- Text generation with [Llama](https://huggingface.co/meta-llama/Llama-3.2-1B)
- Text classification with [Qwen](https://huggingface.co/Qwen/Qwen2.5-0.5B)
🤗 Transformers currently provides the following architectures: see [here](https://huggingface.co/docs/transformers/model_summary) for a high-level summary of each them.
To check if each model has an implementation in Flax, PyTorch or TensorFlow, or has an associated tokenizer backed by the 🤗 Tokenizers library, refer to [this table](https://huggingface.co/docs/transformers/index#supported-frameworks).
These implementations have been tested on several datasets (see the example scripts) and should match the performance of the original implementations. You can find more details on performance in the Examples section of the [documentation](https://github.com/huggingface/transformers/tree/main/examples).
## Learn more
| Section | Description |
|-|-|
| [Documentation](https://huggingface.co/docs/transformers/) | Full API documentation and tutorials |
| [Task summary](https://huggingface.co/docs/transformers/task_summary) | Tasks supported by 🤗 Transformers |
| [Preprocessing tutorial](https://huggingface.co/docs/transformers/preprocessing) | Using the `Tokenizer` class to prepare data for the models |
| [Training and fine-tuning](https://huggingface.co/docs/transformers/training) | Using the models provided by 🤗 Transformers in a PyTorch/TensorFlow training loop and the `Trainer` API |
| [Quick tour: Fine-tuning/usage scripts](https://github.com/huggingface/transformers/tree/main/examples) | Example scripts for fine-tuning models on a wide range of tasks |
| [Model sharing and uploading](https://huggingface.co/docs/transformers/model_sharing) | Upload and share your fine-tuned models with the community |
@ -27,13 +27,6 @@ These models require the `trust_remote_code=True` parameter to be set when using
the content of the modeling files when using this argument. We recommend setting a revision in order to ensure you
protect yourself from updates on the repository.
#### Tools
Through the `Agent` framework, remote tools can be downloaded to be used by the Agent. You're to specify these tools
yourself, but please keep in mind that their code will be run on your machine if the Agent chooses to run them.
Please inspect the code of the tools before passing them to the Agent to protect your runtime and local setup.
## Reporting a Vulnerability
Feel free to submit vulnerability reports to [security@huggingface.co](mailto:security@huggingface.co), where someone from the HF security team will review and recommend next steps. If reporting a vulnerability specific to open source, please note [Huntr](https://huntr.com) is a vulnerability disclosure program for open source software.
This repository contains examples and best practices for building recommendation systems, provided as Jupyter notebooks. It goes over several aspects required to build efficient recommendation systems: data preparation, modeling, evaluation, model selection & optimization, as well as operationalization
FLAIR is a powerful PyTorch NLP framework, convering several important tasks: NER, sentiment-analysis, part-of-speech tagging, text and document embeddings, among other things.
FLAIR is a powerful PyTorch NLP framework, covering several important tasks: NER, sentiment-analysis, part-of-speech tagging, text and document embeddings, among other things.
Keywords: NLP, text embedding, document embedding, biomedical, NER, PoS, sentiment-analysis
@ -39,15 +39,15 @@ MindsDB is a low-code ML platform, which automates and integrates several ML fra
[langchain](https://github.com/hwchase17/langchain) is aimed at assisting in the development of apps merging both LLMs and other sources of knowledge. The library allows chaining calls to applications, creating a sequence across many tools.
[langchain](https://github.com/langchain-ai/langchain) is aimed at assisting in the development of apps merging both LLMs and other sources of knowledge. The library allows chaining calls to applications, creating a sequence across many tools.
Keywords: LLMs, Large Language Models, Agents, Chains
[LlamaIndex](https://github.com/jerryjliu/llama_index) is a project that provides a central interface to connect your LLM's with external data. It provides various kinds of indices and retreival mechanisms to perform different LLM tasks and obtain knowledge-augmented results.
[LlamaIndex](https://github.com/run-llama/llama_index) is a project that provides a central interface to connect your LLM's with external data. It provides various kinds of indices and retrieval mechanisms to perform different LLM tasks and obtain knowledge-augmented results.
Keywords: LLMs, Large Language Models, Data Retrieval, Indices, Knowledge Augmentation
[transformers.js](https://xenova.github.io/transformers.js/) is a JavaScript library targeted at running models from transformers directly within the browser.
[transformers.js](https://github.com/huggingface/transformers.js/) is a JavaScript library targeted at running models from transformers directly within the browser.
Nebuly is the next-generation platform to monitor and optimize your AI costs in one place. The platform connects to all your AI cost sources (compute, API providers, AI software licenses, etc) and centralizes them in one place to give you full visibility on a model basis. The platform also provides optimization recommendations and a co-pilot model that can guide during the optimization process. The platform builds on top of the open-source tools allowing you to optimize the different steps of your AI stack to squeeze out the best possible cost performances.
`MetricsRecorder` is thread-safe, in the sense of the python [`Thread`](https://docs.python.org/3/library/threading.html#threading.Thread). This means you can start a background thread to do the readings on the device measurements while not blocking the main thread to execute the model measurements.
cf [`llama.py`](./llama.py) to see an example of this in practice.
"rawSql":"SELECT commit_id as commit_id, commit_message, gpu_name, created_at AS date FROM benchmarks WHERE branch = '${branch}' ORDER BY benchmark_id DESC LIMIT ${last_n_commits};",
"rawSql":"SELECT commit_id, commit_message, metadata->>'gpu_name' as gpu_name, metadata->>'model_id' as model_id, created_at AS date FROM benchmarks WHERE branch = '${branch}' AND metadata->>'gpu_name' = '${gpu_name}' ORDER BY benchmark_id DESC LIMIT ${last_n_commits};",
"refId":"A",
"sql":{
"columns":[
@ -306,13 +320,14 @@
"targets":[
{
"datasource":{
"default":true,
"type":"grafana-postgresql-datasource",
"uid":"bdz2yss7sxo1sc"
"uid":"be28nkzirtb0gd"
},
"editorMode":"code",
"format":"table",
"rawQuery":true,
"rawSql":"SELECT CAST(m.measurements->'first_eager_forward_pass_time_secs' AS double precision) AS first_eager_forward_pass_time_secs, left(b.commit_id, 7), m.time FROM benchmarks as b JOIN model_measurements AS m ON b.benchmark_id = m.benchmark_id WHERE b.branch = '${branch}' AND gpu_name = '${gpu_name}' ORDER BY b.benchmark_id DESC LIMIT ${last_n_commits};",
"rawSql":"SELECT CAST(m.measurements->'first_eager_forward_pass_time_secs' AS double precision) AS first_eager_forward_pass_time_secs, left(b.commit_id, 7), m.time FROM benchmarks as b JOIN model_measurements AS m ON b.benchmark_id = m.benchmark_id WHERE b.branch = '${branch}' AND b.metadata->>'gpu_name' = '${gpu_name}' ORDER BY b.benchmark_id DESC LIMIT ${last_n_commits};",
"refId":"A",
"sql":{
"columns":[
@ -431,13 +446,14 @@
"targets":[
{
"datasource":{
"default":true,
"type":"grafana-postgresql-datasource",
"uid":"bdz2yss7sxo1sc"
"uid":"be28nkzirtb0gd"
},
"editorMode":"code",
"format":"table",
"rawQuery":true,
"rawSql":"SELECT CAST(m.measurements->'second_eager_forward_pass_time_secs' AS double precision) AS second_eager_forward_pass_time_secs, left(b.commit_id, 7), m.time FROM benchmarks as b JOIN model_measurements AS m ON b.benchmark_id = m.benchmark_id WHERE b.branch = '${branch}' AND gpu_name = '${gpu_name}' ORDER BY b.benchmark_id DESC LIMIT ${last_n_commits};",
"rawSql":"SELECT CAST(m.measurements->'second_eager_forward_pass_time_secs' AS double precision) AS second_eager_forward_pass_time_secs, left(b.commit_id, 7), m.time FROM benchmarks as b JOIN model_measurements AS m ON b.benchmark_id = m.benchmark_id WHERE b.branch = '${branch}' AND b.metadata->>'gpu_name' = '${gpu_name}' ORDER BY b.benchmark_id DESC LIMIT ${last_n_commits};",
"refId":"A",
"sql":{
"columns":[
@ -565,13 +581,14 @@
"targets":[
{
"datasource":{
"default":true,
"type":"grafana-postgresql-datasource",
"uid":"bdz2yss7sxo1sc"
"uid":"be28nkzirtb0gd"
},
"editorMode":"code",
"format":"table",
"rawQuery":true,
"rawSql":"SELECT CAST(m.measurements->'time_to_first_token_secs' AS double precision) AS time_to_first_token_secs, left(b.commit_id, 7), m.time FROM benchmarks as b JOIN model_measurements AS m ON b.benchmark_id = m.benchmark_id WHERE b.branch = '${branch}' AND gpu_name = '${gpu_name}' ORDER BY b.benchmark_id DESC LIMIT ${last_n_commits};",
"rawSql":"SELECT CAST(m.measurements->'time_to_first_token_secs' AS double precision) AS time_to_first_token_secs, left(b.commit_id, 7), m.time FROM benchmarks as b JOIN model_measurements AS m ON b.benchmark_id = m.benchmark_id WHERE b.branch = '${branch}' AND b.metadata->>'gpu_name' = '${gpu_name}' ORDER BY b.benchmark_id DESC LIMIT ${last_n_commits};",
"refId":"A",
"sql":{
"columns":[
@ -686,13 +703,14 @@
"targets":[
{
"datasource":{
"default":true,
"type":"grafana-postgresql-datasource",
"uid":"bdz2yss7sxo1sc"
"uid":"be28nkzirtb0gd"
},
"editorMode":"code",
"format":"table",
"rawQuery":true,
"rawSql":"SELECT CAST(m.measurements->'time_to_second_token_secs' AS double precision) AS time_to_second_token_secs, left(b.commit_id, 7), m.time FROM benchmarks as b JOIN model_measurements AS m ON b.benchmark_id = m.benchmark_id WHERE b.branch = '${branch}' AND gpu_name = '${gpu_name}' ORDER BY b.benchmark_id DESC LIMIT ${last_n_commits};",
"rawSql":"SELECT CAST(m.measurements->'time_to_second_token_secs' AS double precision) AS time_to_second_token_secs, left(b.commit_id, 7), m.time FROM benchmarks as b JOIN model_measurements AS m ON b.benchmark_id = m.benchmark_id WHERE b.branch = '${branch}' AND b.metadata->>'gpu_name' = '${gpu_name}' ORDER BY b.benchmark_id DESC LIMIT ${last_n_commits};",
"refId":"A",
"sql":{
"columns":[
@ -807,13 +825,14 @@
"targets":[
{
"datasource":{
"default":true,
"type":"grafana-postgresql-datasource",
"uid":"bdz2yss7sxo1sc"
"uid":"be28nkzirtb0gd"
},
"editorMode":"code",
"format":"table",
"rawQuery":true,
"rawSql":"SELECT CAST(m.measurements->'time_to_third_token_secs' AS double precision) AS time_to_third_token_secs, left(b.commit_id, 7), m.time FROM benchmarks as b JOIN model_measurements AS m ON b.benchmark_id = m.benchmark_id WHERE b.branch = '${branch}' AND gpu_name = '${gpu_name}' ORDER BY b.benchmark_id DESC LIMIT ${last_n_commits};",
"rawSql":"SELECT CAST(m.measurements->'time_to_third_token_secs' AS double precision) AS time_to_third_token_secs, left(b.commit_id, 7), m.time FROM benchmarks as b JOIN model_measurements AS m ON b.benchmark_id = m.benchmark_id WHERE b.branch = '${branch}' AND b.metadata->>'gpu_name' = '${gpu_name}' ORDER BY b.benchmark_id DESC LIMIT ${last_n_commits};",
"refId":"A",
"sql":{
"columns":[
@ -928,13 +947,14 @@
"targets":[
{
"datasource":{
"default":true,
"type":"grafana-postgresql-datasource",
"uid":"bdz2yss7sxo1sc"
"uid":"be28nkzirtb0gd"
},
"editorMode":"code",
"format":"table",
"rawQuery":true,
"rawSql":"SELECT CAST(m.measurements->'time_to_next_token_mean_secs' AS double precision) AS time_to_next_token_mean_secs, left(b.commit_id, 7), m.time FROM benchmarks as b JOIN model_measurements AS m ON b.benchmark_id = m.benchmark_id WHERE b.branch = '${branch}' AND gpu_name = '${gpu_name}' ORDER BY b.benchmark_id DESC LIMIT ${last_n_commits};",
"rawSql":"SELECT CAST(m.measurements->'time_to_next_token_mean_secs' AS double precision) AS time_to_next_token_mean_secs, left(b.commit_id, 7), m.time FROM benchmarks as b JOIN model_measurements AS m ON b.benchmark_id = m.benchmark_id WHERE b.branch = '${branch}' AND b.metadata->>'gpu_name' = '${gpu_name}' ORDER BY b.benchmark_id DESC LIMIT ${last_n_commits};",
"refId":"A",
"sql":{
"columns":[
@ -1062,13 +1082,14 @@
"targets":[
{
"datasource":{
"default":true,
"type":"grafana-postgresql-datasource",
"uid":"bdz2yss7sxo1sc"
"uid":"be28nkzirtb0gd"
},
"editorMode":"code",
"format":"table",
"rawQuery":true,
"rawSql":"SELECT CAST(m.measurements->'first_compile_generate_time_secs' AS double precision) AS first_compile_generate_time_secs, left(b.commit_id, 7), m.time FROM benchmarks as b JOIN model_measurements AS m ON b.benchmark_id = m.benchmark_id WHERE b.branch = '${branch}' AND gpu_name = '${gpu_name}' ORDER BY b.benchmark_id DESC LIMIT ${last_n_commits};",
"rawSql":"SELECT CAST(m.measurements->'first_compile_generate_time_secs' AS double precision) AS first_compile_generate_time_secs, left(b.commit_id, 7), m.time FROM benchmarks as b JOIN model_measurements AS m ON b.benchmark_id = m.benchmark_id WHERE b.branch = '${branch}' AND b.metadata->>'gpu_name' = '${gpu_name}' ORDER BY b.benchmark_id DESC LIMIT ${last_n_commits};",
"refId":"A",
"sql":{
"columns":[
@ -1183,13 +1204,14 @@
"targets":[
{
"datasource":{
"default":true,
"type":"grafana-postgresql-datasource",
"uid":"bdz2yss7sxo1sc"
"uid":"be28nkzirtb0gd"
},
"editorMode":"code",
"format":"table",
"rawQuery":true,
"rawSql":"SELECT CAST(m.measurements->'second_compile_generate_time_secs' AS double precision) AS second_compile_generate_time_secs, left(b.commit_id, 7), m.time FROM benchmarks as b JOIN model_measurements AS m ON b.benchmark_id = m.benchmark_id WHERE b.branch = '${branch}' AND gpu_name = '${gpu_name}' ORDER BY b.benchmark_id DESC LIMIT ${last_n_commits};",
"rawSql":"SELECT CAST(m.measurements->'second_compile_generate_time_secs' AS double precision) AS second_compile_generate_time_secs, left(b.commit_id, 7), m.time FROM benchmarks as b JOIN model_measurements AS m ON b.benchmark_id = m.benchmark_id WHERE b.branch = '${branch}' AND b.metadata->>'gpu_name' = '${gpu_name}' ORDER BY b.benchmark_id DESC LIMIT ${last_n_commits};",
"refId":"A",
"sql":{
"columns":[
@ -1304,13 +1326,14 @@
"targets":[
{
"datasource":{
"default":true,
"type":"grafana-postgresql-datasource",
"uid":"bdz2yss7sxo1sc"
"uid":"be28nkzirtb0gd"
},
"editorMode":"code",
"format":"table",
"rawQuery":true,
"rawSql":"SELECT CAST(m.measurements->'third_compile_generate_time_secs' AS double precision) AS third_compile_generate_time_secs, left(b.commit_id, 7), m.time FROM benchmarks as b JOIN model_measurements AS m ON b.benchmark_id = m.benchmark_id WHERE b.branch = '${branch}' AND gpu_name = '${gpu_name}' ORDER BY b.benchmark_id DESC LIMIT ${last_n_commits};",
"rawSql":"SELECT CAST(m.measurements->'third_compile_generate_time_secs' AS double precision) AS third_compile_generate_time_secs, left(b.commit_id, 7), m.time FROM benchmarks as b JOIN model_measurements AS m ON b.benchmark_id = m.benchmark_id WHERE b.branch = '${branch}' AND b.metadata->>'gpu_name' = '${gpu_name}' ORDER BY b.benchmark_id DESC LIMIT ${last_n_commits};",
"refId":"A",
"sql":{
"columns":[
@ -1425,13 +1448,14 @@
"targets":[
{
"datasource":{
"default":true,
"type":"grafana-postgresql-datasource",
"uid":"bdz2yss7sxo1sc"
"uid":"be28nkzirtb0gd"
},
"editorMode":"code",
"format":"table",
"rawQuery":true,
"rawSql":"SELECT CAST(m.measurements->'fourth_compile_generate_time_secs' AS double precision) AS fourth_compile_generate_time_secs, left(b.commit_id, 7), m.time FROM benchmarks as b JOIN model_measurements AS m ON b.benchmark_id = m.benchmark_id WHERE b.branch = '${branch}' AND gpu_name = '${gpu_name}' ORDER BY b.benchmark_id DESC LIMIT ${last_n_commits};",
"rawSql":"SELECT CAST(m.measurements->'fourth_compile_generate_time_secs' AS double precision) AS fourth_compile_generate_time_secs, left(b.commit_id, 7), m.time FROM benchmarks as b JOIN model_measurements AS m ON b.benchmark_id = m.benchmark_id WHERE b.branch = '${branch}' AND b.metadata->>'gpu_name' = '${gpu_name}' ORDER BY b.benchmark_id DESC LIMIT ${last_n_commits};",
"refId":"A",
"sql":{
"columns":[
@ -1480,11 +1504,7 @@
"id":15,
"panels":[
{
"datasource":{
"default":true,
"type":"grafana-postgresql-datasource",
"uid":"be28nkzirtb0gd"
},
"datasource":{},
"fieldConfig":{
"defaults":{
"color":{
@ -1528,8 +1548,7 @@
"mode":"absolute",
"steps":[
{
"color":"green",
"value":null
"color":"green"
},
{
"color":"red",
@ -1563,8 +1582,9 @@
"targets":[
{
"datasource":{
"default":true,
"type":"grafana-postgresql-datasource",
"uid":"bdz2yss7sxo1sc"
"uid":"be28nkzirtb0gd"
},
"editorMode":"code",
"format":"table",
@ -1665,11 +1685,7 @@
"type":"timeseries"
},
{
"datasource":{
"default":true,
"type":"grafana-postgresql-datasource",
"uid":"be28nkzirtb0gd"
},
"datasource":{},
"fieldConfig":{
"defaults":{
"color":{
@ -1713,8 +1729,7 @@
"mode":"absolute",
"steps":[
{
"color":"green",
"value":null
"color":"green"
},
{
"color":"red",
@ -1748,8 +1763,9 @@
"targets":[
{
"datasource":{
"default":true,
"type":"grafana-postgresql-datasource",
"uid":"bdz2yss7sxo1sc"
"uid":"be28nkzirtb0gd"
},
"editorMode":"code",
"format":"table",
@ -1850,11 +1866,7 @@
"type":"timeseries"
},
{
"datasource":{
"default":true,
"type":"grafana-postgresql-datasource",
"uid":"be28nkzirtb0gd"
},
"datasource":{},
"fieldConfig":{
"defaults":{
"color":{
@ -1898,8 +1910,7 @@
"mode":"absolute",
"steps":[
{
"color":"green",
"value":null
"color":"green"
},
{
"color":"red",
@ -1933,8 +1944,9 @@
"targets":[
{
"datasource":{
"default":true,
"type":"grafana-postgresql-datasource",
"uid":"bdz2yss7sxo1sc"
"uid":"be28nkzirtb0gd"
},
"editorMode":"code",
"format":"table",
@ -2035,11 +2047,7 @@
"type":"timeseries"
},
{
"datasource":{
"default":true,
"type":"grafana-postgresql-datasource",
"uid":"be28nkzirtb0gd"
},
"datasource":{},
"fieldConfig":{
"defaults":{
"color":{
@ -2083,8 +2091,7 @@
"mode":"absolute",
"steps":[
{
"color":"green",
"value":null
"color":"green"
},
{
"color":"red",
@ -2118,8 +2125,9 @@
"targets":[
{
"datasource":{
"default":true,
"type":"grafana-postgresql-datasource",
"uid":"bdz2yss7sxo1sc"
"uid":"be28nkzirtb0gd"
},
"editorMode":"code",
"format":"table",
@ -2224,7 +2232,6 @@
"type":"row"
}
],
"refresh":"",
"schemaVersion":39,
"tags":[],
"templating":{
@ -2236,6 +2243,7 @@
"value":"main"
},
"datasource":{
"default":true,
"type":"grafana-postgresql-datasource",
"uid":"be28nkzirtb0gd"
},
@ -2248,7 +2256,7 @@
"name":"branch",
"options":[],
"query":"SELECT DISTINCT branch FROM benchmarks;",
"refresh":2,
"refresh":1,
"regex":"",
"skipUrlSync":false,
"sort":0,
@ -2261,6 +2269,7 @@
"value":"1729701492845"
},
"datasource":{
"default":true,
"type":"grafana-postgresql-datasource",
"uid":"be28nkzirtb0gd"
},
@ -2281,10 +2290,11 @@
{
"current":{
"selected":false,
"text":"1730120430069",
"value":"1730120430069"
"text":"1730393397577",
"value":"1730393397577"
},
"datasource":{
"default":true,
"type":"grafana-postgresql-datasource",
"uid":"be28nkzirtb0gd"
},
@ -2312,15 +2322,16 @@
"type":"grafana-postgresql-datasource",
"uid":"be28nkzirtb0gd"
},
"definition":"SELECT DISTINCT gpu_name FROM benchmarks;",
"definition":"SELECT DISTINCT metadata->>'gpu_name' FROM benchmarks;",
"description":"",
"hide":0,
"includeAll":false,
"label":"GPU",
"multi":false,
"name":"gpu_name",
"options":[],
"query":"SELECT DISTINCT gpu_name FROM benchmarks;",
"refresh":2,
"query":"SELECT DISTINCT metadata->>'gpu_name' FROM benchmarks;",
In this folder you will find various docker files, and some subfolders.
- dockerfiles (ex: `consistency.dockerfile`) present under `~/docker` are used for our "fast" CIs. You should be able to use them for tasks that only need CPU. For example `torch-light` is a very light weights container (703MiB).
- subfloder contain dockerfiles used for our `slow` CIs, which *can* be used for GPU tasks, but they are **BIG** as they were not specifically designed for a single model / single task. Thus the `~/docker/transformers-pytorch-gpu` includes additional dependencies to allow us to run ALL model tests (say `librosa` or `tesseract`, which you do not need to run LLMs)
- subfolders contain dockerfiles used for our `slow` CIs, which *can* be used for GPU tasks, but they are **BIG** as they were not specifically designed for a single model / single task. Thus the `~/docker/transformers-pytorch-gpu` includes additional dependencies to allow us to run ALL model tests (say `librosa` or `tesseract`, which you do not need to run LLMs)
Note that in both case, you need to run `uv pip install -e .`, which should take around 5 seconds. We do it outside the dockerfile for the need of our CI: we checkout a new branch each time, and the `transformers` code is thus updated.
We are open to contribution, and invite the community to create dockerfiles with potential arguments that properly choose extras depending on the model's dependencies! :hugs:
We are open to contribution, and invite the community to create dockerfiles with potential arguments that properly choose extras depending on the model's dependencies! :hugs:
RUN pip install --no-cache-dir "git+https://github.com/huggingface/transformers.git@${REF}#egg=transformers[sklearn,tf-cpu,testing,sentencepiece,tf-speech,vision]"
RUN uv pip install --no-cache-dir "git+https://github.com/huggingface/transformers.git@${REF}#egg=transformers[sklearn,tf-cpu,testing,sentencepiece,tf-speech,vision]"
RUN uv pip install --no-cache-dir "protobuf==3.20.3" tensorflow_probability
RUN uv pip install --no-cache-dir --no-deps accelerate --extra-index-url https://download.pytorch.org/whl/cpu
RUN pip install --no-cache-dir 'torch' 'torchvision' 'torchaudio' --index-url https://download.pytorch.org/whl/cpu
RUN uv pip install --no-cache-dir 'torch' 'torchaudio' 'torchvision' --index-url https://download.pytorch.org/whl/cpu
RUN git lfs install
RUN uv pip install --no-cache-dir pypi-kenlm
RUN pip install --no-cache-dir "git+https://github.com/huggingface/transformers.git@${REF}#egg=transformers[tf-cpu,sklearn,sentencepiece,vision,testing]"
RUN uv pip install --no-cache-dir "git+https://github.com/huggingface/transformers.git@${REF}#egg=transformers[tf-cpu,sklearn,sentencepiece,vision,testing]"
RUN uv pip install --no-cache-dir "protobuf==3.20.3" librosa
يمكن للنظم اللغوية الكبيرة (LLMs) التي تم تدريبها على أداء [نمذجة اللغة السببية](./tasks/language_modeling.) التعامل مع مجموعة واسعة من المهام، ولكنها غالبًا ما تواجه صعوبات في المهام الأساسية مثل المنطق والحساب والبحث. وعندما يتم استدعاؤها في مجالات لا تؤدي فيها أداءً جيدًا، فإنها غالبًا ما تفشل في توليد الإجابة التي نتوقعها منها.
يتمثل أحد النهج للتغلب على هذا القصور في إنشاء "وكيل".
الوكيل هو نظام يستخدم LLM كمحرك له، ولديه حق الوصول إلى وظائف تسمى "أدوات".
هذه "الأدوات" هي وظائف لأداء مهمة، وتحتوي على جميع الأوصاف اللازمة للوكيل لاستخدامها بشكل صحيح.
يمكن برمجة الوكيل للقيام بما يلي:
- وضع سلسلة من الإجراءات/الأدوات وتشغيلها جميعًا في نفس الوقت مثل [`CodeAgent`] على سبيل المثال
- التخطيط للاجراءات/الأدوات وتنفيذها واحدة تلو الأخرى والانتظار حتى انتهاء كل إجراء قبل إطلاق التالي مثل [`ReactJsonAgent`] على سبيل المثال
### أنواع الوكلاء
#### الوكيل البرمجي (Code agent)
يتمتع هذا الوكيل يتبع خطوات محددة: أولًا، يخطط لسلسلة من الإجراءات التي يريد تنفيذها، ثم شفرة Python لتنفيذ جميع الإجراءات في نفس الوقت. وهو يتعامل بشكل أصلي مع أنواع مختلفة من المدخلات والمخرجات للأدوات التي يستخدمها، وبالتالي فهو الخيار الموصى به للمهام متعددة الوسائط.
#### وكلاء التفاعل
هذا هو الوكيل الذي يتم اللجوء إليه لحل مهام الاستدلال، حيث يجعل إطار ReAct ([Yao et al.، 2022](https://huggingface.co/papers/2210.03629)) من الكفاءة حقًا التفكير على أساس ملاحظاته السابقة.
نقوم بتنفيذ إصدارين من ReactJsonAgent:
- [`ReactJsonAgent`] يقوم بتوليد استدعاءات الأدوات كـ JSON في إخراجها.
- [`ReactCodeAgent`] هو نوع جديد من ReactJsonAgent يقوم بتوليد استدعاءات أدواته كمقاطع من التعليمات البرمجية، والتي تعمل بشكل جيد حقًا مع LLMs التي تتمتع بأداء قوي في البرمجة.
> [!TIP]
> اقرأ منشور المدونة [Open-source LLMs as LangChain Agents](https://huggingface.co/blog/open-source-llms-as-agents) لمعرفة المزيد عن وكيل ReAct.

على سبيل المثال، إليك كيف يعمل وكيل ReAct Code طريقه من خلال السؤال التالي.
```py3
>>>agent.run(
..."How many more blocks (also denoted as layers) in BERT base encoder than the encoder from the architecture proposed in Attention is All You Need?",
- نموذج لغوي كبير (LLM) يشكل المحرك الأساسي للوكيل. الوكيل نفسه ليس النموذج اللغوي، بل هو برنامج يستخدم النموذج اللغوي كمحرك له.
- موجه النظام (system prompt): هذه هي التعليمات التي يتم إعطاؤها للنموذج اللغوي لإنشاء مخرجاته.
- صندوق أدوات (toolbox) يختار الوكيل منه الأدوات لتنفيذها
- محلل (parser) لاستخراج الأدوات التي يجب استدعاؤها من مخرجات النموذج اللغوي LLM والأدوات التي يجب استخدامها
عند تهيئة نظام الوكيل، يتم استخدام سمات الأداة لإنشاء وصف للأداة، ثم يتم دمجها في موجه النظام الخاص `system_prompt` للوكيل لإعلامه بالأدوات التي يمكنه استخدامها ولماذا.
للبدء، يرجى تثبيت `agents` الإضافية لتثبيت جميع التبعيات الافتراضية.
```bash
pip install transformers[agents]
```
قم ببناء محرك LLM الخاص بك من خلال تعريف طريقة `llm_engine` التي تقبل قائمة من [الرسائل](./chat_templating.) وتعيد النص. يجب أن تقبل هذه الدالة القابلة للاستدعاء أيضًا معامل `stop` يشير إلى متى يجب التوقف عن التوليد.
2. يتوقف عن توليد المخراجات من التسلسلات التي تم تمريرها في معامل `stop`
أنت بحاجة أيضًا إلى معامل "الأدوات" الذي يقبل قائمة من "الأدوات". يمكنك توفير قائمة فارغة لـ "الأدوات"، ولكن استخدم صندوق الأدوات الافتراضي مع معامل اختياري `add_base_tools=True`.
الآن يمكنك إنشاء وكيل، مثل [`CodeAgent`], وتشغيله. ولتسهيل الأمر، نقدم أيضًا فئة [`HfEngine`] التي تستخدم `huggingface_hub.InferenceClient` بشكل مخفى.
agent.run("Why does Mike not know many people in New York?",audio="https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/transformers/recording.mp3")
```
تم تحديد موجه النظام ومحلل المخرجات تلقائيًا، ولكن يمكنك فحصهما بسهولة عن طريق استدعاء `system_prompt_template` على وكيلك.
```python
print(agent.system_prompt_template)
```
من المهم أن تشرح بأكبر قدر ممكن من الوضوح المهمة التي تريد تنفيذها.
كل عملية [`~Agent.run`] مستقلة، وبما أن الوكيل مدعوم من LLM، فقد تؤدي الاختلافات الطفيفة في موجهك إلى نتائج مختلفة تمامًا.
يمكنك أيضًا تشغيل وكيل بشكل متتالي لمهام مختلفة: في كل مرة يتم فيها إعادة تهيئة سمتي `agent.task` و`agent.logs`.
#### تنفيذ التعليمات البرمجية
يقوم مفسر Python بتنفيذ التعليمات البرمجية على مجموعة من المدخلات التي يتم تمريرها جنبًا إلى جنب مع أدواتك.
يجب أن يكون هذا الأمر آمنًا لأن الوظائف الوحيدة التي يمكن استدعاؤها هي الأدوات التي قدمتها (خاصة إذا كانت أدوات من Hugging Face فقط) ووظيفة الطباعة، لذا فأنت مقيد بالفعل بما يمكن تنفيذه.
مفسر Python لا يسمح أيضًا باستدعاء دوال بشكل افتراضي خارج قائمة آمنة، لذا فإن جميع الهجمات الأكثر وضوحًا لا ينبغي أن تكون مشكلة.
يمكنك أيضًا الإذن باستيرادات إضافية عن طريق تمرير الوحدات النمطية المصرح بها كقائمة من السلاسل في معامل `additional_authorized_imports` عند تهيئة [`ReactCodeAgent`] أو [`CodeAgent`]:
>>>agent.run("Could you get me the title of the page at url 'https://huggingface.co/blog'?")
(...)
'Hugging Face – Blog'
```
سيتم إيقاف التنفيذ عند أي رمز يحاول تنفيذ عملية غير قانونية أو إذا كان هناك خطأ Python عادي في التعليمات البرمجية التي تم إنشاؤها بواسطة الوكيل.
> [!WARNING]
> يمكن لـ LLM توليد شفرة برمجية عشوائية سيتم تنفيذها بعد ذلك: لا تقمب استدعاء أى دوال غير آمنة!
### موجه النظام
ينشئ الوكيل، أو بالأحرى LLM الذي يقود الوكيل، يولد مخرجات بناءً على موجه النظام. يمكن تخصيص موجه النظام وتصميمه للمهام المقصودة. على سبيل المثال، تحقق من موجه النظام لـ [`ReactCodeAgent`] (الإصدار أدناه مبسط قليلاً).
```text
You will be given a task to solve as best you can.
You have access to the following tools:
<<tool_descriptions>>
To solve the task, you must plan forward to proceed in a series of steps, in a cycle of 'Thought:', 'Code:', and 'Observation:' sequences.
At each step, in the 'Thought:' sequence, you should first explain your reasoning towards solving the task, then the tools that you want to use.
Then in the 'Code:' sequence, you shold write the code in simple Python. The code sequence must end with '/End code' sequence.
During each intermediate step, you can use 'print()' to save whatever important information you will then need.
These print outputs will then be available in the 'Observation:' field, for using this information as input for the next step.
In the end you have to return a final answer using the `final_answer` tool.
Here are a few examples using notional tools:
---
{examples}
Above example were using notional tools that might not exist for you. You only have acces to those tools:
<<tool_names>>
You also can perform computations in the python code you generate.
Always provide a 'Thought:' and a 'Code:\n```py' sequence ending with '```<end_code>' sequence. You MUST provide at least the 'Code:' sequence to move forward.
Remember to not perform too many operations in a single code block! You should split the task into intermediate code blocks.
Print results at the end of each step to save the intermediate results. Then use final_answer() to return the final result.
Remember to make sure that variables you use are all defined.
Now Begin!
```
يتضمن موجه النظام:
- *مقدمة* تشرح كيف يجب أن يتصرف الوكيل والأدوات التي يجب عليه استخدامها.
- وصف لجميع الأدوات التي يتم تحديدها بواسطة رمز `<<tool_descriptions>>` الذي يتم استبداله ديناميكيًا في وقت التشغيل بالأدوات التي يحددها المستخدم أو يختارها.
- يأتي وصف الأداة من سمات الأداة، `name`، و`description`، و`inputs` و`output_type`، وقالب `jinja2` بسيط يمكنك تحسينه.
- شكل المخرج المتوقع.
يمكنك تحسين موجه النظام، على سبيل المثال، عن طريق إضافة شرح لتنسيق المخرجات.
للحصول على أقصى قدر من المرونة، يمكنك الكتابة فوق قالب موجه النظام بالكامل عن طريق تمرير موجه مخصص كمعامل إلى معلمة `system_prompt`.
> يرجى التأكد من تحديد سلسلة `<<tool_descriptions>>` في مكان ما في `template` حتى يكون الوكيل على علم
بالأدوات المتاحة.
### فحص تشغيل الوكيل
فيما يلي بعض السمات المفيدة لفحص ما حدث بعد التشغيل:
- تخزن `agent.logs` سجلات مفصلة للوكيل. في كل خطوة من تشغيل الوكيل، يتم تخزين كل شيء في قاموس إلحاقه بـ `agent.logs`.
- تشغيل `agent.write_inner_memory_from_logs()` يخلق ذاكرة داخلية لسجلات الوكيل للنظام LLM لعرضها، كقائمة من رسائل الدردشة. تنتقل هذه الطريقة عبر كل خطوة من سجل الوكيل ولا تخزن سوى ما يهمها كرسالة: على سبيل المثال، سيحفظ موجه النظام والمهمة في رسائل منفصلة، ثم لكل خطوة سيخزن مخرج LLM كرسالة، ومخرج استدعاء الأداة كرسالة أخرى. استخدم هذا إذا كنت تريد عرضًا عامًا لما حدث - ولكن لن يتم نسخ كل سجل بواسطة هذه الطريقة.
## الأدوات
الأداة هي عبارة عن وظيفة أساسية يستخدمها الوكيل لتنفيذ مهمة محددة.
يمكنك على سبيل المثال التحقق من [`PythonInterpreterTool`]: لديه اسم ووصف ووصف للمدخلات ونوع للمخرج، وطريقة `__call__` التي تقوم بتنفيذ المهمة المطلوبة.
عند تهيئة الوكيل، يتم استخدام سمات الأداة لتوليد وصف للأداة يتم تضمينه في موجه النظام الخاص بالوكيل. يتيح هذا للوكيل معرفة الأدوات التي يمكنه استخدامها ولماذا.
### صندوق الأدوات الافتراضي
يأتي Transformers مع صندوق أدوات افتراضي لتمكين الوكلاء، والذي يمكنك إضافته إلى وكيلك عند التهيئة باستخدام معامل `add_base_tools = True`:
- **الإجابة على أسئلة المستند**: الإجابة على سؤال حول المستند (مثل ملف PDF) بتنسيق صورة ([Donut](./model_doc/donut))
- **الإجابة على أسئلة الصور**: الإجابة على سؤال حول صورة ([VILT](./model_doc/vilt))
- **التحدث إلى النص**: قم بتفريغ الكلام إلى نص ([Whisper](./model_doc/whisper))
- **النص إلى كلام**: تحويل النص إلى كلام ([SpeechT5](./model_doc/speecht5))
- **الترجمة**: ترجمة جملة معينة من لغة المصدر إلى لغة الهدف.
- **مفسر كود Python**: تشغيل كود Python الذي تم إنشاؤه بواسطة LLM في بيئة آمنة. لن يتم إضافة هذه الأداة إلى [`ReactJsonAgent`] إلا إذا استخدمت `add_base_tools=True`، نظرًا لأن الأدوات المستندة إلى التعليمات البرمجية يمكنها بالفعل تنفيذ كود Python
لا تترجم النصوص الخاصة ولا الأكواد البرمجية ولا الروابط ولا رموز HTML وCSS:
يمكنك استخدام أداة يدويًا عن طريق استدعاء دالة [`load_tool`] وتحديد مهمة لتنفيذها.
```python
fromtransformersimportload_tool
tool=load_tool("text-to-speech")
audio=tool("This is a text to speech tool")
```
### إنشاء أداة جديدة
يمكنك إنشاء أداتك الخاصة لتغطية حالات الاستخدام التي لا تغطيها الأدوات الافتراضية من Hugging Face.
على سبيل المثال، دعنا نقوم بإنشاء أداة تعرض النموذج الأكثر تنزيلًا لمهمة معينة من Hub.
يمكن تحويل هذه الشيفرة إلى فئة ترث من الفئة العليا [`Tool`].
تحتاج الأداة المخصصة إلى:
- اسم `name`، والتي تمثل اسم الأداة نفسها. عادةً ما يصف الاسم وظيفتها. بما أن الكود يعيد النموذج الأكثر تنزيلًا لمهمة ما، فلنسمها `model_download_counter`.
- تستخدم خاصية `description` لملء موجه نظام الوكيل.
- خاصية `inputs`، والتي هي عبارة عن قاموس بمفاتيح "type" و"description". يحتوي على معلومات تساعد المفسر Python على اتخاذ خيارات مستنيرة بشأن المدخلات.
- خاصية `output_type`، والتي تحدد نوع المخرج.
- طريقة `forward` والتي تحتوي على الكود الذي سيتم تنفيذه للحصول على النتيجة النهائية.
```python
fromtransformersimportTool
fromhuggingface_hubimportlist_models
classHFModelDownloadsTool(Tool):
name="model_download_counter"
description=(
"This is a tool that returns the most downloaded model of a given task on the Hugging Face Hub. "
"It returns the name of the checkpoint."
)
inputs={
"task":{
"type":"text",
"description":"the task category (such as text-classification, depth-estimation, etc)",
الآن بعد أن أصبحت فئة `HfModelDownloadsTool` المخصصة جاهزة، يمكنك حفظها في ملف باسم `model_downloads.py` واستيرادها للاستخدام.
```python
frommodel_downloadsimportHFModelDownloadsTool
tool=HFModelDownloadsTool()
```
يمكنك أيضًا مشاركة أداتك المخصصة في Hub عن طريق استدعاء [`~Tool.push_to_hub`] على الأداة. تأكد من أنك قمت بإنشاء مستودع لها على Hub وأنك تستخدم رمز وصول للقراءة.
print(f"The most downloaded model for the 'text-to-video' task is {most_downloaded_model}.")
====
```
والناتج:
`"النموذج الأكثر تنزيلًا لمهمة `text-to-video` هو ByteDance/AnimateDiff-Lightning."`
### إدارة صندوق أدوات الوكيل الخاص بك
إذا كنت قد قمت بتهيئة وكيل، فمن غير الملائم إعادة تهيئته من البداية لإضافة أداة جديدة ترغب في استخدامها. باستخدام مكتبة Transformers، يمكنك إدارة صندوق أدوات الوكيل بإضافة أو استبدال أداة موجودة.
دعنا نضيف الأداة `model_download_tool` إلى وكيل تم تهيئته مسبقًا باستخدام صندوق الأدوات الافتراضي.
> احترس عند إضافة أدوات إلى وكيل يعمل بالفعل لأنه يمكن أن يؤثر على اختيار الأداة لصالح أداتك أو اختيار أداة أخرى غير المحددة بالفعل.
استخدم طريقة `agent.toolbox.update_tool()` لاستبدال أداة موجودة في صندوق أدوات الوكيل.
هذا مفيد إذا كانت أداتك الجديدة بديلاً مباشرًا للأداة الموجودة لأن الوكيل يعرف بالفعل كيفية تنفيذ تلك المهمة المحددة.
تأكد فقط من اتباع الأداة الجديدة لنفس واجهة برمجة التطبيقات (API) للأداة المستبدلة أو قم بتكييف قالب موجه النظام لضمان تحديث جميع الأمثلة التي تستخدم الأداة المستبدلة.
### استخدام مجموعة من الأدوات
يمكنك الاستفادة من مجموعات الأدوات باستخدام كائن ToolCollection، مع تحديد مجموعة الأدوات التي تريد استخدامها.
ثم قم بتمريرها كقائمة لتهيئة الوكيل الخاص بك، وبدء استخدامها!
[gradio-tools](https://github.com/freddyaboulton/gradio-tools) هي مكتبة قوية تتيح استخدام Hugging
Face Spaces كأدوات. تدعم العديد من المساحات الموجودة بالإضافة إلى مساحات مخصصة.
تدعم مكتبة Transformers `gradio_tools` باستخدام طريقة [`Tool.from_gradio`] في الفئة. على سبيل المثال، دعنا نستخدم [`StableDiffusionPromptGeneratorTool`](https://github.com/freddyaboulton/gradio-tools/blob/main/gradio_tools/tools/prompt_generator.py) من مجموعة أدوات `gradio-tools` لتحسين المطالبات لإنشاء صور أفضل.
استورد وقم بتهيئة الأداة، ثم مررها إلى طريقة `Tool.from_gradio`:
> تتطلب gradio-tools إدخالات وإخراجات *نصية* حتى عند العمل مع طرائق مختلفة مثل كائنات الصور والصوت. الإدخالات والإخراجات الصورية والصوتية غير متوافقة حاليًا.
### استخدام أدوات LangChain
نحن نحب Langchain ونعتقد أنها تحتوي على مجموعة أدوات قوية للغاية.
لاستيراد أداة من LangChain، استخدم الطريقة `from_langchain()`.
فيما يلي كيفية استخدامها لإعادة إنشاء نتيجة البحث في المقدمة باستخدام أداة بحث الويب LangChain.
agent.run("How many more blocks (also denoted as layers) in BERT base encoder than the encoder from the architecture proposed in Attention is All You Need?")
```
## واجهة Gradio
يمكنك الاستفادة من `gradio.Chatbot` لعرض أفكار الوكيل الخاص بك باستخدام `stream_to_gradio`، إليك مثال:
يُشهد في الآونة الأخيرة نمو مجال دراسي يُعنى باستكشاف آلية عمل نماذج المحولات الضخمة مثل BERT (والذي يُطلق عليها البعض اسم "BERTology"). ومن الأمثلة البارزة على هذا المجال ما يلي:
- BERT Rediscovers the Classical NLP Pipeline بواسطة Ian Tenney و Dipanjan Das و Ellie Pavlick:
https://arxiv.org/abs/1905.05950
- Are Sixteen Heads Really Better than One? بواسطة Paul Michel و Omer Levy و Graham Neubig: https://arxiv.org/abs/1905.10650
https://huggingface.co/papers/1905.05950
- Are Sixteen Heads Really Better than One? بواسطة Paul Michel و Omer Levy و Graham Neubig: https://huggingface.co/papers/1905.10650
- What Does BERT Look At? An Analysis of BERT's Attention بواسطة Kevin Clark و Urvashi Khandelwal و Omer Levy و Christopher D.
Manning: https://arxiv.org/abs/1906.04341
- CAT-probing: A Metric-based Approach to Interpret How Pre-trained Models for Programming Language Attend Code Structure: https://arxiv.org/abs/2210.04633
Manning: https://huggingface.co/papers/1906.04341
- CAT-probing: A Metric-based Approach to Interpret How Pre-trained Models for Programming Language Attend Code Structure: https://huggingface.co/papers/2210.04633
لإثراء هذا المجال الناشئ، قمنا بتضمين بعض الميزات الإضافية في نماذج BERT/GPT/GPT-2 للسماح للناس بالوصول إلى التمثيلات الداخلية، والتي تم تكييفها بشكل أساسي من العمل الرائد لـ Paul Michel (https://arxiv.org/abs/1905.10650):
لإثراء هذا المجال الناشئ، قمنا بتضمين بعض الميزات الإضافية في نماذج BERT/GPT/GPT-2 للسماح للناس بالوصول إلى التمثيلات الداخلية، والتي تم تكييفها بشكل أساسي من العمل الرائد لـ Paul Michel (https://huggingface.co/papers/1905.10650):
- الوصول إلى جميع الحالات المخفية في BERT/GPT/GPT-2،
- الوصول إلى جميع أوزان الانتباه لكل رأس في BERT/GPT/GPT-2،
- استرجاع قيم ومشتقات مخرجات الرأس لحساب درجة أهمية الرأس وحذفه كما هو موضح في https://arxiv.org/abs/1905.10650.
- استرجاع قيم ومشتقات مخرجات الرأس لحساب درجة أهمية الرأس وحذفه كما هو موضح في https://huggingface.co/papers/1905.10650.
ولمساعدتك على فهم واستخدام هذه الميزات بسهولة، أضفنا مثالًا برمجيًا محددًا: [bertology.py](https://github.com/huggingface/transformers/tree/main/examples/research_projects/bertology/run_bertology.py) أثناء استخراج المعلومات وتقليص من نموذج تم تدريبه مسبقًا على GLUE.
ولمساعدتك على فهم واستخدام هذه الميزات بسهولة، أضفنا مثالًا برمجيًا محددًا: [bertology.py](https://github.com/huggingface/transformers-research-projects/tree/main/bertology/run_bertology.py) أثناء استخراج المعلومات وتقليص من نموذج تم تدريبه مسبقًا على GLUE.
هذه الصفحة تجمع الموارد حول 🤗 Transformers التي طورها المجتمع.
## موارد المجتمع:
| المصدر | الوصف | المؤلف |
|:----------|:-------------|------:|
| [Hugging Face Transformers Glossary Flashcards](https://www.darigovresearch.com/huggingface-transformers-glossary-flashcards) | مجموعة من البطاقات التعليمية القائمة على [Transformers Docs Glossary](glossary) والتي تم وضعها في شكل يمكن تعلمه/مراجعته بسهولة باستخدام [Anki](https://apps.ankiweb.net/) وهو تطبيق مفتوح المصدر متعدد المنصات مصمم خصيصًا للاحتفاظ بالمعرفة على المدى الطويل. شاهد هذا [فيديو تمهيدي حول كيفية استخدام البطاقات التعليمية](https://www.youtube.com/watch?v=Dji_7PILrw). | [Darigov Research](https://www.darigovresearch.com/) |
| [Fine-tune a pre-trained Transformer to generate lyrics](https://github.com/AlekseyKorshuk/huggingartists) | كيفية توليد كلمات الأغاني على غرار فنانك المفضل من خلال ضبط نموذج GPT-2 | [Aleksey Korshuk](https://github.com/AlekseyKorshuk) | [](https://colab.research.google.com/github/AlekseyKorshuk/huggingartists/blob/master/huggingartists-demo.ipynb) |
| [Train T5 in Tensorflow 2](https://github.com/snapthat/TF-T5-text-to-text) | كيفية تدريب T5 لأي مهمة باستخدام Tensorflow 2. يوضح هذا الدفتر مهمة السؤال والجواب المنفذة في Tensorflow 2 باستخدام SQUAD | [Muhammad Harris](https://github.com/HarrisDePerceptron) |[](https://colab.research.google.com/github/snapthat/TF-T5-text-to-text/blob/master/snapthatT5/notebooks/TF-T5-Datasets%20Training.ipynb) |
| [Train T5 on TPU](https://github.com/patil-suraj/exploring-T5/blob/master/T5_on_TPU.ipynb) | كيفية تدريب T5 على SQUAD مع Transformers و Nlp | [Suraj Patil](https://github.com/patil-suraj) |[](https://colab.research.google.com/github/patil-suraj/exploring-T5/blob/master/T5_on_TPU.ipynb#scrollTo=QLGiFCDqvuil) |
| [Fine-tune T5 for Classification and Multiple Choice](https://github.com/patil-suraj/exploring-T5/blob/master/t5_fine_tuning.ipynb) | كيفية ضبط نموذج T5 للتصنيف والمهام متعددة الخيارات باستخدام تنسيق النص إلى نص مع PyTorch Lightning | [Suraj Patil](https://github.com/patil-suraj) | [](https://colab.research.google.com/github/patil-suraj/exploring-T5/blob/master/t5_fine_tuning.ipynb) |
| [Fine-tune DialoGPT on New Datasets and Languages](https://github.com/ncoop57/i-am-a-nerd/blob/master/_notebooks/2020-05-12-chatbot-part-1.ipynb) | كيفية ضبط نموذج DialoGPT على مجموعة بيانات جديدة لروبوتات الدردشة المحادثية المفتوحة | [Nathan Cooper](https://github.com/ncoop57) | [](https://colab.research.google.com/github/ncoop57/i-am-a-nerd/blob/master/_notebooks/2020-05-12-chatbot-part-1.ipynb) |
| [Long Sequence Modeling with Reformer](https://github.com/patrickvonplaten/notebooks/blob/master/PyTorch_Reformer.ipynb) | كيفية التدريب على تسلسلات طويلة تصل إلى 500,000 رمز باستخدام Reformer | [Patrick von Platen](https://github.com/patrickvonplaten) | [](https://colab.research.google.com/github/patrickvonplaten/notebooks/blob/master/PyTorch_Reformer.ipynb) |
| [Fine-tune BART for Summarization](https://github.com/ohmeow/ohmeow_website/blob/master/posts/2021-05-25-mbart-sequence-classification-with-blurr.ipynb) | كيفية ضبط نموذج BART للتلخيص باستخدام fastai باستخدام blurr | [Wayde Gilliam](https://ohmeow.com/) | [](https://colab.research.google.com/github/ohmeow/ohmeow_website/blob/master/posts/2021-05-25-mbart-sequence-classification-with-blurr.ipynb) |
| [Fine-tune a pre-trained Transformer on anyone's tweets](https://colab.research.google.com/github/borisdayma/huggingtweets/blob/master/huggingtweets-demo.ipynb) | كيفية توليد تغريدات على غرار حساب Twitter المفضل لديك من خلال ضبط نموذج GPT-2 | [Boris Dayma](https://github.com/borisdayma) | [](https://colab.research.google.com/github/borisdayma/huggingtweets/blob/master/huggingtweets-demo.ipynb) |
| [Optimize 🤗 Hugging Face models with Weights & Biases](https://colab.research.google.com/github/wandb/examples/blob/master/colabs/huggingface/Optimize_Hugging_Face_models_with_Weights_%26_Biases.ipynb) | دليل كامل لعرض تكامل W&B مع Hugging Face | [Boris Dayma](https://github.com/borisdayma) | [](https://colab.research.google.com/github/wandb/examples/blob/master/colabs/huggingface/Optimize_Hugging_Face_models_with_Weights_%26_Biases.ipynb) |
| [Pretrain Longformer](https://github.com/allenai/longformer/blob/master/scripts/convert_model_to_long.ipynb) | كيفية بناء نسخة "طويلة" من النماذج المسبقة التدريب الموجودة | [Iz Beltagy](https://beltagy.net) | [](https://colab.research.google.com/github/allenai/longformer/blob/master/scripts/convert_model_to_long.ipynb) |
| [Fine-tune Longformer for QA](https://github.com/patil-suraj/Notebooks/blob/master/longformer_qa_training.ipynb) | كيفية ضبط نموذج Longformer لمهمة QA | [Suraj Patil](https://github.com/patil-suraj) | [](https://colab.research.google.com/github/patil-suraj/Notebooks/blob/master/longformer_qa_training.ipynb) |
| [Evaluate Model with 🤗nlp](https://github.com/patrickvonplaten/notebooks/blob/master/How_to_evaluate_Longformer_on_TriviaQA_using_NLP.ipynb) | كيفية تقييم نموذج Longformer على TriviaQA مع `nlp` | [Patrick von Platen](https://github.com/patrickvonplaten) | [](https://colab.research.google.com/drive/1m7eTGlPmLRgoPkkA7rkhQdZ9ydpmsdLE?usp=sharing) |
| [Fine-tune T5 for Sentiment Span Extraction](https://github.com/enzoampil/t5-intro/blob/master/t5_qa_training_pytorch_span_extraction.ipynb) | كيفية ضبط نموذج T5 لاستخراج المشاعر باستخدام تنسيق النص إلى نص مع PyTorch Lightning | [Lorenzo Ampil](https://github.com/enzoampil) | [](https://colab.research.google.com/github/enzoampil/t5-intro/blob/master/t5_qa_training_pytorch_span_extraction.ipynb) |
| [Fine-tune DistilBert for Multiclass Classification](https://github.com/abhimishra91/transformers-tutorials/blob/master/transformers_multiclass_classification.ipynb) | كيفية ضبط نموذج DistilBert للتصنيف متعدد الفئات باستخدام PyTorch | [Abhishek Kumar Mishra](https://github.com/abhimishra91) | [](https://colab.research.google.com/github/abhimishra91/transformers-tutorials/blob/master/transformers_multiclass_classification.ipynb)|
|[Fine-tune BERT for Multi-label Classification](https://github.com/abhimishra91/transformers-tutorials/blob/master/transformers_multi_label_classification.ipynb)|كيفية ضبط نموذج BERT للتصنيف متعدد التصنيفات باستخدام PyTorch|[Abhishek Kumar Mishra](https://github.com/abhimishra91) |[](https://colab.research.google.com/github/abhimishra91/transformers-tutorials/blob/master/transformers_multi_label_classification.ipynb)|
|[Fine-tune T5 for Summarization](https://github.com/abhimishra91/transformers-tutorials/blob/master/transformers_summarization_wandb.ipynb)|كيفية ضبط نموذج T5 للتلخيص في PyTorch وتتبع التجارب باستخدام WandB|[Abhishek Kumar Mishra](https://github.com/abhimishra91) |[](https://colab.research.google.com/github/abhimishra91/transformers-tutorials/blob/master/transformers_summarization_wandb.ipynb)|
|[Speed up Fine-Tuning in Transformers with Dynamic Padding / Bucketing](https://github.com/ELS-RD/transformers-notebook/blob/master/Divide_Hugging_Face_Transformers_training_time_by_2_or_more.ipynb)|كيفية تسريع الضبط الدقيق بعامل 2 باستخدام الضبط الديناميكي/التقسيم|[Michael Benesty](https://github.com/pommedeterresautee) |[](https://colab.research.google.com/drive/1CBfRU1zbfu7-ijiOqAAQUA-RJaxfcJoO?usp=sharing)|
|[Pretrain Reformer for Masked Language Modeling](https://github.com/patrickvonplaten/notebooks/blob/master/Reformer_For_Masked_LM.ipynb)| كيفية تدريب نموذج Reformer مع طبقات الانتباه ثنائية الاتجاه | [Patrick von Platen](https://github.com/patrickvonplaten) | [](https://colab.research.google.com/drive/1tzzh0i8PgDQGV3SMFUGxM7_gGae3K-uW?usp=sharing)|
|[Expand and Fine Tune Sci-BERT](https://github.com/lordtt13/word-embeddings/blob/master/COVID-19%20Research%20Data/COVID-SciBERT.ipynb)| كيفية زيادة مفردات نموذج SciBERT المسبق التدريب من AllenAI على مجموعة بيانات CORD وإنشاء خط أنابيب لها. | [Tanmay Thakur](https://github.com/lordtt13) | [](https://colab.research.google.com/drive/1rqAR40goxbAfez1xvF3hBJphSCsvXmh8)|
|[Fine Tune BlenderBotSmall for Summarization using the Trainer API](https://github.com/lordtt13/transformers-experiments/blob/master/Custom%20Tasks/fine-tune-blenderbot_small-for-summarization.ipynb)| كيفية ضبط نموذج BlenderBotSmall للتلخيص على مجموعة بيانات مخصصة، باستخدام واجهة برمجة التطبيقات Trainer. | [Tanmay Thakur](https://github.com/lordtt13) | [](https://colab.research.google.com/drive/19Wmupuls7mykSGyRN_Qo6lPQhgp56ymq?usp=sharing)|
|[Fine-tune Electra and interpret with Integrated Gradients](https://github.com/elsanns/xai-nlp-notebooks/blob/master/electra_fine_tune_interpret_captum_ig.ipynb) | كيفية ضبط نموذج Electra للتحليل العاطفي وتفسير التنبؤات باستخدام Captum Integrated Gradients | [Eliza Szczechla](https://elsanns.github.io) | [](https://colab.research.google.com/github/elsanns/xai-nlp-notebooks/blob/master/electra_fine_tune_interpret_captum_ig.ipynb)|
|[fine-tune a non-English GPT-2 Model with Trainer class](https://github.com/philschmid/fine-tune-GPT-2/blob/master/Fine_tune_a_non_English_GPT_2_Model_with_Huggingface.ipynb) | كيفية ضبط نموذج GPT-2 غير الإنجليزي باستخدام فئة Trainer | [Philipp Schmid](https://www.philschmid.de) | [](https://colab.research.google.com/github/philschmid/fine-tune-GPT-2/blob/master/Fine_tune_a_non_English_GPT_2_Model_with_Huggingface.ipynb)|
|[Fine-tune a DistilBERT Model for Multi Label Classification task](https://github.com/DhavalTaunk08/Transformers_scripts/blob/master/Transformers_multilabel_distilbert.ipynb) | كيفية ضبط نموذج DistilBERT لمهمة التصنيف متعدد التصنيفات | [Dhaval Taunk](https://github.com/DhavalTaunk08) | [](https://colab.research.google.com/github/DhavalTaunk08/Transformers_scripts/blob/master/Transformers_multilabel_distilbert.ipynb)|
|[Fine-tune ALBERT for sentence-pair classification](https://github.com/NadirEM/nlp-notebooks/blob/master/Fine_tune_ALBERT_sentence_pair_classification.ipynb) | كيفية ضبط نموذج ALBERT أو أي نموذج آخر قائم على BERT لمهمة التصنيف المزدوج للجمل | [Nadir El Manouzi](https://github.com/NadirEM) | [](https://colab.research.google.com/github/NadirEM/nlp-notebooks/blob/master/Fine_tune_ALBERT_sentence_pair_classification.ipynb)|
|[Fine-tune Roberta for sentiment analysis](https://github.com/DhavalTaunk08/NLP_scripts/blob/master/sentiment_analysis_using_roberta.ipynb) | كيفية ضبط نموذج Roberta للتحليل العاطفي | [Dhaval Taunk](https://github.com/DhavalTaunk08) | [](https://colab.research.google.com/github/DhavalTaunk08/NLP_scripts/blob/master/sentiment_analysis_using_roberta.ipynb)|
|[Evaluating Question Generation Models](https://github.com/flexudy-pipe/qugeev) | ما مدى دقة الإجابات على الأسئلة التي يولدها نموذجك التحويلي seq2seq؟ | [Pascal Zoleko](https://github.com/zolekode) | [](https://colab.research.google.com/drive/1bpsSqCQU-iw_5nNoRm_crPq6FRuJthq_?usp=sharing)|
|[Classify text with DistilBERT and Tensorflow](https://github.com/peterbayerle/huggingface_notebook/blob/main/distilbert_tf.ipynb) | كيفية ضبط نموذج DistilBERT للتصنيف النصي في TensorFlow | [Peter Bayerle](https://github.com/peterbayerle) | [](https://colab.research.google.com/github/peterbayerle/huggingface_notebook/blob/main/distilbert_tf.ipynb)|
|[Leverage BERT for Encoder-Decoder Summarization on CNN/Dailymail](https://github.com/patrickvonplaten/notebooks/blob/master/BERT2BERT_for_CNN_Dailymail.ipynb) | كيفية البدء السريع لنموذج *EncoderDecoderModel* مع نقطة تفتيش *google-bert/bert-base-uncased* للتلخيص على CNN/Dailymail | [Patrick von Platen](https://github.com/patrickvonplaten) | [](https://colab.research.google.com/github/patrickvonplaten/notebooks/blob/master/BERT2BERT_for_CNN_Dailymail.ipynb)|
|[Leverage RoBERTa for Encoder-Decoder Summarization on BBC XSum](https://github.com/patrickvonplaten/notebooks/blob/master/RoBERTaShared_for_BBC_XSum.ipynb) | كيفية البدء السريع لنموذج *EncoderDecoderModel* المشترك مع نقطة تفتيش *FacebookAI/roberta-base* للتلخيص على BBC/XSum | [Patrick von Platen](https://github.com/patrickvonplaten) | [](https://colab.research.google.com/github/patrickvonplaten/notebooks/blob/master/RoBERTaShared_for_BBC_XSum.ipynb)|
|[Fine-tune TAPAS on Sequential Question Answering (SQA)](https://github.com/NielsRogge/Transformers-Tutorials/blob/master/TAPAS/Fine_tuning_TapasForQuestionAnswering_on_SQA.ipynb) | كيفية ضبط نموذج *TapasForQuestionAnswering* مع نقطة تفتيش *tapas-base* على مجموعة بيانات Sequential Question Answering (SQA) | [Niels Rogge](https://github.com/nielsrogge) | [](https://colab.research.google.com/github/NielsRogge/Transformers-Tutorials/blob/master/TAPAS/Fine_tuning_TapasForQuestionAnswering_on_SQA.ipynb)|
|[Evaluate TAPAS on Table Fact Checking (TabFact)](https://github.com/NielsRogge/Transformers-Tutorials/blob/master/TAPAS/Evaluating_TAPAS_on_the_Tabfact_test_set.ipynb) | كيفية تقييم نموذج *TapasForSequenceClassification* المضبوط مسبقًا مع نقطة تفتيش *tapas-base-finetuned-tabfact* باستخدام مزيج من مكتبتي 🤗 datasets و 🤗 transformers | [Niels Rogge](https://github.com/nielsrogge) | [](https://colab.research.google.com/github/NielsRogge/Transformers-Tutorials/blob/master/TAPAS/Evaluating_TAPAS_on_the_Tabfact_test_set.ipynb)|
|[Fine-tuning mBART for translation](https://colab.research.google.com/github/vasudevgupta7/huggingface-tutorials/blob/main/translation_training.ipynb) | كيفية ضبط نموذج mBART باستخدام Seq2SeqTrainer للترجمة من الهندية إلى الإنجليزية | [Vasudev Gupta](https://github.com/vasudevgupta7) | [](https://colab.research.google.com/github/vasudevgupta7/huggingface-tutorials/blob/main/translation_training.ipynb)|
|[Fine-tune LayoutLM on FUNSD (a form understanding dataset)](https://github.com/NielsRogge/Transformers-Tutorials/blob/master/LayoutLM/Fine_tuning_LayoutLMForTokenClassification_on_FUNSD.ipynb) | كيفية ضبط نموذج *LayoutLMForTokenClassification* على مجموعة بيانات FUNSD لاستخراج المعلومات من المستندات الممسوحة ضوئيًا | [Niels Rogge](https://github.com/nielsrogge) | [](https://colab.research.google.com/github/NielsRogge/Transformers-Tutorials/blob/master/LayoutLM/Fine_tuning_LayoutLMForTokenClassification_on_FUNSD.ipynb)|
|[Fine-Tune DistilGPT2 and Generate Text](https://colab.research.google.com/github/tripathiaakash/DistilGPT2-Tutorial/blob/main/distilgpt2_fine_tuning.ipynb) | كيفية ضبط نموذج DistilGPT2 وتوليد النص | [Aakash Tripathi](https://github.com/tripathiaakash) | [](https://colab.research.google.com/github/tripathiaakash/DistilGPT2-Tutorial/blob/main/distilgpt2_fine_tuning.ipynb)|
|[Fine-Tune LED on up to 8K tokens](https://github.com/patrickvonplaten/notebooks/blob/master/Fine_tune_Longformer_Encoder_Decoder_(LED)_for_Summarization_on_pubmed.ipynb) | كيفية ضبط نموذج LED على pubmed للتلخيص طويل المدى | [Patrick von Platen](https://github.com/patrickvonplaten) | [](https://colab.research.google.com/github/patrickvonplaten/notebooks/blob/master/Fine_tune_Longformer_Encoder_Decoder_(LED)_for_Summarization_on_pubmed.ipynb)|
|[Evaluate LED on Arxiv](https://github.com/patrickvonplaten/notebooks/blob/master/LED_on_Arxiv.ipynb) | كيفية تقييم نموذج LED للتلخيص طويل المدى بشكل فعال | [Patrick von Platen](https://github.com/patrickvonplaten) | [](https://colab.research.google.com/github/patrickvonplaten/notebooks/blob/master/LED_on_Arxiv.ipynb)|
|[Fine-tune LayoutLM on RVL-CDIP (a document image classification dataset)](https://github.com/NielsRogge/Transformers-Tutorials/blob/master/LayoutLM/Fine_tuning_LayoutLMForSequenceClassification_on_RVL_CDIP.ipynb) | كيفية ضبط نموذج *LayoutLMForSequenceClassification* على مجموعة بيانات RVL-CDIP لتصنيف المستندات الممسوحة ضوئيًا | [Niels Rogge](https://github.com/nielsrogge) | [](https://colab.research.google.com/github/NielsRogge/Transformers-Tutorials/blob/master/LayoutLM/Fine_tuning_LayoutLMForSequenceClassification_on_RVL_CDIP.ipynb)|
|[Wav2Vec2 CTC decoding with GPT2 adjustment](https://github.com/voidful/huggingface_notebook/blob/main/xlsr_gpt.ipynb) | كيفية فك تشفير تسلسل CTC مع تعديل نموذج اللغة | [Eric Lam](https://github.com/voidful) | [](https://colab.research.google.com/drive/1e_zQHYbO2YKEaUgzb1ww1WwiAyydAj?usp=sharing)|
|[Fine-tune BART for summarization in two languages with Trainer class](https://github.com/elsanns/xai-nlp-notebooks/blob/master/fine_tune_bart_summarization_two_langs.ipynb) | كيفية ضبط نموذج BART للتلخيص بلغتين باستخدام فئة Trainer | [Eliza Szczechla](https://github.com/elsanns) | [](https://colab.research.google.com/github/elsanns/xai-nlp-notebooks/blob/master/fine_tune_bart_summarization_two_langs.ipynb)|
|[Evaluate Big Bird on Trivia QA](https://github.com/patrickvonplaten/notebooks/blob/master/Evaluating_Big_Bird_on_TriviaQA.ipynb) | كيفية تقييم نموذج BigBird للأسئلة والأجوبة على وثائق طويلة على Trivia QA | [Patrick von Platen](https://github.com/patrickvonplaten) | [](https://colab.research.google.com/github/patrickvonplaten/notebooks/blob/master/Evaluating_Big_Bird_on_TriviaQA.ipynb)|
| [Create video captions using Wav2Vec2](https://github.com/Muennighoff/ytclipcc/blob/main/wav2vec_youtube_captions.ipynb) | كيفية إنشاء تعليقات توضيحية على YouTube من أي فيديو من خلال تفريغ الصوت باستخدام Wav2Vec | [Niklas Muennighoff](https://github.com/Muennighoff) |[](https://colab.research.google.com/github/Muennighoff/ytclipcc/blob/main/wav2vec_youtube_captions.ipynb) |
| [Fine-tune the Vision Transformer on CIFAR-10 using PyTorch Lightning](https://github.com/NielsRogge/Transformers-Tutorials/blob/master/VisionTransformer/Fine_tuning_the_Vision_Transformer_on_CIFAR_10_with_PyTorch_Lightning.ipynb) | كيفية ضبط نموذج Vision Transformer (ViT) على CIFAR-10 باستخدام مكتبات HuggingFace Transformers و Datasets و PyTorch Lightning | [Niels Rogge](https://github.com/nielsrogge) |[](https://colab.research.google.com/github/NielsRogge/Transformers-Tutorials/blob/master/VisionTransformer/Fine_tuning_the_Vision_Transformer_on_CIFAR_10_with_PyTorch_Lightning.ipynb) |
| [Fine-tune the Vision Transformer on CIFAR-10 using the 🤗 Trainer](https://github.com/NielsRogge/Transformers-Tutorials/blob/master/VisionTransformer/Fine_tuning_the_Vision_Transformer_on_CIFAR_10_with_the_%F0%9F%A4%97_Trainer.ipynb) | كيفية ضبط نموذج Vision Transformer (ViT) على CIFAR-10 باستخدام مكتبات HuggingFace Transformers و Datasets و 🤗 Trainer | [Niels Rogge](https://github.com/nielsrogge) |[](https://colab.research.google.com/github/NielsRogge/Transformers-Tutorials/blob/master/VisionTransformer/Fine_tuning_the_Vision_Transformer_on_CIFAR_10_with_the_%F0%9F%A4%97_Trainer.ipynb) |
| [Evaluate LUKE on Open Entity, an entity typing dataset](https://github.com/studio-ousia/luke/blob/master/notebooks/huggingface_open_entity.ipynb) | كيفية تقييم نموذج *LukeForEntityClassification* على مجموعة بيانات Open Entity | [Ikuya Yamada](https://github.com/ikuyamada) |[](https://colab.research.google.com/github/studio-ousia/luke/blob/master/notebooks/huggingface_open_entity.ipynb) |
| [Evaluate LUKE on TACRED, a relation extraction dataset](https://github.com/studio-ousia/luke/blob/master/notebooks/huggingface_tacred.ipynb) | كيفية تقييم نموذج *LukeForEntityPairClassification* على مجموعة بيانات TACRED | [Ikuya Yamada](https://github.com/ikuyamada) |[](https://colab.research.google.com/github/studio-ousia/luke/blob/master/notebooks/huggingface_tacred.ipynb) |
| [Evaluate LUKE on CoNLL-2003, an important NER benchmark](https://github.com/studio-ousia/luke/blob/master/notebooks/huggingface_conll_2003.ipynb) | كيفية تقييم نموذج *LukeForEntitySpanClassification* على مجموعة بيانات CoNLL-2003 | [Ikuya Yamada](https://github.com/ikuyamada) |[](https://colab.research.google.com/github/studio-ousia/luke/blob/master/notebooks/huggingface_conll_2003.ipynb) |
| [Evaluate BigBird-Pegasus on PubMed dataset](https://github.com/vasudevgupta7/bigbird/blob/main/notebooks/bigbird_pegasus_evaluation.ipynb) | كيفية تقييم نموذج *BigBirdPegasusForConditionalGeneration* على مجموعة بيانات PubMed | [Vasudev Gupta](https://github.com/vasudevgupta7) | [](https://colab.research.google.com/github/vasudevgupta7/bigbird/blob/main/notebooks/bigbird_pegasus_evaluation.ipynb) |
| [Speech Emotion Classification with Wav2Vec2](https://github.com/m3hrdadfi/soxan/blob/main/notebooks/Emotion_recognition_in_Greek_speech_using_Wav2Vec2.ipynb) | كيفية استخدام نموذج Wav2Vec2 المسبق التدريب لتصنيف المشاعر على مجموعة بيانات MEGA | [Mehrdad Farahani](https://github.com/m3hrdadfi) | [](https://colab.research.google.com/github/m3hrdadfi/soxan/blob/main/notebooks/Emotion_recognition_in_Greek_speech_using_Wav2Vec2.ipynb) |
| [Detect objects in an image with DETR](https://github.com/NielsRogge/Transformers-Tutorials/blob/master/DETR/DETR_minimal_example_(with_DetrFeatureExtractor).ipynb) | كيفية استخدام نموذج *DetrForObjectDetection* المدرب للكشف عن الأجسام في صورة وتصوير الانتباه | [Niels Rogge](https://github.com/NielsRogge) | [](https://colab.research.google.com/github/NielsRogge/Transformers-Tutorials/blob/master/DETR/DETR_minimal_example_(with_DetrFeatureExtractor).ipynb) |
| [Fine-tune DETR on a custom object detection dataset](https://github.com/NielsRogge/Transformers-Tutorials/blob/master/DETR/Fine_tuning_DetrForObjectDetection_on_custom_dataset_(balloon).ipynb) | كيفية ضبط نموذج *DetrForObjectDetection* على مجموعة بيانات الكشف عن الأجسام المخصصة | [Niels Rogge](https://github.com/NielsRogge) | [](https://colab.research.google.com/github/NielsRogge/Transformers-Tutorials/blob/master/DETR/Fine_tuning_DetrForObjectDetection_on_custom_dataset_(balloon).ipynb) |
| [Finetune T5 for Named Entity Recognition](https://github.com/ToluClassics/Notebooks/blob/main/T5_Ner_Finetuning.ipynb) | كيفية ضبط نموذج *T5* على مهمة التعرف على الكيانات المسماة | [Ogundepo Odunayo](https://github.com/ToluClassics) | [](https://colab.research.google.com/drive/1obr78FY_cBmWY5ODViCmzdY6O1KB65Vc?usp=sharing) |
| [Fine-Tuning Open-Source LLM using QLoRA with MLflow and PEFT](https://github.com/mlflow/mlflow/blob/master/docs/source/llms/transformers/tutorials/fine-tuning/transformers-peft.ipynb) | كيفية استخدام [QLoRA](https://github.com/artidoro/qlora) و [PEFT](https://huggingface.co/docs/peft/en/index) لضبط نموذج LLM بطريقة فعالة من حيث الذاكرة، مع استخدام [MLflow](https://mlflow.org/docs/latest/llms/transformers/index.html) لإدارة تتبع التجارب | [Yuki Watanabe](https://github.com/B-Step62) | [](https://colab.research.google.com/github/mlflow/mlflow/blob/master/docs/source/llms/transformers/tutorials/fine-tuning/transformers-peft.ipynb) |
@ -77,7 +77,7 @@ model = AutoModelForCausalLM.from_pretrained(model_id, gguf_file=filename)
الآن لديك إمكانية الوصول إلى النسخة الكامل غير المكممة للنموذج في بيئة PyTorch، حيث يمكنك دمجه مع مجموعة كبيرة من الأدوات الأخرى.
لإعادة التحويل إلى ملف `gguf`، نوصي باستخدام ملف [`convert-hf-to-gguf.py`](https://github.com/ggerganov/llama.cpp/blob/master/convert-hf-to-gguf.py) من llama.cpp.
لإعادة التحويل إلى ملف `gguf`، نوصي باستخدام ملف [`convert-hf-to-gguf.py`](https://github.com/ggerganov/llama.cpp/blob/master/convert_hf_to_gguf.py) من llama.cpp.
فيما يلي كيفية إكمال البرنامج النصي أعلاه لحفظ النموذج وإعادة تصديره مرة أخرى إلى `gguf`:
في كل وحدة الانتباه الباقية في المحولات، تلي طبقة الاهتمام الانتباه عادة طبقتان للتغذية الأمامية.
حجم تضمين الطبقة الأمامية الوسيطة أكبر عادة من حجم المخفي للنموذج (على سبيل المثال، لـ
`google-bert/bert-base-uncased`).
بالنسبة لإدخال بحجم `[batch_size, sequence_length]`، يمكن أن تمثل الذاكرة المطلوبة لتخزين التضمينات الأمامية الوسيطة `[batch_size، sequence_length, config.intermediate_size]` جزءًا كبيرًا من استخدام الذاكرة. لاحظ مؤلفو (https://arxiv.org/abs/2001.04451)[Reformer: The Efficient Transformer] أنه نظرًا لأن الحساب مستقل عن بعد `sequence_length`، فإنه من المكافئ رياضيًا حساب تضمينات الإخراج الأمامية `[batch_size، config.hidden_size]_0, ..., [batch_size، `config_size]_n
بالنسبة لإدخال بحجم `[batch_size, sequence_length]`، يمكن أن تمثل الذاكرة المطلوبة لتخزين التضمينات الأمامية الوسيطة `[batch_size، sequence_length, config.intermediate_size]` جزءًا كبيرًا من استخدام الذاكرة. لاحظ مؤلفو (https://huggingface.co/papers/2001.04451)[Reformer: The Efficient Transformer] أنه نظرًا لأن الحساب مستقل عن بعد `sequence_length`، فإنه من المكافئ رياضيًا حساب تضمينات الإخراج الأمامية `[batch_size، config.hidden_size]_0, ..., [batch_size، `config_size]_n
فردياً والتوصيل بها لاحقًا إلى `[batch_size, sequence_length, config.hidden_size]` مع `n = sequence_length`، والذي يتداول زيادة وقت الحساب مقابل تقليل استخدام الذاكرة، ولكنه ينتج عنه نتيجة مكافئة رياضيا.
بالنسبة للنماذج التي تستخدم الدالة `[apply_chunking_to_forward]`، يحدد `chunk_size` عدد التضمينات يتم حساب الإخراج بالتوازي وبالتالي يحدد المقايضة بين حجم الذاكرة والتعقيد الوقت. إذا تم تعيين `chunk_size` إلى `0`، فلن يتم إجراء تجزئة التغذية الأمامية.
@ -173,7 +173,7 @@
<Youtubeid="VFp38yj8h3A"/>
يعمل كل محلل لغوي بشكل مختلف ولكن الآلية الأساسية تبقى كما هي. إليك مثال باستخدام محلل BERT اللغوي، والذي يعد محلل لغوي [WordPiece](https://arxiv.org/pdf/1609.08144.pdf):
يعمل كل محلل لغوي بشكل مختلف ولكن الآلية الأساسية تبقى كما هي. إليك مثال باستخدام محلل BERT اللغوي، والذي يعد محلل لغوي [WordPiece](https://huggingface.co/papers/1609.08144):
توفر مكتبة [🤗 Transformers](https://github.com/huggingface/transformers) مجموعة من النماذج المسبقة التدريب والأدوات لمعالجة اللغات الطبيعية، والرؤية، وما إلى ذلك. على الرغم من أن هذه النماذج تغطي مجموعة واسعة من التطبيقات، فقد تواجه حالات استخدام لا تدعمها المكتبة بشكل افتراضي. يُمكن للتخصيص أن يفتح إمكانيات جديدة، مثل إضافة طبقات جديدة، أو تعديل البنية المعمارية، أو تحسين آليات الانتباه. سيُوضح لك هذا الدليل كيفية تعديل نماذج Transformers الموجودة لتلبية احتياجاتك المحددة. الشيء الرائع هو أنك لست بحاجة إلى الخروج من إطار عمل Transformers لإجراء هذه التغييرات. ي يمكنك تعديل النماذج مباشرةً في Transformers والاستفادة من الميزات مثل [واجهة برمجة التطبيقات Trainer](https://huggingface.co/docs/transformers/main/en/main_classes/trainer)، و [PreTrainedModel](https://huggingface.co/docs/transformers/main/en/main_classes/model#transformers.PreTrainedModel)، والضبط الدقيق الفعال باستخدام أدوات مثل [PEFT](https://huggingface.co/docs/peft/index).
سنرشدك في هذا الدليل لكيفية تخصيص نماذج Transformers الموجودة لتلبية متطلباتك، دون فقدان مزايا الإطار. ستتعلم كيفية:
- تعديل بنية نموذج ما من خلال تغيير آلية الانتباه الخاصة به.
- تطبيق تقنيات مثل Low-Rank Adaptation (LoRA) على مكونات نموذج محددة.
نحن نشجعك على المساهمة باختراقاتك الخاصة ومشاركتها هنا مع المجتمع1
## مثال: تعديل آلية الانتباه في نموذج Segment Anything (SAM)
نموذج **Segment Anything (SAM)** هو نموذج رائد في مجال تجزئة الصور. في تنفيذه الافتراضي، يستخدم SAM إسقاطًا مجمعًا للاستعلام والمفتاح والقيمة (`qkv`) في آلية الانتباه الخاصة به. ومع ذلك، قد ترغب في ضبط مكونات محددة فقط من آلية الانتباه، مثل إسقاطات الاستعلام (`q`) والقيمة (`v`)، لتقليل عدد المعلمات القابلة للتدريب والموارد الحسابية المطلوبة.
### الدافع
من خلال تقسيم الإسقاط المجمع `qkv` إلى إسقاطات منفصلة `q` و `k` و `v`، يمكنك تطبيق تقنيات مثل **LoRA** (Low-Rank Adaptation) على إسقاطي `q` و `v` فقط. يسمح لك هذا بما يلي:
- ضبط عدد أقل من المعلمات، مما يقلل من العبء الحسابي.
- تحقيق أداء أفضل من خلال التركيز على مكونات محددة.
- تجربة استراتيجيات تعديل مختلفة في آلية الانتباه.
### التنفيذ
#### **الخطوة 1: إنشاء فئة اهتمام مخصصة**
بعد ذلك، قم بإنشاء فئة فرعية من فئة `SamVisionAttention` الأصلية وعدلها لتضم إسقاطات `q` و `k` و `v` منفصلة.
- **الإسقاطات المنفصلة:** يتم إزالة الإسقاط المُجمع `qkv`، وإنشاء إسقاطات خطية منفصلة `q` و `k` و `v`.
- **دالة استدعاء تحميل الأوزان:** تقوم طريقة `_split_qkv_load_hook` بتقسيم أوزان `qkv` المسبقة التدريب إلى أوزان `q` و `k` و `v` منفصلة عند تحميل النموذج. يضمن هذا التوافق مع أي نموذج مسبق التدريب.
- **التنفيذ الأمامي:** يتم حساب الاستعلامات والمفاتيح والقيم بشكل منفصل، وتستمر آلية الانتباه كالمعتاد.
#### **الخطوة 2: استبدال فئة الانتباه الأصلية**
استبدل فئة `SamVisionAttention` الأصلية بفئتك المخصصة بحيث يستخدم النموذج آلية الانتباه المعدلة.
- **استبدال الفئة:** من خلال تعيين فئتك المخصصة إلى `modeling_sam.SamVisionAttention`، فإن أي حالات من فئة `SamVisionAttention` في النموذج ستستخدم النسخة المعدلة. وبالتالي، عند استدعاء `SamModel`، سيتم استخدام `SamVisionAttentionSplit` المحددة حديثًا.
- **تحميل النموذج:** يتم تحميل النموذج باستخدام `from_pretrained`، ويتم دمج آلية الانتباه المخصصة.
#### **الخطوة 3: تطبيق LoRA على إسقاطات محددة**
مع وجود إسقاطات `q` و `k` و `v` منفصلة، يمكنك الآن تطبيق LoRA على مكونات محددة، مثل إسقاطات `q` و `v`.
```python
frompeftimportLoraConfig,get_peft_model
config=LoraConfig(
r=16,
lora_alpha=32,
target_modules=["q","v"],# تطبيق LoRA على إسقاطات q و v
lora_dropout=0.1,
task_type="mask-generation"
)
# تطبيق LoRA على النموذج
model=get_peft_model(model,config)
```
**الشرح:**
- **تكوين LoRA:** تحدد `LoraConfig` المرتبة `r`، وعامل القياس `lora_alpha`، والوحدات المستهدفة (`"q"` و `"v"`)، ومعدل التخلي، ونوع المهمة.
- **تطبيق LoRA:** تقوم دالة `get_peft_model` بتطبيق LoRA على الوحدات المحددة في النموذج.
- **تقليل المعلمات:** من خلال التركيز على `q` و `v`، فإنك تقلل عدد المعلمات القابلة للتدريب، مما يؤدي إلى تسريع التدريب وتقليل استخدام الذاكرة.
#### **الخطوة 4: التحقق من عدد المعلمات القابلة للتدريب**
من السهل التحقق من عدد المعلمات القابلة للتدريب ومعرفة تأثير تعديلك.
```python
model.print_trainable_parameters()
```
**الناتج المتوقع:**
```
عدد المعلمات القابلة للتدريب: 608,256 || جميع المعلمات: 94,343,728 || نسبة المعلمات القابلة للتدريب: 0.6447
عدد المعلمات القابلة للتدريب: 912,384 || جميع المعلمات: 94,647,856 || نسبة المعلمات القابلة للتدريب: 0.9640 # مع k
```
## المساهمة بابداعاتك الخاصة
يمكن لتعديل النماذج المسبقة التدريب أن يفتح آفاقًا جديدة للبحث والتطبيق. من خلال فهم وتعديل الآليات الداخلية للنماذج مثل SAM، يمكنك تخصيصها لتلبية احتياجاتك المحددة، وتحسين الأداء، وتجربة أفكار جديدة.
إذا قمت بتطوير تعديﻻتك الخاصة لنماذج Transformers وترغب في مشاركتها، ففكر في المساهمة في هذه الوثيقة.
- **إنشاء طلب سحب (Pull Request):** شارك تغييراتك وتحسيناتك في التعليمات البرمجية مباشرة في المستودع.
- **كتابة التوثيق:** قدم تفسيرات وأمثلة واضحة لتعديلاتك.
- **التفاعل مع المجتمع:** ناقش أفكارك واحصل على تعليقات من المطورين والباحثين الآخرين من خلال فتح مشكلة.
تُحمّل النماذج المُسبقة التدريب وتُخزّن مؤقتًا في: `~/.cache/huggingface/hub`. هذا هو المجلد الافتراضي الذي يُحدده متغير البيئة `TRANSFORMERS_CACHE`. على Windows، يكون دليل ذاكرة التخزين المؤقت الافتراضي هو `C:\Users\username\.cache\huggingface\hub`. يمكنك تغيير متغيرات البيئة shell الموضحة أدناه - حسب الأولوية - لتحديد دليل ذاكرة تخزين مؤقت مختلف:
1. متغير البيئة (افتراضي): `HUGGINGFACE_HUB_CACHE` أو `TRANSFORMERS_CACHE`.
1. متغير البيئة (افتراضي): `HF_HUB_CACHE` أو `TRANSFORMERS_CACHE`.
تحقق نماذج اللغة الكبيرة (LLMs) مثل GPT3/4، [Falcon](https://huggingface.co/tiiuae/falcon-40b)، و [Llama](https://huggingface.co/meta-llama/Llama-2-70b-hf) تقدمًا سريعًا في قدرتها على معالجة المهام التي تركز على الإنسان، مما يجعلها أدوات أساسية في الصناعات القائمة على المعرفة الحديثة.
لا يزال نشر هذه النماذج في المهام الواقعية يمثل تحديًا، ومع ذلك:
- لكي تظهر نماذج اللغة الكبيرة قدرات فهم وتوليد النصوص قريبة من قدرات الإنسان، فإنها تتطلب حاليًا إلى تكوينها من مليارات المعلمات (انظر [كابلان وآخرون](https://arxiv.org/abs/2001.08361)، [وي وآخرون](https://arxiv.org/abs/2206.07682)). وهذا بدوره يزيد من متطلبات الذاكرة للاستدلال.
- لكي تظهر نماذج اللغة الكبيرة قدرات فهم وتوليد النصوص قريبة من قدرات الإنسان، فإنها تتطلب حاليًا إلى تكوينها من مليارات المعلمات (انظر [كابلان وآخرون](https://huggingface.co/papers/2001.08361)، [وي وآخرون](https://huggingface.co/papers/2206.07682)). وهذا بدوره يزيد من متطلبات الذاكرة للاستدلال.
- في العديد من المهام الواقعية، تحتاج نماذج اللغة الكبيرة إلى معلومات سياقية شاملة. يتطلب ذلك قدرة النموذج على إدارة تسلسلات إدخال طويلة للغاية أثناء الاستدلال.
يكمن جوهر صعوبة هذه التحديات في تعزيز القدرات الحسابية والذاكرة لنماذج اللغة الكبيرة، خاصة عند التعامل مع تسلسلات الإدخال الضخمة.
@ -17,7 +17,7 @@
2.**اFlash Attention:** إن Flash Attention وهي نسخة مُعدَّلة من خوارزمية الانتباه التي لا توفر فقط نهجًا أكثر كفاءة في استخدام الذاكرة، ولكنها تحقق أيضًا كفاءة متزايدة بسبب الاستخدام الأمثل لذاكرة GPU.
3.**الابتكارات المعمارية:** حيث تم اقتراح هياكل متخصصة تسمح باستدلال أكثر فعالية نظرًا لأن نماذج اللغة الكبيرة يتم نشرها دائمًا بنفس الطريقة أثناء عملية الاستدلال، أي توليد النص التنبؤي التلقائي مع سياق الإدخال الطويل، فقد تم اقتراح بنيات نموذج متخصصة تسمح بالاستدلال الأكثر كفاءة. أهم تقدم في بنيات النماذج هنا هو [عذر](https://arxiv.org/abs/2108.12409)، [الترميز الدوار](https://arxiv.org/abs/2104.09864)، [الاهتمام متعدد الاستعلامات (MQA)](https://arxiv.org/abs/1911.02150) و [مجموعة الانتباه بالاستعلام (GQA)]((https://arxiv.org/abs/2305.13245)).
3.**الابتكارات المعمارية:** حيث تم اقتراح هياكل متخصصة تسمح باستدلال أكثر فعالية نظرًا لأن نماذج اللغة الكبيرة يتم نشرها دائمًا بنفس الطريقة أثناء عملية الاستدلال، أي توليد النص التنبؤي التلقائي مع سياق الإدخال الطويل، فقد تم اقتراح بنيات نموذج متخصصة تسمح بالاستدلال الأكثر كفاءة. أهم تقدم في بنيات النماذج هنا هو [عذر](https://huggingface.co/papers/2108.12409)، [الترميز الدوار](https://huggingface.co/papers/2104.09864)، [الاهتمام متعدد الاستعلامات (MQA)](https://huggingface.co/papers/1911.02150) و [مجموعة الانتباه بالاستعلام (GQA)]((https://huggingface.co/papers/2305.13245)).
على مدار هذا الدليل، سنقدم تحليلًا للتوليد التنبؤي التلقائي من منظور المُوتِّرات. نتعمق في مزايا وعيوب استخدام دقة أقل، ونقدم استكشافًا شاملاً لخوارزميات الانتباه الأحدث، ونناقش بنيات نماذج نماذج اللغة الكبيرة المحسنة. سندعم الشرح بأمثلة عملية تُبرِز كل تحسين على حدة.
@ -152,8 +152,8 @@ from accelerate.utils import release_memory
release_memory(model)
```
والآن ماذا لو لم يكن لدى وحدة معالجة الرسومات (GPU) لديك 32 جيجا بايت من ذاكرة الفيديو العشوائية (VRAM)؟ لقد وجد أن أوزان النماذج يمكن تحويلها إلى 8 بتات أو 4 بتات دون خسارة كبيرة في الأداء (انظر [Dettmers et al.](https://arxiv.org/abs/2208.07339)).
يمكن تحويل النموذج إلى 3 بتات أو 2 بتات مع فقدان مقبول في الأداء كما هو موضح في ورقة [GPTQ](https://arxiv.org/abs/2210.17323) 🤯.
والآن ماذا لو لم يكن لدى وحدة معالجة الرسومات (GPU) لديك 32 جيجا بايت من ذاكرة الفيديو العشوائية (VRAM)؟ لقد وجد أن أوزان النماذج يمكن تحويلها إلى 8 بتات أو 4 بتات دون خسارة كبيرة في الأداء (انظر [Dettmers et al.](https://huggingface.co/papers/2208.07339)).
يمكن تحويل النموذج إلى 3 بتات أو 2 بتات مع فقدان مقبول في الأداء كما هو موضح في ورقة [GPTQ](https://huggingface.co/papers/2210.17323) 🤯.
دون الدخول في الكثير من التفاصيل، تهدف مخططات التكميم إلى تخفيض دقة الأوزان مع محاولة الحفاظ على دقة نتائج النموذج كما هي (*أي* أقرب ما يمكن إلى bfloat16).
لاحظ أن التكميم يعمل بشكل خاص جيدًا لتوليد النص حيث كل ما نهتم به هو اختيار *مجموعة الرموز الأكثر احتمالًا التالية* ولا نهتم حقًا بالقيم الدقيقة لتوزيع الرمز التالي *logit*.
@ -231,7 +231,7 @@ flush()
دعنا نرى ما هو استهلاك ذاكرة GPU الذروة الذي يوفره تكميم 4 بت. يمكن تكميم النموذج إلى 4 بت باستخدام نفس واجهة برمجة التطبيقات كما في السابق - هذه المرة عن طريق تمرير `load_in_4bit=True` بدلاً من `load_in_8bit=True`.
```python
model = AutoModelForCausalLM.from_pretrained("bigcode/octocoder", load_in_4bit=True, low_cpu_mem_usage=True, pad_token_id=0)
model = AutoModelForCausalLM.from_pretrained("bigcode/octocoder", load_in_4bit=True, pad_token_id=0)
مع تحسن LLMs في فهم النص وتوليد النص، يتم تطبيقها على مهام متزايدة التعقيد. في حين أن النماذج كانت تتعامل سابقًا مع ترجمة أو تلخيص بضع جمل، فإنها الآن تدير صفحات كاملة، مما يتطلب القدرة على معالجة أطوال إدخال واسعة.
كيف يمكننا التخلص من متطلبات الذاكرة الباهظة للتطويلات المدخلة الكبيرة؟ نحن بحاجة إلى طريقة جديدة لحساب آلية الاهتمام الذاتي التي تتخلص من مصفوفة \\( QK^T \\). [طريقه داو وآخرون.](Https://arxiv.org/abs/2205.14135) طوروا بالضبط مثل هذا الخوارزمية الجديدة وأطلقوا عليها اسم **Flash Attention**.
كيف يمكننا التخلص من متطلبات الذاكرة الباهظة للتطويلات المدخلة الكبيرة؟ نحن بحاجة إلى طريقة جديدة لحساب آلية الاهتمام الذاتي التي تتخلص من مصفوفة \\( QK^T \\). [طريقه داو وآخرون.](https://huggingface.co/papers/2205.14135) طوروا بالضبط مثل هذا الخوارزمية الجديدة وأطلقوا عليها اسم **Flash Attention**.
باختصار، يكسر الاهتمام الفلاشي حساب \\( \mathbf{V} \times \operatorname{Softmax}(\mathbf{QK}^T\\)) ويحسب بدلاً من ذلك قطعًا أصغر من الإخراج عن طريق التكرار عبر العديد من خطوات حساب Softmax:
> من خلال تتبع إحصائيات التطبيع softmax واستخدام بعض الرياضيات الذكية، يعطي Flash Attention **مخرجات متطابقة رقميًا** مقارنة بطبقة الاهتمام الذاتي الافتراضية بتكلفة ذاكرة لا تزيد خطيًا مع \\( N \\).
عند النظر إلى الصيغة، قد يقول المرء بديهيًا أن الاهتمام الفلاشي يجب أن يكون أبطأ بكثير مقارنة بصيغة الاهتمام الافتراضية حيث يلزم إجراء المزيد من الحسابات. في الواقع، يتطلب Flash Attention المزيد من عمليات الفاصلة العائمة مقارنة بالاهتمام العادي حيث يجب إعادة حساب إحصائيات التطبيع softmax باستمرار (راجع [الورقة](https://arxiv.org/abs/2205.14135) لمزيد من التفاصيل إذا كنت مهتمًا)
عند النظر إلى الصيغة، قد يقول المرء بديهيًا أن الاهتمام الفلاشي يجب أن يكون أبطأ بكثير مقارنة بصيغة الاهتمام الافتراضية حيث يلزم إجراء المزيد من الحسابات. في الواقع، يتطلب Flash Attention المزيد من عمليات الفاصلة العائمة مقارنة بالاهتمام العادي حيث يجب إعادة حساب إحصائيات التطبيع softmax باستمرار (راجع [الورقة](https://huggingface.co/papers/2205.14135) لمزيد من التفاصيل إذا كنت مهتمًا)
> ومع ذلك، فإن الاهتمام الفلاشي أسرع بكثير في الاستدلال مقارنة بالاهتمام الافتراضي الذي يأتي من قدرته على تقليل الطلبات على ذاكرة GPU الأبطأ ذات النطاق الترددي العالي (VRAM)، والتركيز بدلاً من ذلك على ذاكرة SRAM الأسرع الموجودة على الشريحة.
@ -535,20 +535,20 @@ flush()
لكي يفهم LLM ترتيب الجملة، يلزم وجود *إشارة* إضافية ويتم تطبيقها عادةً في شكل *الترميزات الموضعية* (أو ما يُطلق عليه أيضًا *الترميزات الموضعية*).
لم يتم ترجمة النص الخاص والروابط وأكواد HTML وCSS بناءً على طلبك.
قدم مؤلفو الورقة البحثية [*Attention Is All You Need*](https://arxiv.org/abs/1706.03762) تضمينات موضعية جيبية مثلثية \\( \mathbf{P} = \mathbf{p}_1, \ldots, \mathbf{p}_N \\) حيث يتم حساب كل متجه \\( \mathbf{p}_i \\) كدالة جيبية لموضعه \\( i \\) .
قدم مؤلفو الورقة البحثية [*Attention Is All You Need*](https://huggingface.co/papers/1706.03762) تضمينات موضعية جيبية مثلثية \\( \mathbf{P} = \mathbf{p}_1, \ldots, \mathbf{p}_N \\) حيث يتم حساب كل متجه \\( \mathbf{p}_i \\) كدالة جيبية لموضعه \\( i \\) .
بعد ذلك يتم ببساطة إضافة التضمينات الموضعية إلى متجهات تسلسل الإدخال \\( \mathbf{\hat{X}} = \mathbf{\hat{x}}_1, \ldots, \mathbf{\hat{x}}_N \\) = \\( \mathbf{x}_1 + \mathbf{p}_1, \ldots, \mathbf{x}_N + \mathbf{p}_N \\) وبالتالي توجيه النموذج لتعلم ترتيب الجملة بشكل أفضل.
بدلاً من استخدام التضمينات الموضعية الثابتة، استخدم آخرون (مثل [Devlin et al.](https://arxiv.org/abs/1810.04805)) تضمينات موضعية مكتسبة يتم من خلالها تعلم التضمينات الموضعية \\( \mathbf{P} \\) أثناء التدريب.
بدلاً من استخدام التضمينات الموضعية الثابتة، استخدم آخرون (مثل [Devlin et al.](https://huggingface.co/papers/1810.04805)) تضمينات موضعية مكتسبة يتم من خلالها تعلم التضمينات الموضعية \\( \mathbf{P} \\) أثناء التدريب.
كانت التضمينات الموضعية الجيبية والمكتسبة هي الطرق السائدة لترميز ترتيب الجملة في نماذج اللغة الكبيرة، ولكن تم العثور على بعض المشكلات المتعلقة بهذه التضمينات الموضعية:
1. التضمينات الموضعية الجيبية والمكتسبة هي تضمينات موضعية مطلقة، أي ترميز تضمين فريد لكل معرف موضعي: \\( 0, \ldots, N \\) . كما أظهر [Huang et al.](https://arxiv.org/abs/2009.13658) و [Su et al.](https://arxiv.org/abs/2104.09864)، تؤدي التضمينات الموضعية المطلقة إلى أداء ضعيف لنماذج اللغة الكبيرة للمدخلات النصية الطويلة. بالنسبة للمدخلات النصية الطويلة، يكون من المفيد إذا تعلم النموذج المسافة الموضعية النسبية التي تمتلكها رموز المدخلات إلى بعضها البعض بدلاً من موضعها المطلق.
1. التضمينات الموضعية الجيبية والمكتسبة هي تضمينات موضعية مطلقة، أي ترميز تضمين فريد لكل معرف موضعي: \\( 0, \ldots, N \\) . كما أظهر [Huang et al.](https://huggingface.co/papers/2009.13658) و [Su et al.](https://huggingface.co/papers/2104.09864)، تؤدي التضمينات الموضعية المطلقة إلى أداء ضعيف لنماذج اللغة الكبيرة للمدخلات النصية الطويلة. بالنسبة للمدخلات النصية الطويلة، يكون من المفيد إذا تعلم النموذج المسافة الموضعية النسبية التي تمتلكها رموز المدخلات إلى بعضها البعض بدلاً من موضعها المطلق.
2. عند استخدام التضمينات الموضعية المكتسبة، يجب تدريب نموذج اللغة الكبيرة على طول إدخال ثابت \\( N \\)، مما يجعل من الصعب الاستقراء إلى طول إدخال أطول مما تم تدريبه عليه.
في الآونة الأخيرة، أصبحت التضمينات الموضعية النسبية التي يمكنها معالجة المشكلات المذكورة أعلاه أكثر شعبية، وأبرزها:
يؤكد كل من *RoPE* و *ALiBi* أنه من الأفضل توجيه نموذج اللغة الكبيرة حول ترتيب الجملة مباشرة في خوارزمية الانتباه الذاتي حيث يتم وضع رموز الكلمات في علاقة مع بعضها البعض. على وجه التحديد، يجب توجيه ترتيب الجملة عن طريق تعديل عملية \\( \mathbf{QK}^T \\) .
كبديل، يقترح *ALiBi* مخطط ترميز موضعي نسبي أبسط بكثير. يتم إضافة المسافة النسبية التي تمتلكها رموز المدخلات إلى بعضها البعض كعدد صحيح سلبي مقياس بقيمة محددة مسبقًا `m` إلى كل إدخال استعلام-مفتاح لمصفوفة \\( \mathbf{QK}^T \\) مباشرة قبل حساب softmax.

كما هو موضح في ورقة [ALiBi](https://arxiv.org/abs/2108.12409)، يسمح هذا الترميز الموضعي النسبي البسيط للنموذج بالحفاظ على أداء عالٍ حتى في تسلسلات المدخلات النصية الطويلة جدًا.
كما هو موضح في ورقة [ALiBi](https://huggingface.co/papers/2108.12409)، يسمح هذا الترميز الموضعي النسبي البسيط للنموذج بالحفاظ على أداء عالٍ حتى في تسلسلات المدخلات النصية الطويلة جدًا.
يُستخدم *ALiBi* في العديد من أهم نماذج اللغة الكبيرة المستخدمة اليوم، مثل:
يمكن لكل من ترميزات الموضع *RoPE* و *ALiBi* الاستقراء إلى أطوال إدخال لم يتم ملاحظتها أثناء التدريب، في حين ثبت أن الاستقراء يعمل بشكل أفضل بكثير خارج الصندوق لـ *ALiBi* مقارنة بـ *RoPE*.
بالنسبة لـ ALiBi، ما عليك سوى زيادة قيم مصفوفة الموضع المثلث السفلي لمطابقة طول تسلسل الإدخال.
بالنسبة لـ *RoPE*، يؤدي الحفاظ على نفس \\( \theta \\) الذي تم استخدامه أثناء التدريب إلى نتائج سيئة عند تمرير إدخالات نصية أطول بكثير من تلك التي شوهدت أثناء التدريب، راجع [Press et al.](https://arxiv.org/abs/2108.12409). ومع ذلك، وجد المجتمع بعض الحيل الفعالة التي تقوم بتعديل \\( \theta \\)، مما يسمح لترميزات الموضع *RoPE* بالعمل بشكل جيد لتسلسلات إدخال النص المستقرئة (راجع [هنا](https://github.com/huggingface/transformers/pull/24653)).
بالنسبة لـ *RoPE*، يؤدي الحفاظ على نفس \\( \theta \\) الذي تم استخدامه أثناء التدريب إلى نتائج سيئة عند تمرير إدخالات نصية أطول بكثير من تلك التي شوهدت أثناء التدريب، راجع [Press et al.](https://huggingface.co/papers/2108.12409). ومع ذلك، وجد المجتمع بعض الحيل الفعالة التي تقوم بتعديل \\( \theta \\)، مما يسمح لترميزات الموضع *RoPE* بالعمل بشكل جيد لتسلسلات إدخال النص المستقرئة (راجع [هنا](https://github.com/huggingface/transformers/pull/24653)).
> كل من RoPE و ALiBi عبارة عن ترميزات موضع نسبي *لا* يتم تعلمها أثناء التدريب، ولكن بدلاً من ذلك تستند إلى الحدس التالي:
- يجب إعطاء الإشارات الموضعية حول إدخالات النص مباشرة إلى مصفوفة \\( QK^T \\) لطبقة الاهتمام الذاتي
@ -755,21 +755,21 @@ Roughly 8 مليار قيمة عائمة! يتطلب تخزين 8 مليارات
#### 3.2.2 Multi-Query-Attention (MQA)
[Multi-Query-Attention](https://arxiv.org/abs/1911.02150) اقترحها Noam Shazeer في ورقته *Fast Transformer Decoding: One Write-Head is All You Need*. كما يقول العنوان، اكتشف Noam أنه بدلاً من استخدام `n_head` من أوزان إسقاط القيمة الرئيسية، يمكن استخدام زوج واحد من أوزان إسقاط رأس القيمة التي يتم مشاركتها عبر جميع رؤوس الاهتمام دون أن يتدهور أداء النموذج بشكل كبير.
[Multi-Query-Attention](https://huggingface.co/papers/1911.02150) اقترحها Noam Shazeer في ورقته *Fast Transformer Decoding: One Write-Head is All You Need*. كما يقول العنوان، اكتشف Noam أنه بدلاً من استخدام `n_head` من أوزان إسقاط القيمة الرئيسية، يمكن استخدام زوج واحد من أوزان إسقاط رأس القيمة التي يتم مشاركتها عبر جميع رؤوس الاهتمام دون أن يتدهور أداء النموذج بشكل كبير.
> باستخدام زوج واحد من أوزان إسقاط رأس القيمة، يجب أن تكون متجهات القيمة الرئيسية \\( \mathbf{k}_i، \mathbf{v}_i \\) متطابقة عبر جميع رؤوس الاهتمام والتي بدورها تعني أننا بحاجة فقط إلى تخزين زوج إسقاط قيمة رئيسي واحد في ذاكرة التخزين المؤقت بدلاً من `n_head` منها.
نظرًا لأن معظم LLMs تستخدم ما بين 20 و100 رأس اهتمام، فإن MQA يقلل بشكل كبير من استهلاك الذاكرة لذاكرة التخزين المؤقت key-value. بالنسبة إلى LLM المستخدم في هذا الدفتر، يمكننا تقليل استهلاك الذاكرة المطلوبة من 15 جيجابايت إلى أقل من 400 ميجابايت عند طول تسلسل الإدخال 16000.
بالإضافة إلى توفير الذاكرة، يؤدي MQA أيضًا إلى تحسين الكفاءة الحسابية كما هو موضح في ما يلي.
في فك التشفير التلقائي، يجب إعادة تحميل متجهات القيمة الرئيسية الكبيرة، ودمجها مع زوج متجه القيمة الحالي، ثم إدخالها في \\( \mathbf{q}_c\mathbf{K}^T \\) الحساب في كل خطوة. بالنسبة لفك التشفير التلقائي، يمكن أن تصبح عرض النطاق الترددي للذاكرة المطلوبة لإعادة التحميل المستمر عنق زجاجة زمنيًا خطيرًا. من خلال تقليل حجم متجهات القيمة الرئيسية، يجب الوصول إلى ذاكرة أقل، وبالتالي تقليل عنق الزجاجة في عرض النطاق الترددي للذاكرة. لمزيد من التفاصيل، يرجى إلقاء نظرة على [ورقة Noam](https://arxiv.org/abs/1911.02150).
في فك التشفير التلقائي، يجب إعادة تحميل متجهات القيمة الرئيسية الكبيرة، ودمجها مع زوج متجه القيمة الحالي، ثم إدخالها في \\( \mathbf{q}_c\mathbf{K}^T \\) الحساب في كل خطوة. بالنسبة لفك التشفير التلقائي، يمكن أن تصبح عرض النطاق الترددي للذاكرة المطلوبة لإعادة التحميل المستمر عنق زجاجة زمنيًا خطيرًا. من خلال تقليل حجم متجهات القيمة الرئيسية، يجب الوصول إلى ذاكرة أقل، وبالتالي تقليل عنق الزجاجة في عرض النطاق الترددي للذاكرة. لمزيد من التفاصيل، يرجى إلقاء نظرة على [ورقة Noam](https://huggingface.co/papers/1911.02150).
الجزء المهم الذي يجب فهمه هنا هو أن تقليل عدد رؤوس الاهتمام بالقيمة الرئيسية إلى 1 لا معنى له إلا إذا تم استخدام ذاكرة التخزين المؤقت للقيمة الرئيسية. يظل الاستهلاك الذروي لذاكرة النموذج لمرور واحد للأمام بدون ذاكرة التخزين المؤقت للقيمة الرئيسية دون تغيير لأن كل رأس اهتمام لا يزال لديه متجه استعلام فريد بحيث يكون لكل رأس اهتمام مصفوفة \\( \mathbf{QK}^T \\) مختلفة.
شهدت MQA اعتمادًا واسع النطاق من قبل المجتمع ويتم استخدامها الآن بواسطة العديد من LLMs الأكثر شهرة:
@ -777,7 +777,7 @@ Roughly 8 مليار قيمة عائمة! يتطلب تخزين 8 مليارات
#### 3.2.3 مجموعة الاستعلام الاهتمام (GQA)
[مجموعة الاستعلام الاهتمام](https://arxiv.org/abs/2305.13245)، كما اقترح Ainslie et al. من Google، وجد أن استخدام MQA يمكن أن يؤدي غالبًا إلى تدهور الجودة مقارنة باستخدام إسقاطات رأس القيمة الرئيسية المتعددة. تجادل الورقة بأنه يمكن الحفاظ على أداء النموذج بشكل أكبر عن طريق تقليل عدد أوزان إسقاط رأس الاستعلام بشكل أقل حدة. بدلاً من استخدام وزن إسقاط قيمة رئيسية واحدة فقط، يجب استخدام `n <n_head` أوزان إسقاط قيمة رئيسية. من خلال اختيار `n` إلى قيمة أقل بكثير من `n_head`،مثل2أو4أو8،يمكنالاحتفاظبمعظممكاسبالذاكرةوالسرعةمنMQAمعالتضحيةبقدرأقلمنسعةالنموذجوبالتالي،منالمفترض،أقلأداء.
[مجموعة الاستعلام الاهتمام](https://huggingface.co/papers/2305.13245)، كما اقترح Ainslie et al. من Google، وجد أن استخدام MQA يمكن أن يؤدي غالبًا إلى تدهور الجودة مقارنة باستخدام إسقاطات رأس القيمة الرئيسية المتعددة. تجادل الورقة بأنه يمكن الحفاظ على أداء النموذج بشكل أكبر عن طريق تقليل عدد أوزان إسقاط رأس الاستعلام بشكل أقل حدة. بدلاً من استخدام وزن إسقاط قيمة رئيسية واحدة فقط، يجب استخدام `n <n_head` أوزان إسقاط قيمة رئيسية. من خلال اختيار `n` إلى قيمة أقل بكثير من `n_head`،مثل2أو4أو8،يمكنالاحتفاظبمعظممكاسبالذاكرةوالسرعةمنMQAمعالتضحيةبقدرأقلمنسعةالنموذجوبالتالي،منالمفترض،أقلأداء.
السببفيأنLLMsالضخمةمثلGPT3/4،وLlama-2-70b،وClaude،وPaLMيمكنأنتعملبسرعةكبيرةفيواجهاتالدردشةمثل [Hugging Face Chat](https://huggingface.co/chat/) أوChatGPTيرجعإلىحدكبيرإلىالتحسيناتالمذكورةأعلاهفيالدقةوالخوارزمياتوالهندسةالمعمارية.
منذ إطلاقه في عام 2017، ألهم نموذج [المحول الأصلي](https://arxiv.org/abs/1706.03762) (راجع مدونة [المحول المشروح](http://nlp.seas.harvard.edu/2018/04/03/attention.html) لمقدمة تقنية مبسطة)، ألهم العديد من النماذج الجديدة والمبتكرة التي تتجاوز مهام معالجة اللغات الطبيعية (NLP). هناك نماذج للتنبؤ [بالبنية البروتينات المطوية](https://huggingface.co/blog/deep-learning-with-proteins)، و[تدريب على اتخاذ القرار](https://huggingface.co/blog/train-decision-transformers)، و[التنبؤ بالسلاسل الزمنية](https://huggingface.co/blog/time-series-transformers). مع وجود العديد من متغيرات المحول المتاحة، قد يكون من السهل أن تفوتك الصورة الأكبر. ما تشترك فيه جميع هذه النماذج هو أنها تستند إلى بنية المحول الأصلية. تستخدم بعض النماذج فقط الترميز أو فك الترميز، بينما تستخدم نماذج أخرى كليهما. يوفر هذا تصنيفًا مفيدًا لتصنيف واستعراض الفروقات الرئيسية بين نماذج عائلة المحولات، وسيساعدك على فهم النماذج التي لم تصادفها من قبل.
منذ إطلاقه في عام 2017، ألهم نموذج [المحول الأصلي](https://huggingface.co/papers/1706.03762) (راجع مدونة [المحول المشروح](http://nlp.seas.harvard.edu/2018/04/03/attention.html) لمقدمة تقنية مبسطة)، ألهم العديد من النماذج الجديدة والمبتكرة التي تتجاوز مهام معالجة اللغات الطبيعية (NLP). هناك نماذج للتنبؤ [بالبنية البروتينات المطوية](https://huggingface.co/blog/deep-learning-with-proteins)، و[تدريب على اتخاذ القرار](https://huggingface.co/blog/train-decision-transformers)، و[التنبؤ بالسلاسل الزمنية](https://huggingface.co/blog/time-series-transformers). مع وجود العديد من متغيرات المحول المتاحة، قد يكون من السهل أن تفوتك الصورة الأكبر. ما تشترك فيه جميع هذه النماذج هو أنها تستند إلى بنية المحول الأصلية. تستخدم بعض النماذج فقط الترميز أو فك الترميز، بينما تستخدم نماذج أخرى كليهما. يوفر هذا تصنيفًا مفيدًا لتصنيف واستعراض الفروقات الرئيسية بين نماذج عائلة المحولات، وسيساعدك على فهم النماذج التي لم تصادفها من قبل.
إذا لم تكن على دراية بنموذج المحول الأصلي أو تحتاج إلى تذكير، فراجع الفصل الخاص بـ [كيف تعمل المحولات](https://huggingface.co/course/chapter1/4؟fw=pt) من دورة Hugging Face.
@ -14,7 +14,7 @@
### الشبكة التلافيفية (Convolutional network)
لطالما كانت الشبكات التلافيفية (CNNs) الطريقة السائدة لمهام رؤية الحاسب حتى برز [محول الرؤية](https://arxiv.org/abs/2010.11929) قابليته للتطوير وكفاءته العالية. وحتى بعد ذلك، لا تزال بعض أفضل صفات CNN، مثل ثبات الإزاحة، قوية جدًا (خاصة بالنسبة لمهام معينة) لدرجة أن بعض المحولات تدمج التلافيف في بنيتها. قلب [ConvNeXt](model_doc/convnext) هذا التبادل رأسًا على عقب وأدرج خيارات التصميم من المحولات لتحديث CNN. على سبيل المثال، يستخدم ConvNeXt نوافذ منزلقة غير متداخلة لتقسيم الصورة إلى رقع وزيادة حقل مجال العام الخاص بها. كما يقوم ConvNeXt بعدة خيارات مثل تصميم الطبقة لتكون أكثر كفاءة في الذاكرة وتحسين الأداء، مما يجعله منافسًا قويًا للمحولات!
لطالما كانت الشبكات التلافيفية (CNNs) الطريقة السائدة لمهام رؤية الحاسب حتى برز [محول الرؤية](https://huggingface.co/papers/2010.11929) قابليته للتطوير وكفاءته العالية. وحتى بعد ذلك، لا تزال بعض أفضل صفات CNN، مثل ثبات الإزاحة، قوية جدًا (خاصة بالنسبة لمهام معينة) لدرجة أن بعض المحولات تدمج التلافيف في بنيتها. قلب [ConvNeXt](model_doc/convnext) هذا التبادل رأسًا على عقب وأدرج خيارات التصميم من المحولات لتحديث CNN. على سبيل المثال، يستخدم ConvNeXt نوافذ منزلقة غير متداخلة لتقسيم الصورة إلى رقع وزيادة حقل مجال العام الخاص بها. كما يقوم ConvNeXt بعدة خيارات مثل تصميم الطبقة لتكون أكثر كفاءة في الذاكرة وتحسين الأداء، مما يجعله منافسًا قويًا للمحولات!
### الترميز[[cv-encoder]] (Encoder)
@ -40,7 +40,7 @@
نموذج [BERT](model_doc/bert) هو محوّل (Transformer) يعتمد على الترميز فقط يقوم بشكل عشوائي بإخفاء رموز معينة في المدخلات لتجنب رؤية باقى الرموز الأخرى، مما يسمح له "بالغش". يتمثل هدف التدريب المسبق في التنبؤ بالرمز المخفي بناءً على السياق. يسمح هذا لـ BERT باستخدام السياقات اليمنى واليسرى بالكامل لمساعدته في تعلم تمثيل أعمق وأغنى للبيانات المدخلة. ومع ذلك، كان هناك مجال للتحسين في استراتيجية التدريب المسبق لـ BERT. نموذج [RoBERTa](model_doc/roberta) اضاف تحسين من خلال تقديم وصفة تدريب مسبق جديدة تشمل التدريب لفترة أطول وعلى دفعات أكبر، وإخفاء الرموز عشوائيًا في كل حقبة بدلاً من مرة واحدة فقط أثناء المعالجة المسبقة، وإزالة هدف التنبؤ بالجملة التالية.
تتمثل الاستراتيجية السائدة لتحسين الأداء في زيادة حجم النموذج. ولكن تدريب النماذج الكبيرة مكلف من الناحية الحسابية. إحدى طرق تقليل التكاليف الحسابية هي استخدام نموذج أصغر مثل [DistilBERT](model_doc/distilbert). يستخدم DistilBERT [ تقنية تقطير المعرفة](https://arxiv.org/abs/1503.02531) - وهي تقنية ضغط - لإنشاء نموذج أصغر من BERT مع الحفاظ على معظم قدراته على فهم اللغةا.
تتمثل الاستراتيجية السائدة لتحسين الأداء في زيادة حجم النموذج. ولكن تدريب النماذج الكبيرة مكلف من الناحية الحسابية. إحدى طرق تقليل التكاليف الحسابية هي استخدام نموذج أصغر مثل [DistilBERT](model_doc/distilbert). يستخدم DistilBERT [ تقنية تقطير المعرفة](https://huggingface.co/papers/1503.02531) - وهي تقنية ضغط - لإنشاء نموذج أصغر من BERT مع الحفاظ على معظم قدراته على فهم اللغةا.
مرت معظم نماذج المحول في الاتجاه نحو المزيد من المعلمات، مما أدى إلى ظهور نماذج جديدة تركز على تحسين كفاءة التدريب. يقلّل [ALBERT](model_doc/albert) من استهلاك الذاكرة عن طريق تقليل عدد المعلمات بطريقتين: فصل تضمين المفردات الأكبر إلى مصفوفتين أصغر والسماح للمستويات بمشاركة المعلمات. أضاف [DeBERTa](model_doc/deberta) آلية انتباه منفصلة حيث يتم ترميز الكلمة وموضعها بشكل منفصل في متجهين. يتم حساب الانتباه من هذه المتجهات المنفصلة بدلاً من متجه واحد يحتوي على تضمين الكلمة والموقع. ركز [Longformer](model_doc/longformer) أيضًا على جعل الانتباه أكثر كفاءة، خاصة لمعالجة المستندات ذات تسلسلات أطولل. فهو يستخدم مزيجًا من انتباه النوافذ المحلية (يتم حساب الانتباه فقط ن نافذة ذات حجم ثابت حول كل رمز) والانتباه العام (فقط لرموز مهمة محددة مثل `[CLS]` للتصنيف) لإنشاء مصفوفة انتباه متفرقة بدلاً من مصفوفة انتباه كاملة.
مكتبة `transformers` هي إطار عمل ذو فلسفة محدد؛ يتم تعريف فلسفتنا في [الدليل المفاهيمي](./philosophy).
جوهر هذه الفلسفة يتمثل في مبدأ [نموذج واحد، ملف واحد](https://huggingface.co/blog/transformers-design-philosophy)
في المكتبة. الجانب السلبي لهذا المكون هو تقييده لوراثة واستيراد مكونات الملفات.
نتيجة لذلك، تتكرر مكونات النموذج عبر العديد من الملفات. يحتوي `transformers` على عدد كبير من طبقات الانتباه، يقارب عدد النماذج، والكثير منها متطابق. يتسبب هذا في تباعد عمليات التنفيذ المستقلة مع تطبيق الإصلاحات والتغييرات.
على أجزاء محددة من التعليمات البرمجية.
ولمعالجة ذلك، اعتمدنا مفهوم "النسخ" في المكتبة. فبإضافة تعليق يُشير إلى أن التعليمات البرمجية هي نسخة من أخرى، نضمن من خلال أنظمة CI والأوامر المحلية عدم تباعد النسخ. لكن هذه العملية، رغم بساطتها، تُسبب إرهاقاً. كما أنها تزيد العبء على المساهمين، وهو ما نهدف إلى تجاوزه.
غالباً ما تتطلب مساهمات النماذج إضافة تعليمات برمجية (حوالي 1000 سطر)، ومعالج (حوالي 500 سطر)، واختبارات، ووثائق، إلخ. ونادراً ما تقل مساهمات النماذج عن 3000-5000 سطر من التعليمات البرمجية، معظمها أكواد نمطية. هذا يرفع مستوى المساهمات،
ونهدف مع المحولات النمطية إلى خفض هذا المستوى إلى حدّ مقبول.
## ما هو؟
تقدم المحولات النمطية مفهوم ملف "نمطي" لمجلد نموذج. يقبل هذا الملف النمطي تعليمات برمجية
غير مقبولة عادة في ملفات النمذجة/المعالجة، حيث يسمح بالاستيراد من نماذج مجاورة وكذلك
الوراثة من الفئات إلى فئات أخرى.
يعرّف هذا الملف النمطي النماذج والمعالجات وفئة التكوين التي سيتم تعريفها في وحداتهم
المتعلقة.
وأخيرًا، يقدم هذا الميزة أداة `linter` جديدة والتي ستعمل على "تفكيك" الملف النمطي إلى بنية "نموذج واحد، ملف واحد"
هيكل الدليل. سيتم إنشاء هذه الملفات تلقائيًا في كل مرة يتم فيها تشغيل البرنامج النصي؛ مما يقلل من المساهمات المطلوبة
إلى الملف النمطي، وبالتالي فقط إلى التغييرات بين النموذج المساهم والنماذج الأخرى.
سيقوم مستخدمو النموذج في النهاية باستيراد واستخدام واجهة الملف الواحد، لذا لا يتوقع حدوث أي تغيير هنا. من خلال القيام بذلك،
نأمل في الجمع بين أفضل ما في العالمين: تمكين المساهمات البسيطة مع الالتزام بفلسفتنا.
لذلك، هذا بديل لعلامات `# Copied from`، ويمكن توقع انتقال النماذج المساهمة سابقًا إلى
تنسيق المحولات النمطية الجديد في الأشهر المقبلة.
### التفاصيل
تُبسط أداة "linter" الوراثة، مُنشئةً جميع الملفات المفردة من الملف النمطي، مع الحفاظ على شفافيتها أمام مستخدمي Python. حاليًا، تُبسط الأداة مستوىً واحدًا من الوراثة
على سبيل المثال:
- إذا ورثت فئة التكوين من فئة أخرى وأضافت/حذفت معامل، فسيتم إما الإشارة إلى الملف المولد مباشرةً
(في حالة الإضافة) أو إزالته تمامًا (في حالة الحذف).
- إذا ورثت فئة من فئة أخرى، على سبيل المثال: `class GemmaModel(LlamaModel):`، تُستنتج التبعيات تلقائيًا
سيتم استنتاج جميع الوحدات الفرعية تلقائيًا من الفئة الأصلية.
- إذا قمت بتعريف وظائف جديدة في الملف `modular` واستخدمتها داخل الفئات، فستستنتج أداة linter ذلك تلقائيًا
يجب أن تكون قادرًا على كتابة كل شيء (المجزىء اللغوي، ومُعالِج الصور، والنموذج، والتكوين) في الملف `modular`، وسيتم إنشاء الملفات المُقابلة تلقائيًا.
### التطبيق
[TODO] نقدم اختبارًا جديدًا، للتأكد من أن المحتوى المولد يتطابق مع ما هو موجود في `modular_xxxx.py`
### الأمثلة
هنا مثال سريع باستخدام BERT و RoBERTa. النموذجان مرتبطان ارتباطًا وثيقًا: يختلف تنفيذهما النموذجي في طبقة تضمين.
بدلاً من إعادة تعريف النموذج بالكامل، إليك كيف يبدو ملف `modular_roberta.py` لفئات النمذجة والتكوين (لأغراض المثال، يتم تجاهل المجزىء اللغوي في هذا الوقت حيث أنه مختلف جدًا).
```python
fromtorchimportnn
from..bert.configuration_bertimportBertConfig
from..bert.modeling_bertimport(
BertModel,
BertEmbeddings,
BertForMaskedLM
)
# تكوين RoBERTa مطابق لتكوين BERT
classRobertaConfig(BertConfig):
model_type='roberta'
# نعيد تعريف الإضافات هنا لتسليط الضوء على اختلاف معرف الحشو، ونعيد تعريف الإضافات الموضعية
| [جولة سريعة في المكتبة](https://github.com/huggingface/notebooks/blob/main/transformers_doc/en/quicktour.ipynb) | عرض لمختلف واجهات برمجة التطبيقات في Transformers |[](https://colab.research.google.com/github/huggingface/notebooks/blob/main/transformers_doc/en/quicktour.ipynb)| [](https://studiolab.sagemaker.aws/import/github/huggingface/notebooks/blob/main/en/transformers_doc/quicktour.ipynb)|
| [ملخص المهام](https://github.com/huggingface/notebooks/blob/main/transformers_doc/en/task_summary.ipynb) | كيفية تشغيل نماذج مكتبة Transformers مهمة تلو الأخرى |[](https://colab.research.google.com/github/huggingface/notebooks/blob/main/transformers_doc/en/task_summary.ipynb)| [](https://studiolab.sagemaker.aws/import/github/huggingface/notebooks/blob/main/transformers_doc/en/task_summary.ipynb)|
| [معالجة البيانات مسبقًا](https://github.com/huggingface/notebooks/blob/main/transformers_doc/en/preprocessing.ipynb) | كيفية استخدام محلل لغوي لمعالجة بياناتك مسبقًا |[](https://colab.research.google.com/github/huggingface/notebooks/blob/main/transformers_doc/en/preprocessing.ipynb)| [](https://studiolab.sagemaker.aws/import/github/huggingface/notebooks/blob/main/transformers_doc/en/preprocessing.ipynb)|
| [الضبط الدقيق لنموذج مُدرَّب مسبقًا](https://github.com/huggingface/notebooks/blob/main/transformers_doc/en/training.ipynb) | كيفية استخدام المدرب لضبط نموذج مُدرَّب مسبقًا بدقة |[](https://colab.research.google.com/github/huggingface/notebooks/blob/main/transformers_doc/en/training.ipynb)| [](https://studiolab.sagemaker.aws/import/github/huggingface/notebooks/blob/main/transformers_doc/en/training.ipynb)|
| [ملخص للمحللات اللغوية](https://github.com/huggingface/notebooks/blob/main/transformers_doc/en/tokenizer_summary.ipynb) | الاختلافات بين خوارزمية المحلل اللغوي |[](https://colab.research.google.com/github/huggingface/notebooks/blob/main/transformers_doc/en/tokenizer_summary.ipynb)| [](https://studiolab.sagemaker.aws/import/github/huggingface/notebooks/blob/main/transformers_doc/en/tokenizer_summary.ipynb)|
| [النماذج متعددة اللغات](https://github.com/huggingface/notebooks/blob/main/transformers_doc/en/multilingual.ipynb) | كيفية استخدام النماذج متعددة اللغات للمكتبة |[](https://colab.research.google.com/github/huggingface/notebooks/blob/main/transformers_doc/en/multilingual.ipynb)| [](https://studiolab.sagemaker.aws/import/github/huggingface/notebooks/blob/main/transformers_doc/en/multilingual.ipynb)|
| [تدريب محللك اللغوي](https://github.com/huggingface/notebooks/blob/main/examples/tokenizer_training.ipynb) | كيفية تدريب واستخدام محللك اللغوي الخاص بك |[](https://colab.research.google.com/github/huggingface/notebooks/blob/main/examples/tokenizer_training.ipynb)| [](https://studiolab.sagemaker.aws/import/github/huggingface/notebooks/blob/main/examples/tokenizer_training.ipynb)|
| [تدريب نموذج لغتك](https://github.com/huggingface/notebooks/blob/main/examples/language_modeling_from_scratch.ipynb) | كيفية البدء بسهولة في استخدام المحولات |[](https://colab.research.google.com/github/huggingface/notebooks/blob/main/examples/language_modeling_from_scratch.ipynb)| [](https://studiolab.sagemaker.aws/import/github/huggingface/notebooks/blob/main/examples/language_modeling_from_scratch.ipynb)|
| [كيفية ضبط نموذج بدقة على تصنيف النص](https://github.com/huggingface/notebooks/blob/main/examples/text_classification.ipynb)| يوضح كيفية معالجة البيانات مسبقًا وضبط نموذج مُدرَّب مسبقًا بدقة على أي مهمة GLUE. | [](https://colab.research.google.com/github/huggingface/notebooks/blob/main/examples/text_classification.ipynb)| [](https://studiolab.sagemaker.aws/import/github/huggingface/notebooks/blob/main/examples/text_classification.ipynb)|
| [كيفية ضبط نموذج بدقة على النمذجة اللغوية](https://github.com/huggingface/notebooks/blob/main/examples/language_modeling.ipynb)| يوضح كيفية معالجة البيانات مسبقًا وضبط نموذج مُدرَّب مسبقًا بدقة على مهمة LM سببية أو مقنعة. | [](https://colab.research.google.com/github/huggingface/notebooks/blob/main/examples/language_modeling.ipynb)| [](https://studiolab.sagemaker.aws/import/github/huggingface/notebooks/blob/main/examples/language_modeling.ipynb)|
| [كيفية ضبط نموذج بدقة على تصنيف الرموز المميزة](https://github.com/huggingface/notebooks/blob/main/examples/token_classification.ipynb)| يوضح كيفية معالجة البيانات مسبقًا وضبط نموذج مُدرَّب مسبقًا بدقة على مهمة تصنيف الرموز المميزة (NER، PoS). | [](https://colab.research.google.com/github/huggingface/notebooks/blob/main/examples/token_classification.ipynb)| [](https://studiolab.sagemaker.aws/import/github/huggingface/notebooks/blob/main/examples/token_classification.ipynb)|
| [كيفية ضبط نموذج بدقة على الإجابة على الأسئلة](https://github.com/huggingface/notebooks/blob/main/examples/question_answering.ipynb)| يوضح كيفية معالجة البيانات مسبقًا وضبط نموذج مُدرَّب مسبقًا بدقة على SQUAD. | [](https://colab.research.google.com/github/huggingface/notebooks/blob/main/examples/question_answering.ipynb)| [](https://studiolab.sagemaker.aws/import/github/huggingface/notebooks/blob/main/examples/question_answering.ipynb)|
| [كيفية ضبط نموذج بدقة على الاختيار من متعدد](https://github.com/huggingface/notebooks/blob/main/examples/multiple_choice.ipynb)| يوضح كيفية معالجة البيانات مسبقًا وضبط نموذج مُدرَّب مسبقًا بدقة على SWAG. | [](https://colab.research.google.com/github/huggingface/notebooks/blob/main/examples/multiple_choice.ipynb)| [](https://studiolab.sagemaker.aws/import/github/huggingface/notebooks/blob/main/examples/multiple_choice.ipynb)|
| [كيفية ضبط نموذج بدقة على الترجمة](https://github.com/huggingface/notebooks/blob/main/examples/translation.ipynb)| يوضح كيفية معالجة البيانات مسبقًا وضبط نموذج مُدرَّب مسبقًا بدقة على WMT. | [](https://colab.research.google.com/github/huggingface/notebooks/blob/main/examples/translation.ipynb)| [](https://studiolab.sagemaker.aws/import/github/huggingface/notebooks/blob/main/examples/translation.ipynb)|
| [كيفية ضبط نموذج بدقة على التلخيص](https://github.com/huggingface/notebooks/blob/main/examples/summarization.ipynb)| يوضح كيفية معالجة البيانات مسبقًا وضبط نموذج مُدرَّب مسبقًا بدقة على XSUM. | [](https://colab.research.google.com/github/huggingface/notebooks/blob/main/examples/summarization.ipynb)| [](https://studiolab.sagemaker.aws/import/github/huggingface/notebooks/blob/main/examples/summarization.ipynb)|
| [كيفية تدريب نموذج لغة من البداية](https://github.com/huggingface/blog/blob/main/notebooks/01_how_to_train.ipynb)| تسليط الضوء على جميع الخطوات لتدريب نموذج Transformer بشكل فعال على بيانات مخصصة | [](https://colab.research.google.com/github/huggingface/blog/blob/main/notebooks/01_how_to_train.ipynb)| [](https://studiolab.sagemaker.aws/import/github/huggingface/blog/blob/main/notebooks/01_how_to_train.ipynb)|
| [كيفية إنشاء نص](https://github.com/huggingface/blog/blob/main/notebooks/02_how_to_generate.ipynb)| كيفية استخدام أساليب فك التشفير المختلفة لإنشاء اللغة باستخدام المحولات | [](https://colab.research.google.com/github/huggingface/blog/blob/main/notebooks/02_how_to_generate.ipynb)| [](https://studiolab.sagemaker.aws/import/github/huggingface/blog/blob/main/notebooks/02_how_to_generate.ipynb)|
| [كيفية إنشاء نص (مع قيود)](https://github.com/huggingface/blog/blob/main/notebooks/53_constrained_beam_search.ipynb)| كيفية توجيه إنشاء اللغة باستخدام القيود التي يوفرها المستخدم | [](https://colab.research.google.com/github/huggingface/blog/blob/main/notebooks/53_constrained_beam_search.ipynb)| [](https://studiolab.sagemaker.aws/import/github/huggingface/blog/blob/main/notebooks/53_constrained_beam_search.ipynb)|
| [Reformer](https://github.com/huggingface/blog/blob/main/notebooks/03_reformer.ipynb)| كيف يدفع Reformer حدود النمذجة اللغوية | [](https://colab.research.google.com/github/patrickvonplaten/blog/blob/main/notebooks/03_reformer.ipynb)| [](https://studiolab.sagemaker.aws/import/github/patrickvonplaten/blog/blob/main/notebooks/03_reformer.ipynb)|
| [كيفية ضبط نموذج بدقة على تصنيف الصور (Torchvision)](https://github.com/huggingface/notebooks/blob/main/examples/image_classification.ipynb) | يوضح كيفية معالجة البيانات مسبقًا باستخدام Torchvision وضبط أي نموذج رؤية مُدرَّب مسبقًا بدقة على تصنيف الصور | [](https://colab.research.google.com/github/huggingface/notebooks/blob/main/examples/image_classification.ipynb) | [](https://studiolab.sagemaker.aws/import/github/huggingface/notebooks/blob/main/examples/image_classification.ipynb)|
| [كيفية ضبط نموذج بدقة على تصنيف الصور (Albumentations)](https://github.com/huggingface/notebooks/blob/main/examples/image_classification_albumentations.ipynb) | يوضح كيفية معالجة البيانات مسبقًا باستخدام Albumentations وضبط أي نموذج رؤية مُدرَّب مسبقًا بدقة على تصنيف الصور | [](https://colab.research.google.com/github/huggingface/notebooks/blob/main/examples/image_classification_albumentations.ipynb) | [](https://studiolab.sagemaker.aws/import/github/huggingface/notebooks/blob/main/examples/image_classification_albumentations.ipynb)|
| [كيفية ضبط نموذج بدقة على تصنيف الصور (Kornia)](https://github.com/huggingface/notebooks/blob/main/examples/image_classification_kornia.ipynb) | يوضح كيفية معالجة البيانات مسبقًا باستخدام Kornia وضبط أي نموذج رؤية مُدرَّب مسبقًا بدقة على تصنيف الصور | [](https://colab.research.google.com/github/huggingface/notebooks/blob/main/examples/image_classification_kornia.ipynb) | [](https://studiolab.sagemaker.aws/import/github/huggingface/notebooks/blob/main/examples/image_classification_kornia.ipynb)|
| [كيفية إجراء الكشف عن الأشياء بدون لقطات مع OWL-ViT](https://github.com/huggingface/notebooks/blob/main/examples/zeroshot_object_detection_with_owlvit.ipynb) | يوضح كيفية إجراء الكشف عن الأشياء بدون لقطات على الصور باستخدام استعلامات نصية | [](https://colab.research.google.com/github/huggingface/notebooks/blob/main/examples/zeroshot_object_detection_with_owlvit.ipynb)| [](https://studiolab.sagemaker.aws/import/github/huggingface/notebooks/blob/main/examples/zeroshot_object_detection_with_owlvit.ipynb)|
| [كيفية ضبط نموذج وصف الصور بدقة](https://github.com/huggingface/notebooks/blob/main/examples/image_captioning_blip.ipynb) | يوضح كيفية ضبط BLIP بدقة لوصف الصور على مجموعة بيانات مخصصة | [](https://colab.research.google.com/github/huggingface/notebooks/blob/main/examples/image_captioning_blip.ipynb) | [](https://studiolab.sagemaker.aws/import/github/huggingface/notebooks/blob/main/examples/image_captioning_blip.ipynb)|
| [كيفية بناء نظام تشابه الصور مع Transformers](https://github.com/huggingface/notebooks/blob/main/examples/image_similarity.ipynb) | يوضح كيفية بناء نظام تشابه الصور | [](https://colab.research.google.com/github/huggingface/notebooks/blob/main/examples/image_similarity.ipynb) | [](https://studiolab.sagemaker.aws/import/github/huggingface/notebooks/blob/main/examples/image_similarity.ipynb)|
| [كيفية ضبط نموذج SegFormer بدقة على التجزئة الدلالية](https://github.com/huggingface/notebooks/blob/main/examples/semantic_segmentation.ipynb) | يوضح كيفية معالجة البيانات مسبقًا وضبط نموذج SegFormer مُدرَّب مسبقًا بدقة على التجزئة الدلالية | [](https://colab.research.google.com/github/huggingface/notebooks/blob/main/examples/semantic_segmentation.ipynb) | [](https://studiolab.sagemaker.aws/import/github/huggingface/notebooks/blob/main/examples/semantic_segmentation.ipynb)|
| [كيفية ضبط نموذج VideoMAE بدقة على تصنيف الفيديو](https://github.com/huggingface/notebooks/blob/main/examples/video_classification.ipynb) | يوضح كيفية معالجة البيانات مسبقًا وضبط نموذج VideoMAE مُدرَّب مسبقًا بدقة على تصنيف الفيديو | [](https://colab.research.google.com/github/huggingface/notebooks/blob/main/examples/video_classification.ipynb) | [](https://studiolab.sagemaker.aws/import/github/huggingface/notebooks/blob/main/examples/video_classification.ipynb)|
| [كيفية ضبط نموذج التعرف على الكلام باللغة الإنجليزية بدقة](https://github.com/huggingface/notebooks/blob/main/examples/speech_recognition.ipynb)| يوضح كيفية معالجة البيانات مسبقًا وضبط نموذج كلام مُدرَّب مسبقًا بدقة على TIMIT | [](https://colab.research.google.com/github/huggingface/notebooks/blob/main/examples/speech_recognition.ipynb)| [](https://studiolab.sagemaker.aws/import/github/huggingface/notebooks/blob/main/examples/speech_recognition.ipynb)|
| [كيفية ضبط نموذج التعرف على الكلام بأي لغة بدقة](https://github.com/huggingface/notebooks/blob/main/examples/multi_lingual_speech_recognition.ipynb)| يوضح كيفية معالجة البيانات مسبقًا وضبط نموذج كلام مُدرَّب مسبقًا متعدد اللغات بدقة على Common Voice | [](https://colab.research.google.com/github/huggingface/notebooks/blob/main/examples/multi_lingual_speech_recognition.ipynb)| [](https://studiolab.sagemaker.aws/import/github/huggingface/notebooks/blob/main/examples/multi_lingual_speech_recognition.ipynb)|
| [كيفية ضبط نموذج بدقة على تصنيف الصوت](https://github.com/huggingface/notebooks/blob/main/examples/audio_classification.ipynb)| يوضح كيفية معالجة البيانات مسبقًا وضبط نموذج كلام مُدرَّب مسبقًا بدقة على Keyword Spotting | [](https://colab.research.google.com/github/huggingface/notebooks/blob/main/examples/audio_classification.ipynb)| [](https://studiolab.sagemaker.aws/import/github/huggingface/notebooks/blob/main/examples/audio_classification.ipynb)|
| [كيفية ضبط نموذج بروتين مُدرَّب مسبقًا بدقة](https://github.com/huggingface/notebooks/blob/main/examples/protein_language_modeling.ipynb) | شاهد كيفية ترميز البروتينات وضبط نموذج "لغة" بروتين مُدرَّب مسبقًا كبير بدقة | [](https://colab.research.google.com/github/huggingface/notebooks/blob/main/examples/protein_language_modeling.ipynb) | [](https://studiolab.sagemaker.aws/import/github/huggingface/notebooks/blob/main/examples/protein_language_modeling.ipynb) |
| [كيفية إنشاء طيات بروتينية](https://github.com/huggingface/notebooks/blob/main/examples/protein_folding.ipynb) | شاهد كيفية الانتقال من تسلسل البروتين إلى نموذج بروتين كامل وملف PDB | [](https://colab.research.google.com/github/huggingface/notebooks/blob/main/examples/protein_folding.ipynb) | [](https://studiolab.sagemaker.aws/import/github/huggingface/notebooks/blob/main/examples/protein_folding.ipynb) |
| [كيفية ضبط نموذج محول النيوكليوتيدات بدقة](https://github.com/huggingface/notebooks/blob/main/examples/nucleotide_transformer_dna_sequence_modelling.ipynb) | شاهد كيفية ترميز الحمض النووي وضبط نموذج "لغة" الحمض النووي مُدرَّب مسبقًا كبير بدقة | [](https://colab.research.google.com/github/huggingface/notebooks/blob/main/examples/nucleotide_transformer_dna_sequence_modelling.ipynb) | [](https://studiolab.sagemaker.aws/import/github/huggingface/notebooks/blob/main/examples/nucleotide_transformer_dna_sequence_modelling.ipynb) |
| [ضبط نموذج محول النيوكليوتيدات بدقة باستخدام LoRA](https://github.com/huggingface/notebooks/blob/main/examples/nucleotide_transformer_dna_sequence_modelling_with_peft.ipynb) | تدريب نماذج DNA أكبر بكثير بطريقة فعالة من حيث الذاكرة | [](https://colab.research.google.com/github/huggingface/notebooks/blob/main/examples/nucleotide_transformer_dna_sequence_modelling_with_peft.ipynb) | [](https://studiolab.sagemaker.aws/import/github/huggingface/notebooks/blob/main/examples/nucleotide_transformer_dna_sequence_modelling_with_peft.ipynb) |
| [التنبؤ الاحتمالي بالسلاسل الزمنية](https://github.com/huggingface/notebooks/blob/main/examples/time-series-transformers.ipynb) | شاهد كيفية تدريب Time Series Transformer على مجموعة بيانات مخصصة | [](https://colab.research.google.com/github/huggingface/notebooks/blob/main/examples/time-series-transformers.ipynb) | [](https://studiolab.sagemaker.aws/import/github/huggingface/notebooks/blob/main/examples/time-series-transformers.ipynb) |
| [كيفية تصدير النموذج إلى ONNX](https://github.com/huggingface/notebooks/blob/main/examples/onnx-export.ipynb)| تسليط الضوء على كيفية التصدير وتشغيل أعباء عمل الاستدلال من خلال ONNX | [](https://colab.research.google.com/github/huggingface/notebooks/blob/main/examples/onnx-export.ipynb)| [](https://studiolab.sagemaker.aws/import/github/huggingface/notebooks/blob/main/examples/onnx-export.ipynb)|
| [كيفية استخدام المعايير](https://github.com/huggingface/notebooks/blob/main/examples/benchmark.ipynb)| كيفية قياس أداء النماذج باستخدام المحولات | [](https://colab.research.google.com/github/huggingface/notebooks/blob/main/examples/benchmark.ipynb)| [](https://studiolab.sagemaker.aws/import/github/huggingface/notebooks/blob/main/examples/benchmark.ipynb)|
| [تدريب محللك اللغوي](https://github.com/huggingface/notebooks/blob/main/examples/tokenizer_training.ipynb) | كيفية تدريب واستخدام محللك اللغوي الخاص بك |[](https://colab.research.google.com/github/huggingface/notebooks/blob/main/examples/tokenizer_training.ipynb)| [](https://studiolab.sagemaker.aws/import/github/huggingface/notebooks/blob/main/examples/tokenizer_training.ipynb)|
| [تدريب نموذج لغتك](https://github.com/huggingface/notebooks/blob/main/examples/language_modeling_from_scratch-tf.ipynb) | كيفية البدء بسهولة في استخدام المحولات |[](https://colab.research.google.com/github/huggingface/notebooks/blob/main/examples/language_modeling_from_scratch-tf.ipynb)| [](https://studiolab.sagemaker.aws/import/github/huggingface/notebooks/blob/main/examples/language_modeling_from_scratch-tf.ipynb)|
| [كيفية ضبط نموذج بدقة على تصنيف النص](https://github.com/huggingface/notebooks/blob/main/examples/text_classification-tf.ipynb)| يوضح كيفية معالجة البيانات مسبقًا وضبط نموذج مُدرَّب مسبقًا بدقة على أي مهمة GLUE. | [](https://colab.research.google.com/github/huggingface/notebooks/blob/main/examples/text_classification-tf.ipynb)| [](https://studiolab.sagemaker.aws/import/github/huggingface/notebooks/blob/main/examples/text_classification-tf.ipynb)|
| [كيفية ضبط نموذج بدقة على النمذجة اللغوية](https://github.com/huggingface/notebooks/blob/main/examples/language_modeling-tf.ipynb)| يوضح كيفية معالجة البيانات مسبقًا وضبط نموذج مُدرَّب مسبقًا بدقة على مهمة LM سببية أو مقنعة. | [](https://colab.research.google.com/github/huggingface/notebooks/blob/main/examples/language_modeling-tf.ipynb)| [](https://studiolab.sagemaker.aws/import/github/huggingface/notebooks/blob/main/examples/language_modeling-tf.ipynb)|
| [كيفية ضبط نموذج بدقة على تصنيف الرموز المميزة](https://github.com/huggingface/notebooks/blob/main/examples/token_classification-tf.ipynb)| يوضح كيفية معالجة البيانات مسبقًا وضبط نموذج مُدرَّب مسبقًا بدقة على مهمة تصنيف الرموز المميزة (NER، PoS). | [](https://colab.research.google.com/github/huggingface/notebooks/blob/main/examples/token_classification-tf.ipynb)| [](https://studiolab.sagemaker.aws/import/github/huggingface/notebooks/blob/main/examples/token_classification-tf.ipynb)|
| [كيفية ضبط نموذج بدقة على الإجابة على الأسئلة](https://github.com/huggingface/notebooks/blob/main/examples/question_answering-tf.ipynb)| يوضح كيفية معالجة البيانات مسبقًا وضبط نموذج مُدرَّب مسبقًا بدقة على SQUAD. | [](https://colab.research.google.com/github/huggingface/notebooks/blob/main/examples/question_answering-tf.ipynb)| [](https://studiolab.sagemaker.aws/import/github/huggingface/notebooks/blob/main/examples/question_answering-tf.ipynb)|
| [كيفية ضبط نموذج بدقة على الاختيار من متعدد](https://github.com/huggingface/notebooks/blob/main/examples/multiple_choice-tf.ipynb)| يوضح كيفية معالجة البيانات مسبقًا وضبط نموذج مُدرَّب مسبقًا بدقة على SWAG. | [](https://colab.research.google.com/github/huggingface/notebooks/blob/main/examples/multiple_choice-tf.ipynb)| [](https://studiolab.sagemaker.aws/import/github/huggingface/notebooks/blob/main/examples/multiple_choice-tf.ipynb)|
| [كيفية ضبط نموذج بدقة على الترجمة](https://github.com/huggingface/notebooks/blob/main/examples/translation-tf.ipynb)| يوضح كيفية معالجة البيانات مسبقًا وضبط نموذج مُدرَّب مسبقًا بدقة على WMT. | [](https://colab.research.google.com/github/huggingface/notebooks/blob/main/examples/translation-tf.ipynb)| [](https://studiolab.sagemaker.aws/import/github/huggingface/notebooks/blob/main/examples/translation-tf.ipynb)|
| [كيفية ضبط نموذج بدقة على التلخيص](https://github.com/huggingface/notebooks/blob/main/examples/summarization-tf.ipynb)| يوضح كيفية معالجة البيانات مسبقًا وضبط نموذج مُدرَّب مسبقًا بدقة على XSUM. | [](https://colab.research.google.com/github/huggingface/notebooks/blob/main/examples/summarization-tf.ipynb)| [](https://studiolab.sagemaker.aws/import/github/huggingface/notebooks/blob/main/examples/summarization-tf.ipynb)|
| [كيفية ضبط نموذج بدقة على تصنيف الصور](https://github.com/huggingface/notebooks/blob/main/examples/image_classification-tf.ipynb) | يوضح كيفية معالجة البيانات مسبقًا وضبط أي نموذج رؤية مُدرَّب مسبقًا بدقة على تصنيف الصور | [](https://colab.research.google.com/github/huggingface/notebooks/blob/main/examples/image_classification-tf.ipynb)| [](https://studiolab.sagemaker.aws/import/github/huggingface/notebooks/blob/main/examples/image_classification-tf.ipynb)|
| [كيفية ضبط نموذج SegFormer بدقة على التجزئة الدلالية](https://github.com/huggingface/notebooks/blob/main/examples/semantic_segmentation-tf.ipynb) | يوضح كيفية معالجة البيانات مسبقًا وضبط نموذج SegFormer مُدرَّب مسبقًا بدقة على التجزئة الدلالية | [](https://colab.research.google.com/github/huggingface/notebooks/blob/main/examples/semantic_segmentation-tf.ipynb)| [](https://studiolab.sagemaker.aws/import/github/huggingface/notebooks/blob/main/examples/semantic_segmentation-tf.ipynb)|
| [كيفية تدريب نماذج TF/Keras على TPU](https://github.com/huggingface/notebooks/blob/main/examples/tpu_training-tf.ipynb) | شاهد كيفية التدريب بسرعة عالية على أجهزة TPU من Google | [](https://colab.research.google.com/github/huggingface/notebooks/blob/main/examples/tpu_training-tf.ipynb) | [](https://studiolab.sagemaker.aws/import/github/huggingface/notebooks/blob/main/examples/tpu_training-tf.ipynb) |
### دفاتر ملاحظات Optimum
🤗 [Optimum](https://github.com/huggingface/optimum) هو امتداد لـ 🤗 Transformers، يوفر مجموعة من أدوات تحسين الأداء التي تمكن من تحقيق أقصى قدر من الكفاءة لتدريب وتشغيل النماذج على الأجهزة المستهدفة.
| [كيفية تكميم نموذج باستخدام ONNX Runtime لتصنيف النص](https://github.com/huggingface/notebooks/blob/main/examples/text_classification_quantization_ort.ipynb)| يوضح كيفية تطبيق التكميم الثابت والديناميكي على نموذج باستخدام [ONNX Runtime](https://github.com/microsoft/onnxruntime) لأي مهمة GLUE. | [](https://colab.research.google.com/github/huggingface/notebooks/blob/main/examples/text_classification_quantization_ort.ipynb)| [](https://studiolab.sagemaker.aws/import/github/huggingface/notebooks/blob/main/examples/text_classification_quantization_ort.ipynb)|
| [كيفية ضبط نموذج بدقة على تصنيف النص باستخدام ONNX Runtime](https://github.com/huggingface/notebooks/blob/main/examples/text_classification_ort.ipynb)| يوضح كيفية معالجة البيانات مسبقًا وضبط نموذج بدقة على أي مهمة GLUE باستخدام [ONNX Runtime](https://github.com/microsoft/onnxruntime). | [](https://colab.research.google.com/github/huggingface/notebooks/blob/main/examples/text_classification_ort.ipynb)| [](https://studiolab.sagemaker.aws/import/github/huggingface/notebooks/blob/main/examples/text_classification_ort.ipynb)|
| [كيفية ضبط نموذج بدقة على التلخيص باستخدام ONNX Runtime](https://github.com/huggingface/notebooks/blob/main/examples/summarization_ort.ipynb)| يوضح كيفية معالجة البيانات مسبقًا وضبط نموذج بدقة على XSUM باستخدام [ONNX Runtime](https://github.com/microsoft/onnxruntime). | [](https://colab.research.google.com/github/huggingface/notebooks/blob/main/examples/summarization_ort.ipynb)| [](https://studiolab.sagemaker.aws/import/github/huggingface/notebooks/blob/main/examples/summarization_ort.ipynb)|
## دفاتر ملاحظات المجتمع:
تتوفر المزيد من دفاتر الملاحظات التي طورها المجتمع [هنا](https://hf.co/docs/transformers/community#community-notebooks).
إذا كنت تريد استخدام طرق PEFT الأخرى، مثل تعلم المحث أو ضبط المحث، أو حول مكتبة 🤗 PEFT بشكل عام، يرجى الرجوع إلى [الوثائق](https://huggingface.co/docs/peft/index).
بالإضافة إلى دفاتر الملاحظات [notebooks](./notebooks) الخاصة بـ 🤗 Transformers، هناك أيضًا نصوص برمجية توضيحية تُظهر كيفية تدريب نموذج لمهمة باستخدام [PyTorch](https://github.com/huggingface/transformers/tree/main/examples/pytorch) أو [TensorFlow](https://github.com/huggingface/transformers/tree/main/examples/tensorflow) أو [JAX/Flax](https://github.com/huggingface/transformers/tree/main/examples/flax).
كما ستجد النصوص البرمجية التي استخدمناها في [مشاريع الأبحاث](https://github.com/huggingface/transformers/tree/main/examples/research_projects) و [الأمثلة القديمة](https://github.com/huggingface/transformers/tree/main/examples/legacy) والتي ساهم بها المجتمع بشكل أساسي. هذه النصوص البرمجية غير مدعومة بشكل نشط وقد تتطلب إصدارًا محددًا من مكتبة 🤗 Transformers والذي من المحتمل أن يكون غير متوافق مع الإصدار الأحدث من المكتبة.
كما ستجد النصوص البرمجية التي استخدمناها في [مشاريع الأبحاث](https://github.com/huggingface/transformers-research-projects/) و [الأمثلة القديمة](https://github.com/huggingface/transformers/tree/main/examples/legacy) والتي ساهم بها المجتمع بشكل أساسي. هذه النصوص البرمجية غير مدعومة بشكل نشط وقد تتطلب إصدارًا محددًا من مكتبة 🤗 Transformers والذي من المحتمل أن يكون غير متوافق مع الإصدار الأحدث من المكتبة.
لا يُتوقع أن تعمل النصوص البرمجية التوضيحية بشكل مباشر على كل مشكلة، وقد تحتاج إلى تكييف النص البرمجي مع المشكلة التي تحاول حلها. ولمساعدتك في ذلك، تعرض معظم النصوص البرمجية كيفية معالجة البيانات قبل التدريب بشكل كامل، مما يتيح لك تحريرها حسب الحاجة لحالتك الاستخدام.
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# نمذجة اللغة السببية (Causal language modeling)
[[open-in-colab]]
هناك نوعان من نمذجة اللغة، السببية والمقنعة. يوضح هذا الدليل نمذجة اللغة السببية.
تُستخدم نماذج اللغة السببية غالبًا لتوليد النص. يمكنك استخدام هذه النماذج للتطبيقات الإبداعية مثل
اختيار مغامرة النص الخاصة بك أو مساعد ترميز ذكي مثل Copilot أو CodeParrot.
<Youtubeid="Vpjb1lu0MDk"/>
تتنبأ نمذجة اللغة السببية بالرمز التالي في تسلسل من الرموز، ولا يمكن للنموذج سوى الاهتمام بالرموز على
اليسار. هذا يعني أن النموذج لا يمكنه رؤية الرموز المستقبلية. GPT-2 هو مثال على نموذج اللغة السببية.
سيوضح لك هذا الدليل كيفية:
1. ضبط دقيق [DistilRoBERTa](https://huggingface.co/distilbert/distilroberta-base) على مجموعة فرعية [r/askscience](https://www.reddit.com/r/askscience/) من مجموعة بيانات [ELI5](https://huggingface.co/datasets/eli5).
2. استخدام النموذج المدرب الخاص بك للاستنتاج.
<Tip>
لرؤية جميع العمارات ونقاط التحقق المتوافقة مع هذه المهمة، نوصي بالتحقق من [task-page](https://huggingface.co/tasks/text-generation)
</Tip>
قبل أن تبدأ، تأكد من تثبيت جميع المكتبات الضرورية:
```bash
pip install transformers datasets evaluate
```
نحن نشجعك على تسجيل الدخول إلى حساب Hugging Face الخاص بك حتى تتمكن من تحميل ومشاركة نموذجك مع المجتمع. عند المطالبة، أدخل رمزك لتسجيل الدخول:
```py
>>>fromhuggingface_hubimportnotebook_login
>>>notebook_login()
```
## تحميل مجموعة بيانات ELI5
ابدأ بتحميل أول 5000 مثال من [ELI5-Category](https://huggingface.co/datasets/eli5_category) مجموعة البيانات مع مكتبة 🤗 Datasets. سيعطيك هذا فرصة للتجربة والتأكد من أن كل شيء يعمل قبل قضاء المزيد من الوقت في التدريب على مجموعة البيانات الكاملة.
'text':["The tax bill is 500 pages long and there were a lot of changes still going on right to the end. It's not just an adjustment to the income tax brackets, it's a whole bunch of changes. As such there is no good answer to your question. The big take aways are: - Big reduction in corporate income tax rate will make large companies very happy. - Pass through rate change will make certain styles of business (law firms, hedge funds) extremely happy - Income tax changes are moderate, and are set to expire (though it's the kind of thing that might just always get re-applied without being made permanent) - People in high tax states (California, New York) lose out, and many of them will end up with their taxes raised.",
'None yet. It has to be reconciled with a vastly different house bill and then passed again.',
'Also: does this apply to 2017 taxes? Or does it start with 2018 taxes?',
'This article explains both the House and senate bills, including the proposed changes to your income taxes based on your income level. URL_0'],
'answers.text':["The tax bill is 500 pages long and there were a lot of changes still going on right to the end. It's not just an adjustment to the income tax brackets, it's a whole bunch of changes. As such there is no good answer to your question. The big take aways are: - Big reduction in corporate income tax rate will make large companies very happy. - Pass through rate change will make certain styles of business (law firms, hedge funds) extremely happy - Income tax changes are moderate, and are set to expire (though it's the kind of thing that might just always get re-applied without being made permanent) - People in high tax states (California, New York) lose out, and many of them will end up with their taxes raised.",
'None yet. It has to be reconciled with a vastly different house bill and then passed again.',
'Also: does this apply to 2017 taxes? Or does it start with 2018 taxes?',
'This article explains both the House and senate bills, including the proposed changes to your income taxes based on your income level. URL_0'],
لتطبيق دالة المعالجة المسبقة هذه على مجموعة البيانات بأكملها، استخدم الدالة 🤗 Datasets [`~datasets.Dataset.map`]. يمكنك تسريع هذه العملية `map` عن طريق تعيين `batched=True` لمعالجة عناصر متعددة من مجموعة البيانات في وقت واحد، وزيادة عدد العمليات مع `num_proc`. احذف أي أعمدة لا تحتاجها:
```py
>>>tokenized_eli5=eli5.map(
...preprocess_function,
...batched=True,
...num_proc=4,
...remove_columns=eli5["train"].column_names,
...)
```
تحتوي هذه المجموعة من البيانات على تسلسلات الرموز، ولكن بعضها أطول من الطول الأقصى للمدخلات للنموذج.
يمكنك الآن استخدام دالة ما قبل المعالجة ثانية لـ:
- تجميع كل التسلسلات.
- تقسيم التسلسلات المجمّعة إلى أجزاء أقصر محددة، بحجم `block_size`، والتي يجب أن تكون أقصر من الطول الأقصى للمدخلات ومناسبة لذاكرة GPU.
الآن قم بإنشاء دفعة من الأمثلة باستخدام [`DataCollatorForLanguageModeling`]. من الأفضل أن تقوم بـ *الحشو الديناميكي* للجمل إلى الطول الأطول في الدفعة أثناء التجميع، بدلاً من حشو كامل المجموعة من البيانات إلى الطول الأقصى.
<frameworkcontent>
<pt>
استخدم رمز نهاية التسلسل كرمز للحشو، وحدد `mlm_probability` لحجب الرموز بشكل عشوائي عند كل تكرار للبيانات:
1. حدد معلمات التدريب الخاصة بك في [`TrainingArguments`]. المعامل الوحيد المطلوب هو `output_dir` الذي يحدد أين سيتم حفظ نموذجك. ستقوم بدفع هذا النموذج إلى Hub بتحديد `push_to_hub=True` (يجب أن تكون مسجلاً الدخول إلى Hugging Face لتحميل نموذجك).
2. قم بتمرير معاملات التدريب إلى [`Trainer`] إلى جانب النموذج، والمجموعات من البيانات، ومجمّع البيانات.
3. قم باستدعاء [`~Trainer.train`] لتدريب نموذجك.
```py
>>>training_args=TrainingArguments(
...output_dir="my_awesome_eli5_clm-model",
...eval_strategy="epoch",
...learning_rate=2e-5,
...weight_decay=0.01,
...push_to_hub=True,
...)
>>>trainer=Trainer(
...model=model,
...args=training_args,
...train_dataset=lm_dataset["train"],
...eval_dataset=lm_dataset["test"],
...data_collator=data_collator,
...tokenizer=tokenizer,
...)
>>>trainer.train()
```
بمجرد اكتمال التدريب، استخدم طريقة [`~transformers.Trainer.evaluate`] لتقييم نموذجك والحصول على احتمالية الارتباك:
حول مجموعات بياناتك إلى تنسيق `tf.data.Dataset` باستخدام [`~transformers.TFPreTrainedModel.prepare_tf_dataset`]:
```py
>>>tf_train_set=model.prepare_tf_dataset(
...lm_dataset["train"],
...shuffle=True,
...batch_size=16,
...collate_fn=data_collator,
...)
>>>tf_test_set=model.prepare_tf_dataset(
...lm_dataset["test"],
...shuffle=False,
...batch_size=16,
...collate_fn=data_collator,
...)
```
قم بتهيئة النموذج للتدريب باستخدام [`compile`](https://keras.io/api/models/model_training_apis/#compile-method). لاحظ أن جميع نماذج Transformers لديها دالة خسارة ذات صلة بالمهمة الافتراضية، لذلك لا تحتاج إلى تحديد واحدة ما لم ترغب في ذلك:
```py
>>>importtensorflowastf
>>>model.compile(optimizer=optimizer)# لا يوجد حجة للخسارة!
```
يمكن القيام بذلك عن طريق تحديد مكان دفع نموذجك ومجمّع البيانات في [`~transformers.PushToHubCallback`]:
أخيراً، أنت جاهز لبدء تدريب نموذجك! قم باستدعاء [`fit`](https://keras.io/api/models/model_training_apis/#fit-method) مع مجموعات بيانات التدريب والتحقق من الصحة، وعدد العصور، والتعليقات الخاصة بك لتدريب النموذج:
[{'generated_text':"Somatic hypermutation allows the immune system to be able to effectively reverse the damage caused by an infection.\n\n\nThe damage caused by an infection is caused by the immune system's ability to perform its own self-correcting tasks."}]
["Somatic hypermutation allows the immune system to react to drugs with the ability to adapt to a different environmental situation. In other words, a system of 'hypermutation' can help the immune system to adapt to a different environmental situation or in some cases even a single life. In contrast, researchers at the University of Massachusetts-Boston have found that 'hypermutation' is much stronger in mice than in humans but can be found in humans, and that it's not completely unknown to the immune system. A study on how the immune system"]
```
</pt>
<tf>
قم بتقسيم النص وإرجاع `input_ids` كـ TensorFlow tensors:
استخدم طريقة [`~transformers.generation_tf_utils.TFGenerationMixin.generate`] لإنشاء الملخص. للمزيد من التفاصيل حول استراتيجيات توليد النص المختلفة والبارامترات للتحكم في التوليد، راجع صفحة [استراتيجيات توليد النص](../generation_strategies).
['Somatic hypermutation allows the immune system to detect the presence of other viruses as they become more prevalent. Therefore, researchers have identified a high proportion of human viruses. The proportion of virus-associated viruses in our study increases with age. Therefore, we propose a simple algorithm to detect the presence of these new viruses in our samples as a sign of improved immunity. A first study based on this algorithm, which will be published in Science on Friday, aims to show that this finding could translate into the development of a better vaccine that is more effective for']
```
</tf>
</frameworkcontent>
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