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Author SHA1 Message Date
ee1b680438 [Doc] Fix rendering of the unicode characters (#134695)
* [Doc] Fix rendering of the unicode characters (#134597)

https://github.com/pytorch/pytorch/pull/124771 introduced unicode escape sequences inside raw strings, which were not rendered correctly. Also fix typo in `\uue0 ` escape sequence (should have been `\u00e0`)
Fix it by relying on [string literal concatenation](https://docs.python.org/3/reference/lexical_analysis.html#string-literal-concatenation) to join raw and regular strings together during lexical analysis stage

Fixes https://github.com/pytorch/pytorch/issues/134422

Pull Request resolved: https://github.com/pytorch/pytorch/pull/134597
Approved by: https://github.com/aorenste, https://github.com/Skylion007

(cherry picked from commit 534f43ddce24ab6bafa3aed42ee3d68947073d3f)

* Fix lint

---------

Co-authored-by: Nikita Shulga <nshulga@meta.com>
2024-08-28 17:25:42 -07:00
79c88679b9 Fix docstring for torch.signal.windows.nuttall (#134704)
Fix docstring for torch.signal.windows.nuttall (#134512)

This partially fixes regression introduced by https://github.com/pytorch/pytorch/pull/124771 but also just improves `z_n` rendering, by using MathML
In 2.3 it was [rendered](https://pytorch.org/docs/2.3/generated/torch.signal.windows.nuttall.html#torch.signal.windows.nuttall)
as
<img width="177" alt="image" src="https://github.com/user-attachments/assets/2c15d1f9-13ad-483f-bb66-41fa3fa4ba9c">

With this change it'll be [rendered](https://docs-preview.pytorch.org/pytorch/pytorch/134512/generated/torch.signal.windows.nuttall.html#torch.signal.windows.nuttall) as
```math
z_n = \frac{2 \pi n}{M}
```
Pull Request resolved: https://github.com/pytorch/pytorch/pull/134512
Approved by: https://github.com/kit1980, https://github.com/aorenste, https://github.com/atalman

(cherry picked from commit 79b7fff18820e4f62a02534a961d5930040e3475)

Co-authored-by: Nikita Shulga <2453524+malfet@users.noreply.github.com>
2024-08-28 11:54:28 -07:00
38b96d3399 Do not use <filesystem> on Linux (#134494) (#134604)
Because right now it leads to symbol conflict from binary builds.
Use of `std::filesystem::file_exists` was introduced by https://github.com/pytorch/pytorch/pull/126601 and in this PR it is replaced with a very straightforward implementation that calls `stat` on the given path, which is a classic C-way of checking for the file existence.

This PR should be reverted once one figures out how to keep `std::filesystem` methods linked into the binary private

Fixes symptoms of https://github.com/pytorch/pytorch/issues/133437

Pull Request resolved: https://github.com/pytorch/pytorch/pull/134494
Approved by: https://github.com/atalman, https://github.com/d4l3k

Co-authored-by: Nikita Shulga <nshulga@meta.com>
2024-08-27 15:50:37 -04:00
b84e8c6848 Move module_tracker to logging for confused hierarchy (#134467) (#134501)
* Move module_tracker to logging for confused hierarchy (#134467)

Fixes https://github.com/pytorch/pytorch/issues/134242

Make sure to never raise an error when confused. Logs for confusion can be enabled with `TORCH_LOGS="torch.utils.module_tracker"` or the usual python systems.

Pull Request resolved: https://github.com/pytorch/pytorch/pull/134467
Approved by: https://github.com/malfet

* Fix bad merge conflict resolution
2024-08-27 07:37:59 -04:00
6a79d4afcd [ROCm] Prevent accidental enablement of efficient attention. (#134531)
[ROCm] Prevent accidental enablement of efficient attention. (#133331)

Currently Efficient attention and Flash attention share the same set of GPU
kernels on ROCM and have common limitations on head sizes.

Fixes https://github.com/pytorch/pytorch/issues/132004

Pull Request resolved: https://github.com/pytorch/pytorch/pull/133331
Approved by: https://github.com/malfet, https://github.com/jithunnair-amd

(cherry picked from commit 46ecc673ae048cc31a919a1d01dfdff51e3d2869)

Co-authored-by: Xinya Zhang <Xinya.Zhang@amd.com>
2024-08-27 07:36:18 -04:00
e0ddbffbc3 [Release Only] Disable flaky failing tests in release. Pin optree. Pin sympy (#134489)
* [Release Only] Disable failing tests in release

* fix

* skip_xla_op_test

* ping_optree_win

* Pin sympy to 1.13.1 (#133235)

Sympy 1.13.2 release yesterday, and it results in test failures on windows and mac

454713fe9d/1

Hopefully these are the places it needs to get pinned
Pull Request resolved: https://github.com/pytorch/pytorch/pull/133235
Approved by: https://github.com/atalman, https://github.com/ZainRizvi

* fix sympy

* Revert "fix sympy"

This reverts commit 864cd32b1e54bffdd371320e2c98c74ba24c2510.

Revert "Pin sympy to 1.13.1 (#133235)"

This reverts commit cf77a5ecfc217da6643ffcd49a605b3434f9551f.

pin sympy win test

---------

Co-authored-by: Catherine Lee <csl@fb.com>
2024-08-27 07:29:02 -04:00
314f033e65 Use ephemeral runners for windows nightly builds (#134463) (#134496)
This is definition of windows.4xlarge:

```
  windows.4xlarge:
    disk_size: 256
    instance_type: c5d.4xlarge
    is_ephemeral: true
    max_available: 420
    os: windows
```
Pull Request resolved: https://github.com/pytorch/pytorch/pull/134463
Approved by: https://github.com/jeanschmidt
2024-08-26 14:07:04 -07:00
9c1f78e018 [CD] Use ephemeral arm64 runners for nightly and docker builds (#134473) (#134493)
* [CD] Use ephemeral arm64 runners for nightly and docker builds (#134473)

Follow up after adding linux arm64 ephemeral instances: https://github.com/pytorch/pytorch/pull/134469
Pull Request resolved: https://github.com/pytorch/pytorch/pull/134473
Approved by: https://github.com/malfet

* actionlint
2024-08-26 14:04:28 -07:00
3675fc52ae Use ephemeral runners for linux nightly builds (#134367) (#134492)
* Use ephemeral runners for linux nightly builds (#134367)

Should be landed with https://github.com/pytorch/test-infra/pull/5590
Pull Request resolved: https://github.com/pytorch/pytorch/pull/134367
Approved by: https://github.com/kit1980, https://github.com/malfet, https://github.com/seemethere

* fix_conda_nightly

* regenerate
2024-08-26 14:03:59 -07:00
920c023664 docker: Use miniforge, install from pip (#134497)
docker: Use miniforge, install from pip (#134274)

Switch installation of the pytorch package to be installed from our download.pytorch.org sources which are better maintained.

As well, switching over the miniconda installation to a miniforge installation in order to ensure backwards compat for users expecting to have the conda package manager installed.

Pull Request resolved: https://github.com/pytorch/pytorch/pull/134274
Approved by: https://github.com/malfet, https://github.com/atalman

Co-authored-by: atalman <atalman@fb.com>
(cherry picked from commit b2eb0e8c6a817f304277dfed39c25853ff301d90)

Co-authored-by: Eli Uriegas <eliuriegas@meta.com>
2024-08-26 14:03:09 -07:00
592038351e [Release only] Use amazon linux 2 runners for CI (#134350) 2024-08-24 08:39:08 -04:00
847a042a0d [Release only] Disable triton build workflows (#134347) 2024-08-23 13:39:13 -04:00
c469d14a14 [NJT+SDPA]Fix flash_attention output when batch_size=1 and seq_len=1 (#133595)
* [NJT+SDPA]Fix flash_attention output when batch_size=1 and seq_len=1 (#130652)

fix issue  #130196

Pull Request resolved: https://github.com/pytorch/pytorch/pull/130652
Approved by: https://github.com/Skylion007, https://github.com/drisspg, https://github.com/jbschlosser

(cherry picked from commit 0e79e1f95841041ef689e8a94c8be1e92702b873)

* resolve conflict by using old the NT API

* fix lint

---------

Co-authored-by: yuqingj <yuqingj@meta.com>
2024-08-22 13:42:22 -04:00
bd92fa2cf2 Update conda-env-iOS.txt (#134239)
Update conda-env-iOS.txt (#134068)

Followup after https://github.com/pytorch/pytorch/pull/133814 To fix periodic build failures update `typing-extensions` to 4.11.0, as 4.10 is missing in conda
Pull Request resolved: https://github.com/pytorch/pytorch/pull/134068
Approved by: https://github.com/wdvr, https://github.com/atalman, https://github.com/Skylion007

(cherry picked from commit 18aaceb7be552ccdcb65f485d5f82be9af8e2898)

Co-authored-by: Nikita Shulga <2453524+malfet@users.noreply.github.com>
2024-08-22 10:39:30 -07:00
eba4d08497 [MPS] Gather sliced inputs to batch norm (#134121)
[MPS] Gather sliced inputs to batch norm (#133610)

This PR removes the `executeGatherOp` flag from batch norm in favor of relying on the logic in 4aa66f68a8/aten/src/ATen/native/mps/OperationUtils.mm (L372) to decide if gathering is necessary.

It's not the most efficient way to solve this issue, but it assures correctness for sliced inputs.

### Performance impact

#### With fix

```
python -m timeit -n 100 -s "import torch; import torch.nn as nn; bn = nn.BatchNorm2d(100, affine=False, device='mps');x = torch.randn(100, 100, 35, 45).to('mps')" "bn(x)"
100 loops, best of 5: 282 usec per loop

python -m timeit -n 100 -s "import torch; import torch.nn as nn; bn = nn.BatchNorm2d(100, affine=False, device='mps');x = torch.randn(100, 100, 35, 45).to('mps')" "bn(x[5:])"
100 loops, best of 5: 448 usec per loop

python -m timeit -n 1000 -s "import torch; import torch.nn as nn; bn = nn.BatchNorm2d(100, affine=False, device='mps');x = torch.randn(100, 100, 35, 45).to('mps')" "bn(x)"
1000 loops, best of 5: 705 usec per loop

python -m timeit -n 1000 -s "import torch; import torch.nn as nn; bn = nn.BatchNorm2d(100, affine=False, device='mps');x = torch.randn(100, 100, 35, 45).to('mps')" "bn(x[5:])"
1000 loops, best of 5: 1.11 msec per loop

python -m timeit -n 1000 -s "import torch; import torch.nn as nn; bn = nn.BatchNorm2d(100, affine=False, device='mps');x = torch.randn(1000, 100, 35, 45).to('mps')" "bn(x)"
1000 loops, best of 5: 7.16 msec per loop

python -m timeit -n 1000 -s "import torch; import torch.nn as nn; bn = nn.BatchNorm2d(100, affine=False, device='mps');x = torch.randn(1000, 100, 35, 45).to('mps')" "bn(x[5:])"
1000 loops, best of 5: 11.7 msec per loop
```

#### Without fix

```
python -m timeit -n 100 -s "import torch; import torch.nn as nn; bn = nn.BatchNorm2d(100, affine=False, device='mps');x = torch.randn(100, 100, 35, 45).to('mps')" "bn(x)"
100 loops, best of 5: 284 usec per loop

python -m timeit -n 100 -s "import torch; import torch.nn as nn; bn = nn.BatchNorm2d(100, affine=False, device='mps');x = torch.randn(100, 100, 35, 45).to('mps')" "bn(x[5:])"
100 loops, best of 5: 265 usec per loop

python -m timeit -n 1000 -s "import torch; import torch.nn as nn; bn = nn.BatchNorm2d(100, affine=False, device='mps');x = torch.randn(100, 100, 35, 45).to('mps')" "bn(x)"
1000 loops, best of 5: 715 usec per loop

python -m timeit -n 1000 -s "import torch; import torch.nn as nn; bn = nn.BatchNorm2d(100, affine=False, device='mps');x = torch.randn(100, 100, 35, 45).to('mps')" "bn(x[5:])"
1000 loops, best of 5: 675 usec per loop

python -m timeit -n 1000 -s "import torch; import torch.nn as nn; bn = nn.BatchNorm2d(100, affine=False, device='mps');x = torch.randn(1000, 100, 35, 45).to('mps')" "bn(x)"
1000 loops, best of 5: 7.19 msec per loop

python -m timeit -n 1000 -s "import torch; import torch.nn as nn; bn = nn.BatchNorm2d(100, affine=False, device='mps');x = torch.randn(1000, 100, 35, 45).to('mps')" "bn(x[5:])"
1000 loops, best of 5: 7.13 msec per loop
```

Please feel free to push back or request changes.

Fixes #133520
Pull Request resolved: https://github.com/pytorch/pytorch/pull/133610
Approved by: https://github.com/malfet

(cherry picked from commit 43f78bf37a0432af4c048e1f1363838f26ef3295)

Co-authored-by: Roy Hvaara <roy@lightyear.no>
2024-08-22 13:39:10 -04:00
2213c07dcd [CpuInductor] Enable NEON ISA detection on Linux ARM (#134165)
* [CpuInductor] Enable NEON ISA detection on Linux ARM (#129075)

Also, cleanup code a bit to use `x in [y, z]` instead of `x == y or x == z`

And do not redefine `at_align`, but instead use `alignas(64)` as was suggested in https://github.com/pytorch/pytorch/pull/128686/files#r1639365978

Test plan: `python3 -c "import torch._inductor.codecache as cc; isa = cc.valid_vec_isa_list()[0];print(str(isa), bool(isa))"`

Pull Request resolved: https://github.com/pytorch/pytorch/pull/129075
Approved by: https://github.com/jansel

* Fix merge mistakes

---------

Co-authored-by: Nikita Shulga <2453524+malfet@users.noreply.github.com>
2024-08-21 16:30:01 -07:00
4ebe5b7cf4 Avoid autocast deprecation warning in DataParallel (#130660) (#134057)
Fixes #130659

Co-authored-by: Yu, Guangye <106960996+guangyey@users.noreply.github.com>
Pull Request resolved: https://github.com/pytorch/pytorch/pull/130660
Approved by: https://github.com/guangyey, https://github.com/fegin, https://github.com/albanD

Co-authored-by: Adrian Wälchli <aedu.waelchli@gmail.com>
2024-08-21 12:43:28 -04:00
346e0f605f [Inductor] short-term fix for needs_fixed_stride_order silent incorrectness (#133452) (#133888)
This is a low-risk short-term fix for
https://github.com/pytorch/pytorch/issues/128084, for the purposes of
2.4.1. The actual fix for that issue is more risky and we'll target 2.5.

needs_fixed_stride_order is silently incorrect with args that are
mutable because it creates clones of those args, writes into them, and
doesn't update the original args.

This PR makes it so that needs_fixed_stride_order doesn't apply to
inputs that are being mutated.

This PR doesn't completely fix the problem, but it makes it less
incorrect: most of the time the input already has the correct strides
but inductor fails to recognize it, and in those cases writing directly
to the input is fine.

Test Plan:
- new test

Pull Request resolved: https://github.com/pytorch/pytorch/pull/133452
Approved by: https://github.com/eellison
2024-08-21 11:16:20 -04:00
362a6ca99a Add xpu_cmake_macros.h to xpu build (#133649)
Add xpu_cmake_macros.h to xpu build (#132847)

# Motivation

fix https://github.com/pytorch/pytorch/issues/132971

Pull Request resolved: https://github.com/pytorch/pytorch/pull/132847
Approved by: https://github.com/EikanWang

(cherry picked from commit 9c5e0d47fe3373f3c468e59877f71c4999cca227)

Co-authored-by: Yu, Guangye <guangye.yu@intel.com>
2024-08-21 11:14:13 -04:00
dab239be1f [cpu][flash attention] fix nan issue (#133598)
[cpu][flash attention] fix nan issue (#130014)

Fixes #127055.

NaNs are generated in flash attention because the computation of `std::exp((-inf) - (-inf))` and `+/-inf * 0` in lazy softmax. We fix the issue by avoiding the related calculation.

Pull Request resolved: https://github.com/pytorch/pytorch/pull/130014
Approved by: https://github.com/jgong5, https://github.com/drisspg

(cherry picked from commit 868d9a4f129a0a146c06f730592bead27058efd8)

Co-authored-by: Valentine233 <xuan.liao@intel.com>
2024-08-21 08:54:29 -04:00
30faa177c4 Fix warning when pickle.load torch.Storage (#133597)
Fix warning when pickle.load torch.Storage (#130246)

Fixes https://github.com/pytorch/pytorch/issues/130242

Since `torch.save` does not use pickle for storages, the `torch.load` in `_load_from_bytes` should not ever be called when `torch.load`-ing a checkpoint. Setting weights_only=False explicitly in `_load_from_bytes` to avoid the weights_only warning when using the pickle module

Pull Request resolved: https://github.com/pytorch/pytorch/pull/130246
Approved by: https://github.com/albanD

(cherry picked from commit dfd1d1971ea1265c597124b7e75fe5c8dd5a45b4)

Co-authored-by: Mikayla Gawarecki <mikaylagawarecki@gmail.com>
2024-08-21 08:52:42 -04:00
18736d2b55 [inductor] parallel compile: Create new pipes for subproc communicati… (#134042)
* [inductor] parallel compile: Create new pipes for subproc communication (#131194)

Summary: Rather then using stdin/stdout for IPC, we can create new pipes and pass the descriptors to the subproc via the cmd line. https://github.com/pytorch/pytorch/issues/131070 reports an issue where the combination of deepspeed and onnxruntime-training causes _something_ in the subproc to write to stdout and corrupt the IPC. The current implementation was already brittle; we can just create new pipes specifically for the IPC.

Test Plan: I was able to repro the MemoryError in https://github.com/pytorch/pytorch/issues/131070 by installing deepspeed and onnxruntime-training. Verified this PR fixes.

Differential Revision: [D59968362](https://our.internmc.facebook.com/intern/diff/D59968362)
Pull Request resolved: https://github.com/pytorch/pytorch/pull/131194
Approved by: https://github.com/malfet, https://github.com/eellison, https://github.com/atalman

* add_catch_statement

* log_fix

---------

Co-authored-by: Sam Larsen <slarsen@meta.com>
2024-08-21 07:53:15 -04:00
1002815f17 Pass torch.load(weights_only=) internally to avoid FutureWarning (#133594)
Pass `torch.load(weights_only=)` internally to avoid FutureWarning (#130663)

Fixes #130658

Pull Request resolved: https://github.com/pytorch/pytorch/pull/130663
Approved by: https://github.com/malfet, https://github.com/LucasLLC

(cherry picked from commit ad314a2f055dbd28bba07cdb585769e6b7b6654e)

Co-authored-by: Adrian Wälchli <aedu.waelchli@gmail.com>
2024-08-20 15:35:04 -04:00
d3d93a897b Replace [[unlikely]] with unlikely(x) (#133583)
Replace [[unlikely]] with unlikely(x) (#130816)

Do not use `[[unlikely]]` as its c++20 language features, see https://en.cppreference.com/w/cpp/language/attributes/likely

Fixes https://github.com/pytorch/pytorch/issues/130815

Pull Request resolved: https://github.com/pytorch/pytorch/pull/130816
Approved by: https://github.com/jgong5, https://github.com/jansel, https://github.com/malfet

(cherry picked from commit 32f9a809c780d0dda2d5de8ff6348721e9f644e2)

Co-authored-by: Danielmic <30855238+Danielmic@users.noreply.github.com>
2024-08-20 15:26:48 -04:00
24e04f3bfd Remove QNNPACK reference from setup.py (#133526)
Remove QNNPACK reference from setup.py (#133177)

QNNPACK has been removed from third party
Pull Request resolved: https://github.com/pytorch/pytorch/pull/133177
Approved by: https://github.com/albanD

(cherry picked from commit e76f0e0646eb5de838ba1410bcda6925d1ed58c3)

Co-authored-by: cyy <cyyever@outlook.com>
2024-08-15 14:27:54 -07:00
7e0ef343b0 [ROCm] Check supported archs before setting preferred blas backend to hipblasLT (#133359)
[ROCm] Check supported archs before setting preferred blas backend to hipblasLT (#128753)

This PR is needed to resolve usability issues with PyTorch ROCm nightly wheels on non-gfx90a/gf94x architectures as a result of https://github.com/pytorch/pytorch/pull/127944.

Addresses https://github.com/pytorch/pytorch/issues/119081#issuecomment-2166504992

### With this PR's changes, I get the following on a gfx908 (unsupported by hipblasLT) architecture:
_Using setter function:_
```
>>> torch.backends.cuda.preferred_blas_library(backend="cublaslt")
[W617 19:58:58.286088851 Context.cpp:280] Warning: torch.backends.cuda.preferred_blas_library is an experimental feature. If you see any error or unexpected behavior when this flag is set please file an issue on GitHub. (function operator())
[W617 19:59:02.125161985 Context.cpp:291] Warning: Attempting to use hipBLASLt on an unsupported architecture! Overriding blas backend to hipblas (function operator())
<_BlasBackend.Cublas: 0>
```

_Using `TORCH_BLAS_PREFER_HIPBLASLT` env var:_
```
root@9d47bf40d4d4:/tmp/pytorch# TORCH_BLAS_PREFER_CUBLASLT=1 python
>>> import torch
>>> torch.backends.cuda.preferred_blas_library()
[W619 06:14:11.627715807 Context.cpp:274] Warning: Attempting to use hipBLASLt on an unsupported architecture! Overriding blas backend to hipblas (function operator())
<_BlasBackend.Cublas: 0>
```

### and the following on a gfx90a (supported by hipblasLT) architecture:
_Using setter function:_
```
>>> import torch
>>> torch.backends.cuda.preferred_blas_library()
<_BlasBackend.Cublaslt: 1>
>>> torch.backends.cuda.preferred_blas_library(backend="cublas")
<_BlasBackend.Cublas: 0>
>>> torch.backends.cuda.preferred_blas_library(backend="cublaslt")
[W620 18:38:29.404265518 Context.cpp:293] Warning: torch.backends.cuda.preferred_blas_library is an experimental feature. If you see any error or unexpected behavior when this flag is set please file an issue on GitHub. (function operator())
<_BlasBackend.Cublaslt: 1>
```

_Using `TORCH_BLAS_PREFER_HIPBLASLT` env var:_
```
root@9d47bf40d4d4:/tmp/pytorch# TORCH_BLAS_PREFER_HIPBLASLT=1 python
>>> import torch
>>> torch.backends.cuda.preferred_blas_library()
<_BlasBackend.Cublaslt: 1>
```
(Same result for _Using `TORCH_BLAS_PREFER_CUBLASLT` env var:_)

Pull Request resolved: https://github.com/pytorch/pytorch/pull/128753
Approved by: https://github.com/malfet

(cherry picked from commit e16276b9bf9e7c5cfcfd8242d336b26eb7dd182f)

Co-authored-by: Jithun Nair <37884920+jithunnair-amd@users.noreply.github.com>
2024-08-15 15:33:34 -04:00
58ab993dcc Fix recent build error on ppc64le (#133416)
Fix recent build error on ppc64le  (#129736)

This PR will fix the recent build issue observed on ppc64le.
Fixes #128130

Pull Request resolved: https://github.com/pytorch/pytorch/pull/129736
Approved by: https://github.com/albanD, https://github.com/malfet

(cherry picked from commit 69cbf0552932c9159fcf8557ea595e00b9f3f9d3)

Co-authored-by: pratiklp00 <pratikp@linux.ibm.com>
2024-08-14 10:21:21 -07:00
6ba64be950 fix for launching kernel invalid config error when calling embedding … (#133346)
fix for launching kernel invalid config error when calling embedding … (#130994)

…with large index

Fixes #130806
When an output size of 2147483648 (=131072*16384) is expected in the above issue, it throwed out the following error:
RuntimeError: HIP error: invalid configuration argument

What happened was that the second parameter passed to hipLaunchKernel was crazy {2147483648,1,1}.
Found two issues in the Indexing.cu:

1: ptrdiff_t was used but it is signed int,  outTotalSize >= 2147483648 can cause overflow when doing [this](39493aa934/aten/src/ATen/native/cuda/Indexing.cu (L1367)):
2: On ROCm, std::min -> ::min did not work as expected when outTotalSize>=2147483648

As the result, 2147483648 was sent to hipLaunchKernel which the GPU does not support such a huge number since this number specifies the number of threads per block. The original code intended to set 128 threads per block, though this is debatable as the perf would not good for latest powerful GPUs (a TODO item to update for perf maybe?) , but at least it would not cause `invalid configuration argument` error.

[Test]
Run the same code snippet in the [issue](https://github.com/pytorch/pytorch/issues/130806), and print the output, its dim and numel(), which looks like below now:
```
output=tensor([[ 0.4044, -0.0244, -0.6865,  ..., -0.7800,  0.1175,  1.6726],
        [-1.0866, -0.1609,  0.3538,  ...,  1.9105,  0.7882,  1.1583],
        [-2.2079,  0.3736,  0.3610,  ..., -0.2658, -0.0459,  1.3077],
        ...,
        [ 0.8753, -0.7482, -0.1978,  ...,  0.9016,  1.1501, -0.5178],
        [-1.5845, -0.6277,  1.4520,  ...,  0.5733, -2.1198, -0.0915],
        [-0.6310, -1.0239, -0.1910,  ...,  0.4309,  0.1630,  0.3239]],
       device='cuda:0'), dim=2, numel=2147483648
```

Added a large tensor unit test too.
```
/pytorch# pytest test/nn/test_embedding.py -k test_large_tensors
================================================================================== test session starts ===================================================================================
platform linux -- Python 3.9.19, pytest-7.3.2, pluggy-1.4.0
rootdir: /dockerx/development/pytorch
configfile: pytest.ini
plugins: flakefinder-1.1.0, rerunfailures-14.0, xdist-3.3.1, xdoctest-1.1.0, cpp-2.3.0, hypothesis-5.35.1
collected 288 items / 287 deselected / 1 selected
Running 1 items in this shard

test/nn/test_embedding.py .                                                                                                                                                        [100%]

=========================================================================== 1 passed, 287 deselected in 3.16s ============================================================================
```
Pull Request resolved: https://github.com/pytorch/pytorch/pull/130994
Approved by: https://github.com/jeffdaily, https://github.com/xw285cornell

(cherry picked from commit 637ab85e7ff0ae6119cd39c4a554e21da901b45e)

Co-authored-by: hongxyan <hongxyan@amd.com>
2024-08-14 10:09:31 -04:00
d61995868c [Doc] update guide install mkl-static from conda to pip (#133328)
[Doc] update guide install mkl-static from conda to pip (#130026)

<img width="619" alt="image" src="https://github.com/pytorch/pytorch/assets/8433590/4ac3ca68-57dc-42c7-ac7a-876dc377ebcf">

Conda intel channel is not avaliable now.
Use `pip` install instead of `conda`.

`Windows` and `Linux` are avaliable:
Binary list: https://pypi.org/project/mkl-static/#files

`MacOS` is avaliable for old version:
https://pypi.org/project/mkl-static/2021.3.0/#files

TODO:
1. cherry-pick to `release/2.4` branch, @atalman .
2. fix it also in `release/2.3` branch: https://github.com/pytorch/pytorch/pull/131853

Pull Request resolved: https://github.com/pytorch/pytorch/pull/130026
Approved by: https://github.com/jgong5, https://github.com/atalman

(cherry picked from commit 484852c02b94e894bde23b5c07d7ab2cb4d98b9b)

Co-authored-by: Xu Han <xu.han@outlook.com>
2024-08-14 10:08:02 -04:00
26735e7364 [MPS][TYPE_PROMOTION] Fix Clamp (#133260)
[MPS][TYPE_PROMOTION] Fix Clamp (#130226)

Summary:
1. Fixed #130201 by adding type promotion.
2. Added proper tests.
3. Found torch's type promotion is different from numpy as follows:

```python
import torch
import numpy as np
np.clip(np.array([1], dtype=np.float32), np.array([1], dtype=np.int32), None).dtype  # dtype('float64')
torch.clamp(torch.tensor([1], dtype=torch.float32), torch.tensor([1], dtype=torch.int32)).dtype  # torch.float32
```

~Not sure the proper way to handle it, it causes numpy ref tests to fail.~
Reason here, so think I'm gonna xfail it:
3c1cf03fde/test/test_ops.py (L260-L264)

Pull Request resolved: https://github.com/pytorch/pytorch/pull/130226
Approved by: https://github.com/malfet

(cherry picked from commit 99967e11199a624a852864354acf7ebccb9bb677)

Co-authored-by: Li-Huai (Allan) Lin <qqaatw@gmail.com>
2024-08-13 10:03:02 -07:00
f6fb80b0f9 Fix mkl-static issue for Windows. (#132401)
Fix mkl-static issue for Windows. (#130697)

Background:
We found the pytorch Windows release/2.4 performance regression: https://github.com/pytorch/pytorch/issues/130619

After some debug works, I found the pytorch Windows static mkl build options are wrong:
<img width="1049" alt="image" src="https://github.com/user-attachments/assets/38692142-bfca-4c98-8092-6e105c82bb13">
1. Thread lib is wrong.
2. Miss `openmp` lib and config.
> Debug history: https://github.com/pytorch/pytorch/issues/130619#issuecomment-2226782504 and https://github.com/pytorch/pytorch/issues/130619#issuecomment-2226418611

This PR will fix `mkl-static` build options issue.
<img width="863" alt="image" src="https://github.com/user-attachments/assets/834f6cee-7e6d-4d74-b2bc-8a270f05e429">

Reference:
<img width="482" alt="image" src="https://github.com/user-attachments/assets/8184dadb-f230-4062-a49f-51df1d7285f5">

https://www.intel.com/content/www/us/en/developer/tools/oneapi/onemkl-link-line-advisor.html#gs.c6izlg

Pull Request resolved: https://github.com/pytorch/pytorch/pull/130697
Approved by: https://github.com/jgong5, https://github.com/atalman

(cherry picked from commit f1456c74a09ec33d7739814e13e5745408bf8b6c)

Co-authored-by: Xu Han <xu.han@outlook.com>
2024-08-01 09:55:45 -04:00
14ab5b5059 Add single Python 3.10, single Cuda 12.1 build with dependencies included (#132094)
* Add single Python 3.10, single Cuda 12.1 build with dependencies included (#130349)

Build large wheel for Python 3.10, CUDA 12.1 that will be used in Colab. Build name: ``manywheel-py3_11-cuda12_1-full-build``

We still have all code to support the full build in builder repo, here:
https://github.com/pytorch/builder/blob/main/manywheel/build_cuda.sh#L151

Test:
```
import sys
import torch
sys.version_info
print(torch.__version__)
sys.version_info

2.3.0+cu121
sys.version_info(major=3, minor=10, micro=12, releaselevel='final', serial=0)
```
Pull Request resolved: https://github.com/pytorch/pytorch/pull/130349
Approved by: https://github.com/malfet

(cherry picked from commit a1590e16dff4a24753235a4976c88164c66efc3a)

* fix cherry-pick

* lint

---------

Co-authored-by: atalman <atalman@fb.com>
2024-07-29 19:50:22 -04:00
d990dada86 [CMAKE] Look for Development.Module instead of Development (#129729)
Based on the [cmake issue](https://gitlab.kitware.com/cmake/cmake/-/issues/23716) and [manylinux issue](https://github.com/pypa/manylinux/issues/1347), when building a python module, it should find the `Development.Module` module, not `Development`, which includes `Development.Module` and `Development.Embed`, and will expect the shared python library only. After this PR and before #124613, pytorch could be built with a static libpython (e.g. in manylinux).

Cherry-pick of 953c6476bd75e3fa1d558204bb30ff5fc90ce4f1 into release/2.4
2024-07-09 11:17:43 -07:00
e4ee3be406 [Release only] use triton 3.0.x from pypi (#130336) 2024-07-09 11:06:52 -04:00
9afe4ec096 Update torchbench model expected accuracy values after pinning numpy (#129986)
* Update torchbench model expected accuracy values after pinning numpy (#129213)

After pinning numpy on torchbench, we need to move torchbench inductor benchmark jobs out of unstable state asap, so that more failures don't sneak it.  I'm updating the expected values here to make trunk green.

Pull Request resolved: https://github.com/pytorch/pytorch/pull/129213
Approved by: https://github.com/xuzhao9, https://github.com/malfet, https://github.com/desertfire

(cherry picked from commit b72ef9df0d09b9c020af8ca7930da5ca4728b7e7)

* No change to yolov3

---------

Co-authored-by: Huy Do <huydhn@gmail.com>
2024-07-03 22:44:58 -04:00
499621e7bb [CherryPick][FSDP2+TP] Disable 2D state_dict (#129519) (#129923)
[FSDP2+TP] Disable 2D state_dict (#129519)

Fixes #ISSUE_NUMBER

Gonna fill in the RFC but just want to run CI to see if anything else breaks.

Test:
```
python test/distributed/_composable/fsdp/test_fully_shard_training.py -k test_raise_not_implemented_state_dict_if_2d
```

Pull Request resolved: https://github.com/pytorch/pytorch/pull/129519
Approved by: https://github.com/awgu

(cherry picked from commit 83e6ec2ccdf1333b946baf8b749b345addf641e8)
2024-07-02 10:51:39 -04:00
e5bda62849 [CherryPick][DCP] Fix Optimizer Learning Rate not being loaded correctly (#129398) (#129683)
[DCP] Fix Optimizer Learning Rate not being loaded correctly (#129398)

Fixes #129079

Currently, the tensor object is loading correctly in-place, but the non-tensor object such as learning rate is not load correctly after f518cf811d, which is a regression introduced in 2.3.

This PR replaces tree_map_only and manual replacement of the state dict items with _tree_map_only and fixes the regression of non-tensor loading.

Test:
```
python3 test/distributed/checkpoint/e2e/test_e2e_save_and_load.py -k test_init_state_dict
python3 test/distributed/checkpoint/test_tp_checkpoint.py -k test_tp_checkpoint_load_on_meta_device
```

Pull Request resolved: https://github.com/pytorch/pytorch/pull/129398
Approved by: https://github.com/fegin

(cherry picked from commit 8b8e2fcdda4eb2d15a57496b7b5eddd27966854f)
2024-07-02 10:41:41 -04:00
705e3ae420 Improve error message for weights_only load (#129783)
* Improve error message for weights_only load (#129705)

As @vmoens pointed out, the current error message does not make the "either/or" between setting `weights_only=False` and using `add_safe_globals` clear enough, and should print the code for the user to call `add_safe_globals`

New formatting looks like such

In the case that `add_safe_globals` can be used

```python
>>> import torch
>>> from torch.testing._internal.two_tensor import TwoTensor
>>> torch.save(TwoTensor(torch.randn(2), torch.randn(2)), "two_tensor.pt")
>>> torch.load("two_tensor.pt", weights_only=True)
Traceback (most recent call last):
  File "<stdin>", line 1, in <module>
  File "/data/users/mg1998/pytorch/torch/serialization.py", line 1225, in load
    raise pickle.UnpicklingError(_get_wo_message(str(e))) from None
_pickle.UnpicklingError: Weights only load failed. This file can still be loaded, to do so you have two options
        (1) Re-running `torch.load` with `weights_only` set to `False` will likely succeed, but it can result in arbitrary code execution. Do it only if you got the file from a trusted source.
        (2) Alternatively, to load with `weights_only=True` please check the recommended steps in the following error message.
        WeightsUnpickler error: Unsupported global: GLOBAL torch.testing._internal.two_tensor.TwoTensor was not an allowed global by default. Please use `torch.serialization.add_safe_globals([TwoTensor])` to allowlist this global if you trust this class/function.

Check the documentation of torch.load to learn more about types accepted by default with weights_only https://pytorch.org/docs/stable/generated/torch.load.html.
```

For other issues (unsupported bytecode)
```python
>>> import torch
>>> t = torch.randn(2, 3)
>>> torch.save(t, "protocol_5.pt", pickle_protocol=5)
>>> torch.load("protocol_5.pt", weights_only=True)
/data/users/mg1998/pytorch/torch/_weights_only_unpickler.py:359: UserWarning: Detected pickle protocol 5 in the checkpoint, which was not the default pickle protocol used by `torch.load` (2). The weights_only Unpickler might not support all instructions implemented by this protocol, please file an issue for adding support if you encounter this.
  warnings.warn(
Traceback (most recent call last):
  File "<stdin>", line 1, in <module>
  File "/data/users/mg1998/pytorch/torch/serialization.py", line 1225, in load
    raise pickle.UnpicklingError(_get_wo_message(str(e))) from None
_pickle.UnpicklingError: Weights only load failed. Re-running `torch.load` with `weights_only` set to `False` will likely succeed, but it can result in arbitrary code execution. Do it only if you got the file from a trusted source.
 Please file an issue with the following so that we can make `weights_only=True` compatible with your use case: WeightsUnpickler error: Unsupported operand 149

Check the documentation of torch.load to learn more about types accepted by default with weights_only https://pytorch.org/docs/stable/generated/torch.load.html.
```

Old formatting would have been like:
```python
Traceback (most recent call last):
  File "<stdin>", line 1, in <module>
  File "/data/users/mg1998/pytorch/torch/serialization.py", line 1203, in load
    raise pickle.UnpicklingError(UNSAFE_MESSAGE + str(e)) from None
_pickle.UnpicklingError: Weights only load failed. Re-running `torch.load` with `weights_only` set to `False` will likely succeed, but it can result in arbitrary code execution. Do it only if you get the file from a trusted source. Alternatively, to load with `weights_only` please check the recommended steps in the following error message. WeightsUnpickler error: Unsupported global: GLOBAL torch.testing._internal.two_tensor.TwoTensor was not an allowed global by default. Please use `torch.serialization.add_safe_globals` to allowlist this global if you trust this class/function.
```

Pull Request resolved: https://github.com/pytorch/pytorch/pull/129705
Approved by: https://github.com/albanD, https://github.com/vmoens
ghstack dependencies: #129239, #129396, #129509

(cherry picked from commit 45f3e20527c0cc27a4d6c3b93f2fa529b80556bb)

* Fix pickle import when rebase onto release/2.4

* Update torch/serialization.py

fix bad rebase again

---------

Co-authored-by: Mikayla Gawarecki <mikaylagawarecki@gmail.com>
2024-06-29 13:01:36 -04:00
b26cde49b6 [Windows] remove mkl shared library dependency. (#129740)
[Windows] remove mkl shared library dependency. (#129493)

# Background
I have fixed pytorch Windows missing mkl shared library dependency issue: https://github.com/pytorch/pytorch/issues/124009
The solution is change torch_cpu module static link mkl library:
1. pytorch static link mkl PR: https://github.com/pytorch/pytorch/pull/124925
2. builder install mkl static library: https://github.com/pytorch/builder/pull/1790

Double confirmed current build is using mkl static link: https://github.com/pytorch/pytorch/issues/124009#issuecomment-2160941802

# Goal
Remove setup.py `install_requires` will install mkl shared lib on pytorch Windows. It is not required now, due to we have static linked it.
It will reduce the pytorch install network traffic and avoid install useless mkl shared library package.

Pull Request resolved: https://github.com/pytorch/pytorch/pull/129493
Approved by: https://github.com/malfet

(cherry picked from commit 424068d0d22908294f2e0705d7227c37244b9319)

Co-authored-by: Xu Han <xu.han@outlook.com>
2024-06-28 14:59:08 -04:00
12ad767daf [distributed] NCCL result code update (#129704)
[distributed] NCCL result code update (#128777)

The nccl result codes are outdated. This PR fixes #128756.

Fixes #128756

Pull Request resolved: https://github.com/pytorch/pytorch/pull/128777
Approved by: https://github.com/Skylion007

(cherry picked from commit c027c8935b25cdb99fce5595fa1a980df8cdb4ab)

Co-authored-by: Myungjin Lee <myungjle@cisco.com>
2024-06-28 08:25:26 -04:00
1164d3cb9c Add threadfence to 2-stage reduction for correct writes visibility (#129701)
Add threadfence to 2-stage reduction for correct writes visibility (#128455)

Final block accumulating 2-stage reduction result has to complete acquire pattern to make sure the writes of all other blocks are visible to it, see https://docs.nvidia.com/cuda/parallel-thread-execution/index.html?highlight=atom#release-and-acquire-patterns
Pull Request resolved: https://github.com/pytorch/pytorch/pull/128455
Approved by: https://github.com/eqy, https://github.com/ezyang

(cherry picked from commit 77a0ca66e4eb6919ed14a9491fa7579d06a29f3c)

Co-authored-by: Natalia Gimelshein <ngimel@meta.com>
2024-06-28 08:23:40 -04:00
9533637daa Inductor to fail gracefully on Voltas for bf16 tensors (#129699)
Inductor to fail gracefully on Voltas for bf16 tensors (#129288)

Volta(sm_7x) do not have a HW support for bfloat16 datatype, and while it is is emulated to ted in software, so PyTorch eager can use bfloat16 tensors, but not in Triton. So if graph with either CUDA bf16 input or output tensors is used, raise warnings and skip the frame.

Add optional parameter `including_emulation` to `torch.cuda.is_bf16_supported` method and call it from `torch._inductor.compile_fx. _check_triton_bf16_support`.

Test plan: Modify `is_bf16_supported` to return False and see that warning is generated

Fixes https://github.com/pytorch/pytorch/issues/118122 and https://github.com/pytorch/pytorch/issues/118581

Pull Request resolved: https://github.com/pytorch/pytorch/pull/129288
Approved by: https://github.com/eqy, https://github.com/jansel

(cherry picked from commit 14dc08ddc7dc3d8d2a66d15e4df0eec626a17fcd)

Co-authored-by: Nikita Shulga <nshulga@meta.com>
2024-06-28 08:22:31 -04:00
fadd3cc4ab [MacOS] Improve libomp packaging (#129697)
[MacOS] Improve libomp packaging (#129473)

Instead of replacing `@rpath/libomp.dylib` with `@loadper_path/libomp.dylib`, keep it in place and add `@loadper_path` as new rpath

This should prevent double-loading of OpenMP runtime, because in case of `@rpath` loader is allowed to reuse other libraries, but `loadper_path` directive forces it to load it from the location relative to the executable

Test plan:
- Prepare the environment
```shell
conda create -n py310-cf python=3.10 numpy pip -c conda-forge
conda activate py310-cf
pip install torch --index-url https://download.pytorch.org/whl/test/cpu
```
- Verify that OpenMP is loaded twice and than crashes
```shell
KMP_VERSION=true python -c "import numpy as np; import torch; print(torch.__version__, torch.backends.openmp.is_available()); print(torch.rand(300, 300).abs().max())"
```
output:
```
LLVM OMP version: 5.0.20140926
LLVM OMP library type: performance
LLVM OMP link type: dynamic
LLVM OMP build time: no_timestamp
LLVM OMP build compiler: Clang 16.0
LLVM OMP alternative compiler support: yes
LLVM OMP API version: 5.0 (201611)
LLVM OMP dynamic error checking: no
LLVM OMP thread affinity support: no
LLVM OMP version: 5.0.20140926
LLVM OMP library type: performance
LLVM OMP link type: dynamic
LLVM OMP build time: no_timestamp
LLVM OMP build compiler: Clang 12.0
LLVM OMP alternative compiler support: yes
LLVM OMP API version: 5.0 (201611)
LLVM OMP dynamic error checking: no
LLVM OMP thread affinity support: no
2.4.0 True
zsh: segmentation fault  KMP_VERSION=true python -c
```
- Install artifact from this PR and make sure it passes the same test
```shell
python -mpip install ~/Downloads/torch-2.5.0.dev20240625-cp310-none-macosx_11_0_arm64.whl
KMP_VERSION=true python -c "import numpy as np; import torch; print(torch.__version__, torch.backends.openmp.is_available()); print(torch.rand(300, 300).abs().max())"
```
output
```
LLVM OMP version: 5.0.20140926
LLVM OMP library type: performance
LLVM OMP link type: dynamic
LLVM OMP build time: no_timestamp
LLVM OMP build compiler: Clang 16.0
LLVM OMP alternative compiler support: yes
LLVM OMP API version: 5.0 (201611)
LLVM OMP dynamic error checking: no
LLVM OMP thread affinity support: no
2.5.0.dev20240625 True
tensor(1.0000)
```
- Make sure it still uses bundled OpenMP if none is available in the environment
```
conda uninstall numpy -c conda-forge
KMP_VERSION=true python -c "from ctypes import cdll, c_char_p, c_uint32; import torch; from ctypes import cdll, c_char_p, c_uint32; libdyld = cdll.LoadLibrary('libSystem.dylib'); libdyld._dyld_image_count.restype = c_uint32; libdyld._dyld_get_image_name.restype = c_char_p; libdyld._dyld_get_image_name.argtypes = [c_uint32]; print(torch.rand(300, 300).abs().max()); libs = [libdyld._dyld_get_image_name(i).decode('ascii') for i in range(libdyld._dyld_image_count())]; print([l for l in libs if 'libomp.dylib' in l])"
```

Fixes https://github.com/pytorch/pytorch/issues/124497 and https://github.com/pytorch/pytorch/issues/126385
Pull Request resolved: https://github.com/pytorch/pytorch/pull/129473
Approved by: https://github.com/atalman

(cherry picked from commit 816e8a3f2171aa2b7350bcd2106fe556de7db7a1)

Co-authored-by: Nikita Shulga <nikita.shulga@gmail.com>
2024-06-28 08:19:45 -04:00
80277a50bc Remove cuda check in the CUDAGraph destructor (#129696)
Remove cuda check in the CUDAGraph destructor (#127382)

Fixes #125804

Pull Request resolved: https://github.com/pytorch/pytorch/pull/127382
Approved by: https://github.com/eqy, https://github.com/eellison

(cherry picked from commit d3e8b8bf47206c27b6c5fdc021f7c2c3a8009521)

Co-authored-by: Frank Lin <eee4017@gmail.com>
2024-06-28 08:18:07 -04:00
d0831d65aa Tunableop hotfix2 unit tests, release/2.4 (#129607)
TunableOp hotfix, unit test follow-up

PR #129281 was landed to fix critical issues but did not contain unit
tests to exercise those issues.  This is a follow-up set of unit tests
that would exercise the problems seen previously.
2024-06-27 16:53:43 -04:00
ca8d4d1751 TunableOp hotfix (#129499)
TunableOp hotfix (#129281)

Fixes.
- PYTORCH_TUNABLEOP_NUMERICAL_CHECK=1 had a memory leak.
- The strided batched gemm size calculation for buffer rotation was incorrect resulting in a mem fault.
Pull Request resolved: https://github.com/pytorch/pytorch/pull/129281
Approved by: https://github.com/xw285cornell, https://github.com/eqy, https://github.com/mxz297

(cherry picked from commit e68ee2cadb76f84c3bda788fc3b9c8194e8d921e)

Co-authored-by: Jeff Daily <jeff.daily@amd.com>
2024-06-27 16:51:40 -04:00
3d7d7927ca Upload release tag source code to s3 (#129600)
Upload release tag source code to s3 (#128842)

Upload tarball containing source code to s3 for release tags

Can be found here https://us-east-1.console.aws.amazon.com/s3/buckets/pytorch?region=us-east-1&bucketType=general&prefix=source_code/test/&showversions=false

D58695048 for adding permissions to allow uploading to the s3 folder
Pull Request resolved: https://github.com/pytorch/pytorch/pull/128842
Approved by: https://github.com/atalman, https://github.com/malfet

(cherry picked from commit 795db8097558e4679784f403e278d38e30c6583d)

Co-authored-by: Catherine Lee <csl@fb.com>
2024-06-27 12:32:41 -04:00
5f7de217cb Add warning for weights_only (#129572)
ghstack-source-id: 1098e33fad7c0d38688912c2edb375d77976bbc7
Pull Request resolved: https://github.com/pytorch/pytorch/pull/129239
2024-06-27 12:31:21 -04:00
072d9e8ac9 Add example for torch.serialization.add_safe_globals (#129573)
ghstack-source-id: e23d66f6ab317274e36519141474a6010db54e59
Pull Request resolved: https://github.com/pytorch/pytorch/pull/129396
2024-06-27 12:30:13 -04:00
1f84579407 Cherry pick #129244 #129251 #129509 (#129574)
* Fix allowlisting of builtins for weights_only unpickler (#129244)

Since we use [`DEFAULT_PROTOCOL=2`](https://github.com/pytorch/pytorch/blob/main/torch/serialization.py#L62), some functions/classes that were renamed from python 2-->3 will be pickled with their python2 name. This PR ensures that when a mod `GLOBAL <python2_mod>.<python2_name> ` is encountered, [following the strategy used by pickle](https://github.com/python/cpython/blob/main/Lib/pickle.py#L1590C13-L1593C63) it is properly mapped to `<python3_mod>.<python3_name>`.

This fix ensures that `add_safe_globals` works properly for such functions/classes (i.e. users will allowlist the python3 func and the weights_only unpickler will do the appropriate translation when checking whether a class was allowlisted).

An example is as follows:
`__builtin__` was named to `builtins`, see the [release notes for Python 3.0](https://docs.python.org/3/whatsnew/3.0.html)

> Renamed module `__builtin__` to [`builtins`](https://docs.python.org/3/library/builtins.html#module-builtins) (removing the underscores, adding an ‘s’). The __builtins__ variable found in most global namespaces is unchanged. To modify a builtin, you should use [builtins](https://docs.python.org/3/library/builtins.html#module-builtins), not `__builtins__`!

However, since we use [`DEFAULT_PROTOCOL=2`](https://github.com/pytorch/pytorch/blob/main/torch/serialization.py#L62), builtins will be pickled with their module string as `__builtin__`.

```python
>>> import pickle
>>> import pickletools
>>> print.__module__
'builtins'
>>> with open('print.pkl', 'wb') as f:
>>>      pickle.dump(print, f, protocol=2) # 2 because this is the default protocol used by pytorch
>>> with open('print.pkl', 'rb') as f:
>>>     pickletools.dis(f)
0: \x80 PROTO      2
2: c    GLOBAL     '__builtin__ print' # pickle saves the module string as __builtin__ !!! :(
21: q    BINPUT     0
23: .    STOP
```

Pull Request resolved: https://github.com/pytorch/pytorch/pull/129244
Approved by: https://github.com/albanD

* Allow BUILD/NEWOBJ instruction for items added via torch.serialization.add_safe_globals (#129251)

Previously, allowlisting functions/classes via `torch.serialization.add_safe_globals(obj)` for the `weights_only` Unpickler had the following effect:

- For a [`GLOBAL`](https://github.com/python/cpython/blob/3.12/Lib/pickletools.py#L1926-L1939) instruction, `GLOBAL obj.__module__ obj.__name__` would be allowed and translated back to obj to be pushed back to the stack.
- For a [`REDUCE`](https://github.com/python/cpython/blob/3.12/Lib/pickletools.py#L1926-L1982) instruction where we expect the stack to contain `func` and `args`, `func` is allowed if it was added via `add_safe_globals`

However, it did not have an effect on `BUILD` and `NEWOBJ` instructions

Some classes may be rebuilt via [`NEWOBJ`](https://github.com/python/cpython/blob/3.12/Lib/pickletools.py#L2091-L2104) instruction, which indicates that their constructor should be used to rebuild the class.

Further, a [`BUILD`](https://github.com/python/cpython/blob/3.12/Lib/pickletools.py#L1984-L2007) instruction might be used if an object's `__reduce__`/`__reduce_ex__` returns a non-None value for `state`. Which indicates a `__setstate__` or `__dict__.update`.

**This PR makes sure that adding objects to the allowlist will also allow `NEWOBJ` and `BUILD` instructions for them.**

In particular, the update for `NEWOBJ` should unblock allowlisting of [`ScaledMMConfig`](d4ade877df/float8_experimental/float8_tensor.py (L26-L30)) in float8_experimental @drisspg

Pull Request resolved: https://github.com/pytorch/pytorch/pull/129251
Approved by: https://github.com/albanD
ghstack dependencies: #129244

* Remove dependency on private _compat_pickle in CPython

ghstack-source-id: 7d6ee402dd0acbaa23c362475b96367f90447cc8
Pull Request resolved: https://github.com/pytorch/pytorch/pull/129509
2024-06-27 12:29:21 -04:00
4d83bca8d8 Revert "Cherry pick #129244, #129251, #129239, 129396 into release/2.4" (#129571)
Revert "Cherry pick #129244, #129251, #129239, 129396 into release/2.4 (#129478)"

This reverts commit 22a4d46e2b4d5404e7df374e8ecb21026feb373e.
2024-06-26 10:56:24 -04:00
04339eec05 [Inductor][Intel GPU] Support reduction split. (#129120) (#129337)
Pull Request resolved: https://github.com/pytorch/pytorch/pull/129120
Approved by: https://github.com/EikanWang, https://github.com/jansel, https://github.com/desertfire
ghstack dependencies: #129124

(cherry picked from commit b0ae0db8156f186eaed69b0332d8698a8dfc799a)
2024-06-26 10:48:42 -04:00
22a4d46e2b Cherry pick #129244, #129251, #129239, 129396 into release/2.4 (#129478)
* Fix allowlisting of builtins for weights_only unpickler

ghstack-source-id: de329c75af5e022f1a4517cbfca2bd7f02baef4e
Pull Request resolved: https://github.com/pytorch/pytorch/pull/129244

(cherry picked from commit cc99c015b7f74dcec5d77ea69c75aa3c3e152512)

* Allow NEWOBJ instruction for items added via torch.serialization.add_safe_globals

ghstack-source-id: 34a8fc32d256aa5fe68d4da8ea8f54e536a7ee31
Pull Request resolved: https://github.com/pytorch/pytorch/pull/129251

(cherry picked from commit 50b888dc236b3bcc9dfe224ade311e66892fb64b)

* Add warning for weights_only

ghstack-source-id: ffa772cce121418ec96e13d1d93b6654f75f1c7d
Pull Request resolved: https://github.com/pytorch/pytorch/pull/129239

(cherry picked from commit b3f9aa3f8f4c03b40fed53423d4a0a9340e3bd09)

* Add example for torch.serialization.add_safe_globals

ghstack-source-id: 6dc3275b4e58393813ab43b82fe5683e0d4559af
Pull Request resolved: https://github.com/pytorch/pytorch/pull/129396

(cherry picked from commit ed8c36eda0f4dcf7b1d9c5eb2fb1cdccdf3fee6e)
2024-06-26 10:46:20 -04:00
560869918d Documentations for XPU functionality to PyTorch (#129266)
* Adding a note for Getting Started with PyTorch on Intel GPUs (#127872)

Adding a note for Getting Started with PyTorch on Intel GPUs

Pull Request resolved: https://github.com/pytorch/pytorch/pull/127872
Approved by: https://github.com/svekars

* update amp example to device-agnostic (#127278)

As support for Intel GPU has been upstreamed, this PR is to make the AMP example doc device-agnostic.

Co-authored-by: Dmitry Rogozhkin <dmitry.v.rogozhkin@intel.com>
Pull Request resolved: https://github.com/pytorch/pytorch/pull/127278
Approved by: https://github.com/dvrogozh, https://github.com/EikanWang, https://github.com/svekars

* add xpu to torch.compile (#127279)

As support for Intel GPU has been upstreamed, this PR is to add the XPU-related contents to torch.compile doc.
Pull Request resolved: https://github.com/pytorch/pytorch/pull/127279
Approved by: https://github.com/dvrogozh, https://github.com/svekars

* add xpu to torch.tensors (#127280)

As support for Intel GPU has been upstreamed, this PR is to add the XPU-related contents to torch.tensors doc.
Pull Request resolved: https://github.com/pytorch/pytorch/pull/127280
Approved by: https://github.com/svekars

* add xpu for amp (#127276)

As support for Intel GPU has been upstreamed, this PR is to add the XPU-related contents to AMP doc.

Co-authored-by: Yu, Guangye <guangye.yu@intel.com>
Pull Request resolved: https://github.com/pytorch/pytorch/pull/127276
Approved by: https://github.com/dvrogozh, https://github.com/albanD, https://github.com/malfet

---------

Co-authored-by: Zheng, Zhaoqiong <zhaoqiong.zheng@intel.com>
2024-06-26 10:33:09 -04:00
2bf37985b1 Support HSDP + Monolith Checkpointing (#128446) (#129254)
Fixes #128444. Rank 0 check should be in the same group as the broadcast

Pull Request resolved: https://github.com/pytorch/pytorch/pull/128446
Approved by: https://github.com/fegin

(cherry picked from commit 153362fbc9e8642fb851a4de3b99e3871a2cc714)

Co-authored-by: Mihir Patel <mihir.v.patel7@gmail.com>
2024-06-26 10:31:15 -04:00
491e9e2d4a [DSD] Add unittest to verify HSDP1 + broadcast_from_rank0 (#128755) (#129255)
HSDP1 + broadcast_from_rank0 actually behaves differently from FSDP1 + broadcast_from_rank0. So we need an unittest to cover this use case.

This test relies on the fix from https://github.com/pytorch/pytorch/pull/128446.

Differential Revision: [D58621436](https://our.internmc.facebook.com/intern/diff/D58621436/)

Pull Request resolved: https://github.com/pytorch/pytorch/pull/128755
Approved by: https://github.com/Skylion007, https://github.com/wz337
ghstack dependencies: #128685

(cherry picked from commit fe8558b7aa4ce55d06893c48d5cb00b7a7eb7dae)
2024-06-26 10:30:44 -04:00
ec19059347 [DSD] Correctly handle shared parameters for optimizer state_dict (#1… (#129252)
[DSD] Correctly handle shared parameters for optimizer state_dict (#128685)

*
Fixes https://github.com/pytorch/pytorch/issues/128011

See the discussion in https://github.com/pytorch/pytorch/pull/128076

Current implementation of `set_optimizer_state_dict()` assumes that all the fqns returned by `_get_fqns()` must exist in the optimizer state_dict. This is not true if the model has shared parameters. In such a case, only one fqn of the shared parameters will appear in the optimizer state_dict. This PR addresses the issue.

Differential Revision: [D58573487](https://our.internmc.facebook.com/intern/diff/D58573487/)

Pull Request resolved: https://github.com/pytorch/pytorch/pull/128685
Approved by: https://github.com/LucasLLC

(cherry picked from commit 1a527915a64b8e5f60951715b09fa294b1a8844f)
2024-06-26 10:27:36 -04:00
04e98d3d0e [cpp_extension][inductor] Fix sleef windows depends. (#128770) (#128811)
# Issue:
During I'm working on enable inductor on PyTorch Windows, I found the sleef lib dependency issue.
<img width="1011" alt="image" src="https://github.com/pytorch/pytorch/assets/8433590/423bd854-3c5f-468f-9a64-a392d9b514e3">

# Analysis:
After we enabled SIMD on PyTorch Windows(https://github.com/pytorch/pytorch/pull/118980 ), the sleef functions are called from VEC headers. It bring the sleef to the dependency.

Here is a different between Windows and Linux OS.
## Linux :
Linux is default export its functions, so libtorch_cpu.so static link to sleef.a, and then It also export sleef's functions.
<img width="647" alt="image" src="https://github.com/pytorch/pytorch/assets/8433590/00ac536c-33fc-4943-a435-25590508840d">

## Windows:
Windows is by default not export its functions, and have many limitation to export functions, reference: https://github.com/pytorch/pytorch/issues/80604
We can't package sleef functions via torch_cpu.dll like Linux.

# Solution:
Acturally, we also packaged sleef static lib as a part of release. We just need to help user link to sleef.lib, it should be fine.
1. Add sleef to cpp_builder for inductor.
2. Add sleef to cpp_extension for C++ extesion.

Pull Request resolved: https://github.com/pytorch/pytorch/pull/128770
Approved by: https://github.com/jgong5, https://github.com/jansel
2024-06-26 10:24:17 -04:00
699c056479 [ROCm] Include hsa headers for rocm-triton whl (#129235)
* Include hsa headers for rocm-triton whl

* Update triton pin to release/3.0.x tip

* Update .ci/docker/ci_commit_pins/triton-rocm.txt

---------

Co-authored-by: Andrey Talman <atalman@fb.com>
2024-06-21 13:19:23 -04:00
49d2eec960 [custom ops] Switch out references from old landing page to new landi… (#129237)
[custom ops] Switch out references from old landing page to new landing page (#129178)

Test Plan:
- existing tests

Pull Request resolved: https://github.com/pytorch/pytorch/pull/129178
Approved by: https://github.com/albanD
ghstack dependencies: #129177
2024-06-21 09:18:50 -07:00
165e09874b [docs] Redirect custom ops landing page to the correct place (#129177) (#129236)
I'm moving it to pytorch/tutorials
Pull Request resolved: https://github.com/pytorch/pytorch/pull/129177
Approved by: https://github.com/albanD
2024-06-21 09:18:13 -07:00
93c51dc84b Re-enable py3.12 nightly wheel builds and add triton dependency for ROCm (#129161)
* Re-enable py3.12 nightly wheel builds and add triton dependency for ROCm  (#128525)

The llnl-hatchet developers have published the py3.12 binaries on [PyPI](https://pypi.org/project/llnl-hatchet/#files). In fact, looking [here](https://download.pytorch.org/whl/nightly/llnl-hatchet), it seems we already have the py3.12 wheels mirrored. This should allow us to re-enable py3.12 binaries for ROCm.

This PR reverts commit 9d849d4312cd1e62d97b9e9d58979ec78d36c95f.

It also adds the pytorch-triton-rocm dependency for torch wheels on ROCm since pytorch-triton-rocm py3.12 wheels are available now

Fixes #ISSUE_NUMBER

Pull Request resolved: https://github.com/pytorch/pytorch/pull/128525
Approved by: https://github.com/malfet

(cherry picked from commit a6ac6447b55bcf910dee5f925c2c17673f162a36)

* Regenerate workflows

* regenerate-2

---------

Co-authored-by: Jithun Nair <jithun.nair@amd.com>
Co-authored-by: atalman <atalman@fb.com>
2024-06-21 10:28:06 -04:00
67a815abd2 [Release only] Temporary change to depend on pytorch-triton (#129232)
[Release only] Temporary change to depend ot pytorch-triton
2024-06-21 09:58:07 -04:00
d2e4cc71f1 [inductor][ci] Fix torchbench dependency issue with numpy (#129074)
[inductor][ci] Fix torchbench dependency issue with numpy (#128968)

For some reason, pip will always upgrade the numpy version even when an older version has been installed.
We have to lock numpy version to the old version to make this constraint explicit.

Torchbench commit: 23512dbebd

Second attempt to fix #128845

Pull Request resolved: https://github.com/pytorch/pytorch/pull/128968
Approved by: https://github.com/eellison

(cherry picked from commit 118f9ceb7c9ec608a845b40c2142f1a1720b73c9)

Co-authored-by: Xu Zhao <xzhao9@meta.com>
2024-06-21 09:19:22 -04:00
0233f8df5b [ROCm] [Triton] - Include roctracer headers in triton whl (#129227)
Include roctracer header
2024-06-21 09:18:47 -04:00
434bf9559f [Release 2.4] Release only changes for triton 3.0.x build (#129143)
* [Release only changes] Release changes for triton 3.0

* fix
2024-06-20 11:22:10 -04:00
50e57d4f3f Revert "[Release 2.4] Release only changes - use pinned triton." (#129139)
Revert "[Release 2.4] Release only changes - use pinned triton. (#128388)"

This reverts commit 1cd41997e99ae1722be3fe88e1867af5f6779433.
2024-06-20 10:15:27 -04:00
edcc77dadb Remove leftover warning causing log spew (#128837)
Original PR: #128688

This warning was left by mistake, and is uninformative (the user is doing nothing wrong) and causing log spew in trainings. See #120750 (comment)
2024-06-19 12:06:47 -04:00
0e0a9c5a5c [Inductor] Fix the High Order Op layout issue (#128275) (#128834)
Fix the issue: https://github.com/pytorch/pytorch/issues/127995

- In current implementation of creating `FallbackKernel`, the `device` of the `NoneLayout` is set to `None` when `example_output` returns from `cls.process_kernel` is `None`. 921aa194c7/torch/_inductor/ir.py (L5632-L5649)
- If a `ExternalKernel schedulerNode` has None device, the previous buffer will not flush before codegen this `ExternalKernel schedulerNode`  which causes the wrong generated code.
ef2b5ed500/torch/_inductor/scheduler.py (L2701-L2709)

**Test Plan**
```
python -u -m pytest -s -v test/higher_order_ops/test_with_effects.py -k test_compile_inductor_external_op_return_none
```

Pull Request resolved: https://github.com/pytorch/pytorch/pull/128275
Approved by: https://github.com/eellison

Co-authored-by: leslie-fang-intel <leslie.fang@intel.com>
2024-06-19 12:05:13 -04:00
4af5000bff [Port][Quant][Inductor] Bug fix: mutation nodes not handled correctly for QLinearPointwiseBinaryPT2E (#128591)
[Quant][Inductor] Bug fix: mutation nodes not handled correctly for QLinearPointwiseBinaryPT2E (#127592)

Fixes #127402

- Revert some changes to `ir.MutationOutput` and inductor/test_flex_attention.py
- Add checks of mutation for QLinearPointwiseBinaryPT2E

Pull Request resolved: https://github.com/pytorch/pytorch/pull/127592
Approved by: https://github.com/leslie-fang-intel, https://github.com/Chillee
2024-06-19 11:46:53 -04:00
562cdc2084 [tp] refactor and fix PrepareModuleInput for DTensor inputs (#128431) (#128719)
as titled, this PR refactors the PrepareModuleInput style to have common
method prepare_input_arg, allow both args/kwargs to reuse this logic

This also fixes https://github.com/pytorch/pytorch/issues/128365

Pull Request resolved: https://github.com/pytorch/pytorch/pull/128431
Approved by: https://github.com/awgu

(cherry picked from commit 7775fee10f31ee683bd7beee9a5a9829c6574637)
2024-06-19 11:35:06 -04:00
b1d53f07b2 [inductor] fix compile time regression by caching get_gpu_type (#128363) (#128717)
We observed signficant compile time regression in torchtitan when turning
on 2D parallel + torch.compile recently. So I decided to get a deeper
understanding why.

It turns out this is affecting **all the trainings** that have functional collectives
captured in the graph, not only 2D parallel (2D parallel was just the
job that happen to have collectives captured in the TP region).

The root cause is because when doing inductor lowering, we are calling
the comm analysis pass to get a estimated collective time for each
collective node in the graph, for each call to check the collective
node, we are calling `get_gpu_type()`, which under the hood calls a
`torch.utils.collect_env.run` to get the GPU info. However, this call is
super expensive! The reason is that this call effectively spawns a new
process and call `nvidia-smi` to get the GPU info, so the cost is **linear**
to the number of collective nodes in the graph.

see https://github.com/pytorch/pytorch/blob/main/torch/utils/collect_env.py#L75

The fix is to add a lru cache to the function, so that we only call this
once and reuse the cached results afterwards

torchtitan benchmark shows:
* before this fix: 2D parallel + fp8 compile time: 6min +
* after this fix: 2D parallel + fp8 compile time: 2min 48s (more than 100% improvement)

There're more room to improve the compile time, but this PR is trying to fix the biggest regression I found so far.

Pull Request resolved: https://github.com/pytorch/pytorch/pull/128363
Approved by: https://github.com/yf225

(cherry picked from commit 8a09940a543d4c2fd23a5c78edbf1ac24d481b45)
2024-06-19 11:31:16 -04:00
86271445d6 [Inductor] Update Intel GPU Triton commit pin. (#124842) (#128615)
Update Intel triton for Pytorch 2.4 release.

Pull Request resolved: https://github.com/pytorch/pytorch/pull/124842
Approved by: https://github.com/EikanWang

(cherry picked from commit cf7adc2fa1c5c3b8e8cc5464a03823b6752958ad)
2024-06-19 10:31:08 -04:00
d71de3c95c Revert "Make torch_geometric models compatible with export (#123403)"… (#128511)
Revert "Make torch_geometric models compatible with export (#123403)" (#128377)

This reverts commit d78991a7381adb3df5e9b63c365db4506643edce.

This PR reverts https://github.com/pytorch/pytorch/pull/123403 to fix the performance regression as discussed in https://github.com/pytorch/pytorch/issues/127513#issuecomment-2158835653.

Pull Request resolved: https://github.com/pytorch/pytorch/pull/128377
Approved by: https://github.com/jgong5, https://github.com/angelayi, https://github.com/desertfire

(cherry picked from commit 5ef70faaa76364a73cd7f9da2d3f8e23da218b02)
2024-06-19 10:28:01 -04:00
e7dde73d43 [custom_op] stop using nonlocals to store information (#128547) (#128616)
Fixes https://github.com/pytorch/pytorch/issues/128544
Fixes https://github.com/pytorch/pytorch/issues/128535

We had a problem with multithreading where the nonlocals were being
clobbered. In the first place, we stored these nonlocals because we
wanted to ferry information from an autograd.Function.apply to
autograd.Function.forward.

Our new approach is:
- pass the information directly as an input to the
  autograd.Function.apply. This means that the autograd.Function.forward
  will receive the information too.
- this messes up ctx.needs_input_grad, which has an element per input to
  forward. The user should not see the additional information we passed.
  We fix this by temporarily overriding ctx.needs_input_grad to the
  right thing.
- this exposed a bug in that ctx.needs_input_grad wasn't correct for
  TensorList inputs. This PR fixes that too.

Test Plan:
- existing and new tests
Pull Request resolved: https://github.com/pytorch/pytorch/pull/128547
Approved by: https://github.com/williamwen42, https://github.com/soulitzer
2024-06-19 10:23:12 -04:00
9ad8a5b657 Clean up xpu ut to make CI happy (#128383) (#128614)
# Motivation
Before #127611 merged, the xpu-specific UT `test/test_xpu.py` was skipped temporarily. This PR aims to fix the UT bug introduced by #127741.

Pull Request resolved: https://github.com/pytorch/pytorch/pull/128383
Approved by: https://github.com/EikanWang

(cherry picked from commit 88974fedd06889bde8d1da297aa2bd10106f7c24)

Co-authored-by: Yu, Guangye <guangye.yu@intel.com>
2024-06-19 09:03:30 -04:00
ed624a0483 Change Dynamo's custom ops warning message to be less spammy (#128456) (#128581)
This is a short-term fix (for 2.4). In the longer term we should
fix https://github.com/pytorch/pytorch/issues/128430

The problem is that warnings.warn that are inside Dynamo print
all the time. Python warnings are supposed to print once, unless their
cache is reset: Dynamo ends up resetting that cache everytime it runs.

As a workaround we provide our own warn_once cache that is keyed on the
warning msg. I am not worried about this increasing memory usage because
that's effectively what python's warnings.warn cache does.

Test Plan:
- fix tests.

Pull Request resolved: https://github.com/pytorch/pytorch/pull/128456
Approved by: https://github.com/anijain2305
2024-06-19 08:56:23 -04:00
082c4f7e64 [inductor] fix linear add bias pattern (#128473) (#128577)
Fix https://github.com/pytorch/pytorch/issues/128287.
Previous the assertion in `linear_add_bias` are pretty bad
```
assert packed_weight_node.name == "_reorder_linear_weight"
assert transpose_weight_node.name == "permute_default"
```
because the `name` can be changed to `_reorder_linear_weight_id, permute_default_id` if we have more than 1 reorder/permute.

Check `target` instead `name` can solve this issue.

UT is also updated to have match more than 1 `linear_add_bias` pattern to cover this case.

Co-authored-by: Jiong Gong <jiong.gong@intel.com>
Pull Request resolved: https://github.com/pytorch/pytorch/pull/128473
Approved by: https://github.com/jgong5

(cherry picked from commit c53d65b3d3d5897c50d622acdd604ddfa8f57687)
2024-06-19 08:55:02 -04:00
459e2aa454 Revert "[cuDNN][SDPA] Remove TORCH_CUDNN_SDPA_ENABLED=1, enable cuDNN SDPA by default on H100 and 2nd on other archs >= sm80 (#125343)" (#128539)
This reverts commit 4c971932e839fc5da2b91906ad028d4654932bca.
2024-06-18 18:07:58 -07:00
6be0234f07 Revert "Deprecate torch._utils.is_compiling() and torch._dynamo.external_utils.is_compiling() (#127690)" (#128542)
This reverts commit 348b181a97abc2e636a6c18e5880a78e5d1dab94.
2024-06-18 18:07:35 -07:00
24a3885ef6 Revert "Set simdlen based on ATEN_CPU_CAPABILITY (#123514)" (#128541)
This reverts commit b66e3f0957b96b058c9b632ca60833d9717a9d8a because it was reverted on main.
2024-06-18 18:07:07 -07:00
62417c6ca9 [dynamo] Fix for #127696 (#128530)
[dynamo] Fix for #127696 (#128358)

Test Plan:
`buck2 test @//mode/dev-nosan //executorch/exir/backend/...`
https://www.internalfb.com/intern/testinfra/testrun/12666373989243932

Differential Revision: D58384518

Pull Request resolved: https://github.com/pytorch/pytorch/pull/128358
Approved by: https://github.com/ydwu4

(cherry picked from commit 4345d98663d31f23492cafc0062f515a47d96a78)

Co-authored-by: Angela Yi <angelayi@meta.com>
2024-06-18 18:54:20 -04:00
1cd41997e9 [Release 2.4] Release only changes - use pinned triton. (#128388)
[Release 2.4] Release only changes - use pinned triton version
2024-06-10 23:19:21 -04:00
c85e2cacd3 [Release 2.4] Release only changes (#128347)
* Release 2.4 - release only changes

* more required changes

* fix

* temp changes for triton release

* fix_lint
2024-06-10 18:37:41 -04:00
9144 changed files with 340379 additions and 761739 deletions

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@ -1 +1 @@
6.5.0
6.1.1

26
.buckconfig.oss Normal file
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@ -0,0 +1,26 @@
[pt]
is_oss=1
[buildfile]
name = BUCK.oss
includes = //tools/build_defs/select.bzl
[repositories]
bazel_skylib = third_party/bazel-skylib/
ovr_config = .
[download]
in_build = true
[cxx]
cxxflags = -std=c++17
ldflags = -Wl,--no-undefined
should_remap_host_platform = true
cpp = /usr/bin/clang
cc = /usr/bin/clang
cxx = /usr/bin/clang++
cxxpp = /usr/bin/clang++
ld = /usr/bin/clang++
[project]
default_flavors_mode=all

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@ -1,19 +0,0 @@
# Aarch64 (ARM/Graviton) Support Scripts
Scripts for building aarch64 PyTorch PIP Wheels. These scripts build the following wheels:
* torch
* torchvision
* torchaudio
* torchtext
* torchdata
## Aarch64_ci_build.sh
This script is design to support CD operations within PyPi manylinux aarch64 container, and be executed in the container. It prepares the container and then executes __aarch64_wheel_ci_build.py__ to build the wheels. The script "assumes" the PyTorch repo is located at: ```/pytorch``` and will put the wheels into ```/artifacts```.
### Usage
```DESIRED_PYTHON=<PythonVersion> aarch64_ci_build.sh```
__NOTE:__ CI build is currently __EXPERMINTAL__
## Build_aarch64_wheel.py
This app allows a person to build using AWS EC3 resources and requires AWS-CLI and Boto3 with AWS credentials to support building EC2 instances for the wheel builds. Can be used in a codebuild CD or from a local system.
### Usage
```build_aarch64_wheel.py --key-name <YourPemKey> --use-docker --python 3.8 --branch <RCtag>```

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@ -1,32 +0,0 @@
#!/bin/bash
set -eux -o pipefail
GPU_ARCH_VERSION=${GPU_ARCH_VERSION:-}
if [[ "$GPU_ARCH_VERSION" == *"12.6"* ]]; then
export TORCH_CUDA_ARCH_LIST="9.0"
elif [[ "$GPU_ARCH_VERSION" == *"12.8"* ]]; then
export TORCH_CUDA_ARCH_LIST="9.0;10.0;12.0"
fi
SCRIPTPATH="$( cd -- "$(dirname "$0")" >/dev/null 2>&1 ; pwd -P )"
source $SCRIPTPATH/aarch64_ci_setup.sh
###############################################################################
# Run aarch64 builder python
###############################################################################
cd /
# adding safe directory for git as the permissions will be
# on the mounted pytorch repo
git config --global --add safe.directory /pytorch
pip install -r /pytorch/requirements.txt
pip install auditwheel==6.2.0
if [ "$DESIRED_CUDA" = "cpu" ]; then
echo "BASE_CUDA_VERSION is not set. Building cpu wheel."
#USE_PRIORITIZED_TEXT_FOR_LD for enable linker script optimization https://github.com/pytorch/pytorch/pull/121975/files
USE_PRIORITIZED_TEXT_FOR_LD=1 python /pytorch/.ci/aarch64_linux/aarch64_wheel_ci_build.py --enable-mkldnn
else
echo "BASE_CUDA_VERSION is set to: $DESIRED_CUDA"
#USE_PRIORITIZED_TEXT_FOR_LD for enable linker script optimization https://github.com/pytorch/pytorch/pull/121975/files
USE_PRIORITIZED_TEXT_FOR_LD=1 python /pytorch/.ci/aarch64_linux/aarch64_wheel_ci_build.py --enable-mkldnn --enable-cuda
fi

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@ -1,21 +0,0 @@
#!/bin/bash
set -eux -o pipefail
# This script is used to prepare the Docker container for aarch64_ci_wheel_build.py python script
# By creating symlinks from desired /opt/python to /usr/local/bin/
NUMPY_VERSION=2.0.2
if [[ "$DESIRED_PYTHON" == "3.13" || "$DESIRED_PYTHON" == "3.13t" ]]; then
NUMPY_VERSION=2.1.2
fi
SCRIPTPATH="$( cd "$(dirname "$0")" ; pwd -P )"
source $SCRIPTPATH/../manywheel/set_desired_python.sh
pip install -q numpy==${NUMPY_VERSION} pyyaml==6.0.2 scons==4.7.0 ninja==1.11.1 patchelf==0.17.2
for tool in python python3 pip pip3 ninja scons patchelf; do
ln -sf ${DESIRED_PYTHON_BIN_DIR}/${tool} /usr/local/bin;
done
python --version

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@ -1,247 +0,0 @@
#!/usr/bin/env python3
# encoding: UTF-8
import os
import shutil
from subprocess import check_call, check_output
def list_dir(path: str) -> list[str]:
"""'
Helper for getting paths for Python
"""
return check_output(["ls", "-1", path]).decode().split("\n")
def build_ArmComputeLibrary() -> None:
"""
Using ArmComputeLibrary for aarch64 PyTorch
"""
print("Building Arm Compute Library")
acl_build_flags = [
"debug=0",
"neon=1",
"opencl=0",
"os=linux",
"openmp=1",
"cppthreads=0",
"arch=armv8a",
"multi_isa=1",
"fixed_format_kernels=1",
"build=native",
]
acl_install_dir = "/acl"
acl_checkout_dir = "ComputeLibrary"
os.makedirs(acl_install_dir)
check_call(
[
"git",
"clone",
"https://github.com/ARM-software/ComputeLibrary.git",
"-b",
"v25.02",
"--depth",
"1",
"--shallow-submodules",
]
)
check_call(
["scons", "Werror=1", "-j8", f"build_dir=/{acl_install_dir}/build"]
+ acl_build_flags,
cwd=acl_checkout_dir,
)
for d in ["arm_compute", "include", "utils", "support", "src"]:
shutil.copytree(f"{acl_checkout_dir}/{d}", f"{acl_install_dir}/{d}")
def update_wheel(wheel_path, desired_cuda) -> None:
"""
Update the cuda wheel libraries
"""
folder = os.path.dirname(wheel_path)
wheelname = os.path.basename(wheel_path)
os.mkdir(f"{folder}/tmp")
os.system(f"unzip {wheel_path} -d {folder}/tmp")
libs_to_copy = [
"/usr/local/cuda/extras/CUPTI/lib64/libcupti.so.12",
"/usr/local/cuda/lib64/libcudnn.so.9",
"/usr/local/cuda/lib64/libcublas.so.12",
"/usr/local/cuda/lib64/libcublasLt.so.12",
"/usr/local/cuda/lib64/libcudart.so.12",
"/usr/local/cuda/lib64/libcufft.so.11",
"/usr/local/cuda/lib64/libcusparse.so.12",
"/usr/local/cuda/lib64/libcusparseLt.so.0",
"/usr/local/cuda/lib64/libcusolver.so.11",
"/usr/local/cuda/lib64/libcurand.so.10",
"/usr/local/cuda/lib64/libnvToolsExt.so.1",
"/usr/local/cuda/lib64/libnvJitLink.so.12",
"/usr/local/cuda/lib64/libnvrtc.so.12",
"/usr/local/cuda/lib64/libcudnn_adv.so.9",
"/usr/local/cuda/lib64/libcudnn_cnn.so.9",
"/usr/local/cuda/lib64/libcudnn_graph.so.9",
"/usr/local/cuda/lib64/libcudnn_ops.so.9",
"/usr/local/cuda/lib64/libcudnn_engines_runtime_compiled.so.9",
"/usr/local/cuda/lib64/libcudnn_engines_precompiled.so.9",
"/usr/local/cuda/lib64/libcudnn_heuristic.so.9",
"/lib64/libgomp.so.1",
"/usr/lib64/libgfortran.so.5",
"/acl/build/libarm_compute.so",
"/acl/build/libarm_compute_graph.so",
]
if enable_cuda:
libs_to_copy += [
"/usr/local/lib/libnvpl_lapack_lp64_gomp.so.0",
"/usr/local/lib/libnvpl_blas_lp64_gomp.so.0",
"/usr/local/lib/libnvpl_lapack_core.so.0",
"/usr/local/lib/libnvpl_blas_core.so.0",
]
if "126" in desired_cuda:
libs_to_copy += [
"/usr/local/cuda/lib64/libnvrtc-builtins.so.12.6",
"/usr/local/cuda/lib64/libcufile.so.0",
"/usr/local/cuda/lib64/libcufile_rdma.so.1",
]
elif "128" in desired_cuda:
libs_to_copy += [
"/usr/local/cuda/lib64/libnvrtc-builtins.so.12.8",
"/usr/local/cuda/lib64/libcufile.so.0",
"/usr/local/cuda/lib64/libcufile_rdma.so.1",
]
else:
libs_to_copy += [
"/opt/OpenBLAS/lib/libopenblas.so.0",
]
# Copy libraries to unzipped_folder/a/lib
for lib_path in libs_to_copy:
lib_name = os.path.basename(lib_path)
shutil.copy2(lib_path, f"{folder}/tmp/torch/lib/{lib_name}")
os.system(
f"cd {folder}/tmp/torch/lib/; "
f"patchelf --set-rpath '$ORIGIN' --force-rpath {folder}/tmp/torch/lib/{lib_name}"
)
os.mkdir(f"{folder}/cuda_wheel")
os.system(f"cd {folder}/tmp/; zip -r {folder}/cuda_wheel/{wheelname} *")
shutil.move(
f"{folder}/cuda_wheel/{wheelname}",
f"{folder}/{wheelname}",
copy_function=shutil.copy2,
)
os.system(f"rm -rf {folder}/tmp/ {folder}/cuda_wheel/")
def complete_wheel(folder: str) -> str:
"""
Complete wheel build and put in artifact location
"""
wheel_name = list_dir(f"/{folder}/dist")[0]
# Please note for cuda we don't run auditwheel since we use custom script to package
# the cuda dependencies to the wheel file using update_wheel() method.
# However we need to make sure filename reflects the correct Manylinux platform.
if "pytorch" in folder and not enable_cuda:
print("Repairing Wheel with AuditWheel")
check_call(["auditwheel", "repair", f"dist/{wheel_name}"], cwd=folder)
repaired_wheel_name = list_dir(f"/{folder}/wheelhouse")[0]
print(f"Moving {repaired_wheel_name} wheel to /{folder}/dist")
os.rename(
f"/{folder}/wheelhouse/{repaired_wheel_name}",
f"/{folder}/dist/{repaired_wheel_name}",
)
else:
repaired_wheel_name = wheel_name.replace(
"linux_aarch64", "manylinux_2_28_aarch64"
)
print(f"Renaming {wheel_name} wheel to {repaired_wheel_name}")
os.rename(
f"/{folder}/dist/{wheel_name}",
f"/{folder}/dist/{repaired_wheel_name}",
)
print(f"Copying {repaired_wheel_name} to artifacts")
shutil.copy2(
f"/{folder}/dist/{repaired_wheel_name}", f"/artifacts/{repaired_wheel_name}"
)
return repaired_wheel_name
def parse_arguments():
"""
Parse inline arguments
"""
from argparse import ArgumentParser
parser = ArgumentParser("AARCH64 wheels python CD")
parser.add_argument("--debug", action="store_true")
parser.add_argument("--build-only", action="store_true")
parser.add_argument("--test-only", type=str)
parser.add_argument("--enable-mkldnn", action="store_true")
parser.add_argument("--enable-cuda", action="store_true")
return parser.parse_args()
if __name__ == "__main__":
"""
Entry Point
"""
args = parse_arguments()
enable_mkldnn = args.enable_mkldnn
enable_cuda = args.enable_cuda
branch = check_output(
["git", "rev-parse", "--abbrev-ref", "HEAD"], cwd="/pytorch"
).decode()
print("Building PyTorch wheel")
build_vars = "MAX_JOBS=5 CMAKE_SHARED_LINKER_FLAGS=-Wl,-z,max-page-size=0x10000 "
os.system("cd /pytorch; python setup.py clean")
override_package_version = os.getenv("OVERRIDE_PACKAGE_VERSION")
desired_cuda = os.getenv("DESIRED_CUDA")
if override_package_version is not None:
version = override_package_version
build_vars += (
f"BUILD_TEST=0 PYTORCH_BUILD_VERSION={version} PYTORCH_BUILD_NUMBER=1 "
)
elif branch in ["nightly", "main"]:
build_date = (
check_output(["git", "log", "--pretty=format:%cs", "-1"], cwd="/pytorch")
.decode()
.replace("-", "")
)
version = (
check_output(["cat", "version.txt"], cwd="/pytorch").decode().strip()[:-2]
)
if enable_cuda:
build_vars += f"BUILD_TEST=0 PYTORCH_BUILD_VERSION={version}.dev{build_date}+{desired_cuda} PYTORCH_BUILD_NUMBER=1 "
else:
build_vars += f"BUILD_TEST=0 PYTORCH_BUILD_VERSION={version}.dev{build_date} PYTORCH_BUILD_NUMBER=1 "
elif branch.startswith(("v1.", "v2.")):
build_vars += f"BUILD_TEST=0 PYTORCH_BUILD_VERSION={branch[1 : branch.find('-')]} PYTORCH_BUILD_NUMBER=1 "
if enable_mkldnn:
build_ArmComputeLibrary()
print("build pytorch with mkldnn+acl backend")
build_vars += (
"USE_MKLDNN=ON USE_MKLDNN_ACL=ON "
"ACL_ROOT_DIR=/acl "
"LD_LIBRARY_PATH=/pytorch/build/lib:/acl/build:$LD_LIBRARY_PATH "
"ACL_INCLUDE_DIR=/acl/build "
"ACL_LIBRARY=/acl/build "
)
if enable_cuda:
build_vars += "BLAS=NVPL "
else:
build_vars += "BLAS=OpenBLAS OpenBLAS_HOME=/OpenBLAS "
else:
print("build pytorch without mkldnn backend")
os.system(f"cd /pytorch; {build_vars} python3 setup.py bdist_wheel")
if enable_cuda:
print("Updating Cuda Dependency")
filename = os.listdir("/pytorch/dist/")
wheel_path = f"/pytorch/dist/{filename[0]}"
update_wheel(wheel_path, desired_cuda)
pytorch_wheel_name = complete_wheel("/pytorch/")
print(f"Build Complete. Created {pytorch_wheel_name}..")

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@ -1,87 +0,0 @@
#!/usr/bin/env python3
import os
import shutil
import sys
from subprocess import check_call
from tempfile import TemporaryDirectory
from auditwheel.elfutils import elf_file_filter
from auditwheel.lddtree import lddtree
from auditwheel.patcher import Patchelf
from auditwheel.repair import copylib
from auditwheel.wheeltools import InWheelCtx
def replace_tag(filename):
with open(filename) as f:
lines = f.read().split("\\n")
for i, line in enumerate(lines):
if not line.startswith("Tag: "):
continue
lines[i] = line.replace("-linux_", "-manylinux2014_")
print(f"Updated tag from {line} to {lines[i]}")
with open(filename, "w") as f:
f.write("\\n".join(lines))
class AlignedPatchelf(Patchelf):
def set_soname(self, file_name: str, new_soname: str) -> None:
check_call(
["patchelf", "--page-size", "65536", "--set-soname", new_soname, file_name]
)
def replace_needed(self, file_name: str, soname: str, new_soname: str) -> None:
check_call(
[
"patchelf",
"--page-size",
"65536",
"--replace-needed",
soname,
new_soname,
file_name,
]
)
def embed_library(whl_path, lib_soname, update_tag=False):
patcher = AlignedPatchelf()
out_dir = TemporaryDirectory()
whl_name = os.path.basename(whl_path)
tmp_whl_name = os.path.join(out_dir.name, whl_name)
with InWheelCtx(whl_path) as ctx:
torchlib_path = os.path.join(ctx._tmpdir.name, "torch", "lib")
ctx.out_wheel = tmp_whl_name
new_lib_path, new_lib_soname = None, None
for filename, _ in elf_file_filter(ctx.iter_files()):
if not filename.startswith("torch/lib"):
continue
libtree = lddtree(filename)
if lib_soname not in libtree["needed"]:
continue
lib_path = libtree["libs"][lib_soname]["path"]
if lib_path is None:
print(f"Can't embed {lib_soname} as it could not be found")
break
if lib_path.startswith(torchlib_path):
continue
if new_lib_path is None:
new_lib_soname, new_lib_path = copylib(lib_path, torchlib_path, patcher)
patcher.replace_needed(filename, lib_soname, new_lib_soname)
print(f"Replacing {lib_soname} with {new_lib_soname} for {filename}")
if update_tag:
# Add manylinux2014 tag
for filename in ctx.iter_files():
if os.path.basename(filename) != "WHEEL":
continue
replace_tag(filename)
shutil.move(tmp_whl_name, whl_path)
if __name__ == "__main__":
embed_library(
sys.argv[1], "libgomp.so.1", len(sys.argv) > 2 and sys.argv[2] == "--update-tag"
)

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@ -10,3 +10,5 @@ example: `py2-cuda9.0-cudnn7-ubuntu16.04`. The Docker images that are
built on Jenkins and are used in triggered builds already have this
environment variable set in their manifest. Also see
`./docker/jenkins/*/Dockerfile` and search for `BUILD_ENVIRONMENT`.
Our Jenkins installation is located at https://ci.pytorch.org/jenkins/.

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@ -13,6 +13,10 @@ if [[ "${BUILD_ENVIRONMENT}" == *-android* ]]; then
echo 'Skipping tests'
exit 0
fi
if [[ "${BUILD_ENVIRONMENT}" == *-rocm* ]]; then
# temporary to locate some kernel issues on the CI nodes
export HSAKMT_DEBUG_LEVEL=4
fi
# These additional packages are needed for circleci ROCm builds.
if [[ $BUILD_ENVIRONMENT == *rocm* ]]; then
# Need networkx 2.0 because bellmand_ford was moved in 2.1 . Scikit-image by

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@ -1,4 +1,4 @@
# Docker images for GitHub CI and CD
# Docker images for GitHub CI
This directory contains everything needed to build the Docker images
that are used in our CI.
@ -12,7 +12,7 @@ each image as the `BUILD_ENVIRONMENT` environment variable.
See `build.sh` for valid build environments (it's the giant switch).
## Docker CI builds
## Contents
* `build.sh` -- dispatch script to launch all builds
* `common` -- scripts used to execute individual Docker build stages
@ -21,12 +21,6 @@ See `build.sh` for valid build environments (it's the giant switch).
* `ubuntu-rocm` -- Dockerfile for Ubuntu image with ROCm support
* `ubuntu-xpu` -- Dockerfile for Ubuntu image with XPU support
### Docker CD builds
* `conda` - Dockerfile and build.sh to build Docker images used in nightly conda builds
* `manywheel` - Dockerfile and build.sh to build Docker images used in nightly manywheel builds
* `libtorch` - Dockerfile and build.sh to build Docker images used in nightly libtorch builds
## Usage
```bash
@ -34,5 +28,5 @@ See `build.sh` for valid build environments (it's the giant switch).
./build.sh pytorch-linux-bionic-py3.8-gcc9 -t myimage:latest
# Set flags (see build.sh) and build image
sudo bash -c 'TRITON=1 ./build.sh pytorch-linux-bionic-py3.8-gcc9 -t myimage:latest
sudo bash -c 'PROTOBUF=1 ./build.sh pytorch-linux-bionic-py3.8-gcc9 -t myimage:latest
```

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@ -1,99 +0,0 @@
ARG CUDA_VERSION=12.4
ARG BASE_TARGET=cuda${CUDA_VERSION}
ARG ROCM_IMAGE=rocm/dev-almalinux-8:6.3-complete
FROM amd64/almalinux:8 as base
ENV LC_ALL en_US.UTF-8
ENV LANG en_US.UTF-8
ENV LANGUAGE en_US.UTF-8
ARG DEVTOOLSET_VERSION=11
RUN yum -y update
RUN yum -y install epel-release
RUN yum install -y sudo wget curl perl util-linux xz bzip2 git patch which perl zlib-devel openssl-devel yum-utils autoconf automake make gcc-toolset-${DEVTOOLSET_VERSION}-toolchain
# Just add everything as a safe.directory for git since these will be used in multiple places with git
RUN git config --global --add safe.directory '*'
ENV PATH=/opt/rh/gcc-toolset-${DEVTOOLSET_VERSION}/root/usr/bin:$PATH
# cmake-3.18.4 from pip
RUN yum install -y python3-pip && \
python3 -mpip install cmake==3.18.4 && \
ln -s /usr/local/bin/cmake /usr/bin/cmake3
RUN rm -rf /usr/local/cuda-*
FROM base as openssl
ADD ./common/install_openssl.sh install_openssl.sh
RUN bash ./install_openssl.sh && rm install_openssl.sh
FROM base as patchelf
# Install patchelf
ADD ./common/install_patchelf.sh install_patchelf.sh
RUN bash ./install_patchelf.sh && rm install_patchelf.sh && cp $(which patchelf) /patchelf
FROM base as conda
# Install Anaconda
ADD ./common/install_conda_docker.sh install_conda.sh
RUN bash ./install_conda.sh && rm install_conda.sh
# Install CUDA
FROM base as cuda
ARG CUDA_VERSION=12.6
RUN rm -rf /usr/local/cuda-*
ADD ./common/install_cuda.sh install_cuda.sh
COPY ./common/install_nccl.sh install_nccl.sh
COPY ./ci_commit_pins/nccl-cu* /ci_commit_pins/
COPY ./common/install_cusparselt.sh install_cusparselt.sh
ENV CUDA_HOME=/usr/local/cuda-${CUDA_VERSION}
# Preserve CUDA_VERSION for the builds
ENV CUDA_VERSION=${CUDA_VERSION}
# Make things in our path by default
ENV PATH=/usr/local/cuda-${CUDA_VERSION}/bin:$PATH
FROM cuda as cuda11.8
RUN bash ./install_cuda.sh 11.8
ENV DESIRED_CUDA=11.8
FROM cuda as cuda12.6
RUN bash ./install_cuda.sh 12.6
ENV DESIRED_CUDA=12.6
FROM cuda as cuda12.8
RUN bash ./install_cuda.sh 12.8
ENV DESIRED_CUDA=12.8
FROM ${ROCM_IMAGE} as rocm
ENV PYTORCH_ROCM_ARCH="gfx900;gfx906;gfx908;gfx90a;gfx942;gfx1030;gfx1100;gfx1101;gfx1102;gfx1200;gfx1201"
ADD ./common/install_mkl.sh install_mkl.sh
RUN bash ./install_mkl.sh && rm install_mkl.sh
ENV MKLROOT /opt/intel
# Install MNIST test data
FROM base as mnist
ADD ./common/install_mnist.sh install_mnist.sh
RUN bash ./install_mnist.sh
FROM base as all_cuda
COPY --from=cuda11.8 /usr/local/cuda-11.8 /usr/local/cuda-11.8
COPY --from=cuda12.6 /usr/local/cuda-12.6 /usr/local/cuda-12.6
COPY --from=cuda12.4 /usr/local/cuda-12.8 /usr/local/cuda-12.8
# Final step
FROM ${BASE_TARGET} as final
COPY --from=openssl /opt/openssl /opt/openssl
COPY --from=patchelf /patchelf /usr/local/bin/patchelf
COPY --from=conda /opt/conda /opt/conda
# Add jni.h for java host build.
COPY ./common/install_jni.sh install_jni.sh
COPY ./java/jni.h jni.h
RUN bash ./install_jni.sh && rm install_jni.sh
ENV PATH /opt/conda/bin:$PATH
ENV LD_LIBRARY_PATH=/opt/rh/gcc-toolset-${DEVTOOLSET_VERSION}/root/usr/lib64:/opt/rh/gcc-toolset-${DEVTOOLSET_VERSION}/root/usr/lib:$LD_LIBRARY_PATH
COPY --from=mnist /usr/local/mnist /usr/local/mnist
RUN rm -rf /usr/local/cuda
RUN chmod o+rw /usr/local
RUN touch /.condarc && \
chmod o+rw /.condarc && \
chmod -R o+rw /opt/conda

View File

@ -1,70 +0,0 @@
#!/usr/bin/env bash
# Script used only in CD pipeline
set -exou pipefail
image="$1"
shift
if [ -z "${image}" ]; then
echo "Usage: $0 IMAGENAME:ARCHTAG"
exit 1
fi
# Go from imagename:tag to tag
DOCKER_TAG_PREFIX=$(echo "${image}" | awk -F':' '{print $2}')
CUDA_VERSION=""
ROCM_VERSION=""
EXTRA_BUILD_ARGS=""
if [[ "${DOCKER_TAG_PREFIX}" == cuda* ]]; then
# extract cuda version from image name and tag. e.g. manylinux2_28-builder:cuda12.8 returns 12.8
CUDA_VERSION=$(echo "${DOCKER_TAG_PREFIX}" | awk -F'cuda' '{print $2}')
EXTRA_BUILD_ARGS="--build-arg CUDA_VERSION=${CUDA_VERSION}"
elif [[ "${DOCKER_TAG_PREFIX}" == rocm* ]]; then
# extract rocm version from image name and tag. e.g. manylinux2_28-builder:rocm6.2.4 returns 6.2.4
ROCM_VERSION=$(echo "${DOCKER_TAG_PREFIX}" | awk -F'rocm' '{print $2}')
EXTRA_BUILD_ARGS="--build-arg ROCM_IMAGE=rocm/dev-almalinux-8:${ROCM_VERSION}-complete"
fi
case ${DOCKER_TAG_PREFIX} in
cpu)
BASE_TARGET=base
;;
cuda*)
BASE_TARGET=cuda${CUDA_VERSION}
;;
rocm*)
BASE_TARGET=rocm
;;
*)
echo "ERROR: Unknown docker tag ${DOCKER_TAG_PREFIX}"
exit 1
;;
esac
# TODO: Remove LimitNOFILE=1048576 patch once https://github.com/pytorch/test-infra/issues/5712
# is resolved. This patch is required in order to fix timing out of Docker build on Amazon Linux 2023.
sudo sed -i s/LimitNOFILE=infinity/LimitNOFILE=1048576/ /usr/lib/systemd/system/docker.service
sudo systemctl daemon-reload
sudo systemctl restart docker
export DOCKER_BUILDKIT=1
TOPDIR=$(git rev-parse --show-toplevel)
tmp_tag=$(basename "$(mktemp -u)" | tr '[:upper:]' '[:lower:]')
docker build \
--target final \
--progress plain \
--build-arg "BASE_TARGET=${BASE_TARGET}" \
--build-arg "DEVTOOLSET_VERSION=11" \
${EXTRA_BUILD_ARGS} \
-t ${tmp_tag} \
$@ \
-f "${TOPDIR}/.ci/docker/almalinux/Dockerfile" \
${TOPDIR}/.ci/docker/
if [ -n "${CUDA_VERSION}" ]; then
# Test that we're using the right CUDA compiler
docker run --rm "${tmp_tag}" nvcc --version | grep "cuda_${CUDA_VERSION}"
fi

View File

@ -0,0 +1 @@
<manifest package="org.pytorch.deps" />

View File

@ -0,0 +1,66 @@
buildscript {
ext {
minSdkVersion = 21
targetSdkVersion = 28
compileSdkVersion = 28
buildToolsVersion = '28.0.3'
coreVersion = "1.2.0"
extJUnitVersion = "1.1.1"
runnerVersion = "1.2.0"
rulesVersion = "1.2.0"
junitVersion = "4.12"
}
repositories {
google()
mavenLocal()
mavenCentral()
jcenter()
}
dependencies {
classpath 'com.android.tools.build:gradle:4.1.2'
classpath 'com.vanniktech:gradle-maven-publish-plugin:0.14.2'
}
}
repositories {
google()
jcenter()
}
apply plugin: 'com.android.library'
android {
compileSdkVersion rootProject.compileSdkVersion
buildToolsVersion rootProject.buildToolsVersion
defaultConfig {
minSdkVersion minSdkVersion
targetSdkVersion targetSdkVersion
}
sourceSets {
main {
manifest.srcFile 'AndroidManifest.xml'
}
}
}
dependencies {
implementation 'com.android.support:appcompat-v7:28.0.0'
implementation 'androidx.appcompat:appcompat:1.0.0'
implementation 'com.facebook.fbjni:fbjni-java-only:0.2.2'
implementation 'com.google.code.findbugs:jsr305:3.0.1'
implementation 'com.facebook.soloader:nativeloader:0.10.5'
implementation 'junit:junit:' + rootProject.junitVersion
implementation 'androidx.test:core:' + rootProject.coreVersion
implementation 'junit:junit:' + rootProject.junitVersion
implementation 'androidx.test:core:' + rootProject.coreVersion
implementation 'androidx.test.ext:junit:' + rootProject.extJUnitVersion
implementation 'androidx.test:rules:' + rootProject.rulesVersion
implementation 'androidx.test:runner:' + rootProject.runnerVersion
}

View File

@ -0,0 +1,5 @@
0.6b
manylinux_2_17
rocm6
04b5df8c8123f90cba3ede7e971e6fbc6040d506
3db6ecbc915893ff967abd6e1b43bd5f54949868873be60dc802086c3863e648

View File

@ -1,8 +1,4 @@
#!/bin/bash
# The purpose of this script is to:
# 1. Extract the set of parameters to be used for a docker build based on the provided image name.
# 2. Run docker build with the parameters found in step 1.
# 3. Run the built image and print out the expected and actual versions of packages installed.
set -ex
@ -85,110 +81,101 @@ elif [[ "$image" == *linter* ]]; then
DOCKERFILE="linter/Dockerfile"
fi
# CMake 3.18 is needed to support CUDA17 language variant
CMAKE_VERSION=3.18.5
_UCX_COMMIT=7bb2722ff2187a0cad557ae4a6afa090569f83fb
_UCC_COMMIT=20eae37090a4ce1b32bcce6144ccad0b49943e0b
if [[ "$image" == *rocm* ]]; then
_UCX_COMMIT=cc312eaa4655c0cc5c2bcd796db938f90563bcf6
_UCC_COMMIT=0c0fc21559835044ab107199e334f7157d6a0d3d
fi
tag=$(echo $image | awk -F':' '{print $2}')
# It's annoying to rename jobs every time you want to rewrite a
# configuration, so we hardcode everything here rather than do it
# from scratch
case "$tag" in
pytorch-linux-focal-cuda12.6-cudnn9-py3-gcc11)
CUDA_VERSION=12.6.3
CUDNN_VERSION=9
ANACONDA_PYTHON_VERSION=3.10
GCC_VERSION=11
VISION=yes
KATEX=yes
UCX_COMMIT=${_UCX_COMMIT}
UCC_COMMIT=${_UCC_COMMIT}
TRITON=yes
;;
pytorch-linux-focal-cuda12.4-cudnn9-py3-gcc9-inductor-benchmarks)
CUDA_VERSION=12.4.1
case "$image" in
pytorch-linux-focal-cuda12.4-cudnn9-py3-gcc9)
CUDA_VERSION=12.4.0
CUDNN_VERSION=9
ANACONDA_PYTHON_VERSION=3.10
GCC_VERSION=9
PROTOBUF=yes
DB=yes
VISION=yes
KATEX=yes
UCX_COMMIT=${_UCX_COMMIT}
UCC_COMMIT=${_UCC_COMMIT}
CONDA_CMAKE=yes
TRITON=yes
;;
pytorch-linux-focal-cuda12.1-cudnn9-py3-gcc9)
CUDA_VERSION=12.1.1
CUDNN_VERSION=9
ANACONDA_PYTHON_VERSION=3.10
GCC_VERSION=9
PROTOBUF=yes
DB=yes
VISION=yes
KATEX=yes
UCX_COMMIT=${_UCX_COMMIT}
UCC_COMMIT=${_UCC_COMMIT}
CONDA_CMAKE=yes
TRITON=yes
;;
pytorch-linux-focal-cuda12.4-cudnn9-py3-gcc9-inductor-benchmarks)
CUDA_VERSION=12.4.0
CUDNN_VERSION=9
ANACONDA_PYTHON_VERSION=3.10
GCC_VERSION=9
PROTOBUF=yes
DB=yes
VISION=yes
KATEX=yes
UCX_COMMIT=${_UCX_COMMIT}
UCC_COMMIT=${_UCC_COMMIT}
CONDA_CMAKE=yes
TRITON=yes
INDUCTOR_BENCHMARKS=yes
;;
pytorch-linux-focal-cuda12.1-cudnn9-py3-gcc9-inductor-benchmarks)
CUDA_VERSION=12.1.1
CUDNN_VERSION=9
ANACONDA_PYTHON_VERSION=3.10
GCC_VERSION=9
PROTOBUF=yes
DB=yes
VISION=yes
KATEX=yes
UCX_COMMIT=${_UCX_COMMIT}
UCC_COMMIT=${_UCC_COMMIT}
CONDA_CMAKE=yes
TRITON=yes
INDUCTOR_BENCHMARKS=yes
;;
pytorch-linux-focal-cuda12.1-cudnn9-py3.12-gcc9-inductor-benchmarks)
CUDA_VERSION=12.1.1
CUDNN_VERSION=9
ANACONDA_PYTHON_VERSION=3.12
GCC_VERSION=9
PROTOBUF=yes
DB=yes
VISION=yes
KATEX=yes
UCX_COMMIT=${_UCX_COMMIT}
UCC_COMMIT=${_UCC_COMMIT}
CONDA_CMAKE=yes
TRITON=yes
INDUCTOR_BENCHMARKS=yes
;;
pytorch-linux-focal-cuda12.4-cudnn9-py3.12-gcc9-inductor-benchmarks)
CUDA_VERSION=12.4.1
CUDA_VERSION=12.4.0
CUDNN_VERSION=9
ANACONDA_PYTHON_VERSION=3.12
GCC_VERSION=9
PROTOBUF=yes
DB=yes
VISION=yes
KATEX=yes
UCX_COMMIT=${_UCX_COMMIT}
UCC_COMMIT=${_UCC_COMMIT}
TRITON=yes
INDUCTOR_BENCHMARKS=yes
;;
pytorch-linux-focal-cuda12.4-cudnn9-py3.13-gcc9-inductor-benchmarks)
CUDA_VERSION=12.4.1
CUDNN_VERSION=9
ANACONDA_PYTHON_VERSION=3.13
GCC_VERSION=9
VISION=yes
KATEX=yes
UCX_COMMIT=${_UCX_COMMIT}
UCC_COMMIT=${_UCC_COMMIT}
TRITON=yes
INDUCTOR_BENCHMARKS=yes
;;
pytorch-linux-focal-cuda12.6-cudnn9-py3-gcc9)
CUDA_VERSION=12.6.3
CUDNN_VERSION=9
ANACONDA_PYTHON_VERSION=3.10
GCC_VERSION=9
VISION=yes
KATEX=yes
UCX_COMMIT=${_UCX_COMMIT}
UCC_COMMIT=${_UCC_COMMIT}
TRITON=yes
;;
pytorch-linux-focal-cuda12.6-cudnn9-py3-gcc9-inductor-benchmarks)
CUDA_VERSION=12.6.3
CUDNN_VERSION=9
ANACONDA_PYTHON_VERSION=3.10
GCC_VERSION=9
VISION=yes
KATEX=yes
UCX_COMMIT=${_UCX_COMMIT}
UCC_COMMIT=${_UCC_COMMIT}
TRITON=yes
INDUCTOR_BENCHMARKS=yes
;;
pytorch-linux-focal-cuda12.6-cudnn9-py3.12-gcc9-inductor-benchmarks)
CUDA_VERSION=12.6.3
CUDNN_VERSION=9
ANACONDA_PYTHON_VERSION=3.12
GCC_VERSION=9
VISION=yes
KATEX=yes
UCX_COMMIT=${_UCX_COMMIT}
UCC_COMMIT=${_UCC_COMMIT}
TRITON=yes
INDUCTOR_BENCHMARKS=yes
;;
pytorch-linux-focal-cuda12.6-cudnn9-py3.13-gcc9-inductor-benchmarks)
CUDA_VERSION=12.6.3
CUDNN_VERSION=9
ANACONDA_PYTHON_VERSION=3.13
GCC_VERSION=9
VISION=yes
KATEX=yes
UCX_COMMIT=${_UCX_COMMIT}
UCC_COMMIT=${_UCC_COMMIT}
CONDA_CMAKE=yes
TRITON=yes
INDUCTOR_BENCHMARKS=yes
;;
@ -197,114 +184,185 @@ case "$tag" in
CUDNN_VERSION=9
ANACONDA_PYTHON_VERSION=3.10
GCC_VERSION=9
PROTOBUF=yes
DB=yes
VISION=yes
KATEX=yes
UCX_COMMIT=${_UCX_COMMIT}
UCC_COMMIT=${_UCC_COMMIT}
CONDA_CMAKE=yes
TRITON=yes
;;
pytorch-linux-focal-cuda12.4-cudnn9-py3-gcc9)
CUDA_VERSION=12.4.0
CUDNN_VERSION=9
ANACONDA_PYTHON_VERSION=3.10
GCC_VERSION=9
PROTOBUF=yes
DB=yes
VISION=yes
KATEX=yes
UCX_COMMIT=${_UCX_COMMIT}
UCC_COMMIT=${_UCC_COMMIT}
CONDA_CMAKE=yes
TRITON=yes
;;
pytorch-linux-focal-cuda12.1-cudnn9-py3-gcc9)
CUDA_VERSION=12.1.1
CUDNN_VERSION=9
ANACONDA_PYTHON_VERSION=3.10
GCC_VERSION=9
PROTOBUF=yes
DB=yes
VISION=yes
KATEX=yes
UCX_COMMIT=${_UCX_COMMIT}
UCC_COMMIT=${_UCC_COMMIT}
CONDA_CMAKE=yes
TRITON=yes
;;
pytorch-linux-focal-cuda12.4-cudnn9-py3-gcc9)
CUDA_VERSION=12.4.0
CUDNN_VERSION=9
ANACONDA_PYTHON_VERSION=3.10
GCC_VERSION=9
PROTOBUF=yes
DB=yes
VISION=yes
KATEX=yes
UCX_COMMIT=${_UCX_COMMIT}
UCC_COMMIT=${_UCC_COMMIT}
CONDA_CMAKE=yes
TRITON=yes
;;
pytorch-linux-focal-py3-clang10-onnx)
ANACONDA_PYTHON_VERSION=3.9
ANACONDA_PYTHON_VERSION=3.8
CLANG_VERSION=10
PROTOBUF=yes
DB=yes
VISION=yes
CONDA_CMAKE=yes
ONNX=yes
;;
pytorch-linux-focal-py3.9-clang10)
ANACONDA_PYTHON_VERSION=3.9
pytorch-linux-focal-py3-clang9-android-ndk-r21e)
ANACONDA_PYTHON_VERSION=3.8
CLANG_VERSION=9
LLVMDEV=yes
PROTOBUF=yes
ANDROID=yes
ANDROID_NDK_VERSION=r21e
GRADLE_VERSION=6.8.3
NINJA_VERSION=1.9.0
;;
pytorch-linux-focal-py3.8-clang10)
ANACONDA_PYTHON_VERSION=3.8
CLANG_VERSION=10
PROTOBUF=yes
DB=yes
VISION=yes
VULKAN_SDK_VERSION=1.2.162.1
SWIFTSHADER=yes
CONDA_CMAKE=yes
TRITON=yes
;;
pytorch-linux-focal-py3.11-clang10)
ANACONDA_PYTHON_VERSION=3.11
CLANG_VERSION=10
PROTOBUF=yes
DB=yes
VISION=yes
VULKAN_SDK_VERSION=1.2.162.1
SWIFTSHADER=yes
CONDA_CMAKE=yes
TRITON=yes
;;
pytorch-linux-focal-py3.9-gcc9)
ANACONDA_PYTHON_VERSION=3.9
pytorch-linux-focal-py3.8-gcc9)
ANACONDA_PYTHON_VERSION=3.8
GCC_VERSION=9
PROTOBUF=yes
DB=yes
VISION=yes
CONDA_CMAKE=yes
TRITON=yes
;;
pytorch-linux-jammy-rocm-n-1-py3)
ANACONDA_PYTHON_VERSION=3.10
GCC_VERSION=11
pytorch-linux-focal-rocm-n-1-py3)
ANACONDA_PYTHON_VERSION=3.8
GCC_VERSION=9
PROTOBUF=yes
DB=yes
VISION=yes
ROCM_VERSION=6.3
ROCM_VERSION=6.0
NINJA_VERSION=1.9.0
CONDA_CMAKE=yes
TRITON=yes
KATEX=yes
UCX_COMMIT=${_UCX_COMMIT}
UCC_COMMIT=${_UCC_COMMIT}
INDUCTOR_BENCHMARKS=yes
;;
pytorch-linux-jammy-rocm-n-py3)
ANACONDA_PYTHON_VERSION=3.10
GCC_VERSION=11
pytorch-linux-focal-rocm-n-py3)
ANACONDA_PYTHON_VERSION=3.8
GCC_VERSION=9
PROTOBUF=yes
DB=yes
VISION=yes
ROCM_VERSION=6.4
ROCM_VERSION=6.1
NINJA_VERSION=1.9.0
CONDA_CMAKE=yes
TRITON=yes
KATEX=yes
UCX_COMMIT=${_UCX_COMMIT}
UCC_COMMIT=${_UCC_COMMIT}
INDUCTOR_BENCHMARKS=yes
;;
pytorch-linux-jammy-xpu-2025.0-py3)
ANACONDA_PYTHON_VERSION=3.9
pytorch-linux-jammy-xpu-2024.0-py3)
ANACONDA_PYTHON_VERSION=3.8
GCC_VERSION=11
PROTOBUF=yes
DB=yes
VISION=yes
XPU_VERSION=2025.0
XPU_VERSION=0.5
NINJA_VERSION=1.9.0
CONDA_CMAKE=yes
TRITON=yes
;;
pytorch-linux-jammy-xpu-2025.1-py3)
ANACONDA_PYTHON_VERSION=3.9
GCC_VERSION=11
VISION=yes
XPU_VERSION=2025.1
NINJA_VERSION=1.9.0
TRITON=yes
;;
pytorch-linux-jammy-py3.9-gcc11-inductor-benchmarks)
ANACONDA_PYTHON_VERSION=3.9
pytorch-linux-jammy-py3.8-gcc11-inductor-benchmarks)
ANACONDA_PYTHON_VERSION=3.8
GCC_VERSION=11
PROTOBUF=yes
DB=yes
VISION=yes
KATEX=yes
CONDA_CMAKE=yes
TRITON=yes
DOCS=yes
INDUCTOR_BENCHMARKS=yes
;;
pytorch-linux-jammy-cuda11.8-cudnn9-py3.9-clang12)
ANACONDA_PYTHON_VERSION=3.9
pytorch-linux-jammy-cuda11.8-cudnn9-py3.8-clang12)
ANACONDA_PYTHON_VERSION=3.8
CUDA_VERSION=11.8
CUDNN_VERSION=9
CLANG_VERSION=12
PROTOBUF=yes
DB=yes
VISION=yes
TRITON=yes
;;
pytorch-linux-jammy-py3-clang12-asan)
ANACONDA_PYTHON_VERSION=3.9
CLANG_VERSION=12
PROTOBUF=yes
DB=yes
VISION=yes
CONDA_CMAKE=yes
TRITON=yes
;;
pytorch-linux-jammy-py3-clang15-asan)
ANACONDA_PYTHON_VERSION=3.10
CLANG_VERSION=15
CONDA_CMAKE=yes
VISION=yes
;;
pytorch-linux-jammy-py3-clang18-asan)
ANACONDA_PYTHON_VERSION=3.10
CLANG_VERSION=18
VISION=yes
;;
pytorch-linux-jammy-py3.9-gcc11)
ANACONDA_PYTHON_VERSION=3.9
pytorch-linux-jammy-py3.8-gcc11)
ANACONDA_PYTHON_VERSION=3.8
GCC_VERSION=11
PROTOBUF=yes
DB=yes
VISION=yes
KATEX=yes
CONDA_CMAKE=yes
TRITON=yes
DOCS=yes
UNINSTALL_DILL=yes
@ -312,52 +370,40 @@ case "$tag" in
pytorch-linux-jammy-py3-clang12-executorch)
ANACONDA_PYTHON_VERSION=3.10
CLANG_VERSION=12
CONDA_CMAKE=yes
EXECUTORCH=yes
;;
pytorch-linux-jammy-py3.12-halide)
CUDA_VERSION=12.6
ANACONDA_PYTHON_VERSION=3.12
GCC_VERSION=11
HALIDE=yes
TRITON=yes
;;
pytorch-linux-jammy-py3.12-triton-cpu)
CUDA_VERSION=12.6
ANACONDA_PYTHON_VERSION=3.12
GCC_VERSION=11
TRITON_CPU=yes
;;
pytorch-linux-focal-linter)
# TODO: Use 3.9 here because of this issue https://github.com/python/mypy/issues/13627.
# We will need to update mypy version eventually, but that's for another day. The task
# would be to upgrade mypy to 1.0.0 with Python 3.11
PYTHON_VERSION=3.9
ANACONDA_PYTHON_VERSION=3.9
CONDA_CMAKE=yes
;;
pytorch-linux-jammy-cuda11.8-cudnn9-py3.9-linter)
PYTHON_VERSION=3.9
ANACONDA_PYTHON_VERSION=3.9
CUDA_VERSION=11.8
CONDA_CMAKE=yes
;;
pytorch-linux-jammy-aarch64-py3.10-gcc11)
ANACONDA_PYTHON_VERSION=3.10
GCC_VERSION=11
ACL=yes
PROTOBUF=yes
DB=yes
VISION=yes
CONDA_CMAKE=yes
# snadampal: skipping sccache due to the following issue
# https://github.com/pytorch/pytorch/issues/121559
SKIP_SCCACHE_INSTALL=yes
# snadampal: skipping llvm src build install because the current version
# from pytorch/llvm:9.0.1 is x86 specific
SKIP_LLVM_SRC_BUILD_INSTALL=yes
;;
pytorch-linux-jammy-aarch64-py3.10-gcc11-inductor-benchmarks)
ANACONDA_PYTHON_VERSION=3.10
GCC_VERSION=11
ACL=yes
VISION=yes
# snadampal: skipping llvm src build install because the current version
# from pytorch/llvm:9.0.1 is x86 specific
SKIP_LLVM_SRC_BUILD_INSTALL=yes
INDUCTOR_BENCHMARKS=yes
;;
*)
# Catch-all for builds that are not hardcoded.
PROTOBUF=yes
DB=yes
VISION=yes
echo "image '$image' did not match an existing build configuration"
if [[ "$image" == *py* ]]; then
@ -373,6 +419,7 @@ case "$tag" in
TRITON=yes
# To ensure that any ROCm config will build using conda cmake
# and thus have LAPACK/MKL enabled
CONDA_CMAKE=yes
fi
if [[ "$image" == *centos7* ]]; then
NINJA_VERSION=1.10.2
@ -389,6 +436,9 @@ case "$tag" in
if [[ "$image" == *glibc* ]]; then
extract_version_from_image_name glibc GLIBC_VERSION
fi
if [[ "$image" == *cmake* ]]; then
extract_version_from_image_name cmake CMAKE_VERSION
fi
;;
esac
@ -402,20 +452,14 @@ if [[ "$image" == *cuda* && ${OS} == "ubuntu" ]]; then
fi
fi
no_cache_flag=""
progress_flag=""
# Do not use cache and progress=plain when in CI
if [[ -n "${CI:-}" ]]; then
no_cache_flag="--no-cache"
progress_flag="--progress=plain"
fi
# Build image
docker build \
${no_cache_flag} \
${progress_flag} \
--no-cache \
--progress=plain \
--build-arg "BUILD_ENVIRONMENT=${image}" \
--build-arg "PROTOBUF=${PROTOBUF:-}" \
--build-arg "LLVMDEV=${LLVMDEV:-}" \
--build-arg "DB=${DB:-}" \
--build-arg "VISION=${VISION:-}" \
--build-arg "UBUNTU_VERSION=${UBUNTU_VERSION}" \
--build-arg "CENTOS_VERSION=${CENTOS_VERSION}" \
@ -423,28 +467,30 @@ docker build \
--build-arg "GLIBC_VERSION=${GLIBC_VERSION}" \
--build-arg "CLANG_VERSION=${CLANG_VERSION}" \
--build-arg "ANACONDA_PYTHON_VERSION=${ANACONDA_PYTHON_VERSION}" \
--build-arg "PYTHON_VERSION=${PYTHON_VERSION}" \
--build-arg "GCC_VERSION=${GCC_VERSION}" \
--build-arg "CUDA_VERSION=${CUDA_VERSION}" \
--build-arg "CUDNN_VERSION=${CUDNN_VERSION}" \
--build-arg "TENSORRT_VERSION=${TENSORRT_VERSION}" \
--build-arg "ANDROID=${ANDROID}" \
--build-arg "ANDROID_NDK=${ANDROID_NDK_VERSION}" \
--build-arg "GRADLE_VERSION=${GRADLE_VERSION}" \
--build-arg "VULKAN_SDK_VERSION=${VULKAN_SDK_VERSION}" \
--build-arg "SWIFTSHADER=${SWIFTSHADER}" \
--build-arg "CMAKE_VERSION=${CMAKE_VERSION:-}" \
--build-arg "NINJA_VERSION=${NINJA_VERSION:-}" \
--build-arg "KATEX=${KATEX:-}" \
--build-arg "ROCM_VERSION=${ROCM_VERSION:-}" \
--build-arg "PYTORCH_ROCM_ARCH=${PYTORCH_ROCM_ARCH:-gfx90a;gfx942}" \
--build-arg "PYTORCH_ROCM_ARCH=${PYTORCH_ROCM_ARCH:-gfx906;gfx90a}" \
--build-arg "IMAGE_NAME=${IMAGE_NAME}" \
--build-arg "UCX_COMMIT=${UCX_COMMIT}" \
--build-arg "UCC_COMMIT=${UCC_COMMIT}" \
--build-arg "CONDA_CMAKE=${CONDA_CMAKE}" \
--build-arg "TRITON=${TRITON}" \
--build-arg "TRITON_CPU=${TRITON_CPU}" \
--build-arg "ONNX=${ONNX}" \
--build-arg "DOCS=${DOCS}" \
--build-arg "INDUCTOR_BENCHMARKS=${INDUCTOR_BENCHMARKS}" \
--build-arg "EXECUTORCH=${EXECUTORCH}" \
--build-arg "HALIDE=${HALIDE}" \
--build-arg "XPU_VERSION=${XPU_VERSION}" \
--build-arg "UNINSTALL_DILL=${UNINSTALL_DILL}" \
--build-arg "ACL=${ACL:-}" \
--build-arg "SKIP_SCCACHE_INSTALL=${SKIP_SCCACHE_INSTALL:-}" \
--build-arg "SKIP_LLVM_SRC_BUILD_INSTALL=${SKIP_LLVM_SRC_BUILD_INSTALL:-}" \
@ -462,7 +508,7 @@ docker build \
UBUNTU_VERSION=$(echo ${UBUNTU_VERSION} | sed 's/-rc$//')
function drun() {
docker run --rm "$tmp_tag" "$@"
docker run --rm "$tmp_tag" $*
}
if [[ "$OS" == "ubuntu" ]]; then
@ -510,23 +556,3 @@ if [ -n "$KATEX" ]; then
exit 1
fi
fi
HAS_TRITON=$(drun python -c "import triton" > /dev/null 2>&1 && echo "yes" || echo "no")
if [[ -n "$TRITON" || -n "$TRITON_CPU" ]]; then
if [ "$HAS_TRITON" = "no" ]; then
echo "expecting triton to be installed, but it is not"
exit 1
fi
elif [ "$HAS_TRITON" = "yes" ]; then
echo "expecting triton to not be installed, but it is"
exit 1
fi
# Sanity check cmake version. Executorch reinstalls cmake and I'm not sure if
# they support 4.0.0 yet, so exclude them from this check.
CMAKE_VERSION=$(drun cmake --version)
if [[ "$EXECUTORCH" != *yes* && "$CMAKE_VERSION" != *4.* ]]; then
echo "CMake version is not 4.0.0:"
drun cmake --version
exit 1
fi

View File

@ -17,8 +17,9 @@ RUN bash ./install_base.sh && rm install_base.sh
# Update CentOS git version
RUN yum -y remove git
RUN yum -y remove git-*
RUN yum -y install https://packages.endpointdev.com/rhel/7/os/x86_64/endpoint-repo-1.9-1.x86_64.rpm && \
sed -i 's/packages.endpoint/packages.endpointdev/' /etc/yum.repos.d/endpoint.repo
RUN yum -y install https://packages.endpoint.com/rhel/7/os/x86_64/endpoint-repo-1.9-1.x86_64.rpm || \
(yum -y install https://packages.endpointdev.com/rhel/7/os/x86_64/endpoint-repo-1.9-1.x86_64.rpm && \
sed -i "s/packages.endpoint/packages.endpointdev/" /etc/yum.repos.d/endpoint.repo)
RUN yum install -y git
# Install devtoolset
@ -39,6 +40,7 @@ RUN bash ./install_user.sh && rm install_user.sh
# Install conda and other packages (e.g., numpy, pytest)
ARG ANACONDA_PYTHON_VERSION
ARG CONDA_CMAKE
ENV ANACONDA_PYTHON_VERSION=$ANACONDA_PYTHON_VERSION
ENV PATH /opt/conda/envs/py_$ANACONDA_PYTHON_VERSION/bin:/opt/conda/bin:$PATH
COPY requirements-ci.txt /opt/conda/requirements-ci.txt
@ -46,6 +48,20 @@ COPY ./common/install_conda.sh install_conda.sh
COPY ./common/common_utils.sh common_utils.sh
RUN bash ./install_conda.sh && rm install_conda.sh common_utils.sh /opt/conda/requirements-ci.txt
# (optional) Install protobuf for ONNX
ARG PROTOBUF
COPY ./common/install_protobuf.sh install_protobuf.sh
RUN if [ -n "${PROTOBUF}" ]; then bash ./install_protobuf.sh; fi
RUN rm install_protobuf.sh
ENV INSTALLED_PROTOBUF ${PROTOBUF}
# (optional) Install database packages like LMDB and LevelDB
ARG DB
COPY ./common/install_db.sh install_db.sh
RUN if [ -n "${DB}" ]; then bash ./install_db.sh; fi
RUN rm install_db.sh
ENV INSTALLED_DB ${DB}
# (optional) Install vision packages like OpenCV
ARG VISION
COPY ./common/install_vision.sh ./common/cache_vision_models.sh ./common/common_utils.sh ./
@ -59,7 +75,7 @@ COPY ./common/install_rocm.sh install_rocm.sh
RUN bash ./install_rocm.sh
RUN rm install_rocm.sh
COPY ./common/install_rocm_magma.sh install_rocm_magma.sh
RUN bash ./install_rocm_magma.sh ${ROCM_VERSION}
RUN bash ./install_rocm_magma.sh
RUN rm install_rocm_magma.sh
COPY ./common/install_amdsmi.sh install_amdsmi.sh
RUN bash ./install_amdsmi.sh
@ -73,6 +89,12 @@ ENV MAGMA_HOME /opt/rocm/magma
ENV LANG en_US.utf8
ENV LC_ALL en_US.utf8
# (optional) Install non-default CMake version
ARG CMAKE_VERSION
COPY ./common/install_cmake.sh install_cmake.sh
RUN if [ -n "${CMAKE_VERSION}" ]; then bash ./install_cmake.sh; fi
RUN rm install_cmake.sh
# (optional) Install non-default Ninja version
ARG NINJA_VERSION
COPY ./common/install_ninja.sh install_ninja.sh
@ -86,10 +108,17 @@ ENV CMAKE_C_COMPILER cc
ENV CMAKE_CXX_COMPILER c++
COPY ./common/install_triton.sh install_triton.sh
COPY ./common/common_utils.sh common_utils.sh
COPY ci_commit_pins/triton.txt triton.txt
COPY ci_commit_pins/triton-rocm.txt triton-rocm.txt
COPY triton_version.txt triton_version.txt
RUN if [ -n "${TRITON}" ]; then bash ./install_triton.sh; fi
RUN rm install_triton.sh common_utils.sh triton.txt triton_version.txt
RUN rm install_triton.sh common_utils.sh triton-rocm.txt triton_version.txt
# Install AOTriton (Early fail)
COPY ./aotriton_version.txt aotriton_version.txt
COPY ./common/common_utils.sh common_utils.sh
COPY ./common/install_aotriton.sh install_aotriton.sh
RUN ["/bin/bash", "-c", "./install_aotriton.sh /opt/rocm && rm -rf install_aotriton.sh aotriton_version.txt common_utils.sh"]
ENV AOTRITON_INSTALLED_PREFIX /opt/rocm/aotriton
# Install ccache/sccache (do this last, so we get priority in PATH)
COPY ./common/install_cache.sh install_cache.sh

View File

@ -1 +1 @@
b173722085b3f555d6ba4533d6bbaddfd7c71144
d4b3e5cc607e97afdba79dc90f8ef968142f347c

View File

@ -1 +0,0 @@
461c12871f336fe6f57b55d6a297f13ef209161b

View File

@ -1 +0,0 @@
v2.21.5-1

View File

@ -1 +0,0 @@
v2.26.5-1

View File

@ -1 +1 @@
5d535d7a2d4b435b1b5c1177fd8f04a12b942b9a
730b907b4d45a4713cbc425cbf224c46089fd514

View File

@ -1 +0,0 @@
c7711371cace304afe265c1ffa906415ab82fc66

View File

@ -0,0 +1 @@
21eae954efa5bf584da70324b640288c3ee7aede

View File

@ -1 +1 @@
0bcc8265e677e5321606a3311bf71470f14456a8
aac14a3b93f11d781d1d5ebc5400b15ae8df5185

View File

@ -1 +1 @@
96316ce50fade7e209553aba4898cd9b82aab83b
45fff310c891f5a92d55445adf8cc9d29df5841e

View File

@ -1,7 +1,7 @@
set -euo pipefail
readonly version=v25.02
readonly src_host=https://github.com/ARM-software
readonly version=v24.04
readonly src_host=https://review.mlplatform.org/ml
readonly src_repo=ComputeLibrary
# Clone ACL

View File

@ -0,0 +1,112 @@
#!/bin/bash
set -ex
[ -n "${ANDROID_NDK}" ]
_https_amazon_aws=https://ossci-android.s3.amazonaws.com
apt-get update
apt-get install -y --no-install-recommends autotools-dev autoconf unzip
apt-get autoclean && apt-get clean
rm -rf /var/lib/apt/lists/* /tmp/* /var/tmp/*
pushd /tmp
curl -Os --retry 3 $_https_amazon_aws/android-ndk-${ANDROID_NDK}-linux-x86_64.zip
popd
_ndk_dir=/opt/ndk
mkdir -p "$_ndk_dir"
unzip -qo /tmp/android*.zip -d "$_ndk_dir"
_versioned_dir=$(find "$_ndk_dir/" -mindepth 1 -maxdepth 1 -type d)
mv "$_versioned_dir"/* "$_ndk_dir"/
rmdir "$_versioned_dir"
rm -rf /tmp/*
# Install OpenJDK
# https://hub.docker.com/r/picoded/ubuntu-openjdk-8-jdk/dockerfile/
sudo apt-get update && \
apt-get install -y openjdk-8-jdk && \
apt-get install -y ant && \
apt-get clean && \
rm -rf /var/lib/apt/lists/* && \
rm -rf /var/cache/oracle-jdk8-installer;
# Fix certificate issues, found as of
# https://bugs.launchpad.net/ubuntu/+source/ca-certificates-java/+bug/983302
sudo apt-get update && \
apt-get install -y ca-certificates-java && \
apt-get clean && \
update-ca-certificates -f && \
rm -rf /var/lib/apt/lists/* && \
rm -rf /var/cache/oracle-jdk8-installer;
export JAVA_HOME=/usr/lib/jvm/java-8-openjdk-amd64/
# Installing android sdk
# https://github.com/circleci/circleci-images/blob/staging/android/Dockerfile.m4
_tmp_sdk_zip=/tmp/android-sdk-linux.zip
_android_home=/opt/android/sdk
rm -rf $_android_home
sudo mkdir -p $_android_home
curl --silent --show-error --location --fail --retry 3 --output /tmp/android-sdk-linux.zip $_https_amazon_aws/android-sdk-linux-tools3859397-build-tools2803-2902-platforms28-29.zip
sudo unzip -q $_tmp_sdk_zip -d $_android_home
rm $_tmp_sdk_zip
sudo chmod -R 777 $_android_home
export ANDROID_HOME=$_android_home
export ADB_INSTALL_TIMEOUT=120
export PATH="${ANDROID_HOME}/tools:${ANDROID_HOME}/tools/bin:${ANDROID_HOME}/platform-tools:${PATH}"
echo "PATH:${PATH}"
# Installing Gradle
echo "GRADLE_VERSION:${GRADLE_VERSION}"
_gradle_home=/opt/gradle
sudo rm -rf $gradle_home
sudo mkdir -p $_gradle_home
curl --silent --output /tmp/gradle.zip --retry 3 $_https_amazon_aws/gradle-${GRADLE_VERSION}-bin.zip
sudo unzip -q /tmp/gradle.zip -d $_gradle_home
rm /tmp/gradle.zip
sudo chmod -R 777 $_gradle_home
export GRADLE_HOME=$_gradle_home/gradle-$GRADLE_VERSION
alias gradle="${GRADLE_HOME}/bin/gradle"
export PATH="${GRADLE_HOME}/bin/:${PATH}"
echo "PATH:${PATH}"
gradle --version
mkdir /var/lib/jenkins/gradledeps
cp build.gradle /var/lib/jenkins/gradledeps
cp AndroidManifest.xml /var/lib/jenkins/gradledeps
pushd /var/lib/jenkins
export GRADLE_LOCAL_PROPERTIES=gradledeps/local.properties
rm -f $GRADLE_LOCAL_PROPERTIES
echo "sdk.dir=/opt/android/sdk" >> $GRADLE_LOCAL_PROPERTIES
echo "ndk.dir=/opt/ndk" >> $GRADLE_LOCAL_PROPERTIES
chown -R jenkins /var/lib/jenkins/gradledeps
chgrp -R jenkins /var/lib/jenkins/gradledeps
sudo -H -u jenkins $GRADLE_HOME/bin/gradle -Pandroid.useAndroidX=true -p /var/lib/jenkins/gradledeps -g /var/lib/jenkins/.gradle --refresh-dependencies --debug --stacktrace assemble
chown -R jenkins /var/lib/jenkins/.gradle
chgrp -R jenkins /var/lib/jenkins/.gradle
popd
rm -rf /var/lib/jenkins/.gradle/daemon
# Cache vision models used by the test
source "$(dirname "${BASH_SOURCE[0]}")/cache_vision_models.sh"

View File

@ -0,0 +1,23 @@
#!/bin/bash
set -ex
source "$(dirname "${BASH_SOURCE[0]}")/common_utils.sh"
TARBALL='aotriton.tar.bz2'
# This read command alwasy returns with exit code 1
read -d "\n" VER MANYLINUX ROCMBASE PINNED_COMMIT SHA256 < aotriton_version.txt || true
ARCH=$(uname -m)
AOTRITON_INSTALL_PREFIX="$1"
AOTRITON_URL="https://github.com/ROCm/aotriton/releases/download/${VER}/aotriton-${VER}-${MANYLINUX}_${ARCH}-${ROCMBASE}.tar.bz2"
cd "${AOTRITON_INSTALL_PREFIX}"
# Must use -L to follow redirects
curl -L --retry 3 -o "${TARBALL}" "${AOTRITON_URL}"
ACTUAL_SHA256=$(sha256sum "${TARBALL}" | cut -d " " -f 1)
if [ "${SHA256}" != "${ACTUAL_SHA256}" ]; then
echo -n "Error: The SHA256 of downloaded tarball is ${ACTUAL_SHA256},"
echo " which does not match the expected value ${SHA256}."
exit
fi
tar xf "${TARBALL}" && rm -rf "${TARBALL}"

View File

@ -32,12 +32,8 @@ install_ubuntu() {
# HACK: UCC testing relies on libnccl library from NVIDIA repo, and version 2.16 crashes
# See https://github.com/pytorch/pytorch/pull/105260#issuecomment-1673399729
# TODO: Eliminate this hack, we should not relay on apt-get installation
# See https://github.com/pytorch/pytorch/issues/144768
if [[ "$UBUNTU_VERSION" == "20.04"* && "$CUDA_VERSION" == "11.8"* ]]; then
maybe_libnccl_dev="libnccl2=2.15.5-1+cuda11.8 libnccl-dev=2.15.5-1+cuda11.8 --allow-downgrades --allow-change-held-packages"
elif [[ "$UBUNTU_VERSION" == "20.04"* && "$CUDA_VERSION" == "12.4"* ]]; then
maybe_libnccl_dev="libnccl2=2.26.2-1+cuda12.4 libnccl-dev=2.26.2-1+cuda12.4 --allow-downgrades --allow-change-held-packages"
else
maybe_libnccl_dev=""
fi
@ -80,8 +76,7 @@ install_ubuntu() {
vim \
unzip \
gpg-agent \
gdb \
bc
gdb
# Should resolve issues related to various apt package repository cert issues
# see: https://github.com/pytorch/pytorch/issues/65931
@ -99,6 +94,9 @@ install_centos() {
ccache_deps="asciidoc docbook-dtds docbook-style-xsl libxslt"
numpy_deps="gcc-gfortran"
# Note: protobuf-c-{compiler,devel} on CentOS are too old to be used
# for Caffe2. That said, we still install them to make sure the build
# system opts to build/use protoc and libprotobuf from third-party.
yum install -y \
$ccache_deps \
$numpy_deps \

View File

@ -9,7 +9,7 @@ install_ubuntu() {
# Instead use lib and headers from OpenSSL1.1 installed in `install_openssl.sh``
apt-get install -y cargo
echo "Checking out sccache repo"
git clone https://github.com/mozilla/sccache -b v0.10.0
git clone https://github.com/pytorch/sccache
cd sccache
echo "Building sccache"
cargo build --release
@ -19,10 +19,6 @@ install_ubuntu() {
rm -rf sccache
apt-get remove -y cargo rustc
apt-get autoclean && apt-get clean
echo "Downloading old sccache binary from S3 repo for PCH builds"
curl --retry 3 https://s3.amazonaws.com/ossci-linux/sccache -o /opt/cache/bin/sccache-0.2.14a
chmod 755 /opt/cache/bin/sccache-0.2.14a
}
install_binary() {
@ -36,42 +32,22 @@ sed -e 's|PATH="\(.*\)"|PATH="/opt/cache/bin:\1"|g' -i /etc/environment
export PATH="/opt/cache/bin:$PATH"
# Setup compiler cache
install_ubuntu
if [ -n "$ROCM_VERSION" ]; then
curl --retry 3 http://repo.radeon.com/misc/.sccache_amd/sccache -o /opt/cache/bin/sccache
else
ID=$(grep -oP '(?<=^ID=).+' /etc/os-release | tr -d '"')
# TODO: Install the pre-built binary from S3 as building from source
# https://github.com/pytorch/sccache has started failing mysteriously
# in which sccache server couldn't start with the following error:
# sccache: error: Invalid argument (os error 22)
install_binary
fi
chmod a+x /opt/cache/bin/sccache
function write_sccache_stub() {
# Unset LD_PRELOAD for ps because of asan + ps issues
# https://gcc.gnu.org/bugzilla/show_bug.cgi?id=90589
if [ $1 == "gcc" ]; then
# Do not call sccache recursively when dumping preprocessor argument
# For some reason it's very important for the first cached nvcc invocation
cat >"/opt/cache/bin/$1" <<EOF
#!/bin/sh
# sccache does not support -E flag, so we need to call the original compiler directly in order to avoid calling this wrapper recursively
for arg in "\$@"; do
if [ "\$arg" = "-E" ]; then
exec $(which $1) "\$@"
fi
done
if [ \$(env -u LD_PRELOAD ps -p \$PPID -o comm=) != sccache ]; then
exec sccache $(which $1) "\$@"
else
exec $(which $1) "\$@"
fi
EOF
else
cat >"/opt/cache/bin/$1" <<EOF
#!/bin/sh
if [ \$(env -u LD_PRELOAD ps -p \$PPID -o comm=) != sccache ]; then
exec sccache $(which $1) "\$@"
else
exec $(which $1) "\$@"
fi
EOF
fi
printf "#!/bin/sh\nif [ \$(env -u LD_PRELOAD ps -p \$PPID -o comm=) != sccache ]; then\n exec sccache $(which $1) \"\$@\"\nelse\n exec $(which $1) \"\$@\"\nfi" > "/opt/cache/bin/$1"
chmod a+x "/opt/cache/bin/$1"
}

View File

@ -4,21 +4,20 @@ set -ex
if [ -n "$CLANG_VERSION" ]; then
if [[ $UBUNTU_VERSION == 22.04 ]]; then
if [[ $CLANG_VERSION == 9 && $UBUNTU_VERSION == 18.04 ]]; then
sudo apt-get update
# gpg-agent is not available by default on 18.04
sudo apt-get install -y --no-install-recommends gpg-agent
wget --no-check-certificate -O - https://apt.llvm.org/llvm-snapshot.gpg.key | sudo apt-key add -
apt-add-repository "deb http://apt.llvm.org/bionic/ llvm-toolchain-bionic-${CLANG_VERSION} main"
elif [[ $UBUNTU_VERSION == 22.04 ]]; then
# work around ubuntu apt-get conflicts
sudo apt-get -y -f install
wget --no-check-certificate -O - https://apt.llvm.org/llvm-snapshot.gpg.key | sudo apt-key add -
if [[ $CLANG_VERSION == 18 ]]; then
apt-add-repository "deb http://apt.llvm.org/jammy/ llvm-toolchain-jammy-18 main"
fi
fi
sudo apt-get update
if [[ $CLANG_VERSION -ge 18 ]]; then
apt-get install -y libomp-${CLANG_VERSION}-dev libclang-rt-${CLANG_VERSION}-dev clang-"$CLANG_VERSION" llvm-"$CLANG_VERSION"
else
apt-get install -y --no-install-recommends clang-"$CLANG_VERSION" llvm-"$CLANG_VERSION"
fi
apt-get install -y --no-install-recommends clang-"$CLANG_VERSION"
apt-get install -y --no-install-recommends llvm-"$CLANG_VERSION"
# Install dev version of LLVM.
if [ -n "$LLVMDEV" ]; then

View File

@ -0,0 +1,31 @@
#!/bin/bash
set -ex
[ -n "$CMAKE_VERSION" ]
# Remove system cmake install so it won't get used instead
ID=$(grep -oP '(?<=^ID=).+' /etc/os-release | tr -d '"')
case "$ID" in
ubuntu)
apt-get remove cmake -y
;;
centos)
yum remove cmake -y
;;
*)
echo "Unable to determine OS..."
exit 1
;;
esac
# Turn 3.6.3 into v3.6
path=$(echo "${CMAKE_VERSION}" | sed -e 's/\([0-9].[0-9]\+\).*/v\1/')
file="cmake-${CMAKE_VERSION}-Linux-x86_64.tar.gz"
# Download and install specific CMake version in /usr/local
pushd /tmp
curl -Os --retry 3 "https://cmake.org/files/${path}/${file}"
tar -C /usr/local --strip-components 1 --no-same-owner -zxf cmake-*.tar.gz
rm -f cmake-*.tar.gz
popd

View File

@ -5,28 +5,37 @@ set -ex
# Optionally install conda
if [ -n "$ANACONDA_PYTHON_VERSION" ]; then
BASE_URL="https://repo.anaconda.com/miniconda"
CONDA_FILE="Miniconda3-latest-Linux-x86_64.sh"
if [[ $(uname -m) == "aarch64" ]] || [[ "$BUILD_ENVIRONMENT" == *xpu* ]]; then
BASE_URL="https://github.com/conda-forge/miniforge/releases/latest/download" # @lint-ignore
CONDA_FILE="Miniforge3-Linux-$(uname -m).sh"
fi
MAJOR_PYTHON_VERSION=$(echo "$ANACONDA_PYTHON_VERSION" | cut -d . -f 1)
MINOR_PYTHON_VERSION=$(echo "$ANACONDA_PYTHON_VERSION" | cut -d . -f 2)
if [[ $(uname -m) == "aarch64" ]]; then
BASE_URL="https://github.com/conda-forge/miniforge/releases/latest/download"
case "$MAJOR_PYTHON_VERSION" in
3);;
3)
CONDA_FILE="Miniforge3-Linux-aarch64.sh"
;;
*)
echo "Unsupported ANACONDA_PYTHON_VERSION: $ANACONDA_PYTHON_VERSION"
exit 1
;;
esac
else
case "$MAJOR_PYTHON_VERSION" in
3)
CONDA_FILE="Miniconda3-latest-Linux-x86_64.sh"
;;
*)
echo "Unsupported ANACONDA_PYTHON_VERSION: $ANACONDA_PYTHON_VERSION"
exit 1
;;
esac
fi
mkdir -p /opt/conda
chown jenkins:jenkins /opt/conda
SCRIPT_FOLDER="$( cd "$(dirname "$0")" ; pwd -P )"
source "${SCRIPT_FOLDER}/common_utils.sh"
source "$(dirname "${BASH_SOURCE[0]}")/common_utils.sh"
pushd /tmp
wget -q "${BASE_URL}/${CONDA_FILE}"
@ -62,29 +71,50 @@ if [ -n "$ANACONDA_PYTHON_VERSION" ]; then
# libstdcxx from conda default channels are too old, we need GLIBCXX_3.4.30
# which is provided in libstdcxx 12 and up.
conda_install libstdcxx-ng=12.3.0 --update-deps -c conda-forge
conda_install libstdcxx-ng=12.3.0 -c conda-forge
# Install PyTorch conda deps, as per https://github.com/pytorch/pytorch README
if [[ $(uname -m) == "aarch64" ]]; then
conda_install "openblas==0.3.29=*openmp*"
CONDA_COMMON_DEPS="astunparse pyyaml setuptools openblas==0.3.25=*openmp* ninja==1.11.1 scons==4.5.2"
if [ "$ANACONDA_PYTHON_VERSION" = "3.8" ]; then
conda_install numpy=1.24.4 ${CONDA_COMMON_DEPS}
else
conda_install "mkl=2021.4.0 mkl-include=2021.4.0"
conda_install numpy=1.26.2 ${CONDA_COMMON_DEPS}
fi
else
CONDA_COMMON_DEPS="astunparse pyyaml mkl=2021.4.0 mkl-include=2021.4.0 setuptools"
if [ "$ANACONDA_PYTHON_VERSION" = "3.11" ] || [ "$ANACONDA_PYTHON_VERSION" = "3.12" ]; then
conda_install numpy=1.26.0 ${CONDA_COMMON_DEPS}
else
conda_install numpy=1.21.2 ${CONDA_COMMON_DEPS}
fi
fi
# Install llvm-8 as it is required to compile llvmlite-0.30.0 from source
# and libpython-static for torch deploy
conda_install llvmdev=8.0.0 "libpython-static=${ANACONDA_PYTHON_VERSION}"
# Use conda cmake in some cases. Conda cmake will be newer than our supported
# min version (3.5 for xenial and 3.10 for bionic), so we only do it in those
# following builds that we know should use conda. Specifically, Ubuntu bionic
# and focal cannot find conda mkl with stock cmake, so we need a cmake from conda
if [ -n "${CONDA_CMAKE}" ]; then
conda_install cmake
fi
# Magma package names are concatenation of CUDA major and minor ignoring revision
# I.e. magma-cuda102 package corresponds to CUDA_VERSION=10.2 and CUDA_VERSION=10.2.89
# Magma is installed from a tarball in the ossci-linux bucket into the conda env
if [ -n "$CUDA_VERSION" ]; then
conda_run ${SCRIPT_FOLDER}/install_magma_conda.sh $(cut -f1-2 -d'.' <<< ${CUDA_VERSION})
conda_install magma-cuda$(TMP=${CUDA_VERSION/./};echo ${TMP%.*[0-9]}) -c pytorch
fi
# Install some other packages, including those needed for Python test reporting
pip_install -r /opt/conda/requirements-ci.txt
pip_install -U scikit-learn
if [ -n "$DOCS" ]; then
apt-get update
apt-get -y install expect-dev

View File

@ -1,20 +0,0 @@
#!/bin/bash
# Script used only in CD pipeline
set -ex
# Anaconda
# Latest anaconda is using openssl-3 which is incompatible with all currently published versions of git
# Which are using openssl-1.1.1, see https://anaconda.org/anaconda/git/files?version=2.40.1 for example
MINICONDA_URL=https://repo.anaconda.com/miniconda/Miniconda3-py311_23.5.2-0-Linux-x86_64.sh
wget -q $MINICONDA_URL
# NB: Manually invoke bash per https://github.com/conda/conda/issues/10431
bash $(basename "$MINICONDA_URL") -b -p /opt/conda
rm $(basename "$MINICONDA_URL")
export PATH=/opt/conda/bin:$PATH
# See https://github.com/pytorch/builder/issues/1473
# Pin conda to 23.5.2 as it's the last one compatible with openssl-1.1.1
conda install -y conda=23.5.2 conda-build anaconda-client git ninja
# The cmake version here needs to match with the minimum version of cmake
# supported by PyTorch (3.18). There is only 3.18.2 on anaconda
/opt/conda/bin/pip3 install cmake==3.18.2
conda remove -y --force patchelf

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@ -1,112 +0,0 @@
#!/bin/bash
# Script used only in CD pipeline
set -uex -o pipefail
PYTHON_DOWNLOAD_URL=https://www.python.org/ftp/python
PYTHON_DOWNLOAD_GITHUB_BRANCH=https://github.com/python/cpython/archive/refs/heads # @lint-ignore
GET_PIP_URL=https://bootstrap.pypa.io/get-pip.py
# Python versions to be installed in /opt/$VERSION_NO
CPYTHON_VERSIONS=${CPYTHON_VERSIONS:-"3.9.0 3.10.1 3.11.0 3.12.0 3.13.0 3.13.0t"}
function check_var {
if [ -z "$1" ]; then
echo "required variable not defined"
exit 1
fi
}
function do_cpython_build {
local py_ver=$1
local py_folder=$2
check_var $py_ver
check_var $py_folder
tar -xzf Python-$py_ver.tgz
local additional_flags=""
if [ "$py_ver" == "3.13.0t" ]; then
additional_flags=" --disable-gil"
mv cpython-3.13/ cpython-3.13t/
fi
pushd $py_folder
local prefix="/opt/_internal/cpython-${py_ver}"
mkdir -p ${prefix}/lib
if [[ -n $(which patchelf) ]]; then
local shared_flags="--enable-shared"
else
local shared_flags="--disable-shared"
fi
if [[ -z "${WITH_OPENSSL+x}" ]]; then
local openssl_flags=""
else
local openssl_flags="--with-openssl=${WITH_OPENSSL} --with-openssl-rpath=auto"
fi
# -Wformat added for https://bugs.python.org/issue17547 on Python 2.6
CFLAGS="-Wformat" ./configure --prefix=${prefix} ${openssl_flags} ${shared_flags} ${additional_flags} > /dev/null
make -j40 > /dev/null
make install > /dev/null
if [[ "${shared_flags}" == "--enable-shared" ]]; then
patchelf --set-rpath '$ORIGIN/../lib' ${prefix}/bin/python3
fi
popd
rm -rf $py_folder
# Some python's install as bin/python3. Make them available as
# bin/python.
if [ -e ${prefix}/bin/python3 ]; then
ln -s python3 ${prefix}/bin/python
fi
${prefix}/bin/python get-pip.py
if [ -e ${prefix}/bin/pip3 ] && [ ! -e ${prefix}/bin/pip ]; then
ln -s pip3 ${prefix}/bin/pip
fi
# install setuptools since python 3.12 is required to use distutils
${prefix}/bin/pip install wheel==0.34.2 setuptools==68.2.2
local abi_tag=$(${prefix}/bin/python -c "from wheel.pep425tags import get_abbr_impl, get_impl_ver, get_abi_tag; print('{0}{1}-{2}'.format(get_abbr_impl(), get_impl_ver(), get_abi_tag()))")
ln -sf ${prefix} /opt/python/${abi_tag}
}
function build_cpython {
local py_ver=$1
check_var $py_ver
check_var $PYTHON_DOWNLOAD_URL
local py_ver_folder=$py_ver
if [ "$py_ver" = "3.13.0t" ]; then
PY_VER_SHORT="3.13"
PYT_VER_SHORT="3.13t"
check_var $PYTHON_DOWNLOAD_GITHUB_BRANCH
wget $PYTHON_DOWNLOAD_GITHUB_BRANCH/$PY_VER_SHORT.tar.gz -O Python-$py_ver.tgz
do_cpython_build $py_ver cpython-$PYT_VER_SHORT
elif [ "$py_ver" = "3.13.0" ]; then
PY_VER_SHORT="3.13"
check_var $PYTHON_DOWNLOAD_GITHUB_BRANCH
wget $PYTHON_DOWNLOAD_GITHUB_BRANCH/$PY_VER_SHORT.tar.gz -O Python-$py_ver.tgz
do_cpython_build $py_ver cpython-$PY_VER_SHORT
else
wget -q $PYTHON_DOWNLOAD_URL/$py_ver_folder/Python-$py_ver.tgz
do_cpython_build $py_ver Python-$py_ver
fi
rm -f Python-$py_ver.tgz
}
function build_cpythons {
check_var $GET_PIP_URL
curl -sLO $GET_PIP_URL
for py_ver in $@; do
build_cpython $py_ver
done
rm -f get-pip.py
}
mkdir -p /opt/python
mkdir -p /opt/_internal
build_cpythons $CPYTHON_VERSIONS

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@ -1,216 +0,0 @@
#!/bin/bash
set -ex
arch_path=''
targetarch=${TARGETARCH:-$(uname -m)}
if [ ${targetarch} = 'amd64' ] || [ "${targetarch}" = 'x86_64' ]; then
arch_path='x86_64'
else
arch_path='sbsa'
fi
function install_cuda {
version=$1
runfile=$2
major_minor=${version%.*}
rm -rf /usr/local/cuda-${major_minor} /usr/local/cuda
if [[ ${arch_path} == 'sbsa' ]]; then
runfile="${runfile}_sbsa"
fi
runfile="${runfile}.run"
wget -q https://developer.download.nvidia.com/compute/cuda/${version}/local_installers/${runfile} -O ${runfile}
chmod +x ${runfile}
./${runfile} --toolkit --silent
rm -f ${runfile}
rm -f /usr/local/cuda && ln -s /usr/local/cuda-${major_minor} /usr/local/cuda
}
function install_cudnn {
cuda_major_version=$1
cudnn_version=$2
mkdir tmp_cudnn && cd tmp_cudnn
# cuDNN license: https://developer.nvidia.com/cudnn/license_agreement
filepath="cudnn-linux-${arch_path}-${cudnn_version}_cuda${cuda_major_version}-archive"
wget -q https://developer.download.nvidia.com/compute/cudnn/redist/cudnn/linux-${arch_path}/${filepath}.tar.xz
tar xf ${filepath}.tar.xz
cp -a ${filepath}/include/* /usr/local/cuda/include/
cp -a ${filepath}/lib/* /usr/local/cuda/lib64/
cd ..
rm -rf tmp_cudnn
}
function install_118 {
CUDNN_VERSION=9.1.0.70
echo "Installing CUDA 11.8 and cuDNN ${CUDNN_VERSION} and NCCL and cuSparseLt-0.4.0"
install_cuda 11.8.0 cuda_11.8.0_520.61.05_linux
install_cudnn 11 $CUDNN_VERSION
CUDA_VERSION=11.8 bash install_nccl.sh
CUDA_VERSION=11.8 bash install_cusparselt.sh
ldconfig
}
function install_124 {
CUDNN_VERSION=9.1.0.70
echo "Installing CUDA 12.4.1 and cuDNN ${CUDNN_VERSION} and NCCL and cuSparseLt-0.6.2"
install_cuda 12.4.1 cuda_12.4.1_550.54.15_linux
install_cudnn 12 $CUDNN_VERSION
CUDA_VERSION=12.4 bash install_nccl.sh
CUDA_VERSION=12.4 bash install_cusparselt.sh
ldconfig
}
function install_126 {
CUDNN_VERSION=9.5.1.17
echo "Installing CUDA 12.6.3 and cuDNN ${CUDNN_VERSION} and NCCL and cuSparseLt-0.6.3"
install_cuda 12.6.3 cuda_12.6.3_560.35.05_linux
install_cudnn 12 $CUDNN_VERSION
CUDA_VERSION=12.6 bash install_nccl.sh
CUDA_VERSION=12.6 bash install_cusparselt.sh
ldconfig
}
function prune_118 {
echo "Pruning CUDA 11.8 and cuDNN"
#####################################################################################
# CUDA 11.8 prune static libs
#####################################################################################
export NVPRUNE="/usr/local/cuda-11.8/bin/nvprune"
export CUDA_LIB_DIR="/usr/local/cuda-11.8/lib64"
export GENCODE="-gencode arch=compute_35,code=sm_35 -gencode arch=compute_50,code=sm_50 -gencode arch=compute_60,code=sm_60 -gencode arch=compute_70,code=sm_70 -gencode arch=compute_75,code=sm_75 -gencode arch=compute_80,code=sm_80 -gencode arch=compute_86,code=sm_86 -gencode arch=compute_90,code=sm_90"
export GENCODE_CUDNN="-gencode arch=compute_35,code=sm_35 -gencode arch=compute_37,code=sm_37 -gencode arch=compute_50,code=sm_50 -gencode arch=compute_60,code=sm_60 -gencode arch=compute_61,code=sm_61 -gencode arch=compute_70,code=sm_70 -gencode arch=compute_75,code=sm_75 -gencode arch=compute_80,code=sm_80 -gencode arch=compute_86,code=sm_86 -gencode arch=compute_90,code=sm_90"
if [[ -n "$OVERRIDE_GENCODE" ]]; then
export GENCODE=$OVERRIDE_GENCODE
fi
# all CUDA libs except CuDNN and CuBLAS (cudnn and cublas need arch 3.7 included)
ls $CUDA_LIB_DIR/ | grep "\.a" | grep -v "culibos" | grep -v "cudart" | grep -v "cudnn" | grep -v "cublas" | grep -v "metis" \
| xargs -I {} bash -c \
"echo {} && $NVPRUNE $GENCODE $CUDA_LIB_DIR/{} -o $CUDA_LIB_DIR/{}"
# prune CuDNN and CuBLAS
$NVPRUNE $GENCODE_CUDNN $CUDA_LIB_DIR/libcublas_static.a -o $CUDA_LIB_DIR/libcublas_static.a
$NVPRUNE $GENCODE_CUDNN $CUDA_LIB_DIR/libcublasLt_static.a -o $CUDA_LIB_DIR/libcublasLt_static.a
#####################################################################################
# CUDA 11.8 prune visual tools
#####################################################################################
export CUDA_BASE="/usr/local/cuda-11.8/"
rm -rf $CUDA_BASE/libnvvp $CUDA_BASE/nsightee_plugins $CUDA_BASE/nsight-compute-2022.3.0 $CUDA_BASE/nsight-systems-2022.4.2/
}
function prune_124 {
echo "Pruning CUDA 12.4"
#####################################################################################
# CUDA 12.4 prune static libs
#####################################################################################
export NVPRUNE="/usr/local/cuda-12.4/bin/nvprune"
export CUDA_LIB_DIR="/usr/local/cuda-12.4/lib64"
export GENCODE="-gencode arch=compute_50,code=sm_50 -gencode arch=compute_60,code=sm_60 -gencode arch=compute_70,code=sm_70 -gencode arch=compute_75,code=sm_75 -gencode arch=compute_80,code=sm_80 -gencode arch=compute_86,code=sm_86 -gencode arch=compute_90,code=sm_90"
export GENCODE_CUDNN="-gencode arch=compute_50,code=sm_50 -gencode arch=compute_60,code=sm_60 -gencode arch=compute_61,code=sm_61 -gencode arch=compute_70,code=sm_70 -gencode arch=compute_75,code=sm_75 -gencode arch=compute_80,code=sm_80 -gencode arch=compute_86,code=sm_86 -gencode arch=compute_90,code=sm_90"
if [[ -n "$OVERRIDE_GENCODE" ]]; then
export GENCODE=$OVERRIDE_GENCODE
fi
if [[ -n "$OVERRIDE_GENCODE_CUDNN" ]]; then
export GENCODE_CUDNN=$OVERRIDE_GENCODE_CUDNN
fi
# all CUDA libs except CuDNN and CuBLAS
ls $CUDA_LIB_DIR/ | grep "\.a" | grep -v "culibos" | grep -v "cudart" | grep -v "cudnn" | grep -v "cublas" | grep -v "metis" \
| xargs -I {} bash -c \
"echo {} && $NVPRUNE $GENCODE $CUDA_LIB_DIR/{} -o $CUDA_LIB_DIR/{}"
# prune CuDNN and CuBLAS
$NVPRUNE $GENCODE_CUDNN $CUDA_LIB_DIR/libcublas_static.a -o $CUDA_LIB_DIR/libcublas_static.a
$NVPRUNE $GENCODE_CUDNN $CUDA_LIB_DIR/libcublasLt_static.a -o $CUDA_LIB_DIR/libcublasLt_static.a
#####################################################################################
# CUDA 12.4 prune visual tools
#####################################################################################
export CUDA_BASE="/usr/local/cuda-12.4/"
rm -rf $CUDA_BASE/libnvvp $CUDA_BASE/nsightee_plugins $CUDA_BASE/nsight-compute-2024.1.0 $CUDA_BASE/nsight-systems-2023.4.4/
}
function prune_126 {
echo "Pruning CUDA 12.6"
#####################################################################################
# CUDA 12.6 prune static libs
#####################################################################################
export NVPRUNE="/usr/local/cuda-12.6/bin/nvprune"
export CUDA_LIB_DIR="/usr/local/cuda-12.6/lib64"
export GENCODE="-gencode arch=compute_50,code=sm_50 -gencode arch=compute_60,code=sm_60 -gencode arch=compute_70,code=sm_70 -gencode arch=compute_75,code=sm_75 -gencode arch=compute_80,code=sm_80 -gencode arch=compute_86,code=sm_86 -gencode arch=compute_90,code=sm_90"
export GENCODE_CUDNN="-gencode arch=compute_50,code=sm_50 -gencode arch=compute_60,code=sm_60 -gencode arch=compute_61,code=sm_61 -gencode arch=compute_70,code=sm_70 -gencode arch=compute_75,code=sm_75 -gencode arch=compute_80,code=sm_80 -gencode arch=compute_86,code=sm_86 -gencode arch=compute_90,code=sm_90"
if [[ -n "$OVERRIDE_GENCODE" ]]; then
export GENCODE=$OVERRIDE_GENCODE
fi
if [[ -n "$OVERRIDE_GENCODE_CUDNN" ]]; then
export GENCODE_CUDNN=$OVERRIDE_GENCODE_CUDNN
fi
# all CUDA libs except CuDNN and CuBLAS
ls $CUDA_LIB_DIR/ | grep "\.a" | grep -v "culibos" | grep -v "cudart" | grep -v "cudnn" | grep -v "cublas" | grep -v "metis" \
| xargs -I {} bash -c \
"echo {} && $NVPRUNE $GENCODE $CUDA_LIB_DIR/{} -o $CUDA_LIB_DIR/{}"
# prune CuDNN and CuBLAS
$NVPRUNE $GENCODE_CUDNN $CUDA_LIB_DIR/libcublas_static.a -o $CUDA_LIB_DIR/libcublas_static.a
$NVPRUNE $GENCODE_CUDNN $CUDA_LIB_DIR/libcublasLt_static.a -o $CUDA_LIB_DIR/libcublasLt_static.a
#####################################################################################
# CUDA 12.6 prune visual tools
#####################################################################################
export CUDA_BASE="/usr/local/cuda-12.6/"
rm -rf $CUDA_BASE/libnvvp $CUDA_BASE/nsightee_plugins $CUDA_BASE/nsight-compute-2024.3.2 $CUDA_BASE/nsight-systems-2024.5.1/
}
function install_128 {
CUDNN_VERSION=9.8.0.87
echo "Installing CUDA 12.8.0 and cuDNN ${CUDNN_VERSION} and NCCL and cuSparseLt-0.6.3"
# install CUDA 12.8.0 in the same container
install_cuda 12.8.0 cuda_12.8.0_570.86.10_linux
# cuDNN license: https://developer.nvidia.com/cudnn/license_agreement
install_cudnn 12 $CUDNN_VERSION
CUDA_VERSION=12.8 bash install_nccl.sh
CUDA_VERSION=12.8 bash install_cusparselt.sh
ldconfig
}
# idiomatic parameter and option handling in sh
while test $# -gt 0
do
case "$1" in
11.8) install_118; prune_118
;;
12.4) install_124; prune_124
;;
12.6) install_126; prune_126
;;
12.8) install_128;
;;
*) echo "bad argument $1"; exit 1
;;
esac
shift
done

View File

@ -4,11 +4,7 @@ if [[ -n "${CUDNN_VERSION}" ]]; then
# cuDNN license: https://developer.nvidia.com/cudnn/license_agreement
mkdir tmp_cudnn
pushd tmp_cudnn
if [[ ${CUDA_VERSION:0:4} == "12.8" ]]; then
CUDNN_NAME="cudnn-linux-x86_64-9.8.0.87_cuda12-archive"
elif [[ ${CUDA_VERSION:0:4} == "12.6" ]]; then
CUDNN_NAME="cudnn-linux-x86_64-9.5.1.17_cuda12-archive"
elif [[ ${CUDA_VERSION:0:2} == "12" ]]; then
if [[ ${CUDA_VERSION:0:2} == "12" ]]; then
CUDNN_NAME="cudnn-linux-x86_64-9.1.0.70_cuda12-archive"
elif [[ ${CUDA_VERSION:0:2} == "11" ]]; then
CUDNN_NAME="cudnn-linux-x86_64-9.1.0.70_cuda11-archive"

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@ -1,25 +0,0 @@
#!/bin/bash
set -ex
# cudss license: https://docs.nvidia.com/cuda/cudss/license.html
mkdir tmp_cudss && cd tmp_cudss
if [[ ${CUDA_VERSION:0:4} =~ ^12\.[1-4]$ ]]; then
arch_path='sbsa'
export TARGETARCH=${TARGETARCH:-$(uname -m)}
if [ ${TARGETARCH} = 'amd64' ] || [ "${TARGETARCH}" = 'x86_64' ]; then
arch_path='x86_64'
fi
CUDSS_NAME="libcudss-linux-${arch_path}-0.3.0.9_cuda12-archive"
curl --retry 3 -OLs https://developer.download.nvidia.com/compute/cudss/redist/libcudss/linux-${arch_path}/${CUDSS_NAME}.tar.xz
# only for cuda 12
tar xf ${CUDSS_NAME}.tar.xz
cp -a ${CUDSS_NAME}/include/* /usr/local/cuda/include/
cp -a ${CUDSS_NAME}/lib/* /usr/local/cuda/lib64/
fi
cd ..
rm -rf tmp_cudss
ldconfig

View File

@ -5,27 +5,17 @@ set -ex
# cuSPARSELt license: https://docs.nvidia.com/cuda/cusparselt/license.html
mkdir tmp_cusparselt && cd tmp_cusparselt
if [[ ${CUDA_VERSION:0:4} =~ ^12\.[5-8]$ ]]; then
if [[ ${CUDA_VERSION:0:4} =~ ^12\.[1-4]$ ]]; then
arch_path='sbsa'
export TARGETARCH=${TARGETARCH:-$(uname -m)}
if [ ${TARGETARCH} = 'amd64' ] || [ "${TARGETARCH}" = 'x86_64' ]; then
arch_path='x86_64'
fi
CUSPARSELT_NAME="libcusparse_lt-linux-${arch_path}-0.6.3.2-archive"
curl --retry 3 -OLs https://developer.download.nvidia.com/compute/cusparselt/redist/libcusparse_lt/linux-${arch_path}/${CUSPARSELT_NAME}.tar.xz
elif [[ ${CUDA_VERSION:0:4} == "12.4" ]]; then
arch_path='sbsa'
export TARGETARCH=${TARGETARCH:-$(uname -m)}
if [ ${TARGETARCH} = 'amd64' ] || [ "${TARGETARCH}" = 'x86_64' ]; then
arch_path='x86_64'
fi
CUSPARSELT_NAME="libcusparse_lt-linux-${arch_path}-0.6.2.3-archive"
CUSPARSELT_NAME="libcusparse_lt-linux-${arch_path}-0.5.2.1-archive"
curl --retry 3 -OLs https://developer.download.nvidia.com/compute/cusparselt/redist/libcusparse_lt/linux-${arch_path}/${CUSPARSELT_NAME}.tar.xz
elif [[ ${CUDA_VERSION:0:4} == "11.8" ]]; then
CUSPARSELT_NAME="libcusparse_lt-linux-x86_64-0.4.0.7-archive"
curl --retry 3 -OLs https://developer.download.nvidia.com/compute/cusparselt/redist/libcusparse_lt/linux-x86_64/${CUSPARSELT_NAME}.tar.xz
else
echo "Not sure which libcusparselt version to install for this ${CUDA_VERSION}"
fi
tar xf ${CUSPARSELT_NAME}.tar.xz

38
.ci/docker/common/install_db.sh Executable file
View File

@ -0,0 +1,38 @@
#!/bin/bash
set -ex
install_ubuntu() {
apt-get update
# Cleanup
apt-get autoclean && apt-get clean
rm -rf /var/lib/apt/lists/* /tmp/* /var/tmp/*
}
install_centos() {
# Need EPEL for many packages we depend on.
# See http://fedoraproject.org/wiki/EPEL
yum --enablerepo=extras install -y epel-release
# Cleanup
yum clean all
rm -rf /var/cache/yum
rm -rf /var/lib/yum/yumdb
rm -rf /var/lib/yum/history
}
# Install base packages depending on the base OS
ID=$(grep -oP '(?<=^ID=).+' /etc/os-release | tr -d '"')
case "$ID" in
ubuntu)
install_ubuntu
;;
centos)
install_centos
;;
*)
echo "Unable to determine OS..."
exit 1
;;
esac

View File

@ -13,7 +13,7 @@ clone_executorch() {
# and fetch the target commit
pushd executorch
git checkout "${EXECUTORCH_PINNED_COMMIT}"
git submodule update --init --recursive
git submodule update --init
popd
chown -R jenkins executorch
@ -36,23 +36,21 @@ install_conda_dependencies() {
}
install_pip_dependencies() {
pushd executorch
as_jenkins bash install_executorch.sh
# A workaround, ExecuTorch has moved to numpy 2.0 which is not compatible with the current
# numba and scipy version used in PyTorch CI
conda_run pip uninstall -y numba scipy
pushd executorch/.ci/docker
# Install all Python dependencies
pip_install -r requirements-ci.txt
popd
}
setup_executorch() {
pushd executorch
source .ci/scripts/utils.sh
export PYTHON_EXECUTABLE=python
export CMAKE_ARGS="-DEXECUTORCH_BUILD_PYBIND=ON -DEXECUTORCH_BUILD_XNNPACK=ON -DEXECUTORCH_BUILD_KERNELS_QUANTIZED=ON"
install_flatc_from_source
pip_install .
as_jenkins .ci/scripts/setup-linux.sh --build-tool cmake || true
# Make sure that all the newly generate files are owned by Jenkins
chown -R jenkins .
popd
}

View File

@ -1,48 +0,0 @@
#!/bin/bash
set -ex
source "$(dirname "${BASH_SOURCE[0]}")/common_utils.sh"
COMMIT=$(get_pinned_commit halide)
test -n "$COMMIT"
# activate conda to populate CONDA_PREFIX
test -n "$ANACONDA_PYTHON_VERSION"
eval "$(conda shell.bash hook)"
conda activate py_$ANACONDA_PYTHON_VERSION
if [ -n "${UBUNTU_VERSION}" ];then
apt update
apt-get install -y lld liblld-15-dev libpng-dev libjpeg-dev libgl-dev \
libopenblas-dev libeigen3-dev libatlas-base-dev libzstd-dev
fi
pip_install numpy scipy imageio cmake ninja
git clone --depth 1 --branch release/16.x --recursive https://github.com/llvm/llvm-project.git
cmake -DCMAKE_BUILD_TYPE=Release \
-DLLVM_ENABLE_PROJECTS="clang" \
-DLLVM_TARGETS_TO_BUILD="X86;NVPTX" \
-DLLVM_ENABLE_TERMINFO=OFF -DLLVM_ENABLE_ASSERTIONS=ON \
-DLLVM_ENABLE_EH=ON -DLLVM_ENABLE_RTTI=ON -DLLVM_BUILD_32_BITS=OFF \
-S llvm-project/llvm -B llvm-build -G Ninja
cmake --build llvm-build
cmake --install llvm-build --prefix llvm-install
export LLVM_ROOT=`pwd`/llvm-install
export LLVM_CONFIG=$LLVM_ROOT/bin/llvm-config
git clone https://github.com/halide/Halide.git
pushd Halide
git checkout ${COMMIT} && git submodule update --init --recursive
pip_install -r requirements.txt
# NOTE: pybind has a requirement for cmake > 3.5 so set the minimum cmake version here with a flag
# Context: https://github.com/pytorch/pytorch/issues/150420
cmake -G Ninja -DCMAKE_POLICY_VERSION_MINIMUM=3.5 -DCMAKE_BUILD_TYPE=Release -S . -B build
cmake --build build
test -e ${CONDA_PREFIX}/lib/python3 || ln -s python${ANACONDA_PYTHON_VERSION} ${CONDA_PREFIX}/lib/python3
cmake --install build --prefix ${CONDA_PREFIX}
chown -R jenkins ${CONDA_PREFIX}
popd
rm -rf Halide llvm-build llvm-project llvm-install
python -c "import halide" # check for errors

View File

@ -7,16 +7,17 @@ source "$(dirname "${BASH_SOURCE[0]}")/common_utils.sh"
function install_huggingface() {
local version
commit=$(get_pinned_commit huggingface)
pip_install pandas==2.0.3
pip_install "git+https://github.com/huggingface/transformers@${commit}"
}
function install_timm() {
local commit
commit=$(get_pinned_commit timm)
pip_install pandas==2.0.3
pip_install "git+https://github.com/huggingface/pytorch-image-models@${commit}"
# Clean up
conda_run pip uninstall -y torch torchvision triton
conda_run pip uninstall -y cmake torch torchvision triton
}
# Pango is needed for weasyprint which is needed for doctr

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@ -1,23 +0,0 @@
#!/bin/bash
# Script used only in CD pipeline
set -ex
LIBPNG_VERSION=1.6.37
mkdir -p libpng
pushd libpng
wget http://download.sourceforge.net/libpng/libpng-$LIBPNG_VERSION.tar.gz
tar -xvzf libpng-$LIBPNG_VERSION.tar.gz
pushd libpng-$LIBPNG_VERSION
./configure
make
make install
popd
popd
rm -rf libpng

View File

@ -2,6 +2,8 @@
set -ex
source "$(dirname "${BASH_SOURCE[0]}")/common_utils.sh"
if [ -n "${UBUNTU_VERSION}" ]; then
apt update
apt-get install -y clang doxygen git graphviz nodejs npm libtinfo5
@ -13,8 +15,8 @@ chown -R jenkins pytorch
pushd pytorch
# Install all linter dependencies
pip install -r requirements.txt
lintrunner init
pip_install -r requirements.txt
conda_run lintrunner init
# Cache .lintbin directory as part of the Docker image
cp -r .lintbin /tmp

View File

@ -1,27 +0,0 @@
#!/usr/bin/env bash
# Script used only in CD pipeline
set -eou pipefail
function do_install() {
cuda_version=$1
cuda_version_nodot=${1/./}
MAGMA_VERSION="2.6.1"
magma_archive="magma-cuda${cuda_version_nodot}-${MAGMA_VERSION}-1.tar.bz2"
cuda_dir="/usr/local/cuda-${cuda_version}"
(
set -x
tmp_dir=$(mktemp -d)
pushd ${tmp_dir}
curl -OLs https://ossci-linux.s3.us-east-1.amazonaws.com/${magma_archive}
tar -xvf "${magma_archive}"
mkdir -p "${cuda_dir}/magma"
mv include "${cuda_dir}/magma/include"
mv lib "${cuda_dir}/magma/lib"
popd
)
}
do_install $1

View File

@ -1,23 +0,0 @@
#!/usr/bin/env bash
# Script that installs magma from tarball inside conda environment.
# It replaces anaconda magma-cuda package which is no longer published.
# Execute it inside active conda environment.
# See issue: https://github.com/pytorch/pytorch/issues/138506
set -eou pipefail
cuda_version_nodot=${1/./}
anaconda_dir=${CONDA_PREFIX:-"$(dirname $(which conda))/../"}
MAGMA_VERSION="2.6.1"
magma_archive="magma-cuda${cuda_version_nodot}-${MAGMA_VERSION}-1.tar.bz2"
(
set -x
tmp_dir=$(mktemp -d)
pushd ${tmp_dir}
curl -OLs https://ossci-linux.s3.us-east-1.amazonaws.com/${magma_archive}
tar -xvf "${magma_archive}"
mv include/* "${anaconda_dir}/include/"
mv lib/* "${anaconda_dir}/lib"
popd
)

View File

@ -1,129 +0,0 @@
#!/bin/bash
# Script used only in CD pipeline
set -ex
ROCM_VERSION=$1
if [[ -z $ROCM_VERSION ]]; then
echo "missing ROCM_VERSION"
exit 1;
fi
IS_UBUNTU=0
ID=$(grep -oP '(?<=^ID=).+' /etc/os-release | tr -d '"')
case "$ID" in
ubuntu)
IS_UBUNTU=1
;;
centos|almalinux)
IS_UBUNTU=0
;;
*)
echo "Unable to determine OS..."
exit 1
;;
esac
# To make version comparison easier, create an integer representation.
save_IFS="$IFS"
IFS=. ROCM_VERSION_ARRAY=(${ROCM_VERSION})
IFS="$save_IFS"
if [[ ${#ROCM_VERSION_ARRAY[@]} == 2 ]]; then
ROCM_VERSION_MAJOR=${ROCM_VERSION_ARRAY[0]}
ROCM_VERSION_MINOR=${ROCM_VERSION_ARRAY[1]}
ROCM_VERSION_PATCH=0
elif [[ ${#ROCM_VERSION_ARRAY[@]} == 3 ]]; then
ROCM_VERSION_MAJOR=${ROCM_VERSION_ARRAY[0]}
ROCM_VERSION_MINOR=${ROCM_VERSION_ARRAY[1]}
ROCM_VERSION_PATCH=${ROCM_VERSION_ARRAY[2]}
else
echo "Unhandled ROCM_VERSION ${ROCM_VERSION}"
exit 1
fi
ROCM_INT=$(($ROCM_VERSION_MAJOR * 10000 + $ROCM_VERSION_MINOR * 100 + $ROCM_VERSION_PATCH))
# Function to retry functions that sometimes timeout or have flaky failures
retry () {
$* || (sleep 1 && $*) || (sleep 2 && $*) || (sleep 4 && $*) || (sleep 8 && $*)
}
# Build custom MIOpen to use comgr for offline compilation.
## Need a sanitized ROCM_VERSION without patchlevel; patchlevel version 0 must be added to paths.
ROCM_DOTS=$(echo ${ROCM_VERSION} | tr -d -c '.' | wc -c)
if [[ ${ROCM_DOTS} == 1 ]]; then
ROCM_VERSION_NOPATCH="${ROCM_VERSION}"
ROCM_INSTALL_PATH="/opt/rocm-${ROCM_VERSION}.0"
else
ROCM_VERSION_NOPATCH="${ROCM_VERSION%.*}"
ROCM_INSTALL_PATH="/opt/rocm-${ROCM_VERSION}"
fi
MIOPEN_CMAKE_COMMON_FLAGS="
-DMIOPEN_USE_COMGR=ON
-DMIOPEN_BUILD_DRIVER=OFF
"
if [[ $ROCM_INT -ge 60200 ]] && [[ $ROCM_INT -lt 60204 ]]; then
MIOPEN_BRANCH="release/rocm-rel-6.2-staging"
else
echo "ROCm ${ROCM_VERSION} does not need any patches, do not build from source"
exit 0
fi
if [[ ${IS_UBUNTU} == 1 ]]; then
apt-get remove -y miopen-hip
else
# Workaround since almalinux manylinux image already has this and cget doesn't like that
rm -rf /usr/local/lib/pkgconfig/sqlite3.pc
# Versioned package name needs regex match
# Use --noautoremove to prevent other rocm packages from being uninstalled
yum remove -y miopen-hip* --noautoremove
fi
git clone https://github.com/ROCm/MIOpen -b ${MIOPEN_BRANCH}
pushd MIOpen
# remove .git to save disk space since CI runner was running out
rm -rf .git
# Don't build CK to save docker build time
sed -i '/composable_kernel/d' requirements.txt
## MIOpen minimum requirements
cmake -P install_deps.cmake --minimum
# clean up since CI runner was running out of disk space
rm -rf /tmp/*
if [[ ${IS_UBUNTU} == 1 ]]; then
apt-get autoclean && apt-get clean
rm -rf /var/lib/apt/lists/* /tmp/* /var/tmp/*
else
yum clean all
rm -rf /var/cache/yum
rm -rf /var/lib/yum/yumdb
rm -rf /var/lib/yum/history
fi
## Build MIOpen
mkdir -p build
cd build
PKG_CONFIG_PATH=/usr/local/lib/pkgconfig CXX=${ROCM_INSTALL_PATH}/llvm/bin/clang++ cmake .. \
${MIOPEN_CMAKE_COMMON_FLAGS} \
${MIOPEN_CMAKE_DB_FLAGS} \
-DCMAKE_PREFIX_PATH="${ROCM_INSTALL_PATH}"
make MIOpen -j $(nproc)
# Build MIOpen package
make -j $(nproc) package
# clean up since CI runner was running out of disk space
rm -rf /usr/local/cget
if [[ ${IS_UBUNTU} == 1 ]]; then
sudo dpkg -i miopen-hip*.deb
else
yum install -y miopen-*.rpm
fi
popd
rm -rf MIOpen

View File

@ -1,16 +0,0 @@
#!/bin/bash
set -ex
# MKL
MKL_VERSION=2024.2.0
MKLROOT=/opt/intel
mkdir -p ${MKLROOT}
pushd /tmp
python3 -mpip install wheel
python3 -mpip download -d . mkl-static==${MKL_VERSION}
python3 -m wheel unpack mkl_static-${MKL_VERSION}-py2.py3-none-manylinux1_x86_64.whl
python3 -m wheel unpack mkl_include-${MKL_VERSION}-py2.py3-none-manylinux1_x86_64.whl
mv mkl_static-${MKL_VERSION}/mkl_static-${MKL_VERSION}.data/data/lib ${MKLROOT}
mv mkl_include-${MKL_VERSION}/mkl_include-${MKL_VERSION}.data/data/include ${MKLROOT}

View File

@ -1,13 +0,0 @@
#!/bin/bash
# Script used only in CD pipeline
set -ex
mkdir -p /usr/local/mnist/
cd /usr/local/mnist
for img in train-images-idx3-ubyte.gz train-labels-idx1-ubyte.gz t10k-images-idx3-ubyte.gz t10k-labels-idx1-ubyte.gz; do
wget -q https://ossci-datasets.s3.amazonaws.com/mnist/$img
gzip -d $img
done

View File

@ -1,26 +0,0 @@
#!/bin/bash
set -ex
NCCL_VERSION=""
if [[ ${CUDA_VERSION:0:2} == "11" ]]; then
NCCL_VERSION=$(cat ci_commit_pins/nccl-cu11.txt)
elif [[ ${CUDA_VERSION:0:2} == "12" ]]; then
NCCL_VERSION=$(cat ci_commit_pins/nccl-cu12.txt)
else
echo "Unexpected CUDA_VERSION ${CUDA_VERSION}"
exit 1
fi
if [[ -n "${NCCL_VERSION}" ]]; then
# NCCL license: https://docs.nvidia.com/deeplearning/nccl/#licenses
# Follow build: https://github.com/NVIDIA/nccl/tree/master?tab=readme-ov-file#build
git clone -b $NCCL_VERSION --depth 1 https://github.com/NVIDIA/nccl.git
pushd nccl
make -j src.build
cp -a build/include/* /usr/local/cuda/include/
cp -a build/lib/* /usr/local/cuda/lib64/
popd
rm -rf nccl
ldconfig
fi

View File

@ -4,12 +4,7 @@ set -ex
[ -n "$NINJA_VERSION" ]
arch=$(uname -m)
if [ "$arch" == "aarch64" ]; then
url="https://github.com/ninja-build/ninja/releases/download/v${NINJA_VERSION}/ninja-linux-aarch64.zip"
else
url="https://github.com/ninja-build/ninja/releases/download/v${NINJA_VERSION}/ninja-linux.zip"
fi
pushd /tmp
wget --no-verbose --output-document=ninja-linux.zip "$url"

View File

@ -1,20 +0,0 @@
#!/bin/bash
set -ex
function install_nvpl {
mkdir -p /opt/nvpl/lib /opt/nvpl/include
wget https://developer.download.nvidia.com/compute/nvpl/redist/nvpl_blas/linux-sbsa/nvpl_blas-linux-sbsa-0.3.0-archive.tar.xz
tar xf nvpl_blas-linux-sbsa-0.3.0-archive.tar.xz
cp -r nvpl_blas-linux-sbsa-0.3.0-archive/lib/* /opt/nvpl/lib/
cp -r nvpl_blas-linux-sbsa-0.3.0-archive/include/* /opt/nvpl/include/
wget https://developer.download.nvidia.com/compute/nvpl/redist/nvpl_lapack/linux-sbsa/nvpl_lapack-linux-sbsa-0.2.3.1-archive.tar.xz
tar xf nvpl_lapack-linux-sbsa-0.2.3.1-archive.tar.xz
cp -r nvpl_lapack-linux-sbsa-0.2.3.1-archive/lib/* /opt/nvpl/lib/
cp -r nvpl_lapack-linux-sbsa-0.2.3.1-archive/include/* /opt/nvpl/include/
}
install_nvpl

View File

@ -15,7 +15,7 @@ pip_install \
flatbuffers==2.0 \
mock==5.0.1 \
ninja==1.10.2 \
networkx==2.5 \
networkx==2.0 \
numpy==1.24.2
# ONNXRuntime should be installed before installing
@ -30,16 +30,15 @@ pip_install \
pip_install coloredlogs packaging
pip_install onnxruntime==1.18.1
pip_install onnx==1.17.0
pip_install onnxscript==0.2.2 --no-deps
# required by onnxscript
pip_install ml_dtypes
pip_install onnxruntime==1.18
pip_install onnx==1.16.0
# pip_install "onnxscript@git+https://github.com/microsoft/onnxscript@3e869ef8ccf19b5ebd21c10d3e9c267c9a9fa729" --no-deps
pip_install onnxscript==0.1.0.dev20240523 --no-deps
# Cache the transformers model to be used later by ONNX tests. We need to run the transformers
# package to download the model. By default, the model is cached at ~/.cache/huggingface/hub/
IMPORT_SCRIPT_FILENAME="/tmp/onnx_import_script.py"
as_jenkins echo 'import transformers; transformers.GPTJForCausalLM.from_pretrained("hf-internal-testing/tiny-random-gptj");' > "${IMPORT_SCRIPT_FILENAME}"
as_jenkins echo 'import transformers; transformers.AutoModel.from_pretrained("sshleifer/tiny-gpt2"); transformers.AutoTokenizer.from_pretrained("sshleifer/tiny-gpt2"); transformers.AutoModelForSpeechSeq2Seq.from_pretrained("openai/whisper-large-v3");' > "${IMPORT_SCRIPT_FILENAME}"
# Need a PyTorch version for transformers to work
pip_install --pre torch --index-url https://download.pytorch.org/whl/nightly/cpu

View File

@ -1,22 +0,0 @@
#!/bin/bash
# Script used only in CD pipeline
set -ex
cd /
git clone https://github.com/OpenMathLib/OpenBLAS.git -b v0.3.29 --depth 1 --shallow-submodules
OPENBLAS_BUILD_FLAGS="
NUM_THREADS=128
USE_OPENMP=1
NO_SHARED=0
DYNAMIC_ARCH=1
TARGET=ARMV8
CFLAGS=-O3
"
OPENBLAS_CHECKOUT_DIR="OpenBLAS"
make -j8 ${OPENBLAS_BUILD_FLAGS} -C ${OPENBLAS_CHECKOUT_DIR}
make -j8 ${OPENBLAS_BUILD_FLAGS} install -C ${OPENBLAS_CHECKOUT_DIR}

View File

@ -1,16 +0,0 @@
#!/bin/bash
# Script used only in CD pipeline
set -ex
# Pin the version to latest release 0.17.2, building newer commit starts
# to fail on the current image
git clone -b 0.17.2 --single-branch https://github.com/NixOS/patchelf
cd patchelf
sed -i 's/serial/parallel/g' configure.ac
./bootstrap.sh
./configure
make
make install
cd ..
rm -rf patchelf

View File

@ -0,0 +1,19 @@
#!/bin/bash
set -ex
pb_dir="/usr/temp_pb_install_dir"
mkdir -p $pb_dir
# On the nvidia/cuda:9-cudnn7-devel-centos7 image we need this symlink or
# else it will fail with
# g++: error: ./../lib64/crti.o: No such file or directory
ln -s /usr/lib64 "$pb_dir/lib64"
curl -LO "https://github.com/protocolbuffers/protobuf/releases/download/v3.17.3/protobuf-all-3.17.3.tar.gz" --retry 3
tar -xvz --no-same-owner -C "$pb_dir" --strip-components 1 -f protobuf-all-3.17.3.tar.gz
NPROC=$[$(nproc) - 2]
pushd "$pb_dir" && ./configure && make -j${NPROC} && make -j${NPROC} check && sudo make -j${NRPOC} install && sudo ldconfig
popd
rm -rf $pb_dir

View File

@ -1,15 +0,0 @@
#!/bin/bash
set -ex
apt-get update
# Use deadsnakes in case we need an older python version
sudo add-apt-repository ppa:deadsnakes/ppa
apt-get install -y python${PYTHON_VERSION} python${PYTHON_VERSION}-dev python3-pip python${PYTHON_VERSION}-venv
# Use a venv because uv and some other package managers don't support --user install
ln -s /usr/bin/python${PYTHON_VERSION} /usr/bin/python
python -m venv /var/lib/jenkins/ci_env
source /var/lib/jenkins/ci_env/bin/activate
python -mpip install --upgrade pip
python -mpip install -r /opt/requirements-ci.txt

View File

@ -8,6 +8,10 @@ ver() {
install_ubuntu() {
apt-get update
if [[ $UBUNTU_VERSION == 18.04 ]]; then
# gpg-agent is not available by default on 18.04
apt-get install -y --no-install-recommends gpg-agent
fi
if [[ $UBUNTU_VERSION == 20.04 ]]; then
# gpg-agent is not available by default on 20.04
apt-get install -y --no-install-recommends gpg-agent
@ -19,13 +23,6 @@ install_ubuntu() {
apt-get install -y libc++1
apt-get install -y libc++abi1
# Make sure rocm packages from repo.radeon.com have highest priority
cat << EOF > /etc/apt/preferences.d/rocm-pin-600
Package: *
Pin: release o=repo.radeon.com
Pin-Priority: 600
EOF
# Add amdgpu repository
UBUNTU_VERSION_NAME=`cat /etc/os-release | grep UBUNTU_CODENAME | awk -F= '{print $2}'`
echo "deb [arch=amd64] https://repo.radeon.com/amdgpu/${ROCM_VERSION}/ubuntu ${UBUNTU_VERSION_NAME} main" > /etc/apt/sources.list.d/amdgpu.list
@ -65,30 +62,6 @@ EOF
sqlite3 $kdb "PRAGMA journal_mode=off; PRAGMA VACUUM;"
done
# ROCm 6.3 had a regression where initializing static code objects had significant overhead
# ROCm 6.4 did not yet fix the regression, also HIP branch names are different
if [[ $(ver $ROCM_VERSION) -eq $(ver 6.3) ]] || [[ $(ver $ROCM_VERSION) -eq $(ver 6.4) ]]; then
if [[ $(ver $ROCM_VERSION) -eq $(ver 6.3) ]]; then
HIP_BRANCH=rocm-6.3.x
VER_STR=6.3
elif [[ $(ver $ROCM_VERSION) -eq $(ver 6.4) ]]; then
HIP_BRANCH=release/rocm-rel-6.4
VER_STR=6.4
fi
# clr build needs CppHeaderParser but can only find it using conda's python
/opt/conda/bin/python -m pip install CppHeaderParser
git clone https://github.com/ROCm/HIP -b $HIP_BRANCH
HIP_COMMON_DIR=$(readlink -f HIP)
git clone https://github.com/jeffdaily/clr -b release/rocm-rel-${VER_STR}-statco-hotfix
mkdir -p clr/build
pushd clr/build
cmake .. -DCLR_BUILD_HIP=ON -DHIP_COMMON_DIR=$HIP_COMMON_DIR
make -j
cp hipamd/lib/libamdhip64.so.${VER_STR}.* /opt/rocm/lib/libamdhip64.so.${VER_STR}.*
popd
rm -rf HIP clr
fi
# Cleanup
apt-get autoclean && apt-get clean
rm -rf /var/lib/apt/lists/* /tmp/* /var/tmp/*

View File

@ -1,150 +0,0 @@
#!/bin/bash
# Script used only in CD pipeline
###########################
### prereqs
###########################
# Install Python packages depending on the base OS
ID=$(grep -oP '(?<=^ID=).+' /etc/os-release | tr -d '"')
case "$ID" in
ubuntu)
apt-get update -y
apt-get install -y libpciaccess-dev pkg-config
apt-get clean
;;
centos|almalinux)
yum install -y libpciaccess-devel pkgconfig
;;
*)
echo "Unable to determine OS..."
exit 1
;;
esac
python3 -m pip install meson ninja
###########################
### clone repo
###########################
GIT_SSL_NO_VERIFY=true git clone https://gitlab.freedesktop.org/mesa/drm.git
pushd drm
###########################
### patch
###########################
patch -p1 <<'EOF'
diff --git a/amdgpu/amdgpu_asic_id.c b/amdgpu/amdgpu_asic_id.c
index a5007ffc..13fa07fc 100644
--- a/amdgpu/amdgpu_asic_id.c
+++ b/amdgpu/amdgpu_asic_id.c
@@ -22,6 +22,13 @@
*
*/
+#define _XOPEN_SOURCE 700
+#define _LARGEFILE64_SOURCE
+#define _FILE_OFFSET_BITS 64
+#include <ftw.h>
+#include <link.h>
+#include <limits.h>
+
#include <ctype.h>
#include <stdio.h>
#include <stdlib.h>
@@ -34,6 +41,19 @@
#include "amdgpu_drm.h"
#include "amdgpu_internal.h"
+static char *amdgpuids_path = NULL;
+static const char* amdgpuids_path_msg = NULL;
+
+static int check_for_location_of_amdgpuids(const char *filepath, const struct stat *info, const int typeflag, struct FTW *pathinfo)
+{
+ if (typeflag == FTW_F && strstr(filepath, "amdgpu.ids")) {
+ amdgpuids_path = strdup(filepath);
+ return 1;
+ }
+
+ return 0;
+}
+
static int parse_one_line(struct amdgpu_device *dev, const char *line)
{
char *buf, *saveptr;
@@ -113,10 +133,46 @@ void amdgpu_parse_asic_ids(struct amdgpu_device *dev)
int line_num = 1;
int r = 0;
+ // attempt to find typical location for amdgpu.ids file
fp = fopen(AMDGPU_ASIC_ID_TABLE, "r");
+
+ // if it doesn't exist, search
+ if (!fp) {
+
+ char self_path[ PATH_MAX ];
+ ssize_t count;
+ ssize_t i;
+
+ count = readlink( "/proc/self/exe", self_path, PATH_MAX );
+ if (count > 0) {
+ self_path[count] = '\0';
+
+ // remove '/bin/python' from self_path
+ for (i=count; i>0; --i) {
+ if (self_path[i] == '/') break;
+ self_path[i] = '\0';
+ }
+ self_path[i] = '\0';
+ for (; i>0; --i) {
+ if (self_path[i] == '/') break;
+ self_path[i] = '\0';
+ }
+ self_path[i] = '\0';
+
+ if (1 == nftw(self_path, check_for_location_of_amdgpuids, 5, FTW_PHYS)) {
+ fp = fopen(amdgpuids_path, "r");
+ amdgpuids_path_msg = amdgpuids_path;
+ }
+ }
+
+ }
+ else {
+ amdgpuids_path_msg = AMDGPU_ASIC_ID_TABLE;
+ }
+
+ // both hard-coded location and search have failed
if (!fp) {
- fprintf(stderr, "%s: %s\n", AMDGPU_ASIC_ID_TABLE,
- strerror(errno));
+ //fprintf(stderr, "amdgpu.ids: No such file or directory\n");
return;
}
@@ -132,7 +188,7 @@ void amdgpu_parse_asic_ids(struct amdgpu_device *dev)
continue;
}
- drmMsg("%s version: %s\n", AMDGPU_ASIC_ID_TABLE, line);
+ drmMsg("%s version: %s\n", amdgpuids_path_msg, line);
break;
}
@@ -150,7 +206,7 @@ void amdgpu_parse_asic_ids(struct amdgpu_device *dev)
if (r == -EINVAL) {
fprintf(stderr, "Invalid format: %s: line %d: %s\n",
- AMDGPU_ASIC_ID_TABLE, line_num, line);
+ amdgpuids_path_msg, line_num, line);
} else if (r && r != -EAGAIN) {
fprintf(stderr, "%s: Cannot parse ASIC IDs: %s\n",
__func__, strerror(-r));
EOF
###########################
### build
###########################
meson builddir --prefix=/opt/amdgpu
pushd builddir
ninja install
popd
popd

View File

@ -1,32 +1,31 @@
#!/usr/bin/env bash
# Script used only in CD pipeline
#!/bin/bash
set -eou pipefail
set -ex
function do_install() {
rocm_version=$1
rocm_version_nodot=${1//./}
# "install" hipMAGMA into /opt/rocm/magma by copying after build
git clone https://bitbucket.org/icl/magma.git
pushd magma
# Version 2.7.2 + ROCm related updates
MAGMA_VERSION=a1625ff4d9bc362906bd01f805dbbe12612953f6
magma_archive="magma-rocm${rocm_version_nodot}-${MAGMA_VERSION}-1.tar.bz2"
git checkout a1625ff4d9bc362906bd01f805dbbe12612953f6
rocm_dir="/opt/rocm"
(
set -x
tmp_dir=$(mktemp -d)
pushd ${tmp_dir}
curl -OLs https://ossci-linux.s3.us-east-1.amazonaws.com/${magma_archive}
if tar -xvf "${magma_archive}"
then
mkdir -p "${rocm_dir}/magma"
mv include "${rocm_dir}/magma/include"
mv lib "${rocm_dir}/magma/lib"
cp make.inc-examples/make.inc.hip-gcc-mkl make.inc
echo 'LIBDIR += -L$(MKLROOT)/lib' >> make.inc
echo 'LIB += -Wl,--enable-new-dtags -Wl,--rpath,/opt/rocm/lib -Wl,--rpath,$(MKLROOT)/lib -Wl,--rpath,/opt/rocm/magma/lib' >> make.inc
echo 'DEVCCFLAGS += --gpu-max-threads-per-block=256' >> make.inc
export PATH="${PATH}:/opt/rocm/bin"
if [[ -n "$PYTORCH_ROCM_ARCH" ]]; then
amdgpu_targets=`echo $PYTORCH_ROCM_ARCH | sed 's/;/ /g'`
else
echo "${magma_archive} not found, skipping magma install"
amdgpu_targets=`rocm_agent_enumerator | grep -v gfx000 | sort -u | xargs`
fi
for arch in $amdgpu_targets; do
echo "DEVCCFLAGS += --offload-arch=$arch" >> make.inc
done
# hipcc with openmp flag may cause isnan() on __device__ not to be found; depending on context, compiler may attempt to match with host definition
sed -i 's/^FOPENMP/#FOPENMP/g' make.inc
make -f make.gen.hipMAGMA -j $(nproc)
LANG=C.UTF-8 make lib/libmagma.so -j $(nproc) MKLROOT=/opt/conda/envs/py_$ANACONDA_PYTHON_VERSION
make testing/testing_dgemm -j $(nproc) MKLROOT=/opt/conda/envs/py_$ANACONDA_PYTHON_VERSION
popd
)
}
do_install $1
mv magma /opt/rocm

View File

@ -0,0 +1,24 @@
#!/bin/bash
set -ex
[ -n "${SWIFTSHADER}" ]
retry () {
$* || (sleep 1 && $*) || (sleep 2 && $*) || (sleep 4 && $*) || (sleep 8 && $*)
}
_https_amazon_aws=https://ossci-android.s3.amazonaws.com
# SwiftShader
_swiftshader_dir=/var/lib/jenkins/swiftshader
_swiftshader_file_targz=swiftshader-abe07b943-prebuilt.tar.gz
mkdir -p $_swiftshader_dir
_tmp_swiftshader_targz="/tmp/${_swiftshader_file_targz}"
curl --silent --show-error --location --fail --retry 3 \
--output "${_tmp_swiftshader_targz}" "$_https_amazon_aws/${_swiftshader_file_targz}"
tar -C "${_swiftshader_dir}" -xzf "${_tmp_swiftshader_targz}"
export VK_ICD_FILENAMES="${_swiftshader_dir}/build/Linux/vk_swiftshader_icd.json"

View File

@ -2,26 +2,24 @@
set -ex
mkdir -p /opt/triton
if [ -z "${TRITON}" ] && [ -z "${TRITON_CPU}" ]; then
echo "TRITON and TRITON_CPU are not set. Exiting..."
exit 0
fi
source "$(dirname "${BASH_SOURCE[0]}")/common_utils.sh"
get_pip_version() {
conda_run pip list | grep -w $* | head -n 1 | awk '{print $2}'
get_conda_version() {
as_jenkins conda list -n py_$ANACONDA_PYTHON_VERSION | grep -w $* | head -n 1 | awk '{print $2}'
}
if [ -n "${XPU_VERSION}" ]; then
conda_reinstall() {
as_jenkins conda install -q -n py_$ANACONDA_PYTHON_VERSION -y --force-reinstall $*
}
if [ -n "${ROCM_VERSION}" ]; then
TRITON_REPO="https://github.com/openai/triton"
TRITON_TEXT_FILE="triton-rocm"
elif [ -n "${XPU_VERSION}" ]; then
TRITON_REPO="https://github.com/intel/intel-xpu-backend-for-triton"
TRITON_TEXT_FILE="triton-xpu"
elif [ -n "${TRITON_CPU}" ]; then
TRITON_REPO="https://github.com/triton-lang/triton-cpu"
TRITON_TEXT_FILE="triton-cpu"
else
TRITON_REPO="https://github.com/triton-lang/triton"
TRITON_REPO="https://github.com/openai/triton"
TRITON_TEXT_FILE="triton"
fi
@ -33,50 +31,32 @@ if [ -n "${UBUNTU_VERSION}" ];then
apt-get install -y gpg-agent
fi
if [ -n "${CONDA_CMAKE}" ]; then
# Keep the current cmake and numpy version here, so we can reinstall them later
CMAKE_VERSION=$(get_pip_version cmake)
NUMPY_VERSION=$(get_pip_version numpy)
CMAKE_VERSION=$(get_conda_version cmake)
NUMPY_VERSION=$(get_conda_version numpy)
fi
if [ -z "${MAX_JOBS}" ]; then
export MAX_JOBS=$(nproc)
fi
# Git checkout triton
mkdir /var/lib/jenkins/triton
chown -R jenkins /var/lib/jenkins/triton
chgrp -R jenkins /var/lib/jenkins/triton
pushd /var/lib/jenkins/
as_jenkins git clone --recursive ${TRITON_REPO} triton
cd triton
as_jenkins git checkout ${TRITON_PINNED_COMMIT}
as_jenkins git submodule update --init --recursive
cd python
pip_install pybind11==2.13.6
# TODO: remove patch setup.py once we have a proper fix for https://github.com/triton-lang/triton/issues/4527
as_jenkins sed -i -e 's/https:\/\/tritonlang.blob.core.windows.net\/llvm-builds/https:\/\/oaitriton.blob.core.windows.net\/public\/llvm-builds/g' setup.py
if [ -n "${UBUNTU_VERSION}" ] && [ -n "${GCC_VERSION}" ] && [[ "${GCC_VERSION}" == "7" ]]; then
# Triton needs at least gcc-9 to build
apt-get install -y g++-9
CXX=g++-9 conda_run python setup.py bdist_wheel
CXX=g++-9 pip_install "git+${TRITON_REPO}@${TRITON_PINNED_COMMIT}#subdirectory=python"
elif [ -n "${UBUNTU_VERSION}" ] && [ -n "${CLANG_VERSION}" ]; then
# Triton needs <filesystem> which surprisingly is not available with clang-9 toolchain
add-apt-repository -y ppa:ubuntu-toolchain-r/test
apt-get install -y g++-9
CXX=g++-9 conda_run python setup.py bdist_wheel
CXX=g++-9 pip_install "git+${TRITON_REPO}@${TRITON_PINNED_COMMIT}#subdirectory=python"
else
conda_run python setup.py bdist_wheel
pip_install "git+${TRITON_REPO}@${TRITON_PINNED_COMMIT}#subdirectory=python"
fi
# Copy the wheel to /opt for multi stage docker builds
cp dist/*.whl /opt/triton
# Install the wheel for docker builds that don't use multi stage
pip_install dist/*.whl
if [ -n "${CONDA_CMAKE}" ]; then
# TODO: This is to make sure that the same cmake and numpy version from install conda
# script is used. Without this step, the newer cmake version (3.25.2) downloaded by
# triton build step via pip will fail to detect conda MKL. Once that issue is fixed,
@ -86,10 +66,7 @@ pip_install dist/*.whl
# causes inconsistent environment. Without this, conda will attempt to install the
# latest numpy version, which fails ASAN tests with the following import error: Numba
# needs NumPy 1.20 or less.
conda_reinstall cmake="${CMAKE_VERSION}"
# Note that we install numpy with pip as conda might not have the version we want
if [ -n "${CMAKE_VERSION}" ]; then
pip_install "cmake==${CMAKE_VERSION}"
fi
if [ -n "${NUMPY_VERSION}" ]; then
pip_install "numpy==${NUMPY_VERSION}"
pip_install --force-reinstall numpy=="${NUMPY_VERSION}"
fi

View File

@ -8,12 +8,6 @@ else
with_cuda=no
fi
if [[ -d "/opt/rocm" ]]; then
with_rocm=/opt/rocm
else
with_rocm=no
fi
function install_ucx() {
set -ex
git clone --recursive https://github.com/openucx/ucx.git
@ -25,7 +19,6 @@ function install_ucx() {
./configure --prefix=$UCX_HOME \
--enable-mt \
--with-cuda=$with_cuda \
--with-rocm=$with_rocm \
--enable-profiling \
--enable-stats
time make -j
@ -43,29 +36,12 @@ function install_ucc() {
git submodule update --init --recursive
./autogen.sh
# We only run distributed tests on Tesla M60 and A10G
NVCC_GENCODE="-gencode=arch=compute_52,code=sm_52 -gencode=arch=compute_86,code=compute_86"
if [[ -n "$ROCM_VERSION" ]]; then
if [[ -n "$PYTORCH_ROCM_ARCH" ]]; then
amdgpu_targets=`echo $PYTORCH_ROCM_ARCH | sed 's/;/ /g'`
else
amdgpu_targets=`rocm_agent_enumerator | grep -v gfx000 | sort -u | xargs`
fi
for arch in $amdgpu_targets; do
HIP_OFFLOAD="$HIP_OFFLOAD --offload-arch=$arch"
done
else
HIP_OFFLOAD="all-arch-no-native"
fi
./configure --prefix=$UCC_HOME \
--with-ucx=$UCX_HOME \
--with-cuda=$with_cuda \
--with-nvcc-gencode="${NVCC_GENCODE}" \
--with-rocm=$with_rocm \
--with-rocm-arch="${HIP_OFFLOAD}"
--with-nvcc-gencode="${NVCC_GENCODE}"
time make -j
sudo make install

View File

@ -2,13 +2,6 @@
set -ex
# Since version 24 the system ships with user 'ubuntu' that has id 1000
# We need a work-around to enable id 1000 usage for this script
if [[ $UBUNTU_VERSION == 24.04 ]]; then
# touch is used to disable harmless error message
touch /var/mail/ubuntu && chown ubuntu /var/mail/ubuntu && userdel -r ubuntu
fi
# Mirror jenkins user in container
# jenkins user as ec2-user should have the same user-id
echo "jenkins:x:1000:1000::/var/lib/jenkins:" >> /etc/passwd

View File

@ -0,0 +1,24 @@
#!/bin/bash
set -ex
[ -n "${VULKAN_SDK_VERSION}" ]
retry () {
$* || (sleep 1 && $*) || (sleep 2 && $*) || (sleep 4 && $*) || (sleep 8 && $*)
}
_vulkansdk_dir=/var/lib/jenkins/vulkansdk
_tmp_vulkansdk_targz=/tmp/vulkansdk.tar.gz
curl \
--silent \
--show-error \
--location \
--fail \
--retry 3 \
--output "${_tmp_vulkansdk_targz}" "https://ossci-android.s3.amazonaws.com/vulkansdk-linux-x86_64-${VULKAN_SDK_VERSION}.tar.gz"
mkdir -p "${_vulkansdk_dir}"
tar -C "${_vulkansdk_dir}" -xzf "${_tmp_vulkansdk_targz}" --strip-components 1
rm -rf "${_tmp_vulkansdk_targz}"

View File

@ -1,6 +1,6 @@
#!/bin/bash
set -xe
# Script used in CI and CD pipeline
# Intel® software for general purpose GPU capabilities.
# Refer to https://www.intel.com/content/www/us/en/developer/articles/tool/pytorch-prerequisites-for-intel-gpus.html
@ -8,26 +8,22 @@ set -xe
# Users should update to the latest version as it becomes available
function install_ubuntu() {
. /etc/os-release
if [[ ! " jammy " =~ " ${VERSION_CODENAME} " ]]; then
echo "Ubuntu version ${VERSION_CODENAME} not supported"
exit
fi
apt-get update -y
apt-get install -y gpg-agent wget
# To add the online network package repository for the GPU Driver
# Set up the repository. To do this, download the key to the system keyring
wget -qO - https://repositories.intel.com/gpu/intel-graphics.key \
| gpg --yes --dearmor --output /usr/share/keyrings/intel-graphics.gpg
| gpg --dearmor --output /usr/share/keyrings/intel-graphics.gpg
wget -qO - https://apt.repos.intel.com/intel-gpg-keys/GPG-PUB-KEY-INTEL-SW-PRODUCTS.PUB \
| gpg --dearmor --output /usr/share/keyrings/intel-for-pytorch-gpu-dev-keyring.gpg
# Add the signed entry to APT sources and configure the APT client to use the Intel repository
echo "deb [arch=amd64 signed-by=/usr/share/keyrings/intel-graphics.gpg] \
https://repositories.intel.com/gpu/ubuntu ${VERSION_CODENAME}${XPU_DRIVER_VERSION} unified" \
| tee /etc/apt/sources.list.d/intel-gpu-${VERSION_CODENAME}.list
# To add the online network network package repository for the Intel Support Packages
wget -O- https://apt.repos.intel.com/intel-gpg-keys/GPG-PUB-KEY-INTEL-SW-PRODUCTS.PUB \
| gpg --dearmor > /usr/share/keyrings/oneapi-archive-keyring.gpg.gpg
echo "deb [signed-by=/usr/share/keyrings/oneapi-archive-keyring.gpg.gpg] \
https://apt.repos.intel.com/oneapi all main" \
| tee /etc/apt/sources.list.d/oneAPI.list
https://repositories.intel.com/gpu/ubuntu jammy/lts/2350 unified" \
| tee /etc/apt/sources.list.d/intel-gpu-jammy.list
echo "deb [signed-by=/usr/share/keyrings/intel-for-pytorch-gpu-dev-keyring.gpg] \
https://apt.repos.intel.com/intel-for-pytorch-gpu-dev all main" \
| tee /etc/apt/sources.list.d/intel-for-pytorch-gpu-dev.list
# Update the packages list and repository index
apt-get update
@ -41,39 +37,32 @@ function install_ubuntu() {
libegl-mesa0 libegl1-mesa libegl1-mesa-dev libgbm1 libgl1-mesa-dev libgl1-mesa-dri \
libglapi-mesa libgles2-mesa-dev libglx-mesa0 libigdgmm12 libxatracker2 mesa-va-drivers \
mesa-vdpau-drivers mesa-vulkan-drivers va-driver-all vainfo hwinfo clinfo
if [[ "${XPU_DRIVER_TYPE,,}" == "rolling" ]]; then
apt-get install -y intel-ocloc
fi
# Development Packages
apt-get install -y libigc-dev intel-igc-cm libigdfcl-dev libigfxcmrt-dev level-zero-dev
# Install Intel Support Packages
apt-get install -y ${XPU_PACKAGES}
if [ -n "$XPU_VERSION" ]; then
apt-get install -y intel-for-pytorch-gpu-dev-${XPU_VERSION}
else
apt-get install -y intel-for-pytorch-gpu-dev
fi
# Cleanup
apt-get autoclean && apt-get clean
rm -rf /var/lib/apt/lists/* /tmp/* /var/tmp/*
}
function install_rhel() {
. /etc/os-release
if [[ "${ID}" == "rhel" ]]; then
if [[ ! " 8.8 8.9 9.0 9.2 9.3 " =~ " ${VERSION_ID} " ]]; then
echo "RHEL version ${VERSION_ID} not supported"
exit
fi
elif [[ "${ID}" == "almalinux" ]]; then
# Workaround for almalinux8 which used by quay.io/pypa/manylinux_2_28_x86_64
VERSION_ID="8.8"
fi
function install_centos() {
dnf install -y 'dnf-command(config-manager)'
# To add the online network package repository for the GPU Driver
dnf config-manager --add-repo \
https://repositories.intel.com/gpu/rhel/${VERSION_ID}${XPU_DRIVER_VERSION}/unified/intel-gpu-${VERSION_ID}.repo
# To add the online network network package repository for the Intel Support Packages
tee > /etc/yum.repos.d/oneAPI.repo << EOF
https://repositories.intel.com/gpu/rhel/8.6/production/2328/unified/intel-gpu-8.6.repo
# To add the EPEL repository needed for DKMS
dnf -y install https://dl.fedoraproject.org/pub/epel/epel-release-latest-8.noarch.rpm
# https://dl.fedoraproject.org/pub/epel/epel-release-latest-9.noarch.rpm
# Create the YUM repository file in the /temp directory as a normal user
tee > /tmp/oneAPI.repo << EOF
[oneAPI]
name=Intel for Pytorch GPU dev repository
name=Intel® oneAPI repository
baseurl=https://yum.repos.intel.com/oneapi
enabled=1
gpgcheck=1
@ -81,22 +70,25 @@ repo_gpgcheck=1
gpgkey=https://yum.repos.intel.com/intel-gpg-keys/GPG-PUB-KEY-INTEL-SW-PRODUCTS.PUB
EOF
# Install Intel Support Packages
yum install -y ${XPU_PACKAGES}
# Move the newly created oneAPI.repo file to the YUM configuration directory /etc/yum.repos.d
mv /tmp/oneAPI.repo /etc/yum.repos.d
# The xpu-smi packages
dnf install -y xpu-smi
dnf install -y flex bison xpu-smi
# Compute and Media Runtimes
dnf install --skip-broken -y \
dnf install -y \
intel-opencl intel-media intel-mediasdk libmfxgen1 libvpl2\
level-zero intel-level-zero-gpu mesa-dri-drivers mesa-vulkan-drivers \
mesa-vdpau-drivers libdrm mesa-libEGL mesa-libgbm mesa-libGL \
mesa-libxatracker libvpl-tools intel-metrics-discovery \
intel-metrics-library intel-igc-core intel-igc-cm \
libva libva-utils intel-gmmlib libmetee intel-gsc intel-ocloc
libva libva-utils intel-gmmlib libmetee intel-gsc intel-ocloc hwinfo clinfo
# Development packages
dnf install -y --refresh \
intel-igc-opencl-devel level-zero-devel intel-gsc-devel libmetee-devel \
level-zero-devel
# Install Intel® oneAPI Base Toolkit
dnf install intel-basekit -y
# Cleanup
dnf clean all
@ -105,48 +97,6 @@ EOF
rm -rf /var/lib/yum/history
}
function install_sles() {
. /etc/os-release
VERSION_SP=${VERSION_ID//./sp}
if [[ ! " 15sp4 15sp5 " =~ " ${VERSION_SP} " ]]; then
echo "SLES version ${VERSION_ID} not supported"
exit
fi
# To add the online network package repository for the GPU Driver
zypper addrepo -f -r \
https://repositories.intel.com/gpu/sles/${VERSION_SP}${XPU_DRIVER_VERSION}/unified/intel-gpu-${VERSION_SP}.repo
rpm --import https://repositories.intel.com/gpu/intel-graphics.key
# To add the online network network package repository for the Intel Support Packages
zypper addrepo https://yum.repos.intel.com/oneapi oneAPI
rpm --import https://yum.repos.intel.com/intel-gpg-keys/GPG-PUB-KEY-INTEL-SW-PRODUCTS.PUB
# The xpu-smi packages
zypper install -y lsb-release flex bison xpu-smi
# Compute and Media Runtimes
zypper install -y intel-level-zero-gpu level-zero intel-gsc intel-opencl intel-ocloc \
intel-media-driver libigfxcmrt7 libvpl2 libvpl-tools libmfxgen1 libmfx1
# Development packages
zypper install -y libigdfcl-devel intel-igc-cm libigfxcmrt-devel level-zero-devel
# Install Intel Support Packages
zypper install -y ${XPU_PACKAGES}
}
# Default use GPU driver LTS releases
XPU_DRIVER_VERSION="/lts/2350"
if [[ "${XPU_DRIVER_TYPE,,}" == "rolling" ]]; then
# Use GPU driver rolling releases
XPU_DRIVER_VERSION=""
fi
# Default use Intel® oneAPI Deep Learning Essentials 2025.0
if [[ "$XPU_VERSION" == "2025.1" ]]; then
XPU_PACKAGES="intel-deep-learning-essentials-2025.1"
else
XPU_PACKAGES="intel-deep-learning-essentials-2025.0"
fi
# The installation depends on the base OS
ID=$(grep -oP '(?<=^ID=).+' /etc/os-release | tr -d '"')
@ -154,11 +104,8 @@ case "$ID" in
ubuntu)
install_ubuntu
;;
rhel|almalinux)
install_rhel
;;
sles)
install_sles
centos)
install_centos
;;
*)
echo "Unable to determine OS..."

View File

@ -1,109 +0,0 @@
ARG BASE_TARGET=base
ARG GPU_IMAGE=ubuntu:20.04
FROM ${GPU_IMAGE} as base
ENV DEBIAN_FRONTEND=noninteractive
RUN apt-get clean && apt-get update
RUN apt-get install -y curl locales g++ git-all autoconf automake make cmake wget unzip sudo
# Just add everything as a safe.directory for git since these will be used in multiple places with git
RUN git config --global --add safe.directory '*'
RUN locale-gen en_US.UTF-8
ENV LC_ALL en_US.UTF-8
ENV LANG en_US.UTF-8
ENV LANGUAGE en_US.UTF-8
# Install openssl
FROM base as openssl
ADD ./common/install_openssl.sh install_openssl.sh
RUN bash ./install_openssl.sh && rm install_openssl.sh
# Install python
FROM base as python
ADD common/install_cpython.sh install_cpython.sh
RUN apt-get update -y && \
apt-get install build-essential gdb lcov libbz2-dev libffi-dev \
libgdbm-dev liblzma-dev libncurses5-dev libreadline6-dev \
libsqlite3-dev libssl-dev lzma lzma-dev tk-dev uuid-dev zlib1g-dev -y && \
bash ./install_cpython.sh && \
rm install_cpython.sh && \
apt-get clean
FROM base as conda
ADD ./common/install_conda_docker.sh install_conda.sh
RUN bash ./install_conda.sh && rm install_conda.sh
FROM base as cpu
# Install Anaconda
COPY --from=conda /opt/conda /opt/conda
# Install python
COPY --from=python /opt/python /opt/python
COPY --from=python /opt/_internal /opt/_internal
ENV PATH=/opt/conda/bin:/usr/local/cuda/bin:$PATH
# Install MKL
ADD ./common/install_mkl.sh install_mkl.sh
RUN bash ./install_mkl.sh && rm install_mkl.sh
FROM cpu as cuda
ADD ./common/install_cuda.sh install_cuda.sh
ADD ./common/install_magma.sh install_magma.sh
COPY ./common/install_nccl.sh install_nccl.sh
COPY ./ci_commit_pins/nccl-cu* /ci_commit_pins/
COPY ./common/install_cusparselt.sh install_cusparselt.sh
ENV CUDA_HOME /usr/local/cuda
FROM cuda as cuda11.8
RUN bash ./install_cuda.sh 11.8
RUN bash ./install_magma.sh 11.8
RUN ln -sf /usr/local/cuda-11.8 /usr/local/cuda
FROM cuda as cuda12.4
RUN bash ./install_cuda.sh 12.4
RUN bash ./install_magma.sh 12.4
RUN ln -sf /usr/local/cuda-12.4 /usr/local/cuda
FROM cuda as cuda12.6
RUN bash ./install_cuda.sh 12.6
RUN bash ./install_magma.sh 12.6
RUN ln -sf /usr/local/cuda-12.6 /usr/local/cuda
FROM cuda as cuda12.8
RUN bash ./install_cuda.sh 12.8
RUN bash ./install_magma.sh 12.8
RUN ln -sf /usr/local/cuda-12.8 /usr/local/cuda
FROM cpu as rocm
ARG ROCM_VERSION
ARG PYTORCH_ROCM_ARCH
ENV PYTORCH_ROCM_ARCH ${PYTORCH_ROCM_ARCH}
ENV MKLROOT /opt/intel
# Adding ROCM_PATH env var so that LoadHip.cmake (even with logic updated for ROCm6.0)
# find HIP works for ROCm5.7. Not needed for ROCm6.0 and above.
# Remove below when ROCm5.7 is not in support matrix anymore.
ENV ROCM_PATH /opt/rocm
# No need to install ROCm as base docker image should have full ROCm install
#ADD ./common/install_rocm.sh install_rocm.sh
ADD ./common/install_rocm_drm.sh install_rocm_drm.sh
ADD ./common/install_rocm_magma.sh install_rocm_magma.sh
# gfortran and python needed for building magma from source for ROCm
RUN apt-get update -y && \
apt-get install gfortran -y && \
apt-get install python3 python-is-python3 -y && \
apt-get clean
RUN bash ./install_rocm_drm.sh && rm install_rocm_drm.sh
RUN bash ./install_rocm_magma.sh ${ROCM_VERSION} && rm install_rocm_magma.sh
FROM ${BASE_TARGET} as final
COPY --from=openssl /opt/openssl /opt/openssl
# Install patchelf
ADD ./common/install_patchelf.sh install_patchelf.sh
RUN bash ./install_patchelf.sh && rm install_patchelf.sh
# Install Anaconda
COPY --from=conda /opt/conda /opt/conda
# Install python
COPY --from=python /opt/python /opt/python
COPY --from=python /opt/_internal /opt/_internal
ENV PATH=/opt/conda/bin:/usr/local/cuda/bin:$PATH

View File

@ -1,63 +0,0 @@
#!/usr/bin/env bash
# Script used only in CD pipeline
set -eoux pipefail
image="$1"
shift
if [ -z "${image}" ]; then
echo "Usage: $0 IMAGENAME:ARCHTAG"
exit 1
fi
TOPDIR=$(git rev-parse --show-toplevel)
DOCKER=${DOCKER:-docker}
# Go from imagename:tag to tag
DOCKER_TAG_PREFIX=$(echo "${image}" | awk -F':' '{print $2}')
GPU_ARCH_VERSION=""
if [[ "${DOCKER_TAG_PREFIX}" == cuda* ]]; then
# extract cuda version from image name. e.g. manylinux2_28-builder:cuda12.8 returns 12.8
GPU_ARCH_VERSION=$(echo "${DOCKER_TAG_PREFIX}" | awk -F'cuda' '{print $2}')
elif [[ "${DOCKER_TAG_PREFIX}" == rocm* ]]; then
# extract rocm version from image name. e.g. manylinux2_28-builder:rocm6.2.4 returns 6.2.4
GPU_ARCH_VERSION=$(echo "${DOCKER_TAG_PREFIX}" | awk -F'rocm' '{print $2}')
fi
case ${DOCKER_TAG_PREFIX} in
cpu)
BASE_TARGET=cpu
GPU_IMAGE=ubuntu:20.04
DOCKER_GPU_BUILD_ARG=""
;;
cuda*)
BASE_TARGET=cuda${GPU_ARCH_VERSION}
GPU_IMAGE=ubuntu:20.04
DOCKER_GPU_BUILD_ARG=""
;;
rocm*)
BASE_TARGET=rocm
GPU_IMAGE=rocm/dev-ubuntu-22.04:${GPU_ARCH_VERSION}-complete
PYTORCH_ROCM_ARCH="gfx900;gfx906;gfx908;gfx90a;gfx942;gfx1030;gfx1100;gfx1101;gfx1102;gfx1200;gfx1201"
DOCKER_GPU_BUILD_ARG="--build-arg PYTORCH_ROCM_ARCH=${PYTORCH_ROCM_ARCH} --build-arg ROCM_VERSION=${GPU_ARCH_VERSION}"
;;
*)
echo "ERROR: Unrecognized DOCKER_TAG_PREFIX: ${DOCKER_TAG_PREFIX}"
exit 1
;;
esac
tmp_tag=$(basename "$(mktemp -u)" | tr '[:upper:]' '[:lower:]')
DOCKER_BUILDKIT=1 ${DOCKER} build \
--target final \
${DOCKER_GPU_BUILD_ARG} \
--build-arg "GPU_IMAGE=${GPU_IMAGE}" \
--build-arg "BASE_TARGET=${BASE_TARGET}" \
-t "${tmp_tag}" \
$@ \
-f "${TOPDIR}/.ci/docker/libtorch/Dockerfile" \
"${TOPDIR}/.ci/docker/"

View File

@ -18,31 +18,27 @@ COPY ./common/install_user.sh install_user.sh
RUN bash ./install_user.sh && rm install_user.sh
# Install conda and other packages (e.g., numpy, pytest)
ARG PYTHON_VERSION
ARG PIP_CMAKE
# Put venv into the env vars so users don't need to activate it
ENV PATH /var/lib/jenkins/ci_env/bin:$PATH
ENV VIRTUAL_ENV /var/lib/jenkins/ci_env
COPY requirements-ci.txt /opt/requirements-ci.txt
COPY ./common/install_python.sh install_python.sh
RUN bash ./install_python.sh && rm install_python.sh /opt/requirements-ci.txt
ARG ANACONDA_PYTHON_VERSION
ARG CONDA_CMAKE
ENV ANACONDA_PYTHON_VERSION=$ANACONDA_PYTHON_VERSION
ENV PATH /opt/conda/envs/py_$ANACONDA_PYTHON_VERSION/bin:/opt/conda/bin:$PATH
COPY requirements-ci.txt /opt/conda/requirements-ci.txt
COPY ./common/install_conda.sh install_conda.sh
COPY ./common/common_utils.sh common_utils.sh
RUN bash ./install_conda.sh && rm install_conda.sh common_utils.sh /opt/conda/requirements-ci.txt
# Install cuda and cudnn
ARG CUDA_VERSION
COPY ./common/install_cuda.sh install_cuda.sh
COPY ./common/install_nccl.sh install_nccl.sh
COPY ./ci_commit_pins/nccl-cu* /ci_commit_pins/
COPY ./common/install_cusparselt.sh install_cusparselt.sh
RUN bash ./install_cuda.sh ${CUDA_VERSION} && rm install_cuda.sh install_nccl.sh /ci_commit_pins/nccl-cu* install_cusparselt.sh
RUN wget -q https://raw.githubusercontent.com/pytorch/builder/main/common/install_cuda.sh -O install_cuda.sh
RUN bash ./install_cuda.sh ${CUDA_VERSION} && rm install_cuda.sh
ENV DESIRED_CUDA ${CUDA_VERSION}
ENV PATH /usr/local/nvidia/bin:/usr/local/cuda/bin:$PATH
# Note that Docker build forbids copying file outside the build context
COPY ./common/install_linter.sh install_linter.sh
COPY ./common/common_utils.sh common_utils.sh
RUN bash ./install_linter.sh
RUN rm install_linter.sh
RUN chown -R jenkins:jenkins /var/lib/jenkins/ci_env
RUN rm install_linter.sh common_utils.sh
USER jenkins
CMD ["bash"]

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@ -15,17 +15,20 @@ COPY ./common/install_user.sh install_user.sh
RUN bash ./install_user.sh && rm install_user.sh
# Install conda and other packages (e.g., numpy, pytest)
ARG PYTHON_VERSION
ENV PATH /var/lib/jenkins/ci_env/bin:$PATH
ENV VIRTUAL_ENV /var/lib/jenkins/ci_env
COPY requirements-ci.txt /opt/requirements-ci.txt
COPY ./common/install_python.sh install_python.sh
RUN bash ./install_python.sh && rm install_python.sh /opt/requirements-ci.txt
ARG ANACONDA_PYTHON_VERSION
ARG CONDA_CMAKE
ENV ANACONDA_PYTHON_VERSION=$ANACONDA_PYTHON_VERSION
ENV PATH /opt/conda/envs/py_$ANACONDA_PYTHON_VERSION/bin:/opt/conda/bin:$PATH
COPY requirements-ci.txt /opt/conda/requirements-ci.txt
COPY ./common/install_conda.sh install_conda.sh
COPY ./common/common_utils.sh common_utils.sh
RUN bash ./install_conda.sh && rm install_conda.sh common_utils.sh /opt/conda/requirements-ci.txt
# Note that Docker build forbids copying file outside the build context
COPY ./common/install_linter.sh install_linter.sh
COPY ./common/common_utils.sh common_utils.sh
RUN bash ./install_linter.sh
RUN rm install_linter.sh
RUN rm install_linter.sh common_utils.sh
USER jenkins
CMD ["bash"]

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@ -1,179 +0,0 @@
# syntax = docker/dockerfile:experimental
ARG BASE_CUDA_VERSION=11.8
ARG GPU_IMAGE=amd64/almalinux:8
FROM quay.io/pypa/manylinux_2_28_x86_64 as base
ENV LC_ALL en_US.UTF-8
ENV LANG en_US.UTF-8
ENV LANGUAGE en_US.UTF-8
ARG DEVTOOLSET_VERSION=13
RUN yum install -y sudo wget curl perl util-linux xz bzip2 git patch which perl zlib-devel yum-utils gcc-toolset-${DEVTOOLSET_VERSION}-gcc gcc-toolset-${DEVTOOLSET_VERSION}-gcc-c++ gcc-toolset-${DEVTOOLSET_VERSION}-gcc-gfortran gcc-toolset-${DEVTOOLSET_VERSION}-gdb
ENV PATH=/opt/rh/gcc-toolset-${DEVTOOLSET_VERSION}/root/usr/bin:$PATH
ENV LD_LIBRARY_PATH=/opt/rh/gcc-toolset-${DEVTOOLSET_VERSION}/root/usr/lib64:/opt/rh/gcc-toolset-${DEVTOOLSET_VERSION}/root/usr/lib:$LD_LIBRARY_PATH
# cmake-3.18.4 from pip
RUN yum install -y python3-pip && \
python3 -mpip install cmake==3.18.4 && \
ln -s /usr/local/bin/cmake /usr/bin/cmake3
FROM base as openssl
# Install openssl (this must precede `build python` step)
# (In order to have a proper SSL module, Python is compiled
# against a recent openssl [see env vars above], which is linked
# statically. We delete openssl afterwards.)
ADD ./common/install_openssl.sh install_openssl.sh
RUN bash ./install_openssl.sh && rm install_openssl.sh
# remove unncessary python versions
RUN rm -rf /opt/python/cp26-cp26m /opt/_internal/cpython-2.6.9-ucs2
RUN rm -rf /opt/python/cp26-cp26mu /opt/_internal/cpython-2.6.9-ucs4
RUN rm -rf /opt/python/cp33-cp33m /opt/_internal/cpython-3.3.6
RUN rm -rf /opt/python/cp34-cp34m /opt/_internal/cpython-3.4.6
FROM base as cuda
ARG BASE_CUDA_VERSION=12.6
# Install CUDA
ADD ./common/install_cuda.sh install_cuda.sh
COPY ./common/install_nccl.sh install_nccl.sh
COPY ./ci_commit_pins/nccl-cu* /ci_commit_pins/
COPY ./common/install_cusparselt.sh install_cusparselt.sh
RUN bash ./install_cuda.sh ${BASE_CUDA_VERSION} && rm install_cuda.sh install_nccl.sh ci_commit_pins/nccl-cu* install_cusparselt.sh
FROM base as intel
# MKL
ADD ./common/install_mkl.sh install_mkl.sh
RUN bash ./install_mkl.sh && rm install_mkl.sh
FROM base as magma
ARG BASE_CUDA_VERSION=12.6
# Install magma
ADD ./common/install_magma.sh install_magma.sh
RUN bash ./install_magma.sh ${BASE_CUDA_VERSION} && rm install_magma.sh
FROM base as jni
# Install java jni header
ADD ./common/install_jni.sh install_jni.sh
ADD ./java/jni.h jni.h
RUN bash ./install_jni.sh && rm install_jni.sh
FROM base as libpng
# Install libpng
ADD ./common/install_libpng.sh install_libpng.sh
RUN bash ./install_libpng.sh && rm install_libpng.sh
FROM ${GPU_IMAGE} as common
ARG DEVTOOLSET_VERSION=13
ENV LC_ALL en_US.UTF-8
ENV LANG en_US.UTF-8
ENV LANGUAGE en_US.UTF-8
RUN yum -y install epel-release
RUN yum -y update
RUN yum install -y \
autoconf \
automake \
bison \
bzip2 \
curl \
diffutils \
file \
git \
make \
patch \
perl \
unzip \
util-linux \
wget \
which \
xz \
glibc-langpack-en \
gcc-toolset-${DEVTOOLSET_VERSION}-gcc \
gcc-toolset-${DEVTOOLSET_VERSION}-gcc-c++ \
gcc-toolset-${DEVTOOLSET_VERSION}-gcc-gfortran \
gcc-toolset-${DEVTOOLSET_VERSION}-gdb
# git236+ would refuse to run git commands in repos owned by other users
# Which causes version check to fail, as pytorch repo is bind-mounted into the image
# Override this behaviour by treating every folder as safe
# For more details see https://github.com/pytorch/pytorch/issues/78659#issuecomment-1144107327
RUN git config --global --add safe.directory "*"
ENV SSL_CERT_FILE=/opt/_internal/certs.pem
# Install LLVM version
COPY --from=openssl /opt/openssl /opt/openssl
COPY --from=base /opt/python /opt/python
COPY --from=base /opt/_internal /opt/_internal
COPY --from=base /usr/local/bin/auditwheel /usr/local/bin/auditwheel
COPY --from=intel /opt/intel /opt/intel
COPY --from=base /usr/local/bin/patchelf /usr/local/bin/patchelf
COPY --from=libpng /usr/local/bin/png* /usr/local/bin/
COPY --from=libpng /usr/local/bin/libpng* /usr/local/bin/
COPY --from=libpng /usr/local/include/png* /usr/local/include/
COPY --from=libpng /usr/local/include/libpng* /usr/local/include/
COPY --from=libpng /usr/local/lib/libpng* /usr/local/lib/
COPY --from=libpng /usr/local/lib/pkgconfig /usr/local/lib/pkgconfig
COPY --from=jni /usr/local/include/jni.h /usr/local/include/jni.h
FROM common as cpu_final
ARG BASE_CUDA_VERSION=12.6
ARG DEVTOOLSET_VERSION=13
# Install Anaconda
ADD ./common/install_conda_docker.sh install_conda.sh
RUN bash ./install_conda.sh && rm install_conda.sh
ENV PATH /opt/conda/bin:$PATH
# Ensure the expected devtoolset is used
ENV PATH=/opt/rh/gcc-toolset-${DEVTOOLSET_VERSION}/root/usr/bin:$PATH
ENV LD_LIBRARY_PATH=/opt/rh/gcc-toolset-${DEVTOOLSET_VERSION}/root/usr/lib64:/opt/rh/gcc-toolset-${DEVTOOLSET_VERSION}/root/usr/lib:$LD_LIBRARY_PATH
# Install setuptools and wheel for python 3.12/3.13
RUN for cpython_version in "cp312-cp312" "cp313-cp313" "cp313-cp313t"; do \
/opt/python/${cpython_version}/bin/python -m pip install setuptools wheel; \
done;
# cmake-3.18.4 from pip; force in case cmake3 already exists
RUN yum install -y python3-pip && \
python3 -mpip install cmake==3.18.4 && \
ln -sf /usr/local/bin/cmake /usr/bin/cmake3
FROM cpu_final as cuda_final
RUN rm -rf /usr/local/cuda-${BASE_CUDA_VERSION}
COPY --from=cuda /usr/local/cuda-${BASE_CUDA_VERSION} /usr/local/cuda-${BASE_CUDA_VERSION}
COPY --from=magma /usr/local/cuda-${BASE_CUDA_VERSION} /usr/local/cuda-${BASE_CUDA_VERSION}
RUN ln -sf /usr/local/cuda-${BASE_CUDA_VERSION} /usr/local/cuda
ENV PATH=/usr/local/cuda/bin:$PATH
FROM cpu_final as rocm_final
ARG ROCM_VERSION=6.0
ARG PYTORCH_ROCM_ARCH
ENV PYTORCH_ROCM_ARCH ${PYTORCH_ROCM_ARCH}
ARG DEVTOOLSET_VERSION=11
ENV LDFLAGS="-Wl,-rpath=/opt/rh/gcc-toolset-${DEVTOOLSET_VERSION}/root/usr/lib64 -Wl,-rpath=/opt/rh/gcc-toolset-${DEVTOOLSET_VERSION}/root/usr/lib"
# Somewhere in ROCm stack, we still use non-existing /opt/rocm/hip path,
# below workaround helps avoid error
ENV ROCM_PATH /opt/rocm
# cmake-3.28.4 from pip to get enable_language(HIP)
# and avoid 3.21.0 cmake+ninja issues with ninja inserting "-Wl,--no-as-needed" in LINK_FLAGS for static linker
RUN python3 -m pip install --upgrade pip && \
python3 -mpip install cmake==3.28.4
# replace the libdrm in /opt/amdgpu with custom amdgpu.ids lookup path
ADD ./common/install_rocm_drm.sh install_rocm_drm.sh
RUN bash ./install_rocm_drm.sh && rm install_rocm_drm.sh
# ROCm 6.4 rocm-smi depends on system drm.h header
RUN yum install -y libdrm-devel
ENV MKLROOT /opt/intel
ADD ./common/install_rocm_magma.sh install_rocm_magma.sh
RUN bash ./install_rocm_magma.sh ${ROCM_VERSION} && rm install_rocm_magma.sh
ADD ./common/install_miopen.sh install_miopen.sh
RUN bash ./install_miopen.sh ${ROCM_VERSION} && rm install_miopen.sh
FROM cpu_final as xpu_final
# XPU CD use rolling driver
ENV XPU_DRIVER_TYPE ROLLING
# cmake-3.28.4 from pip
RUN python3 -m pip install --upgrade pip && \
python3 -mpip install cmake==3.28.4
ADD ./common/install_xpu.sh install_xpu.sh
ENV XPU_VERSION 2025.1
RUN bash ./install_xpu.sh && rm install_xpu.sh
RUN pushd /opt/_internal && tar -xJf static-libs-for-embedding-only.tar.xz && popd

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@ -1,72 +0,0 @@
FROM quay.io/pypa/manylinux_2_28_aarch64 as base
ARG GCCTOOLSET_VERSION=13
# Language variabes
ENV LC_ALL=en_US.UTF-8
ENV LANG=en_US.UTF-8
ENV LANGUAGE=en_US.UTF-8
# Installed needed OS packages. This is to support all
# the binary builds (torch, vision, audio, text, data)
RUN yum -y install epel-release
RUN yum -y update
RUN yum install -y \
autoconf \
automake \
bison \
bzip2 \
curl \
diffutils \
file \
git \
less \
libffi-devel \
libgomp \
make \
openssl-devel \
patch \
perl \
unzip \
util-linux \
wget \
which \
xz \
yasm \
zstd \
sudo \
gcc-toolset-${GCCTOOLSET_VERSION}-gcc \
gcc-toolset-${GCCTOOLSET_VERSION}-gcc-c++ \
gcc-toolset-${GCCTOOLSET_VERSION}-gcc-gfortran \
gcc-toolset-${GCCTOOLSET_VERSION}-gdb
# (optional) Install non-default Ninja version
ARG NINJA_VERSION
COPY ./common/install_ninja.sh install_ninja.sh
RUN if [ -n "${NINJA_VERSION}" ]; then bash ./install_ninja.sh; fi
RUN rm install_ninja.sh
# Ensure the expected devtoolset is used
ENV PATH=/opt/rh/gcc-toolset-${GCCTOOLSET_VERSION}/root/usr/bin:$PATH
ENV LD_LIBRARY_PATH=/opt/rh/gcc-toolset-${GCCTOOLSET_VERSION}/root/usr/lib64:/opt/rh/gcc-toolset-${GCCTOOLSET_VERSION}/root/usr/lib:$LD_LIBRARY_PATH
# git236+ would refuse to run git commands in repos owned by other users
# Which causes version check to fail, as pytorch repo is bind-mounted into the image
# Override this behaviour by treating every folder as safe
# For more details see https://github.com/pytorch/pytorch/issues/78659#issuecomment-1144107327
RUN git config --global --add safe.directory "*"
FROM base as openblas
# Install openblas
ADD ./common/install_openblas.sh install_openblas.sh
RUN bash ./install_openblas.sh && rm install_openblas.sh
FROM base as final
# remove unncessary python versions
RUN rm -rf /opt/python/cp26-cp26m /opt/_internal/cpython-2.6.9-ucs2
RUN rm -rf /opt/python/cp26-cp26mu /opt/_internal/cpython-2.6.9-ucs4
RUN rm -rf /opt/python/cp33-cp33m /opt/_internal/cpython-3.3.6
RUN rm -rf /opt/python/cp34-cp34m /opt/_internal/cpython-3.4.6
COPY --from=openblas /opt/OpenBLAS/ /opt/OpenBLAS/
ENV LD_LIBRARY_PATH=/opt/OpenBLAS/lib:$LD_LIBRARY_PATH

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@ -1,97 +0,0 @@
FROM quay.io/pypa/manylinux_2_28_aarch64 as base
# Cuda ARM build needs gcc 11
ARG DEVTOOLSET_VERSION=13
# Language variables
ENV LC_ALL=en_US.UTF-8
ENV LANG=en_US.UTF-8
ENV LANGUAGE=en_US.UTF-8
# Installed needed OS packages. This is to support all
# the binary builds (torch, vision, audio, text, data)
RUN yum -y install epel-release
RUN yum -y update
RUN yum install -y \
autoconf \
automake \
bison \
bzip2 \
curl \
diffutils \
file \
git \
make \
patch \
perl \
unzip \
util-linux \
wget \
which \
xz \
yasm \
less \
zstd \
libgomp \
sudo \
gcc-toolset-${DEVTOOLSET_VERSION}-gcc \
gcc-toolset-${DEVTOOLSET_VERSION}-gcc-c++ \
gcc-toolset-${DEVTOOLSET_VERSION}-gcc-gfortran \
gcc-toolset-${DEVTOOLSET_VERSION}-gdb
# Ensure the expected devtoolset is used
ENV PATH=/opt/rh/gcc-toolset-${DEVTOOLSET_VERSION}/root/usr/bin:$PATH
ENV LD_LIBRARY_PATH=/opt/rh/gcc-toolset-${DEVTOOLSET_VERSION}/root/usr/lib64:/opt/rh/gcc-toolset-${DEVTOOLSET_VERSION}/root/usr/lib:$LD_LIBRARY_PATH
# git236+ would refuse to run git commands in repos owned by other users
# Which causes version check to fail, as pytorch repo is bind-mounted into the image
# Override this behaviour by treating every folder as safe
# For more details see https://github.com/pytorch/pytorch/issues/78659#issuecomment-1144107327
RUN git config --global --add safe.directory "*"
FROM base as openssl
# Install openssl (this must precede `build python` step)
# (In order to have a proper SSL module, Python is compiled
# against a recent openssl [see env vars above], which is linked
# statically. We delete openssl afterwards.)
ADD ./common/install_openssl.sh install_openssl.sh
RUN bash ./install_openssl.sh && rm install_openssl.sh
ENV SSL_CERT_FILE=/opt/_internal/certs.pem
FROM openssl as final
# remove unncessary python versions
RUN rm -rf /opt/python/cp26-cp26m /opt/_internal/cpython-2.6.9-ucs2
RUN rm -rf /opt/python/cp26-cp26mu /opt/_internal/cpython-2.6.9-ucs4
RUN rm -rf /opt/python/cp33-cp33m /opt/_internal/cpython-3.3.6
RUN rm -rf /opt/python/cp34-cp34m /opt/_internal/cpython-3.4.6
FROM base as cuda
ARG BASE_CUDA_VERSION
# Install CUDA
ADD ./common/install_cuda.sh install_cuda.sh
COPY ./common/install_nccl.sh install_nccl.sh
COPY ./common/install_cusparselt.sh install_cusparselt.sh
COPY ./ci_commit_pins/nccl-cu* /ci_commit_pins/
RUN bash ./install_cuda.sh ${BASE_CUDA_VERSION} && rm install_cuda.sh install_nccl.sh ci_commit_pins/nccl-cu* install_cusparselt.sh
FROM base as magma
ARG BASE_CUDA_VERSION
# Install magma
ADD ./common/install_magma.sh install_magma.sh
RUN bash ./install_magma.sh ${BASE_CUDA_VERSION} && rm install_magma.sh
FROM base as nvpl
# Install nvpl
ADD ./common/install_nvpl.sh install_nvpl.sh
RUN bash ./install_nvpl.sh && rm install_nvpl.sh
FROM final as cuda_final
ARG BASE_CUDA_VERSION
RUN rm -rf /usr/local/cuda-${BASE_CUDA_VERSION}
COPY --from=cuda /usr/local/cuda-${BASE_CUDA_VERSION} /usr/local/cuda-${BASE_CUDA_VERSION}
COPY --from=magma /usr/local/cuda-${BASE_CUDA_VERSION} /usr/local/cuda-${BASE_CUDA_VERSION}
COPY --from=nvpl /opt/nvpl/lib/ /usr/local/lib/
COPY --from=nvpl /opt/nvpl/include/ /usr/local/include/
RUN ln -sf /usr/local/cuda-${BASE_CUDA_VERSION} /usr/local/cuda
ENV PATH=/usr/local/cuda/bin:$PATH

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@ -1,71 +0,0 @@
FROM centos:8 as base
ENV LC_ALL en_US.UTF-8
ENV LANG en_US.UTF-8
ENV LANGUAGE en_US.UTF-8
ENV PATH /opt/rh/gcc-toolset-11/root/bin/:/usr/local/sbin:/usr/local/bin:/usr/sbin:/usr/bin:/sbin:/bin
# change to a valid repo
RUN sed -i 's|#baseurl=http://mirror.centos.org|baseurl=http://vault.centos.org|g' /etc/yum.repos.d/CentOS-Linux-*.repo
# enable to install ninja-build
RUN sed -i 's|enabled=0|enabled=1|g' /etc/yum.repos.d/CentOS-Linux-PowerTools.repo
RUN yum -y update
RUN yum install -y wget curl perl util-linux xz bzip2 git patch which zlib-devel sudo
RUN yum install -y autoconf automake make cmake gdb gcc-toolset-11-gcc-c++
FROM base as openssl
ADD ./common/install_openssl.sh install_openssl.sh
RUN bash ./install_openssl.sh && rm install_openssl.sh
# Install python
FROM base as python
RUN yum install -y openssl-devel zlib-devel bzip2-devel ncurses-devel sqlite-devel readline-devel tk-devel gdbm-devel libpcap-devel xz-devel libffi-devel
ADD common/install_cpython.sh install_cpython.sh
RUN bash ./install_cpython.sh && rm install_cpython.sh
FROM base as conda
ADD ./common/install_conda_docker.sh install_conda.sh
RUN bash ./install_conda.sh && rm install_conda.sh
RUN /opt/conda/bin/conda install -y cmake
FROM base as intel
# Install MKL
COPY --from=python /opt/python /opt/python
COPY --from=python /opt/_internal /opt/_internal
COPY --from=conda /opt/conda /opt/conda
ENV PATH=/opt/conda/bin:$PATH
ADD ./common/install_mkl.sh install_mkl.sh
RUN bash ./install_mkl.sh && rm install_mkl.sh
FROM base as patchelf
ADD ./common/install_patchelf.sh install_patchelf.sh
RUN bash ./install_patchelf.sh && rm install_patchelf.sh
RUN cp $(which patchelf) /patchelf
FROM base as jni
ADD ./common/install_jni.sh install_jni.sh
ADD ./java/jni.h jni.h
RUN bash ./install_jni.sh && rm install_jni.sh
FROM base as libpng
ADD ./common/install_libpng.sh install_libpng.sh
RUN bash ./install_libpng.sh && rm install_libpng.sh
FROM base as final
COPY --from=openssl /opt/openssl /opt/openssl
COPY --from=python /opt/python /opt/python
COPY --from=python /opt/_internal /opt/_internal
COPY --from=intel /opt/intel /opt/intel
COPY --from=conda /opt/conda /opt/conda
COPY --from=patchelf /usr/local/bin/patchelf /usr/local/bin/patchelf
COPY --from=jni /usr/local/include/jni.h /usr/local/include/jni.h
COPY --from=libpng /usr/local/bin/png* /usr/local/bin/
COPY --from=libpng /usr/local/bin/libpng* /usr/local/bin/
COPY --from=libpng /usr/local/include/png* /usr/local/include/
COPY --from=libpng /usr/local/include/libpng* /usr/local/include/
COPY --from=libpng /usr/local/lib/libpng* /usr/local/lib/
COPY --from=libpng /usr/local/lib/pkgconfig /usr/local/lib/pkgconfig
RUN yum install -y ninja-build

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@ -1,134 +0,0 @@
FROM quay.io/pypa/manylinux_2_28_s390x as base
# Language variables
ENV LC_ALL=C.UTF-8
ENV LANG=C.UTF-8
ENV LANGUAGE=C.UTF-8
ARG DEVTOOLSET_VERSION=13
# Installed needed OS packages. This is to support all
# the binary builds (torch, vision, audio, text, data)
RUN yum -y install epel-release
RUN yum -y update
RUN yum install -y \
sudo \
autoconf \
automake \
bison \
bzip2 \
curl \
diffutils \
file \
git \
make \
patch \
perl \
unzip \
util-linux \
wget \
which \
xz \
yasm \
less \
zstd \
libgomp \
gcc-toolset-${DEVTOOLSET_VERSION}-gcc \
gcc-toolset-${DEVTOOLSET_VERSION}-gcc-c++ \
gcc-toolset-${DEVTOOLSET_VERSION}-binutils \
gcc-toolset-${DEVTOOLSET_VERSION}-gcc-gfortran \
cmake \
rust \
cargo \
llvm-devel \
libzstd-devel \
python3.12-devel \
python3.12-test \
python3.12-setuptools \
python3.12-pip \
python3-virtualenv \
python3.12-pyyaml \
python3.12-numpy \
python3.12-wheel \
python3.12-cryptography \
blas-devel \
openblas-devel \
lapack-devel \
atlas-devel \
libjpeg-devel \
libxslt-devel \
libxml2-devel \
openssl-devel \
valgrind
ENV PATH=/opt/rh/gcc-toolset-${DEVTOOLSET_VERSION}/root/usr/bin:$PATH
ENV LD_LIBRARY_PATH=/opt/rh/gcc-toolset-${DEVTOOLSET_VERSION}/root/usr/lib64:/opt/rh/gcc-toolset-${DEVTOOLSET_VERSION}/root/usr/lib:$LD_LIBRARY_PATH
# git236+ would refuse to run git commands in repos owned by other users
# Which causes version check to fail, as pytorch repo is bind-mounted into the image
# Override this behaviour by treating every folder as safe
# For more details see https://github.com/pytorch/pytorch/issues/78659#issuecomment-1144107327
RUN git config --global --add safe.directory "*"
# installed python doesn't have development parts. Rebuild it from scratch
RUN /bin/rm -rf /opt/_internal /opt/python /usr/local/*/*
# EPEL for cmake
FROM base as patchelf
# Install patchelf
ADD ./common/install_patchelf.sh install_patchelf.sh
RUN bash ./install_patchelf.sh && rm install_patchelf.sh
RUN cp $(which patchelf) /patchelf
FROM patchelf as python
# build python
COPY manywheel/build_scripts /build_scripts
ADD ./common/install_cpython.sh /build_scripts/install_cpython.sh
ENV SSL_CERT_FILE=
RUN bash build_scripts/build.sh && rm -r build_scripts
FROM base as final
COPY --from=python /opt/python /opt/python
COPY --from=python /opt/_internal /opt/_internal
COPY --from=python /opt/python/cp39-cp39/bin/auditwheel /usr/local/bin/auditwheel
COPY --from=patchelf /usr/local/bin/patchelf /usr/local/bin/patchelf
RUN alternatives --set python /usr/bin/python3.12
RUN alternatives --set python3 /usr/bin/python3.12
RUN pip-3.12 install typing_extensions
ENTRYPOINT []
CMD ["/bin/bash"]
# install test dependencies:
# - grpcio requires system openssl, bundled crypto fails to build
RUN dnf install -y \
protobuf-devel \
protobuf-c-devel \
protobuf-lite-devel \
hdf5-devel \
python3-h5py \
git
RUN env GRPC_PYTHON_BUILD_SYSTEM_OPENSSL=True pip3 install grpcio
# cmake-3.28.0 from pip for onnxruntime
RUN python3 -mpip install cmake==3.28.0
# build onnxruntime 1.21.0 from sources.
# it is not possible to build it from sources using pip,
# so just build it from upstream repository.
# h5py is dependency of onnxruntime_training.
# h5py==3.11.0 builds with hdf5-devel 1.10.5 from repository.
# install newest flatbuffers version first:
# for some reason old version is getting pulled in otherwise.
# packaging package is required for onnxruntime wheel build.
RUN pip3 install flatbuffers && \
pip3 install h5py==3.11.0 && \
pip3 install packaging && \
git clone https://github.com/microsoft/onnxruntime && \
cd onnxruntime && git checkout v1.21.0 && \
git submodule update --init --recursive && \
./build.sh --config Release --parallel 0 --enable_pybind --build_wheel --enable_training --enable_training_apis --enable_training_ops --skip_tests --allow_running_as_root && \
pip3 install ./build/Linux/Release/dist/onnxruntime_training-*.whl && \
cd .. && /bin/rm -rf ./onnxruntime

View File

@ -1,116 +0,0 @@
#!/usr/bin/env bash
# Script used only in CD pipeline
set -exou pipefail
TOPDIR=$(git rev-parse --show-toplevel)
image="$1"
shift
if [ -z "${image}" ]; then
echo "Usage: $0 IMAGE:ARCHTAG"
exit 1
fi
# Go from imagename:tag to tag
DOCKER_TAG_PREFIX=$(echo "${image}" | awk -F':' '{print $2}')
GPU_ARCH_VERSION=""
if [[ "${DOCKER_TAG_PREFIX}" == cuda* ]]; then
# extract cuda version from image name. e.g. manylinux2_28-builder:cuda12.8 returns 12.8
GPU_ARCH_VERSION=$(echo "${DOCKER_TAG_PREFIX}" | awk -F'cuda' '{print $2}')
elif [[ "${DOCKER_TAG_PREFIX}" == rocm* ]]; then
# extract rocm version from image name. e.g. manylinux2_28-builder:rocm6.2.4 returns 6.2.4
GPU_ARCH_VERSION=$(echo "${DOCKER_TAG_PREFIX}" | awk -F'rocm' '{print $2}')
fi
MANY_LINUX_VERSION=${MANY_LINUX_VERSION:-}
DOCKERFILE_SUFFIX=${DOCKERFILE_SUFFIX:-}
case ${image} in
manylinux2_28-builder:cpu)
TARGET=cpu_final
GPU_IMAGE=amd64/almalinux:8
DOCKER_GPU_BUILD_ARG=" --build-arg DEVTOOLSET_VERSION=13"
MANY_LINUX_VERSION="2_28"
;;
manylinux2_28_aarch64-builder:cpu-aarch64)
TARGET=final
GPU_IMAGE=arm64v8/almalinux:8
DOCKER_GPU_BUILD_ARG=" --build-arg DEVTOOLSET_VERSION=13 --build-arg NINJA_VERSION=1.12.1"
MANY_LINUX_VERSION="2_28_aarch64"
;;
manylinuxcxx11-abi-builder:cpu-cxx11-abi)
TARGET=final
GPU_IMAGE=""
DOCKER_GPU_BUILD_ARG=" --build-arg DEVTOOLSET_VERSION=9"
MANY_LINUX_VERSION="cxx11-abi"
;;
manylinuxs390x-builder:cpu-s390x)
TARGET=final
GPU_IMAGE=s390x/almalinux:8
DOCKER_GPU_BUILD_ARG=""
MANY_LINUX_VERSION="s390x"
;;
manylinux2_28-builder:cuda11*)
TARGET=cuda_final
GPU_IMAGE=amd64/almalinux:8
DOCKER_GPU_BUILD_ARG="--build-arg BASE_CUDA_VERSION=${GPU_ARCH_VERSION} --build-arg DEVTOOLSET_VERSION=11"
MANY_LINUX_VERSION="2_28"
;;
manylinux2_28-builder:cuda12*)
TARGET=cuda_final
GPU_IMAGE=amd64/almalinux:8
DOCKER_GPU_BUILD_ARG="--build-arg BASE_CUDA_VERSION=${GPU_ARCH_VERSION} --build-arg DEVTOOLSET_VERSION=13"
MANY_LINUX_VERSION="2_28"
;;
manylinuxaarch64-builder:cuda*)
TARGET=cuda_final
GPU_IMAGE=amd64/almalinux:8
DOCKER_GPU_BUILD_ARG="--build-arg BASE_CUDA_VERSION=${GPU_ARCH_VERSION} --build-arg DEVTOOLSET_VERSION=13"
MANY_LINUX_VERSION="aarch64"
DOCKERFILE_SUFFIX="_cuda_aarch64"
;;
manylinux2_28-builder:rocm*)
TARGET=rocm_final
MANY_LINUX_VERSION="2_28"
DEVTOOLSET_VERSION="11"
GPU_IMAGE=rocm/dev-almalinux-8:${GPU_ARCH_VERSION}-complete
PYTORCH_ROCM_ARCH="gfx900;gfx906;gfx908;gfx90a;gfx942;gfx1030;gfx1100;gfx1101;gfx1102;gfx1200;gfx1201"
DOCKER_GPU_BUILD_ARG="--build-arg ROCM_VERSION=${GPU_ARCH_VERSION} --build-arg PYTORCH_ROCM_ARCH=${PYTORCH_ROCM_ARCH} --build-arg DEVTOOLSET_VERSION=${DEVTOOLSET_VERSION}"
;;
manylinux2_28-builder:xpu)
TARGET=xpu_final
GPU_IMAGE=amd64/almalinux:8
DOCKER_GPU_BUILD_ARG=" --build-arg DEVTOOLSET_VERSION=11"
MANY_LINUX_VERSION="2_28"
;;
*)
echo "ERROR: Unrecognized image name: ${image}"
exit 1
;;
esac
if [[ -n ${MANY_LINUX_VERSION} && -z ${DOCKERFILE_SUFFIX} ]]; then
DOCKERFILE_SUFFIX=_${MANY_LINUX_VERSION}
fi
# Only activate this if in CI
if [ "$(uname -m)" != "s390x" ] && [ -v CI ]; then
# TODO: Remove LimitNOFILE=1048576 patch once https://github.com/pytorch/test-infra/issues/5712
# is resolved. This patch is required in order to fix timing out of Docker build on Amazon Linux 2023.
sudo sed -i s/LimitNOFILE=infinity/LimitNOFILE=1048576/ /usr/lib/systemd/system/docker.service
sudo systemctl daemon-reload
sudo systemctl restart docker
fi
tmp_tag=$(basename "$(mktemp -u)" | tr '[:upper:]' '[:lower:]')
DOCKER_BUILDKIT=1 docker build \
${DOCKER_GPU_BUILD_ARG} \
--build-arg "GPU_IMAGE=${GPU_IMAGE}" \
--target "${TARGET}" \
-t "${tmp_tag}" \
$@ \
-f "${TOPDIR}/.ci/docker/manywheel/Dockerfile${DOCKERFILE_SUFFIX}" \
"${TOPDIR}/.ci/docker/"

View File

@ -1,118 +0,0 @@
#!/bin/bash
# Top-level build script called from Dockerfile
# Script used only in CD pipeline
# Stop at any error, show all commands
set -ex
# openssl version to build, with expected sha256 hash of .tar.gz
# archive
OPENSSL_ROOT=openssl-1.1.1l
OPENSSL_HASH=0b7a3e5e59c34827fe0c3a74b7ec8baef302b98fa80088d7f9153aa16fa76bd1
DEVTOOLS_HASH=a8ebeb4bed624700f727179e6ef771dafe47651131a00a78b342251415646acc
PATCHELF_HASH=d9afdff4baeacfbc64861454f368b7f2c15c44d245293f7587bbf726bfe722fb
CURL_ROOT=curl-7.73.0
CURL_HASH=cf34fe0b07b800f1c01a499a6e8b2af548f6d0e044dca4a29d88a4bee146d131
AUTOCONF_ROOT=autoconf-2.69
AUTOCONF_HASH=954bd69b391edc12d6a4a51a2dd1476543da5c6bbf05a95b59dc0dd6fd4c2969
# Dependencies for compiling Python that we want to remove from
# the final image after compiling Python
PYTHON_COMPILE_DEPS="zlib-devel bzip2-devel ncurses-devel sqlite-devel readline-devel tk-devel gdbm-devel libpcap-devel xz-devel libffi-devel"
if [ "$(uname -m)" != "s390x" ] ; then
PYTHON_COMPILE_DEPS="${PYTHON_COMPILE_DEPS} db4-devel"
else
PYTHON_COMPILE_DEPS="${PYTHON_COMPILE_DEPS} libdb-devel"
fi
# Libraries that are allowed as part of the manylinux1 profile
MANYLINUX1_DEPS="glibc-devel libstdc++-devel glib2-devel libX11-devel libXext-devel libXrender-devel mesa-libGL-devel libICE-devel libSM-devel ncurses-devel"
# Get build utilities
MY_DIR=$(dirname "${BASH_SOURCE[0]}")
source $MY_DIR/build_utils.sh
# Development tools and libraries
yum -y install bzip2 make git patch unzip bison yasm diffutils \
automake which file \
${PYTHON_COMPILE_DEPS}
# Install newest autoconf
build_autoconf $AUTOCONF_ROOT $AUTOCONF_HASH
autoconf --version
# Compile the latest Python releases.
# (In order to have a proper SSL module, Python is compiled
# against a recent openssl [see env vars above], which is linked
# statically. We delete openssl afterwards.)
build_openssl $OPENSSL_ROOT $OPENSSL_HASH
/build_scripts/install_cpython.sh
PY39_BIN=/opt/python/cp39-cp39/bin
# Our openssl doesn't know how to find the system CA trust store
# (https://github.com/pypa/manylinux/issues/53)
# And it's not clear how up-to-date that is anyway
# So let's just use the same one pip and everyone uses
$PY39_BIN/pip install certifi
ln -s $($PY39_BIN/python -c 'import certifi; print(certifi.where())') \
/opt/_internal/certs.pem
# If you modify this line you also have to modify the versions in the
# Dockerfiles:
export SSL_CERT_FILE=/opt/_internal/certs.pem
# Install newest curl
build_curl $CURL_ROOT $CURL_HASH
rm -rf /usr/local/include/curl /usr/local/lib/libcurl* /usr/local/lib/pkgconfig/libcurl.pc
hash -r
curl --version
curl-config --features
# Install patchelf (latest with unreleased bug fixes)
curl -sLOk https://nixos.org/releases/patchelf/patchelf-0.10/patchelf-0.10.tar.gz
# check_sha256sum patchelf-0.9njs2.tar.gz $PATCHELF_HASH
tar -xzf patchelf-0.10.tar.gz
(cd patchelf-0.10 && ./configure && make && make install)
rm -rf patchelf-0.10.tar.gz patchelf-0.10
# Install latest pypi release of auditwheel
$PY39_BIN/pip install auditwheel
ln -s $PY39_BIN/auditwheel /usr/local/bin/auditwheel
# Clean up development headers and other unnecessary stuff for
# final image
yum -y erase wireless-tools gtk2 libX11 hicolor-icon-theme \
avahi freetype bitstream-vera-fonts \
${PYTHON_COMPILE_DEPS} || true > /dev/null 2>&1
yum -y install ${MANYLINUX1_DEPS}
yum -y clean all > /dev/null 2>&1
yum list installed
# we don't need libpython*.a, and they're many megabytes
find /opt/_internal -name '*.a' -print0 | xargs -0 rm -f
# Strip what we can -- and ignore errors, because this just attempts to strip
# *everything*, including non-ELF files:
find /opt/_internal -type f -print0 \
| xargs -0 -n1 strip --strip-unneeded 2>/dev/null || true
# We do not need the Python test suites, or indeed the precompiled .pyc and
# .pyo files. Partially cribbed from:
# https://github.com/docker-library/python/blob/master/3.4/slim/Dockerfile # @lint-ignore
find /opt/_internal \
\( -type d -a -name test -o -name tests \) \
-o \( -type f -a -name '*.pyc' -o -name '*.pyo' \) \
-print0 | xargs -0 rm -f
for PYTHON in /opt/python/*/bin/python; do
# Smoke test to make sure that our Pythons work, and do indeed detect as
# being manylinux compatible:
$PYTHON $MY_DIR/manylinux1-check.py
# Make sure that SSL cert checking works
$PYTHON $MY_DIR/ssl-check.py
done
# Fix libc headers to remain compatible with C99 compilers.
find /usr/include/ -type f -exec sed -i 's/\bextern _*inline_*\b/extern __inline __attribute__ ((__gnu_inline__))/g' {} +
# Now we can delete our built SSL
rm -rf /usr/local/ssl

View File

@ -1,91 +0,0 @@
#!/bin/bash
# Helper utilities for build
# Script used only in CD pipeline
OPENSSL_DOWNLOAD_URL=https://www.openssl.org/source/old/1.1.1/ # @lint-ignore
CURL_DOWNLOAD_URL=https://curl.se/download
AUTOCONF_DOWNLOAD_URL=https://ftp.gnu.org/gnu/autoconf
function check_var {
if [ -z "$1" ]; then
echo "required variable not defined"
exit 1
fi
}
function do_openssl_build {
./config no-ssl2 no-shared -fPIC --prefix=/usr/local/ssl > /dev/null
make > /dev/null
make install > /dev/null
}
function check_sha256sum {
local fname=$1
check_var ${fname}
local sha256=$2
check_var ${sha256}
echo "${sha256} ${fname}" > ${fname}.sha256
sha256sum -c ${fname}.sha256
rm -f ${fname}.sha256
}
function build_openssl {
local openssl_fname=$1
check_var ${openssl_fname}
local openssl_sha256=$2
check_var ${openssl_sha256}
check_var ${OPENSSL_DOWNLOAD_URL}
curl -sLO ${OPENSSL_DOWNLOAD_URL}/${openssl_fname}.tar.gz
check_sha256sum ${openssl_fname}.tar.gz ${openssl_sha256}
tar -xzf ${openssl_fname}.tar.gz
(cd ${openssl_fname} && do_openssl_build)
rm -rf ${openssl_fname} ${openssl_fname}.tar.gz
}
function do_curl_build {
LIBS=-ldl ./configure --with-ssl --disable-shared > /dev/null
make > /dev/null
make install > /dev/null
}
function build_curl {
local curl_fname=$1
check_var ${curl_fname}
local curl_sha256=$2
check_var ${curl_sha256}
check_var ${CURL_DOWNLOAD_URL}
curl -sLO ${CURL_DOWNLOAD_URL}/${curl_fname}.tar.bz2
check_sha256sum ${curl_fname}.tar.bz2 ${curl_sha256}
tar -jxf ${curl_fname}.tar.bz2
(cd ${curl_fname} && do_curl_build)
rm -rf ${curl_fname} ${curl_fname}.tar.bz2
}
function do_standard_install {
./configure > /dev/null
make > /dev/null
make install > /dev/null
}
function build_autoconf {
local autoconf_fname=$1
check_var ${autoconf_fname}
local autoconf_sha256=$2
check_var ${autoconf_sha256}
check_var ${AUTOCONF_DOWNLOAD_URL}
curl -sLO ${AUTOCONF_DOWNLOAD_URL}/${autoconf_fname}.tar.gz
check_sha256sum ${autoconf_fname}.tar.gz ${autoconf_sha256}
tar -zxf ${autoconf_fname}.tar.gz
(cd ${autoconf_fname} && do_standard_install)
rm -rf ${autoconf_fname} ${autoconf_fname}.tar.gz
}

View File

@ -1,60 +0,0 @@
# Logic copied from PEP 513
def is_manylinux1_compatible():
# Only Linux, and only x86-64 / i686
from distutils.util import get_platform
if get_platform() not in ["linux-x86_64", "linux-i686", "linux-s390x"]:
return False
# Check for presence of _manylinux module
try:
import _manylinux
return bool(_manylinux.manylinux1_compatible)
except (ImportError, AttributeError):
# Fall through to heuristic check below
pass
# Check glibc version. CentOS 5 uses glibc 2.5.
return have_compatible_glibc(2, 5)
def have_compatible_glibc(major, minimum_minor):
import ctypes
process_namespace = ctypes.CDLL(None)
try:
gnu_get_libc_version = process_namespace.gnu_get_libc_version
except AttributeError:
# Symbol doesn't exist -> therefore, we are not linked to
# glibc.
return False
# Call gnu_get_libc_version, which returns a string like "2.5".
gnu_get_libc_version.restype = ctypes.c_char_p
version_str = gnu_get_libc_version()
# py2 / py3 compatibility:
if not isinstance(version_str, str):
version_str = version_str.decode("ascii")
# Parse string and check against requested version.
version = [int(piece) for piece in version_str.split(".")]
assert len(version) == 2
if major != version[0]:
return False
if minimum_minor > version[1]:
return False
return True
import sys
if is_manylinux1_compatible():
print(f"{sys.executable} is manylinux1 compatible")
sys.exit(0)
else:
print(f"{sys.executable} is NOT manylinux1 compatible")
sys.exit(1)

View File

@ -1,31 +0,0 @@
# cf. https://github.com/pypa/manylinux/issues/53
import sys
from urllib.request import urlopen
GOOD_SSL = "https://google.com"
BAD_SSL = "https://self-signed.badssl.com"
print("Testing SSL certificate checking for Python:", sys.version)
if sys.version_info[:2] < (2, 7) or sys.version_info[:2] < (3, 4):
print("This version never checks SSL certs; skipping tests")
sys.exit(0)
EXC = OSError
print(f"Connecting to {GOOD_SSL} should work")
urlopen(GOOD_SSL)
print("...it did, yay.")
print(f"Connecting to {BAD_SSL} should fail")
try:
urlopen(BAD_SSL)
# If we get here then we failed:
print("...it DIDN'T!!!!!11!!1one!")
sys.exit(1)
except EXC:
print("...it did, yay.")

View File

@ -5,7 +5,7 @@
#Pinned versions: 1.6
#test that import:
boto3==1.35.42
boto3==1.19.12
#Description: AWS SDK for python
#Pinned versions: 1.19.12, 1.16.34
#test that import:
@ -30,25 +30,17 @@ dill==0.3.7
#Pinned versions: 0.3.7
#test that import: dynamo/test_replay_record.py test_dataloader.py test_datapipe.py test_serialization.py
expecttest==0.3.0
expecttest==0.1.6
#Description: method for writing tests where test framework auto populates
# the expected output based on previous runs
#Pinned versions: 0.3.0
#test that import:
fbscribelogger==0.1.7
#Description: write to scribe from authenticated jobs on CI
#Pinned versions: 0.1.6
#test that import:
flatbuffers==2.0 ; platform_machine != "s390x"
flatbuffers==2.0
#Description: cross platform serialization library
#Pinned versions: 2.0
#test that import:
flatbuffers ; platform_machine == "s390x"
#Description: cross platform serialization library; Newer version is required on s390x for new python version
hypothesis==5.35.1
# Pin hypothesis to avoid flakiness: https://github.com/pytorch/pytorch/issues/31136
#Description: advanced library for generating parametrized tests
@ -93,10 +85,10 @@ librosa>=0.6.2 ; python_version < "3.11"
#Pinned versions:
#test that import:
mypy==1.14.0
mypy==1.9.0
# Pin MyPy version because new errors are likely to appear with each release
#Description: linter
#Pinned versions: 1.14.0
#Pinned versions: 1.9.0
#test that import: test_typing.py, test_type_hints.py
networkx==2.8.8
@ -105,14 +97,14 @@ networkx==2.8.8
#Pinned versions: 2.8.8
#test that import: functorch
ninja==1.11.1.3
#Description: build system. Used in some tests. Used in build to generate build
#time tracing information
#Pinned versions: 1.11.1.3
#ninja
#Description: build system. Note that it install from
#here breaks things so it is commented out
#Pinned versions: 1.10.0.post1
#test that import: run_test.py, test_cpp_extensions_aot.py,test_determination.py
numba==0.49.0 ; python_version < "3.9"
numba==0.55.2 ; python_version == "3.9"
numba==0.54.1 ; python_version == "3.9"
numba==0.55.2 ; python_version == "3.10"
#Description: Just-In-Time Compiler for Numerical Functions
#Pinned versions: 0.54.1, 0.49.0, <=0.49.1
@ -121,7 +113,7 @@ numba==0.55.2 ; python_version == "3.10"
#numpy
#Description: Provides N-dimensional arrays and linear algebra
#Pinned versions: 1.26.2
#Pinned versions: 1.20
#test that import: test_view_ops.py, test_unary_ufuncs.py, test_type_promotion.py,
#test_type_info.py, test_torch.py, test_tensorexpr_pybind.py, test_tensorexpr.py,
#test_tensorboard.py, test_tensor_creation_ops.py, test_static_runtime.py,
@ -131,12 +123,6 @@ numba==0.55.2 ; python_version == "3.10"
#test_nn.py, test_namedtensor.py, test_linalg.py, test_jit_cuda_fuser.py,
#test_jit.py, test_indexing.py, test_datapipe.py, test_dataloader.py,
#test_binary_ufuncs.py
numpy==1.22.4; python_version == "3.9" or python_version == "3.10"
numpy==1.26.2; python_version == "3.11" or python_version == "3.12"
numpy==2.1.2; python_version >= "3.13"
pandas==2.0.3; python_version < "3.13"
pandas==2.2.3; python_version >= "3.13"
#onnxruntime
#Description: scoring engine for Open Neural Network Exchange (ONNX) models
@ -148,9 +134,9 @@ opt-einsum==3.3
#Pinned versions: 3.3
#test that import: test_linalg.py
optree==0.13.0
optree==0.11.0
#Description: A library for tree manipulation
#Pinned versions: 0.13.0
#Pinned versions: 0.11.0
#test that import: test_vmap.py, test_aotdispatch.py, test_dynamic_shapes.py,
#test_pytree.py, test_ops.py, test_control_flow.py, test_modules.py,
#common_utils.py, test_eager_transforms.py, test_python_dispatch.py,
@ -161,7 +147,7 @@ optree==0.13.0
#test_pointwise_ops.py, test_dtensor_ops.py, test_torchinductor.py, test_fx.py,
#test_fake_tensor.py, test_mps.py
pillow==11.0.0
pillow==10.3.0
#Description: Python Imaging Library fork
#Pinned versions: 10.3.0
#test that import:
@ -196,11 +182,6 @@ pytest-rerunfailures>=10.3
#Pinned versions:
#test that import:
pytest-subtests==0.13.1
#Description: plugin for subtest support
#Pinned versions:
#test that import:
#pytest-benchmark
#Description: fixture for benchmarking code
#Pinned versions: 3.2.3
@ -237,7 +218,7 @@ pygments==2.15.0
#test that import:
scikit-image==0.19.3 ; python_version < "3.10"
scikit-image==0.22.0 ; python_version >= "3.10"
scikit-image==0.20.0 ; python_version >= "3.10"
#Description: image processing routines
#Pinned versions:
#test that import: test_nn.py
@ -248,7 +229,7 @@ scikit-image==0.22.0 ; python_version >= "3.10"
#test that import:
scipy==1.10.1 ; python_version <= "3.11"
scipy==1.14.1 ; python_version >= "3.12"
scipy==1.12.0 ; python_version == "3.12"
# Pin SciPy because of failing distribution tests (see #60347)
#Description: scientific python
#Pinned versions: 1.10.1
@ -267,7 +248,7 @@ tb-nightly==2.13.0a20230426
#test that import:
# needed by torchgen utils
typing-extensions>=4.10.0
typing-extensions
#Description: type hints for python
#Pinned versions:
#test that import:
@ -283,21 +264,22 @@ unittest-xml-reporting<=3.2.0,>=2.0.0
#test that import:
#lintrunner is supported on aarch64-linux only from 0.12.4 version
lintrunner==0.12.7
lintrunner==0.12.5
#Description: all about linters!
#Pinned versions: 0.12.7
#Pinned versions: 0.12.5
#test that import:
redis>=4.0.0
#Description: redis database
#test that import: anything that tests OSS caching/mocking (inductor/test_codecache.py, inductor/test_max_autotune.py)
rockset==1.0.3
#Description: queries Rockset
#Pinned versions: 1.0.3
#test that import:
ghstack==0.8.0
#Description: ghstack tool
#Pinned versions: 0.8.0
#test that import:
jinja2==3.1.6
jinja2==3.1.4
#Description: jinja2 template engine
#Pinned versions: 3.1.4
#test that import:
@ -307,78 +289,26 @@ pytest-cpp==2.3.0
#Pinned versions: 2.3.0
#test that import:
z3-solver==4.12.6.0
z3-solver==4.12.2.0
#Description: The Z3 Theorem Prover Project
#Pinned versions:
#test that import:
tensorboard==2.13.0 ; python_version < "3.13"
tensorboard==2.18.0 ; python_version >= "3.13"
tensorboard==2.13.0
#Description: Also included in .ci/docker/requirements-docs.txt
#Pinned versions:
#test that import: test_tensorboard
pywavelets==1.4.1 ; python_version < "3.12"
pywavelets==1.7.0 ; python_version >= "3.12"
pywavelets==1.5.0 ; python_version >= "3.12"
#Description: This is a requirement of scikit-image, we need to pin
# it here because 1.5.0 conflicts with numpy 1.21.2 used in CI
#Pinned versions: 1.4.1
#test that import:
lxml==5.3.0
lxml==5.0.0.
#Description: This is a requirement of unittest-xml-reporting
# Python-3.9 binaries
PyGithub==2.3.0
sympy==1.13.3
#Description: Required by coremltools, also pinned in .github/requirements/pip-requirements-macOS.txt
#Pinned versions:
#test that import:
onnx==1.17.0
#Description: Required by mypy and test_public_bindings.py when checking torch.onnx._internal
#Pinned versions:
#test that import:
onnxscript==0.2.2
#Description: Required by mypy and test_public_bindings.py when checking torch.onnx._internal
#Pinned versions:
#test that import:
parameterized==0.8.1
#Description: Parameterizes unittests, both the tests themselves and the entire testing class
#Pinned versions:
#test that import:
#Description: required for testing torch/distributed/_tools/sac_estimator.py
#Pinned versions: 1.24.0
#test that import: test_sac_estimator.py
pwlf==2.2.1
#Description: required for testing torch/distributed/_tools/sac_estimator.py
#Pinned versions: 2.2.1
#test that import: test_sac_estimator.py
# To build PyTorch itself
astunparse
PyYAML
pyzstd
setuptools
scons==4.5.2 ; platform_machine == "aarch64"
pulp==2.9.0
#Description: required for testing ilp formulaiton under torch/distributed/_tools
#Pinned versions: 2.9.0
#test that import: test_sac_ilp.py
dataclasses_json==0.6.7
#Description: required for data pipeline and scripts under tools/stats
#Pinned versions: 0.6.7
#test that import:
cmake==4.0.0
#Description: required for building

View File

@ -1,26 +1,20 @@
sphinx==5.3.0
#Description: This is used to generate PyTorch docs
#Pinned versions: 5.3.0
-e git+https://github.com/pytorch/pytorch_sphinx_theme.git@pytorch_sphinx_theme2#egg=pytorch_sphinx_theme2
-e git+https://github.com/pytorch/pytorch_sphinx_theme.git#egg=pytorch_sphinx_theme
# TODO: sphinxcontrib.katex 0.9.0 adds a local KaTeX server to speed up pre-rendering
# but it doesn't seem to work and hangs around idly. The initial thought is probably
# something related to Docker setup. We can investigate this later
sphinxcontrib.katex==0.8.6
#Description: This is used to generate PyTorch docs
#Pinned versions: 0.8.6
sphinxext-opengraph==0.9.1
#Description: This is used to generate PyTorch docs
#Pinned versions: 0.9.1
matplotlib==3.5.3
#Description: This is used to generate PyTorch docs
#Pinned versions: 3.5.3
tensorboard==2.13.0 ; python_version < "3.13"
tensorboard==2.18.0 ; python_version >= "3.13"
tensorboard==2.13.0
#Description: This is used to generate PyTorch docs
#Pinned versions: 2.13.0
@ -51,6 +45,5 @@ myst-nb==0.17.2
# The following are required to build torch.distributed.elastic.rendezvous.etcd* docs
python-etcd==0.4.5
sphinx-copybutton==0.5.0
sphinx-design==0.4.0
sphinxcontrib-mermaid==1.0.0
sphinx-panels==0.4.1
myst-parser==0.18.1

View File

@ -1 +1 @@
3.3.0
3.0.0

View File

@ -2,7 +2,7 @@ ARG UBUNTU_VERSION
ARG CUDA_VERSION
ARG IMAGE_NAME
FROM ${IMAGE_NAME} as base
FROM ${IMAGE_NAME}
ARG UBUNTU_VERSION
ARG CUDA_VERSION
@ -26,11 +26,11 @@ RUN bash ./install_docs_reqs.sh && rm install_docs_reqs.sh
ARG ANACONDA_PYTHON_VERSION
ENV ANACONDA_PYTHON_VERSION=$ANACONDA_PYTHON_VERSION
ENV PATH /opt/conda/envs/py_$ANACONDA_PYTHON_VERSION/bin:/opt/conda/bin:$PATH
ARG CONDA_CMAKE
COPY requirements-ci.txt /opt/conda/requirements-ci.txt
COPY ./common/install_conda.sh install_conda.sh
COPY ./common/common_utils.sh common_utils.sh
COPY ./common/install_magma_conda.sh install_magma_conda.sh
RUN bash ./install_conda.sh && rm install_conda.sh install_magma_conda.sh common_utils.sh /opt/conda/requirements-ci.txt
RUN bash ./install_conda.sh && rm install_conda.sh common_utils.sh /opt/conda/requirements-ci.txt
# Install gcc
ARG GCC_VERSION
@ -42,6 +42,20 @@ ARG CLANG_VERSION
COPY ./common/install_clang.sh install_clang.sh
RUN bash ./install_clang.sh && rm install_clang.sh
# (optional) Install protobuf for ONNX
ARG PROTOBUF
COPY ./common/install_protobuf.sh install_protobuf.sh
RUN if [ -n "${PROTOBUF}" ]; then bash ./install_protobuf.sh; fi
RUN rm install_protobuf.sh
ENV INSTALLED_PROTOBUF ${PROTOBUF}
# (optional) Install database packages like LMDB and LevelDB
ARG DB
COPY ./common/install_db.sh install_db.sh
RUN if [ -n "${DB}" ]; then bash ./install_db.sh; fi
RUN rm install_db.sh
ENV INSTALLED_DB ${DB}
# (optional) Install vision packages like OpenCV
ARG VISION
COPY ./common/install_vision.sh ./common/cache_vision_models.sh ./common/common_utils.sh ./
@ -66,8 +80,6 @@ RUN bash ./install_openssl.sh
ENV OPENSSL_DIR /opt/openssl
ARG INDUCTOR_BENCHMARKS
ARG ANACONDA_PYTHON_VERSION
ENV ANACONDA_PYTHON_VERSION=$ANACONDA_PYTHON_VERSION
COPY ./common/install_inductor_benchmark_deps.sh install_inductor_benchmark_deps.sh
COPY ./common/common_utils.sh common_utils.sh
COPY ci_commit_pins/huggingface.txt huggingface.txt
@ -75,29 +87,21 @@ COPY ci_commit_pins/timm.txt timm.txt
RUN if [ -n "${INDUCTOR_BENCHMARKS}" ]; then bash ./install_inductor_benchmark_deps.sh; fi
RUN rm install_inductor_benchmark_deps.sh common_utils.sh timm.txt huggingface.txt
ARG TRITON
# (optional) Install non-default CMake version
ARG CMAKE_VERSION
COPY ./common/install_cmake.sh install_cmake.sh
RUN if [ -n "${CMAKE_VERSION}" ]; then bash ./install_cmake.sh; fi
RUN rm install_cmake.sh
FROM base as triton-builder
ARG TRITON
# Install triton, this needs to be done before sccache because the latter will
# try to reach out to S3, which docker build runners don't have access
COPY ./common/install_triton.sh install_triton.sh
COPY ./common/common_utils.sh common_utils.sh
COPY ci_commit_pins/triton.txt triton.txt
COPY triton_version.txt triton_version.txt
RUN bash ./install_triton.sh
FROM base as final
COPY --from=triton-builder /opt/triton /opt/triton
RUN if [ -n "${TRITON}" ]; then pip install /opt/triton/*.whl; chown -R jenkins:jenkins /opt/conda; fi
RUN rm -rf /opt/triton
ARG HALIDE
# Build and install halide
COPY ./common/install_halide.sh install_halide.sh
COPY ./common/common_utils.sh common_utils.sh
COPY ci_commit_pins/halide.txt halide.txt
RUN if [ -n "${HALIDE}" ]; then bash ./install_halide.sh; fi
RUN rm install_halide.sh common_utils.sh halide.txt
RUN if [ -n "${TRITON}" ]; then bash ./install_triton.sh; fi
RUN rm install_triton.sh common_utils.sh triton.txt triton_version.txt
# Install ccache/sccache (do this last, so we get priority in PATH)
COPY ./common/install_cache.sh install_cache.sh
@ -144,22 +148,6 @@ COPY ./common/install_cusparselt.sh install_cusparselt.sh
RUN bash install_cusparselt.sh
RUN rm install_cusparselt.sh
# Install NCCL
ARG CUDA_VERSION
COPY ./common/install_nccl.sh install_nccl.sh
COPY ./ci_commit_pins/nccl-cu* /ci_commit_pins/
RUN bash install_nccl.sh
RUN rm install_nccl.sh /ci_commit_pins/nccl-cu*
ENV USE_SYSTEM_NCCL=1
ENV NCCL_INCLUDE_DIR="/usr/local/cuda/include/"
ENV NCCL_LIB_DIR="/usr/local/cuda/lib64/"
# Install CUDSS
ARG CUDA_VERSION
COPY ./common/install_cudss.sh install_cudss.sh
RUN bash install_cudss.sh
RUN rm install_cudss.sh
# Delete /usr/local/cuda-11.X/cuda-11.X symlinks
RUN if [ -h /usr/local/cuda-11.6/cuda-11.6 ]; then rm /usr/local/cuda-11.6/cuda-11.6; fi
RUN if [ -h /usr/local/cuda-11.7/cuda-11.7 ]; then rm /usr/local/cuda-11.7/cuda-11.7; fi

View File

@ -14,17 +14,19 @@ ENV PYTORCH_ROCM_ARCH ${PYTORCH_ROCM_ARCH}
COPY ./common/install_base.sh install_base.sh
RUN bash ./install_base.sh && rm install_base.sh
# Install clang
ARG LLVMDEV
ARG CLANG_VERSION
COPY ./common/install_clang.sh install_clang.sh
RUN bash ./install_clang.sh && rm install_clang.sh
# Install user
COPY ./common/install_user.sh install_user.sh
RUN bash ./install_user.sh && rm install_user.sh
# Install katex
ARG KATEX
COPY ./common/install_docs_reqs.sh install_docs_reqs.sh
RUN bash ./install_docs_reqs.sh && rm install_docs_reqs.sh
# Install conda and other packages (e.g., numpy, pytest)
ARG ANACONDA_PYTHON_VERSION
ARG CONDA_CMAKE
ENV ANACONDA_PYTHON_VERSION=$ANACONDA_PYTHON_VERSION
ENV PATH /opt/conda/envs/py_$ANACONDA_PYTHON_VERSION/bin:/opt/conda/bin:$PATH
COPY requirements-ci.txt /opt/conda/requirements-ci.txt
@ -37,10 +39,19 @@ ARG GCC_VERSION
COPY ./common/install_gcc.sh install_gcc.sh
RUN bash ./install_gcc.sh && rm install_gcc.sh
# Install clang
ARG CLANG_VERSION
COPY ./common/install_clang.sh install_clang.sh
RUN bash ./install_clang.sh && rm install_clang.sh
# (optional) Install protobuf for ONNX
ARG PROTOBUF
COPY ./common/install_protobuf.sh install_protobuf.sh
RUN if [ -n "${PROTOBUF}" ]; then bash ./install_protobuf.sh; fi
RUN rm install_protobuf.sh
ENV INSTALLED_PROTOBUF ${PROTOBUF}
# (optional) Install database packages like LMDB and LevelDB
ARG DB
COPY ./common/install_db.sh install_db.sh
RUN if [ -n "${DB}" ]; then bash ./install_db.sh; fi
RUN rm install_db.sh
ENV INSTALLED_DB ${DB}
# (optional) Install vision packages like OpenCV
ARG VISION
@ -55,10 +66,8 @@ COPY ./common/install_rocm.sh install_rocm.sh
RUN bash ./install_rocm.sh
RUN rm install_rocm.sh
COPY ./common/install_rocm_magma.sh install_rocm_magma.sh
RUN bash ./install_rocm_magma.sh ${ROCM_VERSION}
RUN bash ./install_rocm_magma.sh
RUN rm install_rocm_magma.sh
ADD ./common/install_miopen.sh install_miopen.sh
RUN bash ./install_miopen.sh ${ROCM_VERSION} && rm install_miopen.sh
ENV ROCM_PATH /opt/rocm
ENV PATH /opt/rocm/bin:$PATH
ENV PATH /opt/rocm/hcc/bin:$PATH
@ -74,31 +83,11 @@ COPY ./common/install_amdsmi.sh install_amdsmi.sh
RUN bash ./install_amdsmi.sh
RUN rm install_amdsmi.sh
# (optional) Install UCC
ARG UCX_COMMIT
ARG UCC_COMMIT
ENV UCX_COMMIT $UCX_COMMIT
ENV UCC_COMMIT $UCC_COMMIT
ENV UCX_HOME /usr
ENV UCC_HOME /usr
ADD ./common/install_ucc.sh install_ucc.sh
RUN if [ -n "${UCX_COMMIT}" ] && [ -n "${UCC_COMMIT}" ]; then bash ./install_ucc.sh; fi
RUN rm install_ucc.sh
COPY ./common/install_openssl.sh install_openssl.sh
ENV OPENSSL_ROOT_DIR /opt/openssl
RUN bash ./install_openssl.sh
ENV OPENSSL_DIR /opt/openssl
ARG INDUCTOR_BENCHMARKS
ARG ANACONDA_PYTHON_VERSION
ENV ANACONDA_PYTHON_VERSION=$ANACONDA_PYTHON_VERSION
COPY ./common/install_inductor_benchmark_deps.sh install_inductor_benchmark_deps.sh
COPY ./common/common_utils.sh common_utils.sh
COPY ci_commit_pins/huggingface.txt huggingface.txt
COPY ci_commit_pins/timm.txt timm.txt
RUN if [ -n "${INDUCTOR_BENCHMARKS}" ]; then bash ./install_inductor_benchmark_deps.sh; fi
RUN rm install_inductor_benchmark_deps.sh common_utils.sh timm.txt huggingface.txt
# (optional) Install non-default CMake version
ARG CMAKE_VERSION
COPY ./common/install_cmake.sh install_cmake.sh
RUN if [ -n "${CMAKE_VERSION}" ]; then bash ./install_cmake.sh; fi
RUN rm install_cmake.sh
# (optional) Install non-default Ninja version
ARG NINJA_VERSION
@ -111,28 +100,26 @@ ARG TRITON
# try to reach out to S3, which docker build runners don't have access
COPY ./common/install_triton.sh install_triton.sh
COPY ./common/common_utils.sh common_utils.sh
COPY ci_commit_pins/triton.txt triton.txt
COPY ci_commit_pins/triton-rocm.txt triton-rocm.txt
COPY triton_version.txt triton_version.txt
RUN if [ -n "${TRITON}" ]; then bash ./install_triton.sh; fi
RUN rm install_triton.sh common_utils.sh triton.txt triton_version.txt
RUN rm install_triton.sh common_utils.sh triton-rocm.txt triton_version.txt
# Install AOTriton
COPY ./aotriton_version.txt aotriton_version.txt
COPY ./common/common_utils.sh common_utils.sh
COPY ./common/install_aotriton.sh install_aotriton.sh
RUN ["/bin/bash", "-c", "./install_aotriton.sh /opt/rocm && rm -rf install_aotriton.sh aotriton_version.txt common_utils.sh"]
ENV AOTRITON_INSTALLED_PREFIX /opt/rocm/aotriton
# Install ccache/sccache (do this last, so we get priority in PATH)
COPY ./common/install_cache.sh install_cache.sh
ENV PATH /opt/cache/bin:$PATH
RUN bash ./install_cache.sh && rm install_cache.sh
# Install Open MPI for ROCm
COPY ./common/install_openmpi.sh install_openmpi.sh
RUN if [ -n "${CUDA_VERSION}" ]; then bash install_openmpi.sh; fi
RUN rm install_openmpi.sh
# Include BUILD_ENVIRONMENT environment variable in image
ARG BUILD_ENVIRONMENT
ENV BUILD_ENVIRONMENT ${BUILD_ENVIRONMENT}
# Install LLVM dev version (Defined in the pytorch/builder github repository)
COPY --from=pytorch/llvm:9.0.1 /opt/llvm /opt/llvm
USER jenkins
CMD ["bash"]

View File

@ -28,8 +28,8 @@ RUN bash ./install_docs_reqs.sh && rm install_docs_reqs.sh
# Install conda and other packages (e.g., numpy, pytest)
ARG ANACONDA_PYTHON_VERSION
ARG CONDA_CMAKE
ARG DOCS
ARG BUILD_ENVIRONMENT
ENV ANACONDA_PYTHON_VERSION=$ANACONDA_PYTHON_VERSION
ENV PATH /opt/conda/envs/py_$ANACONDA_PYTHON_VERSION/bin:/opt/conda/bin:$PATH
ENV DOCS=$DOCS
@ -76,6 +76,13 @@ COPY triton_version.txt triton_version.txt
RUN if [ -n "${TRITON}" ]; then bash ./install_triton.sh; fi
RUN rm install_triton.sh common_utils.sh triton-xpu.txt triton_version.txt
# (optional) Install database packages like LMDB and LevelDB
ARG DB
COPY ./common/install_db.sh install_db.sh
RUN if [ -n "${DB}" ]; then bash ./install_db.sh; fi
RUN rm install_db.sh
ENV INSTALLED_DB ${DB}
# (optional) Install vision packages like OpenCV
ARG VISION
COPY ./common/install_vision.sh ./common/cache_vision_models.sh ./common/common_utils.sh ./
@ -83,6 +90,12 @@ RUN if [ -n "${VISION}" ]; then bash ./install_vision.sh; fi
RUN rm install_vision.sh cache_vision_models.sh common_utils.sh
ENV INSTALLED_VISION ${VISION}
# (optional) Install non-default CMake version
ARG CMAKE_VERSION
COPY ./common/install_cmake.sh install_cmake.sh
RUN if [ -n "${CMAKE_VERSION}" ]; then bash ./install_cmake.sh; fi
RUN rm install_cmake.sh
# (optional) Install non-default Ninja version
ARG NINJA_VERSION
COPY ./common/install_ninja.sh install_ninja.sh

View File

@ -1,6 +1,6 @@
ARG UBUNTU_VERSION
FROM ubuntu:${UBUNTU_VERSION} as base
FROM ubuntu:${UBUNTU_VERSION}
ARG UBUNTU_VERSION
@ -28,6 +28,7 @@ RUN bash ./install_docs_reqs.sh && rm install_docs_reqs.sh
# Install conda and other packages (e.g., numpy, pytest)
ARG ANACONDA_PYTHON_VERSION
ARG CONDA_CMAKE
ARG DOCS
ENV ANACONDA_PYTHON_VERSION=$ANACONDA_PYTHON_VERSION
ENV PATH /opt/conda/envs/py_$ANACONDA_PYTHON_VERSION/bin:/opt/conda/bin:$PATH
@ -35,8 +36,7 @@ ENV DOCS=$DOCS
COPY requirements-ci.txt requirements-docs.txt /opt/conda/
COPY ./common/install_conda.sh install_conda.sh
COPY ./common/common_utils.sh common_utils.sh
COPY ./common/install_magma_conda.sh install_magma_conda.sh
RUN bash ./install_conda.sh && rm install_conda.sh install_magma_conda.sh common_utils.sh /opt/conda/requirements-ci.txt /opt/conda/requirements-docs.txt
RUN bash ./install_conda.sh && rm install_conda.sh common_utils.sh /opt/conda/requirements-ci.txt /opt/conda/requirements-docs.txt
RUN if [ -n "${UNINSTALL_DILL}" ]; then pip uninstall -y dill; fi
# Install gcc
@ -50,18 +50,10 @@ RUN bash ./install_lcov.sh && rm install_lcov.sh
# Install cuda and cudnn
ARG CUDA_VERSION
COPY ./common/install_cuda.sh install_cuda.sh
COPY ./common/install_nccl.sh install_nccl.sh
COPY ./ci_commit_pins/nccl-cu* /ci_commit_pins/
COPY ./common/install_cusparselt.sh install_cusparselt.sh
RUN bash ./install_cuda.sh ${CUDA_VERSION} && rm install_cuda.sh install_nccl.sh /ci_commit_pins/nccl-cu* install_cusparselt.sh
RUN wget -q https://raw.githubusercontent.com/pytorch/builder/main/common/install_cuda.sh -O install_cuda.sh
RUN bash ./install_cuda.sh ${CUDA_VERSION} && rm install_cuda.sh
ENV DESIRED_CUDA ${CUDA_VERSION}
ENV PATH /usr/local/nvidia/bin:/usr/local/cuda/bin:$PATH
# No effect if cuda not installed
ENV USE_SYSTEM_NCCL=1
ENV NCCL_INCLUDE_DIR="/usr/local/cuda/include/"
ENV NCCL_LIB_DIR="/usr/local/cuda/lib64/"
# (optional) Install UCC
ARG UCX_COMMIT
@ -74,6 +66,20 @@ ADD ./common/install_ucc.sh install_ucc.sh
RUN if [ -n "${UCX_COMMIT}" ] && [ -n "${UCC_COMMIT}" ]; then bash ./install_ucc.sh; fi
RUN rm install_ucc.sh
# (optional) Install protobuf for ONNX
ARG PROTOBUF
COPY ./common/install_protobuf.sh install_protobuf.sh
RUN if [ -n "${PROTOBUF}" ]; then bash ./install_protobuf.sh; fi
RUN rm install_protobuf.sh
ENV INSTALLED_PROTOBUF ${PROTOBUF}
# (optional) Install database packages like LMDB and LevelDB
ARG DB
COPY ./common/install_db.sh install_db.sh
RUN if [ -n "${DB}" ]; then bash ./install_db.sh; fi
RUN rm install_db.sh
ENV INSTALLED_DB ${DB}
# (optional) Install vision packages like OpenCV
ARG VISION
COPY ./common/install_vision.sh ./common/cache_vision_models.sh ./common/common_utils.sh ./
@ -81,6 +87,37 @@ RUN if [ -n "${VISION}" ]; then bash ./install_vision.sh; fi
RUN rm install_vision.sh cache_vision_models.sh common_utils.sh
ENV INSTALLED_VISION ${VISION}
# (optional) Install Android NDK
ARG ANDROID
ARG ANDROID_NDK
ARG GRADLE_VERSION
COPY ./common/install_android.sh ./common/cache_vision_models.sh ./common/common_utils.sh ./
COPY ./android/AndroidManifest.xml AndroidManifest.xml
COPY ./android/build.gradle build.gradle
RUN if [ -n "${ANDROID}" ]; then bash ./install_android.sh; fi
RUN rm install_android.sh cache_vision_models.sh common_utils.sh
RUN rm AndroidManifest.xml
RUN rm build.gradle
ENV INSTALLED_ANDROID ${ANDROID}
# (optional) Install Vulkan SDK
ARG VULKAN_SDK_VERSION
COPY ./common/install_vulkan_sdk.sh install_vulkan_sdk.sh
RUN if [ -n "${VULKAN_SDK_VERSION}" ]; then bash ./install_vulkan_sdk.sh; fi
RUN rm install_vulkan_sdk.sh
# (optional) Install swiftshader
ARG SWIFTSHADER
COPY ./common/install_swiftshader.sh install_swiftshader.sh
RUN if [ -n "${SWIFTSHADER}" ]; then bash ./install_swiftshader.sh; fi
RUN rm install_swiftshader.sh
# (optional) Install non-default CMake version
ARG CMAKE_VERSION
COPY ./common/install_cmake.sh install_cmake.sh
RUN if [ -n "${CMAKE_VERSION}" ]; then bash ./install_cmake.sh; fi
RUN rm install_cmake.sh
# (optional) Install non-default Ninja version
ARG NINJA_VERSION
COPY ./common/install_ninja.sh install_ninja.sh
@ -102,21 +139,13 @@ RUN if [ -n "${INDUCTOR_BENCHMARKS}" ]; then bash ./install_inductor_benchmark_d
RUN rm install_inductor_benchmark_deps.sh common_utils.sh timm.txt huggingface.txt
ARG TRITON
ARG TRITON_CPU
# Create a separate stage for building Triton and Triton-CPU. install_triton
# will check for the presence of env vars
FROM base as triton-builder
# Install triton, this needs to be done before sccache because the latter will
# try to reach out to S3, which docker build runners don't have access
COPY ./common/install_triton.sh install_triton.sh
COPY ./common/common_utils.sh common_utils.sh
COPY ci_commit_pins/triton.txt triton.txt
COPY ci_commit_pins/triton-cpu.txt triton-cpu.txt
RUN bash ./install_triton.sh
FROM base as final
COPY --from=triton-builder /opt/triton /opt/triton
RUN if [ -n "${TRITON}" ] || [ -n "${TRITON_CPU}" ]; then pip install /opt/triton/*.whl; chown -R jenkins:jenkins /opt/conda; fi
RUN rm -rf /opt/triton
RUN if [ -n "${TRITON}" ]; then bash ./install_triton.sh; fi
RUN rm install_triton.sh common_utils.sh triton.txt
ARG EXECUTORCH
# Build and install executorch
@ -126,14 +155,6 @@ COPY ci_commit_pins/executorch.txt executorch.txt
RUN if [ -n "${EXECUTORCH}" ]; then bash ./install_executorch.sh; fi
RUN rm install_executorch.sh common_utils.sh executorch.txt
ARG HALIDE
# Build and install halide
COPY ./common/install_halide.sh install_halide.sh
COPY ./common/common_utils.sh common_utils.sh
COPY ci_commit_pins/halide.txt halide.txt
RUN if [ -n "${HALIDE}" ]; then bash ./install_halide.sh; fi
RUN rm install_halide.sh common_utils.sh halide.txt
ARG ONNX
# Install ONNX dependencies
COPY ./common/install_onnx.sh ./common/common_utils.sh ./

View File

@ -1,10 +0,0 @@
#!/usr/bin/env bash
# This is mostly just a shim to manywheel/build.sh
# TODO: Make this a dedicated script to build just libtorch
set -ex
SCRIPTPATH="$( cd "$( dirname "${BASH_SOURCE[0]}" )" >/dev/null 2>&1 && pwd )"
USE_CUSPARSELT=0 BUILD_PYTHONLESS=1 DESIRED_PYTHON="3.9" ${SCRIPTPATH}/../manywheel/build.sh

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@ -1,2 +0,0 @@
output/
magma-rocm*/

View File

@ -1,35 +0,0 @@
SHELL=/usr/bin/env bash
DOCKER_CMD ?= docker
DESIRED_ROCM ?= 6.4
DESIRED_ROCM_SHORT = $(subst .,,$(DESIRED_ROCM))
PACKAGE_NAME = magma-rocm
# inherit this from underlying docker image, do not pass this env var to docker
#PYTORCH_ROCM_ARCH ?= gfx900;gfx906;gfx908;gfx90a;gfx942;gfx1030;gfx1100;gfx1101;gfx1102;gfx1200;gfx1201
DOCKER_RUN = set -eou pipefail; ${DOCKER_CMD} run --rm -i \
-v $(shell git rev-parse --show-toplevel)/.ci:/builder \
-w /builder \
-e PACKAGE_NAME=${PACKAGE_NAME}${DESIRED_ROCM_SHORT} \
-e DESIRED_ROCM=${DESIRED_ROCM} \
"pytorch/almalinux-builder:rocm${DESIRED_ROCM}" \
magma-rocm/build_magma.sh
.PHONY: all
all: magma-rocm64
all: magma-rocm63
.PHONY:
clean:
$(RM) -r magma-*
$(RM) -r output
.PHONY: magma-rocm64
magma-rocm64: DESIRED_ROCM := 6.4
magma-rocm64:
$(DOCKER_RUN)
.PHONY: magma-rocm63
magma-rocm63: DESIRED_ROCM := 6.3
magma-rocm63:
$(DOCKER_RUN)

View File

@ -1,48 +0,0 @@
# Magma ROCm
This folder contains the scripts and configurations to build libmagma.so, linked for various versions of ROCm.
## Building
Look in the `Makefile` for available targets to build. To build any target, for example `magma-rocm63`, run
```
# Using `docker`
make magma-rocm63
# Using `podman`
DOCKER_CMD=podman make magma-rocm63
```
This spawns a `pytorch/manylinux-rocm<version>` docker image, which has the required `devtoolset` and ROCm versions installed.
Within the docker image, it runs `build_magma.sh` with the correct environment variables set, which package the necessary files
into a tarball, with the following structure:
```
.
├── include # header files
├── lib # libmagma.so
├── info
│ ├── licenses # license file
│ └── recipe # build script
```
More specifically, `build_magma.sh` copies over the relevant files from the `package_files` directory depending on the ROCm version.
Outputted binaries should be in the `output` folder.
## Pushing
Packages can be uploaded to an S3 bucket using:
```
aws s3 cp output/*/magma-cuda*.bz2 <bucket-with-path>
```
If you do not have upload permissions, please ping @seemethere or @soumith to gain access
## New versions
New ROCm versions can be added by creating a new make target with the next desired version. For ROCm version N.n, the target should be named `magma-rocmNn`.
Make sure to edit the appropriate environment variables (e.g., DESIRED_ROCM) in the `Makefile` accordingly. Remember also to check `build_magma.sh` to ensure the logic for copying over the files remains correct.

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#!/usr/bin/env bash
set -eou pipefail
# Environment variables
# The script expects DESIRED_CUDA and PACKAGE_NAME to be set
ROOT_DIR="$(cd "$(dirname "${BASH_SOURCE[0]}")/.." && pwd)"
# Version 2.7.2 + ROCm related updates
MAGMA_VERSION=a1625ff4d9bc362906bd01f805dbbe12612953f6
# Folders for the build
PACKAGE_FILES=${ROOT_DIR}/magma-rocm/package_files # metadata
PACKAGE_DIR=${ROOT_DIR}/magma-rocm/${PACKAGE_NAME} # build workspace
PACKAGE_OUTPUT=${ROOT_DIR}/magma-rocm/output # where tarballs are stored
PACKAGE_BUILD=${PACKAGE_DIR} # where the content of the tarball is prepared
PACKAGE_RECIPE=${PACKAGE_BUILD}/info/recipe
PACKAGE_LICENSE=${PACKAGE_BUILD}/info/licenses
mkdir -p ${PACKAGE_DIR} ${PACKAGE_OUTPUT}/linux-64 ${PACKAGE_BUILD} ${PACKAGE_RECIPE} ${PACKAGE_LICENSE}
# Fetch magma sources and verify checksum
pushd ${PACKAGE_DIR}
git clone https://bitbucket.org/icl/magma.git
pushd magma
git checkout ${MAGMA_VERSION}
popd
popd
# build
pushd ${PACKAGE_DIR}/magma
# The build.sh script expects to be executed from the sources root folder
INSTALL_DIR=${PACKAGE_BUILD} ${PACKAGE_FILES}/build.sh
popd
# Package recipe, license and tarball
# Folder and package name are backward compatible for the build workflow
cp ${PACKAGE_FILES}/build.sh ${PACKAGE_RECIPE}/build.sh
cp ${PACKAGE_DIR}/magma/COPYRIGHT ${PACKAGE_LICENSE}/COPYRIGHT
pushd ${PACKAGE_BUILD}
tar cjf ${PACKAGE_OUTPUT}/linux-64/${PACKAGE_NAME}-${MAGMA_VERSION}-1.tar.bz2 include lib info
echo Built in ${PACKAGE_OUTPUT}/linux-64/${PACKAGE_NAME}-${MAGMA_VERSION}-1.tar.bz2
popd

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# Magma build scripts need `python`
ln -sf /usr/bin/python3 /usr/bin/python
ID=$(grep -oP '(?<=^ID=).+' /etc/os-release | tr -d '"')
case "$ID" in
almalinux)
yum install -y gcc-gfortran
;;
*)
echo "No preinstalls to build magma..."
;;
esac
MKLROOT=${MKLROOT:-/opt/conda/envs/py_$ANACONDA_PYTHON_VERSION}
cp make.inc-examples/make.inc.hip-gcc-mkl make.inc
echo 'LIBDIR += -L$(MKLROOT)/lib' >> make.inc
if [[ -f "${MKLROOT}/lib/libmkl_core.a" ]]; then
echo 'LIB = -Wl,--start-group -lmkl_gf_lp64 -lmkl_gnu_thread -lmkl_core -Wl,--end-group -lpthread -lstdc++ -lm -lgomp -lhipblas -lhipsparse' >> make.inc
fi
echo 'LIB += -Wl,--enable-new-dtags -Wl,--rpath,/opt/rocm/lib -Wl,--rpath,$(MKLROOT)/lib -Wl,--rpath,/opt/rocm/magma/lib -ldl' >> make.inc
echo 'DEVCCFLAGS += --gpu-max-threads-per-block=256' >> make.inc
export PATH="${PATH}:/opt/rocm/bin"
if [[ -n "$PYTORCH_ROCM_ARCH" ]]; then
amdgpu_targets=`echo $PYTORCH_ROCM_ARCH | sed 's/;/ /g'`
else
amdgpu_targets=`rocm_agent_enumerator | grep -v gfx000 | sort -u | xargs`
fi
for arch in $amdgpu_targets; do
echo "DEVCCFLAGS += --offload-arch=$arch" >> make.inc
done
# hipcc with openmp flag may cause isnan() on __device__ not to be found; depending on context, compiler may attempt to match with host definition
sed -i 's/^FOPENMP/#FOPENMP/g' make.inc
make -f make.gen.hipMAGMA -j $(nproc)
LANG=C.UTF-8 make lib/libmagma.so -j $(nproc) MKLROOT="${MKLROOT}"
make testing/testing_dgemm -j $(nproc) MKLROOT="${MKLROOT}"
cp -R lib ${INSTALL_DIR}
cp -R include ${INSTALL_DIR}

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output/
magma-cuda*/

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SHELL=/usr/bin/env bash
DOCKER_CMD ?= docker
DESIRED_CUDA ?= 11.8
DESIRED_CUDA_SHORT = $(subst .,,$(DESIRED_CUDA))
PACKAGE_NAME = magma-cuda
CUDA_ARCH_LIST ?= -gencode arch=compute_50,code=sm_50 -gencode arch=compute_60,code=sm_60 -gencode arch=compute_70,code=sm_70 -gencode arch=compute_80,code=sm_80 -gencode arch=compute_86,code=sm_86 -gencode arch=compute_90,code=sm_90
DOCKER_RUN = set -eou pipefail; ${DOCKER_CMD} run --rm -i \
-v $(shell git rev-parse --show-toplevel)/.ci:/builder \
-w /builder \
-e PACKAGE_NAME=${PACKAGE_NAME}${DESIRED_CUDA_SHORT} \
-e DESIRED_CUDA=${DESIRED_CUDA} \
-e CUDA_ARCH_LIST="${CUDA_ARCH_LIST}" \
"pytorch/almalinux-builder:cuda${DESIRED_CUDA}-main" \
magma/build_magma.sh
.PHONY: all
all: magma-cuda128
all: magma-cuda126
all: magma-cuda118
.PHONY:
clean:
$(RM) -r magma-*
$(RM) -r output
.PHONY: magma-cuda128
magma-cuda128: DESIRED_CUDA := 12.8
magma-cuda128: CUDA_ARCH_LIST += -gencode arch=compute_100,code=sm_100 -gencode arch=compute_120,code=sm_120
magma-cuda128:
$(DOCKER_RUN)
.PHONY: magma-cuda126
magma-cuda126: DESIRED_CUDA := 12.6
magma-cuda126:
$(DOCKER_RUN)
.PHONY: magma-cuda118
magma-cuda118: DESIRED_CUDA := 11.8
magma-cuda118: CUDA_ARCH_LIST += -gencode arch=compute_37,code=sm_37
magma-cuda118:
$(DOCKER_RUN)

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# Magma
This folder contains the scripts and configurations to build magma, statically linked for various versions of CUDA.
## Building
Look in the `Makefile` for available targets to build. To build any target, for example `magma-cuda118`, run
```
# Using `docker`
make magma-cuda118
# Using `podman`
DOCKER_CMD=podman make magma-cuda118
```
This spawns a `pytorch/manylinux-cuda<version>` docker image, which has the required `devtoolset` and CUDA versions installed.
Within the docker image, it runs `build_magma.sh` with the correct environment variables set, which package the necessary files
into a tarball, with the following structure:
```
.
├── include # header files
├── lib # libmagma.a
├── info
│ ├── licenses # license file
│ └── recipe # build script and patches
```
More specifically, `build_magma.sh` copies over the relevant files from the `package_files` directory depending on the CUDA version.
Outputted binaries should be in the `output` folder.
## Pushing
Packages can be uploaded to an S3 bucket using:
```
aws s3 cp output/*/magma-cuda*.bz2 <bucket-with-path>
```
If you do not have upload permissions, please ping @seemethere or @soumith to gain access
## New versions
New CUDA versions can be added by creating a new make target with the next desired version. For CUDA version NN.n, the target should be named `magma-cudaNNn`.
Make sure to edit the appropriate environment variables (e.g., DESIRED_CUDA, CUDA_ARCH_LIST) in the `Makefile` accordingly. Remember also to check `build_magma.sh` to ensure the logic for copying over the files remains correct.
New patches can be added by editing `Makefile` and`build_magma.sh` the same way `getrf_nbparam.patch` is implemented.

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#!/usr/bin/env bash
set -eou pipefail
# Environment variables
# The script expects DESIRED_CUDA and PACKAGE_NAME to be set
ROOT_DIR="$(cd "$(dirname "${BASH_SOURCE[0]}")/.." && pwd)"
MAGMA_VERSION=2.6.1
# Folders for the build
PACKAGE_FILES=${ROOT_DIR}/magma/package_files # source patches and metadata
PACKAGE_DIR=${ROOT_DIR}/magma/${PACKAGE_NAME} # build workspace
PACKAGE_OUTPUT=${ROOT_DIR}/magma/output # where tarballs are stored
PACKAGE_BUILD=${PACKAGE_DIR}/build # where the content of the tarball is prepared
PACKAGE_RECIPE=${PACKAGE_BUILD}/info/recipe
PACKAGE_LICENSE=${PACKAGE_BUILD}/info/licenses
mkdir -p ${PACKAGE_DIR} ${PACKAGE_OUTPUT}/linux-64 ${PACKAGE_BUILD} ${PACKAGE_RECIPE} ${PACKAGE_LICENSE}
# Fetch magma sources and verify checksum
pushd ${PACKAGE_DIR}
curl -LO http://icl.utk.edu/projectsfiles/magma/downloads/magma-${MAGMA_VERSION}.tar.gz
tar zxf magma-${MAGMA_VERSION}.tar.gz
sha256sum --check < ${PACKAGE_FILES}/magma-${MAGMA_VERSION}.sha256
popd
# Apply patches and build
pushd ${PACKAGE_DIR}/magma-${MAGMA_VERSION}
patch < ${PACKAGE_FILES}/CMake.patch
patch < ${PACKAGE_FILES}/cmakelists.patch
patch -p0 < ${PACKAGE_FILES}/thread_queue.patch
patch -p1 < ${PACKAGE_FILES}/getrf_shfl.patch
patch -p1 < ${PACKAGE_FILES}/getrf_nbparam.patch
# The build.sh script expects to be executed from the sources root folder
INSTALL_DIR=${PACKAGE_BUILD} ${PACKAGE_FILES}/build.sh
popd
# Package recipe, license and tarball
# Folder and package name are backward compatible for the build workflow
cp ${PACKAGE_FILES}/build.sh ${PACKAGE_RECIPE}/build.sh
cp ${PACKAGE_FILES}/thread_queue.patch ${PACKAGE_RECIPE}/thread_queue.patch
cp ${PACKAGE_FILES}/cmakelists.patch ${PACKAGE_RECIPE}/cmakelists.patch
cp ${PACKAGE_FILES}/getrf_shfl.patch ${PACKAGE_RECIPE}/getrf_shfl.patch
cp ${PACKAGE_FILES}/getrf_nbparam.patch ${PACKAGE_RECIPE}/getrf_nbparam.patch
cp ${PACKAGE_FILES}/CMake.patch ${PACKAGE_RECIPE}/CMake.patch
cp ${PACKAGE_FILES}/magma-${MAGMA_VERSION}.sha256 ${PACKAGE_RECIPE}/magma-${MAGMA_VERSION}.sha256
cp ${PACKAGE_DIR}/magma-${MAGMA_VERSION}/COPYRIGHT ${PACKAGE_LICENSE}/COPYRIGHT
pushd ${PACKAGE_BUILD}
tar cjf ${PACKAGE_OUTPUT}/linux-64/${PACKAGE_NAME}-${MAGMA_VERSION}-1.tar.bz2 include lib info
echo Built in ${PACKAGE_OUTPUT}/linux-64/${PACKAGE_NAME}-${MAGMA_VERSION}-1.tar.bz2
popd

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