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Author SHA1 Message Date
e0495a7aa1 Wrap cub in its own namespace (#55292) (#61605)
Summary:
Tentative fix for https://github.com/pytorch/pytorch/issues/55027.
Wraps cub import in its name space so that static variables used by cub and thrust don't conflict if they end up in the different libraries when torch is built with BUILD_SPLIT_CUDA. cub variables end up in their own namespace, thrust variables are unwrapped, so they don't clash.
This also allows extensions to use cub without wrapping it (thrust will still be problematic). The solution to allowing extensions to use thrust is to stop using thrust in pytorch completely.
Now importing cub and importing thrust cannot coexist, so I had to move nonzero to its own file, and remove reliance on thrust functions for it. Nonzero now uses cub only.
Also, we cannot selectively import just some of cub headers, we are forced to import `cub/cub.cuh`, which is not great.
Caffe2 ops using cub are not touched (there are too many), so mixing caffe2 and torch will (can) still result in the same bug. We are moving towards disabling c2 ops, so I think this is fine.
Still, even with that compiler (correctly) warns about redefinition of `CUB_NS_PREFIX` because including `ATen/ATen.h` transitively includes `thrust/complex.h` and that in turn includes original (empty) definition of `CUB_NS_PREFIX`. We probably can just ignore this warning. Here's an example warning:
```
In file included from /data/users/ngimel/pytorch/aten/src/ATen/native/cuda/Nonzero.cu:9:
/data/users/ngimel/pytorch/aten/src/ATen/cuda/CubUtils.cuh:4: warning: "CUB_NS_PREFIX" redefined
 #define CUB_NS_PREFIX namespace at{ namespace native{

In file included from /home/ngimel/local/cuda/include/thrust/system/cuda/config.h:76,
                 from /home/ngimel/local/cuda/include/thrust/system/cuda/detail/execution_policy.h:33,
                 from /home/ngimel/local/cuda/include/thrust/iterator/detail/device_system_tag.h:23,
                 from /home/ngimel/local/cuda/include/thrust/iterator/iterator_traits.h:111,
                 from /home/ngimel/local/cuda/include/thrust/detail/type_traits/pointer_traits.h:23,
                 from /home/ngimel/local/cuda/include/thrust/type_traits/is_contiguous_iterator.h:27,
                 from /home/ngimel/local/cuda/include/thrust/type_traits/is_trivially_relocatable.h:19,
                 from /home/ngimel/local/cuda/include/thrust/detail/complex/complex.inl:20,
                 from /home/ngimel/local/cuda/include/thrust/complex.h:1031,
                 from /data/users/ngimel/pytorch/c10/util/complex.h:9,
                 from /data/users/ngimel/pytorch/c10/core/ScalarType.h:4,
                 from /data/users/ngimel/pytorch/c10/core/Scalar.h:10,
                 from /data/users/ngimel/pytorch/build/aten/src/ATen/core/TensorBody.h:8,
                 from /data/users/ngimel/pytorch/aten/src/ATen/Tensor.h:3,
                 from /data/users/ngimel/pytorch/aten/src/ATen/Context.h:4,
                 from /data/users/ngimel/pytorch/aten/src/ATen/ATen.h:9,
                 from /data/users/ngimel/pytorch/aten/src/ATen/native/cuda/Nonzero.cu:1:
/home/ngimel/local/cuda/include/cub/util_namespace.cuh:43: note: this is the location of the previous definition
 #define CUB_NS_PREFIX

```
We will need a lint rule to prevent people from including `cub/cub.cuh`, because this will lead to https://github.com/pytorch/pytorch/issues/55027 reappearing again for some sequence of operations (and will lead to errors with cub code in extensions).
Also, for this to work reliably we'll need to make sure that everything calling cub ends up in only one of libtorch_cuda_cu or libtorch_cuda_cpp, otherwise even namespace won't help (there still will be same symbols in 2 libraries).

Upd: libtorch_cuda_cpp and libtorch_cuda_cu still contain the same symbols, which means that there exists a sequence of operations that will cause cache bug to reappear, so this is not a solution, we need to adjust file lists for BUILD_SPLITC_CUDA:
```
(pytorch) [ngimel@ ~/local/pytorch/build/lib] nm libtorch_cuda_cu.so | grep PerDeviceAttributeCache | c++filt
000000000c6bf808 u guard variable for at::native::cub::GetPerDeviceAttributeCache<at::native::cub::PtxVersionCacheTag>()::cache
000000000c600830 u guard variable for cub::GetPerDeviceAttributeCache<cub::PtxVersionCacheTag>()::cache
00000000018625e0 t at::native::cub::PerDeviceAttributeCache::DevicePayload at::native::cub::PerDeviceAttributeCache::operator()<at::native::cub::PtxVersion(int&)::{lambda(int&)https://github.com/pytorch/pytorch/issues/1}>(at::native::cub::PtxVersion(int&)::{lambda(int&)https://github.com/pytorch/pytorch/issues/1}&&, int)
00000000009ce630 t cub::PerDeviceAttributeCache::DevicePayload cub::PerDeviceAttributeCache::operator()<cub::PtxVersion(int&)::{lambda(int&)https://github.com/pytorch/pytorch/issues/1}>(cub::PtxVersion(int&)::{lambda(int&)https://github.com/pytorch/pytorch/issues/1}&&, int)
000000000c6bf820 u at::native::cub::GetPerDeviceAttributeCache<at::native::cub::PtxVersionCacheTag>()::cache
000000000c600840 u cub::GetPerDeviceAttributeCache<cub::PtxVersionCacheTag>()::cache
(pytorch) [ngimel@ ~/local/pytorch/build/lib] nm libtorch_cuda_cpp.so | grep PerDeviceAttributeCache | c++filt
0000000000ad2d98 u guard variable for at::native::cub::GetPerDeviceAttributeCache<at::native::cub::PtxVersionCacheTag>()::cache
0000000000ad2da0 u at::native::cub::GetPerDeviceAttributeCache<at::native::cub::PtxVersionCacheTag>()::cache
```
Upd2:
Moved TensorFactories.cu to torch_cuda_cu sources (see a change to caffe2/CMakeLists.txt), so now cub-related symbols are only in libtorch_cuda_cu. We'd need a test for that, any suggestions on how best to test it?
cc zasdfgbnm malfet

Pull Request resolved: https://github.com/pytorch/pytorch/pull/55292

Reviewed By: anjali411

Differential Revision: D27576442

Pulled By: ngimel

fbshipit-source-id: 1ef29503a342bb214794d34a42a47052092a66c1

Co-authored-by: Natalia Gimelshein <ngimel@fb.com>
2021-07-23 11:17:46 -07:00
8f69e4993b [LTS 1.8] Store Windows Artifacts (#57777) 2021-05-09 18:37:20 -07:00
99f5ffee1a Bump LTS 1.8 version to 1.8.2 and hardcode builder branch (#57362)
* bump to 1.8.2

* Checkout lts 1.8 branch on builder

* Clone lts/release/1.8 branch directly

Co-authored-by: Nikita Shulga <nikita.shulga@gmail.com>

* [No op] to re-trigger pipeline

* [No op] to re-trigger pipeline

Co-authored-by: Nikita Shulga <nikita.shulga@gmail.com>
2021-05-05 14:11:17 -07:00
56b43f4fec Perform appropriate CUDA stream synchronization in distributed autograd. (#53929) (#54358)
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/53929

The local autograd engine performs appropriate stream synchronization
between autograd nodes in the graph to ensure a consumer's stream is
synchronized with the producer's stream before executing the consumer.

However in case of distributed autograd, the SendRpcBackward function receives
gradients over the wire and TensorPipe uses its own pool of streams for this
purpose. As a result, the tensors are received on TensorPipe's stream pool but
SendRpcBackward runs on a different stream during the backward pass and there
is no logic to synchronize these streams.

To fix this, I've enhanced DistEngine to synchronize these streams
appropriately when it receives grads over the wire.
ghstack-source-id: 124055277

(Note: this ignores all push blocking failures!)

Test Plan:
1) Added unit test which reproduced the issue.
2) waitforbuildbot.

Reviewed By: walterddr, wanchaol

Differential Revision: D27025307

fbshipit-source-id: 2944854e688e001cb3989d2741727b30d9278414

Co-authored-by: Pritam Damania <pritam.damania@fb.com>
2021-03-23 19:28:21 -07:00
6c394614f0 [CI] Install compatible cmath for Win builds (#54556)
* [CI]Install older cmath during Windows build (#54431)

Summary:
Based on peterjc123 analysis, `cmath` after 26bbe2ad50 (diff-3fa97ceb95d524432661f01d4b34509c6d261a2f7f45ddcf26f79f55b3eec88a) renders a lot of CUDA fail to compile with:
```
error: calling a __host__ function("__copysignf") from a __host__ __device__ function("c10::guts::detail::apply_impl< ::at::native::AUnaryFunctor< ::>  &,     ::std::tuple<float >  &, (unsigned long long)0ull > ") is not allowed
```
Workaround for https://github.com/pytorch/pytorch/issues/54382

Pull Request resolved: https://github.com/pytorch/pytorch/pull/54431

Reviewed By: anjali411

Differential Revision: D27234299

Pulled By: malfet

fbshipit-source-id: b3f1fef941341222cc10cb27346fcf4a1d522a0c

* [CI] Install compatible cmath for Win binary builds (#54527)

Summary: Pull Request resolved: https://github.com/pytorch/pytorch/pull/54527

Reviewed By: walterddr

Differential Revision: D27269528

Pulled By: malfet

fbshipit-source-id: 4afdc706598f3a6ad296468dfb77a70433ae7d0f
2021-03-23 19:02:01 -07:00
7c3c293ea7 [1.8] Don't build TensorPipe CMA backend on old glibc versions (#54491)
Some users who are building from source on old glibc versions are hitting the issue of TensorPipe using the process_vm_readv syscall which is not wrapped by glibc. This PR tries to check that condition in CMake and disable that backend in such cases.

This should have no effect on PyTorch's official builds, it should just help people who are building from source.
2021-03-23 15:56:26 -07:00
9d43171746 [1.8.1] Replace thrust with cub in randperm (#54537)
Summary:
Benchmark of
```python
%timeit torch.randperm(100000, device='cuda'); torch.cuda.synchronize()
```
thrust:
```
5.76 ms ± 42.1 µs per loop (mean ± std. dev. of 7 runs, 100 loops each)
```
cub:
```
3.02 ms ± 32.9 µs per loop (mean ± std. dev. of 7 runs, 100 loops each)
```

sync in thrust sort is removed

Warning:
Thrust supports 64bit indexing, but cub doesn't, so this is a functional regression. However, `torch.randperm(2**31, device='cuda')` fails with OOM on 40GB A100, and `torch.randperm(2**32, device='cuda')` fails with OOM on 80GB A100, so I think this functional regression has low impact and is acceptable.

Pull Request resolved: https://github.com/pytorch/pytorch/pull/53841

Reviewed By: albanD

Differential Revision: D26993453

Pulled By: ngimel

fbshipit-source-id: 39dd128559d53dbb01cab1585e5462cb5f3cceca

Co-authored-by: Xiang Gao <qasdfgtyuiop@gmail.com>
2021-03-23 15:45:20 -07:00
f3c950e04e various doc building cleanups (#54141) 2021-03-23 11:23:02 -07:00
b6f49807db third_party: Update kineto to fix libtorch builds (#54205)
Signed-off-by: Eli Uriegas <eliuriegas@fb.com>
2021-03-17 13:26:11 -07:00
d84e05be49 [fix] Dimension out of range in pixel_shuffle / pixel_unshuffle (#54178)
Co-authored-by: Joel Benjamin Schlosser <jbschlosser@fb.com>
2021-03-17 12:40:59 -07:00
c6139b7915 Make ideep honor torch.set_num_thread changes (#53871) (#54025)
Summary:
When compiled with OpenMP support `ideep`'s computational_cache would cache max number of OpenMP workers
This number could be wrong after `torch.set_num_threads` call, so clean it after the call.

Fixes https://github.com/pytorch/pytorch/issues/53565

Pull Request resolved: https://github.com/pytorch/pytorch/pull/53871

Reviewed By: albanD

Differential Revision: D27003265

Pulled By: malfet

fbshipit-source-id: 1d84c23070eafb3d444e09590d64f97f99ae9d36
2021-03-16 11:46:19 -07:00
30baaef738 Use int8_t instead of char in [load|store]_scalar` (#52616) (#54022)
Summary:
Since `char` is not guaranteed to be signed on all platforms (it is unsigned on ARM)
Fixes https://github.com/pytorch/pytorch/issues/52146

Pull Request resolved: https://github.com/pytorch/pytorch/pull/52616

Test Plan: Run ` python3 -c "import torch;a=torch.tensor([-1], dtype=torch.int8);print(a.tolist())"` on arm-linux system

Reviewed By: walterddr

Differential Revision: D26586678

Pulled By: malfet

fbshipit-source-id: 91972189b54f86add516ffb96d579acb0bc13311
2021-03-16 11:45:50 -07:00
264d0ecf83 [nn] nn.Embedding : padding_idx doc update (#53809) (#54026)
Summary:
Follow-up of https://github.com/pytorch/pytorch/pull/53447

Reference: https://github.com/pytorch/pytorch/pull/53447#discussion_r590521051

Pull Request resolved: https://github.com/pytorch/pytorch/pull/53809

Reviewed By: bdhirsh

Differential Revision: D27049643

Pulled By: jbschlosser

fbshipit-source-id: 623a2a254783b86391dc2b0777b688506adb4c0e

Co-authored-by: kshitij12345 <kshitijkalambarkar@gmail.com>
2021-03-16 11:44:37 -07:00
51233ea4b0 Disabling dispatch to OneDNN for group convolutions when groups size = 24 * n (#54015)
* Disabling dispatch to OneDNN for group convolutions when groups size is 24 * n

* Add condition to non-zero grps

Co-authored-by: Vitaly Fedyunin <vitaly.fedyunin@gmail.com>
2021-03-16 07:34:18 -07:00
31a1a00ae8 Update Kineto revision for 1.8.1 (#54044)
Summary:
Updating Kineto to include bugfixes for 1.8.1

Test Plan: CI
2021-03-16 07:31:47 -07:00
bb98a99638 [ONNX] Update embedding export wrt padding_idx (#53931) (#54033)
Summary:
To be in-sync with https://github.com/pytorch/pytorch/issues/53447

Pull Request resolved: https://github.com/pytorch/pytorch/pull/53931

Reviewed By: ngimel

Differential Revision: D27026616

Pulled By: malfet

fbshipit-source-id: 4c50b29fa296c90aeeeb1757bdaada92cbba33d4
2021-03-15 21:38:49 -07:00
295c7cf1de [ONNX] Update assign output shape for nested structure and dict output (#52893) (#53311) (#54019)
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/53311

Fixes dict output & nested tuple.

Test Plan: Imported from OSS

Reviewed By: pbelevich, malfet

Differential Revision: D26922426

Pulled By: SplitInfinity

fbshipit-source-id: c2c6b71c8d978b990181e0b025626dbf6ef2199e
2021-03-15 18:52:11 -07:00
3233861ec4 Fix test to use proper condition. (#52216) (#54028)
Summary: Pull Request resolved: https://github.com/pytorch/pytorch/pull/52216

Test Plan: Imported from OSS

Reviewed By: pbelevich

Differential Revision: D26427506

Pulled By: ailzhang

fbshipit-source-id: ba4f2f66794cb2843926e5566eb4d25582f7fb2b

Co-authored-by: Ailing Zhang <ailzhang@fb.com>
2021-03-15 16:52:29 -07:00
47f4b3f7d4 Cherrypick #53576 into release/1.8 (#53766) 2021-03-15 13:36:09 -07:00
e450f1498f [ONNX] Support torch.isinf, torch.any and torch.all export to ONNX (#53328) (#53529) (#54007)
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/53529

Supported for ONNX export after opset 10.
This is not exportable to opsets < 10 due to
1. onnx::IsInf is introduced in opset 10
2. onnx::Equal does not accept float tensor prior to opset 11

Test Plan: Imported from OSS

Reviewed By: pbelevich, malfet

Differential Revision: D26922418

Pulled By: SplitInfinity

fbshipit-source-id: 69bcba50520fa3d69db4bd4c2b9f88c00146fca7

Co-authored-by: BowenBao <bowbao@microsoft.com>
2021-03-15 13:05:59 -07:00
6fd01f9440 [ONNX] Update inputs/input_names formatting to avoid ValueError with scriptMethods (#53519) (#53548) (#54005)
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/53548

fixes issue faced in #53506

Test Plan: Imported from OSS

Reviewed By: SplitInfinity

Differential Revision: D26922415

Pulled By: malfet

fbshipit-source-id: b61842827bb14cef8c7a7089b2426fa53e642c90

Co-authored-by: BowenBao <bowbao@microsoft.com>
2021-03-15 12:24:20 -07:00
b33e434d55 [v1.8.1] Pick up upstream fixes from TensorPipe (#53804)
- Support transferring >2GB over CMA
- Avoid loading stub version of CUDA driver
- Don't use unsupported mmap option on older kernels
- Don't join non-existing thread if CMA is not viable

The last two manifested as uncaught exceptions (hence crashes) when initializing RPC. The first one caused same-machine RPC requests to fail.
2021-03-15 12:22:10 -07:00
a3e4bf60bb [fix] nn.Embedding: allow changing the padding vector (#53447) (#53986)
Summary:
Fixes https://github.com/pytorch/pytorch/issues/53368

Pull Request resolved: https://github.com/pytorch/pytorch/pull/53447

Reviewed By: albanD

Differential Revision: D26946284

Pulled By: jbschlosser

fbshipit-source-id: 54e5eec7da86fa02b1b6e4a235d66976a80764fc

Co-authored-by: kshitij12345 <kshitijkalambarkar@gmail.com>
2021-03-15 12:21:05 -07:00
e991cdaf58 [CherryPick] Fixes for distribution validation checks (#53763)
* Add sample validation for LKJCholesky.log_prob

* Fix distributions which don't properly honor validate_args=False

A number of derived distributions use base distributions in their
implementation.

We add what we hope is a comprehensive test whether all distributions
actually honor skipping validation of arguments in log_prob and then
fix the bugs we found. These bugs are particularly cumbersome in
PyTorch 1.8 and master when validate_args is turned on by default
In addition one might argue that validate_args is not performing
as well as it should when the default is not to validate but the
validation is turned on in instantiation.

Arguably, there is another set of bugs or at least inconsistencies
when validation of inputs does not prevent invalid indices in
sample validation (when with validation an IndexError is raised
in the test). We would encourage the implementors to be more
ambitious when validation is turned on and amend sample validation
to throw a ValueError for consistency.

* additional fixes to distributions

* address failing tests

Co-authored-by: neerajprad <neerajprad@devvm903.atn0.facebook.com>
Co-authored-by: Thomas Viehmann <tv.code@beamnet.de>
2021-03-15 10:51:50 -07:00
4596a8ec8a Remove MNIST for XLA (#53274) (#53987)
Summary:
Mitigates https://github.com/pytorch/pytorch/issues/53267

Pull Request resolved: https://github.com/pytorch/pytorch/pull/53274

Reviewed By: zhangguanheng66, ailzhang

Differential Revision: D26819702

Pulled By: cpuhrsch

fbshipit-source-id: 5b9b30db6f8fc414aa9f3c841429bf99bc927763

Co-authored-by: cpuhrsch <cpuhrsch@devvm2783.frc0.facebook.com>
2021-03-15 07:53:39 -07:00
512f289884 Example LSTMCell (#51983) (#54003)
Summary:
Fixes #{51801}
LSTMCell example updated

Pull Request resolved: https://github.com/pytorch/pytorch/pull/51983

Reviewed By: agolynski

Differential Revision: D26467104

Pulled By: zou3519

fbshipit-source-id: 31c8bf89b21cd2f748b2cc28a74169082d81503c

Co-authored-by: CarlosJose126 <43588143+CarlosJose126@users.noreply.github.com>
2021-03-15 07:50:49 -07:00
c439f85b16 Fix set_device_map docs (#53508) (#53822)
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/53508

closes #53501

Differential Revision: D26885263

Test Plan: Imported from OSS

Reviewed By: H-Huang

Pulled By: mrshenli

fbshipit-source-id: dd0493e6f179d93b518af8f082399cacb1c7cba6
2021-03-12 17:31:29 -08:00
30712fca7e ci: Remove special versioning privileges for cu102 (#53133) (#53734)
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/53133

In light of some issues where users were having trouble installing CUDA
specific versions of pytorch we should no longer have special privileges
for CUDA 10.2.

Recently I added scripts/release/promote/prep_binary_for_pypi.sh (https://github.com/pytorch/pytorch/pull/53056) to make
it so that we could theoretically promote any wheel we publish to
download.pytorch.org to pypi

Signed-off-by: Eli Uriegas <eliuriegas@fb.com>

Test Plan: Imported from OSS

Reviewed By: walterddr

Differential Revision: D26759823

Pulled By: seemethere

fbshipit-source-id: 2d2b29e7fef0f48c23f3c853bdca6144b7c61f22
(cherry picked from commit b8546bde09c7c00581fe4ceb061e5942c7b78b20)
Signed-off-by: Eli Uriegas <eliuriegas@fb.com>
2021-03-10 11:53:14 -08:00
debf62d95c [1.8.1] Explicitly export submodules and variables from torch module (#53675)
Summary:
For https://github.com/pytorch/pytorch/issues/47027.

Some progress has been made in https://github.com/pytorch/pytorch/issues/50665, but in my testing trying to unwrap the circular dependencies is turning into a neverending quest.

This PR explicitly exports things in the top-level torch module without any semantic effect, in accordance with this py.typed library guidance: https://github.com/microsoft/pyright/blob/master/docs/typed-libraries.md#library-interface

It may be possible to do some of the other fixes just using `__all__` where needed, but `__all__` has a semantic effect I would like to further review. This PR at least fixes simple completions like `torch.nn` in Pylance/pyright.

Pull Request resolved: https://github.com/pytorch/pytorch/pull/52339

Reviewed By: smessmer

Differential Revision: D26694909

Pulled By: malfet

fbshipit-source-id: 99f2c6d0bf972afd4036df988e3acae857dde3e1

Co-authored-by: Jake Bailey <5341706+jakebailey@users.noreply.github.com>
2021-03-10 10:10:42 -08:00
e30dc8d21b enable autocast for xla (#48570) (#53671)
Summary:
For enabling amp in torch/xla, see [this](https://github.com/pytorch/xla/pull/2654).

Pull Request resolved: https://github.com/pytorch/pytorch/pull/48570

Reviewed By: ezyang

Differential Revision: D26120627

Pulled By: ailzhang

fbshipit-source-id: 32627b17c04bfdad128624676ea9bf6f117bc97d

Co-authored-by: Chengji Yao <yaochengji@hotmail.com>
2021-03-10 10:06:02 -08:00
4e590c9ced Docs cherrypicks 1.8.1 (#53674)
* [FX] Cherrypick docs fixes

* Update code links to point to 1.8
2021-03-09 17:23:28 -08:00
6e9f2c8df0 [1.8 release only] Remove fx graph mode quantization doc from release (#53055) 2021-03-02 12:26:26 -08:00
37c1f4a7fe Fix hipify_python (#52756)
Co-authored-by: rraminen <rraminen@amd.com>
Co-authored-by: Nikita Shulga <nshulga@fb.com>
2021-02-26 14:13:54 -08:00
49b74a52a4 Catch Flake8 error codes with multiple letters (#52750) (#52801)
Summary:
The Flake8 job has been passing on `master` despite giving warnings for [over a month](https://github.com/pytorch/pytorch/runs/1716124347). This is because it has been using a regex that doesn't recognize error codes starting with multiple letters, such as those used by [flake8-executable](https://pypi.org/project/flake8-executable/). This PR corrects the regex, and also adds another step at the end of the job which asserts that Flake8 actually gave no error output, in case similar regex issues appear in the future.

Tagging the following people to ask what to do to fix these `EXE002` warnings:

- https://github.com/pytorch/pytorch/issues/50629 authored by jaglinux, approved by rohan-varma
  - `test/distributed/test_c10d.py`
- https://github.com/pytorch/pytorch/issues/51262 authored by glaringlee, approved by ejguan
  - `torch/utils/data/datapipes/__init__.py`
  - `torch/utils/data/datapipes/iter/loadfilesfromdisk.py`
  - `torch/utils/data/datapipes/iter/listdirfiles.py`
  - `torch/utils/data/datapipes/iter/__init__.py`
  - `torch/utils/data/datapipes/utils/__init__.py`
  - `torch/utils/data/datapipes/utils/common.py`
- https://github.com/pytorch/pytorch/issues/51398 authored by glaringlee, approved by ejguan
  - `torch/utils/data/datapipes/iter/readfilesfromtar.py`
- https://github.com/pytorch/pytorch/issues/51599 authored by glaringlee, approved by ejguan
  - `torch/utils/data/datapipes/iter/readfilesfromzip.py`
- https://github.com/pytorch/pytorch/issues/51704 authored by glaringlee, approved by ejguan
  - `torch/utils/data/datapipes/iter/routeddecoder.py`
  - `torch/utils/data/datapipes/utils/decoder.py`
- https://github.com/pytorch/pytorch/issues/51709 authored by glaringlee, approved by ejguan
  - `torch/utils/data/datapipes/iter/groupbykey.py`

Specifically, the question is: for each of those files, should we remove the execute permissions, or should we add a shebang? And if the latter, which shebang?

Pull Request resolved: https://github.com/pytorch/pytorch/pull/52750

Test Plan:
The **Lint / flake8-py3** job in GitHub Actions:

- [this run](https://github.com/pytorch/pytorch/runs/1972039886) failed, showing that the new regex catches these warnings properly
- [this run](https://github.com/pytorch/pytorch/runs/1972393293) succeeded and gave no output in the "Run flake8" step, showing that this PR fixed all Flake8 warnings
- [this run](https://github.com/pytorch/pytorch/pull/52755/checks?check_run_id=1972414849) (in https://github.com/pytorch/pytorch/issues/52755) failed, showing that the new last step of the job successfully catches Flake8 warnings even without the regex fix

Reviewed By: walterddr, janeyx99

Differential Revision: D26637307

Pulled By: samestep

fbshipit-source-id: 572af6a3bbe57f5e9bd47f19f37c39db90f7b804

Co-authored-by: Sam Estep <sestep@fb.com>
2021-02-26 07:49:51 -08:00
11c78e9cb3 Expose documentation for LKJCholesky distribution (#52904)
This is already added to the master branch in https://github.com/pytorch/pytorch/pull/52763.
2021-02-26 07:47:29 -08:00
d6943ea58d apply diff 52351 (#52649) 2021-02-23 07:51:38 -08:00
02b61b49ea [1.8] Update XNNPACK (#52647)
Cherry-pick 55d53a4e70 into release/1.8 branch
2021-02-23 05:31:57 -08:00
d553478c98 [v1.8] Make TensorPipe work around bug in old versions of libibverbs (#52615)
The bug affects PyTorch users who meet two conditions:
- they have an old version of libibverbs installed (the userspace library), namely older than v25, which dates from Jul 29, 2019;
- but they do _not_ have an InfiniBand kernel module loaded.

In those cases they will experience a crash (uncaught exception) happening when initializing RPC, mentioning an "unknown error -38".

There is a workaround, which is for those users to activate a killswitch (which is private and undocumented) to disable the `ibv` backend of TensorPipe.
2021-02-22 16:55:12 -08:00
63333e2a25 [1.8] Update api doc for enabling TcpStore on Windows (#52601)
Summary:
Fixes #{issue number}

Pull Request resolved: https://github.com/pytorch/pytorch/pull/51847

Reviewed By: albanD

Differential Revision: D26405678

Pulled By: malfet

fbshipit-source-id: 073b675225b48d1732771583f8f2473e0fdcf35c

Co-authored-by: Joe Zhu <jozh@microsoft.com>
2021-02-22 10:14:09 -08:00
8e7eebfc9a [1.8] Fix onnx mixed precision export for layernorm & fuseLogSoftmaxNllLoss (#52510)
Co-authored-by: Shubham Bhokare <32080845+shubhambhokare1@users.noreply.github.com>
2021-02-19 14:40:53 -08:00
f8afb8bdd0 [v1.8.0] Various CUDA 11.1 with BUILD_SPLIT_CUDA_FIXES (#52518)
Co-authored-by: Nikita Shulga <nshulga@fb.com>
Co-authored-by: peterjc123 <peterghost86@gmail.com>
Co-authored-by: Jane Xu <janeyx@fb.com>
2021-02-19 12:41:21 -08:00
0851cc42b0 Update freezing API - changes from 52337 (#52392)
Co-authored-by: eellison <eellison@fb.com>
2021-02-18 15:36:51 -08:00
804f7b6018 Add arm64 binary build (#52443) (#52469)
Summary:
This is getting tested by https://github.com/pytorch/pytorch/issues/52441.

Adds new config for macos arm64 to our binary builds.
Now stores artifacts for mac builds.

Pull Request resolved: https://github.com/pytorch/pytorch/pull/52443

Reviewed By: walterddr

Differential Revision: D26517330

Pulled By: janeyx99

fbshipit-source-id: 02774937a827bdd4c08486dc9f8fe63446917f1e
2021-02-18 15:17:27 -08:00
32758d30b3 onnx export of per channel fake quantize functions (#42835) (#52430)
Summary:
Fixes https://github.com/pytorch/pytorch/issues/39502

This PR adds support for exporting **fake_quantize_per_channel_affine** to a pair of QuantizeLinear and DequantizeLinear. Per tensor support was added by PR https://github.com/pytorch/pytorch/pull/39738.

`axis` attribute of QuantizeLinear and DequantizeLinear, which is required for per channel support, is added in opset13 added by https://github.com/onnx/onnx/pull/2772.

[update 1/20/2021]: opset13 is being supported on master, the added function is now properly tested. Code also rebased to new master.

The function is also tested offline with the following code
```python
import torch
from torch import quantization

from torchvision import models
qat_resnet18 = models.resnet18(pretrained=True).eval().cuda()

qat_resnet18.qconfig = quantization.QConfig(
    activation=quantization.default_fake_quant, weight=quantization.default_per_channel_weight_fake_quant)
quantization.prepare_qat(qat_resnet18, inplace=True)
qat_resnet18.apply(quantization.enable_observer)
qat_resnet18.apply(quantization.enable_fake_quant)

dummy_input = torch.randn(16, 3, 224, 224).cuda()
_ = qat_resnet18(dummy_input)
for module in qat_resnet18.modules():
    if isinstance(module, quantization.FakeQuantize):
        module.calculate_qparams()
qat_resnet18.apply(quantization.disable_observer)

qat_resnet18.cuda()

input_names = [ "actual_input_1" ]
output_names = [ "output1" ]

torch.onnx.export(qat_resnet18, dummy_input, "quant_model.onnx", verbose=True, opset_version=13)
```
It can generate the desired graph.

Pull Request resolved: https://github.com/pytorch/pytorch/pull/42835

Reviewed By: houseroad

Differential Revision: D26293823

Pulled By: SplitInfinity

fbshipit-source-id: 300498a2e24b7731b12fa2fbdea4e73dde80e7ea

Co-authored-by: Hao Wu <skyw@users.noreply.github.com>
2021-02-18 12:50:40 -08:00
bcb64a8084 Fix upsample bicubic2d batching handling on CPU. (#52389) (#52445)
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/52389

Fixes: https://github.com/pytorch/pytorch/issues/49159

Test Plan: Imported from OSS

Reviewed By: albanD

Differential Revision: D26496319

Pulled By: gchanan

fbshipit-source-id: d385cd683ef09e0596a9875ce84d03e6e77acc93
2021-02-18 12:46:39 -08:00
f07991d396 update symeig backward note about similar eigenvalues (#52311) (#52446)
Summary:
First part of https://github.com/pytorch/pytorch/issues/49886 to at least properly warn users of the current state

Pull Request resolved: https://github.com/pytorch/pytorch/pull/52311

Reviewed By: soulitzer

Differential Revision: D26495644

Pulled By: albanD

fbshipit-source-id: 72abdfe41cdbcc1ac739a536eb85d1aa4ba90897
2021-02-18 12:45:47 -08:00
c458cd4852 [v1.8.0] .circleci: Downgrade CUDA 11.2 -> 11.1 for binaries (#52151) (#52406)
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/52151

CUDA 11.2 might not be as performant as we thought so let's downgrade to
something we think is more performant.

Signed-off-by: Eli Uriegas <eliuriegas@fb.com>

Test Plan: Imported from OSS

Reviewed By: malfet

Differential Revision: D26408314

Pulled By: seemethere

fbshipit-source-id: e2446aa0115e2c2a79718b1fdfd9fccf2072822d
(cherry picked from commit a11650b069729997b002032d70e9793477147851)
Signed-off-by: Eli Uriegas <eliuriegas@fb.com>
2021-02-18 10:59:03 -08:00
f7c4afc0f4 [cmake] Add explicit cublas->cudart dependency (#52243) (#52404)
Summary:
Necessary to ensure correct link order, especially if libraries are
linked statically. Otherwise, one might run into:
```
/usr/bin/ld: /usr/local/cuda/lib64/libcublasLt_static.a(libcublasLt_static.a.o): undefined reference to symbol 'cudaStreamWaitEvent@libcudart.so.11.0'
/usr/local/cuda/lib64/libcudart.so: error adding symbols: DSO missing from command line
```

Pull Request resolved: https://github.com/pytorch/pytorch/pull/52243

Reviewed By: seemethere, ngimel

Differential Revision: D26437159

Pulled By: malfet

fbshipit-source-id: 33b8bb5040bda10537833f3ad737f535488452ea
2021-02-17 16:07:41 -08:00
20554c00b6 [1.8] Remove torch.vmap (#52397)
torch.vmap is a prototype feature and should not be in the stable
binary. This PR:

- Removes the `torch.vmap` API
- Removes the documentation entry for torch.vmap
- Changes the vmap tests to use an internal API instead of torch.vmap.

Test Plan:
- Tested locally (test_torch, test_autograd, test_type_hints, test_vmap), but also wait
for CI.
2021-02-17 16:05:34 -08:00
3464d64f08 [1.8] Fix libnvrtc discoverability in package patched by auditwheel (#52365) 2021-02-17 16:05:05 -08:00
c6972eb3ac Skip OneDNN Convolution in case of groups = 24 #50042 (#52313)
Co-authored-by: Vitaly Fedyunin <vitaly.fedyunin@gmail.com>
2021-02-17 16:04:26 -08:00
25562d3d41 Use side-stream in CPU to GPU copies in DDP (#50180) (#52270)
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/50180

Resolves the regression in
https://github.com/pytorch/pytorch/issues/49819 by adding copy over background
stream similar to scatter. For internal use cases, this is gated with an env var that maintains the previous behavior when it is off.

Test Plan: CI

Reviewed By: mrshenli, ngimel

Differential Revision: D25818170

fbshipit-source-id: e50c76c035504b2a44e2be084701cee45c90df75
2021-02-17 09:49:30 -08:00
cd63c37bc6 ports fix (#52242)
Co-authored-by: Mike Ruberry <mruberry@devfair044.maas>
2021-02-13 17:59:51 -08:00
c79decdbba [v1.8 patch] [Resubmission] Add a documentation page for DDP communication hooks (#52215)
Co-authored-by: wayi <wayi@devgpu238.prn2.facebook.com>
2021-02-12 16:37:23 -08:00
c307a3f336 [1.8] Do not print warning if CUDA driver not found (#51806) (#52050)
Summary:
It frequently happens when PyTorch compiled with CUDA support is installed on machine that does not have NVIDIA GPUs.

Fixes https://github.com/pytorch/pytorch/issues/47038

Pull Request resolved: https://github.com/pytorch/pytorch/pull/51806

Reviewed By: ezyang

Differential Revision: D26285827

Pulled By: malfet

fbshipit-source-id: 9fd5e690d0135a2b219c1afa803fb69de9729f5e
2021-02-12 12:20:46 -08:00
f071020756 Workaround arm64 gcc error in std::copysign (#51900) (#52049)
Summary:
Move definition of copysign template and specialization for
bfloat16/half types before first use of copysign in that file

Add comment explaining why this is necessary

Fixes https://github.com/pytorch/pytorch/issues/51889

Pull Request resolved: https://github.com/pytorch/pytorch/pull/51900

Reviewed By: walterddr

Differential Revision: D26321741

Pulled By: malfet

fbshipit-source-id: 888858b11d9708fa140fe9c0570cc5a24599205b
2021-02-12 08:00:46 -08:00
4f436f8570 fake_quant cachemask: remove Python bindings (#51878) (#52160)
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/51878

`fake_quantize_per_tensor_affine_cachemask` and
`fake_quantize_per_channel_affine_cachemask` are implementation
details of `fake_quantize_per_tensor_affine` and
`fake_quantize_per_channel_affine`, removing the
Python bindings for them since there is no need to
expose them.

Test Plan:
```
python test/test_quantization.py TestFakeQuantize
```

Imported from OSS

Reviewed By: albanD, bugra

Differential Revision: D26314173

fbshipit-source-id: 733c93a3951453e739b6ed46b72fbad2244f6e97
(cherry picked from commit 33afb5f19f4e427f099653139ae45b661b8bc596)
2021-02-12 07:37:00 -08:00
ae11589710 [FX][1.8] Cherrypick three FX fixes to 1.8 (#52021)
* Fix leaf modules in Transformer

[ghstack-poisoned]

* Fix tuple type annotations

[ghstack-poisoned]

* Generalize dict key check in `create-arg` (#51927)

Summary: Pull Request resolved: https://github.com/pytorch/pytorch/pull/51927

Test Plan: Imported from OSS

Reviewed By: pbelevich

Differential Revision: D26329655

Pulled By: jamesr66a

fbshipit-source-id: a15e7d9564551521af12a8fde1c7524856f0cbc2
2021-02-12 07:35:34 -08:00
9e5bcc1020 1.8 cherrypick: Add metacompile of Ternary if (#51789) (#51913)
Summary:
Fixes issue: https://github.com/pytorch/pytorch/issues/49728
========
Ternary if operation fails in Torchscript when the condition variable is annotated as Final.

Tests:
=======
pytest -k test_ternary_static_if test/test_jit.py

Pull Request resolved: https://github.com/pytorch/pytorch/pull/51789

Reviewed By: gmagogsfm

Differential Revision: D26278969

Pulled By: nikithamalgifb

fbshipit-source-id: 27d1383290211503188428fb2e8b7749f59ba16e

Co-authored-by: nikithamalgi <nikithamalgi@devvm146.prn0.facebook.com>
2021-02-09 21:34:26 -08:00
fa8578241d .jenkins: Release branch specific updates (#51982) 2021-02-09 21:33:29 -08:00
1368809532 [v1.8.0] [wip] doc_fix (#52006)
Summary:
tries to fix doc_test

Pull Request resolved: https://github.com/pytorch/pytorch/pull/51825

Reviewed By: bertmaher

Differential Revision: D26295583

Pulled By: ngimel

fbshipit-source-id: 13f6e7f1675d810adfd4abd2d579e2812fe54c80
(cherry picked from commit 6c0bf28da651eb8ff1d2d0dcfe807ea757fb61e5)
Signed-off-by: Eli Uriegas <eliuriegas@fb.com>

Co-authored-by: Natalia Gimelshein <ngimel@fb.com>
2021-02-09 21:32:32 -08:00
4073248fc2 [FX] Hide experimental folder (#51987) 2021-02-09 15:44:33 -08:00
75153cb730 Disable unaliged-access test from TestVectorizedMemoryAccess.CopyKernel (#51864) (#51890)
Summary:
Test begins to fail after the driver udpate

See https://github.com/pytorch/pytorch/issues/51863

Pull Request resolved: https://github.com/pytorch/pytorch/pull/51864

Reviewed By: bertmaher

Differential Revision: D26304018

Pulled By: malfet

fbshipit-source-id: bb7ade2f28d8cf8f847159d4ce92391f0794c258

Co-authored-by: Nikita Shulga <nshulga@fb.com>
2021-02-09 10:17:18 -08:00
5bb69b080c concantenate LICENSE files when building a wheel (#51634) (#51882)
Summary:
Fixes https://github.com/pytorch/pytorch/issues/50695

I checked locally that the concatenated license file appears at `torch-<version>.dist-info/LICENSE` in the wheel.

Pull Request resolved: https://github.com/pytorch/pytorch/pull/51634

Reviewed By: zhangguanheng66

Differential Revision: D26225550

Pulled By: walterddr

fbshipit-source-id: 830c59fb7aea0eb50b99e295edddad9edab6ba3a

Co-authored-by: mattip <matti.picus@gmail.com>
2021-02-09 10:16:12 -08:00
10212 changed files with 473181 additions and 1794705 deletions

114
.bazelrc
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@ -1,115 +1,3 @@
build --cxxopt=--std=c++17
build --copt=--std=c++14
build --copt=-I.
# Bazel does not support including its cc_library targets as system
# headers. We work around this for generated code
# (e.g. c10/macros/cmake_macros.h) by making the generated directory a
# system include path.
build --copt=-isystem --copt bazel-out/k8-fastbuild/bin
build --copt=-isystem --copt bazel-out/darwin-fastbuild/bin
build --experimental_ui_max_stdouterr_bytes=2048576
# Configuration to disable tty features for environments like CI
build:no-tty --curses no
build:no-tty --progress_report_interval 10
build:no-tty --show_progress_rate_limit 10
# Build with GPU support by default.
build --define=cuda=true
# rules_cuda configuration
build --@rules_cuda//cuda:enable_cuda
build --@rules_cuda//cuda:cuda_targets=sm_52
build --@rules_cuda//cuda:compiler=nvcc
build --repo_env=CUDA_PATH=/usr/local/cuda
# Configuration to build without GPU support
build:cpu-only --define=cuda=false
# define a separate build folder for faster switching between configs
build:cpu-only --platform_suffix=-cpu-only
# See the note on the config-less build for details about why we are
# doing this. We must also do it for the "-cpu-only" platform suffix.
build --copt=-isystem --copt=bazel-out/k8-fastbuild-cpu-only/bin
# rules_cuda configuration
build:cpu-only --@rules_cuda//cuda:enable_cuda=False
# Definition of --config=shell
# interactive shell immediately before execution
build:shell --run_under="//tools/bazel_tools:shellwrap"
# Disable all warnings for external repositories. We don't care about
# their warnings.
build --per_file_copt=^external/@-w
# Set additional warnings to error level.
#
# Implementation notes:
# * we use file extensions to determine if we are using the C++
# compiler or the cuda compiler
# * we use ^// at the start of the regex to only permit matching
# PyTorch files. This excludes external repos.
#
# Note that because this is logically a command-line flag, it is
# considered the word on what warnings are enabled. This has the
# unfortunate consequence of preventing us from disabling an error at
# the target level because those flags will come before these flags in
# the action invocation. Instead we provide per-file exceptions after
# this.
#
# On the bright side, this means we don't have to more broadly apply
# the exceptions to an entire target.
#
# Looking for CUDA flags? We have a cu_library macro that we can edit
# directly. Look in //tools/rules:cu.bzl for details. Editing the
# macro over this has the following advantages:
# * making changes does not require discarding the Bazel analysis
# cache
# * it allows for selective overrides on individual targets since the
# macro-level opts will come earlier than target level overrides
build --per_file_copt='^//.*\.(cpp|cc)$'@-Werror=all
# The following warnings come from -Wall. We downgrade them from error
# to warnings here.
#
# sign-compare has a tremendous amount of violations in the
# codebase. It will be a lot of work to fix them, just disable it for
# now.
build --per_file_copt='^//.*\.(cpp|cc)$'@-Wno-sign-compare
# We intentionally use #pragma unroll, which is compiler specific.
build --per_file_copt='^//.*\.(cpp|cc)$'@-Wno-error=unknown-pragmas
build --per_file_copt='^//.*\.(cpp|cc)$'@-Werror=extra
# The following warnings come from -Wextra. We downgrade them from error
# to warnings here.
#
# unused-parameter-compare has a tremendous amount of violations in the
# codebase. It will be a lot of work to fix them, just disable it for
# now.
build --per_file_copt='^//.*\.(cpp|cc)$'@-Wno-unused-parameter
# missing-field-parameters has both a large number of violations in
# the codebase, but it also is used pervasively in the Python C
# API. There are a couple of catches though:
# * we use multiple versions of the Python API and hence have
# potentially multiple different versions of each relevant
# struct. They may have different numbers of fields. It will be
# unwieldy to support multiple versions in the same source file.
# * Python itself for many of these structs recommends only
# initializing a subset of the fields. We should respect the API
# usage conventions of our dependencies.
#
# Hence, we just disable this warning altogether. We may want to clean
# up some of the clear-cut cases that could be risky, but we still
# likely want to have this disabled for the most part.
build --per_file_copt='^//.*\.(cpp|cc)$'@-Wno-missing-field-initializers
build --per_file_copt='//:aten/src/ATen/RegisterCompositeExplicitAutograd\.cpp$'@-Wno-error=unused-function
build --per_file_copt='//:aten/src/ATen/RegisterCompositeImplicitAutograd\.cpp$'@-Wno-error=unused-function
build --per_file_copt='//:aten/src/ATen/RegisterMkldnnCPU\.cpp$'@-Wno-error=unused-function
build --per_file_copt='//:aten/src/ATen/RegisterNestedTensorCPU\.cpp$'@-Wno-error=unused-function
build --per_file_copt='//:aten/src/ATen/RegisterQuantizedCPU\.cpp$'@-Wno-error=unused-function
build --per_file_copt='//:aten/src/ATen/RegisterSparseCPU\.cpp$'@-Wno-error=unused-function
build --per_file_copt='//:aten/src/ATen/RegisterSparseCsrCPU\.cpp$'@-Wno-error=unused-function
build --per_file_copt='//:aten/src/ATen/RegisterNestedTensorMeta\.cpp$'@-Wno-error=unused-function
build --per_file_copt='//:aten/src/ATen/RegisterSparseMeta\.cpp$'@-Wno-error=unused-function
build --per_file_copt='//:aten/src/ATen/RegisterQuantizedMeta\.cpp$'@-Wno-error=unused-function
build --per_file_copt='//:aten/src/ATen/RegisterZeroTensor\.cpp$'@-Wno-error=unused-function
build --per_file_copt='//:torch/csrc/lazy/generated/RegisterAutogradLazy\.cpp$'@-Wno-error=unused-function
build --per_file_copt='//:torch/csrc/lazy/generated/RegisterLazy\.cpp$'@-Wno-error=unused-function

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@ -1 +1 @@
4.2.1
3.1.0

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@ -1,25 +0,0 @@
[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
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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@ -1,36 +0,0 @@
set -ex
LOCAL_DIR=$(cd "$(dirname "${BASH_SOURCE[0]}")" && pwd)
ROOT_DIR=$(cd "$LOCAL_DIR"/../.. && pwd)
TEST_DIR="$ROOT_DIR/test"
gtest_reports_dir="${TEST_DIR}/test-reports/cpp"
pytest_reports_dir="${TEST_DIR}/test-reports/python"
# Figure out which Python to use
PYTHON="$(which python)"
if [[ "${BUILD_ENVIRONMENT}" =~ py((2|3)\.?[0-9]?\.?[0-9]?) ]]; then
PYTHON=$(which "python${BASH_REMATCH[1]}")
fi
if [[ "${BUILD_ENVIRONMENT}" == *rocm* ]]; then
# HIP_PLATFORM is auto-detected by hipcc; unset to avoid build errors
unset HIP_PLATFORM
if which sccache > /dev/null; then
# Save sccache logs to file
sccache --stop-server || true
rm -f ~/sccache_error.log || true
SCCACHE_ERROR_LOG=~/sccache_error.log SCCACHE_IDLE_TIMEOUT=0 sccache --start-server
# Report sccache stats for easier debugging
sccache --zero-stats
fi
fi
# /usr/local/caffe2 is where the cpp bits are installed to in cmake-only
# builds. In +python builds the cpp tests are copied to /usr/local/caffe2 so
# that the test code in .ci/test.sh is the same
INSTALL_PREFIX="/usr/local/caffe2"
mkdir -p "$gtest_reports_dir" || true
mkdir -p "$pytest_reports_dir" || true
mkdir -p "$INSTALL_PREFIX" || true

View File

@ -1,172 +0,0 @@
#!/bin/bash
# shellcheck source=./common.sh
source "$(dirname "${BASH_SOURCE[0]}")/common.sh"
if [[ ${BUILD_ENVIRONMENT} == *onnx* ]]; then
pip install click mock tabulate networkx==2.0
pip -q install --user "file:///var/lib/jenkins/workspace/third_party/onnx#egg=onnx"
fi
# Skip tests in environments where they are not built/applicable
if [[ "${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 [[ $BUILD_ENVIRONMENT == *rocm* ]]; then
# Need networkx 2.0 because bellmand_ford was moved in 2.1 . Scikit-image by
# defaults installs the most recent networkx version, so we install this lower
# version explicitly before scikit-image pulls it in as a dependency
pip install networkx==2.0
# click - onnx
pip install --progress-bar off click protobuf tabulate virtualenv mock typing-extensions
fi
# Find where cpp tests and Caffe2 itself are installed
if [[ "$BUILD_ENVIRONMENT" == *cmake* ]]; then
# For cmake only build we install everything into /usr/local
cpp_test_dir="$INSTALL_PREFIX/cpp_test"
ld_library_path="$INSTALL_PREFIX/lib"
else
# For Python builds we install into python
# cd to /usr first so the python import doesn't get confused by any 'caffe2'
# directory in cwd
python_installation="$(dirname $(dirname $(cd /usr && $PYTHON -c 'import os; import caffe2; print(os.path.realpath(caffe2.__file__))')))"
caffe2_pypath="$python_installation/caffe2"
cpp_test_dir="$python_installation/torch/test"
ld_library_path="$python_installation/torch/lib"
fi
################################################################################
# C++ tests #
################################################################################
# Only run cpp tests in the first shard, don't run cpp tests a second time in the second shard
if [[ "${SHARD_NUMBER:-1}" == "1" ]]; then
echo "Running C++ tests.."
for test in $(find "$cpp_test_dir" -executable -type f); do
case "$test" in
# skip tests we know are hanging or bad
*/mkl_utils_test|*/aten/integer_divider_test)
continue
;;
*/scalar_tensor_test|*/basic|*/native_test)
if [[ "$BUILD_ENVIRONMENT" == *rocm* ]]; then
continue
else
LD_LIBRARY_PATH="$ld_library_path" "$test"
fi
;;
*/*_benchmark)
LD_LIBRARY_PATH="$ld_library_path" "$test" --benchmark_color=false
;;
*)
# Currently, we use a mixture of gtest (caffe2) and Catch2 (ATen). While
# planning to migrate to gtest as the common PyTorch c++ test suite, we
# currently do NOT use the xml test reporter, because Catch doesn't
# support multiple reporters
# c.f. https://github.com/catchorg/Catch2/blob/master/docs/release-notes.md#223
# which means that enabling XML output means you lose useful stdout
# output for Jenkins. It's more important to have useful console
# output than it is to have XML output for Jenkins.
# Note: in the future, if we want to use xml test reporter once we switch
# to all gtest, one can simply do:
LD_LIBRARY_PATH="$ld_library_path" \
"$test" --gtest_output=xml:"$gtest_reports_dir/$(basename $test).xml"
;;
esac
done
fi
################################################################################
# Python tests #
################################################################################
if [[ "$BUILD_ENVIRONMENT" == *cmake* ]]; then
exit 0
fi
# If pip is installed as root, we must use sudo.
# CircleCI docker images could install conda as jenkins user, or use the OS's python package.
PIP=$(which pip)
PIP_USER=$(stat --format '%U' $PIP)
CURRENT_USER=$(id -u -n)
if [[ "$PIP_USER" = root && "$CURRENT_USER" != root ]]; then
MAYBE_SUDO=sudo
fi
# Uninstall pre-installed hypothesis and coverage to use an older version as newer
# versions remove the timeout parameter from settings which ideep/conv_transpose_test.py uses
$MAYBE_SUDO pip -q uninstall -y hypothesis
$MAYBE_SUDO pip -q uninstall -y coverage
# "pip install hypothesis==3.44.6" from official server is unreliable on
# CircleCI, so we host a copy on S3 instead
$MAYBE_SUDO pip -q install attrs==18.1.0 -f https://s3.amazonaws.com/ossci-linux/wheels/attrs-18.1.0-py2.py3-none-any.whl
$MAYBE_SUDO pip -q install coverage==4.5.1 -f https://s3.amazonaws.com/ossci-linux/wheels/coverage-4.5.1-cp36-cp36m-macosx_10_12_x86_64.whl
$MAYBE_SUDO pip -q install hypothesis==3.44.6 -f https://s3.amazonaws.com/ossci-linux/wheels/hypothesis-3.44.6-py3-none-any.whl
# Collect additional tests to run (outside caffe2/python)
EXTRA_TESTS=()
# CUDA builds always include NCCL support
if [[ "$BUILD_ENVIRONMENT" == *-cuda* ]] || [[ "$BUILD_ENVIRONMENT" == *-rocm* ]]; then
EXTRA_TESTS+=("$caffe2_pypath/contrib/nccl")
fi
rocm_ignore_test=()
if [[ $BUILD_ENVIRONMENT == *-rocm* ]]; then
# Currently these tests are failing on ROCM platform:
# On ROCm, RCCL (distributed) development isn't complete.
# https://github.com/ROCmSoftwarePlatform/rccl
rocm_ignore_test+=("--ignore $caffe2_pypath/python/data_parallel_model_test.py")
# This test has been flaky in ROCm CI (but note the tests are
# cpu-only so should be unrelated to ROCm)
rocm_ignore_test+=("--ignore $caffe2_pypath/python/operator_test/blobs_queue_db_test.py")
# This test is skipped on Jenkins(compiled without MKL) and otherwise known flaky
rocm_ignore_test+=("--ignore $caffe2_pypath/python/ideep/convfusion_op_test.py")
# This test is skipped on Jenkins(compiled without MKL) and causing segfault on Circle
rocm_ignore_test+=("--ignore $caffe2_pypath/python/ideep/pool_op_test.py")
fi
echo "Running Python tests.."
# locale setting is required by click package
for loc in "en_US.utf8" "C.UTF-8"; do
if locale -a | grep "$loc" >/dev/null 2>&1; then
export LC_ALL="$loc"
export LANG="$loc"
break;
fi
done
# Some Caffe2 tests fail when run using AVX512 ISA, see https://github.com/pytorch/pytorch/issues/66111
export DNNL_MAX_CPU_ISA=AVX2
# Should still run even in the absence of SHARD_NUMBER
if [[ "${SHARD_NUMBER:-1}" == "1" ]]; then
# TODO(sdym@meta.com) remove this when the linked issue resolved.
# py is temporary until https://github.com/Teemu/pytest-sugar/issues/241 is fixed
pip install --user py==1.11.0
pip install --user pytest-sugar
# NB: Warnings are disabled because they make it harder to see what
# the actual erroring test is
"$PYTHON" \
-m pytest \
-x \
-v \
--disable-warnings \
--junit-xml="$pytest_reports_dir/result.xml" \
--ignore "$caffe2_pypath/python/test/executor_test.py" \
--ignore "$caffe2_pypath/python/operator_test/matmul_op_test.py" \
--ignore "$caffe2_pypath/python/operator_test/pack_ops_test.py" \
--ignore "$caffe2_pypath/python/mkl/mkl_sbn_speed_test.py" \
--ignore "$caffe2_pypath/python/trt/test_pt_onnx_trt.py" \
${rocm_ignore_test[@]} \
"$caffe2_pypath/python" \
"${EXTRA_TESTS[@]}"
fi

View File

@ -1,31 +0,0 @@
# Docker images for Jenkins
This directory contains everything needed to build the Docker images
that are used in our CI
The Dockerfiles located in subdirectories are parameterized to
conditionally run build stages depending on build arguments passed to
`docker build`. This lets us use only a few Dockerfiles for many
images. The different configurations are identified by a freeform
string that we call a _build environment_. This string is persisted in
each image as the `BUILD_ENVIRONMENT` environment variable.
See `build.sh` for valid build environments (it's the giant switch).
Docker builds are now defined with `.circleci/cimodel/data/simple/docker_definitions.py`
## Contents
* `build.sh` -- dispatch script to launch all builds
* `common` -- scripts used to execute individual Docker build stages
* `ubuntu-cuda` -- Dockerfile for Ubuntu image with CUDA support for nvidia-docker
## Usage
```bash
# Build a specific image
./build.sh pytorch-linux-bionic-py3.8-gcc9 -t myimage:latest
# Set flags (see build.sh) and build image
sudo bash -c 'PROTOBUF=1 ./build.sh pytorch-linux-bionic-py3.8-gcc9 -t myimage:latest
```

View File

@ -1,392 +0,0 @@
#!/bin/bash
set -ex
image="$1"
shift
if [ -z "${image}" ]; then
echo "Usage: $0 IMAGE"
exit 1
fi
function extract_version_from_image_name() {
eval export $2=$(echo "${image}" | perl -n -e"/$1(\d+(\.\d+)?(\.\d+)?)/ && print \$1")
if [ "x${!2}" = x ]; then
echo "variable '$2' not correctly parsed from image='$image'"
exit 1
fi
}
function extract_all_from_image_name() {
# parts $image into array, splitting on '-'
keep_IFS="$IFS"
IFS="-"
declare -a parts=($image)
IFS="$keep_IFS"
unset keep_IFS
for part in "${parts[@]}"; do
name=$(echo "${part}" | perl -n -e"/([a-zA-Z]+)\d+(\.\d+)?(\.\d+)?/ && print \$1")
vername="${name^^}_VERSION"
# "py" is the odd one out, needs this special case
if [ "x${name}" = xpy ]; then
vername=ANACONDA_PYTHON_VERSION
fi
# skip non-conforming fields such as "pytorch", "linux" or "bionic" without version string
if [ -n "${name}" ]; then
extract_version_from_image_name "${name}" "${vername}"
fi
done
}
# Use the same pre-built XLA test image from PyTorch/XLA
if [[ "$image" == *xla* ]]; then
echo "Using pre-built XLA test image..."
exit 0
fi
if [[ "$image" == *-bionic* ]]; then
UBUNTU_VERSION=18.04
elif [[ "$image" == *-focal* ]]; then
UBUNTU_VERSION=20.04
elif [[ "$image" == *-jammy* ]]; then
UBUNTU_VERSION=22.04
elif [[ "$image" == *ubuntu* ]]; then
extract_version_from_image_name ubuntu UBUNTU_VERSION
elif [[ "$image" == *centos* ]]; then
extract_version_from_image_name centos CENTOS_VERSION
fi
if [ -n "${UBUNTU_VERSION}" ]; then
OS="ubuntu"
elif [ -n "${CENTOS_VERSION}" ]; then
OS="centos"
else
echo "Unable to derive operating system base..."
exit 1
fi
DOCKERFILE="${OS}/Dockerfile"
# When using ubuntu - 22.04, start from Ubuntu docker image, instead of nvidia/cuda docker image.
if [[ "$image" == *cuda* && "$UBUNTU_VERSION" != "22.04" ]]; then
DOCKERFILE="${OS}-cuda/Dockerfile"
elif [[ "$image" == *rocm* ]]; then
DOCKERFILE="${OS}-rocm/Dockerfile"
elif [[ "$image" == *linter* ]]; then
# Use a separate Dockerfile for linter to keep a small image size
DOCKERFILE="linter/Dockerfile"
fi
# CMake 3.18 is needed to support CUDA17 language variant
CMAKE_VERSION=3.18.5
_UCX_COMMIT=31e74cac7bee0ef66bef2af72e7d86d9c282e5ab
_UCC_COMMIT=1c7a7127186e7836f73aafbd7697bbc274a77eee
# It's annoying to rename jobs every time you want to rewrite a
# configuration, so we hardcode everything here rather than do it
# from scratch
case "$image" in
pytorch-linux-bionic-cuda11.6-cudnn8-py3-gcc7)
CUDA_VERSION=11.6.2
CUDNN_VERSION=8
ANACONDA_PYTHON_VERSION=3.10
GCC_VERSION=7
PROTOBUF=yes
DB=yes
VISION=yes
KATEX=yes
UCX_COMMIT=${_UCX_COMMIT}
UCC_COMMIT=${_UCC_COMMIT}
CONDA_CMAKE=yes
;;
pytorch-linux-bionic-cuda11.7-cudnn8-py3-gcc7)
CUDA_VERSION=11.7.0
CUDNN_VERSION=8
ANACONDA_PYTHON_VERSION=3.10
GCC_VERSION=7
PROTOBUF=yes
DB=yes
VISION=yes
KATEX=yes
UCX_COMMIT=${_UCX_COMMIT}
UCC_COMMIT=${_UCC_COMMIT}
CONDA_CMAKE=yes
;;
pytorch-linux-bionic-cuda11.8-cudnn8-py3-gcc7)
CUDA_VERSION=11.8.0
CUDNN_VERSION=8
ANACONDA_PYTHON_VERSION=3.10
GCC_VERSION=7
PROTOBUF=yes
DB=yes
VISION=yes
KATEX=yes
UCX_COMMIT=${_UCX_COMMIT}
UCC_COMMIT=${_UCC_COMMIT}
CONDA_CMAKE=yes
;;
pytorch-linux-focal-py3-clang7-asan)
ANACONDA_PYTHON_VERSION=3.9
CLANG_VERSION=7
PROTOBUF=yes
DB=yes
VISION=yes
CONDA_CMAKE=yes
;;
pytorch-linux-focal-py3-clang10-onnx)
ANACONDA_PYTHON_VERSION=3.8
CLANG_VERSION=10
PROTOBUF=yes
DB=yes
VISION=yes
CONDA_CMAKE=yes
;;
pytorch-linux-focal-py3-clang7-android-ndk-r19c)
ANACONDA_PYTHON_VERSION=3.7
CLANG_VERSION=7
LLVMDEV=yes
PROTOBUF=yes
ANDROID=yes
ANDROID_NDK_VERSION=r19c
GRADLE_VERSION=6.8.3
NINJA_VERSION=1.9.0
;;
pytorch-linux-bionic-py3.8-clang9)
ANACONDA_PYTHON_VERSION=3.8
CLANG_VERSION=9
PROTOBUF=yes
DB=yes
VISION=yes
VULKAN_SDK_VERSION=1.2.162.1
SWIFTSHADER=yes
CONDA_CMAKE=yes
;;
pytorch-linux-bionic-py3.11-clang9)
ANACONDA_PYTHON_VERSION=3.11
CLANG_VERSION=9
PROTOBUF=yes
DB=yes
VISION=yes
VULKAN_SDK_VERSION=1.2.162.1
SWIFTSHADER=yes
CONDA_CMAKE=yes
;;
pytorch-linux-bionic-py3.8-gcc9)
ANACONDA_PYTHON_VERSION=3.8
GCC_VERSION=9
PROTOBUF=yes
DB=yes
VISION=yes
CONDA_CMAKE=yes
;;
pytorch-linux-focal-rocm-n-1-py3)
ANACONDA_PYTHON_VERSION=3.8
GCC_VERSION=9
PROTOBUF=yes
DB=yes
VISION=yes
ROCM_VERSION=5.3
NINJA_VERSION=1.9.0
CONDA_CMAKE=yes
;;
pytorch-linux-focal-rocm-n-py3)
ANACONDA_PYTHON_VERSION=3.8
GCC_VERSION=9
PROTOBUF=yes
DB=yes
VISION=yes
ROCM_VERSION=5.4.2
NINJA_VERSION=1.9.0
CONDA_CMAKE=yes
;;
pytorch-linux-focal-py3.8-gcc7)
ANACONDA_PYTHON_VERSION=3.8
GCC_VERSION=7
PROTOBUF=yes
DB=yes
VISION=yes
KATEX=yes
CONDA_CMAKE=yes
;;
pytorch-linux-jammy-cuda11.6-cudnn8-py3.8-clang12)
ANACONDA_PYTHON_VERSION=3.8
CUDA_VERSION=11.6
CUDNN_VERSION=8
CLANG_VERSION=12
PROTOBUF=yes
DB=yes
VISION=yes
;;
pytorch-linux-jammy-cuda11.7-cudnn8-py3.8-clang12)
ANACONDA_PYTHON_VERSION=3.8
CUDA_VERSION=11.7
CUDNN_VERSION=8
CLANG_VERSION=12
PROTOBUF=yes
DB=yes
VISION=yes
;;
pytorch-linux-jammy-cuda11.8-cudnn8-py3.8-clang12)
ANACONDA_PYTHON_VERSION=3.8
CUDA_VERSION=11.8
CUDNN_VERSION=8
CLANG_VERSION=12
PROTOBUF=yes
DB=yes
VISION=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
ANACONDA_PYTHON_VERSION=3.9
CONDA_CMAKE=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
extract_version_from_image_name py ANACONDA_PYTHON_VERSION
fi
if [[ "$image" == *cuda* ]]; then
extract_version_from_image_name cuda CUDA_VERSION
extract_version_from_image_name cudnn CUDNN_VERSION
fi
if [[ "$image" == *rocm* ]]; then
extract_version_from_image_name rocm ROCM_VERSION
NINJA_VERSION=1.9.0
fi
if [[ "$image" == *centos7* ]]; then
NINJA_VERSION=1.10.2
fi
if [[ "$image" == *gcc* ]]; then
extract_version_from_image_name gcc GCC_VERSION
fi
if [[ "$image" == *clang* ]]; then
extract_version_from_image_name clang CLANG_VERSION
fi
if [[ "$image" == *devtoolset* ]]; then
extract_version_from_image_name devtoolset DEVTOOLSET_VERSION
fi
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
tmp_tag=$(basename "$(mktemp -u)" | tr '[:upper:]' '[:lower:]')
#when using cudnn version 8 install it separately from cuda
if [[ "$image" == *cuda* && ${OS} == "ubuntu" ]]; then
IMAGE_NAME="nvidia/cuda:${CUDA_VERSION}-cudnn${CUDNN_VERSION}-devel-ubuntu${UBUNTU_VERSION}"
if [[ ${CUDNN_VERSION} == 8 ]]; then
IMAGE_NAME="nvidia/cuda:${CUDA_VERSION}-devel-ubuntu${UBUNTU_VERSION}"
fi
fi
# Build image
# TODO: build-arg THRIFT is not turned on for any image, remove it once we confirm
# it's no longer needed.
docker build \
--no-cache \
--progress=plain \
--build-arg "BUILD_ENVIRONMENT=${image}" \
--build-arg "PROTOBUF=${PROTOBUF:-}" \
--build-arg "THRIFT=${THRIFT:-}" \
--build-arg "LLVMDEV=${LLVMDEV:-}" \
--build-arg "DB=${DB:-}" \
--build-arg "VISION=${VISION:-}" \
--build-arg "UBUNTU_VERSION=${UBUNTU_VERSION}" \
--build-arg "CENTOS_VERSION=${CENTOS_VERSION}" \
--build-arg "DEVTOOLSET_VERSION=${DEVTOOLSET_VERSION}" \
--build-arg "GLIBC_VERSION=${GLIBC_VERSION}" \
--build-arg "CLANG_VERSION=${CLANG_VERSION}" \
--build-arg "ANACONDA_PYTHON_VERSION=${ANACONDA_PYTHON_VERSION}" \
--build-arg "GCC_VERSION=${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=${PYTORCH_ROCM_ARCH:-gfx906}" \
--build-arg "IMAGE_NAME=${IMAGE_NAME}" \
--build-arg "UCX_COMMIT=${UCX_COMMIT}" \
--build-arg "UCC_COMMIT=${UCC_COMMIT}" \
--build-arg "CONDA_CMAKE=${CONDA_CMAKE}" \
-f $(dirname ${DOCKERFILE})/Dockerfile \
-t "$tmp_tag" \
"$@" \
.
# NVIDIA dockers for RC releases use tag names like `11.0-cudnn8-devel-ubuntu18.04-rc`,
# for this case we will set UBUNTU_VERSION to `18.04-rc` so that the Dockerfile could
# find the correct image. As a result, here we have to replace the
# "$UBUNTU_VERSION" == "18.04-rc"
# with
# "$UBUNTU_VERSION" == "18.04"
UBUNTU_VERSION=$(echo ${UBUNTU_VERSION} | sed 's/-rc$//')
function drun() {
docker run --rm "$tmp_tag" $*
}
if [[ "$OS" == "ubuntu" ]]; then
if !(drun lsb_release -a 2>&1 | grep -qF Ubuntu); then
echo "OS=ubuntu, but:"
drun lsb_release -a
exit 1
fi
if !(drun lsb_release -a 2>&1 | grep -qF "$UBUNTU_VERSION"); then
echo "UBUNTU_VERSION=$UBUNTU_VERSION, but:"
drun lsb_release -a
exit 1
fi
fi
if [ -n "$ANACONDA_PYTHON_VERSION" ]; then
if !(drun python --version 2>&1 | grep -qF "Python $ANACONDA_PYTHON_VERSION"); then
echo "ANACONDA_PYTHON_VERSION=$ANACONDA_PYTHON_VERSION, but:"
drun python --version
exit 1
fi
fi
if [ -n "$GCC_VERSION" ]; then
if !(drun gcc --version 2>&1 | grep -q " $GCC_VERSION\\W"); then
echo "GCC_VERSION=$GCC_VERSION, but:"
drun gcc --version
exit 1
fi
fi
if [ -n "$CLANG_VERSION" ]; then
if !(drun clang --version 2>&1 | grep -qF "clang version $CLANG_VERSION"); then
echo "CLANG_VERSION=$CLANG_VERSION, but:"
drun clang --version
exit 1
fi
fi
if [ -n "$KATEX" ]; then
if !(drun katex --version); then
echo "KATEX=$KATEX, but:"
drun katex --version
exit 1
fi
fi

View File

@ -1,60 +0,0 @@
#!/bin/bash
set -ex
retry () {
$* || (sleep 1 && $*) || (sleep 2 && $*)
}
# If UPSTREAM_BUILD_ID is set (see trigger job), then we can
# use it to tag this build with the same ID used to tag all other
# base image builds. Also, we can try and pull the previous
# image first, to avoid rebuilding layers that haven't changed.
#until we find a way to reliably reuse previous build, this last_tag is not in use
# last_tag="$(( CIRCLE_BUILD_NUM - 1 ))"
tag="${DOCKER_TAG}"
registry="308535385114.dkr.ecr.us-east-1.amazonaws.com"
image="${registry}/pytorch/${IMAGE_NAME}"
login() {
aws ecr get-authorization-token --region us-east-1 --output text --query 'authorizationData[].authorizationToken' |
base64 -d |
cut -d: -f2 |
docker login -u AWS --password-stdin "$1"
}
# Only run these steps if not on github actions
if [[ -z "${GITHUB_ACTIONS}" ]]; then
# Retry on timeouts (can happen on job stampede).
retry login "${registry}"
# Logout on exit
trap "docker logout ${registry}" EXIT
fi
# Try to pull the previous image (perhaps we can reuse some layers)
# if [ -n "${last_tag}" ]; then
# docker pull "${image}:${last_tag}" || true
# fi
# Build new image
./build.sh ${IMAGE_NAME} -t "${image}:${tag}"
# Only push if `DOCKER_SKIP_PUSH` = false
if [ "${DOCKER_SKIP_PUSH:-true}" = "false" ]; then
# Only push if docker image doesn't exist already.
# ECR image tags are immutable so this will avoid pushing if only just testing if the docker jobs work
# NOTE: The only workflow that should push these images should be the docker-builds.yml workflow
if ! docker manifest inspect "${image}:${tag}" >/dev/null 2>/dev/null; then
docker push "${image}:${tag}"
fi
fi
if [ -z "${DOCKER_SKIP_S3_UPLOAD:-}" ]; then
trap "rm -rf ${IMAGE_NAME}:${tag}.tar" EXIT
docker save -o "${IMAGE_NAME}:${tag}.tar" "${image}:${tag}"
aws s3 cp "${IMAGE_NAME}:${tag}.tar" "s3://ossci-linux-build/pytorch/base/${IMAGE_NAME}:${tag}.tar" --acl public-read
fi

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@ -1,111 +0,0 @@
ARG CENTOS_VERSION
FROM centos:${CENTOS_VERSION}
ARG CENTOS_VERSION
# Set AMD gpu targets to build for
ARG PYTORCH_ROCM_ARCH
ENV PYTORCH_ROCM_ARCH ${PYTORCH_ROCM_ARCH}
# Install required packages to build Caffe2
# Install common dependencies (so that this step can be cached separately)
COPY ./common/install_base.sh install_base.sh
RUN bash ./install_base.sh && rm install_base.sh
# Update CentOS git version
RUN yum -y remove git
RUN yum -y remove git-*
RUN yum -y install https://packages.endpoint.com/rhel/7/os/x86_64/endpoint-repo-1.9-1.x86_64.rpm || \
(yum -y install https://packages.endpointdev.com/rhel/7/os/x86_64/endpoint-repo-1.9-1.x86_64.rpm && \
sed -i "s/packages.endpoint/packages.endpointdev/" /etc/yum.repos.d/endpoint.repo)
RUN yum install -y git
# Install devtoolset
ARG DEVTOOLSET_VERSION
COPY ./common/install_devtoolset.sh install_devtoolset.sh
RUN bash ./install_devtoolset.sh && rm install_devtoolset.sh
ENV BASH_ENV "/etc/profile"
# (optional) Install non-default glibc version
ARG GLIBC_VERSION
COPY ./common/install_glibc.sh install_glibc.sh
RUN if [ -n "${GLIBC_VERSION}" ]; then bash ./install_glibc.sh; fi
RUN rm install_glibc.sh
# Install user
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 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:$PATH
COPY requirements-ci.txt /opt/conda/requirements-ci.txt
COPY ./common/install_conda.sh install_conda.sh
COPY ./common/common_utils.sh common_utils.sh
RUN bash ./install_conda.sh && rm install_conda.sh common_utils.sh /opt/conda/requirements-ci.txt
# (optional) Install protobuf for ONNX
ARG PROTOBUF
COPY ./common/install_protobuf.sh install_protobuf.sh
RUN if [ -n "${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 ${DB}
# (optional) Install vision packages like OpenCV and ffmpeg
ARG VISION
COPY ./common/install_vision.sh install_vision.sh
RUN if [ -n "${VISION}" ]; then bash ./install_vision.sh; fi
RUN rm install_vision.sh
ENV INSTALLED_VISION ${VISION}
# Install rocm
ARG ROCM_VERSION
COPY ./common/install_rocm.sh install_rocm.sh
RUN bash ./install_rocm.sh
RUN rm install_rocm.sh
COPY ./common/install_rocm_magma.sh install_rocm_magma.sh
RUN bash ./install_rocm_magma.sh
RUN rm install_rocm_magma.sh
ENV PATH /opt/rocm/bin:$PATH
ENV PATH /opt/rocm/hcc/bin:$PATH
ENV PATH /opt/rocm/hip/bin:$PATH
ENV PATH /opt/rocm/opencl/bin:$PATH
ENV PATH /opt/rocm/llvm/bin:$PATH
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 "${CMAKE_VERSION}" ]; then bash ./install_cmake.sh; fi
RUN rm install_cmake.sh
# (optional) Install non-default Ninja version
ARG NINJA_VERSION
COPY ./common/install_ninja.sh install_ninja.sh
RUN if [ -n "${NINJA_VERSION}" ]; then bash ./install_ninja.sh; fi
RUN rm install_ninja.sh
# 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
# Include BUILD_ENVIRONMENT environment variable in image
ARG BUILD_ENVIRONMENT
ENV BUILD_ENVIRONMENT ${BUILD_ENVIRONMENT}
USER jenkins
CMD ["bash"]

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@ -1,32 +0,0 @@
#!/bin/bash
# Work around bug where devtoolset replaces sudo and breaks it.
if [ -n "$DEVTOOLSET_VERSION" ]; then
export SUDO=/bin/sudo
else
export SUDO=sudo
fi
as_jenkins() {
# NB: unsetting the environment variables works around a conda bug
# https://github.com/conda/conda/issues/6576
# NB: Pass on PATH and LD_LIBRARY_PATH to sudo invocation
# NB: This must be run from a directory that jenkins has access to,
# works around https://github.com/conda/conda-package-handling/pull/34
$SUDO -H -u jenkins env -u SUDO_UID -u SUDO_GID -u SUDO_COMMAND -u SUDO_USER env "PATH=$PATH" "LD_LIBRARY_PATH=$LD_LIBRARY_PATH" $*
}
conda_install() {
# Ensure that the install command don't upgrade/downgrade Python
# This should be called as
# conda_install pkg1 pkg2 ... [-c channel]
as_jenkins conda install -q -n py_$ANACONDA_PYTHON_VERSION -y python="$ANACONDA_PYTHON_VERSION" $*
}
conda_run() {
as_jenkins conda run -n py_$ANACONDA_PYTHON_VERSION --no-capture-output $*
}
pip_install() {
as_jenkins conda run -n py_$ANACONDA_PYTHON_VERSION pip install --progress-bar off $*
}

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@ -1,109 +0,0 @@
#!/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

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@ -1,169 +0,0 @@
#!/bin/bash
set -ex
install_ubuntu() {
# NVIDIA dockers for RC releases use tag names like `11.0-cudnn8-devel-ubuntu18.04-rc`,
# for this case we will set UBUNTU_VERSION to `18.04-rc` so that the Dockerfile could
# find the correct image. As a result, here we have to check for
# "$UBUNTU_VERSION" == "18.04"*
# instead of
# "$UBUNTU_VERSION" == "18.04"
if [[ "$UBUNTU_VERSION" == "18.04"* ]]; then
cmake3="cmake=3.10*"
maybe_libiomp_dev="libiomp-dev"
elif [[ "$UBUNTU_VERSION" == "20.04"* ]]; then
cmake3="cmake=3.16*"
maybe_libiomp_dev=""
elif [[ "$UBUNTU_VERSION" == "22.04"* ]]; then
cmake3="cmake=3.22*"
maybe_libiomp_dev=""
else
cmake3="cmake=3.5*"
maybe_libiomp_dev="libiomp-dev"
fi
if [[ "$CLANG_VERSION" == 12 ]]; then
maybe_libomp_dev="libomp-12-dev"
elif [[ "$CLANG_VERSION" == 10 ]]; then
maybe_libomp_dev="libomp-10-dev"
else
maybe_libomp_dev=""
fi
# TODO: Remove this once nvidia package repos are back online
# Comment out nvidia repositories to prevent them from getting apt-get updated, see https://github.com/pytorch/pytorch/issues/74968
# shellcheck disable=SC2046
sed -i 's/.*nvidia.*/# &/' $(find /etc/apt/ -type f -name "*.list")
# Install common dependencies
apt-get update
# TODO: Some of these may not be necessary
ccache_deps="asciidoc docbook-xml docbook-xsl xsltproc"
deploy_deps="libffi-dev libbz2-dev libreadline-dev libncurses5-dev libncursesw5-dev libgdbm-dev libsqlite3-dev uuid-dev tk-dev"
numpy_deps="gfortran"
apt-get install -y --no-install-recommends \
$ccache_deps \
$numpy_deps \
${deploy_deps} \
${cmake3} \
apt-transport-https \
autoconf \
automake \
build-essential \
ca-certificates \
curl \
git \
libatlas-base-dev \
libc6-dbg \
${maybe_libiomp_dev} \
libyaml-dev \
libz-dev \
libjpeg-dev \
libasound2-dev \
libsndfile-dev \
${maybe_libomp_dev} \
software-properties-common \
wget \
sudo \
vim \
jq \
libtool \
vim \
unzip \
gdb
# Should resolve issues related to various apt package repository cert issues
# see: https://github.com/pytorch/pytorch/issues/65931
apt-get install -y libgnutls30
# cuda-toolkit does not work with gcc-11.2.0 which is default in Ubunutu 22.04
# see: https://github.com/NVlabs/instant-ngp/issues/119
if [[ "$UBUNTU_VERSION" == "22.04"* ]]; then
apt-get install -y g++-10
update-alternatives --install /usr/bin/gcc gcc /usr/bin/gcc-10 30
update-alternatives --install /usr/bin/g++ g++ /usr/bin/g++-10 30
update-alternatives --install /usr/bin/gcov gcov /usr/bin/gcov-10 30
# https://www.spinics.net/lists/libreoffice/msg07549.html
sudo rm -rf /usr/lib/gcc/x86_64-linux-gnu/11
wget https://github.com/gcc-mirror/gcc/commit/2b2d97fc545635a0f6aa9c9ee3b017394bc494bf.patch -O noexecpt.patch
sudo patch /usr/include/c++/10/bits/range_access.h noexecpt.patch
fi
# Cleanup package manager
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
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 \
$numpy_deps \
autoconf \
automake \
bzip2 \
cmake \
cmake3 \
curl \
gcc \
gcc-c++ \
gflags-devel \
git \
glibc-devel \
glibc-headers \
glog-devel \
hiredis-devel \
libstdc++-devel \
libsndfile-devel \
make \
opencv-devel \
sudo \
wget \
vim \
unzip \
gdb
# Cleanup
yum clean all
rm -rf /var/cache/yum
rm -rf /var/lib/yum/yumdb
rm -rf /var/lib/yum/history
}
# Install base packages depending on the base OS
ID=$(grep -oP '(?<=^ID=).+' /etc/os-release | tr -d '"')
case "$ID" in
ubuntu)
install_ubuntu
;;
centos)
install_centos
;;
*)
echo "Unable to determine OS..."
exit 1
;;
esac
# Install Valgrind separately since the apt-get version is too old.
mkdir valgrind_build && cd valgrind_build
VALGRIND_VERSION=3.20.0
wget https://ossci-linux.s3.amazonaws.com/valgrind-${VALGRIND_VERSION}.tar.bz2
tar -xjf valgrind-${VALGRIND_VERSION}.tar.bz2
cd valgrind-${VALGRIND_VERSION}
./configure --prefix=/usr/local
make -j6
sudo make install
cd ../../
rm -rf valgrind_build
alias valgrind="/usr/local/bin/valgrind"

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@ -1,47 +0,0 @@
#!/bin/bash
set -ex
if [ -n "$CLANG_VERSION" ]; then
if [[ $CLANG_VERSION == 7 && $UBUNTU_VERSION == 16.04 ]]; then
wget -O - https://apt.llvm.org/llvm-snapshot.gpg.key | sudo apt-key add -
sudo apt-add-repository "deb http://apt.llvm.org/xenial/ llvm-toolchain-xenial-7 main"
elif [[ $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 [[ $UBUNTU_VERSION == 22.04 ]]; then
# work around ubuntu apt-get conflicts
sudo apt-get -y -f install
fi
sudo apt-get update
apt-get install -y --no-install-recommends clang-"$CLANG_VERSION"
apt-get install -y --no-install-recommends llvm-"$CLANG_VERSION"
# Install dev version of LLVM.
if [ -n "$LLVMDEV" ]; then
sudo apt-get install -y --no-install-recommends llvm-"$CLANG_VERSION"-dev
fi
# Use update-alternatives to make this version the default
# TODO: Decide if overriding gcc as well is a good idea
# update-alternatives --install /usr/bin/gcc gcc /usr/bin/clang-"$CLANG_VERSION" 50
# update-alternatives --install /usr/bin/g++ g++ /usr/bin/clang++-"$CLANG_VERSION" 50
update-alternatives --install /usr/bin/clang clang /usr/bin/clang-"$CLANG_VERSION" 50
update-alternatives --install /usr/bin/clang++ clang++ /usr/bin/clang++-"$CLANG_VERSION" 50
# clang's packaging is a little messed up (the runtime libs aren't
# added into the linker path), so give it a little help
clang_lib=("/usr/lib/llvm-$CLANG_VERSION/lib/clang/"*"/lib/linux")
echo "$clang_lib" > /etc/ld.so.conf.d/clang.conf
ldconfig
# Cleanup package manager
apt-get autoclean && apt-get clean
rm -rf /var/lib/apt/lists/* /tmp/* /var/tmp/*
fi

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@ -1,31 +0,0 @@
#!/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

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@ -1,98 +0,0 @@
#!/bin/bash
set -ex
# Optionally install conda
if [ -n "$ANACONDA_PYTHON_VERSION" ]; then
BASE_URL="https://repo.anaconda.com/miniconda"
MAJOR_PYTHON_VERSION=$(echo "$ANACONDA_PYTHON_VERSION" | cut -d . -f 1)
case "$MAJOR_PYTHON_VERSION" in
2)
CONDA_FILE="Miniconda2-latest-Linux-x86_64.sh"
;;
3)
CONDA_FILE="Miniconda3-latest-Linux-x86_64.sh"
;;
*)
echo "Unsupported ANACONDA_PYTHON_VERSION: $ANACONDA_PYTHON_VERSION"
exit 1
;;
esac
mkdir -p /opt/conda
chown jenkins:jenkins /opt/conda
source "$(dirname "${BASH_SOURCE[0]}")/common_utils.sh"
pushd /tmp
wget -q "${BASE_URL}/${CONDA_FILE}"
# NB: Manually invoke bash per https://github.com/conda/conda/issues/10431
as_jenkins bash "${CONDA_FILE}" -b -f -p "/opt/conda"
popd
# NB: Don't do this, rely on the rpath to get it right
#echo "/opt/conda/lib" > /etc/ld.so.conf.d/conda-python.conf
#ldconfig
sed -e 's|PATH="\(.*\)"|PATH="/opt/conda/bin:\1"|g' -i /etc/environment
export PATH="/opt/conda/bin:$PATH"
# Ensure we run conda in a directory that jenkins has write access to
pushd /opt/conda
# Prevent conda from updating to 4.14.0, which causes docker build failures
# See https://hud.pytorch.org/pytorch/pytorch/commit/754d7f05b6841e555cea5a4b2c505dd9e0baec1d
# Uncomment the below when resolved to track the latest conda update
# as_jenkins conda update -y -n base conda
# Install correct Python version
as_jenkins conda create -n py_$ANACONDA_PYTHON_VERSION -y python="$ANACONDA_PYTHON_VERSION"
# Install PyTorch conda deps, as per https://github.com/pytorch/pytorch README
CONDA_COMMON_DEPS="astunparse pyyaml mkl=2021.4.0 mkl-include=2021.4.0 setuptools"
if [ "$ANACONDA_PYTHON_VERSION" = "3.11" ]; then
# Install llvm-8 as it is required to compile llvmlite-0.30.0 from source
# TODO: Stop using `-c malfet`
conda_install numpy=1.23.5 ${CONDA_COMMON_DEPS} llvmdev=8.0.0 -c malfet
elif [ "$ANACONDA_PYTHON_VERSION" = "3.10" ]; then
# Install llvm-8 as it is required to compile llvmlite-0.30.0 from source
conda_install numpy=1.21.2 ${CONDA_COMMON_DEPS} llvmdev=8.0.0
elif [ "$ANACONDA_PYTHON_VERSION" = "3.9" ]; then
# Install llvm-8 as it is required to compile llvmlite-0.30.0 from source
conda_install numpy=1.19.2 ${CONDA_COMMON_DEPS} llvmdev=8.0.0
elif [ "$ANACONDA_PYTHON_VERSION" = "3.8" ]; then
# Install llvm-8 as it is required to compile llvmlite-0.30.0 from source
conda_install numpy=1.18.5 ${CONDA_COMMON_DEPS} llvmdev=8.0.0
else
# Install `typing-extensions` for 3.7
conda_install numpy=1.18.5 ${CONDA_COMMON_DEPS} typing-extensions
fi
# Use conda cmake in some cases. Conda cmake will be newer than our supported
# min version (3.5 for xenial and 3.10 for bionic), so we only do it in those
# following builds that we know should use conda. Specifically, Ubuntu bionic
# and focal cannot find conda mkl with stock cmake, so we need a cmake from conda
if [ -n "${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
if [ -n "$CUDA_VERSION" ]; then
conda_install magma-cuda$(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
# Update scikit-learn to a python-3.8 compatible version
if [[ $(python -c "import sys; print(int(sys.version_info >= (3, 8)))") == "1" ]]; then
pip_install -U scikit-learn
else
# Pinned scikit-learn due to https://github.com/scikit-learn/scikit-learn/issues/14485 (affects gcc 5.5 only)
pip_install scikit-learn==0.20.3
fi
popd
fi

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@ -1,27 +0,0 @@
#!/bin/bash
if [[ ${CUDNN_VERSION} == 8 ]]; then
# cuDNN license: https://developer.nvidia.com/cudnn/license_agreement
mkdir tmp_cudnn && cd tmp_cudnn
CUDNN_NAME="cudnn-linux-x86_64-8.3.2.44_cuda11.5-archive"
if [[ ${CUDA_VERSION:0:4} == "11.7" ]]; then
CUDNN_NAME="cudnn-linux-x86_64-8.5.0.96_cuda11-archive"
curl --retry 3 -OLs https://ossci-linux.s3.amazonaws.com/${CUDNN_NAME}.tar.xz
elif [[ ${CUDA_VERSION:0:4} == "11.8" ]]; then
CUDNN_NAME="cudnn-linux-x86_64-8.7.0.84_cuda11-archive"
curl --retry 3 -OLs https://developer.download.nvidia.com/compute/redist/cudnn/v8.7.0/local_installers/11.8/${CUDNN_NAME}.tar.xz
else
curl --retry 3 -OLs https://developer.download.nvidia.com/compute/redist/cudnn/v8.3.2/local_installers/11.5/${CUDNN_NAME}.tar.xz
fi
tar xf ${CUDNN_NAME}.tar.xz
cp -a ${CUDNN_NAME}/include/* /usr/include/
cp -a ${CUDNN_NAME}/include/* /usr/local/cuda/include/
cp -a ${CUDNN_NAME}/include/* /usr/include/x86_64-linux-gnu/
cp -a ${CUDNN_NAME}/lib/* /usr/local/cuda/lib64/
cp -a ${CUDNN_NAME}/lib/* /usr/lib/x86_64-linux-gnu/
cd ..
rm -rf tmp_cudnn
ldconfig
fi

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@ -1,49 +0,0 @@
#!/bin/bash
set -ex
install_ubuntu() {
apt-get update
apt-get install -y --no-install-recommends \
libhiredis-dev \
libleveldb-dev \
liblmdb-dev \
libsnappy-dev
# 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
yum install -y \
hiredis-devel \
leveldb-devel \
lmdb-devel \
snappy-devel
# 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

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@ -1,25 +0,0 @@
#!/bin/bash
set -ex
if [ -n "$KATEX" ]; then
apt-get update
# Ignore error if gpg-agent doesn't exist (for Ubuntu 16.04)
apt-get install -y gpg-agent || :
curl --retry 3 -sL https://deb.nodesource.com/setup_12.x | sudo -E bash -
sudo apt-get install -y nodejs
curl --retry 3 -sS https://dl.yarnpkg.com/debian/pubkey.gpg | sudo apt-key add -
echo "deb https://dl.yarnpkg.com/debian/ stable main" | sudo tee /etc/apt/sources.list.d/yarn.list
apt-get update
apt-get install -y --no-install-recommends yarn
yarn global add katex --prefix /usr/local
sudo apt-get -y install doxygen
apt-get autoclean && apt-get clean
rm -rf /var/lib/apt/lists/* /tmp/* /var/tmp/*
fi

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@ -1,27 +0,0 @@
#!/bin/bash
set -ex
if [ -n "$GCC_VERSION" ]; then
# Need the official toolchain repo to get alternate packages
add-apt-repository ppa:ubuntu-toolchain-r/test
apt-get update
if [[ "$UBUNTU_VERSION" == "16.04" && "${GCC_VERSION:0:1}" == "5" ]]; then
apt-get install -y g++-5=5.4.0-6ubuntu1~16.04.12
update-alternatives --install /usr/bin/gcc gcc /usr/bin/gcc-5 50
update-alternatives --install /usr/bin/g++ g++ /usr/bin/g++-5 50
update-alternatives --install /usr/bin/gcov gcov /usr/bin/gcov-5 50
else
apt-get install -y g++-$GCC_VERSION
update-alternatives --install /usr/bin/gcc gcc /usr/bin/gcc-"$GCC_VERSION" 50
update-alternatives --install /usr/bin/g++ g++ /usr/bin/g++-"$GCC_VERSION" 50
update-alternatives --install /usr/bin/gcov gcov /usr/bin/gcov-"$GCC_VERSION" 50
fi
# Cleanup package manager
apt-get autoclean && apt-get clean
rm -rf /var/lib/apt/lists/* /tmp/* /var/tmp/*
fi

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@ -1,29 +0,0 @@
#!/bin/bash
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
fi
# Do shallow clone of PyTorch so that we can init lintrunner in Docker build context
git clone https://github.com/pytorch/pytorch.git --depth 1
chown -R jenkins pytorch
pushd pytorch
# Install all linter dependencies
pip_install -r requirements.txt
conda_run lintrunner init
# Cache .lintbin directory as part of the Docker image
cp -r .lintbin /tmp
popd
# Node dependencies required by toc linter job
npm install -g markdown-toc
# Cleaning up
rm -rf pytorch

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@ -1,10 +0,0 @@
#!/bin/bash
sudo apt-get update
# also install ssh to avoid error of:
# --------------------------------------------------------------------------
# The value of the MCA parameter "plm_rsh_agent" was set to a path
# that could not be found:
# plm_rsh_agent: ssh : rsh
sudo apt-get install -y ssh
sudo apt-get install -y --allow-downgrades --allow-change-held-packages openmpi-bin libopenmpi-dev

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@ -1,16 +0,0 @@
#!/bin/bash
set -ex
OPENSSL=openssl-1.1.1k
wget -q -O "${OPENSSL}.tar.gz" "https://ossci-linux.s3.amazonaws.com/${OPENSSL}.tar.gz"
tar xf "${OPENSSL}.tar.gz"
cd "${OPENSSL}"
./config --prefix=/opt/openssl -d '-Wl,--enable-new-dtags,-rpath,$(LIBRPATH)'
# NOTE: openssl install errors out when built with the -j option
make -j6; make install_sw
# Link the ssl libraries to the /usr/lib folder.
sudo ln -s /opt/openssl/lib/lib* /usr/lib
cd ..
rm -rf "${OPENSSL}"

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@ -1,56 +0,0 @@
#!/bin/bash
set -ex
# This function installs protobuf 3.17
install_protobuf_317() {
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 -C "$pb_dir" --strip-components 1 -f protobuf-all-3.17.3.tar.gz
# -j6 to balance memory usage and speed.
# naked `-j` seems to use too much memory.
pushd "$pb_dir" && ./configure && make -j6 && make -j6 check && sudo make -j6 install && sudo ldconfig
popd
rm -rf $pb_dir
}
install_ubuntu() {
# Ubuntu 14.04 has cmake 2.8.12 as the default option, so we will
# install cmake3 here and use cmake3.
apt-get update
if [[ "$UBUNTU_VERSION" == 14.04 ]]; then
apt-get install -y --no-install-recommends cmake3
fi
# Cleanup
apt-get autoclean && apt-get clean
rm -rf /var/lib/apt/lists/* /tmp/* /var/tmp/*
install_protobuf_317
}
install_centos() {
install_protobuf_317
}
# 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

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@ -1,146 +0,0 @@
#!/bin/bash
set -ex
ver() {
printf "%3d%03d%03d%03d" $(echo "$1" | tr '.' ' ');
}
# Map ROCm version to AMDGPU version
declare -A AMDGPU_VERSIONS=( ["5.0"]="21.50" ["5.1.1"]="22.10.1" ["5.2"]="22.20" )
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
fi
apt-get install -y kmod
apt-get install -y wget
# Need the libc++1 and libc++abi1 libraries to allow torch._C to load at runtime
apt-get install -y libc++1
apt-get install -y libc++abi1
if [[ $(ver $ROCM_VERSION) -ge $(ver 4.5) ]]; then
# Add amdgpu repository
UBUNTU_VERSION_NAME=`cat /etc/os-release | grep UBUNTU_CODENAME | awk -F= '{print $2}'`
local amdgpu_baseurl
if [[ $(ver $ROCM_VERSION) -ge $(ver 5.3) ]]; then
amdgpu_baseurl="https://repo.radeon.com/amdgpu/${ROCM_VERSION}/ubuntu"
else
amdgpu_baseurl="https://repo.radeon.com/amdgpu/${AMDGPU_VERSIONS[$ROCM_VERSION]}/ubuntu"
fi
echo "deb [arch=amd64] ${amdgpu_baseurl} ${UBUNTU_VERSION_NAME} main" > /etc/apt/sources.list.d/amdgpu.list
fi
ROCM_REPO="ubuntu"
if [[ $(ver $ROCM_VERSION) -lt $(ver 4.2) ]]; then
ROCM_REPO="xenial"
fi
if [[ $(ver $ROCM_VERSION) -ge $(ver 5.3) ]]; then
ROCM_REPO="${UBUNTU_VERSION_NAME}"
fi
# Add rocm repository
wget -qO - http://repo.radeon.com/rocm/rocm.gpg.key | apt-key add -
local rocm_baseurl="http://repo.radeon.com/rocm/apt/${ROCM_VERSION}"
echo "deb [arch=amd64] ${rocm_baseurl} ${ROCM_REPO} main" > /etc/apt/sources.list.d/rocm.list
apt-get update --allow-insecure-repositories
DEBIAN_FRONTEND=noninteractive apt-get install -y --allow-unauthenticated \
rocm-dev \
rocm-utils \
rocm-libs \
rccl \
rocprofiler-dev \
roctracer-dev
# precompiled miopen kernels added in ROCm 3.5; search for all unversioned packages
# if search fails it will abort this script; use true to avoid case where search fails
MIOPENKERNELS=$(apt-cache search --names-only miopenkernels | awk '{print $1}' | grep -F -v . || true)
if [[ "x${MIOPENKERNELS}" = x ]]; then
echo "miopenkernels package not available"
else
DEBIAN_FRONTEND=noninteractive apt-get install -y --allow-unauthenticated ${MIOPENKERNELS}
fi
# Cleanup
apt-get autoclean && apt-get clean
rm -rf /var/lib/apt/lists/* /tmp/* /var/tmp/*
}
install_centos() {
yum update -y
yum install -y kmod
yum install -y wget
yum install -y openblas-devel
yum install -y epel-release
yum install -y dkms kernel-headers-`uname -r` kernel-devel-`uname -r`
if [[ $(ver $ROCM_VERSION) -ge $(ver 4.5) ]]; then
# Add amdgpu repository
local amdgpu_baseurl
if [[ $OS_VERSION == 9 ]]; then
amdgpu_baseurl="https://repo.radeon.com/amdgpu/${AMDGPU_VERSIONS[$ROCM_VERSION]}/rhel/9.0/main/x86_64"
else
if [[ $(ver $ROCM_VERSION) -ge $(ver 5.3) ]]; then
amdgpu_baseurl="https://repo.radeon.com/amdgpu/${ROCM_VERSION}/rhel/7.9/main/x86_64"
else
amdgpu_baseurl="https://repo.radeon.com/amdgpu/${AMDGPU_VERSIONS[$ROCM_VERSION]}/rhel/7.9/main/x86_64"
fi
fi
echo "[AMDGPU]" > /etc/yum.repos.d/amdgpu.repo
echo "name=AMDGPU" >> /etc/yum.repos.d/amdgpu.repo
echo "baseurl=${amdgpu_baseurl}" >> /etc/yum.repos.d/amdgpu.repo
echo "enabled=1" >> /etc/yum.repos.d/amdgpu.repo
echo "gpgcheck=1" >> /etc/yum.repos.d/amdgpu.repo
echo "gpgkey=http://repo.radeon.com/rocm/rocm.gpg.key" >> /etc/yum.repos.d/amdgpu.repo
fi
local rocm_baseurl="http://repo.radeon.com/rocm/yum/${ROCM_VERSION}"
echo "[ROCm]" > /etc/yum.repos.d/rocm.repo
echo "name=ROCm" >> /etc/yum.repos.d/rocm.repo
echo "baseurl=${rocm_baseurl}" >> /etc/yum.repos.d/rocm.repo
echo "enabled=1" >> /etc/yum.repos.d/rocm.repo
echo "gpgcheck=1" >> /etc/yum.repos.d/rocm.repo
echo "gpgkey=http://repo.radeon.com/rocm/rocm.gpg.key" >> /etc/yum.repos.d/rocm.repo
yum update -y
yum install -y \
rocm-dev \
rocm-utils \
rocm-libs \
rccl \
rocprofiler-dev \
roctracer-dev
# Cleanup
yum clean all
rm -rf /var/cache/yum
rm -rf /var/lib/yum/yumdb
rm -rf /var/lib/yum/history
}
# Install Python packages depending on the base OS
ID=$(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

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@ -1,29 +0,0 @@
#!/bin/bash
set -ex
# "install" hipMAGMA into /opt/rocm/magma by copying after build
git clone https://bitbucket.org/icl/magma.git
pushd magma
# Fixes memory leaks of magma found while executing linalg UTs
git checkout 5959b8783e45f1809812ed96ae762f38ee701972
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
amdgpu_targets=`rocm_agent_enumerator | grep -v gfx000 | sort -u | xargs`
fi
for arch in $amdgpu_targets; do
echo "DEVCCFLAGS += --amdgpu-target=$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
mv magma /opt/rocm

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@ -1,48 +0,0 @@
#!/bin/bash
set -ex
if [[ -d "/usr/local/cuda/" ]]; then
with_cuda=/usr/local/cuda/
else
with_cuda=no
fi
function install_ucx() {
set -ex
git clone --recursive https://github.com/openucx/ucx.git
pushd ucx
git checkout ${UCX_COMMIT}
git submodule update --init --recursive
./autogen.sh
./configure --prefix=$UCX_HOME \
--enable-mt \
--with-cuda=$with_cuda \
--enable-profiling \
--enable-stats
time make -j
sudo make install
popd
rm -rf ucx
}
function install_ucc() {
set -ex
git clone --recursive https://github.com/openucx/ucc.git
pushd ucc
git checkout ${UCC_COMMIT}
git submodule update --init --recursive
./autogen.sh
./configure --prefix=$UCC_HOME --with-ucx=$UCX_HOME --with-cuda=$with_cuda
time make -j
sudo make install
popd
rm -rf ucc
}
install_ucx
install_ucc

View File

@ -1,33 +0,0 @@
#!/bin/bash
set -ex
# 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
echo "jenkins:x:1000:" >> /etc/group
# Needed on focal or newer
echo "jenkins:*:19110:0:99999:7:::" >>/etc/shadow
# Create $HOME
mkdir -p /var/lib/jenkins
chown jenkins:jenkins /var/lib/jenkins
mkdir -p /var/lib/jenkins/.ccache
chown jenkins:jenkins /var/lib/jenkins/.ccache
# Allow writing to /usr/local (for make install)
chown jenkins:jenkins /usr/local
# Allow sudo
# TODO: Maybe we shouldn't
echo 'jenkins ALL=(ALL) NOPASSWD:ALL' > /etc/sudoers.d/jenkins
# Work around bug where devtoolset replaces sudo and breaks it.
if [ -n "$DEVTOOLSET_VERSION" ]; then
SUDO=/bin/sudo
else
SUDO=sudo
fi
# Test that sudo works
$SUDO -u jenkins $SUDO -v

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@ -1,45 +0,0 @@
#!/bin/bash
set -ex
install_ubuntu() {
apt-get update
apt-get install -y --no-install-recommends \
libopencv-dev \
libavcodec-dev
# 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
yum install -y \
opencv-devel \
ffmpeg-devel
# 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

@ -1,24 +0,0 @@
#!/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

@ -1,34 +0,0 @@
ARG UBUNTU_VERSION
FROM ubuntu:${UBUNTU_VERSION}
ARG UBUNTU_VERSION
ENV DEBIAN_FRONTEND noninteractive
# Install common dependencies (so that this step can be cached separately)
COPY ./common/install_base.sh install_base.sh
RUN bash ./install_base.sh && rm install_base.sh
# Install user
COPY ./common/install_user.sh install_user.sh
RUN bash ./install_user.sh && rm install_user.sh
# Install conda and other packages (e.g., numpy, pytest)
ARG ANACONDA_PYTHON_VERSION
ARG CONDA_CMAKE
ENV ANACONDA_PYTHON_VERSION=$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 common_utils.sh
USER jenkins
CMD ["bash"]

View File

@ -1,260 +0,0 @@
# Python dependencies required for unit tests
#awscli==1.6 #this breaks some platforms
#Description: AWS command line interface
#Pinned versions: 1.6
#test that import:
boto3==1.19.12
#Description: AWS SDK for python
#Pinned versions: 1.19.12, 1.16.34
#test that import:
click
#Description: Command Line Interface Creation Kit
#Pinned versions:
#test that import:
coremltools==5.0b5
#Description: Apple framework for ML integration
#Pinned versions: 5.0b5
#test that import:
#dataclasses #this breaks some platforms
#Description: Provides decorators for auto adding special methods to user classes
#Pinned versions:
#test that import:
expecttest==0.1.3
#Description: method for writing tests where test framework auto populates
# the expected output based on previous runs
#Pinned versions: 0.1.3
#test that import:
flatbuffers==2.0
#Description: cross platform serialization library
#Pinned versions: 2.0
#test that import:
hypothesis==5.35.1
# Pin hypothesis to avoid flakiness: https://github.com/pytorch/pytorch/issues/31136
#Description: advanced library for generating parametrized tests
#Pinned versions: 3.44.6, 4.53.2
#test that import: test_xnnpack_integration.py, test_pruning_op.py, test_nn.py
junitparser==2.1.1
#Description: unitparser handles JUnit/xUnit Result XML files
#Pinned versions: 2.1.1
#test that import:
librosa>=0.6.2 ; python_version < "3.11"
#Description: A python package for music and audio analysis
#Pinned versions: >=0.6.2
#test that import: test_spectral_ops.py
#mkl #this breaks linux-bionic-rocm4.5-py3.7
#Description: Intel oneAPI Math Kernel Library
#Pinned versions:
#test that import: test_profiler.py, test_public_bindings.py, test_testing.py,
#test_nn.py, test_mkldnn.py, test_jit.py, test_fx_experimental.py,
#test_autograd.py
#mkl-devel
# see mkl
#mock # breaks ci/circleci: docker-pytorch-linux-xenial-py3-clang5-android-ndk-r19c
#Description: A testing library that allows you to replace parts of your
#system under test with mock objects
#Pinned versions:
#test that import: test_module_init.py, test_modules.py, test_nn.py,
#test_testing.py
#MonkeyType # breaks pytorch-xla-linux-bionic-py3.7-clang8
#Description: collects runtime types of function arguments and return
#values, and can automatically generate stub files
#Pinned versions:
#test that import:
mypy==0.960
# Pin MyPy version because new errors are likely to appear with each release
#Description: linter
#Pinned versions: 0.960
#test that import: test_typing.py, test_type_hints.py
networkx==2.6.3
#Description: creation, manipulation, and study of
#the structure, dynamics, and functions of complex networks
#Pinned versions: 2.6.3 (latest version that works with Python 3.7+)
#test that import: functorch
#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==0.54.1 ; 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
#test that import: test_numba_integration.py
#For numba issue see https://github.com/pytorch/pytorch/issues/51511
#numpy
#Description: Provides N-dimensional arrays and linear algebra
#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,
#test_spectral_ops.py, test_sort_and_select.py, test_shape_ops.py,
#test_segment_reductions.py, test_reductions.py, test_pruning_op.py,
#test_overrides.py, test_numpy_interop.py, test_numba_integration.py
#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
#onnxruntime
#Description: scoring engine for Open Neural Network Exchange (ONNX) models
#Pinned versions: 1.9.0
#test that import:
opt-einsum==3.3
#Description: Python library to optimize tensor contraction order, used in einsum
#Pinned versions: 3.3
#test that import: test_linalg.py
#pillow
#Description: Python Imaging Library fork
#Pinned versions:
#test that import:
protobuf==3.20.2
#Description: Googles data interchange format
#Pinned versions: 3.20.1
#test that import: test_tensorboard.py
psutil
#Description: information on running processes and system utilization
#Pinned versions:
#test that import: test_profiler.py, test_openmp.py, test_dataloader.py
pytest
#Description: testing framework
#Pinned versions:
#test that import: test_typing.py, test_cpp_extensions_aot.py, run_test.py
pytest-xdist
#Description: plugin for running pytest in parallel
#Pinned versions:
#test that import:
pytest-shard
#Description: plugin spliting up tests in pytest
#Pinned versions:
#test that import:
pytest-flakefinder==1.1.0
#Description: plugin for rerunning tests a fixed number of times in pytest
#Pinned versions: 1.1.0
#test that import:
pytest-rerunfailures
#Description: plugin for rerunning failure tests in pytest
#Pinned versions:
#test that import:
#pytest-benchmark
#Description: fixture for benchmarking code
#Pinned versions: 3.2.3
#test that import:
#pytest-sugar
#Description: shows failures and errors instantly
#Pinned versions:
#test that import:
xdoctest==1.1.0
#Description: runs doctests in pytest
#Pinned versions: 1.1.0
#test that import:
pygments==2.12.0
#Description: support doctest highlighting
#Pinned versions: 2.12.0
#test that import: the doctests
#PyYAML
#Description: data serialization format
#Pinned versions:
#test that import:
#requests
#Description: HTTP library
#Pinned versions:
#test that import: test_type_promotion.py
#rich
#Description: rich text and beautiful formatting in the terminal
#Pinned versions: 10.9.0
#test that import:
scikit-image
#Description: image processing routines
#Pinned versions:
#test that import: test_nn.py
#scikit-learn
#Description: machine learning package
#Pinned versions: 0.20.3
#test that import:
scipy==1.6.3 ; python_version < "3.10"
scipy==1.8.1 ; python_version == "3.10"
scipy==1.9.3 ; python_version == "3.11"
# Pin SciPy because of failing distribution tests (see #60347)
#Description: scientific python
#Pinned versions: 1.6.3
#test that import: test_unary_ufuncs.py, test_torch.py,test_tensor_creation_ops.py
#test_spectral_ops.py, test_sparse_csr.py, test_reductions.py,test_nn.py
#test_linalg.py, test_binary_ufuncs.py
#tabulate
#Description: Pretty-print tabular data
#Pinned versions:
#test that import:
tb-nightly
#Description: TensorBoard
#Pinned versions:
#test that import:
#typing-extensions
#Description: type hints for python
#Pinned versions:
#test that import:
#virtualenv
#Description: virtual environment for python
#Pinned versions:
#test that import:
unittest-xml-reporting<=3.2.0,>=2.0.0
#Description: saves unit test results to xml
#Pinned versions:
#test that import:
lintrunner==0.9.2
#Description: all about linters
#Pinned versions: 0.9.2
#test that import:
rockset==1.0.3
#Description: queries Rockset
#Pinned versions: 1.0.3
#test that import:
ghstack==0.7.1
#Description: ghstack tool
#Pinned versions: 0.7.1
#test that import:

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@ -1,132 +0,0 @@
ARG UBUNTU_VERSION
ARG CUDA_VERSION
ARG IMAGE_NAME
FROM ${IMAGE_NAME}
ARG UBUNTU_VERSION
ARG CUDA_VERSION
ENV DEBIAN_FRONTEND noninteractive
# Install common dependencies (so that this step can be cached separately)
COPY ./common/install_base.sh install_base.sh
RUN bash ./install_base.sh && rm install_base.sh
# Install user
COPY ./common/install_user.sh install_user.sh
RUN bash ./install_user.sh && rm install_user.sh
# Install katex
ARG KATEX
COPY ./common/install_docs_reqs.sh install_docs_reqs.sh
RUN bash ./install_docs_reqs.sh && rm install_docs_reqs.sh
# Install conda and other packages (e.g., numpy, pytest)
ARG ANACONDA_PYTHON_VERSION
ENV ANACONDA_PYTHON_VERSION=$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
RUN bash ./install_conda.sh && rm install_conda.sh common_utils.sh /opt/conda/requirements-ci.txt
# Install gcc
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 ${DB}
# (optional) Install vision packages like OpenCV and ffmpeg
ARG VISION
COPY ./common/install_vision.sh install_vision.sh
RUN if [ -n "${VISION}" ]; then bash ./install_vision.sh; fi
RUN rm install_vision.sh
ENV INSTALLED_VISION ${VISION}
# (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 "${UCC_COMMIT}" ]; then bash ./install_ucc.sh; fi
RUN rm install_ucc.sh
COPY ./common/install_openssl.sh install_openssl.sh
ENV OPENSSL_ROOT_DIR /opt/openssl
RUN bash ./install_openssl.sh
ENV OPENSSL_DIR /opt/openssl
# (optional) Install non-default CMake version
ARG CMAKE_VERSION
COPY ./common/install_cmake.sh install_cmake.sh
RUN if [ -n "${CMAKE_VERSION}" ]; then bash ./install_cmake.sh; fi
RUN rm install_cmake.sh
# 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:$PATH
# See https://github.com/pytorch/pytorch/issues/82174
# TODO(sdym@fb.com):
# check if this is needed after full off Xenial migration
ENV CARGO_NET_GIT_FETCH_WITH_CLI true
RUN bash ./install_cache.sh && rm install_cache.sh
ENV CMAKE_CUDA_COMPILER_LAUNCHER=/opt/cache/bin/sccache
# Add jni.h for java host build
COPY ./common/install_jni.sh install_jni.sh
COPY ./java/jni.h jni.h
RUN bash ./install_jni.sh && rm install_jni.sh
# Install Open MPI for CUDA
COPY ./common/install_openmpi.sh install_openmpi.sh
RUN if [ -n "${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 ${BUILD_ENVIRONMENT}
# AWS specific CUDA build guidance
ENV TORCH_CUDA_ARCH_LIST Maxwell
ENV TORCH_NVCC_FLAGS "-Xfatbin -compress-all"
ENV CUDA_PATH /usr/local/cuda
# Install LLVM dev version (Defined in the pytorch/builder github repository)
COPY --from=pytorch/llvm:9.0.1 /opt/llvm /opt/llvm
# Install CUDNN
ARG CUDNN_VERSION
ARG CUDA_VERSION
COPY ./common/install_cudnn.sh install_cudnn.sh
RUN if [ "${CUDNN_VERSION}" -eq 8 ]; then bash install_cudnn.sh; fi
RUN rm install_cudnn.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
USER jenkins
CMD ["bash"]

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@ -1,102 +0,0 @@
ARG UBUNTU_VERSION
FROM ubuntu:${UBUNTU_VERSION}
ARG UBUNTU_VERSION
ENV DEBIAN_FRONTEND noninteractive
# Set AMD gpu targets to build for
ARG PYTORCH_ROCM_ARCH
ENV PYTORCH_ROCM_ARCH ${PYTORCH_ROCM_ARCH}
# Install common dependencies (so that this step can be cached separately)
COPY ./common/install_base.sh install_base.sh
RUN bash ./install_base.sh && rm install_base.sh
# Install clang
ARG LLVMDEV
ARG CLANG_VERSION
COPY ./common/install_clang.sh install_clang.sh
RUN bash ./install_clang.sh && rm install_clang.sh
# Install user
COPY ./common/install_user.sh install_user.sh
RUN bash ./install_user.sh && rm install_user.sh
# Install conda and other packages (e.g., numpy, pytest)
ARG ANACONDA_PYTHON_VERSION
ARG CONDA_CMAKE
ENV ANACONDA_PYTHON_VERSION=$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
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 gcc
ARG GCC_VERSION
COPY ./common/install_gcc.sh install_gcc.sh
RUN bash ./install_gcc.sh && rm install_gcc.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 ${DB}
# (optional) Install vision packages like OpenCV and ffmpeg
ARG VISION
COPY ./common/install_vision.sh install_vision.sh
RUN if [ -n "${VISION}" ]; then bash ./install_vision.sh; fi
RUN rm install_vision.sh
ENV INSTALLED_VISION ${VISION}
# Install rocm
ARG ROCM_VERSION
COPY ./common/install_rocm.sh install_rocm.sh
RUN bash ./install_rocm.sh
RUN rm install_rocm.sh
COPY ./common/install_rocm_magma.sh install_rocm_magma.sh
RUN bash ./install_rocm_magma.sh
RUN rm install_rocm_magma.sh
ENV PATH /opt/rocm/bin:$PATH
ENV PATH /opt/rocm/hcc/bin:$PATH
ENV PATH /opt/rocm/hip/bin:$PATH
ENV PATH /opt/rocm/opencl/bin:$PATH
ENV PATH /opt/rocm/llvm/bin:$PATH
ENV MAGMA_HOME /opt/rocm/magma
ENV LANG C.UTF-8
ENV LC_ALL C.UTF-8
# (optional) Install non-default CMake version
ARG CMAKE_VERSION
COPY ./common/install_cmake.sh install_cmake.sh
RUN if [ -n "${CMAKE_VERSION}" ]; then bash ./install_cmake.sh; fi
RUN rm install_cmake.sh
# (optional) Install non-default Ninja version
ARG NINJA_VERSION
COPY ./common/install_ninja.sh install_ninja.sh
RUN if [ -n "${NINJA_VERSION}" ]; then bash ./install_ninja.sh; fi
RUN rm install_ninja.sh
# 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
# Include BUILD_ENVIRONMENT environment variable in image
ARG BUILD_ENVIRONMENT
ENV BUILD_ENVIRONMENT ${BUILD_ENVIRONMENT}
USER jenkins
CMD ["bash"]

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@ -1,165 +0,0 @@
ARG UBUNTU_VERSION
FROM ubuntu:${UBUNTU_VERSION}
ARG UBUNTU_VERSION
ENV DEBIAN_FRONTEND noninteractive
ARG CLANG_VERSION
# Install common dependencies (so that this step can be cached separately)
COPY ./common/install_base.sh install_base.sh
RUN bash ./install_base.sh && rm install_base.sh
# Install clang
ARG LLVMDEV
COPY ./common/install_clang.sh install_clang.sh
RUN bash ./install_clang.sh && rm install_clang.sh
# (optional) Install thrift.
ARG THRIFT
COPY ./common/install_thrift.sh install_thrift.sh
RUN if [ -n "${THRIFT}" ]; then bash ./install_thrift.sh; fi
RUN rm install_thrift.sh
ENV INSTALLED_THRIFT ${THRIFT}
# Install user
COPY ./common/install_user.sh install_user.sh
RUN bash ./install_user.sh && rm install_user.sh
# Install katex
ARG KATEX
COPY ./common/install_docs_reqs.sh install_docs_reqs.sh
RUN bash ./install_docs_reqs.sh && rm install_docs_reqs.sh
# Install conda and other packages (e.g., numpy, pytest)
ARG ANACONDA_PYTHON_VERSION
ARG CONDA_CMAKE
ENV ANACONDA_PYTHON_VERSION=$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
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 gcc
ARG GCC_VERSION
COPY ./common/install_gcc.sh install_gcc.sh
RUN bash ./install_gcc.sh && rm install_gcc.sh
# Install lcov for C++ code coverage
COPY ./common/install_lcov.sh install_lcov.sh
RUN bash ./install_lcov.sh && rm install_lcov.sh
# Install cuda and cudnn
ARG CUDA_VERSION
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
# (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 "${UCC_COMMIT}" ]; then bash ./install_ucc.sh; fi
RUN rm install_ucc.sh
# (optional) Install protobuf for ONNX
ARG PROTOBUF
COPY ./common/install_protobuf.sh install_protobuf.sh
RUN if [ -n "${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 ${DB}
# (optional) Install vision packages like OpenCV and ffmpeg
ARG VISION
COPY ./common/install_vision.sh install_vision.sh
RUN if [ -n "${VISION}" ]; then bash ./install_vision.sh; fi
RUN rm install_vision.sh
ENV INSTALLED_VISION ${VISION}
# (optional) Install Android NDK
ARG ANDROID
ARG ANDROID_NDK
ARG GRADLE_VERSION
COPY ./common/install_android.sh install_android.sh
COPY ./android/AndroidManifest.xml AndroidManifest.xml
COPY ./android/build.gradle build.gradle
RUN if [ -n "${ANDROID}" ]; then bash ./install_android.sh; fi
RUN rm install_android.sh
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
RUN if [ -n "${NINJA_VERSION}" ]; then bash ./install_ninja.sh; fi
RUN rm install_ninja.sh
COPY ./common/install_openssl.sh install_openssl.sh
RUN bash ./install_openssl.sh
ENV OPENSSL_ROOT_DIR /opt/openssl
ENV OPENSSL_DIR /opt/openssl
RUN rm install_openssl.sh
# Install ccache/sccache (do this last, so we get priority in PATH)
COPY ./common/install_cache.sh install_cache.sh
ENV PATH /opt/cache/bin:$PATH
RUN bash ./install_cache.sh && rm install_cache.sh
# 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
# Install Open MPI for CUDA
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
# AWS specific CUDA build guidance
ENV TORCH_CUDA_ARCH_LIST Maxwell
ENV TORCH_NVCC_FLAGS "-Xfatbin -compress-all"
ENV CUDA_PATH /usr/local/cuda
USER jenkins
CMD ["bash"]

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@ -1,14 +0,0 @@
# Jenkins
The scripts in this directory are the entrypoint for testing ONNX exporter.
The environment variable `BUILD_ENVIRONMENT` is expected to be set to
the build environment you intend to test. It is a hint for the build
and test scripts to configure Caffe2 a certain way and include/exclude
tests. Docker images, they equal the name of the image itself. For
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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@ -1,19 +0,0 @@
set -ex
LOCAL_DIR=$(cd "$(dirname "${BASH_SOURCE[0]}")" && pwd)
ROOT_DIR=$(cd "$LOCAL_DIR"/../.. && pwd)
TEST_DIR="$ROOT_DIR/test"
pytest_reports_dir="${TEST_DIR}/test-reports/python"
# Figure out which Python to use
PYTHON="$(which python)"
if [[ "${BUILD_ENVIRONMENT}" =~ py((2|3)\.?[0-9]?\.?[0-9]?) ]]; then
PYTHON=$(which "python${BASH_REMATCH[1]}")
fi
if [[ "${BUILD_ENVIRONMENT}" == *rocm* ]]; then
# HIP_PLATFORM is auto-detected by hipcc; unset to avoid build errors
unset HIP_PLATFORM
fi
mkdir -p "$pytest_reports_dir" || true

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@ -1,74 +0,0 @@
#!/bin/bash
# shellcheck source=./common.sh
source "$(dirname "${BASH_SOURCE[0]}")/common.sh"
if [[ ${BUILD_ENVIRONMENT} == *onnx* ]]; then
pip install click mock tabulate networkx==2.0
pip -q install --user "file:///var/lib/jenkins/workspace/third_party/onnx#egg=onnx"
fi
# Skip tests in environments where they are not built/applicable
if [[ "${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 [[ $BUILD_ENVIRONMENT == *rocm* ]]; then
# Need networkx 2.0 because bellmand_ford was moved in 2.1 . Scikit-image by
# defaults installs the most recent networkx version, so we install this lower
# version explicitly before scikit-image pulls it in as a dependency
pip install networkx==2.0
# click - onnx
pip install --progress-bar off click protobuf tabulate virtualenv mock typing-extensions
fi
################################################################################
# Python tests #
################################################################################
if [[ "$BUILD_ENVIRONMENT" == *cmake* ]]; then
exit 0
fi
# If pip is installed as root, we must use sudo.
# CircleCI docker images could install conda as jenkins user, or use the OS's python package.
PIP=$(which pip)
PIP_USER=$(stat --format '%U' $PIP)
CURRENT_USER=$(id -u -n)
if [[ "$PIP_USER" = root && "$CURRENT_USER" != root ]]; then
MAYBE_SUDO=sudo
fi
# Uninstall pre-installed hypothesis and coverage to use an older version as newer
# versions remove the timeout parameter from settings which ideep/conv_transpose_test.py uses
$MAYBE_SUDO pip -q uninstall -y hypothesis
$MAYBE_SUDO pip -q uninstall -y coverage
# "pip install hypothesis==3.44.6" from official server is unreliable on
# CircleCI, so we host a copy on S3 instead
$MAYBE_SUDO pip -q install attrs==18.1.0 -f https://s3.amazonaws.com/ossci-linux/wheels/attrs-18.1.0-py2.py3-none-any.whl
$MAYBE_SUDO pip -q install coverage==4.5.1 -f https://s3.amazonaws.com/ossci-linux/wheels/coverage-4.5.1-cp36-cp36m-macosx_10_12_x86_64.whl
$MAYBE_SUDO pip -q install hypothesis==4.57.1
##############
# ONNX tests #
##############
if [[ "$BUILD_ENVIRONMENT" == *onnx* ]]; then
pip install -q --user --no-use-pep517 "git+https://github.com/pytorch/vision.git@$(cat .github/ci_commit_pins/vision.txt)"
pip install -q --user transformers==4.25.1
pip install -q --user ninja flatbuffers==2.0 numpy==1.22.4 onnxruntime==1.14.0 beartype==0.10.4
# TODO: change this when onnx 1.13.1 is released.
pip install --no-use-pep517 'onnx @ git+https://github.com/onnx/onnx@e192ba01e438d22ca2dedd7956e28e3551626c91'
# TODO: change this when onnx-script is on testPypi
pip install 'onnx-script @ git+https://github.com/microsoft/onnx-script@a71e35bcd72537bf7572536ee57250a0c0488bf6'
# numba requires numpy <= 1.20, onnxruntime requires numpy >= 1.21.
# We don't actually need it for our tests, but it's imported if it's present, so uninstall.
pip uninstall -q --yes numba
# JIT C++ extensions require ninja, so put it into PATH.
export PATH="/var/lib/jenkins/.local/bin:$PATH"
"$ROOT_DIR/scripts/onnx/test.sh"
fi

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@ -1,4 +0,0 @@
source-path=SCRIPTDIR
# we'd like to enable --external-sources here but can't
# https://github.com/koalaman/shellcheck/issues/1818

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@ -1,42 +0,0 @@
This directory contains scripts for our continuous integration.
One important thing to keep in mind when reading the scripts here is
that they are all based off of Docker images, which we build for each of
the various system configurations we want to run on Jenkins. This means
it is very easy to run these tests yourself:
1. Figure out what Docker image you want. The general template for our
images look like:
``registry.pytorch.org/pytorch/pytorch-$BUILD_ENVIRONMENT:$DOCKER_VERSION``,
where ``$BUILD_ENVIRONMENT`` is one of the build environments
enumerated in
[pytorch-dockerfiles](https://github.com/pytorch/pytorch/blob/master/.ci/docker/build.sh). The dockerfile used by jenkins can be found under the `.ci` [directory](https://github.com/pytorch/pytorch/blob/master/.ci/docker)
2. Run ``docker run -it -u jenkins $DOCKER_IMAGE``, clone PyTorch and
run one of the scripts in this directory.
The Docker images are designed so that any "reasonable" build commands
will work; if you look in [build.sh](build.sh) you will see that it is a
very simple script. This is intentional. Idiomatic build instructions
should work inside all of our Docker images. You can tweak the commands
however you need (e.g., in case you want to rebuild with DEBUG, or rerun
the build with higher verbosity, etc.).
We have to do some work to make this so. Here is a summary of the
mechanisms we use:
- We install binaries to directories like `/usr/local/bin` which
are automatically part of your PATH.
- We add entries to the PATH using Docker ENV variables (so
they apply when you enter Docker) and `/etc/environment` (so they
continue to apply even if you sudo), instead of modifying
`PATH` in our build scripts.
- We use `/etc/ld.so.conf.d` to register directories containing
shared libraries, instead of modifying `LD_LIBRARY_PATH` in our
build scripts.
- We reroute well known paths like `/usr/bin/gcc` to alternate
implementations with `update-alternatives`, instead of setting
`CC` and `CXX` in our implementations.

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#!/bin/bash
# Required environment variable: $BUILD_ENVIRONMENT
# (This is set by default in the Docker images we build, so you don't
# need to set it yourself.
# shellcheck source=./common.sh
source "$(dirname "${BASH_SOURCE[0]}")/common.sh"
# shellcheck source=./common-build.sh
source "$(dirname "${BASH_SOURCE[0]}")/common-build.sh"
echo "Clang version:"
clang --version
python tools/stats/export_test_times.py
# detect_leaks=0: Python is very leaky, so we need suppress it
# symbolize=1: Gives us much better errors when things go wrong
export ASAN_OPTIONS=detect_leaks=0:detect_stack_use_after_return=1:symbolize=1:detect_odr_violation=0
if [ -n "$(which conda)" ]; then
export CMAKE_PREFIX_PATH=/opt/conda
fi
# TODO: Make the ASAN flags a centralized env var and unify with USE_ASAN option
CC="clang" CXX="clang++" LDSHARED="clang --shared" \
CFLAGS="-fsanitize=address -fsanitize=undefined -fno-sanitize-recover=all -fsanitize-address-use-after-scope -shared-libasan" \
USE_ASAN=1 USE_CUDA=0 USE_MKLDNN=0 \
python setup.py bdist_wheel
pip_install_whl "$(echo dist/*.whl)"
# Test building via the sdist source tarball
python setup.py sdist
mkdir -p /tmp/tmp
pushd /tmp/tmp
tar zxf "$(dirname "${BASH_SOURCE[0]}")/../../dist/"*.tar.gz
cd torch-*
python setup.py build --cmake-only
popd
print_sccache_stats
assert_git_not_dirty

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#!/usr/bin/env bash
# DO NOT ADD 'set -x' not to reveal CircleCI secret context environment variables
set -eu -o pipefail
# This script uses linux host toolchain + mobile build options in order to
# build & test mobile libtorch without having to setup Android/iOS
# toolchain/simulator.
# shellcheck source=./common.sh
source "$(dirname "${BASH_SOURCE[0]}")/common.sh"
# shellcheck source=./common-build.sh
source "$(dirname "${BASH_SOURCE[0]}")/common-build.sh"
# Install torch & torchvision - used to download & trace test model.
# Ideally we should use the libtorch built on the PR so that backward
# incompatible changes won't break this script - but it will significantly slow
# down mobile CI jobs.
# Here we install nightly instead of stable so that we have an option to
# temporarily skip mobile CI jobs on BC-breaking PRs until they are in nightly.
retry pip install --pre torch torchvision \
-f https://download.pytorch.org/whl/nightly/cpu/torch_nightly.html \
--progress-bar off
# Run end-to-end process of building mobile library, linking into the predictor
# binary, and running forward pass with a real model.
if [[ "$BUILD_ENVIRONMENT" == *-mobile-custom-build-static* ]]; then
TEST_CUSTOM_BUILD_STATIC=1 test/mobile/custom_build/build.sh
elif [[ "$BUILD_ENVIRONMENT" == *-mobile-lightweight-dispatch* ]]; then
test/mobile/lightweight_dispatch/build.sh
else
TEST_DEFAULT_BUILD=1 test/mobile/custom_build/build.sh
fi
print_sccache_stats

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#!/bin/bash
# Required environment variable: $BUILD_ENVIRONMENT
# (This is set by default in the Docker images we build, so you don't
# need to set it yourself.
# shellcheck source=./common.sh
source "$(dirname "${BASH_SOURCE[0]}")/common.sh"
# shellcheck source=./common-build.sh
source "$(dirname "${BASH_SOURCE[0]}")/common-build.sh"
echo "Clang version:"
clang --version
python tools/stats/export_test_times.py
if [ -n "$(which conda)" ]; then
export CMAKE_PREFIX_PATH=/opt/conda
fi
CC="clang" CXX="clang++" LDSHARED="clang --shared" \
CFLAGS="-fsanitize=thread" \
USE_TSAN=1 USE_CUDA=0 USE_MKLDNN=0 \
python setup.py bdist_wheel
pip_install_whl "$(echo dist/*.whl)"
print_sccache_stats
assert_git_not_dirty

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@ -1,318 +0,0 @@
#!/bin/bash
set -ex
# Required environment variable: $BUILD_ENVIRONMENT
# (This is set by default in the Docker images we build, so you don't
# need to set it yourself.
# shellcheck source=./common.sh
source "$(dirname "${BASH_SOURCE[0]}")/common.sh"
# shellcheck source=./common-build.sh
source "$(dirname "${BASH_SOURCE[0]}")/common-build.sh"
if [[ "$BUILD_ENVIRONMENT" == *-clang7-asan* ]]; then
exec "$(dirname "${BASH_SOURCE[0]}")/build-asan.sh" "$@"
fi
if [[ "$BUILD_ENVIRONMENT" == *-clang7-tsan* ]]; then
exec "$(dirname "${BASH_SOURCE[0]}")/build-tsan.sh" "$@"
fi
if [[ "$BUILD_ENVIRONMENT" == *-mobile-*build* ]]; then
exec "$(dirname "${BASH_SOURCE[0]}")/build-mobile.sh" "$@"
fi
echo "Python version:"
python --version
echo "GCC version:"
gcc --version
echo "CMake version:"
cmake --version
echo "Environment variables:"
env
if [[ "$BUILD_ENVIRONMENT" == *cuda* ]]; then
echo "NVCC version:"
nvcc --version
fi
if [[ "$BUILD_ENVIRONMENT" == *cuda11* ]]; then
if [[ "$BUILD_ENVIRONMENT" != *cuda11.3* && "$BUILD_ENVIRONMENT" != *clang* ]]; then
# TODO: there is a linking issue when building with UCC using clang,
# disable it for now and to be fix later.
export USE_UCC=1
export USE_SYSTEM_UCC=1
fi
fi
if [[ ${BUILD_ENVIRONMENT} == *"caffe2"* ]]; then
echo "Caffe2 build is ON"
export BUILD_CAFFE2=ON
fi
if [[ ${BUILD_ENVIRONMENT} == *"paralleltbb"* ]]; then
export ATEN_THREADING=TBB
export USE_TBB=1
elif [[ ${BUILD_ENVIRONMENT} == *"parallelnative"* ]]; then
export ATEN_THREADING=NATIVE
fi
# Enable LLVM dependency for TensorExpr testing
if [[ "$BUILD_ENVIRONMENT" == *rocm* ]]; then
export USE_LLVM=/opt/rocm/llvm
export LLVM_DIR=/opt/rocm/llvm/lib/cmake/llvm
else
export USE_LLVM=/opt/llvm
export LLVM_DIR=/opt/llvm/lib/cmake/llvm
fi
if ! which conda; then
# In ROCm CIs, we are doing cross compilation on build machines with
# intel cpu and later run tests on machines with amd cpu.
# Also leave out two builds to make sure non-mkldnn builds still work.
if [[ "$BUILD_ENVIRONMENT" != *rocm* ]]; then
export USE_MKLDNN=1
else
export USE_MKLDNN=0
fi
else
export CMAKE_PREFIX_PATH=/opt/conda
fi
if [[ "$BUILD_ENVIRONMENT" == *libtorch* ]]; then
POSSIBLE_JAVA_HOMES=()
POSSIBLE_JAVA_HOMES+=(/usr/local)
POSSIBLE_JAVA_HOMES+=(/usr/lib/jvm/java-8-openjdk-amd64)
POSSIBLE_JAVA_HOMES+=(/Library/Java/JavaVirtualMachines/*.jdk/Contents/Home)
# Add the Windows-specific JNI
POSSIBLE_JAVA_HOMES+=("$PWD/.circleci/windows-jni/")
for JH in "${POSSIBLE_JAVA_HOMES[@]}" ; do
if [[ -e "$JH/include/jni.h" ]] ; then
# Skip if we're not on Windows but haven't found a JAVA_HOME
if [[ "$JH" == "$PWD/.circleci/windows-jni/" && "$OSTYPE" != "msys" ]] ; then
break
fi
echo "Found jni.h under $JH"
export JAVA_HOME="$JH"
export BUILD_JNI=ON
break
fi
done
if [ -z "$JAVA_HOME" ]; then
echo "Did not find jni.h"
fi
fi
# Use special scripts for Android builds
if [[ "${BUILD_ENVIRONMENT}" == *-android* ]]; then
export ANDROID_NDK=/opt/ndk
build_args=()
if [[ "${BUILD_ENVIRONMENT}" == *-arm-v7a* ]]; then
build_args+=("-DANDROID_ABI=armeabi-v7a")
elif [[ "${BUILD_ENVIRONMENT}" == *-arm-v8a* ]]; then
build_args+=("-DANDROID_ABI=arm64-v8a")
elif [[ "${BUILD_ENVIRONMENT}" == *-x86_32* ]]; then
build_args+=("-DANDROID_ABI=x86")
elif [[ "${BUILD_ENVIRONMENT}" == *-x86_64* ]]; then
build_args+=("-DANDROID_ABI=x86_64")
fi
if [[ "${BUILD_ENVIRONMENT}" == *vulkan* ]]; then
build_args+=("-DUSE_VULKAN=ON")
fi
build_args+=("-DUSE_LITE_INTERPRETER_PROFILER=OFF")
exec ./scripts/build_android.sh "${build_args[@]}" "$@"
fi
if [[ "$BUILD_ENVIRONMENT" != *android* && "$BUILD_ENVIRONMENT" == *vulkan* ]]; then
export USE_VULKAN=1
# shellcheck disable=SC1091
source /var/lib/jenkins/vulkansdk/setup-env.sh
fi
if [[ "$BUILD_ENVIRONMENT" == *rocm* ]]; then
# hcc used to run out of memory, silently exiting without stopping
# the build process, leaving undefined symbols in the shared lib,
# causing undefined symbol errors when later running tests.
# We used to set MAX_JOBS to 4 to avoid, but this is no longer an issue.
if [ -z "$MAX_JOBS" ]; then
export MAX_JOBS=$(($(nproc) - 1))
fi
if [[ -n "$CI" && -z "$PYTORCH_ROCM_ARCH" ]]; then
# Set ROCM_ARCH to gfx906 for CI builds, if user doesn't override.
echo "Limiting PYTORCH_ROCM_ARCH to gfx906 for CI builds"
export PYTORCH_ROCM_ARCH="gfx906"
fi
# hipify sources
python tools/amd_build/build_amd.py
fi
# sccache will fail for CUDA builds if all cores are used for compiling
# gcc 7 with sccache seems to have intermittent OOM issue if all cores are used
if [ -z "$MAX_JOBS" ]; then
if { [[ "$BUILD_ENVIRONMENT" == *cuda* ]] || [[ "$BUILD_ENVIRONMENT" == *gcc7* ]]; } && which sccache > /dev/null; then
export MAX_JOBS=$(($(nproc) - 1))
fi
fi
# TORCH_CUDA_ARCH_LIST must be passed from an environment variable
if [[ "$BUILD_ENVIRONMENT" == *cuda* && -z "$TORCH_CUDA_ARCH_LIST" ]]; then
echo "TORCH_CUDA_ARCH_LIST must be defined"
exit 1
fi
if [[ "${BUILD_ENVIRONMENT}" == *clang* ]]; then
export CC=clang
export CXX=clang++
fi
if [[ "${BUILD_ENVIRONMENT}" == *no-ops* ]]; then
export USE_PER_OPERATOR_HEADERS=0
fi
if [[ "${BUILD_ENVIRONMENT}" == *-pch* ]]; then
export USE_PRECOMPILED_HEADERS=1
fi
if [[ "${BUILD_ENVIRONMENT}" == *linux-focal-py3.7-gcc7-build* ]]; then
export USE_GLOO_WITH_OPENSSL=ON
fi
if [[ "${BUILD_ENVIRONMENT}" != *android* && "${BUILD_ENVIRONMENT}" != *cuda* ]]; then
export BUILD_STATIC_RUNTIME_BENCHMARK=ON
fi
if [[ "$BUILD_ENVIRONMENT" == *-bazel-* ]]; then
set -e
get_bazel
# Leave 1 CPU free and use only up to 80% of memory to reduce the change of crashing
# the runner
BAZEL_MEM_LIMIT="--local_ram_resources=HOST_RAM*.8"
BAZEL_CPU_LIMIT="--local_cpu_resources=HOST_CPUS-1"
tools/bazel build --config=no-tty "${BAZEL_MEM_LIMIT}" "${BAZEL_CPU_LIMIT}" //...
# Build torch, the Python module, and tests for CPU-only
tools/bazel build --config=no-tty "${BAZEL_MEM_LIMIT}" "${BAZEL_CPU_LIMIT}" --config=cpu-only :torch :_C.so :all_tests
else
# check that setup.py would fail with bad arguments
echo "The next three invocations are expected to fail with invalid command error messages."
( ! get_exit_code python setup.py bad_argument )
( ! get_exit_code python setup.py clean] )
( ! get_exit_code python setup.py clean bad_argument )
if [[ "$BUILD_ENVIRONMENT" != *libtorch* ]]; then
# rocm builds fail when WERROR=1
# XLA test build fails when WERROR=1
# set only when building other architectures
# or building non-XLA tests.
if [[ "$BUILD_ENVIRONMENT" != *rocm* &&
"$BUILD_ENVIRONMENT" != *xla* ]]; then
WERROR=1 python setup.py bdist_wheel
else
python setup.py bdist_wheel
fi
pip_install_whl "$(echo dist/*.whl)"
# TODO: I'm not sure why, but somehow we lose verbose commands
set -x
assert_git_not_dirty
# Copy ninja build logs to dist folder
mkdir -p dist
if [ -f build/.ninja_log ]; then
cp build/.ninja_log dist
fi
if [[ "$BUILD_ENVIRONMENT" == *rocm* ]]; then
# remove sccache wrappers post-build; runtime compilation of MIOpen kernels does not yet fully support them
sudo rm -f /opt/cache/bin/cc
sudo rm -f /opt/cache/bin/c++
sudo rm -f /opt/cache/bin/gcc
sudo rm -f /opt/cache/bin/g++
pushd /opt/rocm/llvm/bin
if [[ -d original ]]; then
sudo mv original/clang .
sudo mv original/clang++ .
fi
sudo rm -rf original
popd
fi
CUSTOM_TEST_ARTIFACT_BUILD_DIR=${CUSTOM_TEST_ARTIFACT_BUILD_DIR:-"build/custom_test_artifacts"}
CUSTOM_TEST_USE_ROCM=$([[ "$BUILD_ENVIRONMENT" == *rocm* ]] && echo "ON" || echo "OFF")
CUSTOM_TEST_MODULE_PATH="${PWD}/cmake/public"
mkdir -pv "${CUSTOM_TEST_ARTIFACT_BUILD_DIR}"
# Build custom operator tests.
CUSTOM_OP_BUILD="${CUSTOM_TEST_ARTIFACT_BUILD_DIR}/custom-op-build"
CUSTOM_OP_TEST="$PWD/test/custom_operator"
python --version
SITE_PACKAGES="$(python -c 'from distutils.sysconfig import get_python_lib; print(get_python_lib())')"
mkdir -p "$CUSTOM_OP_BUILD"
pushd "$CUSTOM_OP_BUILD"
cmake "$CUSTOM_OP_TEST" -DCMAKE_PREFIX_PATH="$SITE_PACKAGES/torch" -DPYTHON_EXECUTABLE="$(which python)" \
-DCMAKE_MODULE_PATH="$CUSTOM_TEST_MODULE_PATH" -DUSE_ROCM="$CUSTOM_TEST_USE_ROCM"
make VERBOSE=1
popd
assert_git_not_dirty
# Build jit hook tests
JIT_HOOK_BUILD="${CUSTOM_TEST_ARTIFACT_BUILD_DIR}/jit-hook-build"
JIT_HOOK_TEST="$PWD/test/jit_hooks"
python --version
SITE_PACKAGES="$(python -c 'from distutils.sysconfig import get_python_lib; print(get_python_lib())')"
mkdir -p "$JIT_HOOK_BUILD"
pushd "$JIT_HOOK_BUILD"
cmake "$JIT_HOOK_TEST" -DCMAKE_PREFIX_PATH="$SITE_PACKAGES/torch" -DPYTHON_EXECUTABLE="$(which python)" \
-DCMAKE_MODULE_PATH="$CUSTOM_TEST_MODULE_PATH" -DUSE_ROCM="$CUSTOM_TEST_USE_ROCM"
make VERBOSE=1
popd
assert_git_not_dirty
# Build custom backend tests.
CUSTOM_BACKEND_BUILD="${CUSTOM_TEST_ARTIFACT_BUILD_DIR}/custom-backend-build"
CUSTOM_BACKEND_TEST="$PWD/test/custom_backend"
python --version
mkdir -p "$CUSTOM_BACKEND_BUILD"
pushd "$CUSTOM_BACKEND_BUILD"
cmake "$CUSTOM_BACKEND_TEST" -DCMAKE_PREFIX_PATH="$SITE_PACKAGES/torch" -DPYTHON_EXECUTABLE="$(which python)" \
-DCMAKE_MODULE_PATH="$CUSTOM_TEST_MODULE_PATH" -DUSE_ROCM="$CUSTOM_TEST_USE_ROCM"
make VERBOSE=1
popd
assert_git_not_dirty
else
# Test no-Python build
echo "Building libtorch"
# This is an attempt to mitigate flaky libtorch build OOM error. By default, the build parallelization
# is set to be the number of CPU minus 2. So, let's try a more conservative value here. A 4xlarge has
# 16 CPUs
MAX_JOBS=$(nproc --ignore=4)
export MAX_JOBS
# NB: Install outside of source directory (at the same level as the root
# pytorch folder) so that it doesn't get cleaned away prior to docker push.
BUILD_LIBTORCH_PY=$PWD/tools/build_libtorch.py
mkdir -p ../cpp-build/caffe2
pushd ../cpp-build/caffe2
WERROR=1 VERBOSE=1 DEBUG=1 python "$BUILD_LIBTORCH_PY"
popd
fi
fi
if [[ "$BUILD_ENVIRONMENT" != *libtorch* && "$BUILD_ENVIRONMENT" != *bazel* ]]; then
# export test times so that potential sharded tests that'll branch off this build will use consistent data
# don't do this for libtorch as libtorch is C++ only and thus won't have python tests run on its build
python tools/stats/export_test_times.py
fi
print_sccache_stats

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@ -1,58 +0,0 @@
#!/bin/bash
# Required environment variables:
# $BUILD_ENVIRONMENT (should be set by your Docker image)
if [[ "$BUILD_ENVIRONMENT" != *win-* ]]; then
# Save the absolute path in case later we chdir (as occurs in the gpu perf test)
script_dir="$( cd "$(dirname "${BASH_SOURCE[0]}")" || exit ; pwd -P )"
if which sccache > /dev/null; then
# Save sccache logs to file
sccache --stop-server > /dev/null 2>&1 || true
rm -f ~/sccache_error.log || true
function sccache_epilogue() {
echo "::group::Sccache Compilation Log"
echo '=================== sccache compilation log ==================='
python "$script_dir/print_sccache_log.py" ~/sccache_error.log 2>/dev/null || true
echo '=========== If your build fails, please take a look at the log above for possible reasons ==========='
sccache --show-stats
sccache --stop-server || true
echo "::endgroup::"
}
# Register the function here so that the error log can be printed even when
# sccache fails to start, i.e. timeout error
trap_add sccache_epilogue EXIT
if [[ -n "${SKIP_SCCACHE_INITIALIZATION:-}" ]]; then
# sccache --start-server seems to hang forever on self hosted runners for GHA
# so let's just go ahead and skip the --start-server altogether since it seems
# as though sccache still gets used even when the sscache server isn't started
# explicitly
echo "Skipping sccache server initialization, setting environment variables"
export SCCACHE_IDLE_TIMEOUT=1200
export SCCACHE_ERROR_LOG=~/sccache_error.log
export RUST_LOG=sccache::server=error
elif [[ "${BUILD_ENVIRONMENT}" == *rocm* ]]; then
SCCACHE_ERROR_LOG=~/sccache_error.log SCCACHE_IDLE_TIMEOUT=0 sccache --start-server
else
# increasing SCCACHE_IDLE_TIMEOUT so that extension_backend_test.cpp can build after this PR:
# https://github.com/pytorch/pytorch/pull/16645
SCCACHE_ERROR_LOG=~/sccache_error.log SCCACHE_IDLE_TIMEOUT=1200 RUST_LOG=sccache::server=error sccache --start-server
fi
# Report sccache stats for easier debugging
sccache --zero-stats
fi
if which ccache > /dev/null; then
# Report ccache stats for easier debugging
ccache --zero-stats
ccache --show-stats
function ccache_epilogue() {
ccache --show-stats
}
trap_add ccache_epilogue EXIT
fi
fi

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@ -1,28 +0,0 @@
#!/bin/bash
# Common setup for all Jenkins scripts
# shellcheck source=./common_utils.sh
source "$(dirname "${BASH_SOURCE[0]}")/common_utils.sh"
set -ex
# Required environment variables:
# $BUILD_ENVIRONMENT (should be set by your Docker image)
# Figure out which Python to use for ROCm
if [[ "${BUILD_ENVIRONMENT}" == *rocm* ]]; then
# HIP_PLATFORM is auto-detected by hipcc; unset to avoid build errors
unset HIP_PLATFORM
export PYTORCH_TEST_WITH_ROCM=1
# temporary to locate some kernel issues on the CI nodes
export HSAKMT_DEBUG_LEVEL=4
# improve rccl performance for distributed tests
export HSA_FORCE_FINE_GRAIN_PCIE=1
fi
# TODO: Renable libtorch testing for MacOS, see https://github.com/pytorch/pytorch/issues/62598
# shellcheck disable=SC2034
BUILD_TEST_LIBTORCH=0
retry () {
"$@" || (sleep 1 && "$@") || (sleep 2 && "$@")
}

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@ -1,237 +0,0 @@
#!/bin/bash
# Common util **functions** that can be sourced in other scripts.
# note: printf is used instead of echo to avoid backslash
# processing and to properly handle values that begin with a '-'.
log() { printf '%s\n' "$*"; }
error() { log "ERROR: $*" >&2; }
fatal() { error "$@"; exit 1; }
retry () {
"$@" || (sleep 10 && "$@") || (sleep 20 && "$@") || (sleep 40 && "$@")
}
# compositional trap taken from https://stackoverflow.com/a/7287873/23845
# appends a command to a trap
#
# - 1st arg: code to add
# - remaining args: names of traps to modify
#
trap_add() {
trap_add_cmd=$1; shift || fatal "${FUNCNAME[0]} usage error"
for trap_add_name in "$@"; do
trap -- "$(
# helper fn to get existing trap command from output
# of trap -p
extract_trap_cmd() { printf '%s\n' "$3"; }
# print existing trap command with newline
eval "extract_trap_cmd $(trap -p "${trap_add_name}")"
# print the new trap command
printf '%s\n' "${trap_add_cmd}"
)" "${trap_add_name}" \
|| fatal "unable to add to trap ${trap_add_name}"
done
}
# set the trace attribute for the above function. this is
# required to modify DEBUG or RETURN traps because functions don't
# inherit them unless the trace attribute is set
declare -f -t trap_add
function assert_git_not_dirty() {
# TODO: we should add an option to `build_amd.py` that reverts the repo to
# an unmodified state.
if [[ "$BUILD_ENVIRONMENT" != *rocm* ]] && [[ "$BUILD_ENVIRONMENT" != *xla* ]] ; then
git_status=$(git status --porcelain)
if [[ $git_status ]]; then
echo "Build left local git repository checkout dirty"
echo "git status --porcelain:"
echo "${git_status}"
exit 1
fi
fi
}
function pip_install_whl() {
# This is used to install PyTorch and other build artifacts wheel locally
# without using any network connection
python3 -mpip install --no-index --no-deps "$@"
}
function pip_install() {
# retry 3 times
# old versions of pip don't have the "--progress-bar" flag
pip install --progress-bar off "$@" || pip install --progress-bar off "$@" || pip install --progress-bar off "$@" ||\
pip install "$@" || pip install "$@" || pip install "$@"
}
function pip_uninstall() {
# uninstall 2 times
pip uninstall -y "$@" || pip uninstall -y "$@"
}
function get_exit_code() {
set +e
"$@"
retcode=$?
set -e
return $retcode
}
function get_bazel() {
if [[ $(uname) == "Darwin" ]]; then
# download bazel version
retry curl https://github.com/bazelbuild/bazel/releases/download/4.2.1/bazel-4.2.1-darwin-x86_64 -Lo tools/bazel
# verify content
echo '74d93848f0c9d592e341e48341c53c87e3cb304a54a2a1ee9cff3df422f0b23c tools/bazel' | shasum -a 256 -c >/dev/null
else
# download bazel version
retry curl https://ossci-linux.s3.amazonaws.com/bazel-4.2.1-linux-x86_64 -o tools/bazel
# verify content
echo '1a4f3a3ce292307bceeb44f459883859c793436d564b95319aacb8af1f20557c tools/bazel' | shasum -a 256 -c >/dev/null
fi
chmod +x tools/bazel
}
function install_monkeytype {
# Install MonkeyType
pip_install MonkeyType
}
function get_pinned_commit() {
cat .github/ci_commit_pins/"${1}".txt
}
function install_torchtext() {
local commit
commit=$(get_pinned_commit text)
pip_install --no-use-pep517 --user "git+https://github.com/pytorch/text.git@${commit}"
}
function install_torchvision() {
local commit
commit=$(get_pinned_commit vision)
pip_install --no-use-pep517 --user "git+https://github.com/pytorch/vision.git@${commit}"
}
function clone_pytorch_xla() {
if [[ ! -d ./xla ]]; then
git clone --recursive -b r2.0 --quiet https://github.com/pytorch/xla.git
pushd xla
# pin the xla hash so that we don't get broken by changes to xla
git checkout "$(cat ../.github/ci_commit_pins/xla.txt)"
git submodule sync
git submodule update --init --recursive
popd
fi
}
function install_filelock() {
pip_install filelock
}
function install_triton() {
local commit
if [[ "${TEST_CONFIG}" == *rocm* ]]; then
echo "skipping triton due to rocm"
else
commit=$(get_pinned_commit triton)
if [[ "${BUILD_ENVIRONMENT}" == *gcc7* ]]; then
# Trition needs gcc-9 to build
sudo apt-get install -y g++-9
CXX=g++-9 pip_install --user "git+https://github.com/openai/triton@${commit}#subdirectory=python"
elif [[ "${BUILD_ENVIRONMENT}" == *clang* ]]; then
# Trition needs <filesystem> which surprisingly is not available with clang-9 toolchain
sudo add-apt-repository -y ppa:ubuntu-toolchain-r/test
sudo apt-get install -y g++-9
CXX=g++-9 pip_install --user "git+https://github.com/openai/triton@${commit}#subdirectory=python"
else
pip_install --user "git+https://github.com/openai/triton@${commit}#subdirectory=python"
fi
pip_install --user jinja2
fi
}
function setup_torchdeploy_deps(){
conda install -y -n "py_${ANACONDA_PYTHON_VERSION}" "libpython-static=${ANACONDA_PYTHON_VERSION}"
local CC
local CXX
CC="$(which gcc)"
CXX="$(which g++)"
export CC
export CXX
pip install --upgrade pip
}
function checkout_install_torchdeploy() {
local commit
commit=$(get_pinned_commit multipy)
setup_torchdeploy_deps
pushd ..
git clone --recurse-submodules https://github.com/pytorch/multipy.git
pushd multipy
git checkout "${commit}"
python multipy/runtime/example/generate_examples.py
pip install -e . --install-option="--cudatests"
popd
popd
}
function test_torch_deploy(){
pushd ..
pushd multipy
./multipy/runtime/build/test_deploy
./multipy/runtime/build/test_deploy_gpu
popd
popd
}
function install_huggingface() {
local commit
commit=$(get_pinned_commit huggingface)
pip_install pandas
pip_install scipy
pip_install "git+https://github.com/huggingface/transformers.git@${commit}#egg=transformers"
}
function install_timm() {
local commit
commit=$(get_pinned_commit timm)
pip_install pandas
pip_install scipy
pip_install "git+https://github.com/rwightman/pytorch-image-models@${commit}"
}
function checkout_install_torchbench() {
git clone https://github.com/pytorch/benchmark torchbench
pushd torchbench
git checkout no_torchaudio
if [ "$1" ]; then
python install.py --continue_on_fail models "$@"
else
# Occasionally the installation may fail on one model but it is ok to continue
# to install and test other models
python install.py --continue_on_fail
fi
popd
}
function test_functorch() {
python test/run_test.py --functorch --verbose
}
function print_sccache_stats() {
echo 'PyTorch Build Statistics'
sccache --show-stats
if [[ -n "${OUR_GITHUB_JOB_ID}" ]]; then
sccache --show-stats --stats-format json | jq .stats \
> "sccache-stats-${BUILD_ENVIRONMENT}-${OUR_GITHUB_JOB_ID}.json"
else
echo "env var OUR_GITHUB_JOB_ID not set, will not write sccache stats to json"
fi
}

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@ -1,96 +0,0 @@
from datetime import datetime, timedelta
from tempfile import mkdtemp
from cryptography.hazmat.primitives import serialization
from cryptography.hazmat.primitives.asymmetric import rsa
from cryptography import x509
from cryptography.x509.oid import NameOID
from cryptography.hazmat.primitives import hashes
temp_dir = mkdtemp()
print(temp_dir)
def genrsa(path):
key = rsa.generate_private_key(
public_exponent=65537,
key_size=2048,
)
with open(path, "wb") as f:
f.write(key.private_bytes(
encoding=serialization.Encoding.PEM,
format=serialization.PrivateFormat.TraditionalOpenSSL,
encryption_algorithm=serialization.NoEncryption(),
))
return key
def create_cert(path, C, ST, L, O, key):
subject = issuer = x509.Name([
x509.NameAttribute(NameOID.COUNTRY_NAME, C),
x509.NameAttribute(NameOID.STATE_OR_PROVINCE_NAME, ST),
x509.NameAttribute(NameOID.LOCALITY_NAME, L),
x509.NameAttribute(NameOID.ORGANIZATION_NAME, O),
])
cert = x509.CertificateBuilder().subject_name(
subject
).issuer_name(
issuer
).public_key(
key.public_key()
).serial_number(
x509.random_serial_number()
).not_valid_before(
datetime.utcnow()
).not_valid_after(
# Our certificate will be valid for 10 days
datetime.utcnow() + timedelta(days=10)
).add_extension(
x509.BasicConstraints(ca=True, path_length=None), critical=True,
).sign(key, hashes.SHA256())
# Write our certificate out to disk.
with open(path, "wb") as f:
f.write(cert.public_bytes(serialization.Encoding.PEM))
return cert
def create_req(path, C, ST, L, O, key):
csr = x509.CertificateSigningRequestBuilder().subject_name(x509.Name([
# Provide various details about who we are.
x509.NameAttribute(NameOID.COUNTRY_NAME, C),
x509.NameAttribute(NameOID.STATE_OR_PROVINCE_NAME, ST),
x509.NameAttribute(NameOID.LOCALITY_NAME, L),
x509.NameAttribute(NameOID.ORGANIZATION_NAME, O),
])).sign(key, hashes.SHA256())
with open(path, "wb") as f:
f.write(csr.public_bytes(serialization.Encoding.PEM))
return csr
def sign_certificate_request(path, csr_cert, ca_cert, private_ca_key):
cert = x509.CertificateBuilder().subject_name(
csr_cert.subject
).issuer_name(
ca_cert.subject
).public_key(
csr_cert.public_key()
).serial_number(
x509.random_serial_number()
).not_valid_before(
datetime.utcnow()
).not_valid_after(
# Our certificate will be valid for 10 days
datetime.utcnow() + timedelta(days=10)
# Sign our certificate with our private key
).sign(private_ca_key, hashes.SHA256())
with open(path, "wb") as f:
f.write(cert.public_bytes(serialization.Encoding.PEM))
return cert
ca_key = genrsa(temp_dir + "/ca.key")
ca_cert = create_cert(temp_dir + "/ca.pem", u"US", u"New York", u"New York", u"Gloo Certificate Authority", ca_key)
pkey = genrsa(temp_dir + "/pkey.key")
csr = create_req(temp_dir + "/csr.csr", u"US", u"California", u"San Francisco", u"Gloo Testing Company", pkey)
cert = sign_certificate_request(temp_dir + "/cert.pem", csr, ca_cert, ca_key)

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@ -1,6 +0,0 @@
#!/bin/bash
# shellcheck source=./common.sh
source "$(dirname "${BASH_SOURCE[0]}")/common.sh"
docker build -t pytorch .

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@ -1,10 +0,0 @@
#!/bin/bash
# shellcheck source=./common.sh
source "$(dirname "${BASH_SOURCE[0]}")/common.sh"
echo "Testing pytorch docs"
cd docs
pip_install -r requirements.txt
make doctest

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@ -1 +0,0 @@
raise ModuleNotFoundError("Sorry PyTorch, but our NumPy is in the other folder")

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@ -1,80 +0,0 @@
#!/bin/bash
# shellcheck disable=SC2034
# shellcheck source=./macos-common.sh
source "$(dirname "${BASH_SOURCE[0]}")/macos-common.sh"
# shellcheck source=./common-build.sh
source "$(dirname "${BASH_SOURCE[0]}")/common-build.sh"
# Build PyTorch
if [ -z "${CI}" ]; then
export DEVELOPER_DIR=/Applications/Xcode9.app/Contents/Developer
fi
# This helper function wraps calls to binaries with sccache, but only if they're not already wrapped with sccache.
# For example, `clang` will be `sccache clang`, but `sccache clang` will not become `sccache sccache clang`.
# The way this is done is by detecting the command of the parent pid of the current process and checking whether
# that is sccache, and wrapping sccache around the process if its parent were not already sccache.
function write_sccache_stub() {
output=$1
binary=$(basename "${output}")
printf "#!/bin/sh\nif [ \$(ps auxc \$(ps auxc -o ppid \$\$ | grep \$\$ | rev | cut -d' ' -f1 | rev) | tr '\\\\n' ' ' | rev | cut -d' ' -f2 | rev) != sccache ]; then\n exec sccache %s \"\$@\"\nelse\n exec %s \"\$@\"\nfi" "$(which "${binary}")" "$(which "${binary}")" > "${output}"
chmod a+x "${output}"
}
if which sccache > /dev/null; then
# Create temp directory for sccache shims
tmp_dir=$(mktemp -d)
trap 'rm -rfv ${tmp_dir}' EXIT
write_sccache_stub "${tmp_dir}/clang++"
write_sccache_stub "${tmp_dir}/clang"
export PATH="${tmp_dir}:$PATH"
fi
cross_compile_arm64() {
# Cross compilation for arm64
# Explicitly set USE_DISTRIBUTED=0 to align with the default build config on mac. This also serves as the sole CI config that tests
# that building with USE_DISTRIBUTED=0 works at all. See https://github.com/pytorch/pytorch/issues/86448
USE_DISTRIBUTED=0 CMAKE_OSX_ARCHITECTURES=arm64 MACOSX_DEPLOYMENT_TARGET=11.0 USE_MKLDNN=OFF USE_QNNPACK=OFF WERROR=1 BUILD_TEST=OFF USE_PYTORCH_METAL=1 python setup.py bdist_wheel
}
compile_x86_64() {
USE_DISTRIBUTED=0 WERROR=1 python setup.py bdist_wheel
}
build_lite_interpreter() {
echo "Testing libtorch (lite interpreter)."
CPP_BUILD="$(pwd)/../cpp_build"
# Ensure the removal of the tmp directory
trap 'rm -rfv ${CPP_BUILD}' EXIT
rm -rf "${CPP_BUILD}"
mkdir -p "${CPP_BUILD}/caffe2"
# It looks libtorch need to be built in "${CPP_BUILD}/caffe2 folder.
BUILD_LIBTORCH_PY=$PWD/tools/build_libtorch.py
pushd "${CPP_BUILD}/caffe2" || exit
VERBOSE=1 DEBUG=1 python "${BUILD_LIBTORCH_PY}"
popd || exit
"${CPP_BUILD}/caffe2/build/bin/test_lite_interpreter_runtime"
}
if [[ ${BUILD_ENVIRONMENT} = *arm64* ]]; then
cross_compile_arm64
elif [[ ${BUILD_ENVIRONMENT} = *lite-interpreter* ]]; then
export BUILD_LITE_INTERPRETER=1
build_lite_interpreter
else
compile_x86_64
fi
if which sccache > /dev/null; then
print_sccache_stats
fi
python tools/stats/export_test_times.py
assert_git_not_dirty

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@ -1,14 +0,0 @@
#!/bin/bash
# Common prelude for macos-build.sh and macos-test.sh
# shellcheck source=./common.sh
source "$(dirname "${BASH_SOURCE[0]}")/common.sh"
sysctl -a | grep machdep.cpu
# These are required for both the build job and the test job.
# In the latter to test cpp extensions.
export MACOSX_DEPLOYMENT_TARGET=10.9
export CXX=clang++
export CC=clang

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@ -1,186 +0,0 @@
#!/bin/bash
# shellcheck disable=SC2034
# shellcheck source=./macos-common.sh
source "$(dirname "${BASH_SOURCE[0]}")/macos-common.sh"
if [[ -n "$CONDA_ENV" ]]; then
# Use binaries under conda environment
export PATH="$CONDA_ENV/bin":$PATH
fi
# Test that OpenMP is enabled for non-arm64 build
if [[ ${BUILD_ENVIRONMENT} != *arm64* ]]; then
pushd test
if [[ ! $(python -c "import torch; print(int(torch.backends.openmp.is_available()))") == "1" ]]; then
echo "Build should have OpenMP enabled, but torch.backends.openmp.is_available() is False"
exit 1
fi
popd
fi
setup_test_python() {
# The CircleCI worker hostname doesn't resolve to an address.
# This environment variable makes ProcessGroupGloo default to
# using the address associated with the loopback interface.
export GLOO_SOCKET_IFNAME=lo0
echo "Ninja version: $(ninja --version)"
# Increase default limit on open file handles from 256 to 1024
ulimit -n 1024
}
test_python_all() {
setup_test_python
time python test/run_test.py --verbose --exclude-jit-executor
assert_git_not_dirty
}
test_python_shard() {
if [[ -z "$NUM_TEST_SHARDS" ]]; then
echo "NUM_TEST_SHARDS must be defined to run a Python test shard"
exit 1
fi
setup_test_python
time python test/run_test.py --verbose --exclude-jit-executor --exclude-distributed-tests --shard "$1" "$NUM_TEST_SHARDS"
assert_git_not_dirty
}
test_libtorch() {
# C++ API
if [[ "$BUILD_TEST_LIBTORCH" == "1" ]]; then
# NB: Install outside of source directory (at the same level as the root
# pytorch folder) so that it doesn't get cleaned away prior to docker push.
# But still clean it before we perform our own build.
echo "Testing libtorch"
CPP_BUILD="$PWD/../cpp-build"
rm -rf "$CPP_BUILD"
mkdir -p "$CPP_BUILD"/caffe2
BUILD_LIBTORCH_PY=$PWD/tools/build_libtorch.py
pushd "$CPP_BUILD"/caffe2
VERBOSE=1 DEBUG=1 python "$BUILD_LIBTORCH_PY"
popd
python tools/download_mnist.py --quiet -d test/cpp/api/mnist
# Unfortunately it seems like the test can't load from miniconda3
# without these paths being set
export DYLD_LIBRARY_PATH="$DYLD_LIBRARY_PATH:$PWD/miniconda3/lib"
export LD_LIBRARY_PATH="$LD_LIBRARY_PATH:$PWD/miniconda3/lib"
TORCH_CPP_TEST_MNIST_PATH="test/cpp/api/mnist" "$CPP_BUILD"/caffe2/bin/test_api
assert_git_not_dirty
fi
}
print_cmake_info() {
CMAKE_EXEC=$(which cmake)
echo "$CMAKE_EXEC"
CONDA_INSTALLATION_DIR=$(dirname "$CMAKE_EXEC")
# Print all libraries under cmake rpath for debugging
ls -la "$CONDA_INSTALLATION_DIR/../lib"
export CMAKE_EXEC
# Explicitly add conda env lib folder to cmake rpath to address the flaky issue
# where cmake dependencies couldn't be found. This seems to point to how conda
# links $CMAKE_EXEC to its package cache when cloning a new environment
install_name_tool -add_rpath @executable_path/../lib "${CMAKE_EXEC}" || true
# Adding the rpath will invalidate cmake signature, so signing it again here
# to trust the executable. EXC_BAD_ACCESS (SIGKILL (Code Signature Invalid))
# with an exit code 137 otherwise
codesign -f -s - "${CMAKE_EXEC}" || true
}
test_custom_backend() {
print_cmake_info
echo "Testing custom backends"
pushd test/custom_backend
rm -rf build && mkdir build
pushd build
SITE_PACKAGES="$(python -c 'from distutils.sysconfig import get_python_lib; print(get_python_lib())')"
CMAKE_PREFIX_PATH="$SITE_PACKAGES/torch" "${CMAKE_EXEC}" ..
make VERBOSE=1
popd
# Run Python tests and export a lowered module.
python test_custom_backend.py -v
python backend.py --export-module-to=model.pt
# Run C++ tests using the exported module.
build/test_custom_backend ./model.pt
rm -f ./model.pt
popd
assert_git_not_dirty
}
test_custom_script_ops() {
print_cmake_info
echo "Testing custom script operators"
pushd test/custom_operator
# Build the custom operator library.
rm -rf build && mkdir build
pushd build
SITE_PACKAGES="$(python -c 'from distutils.sysconfig import get_python_lib; print(get_python_lib())')"
CMAKE_PREFIX_PATH="$SITE_PACKAGES/torch" "${CMAKE_EXEC}" ..
make VERBOSE=1
popd
# Run tests Python-side and export a script module.
python test_custom_ops.py -v
python model.py --export-script-module=model.pt
# Run tests C++-side and load the exported script module.
build/test_custom_ops ./model.pt
popd
assert_git_not_dirty
}
test_jit_hooks() {
print_cmake_info
echo "Testing jit hooks in cpp"
pushd test/jit_hooks
# Build the custom operator library.
rm -rf build && mkdir build
pushd build
SITE_PACKAGES="$(python -c 'from distutils.sysconfig import get_python_lib; print(get_python_lib())')"
CMAKE_PREFIX_PATH="$SITE_PACKAGES/torch" "${CMAKE_EXEC}" ..
make VERBOSE=1
popd
# Run tests Python-side and export a script module.
python model.py --export-script-module=model
# Run tests C++-side and load the exported script module.
build/test_jit_hooks ./model
popd
assert_git_not_dirty
}
if [[ "${TEST_CONFIG}" == *functorch* ]]; then
test_functorch
elif [[ $NUM_TEST_SHARDS -gt 1 ]]; then
test_python_shard "${SHARD_NUMBER}"
if [[ "${SHARD_NUMBER}" == 1 ]]; then
test_libtorch
test_custom_script_ops
elif [[ "${SHARD_NUMBER}" == 2 ]]; then
test_jit_hooks
test_custom_backend
fi
else
test_python_all
test_libtorch
test_custom_script_ops
test_jit_hooks
test_custom_backend
fi

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@ -1,49 +0,0 @@
#!/bin/bash
# Required environment variable: $BUILD_ENVIRONMENT
# (This is set by default in the Docker images we build, so you don't
# need to set it yourself.
# shellcheck source=./common.sh
source "$(dirname "${BASH_SOURCE[0]}")/common.sh"
echo "Testing pytorch"
# Disabling tests to see if they solve timeout issues; see https://github.com/pytorch/pytorch/issues/70015
# python tools/download_mnist.py --quiet -d test/cpp/api/mnist
# OMP_NUM_THREADS=2 TORCH_CPP_TEST_MNIST_PATH="test/cpp/api/mnist" build/bin/test_api
time python test/run_test.py --verbose -i distributed/test_c10d_common
time python test/run_test.py --verbose -i distributed/test_c10d_gloo
time python test/run_test.py --verbose -i distributed/test_c10d_nccl
time python test/run_test.py --verbose -i distributed/test_c10d_spawn_gloo
time python test/run_test.py --verbose -i distributed/test_c10d_spawn_nccl
time python test/run_test.py --verbose -i distributed/test_store
time python test/run_test.py --verbose -i distributed/test_pg_wrapper
time python test/run_test.py --verbose -i distributed/rpc/cuda/test_tensorpipe_agent
# FSDP tests
for f in test/distributed/fsdp/*.py ; do time python test/run_test.py --verbose -i "${f#*/}" ; done
# ShardedTensor tests
time python test/run_test.py --verbose -i distributed/checkpoint/test_checkpoint
time python test/run_test.py --verbose -i distributed/checkpoint/test_file_system_checkpoint
time python test/run_test.py --verbose -i distributed/_shard/sharding_spec/test_sharding_spec
time python test/run_test.py --verbose -i distributed/_shard/sharding_plan/test_sharding_plan
time python test/run_test.py --verbose -i distributed/_shard/sharded_tensor/test_megatron_prototype
time python test/run_test.py --verbose -i distributed/_shard/sharded_tensor/test_sharded_tensor
time python test/run_test.py --verbose -i distributed/_shard/sharded_tensor/test_sharded_tensor_reshard
time python test/run_test.py --verbose -i distributed/_shard/sharded_tensor/ops/test_chunk
time python test/run_test.py --verbose -i distributed/_shard/sharded_tensor/ops/test_elementwise_ops
time python test/run_test.py --verbose -i distributed/_shard/sharded_tensor/ops/test_embedding
time python test/run_test.py --verbose -i distributed/_shard/sharded_tensor/ops/test_embedding_bag
time python test/run_test.py --verbose -i distributed/_shard/sharded_tensor/ops/test_binary_cmp
time python test/run_test.py --verbose -i distributed/_shard/sharded_tensor/ops/test_init
time python test/run_test.py --verbose -i distributed/_shard/sharded_tensor/ops/test_linear
time python test/run_test.py --verbose -i distributed/_shard/sharded_tensor/ops/test_math_ops
time python test/run_test.py --verbose -i distributed/_shard/sharded_tensor/ops/test_matrix_ops
time python test/run_test.py --verbose -i distributed/_shard/sharded_tensor/ops/test_softmax
time python test/run_test.py --verbose -i distributed/_shard/sharded_optim/test_sharded_optim
time python test/run_test.py --verbose -i distributed/_shard/test_partial_tensor
time python test/run_test.py --verbose -i distributed/_shard/test_replicated_tensor
# Other tests
time python test/run_test.py --verbose -i test_cuda_primary_ctx
time python test/run_test.py --verbose -i test_optim -- -k optimizers_with_varying_tensors
assert_git_not_dirty

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@ -1,22 +0,0 @@
#!/bin/bash
set -e
run_test () {
rm -rf test_tmp/ && mkdir test_tmp/ && cd test_tmp/
"$@"
cd .. && rm -rf test_tmp/
}
get_runtime_of_command () {
TIMEFORMAT=%R
# runtime=$( { time ($@ &> /dev/null); } 2>&1 1>/dev/null)
runtime=$( { time "$@"; } 2>&1 1>/dev/null)
if [[ $runtime == *"Error"* ]]; then
exit 1
fi
runtime=${runtime#+++ $@}
runtime=$(python -c "print($runtime)")
echo "$runtime"
}

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@ -1,29 +0,0 @@
#!/bin/bash
. ./common.sh
test_cpu_speed_torch () {
echo "Testing: torch.*, CPU"
export OMP_NUM_THREADS=4
export MKL_NUM_THREADS=4
git clone https://github.com/yf225/perf-tests.git
if [ "$1" == "compare_with_baseline" ]; then
export ARGS=(--compare ../cpu_runtime.json)
elif [ "$1" == "compare_and_update" ]; then
export ARGS=(--compare ../cpu_runtime.json --update ../new_cpu_runtime.json)
elif [ "$1" == "update_only" ]; then
export ARGS=(--update ../new_cpu_runtime.json)
fi
if ! python perf-tests/modules/test_cpu_torch.py "${ARGS[@]}"; then
echo "To reproduce this regression, run \`cd .ci/pytorch/perf_test/ && bash ${FUNCNAME[0]}.sh\` on your local machine and compare the runtime before/after your code change."
exit 1
fi
}
if [[ "${BASH_SOURCE[0]}" == "${0}" ]]; then
run_test test_cpu_speed_torch "$@"
fi

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@ -1,29 +0,0 @@
#!/bin/bash
. ./common.sh
test_cpu_speed_torch_tensor () {
echo "Testing: torch.Tensor.*, CPU"
export OMP_NUM_THREADS=4
export MKL_NUM_THREADS=4
git clone https://github.com/yf225/perf-tests.git
if [ "$1" == "compare_with_baseline" ]; then
export ARGS=(--compare ../cpu_runtime.json)
elif [ "$1" == "compare_and_update" ]; then
export ARGS=(--compare ../cpu_runtime.json --update ../new_cpu_runtime.json)
elif [ "$1" == "update_only" ]; then
export ARGS=(--update ../new_cpu_runtime.json)
fi
if ! python perf-tests/modules/test_cpu_torch_tensor.py "${ARGS[@]}"; then
echo "To reproduce this regression, run \`cd .ci/pytorch/perf_test/ && bash ${FUNCNAME[0]}.sh\` on your local machine and compare the runtime before/after your code change."
exit 1
fi
}
if [[ "${BASH_SOURCE[0]}" == "${0}" ]]; then
run_test test_cpu_speed_torch_tensor "$@"
fi

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@ -1,17 +0,0 @@
import sys
log_file_path = sys.argv[1]
with open(log_file_path) as f:
lines = f.readlines()
for line in lines:
# Ignore errors from CPU instruction set, symbol existing testing,
# or compilation error formatting
ignored_keywords = [
'src.c',
'CheckSymbolExists.c',
'test_compilation_error_formatting',
]
if all([keyword not in line for keyword in ignored_keywords]):
print(line)

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@ -1,18 +0,0 @@
#!/bin/bash
CREATE_TEST_CERT="$(dirname "${BASH_SOURCE[0]}")/create_test_cert.py"
TMP_CERT_DIR=$(python "$CREATE_TEST_CERT")
openssl verify -CAfile "${TMP_CERT_DIR}/ca.pem" "${TMP_CERT_DIR}/cert.pem"
export GLOO_DEVICE_TRANSPORT=TCP_TLS
export GLOO_DEVICE_TRANSPORT_TCP_TLS_PKEY=${TMP_CERT_DIR}/pkey.key
export GLOO_DEVICE_TRANSPORT_TCP_TLS_CERT=${TMP_CERT_DIR}/cert.pem
export GLOO_DEVICE_TRANSPORT_TCP_TLS_CA_FILE=${TMP_CERT_DIR}/ca.pem
time python test/run_test.py --include distributed/test_c10d_gloo --verbose -- ProcessGroupGlooTest
unset GLOO_DEVICE_TRANSPORT
unset GLOO_DEVICE_TRANSPORT_TCP_TLS_PKEY
unset GLOO_DEVICE_TRANSPORT_TCP_TLS_CERT
unset GLOO_DEVICE_TRANSPORT_TCP_TLS_CA_FILE

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#!/bin/bash
SCRIPT_PARENT_DIR=$(dirname "${BASH_SOURCE[0]}")
# shellcheck source=.ci/pytorch/common.sh
source "$SCRIPT_PARENT_DIR/common.sh"
cd .ci/pytorch/perf_test
echo "Running CPU perf test for PyTorch..."
pip install -q awscli
# Set multipart_threshold to be sufficiently high, so that `aws s3 cp` is not a multipart read
# More info at https://github.com/aws/aws-cli/issues/2321
aws configure set default.s3.multipart_threshold 5GB
UPSTREAM_DEFAULT_BRANCH="$(git remote show https://github.com/pytorch/pytorch.git | awk '/HEAD branch/ {print $NF}')"
if [[ "$COMMIT_SOURCE" == "$UPSTREAM_DEFAULT_BRANCH" ]]; then
# Get current default branch commit hash
DEFAULT_BRANCH_COMMIT_ID=$(git log --format="%H" -n 1)
export DEFAULT_BRANCH_COMMIT_ID
fi
# Find the default branch commit to test against
git remote add upstream https://github.com/pytorch/pytorch.git
git fetch upstream
IFS=$'\n'
while IFS='' read -r commit_id; do
if aws s3 ls s3://ossci-perf-test/pytorch/cpu_runtime/"${commit_id}".json; then
LATEST_TESTED_COMMIT=${commit_id}
break
fi
done < <(git rev-list upstream/"$UPSTREAM_DEFAULT_BRANCH")
aws s3 cp s3://ossci-perf-test/pytorch/cpu_runtime/"${LATEST_TESTED_COMMIT}".json cpu_runtime.json
if [[ "$COMMIT_SOURCE" == "$UPSTREAM_DEFAULT_BRANCH" ]]; then
# Prepare new baseline file
cp cpu_runtime.json new_cpu_runtime.json
python update_commit_hash.py new_cpu_runtime.json "${DEFAULT_BRANCH_COMMIT_ID}"
fi
# Include tests
# shellcheck source=./perf_test/test_cpu_speed_mini_sequence_labeler.sh
. ./test_cpu_speed_mini_sequence_labeler.sh
# shellcheck source=./perf_test/test_cpu_speed_mnist.sh
. ./test_cpu_speed_mnist.sh
# shellcheck source=./perf_test/test_cpu_speed_torch.sh
. ./test_cpu_speed_torch.sh
# shellcheck source=./perf_test/test_cpu_speed_torch_tensor.sh
. ./test_cpu_speed_torch_tensor.sh
# Run tests
export TEST_MODE="compare_with_baseline"
if [[ "$COMMIT_SOURCE" == "$UPSTREAM_DEFAULT_BRANCH" ]]; then
export TEST_MODE="compare_and_update"
fi
# Operator tests
run_test test_cpu_speed_torch ${TEST_MODE}
run_test test_cpu_speed_torch_tensor ${TEST_MODE}
# Sample model tests
run_test test_cpu_speed_mini_sequence_labeler 20 ${TEST_MODE}
run_test test_cpu_speed_mnist 20 ${TEST_MODE}
if [[ "$COMMIT_SOURCE" == "$UPSTREAM_DEFAULT_BRANCH" ]]; then
# This could cause race condition if we are testing the same default branch commit twice,
# but the chance of them executing this line at the same time is low.
aws s3 cp new_cpu_runtime.json s3://ossci-perf-test/pytorch/cpu_runtime/"${DEFAULT_BRANCH_COMMIT_ID}".json --acl public-read
fi

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@ -1,76 +0,0 @@
#!/bin/bash
# shellcheck source=./common.sh
source "$(dirname "${BASH_SOURCE[0]}")/common.sh"
pushd .ci/pytorch/perf_test
echo "Running GPU perf test for PyTorch..."
# Trying to uninstall PyYAML can cause problem. Workaround according to:
# https://github.com/pypa/pip/issues/5247#issuecomment-415571153
pip install -q awscli --ignore-installed PyYAML
# Set multipart_threshold to be sufficiently high, so that `aws s3 cp` is not a multipart read
# More info at https://github.com/aws/aws-cli/issues/2321
aws configure set default.s3.multipart_threshold 5GB
UPSTREAM_DEFAULT_BRANCH="$(git remote show https://github.com/pytorch/pytorch.git | awk '/HEAD branch/ {print $NF}')"
if [[ "$COMMIT_SOURCE" == "$UPSTREAM_DEFAULT_BRANCH" ]]; then
# Get current default branch commit hash
DEFAULT_BRANCH_COMMIT_ID=$(git log --format="%H" -n 1)
export DEFAULT_BRANCH_COMMIT_ID
fi
# Find the default branch commit to test against
git remote add upstream https://github.com/pytorch/pytorch.git
git fetch upstream
IFS=$'\n'
while IFS='' read -r commit_id; do
if aws s3 ls s3://ossci-perf-test/pytorch/gpu_runtime/"${commit_id}".json; then
LATEST_TESTED_COMMIT=${commit_id}
break
fi
done < <(git rev-list upstream/"$UPSTREAM_DEFAULT_BRANCH")
aws s3 cp s3://ossci-perf-test/pytorch/gpu_runtime/"${LATEST_TESTED_COMMIT}".json gpu_runtime.json
if [[ "$COMMIT_SOURCE" == "$UPSTREAM_DEFAULT_BRANCH" ]]; then
# Prepare new baseline file
cp gpu_runtime.json new_gpu_runtime.json
python update_commit_hash.py new_gpu_runtime.json "${DEFAULT_BRANCH_COMMIT_ID}"
fi
# Include tests
# shellcheck source=./perf_test/test_gpu_speed_mnist.sh
. ./test_gpu_speed_mnist.sh
# shellcheck source=./perf_test/test_gpu_speed_word_language_model.sh
. ./test_gpu_speed_word_language_model.sh
# shellcheck source=./perf_test/test_gpu_speed_cudnn_lstm.sh
. ./test_gpu_speed_cudnn_lstm.sh
# shellcheck source=./perf_test/test_gpu_speed_lstm.sh
. ./test_gpu_speed_lstm.sh
# shellcheck source=./perf_test/test_gpu_speed_mlstm.sh
. ./test_gpu_speed_mlstm.sh
# Run tests
if [[ "$COMMIT_SOURCE" == "$UPSTREAM_DEFAULT_BRANCH" ]]; then
run_test test_gpu_speed_mnist 20 compare_and_update
run_test test_gpu_speed_word_language_model 20 compare_and_update
run_test test_gpu_speed_cudnn_lstm 20 compare_and_update
run_test test_gpu_speed_lstm 20 compare_and_update
run_test test_gpu_speed_mlstm 20 compare_and_update
else
run_test test_gpu_speed_mnist 20 compare_with_baseline
run_test test_gpu_speed_word_language_model 20 compare_with_baseline
run_test test_gpu_speed_cudnn_lstm 20 compare_with_baseline
run_test test_gpu_speed_lstm 20 compare_with_baseline
run_test test_gpu_speed_mlstm 20 compare_with_baseline
fi
if [[ "$COMMIT_SOURCE" == "$UPSTREAM_DEFAULT_BRANCH" ]]; then
# This could cause race condition if we are testing the same default branch commit twice,
# but the chance of them executing this line at the same time is low.
aws s3 cp new_gpu_runtime.json s3://ossci-perf-test/pytorch/gpu_runtime/"${DEFAULT_BRANCH_COMMIT_ID}".json --acl public-read
fi
popd

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@ -1,65 +0,0 @@
#!/bin/bash
# If you want to rebuild, run this with REBUILD=1
# If you want to build with CUDA, run this with USE_CUDA=1
# If you want to build without CUDA, run this with USE_CUDA=0
if [ ! -f setup.py ]; then
echo "ERROR: Please run this build script from PyTorch root directory."
exit 1
fi
SCRIPT_PARENT_DIR=$( cd "$( dirname "${BASH_SOURCE[0]}" )" && pwd )
# shellcheck source=./common.sh
source "$SCRIPT_PARENT_DIR/common.sh"
# shellcheck source=./common-build.sh
source "$SCRIPT_PARENT_DIR/common-build.sh"
IMAGE_COMMIT_ID=$(git rev-parse HEAD)
export IMAGE_COMMIT_ID
export IMAGE_COMMIT_TAG=${BUILD_ENVIRONMENT}-${IMAGE_COMMIT_ID}
if [[ ${JOB_NAME} == *"develop"* ]]; then
export IMAGE_COMMIT_TAG=develop-${IMAGE_COMMIT_TAG}
fi
export TMP_DIR="${PWD}/build/win_tmp"
TMP_DIR_WIN=$(cygpath -w "${TMP_DIR}")
export TMP_DIR_WIN
export PYTORCH_FINAL_PACKAGE_DIR=${PYTORCH_FINAL_PACKAGE_DIR:-/c/w/build-results}
if [[ -n "$PYTORCH_FINAL_PACKAGE_DIR" ]]; then
mkdir -p "$PYTORCH_FINAL_PACKAGE_DIR" || true
fi
# This directory is used only to hold "pytorch_env_restore.bat", called via "setup_pytorch_env.bat"
CI_SCRIPTS_DIR=$TMP_DIR/ci_scripts
mkdir -p "$CI_SCRIPTS_DIR"
if [ -n "$(ls "$CI_SCRIPTS_DIR"/*)" ]; then
rm "$CI_SCRIPTS_DIR"/*
fi
export SCRIPT_HELPERS_DIR=$SCRIPT_PARENT_DIR/win-test-helpers
set +ex
grep -E -R 'PyLong_(From|As)(Unsigned|)Long\(' --exclude=python_numbers.h --exclude=eval_frame.c torch/
PYLONG_API_CHECK=$?
if [[ $PYLONG_API_CHECK == 0 ]]; then
echo "Usage of PyLong_{From,As}{Unsigned}Long API may lead to overflow errors on Windows"
echo "because \`sizeof(long) == 4\` and \`sizeof(unsigned long) == 4\`."
echo "Please include \"torch/csrc/utils/python_numbers.h\" and use the correspoding APIs instead."
echo "PyLong_FromLong -> THPUtils_packInt32 / THPUtils_packInt64"
echo "PyLong_AsLong -> THPUtils_unpackInt (32-bit) / THPUtils_unpackLong (64-bit)"
echo "PyLong_FromUnsignedLong -> THPUtils_packUInt32 / THPUtils_packUInt64"
echo "PyLong_AsUnsignedLong -> THPUtils_unpackUInt32 / THPUtils_unpackUInt64"
exit 1
fi
set -ex
"$SCRIPT_HELPERS_DIR"/build_pytorch.bat
assert_git_not_dirty
if [ ! -f "${TMP_DIR}"/"${IMAGE_COMMIT_TAG}".7z ] && [ ! "${BUILD_ENVIRONMENT}" == "" ]; then
exit 1
fi
echo "BUILD PASSED"

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@ -1,160 +0,0 @@
if "%DEBUG%" == "1" (
set BUILD_TYPE=debug
) ELSE (
set BUILD_TYPE=release
)
set PATH=C:\Program Files\CMake\bin;C:\Program Files\7-Zip;C:\ProgramData\chocolatey\bin;C:\Program Files\Git\cmd;C:\Program Files\Amazon\AWSCLI;C:\Program Files\Amazon\AWSCLI\bin;%PATH%
:: This inflates our log size slightly, but it is REALLY useful to be
:: able to see what our cl.exe commands are (since you can actually
:: just copy-paste them into a local Windows setup to just rebuild a
:: single file.)
:: log sizes are too long, but leaving this here incase someone wants to use it locally
:: set CMAKE_VERBOSE_MAKEFILE=1
set INSTALLER_DIR=%SCRIPT_HELPERS_DIR%\installation-helpers
call %INSTALLER_DIR%\install_mkl.bat
if errorlevel 1 exit /b
if not errorlevel 0 exit /b
call %INSTALLER_DIR%\install_magma.bat
if errorlevel 1 exit /b
if not errorlevel 0 exit /b
call %INSTALLER_DIR%\install_sccache.bat
if errorlevel 1 exit /b
if not errorlevel 0 exit /b
:: Miniconda has been installed as part of the Windows AMI with all the dependencies.
:: We just need to activate it here
call %INSTALLER_DIR%\activate_miniconda3.bat
if errorlevel 1 exit /b
if not errorlevel 0 exit /b
:: Override VS env here
pushd .
if "%VC_VERSION%" == "" (
call "C:\Program Files (x86)\Microsoft Visual Studio\%VC_YEAR%\%VC_PRODUCT%\VC\Auxiliary\Build\vcvarsall.bat" x64
) else (
call "C:\Program Files (x86)\Microsoft Visual Studio\%VC_YEAR%\%VC_PRODUCT%\VC\Auxiliary\Build\vcvarsall.bat" x64 -vcvars_ver=%VC_VERSION%
)
if errorlevel 1 exit /b
if not errorlevel 0 exit /b
@echo on
popd
if not "%USE_CUDA%"=="1" goto cuda_build_end
set CUDA_PATH=C:\Program Files\NVIDIA GPU Computing Toolkit\CUDA\v%CUDA_VERSION%
if x%CUDA_VERSION:.=%==x%CUDA_VERSION% (
echo CUDA version %CUDA_VERSION% format isn't correct, which doesn't contain '.'
exit /b 1
)
rem version transformer, for example 10.1 to 10_1.
if x%CUDA_VERSION:.=%==x%CUDA_VERSION% (
echo CUDA version %CUDA_VERSION% format isn't correct, which doesn't contain '.'
exit /b 1
)
set VERSION_SUFFIX=%CUDA_VERSION:.=_%
set CUDA_PATH_V%VERSION_SUFFIX%=%CUDA_PATH%
set CUDNN_LIB_DIR=%CUDA_PATH%\lib\x64
set CUDA_TOOLKIT_ROOT_DIR=%CUDA_PATH%
set CUDNN_ROOT_DIR=%CUDA_PATH%
set NVTOOLSEXT_PATH=C:\Program Files\NVIDIA Corporation\NvToolsExt
set PATH=%CUDA_PATH%\bin;%CUDA_PATH%\libnvvp;%PATH%
set CUDNN_LIB_DIR=%CUDA_PATH%\lib\x64
set CUDA_TOOLKIT_ROOT_DIR=%CUDA_PATH%
set CUDNN_ROOT_DIR=%CUDA_PATH%
set NVTOOLSEXT_PATH=C:\Program Files\NVIDIA Corporation\NvToolsExt
set PATH=%CUDA_PATH%\bin;%CUDA_PATH%\libnvvp;%PATH%
:cuda_build_end
set DISTUTILS_USE_SDK=1
set PATH=%TMP_DIR_WIN%\bin;%PATH%
:: The latest Windows CUDA test is running on AWS G5 runner with A10G GPU
if "%TORCH_CUDA_ARCH_LIST%" == "" set TORCH_CUDA_ARCH_LIST=8.6
:: The default sccache idle timeout is 600, which is too short and leads to intermittent build errors.
set SCCACHE_IDLE_TIMEOUT=0
set SCCACHE_IGNORE_SERVER_IO_ERROR=1
sccache --stop-server
sccache --start-server
sccache --zero-stats
set CC=sccache-cl
set CXX=sccache-cl
set CMAKE_GENERATOR=Ninja
if "%USE_CUDA%"=="1" (
:: randomtemp is used to resolve the intermittent build error related to CUDA.
:: code: https://github.com/peterjc123/randomtemp-rust
:: issue: https://github.com/pytorch/pytorch/issues/25393
::
:: CMake requires a single command as CUDA_NVCC_EXECUTABLE, so we push the wrappers
:: randomtemp.exe and sccache.exe into a batch file which CMake invokes.
curl -kL https://github.com/peterjc123/randomtemp-rust/releases/download/v0.4/randomtemp.exe --output %TMP_DIR_WIN%\bin\randomtemp.exe
if errorlevel 1 exit /b
if not errorlevel 0 exit /b
echo @"%TMP_DIR_WIN%\bin\randomtemp.exe" "%TMP_DIR_WIN%\bin\sccache.exe" "%CUDA_PATH%\bin\nvcc.exe" %%* > "%TMP_DIR%/bin/nvcc.bat"
cat %TMP_DIR%/bin/nvcc.bat
set CUDA_NVCC_EXECUTABLE=%TMP_DIR%/bin/nvcc.bat
for /F "usebackq delims=" %%n in (`cygpath -m "%CUDA_PATH%\bin\nvcc.exe"`) do set CMAKE_CUDA_COMPILER=%%n
set CMAKE_CUDA_COMPILER_LAUNCHER=%TMP_DIR%/bin/randomtemp.exe;%TMP_DIR%\bin\sccache.exe
)
@echo off
echo @echo off >> %TMP_DIR_WIN%\ci_scripts\pytorch_env_restore.bat
for /f "usebackq tokens=*" %%i in (`set`) do echo set "%%i" >> %TMP_DIR_WIN%\ci_scripts\pytorch_env_restore.bat
@echo on
if "%REBUILD%" == "" (
if NOT "%BUILD_ENVIRONMENT%" == "" (
:: Create a shortcut to restore pytorch environment
echo @echo off >> %TMP_DIR_WIN%/ci_scripts/pytorch_env_restore_helper.bat
echo call "%TMP_DIR_WIN%/ci_scripts/pytorch_env_restore.bat" >> %TMP_DIR_WIN%/ci_scripts/pytorch_env_restore_helper.bat
echo cd /D "%CD%" >> %TMP_DIR_WIN%/ci_scripts/pytorch_env_restore_helper.bat
aws s3 cp "s3://ossci-windows/Restore PyTorch Environment.lnk" "C:\Users\circleci\Desktop\Restore PyTorch Environment.lnk"
if errorlevel 1 exit /b
if not errorlevel 0 exit /b
)
)
python setup.py bdist_wheel
if errorlevel 1 exit /b
if not errorlevel 0 exit /b
sccache --show-stats
python -c "import os, glob; os.system('python -mpip install --no-index --no-deps ' + glob.glob('dist/*.whl')[0])"
(
if "%BUILD_ENVIRONMENT%"=="" (
echo NOTE: To run `import torch`, please make sure to activate the conda environment by running `call %CONDA_PARENT_DIR%\Miniconda3\Scripts\activate.bat %CONDA_PARENT_DIR%\Miniconda3` in Command Prompt before running Git Bash.
) else (
if "%USE_CUDA%"=="1" (
7z a %TMP_DIR_WIN%\%IMAGE_COMMIT_TAG%.7z %CONDA_PARENT_DIR%\Miniconda3\Lib\site-packages\torch %CONDA_PARENT_DIR%\Miniconda3\Lib\site-packages\torchgen %CONDA_PARENT_DIR%\Miniconda3\Lib\site-packages\functorch %CONDA_PARENT_DIR%\Miniconda3\Lib\site-packages\nvfuser && copy /Y "%TMP_DIR_WIN%\%IMAGE_COMMIT_TAG%.7z" "%PYTORCH_FINAL_PACKAGE_DIR%\"
) else (
7z a %TMP_DIR_WIN%\%IMAGE_COMMIT_TAG%.7z %CONDA_PARENT_DIR%\Miniconda3\Lib\site-packages\torch %CONDA_PARENT_DIR%\Miniconda3\Lib\site-packages\torchgen %CONDA_PARENT_DIR%\Miniconda3\Lib\site-packages\functorch && copy /Y "%TMP_DIR_WIN%\%IMAGE_COMMIT_TAG%.7z" "%PYTORCH_FINAL_PACKAGE_DIR%\"
)
if errorlevel 1 exit /b
if not errorlevel 0 exit /b
:: export test times so that potential sharded tests that'll branch off this build will use consistent data
python tools/stats/export_test_times.py
copy /Y ".pytorch-test-times.json" "%PYTORCH_FINAL_PACKAGE_DIR%"
:: Also save build/.ninja_log as an artifact
copy /Y "build\.ninja_log" "%PYTORCH_FINAL_PACKAGE_DIR%\"
)
)
sccache --show-stats --stats-format json | jq .stats > sccache-stats-%BUILD_ENVIRONMENT%-%OUR_GITHUB_JOB_ID%.json
sccache --stop-server

View File

@ -1,4 +0,0 @@
REM The first argument should the CUDA version
echo %PATH%
echo %CUDA_PATH%
set PATH=C:\Program Files\NVIDIA GPU Computing Toolkit\CUDA\v%1\bin;%PATH%

View File

@ -1,19 +0,0 @@
call %SCRIPT_HELPERS_DIR%\setup_pytorch_env.bat
:: exit the batch once there's an error
if not errorlevel 0 (
echo "setup pytorch env failed"
echo %errorlevel%
exit /b
)
echo "Test functorch"
pushd test
python run_test.py --functorch --shard "%SHARD_NUMBER%" "%NUM_TEST_SHARDS%" --verbose
popd
if ERRORLEVEL 1 goto fail
:eof
exit /b 0
:fail
exit /b 1

View File

@ -1,26 +0,0 @@
if "%BUILD_ENVIRONMENT%"=="" (
set CONDA_PARENT_DIR=%CD%
) else (
set CONDA_PARENT_DIR=C:\Jenkins
)
:: Be conservative here when rolling out the new AMI with conda. This will try
:: to install conda as before if it couldn't find the conda installation. This
:: can be removed eventually after we gain enough confidence in the AMI
if not exist %CONDA_PARENT_DIR%\Miniconda3 (
set INSTALL_FRESH_CONDA=1
)
if "%INSTALL_FRESH_CONDA%"=="1" (
curl --retry 3 --retry-all-errors -k https://repo.anaconda.com/miniconda/Miniconda3-latest-Windows-x86_64.exe --output %TMP_DIR_WIN%\Miniconda3-latest-Windows-x86_64.exe
if errorlevel 1 exit /b
if not errorlevel 0 exit /b
%TMP_DIR_WIN%\Miniconda3-latest-Windows-x86_64.exe /InstallationType=JustMe /RegisterPython=0 /S /AddToPath=0 /D=%CONDA_PARENT_DIR%\Miniconda3
if errorlevel 1 exit /b
if not errorlevel 0 exit /b
)
:: Activate conda so that we can use its commands, i.e. conda, python, pip
call %CONDA_PARENT_DIR%\Miniconda3\Scripts\activate.bat %CONDA_PARENT_DIR%\Miniconda3

View File

@ -1,37 +0,0 @@
if "%CUDA_VERSION%" == "cpu" (
echo skip magma installation for cpu builds
exit /b 0
)
rem remove dot in cuda_version, fox example 11.1 to 111
if not "%USE_CUDA%"=="1" (
exit /b 0
)
if x%CUDA_VERSION:.=%==x%CUDA_VERSION% (
echo CUDA version %CUDA_VERSION% format isn't correct, which doesn't contain '.'
exit /b 1
)
set VERSION_SUFFIX=%CUDA_VERSION:.=%
set CUDA_SUFFIX=cuda%VERSION_SUFFIX%
if "%CUDA_SUFFIX%" == "" (
echo unknown CUDA version, please set `CUDA_VERSION` higher than 10.2
exit /b 1
)
if "%REBUILD%"=="" (
if "%BUILD_ENVIRONMENT%"=="" (
curl --retry 3 --retry-all-errors -k https://s3.amazonaws.com/ossci-windows/magma_2.5.4_%CUDA_SUFFIX%_%BUILD_TYPE%.7z --output %TMP_DIR_WIN%\magma_2.5.4_%CUDA_SUFFIX%_%BUILD_TYPE%.7z
) else (
aws s3 cp s3://ossci-windows/magma_2.5.4_%CUDA_SUFFIX%_%BUILD_TYPE%.7z %TMP_DIR_WIN%\magma_2.5.4_%CUDA_SUFFIX%_%BUILD_TYPE%.7z --quiet
)
if errorlevel 1 exit /b
if not errorlevel 0 exit /b
7z x -aoa %TMP_DIR_WIN%\magma_2.5.4_%CUDA_SUFFIX%_%BUILD_TYPE%.7z -o%TMP_DIR_WIN%\magma
if errorlevel 1 exit /b
if not errorlevel 0 exit /b
)
set MAGMA_HOME=%TMP_DIR_WIN%\magma

View File

@ -1,14 +0,0 @@
if "%REBUILD%"=="" (
if "%BUILD_ENVIRONMENT%"=="" (
curl --retry 3 --retry-all-errors -k https://s3.amazonaws.com/ossci-windows/mkl_2020.2.254.7z --output %TMP_DIR_WIN%\mkl.7z
) else (
aws s3 cp s3://ossci-windows/mkl_2020.2.254.7z %TMP_DIR_WIN%\mkl.7z --quiet
)
if errorlevel 1 exit /b
if not errorlevel 0 exit /b
7z x -aoa %TMP_DIR_WIN%\mkl.7z -o%TMP_DIR_WIN%\mkl
if errorlevel 1 exit /b
if not errorlevel 0 exit /b
)
set CMAKE_INCLUDE_PATH=%TMP_DIR_WIN%\mkl\include
set LIB=%TMP_DIR_WIN%\mkl\lib;%LIB%

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@ -1,18 +0,0 @@
mkdir %TMP_DIR_WIN%\bin
if "%REBUILD%"=="" (
:check_sccache
%TMP_DIR_WIN%\bin\sccache.exe --show-stats || (
taskkill /im sccache.exe /f /t || ver > nul
del %TMP_DIR_WIN%\bin\sccache.exe || ver > nul
del %TMP_DIR_WIN%\bin\sccache-cl.exe || ver > nul
if "%BUILD_ENVIRONMENT%"=="" (
curl --retry 3 --retry-all-errors -k https://s3.amazonaws.com/ossci-windows/sccache.exe --output %TMP_DIR_WIN%\bin\sccache.exe
curl --retry 3 --retry-all-errors -k https://s3.amazonaws.com/ossci-windows/sccache-cl.exe --output %TMP_DIR_WIN%\bin\sccache-cl.exe
) else (
aws s3 cp s3://ossci-windows/sccache.exe %TMP_DIR_WIN%\bin\sccache.exe
aws s3 cp s3://ossci-windows/sccache-cl.exe %TMP_DIR_WIN%\bin\sccache-cl.exe
)
goto :check_sccache
)
)

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@ -1,73 +0,0 @@
if exist "%TMP_DIR%/ci_scripts/pytorch_env_restore.bat" (
call %TMP_DIR%/ci_scripts/pytorch_env_restore.bat
exit /b 0
)
set PATH=C:\Program Files\CMake\bin;C:\Program Files\7-Zip;C:\ProgramData\chocolatey\bin;C:\Program Files\Git\cmd;C:\Program Files\Amazon\AWSCLI;C:\Program Files\Amazon\AWSCLI\bin;%PATH%
:: Install Miniconda3
set INSTALLER_DIR=%SCRIPT_HELPERS_DIR%\installation-helpers
:: Miniconda has been installed as part of the Windows AMI with all the dependencies.
:: We just need to activate it here
call %INSTALLER_DIR%\activate_miniconda3.bat
if errorlevel 1 exit /b
if not errorlevel 0 exit /b
pushd .
if "%VC_VERSION%" == "" (
call "C:\Program Files (x86)\Microsoft Visual Studio\%VC_YEAR%\%VC_PRODUCT%\VC\Auxiliary\Build\vcvarsall.bat" x64
) else (
call "C:\Program Files (x86)\Microsoft Visual Studio\%VC_YEAR%\%VC_PRODUCT%\VC\Auxiliary\Build\vcvarsall.bat" x64 -vcvars_ver=%VC_VERSION%
)
if errorlevel 1 exit /b
if not errorlevel 0 exit /b
@echo on
popd
set DISTUTILS_USE_SDK=1
if not "%USE_CUDA%"=="1" goto cuda_build_end
set CUDA_PATH=C:\Program Files\NVIDIA GPU Computing Toolkit\CUDA\v%CUDA_VERSION%
rem version transformer, for example 10.1 to 10_1.
set VERSION_SUFFIX=%CUDA_VERSION:.=_%
set CUDA_PATH_V%VERSION_SUFFIX%=%CUDA_PATH%
set CUDNN_LIB_DIR=%CUDA_PATH%\lib\x64
set CUDA_TOOLKIT_ROOT_DIR=%CUDA_PATH%
set CUDNN_ROOT_DIR=%CUDA_PATH%
set NVTOOLSEXT_PATH=C:\Program Files\NVIDIA Corporation\NvToolsExt
set PATH=%CUDA_PATH%\bin;%CUDA_PATH%\libnvvp;%PATH%
set NUMBAPRO_CUDALIB=%CUDA_PATH%\bin
set NUMBAPRO_LIBDEVICE=%CUDA_PATH%\nvvm\libdevice
set NUMBAPRO_NVVM=%CUDA_PATH%\nvvm\bin\nvvm64_32_0.dll
:cuda_build_end
set PYTHONPATH=%TMP_DIR_WIN%\build;%PYTHONPATH%
if NOT "%BUILD_ENVIRONMENT%"=="" (
pushd %TMP_DIR_WIN%\build
copy /Y %PYTORCH_FINAL_PACKAGE_DIR_WIN%\%IMAGE_COMMIT_TAG%.7z %TMP_DIR_WIN%\
:: 7z: -aos skips if exists because this .bat can be called multiple times
7z x %TMP_DIR_WIN%\%IMAGE_COMMIT_TAG%.7z -aos
popd
) else (
xcopy /s %CONDA_PARENT_DIR%\Miniconda3\Lib\site-packages\torch %TMP_DIR_WIN%\build\torch\
)
@echo off
echo @echo off >> %TMP_DIR_WIN%/ci_scripts/pytorch_env_restore.bat
for /f "usebackq tokens=*" %%i in (`set`) do echo set "%%i" >> %TMP_DIR_WIN%/ci_scripts/pytorch_env_restore.bat
@echo on
if NOT "%BUILD_ENVIRONMENT%" == "" (
:: Create a shortcut to restore pytorch environment
echo @echo off >> %TMP_DIR_WIN%/ci_scripts/pytorch_env_restore_helper.bat
echo call "%TMP_DIR_WIN%/ci_scripts/pytorch_env_restore.bat" >> %TMP_DIR_WIN%/ci_scripts/pytorch_env_restore_helper.bat
echo cd /D "%CD%" >> %TMP_DIR_WIN%/ci_scripts/pytorch_env_restore_helper.bat
aws s3 cp "s3://ossci-windows/Restore PyTorch Environment.lnk" "C:\Users\circleci\Desktop\Restore PyTorch Environment.lnk"
)

View File

@ -1,24 +0,0 @@
REM The first argument should lead to the python interpreter
%1\python.exe test/run_test.py --verbose -i distributed/test_c10d_common
if %errorlevel% neq 0 ( exit /b %errorlevel% )
%1\python.exe test/run_test.py --verbose -i distributed/test_c10d_gloo
if %errorlevel% neq 0 ( exit /b %errorlevel% )
%1\python.exe test/run_test.py --verbose -i distributed/test_c10d_nccl
if %errorlevel% neq 0 ( exit /b %errorlevel% )
%1\python test/run_test.py --verbose -i distributed/test_c10d_spawn_gloo
if %errorlevel% neq 0 ( exit /b %errorlevel% )
%1\python test/run_test.py --verbose -i distributed/test_c10d_spawn_nccl
if %errorlevel% neq 0 ( exit /b %errorlevel% )
%1\python.exe test/run_test.py --verbose -i distributed/test_data_parallel
if %errorlevel% neq 0 ( exit /b %errorlevel% )
%1\python.exe test/run_test.py --verbose -i distributed/test_store
if %errorlevel% neq 0 ( exit /b %errorlevel% )
%1\python.exe test/run_test.py --verbose -i distributed/test_pg_wrapper
if %errorlevel% neq 0 ( exit /b %errorlevel% )

View File

@ -1,12 +0,0 @@
call %SCRIPT_HELPERS_DIR%\setup_pytorch_env.bat
echo Copying over test times file
copy /Y "%PYTORCH_FINAL_PACKAGE_DIR_WIN%\.pytorch-test-times.json" "%PROJECT_DIR_WIN%"
pushd test
echo Run jit_profiling tests
python run_test.py --include test_jit_legacy test_jit_fuser_legacy --verbose
if ERRORLEVEL 1 exit /b 1
popd

View File

@ -1,37 +0,0 @@
call %SCRIPT_HELPERS_DIR%\setup_pytorch_env.bat
:: exit the batch once there's an error
if not errorlevel 0 (
echo "setup pytorch env failed"
echo %errorlevel%
exit /b
)
pushd test
set GFLAGS_EXE="C:\Program Files (x86)\Windows Kits\10\Debuggers\x64\gflags.exe"
if "%SHARD_NUMBER%" == "1" (
if exist %GFLAGS_EXE% (
echo Some smoke tests
%GFLAGS_EXE% /i python.exe +sls
python %SCRIPT_HELPERS_DIR%\run_python_nn_smoketests.py
if ERRORLEVEL 1 goto fail
%GFLAGS_EXE% /i python.exe -sls
if ERRORLEVEL 1 goto fail
)
)
echo Copying over test times file
copy /Y "%PYTORCH_FINAL_PACKAGE_DIR_WIN%\.pytorch-test-times.json" "%PROJECT_DIR_WIN%"
echo Run nn tests
python run_test.py --exclude-jit-executor --exclude-distributed-tests --shard "%SHARD_NUMBER%" "%NUM_TEST_SHARDS%" --verbose
if ERRORLEVEL 1 goto fail
popd
:eof
exit /b 0
:fail
exit /b 1

View File

@ -1,86 +0,0 @@
#!/bin/bash
set -ex
SCRIPT_PARENT_DIR=$( cd "$( dirname "${BASH_SOURCE[0]}" )" && pwd )
# shellcheck source=./common.sh
source "$SCRIPT_PARENT_DIR/common.sh"
IMAGE_COMMIT_ID=$(git rev-parse HEAD)
export IMAGE_COMMIT_ID
export IMAGE_COMMIT_TAG=${BUILD_ENVIRONMENT}-${IMAGE_COMMIT_ID}
if [[ ${JOB_NAME} == *"develop"* ]]; then
export IMAGE_COMMIT_TAG=develop-${IMAGE_COMMIT_TAG}
fi
export TMP_DIR="${PWD}/build/win_tmp"
TMP_DIR_WIN=$(cygpath -w "${TMP_DIR}")
export TMP_DIR_WIN
export PROJECT_DIR="${PWD}"
PROJECT_DIR_WIN=$(cygpath -w "${PROJECT_DIR}")
export PROJECT_DIR_WIN
export TEST_DIR="${PWD}/test"
TEST_DIR_WIN=$(cygpath -w "${TEST_DIR}")
export TEST_DIR_WIN
export PYTORCH_FINAL_PACKAGE_DIR="${PYTORCH_FINAL_PACKAGE_DIR:-/c/users/circleci/workspace/build-results}"
PYTORCH_FINAL_PACKAGE_DIR_WIN=$(cygpath -w "${PYTORCH_FINAL_PACKAGE_DIR}")
export PYTORCH_FINAL_PACKAGE_DIR_WIN
mkdir -p "$TMP_DIR"/build/torch
# This directory is used only to hold "pytorch_env_restore.bat", called via "setup_pytorch_env.bat"
CI_SCRIPTS_DIR=$TMP_DIR/ci_scripts
mkdir -p "$CI_SCRIPTS_DIR"
if [ -n "$(ls "$CI_SCRIPTS_DIR"/*)" ]; then
rm "$CI_SCRIPTS_DIR"/*
fi
export SCRIPT_HELPERS_DIR=$SCRIPT_PARENT_DIR/win-test-helpers
if [[ "$TEST_CONFIG" = "force_on_cpu" ]]; then
# run the full test suite for force_on_cpu test
export USE_CUDA=0
fi
if [[ "$BUILD_ENVIRONMENT" == *cuda* ]]; then
# Used so that only cuda/rocm specific versions of tests are generated
# mainly used so that we're not spending extra cycles testing cpu
# devices on expensive gpu machines
export PYTORCH_TESTING_DEVICE_ONLY_FOR="cuda"
fi
run_tests() {
# Run nvidia-smi if available
for path in '/c/Program Files/NVIDIA Corporation/NVSMI/nvidia-smi.exe' /c/Windows/System32/nvidia-smi.exe; do
if [[ -x "$path" ]]; then
"$path" || echo "true";
break
fi
done
if [[ "${TEST_CONFIG}" == *functorch* ]]; then
"$SCRIPT_HELPERS_DIR"/install_test_functorch.bat
elif [[ $NUM_TEST_SHARDS -eq 1 ]]; then
"$SCRIPT_HELPERS_DIR"/test_python_shard.bat
"$SCRIPT_HELPERS_DIR"/test_custom_script_ops.bat
"$SCRIPT_HELPERS_DIR"/test_custom_backend.bat
"$SCRIPT_HELPERS_DIR"/test_libtorch.bat
else
"$SCRIPT_HELPERS_DIR"/test_python_shard.bat
if [[ "${SHARD_NUMBER}" == 1 && $NUM_TEST_SHARDS -gt 1 ]]; then
"$SCRIPT_HELPERS_DIR"/test_libtorch.bat
if [[ "${USE_CUDA}" == "1" ]]; then
"$SCRIPT_HELPERS_DIR"/test_python_jit_legacy.bat
fi
elif [[ "${SHARD_NUMBER}" == 2 && $NUM_TEST_SHARDS -gt 1 ]]; then
"$SCRIPT_HELPERS_DIR"/test_custom_backend.bat
"$SCRIPT_HELPERS_DIR"/test_custom_script_ops.bat
fi
fi
}
run_tests
assert_git_not_dirty
echo "TEST PASSED"

View File

@ -1,8 +1,3 @@
Warning
=======
Contents may be out of date. Our CircleCI workflows are gradually being migrated to Github actions.
Structure of CI
===============
@ -21,6 +16,8 @@ setup job:
not, even if there isn't a Git checkout.
CircleCI configuration generator
================================
@ -59,6 +56,7 @@ See comment [here](https://github.com/pytorch/pytorch/pull/17323#pullrequestrevi
In contrast with a full recursive tree traversal of configuration dimensions,
> in the future I think we actually want to decrease our matrix somewhat and have only a few mostly-orthogonal builds that taste as many different features as possible on PRs, plus a more complete suite on every PR and maybe an almost full suite nightly/weekly (we don't have this yet). Specifying PR jobs in the future might be easier to read with an explicit list when we come to this.
----------------
----------------
@ -73,9 +71,9 @@ A **binary configuration** is a collection of
* release or nightly
* releases are stable, nightlies are beta and built every night
* python version
* linux: 3.7m (mu is wide unicode or something like that. It usually doesn't matter but you should know that it exists)
* macos: 3.7, 3.8
* windows: 3.7, 3.8
* linux: 3.5m, 3.6m 3.7m (mu is wide unicode or something like that. It usually doesn't matter but you should know that it exists)
* macos: 3.6, 3.7, 3.8
* windows: 3.6, 3.7, 3.8
* cpu version
* cpu, cuda 9.0, cuda 10.0
* The supported cuda versions occasionally change
@ -190,6 +188,18 @@ binary_run_in_docker.sh is a way to share the docker start-up code between the b
We want all the nightly binary jobs to run on the exact same git commit, so we wrote our own checkout logic to ensure that the same commit was always picked. Later circleci changed that to use a single pytorch checkout and persist it through the workspace (they did this because our config file was too big, so they wanted to take a lot of the setup code into scripts, but the scripts needed the code repo to exist to be called, so they added a prereq step called 'setup' to checkout the code and persist the needed scripts to the workspace). The changes to the binary jobs were not properly tested, so they all broke from missing pytorch code no longer existing. We hotfixed the problem by adding the pytorch checkout back to binary_checkout, so now there's two checkouts of pytorch on the binary jobs. This problem still needs to be fixed, but it takes careful tracing of which code is being called where.
# Azure Pipelines structure of the binaries
TODO: fill in stuff
## How are the workflows structured?
TODO: fill in stuff
## How are the jobs structured?
TODO: fill in stuff
# Code structure of the binaries (circleci agnostic)
## Overview
@ -205,22 +215,28 @@ pytorch/pytorch
- config.yml # GENERATED file that actually controls all circleci behavior
- verbatim-sources # Used to generate job/workflow sections in ^
- scripts/ # Code needed to prepare circleci environments for binary build scripts
- setup.py # Builds pytorch. This is wrapped in pytorch/builder
- cmake files # used in normal building of pytorch
# All code needed to prepare a binary build, given an environment
# with all the right variables/packages/paths.
pytorch/builder
# Given an installed binary and a proper python env, runs some checks
# to make sure the binary was built the proper way. Checks things like
# the library dependencies, symbols present, etc.
- check_binary.sh
# Given an installed binary, runs python tests to make sure everything
# is in order. These should be de-duped. Right now they both run smoke
# tests, but are called from different places. Usually just call some
# import statements, but also has overlap with check_binary.sh above
- run_tests.sh
- smoke_test.sh
# Folders that govern how packages are built. See paragraphs below
- conda/
- build_pytorch.sh # Entrypoint. Delegates to proper conda build folder
- switch_cuda_version.sh # Switches activate CUDA installation in Docker
@ -327,6 +343,7 @@ All linux builds occur in docker images. The docker images are
* Has ALL CUDA versions installed. The script pytorch/builder/conda/switch_cuda_version.sh sets /usr/local/cuda to a symlink to e.g. /usr/local/cuda-10.0 to enable different CUDA builds
* Also used for cpu builds
* pytorch/manylinux-cuda90
* pytorch/manylinux-cuda92
* pytorch/manylinux-cuda100
* Also used for cpu builds
@ -349,28 +366,36 @@ Writing PRs that test the binaries is annoying, since the default circleci jobs
```sh
# Make your changes
touch .circleci/verbatim-sources/nightly-binary-build-defaults.yml
# Regenerate the yaml, has to be in python 3.7
.circleci/regenerate.sh
# Make a commit
git add .circleci *
git commit -m "My real changes"
git push origin my_branch
# Now hardcode the jobs that you want in the .circleci/config.yml workflows section
# Also eliminate ensure-consistency and should_run_job checks
# e.g. https://github.com/pytorch/pytorch/commit/2b3344bfed8772fe86e5210cc4ee915dee42b32d
# Make a commit you won't keep
git add .circleci
git commit -m "[DO NOT LAND] testing binaries for above changes"
git push origin my_branch
# Now you need to make some changes to the first commit.
git rebase -i HEAD~2 # mark the first commit as 'edit'
# Make the changes
touch .circleci/verbatim-sources/nightly-binary-build-defaults.yml
.circleci/regenerate.sh
# Ammend the commit and recontinue
git add .circleci
git commit --amend
git rebase --continue
# Update the PR, need to force since the commits are different now
git push origin my_branch --force
```
@ -399,12 +424,14 @@ docker run \
-v your/builder/repo:/builder \
-v where/you/want/packages/to/appear:/final_pkgs \
-it pytorch/conda-cuda /bin/bash
# Export whatever variables are important to you. All variables that you'd
# possibly need are in .circleci/scripts/binary_populate_env.sh
# You should probably always export at least these 3 variables
export PACKAGE_TYPE=conda
export DESIRED_PYTHON=3.7
export DESIRED_PYTHON=3.6
export DESIRED_CUDA=cpu
# Call the entrypoint
# `|& tee foo.log` just copies all stdout and stderr output to foo.log
# The builds generate lots of output so you probably need this when
@ -428,6 +455,7 @@ But if you want to try, then Id recommend
# Create a new terminal
# Clear your LD_LIBRARY_PATH and trim as much out of your PATH as you
# know how to do
# Install a new miniconda
# First remove any other python or conda installation from your PATH
# Always install miniconda 3, even if building for Python <3
@ -438,17 +466,20 @@ chmod +x "$conda_sh"
"$conda_sh" -b -p "$MINICONDA_ROOT"
rm -f "$conda_sh"
export PATH="~/my_new_conda/bin:$PATH"
# Create a clean python env
# All MacOS builds use conda to manage the python env and dependencies
# that are built with, even the pip packages
conda create -yn binary python=2.7
conda activate binary
# Export whatever variables are important to you. All variables that you'd
# possibly need are in .circleci/scripts/binary_populate_env.sh
# You should probably always export at least these 3 variables
export PACKAGE_TYPE=conda
export DESIRED_PYTHON=3.7
export DESIRED_PYTHON=3.6
export DESIRED_CUDA=cpu
# Call the entrypoint you want
path/to/builder/wheel/build_wheel.sh
```

View File

@ -30,7 +30,47 @@ def get_processor_arch_name(gpu_version):
"cu" + gpu_version.strip("cuda") if gpu_version.startswith("cuda") else gpu_version
)
LINUX_PACKAGE_VARIANTS = OrderedDict(
manywheel=[
"3.6m",
"3.7m",
"3.8m",
"3.9m"
],
conda=dimensions.STANDARD_PYTHON_VERSIONS,
libtorch=[
"3.7m",
],
)
CONFIG_TREE_DATA = OrderedDict(
linux=(dimensions.GPU_VERSIONS, LINUX_PACKAGE_VARIANTS),
macos=([None], OrderedDict(
wheel=dimensions.STANDARD_PYTHON_VERSIONS,
conda=dimensions.STANDARD_PYTHON_VERSIONS,
libtorch=[
"3.7",
],
)),
macos_arm64=([None], OrderedDict(
wheel=[
"3.8",
],
conda=[
"3.8",
],
)),
# Skip CUDA-9.2 builds on Windows
windows=(
[v for v in dimensions.GPU_VERSIONS if v not in ['cuda92'] + dimensions.ROCM_VERSION_LABELS],
OrderedDict(
wheel=dimensions.STANDARD_PYTHON_VERSIONS,
conda=dimensions.STANDARD_PYTHON_VERSIONS,
libtorch=[
"3.7",
],
)
),
)
# GCC config variants:
@ -57,7 +97,7 @@ WINDOWS_LIBTORCH_CONFIG_VARIANTS = [
class TopLevelNode(ConfigNode):
def __init__(self, node_name, config_tree_data, smoke):
super().__init__(None, node_name)
super(TopLevelNode, self).__init__(None, node_name)
self.config_tree_data = config_tree_data
self.props["smoke"] = smoke
@ -68,7 +108,7 @@ class TopLevelNode(ConfigNode):
class OSConfigNode(ConfigNode):
def __init__(self, parent, os_name, gpu_versions, py_tree):
super().__init__(parent, os_name)
super(OSConfigNode, self).__init__(parent, os_name)
self.py_tree = py_tree
self.props["os_name"] = os_name
@ -80,12 +120,11 @@ class OSConfigNode(ConfigNode):
class PackageFormatConfigNode(ConfigNode):
def __init__(self, parent, package_format, python_versions):
super().__init__(parent, package_format)
super(PackageFormatConfigNode, self).__init__(parent, package_format)
self.props["python_versions"] = python_versions
self.props["package_format"] = package_format
def get_children(self):
if self.find_prop("os_name") == "linux":
return [LinuxGccConfigNode(self, v) for v in LINUX_GCC_CONFIG_VARIANTS[self.find_prop("package_format")]]
@ -97,7 +136,7 @@ class PackageFormatConfigNode(ConfigNode):
class LinuxGccConfigNode(ConfigNode):
def __init__(self, parent, gcc_config_variant):
super().__init__(parent, "GCC_CONFIG_VARIANT=" + str(gcc_config_variant))
super(LinuxGccConfigNode, self).__init__(parent, "GCC_CONFIG_VARIANT=" + str(gcc_config_variant))
self.props["gcc_config_variant"] = gcc_config_variant
@ -122,7 +161,7 @@ class LinuxGccConfigNode(ConfigNode):
class WindowsLibtorchConfigNode(ConfigNode):
def __init__(self, parent, libtorch_config_variant):
super().__init__(parent, "LIBTORCH_CONFIG_VARIANT=" + str(libtorch_config_variant))
super(WindowsLibtorchConfigNode, self).__init__(parent, "LIBTORCH_CONFIG_VARIANT=" + str(libtorch_config_variant))
self.props["libtorch_config_variant"] = libtorch_config_variant
@ -132,7 +171,7 @@ class WindowsLibtorchConfigNode(ConfigNode):
class ArchConfigNode(ConfigNode):
def __init__(self, parent, gpu):
super().__init__(parent, get_processor_arch_name(gpu))
super(ArchConfigNode, self).__init__(parent, get_processor_arch_name(gpu))
self.props["gpu"] = gpu
@ -142,7 +181,7 @@ class ArchConfigNode(ConfigNode):
class PyVersionConfigNode(ConfigNode):
def __init__(self, parent, pyver):
super().__init__(parent, pyver)
super(PyVersionConfigNode, self).__init__(parent, pyver)
self.props["pyver"] = pyver
@ -158,7 +197,7 @@ class PyVersionConfigNode(ConfigNode):
class LinkingVariantConfigNode(ConfigNode):
def __init__(self, parent, linking_variant):
super().__init__(parent, linking_variant)
super(LinkingVariantConfigNode, self).__init__(parent, linking_variant)
def get_children(self):
return [DependencyInclusionConfigNode(self, v) for v in DEPS_INCLUSION_DIMENSIONS]
@ -166,6 +205,6 @@ class LinkingVariantConfigNode(ConfigNode):
class DependencyInclusionConfigNode(ConfigNode):
def __init__(self, parent, deps_variant):
super().__init__(parent, deps_variant)
super(DependencyInclusionConfigNode, self).__init__(parent, deps_variant)
self.props["libtorch_variant"] = "-".join([self.parent.get_label(), self.get_label()])

View File

@ -27,19 +27,7 @@ class Conf(object):
def gen_docker_image(self):
if self.gcc_config_variant == 'gcc5.4_cxx11-abi':
if self.gpu_version is None:
return miniutils.quote("pytorch/libtorch-cxx11-builder:cpu")
else:
return miniutils.quote(
f"pytorch/libtorch-cxx11-builder:{self.gpu_version}"
)
if self.pydistro == "conda":
if self.gpu_version is None:
return miniutils.quote("pytorch/conda-builder:cpu")
else:
return miniutils.quote(
f"pytorch/conda-builder:{self.gpu_version}"
)
return miniutils.quote("pytorch/pytorch-binary-docker-image-ubuntu16.04:latest")
docker_word_substitution = {
"manywheel": "manylinux",
@ -124,9 +112,9 @@ class Conf(object):
Output looks similar to:
- binary_upload:
name: binary_linux_manywheel_3_7m_cu113_devtoolset7_nightly_upload
name: binary_linux_manywheel_3_7m_cu92_devtoolset7_nightly_upload
context: org-member
requires: binary_linux_manywheel_3_7m_cu113_devtoolset7_nightly_test
requires: binary_linux_manywheel_3_7m_cu92_devtoolset7_nightly_test
filters:
branches:
only:
@ -134,7 +122,7 @@ class Conf(object):
tags:
only: /v[0-9]+(\\.[0-9]+)*-rc[0-9]+/
package_type: manywheel
upload_subfolder: cu113
upload_subfolder: cu92
"""
return {
"binary_upload": OrderedDict({

View File

@ -1,15 +1,14 @@
PHASES = ["build", "test"]
CUDA_VERSIONS = [
"101",
"102",
"113",
"116",
"117",
"111",
]
ROCM_VERSIONS = [
"4.3.1",
"4.5.2",
"3.10",
"4.0.1",
]
ROCM_VERSION_LABELS = ["rocm" + v for v in ROCM_VERSIONS]
@ -17,8 +16,8 @@ ROCM_VERSION_LABELS = ["rocm" + v for v in ROCM_VERSIONS]
GPU_VERSIONS = [None] + ["cuda" + v for v in CUDA_VERSIONS] + ROCM_VERSION_LABELS
STANDARD_PYTHON_VERSIONS = [
"3.6",
"3.7",
"3.8",
"3.9",
"3.10"
"3.9"
]

View File

@ -1,7 +1,105 @@
from cimodel.lib.conf_tree import ConfigNode
from cimodel.lib.conf_tree import ConfigNode, X, XImportant
CONFIG_TREE_DATA = [
("xenial", [
("gcc", [
("5.4", [ # All this subtree rebases to master and then build
("3.6", [
("important", [X(True)]),
("parallel_tbb", [X(True)]),
("parallel_native", [X(True)]),
("pure_torch", [X(True)]),
]),
]),
# TODO: bring back libtorch test
("7", [X("3.6")]),
]),
("clang", [
("5", [
("3.6", [
("asan", [
(True, [
("shard_test", [XImportant(True)]),
]),
]),
]),
]),
("7", [
("3.6", [
("onnx", [XImportant(True)]),
]),
]),
]),
("cuda", [
("9.2", [
("3.6", [
X(True),
("cuda_gcc_override", [
("gcc5.4", [
('build_only', [XImportant(True)]),
]),
]),
])
]),
("10.1", [
("3.6", [
('build_only', [X(True)]),
]),
]),
("10.2", [
("3.6", [
("shard_test", [XImportant(True)]),
("libtorch", [
(True, [
('build_only', [X(True)]),
]),
]),
]),
]),
("11.1", [
("3.8", [
X(True),
("libtorch", [
(True, [
('build_only', [XImportant(True)]),
]),
]),
]),
]),
]),
]),
("bionic", [
("clang", [
("9", [
XImportant("3.6"),
]),
("9", [
("3.6", [
("xla", [XImportant(True)]),
("vulkan", [XImportant(True)]),
]),
]),
]),
("gcc", [
("9", [
("3.8", [
("coverage", [
(True, [
("shard_test", [XImportant(True)]),
]),
]),
]),
]),
]),
("rocm", [
("3.9", [
("3.6", [
('build_only', [XImportant(True)]),
]),
]),
]),
]),
]
@ -12,7 +110,7 @@ def get_major_pyver(dotted_version):
class TreeConfigNode(ConfigNode):
def __init__(self, parent, node_name, subtree):
super().__init__(parent, self.modify_label(node_name))
super(TreeConfigNode, self).__init__(parent, self.modify_label(node_name))
self.subtree = subtree
self.init2(node_name)
@ -28,7 +126,7 @@ class TreeConfigNode(ConfigNode):
class TopLevelNode(TreeConfigNode):
def __init__(self, node_name, subtree):
super().__init__(None, node_name, subtree)
super(TopLevelNode, self).__init__(None, node_name, subtree)
# noinspection PyMethodMayBeStatic
def child_constructor(self):
@ -53,8 +151,6 @@ class PyVerConfigNode(TreeConfigNode):
def init2(self, node_name):
self.props["pyver"] = node_name
self.props["abbreviated_pyver"] = get_major_pyver(node_name)
if node_name == "3.9":
self.props["abbreviated_pyver"] = "py3.9"
# noinspection PyMethodMayBeStatic
def child_constructor(self):
@ -71,11 +167,8 @@ class ExperimentalFeatureConfigNode(TreeConfigNode):
next_nodes = {
"asan": AsanConfigNode,
"xla": XlaConfigNode,
"mps": MPSConfigNode,
"vulkan": VulkanConfigNode,
"parallel_tbb": ParallelTBBConfigNode,
"crossref": CrossRefConfigNode,
"dynamo": DynamoConfigNode,
"parallel_native": ParallelNativeConfigNode,
"onnx": ONNXConfigNode,
"libtorch": LibTorchConfigNode,
@ -83,19 +176,12 @@ class ExperimentalFeatureConfigNode(TreeConfigNode):
"build_only": BuildOnlyConfigNode,
"shard_test": ShardTestConfigNode,
"cuda_gcc_override": CudaGccOverrideConfigNode,
"coverage": CoverageConfigNode,
"pure_torch": PureTorchConfigNode,
"slow_gradcheck": SlowGradcheckConfigNode,
}
return next_nodes[experimental_feature]
class SlowGradcheckConfigNode(TreeConfigNode):
def init2(self, node_name):
self.props["is_slow_gradcheck"] = True
def child_constructor(self):
return ExperimentalFeatureConfigNode
class PureTorchConfigNode(TreeConfigNode):
def modify_label(self, label):
return "PURE_TORCH=" + str(label)
@ -117,16 +203,6 @@ class XlaConfigNode(TreeConfigNode):
def child_constructor(self):
return ImportantConfigNode
class MPSConfigNode(TreeConfigNode):
def modify_label(self, label):
return "MPS=" + str(label)
def init2(self, node_name):
self.props["is_mps"] = node_name
def child_constructor(self):
return ImportantConfigNode
class AsanConfigNode(TreeConfigNode):
def modify_label(self, label):
@ -172,22 +248,6 @@ class ParallelTBBConfigNode(TreeConfigNode):
return ImportantConfigNode
class CrossRefConfigNode(TreeConfigNode):
def init2(self, node_name):
self.props["is_crossref"] = node_name
def child_constructor(self):
return ImportantConfigNode
class DynamoConfigNode(TreeConfigNode):
def init2(self, node_name):
self.props["is_dynamo"] = node_name
def child_constructor(self):
return ImportantConfigNode
class ParallelNativeConfigNode(TreeConfigNode):
def modify_label(self, label):
return "PARALLELNATIVE=" + str(label)
@ -234,6 +294,14 @@ class ShardTestConfigNode(TreeConfigNode):
return ImportantConfigNode
class CoverageConfigNode(TreeConfigNode):
def init2(self, node_name):
self.props["is_coverage"] = node_name
def child_constructor(self):
return ExperimentalFeatureConfigNode
class ImportantConfigNode(TreeConfigNode):
def modify_label(self, label):
return "IMPORTANT=" + str(label)

View File

@ -31,7 +31,6 @@ class Conf:
is_libtorch: bool = False
is_important: bool = False
parallel_backend: Optional[str] = None
build_only: bool = False
@staticmethod
def is_test_phase(phase):
@ -113,8 +112,6 @@ class Conf:
parameters["resource_class"] = "xlarge"
if hasattr(self, 'filters'):
parameters['filters'] = self.filters
if self.build_only:
parameters['build_only'] = miniutils.quote(str(int(True)))
return parameters
def gen_workflow_job(self, phase):
@ -178,6 +175,35 @@ class DocPushConf(object):
}
}
# TODO Convert these to graph nodes
def gen_dependent_configs(xenial_parent_config):
extra_parms = [
(["multigpu"], "large"),
(["nogpu", "NO_AVX2"], None),
(["nogpu", "NO_AVX"], None),
(["slow"], "medium"),
]
configs = []
for parms, gpu in extra_parms:
c = Conf(
xenial_parent_config.distro,
["py3"] + parms,
pyver=xenial_parent_config.pyver,
cuda_version=xenial_parent_config.cuda_version,
restrict_phases=["test"],
gpu_resource=gpu,
parent_build=xenial_parent_config,
is_important=False,
)
configs.append(c)
return configs
def gen_docs_configs(xenial_parent_config):
configs = []
@ -185,7 +211,7 @@ def gen_docs_configs(xenial_parent_config):
HiddenConf(
"pytorch_python_doc_build",
parent_build=xenial_parent_config,
filters=gen_filter_dict(branches_list=["master", "main", "nightly"],
filters=gen_filter_dict(branches_list=r"/.*/",
tags_list=RC_PATTERN),
)
)
@ -201,7 +227,7 @@ def gen_docs_configs(xenial_parent_config):
HiddenConf(
"pytorch_cpp_doc_build",
parent_build=xenial_parent_config,
filters=gen_filter_dict(branches_list=["master", "main", "nightly"],
filters=gen_filter_dict(branches_list=r"/.*/",
tags_list=RC_PATTERN),
)
)
@ -212,6 +238,13 @@ def gen_docs_configs(xenial_parent_config):
branch="master",
)
)
configs.append(
HiddenConf(
"pytorch_doc_test",
parent_build=xenial_parent_config
)
)
return configs
@ -225,7 +258,7 @@ def gen_tree():
return configs_list
def instantiate_configs(only_slow_gradcheck):
def instantiate_configs():
config_list = []
@ -239,17 +272,12 @@ def instantiate_configs(only_slow_gradcheck):
compiler_version = fc.find_prop("compiler_version")
is_xla = fc.find_prop("is_xla") or False
is_asan = fc.find_prop("is_asan") or False
is_crossref = fc.find_prop("is_crossref") or False
is_dynamo = fc.find_prop("is_dynamo") or False
is_coverage = fc.find_prop("is_coverage") or False
is_onnx = fc.find_prop("is_onnx") or False
is_pure_torch = fc.find_prop("is_pure_torch") or False
is_vulkan = fc.find_prop("is_vulkan") or False
is_slow_gradcheck = fc.find_prop("is_slow_gradcheck") or False
parms_list_ignored_for_docker_image = []
if only_slow_gradcheck ^ is_slow_gradcheck:
continue
python_version = None
if compiler_name == "cuda" or compiler_name == "android":
python_version = fc.find_prop("pyver")
@ -284,11 +312,9 @@ def instantiate_configs(only_slow_gradcheck):
python_version = fc.find_prop("pyver")
parms_list[0] = fc.find_prop("abbreviated_pyver")
if is_crossref:
parms_list_ignored_for_docker_image.append("crossref")
if is_dynamo:
parms_list_ignored_for_docker_image.append("dynamo")
if is_coverage:
parms_list_ignored_for_docker_image.append("coverage")
python_version = fc.find_prop("pyver")
if is_onnx:
parms_list.append("onnx")
@ -312,10 +338,6 @@ def instantiate_configs(only_slow_gradcheck):
if build_only or is_pure_torch:
restrict_phases = ["build"]
if is_slow_gradcheck:
parms_list_ignored_for_docker_image.append("old")
parms_list_ignored_for_docker_image.append("gradcheck")
gpu_resource = None
if cuda_version and cuda_version != "10":
gpu_resource = "medium"
@ -335,15 +357,15 @@ def instantiate_configs(only_slow_gradcheck):
is_libtorch=is_libtorch,
is_important=is_important,
parallel_backend=parallel_backend,
build_only=build_only,
)
# run docs builds on "pytorch-linux-xenial-py3.7-gcc5.4". Docs builds
# run docs builds on "pytorch-linux-xenial-py3.6-gcc5.4". Docs builds
# should run on a CPU-only build that runs on all PRs.
# XXX should this be updated to a more modern build?
# XXX should this be updated to a more modern build? Projects are
# beginning to drop python3.6
if (
distro_name == "xenial"
and fc.find_prop("pyver") == "3.7"
and fc.find_prop("pyver") == "3.6"
and cuda_version is None
and parallel_backend is None
and not is_vulkan
@ -355,14 +377,36 @@ def instantiate_configs(only_slow_gradcheck):
tags_list=RC_PATTERN)
c.dependent_tests = gen_docs_configs(c)
if cuda_version == "10.2" and python_version == "3.6" and not is_libtorch:
c.dependent_tests = gen_dependent_configs(c)
if (
compiler_name == "gcc"
and compiler_version == "5.4"
and not is_libtorch
and not is_vulkan
and not is_pure_torch
and parallel_backend is None
):
bc_breaking_check = Conf(
"backward-compatibility-check",
[],
is_xla=False,
restrict_phases=["test"],
is_libtorch=False,
is_important=True,
parent_build=c,
)
c.dependent_tests.append(bc_breaking_check)
config_list.append(c)
return config_list
def get_workflow_jobs(only_slow_gradcheck=False):
def get_workflow_jobs():
config_list = instantiate_configs(only_slow_gradcheck)
config_list = instantiate_configs()
x = []
for conf_options in config_list:

View File

@ -0,0 +1,105 @@
import cimodel.data.simple.util.branch_filters as branch_filters
from cimodel.data.simple.util.docker_constants import (
DOCKER_IMAGE_NDK, DOCKER_REQUIREMENT_NDK
)
class AndroidJob:
def __init__(self,
variant,
template_name,
is_master_only=True):
self.variant = variant
self.template_name = template_name
self.is_master_only = is_master_only
def gen_tree(self):
base_name_parts = [
"pytorch",
"linux",
"xenial",
"py3",
"clang5",
"android",
"ndk",
"r19c",
] + self.variant + [
"build",
]
full_job_name = "_".join(base_name_parts)
build_env_name = "-".join(base_name_parts)
props_dict = {
"name": full_job_name,
"build_environment": "\"{}\"".format(build_env_name),
"docker_image": "\"{}\"".format(DOCKER_IMAGE_NDK),
"requires": [DOCKER_REQUIREMENT_NDK]
}
if self.is_master_only:
props_dict["filters"] = branch_filters.gen_filter_dict(branch_filters.NON_PR_BRANCH_LIST)
return [{self.template_name: props_dict}]
class AndroidGradleJob:
def __init__(self,
job_name,
template_name,
dependencies,
is_master_only=True,
is_pr_only=False):
self.job_name = job_name
self.template_name = template_name
self.dependencies = dependencies
self.is_master_only = is_master_only
self.is_pr_only = is_pr_only
def gen_tree(self):
props_dict = {
"name": self.job_name,
"requires": self.dependencies,
}
if self.is_master_only:
props_dict["filters"] = branch_filters.gen_filter_dict(branch_filters.NON_PR_BRANCH_LIST)
elif self.is_pr_only:
props_dict["filters"] = branch_filters.gen_filter_dict(branch_filters.PR_BRANCH_LIST)
return [{self.template_name: props_dict}]
WORKFLOW_DATA = [
AndroidJob(["x86_32"], "pytorch_linux_build", is_master_only=False),
AndroidJob(["x86_64"], "pytorch_linux_build"),
AndroidJob(["arm", "v7a"], "pytorch_linux_build"),
AndroidJob(["arm", "v8a"], "pytorch_linux_build"),
AndroidGradleJob(
"pytorch-linux-xenial-py3-clang5-android-ndk-r19c-gradle-build-x86_32",
"pytorch_android_gradle_build-x86_32",
["pytorch_linux_xenial_py3_clang5_android_ndk_r19c_x86_32_build"],
is_master_only=False,
is_pr_only=True),
AndroidGradleJob(
"pytorch-linux-xenial-py3-clang5-android-ndk-r19c-gradle-custom-build-single",
"pytorch_android_gradle_custom_build_single",
[DOCKER_REQUIREMENT_NDK],
is_master_only=False,
is_pr_only=True),
AndroidGradleJob(
"pytorch-linux-xenial-py3-clang5-android-ndk-r19c-gradle-build",
"pytorch_android_gradle_build",
["pytorch_linux_xenial_py3_clang5_android_ndk_r19c_x86_32_build",
"pytorch_linux_xenial_py3_clang5_android_ndk_r19c_x86_64_build",
"pytorch_linux_xenial_py3_clang5_android_ndk_r19c_arm_v7a_build",
"pytorch_linux_xenial_py3_clang5_android_ndk_r19c_arm_v8a_build"]),
]
def get_workflow_jobs():
return [item.gen_tree() for item in WORKFLOW_DATA]

View File

@ -0,0 +1,69 @@
from cimodel.data.simple.util.docker_constants import (
DOCKER_IMAGE_GCC7,
DOCKER_REQUIREMENT_GCC7
)
def gen_job_name(phase):
job_name_parts = [
"pytorch",
"bazel",
phase,
]
return "_".join(job_name_parts)
class BazelJob:
def __init__(self, phase, extra_props=None):
self.phase = phase
self.extra_props = extra_props or {}
def gen_tree(self):
template_parts = [
"pytorch",
"linux",
"bazel",
self.phase,
]
build_env_parts = [
"pytorch",
"linux",
"xenial",
"py3.6",
"gcc7",
"bazel",
self.phase,
]
full_job_name = gen_job_name(self.phase)
build_env_name = "-".join(build_env_parts)
extra_requires = (
[gen_job_name("build")] if self.phase == "test" else
[DOCKER_REQUIREMENT_GCC7]
)
props_dict = {
"build_environment": build_env_name,
"docker_image": DOCKER_IMAGE_GCC7,
"name": full_job_name,
"requires": extra_requires,
}
props_dict.update(self.extra_props)
template_name = "_".join(template_parts)
return [{template_name: props_dict}]
WORKFLOW_DATA = [
BazelJob("build", {"resource_class": "large"}),
BazelJob("test"),
]
def get_workflow_jobs():
return [item.gen_tree() for item in WORKFLOW_DATA]

View File

@ -0,0 +1,193 @@
"""
TODO: Refactor circleci/cimodel/data/binary_build_data.py to generate this file
instead of doing one offs here
Binary builds (subset, to smoke test that they'll work)
NB: If you modify this file, you need to also modify
the binary_and_smoke_tests_on_pr variable in
pytorch-ci-hud to adjust the allowed build list
at https://github.com/ezyang/pytorch-ci-hud/blob/master/src/BuildHistoryDisplay.js
Note:
This binary build is currently broken, see https://github_com/pytorch/pytorch/issues/16710
- binary_linux_conda_3_6_cu90_devtoolset7_build
- binary_linux_conda_3_6_cu90_devtoolset7_test
TODO
we should test a libtorch cuda build, but they take too long
- binary_linux_libtorch_3_6m_cu90_devtoolset7_static-without-deps_build
"""
import cimodel.lib.miniutils as miniutils
import cimodel.data.simple.util.branch_filters
class SmoketestJob:
def __init__(self,
template_name,
build_env_parts,
docker_image,
job_name,
is_master_only=False,
requires=None,
has_libtorch_variant=False,
extra_props=None):
self.template_name = template_name
self.build_env_parts = build_env_parts
self.docker_image = docker_image
self.job_name = job_name
self.is_master_only = is_master_only
self.requires = requires or []
self.has_libtorch_variant = has_libtorch_variant
self.extra_props = extra_props or {}
def gen_tree(self):
props_dict = {
"build_environment": " ".join(self.build_env_parts),
"name": self.job_name,
"requires": self.requires,
}
if self.docker_image:
props_dict["docker_image"] = self.docker_image
if self.is_master_only:
props_dict["filters"] = cimodel.data.simple.util.branch_filters.gen_filter_dict()
if self.has_libtorch_variant:
props_dict["libtorch_variant"] = "shared-with-deps"
props_dict.update(self.extra_props)
return [{self.template_name: props_dict}]
WORKFLOW_DATA = [
SmoketestJob(
"binary_linux_build",
["manywheel", "3.7m", "cu102", "devtoolset7"],
"pytorch/manylinux-cuda102",
"binary_linux_manywheel_3_7m_cu102_devtoolset7_build",
is_master_only=True,
),
SmoketestJob(
"binary_linux_build",
["libtorch", "3.7m", "cpu", "devtoolset7"],
"pytorch/manylinux-cuda102",
"binary_linux_libtorch_3_7m_cpu_devtoolset7_shared-with-deps_build",
is_master_only=False,
has_libtorch_variant=True,
),
SmoketestJob(
"binary_linux_build",
["libtorch", "3.7m", "cpu", "gcc5.4_cxx11-abi"],
"pytorch/pytorch-binary-docker-image-ubuntu16.04:latest",
"binary_linux_libtorch_3_7m_cpu_gcc5_4_cxx11-abi_shared-with-deps_build",
is_master_only=False,
has_libtorch_variant=True,
),
SmoketestJob(
"binary_mac_build",
["wheel", "3.7", "cpu"],
None,
"binary_macos_wheel_3_7_cpu_build",
is_master_only=True,
),
# This job has an average run time of 3 hours o.O
# Now only running this on master to reduce overhead
SmoketestJob(
"binary_mac_build",
["libtorch", "3.7", "cpu"],
None,
"binary_macos_libtorch_3_7_cpu_build",
is_master_only=True,
),
SmoketestJob(
"binary_windows_build",
["libtorch", "3.7", "cpu", "debug"],
None,
"binary_windows_libtorch_3_7_cpu_debug_build",
is_master_only=False,
),
SmoketestJob(
"binary_windows_build",
["libtorch", "3.7", "cpu", "release"],
None,
"binary_windows_libtorch_3_7_cpu_release_build",
is_master_only=False,
),
SmoketestJob(
"binary_windows_build",
["wheel", "3.7", "cu102"],
None,
"binary_windows_wheel_3_7_cu102_build",
is_master_only=True,
),
SmoketestJob(
"binary_windows_test",
["libtorch", "3.7", "cpu", "debug"],
None,
"binary_windows_libtorch_3_7_cpu_debug_test",
is_master_only=False,
requires=["binary_windows_libtorch_3_7_cpu_debug_build"],
),
SmoketestJob(
"binary_windows_test",
["libtorch", "3.7", "cpu", "release"],
None,
"binary_windows_libtorch_3_7_cpu_release_test",
is_master_only=False,
requires=["binary_windows_libtorch_3_7_cpu_release_build"],
),
SmoketestJob(
"binary_windows_test",
["wheel", "3.7", "cu102"],
None,
"binary_windows_wheel_3_7_cu102_test",
is_master_only=True,
requires=["binary_windows_wheel_3_7_cu102_build"],
extra_props={
"executor": "windows-with-nvidia-gpu",
},
),
SmoketestJob(
"binary_linux_test",
["manywheel", "3.7m", "cu102", "devtoolset7"],
"pytorch/manylinux-cuda102",
"binary_linux_manywheel_3_7m_cu102_devtoolset7_test",
is_master_only=True,
requires=["binary_linux_manywheel_3_7m_cu102_devtoolset7_build"],
extra_props={
"resource_class": "gpu.medium",
"use_cuda_docker_runtime": miniutils.quote((str(1))),
},
),
SmoketestJob(
"binary_linux_test",
["libtorch", "3.7m", "cpu", "devtoolset7"],
"pytorch/manylinux-cuda102",
"binary_linux_libtorch_3_7m_cpu_devtoolset7_shared-with-deps_test",
is_master_only=False,
requires=["binary_linux_libtorch_3_7m_cpu_devtoolset7_shared-with-deps_build"],
has_libtorch_variant=True,
),
SmoketestJob(
"binary_linux_test",
["libtorch", "3.7m", "cpu", "gcc5.4_cxx11-abi"],
"pytorch/pytorch-binary-docker-image-ubuntu16.04:latest",
"binary_linux_libtorch_3_7m_cpu_gcc5_4_cxx11-abi_shared-with-deps_test",
is_master_only=False,
requires=["binary_linux_libtorch_3_7m_cpu_gcc5_4_cxx11-abi_shared-with-deps_build"],
has_libtorch_variant=True,
),
]
def get_workflow_jobs():
return [item.gen_tree() for item in WORKFLOW_DATA]

View File

@ -4,29 +4,45 @@ from cimodel.lib.miniutils import quote
from cimodel.data.simple.util.branch_filters import gen_filter_dict, RC_PATTERN
# NOTE: All hardcoded docker image builds have been migrated to GHA
# TODO: make this generated from a matrix rather than just a static list
IMAGE_NAMES = [
"pytorch-linux-bionic-cuda11.1-cudnn8-py3.6-gcc9",
"pytorch-linux-bionic-cuda11.1-cudnn8-py3.8-gcc9",
"pytorch-linux-bionic-cuda11.0-cudnn8-py3.6-gcc9",
"pytorch-linux-bionic-cuda11.0-cudnn8-py3.8-gcc9",
"pytorch-linux-bionic-cuda10.2-cudnn7-py3.8-gcc9",
"pytorch-linux-bionic-py3.6-clang9",
"pytorch-linux-bionic-cuda10.2-cudnn7-py3.6-clang9",
"pytorch-linux-bionic-py3.8-gcc9",
"pytorch-linux-xenial-cuda10-cudnn7-py3-gcc7",
"pytorch-linux-xenial-cuda10.1-cudnn7-py3-gcc7",
"pytorch-linux-xenial-cuda10.2-cudnn7-py3-gcc7",
"pytorch-linux-xenial-cuda11.0-cudnn8-py3-gcc7",
"pytorch-linux-xenial-cuda11.1-cudnn8-py3-gcc7",
"pytorch-linux-xenial-cuda9.2-cudnn7-py3-gcc5.4",
"pytorch-linux-xenial-cuda9.2-cudnn7-py3-gcc7",
"pytorch-linux-xenial-py3-clang5-android-ndk-r19c",
"pytorch-linux-xenial-py3-clang5-asan",
"pytorch-linux-xenial-py3-clang7-onnx",
"pytorch-linux-xenial-py3.8",
"pytorch-linux-xenial-py3.6-clang7",
"pytorch-linux-xenial-py3.6-gcc5.4", # this one is used in doc builds
"pytorch-linux-xenial-py3.6-gcc7.2",
"pytorch-linux-xenial-py3.6-gcc7",
"pytorch-linux-bionic-rocm3.9-py3.6",
"pytorch-linux-bionic-rocm3.10-py3.6",
]
# This entry should be an element from the list above
# This should contain the image matching the "slow_gradcheck" entry in
# pytorch_build_data.py
SLOW_GRADCHECK_IMAGE_NAME = "pytorch-linux-xenial-cuda10.2-cudnn7-py3-gcc7"
def get_workflow_jobs(images=IMAGE_NAMES, only_slow_gradcheck=False):
def get_workflow_jobs():
"""Generates a list of docker image build definitions"""
ret = []
for image_name in images:
if image_name.startswith('docker-'):
image_name = image_name.lstrip('docker-')
if only_slow_gradcheck and image_name is not SLOW_GRADCHECK_IMAGE_NAME:
continue
for image_name in IMAGE_NAMES:
parameters = OrderedDict({
"name": quote(f"docker-{image_name}"),
"image_name": quote(image_name),
})
if image_name == "pytorch-linux-xenial-py3.7-gcc5.4":
if image_name == "pytorch-linux-xenial-py3.6-gcc5.4":
# pushing documentation on tags requires CircleCI to also
# build all the dependencies on tags, including this docker image
parameters['filters'] = gen_filter_dict(branches_list=r"/.*/",

View File

@ -0,0 +1,78 @@
import cimodel.lib.miniutils as miniutils
from cimodel.data.simple.util.versions import MultiPartVersion, CudaVersion
from cimodel.data.simple.util.docker_constants import DOCKER_IMAGE_BASIC, DOCKER_IMAGE_CUDA_10_2
class GeConfigTestJob:
def __init__(self,
py_version,
gcc_version,
cuda_version,
variant_parts,
extra_requires,
use_cuda_docker=False,
build_env_override=None):
self.py_version = py_version
self.gcc_version = gcc_version
self.cuda_version = cuda_version
self.variant_parts = variant_parts
self.extra_requires = extra_requires
self.use_cuda_docker = use_cuda_docker
self.build_env_override = build_env_override
def get_all_parts(self, with_dots):
maybe_py_version = self.py_version.render_dots_or_parts(with_dots) if self.py_version else []
maybe_gcc_version = self.gcc_version.render_dots_or_parts(with_dots) if self.gcc_version else []
maybe_cuda_version = self.cuda_version.render_dots_or_parts(with_dots) if self.cuda_version else []
common_parts = [
"pytorch",
"linux",
"xenial",
] + maybe_cuda_version + maybe_py_version + maybe_gcc_version
return common_parts + self.variant_parts
def gen_tree(self):
resource_class = "gpu.medium" if self.use_cuda_docker else "large"
docker_image = DOCKER_IMAGE_CUDA_10_2 if self.use_cuda_docker else DOCKER_IMAGE_BASIC
full_name = "_".join(self.get_all_parts(False))
build_env = self.build_env_override or "-".join(self.get_all_parts(True))
props_dict = {
"name": full_name,
"build_environment": build_env,
"requires": self.extra_requires,
"resource_class": resource_class,
"docker_image": docker_image,
}
if self.use_cuda_docker:
props_dict["use_cuda_docker_runtime"] = miniutils.quote(str(1))
return [{"pytorch_linux_test": props_dict}]
WORKFLOW_DATA = [
GeConfigTestJob(
MultiPartVersion([3, 6], "py"),
MultiPartVersion([5, 4], "gcc"),
None,
["jit_legacy", "test"],
["pytorch_linux_xenial_py3_6_gcc5_4_build"]),
GeConfigTestJob(
None,
None,
CudaVersion(10, 2),
["cudnn7", "py3", "jit_legacy", "test"],
["pytorch_linux_xenial_cuda10_2_cudnn7_py3_gcc7_build"],
use_cuda_docker=True,
),
]
def get_workflow_jobs():
return [item.gen_tree() for item in WORKFLOW_DATA]

View File

@ -1,8 +1,7 @@
from cimodel.data.simple.util.versions import MultiPartVersion
from cimodel.data.simple.util.branch_filters import gen_filter_dict_exclude
import cimodel.lib.miniutils as miniutils
XCODE_VERSION = MultiPartVersion([12, 5, 1])
XCODE_VERSION = MultiPartVersion([12, 0, 0])
class ArchVariant:
@ -12,7 +11,7 @@ class ArchVariant:
def render(self):
extra_parts = [self.custom_build_name] if len(self.custom_build_name) > 0 else []
return "-".join([self.name] + extra_parts).replace("_", "-")
return "_".join([self.name] + extra_parts)
def get_platform(arch_variant_name):
@ -26,25 +25,30 @@ class IOSJob:
self.is_org_member_context = is_org_member_context
self.extra_props = extra_props
def gen_name_parts(self):
version_parts = self.xcode_version.render_dots_or_parts("-")
build_variant_suffix = self.arch_variant.render()
def gen_name_parts(self, with_version_dots):
version_parts = self.xcode_version.render_dots_or_parts(with_version_dots)
build_variant_suffix = "_".join([self.arch_variant.render(), "build"])
return [
"pytorch",
"ios",
] + version_parts + [
build_variant_suffix,
]
def gen_job_name(self):
return "-".join(self.gen_name_parts())
return "_".join(self.gen_name_parts(False))
def gen_tree(self):
platform_name = get_platform(self.arch_variant.name)
props_dict = {
"name": self.gen_job_name(),
"build_environment": self.gen_job_name(),
"build_environment": "-".join(self.gen_name_parts(True)),
"ios_arch": self.arch_variant.name,
"ios_platform": platform_name,
"name": self.gen_job_name(),
}
if self.is_org_member_context:
@ -53,28 +57,14 @@ class IOSJob:
if self.extra_props:
props_dict.update(self.extra_props)
props_dict["filters"] = gen_filter_dict_exclude()
return [{"pytorch_ios_build": props_dict}]
WORKFLOW_DATA = [
IOSJob(XCODE_VERSION, ArchVariant("x86_64"), is_org_member_context=False, extra_props={
"lite_interpreter": miniutils.quote(str(int(True)))}),
# IOSJob(XCODE_VERSION, ArchVariant("arm64"), extra_props={
# "lite_interpreter": miniutils.quote(str(int(True)))}),
# IOSJob(XCODE_VERSION, ArchVariant("arm64", "metal"), extra_props={
# "use_metal": miniutils.quote(str(int(True))),
# "lite_interpreter": miniutils.quote(str(int(True)))}),
# IOSJob(XCODE_VERSION, ArchVariant("arm64", "custom-ops"), extra_props={
# "op_list": "mobilenetv2.yaml",
# "lite_interpreter": miniutils.quote(str(int(True)))}),
IOSJob(XCODE_VERSION, ArchVariant("x86_64", "coreml"), is_org_member_context=False, extra_props={
"use_coreml": miniutils.quote(str(int(True))),
"lite_interpreter": miniutils.quote(str(int(True)))}),
# IOSJob(XCODE_VERSION, ArchVariant("arm64", "coreml"), extra_props={
# "use_coreml": miniutils.quote(str(int(True))),
# "lite_interpreter": miniutils.quote(str(int(True)))}),
IOSJob(XCODE_VERSION, ArchVariant("x86_64"), is_org_member_context=False),
IOSJob(XCODE_VERSION, ArchVariant("arm64")),
IOSJob(XCODE_VERSION, ArchVariant("arm64", "metal"), extra_props={"use_metal": miniutils.quote(str(int(True)))}),
IOSJob(XCODE_VERSION, ArchVariant("arm64", "custom"), extra_props={"op_list": "mobilenetv2.yaml"}),
]

View File

@ -1,26 +1,14 @@
class MacOsJob:
def __init__(self, os_version, is_build=False, is_test=False, extra_props=tuple()):
# extra_props is tuple type, because mutable data structures for argument defaults
# is not recommended.
def __init__(self, os_version, is_test=False):
self.os_version = os_version
self.is_build = is_build
self.is_test = is_test
self.extra_props = dict(extra_props)
def gen_tree(self):
non_phase_parts = ["pytorch", "macos", self.os_version, "py3"]
extra_name_list = [name for name, exist in self.extra_props.items() if exist]
full_job_name_list = (
non_phase_parts
+ extra_name_list
+ [
"build" if self.is_build else None,
"test" if self.is_test else None,
]
)
phase_name = "test" if self.is_test else "build"
full_job_name = "_".join(list(filter(None, full_job_name_list)))
full_job_name = "_".join(non_phase_parts + [phase_name])
test_build_dependency = "_".join(non_phase_parts + ["build"])
extra_dependencies = [test_build_dependency] if self.is_test else []
@ -33,21 +21,7 @@ class MacOsJob:
return [{full_job_name: props_dict}]
WORKFLOW_DATA = [
MacOsJob("10_15", is_build=True),
MacOsJob("10_13", is_build=True),
MacOsJob(
"10_13",
is_build=False,
is_test=True,
),
MacOsJob(
"10_13",
is_build=True,
is_test=True,
extra_props=tuple({"lite_interpreter": True}.items()),
),
]
WORKFLOW_DATA = [MacOsJob("10_13"), MacOsJob("10_13", True)]
def get_workflow_jobs():

View File

@ -4,6 +4,12 @@ PyTorch Mobile PR builds (use linux host toolchain + mobile build options)
import cimodel.lib.miniutils as miniutils
import cimodel.data.simple.util.branch_filters
from cimodel.data.simple.util.docker_constants import (
DOCKER_IMAGE_ASAN,
DOCKER_REQUIREMENT_ASAN,
DOCKER_IMAGE_NDK,
DOCKER_REQUIREMENT_NDK
)
class MobileJob:
@ -46,6 +52,27 @@ class MobileJob:
WORKFLOW_DATA = [
MobileJob(
DOCKER_IMAGE_ASAN,
[DOCKER_REQUIREMENT_ASAN],
["build"]
),
# Use LLVM-DEV toolchain in android-ndk-r19c docker image
MobileJob(
DOCKER_IMAGE_NDK,
[DOCKER_REQUIREMENT_NDK],
["custom", "build", "dynamic"]
),
# Use LLVM-DEV toolchain in android-ndk-r19c docker image
# Most of this CI is already covered by "mobile-custom-build-dynamic" job
MobileJob(
DOCKER_IMAGE_NDK,
[DOCKER_REQUIREMENT_NDK],
["code", "analysis"],
True
),
]

View File

@ -0,0 +1,77 @@
from cimodel.data.simple.util.docker_constants import (
DOCKER_IMAGE_NDK,
DOCKER_REQUIREMENT_NDK
)
class AndroidNightlyJob:
def __init__(self,
variant,
template_name,
extra_props=None,
with_docker=True,
requires=None,
no_build_suffix=False):
self.variant = variant
self.template_name = template_name
self.extra_props = extra_props or {}
self.with_docker = with_docker
self.requires = requires
self.no_build_suffix = no_build_suffix
def gen_tree(self):
base_name_parts = [
"pytorch",
"linux",
"xenial",
"py3",
"clang5",
"android",
"ndk",
"r19c",
] + self.variant
build_suffix = [] if self.no_build_suffix else ["build"]
full_job_name = "_".join(["nightly"] + base_name_parts + build_suffix)
build_env_name = "-".join(base_name_parts)
props_dict = {
"name": full_job_name,
"requires": self.requires,
"filters": {"branches": {"only": "nightly"}},
}
props_dict.update(self.extra_props)
if self.with_docker:
props_dict["docker_image"] = DOCKER_IMAGE_NDK
props_dict["build_environment"] = build_env_name
return [{self.template_name: props_dict}]
BASE_REQUIRES = [DOCKER_REQUIREMENT_NDK]
WORKFLOW_DATA = [
AndroidNightlyJob(["x86_32"], "pytorch_linux_build", requires=BASE_REQUIRES),
AndroidNightlyJob(["x86_64"], "pytorch_linux_build", requires=BASE_REQUIRES),
AndroidNightlyJob(["arm", "v7a"], "pytorch_linux_build", requires=BASE_REQUIRES),
AndroidNightlyJob(["arm", "v8a"], "pytorch_linux_build", requires=BASE_REQUIRES),
AndroidNightlyJob(["android_gradle"], "pytorch_android_gradle_build",
with_docker=False,
requires=[
"nightly_pytorch_linux_xenial_py3_clang5_android_ndk_r19c_x86_32_build",
"nightly_pytorch_linux_xenial_py3_clang5_android_ndk_r19c_x86_64_build",
"nightly_pytorch_linux_xenial_py3_clang5_android_ndk_r19c_arm_v7a_build",
"nightly_pytorch_linux_xenial_py3_clang5_android_ndk_r19c_arm_v8a_build"]),
AndroidNightlyJob(["x86_32_android_publish_snapshot"], "pytorch_android_publish_snapshot",
extra_props={"context": "org-member"},
with_docker=False,
requires=["nightly_pytorch_linux_xenial_py3_clang5_android_ndk_r19c_android_gradle_build"],
no_build_suffix=True),
]
def get_workflow_jobs():
return [item.gen_tree() for item in WORKFLOW_DATA]

View File

@ -1,30 +1,24 @@
import cimodel.data.simple.ios_definitions as ios_definitions
import cimodel.lib.miniutils as miniutils
class IOSNightlyJob:
def __init__(self,
variant,
is_full_jit=False,
is_upload=False):
self.variant = variant
self.is_full_jit = is_full_jit
self.is_upload = is_upload
def get_phase_name(self):
return "upload" if self.is_upload else "build"
def get_common_name_pieces(self, sep):
def get_common_name_pieces(self, with_version_dots):
extra_name_suffix = [self.get_phase_name()] if self.is_upload else []
extra_name = ["full_jit"] if self.is_full_jit else []
common_name_pieces = [
"ios",
] + extra_name + [
] + ios_definitions.XCODE_VERSION.render_dots_or_parts(sep) + [
] + ios_definitions.XCODE_VERSION.render_dots_or_parts(with_version_dots) + [
"nightly",
self.variant,
"build",
@ -33,14 +27,13 @@ class IOSNightlyJob:
return common_name_pieces
def gen_job_name(self):
return "_".join(["pytorch"] + self.get_common_name_pieces(None))
return "_".join(["pytorch"] + self.get_common_name_pieces(False))
def gen_tree(self):
build_configs = BUILD_CONFIGS_FULL_JIT if self.is_full_jit else BUILD_CONFIGS
extra_requires = [x.gen_job_name() for x in build_configs] if self.is_upload else []
extra_requires = [x.gen_job_name() for x in BUILD_CONFIGS] if self.is_upload else []
props_dict = {
"build_environment": "-".join(["libtorch"] + self.get_common_name_pieces(".")),
"build_environment": "-".join(["libtorch"] + self.get_common_name_pieces(True)),
"requires": extra_requires,
"context": "org-member",
"filters": {"branches": {"only": "nightly"}},
@ -50,11 +43,6 @@ class IOSNightlyJob:
props_dict["ios_arch"] = self.variant
props_dict["ios_platform"] = ios_definitions.get_platform(self.variant)
props_dict["name"] = self.gen_job_name()
props_dict["use_metal"] = miniutils.quote(str(int(True)))
props_dict["use_coreml"] = miniutils.quote(str(int(True)))
if self.is_full_jit:
props_dict["lite_interpreter"] = miniutils.quote(str(int(False)))
template_name = "_".join([
"binary",
@ -70,14 +58,9 @@ BUILD_CONFIGS = [
IOSNightlyJob("arm64"),
]
BUILD_CONFIGS_FULL_JIT = [
IOSNightlyJob("x86_64", is_full_jit=True),
IOSNightlyJob("arm64", is_full_jit=True),
]
WORKFLOW_DATA = BUILD_CONFIGS + BUILD_CONFIGS_FULL_JIT + [
IOSNightlyJob("binary", is_full_jit=False, is_upload=True),
IOSNightlyJob("binary", is_full_jit=True, is_upload=True),
WORKFLOW_DATA = BUILD_CONFIGS + [
IOSNightlyJob("binary", is_upload=True),
]

View File

@ -1,5 +1,4 @@
NON_PR_BRANCH_LIST = [
"main",
"master",
r"/ci-all\/.*/",
r"/release\/.*/",
@ -12,9 +11,6 @@ PR_BRANCH_LIST = [
RC_PATTERN = r"/v[0-9]+(\.[0-9]+)*-rc[0-9]+/"
MAC_IOS_EXCLUSION_LIST = ["nightly", "postnightly"]
def gen_filter_dict(
branches_list=NON_PR_BRANCH_LIST,
tags_list=None
@ -29,11 +25,3 @@ def gen_filter_dict(
if tags_list is not None:
filter_dict["tags"] = {"only": tags_list}
return filter_dict
def gen_filter_dict_exclude(branches_list=MAC_IOS_EXCLUSION_LIST):
return {
"branches": {
"ignore": branches_list,
},
}

View File

@ -11,7 +11,7 @@ def gen_docker_image_requires(image_name):
DOCKER_IMAGE_BASIC, DOCKER_REQUIREMENT_BASE = gen_docker_image(
"pytorch-linux-xenial-py3.7-gcc5.4"
"pytorch-linux-xenial-py3.6-gcc5.4"
)
DOCKER_IMAGE_CUDA_10_2, DOCKER_REQUIREMENT_CUDA_10_2 = gen_docker_image(
@ -19,7 +19,7 @@ DOCKER_IMAGE_CUDA_10_2, DOCKER_REQUIREMENT_CUDA_10_2 = gen_docker_image(
)
DOCKER_IMAGE_GCC7, DOCKER_REQUIREMENT_GCC7 = gen_docker_image(
"pytorch-linux-xenial-py3.7-gcc7"
"pytorch-linux-xenial-py3.6-gcc7"
)

View File

@ -1,6 +1,3 @@
from typing import Optional
class MultiPartVersion:
def __init__(self, parts, prefix=""):
self.parts = parts
@ -16,11 +13,14 @@ class MultiPartVersion:
else:
return [self.prefix]
def render_dots_or_parts(self, sep: Optional[str] = None):
if sep is None:
return self.prefixed_parts()
def render_dots(self):
return ".".join(self.prefixed_parts())
def render_dots_or_parts(self, with_dots):
if with_dots:
return [self.render_dots()]
else:
return [sep.join(self.prefixed_parts())]
return self.prefixed_parts()
class CudaVersion(MultiPartVersion):

View File

@ -0,0 +1,148 @@
import cimodel.data.simple.util.branch_filters
import cimodel.lib.miniutils as miniutils
from cimodel.data.simple.util.versions import CudaVersion
class WindowsJob:
def __init__(
self,
test_index,
vscode_spec,
cuda_version,
force_on_cpu=False,
master_only_pred=lambda job: job.vscode_spec.year != 2019,
):
self.test_index = test_index
self.vscode_spec = vscode_spec
self.cuda_version = cuda_version
self.force_on_cpu = force_on_cpu
self.master_only_pred = master_only_pred
def gen_tree(self):
base_phase = "build" if self.test_index is None else "test"
numbered_phase = (
base_phase if self.test_index is None else base_phase + str(self.test_index)
)
key_name = "_".join(["pytorch", "windows", base_phase])
cpu_forcing_name_parts = ["on", "cpu"] if self.force_on_cpu else []
target_arch = self.cuda_version.render_dots() if self.cuda_version else "cpu"
base_name_parts = [
"pytorch",
"windows",
self.vscode_spec.render(),
"py36",
target_arch,
]
prerequisite_jobs = []
if base_phase == "test":
prerequisite_jobs.append("_".join(base_name_parts + ["build"]))
if self.cuda_version:
self.cudnn_version = 8 if self.cuda_version.major == 11 else 7
arch_env_elements = (
["cuda" + str(self.cuda_version.major), "cudnn" + str(self.cudnn_version)]
if self.cuda_version
else ["cpu"]
)
build_environment_string = "-".join(
["pytorch", "win"]
+ self.vscode_spec.get_elements()
+ arch_env_elements
+ ["py3"]
)
is_running_on_cuda = bool(self.cuda_version) and not self.force_on_cpu
props_dict = {
"build_environment": build_environment_string,
"python_version": miniutils.quote("3.6"),
"vc_version": miniutils.quote(self.vscode_spec.dotted_version()),
"vc_year": miniutils.quote(str(self.vscode_spec.year)),
"vc_product": self.vscode_spec.get_product(),
"use_cuda": miniutils.quote(str(int(is_running_on_cuda))),
"requires": prerequisite_jobs,
}
if self.master_only_pred(self):
props_dict[
"filters"
] = cimodel.data.simple.util.branch_filters.gen_filter_dict()
name_parts = base_name_parts + cpu_forcing_name_parts + [numbered_phase]
if base_phase == "test":
test_name = "-".join(["pytorch", "windows", numbered_phase])
props_dict["test_name"] = test_name
if is_running_on_cuda:
props_dict["executor"] = "windows-with-nvidia-gpu"
props_dict["cuda_version"] = (
miniutils.quote(str(self.cuda_version))
if self.cuda_version
else "cpu"
)
props_dict["name"] = "_".join(name_parts)
return [{key_name: props_dict}]
class VcSpec:
def __init__(self, year, version_elements=None, hide_version=False):
self.year = year
self.version_elements = version_elements or []
self.hide_version = hide_version
def get_elements(self):
if self.hide_version:
return [self.prefixed_year()]
return [self.prefixed_year()] + self.version_elements
def get_product(self):
return "Community" if self.year == 2019 else "BuildTools"
def dotted_version(self):
return ".".join(self.version_elements)
def prefixed_year(self):
return "vs" + str(self.year)
def render(self):
return "_".join(self.get_elements())
def FalsePred(_):
return False
def TruePred(_):
return True
_VC2019 = VcSpec(2019)
WORKFLOW_DATA = [
# VS2019 CUDA-10.1
WindowsJob(None, _VC2019, CudaVersion(10, 1)),
WindowsJob(1, _VC2019, CudaVersion(10, 1)),
WindowsJob(2, _VC2019, CudaVersion(10, 1)),
# VS2019 CUDA-11.1
WindowsJob(None, _VC2019, CudaVersion(11, 1)),
WindowsJob(1, _VC2019, CudaVersion(11, 1), master_only_pred=TruePred),
WindowsJob(2, _VC2019, CudaVersion(11, 1), master_only_pred=TruePred),
# VS2019 CPU-only
WindowsJob(None, _VC2019, None),
WindowsJob(1, _VC2019, None, master_only_pred=TruePred),
WindowsJob(2, _VC2019, None, master_only_pred=TruePred),
WindowsJob(1, _VC2019, CudaVersion(10, 1), force_on_cpu=True, master_only_pred=TruePred),
]
def get_windows_workflows():
return [item.gen_tree() for item in WORKFLOW_DATA]

File diff suppressed because it is too large Load Diff

View File

@ -0,0 +1,19 @@
# Docker images for Jenkins
This directory contains everything needed to build the Docker images
that are used in our CI
The Dockerfiles located in subdirectories are parameterized to
conditionally run build stages depending on build arguments passed to
`docker build`. This lets us use only a few Dockerfiles for many
images. The different configurations are identified by a freeform
string that we call a _build environment_. This string is persisted in
each image as the `BUILD_ENVIRONMENT` environment variable.
See `build.sh` for valid build environments (it's the giant switch).
## Contents
* `build.sh` -- dispatch script to launch all builds
* `common` -- scripts used to execute individual Docker build stages
* `ubuntu-cuda` -- Dockerfile for Ubuntu image with CUDA support for nvidia-docker

View File

@ -20,8 +20,10 @@ buildscript {
}
dependencies {
classpath 'com.android.tools.build:gradle:4.1.2'
classpath 'com.vanniktech:gradle-maven-publish-plugin:0.14.2'
classpath 'com.android.tools.build:gradle:3.3.2'
classpath "com.jfrog.bintray.gradle:gradle-bintray-plugin:1.8.0"
classpath "com.github.dcendents:android-maven-gradle-plugin:2.1"
classpath "org.jfrog.buildinfo:build-info-extractor-gradle:4.9.8"
}
}
@ -51,9 +53,9 @@ android {
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.facebook.fbjni:fbjni-java-only:0.0.3'
implementation 'com.google.code.findbugs:jsr305:3.0.1'
implementation 'com.facebook.soloader:nativeloader:0.10.4'
implementation 'com.facebook.soloader:nativeloader:0.8.0'
implementation 'junit:junit:' + rootProject.junitVersion
implementation 'androidx.test:core:' + rootProject.coreVersion

428
.circleci/docker/build.sh Executable file
View File

@ -0,0 +1,428 @@
#!/bin/bash
set -ex
image="$1"
shift
if [ -z "${image}" ]; then
echo "Usage: $0 IMAGE"
exit 1
fi
function extract_version_from_image_name() {
eval export $2=$(echo "${image}" | perl -n -e"/$1(\d+(\.\d+)?(\.\d+)?)/ && print \$1")
if [ "x${!2}" = x ]; then
echo "variable '$2' not correctly parsed from image='$image'"
exit 1
fi
}
function extract_all_from_image_name() {
# parts $image into array, splitting on '-'
keep_IFS="$IFS"
IFS="-"
declare -a parts=($image)
IFS="$keep_IFS"
unset keep_IFS
for part in "${parts[@]}"; do
name=$(echo "${part}" | perl -n -e"/([a-zA-Z]+)\d+(\.\d+)?(\.\d+)?/ && print \$1")
vername="${name^^}_VERSION"
# "py" is the odd one out, needs this special case
if [ "x${name}" = xpy ]; then
vername=ANACONDA_PYTHON_VERSION
fi
# skip non-conforming fields such as "pytorch", "linux" or "xenial" without version string
if [ -n "${name}" ]; then
extract_version_from_image_name "${name}" "${vername}"
fi
done
}
if [[ "$image" == *-xenial* ]]; then
UBUNTU_VERSION=16.04
elif [[ "$image" == *-artful* ]]; then
UBUNTU_VERSION=17.10
elif [[ "$image" == *-bionic* ]]; then
UBUNTU_VERSION=18.04
elif [[ "$image" == *-focal* ]]; then
UBUNTU_VERSION=20.04
elif [[ "$image" == *ubuntu* ]]; then
extract_version_from_image_name ubuntu UBUNTU_VERSION
elif [[ "$image" == *centos* ]]; then
extract_version_from_image_name centos CENTOS_VERSION
fi
if [ -n "${UBUNTU_VERSION}" ]; then
OS="ubuntu"
elif [ -n "${CENTOS_VERSION}" ]; then
OS="centos"
else
echo "Unable to derive operating system base..."
exit 1
fi
DOCKERFILE="${OS}/Dockerfile"
if [[ "$image" == *cuda* ]]; then
DOCKERFILE="${OS}-cuda/Dockerfile"
elif [[ "$image" == *rocm* ]]; then
DOCKERFILE="${OS}-rocm/Dockerfile"
fi
TRAVIS_DL_URL_PREFIX="https://s3.amazonaws.com/travis-python-archives/binaries/ubuntu/14.04/x86_64"
# It's annoying to rename jobs every time you want to rewrite a
# configuration, so we hardcode everything here rather than do it
# from scratch
case "$image" in
pytorch-linux-xenial-py3.8)
ANACONDA_PYTHON_VERSION=3.8
GCC_VERSION=7
# Do not install PROTOBUF, DB, and VISION as a test
;;
pytorch-linux-xenial-py3.6-gcc5.4)
ANACONDA_PYTHON_VERSION=3.6
GCC_VERSION=5
PROTOBUF=yes
DB=yes
VISION=yes
KATEX=yes
;;
pytorch-linux-xenial-py3.6-gcc7.2)
ANACONDA_PYTHON_VERSION=3.6
GCC_VERSION=7
# Do not install PROTOBUF, DB, and VISION as a test
;;
pytorch-linux-xenial-py3.6-gcc7)
ANACONDA_PYTHON_VERSION=3.6
GCC_VERSION=7
PROTOBUF=yes
DB=yes
VISION=yes
;;
pytorch-linux-xenial-cuda9.2-cudnn7-py3-gcc5.4)
CUDA_VERSION=9.2
CUDNN_VERSION=7
ANACONDA_PYTHON_VERSION=3.6
GCC_VERSION=5
PROTOBUF=yes
DB=yes
VISION=yes
;;
pytorch-linux-xenial-cuda9.2-cudnn7-py3-gcc7)
CUDA_VERSION=9.2
CUDNN_VERSION=7
ANACONDA_PYTHON_VERSION=3.6
GCC_VERSION=7
PROTOBUF=yes
DB=yes
VISION=yes
;;
pytorch-linux-xenial-cuda10-cudnn7-py3-gcc7)
CUDA_VERSION=10.0
CUDNN_VERSION=7
ANACONDA_PYTHON_VERSION=3.6
GCC_VERSION=7
PROTOBUF=yes
DB=yes
VISION=yes
;;
pytorch-linux-xenial-cuda10.1-cudnn7-py3-gcc7)
CUDA_VERSION=10.1
CUDNN_VERSION=7
ANACONDA_PYTHON_VERSION=3.6
GCC_VERSION=7
PROTOBUF=yes
DB=yes
VISION=yes
KATEX=yes
;;
pytorch-linux-xenial-cuda10.2-cudnn7-py3-gcc7)
CUDA_VERSION=10.2
CUDNN_VERSION=7
ANACONDA_PYTHON_VERSION=3.6
GCC_VERSION=7
PROTOBUF=yes
DB=yes
VISION=yes
KATEX=yes
;;
pytorch-linux-xenial-cuda11.0-cudnn8-py3-gcc7)
CUDA_VERSION=11.0
CUDNN_VERSION=8
ANACONDA_PYTHON_VERSION=3.6
GCC_VERSION=7
PROTOBUF=yes
DB=yes
VISION=yes
KATEX=yes
;;
pytorch-linux-xenial-cuda11.1-cudnn8-py3-gcc7)
CUDA_VERSION=11.1
CUDNN_VERSION=8
ANACONDA_PYTHON_VERSION=3.6
GCC_VERSION=7
PROTOBUF=yes
DB=yes
VISION=yes
KATEX=yes
;;
pytorch-linux-xenial-py3-clang5-asan)
ANACONDA_PYTHON_VERSION=3.6
CLANG_VERSION=5.0
PROTOBUF=yes
DB=yes
VISION=yes
;;
pytorch-linux-xenial-py3-clang7-onnx)
ANACONDA_PYTHON_VERSION=3.6
CLANG_VERSION=7
PROTOBUF=yes
DB=yes
VISION=yes
;;
pytorch-linux-xenial-py3-clang5-android-ndk-r19c)
ANACONDA_PYTHON_VERSION=3.6
CLANG_VERSION=5.0
LLVMDEV=yes
PROTOBUF=yes
ANDROID=yes
ANDROID_NDK_VERSION=r19c
GRADLE_VERSION=4.10.3
CMAKE_VERSION=3.7.0
NINJA_VERSION=1.9.0
;;
pytorch-linux-xenial-py3.6-clang7)
ANACONDA_PYTHON_VERSION=3.6
CLANG_VERSION=7
PROTOBUF=yes
DB=yes
VISION=yes
;;
pytorch-linux-bionic-py3.6-clang9)
ANACONDA_PYTHON_VERSION=3.6
CLANG_VERSION=9
PROTOBUF=yes
DB=yes
VISION=yes
VULKAN_SDK_VERSION=1.2.148.0
SWIFTSHADER=yes
;;
pytorch-linux-bionic-py3.8-gcc9)
ANACONDA_PYTHON_VERSION=3.8
GCC_VERSION=9
PROTOBUF=yes
DB=yes
VISION=yes
;;
pytorch-linux-bionic-cuda10.2-cudnn7-py3.6-clang9)
CUDA_VERSION=10.2
CUDNN_VERSION=7
ANACONDA_PYTHON_VERSION=3.6
CLANG_VERSION=9
PROTOBUF=yes
DB=yes
VISION=yes
;;
pytorch-linux-bionic-cuda10.2-cudnn7-py3.8-gcc9)
CUDA_VERSION=10.2
CUDNN_VERSION=7
ANACONDA_PYTHON_VERSION=3.8
GCC_VERSION=9
PROTOBUF=yes
DB=yes
VISION=yes
;;
pytorch-linux-bionic-cuda11.0-cudnn8-py3.6-gcc9)
CUDA_VERSION=11.0
CUDNN_VERSION=8
ANACONDA_PYTHON_VERSION=3.6
GCC_VERSION=9
PROTOBUF=yes
DB=yes
VISION=yes
KATEX=yes
;;
pytorch-linux-bionic-cuda11.0-cudnn8-py3.8-gcc9)
CUDA_VERSION=11.0
CUDNN_VERSION=8
ANACONDA_PYTHON_VERSION=3.8
GCC_VERSION=9
PROTOBUF=yes
DB=yes
VISION=yes
KATEX=yes
;;
pytorch-linux-bionic-cuda11.1-cudnn8-py3.6-gcc9)
CUDA_VERSION=11.1
CUDNN_VERSION=8
ANACONDA_PYTHON_VERSION=3.6
GCC_VERSION=9
PROTOBUF=yes
DB=yes
VISION=yes
KATEX=yes
;;
pytorch-linux-bionic-cuda11.1-cudnn8-py3.8-gcc9)
CUDA_VERSION=11.1
CUDNN_VERSION=8
ANACONDA_PYTHON_VERSION=3.8
GCC_VERSION=9
PROTOBUF=yes
DB=yes
VISION=yes
KATEX=yes
;;
pytorch-linux-bionic-rocm3.9-py3.6)
ANACONDA_PYTHON_VERSION=3.6
PROTOBUF=yes
DB=yes
VISION=yes
ROCM_VERSION=3.9
;;
pytorch-linux-bionic-rocm3.10-py3.6)
ANACONDA_PYTHON_VERSION=3.6
PROTOBUF=yes
DB=yes
VISION=yes
ROCM_VERSION=3.10
;;
*)
# 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
extract_version_from_image_name py ANACONDA_PYTHON_VERSION
fi
if [[ "$image" == *cuda* ]]; then
extract_version_from_image_name cuda CUDA_VERSION
extract_version_from_image_name cudnn CUDNN_VERSION
fi
if [[ "$image" == *rocm* ]]; then
extract_version_from_image_name rocm ROCM_VERSION
fi
if [[ "$image" == *gcc* ]]; then
extract_version_from_image_name gcc GCC_VERSION
fi
if [[ "$image" == *clang* ]]; then
extract_version_from_image_name clang CLANG_VERSION
fi
if [[ "$image" == *devtoolset* ]]; then
extract_version_from_image_name devtoolset DEVTOOLSET_VERSION
fi
if [[ "$image" == *glibc* ]]; then
extract_version_from_image_name glibc GLIBC_VERSION
fi
if [[ "$image" == *cmake* ]]; then
extract_version_from_image_name cmake CMAKE_VERSION
fi
;;
esac
# Set Jenkins UID and GID if running Jenkins
if [ -n "${JENKINS:-}" ]; then
JENKINS_UID=$(id -u jenkins)
JENKINS_GID=$(id -g jenkins)
fi
tmp_tag="tmp-$(cat /dev/urandom | tr -dc 'a-z' | fold -w 32 | head -n 1)"
# Build image
# TODO: build-arg THRIFT is not turned on for any image, remove it once we confirm
# it's no longer needed.
docker build \
--no-cache \
--progress=plain \
--build-arg "TRAVIS_DL_URL_PREFIX=${TRAVIS_DL_URL_PREFIX}" \
--build-arg "BUILD_ENVIRONMENT=${image}" \
--build-arg "PROTOBUF=${PROTOBUF:-}" \
--build-arg "THRIFT=${THRIFT:-}" \
--build-arg "LLVMDEV=${LLVMDEV:-}" \
--build-arg "DB=${DB:-}" \
--build-arg "VISION=${VISION:-}" \
--build-arg "EC2=${EC2:-}" \
--build-arg "JENKINS=${JENKINS:-}" \
--build-arg "JENKINS_UID=${JENKINS_UID:-}" \
--build-arg "JENKINS_GID=${JENKINS_GID:-}" \
--build-arg "UBUNTU_VERSION=${UBUNTU_VERSION}" \
--build-arg "CENTOS_VERSION=${CENTOS_VERSION}" \
--build-arg "DEVTOOLSET_VERSION=${DEVTOOLSET_VERSION}" \
--build-arg "GLIBC_VERSION=${GLIBC_VERSION}" \
--build-arg "CLANG_VERSION=${CLANG_VERSION}" \
--build-arg "ANACONDA_PYTHON_VERSION=${ANACONDA_PYTHON_VERSION}" \
--build-arg "GCC_VERSION=${GCC_VERSION}" \
--build-arg "CUDA_VERSION=${CUDA_VERSION}" \
--build-arg "CUDNN_VERSION=${CUDNN_VERSION}" \
--build-arg "ANDROID=${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:-}" \
-f $(dirname ${DOCKERFILE})/Dockerfile \
-t "$tmp_tag" \
"$@" \
.
# NVIDIA dockers for RC releases use tag names like `11.0-cudnn8-devel-ubuntu18.04-rc`,
# for this case we will set UBUNTU_VERSION to `18.04-rc` so that the Dockerfile could
# find the correct image. As a result, here we have to replace the
# "$UBUNTU_VERSION" == "18.04-rc"
# with
# "$UBUNTU_VERSION" == "18.04"
UBUNTU_VERSION=$(echo ${UBUNTU_VERSION} | sed 's/-rc$//')
function drun() {
docker run --rm "$tmp_tag" $*
}
if [[ "$OS" == "ubuntu" ]]; then
if !(drun lsb_release -a 2>&1 | grep -qF Ubuntu); then
echo "OS=ubuntu, but:"
drun lsb_release -a
exit 1
fi
if !(drun lsb_release -a 2>&1 | grep -qF "$UBUNTU_VERSION"); then
echo "UBUNTU_VERSION=$UBUNTU_VERSION, but:"
drun lsb_release -a
exit 1
fi
fi
if [ -n "$ANACONDA_PYTHON_VERSION" ]; then
if !(drun python --version 2>&1 | grep -qF "Python $ANACONDA_PYTHON_VERSION"); then
echo "ANACONDA_PYTHON_VERSION=$ANACONDA_PYTHON_VERSION, but:"
drun python --version
exit 1
fi
fi
if [ -n "$GCC_VERSION" ]; then
if !(drun gcc --version 2>&1 | grep -q " $GCC_VERSION\\W"); then
echo "GCC_VERSION=$GCC_VERSION, but:"
drun gcc --version
exit 1
fi
fi
if [ -n "$CLANG_VERSION" ]; then
if !(drun clang --version 2>&1 | grep -qF "clang version $CLANG_VERSION"); then
echo "CLANG_VERSION=$CLANG_VERSION, but:"
drun clang --version
exit 1
fi
fi
if [ -n "$KATEX" ]; then
if !(drun katex --version); then
echo "KATEX=$KATEX, but:"
drun katex --version
exit 1
fi
fi

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