Commit Graph

85 Commits

Author SHA1 Message Date
PyTorch MergeBot
00059db034 Revert "[RELAND] Always build USE_DISTRIBUTED (#160449) and Make distributed modules importable even when backend not built (#159889) (#162594)"
This reverts commit 09cb34c1dc.

Reverted https://github.com/pytorch/pytorch/pull/162594 on behalf of https://github.com/malfet due to reverted internally and now can be safely reverted in OSS ([comment](https://github.com/pytorch/pytorch/pull/162594#issuecomment-3334176367))
2025-09-25 13:47:46 +00:00
FFFrog
ab2ce3c50e [Code Clean] Replace std::runtime_error with TORCH_CHECK (#163264)
Related ISSUE: https://github.com/pytorch/pytorch/issues/148114
Pull Request resolved: https://github.com/pytorch/pytorch/pull/163264
Approved by: https://github.com/albanD, https://github.com/cyyever
2025-09-25 11:28:51 +00:00
Edward Yang
09cb34c1dc [RELAND] Always build USE_DISTRIBUTED (#160449) and Make distributed modules importable even when backend not built (#159889) (#162594)
Summary:
Original: D81957844 and D81957923

Also, https://github.com/pytorch/pytorch/pull/162142 is patched in as well

#buildall

Test Plan:
sandcastle and oss ci

Rollback Plan:

Reviewed By: H-Huang

Pull Request resolved: https://github.com/pytorch/pytorch/pull/162594
Approved by: https://github.com/H-Huang, https://github.com/dcci
2025-09-22 21:12:18 +00:00
PyTorch MergeBot
f0078941cf Revert "[RELAND] Always build USE_DISTRIBUTED (#160449) and Make distributed modules importable even when backend not built (#159889) (#162594)"
This reverts commit 6c334885d4.

Reverted https://github.com/pytorch/pytorch/pull/162594 on behalf of https://github.com/wdvr due to reverted internally - @ezyang see D82281294 ([comment](https://github.com/pytorch/pytorch/pull/162594#issuecomment-3317017530))
2025-09-22 05:39:07 +00:00
Edward Yang
6c334885d4 [RELAND] Always build USE_DISTRIBUTED (#160449) and Make distributed modules importable even when backend not built (#159889) (#162594)
Summary:
Original: D81957844 and D81957923

Also, https://github.com/pytorch/pytorch/pull/162142 is patched in as well

#buildall

Test Plan:
sandcastle and oss ci

Rollback Plan:

Reviewed By: H-Huang

Pull Request resolved: https://github.com/pytorch/pytorch/pull/162594
Approved by: https://github.com/H-Huang, https://github.com/dcci
2025-09-12 10:54:42 +00:00
PyTorch MergeBot
6b59a19242 Revert "[RELAND] Always build USE_DISTRIBUTED (#160449) and Make distributed modules importable even when backend not built (#159889) (#162594)"
This reverts commit 6e8f17c580.

Reverted https://github.com/pytorch/pytorch/pull/162594 on behalf of https://github.com/huydhn due to Reverted internally ([comment](https://github.com/pytorch/pytorch/pull/162594#issuecomment-3283985880))
2025-09-12 06:52:03 +00:00
Edward Yang
6e8f17c580 [RELAND] Always build USE_DISTRIBUTED (#160449) and Make distributed modules importable even when backend not built (#159889) (#162594)
Summary:
Original: D81957844 and D81957923

Also, https://github.com/pytorch/pytorch/pull/162142 is patched in as well

#buildall

Test Plan:
sandcastle and oss ci

Rollback Plan:

Reviewed By: H-Huang

Pull Request resolved: https://github.com/pytorch/pytorch/pull/162594
Approved by: https://github.com/H-Huang, https://github.com/dcci
2025-09-12 03:56:18 +00:00
Edward Yang
dda071587f Revert "Make distributed modules importable even when backend not built (#159889)" (#162568)
This reverts commit a0d026688c.

Revert "Always build USE_DISTRIBUTED. (#160449)"

This reverts commit d80297a684.

Pull Request resolved: https://github.com/pytorch/pytorch/pull/162568
Approved by: https://github.com/huydhn
2025-09-10 04:29:42 +00:00
Edward Yang
d80297a684 Always build USE_DISTRIBUTED. (#160449)
Signed-off-by: Edward Yang <ezyang@meta.com>

Pull Request resolved: https://github.com/pytorch/pytorch/pull/160449
Approved by: https://github.com/wconstab, https://github.com/albanD, https://github.com/dcci
2025-09-08 19:10:36 +00:00
PyTorch MergeBot
1e0656f063 Revert "Always build USE_DISTRIBUTED. (#160449)"
This reverts commit de893e96c7.

Reverted https://github.com/pytorch/pytorch/pull/160449 on behalf of https://github.com/jeanschmidt due to internal changes breaks import checks, see [D81845053](https://www.internalfb.com/diff/D81845053) ([comment](https://github.com/pytorch/pytorch/pull/160449#issuecomment-3264887002))
2025-09-08 07:04:36 +00:00
Edward Yang
de893e96c7 Always build USE_DISTRIBUTED. (#160449)
Signed-off-by: Edward Yang <ezyang@meta.com>

Pull Request resolved: https://github.com/pytorch/pytorch/pull/160449
Approved by: https://github.com/wconstab, https://github.com/albanD, https://github.com/dcci
2025-09-05 20:15:11 +00:00
PyTorch MergeBot
adae7f66aa Revert "Always build USE_DISTRIBUTED. (#160449)"
This reverts commit c37103234a.

Reverted https://github.com/pytorch/pytorch/pull/160449 on behalf of https://github.com/jeanschmidt due to Breaking internal build rules, see D81756619 ([comment](https://github.com/pytorch/pytorch/pull/160449#issuecomment-3259430011))
2025-09-05 18:58:47 +00:00
Edward Yang
c37103234a Always build USE_DISTRIBUTED. (#160449)
Signed-off-by: Edward Yang <ezyang@meta.com>

Pull Request resolved: https://github.com/pytorch/pytorch/pull/160449
Approved by: https://github.com/wconstab, https://github.com/albanD, https://github.com/dcci
2025-09-04 19:43:17 +00:00
PyTorch MergeBot
b7dad7dd49 Revert "Always build USE_DISTRIBUTED. (#160449)"
This reverts commit 90b08643c3.

Reverted https://github.com/pytorch/pytorch/pull/160449 on behalf of https://github.com/jeanschmidt due to Already discussed with @ezyang about the internal quirks and errors ([comment](https://github.com/pytorch/pytorch/pull/160449#issuecomment-3254219358))
2025-09-04 15:25:07 +00:00
Edward Yang
90b08643c3 Always build USE_DISTRIBUTED. (#160449)
Signed-off-by: Edward Yang <ezyang@meta.com>

Pull Request resolved: https://github.com/pytorch/pytorch/pull/160449
Approved by: https://github.com/wconstab, https://github.com/albanD, https://github.com/dcci
2025-09-03 07:33:55 +00:00
PyTorch MergeBot
4e42aa8ffc Revert "Always build USE_DISTRIBUTED. (#160449)"
This reverts commit b7034e9c92.

Reverted https://github.com/pytorch/pytorch/pull/160449 on behalf of https://github.com/jeanschmidt due to Breaking internal builds, can't be landed with forward fix due to internal tooling problems ([comment](https://github.com/pytorch/pytorch/pull/160449#issuecomment-3246689684))
2025-09-02 20:28:42 +00:00
Edward Yang
b7034e9c92 Always build USE_DISTRIBUTED. (#160449)
Signed-off-by: Edward Yang <ezyang@meta.com>

Pull Request resolved: https://github.com/pytorch/pytorch/pull/160449
Approved by: https://github.com/wconstab, https://github.com/albanD, https://github.com/dcci
2025-09-01 23:00:21 +00:00
Nikita Shulga
c4d1ff02f8 [Lint] Update clang-format to 19.1.4 (#153889)
All changes other than the one to `tools/linter/adapters/s3_init_config.json` are generated by newer clang-format
Pull Request resolved: https://github.com/pytorch/pytorch/pull/153889
Approved by: https://github.com/cyyever, https://github.com/atalman
2025-05-20 14:12:46 +00:00
cyy
8fa81a6066 Enable misc-use-internal-linkage check and apply fixes (#148948)
Enables clang-tidy rule [`misc-use-internal-linkage`](https://clang.llvm.org/extra/clang-tidy/checks/misc/use-internal-linkage.html). This new check was introduced in Clang-Tidy 18 and is available due to recent update of Clang-Tidy 19.

The check marks functions and variables used only in the translation unit as static. Therefore undesired symbols are not leaked into other units, more link time optimisations are possible and the resulting binaries may be smaller.

The detected violations were mostly fixed by using static. In other cases, the symbols were indeed consumed by others files, then their declaring headers were included. Still some declarations were wrong and have been fixed.

Pull Request resolved: https://github.com/pytorch/pytorch/pull/148948
Approved by: https://github.com/Skylion007
2025-03-12 14:22:56 +00:00
cyy
75b954b715 [4/N] Enable clang-tidy in torch/csrc/autograd (#109455)
The PR enables clang-tidy checks in torch/csrc/autograd.

Pull Request resolved: https://github.com/pytorch/pytorch/pull/109455
Approved by: https://github.com/Skylion007
2023-09-17 17:11:50 +00:00
Aaron Gokaslan
8c8cd9539d Add missing moves to torch autograd (#92772)
Applies some additional std::move functions to torch/csrc/autograd to opportunities that were found via static analysis.
Pull Request resolved: https://github.com/pytorch/pytorch/pull/92772
Approved by: https://github.com/ezyang
2023-01-24 02:01:52 +00:00
soulitzer
388b245d54 Expose autograd.graph.Node as an abstract base class (#91475)
This PR:
- registers all of the codegened Nodes to the torch._C._functions module, this is where special nodes like AccumulateGrad are already registered.
- creates a autograd.graph.Node abstract base class that all of the newly registered nodes subclass from. We make the subclassing happen by implementing the ``__subclasshook__`` method
- enables static type checking to work and also enables Sphinx to generate documentation for the Node and its methods
- handles both the custom Function and codegened cases

Pull Request resolved: https://github.com/pytorch/pytorch/pull/91475
Approved by: https://github.com/albanD
2023-01-18 00:20:13 +00:00
Edward Z. Yang
df69660832 Revert "Revert "Add a lint rule for torch/csrc/util/pybind.h include (#82552)"" (#82599)
This reverts commit 532b8a9e00.
Pull Request resolved: https://github.com/pytorch/pytorch/pull/82599
Approved by: https://github.com/albanD
2022-08-02 19:37:02 +00:00
PyTorch MergeBot
532b8a9e00 Revert "Add a lint rule for torch/csrc/util/pybind.h include (#82552)"
This reverts commit 9465c0e0b5.

Reverted https://github.com/pytorch/pytorch/pull/82552 on behalf of https://github.com/zengk95 due to This seems to be breaking windows binary wheels
2022-08-01 20:25:35 +00:00
Edward Z. Yang
9465c0e0b5 Add a lint rule for torch/csrc/util/pybind.h include (#82552)
We define specializations for pybind11 defined templates
(in particular, PYBIND11_DECLARE_HOLDER_TYPE) and consequently
it is important that these specializations *always* be #include'd
when making use of pybind11 templates whose behavior depends on
these specializations, otherwise we can cause an ODR violation.

The easiest way to ensure that all the specializations are always
loaded is to designate a header (in this case, torch/csrc/util/pybind.h)
that ensures the specializations are defined, and then add a lint
to ensure this header is included whenever pybind11 headers are
included.

The existing grep linter didn't have enough knobs to do this
conveniently, so I added some features.  I'm open to suggestions
for how to structure the features better.  The main changes:

- Added an --allowlist-pattern flag, which turns off the grep lint
  if some other line exists.  This is used to stop the grep
  lint from complaining about pybind11 includes if the util
  include already exists.

- Added --match-first-only flag, which lets grep only match against
  the first matching line.  This is because, even if there are multiple
  includes that are problematic, I only need to fix one of them.
  We don't /really/ need this, but when I was running lintrunner -a
  to fixup the preexisting codebase it was annoying without this,
  as the lintrunner overall driver fails if there are multiple edits
  on the same file.

I excluded any files that didn't otherwise have a dependency on
torch/ATen, this was mostly caffe2 and the valgrind wrapper compat
bindings.

Note the grep replacement is kind of crappy, but clang-tidy lint
cleaned it up in most cases.

See also https://github.com/pybind/pybind11/issues/4099

Signed-off-by: Edward Z. Yang <ezyang@fb.com>
Pull Request resolved: https://github.com/pytorch/pytorch/pull/82552
Approved by: https://github.com/albanD
2022-08-01 17:16:58 +00:00
albanD
4b7de26556 Fix C API to be compatible with latest 3.11 beta (#81242)
Based off https://github.com/pytorch/pytorch/pull/80511 with extra changes:
- Update pybind to the latest release as it contains some needed fixes
- Extend the compat header to do reduce changes in code
Pull Request resolved: https://github.com/pytorch/pytorch/pull/81242
Approved by: https://github.com/malfet, https://github.com/mattip
2022-07-27 08:37:10 +00:00
Michael Suo
30fb2c4aba [lint] autoformat test/cpp and torch/csrc
Let's have some fun.

Pull Request resolved: https://github.com/pytorch/pytorch/pull/78828

Approved by: https://github.com/ezyang
2022-06-11 21:11:16 +00:00
Richard Barnes
e3d75b8475 irange for PyTorch sans jit (#59481)
Summary:
Switches most of the simple for loops outside of `jit` directories to use `c10::irange`.

Generated with D28874212.

Pull Request resolved: https://github.com/pytorch/pytorch/pull/59481

Test Plan: Sandcastle

Reviewed By: ngimel

Differential Revision: D28909681

fbshipit-source-id: ec9ab1bd602933238d9d0f73d4d8d027b75d9d85
2021-06-09 14:46:11 -07:00
Nikita Shulga
4cb534f92e Make PyTorch code-base clang-tidy compliant (#56892)
Summary:
This is an automatic change generated by the following script:
```
#!/usr/bin/env python3
from subprocess import check_output, check_call
import os

def get_compiled_files_list():
    import json
    with open("build/compile_commands.json") as f:
        data = json.load(f)
    files = [os.path.relpath(node['file']) for node in data]
    for idx, fname in enumerate(files):
        if fname.startswith('build/') and fname.endswith('.DEFAULT.cpp'):
            files[idx] = fname[len('build/'):-len('.DEFAULT.cpp')]
    return files

def run_clang_tidy(fname):
    check_call(["python3", "tools/clang_tidy.py", "-c", "build", "-x", fname,"-s"])
    changes = check_output(["git", "ls-files", "-m"])
    if len(changes) == 0:
        return
    check_call(["git", "commit","--all", "-m", f"NOLINT stubs for {fname}"])

def main():
    git_files = check_output(["git", "ls-files"]).decode("ascii").split("\n")
    compiled_files = get_compiled_files_list()
    for idx, fname in enumerate(git_files):
        if fname not in compiled_files:
            continue
        if fname.startswith("caffe2/contrib/aten/"):
            continue
        print(f"[{idx}/{len(git_files)}] Processing {fname}")
        run_clang_tidy(fname)

if __name__ == "__main__":
    main()
```

Pull Request resolved: https://github.com/pytorch/pytorch/pull/56892

Reviewed By: H-Huang

Differential Revision: D27991944

Pulled By: malfet

fbshipit-source-id: 5415e1eb2c1b34319a4f03024bfaa087007d7179
2021-04-28 14:10:25 -07:00
Kurt Mohler
bba30d1bd8 Add undefined tensor gradient support to all backward functions (#39400)
Summary:
Adds the ability for all backward functions to accept undefined output gradient arguments. An undefined gradient is a Tensor that was created by the argumentless constructor `at::Tensor()`, where `tensor.defined() == false`.

Also adds new autograd nodes, UndefinedGrad and UndefinedGradBackward, that can be used from within Python code to inject undefined gradients into a backward function. A new test case is added to the backward function unit tests to use the UndefinedGrad node to ensure that undefined gradients do not break any backward functions.

Closes https://github.com/pytorch/pytorch/issues/33138
Pull Request resolved: https://github.com/pytorch/pytorch/pull/39400

Differential Revision: D21936588

Pulled By: albanD

fbshipit-source-id: eccc5f55c77babe6dadcea4249d0c68a3c64e85d
2020-06-08 14:13:53 -07:00
Michael Suo
dbe850af5b [jit] do the code reorg (#33851)
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/33851

Rationale and context described in #33828.

Script to reproduce the move:
https://gist.github.com/suo/16cbefaaeb67ca5a7c6caffd49b7f6e9
ghstack-source-id: 99079645

Test Plan: Make sure CI passes

Reviewed By: jamesr66a

Differential Revision: D20133869

fbshipit-source-id: 390e9241a9c85366d9005c492ac31f10aa96488e
2020-02-27 13:02:51 -08:00
Brian Vaughan
604a27361f remove tuple_parser (#30659)
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/30659

I could only find one usage of TupleParser and it doesn't seem worth maintaining just for that one usage.

Test Plan: Imported from OSS

Differential Revision: D18795979

Pulled By: nairbv

fbshipit-source-id: 6e50d65fc8fade0944f36ab20d00f1539a3d4cb8
2019-12-03 14:49:59 -08:00
vishwakftw
aea94de067 Exclude more files in torch/csrc/distributed when USE_DISTRIBUTED=0 (#28621)
Summary:
Changelog:
- Guard inclusion of certain files in torch/csrc/distributed included in caffe2/CMakeLists.txt when USE_DISTRIBUTED=0
Pull Request resolved: https://github.com/pytorch/pytorch/pull/28621

Test Plan:
- Builds should be successful
- Tests should pass

Differential Revision: D18145330

Pulled By: ezyang

fbshipit-source-id: 7167a356b03ae783e6b0120f2ad3552db2b3ed86
2019-10-28 08:03:30 -07:00
Pritam Damania
40cb5182e9 Attach 'send' autograd function to the autograd graph as part of RPC. (#24876)
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/24876

This contains very basic functionality of adding 'send' autograd
function to our autograd graph. The purpose of this change is to validate the
basic structure proposed here makes sense. Once this makes sense, we can build
upon this to address more complicated scenarios. At a high level we've added
the following functionality:

1) Define a very simple 'SendRpcBackwards' autograd function.
2) Attach this function to appropriate tensors when we call an RPC.
3) Store the send function in our distributed autograd context.
ghstack-source-id: 89359708

Test Plan: unit tests.

Differential Revision: D16903255

fbshipit-source-id: 6c04794a8e58b199795404225fd9da0c1440460e
2019-09-01 23:54:01 -07:00
mal
e7a9b0d62f Rename torch::autograd::Function to torch::autograd::Node
Summary: Pull Request resolved: https://github.com/pytorch/pytorch/pull/23269

Test Plan: Imported from OSS

Differential Revision: D16454878

fbshipit-source-id: b1e840fc2d3901955280d141e5ad6efd5e9d66af
2019-07-23 20:52:22 -07:00
Edward Yang
517c7c9861 Canonicalize all includes in PyTorch. (#14849)
Summary:
Anywhere we used #include "foo.h", we now say #include <foo.h>
Paths are adjusted to be rooted out of aten/src, torch/lib, or
the root level directory.

I modified CMakeLists.txt by hand to remove TH and THC from
the include paths.

I used the following script to do the canonicalization:

```
  import subprocess
  import re
  import os.path

  files = subprocess.check_output(['git', 'ls-files']).decode('utf-8').rstrip().split('\n')
  for fn in files:
      if not any(fn.endswith(suff) for suff in ['.cu', '.cpp', '.in', '.h', '.hpp', '.cu', '.cuh', '.cc']):
          continue
      if not any(fn.startswith(pref) for pref in ["aten/", "torch/"]):
          continue
      with open(fn, 'r') as f:
          c = f.read()
      def fmt(p):
          return "#include <{}>".format(p)
      def repl(m):
          p = m.group(1)
          if p in ["dlfcn.h", "unistd.h", "nvrtc.h", "cuda.h", "cuda_runtime.h", "cstdint", "cudnn.h", "Python.h", "cusparse.h", "cuda_runtime_api.h", "cuda_fp16.h", "cublas_v2.h", "stdint.h", "curand_kernel.h"]:
              return fmt(p)
          if any(p.startswith(pref) for pref in ["torch/csrc", "c10/", "ATen/", "caffe2/", "TH/", "THC/", "Eigen/", "gtest/", "zdl/", "gloo/", "onnx/", "miopen/"]):
              return fmt(p)
          for root in ["aten/src", "torch/lib", ""]:
              for bad_root in [os.path.dirname(fn), "aten/src/TH", "aten/src/THC", "torch/csrc"]:
                  new_p = os.path.relpath(os.path.join(bad_root, p), root)
                  if not new_p.startswith("../") and (os.path.exists(os.path.join(root, new_p)) or os.path.exists(os.path.join(root, new_p + ".in"))):
                      return fmt(new_p)
          print("ERROR: ", fn, p)
          return m.group(0)
      new_c = re.sub(r'#include "([^"]+)"', repl, c)
      if new_c != c:
          print(fn)
          with open(fn, 'w') as f:
              f.write(new_c)
```

Signed-off-by: Edward Z. Yang <ezyang@fb.com>
Pull Request resolved: https://github.com/pytorch/pytorch/pull/14849

Reviewed By: dzhulgakov

Differential Revision: D13363445

Pulled By: ezyang

fbshipit-source-id: 52361f878a672785f9306c9e9ab2513128092b68
2018-12-08 19:38:30 -08:00
Tongzhou Wang
83a1ab2136 Sparse tensor printing; add NotImplemented autograd fn (#10181)
Summary:
Commits:

1. Add autograd function `NotImplemented` (subclass of `Error`) so python `grad_fn` prints nicer. Since `Error` is used in `DelayedError` to implement `oncedifferentiable`, I can't just change its name. cc colesbury

2. Add printing for sparse tensors. Fixes https://github.com/pytorch/pytorch/issues/9412 . cc weiyangfb The controller you requested could not be found. .

3. Add tests for sparse printing

Examples:
```diff
  In [2]: x = torch.sparse.FloatTensor(torch.arange(4).view(2,2), torch.randn(2, 2), [10, 10, 2])

  In [3]: x
  Out[3]:
- torch.sparse.FloatTensor of size (10,10,2) with indices:
- tensor([[0, 1],
-         [2, 3]])
- and values:
- tensor([[-1.1832, -0.5927],
-         [ 0.0831,  0.2511]])
+ tensor(indices=tensor([[0, 1],
+                        [2, 3]]),
+        values=tensor([[ 1.5081,  0.3451],
+                       [-0.0392,  0.4776]]),
+        size=(10, 10, 2), nnz=2, layout=torch.sparse_coo)

  In [4]: x.requires_grad_()
  Out[4]:
- torch.sparse.FloatTensor of size (10,10,2) with indices:
- tensor([[0, 1],
-         [2, 3]], grad_fn=<Error>)
- and values:
- tensor([[-1.1832, -0.5927],
-         [ 0.0831,  0.2511]], grad_fn=<Error>)
+ tensor(indices=tensor([[0, 1],
+                        [2, 3]]),
+        values=tensor([[ 1.5081,  0.3451],
+                       [-0.0392,  0.4776]]),
+        size=(10, 10, 2), nnz=2, layout=torch.sparse_coo, requires_grad=True)

  In [5]: x + x
  Out[5]:
- torch.sparse.FloatTensor of size (10,10,2) with indices:
- tensor([[0, 1],
-         [2, 3]], grad_fn=<Error>)
- and values:
- tensor([[-2.3664, -1.1855],
-         [ 0.1662,  0.5021]], grad_fn=<Error>)
+ tensor(indices=tensor([[0, 1],
+                        [2, 3]]),
+        values=tensor([[ 3.0162,  0.6902],
+                       [-0.0785,  0.9553]]),
+        size=(10, 10, 2), nnz=2, layout=torch.sparse_coo, grad_fn=<AddBackward0>)

  In [6]: x.double()
  Out[6]:
- torch.sparse.DoubleTensor of size (10,10,2) with indices:
- tensor([[0, 1],
-         [2, 3]], grad_fn=<Error>)
- and values:
- tensor([[-1.1832, -0.5927],
-         [ 0.0831,  0.2511]], dtype=torch.float64, grad_fn=<Error>)
+ tensor(indices=tensor([[0, 1],
+                        [2, 3]]),
+        values=tensor([[ 1.5081,  0.3451],
+                       [-0.0392,  0.4776]]),
+        size=(10, 10, 2), nnz=2, dtype=torch.float64, layout=torch.sparse_coo,
+        grad_fn=<NotImplemented>)

  In [7]: x = torch.sparse.FloatTensor(torch.ones(0, 2, dtype=torch.long), torch.randn(2, 0), [0])

  In [8]: x
  Out[8]:
- torch.sparse.FloatTensor of size (0,) with indices:
- tensor([], size=(0, 2), dtype=torch.int64)
- and values:
- tensor([], size=(2, 0))
+ tensor(indices=tensor([], size=(0, 2)),
+        values=tensor([], size=(2, 0)),
+        size=(0,), nnz=2, layout=torch.sparse_coo)

  In [9]: x = torch.sparse.FloatTensor(torch.ones(0, 2, dtype=torch.long), torch.randn(2), [])

  In [10]: x
  Out[10]:
- torch.sparse.FloatTensor of size () with indices:
- tensor([], size=(0, 2), dtype=torch.int64)
- and values:
- tensor([-0.0064,  0.8518])
+ tensor(indices=tensor([], size=(0, 2)),
+        values=tensor([ 0.9800, -0.5978]),
+        size=(), nnz=2, layout=torch.sparse_coo)
```
Pull Request resolved: https://github.com/pytorch/pytorch/pull/10181

Differential Revision: D9139845

Pulled By: SsnL

fbshipit-source-id: 353eebd55fac4049ed9bf85f8b0ee2c1418a744e
2018-09-05 19:41:22 -07:00
Vishwak Srinivasan
86eeeab758 Fix segmentation fault in grad_fn (#9292)
Summary: Fixes #8774 .

Reviewed By: soumith

Differential Revision: D8836478

Pulled By: apaszke

fbshipit-source-id: f113bf47fe493be9f095a5a5490caf08dbb44e38
2018-07-13 14:46:13 -07:00
Adam Paszke
b9f575fc33 Remove legacy code from the JIT (#9323)
Summary:
In particular, get rid of backward tracing and CppOp.
Pull Request resolved: https://github.com/pytorch/pytorch/pull/9323

Reviewed By: ezyang

Differential Revision: D8795935

Pulled By: apaszke

fbshipit-source-id: fb7a7eeee41902da35f2a8efd77262ca60fd6bbe
2018-07-11 10:25:38 -07:00
Zachary DeVito
286cd04a20
JIT cleanup (#7631)
Cleans up dead code in the JIT:

* Remove interpreter_autograd_function
* Remove Handles
* Remove HandleBuilder
* Remove creates_handles, and tracing_autograd_python_function flags
* Remove unused var_args
* Fix submodules
2018-05-21 10:06:29 -07:00
Sam Gross
48a3349c29
Delete dead Tensor code paths (#5417)
This deletes most of the dead Tensor code paths, including the TensorMethods cwrap and generic/Tensor.cpp.

This also moves the THNN.cwrap/.cpp generation to generate_code which can use ninja if installed.
2018-02-27 17:58:09 -05:00
Sam Gross
30ec06c140
Merge Variable and Tensor classes (#5225)
This replaces the torch.Tensor constructors with factories that produce
Variables. Similarly, functions on the torch module (e.g. torch.randn)
now return Variables.

To keep the PR to a reasonable size, I've left most of the unused tensor
code. Subsequent PRs will remove the dead code, clean-up calls to
torch.autograd.Variable, and rename Variable to Tensor everywhere.

There are some breaking changes because Variable and Tensors had
slightly different semantics. There's a list of those changes here:

 https://github.com/pytorch/pytorch/wiki/Breaking-Changes-from-Variable-and-Tensor-merge
2018-02-23 18:03:31 -05:00
Peter Goldsborough
702a7f3864 Improve Function interface (#5221)
* Improve Function interface

* Undo tracer changes

* Fix bug in VariableType.set_history

* Rename function_counter and sequence_number to sequence_nr

* Clarify Function documentation

* Replace swap_next_edges with next_edges() getter

* Bring back set_gradient_edge

* Simplify special.cpp

* add_gradient_edge -> create_gradient_edge

* Add mutable getters for pre/post hooks

* Use make_variable with Edge

* Remove remove_gradient_edge in favor of detach_

* Fix documentation and remove create_gradient_edge friend method

* Canonicalize some includes
2018-02-21 16:37:52 -05:00
Peter Goldsborough
f38b6f611e Replace NULL with nullptr in autograd (#5162) 2018-02-12 12:01:52 -08:00
Zach DeVito
674ddf6b91 Fix multi-gpu fuser bug
cuModuleLoad is only valid for a single device so we need to
compile for the particular device that the fusion group will run on.
CompiledFunction already specializes different traces for tensors,
so we just need to have fusion_compiler produce the cuFunction on
the right device.
2018-01-08 15:04:22 -08:00
Edward Z. Yang
dc76db349e Delete a pile of dead code (#4295)
* Delete obsolete basic ops.

Signed-off-by: Edward Z. Yang <ezyang@fb.com>

* More deletion.

Signed-off-by: Edward Z. Yang <ezyang@fb.com>

* Delete some unused utilities.

Signed-off-by: Edward Z. Yang <ezyang@fb.com>

* Delete dead apply_fn

Signed-off-by: Edward Z. Yang <ezyang@fb.com>

* Delete CppFunction symbolic support.

Signed-off-by: Edward Z. Yang <ezyang@fb.com>

* Delete ForwardFunction

Signed-off-by: Edward Z. Yang <ezyang@fb.com>

* Batchnorm is 'working'

Signed-off-by: Edward Z. Yang <ezyang@fb.com>
2018-01-04 09:21:54 -05:00
Adam Paszke
d4fd9a3fd4 Remove unused functions 2017-12-22 17:08:05 +01:00
Edward Z. Yang
5b8fe5cbb5
Batchnorm in ATen (#4285)
* Batchnorm in ATen

This commit moves BatchNorm derivatives into ATen, eliminating
torch/csrc/autograd/functions/batch_normalization.cpp

Some refactoring along the way:

- Functions got renamed to remove _forward from their names
- CuDNN batchnorm forward was modified to return save_mean/save_std instead of
  take it as parameters. To avoid returning undefined Variables, these return
  (small) uninitialized tensors when they are not used.
- THNN batch normalization takes care of resizing save_mean and save_std on
  forward.
- There are some shenanigans re batchnorm backwards in eval mode. I'm tracking
  that in #4284
- I decided not to introduce buffers as a proper concept in ATen, which means
  that tensors like running_mean/running_var are variables in ATen.  This meant
  there needed to be some adjustments to how we *trace* such variables; the
  new strategy is if we can't find a Value for a variable, we look and see
  if we have a Value for the buffer pointed to by the variable, before
  finally falling back on constant.
- This PR finally reliably triggered OOM on Travis builds; I fixed this by reducing
  the number of parallel jobs.
- Stop using std::string when it's not necessary.
- Remove training parameter from cudnn_batch_norm_backward, because it
  doesn't make sense; cuDNN doesn't implement the math for evaluation mode
  batchnorm backwards.
- batchnorm_double_backward is now in an anonymous namespace, as it
  no longer needs to be called from torch/csrc

Signed-off-by: Edward Z. Yang <ezyang@fb.com>
2017-12-21 11:38:31 -05:00
Edward Z. Yang
a88a8ec827
Convolution derivatives in ATen (#4116)
* Convolution derivatives in ATen

This PR introduces ATen implementation of convolution, which dispatches to
THNN/CuDNN/nnpack based on input parameters. The general strategy is to compose
this function out of the various forward-backward pairs of specific
implementations, rather than write a monolithic function with backwards (which
is what we did before because the boilerplate of doing it otherwise would have
been very high.) The new API provides the following functions:

  - _convolution, which is a fully generic, native convolution implementation
    that dispatches to various other convolution implementations depending on
    input characteristics. This is prefixed with an underscore because it
    explicitly takes benchmark, deterministic and cudnn_enabled which are
    implementation details for CuDNN. The intent is to eventually provide a
    convolution that reads these parameters out of the context using #4104.
  - _convolution_nogroup is a convolution implementation for non-CuDNN
    algorithms which don't support group convolution natively.
  - _convolution_double_backward is the generic double-backwards implementation
    for convolution.

In more detail:

- Most functionality from torch/csrc/autograd/functions/convolution.cpp has been
  moved into aten/src/ATen/native/Convolution.cpp
- We continue to make use of ConvParams, but we now construct the parameters
  upon entry to a function from the function signature (which does not use
  ConvParams; having convolution take ConvParams directly would require teaching
  the code generator how to accept these as parameters, complicating ATen's API
  model) and destruct them when making subprocedure calls.
- I introduce a new idiom, input_r, which represents a const Tensor& reference,
  which will subsequently be assigned to a local Tensor input. This is helpful
  because a lot of the existing algorithms relied on being able to assign to
  locals, which is not permitted with a const reference.
- The native argument parser now supports std::array<bool,2> inputs (NB: there
  MUST NOT be a space; this is the same hack as is applied to derivatives.yaml)
- Native parser now supports Tensor? arguments, which indicates a nullable
  tensor. Previously this function was only used by NN methods.
- Documentation updates on THNN library
- I added an extra fgradInput argument to VolumetricConvolutionMM_updateOutput
  and VolumetricConvolutionMM_accGradParameters so that its buffer list lines up
  with the backward argument list. This makes it possible to write derivative
  for conv3d which previously was not supported (commented out in
  derivatives.yaml)
- Extra double_backward declarations for all convolution backwards functions was
  added.
- You can now use the syntax Tensor? in native_functions.yaml to indicate that a
  tensor argument is nullable.  There are adjustments to propagate this to the
  Python argument parser.
- NNPACK was ported to ATen, and ATen now builds and links against ATen if
  possible. New AT_NNPACK_ENABLED macro.  The nnpack functions are
  nnpack_spatial_convolution.
- Some modest CuDNN convolution refactoring to remove _forward from names.
- There's a new cudnn_convolution_backward function to deal with the fact that
  CuDNN convolution double backward requires you to have computed all gradients
  in one go.
- Variable set_flags now checks if the tensor is undefined, fixing a silent memory
  corruption.
- checkSameType updated to not raise an exception if called with Variable arguments
- "no ATen declaration found for" error message is improved to say what available declarations are
- make_variable now accepts undefined tensors, and returns an undefined tensor in this case.
2017-12-20 14:19:27 -05:00
peterjc123
77ea2f26d8 Add build support for Python 2.7 using MSVC (#4226) 2017-12-20 15:07:25 +01:00