Commit Graph

432 Commits

Author SHA1 Message Date
Scott Wolchok
2d885ab73d [jit] Reduce refcounting of Types (#65345)
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/65345

FooType::get() can return a const reference. Inconveniently, converting shared_ptr<FooType> to shared_ptr<Type> requires a copy & refcount bump, so to properly take advantage of this in unshapedType() we need to take a const Type& in isSubtypeOf(), which is good practice anyway -- don't require a shared_ptr if you don't need to take ownership.
ghstack-source-id: 140044165

Test Plan:
CI

perf says c10::unshapedType time decreased from 2.8% to 2.2% during static runtime startup, though I expect this to be generally beneficial.

Reviewed By: hlu1

Differential Revision: D31027361

fbshipit-source-id: 676feb81db9f74ad7b8651d8774f4ecb4cfa6ab8
2021-10-08 09:03:04 -07:00
Chen Lai
a5895f85be [PyTorch Edge][type] Add type check in compatibility api (#63129)
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/63129

1. Add an api to get `supported_types` from runtime, expose in c++ only.
2. Add an api to get `contained_types` from model, expose in both c++ and PyThon.
3. Add a field `contained_types_` in `type_parser.cpp` to track the contained types when parsing python string.
4. Expand `is_compatible` api to check type. When checking type, it will check the contained type list from the model with the support type list from runtime.
5. Expand the unittest for compatibility to cover type
6. Add unit test in python to check type list
ghstack-source-id: 139826944

Test Plan:
```
buck test mode/dev //caffe2/test/cpp/jit:jit -- --exact 'caffe2/test/cpp/jit:jit - LiteInterpreterTest.GetContainTypes'

buck test mode/dev //caffe2/test/cpp/jit:jit -- --exact 'caffe2/test/cpp/jit:jit - LiteInterpreterTest.isCompatibleSuccess'
buck test mode/dev //caffe2/test/cpp/jit:jit -- --exact 'caffe2/test/cpp/jit:jit - LiteInterpreterTest.isCompatibleFail'

buck test //caffe2/test:mobile
```

Reviewed By: iseeyuan

Differential Revision: D30231419

fbshipit-source-id: 8427f423ec28cc5de56411f15fd960d8595d6947
2021-10-06 02:23:44 -07:00
Gary Miguel
d1058df885 fix clang-tidy error introduced by #64382 (#65977)
Summary: Pull Request resolved: https://github.com/pytorch/pytorch/pull/65977

Reviewed By: ngimel

Differential Revision: D31423174

Pulled By: malfet

fbshipit-source-id: 0ea560b9a6ddd6431f70bd3ac10ace68e26ab352
2021-10-05 20:13:13 -07:00
John Clow
6cdea8239e Precomputing Transposes for frozen linear layers (#65631)
Summary: Pull Request resolved: https://github.com/pytorch/pytorch/pull/65631

Test Plan: Imported from OSS

Reviewed By: eellison

Differential Revision: D31314248

Pulled By: Gamrix

fbshipit-source-id: 85611f3ccfe7b91a183d5d12f7fb9aca3c51acb0
2021-10-05 20:08:32 -07:00
jjsjann123
d609957c95 patching graph_for (#55139)
Summary:
Allows individual DifferentiableGraphOp to display optimized forward graph. This improves user visibility to graph mutation via optimization pass, especially fusion.

Pull Request resolved: https://github.com/pytorch/pytorch/pull/55139

Reviewed By: albanD

Differential Revision: D31330909

Pulled By: dzhulgakov

fbshipit-source-id: c745b482fdc34876dc404cbe3bacd99dcf2ac724
2021-10-04 21:50:22 -07:00
Hariom Narang
2828ce53fd Added jit log stream changing function and some refactor (#65768)
Summary:
Description:
- Have only added `stdout` and `stderr` as possible options from python
  API for now. We can do file path passing later maybe.
- Put the class `JitLoggingConfig` in the cpp file as none of its methods were being used outside of this file.

Python API:
`torch._C._jit_set_logging_stream('stdout|stderr')`
C++ API:
`::torch::jit::set_jit_logging_output_stream(ostream);`

Testing:
- Tested python API locally.
- Unit test for the C++ API is written

Fixes https://github.com/pytorch/pytorch/issues/54182

Pull Request resolved: https://github.com/pytorch/pytorch/pull/65768

Reviewed By: mrshenli

Differential Revision: D31291739

Pulled By: ZolotukhinM

fbshipit-source-id: eee72edc20488efad78a01c5b0ed8a132886a08d
2021-09-30 23:25:11 -07:00
Elias Ellison
928a4bbafb [JIT] Fix compilation unit reference link in constant object upon load (#65784)
Summary:
Follow up to https://github.com/pytorch/pytorch/pull/65442, make sure objects inserted into the graph from load do not holding owning reference.

Pull Request resolved: https://github.com/pytorch/pytorch/pull/65784

Reviewed By: suo

Differential Revision: D31251033

Pulled By: eellison

fbshipit-source-id: 59efe19ce6f70744383de4eebf0f89f79f3eb03a
2021-09-30 09:32:28 -07:00
Pruthvi Madugundu
085e2f7bdd [ROCm] Changes not to rely on CUDA_VERSION or HIP_VERSION (#65610)
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/65610

- Replace HIP_PLATFORM_HCC with USE_ROCM
- Dont rely on CUDA_VERSION or HIP_VERSION and use USE_ROCM and ROCM_VERSION.

- In the next PR
   - Will be removing the mapping from CUDA_VERSION to HIP_VERSION and CUDA to HIP in hipify.
   - HIP_PLATFORM_HCC is deprecated, so will add HIP_PLATFORM_AMD to support HIP host code compilation on gcc.

cc jeffdaily sunway513 jithunnair-amd ROCmSupport amathews-amd

Reviewed By: jbschlosser

Differential Revision: D30909053

Pulled By: ezyang

fbshipit-source-id: 224a966ebf1aaec79beccbbd686fdf3d49267e06
2021-09-29 09:55:43 -07:00
BowenBao
20143bf07f [ONNX] Deprecate use_external_data_format param from torch.onnx.export() function. (#62257) (#64382)
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/64382

* This `use_external_data_format` parameter is used for large models cannot be exported because of the 2GB protobuf limit.

* When `use_external_data_format` set to True, the model is exported in ONNX external data format, in which case some of the model parameters are stored in external binary files and not in the ONNX model file itself.

* This PR will set this paramter to DEPRECATED and check the model proto sizes by code instead of by user, if the sizes lager than 2GB, then `use_external_data_format = True` automatically.

Test Plan: Imported from OSS

Reviewed By: ezyang

Differential Revision: D30905265

Pulled By: malfet

fbshipit-source-id: 82b4e17bfa6a8de2bfd700a5282c12f6835603cb

Co-authored-by: hwangdeyu <dejack953@outlook.com>
2021-09-23 22:20:48 -07:00
David Berard
8eb21488fd [JIT] Improve BatchMM mutability handling (#65097)
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/65097

Previously, BatchMM would skip any block containing any mutable
operators. Now it will avoid batching any operation whose inputs or
outputs are ever mutated. Specifically: consider a tree of ADD, T,
and MM nodes rooted at an ADD node.  If any input or output to any
node in the tree is ever mutated, then the entire tree will be ignored
by BatchMM.

Test Plan: python test/test_jit.py TestBatchMM

Reviewed By: eellison

Differential Revision: D30973515

Pulled By: davidberard98

fbshipit-source-id: 9d836faa1ef0c9e3fefe0ffc0bd265f275471f48
2021-09-16 10:46:14 -07:00
Ansley Ussery
6831d8e379 Support Union in TorchScript (#64234)
Summary:
This PR is created to replace https://github.com/pytorch/pytorch/pull/53180 PR stack, which has all the review discussions. Reason for needing a replacement is due to a messy Sandcastle issue.

Pull Request resolved: https://github.com/pytorch/pytorch/pull/64234

Reviewed By: gmagogsfm

Differential Revision: D30656444

Pulled By: ansley

fbshipit-source-id: 77536c8bcc88162e2c72636026ca3c16891d669a
2021-09-03 06:12:24 -07:00
James Reed
e1c3e5f830 [resubmit][FX] Prototype for guarding against mutable operations in tracing (#64467)
Summary: Pull Request resolved: https://github.com/pytorch/pytorch/pull/64467

Test Plan: Imported from OSS

Reviewed By: driazati

Differential Revision: D30744870

Pulled By: jamesr66a

fbshipit-source-id: fc652f8b17748f90dbeb83fabf3bd5bb57d6ff1a
2021-09-02 21:13:21 -07:00
Eli Uriegas
32a93c2424 Revert D30675780: [FX] Prototype for guarding against mutable operations in tracing
Test Plan: revert-hammer

Differential Revision:
D30675780 (795387477f)

Original commit changeset: b2116b51dcc8

fbshipit-source-id: d4f1173f4989556ea54974f4c2739ef85a705fae
2021-09-02 16:07:29 -07:00
James Reed
795387477f [FX] Prototype for guarding against mutable operations in tracing (#64295)
Summary: Pull Request resolved: https://github.com/pytorch/pytorch/pull/64295

Test Plan: Imported from OSS

Reviewed By: zou3519

Differential Revision: D30675780

Pulled By: jamesr66a

fbshipit-source-id: b2116b51dcc87357f0c84192c4c336680875e27a
2021-09-02 15:17:04 -07:00
Zhengxu Chen
ac99d63f83 [jit] Make operation call accept Stack& instead Stack* (#63414)
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/63414

Misuse of raw pointer in here where stack is never nullable.
ghstack-source-id: 136938318

Test Plan:
compiles.

Imported from OSS

Reviewed By: ejguan

Differential Revision: D30375410

fbshipit-source-id: 9d65b620bb76d90d886c800f54308520095d58ee
2021-08-30 11:49:20 -07:00
Meghan Lele
95d0b3199b Back out "[ONNX] Fix an issue that optimizations might adjust graph inputs unexpectedly. (#61280)" (#64004)
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/64004

Pull Request resolved: https://github.com/pytorch/pytorch/pull/63904

Fixes T98808160

Test Plan: T98808160

Reviewed By: msaroufim

Differential Revision: D30527450

fbshipit-source-id: 6262901a78ca929cecda1cf740893139aa26f1b4
2021-08-26 12:49:42 -07:00
Bert Maher
8dda299d96 Re-apply: [nnc] Support thread level parallelism in fused kernels (#63776)
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/63776

I reverted this out of an abundance of caution because some test
failures occurred, but they were all due to precision issues fixed lower in
this stack.  Let's try again.

I've rolled the elimination of the allow-parallelism-in-fusions toggle into
this diff since they're pretty tightly coupled.
ghstack-source-id: 136529847

Test Plan: CI

Reviewed By: huiguoo

Differential Revision: D30484555

fbshipit-source-id: 38fd33520f710585d1130c365a8c60c9ce794a59
2021-08-24 18:56:55 -07:00
Bert Maher
a709ab34a8 [nnc] Re-enable CPU fusion" (#63665)
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/63665

This reverts commit 125e2d02e5.

Test Plan: Imported from OSS

Reviewed By: ZolotukhinM

Differential Revision: D30471646

Pulled By: bertmaher

fbshipit-source-id: 4189869566f03b5f9ada78d78830f6a34946eed6
2021-08-23 12:42:42 -07:00
Bert Maher
76da46ccdc Revert D30417127: Remove flag to toggle CPU fusion in the presence of parallelism
Test Plan: revert-hammer

Differential Revision:
D30417127 (6600bc9651)

Original commit changeset: b77d7c68364f

fbshipit-source-id: 6b52fb83a84fe241945e3cb3eeb71050d1d9c8f1
2021-08-21 03:38:07 -07:00
BowenBao
8760254911 [ONNX] Fix an issue that optimizations might adjust graph inputs unexpectedly. (#61280) (#62763)
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/62763

This PR is to fix the issue that the graph inputs might be updated when we export the model in inference mode.

When a model is export in inference mode, some optimizations will be made. One side effect of these optimizations is: the inputs of graph might be adjusted. Such optimizatiosn include:

	1. Conv and BatchNorm op fusion.
	2. Do constant folding.

If the user sets export_params=False, or set keep_initializers_as_inputs=True, it's highly possible that the user wants to provide the corresponding parameters or initiliazers as the inputs of the graph.
In such situation, no matter the model is export in inference mode or training mode, exporter needs to prevent above optimizations from adjusting the graph inputs. By this, the inputs of graph could match inputs that users provided.

The changes in this PR, add an additional common judgement to see if the above optimizations needs to be done or not. From the value of export_params and keep_initializers_as_inputs arguments, infer if the graph inputs are allowed to be adjusted.
If no, these optimizations will be ignored, even other requirements are matched.

Besides these code changes, the comments of some parameters below have been updated so that users have more thoughts when they consider how to leverage these parameters for different purposes:

	1. export_params
	2. training
	3. do_constant_folding
	4. keep_initializers_as_inputs

Test Plan: Imported from OSS

Reviewed By: SplitInfinity

Differential Revision: D30375183

Pulled By: msaroufim

fbshipit-source-id: 4db8b9695649eb32a3a0fefa950ee2e5651bdba0

Co-authored-by: fatcat-z <jiz@microsoft.com>
2021-08-20 12:46:52 -07:00
Alban Desmaison
125e2d02e5 Revert D30417370: [nnc] Enable CPU fusion
Test Plan: revert-hammer

Differential Revision:
D30417370 (b9fc656cf2)

Original commit changeset: 84ce7a578a36

fbshipit-source-id: cd23774cdc3273fd72f8a05f1900eaf36f373e6b
2021-08-20 12:30:21 -07:00
Bert Maher
b9fc656cf2 [nnc] Enable CPU fusion (#63545)
Summary: Pull Request resolved: https://github.com/pytorch/pytorch/pull/63545

Test Plan: Imported from OSS

Reviewed By: navahgar

Differential Revision: D30417370

Pulled By: bertmaher

fbshipit-source-id: 84ce7a578a3678d5562bab99d1dc00330c4f72d1
2021-08-20 11:18:21 -07:00
Bert Maher
6600bc9651 Remove flag to toggle CPU fusion in the presence of parallelism (#63514)
Summary: Pull Request resolved: https://github.com/pytorch/pytorch/pull/63514

Test Plan: Imported from OSS

Reviewed By: navahgar

Differential Revision: D30417127

Pulled By: bertmaher

fbshipit-source-id: b77d7c68364f2af73570740540f3b1152313016e
2021-08-20 11:18:19 -07:00
Alban Desmaison
ce61100923 Revert D29399533: Hoisting common expressions out of If blocks
Test Plan: revert-hammer

Differential Revision:
D29399533 (9477211e7d)

Original commit changeset: 9336b9dc48c0

fbshipit-source-id: f081c7280203f40328bcbb0c03a7c6a007acedb7
2021-08-19 06:20:40 -07:00
John Clow
9477211e7d Hoisting common expressions out of If blocks (#59492)
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/59492

Adding code to find common expressions from the two subblocks of an if
operation and hoist them before the if block.
This also allows Dead Code Elimination to
then eliminate some if blocks.

Also eliminated some dead code in the codebase.

Test Plan:
python test_jit.py TestIfHoisting

Imported from OSS

Reviewed By: ngimel

Differential Revision: D29399533

fbshipit-source-id: 9336b9dc48c02c38862f98f98cd72fc1767a1802
2021-08-18 16:29:30 -07:00
Jiewen Tan
04caef8e1d Improve IMethod::getArgumentNames to deal with empty argument names list (#62947)
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/62947

This diff improved IMethod::getArgumentNames to deal with empty argument names list.

Test Plan:
buck test mode/dev //caffe2/caffe2/fb/predictor:pytorch_predictor_test -- PyTorchDeployPredictor.GetEmptyArgumentNamesValidationMode
buck test mode/dev //caffe2/caffe2/fb/predictor:pytorch_predictor_test -- PyTorchDeployPredictor.GetEmptyArgumentNamesRealMode

Reviewed By: wconstab

Differential Revision: D30179974

fbshipit-source-id: c7aec35c360a73318867c5b77ebfec3affee47e3
2021-08-11 16:44:00 -07:00
Elias Ellison
ea808df25d Test shape analysis with opinfos (#59814)
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/59814

Using opinfos to test shape analysis. By default, we just check that we don't give incorrect answers, and then if `assert_jit_shape_analysis` is true, tests that we correctly propagates the full shape. and it found a couple bugs {emoji:1f603}

Test Plan: Imported from OSS

Reviewed By: Krovatkin

Differential Revision: D30200058

Pulled By: eellison

fbshipit-source-id: 6226be87f5390277cfa5a1fffaa1b072d4bc8803
2021-08-10 09:47:33 -07:00
Edward Yang
cdf702b60c Reject kwonly arguments passed positionally in torch.ops (#62981)
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/62981

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

Test Plan: Imported from OSS

Reviewed By: Chillee

Differential Revision: D30211030

Pulled By: ezyang

fbshipit-source-id: aae426592e92bf3a50076f470e153a4ae7d6f101
2021-08-10 07:16:00 -07:00
Natalia Gimelshein
e3944ab00e Revert D30038175: Improve IMethod::getArgumentNames to deal with empty argument names list
Test Plan: revert-hammer

Differential Revision:
D30038175 (64b3ab6407)

Original commit changeset: 46f08dda9418

fbshipit-source-id: 604735d2300487a0b75890b330d7ba5b3e7145b2
2021-08-06 14:58:43 -07:00
Jiewen Tan
64b3ab6407 Improve IMethod::getArgumentNames to deal with empty argument names list (#62782)
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/62782

This diff improved IMethod::getArgumentNames to deal with empty argument names list.

Test Plan:
buck test mode/dev caffe2/caffe2/fb/predictor:pytorch_predictor_test -- PyTorchDeployPredictor.GetEmptyArgumentNamesValidationMode
buck test mode/dev caffe2/caffe2/fb/predictor:pytorch_predictor_test -- PyTorchDeployPredictor.GetEmptyArgumentNamesRealMode

Reviewed By: wconstab

Differential Revision: D30038175

fbshipit-source-id: 46f08dda94187160b4d6ee87600d1b46fe934222
2021-08-05 01:32:00 -07:00
Richard Barnes
9e77113e85 irange-ify 11 (#62121)
Summary: Pull Request resolved: https://github.com/pytorch/pytorch/pull/62121

Test Plan: Sandcastle

Reviewed By: ngimel

Differential Revision: D29879701

fbshipit-source-id: 5c51879c88fa6a5790db241c8b33ec0dc4b177ca
2021-07-28 13:32:09 -07:00
Meghan Lele
05b802d4e0 [pytorch] Bring back RemoveInplaceOps() (#62200)
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/62200

This commit brings back the `RemoveInplaceOps` pass removed in D29523283 (dec5aa2260) that apparently had a bunch of internal users.

Test Plan: danthe3rd

Reviewed By: danthe3rd

Differential Revision: D29833316

fbshipit-source-id: 6cf13d463ab0a5e50ba3eb3243f79a9c51623809
2021-07-28 12:00:38 -07:00
Kimish Patel
026cfe85b4 Fix InlinedCallStack annotation to account for module calling its own (#61791)
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/61791

methods from forward

During inlining we attached InlinedCallstack to nodes being inlined. In
the process we attach moodule information as well, such that if
CallMethod is being inlined we know which class instance and class type
the method belongs to. However, CallMethod can be calling a method of
the same object to which the graph belongs. e.g.:

```
def forward(self, input):
  x = input + 10
  return forward_impl_(x, input)
```
Here forward_impl is method defined on the same class in which forward
is defined. Existing module hierarchy annotation will mislabel this as
unknown instance since the method is not associated with output of
GetAttr node (it would be we had called self.conv.forward_impl_ for
example).
Change in this PR reconciles this by creating a placeholder name "SELF"
for module instance indicating that you can traverse InlinedCallStack
backwards to find first node with name != SELF, which would be the name
of the object.
e.g.:
TOP(ResNet)::forward.SELF(ResNet)::_forward_impl.layer1(Sequential)::forward.0(BasicBlock)::forward.conv1(Conv2d)::forward.SELF(Conv2d)::_conv_forward

Test Plan:
Add test

Imported from OSS

Reviewed By: larryliu0820

Differential Revision: D29745443

fbshipit-source-id: 1525e41df53913341c4c36a56772454782a0ba93
2021-07-26 15:00:57 -07:00
Richard Barnes
ee44d73e59 Modernize override (#61744)
Summary: Pull Request resolved: https://github.com/pytorch/pytorch/pull/61744

Test Plan: Sandcastle

Reviewed By: malfet

Differential Revision: D29717320

fbshipit-source-id: 6eea4295ee2e5572ab337620be412376fcc2f3cc
2021-07-23 23:04:46 -07:00
Nikita Shulga
a9b0a921d5 Disable avoid-non-const-global-variables lint check (#62008)
Summary:
As GoogleTest `TEST` macro is non-compliant with it as well as `DEFINE_DISPATCH`

All changes but the ones to `.clang-tidy` are generated using following script:
```
for i in `find . -type f -iname "*.c*" -or -iname "*.h"|xargs grep cppcoreguidelines-avoid-non-const-global-variables|cut -f1 -d:|sort|uniq`;  do sed -i "/\/\/ NOLINTNEXTLINE(cppcoreguidelines-avoid-non-const-global-variables)/d" $i; done
```

Pull Request resolved: https://github.com/pytorch/pytorch/pull/62008

Reviewed By: driazati, r-barnes

Differential Revision: D29838584

Pulled By: malfet

fbshipit-source-id: 1b2f8602c945bd4ce50a9bfdd204755556e31d13
2021-07-22 18:04:40 -07:00
Michael Suo
04043d681e [package] fix storage serialization collision (#61806)
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/61806

Currently, if you do `save_pickle` on a ScriptModule, then `save_pickle`
on a tensor, this would result in a `0.storage` tensor being written
*twice* to the zip archive. This would cause weird bugs on the
serializing side (this presented as a ASAN-detected heap buffer overflow
because we tried to read more memory from a tensor than we actually
had).

Turns out this was because when we did:
```
self.storage_context = self.script_module_serializer.storage_context()
```
it returned a new copy of the storage context, so we weren't actually
assigning unique names to tensors!!

This PR fixes the issue by making `(De)SerializationStorageContext`
non-copyable and fixing up the parts of the bindings that returned by
copy.

Differential Revision:
D29748969
D29748969

Test Plan: Imported from OSS

Reviewed By: Lilyjjo

Pulled By: suo

fbshipit-source-id: c2f89ab270e07e7a111fb35c545b5e07b804dc3c
2021-07-19 18:22:36 -07:00
Meghan Lele
5144381b1d [pytorch][JIT] Widen exception caught by ScriptList casting (#61520)
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/61520

This commit widens the exception caught by the try-catch block that checks if
an object passed to a scripted function is a `ScriptList`. It turns out that
there are internal tests that do not throw a `py::cast_error` so catching only
that is not sufficient.

Test Plan: Ran the failing tests in T94889011.

Reviewed By: Chillee

Differential Revision: D29560815

fbshipit-source-id: 442258f8997146d833a9d5db923e1f6359f2bfdd
2021-07-12 23:20:58 -07:00
Gary Miguel
dec5aa2260 [JIT] clean up (#60390)
Summary:
* Minor: spelling, grammar.
* Add calls to `GRAPH_DUMP()` where they were missing.
* Add or expand a few comments.
* Move a few comments to seemingly more appropriate spots.
* In canonicalize_graph_fuser_ops.cpp inline `runnableInputs()` since it
  was only called in one place and had a misleading comment and
  confusing name.
* In `PeepholeOptimizeImpl::optimizeBlock()`, set `changed = true;` when
  removing `aten::is_complex`. Pretty sure its absence was a bug.
* Delete unused `_jit_pass_remove_inplace_ops` and and its
  implementation `RemoveInplaceOps()`.
* In `preprocessCaffe2Ops()`, remove redundant check for nested optional
  types. It was already checked in `checkONNXCompatibility()`.
* In `EncoderBase::AddAttribute`, log the unexpected attribute kind.
  I don't remember the repro case now but I did hit this error at some
  point and this additional logging made it easier to understand.
* In `fuseConvBatchNorm()` in eval_peephole.cpp, consistently use
  camelCase instead of snake_case for local variables.
* Add curly braces around the bodies of if and loops.

Pull Request resolved: https://github.com/pytorch/pytorch/pull/60390

Reviewed By: Krovatkin

Differential Revision: D29523283

Pulled By: SplitInfinity

fbshipit-source-id: 4e16c5648616f53da07d68dab7fdf252e06a0752
2021-07-09 16:28:27 -07:00
BowenBao
95a7f3ccfe [ONNX] Fix shape inference for large model (#59320) (#60244)
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/60244

Do 2GB size check for protocol buffer serialization at a later time, to avoid false alarming for cases like shape inference where no serialization actually happens.

Test Plan: Imported from OSS

Reviewed By: zou3519, ZolotukhinM

Differential Revision: D29494910

Pulled By: SplitInfinity

fbshipit-source-id: 4c36d26de9a94e5d6cf78f332d4dffc46588ebf0

Co-authored-by: BowenBao <bowbao@microsoft.com>
2021-07-08 16:29:22 -07:00
Meghan Lele
4a2e8b53bb [JIT] Add torch._C.ScriptList` (#52832)
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/52832

**Summary**
This commit adds `torch._C.ScriptList`, a list type that has reference
semantics across the Python/TorchScript boundary. That is, modifications
made in TorchScript to instances of `torch._C.ScriptList`
are visible in Python even when it is not returned from the function.

`torch._C.ScriptList` is implemented using a modified version of pybind's
`stl_bind.h`-style bindings attached to `ScriptList` and `ScriptListIterator`,
wrapper classes around `c10::impl::GenericList` and
`c10::impl::GenericList::iterator`. These bindings allow instances of
`torch._C.ScriptList` to be used as if it were a
regular `list` in Python. Reference semantics are achieved by simply
retrieving the `IValue` contained in `ScriptList` in `toIValue` (invoked
when converting Python arguments to `IValues` before calling TorchScript
code).

**Test Plan**
This commit adds `TestScriptList` to `test_list_dict.py`, a set of tests
that check that all of the common list operations are supported
and that instances have reference semantics across the
Python/TorchScript boundary.

Test Plan: Imported from OSS

Reviewed By: gmagogsfm

Differential Revision: D29478121

Pulled By: SplitInfinity

fbshipit-source-id: 652cc25cfa37debe28db9527504846f22abd8b54
2021-07-01 20:28:13 -07:00
Mike Guo
6ecc1a4c4f Make pytorch clang-tidy clean (#60649)
Summary:
This PR suppresses clang-tidy warnings in the codebase (for now) so that we can re-enable clang-tidy checks on master.

I ran this script to add the `NOLINTNEXTLINE` comments (on a devserver):
```bash
python3 setup.py develop

# Uses same script that's run on CI and adds the -j (parallel), -s (add comments), -k (continue if diagnostic errors are found) options
python3 tools/clang_tidy.py \
  -j \
  -s \
  -k \
  -v \
  --paths torch/csrc/ \
  -g"-torch/csrc/jit/passes/onnx/helper.cpp" \
  -g"-torch/csrc/jit/passes/onnx/shape_type_inference.cpp" \
  -g"-torch/csrc/jit/serialization/onnx.cpp" \
  -g"-torch/csrc/jit/serialization/export.cpp" \
  -g"-torch/csrc/jit/serialization/import.cpp" \
  -g"-torch/csrc/jit/serialization/import_legacy.cpp" \
  -g"-torch/csrc/onnx/init.cpp" \
  -g"-torch/csrc/cuda/nccl.*" \
  -g"-torch/csrc/cuda/python_nccl.cpp" \
  -g"-torch/csrc/autograd/FunctionsManual.cpp" \
  -g"-torch/csrc/generic/*.cpp" \
  -g"-torch/csrc/jit/codegen/cuda/runtime/*" \
  -g"-torch/csrc/deploy/interpreter/interpreter.cpp" \
  -g"-torch/csrc/deploy/interpreter/interpreter.h" \
  -g"-torch/csrc/deploy/interpreter/interpreter_impl.h" \
  -g"-torch/csrc/deploy/interpreter/test_main.cpp"
```

Pull Request resolved: https://github.com/pytorch/pytorch/pull/60649

Test Plan: Verified changes by re-running the script (without the `-s` option) and seeing no warnings/errors.

Reviewed By: walterddr, janeyx99

Differential Revision: D29504258

Pulled By: 1ntEgr8

fbshipit-source-id: 78310b30ee8213b73ddb4771ad874665323e7a4e
2021-07-01 12:21:07 -07:00
Meghan Lele
6c1c1111de [JIT] Add reference semantics to TorchScript classes (#44324)
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/44324

**Summary**
This commit adds reference semantics to TorchScript class types;
modifications made to them within TorchScript will be visible in Python.

**Test Plan**
This commit adds a unit test to `TestClassType` that checks that
modifications made to a class type instance passed into TorchScript are
visible in Python after executing the scripted function or module.

**Fixes**
This commit closes #41421.

Test Plan: Imported from OSS

Reviewed By: gmagogsfm

Differential Revision: D24912807

Pulled By: SplitInfinity

fbshipit-source-id: d64ac6211012425b040b987e3358253016e84ca0
2021-06-30 14:27:17 -07:00
Mengwei Liu
10fc58620e [PyTorch][NASProfiler] Add moduleHierarchy Python API to print out hierarchical information about a Node (#60384)
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/60384

Currently inlining module graph will drop module hierarchy info on Python side. Here we retrieve the module hierarchy from cpp side and expose it to a new Python API on Node called `moduleHierarchy()`.

Test Plan:
Usage:
```
torch._C._jit_pass_inline(module.graph)
torch._C._jit_pass_propagate_shapes_on_graph(module.graph)
node = module.graph.findNode("quantized::conv2d_relu")
'top(' + module.original_name + ').' + node.moduleHierarchy() + '.' + node.kind()
```
Output:
```
'top(QuantWrapper).module(FBNetHR).0(Sequential).xif0_0(ConvBNRelu).conv(ConvReLU2d).quantized::conv2d_relu'
```

Reviewed By: kimishpatel

Differential Revision: D29252169

fbshipit-source-id: 74163a87f919e061e5e75dfebc4c5cdbe8489d93
2021-06-30 01:32:31 -07:00
Bert Maher
93772792e3 [nnc] Get rid of fuser trigger counters (#57334)
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/57334

Here's a possibly controversial PR.  These counters got in the way of
generalizing the fuser tests to handle arbitrary devices, and I guess I'm just
generally skeptical that they provide much value.  While true that they let us
observe whether fusion groups were created, we already have assertions based on
the shape of the graph, and I'm not sure that I trust those any less than these
counters.

Test Plan: Imported from OSS

Reviewed By: ZolotukhinM

Differential Revision: D29471484

Pulled By: bertmaher

fbshipit-source-id: f6d76f6e72dbfb581acff1d834b0c74500941b57
2021-06-29 22:22:15 -07:00
Lily Johnson
0dd90cceaf [package] track storages across lifetime of PackageExporter (#59735)
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/59735

1. Fixes ABA storage identity problem during serialization for `torch.package` by keeping reference of serialized storages through lifetime of `PackageExporter` to prevent reuse of memory address. Achieved by extending logic used in solution to mobile's same issue.
2. Adds determinism to naming scheme of serialized storages in export code paths which utilize `tensor_cdata_naming_scheme`(introduced 2nd mapping in `StorageContext`, now maps `storage cdata ptr` -> `unique id`, `unique id` -> `c10::Storage`)
3. Additionally uses presence of a storage in the `StorageContext` instance as marker for if a storage has been serialized or not, removing the need to scan the `PythonStreamWriter` for presence of the storage's serialization file

Test Plan: Imported from OSS

Reviewed By: suo

Differential Revision: D29075276

Pulled By: Lilyjjo

fbshipit-source-id: 15a5c30b1de99c5bd7079388f2db9b6ece2eca12
2021-06-29 14:16:54 -07:00
Ansley Ussery
0fbc471d10 Support default values on NamedTuple fields (#54682)
Summary: Pull Request resolved: https://github.com/pytorch/pytorch/pull/54682

Test Plan: Imported from OSS

Reviewed By: gmagogsfm

Differential Revision: D27327241

Pulled By: ansley

fbshipit-source-id: 76546f1770d50ebc3435bba3b74540e3c6be8a1c
2021-06-26 15:18:21 -07:00
Hariom Narang
9d1d799034 Added API to change logging levels for JIT (#58821)
Summary:
Description:
- Before this, logging level could only be changed by changing the env
variable "PYTORCH_JIT_LOG_LEVEL"
    - Can change the level from python now
- Have not added stream configuration for now
- Configuration is stored in a singleton class managing the options

Issue Link: https://github.com/pytorch/pytorch/issues/54188

Gotchas:
- Created separate functions
`::torch::jit::get_jit_logging_levels/set_jit_logging_levels` instead of
using the singleton class's method directly
    - This is because when running test cases, two different instances
    of the singleton are created for the test suite and the actual code
    (`jit_log.cpp`)
    - On using these methods directly, `is_enabled` calls the singleton
    in `jit_log.cpp` while we are setting the config using another
    singleton
    - See: https://stackoverflow.com/questions/55467246/my-singleton-can-be-called-multiple-times

API:
- To set the level: `torch._C._jit_set_logging_option("level")`
- To get the level: `torch._C._jit_get_logging_option()`

Testing:
- UTs were added for C++
- A very simple UT was added for python to just check if the API is
being called correctly
- The API was checked by running trace in a sample python file
    - Set env variable to "" and used `_jit_set_logging_option` in python to set the variable to `>dead_code_elimination`
    - The error output had logs of form [DUMP..] [UPDATE...] etc

Fixes https://github.com/pytorch/pytorch/issues/54188

Pull Request resolved: https://github.com/pytorch/pytorch/pull/58821

Reviewed By: soulitzer

Differential Revision: D29116712

Pulled By: ZolotukhinM

fbshipit-source-id: 8f2861ee2bd567fb63b405953d035ca657a3200f
2021-06-21 16:10:49 -07:00
Richard Barnes
b162d95e46 Fix a number of lint perf and safety issues in torch (#59897)
Summary: Pull Request resolved: https://github.com/pytorch/pytorch/pull/59897

Test Plan: Sandcastle

Reviewed By: ngimel

Differential Revision: D29037012

fbshipit-source-id: 7c16286d5fc2b67964fb65f8374dfff4d1a7aefb
2021-06-15 13:14:51 -07:00
Meghan Lele
d9d7d5e24a [torch] Remove migration warning for ScriptDict
Summary:
This commit removes the warning that suggests that users script their
dictionaries before passing them into TorchScript code. The ScriptDict feature
is not fully ready, so it does not make sense to recommend this yet.

Test Plan:
Sandcastle.

In addition, the PyPER test broken by the original diff passes:

```
buck test mode/opt //caffe2/torch/fb/training_toolkit/backend/tests:test_model_materializer_full_sync_lwt -- --exact 'caffe2/torch/fb/training_toolkit/backend/tests:test_model_materializer_full_sync_lwt - caffe2.torch.fb.training_toolkit.backend.tests.test_model_materializer_full_sync_lwt.ModelMaterializerFullSyncLwtTest: test_materialization_determinism_cpu' --run-disabled
```

Differential Revision: D28891351

fbshipit-source-id: 2a3a00cde935d670fb1dc7fd8c709ae9c2ad8cdc
2021-06-03 20:55:40 -07:00
Bin Bao
add291cf66 [JIT] Add a phase to perform inplace<->functional conversion for activation operators (#57477)
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/57477

Currently the conversion only deals with activation operators. The legality check is somewhat strict for now.

Test Plan:
```
python test/test_jit.py -k test_functional_to_inplace_activation
python test/test_jit.py -k test_inplace_to_functional_activation
```

Reviewed By: mrshenli

Differential Revision: D28155153

Pulled By: desertfire

fbshipit-source-id: df092830c4dff3ce9578ff76285eb7a566b7d81b
2021-06-03 06:43:23 -07:00