Summary:
Fixes https://github.com/pytorch/pytorch/issues/46741
pytorchbot
contributors: nickleus27, yanivsagy, and khanhthien123
SmrutiSikha this is mostly your work. We just did very minor clean up.
cc mruberry
Pull Request resolved: https://github.com/pytorch/pytorch/pull/67664
Reviewed By: gchanan
Differential Revision: D32311838
Pulled By: mruberry
fbshipit-source-id: 0e5d4d888caeccb0fd7c80e6ff11b1b1fa8e00d6
Summary:
Many thanks to Forest Yang (meowmix) from the forum for reporting it with a minimal reproduction.
Pull Request resolved: https://github.com/pytorch/pytorch/pull/67829
Reviewed By: malfet
Differential Revision: D32184786
Pulled By: albanD
fbshipit-source-id: b63dbd3148b5def2109deb2f4612c08f55f59dfb
Summary:
Partially fixes https://github.com/pytorch/pytorch/issues/66066
This PR:
- cleans up op-specific testing from test_autograd. test_autograd should be reserved for testing generic autograd functionality
- tests related to an operator are better colocated
- see the tracker for details
What to think about when moving tests to their correct test suite:
- naming, make sure its not too generic
- how the test is parametrized, sometimes we need to add/remove a device/dtype parameter
- can this be merged with existing tests
Pull Request resolved: https://github.com/pytorch/pytorch/pull/67413
Reviewed By: jbschlosser, albanD
Differential Revision: D32031480
Pulled By: soulitzer
fbshipit-source-id: 8e13da1e58a38d5cecbfdfd4fe2b4fe6f816897f
Summary:
Adds mixed precision autocasting support between fp32/fp16 to torchscript/JIT. More in depth descriptoin can be found at [torch/csrc/jit/JIT-AUTOCAST.md](https://github.com/pytorch/pytorch/pull/63939/files#diff-1f1772aaa508841c5bb58b74ab98f49a1e577612cd9ea5c386c8714a75db830b)
This PR implemented an autocast optimization pass that inserts casting ops per AMP rule (torch/csrc/jit/passes/autocast.cpp), that mimics the behavior of eager autocast. The pass also takes into consideration the context of `torch.cuda.amp.autocast` and only inserts casting ops within the enabled context manager, giving feature parity as with eager amp autocast.
We currently provide JIT AMP autocast as a prototyping feature, so it is default off and could be turned on via `torch._C._jit_set_autocast_mode(True)`
The JIT support for autocast is subject to different constraints compared to the eager mode implementation (mostly related to the fact that TorchScript is statically typed), restriction on the user facing python code is described in doc torch/csrc/jit/JIT-AUTOCAST.md
This is a prototype, there are also implementation limitation that's necessary to keep this PR small and get something functioning quickly on upstream, so we can iterate on designs.
Few limitation/challenge that is not properly resolved in this PR:
1. Autocast inserts cast operation, which would have impact on scalar type of output tensor feeding downstream operations. We are not currently propagating the updated scalar types, this would give issues/wrong results on operations in promotion rules.
2. Backward for autodiff in JIT misses the casting of dgrad to input scalar type, as what autograd does in eager. This forces us to explicitly mark the casting operation for certain operations (e.g. binary ops), otherwise, we might be feeding dgrad with mismatch scalar type to input. This could potentially break gradient function consuming dgrad. (e.g. gemm backwards, which assumes grad_output to be of same scalar type as input')
3. `torch.autocast` api has an optional argument `dtype` which is not currently supported in the JIT autocast and we require a static value.
Credit goes mostly to:
tlemo
kevinstephano
Pull Request resolved: https://github.com/pytorch/pytorch/pull/63939
Reviewed By: navahgar
Differential Revision: D31093381
Pulled By: eellison
fbshipit-source-id: da6e26c668c38b01e296f304507048d6c1794314
Summary:
CAFFE2 has been deprecated for a while, but still included in every PyTorch build.
We should stop building it by default, although CI should still validate that caffe2 code is buildable.
Build even fewer dependencies when compiling mobile builds without Caffe2
Introduce `TEST_CAFFE2` in torch.common.utils
Skip `TestQuantizedEmbeddingOps` and `TestJit.test_old_models_bc` is code is compiled without Caffe2
Should be landed after https://github.com/pytorch/builder/pull/864
Pull Request resolved: https://github.com/pytorch/pytorch/pull/66658
Reviewed By: driazati, seemethere, janeyx99
Differential Revision: D31669156
Pulled By: malfet
fbshipit-source-id: 1cc45e2d402daf913a4685eb9f841cc3863e458d
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/64181
This PR replaces all the calls to:
- `transpose(-2, -1)` or `transpose(-1, -2)` by `mT()` in C++ and `mT` in Python
- `conj().transpose(-2, -1)` or `transpose(-2, -1).conj()` or `conj().transpose(-1, -2)` or `transpose(-1, -2).conj()` by `mH()` in C++ and `mH` in Python.
It also simplifies two pieces of code, and fixes one bug where a pair
of parentheses were missing in the function `make_symmetric_matrices`.
Test Plan: Imported from OSS
Reviewed By: H-Huang
Differential Revision: D31692896
Pulled By: anjali411
fbshipit-source-id: e9112c42343663d442dc5bd53ff2b492094b434a
Summary:
Fixes https://github.com/pytorch/pytorch/issues/64883
Adds a `warn_only` kwarg to `use_deterministic_algorithms`. When enabled, calling an operation that does not have a deterministic implementation will raise a warning, rather than an error.
`torch.testing._internal.common_device_type.expectedAlertNondeterministic` is also refactored and documented in this PR to make it easier to use and understand.
cc mruberry kurtamohler
Pull Request resolved: https://github.com/pytorch/pytorch/pull/66233
Reviewed By: bdhirsh
Differential Revision: D31616481
Pulled By: mruberry
fbshipit-source-id: 059634a82d54407492b1d8df08f059c758d0a420
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/62030
Remove dtype tracking from Python Storage interface, remove all the different `<type>Storage` classes except for `ByteStorage`, and update serialization accordingly, while maintaining as much FC/BC as possible
Fixes https://github.com/pytorch/pytorch/issues/47442
* **THE SERIALIZATION FORMAT IS FULLY FC/BC.** We worked very hard to make sure this is the case. We will probably want to break FC at some point to make the serialization structure of tensors make more sense, but not today.
* There is now only a single torch.ByteStorage class. Methods like `Tensor.set_` no longer check that the dtype of storage is appropriate.
* As we no longer know what dtype of a storage is, we've **removed** the size method from Storage, replacing it with nbytes. This is to help catch otherwise silent errors where you confuse number of elements with number of bytes.
* `Storage._new_shared` takes a `nbytes` kwarg and will reject previous positional only calls. `Storage._new_with_file` and `_set_from_file` require explicit element size arguments.
* It's no longer possible to convert storages to different types using the float/double/etc methods. Instead, do the conversion using a tensor.
* It's no longer possible to allocate a typed storage directly using FloatStorage/DoubleStorage/etc constructors. Instead, construct a tensor and extract its storage. The classes still exist but they are used purely for unpickling.
* The preexisting serialization format stores dtype with storage, and in fact this dtype is used to determine the dtype of the tensor overall.
To accommodate this case, we introduce a new TypedStorage concept that exists only during unpickling time which is used to temporarily store the dtype so we can construct a tensor. **If you overrode the handling of pickling/unpickling, you MUST add handling for TypedStorage** or your serialization code will degrade to standard file-based serialization.
Original pull request: https://github.com/pytorch/pytorch/pull/59671
Reviewed By: soulitzer, ngimel
Differential Revision: D29466819
Pulled By: ezyang
fbshipit-source-id: 4a14e5d3c2b08e06e558683d97f7378a3180b00e
Summary:
Happy to get any feedback on how to make this code cleaner!
This:
- Fix Tensor attribute deepcopy BC-breaking?
- Add a test for Tensor attribute deepcopy
- Fix subclass deepcopy
- Moves the subclass serialization tests into their own class not to interfere with other serialization test logic
- Add a test for subclass deepcopy
cc ezyang gchanan
Pull Request resolved: https://github.com/pytorch/pytorch/pull/65584
Reviewed By: gchanan
Differential Revision: D31206590
Pulled By: albanD
fbshipit-source-id: 74a8f0767f4933b9c941fbea880a8fd1b893ea2f
Summary:
Fixes https://github.com/pytorch/pytorch/issues/62793
This is mostly a quick fix. I think the more correct fix could be updating `unique_dim` to `_unique_dim` which could be BC-breaking for C++ users (� maybe). Maybe something else I am missing.
~~Not sure how to add a test for it.~~ Have tested it locally.
We can add a test like following. Tested this locally, it fails currently but passes with the fix.
```python
def test_wildcard_import(self):
exec('from torch import *')
```
Pull Request resolved: https://github.com/pytorch/pytorch/pull/63080
Reviewed By: gchanan
Differential Revision: D30738711
Pulled By: zou3519
fbshipit-source-id: b86d0190e45ba0b49fd2cffdcfd2e3a75cc2a35e
Summary:
Fixes https://github.com/pytorch/pytorch/issues/64813
Raises a TypeError when assigned value to a grad is not a Tensor or
None.
Adds tests.
cc ezyang gchanan
Pull Request resolved: https://github.com/pytorch/pytorch/pull/64876
Reviewed By: anjali411
Differential Revision: D30901678
Pulled By: soulitzer
fbshipit-source-id: dbb3cb5fd0bbac6918e0b2e2f51d340daa43dee0
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/64746
This extracts the error checking that used to be in the PR above.
We are not going to land the proposed fix there, but I think we want this error checking in right now as these would lead to respectively a memory leak and arbitrary memory read/write.
Test Plan: Imported from OSS
Reviewed By: ngimel
Differential Revision: D30867569
Pulled By: albanD
fbshipit-source-id: bf468033fb8b49fcb26eed423f5fad82b4a46c56
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/63554
Following https://github.com/pytorch/pytorch/pull/61840#issuecomment-884087809, this deprecates all the dtype getters publicly exposed in the `torch.testing` namespace. The reason for this twofold:
1. If someone is not familiar with the C++ dispatch macros PyTorch uses, the names are misleading. For example `torch.testing.floating_types()` will only give you `float32` and `float64` skipping `float16` and `bfloat16`.
2. The dtype getters provide very minimal functionality that can be easily emulated by downstream libraries.
We thought about [providing an replacement](https://gist.github.com/pmeier/3dfd2e105842ad0de4505068a1a0270a), but ultimately decided against it. The major problem is BC: by keeping it, either the namespace is getting messy again after a new dtype is added or we need to somehow version the return values of the getters.
Test Plan: Imported from OSS
Reviewed By: H-Huang
Differential Revision: D30662206
Pulled By: mruberry
fbshipit-source-id: a2bdb10ab02ae665df1b5b76e8afa9af043bbf56
Summary:
Will add a description once this is ready for review.
cc: ysiraichi ezyang
Pull Request resolved: https://github.com/pytorch/pytorch/pull/63312
Reviewed By: iramazanli
Differential Revision: D30597447
Pulled By: ezyang
fbshipit-source-id: d36e59835c2f4b38e286032dd2a1111a7e16b7e5
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/63572
Addresses #61906. Issue will be fixed later in the stack when `torch.testing.assert_close` got the same treatment.
cc ezyang gchanan
Test Plan: Imported from OSS
Reviewed By: ezyang
Differential Revision: D30633527
Pulled By: mruberry
fbshipit-source-id: c2002a4998a7a75cb2ab83f87190bde43a9d4f7c
Summary:
This PR implements the necessary hooks/stubs/enums/etc for complete ONNX Runtime (ORT) Eager Mode integration. The actual extension will live out of tree at https://github.com/pytorch/ort.
We have been [working on this at Microsoft](https://github.com/microsoft/onnxruntime-pytorch/tree/eager-ort/torch_onnxruntime) for the last few months, and are finally ready to contribute the PyTorch core changes upstream (nothing major or exciting, just the usual boilerplate for adding new backends).
The ORT backend will allow us to ferry [almost] all torch ops into granular ONNX kernels that ORT will eagerly execute against any devices it supports (therefore, we only need a single ORT backend from a PyTorch perspective).
Pull Request resolved: https://github.com/pytorch/pytorch/pull/58248
Reviewed By: astaff
Differential Revision: D30344992
Pulled By: albanD
fbshipit-source-id: 69082b32121246340d686e16653626114b7714b2
Summary:
This creates `torch.cuda.set_warn_on_synchronization()` function that would warn or error when synchronizing operation is performed. We could wrap it in a context manager for ease of use, but it would be a lie, because it sets global, and not thread-local state. Since it's intended for debugging, maybe that's ok though.
As all `torch.cuda.*` functions, it's going through CPython, not pybind, so the argument is converted to long before being passed to c10 function. I'll make python argument a python enum class, but without pybind it'll still have to go thourgh long conversion.
For a test script
```
import torch
torch.cuda.set_warn_on_synchronization(1)
x=torch.randn(10, device="cuda")
x.nonzero()
y=torch.randn((), device="cuda")
if y:
print("something")
torch.multinomial(x.abs(), 10, replacement=False)
torch.randperm(20000, device="cuda")
ind = torch.randint(10, (3,), device="cuda")
mask = torch.randint(2, (10,), device="cuda", dtype=torch.bool)
val = torch.randn((), device="cuda")
x[mask]=1.
x[mask] = val
torch.cuda.synchronize()
```
the output is
```
/../playground/sync_warn_test.py:4: UserWarning: called a synchronizing operation (Triggered internally at ../c10/cuda/CUDAFunctions.cpp:145.)
x.nonzero()
/../playground/sync_warn_test.py:7: UserWarning: called a synchronizing operation (Triggered internally at ../c10/cuda/CUDAFunctions.cpp:145.)
if y:
something
/../playground/sync_warn_test.py:9: UserWarning: called a synchronizing operation (Triggered internally at ../c10/cuda/CUDAFunctions.cpp:145.)
torch.multinomial(x.abs(), 10, replacement=False)
/../playground/sync_warn_test.py:15: UserWarning: called a synchronizing operation (Triggered internally at ../c10/cuda/CUDAFunctions.cpp:145.)
x[mask] = val
```
Pull Request resolved: https://github.com/pytorch/pytorch/pull/62092
Reviewed By: mruberry
Differential Revision: D29968792
Pulled By: ngimel
fbshipit-source-id: cc6f817212c164727ed99ecf6ab050dc29631b9e
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/60959
Add TorchVitals for Dataloader, this indicates that the data loader was enabled.
This is a no-op if TORCH_VITALS environment variable is not set.
Test Plan: buck test mode/dbg caffe2/test:torch -- --regex vitals
Reviewed By: VitalyFedyunin
Differential Revision: D29445146
fbshipit-source-id: d5778fff3dafb3c0463fec7a498bff4905597518
Summary:
Based from https://github.com/pytorch/pytorch/pull/50466
Adds the initial implementation of `torch.cov` similar to `numpy.cov`. For simplicity, we removed support for many parameters in `numpy.cov` that are either redundant such as `bias`, or have simple workarounds such as `y` and `rowvar`.
cc PandaBoi
closes https://github.com/pytorch/pytorch/issues/19037
Pull Request resolved: https://github.com/pytorch/pytorch/pull/58311
Reviewed By: jbschlosser
Differential Revision: D29431651
Pulled By: heitorschueroff
fbshipit-source-id: 167dea880f534934b145ba94291a9d634c25b01b
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/58059
Add CUDA.used vital sign which is true only if CUDA was "used" which technically means the context was created.
Also adds the following features:
- Force vitals to be written even if vitals are disabled, to enable testing when the env variable is not set from the start of execution
- Add a read_vitals call for python to read existing vital signs.
Test Plan: buck test mode/dbg caffe2/test:torch -- --regex basic_vitals
Reviewed By: xuzhao9
Differential Revision: D28357615
fbshipit-source-id: 681bf9ef63cb1458df9f1c241d301a3ddf1e5252
Summary:
Currently foreach `addcmul` and `addcdiv` cast scalar to float so that actual math is done in FP32 when tensor dtype is Float16/BFloat16 while regular `addcmul` and `addcdiv`, not.
### Reproducible steps to see the behavioral difference
```ipython
In [1]: import torch; torch.__version__
Out[1]: '1.9.0'
In [2]: a, b, c = torch.tensor([60000.0], device='cuda', dtype=torch.half), torch.tensor([60000.0], device='cuda', dtype=torch.half), torch.tensor([-1.0], device='cuda', dtype=torch.half)
In [4]: torch.addcmul(a, b, c, value=2)
Out[4]: tensor([-inf], device='cuda:0', dtype=torch.float16)
In [5]: torch._foreach_addcmul([a], [b], [c], value=2)[0]
Out[5]: tensor([-60000.], device='cuda:0', dtype=torch.float16)
```
### How foreach casts?
Foreach addcmul and addcdiv cast scalar to `opmath_t` (almost equivalent to acc_type) here: 42c8439b6e/aten/src/ATen/native/cuda/ForeachPointwiseOp.cu (L30) and cast inputs and results here:
42c8439b6e/aten/src/ATen/native/cuda/ForeachFunctors.cuh (L133-L135)
Related to https://github.com/pytorch/pytorch/issues/58833#60227https://github.com/pytorch/pytorch/issues/60454
cc ptrblck mcarilli ngimel
Pull Request resolved: https://github.com/pytorch/pytorch/pull/60715
Reviewed By: albanD
Differential Revision: D29385715
Pulled By: ngimel
fbshipit-source-id: 8bb2db19ab66fc99d686de056a6ee60f9f71d603
Summary:
Fixes https://github.com/pytorch/pytorch/issues/56036
Fixes https://github.com/pytorch/pytorch/issues/56130
* All the interior points are computed using second order accurate central differences method for gradient operator. However, currently we only have first order method computation for edge points. In this PR we are adding second order methods for edge points as well.
* Currently, there is no detailed description of how gradient operator computed using second order method, and how to use parameters correctly. We add detailed explanation of meaning of each parameter, and return of the gradient operator, meanwhile giving description of the second-order computation.
Pull Request resolved: https://github.com/pytorch/pytorch/pull/58165
Reviewed By: mruberry
Differential Revision: D29305321
Pulled By: iramazanli
fbshipit-source-id: 0e0e418eed801c8510b8babe2ad3d064479fb4d6
Summary:
Fixes https://github.com/pytorch/pytorch/issues/27655
This PR adds a C++ and Python version of ReflectionPad3d with structured kernels. The implementation uses lambdas extensively to better share code from the backward and forward pass.
Pull Request resolved: https://github.com/pytorch/pytorch/pull/59791
Reviewed By: gchanan
Differential Revision: D29242015
Pulled By: jbschlosser
fbshipit-source-id: 18e692d3b49b74082be09f373fc95fb7891e1b56
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/59014Fixes#48401
`assert_no_overlap` currently has a false-negative where it recognizes
the transpose of a contiguous tensor as fully overlapping. This happens because
the memory regions do fully overlap, but of course the strides are different so
the actual elements don't all overlap.
This goes slightly in the other direction, by requiring strides to exactly
match we get false-positives for some unusual situations, e.g.
```
torch.add(a, a, out=a.view([1, *a.shape]))
```
Or replacing strides of length-1 dimensions, etc. However, I think these are
sufficiently obscure that it's okay to error and the common cases like
inplace operations still work as before.
Test Plan: Imported from OSS
Reviewed By: gchanan
Differential Revision: D29040928
Pulled By: ngimel
fbshipit-source-id: 5a636c67536a3809c83f0d3117d2fdf49c0a45e6
Summary:
Based from https://github.com/pytorch/pytorch/pull/50466
Adds the initial implementation of `torch.cov` similar to `numpy.cov`. For simplicity, we removed support for many parameters in `numpy.cov` that are either redundant such as `bias`, or have simple workarounds such as `y` and `rowvar`.
cc PandaBoi
TODO
- [x] Improve documentation
Pull Request resolved: https://github.com/pytorch/pytorch/pull/58311
Reviewed By: mruberry
Differential Revision: D28994140
Pulled By: heitorschueroff
fbshipit-source-id: 1890166c0a9c01e0a536acd91571cd704d632f44