Summary:
Adds `torch.argwhere` as an alias to `torch.nonzero`
Currently, `torch.nonzero` is actually provides equivalent functionality to `np.argwhere`.
From NumPy docs,
> np.argwhere(a) is almost the same as np.transpose(np.nonzero(a)), but produces a result of the correct shape for a 0D array.
Pull Request resolved: https://github.com/pytorch/pytorch/pull/64257
Reviewed By: dagitses
Differential Revision: D31474901
Pulled By: saketh-are
fbshipit-source-id: 335327a4986fa327da74e1fb8624cc1e56959c70
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/62671
Very crude first implementation of `torch.nanmean`. The current reduction kernels do not have good support for implementing nan* variants. Rather than implementing new kernels for each nan* operator, I will work on new reduction kernels with support for a `nan_policy` flag and then I will port `nanmean` to use that.
**TODO**
- [x] Fix autograd issue
Test Plan: Imported from OSS
Reviewed By: malfet
Differential Revision: D30515181
Pulled By: heitorschueroff
fbshipit-source-id: 303004ebd7ac9cf963dc4f8e2553eaded5f013f0
Summary:
Fixes https://github.com/pytorch/pytorch/issues/61767
## Changes
- [x] Add `torch.concat` alias to `torch.cat`
- [x] Add OpInfo for `cat`/`concat`
- [x] Fix `test_out` skips (Use `at::native::resize_output` or `at::native::resize_output_check`)
- [x] `cat`/`concat`
- [x] `stack`
- [x] `hstack`
- [x] `dstack`
- [x] `vstack`/`row_stack`
- [x] Remove redundant tests for `cat`/`stack`
~I've not added `cat`/`concat` to OpInfo `op_db` yet, since cat is a little more tricky than other OpInfos (should have a lot of tests) and currently there are no OpInfos for that. I can try to add that in a subsequent PR or maybe here itself, whatever is suggested.~
**Edit**: cat/concat OpInfo has been added.
**Note**: I've added the named tensor support for `concat` alias as well, maybe that's out of spec in `array-api` but it is still useful for consistency in PyTorch.
Thanks to krshrimali for guidance on my first PR :))
cc mruberry rgommers pmeier asmeurer leofang AnirudhDagar asi1024 emcastillo kmaehashi heitorschueroff krshrimali
Pull Request resolved: https://github.com/pytorch/pytorch/pull/62560
Reviewed By: saketh-are
Differential Revision: D30762069
Pulled By: mruberry
fbshipit-source-id: 6985159d1d9756238890488a0ab3ae7699d94337
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/63242
These functions are part of the native functions namespace as well as the quantized namespace
Test Plan:
CI
Imported from OSS
Reviewed By: jerryzh168
Differential Revision: D30316430
fbshipit-source-id: cd9c839e5c1a961e3c6944e514c16fbc256a2f0c
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/63240
Op is exposed via torch.quantized_batch_norm to the end user without any existing documentation
Test Plan:
CI
Imported from OSS
Reviewed By: VitalyFedyunin
Differential Revision: D30316431
fbshipit-source-id: bf2dc8b7b6f497cf73528eaa2bedef9f65029d84
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/59077Fixes#58549
`from_buffer` constructs a tensor object from an already allocated buffer through
CPython's buffer protocol. Besides the standard `dtype`, `count`, and `offset` parameters,
this function also accepts:
- `device`: where the buffer lives
- `requires_grad`: should autograd record operations on the new tensor
A new test file _test_buffer_protocol.py_ was created. Currently, only CPU tests were
implemented. That's because neither PyTorch nor Numba implements CPython's buffer
protocol. Therefore, there's no way to create a CUDA buffer with the existing
dependencies (could use PyCUDA for that, though).
At the moment, if `device` differs from the device the buffer actually lives, two things
may happen:
- `RuntimeError`, if `device='cuda'`
- Segmentation fault (not tested -- see above), if `device='cpu'`
Test Plan: Imported from OSS
Reviewed By: jbschlosser
Differential Revision: D29870914
Pulled By: mruberry
fbshipit-source-id: 9fa8611aeffedfe39c9af74558178157a11326bb
Summary:
This PR un-reverts https://github.com/pytorch/pytorch/issues/61475 + fixes compilation with MSVC, that does not recognize alternative operator spellings (i.e. using `or` instead of `||` )
Pull Request resolved: https://github.com/pytorch/pytorch/pull/61937
Reviewed By: albanD
Differential Revision: D29805941
Pulled By: malfet
fbshipit-source-id: 01e5963c6717c1b44b260300d87ba0bf57f26ce9
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/56058
User facing changes:
1. Adds a negative bit and corresponding new API (`is_neg()`,`resolve_neg()`)
2. `tensor.conj().imag` now returns a floating point tensor with neg bit set to 1 instead of a tensor with no notion of negative bit. Note that imag is still a view and all the view properties still hold for imag.
Non user facing changes:
1. Added a new Negative dispatch key and a backend fallback to handle it
2. Updated copy kernel to handle negative bit
3. Merged conjugate and negative bit fallback kernel
4. fixed https://github.com/pytorch/pytorch/issues/60478 (caused due to https://github.com/pytorch/pytorch/pull/54987)
Testing:
1. Added a new OpInfo based test `test_neg_view` (verifies that out-of-place and in-place operations work correctly for all operations when the input is a neg view tensor by checking the result against an actually negated tensor, verifies that autograd returns the same output for both neg view and actually negated tensors as well as it works fine when grad_out is a neg view).
2. Added a new test class containing `test_conj_view`, `test_neg_view`.
Test Plan: Imported from OSS
Reviewed By: soulitzer
Differential Revision: D29636403
fbshipit-source-id: 12214c9dc4806c51850f4a72a109db9527c0ca63
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:
Fixes https://github.com/pytorch/pytorch/issues/3025
## Background
This PR implements a function similar to numpy's [`isin()`](https://numpy.org/doc/stable/reference/generated/numpy.isin.html#numpy.isin).
The op supports integral and floating point types on CPU and CUDA (+ half & bfloat16 for CUDA). Inputs can be one of:
* (Tensor, Tensor)
* (Tensor, Scalar)
* (Scalar, Tensor)
Internally, one of two algorithms is selected based on the number of elements vs. test elements. The heuristic for deciding which algorithm to use is taken from [numpy's implementation](fb215c7696/numpy/lib/arraysetops.py (L575)): if `len(test_elements) < 10 * len(elements) ** 0.145`, then a naive brute-force checking algorithm is used. Otherwise, a stablesort-based algorithm is used.
I've done some preliminary benchmarking to verify this heuristic on a devgpu, and determined for a limited set of tests that a power value of `0.407` instead of `0.145` is a better inflection point. For now, the heuristic has been left to match numpy's, but input is welcome for the best way to select it or whether it should be left the same as numpy's.
Tests are adapted from numpy's [isin and in1d tests](7dcd29aaaf/numpy/lib/tests/test_arraysetops.py).
Note: my locally generated docs look terrible for some reason, so I'm not including the screenshot for them until I figure out why.
Pull Request resolved: https://github.com/pytorch/pytorch/pull/53125
Test Plan:
```
python test/test_ops.py # Ex: python test/test_ops.py TestOpInfoCPU.test_supported_dtypes_isin_cpu_int32
python test/test_sort_and_select.py # Ex: python test/test_sort_and_select.py TestSortAndSelectCPU.test_isin_cpu_int32
```
Reviewed By: soulitzer
Differential Revision: D29101165
Pulled By: jbschlosser
fbshipit-source-id: 2dcc38d497b1e843f73f332d837081e819454b4e
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
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/54987
Based off of ezyang (https://github.com/pytorch/pytorch/pull/44799) and bdhirsh (https://github.com/pytorch/pytorch/pull/43702) 's prototype:
Here's a summary of the changes in this PR:
This PR adds a new dispatch key called Conjugate. This enables us to make conjugate operation a view and leverage the specialized library functions that fast path with the hermitian operation (conj + transpose).
1. Conjugate operation will now return a view with conj bit (1) for complex tensors and returns self for non-complex tensors as before. This also means `torch.view_as_real` will no longer be a view on conjugated complex tensors and is hence disabled. To fill the gap, we have added `torch.view_as_real_physical` which would return the real tensor agnostic of the conjugate bit on the input complex tensor. The information about conjugation on the old tensor can be obtained by calling `.is_conj()` on the new tensor.
2. NEW API:
a) `.conj()` -- now returning a view.
b) `.conj_physical()` -- does the physical conjugate operation. If the conj bit for input was set, you'd get `self.clone()`, else you'll get a new tensor with conjugated value in its memory.
c) `.conj_physical_()`, and `out=` variant
d) `.resolve_conj()` -- materializes the conjugation. returns self if the conj bit is unset, else returns a new tensor with conjugated values and conj bit set to 0.
e) `.resolve_conj_()` in-place version of (d)
f) `view_as_real_physical` -- as described in (1), it's functionally same as `view_as_real`, just that it doesn't error out on conjugated tensors.
g) `view_as_real` -- existing function, but now errors out on conjugated tensors.
3. Conjugate Fallback
a) Vast majority of PyTorch functions would currently use this fallback when they are called on a conjugated tensor.
b) This fallback is well equipped to handle the following cases:
- functional operation e.g., `torch.sin(input)`
- Mutable inputs and in-place operations e.g., `tensor.add_(2)`
- out-of-place operation e.g., `torch.sin(input, out=out)`
- Tensorlist input args
- NOTE: Meta tensors don't work with conjugate fallback.
4. Autograd
a) `resolve_conj()` is an identity function w.r.t. autograd
b) Everything else works as expected.
5. Testing:
a) All method_tests run with conjugate view tensors.
b) OpInfo tests that run with conjugate views
- test_variant_consistency_eager/jit
- gradcheck, gradgradcheck
- test_conj_views (that only run for `torch.cfloat` dtype)
NOTE: functions like `empty_like`, `zero_like`, `randn_like`, `clone` don't propagate the conjugate bit.
Follow up work:
1. conjugate view RFC
2. Add neg bit to re-enable view operation on conjugated tensors
3. Update linalg functions to call into specialized functions that fast path with the hermitian operation.
Test Plan: Imported from OSS
Reviewed By: VitalyFedyunin
Differential Revision: D28227315
Pulled By: anjali411
fbshipit-source-id: acab9402b9d6a970c6d512809b627a290c8def5f
Summary:
Fixes https://github.com/pytorch/pytorch/issues/56608
- Adds binding to the `c10::InferenceMode` RAII class in `torch._C._autograd.InferenceMode` through pybind. Also binds the `torch.is_inference_mode` function.
- Adds context manager `torch.inference_mode` to manage an instance of `c10::InferenceMode` (global). Implemented in `torch.autograd.grad_mode.py` to reuse the `_DecoratorContextManager` class.
- Adds some tests based on those linked in the issue + several more for just the context manager
Issues/todos (not necessarily for this PR):
- Improve short inference mode description
- Small example
- Improved testing since there is no direct way of checking TLS/dispatch keys
-
Pull Request resolved: https://github.com/pytorch/pytorch/pull/58045
Reviewed By: agolynski
Differential Revision: D28390595
Pulled By: soulitzer
fbshipit-source-id: ae98fa036c6a2cf7f56e0fd4c352ff804904752c
Summary:
Reference: https://github.com/pytorch/pytorch/issues/38349
Wrapper around the existing `torch.gather` with broadcasting logic.
TODO:
* [x] Add Doc entry (see if phrasing can be improved)
* [x] Add OpInfo
* [x] Add test against numpy
* [x] Handle broadcasting behaviour and when dim is not given.
Pull Request resolved: https://github.com/pytorch/pytorch/pull/52833
Reviewed By: malfet
Differential Revision: D27319038
Pulled By: mruberry
fbshipit-source-id: 00f307825f92c679d96e264997aa5509172f5ed1
Summary:
Close https://github.com/pytorch/pytorch/issues/51108
Related https://github.com/pytorch/pytorch/issues/38349
This PR implements the `cpu_kernel_multiple_outputs` to support returning multiple values in a CPU kernel.
```c++
auto iter = at::TensorIteratorConfig()
.add_output(out1)
.add_output(out2)
.add_input(in1)
.add_input(in2)
.build();
at::native::cpu_kernel_multiple_outputs(iter,
[=](float a, float b) -> std::tuple<float, float> {
float add = a + b;
float mul = a * b;
return std::tuple<float, float>(add, mul);
}
);
```
The `out1` will equal to `torch.add(in1, in2)`, while the result of `out2` will be `torch.mul(in1, in2)`.
It helps developers implement new torch functions that return two tensors more conveniently, such as NumPy-like functions [divmod](https://numpy.org/doc/1.18/reference/generated/numpy.divmod.html?highlight=divmod#numpy.divmod) and [frexp](https://numpy.org/doc/stable/reference/generated/numpy.frexp.html#numpy.frexp).
This PR adds `torch.frexp` function to exercise the new functionality provided by `cpu_kernel_multiple_outputs`.
Pull Request resolved: https://github.com/pytorch/pytorch/pull/51097
Reviewed By: albanD
Differential Revision: D26982619
Pulled By: heitorschueroff
fbshipit-source-id: cb61c7f2c79873ab72ab5a61cbdb9203531ad469
Summary:
Toward fixing https://github.com/pytorch/pytorch/issues/47624
~Step 1: add `TORCH_WARN_MAYBE` which can either warn once or every time in c++, and add a c++ function to toggle the value.
Step 2 will be to expose this to python for tests. Should I continue in this PR or should we take a different approach: add the python level exposure without changing any c++ code and then over a series of PRs change each call site to use the new macro and change the tests to make sure it is being checked?~
Step 1: add a python and c++ toggle to convert TORCH_WARN_ONCE into TORCH_WARN so the warnings can be caught in tests
Step 2: add a python-level decorator to use this toggle in tests
Step 3: (in future PRs): use the decorator to catch the warnings instead of `maybeWarnsRegex`
Pull Request resolved: https://github.com/pytorch/pytorch/pull/48560
Reviewed By: ngimel
Differential Revision: D26171175
Pulled By: mruberry
fbshipit-source-id: d83c18f131d282474a24c50f70a6eee82687158f
Summary:
Pull Request resolved: https://github.com/pytorch/pytorch/pull/51748
Adding docs for `fake_quantize_per_tensor_affine` and `fake_quantize_per_channel_affine`
functions.
Note: not documenting `fake_quantize_per_tensor_affine_cachemask` and
`fake_quantize_per_channel_affine_cachemask` since they are implementation details
of `fake_quantize_per_tensor_affine` and `fake_quantize_per_channel_affine`,
and do not need to be exposed to the user at the moment.
Test Plan: Build the docs locally on Mac OS, it looks good
Reviewed By: supriyar
Differential Revision: D26270514
Pulled By: vkuzo
fbshipit-source-id: 8e3c9815a12a3427572cb4d34a779e9f5e4facdd
Summary:
Implements `np.diff` for single order differences only:
- method and function variants for `diff` and function variant for `diff_out`
- supports out variant, but not in-place since shape changes
- adds OpInfo entry, and test in `test_torch`
- automatic autograd because we are using the `Math` dispatch
_Update: we only support Tensors for prepend and append in this PR. See discussion below and comments for more details._
Currently there is a quirk in the c++ API based on how this is implemented: it is not possible to specify scalar prepend and appends without also specifying all 4 arguments.
That is because the goal is to match NumPy's diff signature of `diff(int n=1, int dim=-1, Union[Scalar, Tensor] prepend=None, Union[Scalar, Tensor] append)=None` where all arguments are optional, positional and in the correct order.
There are a couple blockers. One is c++ ambiguity. This prevents us from simply doing `diff(int n=1, int dim=-1, Scalar? prepend=None, Tensor? append=None)` etc for all combinations of {Tensor, Scalar} x {Tensor, Scalar}.
Why not have append, prepend not have default args and then write out the whole power set of {Tensor, Scalar, omitted} x {Tensor, Scalar, omitted} you might ask. Aside from having to write 18 overloads, this is actually illegal because arguments with defaults must come after arguments without defaults. This would mean having to write `diff(prepend, append, n, dim)` which is not desired. Finally writing out the entire power set of all arguments n, dim, prepend, append is out of the question because that would actually involve 2 * 2 * 3 * 3 = 36 combinations. And if we include the out variant, that would be 72 overloads!
With this in mind, the current way this is implemented is actually to still do `diff(int n=1, int dim=-1, Scalar? prepend=None, Tensor? append=None)`. But also make use of `cpp_no_default_args`. The idea is to only have one of the 4 {Tensor, Scalar} x {Tensor, Scalar} provide default arguments for the c++ api, and add `cpp_no_default_args` for the remaining 3 overloads. With this, Python api works as expected, but some calls such as `diff(prepend=1)` won't work on c++ api.
We can optionally add 18 more overloads that cover the {dim, n, no-args} x {scalar-tensor, tensor-scalar, scalar-scalar} x {out, non-out} cases for c++ api. _[edit: counting is hard - just realized this number is still wrong. We should try to count the cases we do cover instead and subtract that from the total: (2 * 2 * 3 * 3) - (3 + 2^4) = 17. 3 comes from the 3 of 4 combinations of {tensor, scalar}^2 that we declare to be `cpp_no_default_args`, and the one remaining case that has default arguments has covers 2^4 cases. So actual count is 34 additional overloads to support all possible calls]_
_[edit: thanks to https://github.com/pytorch/pytorch/issues/50767 hacky_wrapper is no longer necessary; it is removed in the latest commit]_
hacky_wrapper was also necessary here because `Tensor?` will cause dispatch to look for the `const optional<Tensor>&` schema but also generate a `const Tensor&` declaration in Functions.h. hacky_wrapper allows us to define our function as `const Tensor&` but wraps it in optional for us, so this avoids both the errors while linking and loading.
_[edit: rewrote the above to improve clarity and correct the fact that we actually need 18 more overloads (26 total), not 18 in total to complete the c++ api]_
Pull Request resolved: https://github.com/pytorch/pytorch/pull/50569
Reviewed By: H-Huang
Differential Revision: D26176105
Pulled By: soulitzer
fbshipit-source-id: cd8e77cc2de1117c876cd71c29b312887daca33f
Summary:
BC-breaking note:
This PR changes the behavior of the any and all functions to always return a bool tensor. Previously these functions were only defined on bool and uint8 tensors, and when called on uint8 tensors they would also return a uint8 tensor. (When called on a bool tensor they would return a bool tensor.)
PR summary:
https://github.com/pytorch/pytorch/pull/44790#issuecomment-725596687
Fixes 2 and 3
Also Fixes https://github.com/pytorch/pytorch/issues/48352
Changes
* Output dtype is always `bool` (consistent with numpy) **BC Breaking (Previously used to match the input dtype**)
* Uses vectorized version for all dtypes on CPU
* Enables test for complex
* Update doc for `torch.all` and `torch.any`
TODO
* [x] Update docs
* [x] Benchmark
* [x] Raise issue on XLA
Pull Request resolved: https://github.com/pytorch/pytorch/pull/47878
Reviewed By: albanD
Differential Revision: D25714324
Pulled By: mruberry
fbshipit-source-id: a87345f725297524242d69402dfe53060521ea5d
Summary:
Related https://github.com/pytorch/pytorch/issues/38349
Implement NumPy-like function `torch.broadcast_to` to broadcast the input tensor to a new shape.
Pull Request resolved: https://github.com/pytorch/pytorch/pull/48997
Reviewed By: anjali411, ngimel
Differential Revision: D25663937
Pulled By: mruberry
fbshipit-source-id: 0415c03f92f02684983f412666d0a44515b99373
Summary:
BC-breaking note:
This PR changes the behavior of the any and all functions to always return a bool tensor. Previously these functions were only defined on bool and uint8 tensors, and when called on uint8 tensors they would also return a uint8 tensor. (When called on a bool tensor they would return a bool tensor.)
PR summary:
https://github.com/pytorch/pytorch/pull/44790#issuecomment-725596687
Fixes 2 and 3
Also Fixes https://github.com/pytorch/pytorch/issues/48352
Changes
* Output dtype is always `bool` (consistent with numpy) **BC Breaking (Previously used to match the input dtype**)
* Uses vectorized version for all dtypes on CPU
* Enables test for complex
* Update doc for `torch.all` and `torch.any`
TODO
* [x] Update docs
* [x] Benchmark
* [x] Raise issue on XLA
Pull Request resolved: https://github.com/pytorch/pytorch/pull/47878
Reviewed By: H-Huang
Differential Revision: D25421263
Pulled By: mruberry
fbshipit-source-id: c6c681ef94004d2bcc787be61a72aa059b333e69
Summary:
Ref https://github.com/pytorch/pytorch/issues/42175
This removes the 4 deprecated spectral functions: `torch.{fft,rfft,ifft,irfft}`. `torch.fft` is also now imported by by default.
The actual `at::native` functions are still used in `torch.stft` so can't be full removed yet. But will once https://github.com/pytorch/pytorch/issues/47601 has been merged.
Pull Request resolved: https://github.com/pytorch/pytorch/pull/48594
Reviewed By: heitorschueroff
Differential Revision: D25298929
Pulled By: mruberry
fbshipit-source-id: e36737fe8192fcd16f7e6310f8b49de478e63bf0