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883 Commits

Author SHA1 Message Date
soulitzer
b3861ac8e7 [reland] Warn if AccumulateGrad stream does not match producer node stream (#166136)
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ghstack-source-id: 59641aa32dc6fd027abf3276017432b693aa71f8
Pull-Request-resolved: https://github.com/pytorch/pytorch/pull/165065

Fixes #ISSUE_NUMBER

Opening a new PR for codev

Pull Request resolved: https://github.com/pytorch/pytorch/pull/166136
Approved by: https://github.com/ngimel
2025-11-01 12:33:48 +00:00
Yu, Guangye
0ec0549823 Introduce a new API torch.xpu.get_per_process_memory_fraction (#165511)
# Motivation
Aligned with other backends, this PR introduces a new API torch.xpu.get_per_process_memory_fraction to allow user to retrieve the allowed memory fraction per a single process.

Pull Request resolved: https://github.com/pytorch/pytorch/pull/165511
Approved by: https://github.com/EikanWang, https://github.com/ezyang
ghstack dependencies: #165508, #165509, #165510
2025-10-30 19:30:09 +00:00
Scott Wolchok
6a5a436624 DTensor: C++ compute_global_tensor_info (#162990)
compute_global_tensor_info is on the hot path for DTensor.{from,to}_local. More incremental progress toward C++.

Pull Request resolved: https://github.com/pytorch/pytorch/pull/162990
Approved by: https://github.com/ezyang
2025-10-30 15:10:54 +00:00
Jeff Daily
d401e4e70a [ROCm][CUDA] add unit test utility busy_wait_for_flag (#166218)
torch.cuda._busy_wait_for_flag() will launch a kernel that spins until a flag is set by a corresponding torch.cuda._clear_flag(). These **must** be run on separate streams or it will deadlock.

When used correctly these kernels will put work on the GPU that is more predictable than torch.cuda._sleep() in cases where the unit test is depending on the GPU being busy.

Fixes #120318.

Pull Request resolved: https://github.com/pytorch/pytorch/pull/166218
Approved by: https://github.com/jeffdaily

Co-authored-by: Jeff Daily <jeff.daily@amd.com>
2025-10-29 22:40:23 +00:00
Yu, Guangye
753d9bd806 Introduce a new API torch.xpu.set_per_process_memory_fraction (#165510)
# Motivation
Aligned with other backends, this PR introduces a new API `torch.xpu.set_per_process_memory_fraction` to allow user to customize the allowed memory per a single process.

Pull Request resolved: https://github.com/pytorch/pytorch/pull/165510
Approved by: https://github.com/EikanWang, https://github.com/ezyang
ghstack dependencies: #165508, #165509
2025-10-29 03:24:52 +00:00
Jason Ansel
78bcfcf870 [fx] Optimize torch.fx.Node.replace_all_uses_with (#165889)
Pull Request resolved: https://github.com/pytorch/pytorch/pull/165889
Approved by: https://github.com/aorenste
2025-10-25 03:44:41 +00:00
PyTorch MergeBot
75b8295868 Revert "Warn if AccumulateGrad stream does not match producer node stream (#165065)"
This reverts commit 12f742941d.

Reverted https://github.com/pytorch/pytorch/pull/165065 on behalf of https://github.com/clee2000 due to broke internal builds D85273204 usages of TORCH_API void add need to be updated? ([comment](https://github.com/pytorch/pytorch/pull/165065#issuecomment-3438061854))
2025-10-23 17:02:49 +00:00
Eddie Yan
e64a814ae7 [CUDA] Add experimental green context support for SM carveout (#159104)
Low-level PyTorch APIs should be usable/stable enough at this point but we might move the underlying driver API usage a bit from here...

Built on top of @drisspg 's branch

Pull Request resolved: https://github.com/pytorch/pytorch/pull/159104
Approved by: https://github.com/ngimel, https://github.com/malfet, https://github.com/kwen2501

Co-authored-by: drisspg <drisspguessous@gmail.com>
Co-authored-by: Nikita Shulga <2453524+malfet@users.noreply.github.com>
2025-10-22 21:38:52 +00:00
soulitzer
12f742941d Warn if AccumulateGrad stream does not match producer node stream (#165065)
Pull Request resolved: https://github.com/pytorch/pytorch/pull/165065
Approved by: https://github.com/ngimel
2025-10-22 17:33:27 +00:00
Jason Ansel
3c3b278872 [reland][fx] Move Node._prepend/Node._remove_from_list to C++ (#165882)
Relands #148261 that was reverted by #150542

Pull Request resolved: https://github.com/pytorch/pytorch/pull/165882
Approved by: https://github.com/ezyang
2025-10-21 19:43:55 +00:00
Yu, Guangye
b2f5c25b27 Introduce a generic API torch._C._accelerator_setAllocatorSettings (#165291)
Pull Request resolved: https://github.com/pytorch/pytorch/pull/165291
Approved by: https://github.com/albanD
ghstack dependencies: #165288, #165289
2025-10-19 15:34:36 +00:00
Shivam Raikundalia
a25a649e70 [Mem Snapshot] Add Metadata Field (#165490)
Summary:
The implementation adds the ability to:

Set custom metadata strings that will be attached to all subsequent allocations
Clear or change the metadata at any point
View the metadata in memory snapshots via _dump_snapshot()

Test Plan: Added test in test_cuda.py and check manually in snapshot to see that metadata was added.

Differential Revision: D84654933

Pull Request resolved: https://github.com/pytorch/pytorch/pull/165490
Approved by: https://github.com/yushangdi
2025-10-17 23:46:02 +00:00
PyTorch MergeBot
11e2084308 Revert "[Mem Snapshot] Add Metadata Field (#165490)"
This reverts commit 5b3ea75895.

Reverted https://github.com/pytorch/pytorch/pull/165490 on behalf of https://github.com/pytorch-auto-revert due to Reverted automatically by pytorch's autorevert, to avoid this behaviour add the tag autorevert: disable ([comment](https://github.com/pytorch/pytorch/pull/165490#issuecomment-3413491091))
2025-10-17 02:01:53 +00:00
Shivam Raikundalia
5b3ea75895 [Mem Snapshot] Add Metadata Field (#165490)
Summary:
The implementation adds the ability to:

Set custom metadata strings that will be attached to all subsequent allocations
Clear or change the metadata at any point
View the metadata in memory snapshots via _dump_snapshot()

Test Plan: Added test in test_cuda.py and check manually in snapshot to see that metadata was added.

Differential Revision: D84654933

Pull Request resolved: https://github.com/pytorch/pytorch/pull/165490
Approved by: https://github.com/yushangdi
2025-10-16 22:54:27 +00:00
Nikita Shulga
ce109b3f79 Add torch.backends.mkldnn.is_acl_available() method (#165678)
That tells whether or not PyTorch was compiled with Arm Compute Library
Pull Request resolved: https://github.com/pytorch/pytorch/pull/165678
Approved by: https://github.com/Skylion007, https://github.com/atalman, https://github.com/albanD
ghstack dependencies: #165583, #165584, #165676
2025-10-16 22:34:21 +00:00
Sarthak Tandon
66ea76ec44 [ROCm][tunableop] Improvements to tunableop Numerical Check (#163079)
Modified the flag PYTORCH_TUNABLEOP_NUMERICAL_CHECK, so that it accepts the numerical tolerances in the format atol_rtol as compared to the previous 0 and 1. Retains previous functionality with default values as well.

Pull Request resolved: https://github.com/pytorch/pytorch/pull/163079
Approved by: https://github.com/naromero77amd, https://github.com/jeffdaily
2025-10-15 22:26:47 +00:00
Sarthak Tandon
7f9b745494 [ROCm][tunableop] Modified Online Tuning Mode to add Instant Logging (#163965)
- Added instant logging in online tuning mode, so that each tuned GEMM is instantly written
- Allows us to have saved tuning configs, in cases of crashes.

Pull Request resolved: https://github.com/pytorch/pytorch/pull/163965
Approved by: https://github.com/naromero77amd, https://github.com/jeffdaily
2025-10-15 20:02:31 +00:00
angelayi
2b4ef6b4d6 [opaque_obj_v2] PyObject custom op schema type (#165004)
This is a cleaner implementation of opaque objects (https://github.com/pytorch/pytorch/pull/162660). Instead now we just need to do:

Call `register_opaque_type` to register the type as being "opaque" and allowed by custom ops. You also need to pass a unique name that maps to the type.
```python
class OpaqueQueue:
    def __init__(self, queue: list[torch.Tensor], init_tensor_: torch.Tensor) -> None:
        super().__init__()
        self.queue = queue
        self.init_tensor_ = init_tensor_

    def push(self, tensor: torch.Tensor) -> None:
        self.queue.append(tensor)

    def pop(self) -> torch.Tensor:
        if len(self.queue) > 0:
            return self.queue.pop(0)
        return self.init_tensor_

    def size(self) -> int:
        return len(self.queue)

register_opaque_type(OpaqueQueue, "_TestOpaqueObject_OpaqueQueue")
```

When creating the custom op, the schema will then use the unique name:
```python
self.lib = torch.library.Library("_TestOpaqueObject", "FRAGMENT")

torch.library.define(
    "_TestOpaqueObject::queue_push",
    "(_TestOpaqueObject_OpaqueQueue a, Tensor b) -> ()",
    tags=torch.Tag.pt2_compliant_tag,
    lib=self.lib,
)

@torch.library.impl(
    "_TestOpaqueObject::queue_push", "CompositeExplicitAutograd", lib=self.lib
)
def push_impl(queue: OpaqueQueue, b: torch.Tensor) -> None:
    assert isinstance(queue, OpaqueQueue)
    queue.push(b)
```

Using the custom op:
```python
queue = OpaqueQueue([], torch.zeros(3))
torch.ops._TestOpaqueObject.queue_push(queue, torch.ones(3))
self.assertTrue(queue.size(), 1)
```

Pull Request resolved: https://github.com/pytorch/pytorch/pull/165004
Approved by: https://github.com/albanD
2025-10-14 20:21:04 +00:00
PyTorch MergeBot
a71ca4dcb9 Revert "[opaque_obj_v2] PyObject custom op schema type (#165004)"
This reverts commit 3faee20067.

Reverted https://github.com/pytorch/pytorch/pull/165004 on behalf of https://github.com/seemethere due to This fails internal tests, see D84399300 ([comment](https://github.com/pytorch/pytorch/pull/165004#issuecomment-3398906856))
2025-10-13 20:08:38 +00:00
angelayi
3faee20067 [opaque_obj_v2] PyObject custom op schema type (#165004)
This is a cleaner implementation of opaque objects (https://github.com/pytorch/pytorch/pull/162660). Instead now we just need to do:

Call `register_opaque_type` to register the type as being "opaque" and allowed by custom ops. You also need to pass a unique name that maps to the type.
```python
class OpaqueQueue:
    def __init__(self, queue: list[torch.Tensor], init_tensor_: torch.Tensor) -> None:
        super().__init__()
        self.queue = queue
        self.init_tensor_ = init_tensor_

    def push(self, tensor: torch.Tensor) -> None:
        self.queue.append(tensor)

    def pop(self) -> torch.Tensor:
        if len(self.queue) > 0:
            return self.queue.pop(0)
        return self.init_tensor_

    def size(self) -> int:
        return len(self.queue)

register_opaque_type(OpaqueQueue, "_TestOpaqueObject_OpaqueQueue")
```

When creating the custom op, the schema will then use the unique name:
```python
self.lib = torch.library.Library("_TestOpaqueObject", "FRAGMENT")

torch.library.define(
    "_TestOpaqueObject::queue_push",
    "(_TestOpaqueObject_OpaqueQueue a, Tensor b) -> ()",
    tags=torch.Tag.pt2_compliant_tag,
    lib=self.lib,
)

@torch.library.impl(
    "_TestOpaqueObject::queue_push", "CompositeExplicitAutograd", lib=self.lib
)
def push_impl(queue: OpaqueQueue, b: torch.Tensor) -> None:
    assert isinstance(queue, OpaqueQueue)
    queue.push(b)
```

Using the custom op:
```python
queue = OpaqueQueue([], torch.zeros(3))
torch.ops._TestOpaqueObject.queue_push(queue, torch.ones(3))
self.assertTrue(queue.size(), 1)
```

Pull Request resolved: https://github.com/pytorch/pytorch/pull/165004
Approved by: https://github.com/albanD
2025-10-10 21:31:56 +00:00
PyTorch MergeBot
f975bd58af Revert "Warn if AccumulateGrad stream does not match producer node stream (#165065)"
This reverts commit a70ef954b9.

Reverted https://github.com/pytorch/pytorch/pull/165065 on behalf of https://github.com/izaitsevfb due to breaks lint ([comment](https://github.com/pytorch/pytorch/pull/165065#issuecomment-3391387386))
2025-10-10 17:29:29 +00:00
soulitzer
a70ef954b9 Warn if AccumulateGrad stream does not match producer node stream (#165065)
Pull Request resolved: https://github.com/pytorch/pytorch/pull/165065
Approved by: https://github.com/ngimel
ghstack dependencies: #162815
2025-10-10 16:46:01 +00:00
soulitzer
71aefd5595 [reland] Allow setting grad_dtype on leaf tensors (#164751)
ghstack-source-id: e44b3941530be83a630ec93f1478eec741ffca2e
Pull-Request-resolved: https://github.com/pytorch/pytorch/pull/162815

Fixes #ISSUE_NUMBER

Relanding due to internal weirdness. Separate PR to codev w/o ghstack.

Pull Request resolved: https://github.com/pytorch/pytorch/pull/164751
Approved by: https://github.com/albanD
2025-10-08 20:23:13 +00:00
Natalia Gimelshein
37c6087334 Add split-K control to cuBLAS reduced-precision settings (#164766)
## Summary
- add a CuBLASReductionOption enum so the CUDA context can track reduced-precision and split-K options
- extend the Python bindings, backend helpers, and docs to accept an optional allow_splitk argument for fp16/bf16 matmul controls
- update cuBLAS/cuBLASLt call sites plus dynamo guards and tests to respect the new combinations

## Testing
- python test/test_cuda.py TestCuda.test_cublas_allow_fp16_reduced_precision_reduction_get_set -v *(fails: ModuleNotFoundError: No module named 'psutil')*

------
https://chatgpt.com/codex/tasks/task_e_68e404623178832f8a3e1d34e1e175da

Pull Request resolved: https://github.com/pytorch/pytorch/pull/164766
Approved by: https://github.com/malfet, https://github.com/albanD
2025-10-08 18:48:45 +00:00
PyTorch MergeBot
1e42fde45e Revert "[CUDA] Add experimental green context support for SM carveout (#159104)"
This reverts commit 746fe78ecd.

Reverted https://github.com/pytorch/pytorch/pull/159104 on behalf of https://github.com/malfet due to Breaks Windows CD build ([comment](https://github.com/pytorch/pytorch/pull/159104#issuecomment-3378675515))
2025-10-07 20:51:22 +00:00
Eddie Yan
746fe78ecd [CUDA] Add experimental green context support for SM carveout (#159104)
Low-level PyTorch APIs should be usable/stable enough at this point but we might move the underlying driver API usage a bit from here...

Built on top of @drisspg 's branch

Pull Request resolved: https://github.com/pytorch/pytorch/pull/159104
Approved by: https://github.com/ngimel

Co-authored-by: drisspg <drisspguessous@gmail.com>
2025-10-06 23:11:23 +00:00
PyTorch MergeBot
3ddf2018d0 Revert "Support setting grad_dtype on leaf tensors (#162815)"
This reverts commit dca73982c5.

Reverted https://github.com/pytorch/pytorch/pull/162815 on behalf of https://github.com/yangw-dev due to break internal test D83850533, see more details below ([comment](https://github.com/pytorch/pytorch/pull/162815#issuecomment-3367498501))
2025-10-03 23:14:28 +00:00
PyTorch MergeBot
8ec8c14ace Revert "[CUDA] Add experimental green context support for SM carveout (#159104)"
This reverts commit 3c59351c6e.

Reverted https://github.com/pytorch/pytorch/pull/159104 on behalf of https://github.com/clee2000 due to failed lint, pyfmt not caught pyi file, I think they need special handling since theyre not in the changed files list? ([comment](https://github.com/pytorch/pytorch/pull/159104#issuecomment-3367077208))
2025-10-03 20:15:56 +00:00
Eddie Yan
3c59351c6e [CUDA] Add experimental green context support for SM carveout (#159104)
Low-level PyTorch APIs should be usable/stable enough at this point but we might move the underlying driver API usage a bit from here...

Built on top of @drisspg 's branch

Pull Request resolved: https://github.com/pytorch/pytorch/pull/159104
Approved by: https://github.com/ngimel

Co-authored-by: drisspg <drisspguessous@gmail.com>
2025-10-03 18:59:12 +00:00
soulitzer
dca73982c5 Support setting grad_dtype on leaf tensors (#162815)
`grad_dtype` is a new attribute on Tensor to control gradient dtype:
- Access/setting is leaf-only.
- grad_dtype is respected when (1) when assigning to .grad, and (2) in the engine after the previous node produces incoming gradients for AccumulateGrad. (See table below for details)
- Not setting grad_dtype preserves the current behavior. Accessing it returns `t.dtype`
- `grad_dtype` cannot be set when there is already a `.grad` present and the dtypes conflict.

| `grad_dtype` setting | Setting `.grad` manually | Incoming gradient from autograd engine |
|-----------------------|--------------------------|-----------------------------------------|
| **Default (tensor’s dtype)** | `.grad` must match tensor’s dtype | Engine casts incoming grad to tensor’s dtype |
| **Set to specific dtype** | `.grad` must match that dtype | Engine casts incoming grad to the specified dtype |
| **Set to `None`** | `.grad` may be any dtype | Engine does not cast; accepts incoming grad dtype as-is |

Pull Request resolved: https://github.com/pytorch/pytorch/pull/162815
Approved by: https://github.com/albanD
2025-10-02 23:09:07 +00:00
Han Qi
b5c4f46bb9 Add functions to setup PrivateUse1 as a python backend device. (#157859)
Fixes #156052 and #156444.

This PR setup the privateuseone key in Python to be used as a python backend for pytorch.
Meaning that, after calling `setup_privateuseone_for_python_backend('npy')`, one can use a subclass to with that device to hold arbitrary python data as "device data" and use `torch.library` to register ops that takes that Tensor.

Changes done in this PR:

1. Register an vanilla Device Guard: I extended NoOpDeviceGuard to have allow device index of 0 and to not raise errors when event related functions are accessed. If I don't do those, when calling backward I would get errors. (CPU backend uses NoOpDeviceGuard just fine, although there seems to be special treatment of CPU in the autograd engine.
2. Tensor subclass allows not having `__torch_dispatch__` if the device is not CUDA or CPU. The comment of the check suggests it was to avoid segfault when calling into ops that expects a storage. Here we have a different device so will not call into those ops.
3. python function that invokes the other incantations to setup the privateusekey backend.

This took inspiration of https://github.com/bdhirsh/pytorch_open_registration_example and https://github.com/tinygrad/tinygrad/blob/master/extra/torch_backend/wrapped_tensor.cpp; great thanks to @bdhirsh and @geohot.
Pull Request resolved: https://github.com/pytorch/pytorch/pull/157859
Approved by: https://github.com/albanD
2025-10-01 21:32:59 +00:00
PyTorch MergeBot
410ed3006b Revert "Add functions to setup PrivateUse1 as a python backend device. (#157859)"
This reverts commit 1310d6a1f9.

Reverted https://github.com/pytorch/pytorch/pull/157859 on behalf of https://github.com/jeanschmidt due to introduce linting errors ([comment](https://github.com/pytorch/pytorch/pull/157859#issuecomment-3352140098))
2025-09-30 13:24:37 +00:00
Han Qi
1310d6a1f9 Add functions to setup PrivateUse1 as a python backend device. (#157859)
Fixes #156052 and #156444.

This PR setup the privateuseone key in Python to be used as a python backend for pytorch.
Meaning that, after calling `setup_privateuseone_for_python_backend('npy')`, one can use a subclass to with that device to hold arbitrary python data as "device data" and use `torch.library` to register ops that takes that Tensor.

Changes done in this PR:

1. Register an vanilla Device Guard: I extended NoOpDeviceGuard to have allow device index of 0 and to not raise errors when event related functions are accessed. If I don't do those, when calling backward I would get errors. (CPU backend uses NoOpDeviceGuard just fine, although there seems to be special treatment of CPU in the autograd engine.
2. Tensor subclass allows not having `__torch_dispatch__` if the device is not CUDA or CPU. The comment of the check suggests it was to avoid segfault when calling into ops that expects a storage. Here we have a different device so will not call into those ops.
3. python function that invokes the other incantations to setup the privateusekey backend.

This took inspiration of https://github.com/bdhirsh/pytorch_open_registration_example and https://github.com/tinygrad/tinygrad/blob/master/extra/torch_backend/wrapped_tensor.cpp; great thanks to @bdhirsh and @geohot.
Pull Request resolved: https://github.com/pytorch/pytorch/pull/157859
Approved by: https://github.com/albanD
2025-09-30 08:39:36 +00:00
Brian Hirsh
7d710403b0 Reapply "Make functionalization ViewMeta serializable with pickle. (#143712)" (#163769)
### Summary:
NOTE: This is a re-export of https://github.com/pytorch/pytorch/pull/161994 ; the changes between these two PRs is exclusively to the buck/build files

(Summary from #161994 )
Attempted rebase of https://github.com/pytorch/pytorch/pull/143712.

This reverts commit 6c713ccb5e.

cc voznesenskym penguinwu EikanWang jgong5 Guobing-Chen XiaobingSuper zhuhaozhe blzheng wenzhe-nrv jiayisunx chenyang78 kadeng chauhang amjames Lucaskabela

imported-using-ghimport

Test Plan: Imported from OSS

Differential Revision: D81524507

Pulled By: Lucaskabela

Pull Request resolved: https://github.com/pytorch/pytorch/pull/163769
Approved by: https://github.com/dolpm

Co-authored-by: Brian Hirsh <hirsheybar@fb.com>
2025-09-25 10:27:37 +00:00
Valentin Andrei
bb5be56619 [torch][cuda][device_limits] Library for querying device hardware limits for flops and bandwidth (#162942)
In various benchmarks scattered across the repo, the limits for flops/second and memory bandwidth are usually hardcoded for a single device. This utility could help in providing a more structured way to query the device capabilities. If this is approved, we can use it when reporting flops efficiency and bandwidth relative to peak in the benchmarks and tests. The intent is to add more devices, more parameters (e.g. L2 cache bandwidth, NVLink, etc.) for both CPUs and accelerators.

Testing:

```
import torch

if torch.cuda.is_available():
    device = torch.cuda.current_device()
    mod = torch.get_device_module('cuda')
    hw = mod._device_limits.GPULimits(device)

    print(hw.get_tflops_per_second(torch.float16))
    print(hw.get_tflops_per_second(torch.float32))
    print(hw.get_tflops_per_second(torch.float64))
    print(hw.get_tflops_per_second(torch.bfloat16))
    print(hw.get_tflops_per_second(torch.int8))
    print(hw.get_memory_bandwidth_Bps() / 1e9)
    print(hw.get_shared_memory_bandwidth_Bps() / 1e9)

# Output on an H100 GPU
1070.53056
535.26528
66.90816
1070.53056
2141.06112
4893.696
33454.08
```
Pull Request resolved: https://github.com/pytorch/pytorch/pull/162942
Approved by: https://github.com/ngimel, https://github.com/albanD
2025-09-23 04:48:19 +00:00
angelayi
d15048493c [opaque_obj] Add set_payload + docs (#163276)
Pull Request resolved: https://github.com/pytorch/pytorch/pull/163276
Approved by: https://github.com/zou3519
ghstack dependencies: #162660
2025-09-22 20:02:29 +00:00
PyTorch MergeBot
eaa613bf66 Revert "[opaque_obj] Add set_payload + docs (#163276)"
This reverts commit dd30667f6c.

Reverted https://github.com/pytorch/pytorch/pull/163276 on behalf of https://github.com/ZainRizvi due to Sorry but this fails lint on trunk: [GH job link](https://github.com/pytorch/pytorch/actions/runs/17924886989/job/50968430537) [HUD commit link](dd30667f6c) ([comment](https://github.com/pytorch/pytorch/pull/163276#issuecomment-3321054061))
2025-09-22 19:32:30 +00:00
angelayi
7e9781174c Fix lint (#163542)
Fixes #ISSUE_NUMBER

Pull Request resolved: https://github.com/pytorch/pytorch/pull/163542
Approved by: https://github.com/malfet
2025-09-22 19:10:00 +00:00
angelayi
dd30667f6c [opaque_obj] Add set_payload + docs (#163276)
Pull Request resolved: https://github.com/pytorch/pytorch/pull/163276
Approved by: https://github.com/zou3519
ghstack dependencies: #162660
2025-09-22 18:30:28 +00:00
angelayi
3be9c86c74 [opaque obj] Initial OpaqueObject (#162660)
A big pain point ppl have with custom ops is that they do not accept arbitrary input/outputs. In this PR we create the concept of an "OpaqueObject" which allows users to pass arbitrary python objects into custom operators.

Some still slightly annoying parts with this implementation:
- The schema of the operator is `__torch__.torch.classes.aten.OpaqueObject` instead of whatever python type
- `@torch.library.custom_op` doesn't work.. yet?

UX:
```python
from torch._library.opaque_object import make_opaque, get_payload

# your custom python class
class OpaqueQueue:
    def __init__(self, queue: list[torch.Tensor], init_tensor_: torch.Tensor) -> None:
        super().__init__()
        self.queue = queue
        self.init_tensor_ = init_tensor_

    def push(self, tensor: torch.Tensor) -> None:
        self.queue.append(tensor)

    def pop(self) -> torch.Tensor:
        if len(self.queue) > 0:
            return self.queue.pop(0)
        return self.init_tensor_

    def size(self) -> int:
        return len(self.queue)

queue = OpaqueQueue([], torch.zeros(3))
obj: torch._C.ScriptObject = make_opaque(queue)

# obj.payload stores a direct reference to this python queue object
self.assertEqual(get_payload(obj), queue)

# This is able to be passed through the dispatcher
torch.ops._TestOpaqueObject.queue_push(obj, torch.ones(3))
self.assertTrue(queue.size(), 1)
```

Authoring a custom op:

```python
lib = torch.library.Library("_TestOpaqueObject", "FRAGMENT")

torch.library.define(
    f"_TestOpaqueObject::queue_push",
    "(__torch__.torch.classes.aten.OpaqueObject a, Tensor b) -> ()",
    tags=torch.Tag.pt2_compliant_tag,
    lib=lib,
)

@torch.library.impl(f"{libname}::queue_push", "CompositeExplicitAutograd", lib=lib)
def push_impl(q: torch._C.ScriptObject, b: torch.Tensor) -> None:
    # We can get the payload directly by get_payload(q)
    queue = get_payload(q)
    assert isinstance(queue, OpaqueQueue)
    queue.push(b)
```

Pull Request resolved: https://github.com/pytorch/pytorch/pull/162660
Approved by: https://github.com/zou3519
2025-09-22 18:30:28 +00:00
Scott Wolchok
76a841fd47 Port OpSchema.__post_init__ and OpSchema._recompute_comparison_key to C++ (#161695)
I initially didn't see good results porting this, but it was apparently because of pybind11 function calling overhead. (pybind11's object-handling primitives seem fine enough.) I'm interested in setting up nanobind, but this demonstrates it's not blocking.

Differential Revision: [D81530102](https://our.internmc.facebook.com/intern/diff/D81530102)

Pull Request resolved: https://github.com/pytorch/pytorch/pull/161695
Approved by: https://github.com/ezyang
2025-09-19 04:07:30 +00:00
PyTorch MergeBot
4b7aed89d8 Revert "[torch][cuda][device_limits] Library for querying device hardware limits for flops and bandwidth (#162942)"
This reverts commit 627482a7b7.

Reverted https://github.com/pytorch/pytorch/pull/162942 on behalf of https://github.com/huydhn due to Sorry for reverting your change but it needs some fixes for CUDA 13 ([comment](https://github.com/pytorch/pytorch/pull/162942#issuecomment-3308784448))
2025-09-18 17:49:16 +00:00
vandrei
627482a7b7 [torch][cuda][device_limits] Library for querying device hardware limits for flops and bandwidth (#162942)
In various benchmarks scattered across the repo, the limits for flops/second and memory bandwidth are usually hardcoded for a single device. This utility could help in providing a more structured way to query the device capabilities. If this is approved, we can use it when reporting flops efficiency and bandwidth relative to peak in the benchmarks and tests. The intent is to add more devices, more parameters (e.g. L2 cache bandwidth, NVLink, etc.) for both CPUs and accelerators.

Testing:

```
import torch

if torch.cuda.is_available():
    device = torch.cuda.current_device()
    mod = torch.get_device_module('cuda')
    hw = mod._device_limits.GPULimits(device)

    print(hw.get_tflops_per_second(torch.float16))
    print(hw.get_tflops_per_second(torch.float32))
    print(hw.get_tflops_per_second(torch.float64))
    print(hw.get_tflops_per_second(torch.bfloat16))
    print(hw.get_tflops_per_second(torch.int8))
    print(hw.get_memory_bandwidth_Bps() / 1e9)
    print(hw.get_shared_memory_bandwidth_Bps() / 1e9)

# Output on an H100 GPU
1070.53056
535.26528
66.90816
1070.53056
2141.06112
4893.696
33454.08
```
Pull Request resolved: https://github.com/pytorch/pytorch/pull/162942
Approved by: https://github.com/ngimel
2025-09-18 06:40:07 +00:00
Sherlock Huang
033b7d1e1a [Reland] Return NoOpDeviceGuardImpl in replace of CudaDeviceGuard when device is not available (#163187)
Reland of #160532

Summary:

To support exporting a cuda model on a CPU-only machine under fake tensor mode. User commonly need to move sample inputs to the cuda device with .to("cuda:0") or .to("cuda") call. This diff supports this.
I expect the following pattern to work
```
with FakeTensorMode(allow_non_fake_inputs=True):
    cuda_module = module.to("cuda:0")
    cuda_sample_inputs = tuple([x.to("cuda:0") for x in sample_inputs])
    with torch.no_grad():
        ep = torch.export.export(cuda_module, cuda_sample_inputs)
```

Pull Request resolved: https://github.com/pytorch/pytorch/pull/163016
Approved by: https://github.com/huydhn

Pull Request resolved: https://github.com/pytorch/pytorch/pull/163187
Approved by: https://github.com/angelayi
2025-09-18 04:46:26 +00:00
PyTorch MergeBot
79fd497423 Revert "[Reland] Return NoOpDeviceGuardImpl in replace of CudaDeviceGuard when device is not available, or cpu-only build (#163016)"
This reverts commit f1eb99e2e4.

Reverted https://github.com/pytorch/pytorch/pull/163016 on behalf of https://github.com/jeffdaily due to broke rocm CI, see export/test_export_opinfo.py::TestExportOnFakeCudaCUDA::test_fake_export_nonzero_cuda_float32 [GH job link](https://github.com/pytorch/pytorch/actions/runs/17787208381/job/50564369696) [HUD commit link](f1eb99e2e4) ([comment](https://github.com/pytorch/pytorch/pull/163016#issuecomment-3303707552))
2025-09-17 16:17:53 +00:00
Sherlock Huang
f1eb99e2e4 [Reland] Return NoOpDeviceGuardImpl in replace of CudaDeviceGuard when device is not available, or cpu-only build (#163016)
Reland of #160532

Summary:

To support exporting a cuda model on a CPU-only machine under fake tensor mode.
User commonly need to move sample inputs to the cuda device with .to("cuda:0") or .to("cuda") call.
This diff supports this.
I expect the following pattern to work
```
with FakeTensorMode(allow_non_fake_inputs=True):
    cuda_module = module.to("cuda:0")
    cuda_sample_inputs = tuple([x.to("cuda:0") for x in sample_inputs])
    with torch.no_grad():
        ep = torch.export.export(cuda_module, cuda_sample_inputs)
```

Pull Request resolved: https://github.com/pytorch/pytorch/pull/163016
Approved by: https://github.com/huydhn
2025-09-17 05:01:33 +00:00
Yu, Guangye
0819de412d Add a new API torch.xpu.can_device_access_peer for Intel GPU (#162705)
# Motivation
Aligned with other backends, this PR introduces an new API `torch.xpu.can_device_access_peer`, which is used in vllm distributed [scenarios](2048c4e379/vllm/distributed/device_communicators/custom_all_reduce.py (L37))

Pull Request resolved: https://github.com/pytorch/pytorch/pull/162705
Approved by: https://github.com/EikanWang, https://github.com/ezyang
2025-09-16 18:00:22 +00:00
PyTorch MergeBot
9c93dc8123 Revert "Return NoOpDeviceGuardImpl in replace of CudaDeviceGuard when device is not available, or cpu-only build (#160532)"
This reverts commit a956c4ab1c.

Reverted https://github.com/pytorch/pytorch/pull/160532 on behalf of https://github.com/huydhn due to Reverted internally ([comment](https://github.com/pytorch/pytorch/pull/160532#issuecomment-3287745165))
2025-09-13 07:42:12 +00:00
Sherlock Huang
a956c4ab1c Return NoOpDeviceGuardImpl in replace of CudaDeviceGuard when device is not available, or cpu-only build (#160532)
Summary:

To support exporting a cuda model on a CPU-only machine under fake tensor mode.
User commonly need to move sample inputs to the cuda device with .to("cuda:0") or .to("cuda") call.
This diff supports this.
I expect the following pattern to work
```
with FakeTensorMode(allow_non_fake_inputs=True):
    cuda_module = module.to("cuda:0")
    cuda_sample_inputs = tuple([x.to("cuda:0") for x in sample_inputs])
    with torch.no_grad():
        ep = torch.export.export(cuda_module, cuda_sample_inputs)
```

Test Plan:
CI

Rollback Plan:

Differential Revision: D80181887

Pull Request resolved: https://github.com/pytorch/pytorch/pull/160532
Approved by: https://github.com/henryoier, https://github.com/ezyang
2025-09-13 01:50:51 +00:00
Scott Wolchok
49c446c617 Add C++ function for torch.distributed.tensor._op_schema.is_view_op (#161595)
This seems to have been an especially slow one because of the repeated pybind access (schema is a pybind, as is arguments, and then we hit each argument). It's still ~~1% of total benchmark runtime because of the repeated single pybind function call, but that's a lot better.

Differential Revision: [D81530095](https://our.internmc.facebook.com/intern/diff/D81530095)

Pull Request resolved: https://github.com/pytorch/pytorch/pull/161595
Approved by: https://github.com/ezyang, https://github.com/bdhirsh
ghstack dependencies: #161466, #161586, #161590, #161591
2025-09-08 16:28:08 +00:00