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Add decorator `torch.compiler.substitute_in_graph` to register polyfill for unsupported C++ function to avoid graph break. This API provides an official way to add support for dynamo for third-party C extensions. Also, it can be used to simplify our implementation for `torch._dynamo.polyfill`.
5ee070266f/torch/_dynamo/variables/builtin.py (L97-L107)
Example:
```python
>>> import operator
>>> operator.indexOf([1, 2, 3, 4, 5], 3)
2
>>> torch.compile(operator.indexOf, fullgraph=True)([1, 2, 3, 4, 5], 3)
Unsupported: ...
>>> @torch.compiler.substitute_in_graph(operator.indexOf)
... def indexOf(sequence, x):
... for i, item in enumerate(sequence):
... if item is x or item == x:
... return i
... raise ValueError("sequence.index(x): x not in sequence")
>>> torch.compile(operator.indexOf, fullgraph=True)([1, 2, 3, 4, 5], 3)
2
```
Pull Request resolved: https://github.com/pytorch/pytorch/pull/133712
Approved by: https://github.com/jansel
315 lines
11 KiB
Python
315 lines
11 KiB
Python
# mypy: allow-untyped-defs
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from typing import Any, Callable, List, TypeVar
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import torch
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__all__ = [
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"compile",
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"assume_constant_result",
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"reset",
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"allow_in_graph",
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"substitute_in_graph",
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"list_backends",
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"disable",
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"cudagraph_mark_step_begin",
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"wrap_numpy",
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"is_compiling",
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"is_dynamo_compiling",
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]
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_F = TypeVar("_F", bound=Callable[..., Any])
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def compile(*args, **kwargs):
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"""
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See :func:`torch.compile` for details on the arguments for this function.
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"""
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return torch.compile(*args, **kwargs)
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def reset() -> None:
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"""
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This function clears all compilation caches and restores the system to its initial state.
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It is recommended to call this function, especially after using operations like `torch.compile(...)`
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to ensure a clean state before another unrelated compilation
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"""
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import torch._dynamo
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torch._dynamo.reset()
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def allow_in_graph(fn):
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"""
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Tells the compiler frontend (Dynamo) to skip symbolic introspection of the function
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and instead directly write it to the graph when encountered.
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If you are using :func:`torch.compile` (with backend="inductor" (the default)), or
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:func:`torch.export.export`, and trying to black-box a Python function throughout
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all tracing, do not use this API.
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Instead, please create a custom operator (see :ref:`custom-ops-landing-page`)
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.. warning::
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If you're a typical torch.compile user (e.g. you're applying torch.compile to
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a model to make it run faster), you probably don't want to use this function.
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:func:`allow_in_graph` is a footgun because it skips the compiler frontend
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(Dynamo) that is responsible for doing safety checks (graph breaks, handling
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closures, etc). Incorrect usage will lead to difficult-to-debug silent
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incorrectness issues.
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Given a Python function with no allow_in_graph decorator, regular execution
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of torch.compile traces through the function. :func:`allow_in_graph` changes
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it so that the frontend does not trace inside the function, but the compiler
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backend still traces through it. Compare this to custom operators, which
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treats a function as a black box throughout the torch.compile stack. The following
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table compares these mechanisms.
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+------------------------+-----------------------+--------------------------------+
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| Mechanism | Frontend (Dynamo) | Backend (AOTAutograd+Inductor) |
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+========================+=======================+================================+
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| no decorator | trace inside | trace inside |
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+------------------------+-----------------------+--------------------------------+
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| allow_in_graph | opaque callable | trace inside |
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+------------------------+-----------------------+--------------------------------+
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| custom op | opaque callable | opaque callable |
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+------------------------+-----------------------+--------------------------------+
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One common use case for :func:`allow_in_graph()` is as an escape hatch for the compiler
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frontend: if you know the function works w.r.t. to the downstream components of the
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compilation stack (AOTAutograd and Inductor) but there is a Dynamo bug that prevents it from
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symbolically introspecting the function properly (or if your code is in C/C++ and
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therefore cannot be introspected with Dynamo), then one can decorate said function
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with :func:`allow_in_graph` to bypass Dynamo.
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We require that ``fn`` adhere to the following restrictions. Failure to adhere
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results in undefined behavior:
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- The inputs to ``fn`` must be Proxy-able types in the FX graph. Valid types include:
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Tensor/int/bool/float/None/List[Tensor?]/List[int?]/List[float?]
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Tuple[Tensor?, ...]/Tuple[int?, ...]/Tuple[float?, ...]/torch.dtype/torch.device
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- The outputs to ``fn`` must be Proxy-able types in the FX graph (see previous bullet)
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- all Tensors used inside of ``fn`` must be passed directly as inputs to ``fn``
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(as opposed to being captured variables).
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Args:
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fn: A callable representing the function to be included in the graph.
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If ``fn`` is a list or tuple of callables it recursively applies
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:func:`allow_in_graph()` to each function and returns a new list or
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tuple containing the modified functions.
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Example::
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torch.compiler.allow_in_graph(my_custom_function)
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@torch.compile(...)
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def fn(a):
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x = torch.add(x, 1)
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x = my_custom_function(x)
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x = torch.add(x, 1)
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return x
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fn(...)
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Will capture a single graph containing ``my_custom_function()``.
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"""
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import torch._dynamo
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return torch._dynamo.allow_in_graph(fn)
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def substitute_in_graph(original_fn: _F) -> Callable[[_F], _F]:
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"""
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Register a polyfill handler for a function, usually a C function from the C extension, to be
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used in place of the original function when inlining the original function in the graph.
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.. note::
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The polyfill handler is only used when inlining the original function. It is not used when
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the original function is called directly. In the eager mode, the decorated function calls
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the performant C function rather than the polyfill handler.
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The polyfill handler is a function that will be called in place of the original function when
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inlining the original function. The polyfill handler should have the same signature and the same
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behavior as the original function.
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Args:
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original_fn (callable): The original function, usually a C function, to register a polyfill
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handler for.
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Returns:
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A decorator that registers the polyfill handler for the original function.
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Example::
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>>> import operator
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>>> operator.indexOf([1, 2, 3, 4, 5], 3)
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2
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>>> torch.compile(operator.indexOf, fullgraph=True)([1, 2, 3, 4, 5], 3)
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... # xdoctest: +SKIP("Long tracebacks")
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Traceback (most recent call last):
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...
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torch._dynamo.exc.Unsupported: ...
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>>> @torch.compiler.substitute_in_graph(operator.indexOf)
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... def indexOf(a, b, /):
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... for i, item in enumerate(a):
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... if item is b or item == b:
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... return i
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... raise ValueError("sequence.index(x): x not in sequence")
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>>>
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>>> torch.compile(operator.indexOf, fullgraph=True)([1, 2, 3, 4, 5], 3)
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2
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"""
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import torch._dynamo
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return torch._dynamo.substitute_in_graph(original_fn)
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def list_backends(exclude_tags=("debug", "experimental")) -> List[str]:
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"""
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Return valid strings that can be passed to `torch.compile(..., backend="name")`.
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Args:
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exclude_tags(optional): A tuple of strings representing tags to exclude.
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"""
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import torch._dynamo
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return torch._dynamo.list_backends(exclude_tags)
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def assume_constant_result(fn):
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"""
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This function is used to mark a function `fn` as having a constant result.
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This allows the compiler to optimize away your function
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Returns The same function `fn`
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Args:
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fn: The function to be marked as having a constant result.
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.. warning::
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`assume_constant_result` can if invalid cause safety and soundness issues, :func:`torch.compile`
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will not attempt to validate whether the constant assumption is true or not
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"""
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import torch._dynamo
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return torch._dynamo.assume_constant_result(fn)
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def disable(fn=None, recursive=True):
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"""
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This function provides both a decorator and a context manager to disable compilation on a function
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It also provides the option of recursively disabling called functions
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Args:
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fn (optional): The function to disable
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recursive (optional): A boolean value indicating whether the disabling should be recursive.
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"""
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import torch._dynamo
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return torch._dynamo.disable(fn, recursive)
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def cudagraph_mark_step_begin():
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"""
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Indicates that a new iteration of inference or training is about to begin.
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CUDA Graphs will free tensors of a prior iteration. A new iteration is started on each invocation of
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torch.compile, so long as there is not a pending backward that has not been called.
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If that heuristic is wrong, such as in the following example, manually mark it with this api.
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.. code-block:: python
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@torch.compile(mode="reduce-overhead")
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def rand_foo():
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return torch.rand([4], device="cuda")
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for _ in range(5):
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torch.compiler.cudagraph_mark_step_begin()
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rand_foo() + rand_foo()
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For more details, see `torch.compiler_cudagraph_trees <https://pytorch.org/docs/main/torch.compiler_cudagraph_trees.html>`__
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"""
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from torch._inductor import cudagraph_trees
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cudagraph_trees.mark_step_begin()
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def wrap_numpy(fn):
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r"""Decorator that turns a function from ``np.ndarray``s to ``np.ndarray``s into a function
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from ``torch.Tensor``s to ``torch.Tensor``s.
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It is designed to be used with :func:`torch.compile` with ``fullgraph=True``. It allows to
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compile a NumPy function as if it were a PyTorch function. This allows you to run NumPy code
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on CUDA or compute its gradients.
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.. note::
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This decorator does not work without :func:`torch.compile`.
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Example::
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>>> # xdoctest: +REQUIRES(env:TORCH_DOCTEST_CUDA)
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>>> # Compile a NumPy function as a Tensor -> Tensor function
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>>> @torch.compile(fullgraph=True)
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>>> @torch.compiler.wrap_numpy
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>>> def fn(a: np.ndarray):
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>>> return np.sum(a * a)
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>>> # Execute the NumPy function using Tensors on CUDA and compute the gradients
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>>> x = torch.arange(6, dtype=torch.float32, device="cuda", requires_grad=True)
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>>> out = fn(x)
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>>> out.backward()
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>>> print(x.grad)
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tensor([ 0., 2., 4., 6., 8., 10.], device='cuda:0')
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"""
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from torch._dynamo.external_utils import wrap_numpy as wrap
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return wrap(fn)
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_is_compiling_flag: bool = False
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def is_compiling() -> bool:
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"""
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Indicates whether a graph is executed/traced as part of torch.compile() or torch.export().
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Note that there are 2 other related flags that should deprecated eventually:
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* torch._dynamo.external_utils.is_compiling()
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* torch._utils.is_compiling()
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Example::
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>>> def forward(self, x):
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>>> if not torch.compiler.is_compiling():
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>>> pass # ...logic that is not needed in a compiled/traced graph...
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>>>
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>>> # ...rest of the function...
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"""
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if torch.jit.is_scripting():
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return False
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else:
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return _is_compiling_flag
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def is_dynamo_compiling() -> bool:
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"""
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Indicates whether a graph is traced via TorchDynamo.
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It's stricter than is_compiling() flag, as it would only be set to True when
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TorchDynamo is used.
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Example::
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>>> def forward(self, x):
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>>> if not torch.compiler.is_dynamo_compiling():
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>>> pass # ...logic that is not needed in a TorchDynamo-traced graph...
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>>>
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>>> # ...rest of the function...
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"""
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return False
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