750 lines
26 KiB
Python
750 lines
26 KiB
Python
import abc
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import collections
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import contextlib
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import functools
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import logging
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import threading
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import weakref
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from collections import defaultdict, namedtuple
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from typing import (
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Any,
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Callable,
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cast,
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Deque,
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Dict,
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List,
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Optional,
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Sequence,
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Set,
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Tuple,
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Union,
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)
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import torch
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from torch.autograd.variable import Variable
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from torch.utils._python_dispatch import TorchDispatchMode
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from torch.utils.hooks import RemovableHandle
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log = logging.getLogger(__name__)
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__all__ = [
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"saved_tensors_hooks",
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"save_on_cpu",
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"disable_saved_tensors_hooks",
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"register_multi_grad_hook",
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"allow_mutation_on_saved_tensors",
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"Node",
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"GradientEdge",
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"get_gradient_edge",
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"increment_version",
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]
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class Node(abc.ABC):
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@abc.abstractmethod
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def name(self) -> str:
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r"""Return the name.
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Example::
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>>> import torch
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>>> a = torch.tensor([0., 0., 0.], requires_grad=True)
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>>> b = a.clone()
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>>> assert isinstance(b.grad_fn, torch.autograd.graph.Node)
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>>> print(b.grad_fn.name())
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CloneBackward0
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"""
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...
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@property
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@abc.abstractmethod
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def next_functions(self) -> Tuple[Tuple[Optional["Node"], int], ...]:
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...
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@abc.abstractmethod
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def metadata(self) -> dict:
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r"""Return the metadata."""
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...
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@abc.abstractmethod
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def _register_hook_dict(self, tensor: torch.Tensor) -> None:
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...
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@abc.abstractmethod
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def register_hook(self, fn: Callable[..., Any]) -> RemovableHandle:
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r"""Register a backward hook.
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The hook will be called every time a gradient with respect to the
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Node is computed. The hook should have the following signature::
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hook(grad_inputs: Tuple[Tensor], grad_outputs: Tuple[Tensor]) -> Tuple[Tensor] or None
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The hook should not modify its argument, but it can optionally return
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a new gradient which will be used in place of :attr:`grad_inputs`.
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This function returns a handle with a method ``handle.remove()``
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that removes the hook from the module.
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.. note::
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See :ref:`backward-hooks-execution` for more information on how when this hook
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is executed, and how its execution is ordered relative to other hooks.
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Example::
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>>> import torch
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>>> a = torch.tensor([0., 0., 0.], requires_grad=True)
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>>> b = a.clone()
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>>> assert isinstance(b.grad_fn, torch.autograd.graph.Node)
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>>> handle = b.grad_fn.register_hook(lambda gI, gO: (gO[0] * 2,))
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>>> b.sum().backward(retain_graph=True)
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>>> print(a.grad)
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tensor([2., 2., 2.])
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>>> handle.remove() # Removes the hook
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>>> a.grad = None
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>>> b.sum().backward(retain_graph=True)
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>>> print(a.grad)
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tensor([1., 1., 1.])
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"""
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...
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@abc.abstractmethod
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def register_prehook(self, fn: Callable[..., Any]) -> RemovableHandle:
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r"""Register a backward pre-hook.
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The hook will be called every time a gradient with respect to the
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Node is computed. The hook should have the following signature::
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hook(grad_outputs: Tuple[Tensor]) -> Tuple[Tensor] or None
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The hook should not modify its argument, but it can optionally return
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a new gradient which will be used in place of :attr:`grad_outputs`.
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This function returns a handle with a method ``handle.remove()``
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that removes the hook from the module.
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.. note::
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See :ref:`backward-hooks-execution` for more information on how when this hook
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is executed, and how its execution is ordered relative to other hooks.
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Example::
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>>> a = torch.tensor([0., 0., 0.], requires_grad=True)
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>>> b = a.clone()
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>>> assert isinstance(b.grad_fn, torch.autograd.graph.Node)
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>>> handle = b.grad_fn.register_prehook(lambda gI: (gI[0] * 2,))
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>>> b.sum().backward(retain_graph=True)
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>>> print(a.grad)
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tensor([2., 2., 2.])
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>>> handle.remove()
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>>> a.grad = None
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>>> b.sum().backward(retain_graph=True)
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>>> print(a.grad)
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tensor([1., 1., 1.])
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"""
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...
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@classmethod
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def __subclasshook__(cls, C):
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if cls is Node:
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if (
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C is not None and C is getattr(torch._C._functions, C.__name__, None)
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) or issubclass(C, torch.autograd.function.BackwardCFunction):
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return True
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return NotImplemented
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def _get_grad_fn_or_grad_acc(t):
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if t.requires_grad and t.grad_fn is None:
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return t.view_as(t).grad_fn.next_functions[0][0]
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else:
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return t.grad_fn
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GradientEdge = namedtuple("GradientEdge", ("node output_nr"))
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GradientEdge.__doc__ = """\
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Object representing a given gradient edge within the autograd graph.
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To get the gradient edge where a given Tensor gradient will be computed,
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you can do ``edge = autograd.graph.get_gradient_edge(tensor)``.
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"""
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def get_gradient_edge(tensor):
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"""Get the gradient edge for computing the gradient of the given Tensor.
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In particular, it is equivalent to call
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``g = autograd.grad(loss, input)`` and ``g = autograd.grad(loss, get_gradient_edge(input))``.
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"""
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if not tensor.requires_grad:
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raise RuntimeError(
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"It is not possible to get the gradient edge for a Tensor that does not require gradients"
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)
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grad_fn = _get_grad_fn_or_grad_acc(tensor)
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# Note that output_nr default to 0 which is the right value
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# for the AccumulateGrad node.
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return GradientEdge(grad_fn, tensor.output_nr)
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def increment_version(tensor):
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"""Update autograd metadata tracking whether the given Tensor was modified in place.
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This is to enable more accurate error checking within the autograd engine.
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It is already done automatically by PyTorch functions and within custom Function
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when mark_dirty() is called appropriately so you only need to call this explicitly
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if you are doing inplace operation on the Tensor data in a way that Pytorch doesn't
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know about. For example a custom kernel that reads the Tensor data_ptr and modifies
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the memory inplace based on this pointer.
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Note that incrementing the version counter multiple times for a single inplace operation
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is not problematic.
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"""
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torch._C._increment_version(tensor)
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class saved_tensors_hooks:
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"""Context-manager that sets a pair of pack / unpack hooks for saved tensors.
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Use this context-manager to define how intermediary results of an operation
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should be packed before saving, and unpacked on retrieval.
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In that context, the ``pack_hook`` function will be called everytime an
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operation saves a tensor for backward (this includes intermediary results
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saved using
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:func:`~torch.autograd.function._ContextMethodMixin.save_for_backward` but
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also those recorded by a PyTorch-defined operation). The output of
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``pack_hook`` is then stored in the computation graph instead of the
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original tensor.
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The ``unpack_hook`` is called when the saved tensor needs to be accessed,
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namely when executing :func:`torch.Tensor.backward()` or
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:func:`torch.autograd.grad()`. It takes as argument the *packed* object
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returned by ``pack_hook`` and should return a tensor which has the same
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content as the original tensor (passed as input to the corresponding
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``pack_hook``).
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The hooks should have the following signatures:
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pack_hook(tensor: Tensor) -> Any
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unpack_hook(Any) -> Tensor
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where the return value of ``pack_hook`` is a valid input to ``unpack_hook``.
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In general, you want ``unpack_hook(pack_hook(t))`` to be equal to ``t`` in terms
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of value, size, dtype and device.
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Example::
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>>> # xdoctest: +REQUIRES(env:TORCH_DOCTEST_AUTOGRAD)
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>>> def pack_hook(x):
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... print("Packing", x)
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... return x
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>>>
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>>> def unpack_hook(x):
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... print("Unpacking", x)
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... return x
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>>>
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>>> a = torch.ones(5, requires_grad=True)
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>>> b = torch.ones(5, requires_grad=True) * 2
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>>> with torch.autograd.graph.saved_tensors_hooks(pack_hook, unpack_hook):
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... y = a * b
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Packing tensor([1., 1., 1., 1., 1.], requires_grad=True)
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Packing tensor([2., 2., 2., 2., 2.], grad_fn=<MulBackward0>)
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>>> y.sum().backward()
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Unpacking tensor([1., 1., 1., 1., 1.], requires_grad=True)
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Unpacking tensor([2., 2., 2., 2., 2.], grad_fn=<MulBackward0>)
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.. warning ::
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Performing an inplace operation on the input to either hooks may lead
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to undefined behavior.
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.. warning ::
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Only one pair of hooks is allowed at a time. When recursively nesting this
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context-manager, only the inner-most pair of hooks will be applied.
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"""
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def __init__(
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self,
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pack_hook: Callable[[torch.Tensor], Any],
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unpack_hook: Callable[[Any], torch.Tensor],
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):
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self.pack_hook = pack_hook
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self.unpack_hook = unpack_hook
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def __enter__(self):
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torch._C._autograd._push_saved_tensors_default_hooks(
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self.pack_hook, self.unpack_hook
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)
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def __exit__(self, *args: object):
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torch._C._autograd._pop_saved_tensors_default_hooks()
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class save_on_cpu(saved_tensors_hooks):
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"""Context manager under which tensors saved by the forward pass will be stored on cpu, then retrieved for backward.
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When performing operations within this context manager, intermediary
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results saved in the graph during the forward pass will be moved to CPU,
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then copied back to the original device when needed for the backward pass.
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If the graph was already on CPU, no tensor copy is performed.
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Use this context-manager to trade compute for GPU memory usage (e.g.
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when your model doesn't fit in GPU memory during training).
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Args:
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pin_memory (bool): If ``True`` tensors will be saved to CPU pinned memory
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during packing and copied to GPU asynchronously during unpacking.
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Defaults to ``False``.
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Also see :ref:`cuda-memory-pinning`.
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Example::
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>>> # xdoctest: +REQUIRES(env:TORCH_DOCTEST_CUDA)
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>>> # xdoctest: +REQUIRES(env:TORCH_DOCTEST_AUTOGRAD)
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>>> a = torch.randn(5, requires_grad=True, device="cuda")
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>>> b = torch.randn(5, requires_grad=True, device="cuda")
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>>> c = torch.randn(5, requires_grad=True, device="cuda")
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>>>
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>>> def f(a, b, c):
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... prod_1 = a * b # a and b are saved on GPU
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... with torch.autograd.graph.save_on_cpu():
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... prod_2 = prod_1 * c # prod_1 and c are saved on CPU
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... y = prod_2 * a # prod_2 and a are saved on GPU
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... return y
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>>>
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>>> y = f(a, b, c)
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>>> del a, b, c # for illustration only
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>>> # the content of a, b, and prod_2 are still alive on GPU
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>>> # the content of prod_1 and c only live on CPU
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>>> y.sum().backward() # all CPU tensors are moved back to GPU, for backward
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>>> # all intermediary tensors are released (deleted) after the call to backward
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"""
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def __init__(self, pin_memory=False, device_type="cuda"):
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device_module = getattr(torch, device_type, torch.cuda)
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def pack_to_cpu(tensor):
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if not pin_memory:
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return (tensor.device, tensor.cpu())
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packed = torch.empty(
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tensor.size(),
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dtype=tensor.dtype,
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layout=tensor.layout,
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pin_memory=(device_module.is_available() and not tensor.is_sparse),
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)
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packed.copy_(tensor)
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return (tensor.device, packed)
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def unpack_from_cpu(packed):
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device, tensor = packed
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return tensor.to(device, non_blocking=pin_memory)
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super().__init__(pack_to_cpu, unpack_from_cpu)
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@contextlib.contextmanager
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def disable_saved_tensors_hooks(error_message):
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"""Context-manager that disables the saved tensors default hooks feature.
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Useful for if you are creating a feature that does not work with saved
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tensors default hooks.
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Args:
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error_message (str): When saved tensors default hooks are used when they
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have been are disabled, a RuntimeError with this
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error message gets raised.
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Example::
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>>> # xdoctest: +SKIP(failing)
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>>> message = "saved tensors default hooks are disabled"
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>>> with torch.autograd.graph.disable_saved_tensors_hooks(message):
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... # Raises RuntimeError: saved tensors default hooks are disabled
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... with torch.autograd.graph.save_on_cpu():
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... pass
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"""
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try:
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maybe_prev_message = (
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torch._C._autograd._saved_tensors_hooks_get_disabled_error_message()
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)
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torch._C._autograd._saved_tensors_hooks_disable(error_message)
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yield
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finally:
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# See NOTE: [disabled_error_message invariant]
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if maybe_prev_message is None:
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torch._C._autograd._saved_tensors_hooks_enable()
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else:
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torch._C._autograd._saved_tensors_hooks_disable(maybe_prev_message)
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def register_multi_grad_hook(
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tensors: Sequence[torch.Tensor],
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fn: Union[
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Callable[[Sequence[Optional[torch.Tensor]]], None],
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Callable[[torch.Tensor], None],
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],
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*,
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mode: str = "all",
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):
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r"""Register a multi-grad backward hook.
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There are two supported modes: ``"all"`` and ``"any"``.
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Under the ``"all"`` mode, the hook will be called after gradients with respect to every tensor in
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:attr:`tensors` have been computed. If a tensor is in :attr:`tensors` but
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is not part of the graph, or if a tensor is not needed to compute the gradients
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for any ``inputs`` specified for the current ``.backward()`` or ``.grad()`` call,
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this tensor will be ignored and the hook will not wait for its gradient to be
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computed.
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After every non-ignored tensor's gradient has been computed, :attr:`fn` will be
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called with those gradients. ``None`` will be passed for tensors that did not
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have their gradients computed.
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Under the ``"any"`` mode, the hook will be called after the first gradient
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with respect to a tensor in :attr:`tensors` has been computed. The hook
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will be called with that gradient as its argument.
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The hook should not modify its arguments.
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This function returns a handle with a method ``handle.remove()`` that removes the hook.
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.. note::
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See :ref:`backward-hooks-execution` for more information on how when this hook
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is executed, and how its execution is ordered relative to other hooks.
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Example::
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>>> import torch
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>>>
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>>> a = torch.rand(2, 3, requires_grad=True)
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>>> b = torch.rand(2, 3, requires_grad=True)
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>>> c = a * b
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>>> d = a * b
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>>>
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>>> def fn(grads):
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... print([g is not None for g in grads])
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...
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>>> torch.autograd.graph.register_multi_grad_hook((a, b, c, d), fn)
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>>>
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>>> c.sum().backward(retain_graph=True)
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[True, True, True, False]
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>>> c.sum().backward(inputs=(a,), retain_graph=True)
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[True, False, True, False]
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>>>
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"""
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supported_modes = ("all", "any")
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if mode not in supported_modes:
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raise ValueError(f"Expects mode to be one of {supported_modes} but got {mode}")
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class Handle(RemovableHandle):
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handles: Tuple[RemovableHandle, ...]
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def __init__(self, handles: Tuple[RemovableHandle, ...]):
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self.handles = handles
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def remove(self):
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for handle in self.handles:
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handle.remove()
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def __getstate__(self):
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return self.handles
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def __setstate__(self, state):
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self.handles = state
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if mode == "all":
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count: Dict[int, int] = dict()
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nb_calls = None
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buffer: Dict[int, List[Optional[torch.Tensor]]] = dict()
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grad_fns = list(map(_get_grad_fn_or_grad_acc, tensors))
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len_tensors = len(tensors)
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def get_inner_hook(idx):
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def inner_hook(grad: torch.Tensor):
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nonlocal count, nb_calls, buffer, fn
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id = torch._C._current_graph_task_id()
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assert (
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id != -1
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), "expected this hook to be called inside a backward call"
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count[id] = count.get(id, 0)
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buffer[id] = buffer.get(id, [None] * len_tensors)
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if count[id] == 0:
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# On the first call, compute the actual nb_calls and buffer
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nb_calls = sum(torch._C._will_engine_execute_node(g) for g in grad_fns) # type: ignore[attr-defined]
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buffer[id][idx] = grad
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count[id] += 1
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if count[id] == nb_calls:
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fn = cast(Callable[[Sequence[Optional[torch.Tensor]]], None], fn)
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fn(buffer[id])
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del count[id]
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del buffer[id]
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return inner_hook
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handles: Tuple[RemovableHandle] = tuple(
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t.register_hook(get_inner_hook(i)) for i, t in enumerate(tensors)
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)
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elif mode == "any":
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fn = cast(Callable[[torch.Tensor], None], fn)
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lock = threading.Lock()
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ran_hook: Dict[int, bool] = defaultdict(bool)
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@functools.wraps(fn)
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def wrapped_fn(grad: torch.Tensor):
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nonlocal ran_hook
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id = torch._C._current_graph_task_id()
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assert id != -1, "expected this hook to be called inside a backward call"
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with lock:
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prev, ran_hook[id] = ran_hook[id], True
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if prev:
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return
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fn(grad)
|
|
|
|
handles = tuple(
|
|
tensor.register_hook(wrapped_fn)
|
|
for tensor in tensors
|
|
if tensor.requires_grad
|
|
)
|
|
|
|
return Handle(handles) # type: ignore[possibly-undefined]
|
|
|
|
|
|
# NOTE [Allow mutation on tensors saved for backward]
|
|
#
|
|
# 1. Tensor gets saved for backward
|
|
# - remember the python object id and the version of the tensor
|
|
# - remember aliasing information (data_ptr of base + version)
|
|
# - save the original so we control its lifetime
|
|
# 2. Any time a tensor gets in-placed
|
|
# - for each tensor aliased to it:
|
|
# - check using its object id and version to see if it has been saved
|
|
# - if it has been saved, clone it
|
|
# - delete the reference to the original
|
|
# 3. during backward
|
|
# - if the clone exists, the tensor must've been modified in-place
|
|
_allow_mutation_on_saved_tensors_enabled = False
|
|
|
|
|
|
def _get_tid(t) -> Tuple[int, int, int]:
|
|
return (id(t), t.data_ptr(), t._version)
|
|
|
|
|
|
def _get_sid(t) -> Tuple[int, int]:
|
|
return (t.data_ptr(), t._version)
|
|
|
|
|
|
class _Handle:
|
|
pass
|
|
|
|
|
|
class _swap_with_cloned(saved_tensors_hooks):
|
|
def __init__(self, ctx):
|
|
def pack_hook(t):
|
|
tid = _get_tid(t)
|
|
sid = _get_sid(t)
|
|
# Tensors saved for backward have an entry in _tid_to_weakhandle
|
|
handle: Optional[_Handle] = None
|
|
|
|
# Save aliasing information
|
|
ctx.sid_to_tid[sid].add(tid)
|
|
|
|
# NB: The same tensor (of the same version) can be saved multiple times
|
|
if tid not in ctx.tid_to_weakhandle:
|
|
handle = _Handle()
|
|
ctx.tid_to_weakhandle[tid] = handle
|
|
ctx.original[handle] = t
|
|
else:
|
|
# Store an additional strong reference to the handle
|
|
handle = ctx.tid_to_weakhandle[tid]
|
|
return handle
|
|
|
|
def unpack_hook(tup):
|
|
handle = tup
|
|
error_msg = (
|
|
"Trying to backward outside of the 'allow_mutation_on_saved_tensors' context"
|
|
"in which the graph was originally recorded."
|
|
)
|
|
assert _allow_mutation_on_saved_tensors_enabled, error_msg
|
|
if handle in ctx.cloned:
|
|
res = ctx.cloned[handle]
|
|
else:
|
|
assert handle in ctx.original, error_msg
|
|
res = ctx.original[handle]
|
|
return res
|
|
|
|
super().__init__(pack_hook, unpack_hook)
|
|
|
|
|
|
class _CloneArgBeforeMutateMode(TorchDispatchMode):
|
|
def __init__(self, ctx):
|
|
self.ctx = ctx
|
|
|
|
def __torch_dispatch__(self, func, types, args=(), kwargs=None):
|
|
kwargs = kwargs or {}
|
|
|
|
for idx, arg in enumerate(func._schema.arguments):
|
|
if arg.alias_info is not None and arg.alias_info.is_write:
|
|
t = kwargs["out"] if arg.is_out else args[idx]
|
|
tid = _get_tid(t)
|
|
sid = _get_sid(t)
|
|
ctx = self.ctx
|
|
if sid in ctx.sid_to_tid:
|
|
for tid in ctx.sid_to_tid[sid]:
|
|
if tid not in ctx.tid_to_weakhandle:
|
|
# We know that if tid is in sid_to_tid, then it must also be in
|
|
# tid_to_weakhandle. However, it is possible for the tensor to be
|
|
# saved at one point, but cleared by backward before it is modified
|
|
# in-place. Consider the following example:
|
|
#
|
|
# >>> a = torch.randn(2, 3, requires_grad=True).clone()
|
|
# >>> out = (a**2).sum()
|
|
# >>> out.backward()
|
|
# >>> a.sin_()
|
|
continue
|
|
handle = ctx.tid_to_weakhandle[tid]
|
|
if handle in ctx.cloned:
|
|
# The same exact tensor has been cloned already
|
|
continue
|
|
ctx.cloned[handle] = ctx.original[handle].clone()
|
|
del ctx.original[handle]
|
|
|
|
rs = func(*args, **kwargs)
|
|
return rs
|
|
|
|
|
|
class _AllowMutationOnSavedContext:
|
|
def __init__(self):
|
|
self.cloned: weakref.WeakKeyDictionary = weakref.WeakKeyDictionary()
|
|
self.original: weakref.WeakKeyDictionary = weakref.WeakKeyDictionary()
|
|
self.tid_to_weakhandle: weakref.WeakValueDictionary = (
|
|
weakref.WeakValueDictionary()
|
|
)
|
|
self.sid_to_tid: Dict[Tuple[int, int], Set[Tuple[int, int, int]]] = defaultdict(
|
|
set
|
|
)
|
|
|
|
def clear(self):
|
|
self.cloned.clear()
|
|
self.original.clear()
|
|
self.tid_to_weakhandle.clear()
|
|
self.sid_to_tid.clear()
|
|
|
|
|
|
@contextlib.contextmanager
|
|
def allow_mutation_on_saved_tensors():
|
|
"""Context manager under which mutating tensors saved for backward is allowed.
|
|
|
|
Under this context manager, tensors saved for backward are cloned on mutation,
|
|
so the original version can still be used during backward. Normally, mutating a tensor
|
|
saved for backward will result in an error raised when it's used during backward.
|
|
|
|
To ensure the correct behavior, both the forward and backward should be run under
|
|
the same context manager.
|
|
|
|
returns:
|
|
An _AllowMutationOnSavedContext object storing the state managed by this
|
|
context manager. This object can be useful for debugging purposes. The state
|
|
managed by the context manager is automatically cleared upon exiting.
|
|
|
|
Example::
|
|
|
|
>>> import torch
|
|
>>> with torch.autograd.graph.allow_mutation_on_saved_tensors():
|
|
... # forward
|
|
... a = torch.ones(2, 3, requires_grad=True)
|
|
... b = a.clone()
|
|
... out = (b**2).sum()
|
|
... b.sin_()
|
|
... # backward
|
|
... out.sum().backward()
|
|
...
|
|
tensor([[0.8415, 0.8415, 0.8415],
|
|
[0.8415, 0.8415, 0.8415]], grad_fn=<SinBackward0>)
|
|
"""
|
|
global _allow_mutation_on_saved_tensors_enabled
|
|
|
|
ctx = _AllowMutationOnSavedContext()
|
|
|
|
with _swap_with_cloned(ctx), _CloneArgBeforeMutateMode(ctx):
|
|
try:
|
|
if _allow_mutation_on_saved_tensors_enabled:
|
|
raise RuntimeError(
|
|
"allow_mutation_on_saved_tensors contexts cannot be nested"
|
|
)
|
|
_allow_mutation_on_saved_tensors_enabled = True
|
|
yield ctx
|
|
finally:
|
|
ctx.clear()
|
|
_allow_mutation_on_saved_tensors_enabled = False
|
|
|
|
|
|
def _register_logging_hooks_on_whole_graph(t_outputs: List[torch.Tensor]):
|
|
grad_fns = list(map(_get_grad_fn_or_grad_acc, t_outputs))
|
|
|
|
def iter_graph(roots):
|
|
if not roots:
|
|
return
|
|
seen = set()
|
|
q: Deque = collections.deque()
|
|
for node in roots:
|
|
if node is not None:
|
|
seen.add(node)
|
|
q.append(node)
|
|
|
|
while q:
|
|
node = q.popleft()
|
|
for fn, _idx in node.next_functions:
|
|
if fn in seen or fn is None:
|
|
continue
|
|
seen.add(fn)
|
|
q.append(fn)
|
|
|
|
yield node
|
|
|
|
def fmt(t):
|
|
# Avoid circular import
|
|
from torch.testing._internal.common_utils import dtype_abbrs
|
|
|
|
if t is None:
|
|
return "None"
|
|
return f"{dtype_abbrs[t.dtype]}[{', '.join(map(str, t.shape))}]"
|
|
|
|
def prehook(grad_outputs):
|
|
node = torch._C._current_autograd_node()
|
|
grad_outputs_str = f"[{','.join(fmt(t) for t in grad_outputs)}]"
|
|
log_str = f"Executing: {node} with grad_outputs: {grad_outputs_str}"
|
|
log.debug(log_str)
|
|
|
|
handles = []
|
|
for node in iter_graph(grad_fns):
|
|
handles.append(node.register_prehook(prehook))
|
|
|
|
def unregister_hooks():
|
|
for handle in handles:
|
|
handle.remove()
|
|
|
|
return unregister_hooks
|
|
|
|
|
|
def _engine_run_backward(t_outputs, *args, **kwargs):
|
|
attach_logging_hooks = log.getEffectiveLevel() <= logging.DEBUG
|
|
if attach_logging_hooks:
|
|
unregister_hooks = _register_logging_hooks_on_whole_graph(t_outputs)
|
|
try:
|
|
return Variable._execution_engine.run_backward( # Calls into the C++ engine to run the backward pass
|
|
t_outputs, *args, **kwargs
|
|
) # Calls into the C++ engine to run the backward pass
|
|
finally:
|
|
if attach_logging_hooks:
|
|
unregister_hooks() # type: ignore[possibly-undefined]
|