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import torch |
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import contextlib |
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from typing import Callable, Any |
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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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>>> 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__(self, pack_hook: Callable[[torch.Tensor], Any], unpack_hook: Callable[[Any], torch.Tensor]): |
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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(self.pack_hook, self.unpack_hook) |
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def __exit__(self, *args: Any): |
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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 |
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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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>>> 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): |
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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=(torch.cuda.is_available() and not tensor.is_sparse)) |
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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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>>> 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 = torch._C._autograd._saved_tensors_hooks_get_disabled_error_message() |
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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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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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