[docs]classsaved_tensors_hooks():"""Context-manager that sets a pair of pack / unpack hooks for saved tensors. Use this context-manager to define how intermediary results of an operation should be packed before saving, and unpacked on retrieval. In that context, the ``pack_hook`` function will be called everytime an operation saves a tensor for backward (this includes intermediary results saved using :func:`~torch.autograd.function._ContextMethodMixin.save_for_backward` but also those recorded by a PyTorch-defined operation). The output of ``pack_hook`` is then stored in the computation graph instead of the original tensor. The ``unpack_hook`` is called when the saved tensor needs to be accessed, namely when executing :func:`torch.Tensor.backward()` or :func:`torch.autograd.grad()`. It takes as argument the *packed* object returned by ``pack_hook`` and should return a tensor which has the same content as the original tensor (passed as input to the corresponding ``pack_hook``). The hooks should have the following signatures: pack_hook(tensor: Tensor) -> Any unpack_hook(Any) -> Tensor where the return value of ``pack_hook`` is a valid input to ``unpack_hook``. In general, you want ``unpack_hook(pack_hook(t))`` to be equal to ``t`` in terms of value, size, dtype and device. Example:: >>> def pack_hook(x): ... print("Packing", x) ... return x >>> >>> def unpack_hook(x): ... print("Unpacking", x) ... return x >>> >>> a = torch.ones(5, requires_grad=True) >>> b = torch.ones(5, requires_grad=True) * 2 >>> with torch.autograd.graph.saved_tensors_hooks(pack_hook, unpack_hook): ... y = a * b Packing tensor([1., 1., 1., 1., 1.], requires_grad=True) Packing tensor([2., 2., 2., 2., 2.], grad_fn=<MulBackward0>) >>> y.sum().backward() Unpacking tensor([1., 1., 1., 1., 1.], requires_grad=True) Unpacking tensor([2., 2., 2., 2., 2.], grad_fn=<MulBackward0>) .. warning :: Performing an inplace operation on the input to either hooks may lead to undefined behavior. .. warning :: Only one pair of hooks is allowed at a time. When recursively nesting this context-manager, only the inner-most pair of hooks will be applied. """def__init__(self,pack_hook:Callable[[torch.Tensor],Any],unpack_hook:Callable[[Any],torch.Tensor]):self.pack_hook=pack_hookself.unpack_hook=unpack_hookdef__enter__(self):torch._C._autograd._push_saved_tensors_default_hooks(self.pack_hook,self.unpack_hook)def__exit__(self,*args:Any):torch._C._autograd._pop_saved_tensors_default_hooks()
[docs]classsave_on_cpu(saved_tensors_hooks):"""Context-manager under which tensors saved by the forward pass will be stored on cpu, then retrieved for backward. When performing operations within this context manager, intermediary results saved in the graph during the forward pass will be moved to CPU, then copied back to the original device when needed for the backward pass. If the graph was already on CPU, no tensor copy is performed. Use this context-manager to trade compute for GPU memory usage (e.g. when your model doesn't fit in GPU memory during training). Args: pin_memory (bool): If ``True`` tensors will be saved to CPU pinned memory during packing and copied to GPU asynchronously during unpacking. Defaults to ``False``. Also see :ref:`cuda-memory-pinning`. Example:: >>> # xdoctest: +REQUIRES(env:TORCH_DOCTEST_CUDA) >>> a = torch.randn(5, requires_grad=True, device="cuda") >>> b = torch.randn(5, requires_grad=True, device="cuda") >>> c = torch.randn(5, requires_grad=True, device="cuda") >>> >>> def f(a, b, c): ... prod_1 = a * b # a and b are saved on GPU ... with torch.autograd.graph.save_on_cpu(): ... prod_2 = prod_1 * c # prod_1 and c are saved on CPU ... y = prod_2 * a # prod_2 and a are saved on GPU ... return y >>> >>> y = f(a, b, c) >>> del a, b, c # for illustration only >>> # the content of a, b, and prod_2 are still alive on GPU >>> # the content of prod_1 and c only live on CPU >>> y.sum().backward() # all CPU tensors are moved back to GPU, for backward >>> # all intermediary tensors are released (deleted) after the call to backward """def__init__(self,pin_memory=False):defpack_to_cpu(tensor):ifnotpin_memory:return(tensor.device,tensor.cpu())packed=torch.empty(tensor.size(),dtype=tensor.dtype,layout=tensor.layout,pin_memory=(torch.cuda.is_available()andnottensor.is_sparse))packed.copy_(tensor)return(tensor.device,packed)defunpack_from_cpu(packed):device,tensor=packedreturntensor.to(device,non_blocking=pin_memory)super().__init__(pack_to_cpu,unpack_from_cpu)
[docs]@contextlib.contextmanagerdefdisable_saved_tensors_hooks(error_message):"""Context-manager that disables the saved tensors default hooks feature. Useful for if you are creating a feature that does not work with saved tensors default hooks. Args: error_message (str): When saved tensors default hooks are used when they have been are disabled, a RuntimeError with this error message gets raised. Example:: >>> message = "saved tensors default hooks are disabled" >>> with torch.autograd.graph.disable_saved_tensors_hooks(message): ... # Raises RuntimeError: saved tensors default hooks are disabled ... with torch.autograd.graph.save_on_cpu(): ... pass """try:maybe_prev_message=torch._C._autograd._saved_tensors_hooks_get_disabled_error_message()torch._C._autograd._saved_tensors_hooks_disable(error_message)yieldfinally:# See NOTE: [disabled_error_message invariant]ifmaybe_prev_messageisNone:torch._C._autograd._saved_tensors_hooks_enable()else:torch._C._autograd._saved_tensors_hooks_disable(maybe_prev_message)
Docs
Access comprehensive developer documentation for PyTorch
To analyze traffic and optimize your experience, we serve cookies on this site. By clicking or navigating, you agree to allow our usage of cookies. As the current maintainers of this site, Facebook’s Cookies Policy applies. Learn more, including about available controls: Cookies Policy.