152 lines
7.0 KiB
Python
152 lines
7.0 KiB
Python
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import warnings
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import functools
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from typing import Union, Iterable, List, Dict, Tuple, Optional, cast
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import torch
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from torch import Tensor
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from torch.utils._foreach_utils import _group_tensors_by_device_and_dtype, _has_foreach_support, _device_has_foreach_support
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_tensor_or_tensors = Union[torch.Tensor, Iterable[torch.Tensor]]
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__all__ = ['clip_grad_norm_', 'clip_grad_norm', 'clip_grad_value_']
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def _no_grad(func):
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"""
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This wrapper is needed to avoid a circular import when using @torch.no_grad on the exposed functions
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clip_grad_norm_ and clip_grad_value_ themselves.
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"""
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def _no_grad_wrapper(*args, **kwargs):
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with torch.no_grad():
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return func(*args, **kwargs)
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functools.update_wrapper(_no_grad_wrapper, func)
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return _no_grad_wrapper
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@_no_grad
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def clip_grad_norm_(
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parameters: _tensor_or_tensors, max_norm: float, norm_type: float = 2.0,
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error_if_nonfinite: bool = False, foreach: Optional[bool] = None) -> torch.Tensor:
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r"""Clip the gradient norm of an iterable of parameters.
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The norm is computed over all gradients together, as if they were
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concatenated into a single vector. Gradients are modified in-place.
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Args:
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parameters (Iterable[Tensor] or Tensor): an iterable of Tensors or a
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single Tensor that will have gradients normalized
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max_norm (float): max norm of the gradients
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norm_type (float): type of the used p-norm. Can be ``'inf'`` for
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infinity norm.
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error_if_nonfinite (bool): if True, an error is thrown if the total
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norm of the gradients from :attr:`parameters` is ``nan``,
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``inf``, or ``-inf``. Default: False (will switch to True in the future)
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foreach (bool): use the faster foreach-based implementation.
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If ``None``, use the foreach implementation for CUDA and CPU native tensors and silently
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fall back to the slow implementation for other device types.
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Default: ``None``
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Returns:
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Total norm of the parameter gradients (viewed as a single vector).
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"""
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if isinstance(parameters, torch.Tensor):
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parameters = [parameters]
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grads = [p.grad for p in parameters if p.grad is not None]
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max_norm = float(max_norm)
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norm_type = float(norm_type)
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if len(grads) == 0:
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return torch.tensor(0.)
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first_device = grads[0].device
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grouped_grads: Dict[Tuple[torch.device, torch.dtype], Tuple[List[List[Tensor]], List[int]]] \
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= _group_tensors_by_device_and_dtype([grads]) # type: ignore[assignment]
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norms: List[Tensor] = []
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for ((device, _), ([device_grads], _)) in grouped_grads.items(): # type: ignore[assignment]
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if (
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(foreach is None and _has_foreach_support(device_grads, device))
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or (foreach and _device_has_foreach_support(device))
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):
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norms.extend(torch._foreach_norm(device_grads, norm_type))
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elif foreach:
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raise RuntimeError(f'foreach=True was passed, but can\'t use the foreach API on {device.type} tensors')
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else:
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norms.extend([torch.linalg.vector_norm(g, norm_type) for g in device_grads])
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total_norm = torch.linalg.vector_norm(torch.stack([norm.to(first_device) for norm in norms]), norm_type)
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if error_if_nonfinite and torch.logical_or(total_norm.isnan(), total_norm.isinf()):
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raise RuntimeError(
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f'The total norm of order {norm_type} for gradients from '
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'`parameters` is non-finite, so it cannot be clipped. To disable '
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'this error and scale the gradients by the non-finite norm anyway, '
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'set `error_if_nonfinite=False`')
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clip_coef = max_norm / (total_norm + 1e-6)
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# Note: multiplying by the clamped coef is redundant when the coef is clamped to 1, but doing so
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# avoids a `if clip_coef < 1:` conditional which can require a CPU <=> device synchronization
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# when the gradients do not reside in CPU memory.
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clip_coef_clamped = torch.clamp(clip_coef, max=1.0)
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for ((device, _), ([device_grads], _)) in grouped_grads.items(): # type: ignore[assignment]
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if (
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(foreach is None and _has_foreach_support(device_grads, device))
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or (foreach and _device_has_foreach_support(device))
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):
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torch._foreach_mul_(device_grads, clip_coef_clamped.to(device))
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elif foreach:
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raise RuntimeError(f'foreach=True was passed, but can\'t use the foreach API on {device.type} tensors')
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else:
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clip_coef_clamped_device = clip_coef_clamped.to(device)
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for g in device_grads:
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g.mul_(clip_coef_clamped_device)
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return total_norm
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def clip_grad_norm(
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parameters: _tensor_or_tensors, max_norm: float, norm_type: float = 2.,
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error_if_nonfinite: bool = False, foreach: Optional[bool] = None) -> torch.Tensor:
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r"""Clip the gradient norm of an iterable of parameters.
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.. warning::
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This method is now deprecated in favor of
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:func:`torch.nn.utils.clip_grad_norm_`.
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"""
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warnings.warn("torch.nn.utils.clip_grad_norm is now deprecated in favor "
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"of torch.nn.utils.clip_grad_norm_.", stacklevel=2)
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return clip_grad_norm_(parameters, max_norm, norm_type, error_if_nonfinite, foreach)
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@_no_grad
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def clip_grad_value_(parameters: _tensor_or_tensors, clip_value: float, foreach: Optional[bool] = None) -> None:
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r"""Clip the gradients of an iterable of parameters at specified value.
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Gradients are modified in-place.
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Args:
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parameters (Iterable[Tensor] or Tensor): an iterable of Tensors or a
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single Tensor that will have gradients normalized
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clip_value (float): maximum allowed value of the gradients.
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The gradients are clipped in the range
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:math:`\left[\text{-clip\_value}, \text{clip\_value}\right]`
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foreach (bool): use the faster foreach-based implementation
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If ``None``, use the foreach implementation for CUDA and CPU native tensors and
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silently fall back to the slow implementation for other device types.
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Default: ``None``
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"""
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if isinstance(parameters, torch.Tensor):
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parameters = [parameters]
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clip_value = float(clip_value)
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grads = [p.grad for p in parameters if p.grad is not None]
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grouped_grads = _group_tensors_by_device_and_dtype([grads])
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for ((device, _), ([grads], _)) in grouped_grads.items(): # type: ignore[assignment]
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if (
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(foreach is None and _has_foreach_support(cast(List[Tensor], grads), device=device))
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or (foreach and _device_has_foreach_support(device))
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):
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torch._foreach_clamp_min_(cast(List[Tensor], grads), -clip_value)
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torch._foreach_clamp_max_(cast(List[Tensor], grads), clip_value)
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elif foreach:
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raise RuntimeError(f'foreach=True was passed, but can\'t use the foreach API on {device.type} tensors')
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else:
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for grad in grads:
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cast(Tensor, grad).clamp_(min=-clip_value, max=clip_value)
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