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@ -2,6 +2,57 @@ import torch
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from colossalai.tensor.colo_tensor import ColoTensor
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from typing import Iterator, Tuple, Union
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import torch.nn as nn
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from colossalai.tensor import ColoTensor
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# The function is credited to PyTorch Team
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def named_params_with_colotensor(
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module: nn.Module,
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prefix: str = '',
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recurse: bool = True,
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) -> Iterator[Tuple[str, Union[nn.Parameter, ColoTensor]]]:
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r"""Returns an iterator over module parameters (together with the
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ColoTensor parameters), yielding both the name of the parameter
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as well as the parameter itself. This is typically passed to a
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:class:torchshard._shard.sharded_optim.ShardedOptimizer
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Args:
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prefix (str): prefix to prepend to all parameter names.
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recurse (bool): if True, then yields parameters of this module
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and all submodules. Otherwise, yields only parameters that
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are direct members of this module.
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Yields:
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(string, Union[Tensor, ColoTensor]): Tuple containing
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the name and parameter (or ColoTensor parameter)
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Example::
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>>> model = torch.nn.Linear(*linear_size)
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>>> delattr(model.weight)
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>>> setattr(model.weight, ColoTensor(...))
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>>> for name, param in named_params_with_colotensor(model):
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>>> if name in ['weight']:
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>>> print(param.size())
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"""
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modules = module.named_modules(prefix=prefix) if recurse else [(prefix, module)]
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memo = set()
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for mod_prefix, mod in modules:
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# find all sharded tensor params
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for name, val in vars(mod).items():
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if isinstance(val, ColoTensor) and val not in memo:
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memo.add(val)
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name = mod_prefix + ('.' if mod_prefix else '') + name
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yield name, val
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# find all nn.Parameters
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for name, val in module.named_parameters():
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yield name, val
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def _convert_tensor(tensor: torch.Tensor) -> ColoTensor:
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return ColoTensor(tensor)
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