Making large AI models cheaper, faster and more accessible
You can not select more than 25 topics Topics must start with a letter or number, can include dashes ('-') and can be up to 35 characters long.
 
 
 
 
 

94 lines
3.4 KiB

from typing import Optional
import torch
from colossalai.tensor.colo_tensor import ColoTensor
from colossalai.tensor.param_op_hook import ColoParamOpHookManager
from .colo_tensor import _convert_output
WHITE_LIST_FUNCS = {torch.Tensor.__getitem__}
NO_HOOK_FUNCS = {torch.Tensor.is_floating_point}
def is_no_hook_op(func) -> bool:
return (func.__name__.startswith("__") and func not in WHITE_LIST_FUNCS) or func in NO_HOOK_FUNCS
def filter_colo_parameters(*args, **kwargs):
param_list = []
def get_colo_parameters(element) -> None:
if isinstance(element, list) or isinstance(element, tuple):
for e in element:
get_colo_parameters(e)
elif isinstance(element, dict):
raise RuntimeError("Found Dict: ColoParameter can't deal with complicated arguments.")
elif isinstance(element, ColoParameter):
param_list.append(element)
return
for a in args:
get_colo_parameters(a)
for v in kwargs.values():
get_colo_parameters(v)
return param_list
def replace_args(args, kwargs, new_args):
args = new_args[: len(args)]
for k, v in zip(kwargs.keys(), new_args[len(args) :]):
kwargs[k] = v
return tuple(args), kwargs
class ColoParameter(ColoTensor, torch.nn.Parameter):
r"""A kind of ColoTensor to be considered as a module parameter."""
def __new__(cls, data: Optional[torch.Tensor] = None, requires_grad: bool = True) -> "ColoParameter":
if data is None:
data = torch.empty(0)
return torch.Tensor._make_subclass(cls, data, requires_grad)
@classmethod
def __torch_function__(cls, func, types, args=..., kwargs=None):
if kwargs is None:
kwargs = {}
if ColoParamOpHookManager.has_hook() and not is_no_hook_op(func):
params = filter_colo_parameters(*args, **kwargs)
if len(params) > 0:
with torch._C.DisableTorchFunction():
new_args = ColoParamOpHookManager.pre_op(params, *args, *kwargs.values())
args, kwargs = replace_args(args, kwargs, new_args)
ret = super().__torch_function__(func, types, args, kwargs)
with torch._C.DisableTorchFunction():
ret = ColoParamOpHookManager.post_op(params, ret)
return _convert_output(ret, func)
return super().__torch_function__(func, types, args, kwargs)
def __deepcopy__(self, memo):
if id(self) in memo:
return memo[id(self)]
else:
with torch._C.DisableTorchFunction():
data = self.data.clone()
tensor = ColoParameter(data, self.requires_grad)
memo[id(self)] = tensor
return tensor
def __reduce_ex__(self, proto):
# Adapted from torch._utils._rebuild_parameter
# def _rebuild_colo_parameter(data, requires_grad, backward_hooks):
# colo_param = ColoParameter(data, requires_grad)
# colo_param._backward_hooks = backward_hooks
# return colo_param
# return (
# _rebuild_colo_parameter,
# (self.data, self.requires_grad, OrderedDict())
# )
# TODO(jzy) we don't support object reflection now.
# distspec cannot be pickled or rebuilt because it's tightly connected to runtime attribute `process_group`.
raise NotImplementedError