mirror of https://github.com/hpcaitech/ColossalAI
482 lines
22 KiB
Python
482 lines
22 KiB
Python
import torch
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import itertools
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import torch.distributed as dist
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from functools import partial
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from colossalai.zero.utils.zero_hook_v2 import ZeROHookV2
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from colossalai.gemini.chunk import TensorState, Chunk
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from colossalai.tensor.param_op_hook import ParamOpHookManager
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from colossalai.gemini.gemini_mgr import GeminiManager
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from typing import Dict, Iterable, List, Optional
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from colossalai.logging import get_dist_logger
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from collections import OrderedDict
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from colossalai.tensor.colo_parameter import ColoParameter
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from colossalai.tensor import ProcessGroup as ColoProcessGroup
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from .reducer import Reducer
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try:
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from torch.nn.modules.module import _EXTRA_STATE_KEY_SUFFIX, _IncompatibleKeys
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except ImportError:
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_EXTRA_STATE_KEY_SUFFIX = '_extra_state'
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def free_storage(data: torch.Tensor) -> None:
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"""Free underlying storage of a Tensor."""
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if data.storage().size() > 0:
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# Since we're modifying the Tensor's Storage directly, make sure the Tensor
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# is the sole occupant of the Storage.
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assert data.storage_offset() == 0
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data.storage().resize_(0)
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def _cast_float(args, dtype: torch.dtype):
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if isinstance(args, torch.Tensor) and torch.is_floating_point(args):
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args = args.to(dtype)
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elif isinstance(args, (list, tuple)):
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args = type(args)(_cast_float(t, dtype) for t in args)
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elif isinstance(args, dict):
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args = {k: _cast_float(v, dtype) for k, v in args.items()}
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return args
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class ColoDDP(torch.nn.Module):
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"""Distributed data parallel for ColoTensor. Nested ColoDDP is not supported now.
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Example::
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>>> from colossalai.core import global_context as gpc
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>>> from colossalai.context import ParallelMode
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>>> model = torch.nn.Linear(20, 1)
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>>> pg = ProcessGroup(tp_degree = world_size//2)
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>>> model = ColoDDP(model, pg)
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>>> logits = model(x)
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>>> loss = criterion(logits, labels)
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>>> model.backward(loss)
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Args:
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module (torch.nn.Module): Module to apply DDP.
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process_group (Optional[dist.ProcessGroup], optional): The process group which DDP uses.
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If it's None, the default data parallel group will be used. Defaults to None.
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"""
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def __init__(self,
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module: torch.nn.Module,
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process_group: ColoProcessGroup,
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bucket_cap_mb: int = 25,
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rebuild_bucket: bool = True) -> None:
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assert not isinstance(module, ColoDDP)
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super().__init__()
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self.module = module
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self.comm_stream: torch.cuda.Stream = torch.cuda.Stream()
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assert process_group
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self.process_group = process_group
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self.dp_world_size = self.process_group.dp_world_size()
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self.reducer = Reducer(bucket_cap_mb)
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self.rebuild_bucket = rebuild_bucket
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for p in module.parameters():
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if getattr(p, '_ddp_to_ignore', False):
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continue
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if p.requires_grad:
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p.register_hook(partial(self.grad_handle, p))
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def parameters(self, recurse: bool = True):
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return self.module.parameters(recurse)
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def named_parameters(self, prefix: str = '', recurse: bool = True):
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return self.module.named_parameters(prefix, recurse)
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def forward(self, *args, **kwargs):
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self.module.zero_grad(set_to_none=True)
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return self.module(*args, **kwargs)
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def backward(self, loss: torch.Tensor):
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loss.backward()
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with torch.cuda.stream(self.comm_stream):
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self.reducer.flush()
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torch.cuda.current_stream().wait_stream(self.comm_stream)
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if self.rebuild_bucket:
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self.reducer.free()
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for p in self.module.parameters():
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if getattr(p, '_ddp_to_ignore', False):
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continue
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if p.grad.device.type != "cpu":
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p.grad = p._saved_grad
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def grad_handle(self, p, grad):
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if grad.device.type != "cpu":
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empty_grad = torch.empty_like(grad)
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free_storage(empty_grad)
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if self.dp_world_size > 1:
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grad = grad / self.dp_world_size
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self.comm_stream.wait_stream(torch.cuda.current_stream())
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with torch.cuda.stream(self.comm_stream):
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self.reducer.all_reduce_async(grad,
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group=self.process_group.dp_process_group(),
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callback_fn=partial(self._save_grad, p))
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grad.record_stream(self.comm_stream)
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else:
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ColoDDP._save_grad(p, grad)
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return empty_grad
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else:
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#TODO(jiaruifang) fixme
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self.process_group.set_cpu_groups()
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dist.all_reduce(grad, group=self.process_group.cpu_dp_process_group())
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return grad
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@staticmethod
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def _save_grad(p, grad):
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if hasattr(p, '_saved_grad'):
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p._saved_grad.add_(grad)
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else:
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p._saved_grad = grad
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def zero_grad(self, set_to_none: bool = False) -> None:
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self.module.zero_grad(set_to_none=True)
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for p in self.module.parameters():
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if getattr(p, '_saved_grad', None) is not None:
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if set_to_none:
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p._saved_grad = None
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else:
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if p._saved_grad.grad_fn is not None:
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p._saved_grad.detach_()
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else:
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p._saved_grad.requires_grad_(False)
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p._saved_grad.zero_()
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@staticmethod
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def set_params_to_ignore(params_to_ignore: Iterable[torch.Tensor]) -> None:
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"""Sets parameters to be ignored by DDP.
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This method must be called before initializing ColoDDP.
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Example::
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>>> params_to_ignore = []
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>>> for p in module.parameters():
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>>> if should_ignore(p):
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>>> params_to_ignore.append(p)
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>>> ColoDDP.set_params_to_ignore(params_to_ignore)
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>>> module = ColoDDP(module)
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Args:
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params_to_ignore (Iterable[torch.Tensor]): A list of parameters to be ignored.
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"""
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for p in params_to_ignore:
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p._ddp_to_ignore = True
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def state_dict(self, destination=None, prefix='', keep_vars=False):
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return self.module.state_dict(destination=destination, prefix=prefix, keep_vars=keep_vars)
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def load_state_dict(self, state_dict: 'OrderedDict[str, torch.Tensor]', strict: bool = True):
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return self.module.load_state_dict(state_dict, strict)
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class ZeroDDP(ColoDDP):
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"""ZeRO-DP for ColoTensor. Nested ZeroDDP is not supported now.
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We can configure chunk and gemini via ChunkManager and GeminiManager respectively.
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For more details, see the API reference of ``ChunkManager`` and ``GeminiManager``.
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Example::
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>>> model = torch.nn.Linear(20, 1)
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>>> placement_policy = 'cuda'
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>>> chunk_size = ChunkManager.search_chunk_size(model, search_range, n_grids) if use_chunk else None
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>>> chunk_manager = ChunkManager(chunk_size, enable_distributed_storage=use_zero, init_device=GeminiManager.get_default_device(placement_policy))
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>>> gemini_manager = GeminiManager(placement_policy, chunk_manager)
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>>> model = ZeroDDP(model, gemini_manager)
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>>> logits = model(x)
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>>> loss = criterion(logits, labels)
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>>> model.backward(loss)
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Args:
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module (torch.nn.Module): Module to apply ZeRO-DP.
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gemini_manager (GeminiManager): Manages the chunk manager and heterogeneous momery space.
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For more details, see the API reference of ``GeminiManager``.
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"""
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def __init__(self,
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module: torch.nn.Module,
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gemini_manager: GeminiManager,
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process_group: Optional[ColoProcessGroup] = None) -> None:
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super().__init__(module.half(), process_group=process_group)
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self.gemini_manager = gemini_manager
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self.chunk_manager = gemini_manager.chunk_manager
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self.param_op_hook = ZeROHookV2(gemini_manager)
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self.fp32_params: List[ColoParameter] = []
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self.overflow_counter = 0
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self.grads_device: Dict[torch.Tensor, torch.device] = {}
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self.chunk_manager.create_group('fp16_param', force_data_on_cuda=True)
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self.chunk_manager.create_group('fp32_param')
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# TODO: get param order and filter unused params
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for p in module.parameters():
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if getattr(p, '_ddp_to_ignore', False):
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continue
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assert p.dtype == torch.half
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fp32_p = p.float().detach()
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self.chunk_manager.append_tensor(p, 'fp16_param')
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self.chunk_manager.append_tensor(fp32_p, 'fp32_param')
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self.fp32_params.append(fp32_p)
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self.grads_device[p] = self.gemini_manager.default_device
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self._logger = get_dist_logger()
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def forward(self, *args, **kwargs):
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args, kwargs = _cast_float(args, torch.half), _cast_float(kwargs, torch.half)
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self.module.zero_grad(set_to_none=True)
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self.gemini_manager.pre_iter()
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with ParamOpHookManager.use_hooks(self.param_op_hook):
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outputs = self.module(*args, **kwargs)
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self.chunk_manager.exec_lazy_release()
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return _cast_float(outputs, torch.float)
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def _setup_grads_ptr(self):
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for p in self.module.parameters():
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if getattr(p, '_ddp_to_ignore', False):
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continue
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if self.chunk_manager.get_chunk(p).is_empty or not p.requires_grad:
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p.grad = None
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else:
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p.grad = p.data
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def _post_backward(self):
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self.chunk_manager.exec_lazy_release()
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self._setup_grads_ptr()
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self._logger.debug(
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f'comp cuda demand time: {self.gemini_manager._comp_cuda_demand_time}, layout time: {self.gemini_manager._layout_time}, evict time: {self.gemini_manager._evict_time}, CPU->CUDA vol: {self.gemini_manager._h2d_volume}B, CUDA->CPU vol: {self.gemini_manager._d2h_volume}'
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)
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self.gemini_manager.post_iter()
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def backward(self, loss: torch.Tensor):
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with self.param_op_hook.switch_to_backward(), ParamOpHookManager.use_hooks(self.param_op_hook):
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loss.backward()
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self._post_backward()
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def backward_by_grad(self, tensor, grad):
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with self.param_op_hook.switch_to_backward(), ParamOpHookManager.use_hooks(self.param_op_hook):
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torch.autograd.backward(tensor, grad)
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self._post_backward()
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def grad_handle(self, p, grad):
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empty_grad = torch.empty_like(grad)
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free_storage(empty_grad)
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with torch._C.DisableTorchFunction():
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self.chunk_manager.trans_tensor_state(p, TensorState.READY_FOR_REDUCE)
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if self.dp_world_size > 1:
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grad = grad / self.dp_world_size
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self.chunk_manager.copy_tensor_to_chunk_slice(p, grad)
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chunk = self.chunk_manager.get_chunk(p)
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reduced = self.chunk_manager.reduce_chunk(chunk)
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self.chunk_manager.release_chunk(chunk)
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if reduced and not chunk.is_empty:
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self.overflow_counter += chunk.has_inf_or_nan
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self.chunk_manager.move_chunk(chunk, self.grads_device[p])
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return empty_grad
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def zero_grad(self, set_to_none: bool = False) -> None:
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self.module.zero_grad(set_to_none=True)
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def _set_chunk_grad_device(self, chunk: Chunk, device: torch.device) -> None:
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for tensor in chunk.get_tensors():
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self.grads_device[tensor] = device
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def state_dict(self, destination=None, prefix='', keep_vars=False):
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r"""Returns a dictionary containing a whole state of the module.
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Both parameters and persistent buffers (e.g. running averages) are
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included. Keys are corresponding parameter and buffer names.
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Parameters and buffers set to ``None`` are not included.
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Returns:
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dict:
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a dictionary containing a whole state of the module
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Example::
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>>> module.state_dict().keys()
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['bias', 'weight']
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"""
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if destination is None:
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destination = OrderedDict()
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destination._metadata = OrderedDict()
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destination._metadata[prefix[:-1]] = local_metadata = dict(version=self._version)
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self._save_to_state_dict(destination, prefix, keep_vars)
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for hook in self._state_dict_hooks.values():
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hook_result = hook(self, destination, prefix, local_metadata)
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if hook_result is not None:
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destination = hook_result
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return destination
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def _save_to_state_dict(self, destination, prefix, keep_vars):
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r"""Saves module state to `destination` dictionary, containing a state
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of the module, but not its descendants. This is called on every
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submodule in :meth:`~torch.nn.Module.state_dict`.
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In rare cases, subclasses can achieve class-specific behavior by
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overriding this method with custom logic.
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Args:
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destination (dict): a dict where state will be stored
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prefix (str): the prefix for parameters and buffers used in this
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module
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"""
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chunks = self.chunk_manager.get_chunks(self.fp32_params)
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for chunk in chunks:
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self.chunk_manager.access_chunk(chunk)
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for (name, p), fp32_p in zip(self.named_parameters(), self.fp32_params):
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if p is not None:
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destination[prefix + name] = fp32_p.clone() if keep_vars else fp32_p.clone().detach()
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for chunk in chunks:
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self.chunk_manager.release_chunk(chunk)
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for name, buf in self.named_buffers():
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if buf is not None and name not in self._non_persistent_buffers_set:
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destination[prefix + name] = buf if keep_vars else buf.detach()
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extra_state_key = prefix + _EXTRA_STATE_KEY_SUFFIX
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if getattr(self.__class__, "get_extra_state",
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torch.nn.Module.get_extra_state) is not torch.nn.Module.get_extra_state:
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destination[extra_state_key] = self.get_extra_state()
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def load_state_dict(self, state_dict: 'OrderedDict[str, torch.Tensor]', strict: bool = True):
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r"""Copies parameters and buffers from :attr:`state_dict` into
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this module and its descendants. If :attr:`strict` is ``True``, then
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the keys of :attr:`state_dict` must exactly match the keys returned
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by this module's :meth:`~torch.nn.Module.state_dict` function.
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Args:
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state_dict (dict): a dict containing parameters and
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persistent buffers.
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strict (bool, optional): whether to strictly enforce that the keys
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in :attr:`state_dict` match the keys returned by this module's
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:meth:`~torch.nn.Module.state_dict` function. Default: ``True``
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Returns:
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``NamedTuple`` with ``missing_keys`` and ``unexpected_keys`` fields:
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* **missing_keys** is a list of str containing the missing keys
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* **unexpected_keys** is a list of str containing the unexpected keys
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Note:
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If a parameter or buffer is registered as ``None`` and its corresponding key
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exists in :attr:`state_dict`, :meth:`load_state_dict` will raise a
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``RuntimeError``.
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"""
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missing_keys: List[str] = []
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unexpected_keys: List[str] = []
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error_msgs: List[str] = []
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# copy state_dict so _load_from_state_dict can modify it
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metadata = getattr(state_dict, '_metadata', None)
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state_dict = state_dict.copy()
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if metadata is not None:
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# mypy isn't aware that "_metadata" exists in state_dict
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state_dict._metadata = metadata # type: ignore[attr-defined]
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prefix = ''
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local_metadata = {} if metadata is None else metadata.get(prefix[:-1], {})
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self._load_from_state_dict(state_dict, prefix, local_metadata, True, missing_keys, unexpected_keys, error_msgs)
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if strict:
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if len(unexpected_keys) > 0:
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error_msgs.insert(
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0, 'Unexpected key(s) in state_dict: {}. '.format(', '.join(
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'"{}"'.format(k) for k in unexpected_keys)))
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if len(missing_keys) > 0:
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error_msgs.insert(
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0, 'Missing key(s) in state_dict: {}. '.format(', '.join('"{}"'.format(k) for k in missing_keys)))
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if len(error_msgs) > 0:
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raise RuntimeError('Error(s) in loading state_dict for {}:\n\t{}'.format(
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self.__class__.__name__, "\n\t".join(error_msgs)))
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return _IncompatibleKeys(missing_keys, unexpected_keys)
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def _load_from_state_dict(self, state_dict, prefix, local_metadata, strict, missing_keys, unexpected_keys,
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error_msgs):
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r"""Copies parameters and buffers from :attr:`state_dict` into only
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this module, but not its descendants. This is called on every submodule
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in :meth:`~torch.nn.Module.load_state_dict`. Metadata saved for this
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module in input :attr:`state_dict` is provided as :attr:`local_metadata`.
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For state dicts without metadata, :attr:`local_metadata` is empty.
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Subclasses can achieve class-specific backward compatible loading using
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the version number at `local_metadata.get("version", None)`.
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.. note::
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:attr:`state_dict` is not the same object as the input
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:attr:`state_dict` to :meth:`~torch.nn.Module.load_state_dict`. So
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it can be modified.
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Args:
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state_dict (dict): a dict containing parameters and
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persistent buffers.
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prefix (str): the prefix for parameters and buffers used in this
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module
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local_metadata (dict): a dict containing the metadata for this module.
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See
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strict (bool): whether to strictly enforce that the keys in
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:attr:`state_dict` with :attr:`prefix` match the names of
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parameters and buffers in this module
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missing_keys (list of str): if ``strict=True``, add missing keys to
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this list
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unexpected_keys (list of str): if ``strict=True``, add unexpected
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keys to this list
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error_msgs (list of str): error messages should be added to this
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list, and will be reported together in
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:meth:`~torch.nn.Module.load_state_dict`
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"""
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for hook in self._load_state_dict_pre_hooks.values():
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hook(state_dict, prefix, local_metadata, strict, missing_keys, unexpected_keys, error_msgs)
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persistent_buffers = {k: v for k, v in self.named_buffers() if k not in self._non_persistent_buffers_set}
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local_name_params = itertools.chain(self.named_parameters(), persistent_buffers.items())
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local_state = {k: v for k, v in local_name_params if v is not None}
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def load(name, dest_tensor, copy_func):
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key = prefix + name
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if key in state_dict:
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input_param = state_dict[key]
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# Backward compatibility: loading 1-dim tensor from 0.3.* to version 0.4+
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if len(dest_tensor.shape) == 0 and len(input_param.shape) == 1:
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input_param = input_param[0]
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if input_param.shape != dest_tensor.shape:
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# local shape should match the one in checkpoint
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error_msgs.append('size mismatch for {}: copying a param with shape {} from checkpoint, '
|
|
'the shape in current model is {}.'.format(key, input_param.shape,
|
|
dest_tensor.shape))
|
|
return
|
|
try:
|
|
with torch.no_grad():
|
|
# self.chunk_manager.copy_tensor_to_chunk_slice(fp32_p, input_param)
|
|
copy_func(input_param)
|
|
except Exception as ex:
|
|
error_msgs.append('While copying the parameter named "{}", '
|
|
'whose dimensions in the model are {} and '
|
|
'whose dimensions in the checkpoint are {}, '
|
|
'an exception occurred : {}.'.format(key, dest_tensor.size(), input_param.size(),
|
|
ex.args))
|
|
elif strict:
|
|
missing_keys.append(key)
|
|
|
|
def load_fp32_p(fp32_p, data):
|
|
if fp32_p.storage().size() > 0:
|
|
self.chunk_manager.copy_tensor_to_chunk_slice(fp32_p, data)
|
|
|
|
for (name, p), fp32_p in zip(self.named_parameters(), self.fp32_params):
|
|
if p is not None:
|
|
load(name, fp32_p, partial(load_fp32_p, fp32_p))
|
|
self.chunk_manager.copy_chunk_group('fp16_param', 'fp32_param')
|
|
|
|
for name, buf in persistent_buffers.items():
|
|
if buf is not None:
|
|
load(name, buf, buf.copy_)
|
|
|
|
extra_state_key = prefix + _EXTRA_STATE_KEY_SUFFIX
|
|
if getattr(self.__class__, "set_extra_state",
|
|
torch.nn.Module.set_extra_state) is not torch.nn.Module.set_extra_state:
|
|
if extra_state_key in state_dict:
|
|
self.set_extra_state(state_dict[extra_state_key])
|
|
elif strict:
|
|
missing_keys.append(extra_state_key)
|
|
elif strict and (extra_state_key in state_dict):
|
|
unexpected_keys.append(extra_state_key)
|
|
|
|
if strict:
|
|
for key in state_dict.keys():
|
|
if key.startswith(prefix) and key != extra_state_key:
|
|
input_name = key[len(prefix):]
|
|
if input_name not in local_state:
|
|
unexpected_keys.append(key)
|