mirror of https://github.com/hpcaitech/ColossalAI
171 lines
6.8 KiB
Python
171 lines
6.8 KiB
Python
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import warnings
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from typing import Any, Callable, Dict, Generator, List, Optional, Tuple
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import torch.distributed as dist
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from torch.nn import Module
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from torch.optim import Optimizer
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from .backend import get_backend
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from .convertor import (CheckpointConvertor, ModelCheckpointMerger, ModelCheckpointRedistor, OptimizerCheckpointMerger,
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OptimizerCheckpointRedistor)
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from .meta import ParamDistMeta, RedistMeta
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from .utils import build_checkpoints, optimizer_load_state_dict
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def save(path: str,
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model: Module,
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optimizer: Optional[Optimizer] = None,
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param_to_os: Optional[Dict[str, int]] = None,
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dist_meta: Optional[Dict[str, ParamDistMeta]] = None,
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max_shard_size_gb: float = 0.0,
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overwrite: bool = False,
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backend: str = 'disk',
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**kwargs: Any) -> None:
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io_backend = get_backend(backend)
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if dist.is_initialized():
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rank = dist.get_rank()
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world_size = dist.get_world_size()
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else:
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rank = 0
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world_size = 1
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if world_size == 1:
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# global doesn't need dist_meta
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dist_meta = None
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else:
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assert dist_meta is not None
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max_shard_size = int(max_shard_size_gb * 1024**3)
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model_checkpoints, optimizer_checkpoints, meta_checkpoint = build_checkpoints(max_shard_size, model, optimizer,
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param_to_os, dist_meta)
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writer = io_backend.get_writer(path, overwrite, rank, world_size)
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writer.save_others(kwargs)
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for model_checkpoint in model_checkpoints:
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writer.save_model(model_checkpoint)
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for optimizer_checkpoint in optimizer_checkpoints:
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writer.save_optimizer(optimizer_checkpoint)
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writer.save_meta(meta_checkpoint)
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def merge(path: str,
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output_path: str,
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max_shard_size_gb: float = 0.0,
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overwrite: bool = False,
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backend: str = 'disk') -> bool:
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io_backend = get_backend(backend)
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if dist.is_initialized() and dist.get_rank() != 0:
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return False
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reader = io_backend.get_reader(path)
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if len(reader.meta_list) == 1:
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# already global
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warnings.warn(f'Checkpoint at "{path}" is already global, nothing to do.')
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return False
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dist_meta_list, param_count, param_to_os, paired_os = reader.load_meta()
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writer = io_backend.get_writer(output_path, overwrite=overwrite)
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writer.save_others(reader.load_others())
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max_shard_size = int(max_shard_size_gb * 1024**3)
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_convert_shards(ModelCheckpointMerger(max_shard_size, writer.save_model, param_count), reader.load_models(),
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dist_meta_list)
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_convert_shards(
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OptimizerCheckpointMerger(max_shard_size, writer.save_optimizer, param_count, param_to_os, paired_os),
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reader.load_optimizers(), dist_meta_list)
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meta_checkpoint = {'dist_meta': None, 'params': list(param_count.keys())}
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if param_to_os is not None:
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meta_checkpoint['param_to_os'] = param_to_os
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meta_checkpoint['paired_os'] = paired_os
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writer.save_meta(meta_checkpoint)
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return True
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def redist(path: str,
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output_path: str,
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redist_meta: RedistMeta,
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dist_metas: List[Dict[str, ParamDistMeta]],
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max_shard_size_gb: float = 0.0,
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overwrite: bool = False,
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backend: str = 'disk') -> bool:
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io_backend = get_backend(backend)
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if dist.is_initialized() and dist.get_rank() != 0:
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return False
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nprocs = len(dist_metas)
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reader = io_backend.get_reader(path)
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dist_meta_list, param_count, param_to_os, paired_os = reader.load_meta()
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do_redist: bool = False
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if len(dist_meta_list) == nprocs:
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for a, b in zip(dist_metas, dist_meta_list):
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if a != b:
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do_redist = True
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break
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else:
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do_redist = True
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if not do_redist:
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warnings.warn(f'Checkpoint at "{path}" is not required to redist, nothing to do.')
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return False
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writers = [io_backend.get_writer(output_path, overwrite, rank, nprocs) for rank in range(nprocs)]
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writers[0].save_others(reader.load_others())
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max_shard_size = int(max_shard_size_gb * 1024**3)
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_convert_shards(
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ModelCheckpointRedistor(max_shard_size, [writer.save_model for writer in writers], param_count, redist_meta),
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reader.load_models(), dist_meta_list)
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_convert_shards(
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OptimizerCheckpointRedistor(max_shard_size, [writer.save_optimizer for writer in writers], param_count,
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param_to_os, paired_os, redist_meta), reader.load_optimizers(), dist_meta_list)
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for writer, dist_meta in zip(writers, dist_metas):
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meta_checkpoint = {'dist_meta': dist_meta, 'params': list(param_count.keys())}
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if param_to_os is not None:
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meta_checkpoint['param_to_os'] = param_to_os
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meta_checkpoint['paired_os'] = paired_os
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writer.save_meta(meta_checkpoint)
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return True
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def _convert_shards(convertor: CheckpointConvertor, shard_generator: Generator[dict, None, None],
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dist_meta_list: List[Optional[Dict[str, ParamDistMeta]]]) -> None:
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for shard_dict in shard_generator:
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convertor.append(shard_dict, dist_meta_list)
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convertor.complete()
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def load(path: str,
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model: Module,
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optimizer: Optional[Optimizer] = None,
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redist_meta: Optional[RedistMeta] = None,
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dist_metas: Optional[List[Dict[str, ParamDistMeta]]] = None,
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max_shard_size_gb: float = 0.0,
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backend: str = 'disk') -> dict:
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is_global: bool = not dist.is_initialized() or dist.get_world_size() == 1
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rank: int = dist.get_rank() if dist.is_initialized() else 0
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is_main_process: bool = rank == 0
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# validate args
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if redist_meta is None or dist_metas is None:
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assert is_global
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io_backend = get_backend(backend)
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read_path: str = path
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if is_main_process:
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# pre-process checkpoints
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temp_path = io_backend.get_temp(path)
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if is_global:
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wrote = merge(path, temp_path, max_shard_size_gb, backend=backend)
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else:
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wrote = redist(path, temp_path, redist_meta, dist_metas, max_shard_size_gb, backend=backend)
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if wrote:
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read_path = temp_path
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if not is_global:
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bcast_list = [read_path] if is_main_process else [None]
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dist.broadcast_object_list(bcast_list)
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read_path = bcast_list[0]
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reader = io_backend.get_reader(read_path)
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# load model
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for shard in reader.load_model(rank):
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model.load_state_dict(shard, strict=False)
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if optimizer is not None:
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for shard in reader.load_optimizer(rank):
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# optimizer.load_state_dict(shard)
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optimizer_load_state_dict(optimizer, shard)
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others_dict = reader.load_others()
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if not is_global:
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dist.barrier()
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# clean up temp
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if is_main_process:
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io_backend.clean_temp()
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return others_dict
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