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601 lines
28 KiB
601 lines
28 KiB
import gc
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import os
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import random
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from pathlib import Path
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from typing import Callable, Dict, Iterator, List, Optional, Tuple
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import numpy as np
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import torch
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import torch.distributed as dist
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import torch.nn as nn
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from torch.distributed.distributed_c10d import _get_default_group
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from torch.optim import Optimizer
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from torch.optim.lr_scheduler import _LRScheduler as LRScheduler
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from torch.utils.data import DataLoader
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from torch.utils.data.distributed import DistributedSampler
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from colossalai.accelerator import get_accelerator
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from colossalai.checkpoint_io import CheckpointIndexFile, CheckpointIO, GeneralCheckpointIO
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from colossalai.checkpoint_io.utils import (
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get_model_base_filenames,
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get_optimizer_base_filenames,
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load_shard_state_dict,
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save_config_file,
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save_state_dict,
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save_state_dict_shards,
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)
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from colossalai.cluster import DistCoordinator, ProcessGroupMesh
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from colossalai.interface import ModelWrapper, OptimizerWrapper
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from colossalai.logging import get_dist_logger
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from colossalai.shardformer import ShardConfig, ShardFormer
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from colossalai.zero import GeminiDDP, GeminiOptimizer
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from colossalai.zero.gemini.memory_tracer import MemStats
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from .dp_plugin_base import DPPluginBase
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__all__ = ["GeminiPlugin"]
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SUPPORTED_PRECISION = ["fp16", "bf16"]
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PRECISION_STR_TO_DTYPE = {"fp16": torch.half, "bf16": torch.bfloat16}
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ZERO_AXIS, DP_AXIS, TP_AXIS = 0, 1, 2
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def get_param_info(optim: Optimizer):
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# Get a backup of necessary information of parameters for future use, which includes:
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# 1. A mapping from integer param_id to param32 shape.
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if optim is None:
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return {}
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param_info = {"id2shape": {}}
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start_index = 0
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for group in optim.param_groups:
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for param_id, param in enumerate(group["params"], start_index):
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original_shape = param.shape if isinstance(param, torch.Tensor) else None
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param_info["id2shape"][param_id] = original_shape
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start_index += len(group["params"])
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return param_info
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class GeminiCheckpointIO(GeneralCheckpointIO):
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def __init__(self) -> None:
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super().__init__()
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self.coordinator = DistCoordinator()
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self.logger = get_dist_logger()
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def save_unsharded_model(self, model: GeminiDDP, checkpoint: str, gather_dtensor: bool, use_safetensors: bool):
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"""
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Save sharded model to checkpoint but only on master process.
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The model should be unwrapped in self.load_model via ModelWrapper.unwrap.
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As there is communication when getting state dict, model.state_dict() must be called on all processes.
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"""
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assert isinstance(model, GeminiDDP), "Please boost the model before saving!"
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state_dict = model.state_dict(only_rank_0=True)
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if self.coordinator.is_master():
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save_state_dict(state_dict, checkpoint, use_safetensors)
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def load_unsharded_model(self, model: GeminiDDP, checkpoint: str, strict: bool = True):
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"""
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Load model from checkpoint with automatic unwrapping.
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The model should be unwrapped in self.load_model via ModelWrapper.unwrap.
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"""
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assert isinstance(model, GeminiDDP), "Please boost the model before loading!"
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super().load_unsharded_model(model, checkpoint, strict=strict)
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def save_unsharded_optimizer(self, optimizer: GeminiOptimizer, checkpoint: str, gather_dtensor: bool):
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"""
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Save unsharded optimizer state dict to checkpoint.
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After calling optimizer.state_dict(), the complete optimizer states will be collected on master rank.
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As there is communication when getting state dict, optimizer.state_dict() must be called on all processes.
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The saving process will only be executed by master rank.
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"""
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assert isinstance(optimizer, GeminiOptimizer), "Please boost the optimizer before saving!"
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state_dict = optimizer.state_dict()
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if self.coordinator.is_master():
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save_state_dict(state_dict, checkpoint, use_safetensors=False)
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def load_unsharded_optimizer(self, optimizer: GeminiOptimizer, checkpoint: str):
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"""
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Loading unsharded optimizer from checkpoint file.
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For each process, only loading optimizer states of parameters it controls.
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"""
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assert isinstance(optimizer, GeminiOptimizer), "Please boost the optimizer before loading!"
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super().load_unsharded_optimizer(optimizer, checkpoint)
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def save_sharded_model(
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self,
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model: GeminiDDP,
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checkpoint_path: str,
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gather_dtensor: bool = False,
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prefix: Optional[str] = None,
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max_shard_size: int = 1024,
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use_safetensors: bool = False,
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):
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"""
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Save sharded model.
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As there is communication when getting state dict, model.state_dict() must be called on all processes.
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"""
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assert isinstance(model, GeminiDDP), "Please boost the model before saving!"
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if os.path.isfile(checkpoint_path):
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self.logger.error(f"Provided path ({checkpoint_path}) should be a directory, not a file", ranks=[0])
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return
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Path(checkpoint_path).mkdir(parents=True, exist_ok=True)
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state_dict_shard = model.state_dict_shard(max_shard_size=max_shard_size, only_rank_0=True)
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weights_name, save_index_file = get_model_base_filenames(prefix, use_safetensors)
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index_file = CheckpointIndexFile(checkpoint_path)
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# Save shards of optimizer states.
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is_master = self.coordinator.is_master()
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total_size = save_state_dict_shards(
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sharded_state_dict=state_dict_shard,
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checkpoint=checkpoint_path,
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index_file=index_file,
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base_filename=weights_name,
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is_master=is_master,
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use_safetensors=use_safetensors,
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)
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# only save the index file on the master rank
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if self.coordinator.is_master():
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index_file.append_meta_data("total_size", total_size)
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index_file.write_index_file(save_index_file)
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save_config_file(model.unwrap(), checkpoint_path)
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self.logger.info(
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f"The model is split into checkpoint shards. "
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f"You can find where each parameters has been saved in the "
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f"index located at {save_index_file}.",
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ranks=[0],
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)
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def load_sharded_model(
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self, model: GeminiDDP, checkpoint_index_file: Path, strict: bool = False, use_safetensors: bool = False
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):
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"""
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Load shard model, load model from multiple files.
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"""
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assert isinstance(model, GeminiDDP), "Please boost the model before loading!"
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return super().load_sharded_model(model, checkpoint_index_file, strict, use_safetensors, load_sub_module=False)
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def save_sharded_optimizer(
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self, optimizer: GeminiOptimizer, checkpoint: Path, gather_dtensor: bool, prefix: str, size_per_shard: int
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):
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"""
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Save sharded optimizer state dict to checkpoint folder.
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As there is communication when getting state dict, this must be called on all processes.
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"""
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assert isinstance(optimizer, GeminiOptimizer), "Please boost the optimizer before saving!"
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if os.path.isfile(checkpoint):
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self.logger.error(f"Provided path ({checkpoint}) should be a directory, not a file", ranks=[0])
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return
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Path(checkpoint).mkdir(parents=True, exist_ok=True)
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# Preparing file paths and index file.
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states_name, save_index_file, param_group_file = get_optimizer_base_filenames(prefix)
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index_file = CheckpointIndexFile(checkpoint)
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index_file.append_meta_data("param_groups", param_group_file)
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# Store the information of param groups to param_group_file.
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if self.coordinator.is_master():
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group_file_path = os.path.join(checkpoint, param_group_file)
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param_groups = optimizer.get_param_groups_for_saving()
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torch.save(param_groups, group_file_path)
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# States are broken into shards within max_shard_size.
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state_dict_shard = optimizer.state_shard(prefix=prefix, max_shard_size=size_per_shard, only_rank_0=True)
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# Save shards of optimizer states.
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total_size = save_state_dict_shards(
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sharded_state_dict=state_dict_shard,
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checkpoint=checkpoint,
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index_file=index_file,
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base_filename=states_name,
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is_master=self.coordinator.is_master(),
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use_safetensors=False,
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)
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# Wrap up index file. Only save it on master rank.
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if self.coordinator.is_master():
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index_file.append_meta_data("total_size", total_size)
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index_file.write_index_file(save_index_file)
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self.logger.info(
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f"The optimizer is going to be split to checkpoint shards. "
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f"You can find where each parameters has been saved in the "
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f"index located at {save_index_file}.",
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ranks=[0],
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)
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def load_sharded_optimizer(self, optimizer: GeminiOptimizer, checkpoint_index_file: Path, prefix: str):
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"""
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Loading sharded optimizer from checkpoint folder, with index file given.
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For each process, only loading optimizer states of parameters it controls.
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"""
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assert isinstance(optimizer, GeminiOptimizer), "Please boost the optimizer before loading!"
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if not os.path.isfile(checkpoint_index_file):
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self.logger.error(f"Provided path ({checkpoint_index_file}) should be a file", ranks=[0])
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assert isinstance(optimizer, GeminiOptimizer)
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# Read checkpoint index file.
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ckpt_index_file = CheckpointIndexFile.from_file(checkpoint_index_file)
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# Load param_groups.
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param_group_path = ckpt_index_file.get_param_group_filename()
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if param_group_path is None:
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raise RuntimeError(
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f"Invalid index file path {checkpoint_index_file} for an optimizer. \
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Lacking param group file under current directory."
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)
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saved_param_groups = torch.load(param_group_path)
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optimizer.load_param_groups(saved_param_groups)
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checkpoint_files, _ = ckpt_index_file.get_checkpoint_filenames()
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# Load optimizer states from shard files under checkpoint path.
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# For each file, only load the states managed by current process.
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for shard_file in checkpoint_files:
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state_dict_shard = load_shard_state_dict(Path(shard_file), use_safetensors=False)
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optimizer.load_param_states(state_dict_shard)
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del state_dict_shard
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gc.collect()
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optimizer.optimizer_loading_epilogue()
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def save_lr_scheduler(self, lr_scheduler: LRScheduler, checkpoint: str):
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"""
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Save model to checkpoint but only on master process.
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"""
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if self.coordinator.is_master():
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super().save_lr_scheduler(lr_scheduler, checkpoint)
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class GeminiPlugin(DPPluginBase):
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"""
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Plugin for Gemini.
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```python
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from colossalai.booster import Booster
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from colossalai.booster.plugin import GeminiPlugin
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model, train_dataset, optimizer, criterion = ...
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plugin = GeminiPlugin()
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train_dataloader = plugin.prepare_dataloader(train_dataset, batch_size=8)
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booster = Booster(plugin=plugin)
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model, optimizer, train_dataloader, criterion = booster.boost(model, optimizer, train_dataloader, criterion)
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```
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Args:
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chunk_config_dict (dict, optional): chunk configuration dictionary.
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chunk_init_device (torch.device, optional): device to initialize the chunk.
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placement_policy (str, optional): "static" and "auto". Defaults to "static".
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enable_gradient_accumulation (bool, optional): Whether to enable gradient accumulation. When set to True, gradient will be stored after doing backward pass. Defaults to False.
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shard_param_frac (float, optional): fraction of parameters to be sharded. Only for "static" placement.
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If `shard_param_frac` is 1.0, it's equal to zero-3. If `shard_param_frac` is 0.0, it's equal to zero-2. Defaults to 1.0.
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offload_optim_frac (float, optional): fraction of optimizer states to be offloaded. Only for "static" placement.
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If `shard_param_frac` is 1.0 and `offload_optim_frac` is 0.0, it's equal to old "cuda" placement. Defaults to 0.0.
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offload_param_frac (float, optional): fraction of parameters to be offloaded. Only for "static" placement.
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For efficiency, this argument is useful only when `shard_param_frac` is 1.0 and `offload_optim_frac` is 1.0.
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If `shard_param_frac` is 1.0, `offload_optim_frac` is 1.0 and `offload_param_frac` is 1.0, it's equal to old "cpu" placement.
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When using static placement, we recommend users to tune `shard_param_frac` first and then `offload_optim_frac`.
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Defaults to 0.0.
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warmup_non_model_data_ratio (float, optional): ratio of expected non-model data memory during warmup. Only for "auto" placement. Defaults to 0.8.
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steady_cuda_cap_ratio (float, optional): ratio of allowed cuda capacity for model data during steady state. Only for "auto" placement. Defaults to 0.9.
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precision (str, optional): precision. Support 'fp16' and 'bf16'. Defaults to 'fp16'.
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master_weights (bool, optional): Whether to keep fp32 master parameter weights in optimizer. Defaults to True.
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pin_memory (bool, optional): use pin memory on CPU. Defaults to False.
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force_outputs_fp32 (bool, optional): force outputs are fp32. Defaults to False.
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strict_ddp_mode (bool, optional): use strict ddp mode (only use dp without other parallelism). Defaults to False.
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search_range_m (int, optional): chunk size searching range divided by 2^20. Defaults to 32.
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hidden_dim (int, optional): the hidden dimension of DNN.
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Users can provide this argument to speed up searching.
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If users do not know this argument before training, it is ok. We will use a default value 1024.
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min_chunk_size_m (float, optional): the minimum chunk size divided by 2^20.
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If the aggregate size of parameters is still smaller than the minimum chunk size,
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all parameters will be compacted into one small chunk.
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memstats (MemStats, optional) the memory statistics collector by a runtime memory tracer.
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gpu_margin_mem_ratio (float, optional): The ratio of GPU remaining memory (after the first forward-backward)
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which will be used when using hybrid CPU optimizer.
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This argument is meaningless when `placement_policy` of `GeminiManager` is not "auto".
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Defaults to 0.0.
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initial_scale (float, optional): Initial scale used by DynamicGradScaler. Defaults to 2**16.
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min_scale (float, optional): Min scale used by DynamicGradScaler. Defaults to 1.
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growth_factor (float, optional): growth_factor used by DynamicGradScaler. Defaults to 2.
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backoff_factor (float, optional): backoff_factor used by DynamicGradScaler. Defaults to 0.5.
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growth_interval (float, optional): growth_interval used by DynamicGradScaler. Defaults to 1000.
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hysteresis (float, optional): hysteresis used by DynamicGradScaler. Defaults to 2.
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max_scale (int, optional): max_scale used by DynamicGradScaler. Defaults to 2**32.
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max_norm (float, optional): max_norm used for `clip_grad_norm`. You should notice that you shall not do
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clip_grad_norm by yourself when using ZeRO DDP. The ZeRO optimizer will take care of clip_grad_norm.
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norm_type (float, optional): norm_type used for `clip_grad_norm`.
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tp_size (int, optional): If 'tp_size' is set to be greater than 1, it means using tensor parallelism strategy, which is implemented in Shardformer, 'tp_size' determines the size of the tensor parallel process group. Default to 1.
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extra_dp_size (int, optional): If 'extra_dp_size' is set to be greater than 1, it means creating another group to run with a ddp-like strategy. Default to 1.
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enable_all_optimization (bool, optional): Whether to switch on all the optimizations supported by Shardformer.
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Currently all the optimization methods include fused normalization, flash attention and JIT.
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Defaults to False.
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enable_fused_normalization (bool, optional): Whether to switch on fused normalization in Shardformer. Defaults to False.
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enable_flash_attention (bool, optional): Whether to switch on flash attention in Shardformer. Defaults to False.
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enable_jit_fused (bool, optional): Whether to switch on JIT in Shardformer. Default to False.
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enable_sequence_parallelism (bool): Whether to turn on sequence parallelism in Shardformer. Defaults to False.
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use_fp8 (bool, optional): Whether to enable fp8 mixed precision training. Defaults to False.
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verbose (bool, optional): verbose mode. Debug info including chunk search result will be printed. Defaults to False.
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fp8_communication (bool, optional): Whether to enable fp8 communication. Defaults to False.
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"""
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def __init__(
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self,
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chunk_config_dict: Optional[dict] = None,
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chunk_init_device: Optional[torch.device] = None,
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placement_policy: str = "static",
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enable_gradient_accumulation: bool = False,
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max_prefetch: int = 0,
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shard_param_frac: float = 1.0, # only for static placement
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offload_optim_frac: float = 0.0, # only for static placement
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offload_param_frac: float = 0.0, # only for static placement
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warmup_non_model_data_ratio: float = 0.8, # only for auto placement
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steady_cuda_cap_ratio: float = 0.9, # only for auto placement
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precision: str = "fp16",
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master_weights: bool = True,
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pin_memory: bool = False,
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force_outputs_fp32: bool = False,
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strict_ddp_mode: bool = False,
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search_range_m: int = 32,
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hidden_dim: Optional[int] = None,
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min_chunk_size_m: float = 32,
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memstats: Optional[MemStats] = None,
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gpu_margin_mem_ratio: float = 0.0,
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initial_scale: float = 2**16,
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min_scale: float = 1,
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growth_factor: float = 2,
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backoff_factor: float = 0.5,
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growth_interval: int = 1000,
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hysteresis: int = 2,
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max_scale: float = 2**32,
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max_norm: float = 0.0,
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norm_type: float = 2.0,
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tp_size: int = 1,
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extra_dp_size: int = 1,
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enable_all_optimization: bool = False,
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enable_fused_normalization: bool = False,
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enable_flash_attention: bool = False,
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enable_sequence_parallelism: bool = False,
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enable_jit_fused: bool = False,
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enable_async_reduce: bool = True,
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use_fp8: bool = False,
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verbose: bool = False,
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fp8_communication: bool = False,
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) -> None:
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super().__init__()
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assert precision in SUPPORTED_PRECISION, f"precision {precision} is not supported"
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if get_accelerator().name == "npu":
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assert placement_policy == "static", "NPU only supports static placement policy"
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self.logger = get_dist_logger()
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if enable_async_reduce and not pin_memory:
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self.logger.warning(
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f"enable_async_reduce sets pin_memory=True to achieve best performance, which is not implicitly set.",
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ranks=[0],
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)
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pin_memory = True
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self.gemini_config = dict(
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chunk_config_dict=chunk_config_dict,
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chunk_init_device=(chunk_init_device or get_accelerator().get_current_device()),
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placement_policy=placement_policy,
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enable_gradient_accumulation=enable_gradient_accumulation,
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shard_param_frac=shard_param_frac,
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offload_optim_frac=offload_optim_frac,
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offload_param_frac=offload_param_frac,
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warmup_non_model_data_ratio=warmup_non_model_data_ratio,
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steady_cuda_cap_ratio=steady_cuda_cap_ratio,
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pin_memory=pin_memory,
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force_outputs_fp32=force_outputs_fp32,
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strict_ddp_mode=strict_ddp_mode,
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search_range_m=search_range_m,
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hidden_dim=hidden_dim,
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min_chunk_size_m=min_chunk_size_m,
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memstats=memstats,
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mixed_precision=PRECISION_STR_TO_DTYPE[precision],
|
|
master_weights=master_weights,
|
|
max_prefetch=max_prefetch,
|
|
enable_async_reduce=enable_async_reduce,
|
|
fp8_communication=fp8_communication,
|
|
use_fp8=use_fp8,
|
|
)
|
|
self.zero_optim_config = dict(
|
|
gpu_margin_mem_ratio=gpu_margin_mem_ratio,
|
|
)
|
|
self.optim_kwargs = dict(
|
|
initial_scale=initial_scale,
|
|
growth_factor=growth_factor,
|
|
backoff_factor=backoff_factor,
|
|
growth_interval=growth_interval,
|
|
hysteresis=hysteresis,
|
|
min_scale=min_scale,
|
|
max_scale=max_scale,
|
|
max_norm=max_norm,
|
|
norm_type=norm_type,
|
|
)
|
|
self.enable_tensor_parallelism = tp_size > 1
|
|
self.enable_all_optimization = enable_all_optimization
|
|
self.enable_fused_normalization = enable_fused_normalization
|
|
self.enable_flash_attention = enable_flash_attention
|
|
self.enable_sequence_parallelism = enable_sequence_parallelism if self.enable_tensor_parallelism else False
|
|
self.enable_jit_fused = enable_jit_fused
|
|
self.verbose = verbose
|
|
|
|
self.tp_size = tp_size
|
|
self.extra_dp_size = extra_dp_size
|
|
world_size = dist.get_world_size()
|
|
self.zero_size = world_size // (self.tp_size * self.extra_dp_size)
|
|
assert (
|
|
world_size == (self.tp_size * self.extra_dp_size) * self.zero_size
|
|
), f"The global group size can't be evenly divided by the subgroup size."
|
|
|
|
self.pg_mesh = ProcessGroupMesh(self.zero_size, self.extra_dp_size, self.tp_size)
|
|
self.zero_group = (
|
|
self.pg_mesh.get_group_along_axis(ZERO_AXIS) if self.zero_size < world_size else _get_default_group()
|
|
)
|
|
self.extra_dp_group = self.pg_mesh.get_group_along_axis(DP_AXIS) if self.extra_dp_size > 1 else None
|
|
self.tp_group = self.pg_mesh.get_group_along_axis(TP_AXIS) if self.tp_size > 1 else None
|
|
self.dp_size = self.zero_size * self.extra_dp_size
|
|
|
|
self.shard_config = ShardConfig(
|
|
tensor_parallel_process_group=self.tp_group,
|
|
enable_tensor_parallelism=self.enable_tensor_parallelism,
|
|
enable_all_optimization=self.enable_all_optimization,
|
|
enable_fused_normalization=self.enable_fused_normalization,
|
|
enable_flash_attention=self.enable_flash_attention,
|
|
enable_jit_fused=self.enable_jit_fused,
|
|
enable_sequence_parallelism=self.enable_sequence_parallelism,
|
|
)
|
|
|
|
def __del__(self):
|
|
"""Destroy the process groups in ProcessGroupMesh"""
|
|
self.pg_mesh.destroy_mesh_process_groups()
|
|
|
|
def support_no_sync(self) -> bool:
|
|
return False
|
|
|
|
def support_lora(self) -> bool:
|
|
return False
|
|
|
|
def control_precision(self) -> bool:
|
|
return True
|
|
|
|
def supported_precisions(self) -> List[str]:
|
|
return SUPPORTED_PRECISION
|
|
|
|
def control_device(self) -> bool:
|
|
return True
|
|
|
|
def supported_devices(self) -> List[str]:
|
|
return ["cuda", "npu"]
|
|
|
|
def prepare_dataloader(
|
|
self,
|
|
dataset,
|
|
batch_size,
|
|
shuffle=False,
|
|
seed=1024,
|
|
drop_last=False,
|
|
pin_memory=False,
|
|
num_workers=0,
|
|
distributed_sampler_cls=None,
|
|
**kwargs,
|
|
):
|
|
r"""
|
|
Prepare a dataloader for distributed training. The dataloader will be wrapped by
|
|
`torch.utils.data.DataLoader` and `torch.utils.data.DistributedSampler`.
|
|
|
|
|
|
Args:
|
|
dataset (`torch.utils.data.Dataset`): The dataset to be loaded.
|
|
shuffle (bool, optional): Whether to shuffle the dataset. Defaults to False.
|
|
seed (int, optional): Random worker seed for sampling, defaults to 1024.
|
|
add_sampler: Whether to add ``DistributedDataParallelSampler`` to the dataset. Defaults to True.
|
|
drop_last (bool, optional): Set to True to drop the last incomplete batch, if the dataset size
|
|
is not divisible by the batch size. If False and the size of dataset is not divisible by
|
|
the batch size, then the last batch will be smaller, defaults to False.
|
|
pin_memory (bool, optional): Whether to pin memory address in CPU memory. Defaults to False.
|
|
num_workers (int, optional): Number of worker threads for this dataloader. Defaults to 0.
|
|
kwargs (dict): optional parameters for ``torch.utils.data.DataLoader``, more details could be found in
|
|
`DataLoader <https://pytorch.org/docs/stable/_modules/torch/utils/data/dataloader.html#DataLoader>`_.
|
|
|
|
Returns:
|
|
:class:`torch.utils.data.DataLoader`: A DataLoader used for training or testing.
|
|
"""
|
|
_kwargs = kwargs.copy()
|
|
zero_world_size = self.pg_mesh.size(ZERO_AXIS)
|
|
extra_dp_world_size = self.pg_mesh.size(DP_AXIS)
|
|
zero_rank = self.pg_mesh.coordinate(ZERO_AXIS)
|
|
extra_dp_rank = self.pg_mesh.coordinate(DP_AXIS)
|
|
distributed_sampler_cls = distributed_sampler_cls or DistributedSampler
|
|
sampler = distributed_sampler_cls(
|
|
dataset,
|
|
num_replicas=zero_world_size * extra_dp_world_size,
|
|
rank=zero_rank * extra_dp_world_size + extra_dp_rank,
|
|
shuffle=shuffle,
|
|
)
|
|
|
|
# Deterministic dataloader
|
|
def seed_worker(worker_id):
|
|
worker_seed = seed
|
|
np.random.seed(worker_seed)
|
|
torch.manual_seed(worker_seed)
|
|
random.seed(worker_seed)
|
|
|
|
return DataLoader(
|
|
dataset,
|
|
batch_size=batch_size,
|
|
sampler=sampler,
|
|
worker_init_fn=seed_worker,
|
|
drop_last=drop_last,
|
|
pin_memory=pin_memory,
|
|
num_workers=num_workers,
|
|
**_kwargs,
|
|
)
|
|
|
|
def configure(
|
|
self,
|
|
model: nn.Module,
|
|
optimizer: Optional[Optimizer] = None,
|
|
criterion: Optional[Callable] = None,
|
|
dataloader: Optional[DataLoader] = None,
|
|
lr_scheduler: Optional[LRScheduler] = None,
|
|
) -> Tuple[nn.Module, OptimizerWrapper, Callable, DataLoader, LRScheduler]:
|
|
params_info = get_param_info(optimizer)
|
|
if not isinstance(model, ModelWrapper):
|
|
# convert model to sync bn
|
|
# FIXME(ver217): gemini does not support sync bn
|
|
# In torch/nn/modules/_functions.py, line 22, ``mean, invstd = torch.batch_norm_stats(input, eps)`` will get fp32 mean and invstd even though the input is fp16.
|
|
# This inconsistency of dtype will cause the error.
|
|
# We have two possible solutions:
|
|
# 1. keep batch norm always in fp32. This is hard for gemini, as it use chunks.
|
|
# 2. patch sync bn or write a new on. This is relatively easy, but we need to test it.
|
|
# model = nn.SyncBatchNorm.convert_sync_batchnorm(model, None)
|
|
|
|
# wrap the model with Gemini
|
|
if self.enable_tensor_parallelism:
|
|
shardformer = ShardFormer(self.shard_config)
|
|
model, _ = shardformer.optimize(model)
|
|
|
|
model = GeminiDDP(
|
|
model,
|
|
**self.gemini_config,
|
|
zero_group=self.zero_group,
|
|
extra_dp_group=self.extra_dp_group,
|
|
verbose=self.verbose,
|
|
)
|
|
|
|
if optimizer is not None and not isinstance(optimizer, OptimizerWrapper):
|
|
optimizer = GeminiOptimizer(
|
|
optimizer,
|
|
model,
|
|
**self.zero_optim_config,
|
|
**self.optim_kwargs,
|
|
tp_group=self.tp_group,
|
|
params_info=params_info,
|
|
verbose=self.verbose,
|
|
)
|
|
|
|
return model, optimizer, criterion, dataloader, lr_scheduler
|
|
|
|
def control_checkpoint_io(self) -> bool:
|
|
return True
|
|
|
|
def get_checkpoint_io(self) -> CheckpointIO:
|
|
return GeminiCheckpointIO()
|
|
|
|
def no_sync(self, model: nn.Module, optimizer: OptimizerWrapper) -> Iterator[None]:
|
|
raise NotImplementedError
|
|
|
|
def enable_lora(
|
|
self, model: nn.Module, pretrained_dir: Optional[str] = None, lora_config: Optional[Dict] = None
|
|
) -> nn.Module:
|
|
raise NotImplementedError
|