mirror of https://github.com/hpcaitech/ColossalAI
74 lines
3.2 KiB
Python
74 lines
3.2 KiB
Python
#!/usr/bin/env python
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# -*- encoding: utf-8 -*-
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import torch
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from colossalai.legacy.registry import HOOKS
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from colossalai.legacy.trainer.hooks import BaseHook
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from colossalai.legacy.utils.checkpointing import save_checkpoint
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from colossalai.logging import get_dist_logger
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from ._lr_scheduler_hook import LRSchedulerHook
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@HOOKS.register_module
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class SaveCheckpointHook(BaseHook):
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"""Saves the model by interval in training process.
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Args:
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interval (int, optional): Number of epochs between saving the checkpoint, defaults to 1.
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if save_by_iter is True, this arg refers to the number of iters between saving.
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checkpoint_dir (str, optional): File name to save the checkpoint, defaults to None.
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model (torch.nn.Module, Optional): The model to save, defaults to None. When not passing,
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'trainer.engine.model' will be used. We encourage you to pass the model in it to avoid some
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unexpected bugs, especially when using **DDP**.
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save_by_iter (bool, optional): Whether saving the checkpoint by iter, default to False.
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priority (int, optional): Priority in the printing, hooks with small priority will be printed in front
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defaults to 10. If different hooks share same priority, the order of printing would
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depend on the hooks order in the hook list.
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"""
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def __init__(self,
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interval: int = 1,
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checkpoint_dir: str = None,
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model: torch.nn.Module = None,
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save_by_iter: bool = False,
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priority: int = 10):
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super().__init__(priority=priority)
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self.interval = interval
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self.checkpoint_dir = checkpoint_dir
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self.model = model
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self.save_by_iter = save_by_iter
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self.logger = get_dist_logger()
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# get lr scheduler from the LRSchedulerHook before train
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self._lr_scheduler = None
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def after_hook_is_attached(self, trainer):
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# get lr scheduler if exists
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for hook in trainer.hooks:
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if isinstance(hook, LRSchedulerHook):
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self._lr_scheduler = hook.lr_scheduler
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break
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self.model = self.model if self.model is not None else trainer.engine.model
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def after_train_iter(self, trainer, output, label, loss):
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"""Saves the model after a training iter.
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"""
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# save by interval
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if self.save_by_iter and trainer.cur_step % self.interval == 0:
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save_checkpoint(self.checkpoint_dir, trainer.cur_epoch, self.model, trainer.engine.optimizer,
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self._lr_scheduler)
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self.logger.info(f'checkpoint for iteration {trainer.cur_step} is saved to {self.checkpoint_dir}',
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ranks=[0])
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else:
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pass
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def after_train_epoch(self, trainer):
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"""Saves the model after a training epoch.
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"""
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# save by interval
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if trainer.cur_epoch % self.interval == 0:
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save_checkpoint(self.checkpoint_dir, trainer.cur_epoch, self.model, trainer.engine.optimizer,
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self._lr_scheduler)
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self.logger.info(f'checkpoint for epoch {trainer.cur_epoch} is saved to {self.checkpoint_dir}', ranks=[0])
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