95 lines
3.5 KiB
Python
95 lines
3.5 KiB
Python
import logging
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from typing import Optional, List
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from khaosz.core import ModelParameter, Checkpoint
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from khaosz.trainer.strategy import TrainConfig, ScheduleConfig
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from khaosz.trainer.trainer_callback import (
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TrainerCallback,
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ProgressBarCallback,
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CheckpointCallback,
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GradientClippingCallback,
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SchedulerCallback
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)
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from khaosz.trainer.train_context import TrainContext, TrainContextBuilder
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logger = logging.getLogger(__name__)
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class Trainer:
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def __init__(
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self,
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parameter: ModelParameter,
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train_config: TrainConfig,
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schedule_config: ScheduleConfig,
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callbacks: Optional[List[TrainerCallback]] = None
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):
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self.parameter = parameter
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self.train_config = train_config
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self.schedule_config = schedule_config
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self.callbacks = callbacks or self._get_default_callbacks()
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def _get_default_callbacks(self) -> List[TrainerCallback]:
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return [
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ProgressBarCallback(),
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CheckpointCallback(self.train_config.checkpoint_interval),
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GradientClippingCallback(),
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SchedulerCallback(self.schedule_config),
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]
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def _build_train_context(self, checkpoint: Optional[Checkpoint]) -> TrainContext:
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return (TrainContextBuilder(self)
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.with_checkpoint(checkpoint)
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.with_sampler()
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.with_optimizer()
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.with_dataloader()
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.build())
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def _call_callbacks(self, method_name: str, context: TrainContext):
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kwargs = {
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'dataloader': context.dataloader,
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'optimizer': context.optimizer,
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'sampler': context.sampler,
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'epoch': context.epoch,
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'current_iter': context.current_iter,
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'loss': context.loss,
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'checkpoint': context.checkpoint
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}
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for callback in self.callbacks:
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method = getattr(callback, method_name, None)
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if method:
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method(self, **kwargs)
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def train(self, checkpoint: Optional[Checkpoint] = None) -> Checkpoint:
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context = self._build_train_context(checkpoint)
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self._call_callbacks('on_train_begin', context)
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try:
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self.parameter.model.train()
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for epoch in range(context.epoch, self.train_config.n_epoch):
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context.epoch = epoch
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self._call_callbacks('on_epoch_begin', context)
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for batch in context.dataloader:
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if context.current_iter % self.train_config.accumulation_steps == 0:
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self._call_callbacks('on_step_begin', context)
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self.train_config.optimizer.step()
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self.train_config.optimizer.zero_grad()
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self._call_callbacks('on_step_end', context)
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self._call_callbacks('on_batch_begin', context)
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loss = self.train_config.strategy(batch)
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context.loss = loss.item()
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context.current_iter += 1
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loss.backward()
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self._call_callbacks('on_batch_end', context)
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self._call_callbacks('on_epoch_end', context)
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except Exception as e:
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logger.error(f"Training failed: {str(e)}", exc_info=True)
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raise
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finally:
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self._call_callbacks('on_train_end', context)
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return context.checkpoint |