221 lines
7.8 KiB
Python
221 lines
7.8 KiB
Python
import os
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import json
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import time
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from pathlib import Path
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from tqdm import tqdm
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from torch.nn.utils import clip_grad_norm_
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from torch.optim.lr_scheduler import LambdaLR
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from typing import List, Optional, Protocol, TYPE_CHECKING
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from khaosz.config import ScheduleConfig
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from khaosz.trainer.metric_util import (
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grad_max,
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grad_min,
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grad_norm,
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grad_mean,
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grad_std,
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grad_nan_num
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)
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if TYPE_CHECKING:
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from khaosz.trainer.trainer import Trainer
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from khaosz.trainer.train_context import TrainContext
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class TrainCallback(Protocol):
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"""
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Callback interface for trainer.
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"""
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def on_train_begin(self, trainer: 'Trainer', context: 'TrainContext'):
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""" Called at the beginning of training. """
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def on_train_end(self, trainer: 'Trainer', context: 'TrainContext'):
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""" Called at the end of training. """
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def on_epoch_begin(self, trainer: 'Trainer', context: 'TrainContext'):
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""" Called at the beginning of each epoch. """
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def on_epoch_end(self, trainer: 'Trainer', context: 'TrainContext'):
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""" Called at the end of each epoch. """
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def on_step_begin(self, trainer: 'Trainer', context: 'TrainContext'):
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""" Called at the beginning of each step. """
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def on_step_end(self, trainer: 'Trainer', context: 'TrainContext'):
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""" Called at the end of each step."""
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def on_batch_begin(self, trainer: 'Trainer', context: 'TrainContext'):
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""" Called at the beginning of each batch. """
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def on_batch_end(self, trainer: 'Trainer', context: 'TrainContext'):
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""" Called at the end of each batch. """
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def on_error(self, trainer: 'Trainer', context: 'TrainContext'):
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""" Called when an error occurs during training. """
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class GradientClippingCallback(TrainCallback):
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"""
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Gradient clipping callback for trainer.
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"""
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def on_step_begin(self, trainer: 'Trainer', context: 'TrainContext'):
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_ = context
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clip_grad_norm_(trainer.parameter.model.parameters(), trainer.train_config.max_grad_norm)
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class SchedulerCallback(TrainCallback):
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"""
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Scheduler callback for trainer.
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"""
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def __init__(self, schedule_config: ScheduleConfig):
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self.schedule_config = schedule_config
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self.scheduler: Optional[LambdaLR] = None
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def on_train_begin(self, trainer: 'Trainer', context: 'TrainContext'):
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for group in trainer.train_config.optimizer.param_groups:
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if "initial_lr" not in group:
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group["initial_lr"] = group["lr"]
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self.scheduler = context.scheduler
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def on_batch_end(self, trainer: 'Trainer', context: 'TrainContext'):
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_ = trainer, context
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if self.scheduler:
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self.scheduler.step()
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class CheckpointCallback(TrainCallback):
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"""
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Checkpoint callback for trainer.
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"""
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def __init__(self, checkpoint_interval: int):
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self.checkpoint_interval = checkpoint_interval
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self.last_ckpt_iter = 0
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def _save_checkpoint(self, trainer: 'Trainer', context: 'TrainContext'):
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save_path = os.path.join(trainer.train_config.checkpoint_dir, f"iter_{context.current_iter}")
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context.checkpoint.optimizer_state = context.optimizer.state_dict()
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context.checkpoint.scheduler_state = context.scheduler.state_dict()
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context.checkpoint.save(save_path)
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self.last_ckpt_iter = context.current_iter
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def on_batch_end(self, trainer: 'Trainer', context: 'TrainContext'):
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context.checkpoint.loss_list.append(context.loss)
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if context.current_iter - self.last_ckpt_iter >= self.checkpoint_interval:
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self._save_checkpoint(trainer, context)
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def on_train_end(self, trainer: 'Trainer', context: 'TrainContext'):
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if context.current_iter != self.last_ckpt_iter:
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self._save_checkpoint(trainer, context)
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class ProgressBarCallback(TrainCallback):
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"""
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Progress bar callback for trainer.
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"""
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def __init__(self):
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self.progress_bar: tqdm = None
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def on_epoch_begin(self, trainer: 'Trainer', context: 'TrainContext'):
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self.progress_bar = tqdm(
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context.dataloader,
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desc=f"Epoch {context.epoch+1}/{trainer.train_config.n_epoch}",
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dynamic_ncols=True
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)
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def on_batch_end(self, trainer: 'Trainer', context: 'TrainContext'):
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_ = trainer
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self.progress_bar.set_postfix({
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"loss": f"{context.loss:.4f}",
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"lr": f"{context.optimizer.param_groups[-1]['lr']:.2e}"
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})
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self.progress_bar.update(1)
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def on_epoch_end(self, trainer: 'Trainer', context: 'TrainContext'):
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_ = trainer, context
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if self.progress_bar:
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self.progress_bar.close()
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class StepMonitorCallback(TrainCallback):
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"""
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Customizable logger callback for trainer.
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This callback provides flexible logging capabilities for training metrics,
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supporting multiple log formats and custom log handlers.
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"""
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def __init__(
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self,
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log_dir: Optional[str] = None,
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log_interval: int = 100,
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metrics: Optional[List[str]] = None
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):
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"""
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Args:
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log_dir: Directory to save log files. If None, logs won't be saved to file.
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log_interval: Log every N steps
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metrics: List of metrics to log. Supported: ['loss', 'lr', 'grad_norm', 'grad_std', grad_max', 'grad_min', 'grad_mean', 'grad_nan_num']
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custom_handlers: List of custom log handler functions
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json_log: Whether to save logs in JSON format
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"""
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self.log_dir = Path(log_dir) if log_dir else Path(os.getcwd()) / "logs"
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self.log_interval = log_interval
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self.metrics = metrics or ['loss', 'lr']
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self.step_num = 0
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self.log_dir.mkdir(parents=True, exist_ok=True)
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def _handle_info(self, trainer: 'Trainer', context: 'TrainContext'):
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""" Logs training information to console and file. """
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log_data = {
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"timestamp": time.strftime('%Y-%m-%d %H:%M:%S'),
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"epoch": context.epoch,
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"iter": context.current_iter,
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"metrics": self.metrics,
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}
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for metric in self.metrics:
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if metric == 'loss':
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log_data[metric] = context.loss
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elif metric == 'lr':
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log_data[metric] = context.optimizer.param_groups[-1]['lr']
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elif metric == 'grad_norm':
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log_data[metric] = grad_norm(trainer.parameter.model)
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elif metric == 'grad_std':
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log_data[metric] = grad_std(trainer.parameter.model)
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elif metric == 'grad_max':
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log_data[metric] = grad_max(trainer.parameter.model)
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elif metric == 'grad_min':
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log_data[metric] = grad_min(trainer.parameter.model)
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elif metric == 'grad_mean':
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log_data[metric] = grad_mean(trainer.parameter.model)
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elif metric == 'grad_nan_num':
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log_data[metric] = grad_nan_num(trainer.parameter.model)
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else:
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raise ValueError(f"Invalid metric: {metric}")
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return log_data
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def _handle_log(self, trainer: 'Trainer', context: 'TrainContext'):
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""" Logs training information to console and file. """
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log_data = self._handle_info(trainer, context)
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try:
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log_file = self.log_dir / f"log_epoch_{context.epoch}_iter_{context.current_iter}.json"
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with open(log_file, 'a') as f:
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json.dump(log_data, f, indent=4)
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except Exception:
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raise
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def on_step_end(self, trainer: 'Trainer', context: 'TrainContext'):
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if self.step_num % self.log_interval == 0:
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self._handle_log(trainer, context)
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self.step_num += 1
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