AstrAI/khaosz/trainer/callback.py

174 lines
5.2 KiB
Python

import os
from tqdm import tqdm
from khaosz.core.parameter import Checkpoint
from torch.nn.utils import clip_grad_norm_
from torch.optim.lr_scheduler import LambdaLR
from typing import Optional, cast, TYPE_CHECKING
from khaosz.trainer.strategy import ScheduleConfig, SchedulerFactory
if TYPE_CHECKING:
from khaosz.trainer.trainer import Trainer
class TrainerCallback:
"""
Callback interface for trainer.
and we use '_' to ignore unused parameters.
"""
def on_train_begin(self, trainer: 'Trainer', **kwargs):
"""
Called at the beginning of training.
"""
_ = trainer, kwargs
def on_train_end(self, trainer: 'Trainer', **kwargs):
"""
Called at the end of training.
"""
_ = trainer, kwargs
def on_epoch_begin(self, trainer: 'Trainer', **kwargs):
"""
Called at the beginning of each epoch.
"""
_ = trainer, kwargs
def on_epoch_end(self, trainer: 'Trainer', **kwargs):
"""
Called at the end of each epoch.
"""
_ = trainer, kwargs
def on_batch_begin(self, trainer: 'Trainer', **kwargs):
"""
Called at the beginning of each batch.
"""
_ = trainer, kwargs
def on_batch_end(self, trainer: 'Trainer', **kwargs):
"""
Called at the end of each batch.
"""
_ = trainer, kwargs
def on_step_begin(self, trainer: 'Trainer', **kwargs):
"""
Called at the beginning of each step.
"""
_ = trainer, kwargs
def on_step_end(self, trainer: 'Trainer', **kwargs):
"""
Called at the end of each step.
"""
_ = trainer, kwargs
class ProgressBarCallback(TrainerCallback):
"""
Progress bar callback for trainer.
"""
def __init__(self):
self.progress_bar: tqdm = None
def on_epoch_begin(self, trainer: 'Trainer', **kwargs):
epoch = kwargs.get('epoch')
dataloader = trainer._create_dataloader()
self.progress_bar = tqdm(
dataloader,
desc=f"Epoch {epoch+1}/{trainer.train_config.n_epoch}",
dynamic_ncols=True
)
def on_batch_end(self, trainer: 'Trainer', **kwargs):
loss = kwargs.get('loss')
self.progress_bar.set_postfix({
"loss": f"{loss:.4f}",
"lr": f"{trainer.train_config.optimizer.param_groups[0]['lr']:.2e}"
})
self.progress_bar.update(1)
def on_epoch_end(self, trainer: 'Trainer', **kwargs):
_ = trainer, kwargs
if self.progress_bar:
self.progress_bar.close()
class CheckpointCallback(TrainerCallback):
"""
Checkpoint callback for trainer.
"""
def __init__(self, checkpoint_interval: int):
self.checkpoint_interval = checkpoint_interval
self.last_ckpt_iter = 0
@staticmethod
def _save_checkpoint(trainer: 'Trainer'):
current_iter = len(trainer.checkpoint.loss_list)
save_path = os.path.join(trainer.train_config.checkpoint_dir, f"iter_{current_iter}")
trainer.checkpoint.optim_state = trainer.train_config.optimizer.state_dict()
trainer.checkpoint.save(save_path)
def on_train_begin(self, trainer: 'Trainer', **kwargs):
_ = trainer
checkpoint = cast(Checkpoint, kwargs.get('checkpoint'))
self.last_ckpt_iter = len(checkpoint.loss_list)
def on_batch_end(self, trainer: 'Trainer', **kwargs):
current_iter = kwargs.get('current_iter')
if current_iter - self.last_ckpt_iter >= self.checkpoint_interval:
CheckpointCallback._save_checkpoint(trainer)
self.last_ckpt_iter = current_iter
def on_train_end(self, trainer: 'Trainer', **kwargs):
checkpoint = cast(Checkpoint, kwargs.get('checkpoint'))
current_iter = len(checkpoint.loss_list)
if current_iter != self.last_ckpt_iter:
CheckpointCallback._save_checkpoint(trainer)
class GradientClippingCallback(TrainerCallback):
"""
Gradient clipping callback for trainer.
"""
def on_step_begin(self, trainer: 'Trainer', **kwargs):
_ = kwargs
clip_grad_norm_(
trainer.checkpoint.model.parameters(),
trainer.train_config.max_grad_norm
)
class SchedulerCallback(TrainerCallback):
"""
Scheduler callback for trainer.
"""
def __init__(self, schedule_config: ScheduleConfig):
self.schedule_config = schedule_config
self.scheduler: Optional[LambdaLR] = None
self.current_iter = 0
def on_train_begin(self, trainer: 'Trainer', **kwargs):
checkpoint = cast(Checkpoint, kwargs.get('checkpoint'))
self.current_iter = len(checkpoint.loss_list)
self.schedule_config.validate()
lambda_scheduler_fn = SchedulerFactory.load_schedule_fn(
self.schedule_config
)
self.scheduler = LambdaLR(
trainer.train_config.optimizer,
lambda_scheduler_fn,
last_epoch=self.current_iter - 1
)
def on_step_end(self, trainer: 'Trainer', **kwargs):
_ = trainer, kwargs
if self.scheduler:
self.scheduler.step()
self.current_iter += 1