mirror of https://github.com/hpcaitech/ColossalAI
150 lines
5.9 KiB
Python
150 lines
5.9 KiB
Python
from torch.optim.lr_scheduler import _LRScheduler
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class _enable_get_lr_call:
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def __init__(self, o):
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self.o = o
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def __enter__(self):
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self.o._get_lr_called_within_step = True
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return self
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def __exit__(self, type, value, traceback):
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self.o._get_lr_called_within_step = False
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class DelayerScheduler(_LRScheduler):
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""" Starts with a flat lr schedule until it reaches N epochs the applies a scheduler
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:param optimizer: Wrapped optimizer.
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:type optimizer: torch.optim.Optimizer
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:param delay_epochs: Number of epochs to keep the initial lr until starting aplying the scheduler
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:type delay_epochs: int
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:param after_scheduler: After target_epoch, use this scheduler(eg. ReduceLROnPlateau)
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:type after_scheduler: torch.optim.lr_scheduler
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:param last_epoch: The index of last epoch, defaults to -1
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:type last_epoch: int, optional
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"""
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def __init__(self, optimizer, delay_epochs, after_scheduler, last_epoch=-1):
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if delay_epochs < 0:
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raise ValueError(f'delay_epochs must >= 0, got {delay_epochs}')
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self.delay_epochs = delay_epochs
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self.after_scheduler = after_scheduler
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self.finished = False
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super().__init__(optimizer, last_epoch)
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def get_lr(self):
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if self.last_epoch >= self.delay_epochs:
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if not self.finished:
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self.after_scheduler.base_lrs = self.base_lrs
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self.finished = True
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with _enable_get_lr_call(self.after_scheduler):
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return self.after_scheduler.get_lr()
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return self.base_lrs
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def step(self, epoch=None):
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if self.finished:
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if epoch is None:
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self.after_scheduler.step(None)
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self._last_lr = self.after_scheduler.get_last_lr()
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else:
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self.after_scheduler.step(epoch - self.delay_epochs)
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self._last_lr = self.after_scheduler.get_last_lr()
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else:
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return super(DelayerScheduler, self).step(epoch)
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class WarmupScheduler(_LRScheduler):
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""" Starts with a linear warmup lr schedule until it reaches N epochs the applies a scheduler
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:param optimizer: Wrapped optimizer.
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:type optimizer: torch.optim.Optimizer
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:param warmup_epochs: Number of epochs to linearly warmup lr until starting aplying the scheduler
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:type warmup_epochs: int
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:param after_scheduler: After target_epoch, use this scheduler(eg. ReduceLROnPlateau)
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:type after_scheduler: torch.optim.lr_scheduler
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:param last_epoch: The index of last epoch, defaults to -1
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:type last_epoch: int, optional
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"""
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def __init__(self, optimizer, warmup_epochs, after_scheduler, last_epoch=-1):
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self.warmup_epochs = int(warmup_epochs)
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self.after_scheduler = after_scheduler
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self.finished = False
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super().__init__(optimizer, last_epoch)
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def get_lr(self):
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if self.last_epoch >= self.warmup_epochs:
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if not self.finished:
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self.after_scheduler.base_lrs = self.base_lrs
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self.finished = True
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return self.after_scheduler.get_lr()
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return [(self.last_epoch + 1) / self.warmup_epochs * lr for lr in self.base_lrs]
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def step(self, epoch=None):
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if self.finished:
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if epoch is None:
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self.after_scheduler.step(None)
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self._last_lr = self.after_scheduler.get_last_lr()
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else:
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self.after_scheduler.step(epoch - self.warmup_epochs)
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self._last_lr = self.after_scheduler.get_last_lr()
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else:
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return super().step(epoch)
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class WarmupDelayerScheduler(_LRScheduler):
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""" Starts with a linear warmup lr schedule until it reaches N epochs and a flat lr schedule until it reaches M epochs the applies a scheduler
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:param optimizer: Wrapped optimizer.
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:type optimizer: torch.optim.Optimizer
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:param warmup_epochs: Number of epochs to linearly warmup lr until starting aplying the scheduler
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:type warmup_epochs: int
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:param delay_epochs: Number of epochs to keep the initial lr until starting aplying the scheduler
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:type delay_epochs: int
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:param after_scheduler: After target_epoch, use this scheduler(eg. ReduceLROnPlateau)
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:type after_scheduler: torch.optim.lr_scheduler
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:param last_epoch: The index of last epoch, defaults to -1
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:type last_epoch: int, optional
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"""
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def __init__(self, optimizer, warmup_epochs, delay_epochs, after_scheduler, last_epoch=-1):
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if delay_epochs < 0:
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raise ValueError(f'delay_epochs must >= 0, got {delay_epochs}')
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if warmup_epochs < 0:
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raise ValueError(f'warmup_epochs must >= 0, got {warmup_epochs}')
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self.warmup_epochs = warmup_epochs
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self.delay_epochs = delay_epochs
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self.after_scheduler = after_scheduler
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self.finished = False
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super().__init__(optimizer, last_epoch)
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def get_lr(self):
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if self.last_epoch >= self.warmup_epochs + self.delay_epochs:
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if not self.finished:
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self.after_scheduler.base_lrs = self.base_lrs
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# reset lr to base_lr
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for group, base_lr in zip(self.optimizer.param_groups, self.base_lrs):
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group['lr'] = base_lr
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self.finished = True
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with _enable_get_lr_call(self.after_scheduler):
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return self.after_scheduler.get_lr()
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elif self.last_epoch >= self.warmup_epochs:
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return self.base_lrs
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return [(self.last_epoch + 1) / self.warmup_epochs * lr for lr in self.base_lrs]
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def step(self, epoch=None):
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if self.finished:
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if epoch is None:
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self.after_scheduler.step(None)
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self._last_lr = self.after_scheduler.get_last_lr()
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else:
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self.after_scheduler.step(epoch - self.warmup_epochs)
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self._last_lr = self.after_scheduler.get_last_lr()
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else:
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return super().step(epoch)
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