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from __future__ import annotations |
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import math |
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from torch.optim import Optimizer |
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from torch.optim.lr_scheduler import LambdaLR, _LRScheduler |
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__all__ = ["LinearLR", "ExponentialLR"] |
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class _LRSchedulerMONAI(_LRScheduler): |
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"""Base class for increasing the learning rate between two boundaries over a number |
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of iterations""" |
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def __init__(self, optimizer: Optimizer, end_lr: float, num_iter: int, last_epoch: int = -1) -> None: |
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""" |
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Args: |
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optimizer: wrapped optimizer. |
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end_lr: the final learning rate. |
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num_iter: the number of iterations over which the test occurs. |
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last_epoch: the index of last epoch. |
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Returns: |
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None |
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""" |
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self.end_lr = end_lr |
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self.num_iter = num_iter |
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super().__init__(optimizer, last_epoch) |
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class LinearLR(_LRSchedulerMONAI): |
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"""Linearly increases the learning rate between two boundaries over a number of |
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iterations. |
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""" |
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def get_lr(self): |
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r = self.last_epoch / (self.num_iter - 1) |
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return [base_lr + r * (self.end_lr - base_lr) for base_lr in self.base_lrs] |
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class ExponentialLR(_LRSchedulerMONAI): |
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"""Exponentially increases the learning rate between two boundaries over a number of |
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iterations. |
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""" |
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def get_lr(self): |
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r = self.last_epoch / (self.num_iter - 1) |
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return [base_lr * (self.end_lr / base_lr) ** r for base_lr in self.base_lrs] |
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class WarmupCosineSchedule(LambdaLR): |
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"""Linear warmup and then cosine decay. |
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Based on https://huggingface.co/ implementation. |
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""" |
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def __init__( |
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self, |
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optimizer: Optimizer, |
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warmup_steps: int, |
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t_total: int, |
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end_lr: float = 0.0, |
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cycles: float = 0.5, |
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last_epoch: int = -1, |
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warmup_multiplier: float = 0, |
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) -> None: |
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""" |
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Args: |
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optimizer: wrapped optimizer. |
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warmup_steps: number of warmup iterations. |
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t_total: total number of training iterations. |
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end_lr: the final learning rate. Defaults to 0.0. |
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cycles: cosine cycles parameter. |
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last_epoch: the index of last epoch. |
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warmup_multiplier: if provided, starts the linear warmup from this fraction of the initial lr. |
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Must be in 0..1 interval. Defaults to 0 |
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Returns: |
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None |
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""" |
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self.warmup_steps = min(max(warmup_steps, 0), t_total) |
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self.warmup_multiplier = warmup_multiplier |
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self.t_total = t_total |
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self.cycles = cycles |
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self.end_lr = end_lr |
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if warmup_multiplier < 0 or warmup_multiplier > 1: |
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raise ValueError("warmup_multiplier must be in 0..1 range") |
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super().__init__(optimizer, self.lr_lambda, last_epoch) |
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def lr_lambda(self, step): |
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if step < self.warmup_steps: |
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f = float(step) / float(max(1.0, self.warmup_steps)) |
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return self.warmup_multiplier + (1 - self.warmup_multiplier) * f |
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progress = float(step - self.warmup_steps) / float(max(1, self.t_total - self.warmup_steps)) |
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return max(0.0, 0.5 * (1.0 + math.cos(math.pi * float(self.cycles) * 2.0 * progress))) |
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def get_lr(self): |
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current_lr = [base_lr * lmbda(self.last_epoch) for lmbda, base_lr in zip(self.lr_lambdas, self.base_lrs)] |
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if self.last_epoch < self.warmup_steps: |
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return current_lr |
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else: |
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return [max(self.end_lr, _current_lr) for _current_lr in current_lr] |
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