| import math |
| import torch |
| from torch.optim.lr_scheduler import _LRScheduler |
|
|
| class CosineAnnealingWarmupRestarts(_LRScheduler): |
| """ |
| optimizer (Optimizer): Wrapped optimizer. |
| first_cycle_steps (int): First cycle step size. |
| cycle_mult(float): Cycle steps magnification. Default: -1. |
| max_lr(float): First cycle's max learning rate. Default: 0.1. |
| min_lr(float): Min learning rate. Default: 0.001. |
| warmup_steps(int): Linear warmup step size. Default: 0. |
| gamma(float): Decrease rate of max learning rate by cycle. Default: 1. |
| last_epoch (int): The index of last epoch. Default: -1. |
| """ |
| |
| def __init__(self, |
| optimizer : torch.optim.Optimizer, |
| first_cycle_steps : int, |
| cycle_mult : float = 1., |
| max_lr : float = 0.1, |
| min_lr : float = 0.001, |
| warmup_steps : int = 0, |
| gamma : float = 1., |
| last_epoch : int = -1 |
| ): |
| assert warmup_steps < first_cycle_steps |
| |
| self.first_cycle_steps = first_cycle_steps |
| self.cycle_mult = cycle_mult |
| self.base_max_lr = max_lr |
| self.max_lr = max_lr |
| self.min_lr = min_lr |
| self.warmup_steps = warmup_steps |
| self.gamma = gamma |
| |
| self.cur_cycle_steps = first_cycle_steps |
| self.cycle = 0 |
| self.step_in_cycle = last_epoch |
| |
| super(CosineAnnealingWarmupRestarts, self).__init__(optimizer, last_epoch) |
| |
| |
| self.init_lr() |
| |
| def init_lr(self): |
| self.base_lrs = [] |
| for param_group in self.optimizer.param_groups: |
| param_group['lr'] = self.min_lr |
| self.base_lrs.append(self.min_lr) |
| |
| def get_lr(self): |
| if self.step_in_cycle == -1: |
| return self.base_lrs |
| elif self.step_in_cycle < self.warmup_steps: |
| return [(self.max_lr - base_lr)*self.step_in_cycle / self.warmup_steps + base_lr for base_lr in self.base_lrs] |
| else: |
| |
| return [base_lr + (self.max_lr - base_lr) \ |
| * (1 + math.cos(math.pi * (self.step_in_cycle-self.warmup_steps) \ |
| / (self.cur_cycle_steps - self.warmup_steps))) / 2 |
| for base_lr in self.base_lrs] |
|
|
| def step(self, epoch=None): |
| if epoch is None: |
| epoch = self.last_epoch + 1 |
| self.step_in_cycle = self.step_in_cycle + 1 |
| if self.step_in_cycle >= self.cur_cycle_steps: |
| self.cycle += 1 |
| self.step_in_cycle = self.step_in_cycle - self.cur_cycle_steps |
| self.cur_cycle_steps = int((self.cur_cycle_steps - self.warmup_steps) * self.cycle_mult) + self.warmup_steps |
| else: |
| if epoch >= self.first_cycle_steps: |
| if self.cycle_mult == 1.: |
| self.step_in_cycle = epoch % self.first_cycle_steps |
| self.cycle = epoch // self.first_cycle_steps |
| else: |
| n = int(math.log((epoch / self.first_cycle_steps * (self.cycle_mult - 1) + 1), self.cycle_mult)) |
| self.cycle = n |
| self.step_in_cycle = epoch - int(self.first_cycle_steps * (self.cycle_mult ** n - 1) / (self.cycle_mult - 1)) |
| self.cur_cycle_steps = self.first_cycle_steps * self.cycle_mult ** (n) |
| else: |
| self.cur_cycle_steps = self.first_cycle_steps |
| self.step_in_cycle = epoch |
| |
| self.max_lr = self.base_max_lr * (self.gamma**self.cycle) |
| self.last_epoch = math.floor(epoch) |
| for param_group, lr in zip(self.optimizer.param_groups, self.get_lr()): |
| param_group['lr'] = lr |
|
|