# Author: Bingxin Ke # Last modified: 2024-02-22 import numpy as np class IterExponential: def __init__(self, total_iter_length, final_ratio, warmup_steps=0) -> None: """ Customized iteration-wise exponential scheduler. Re-calculate for every step, to reduce error accumulation Args: total_iter_length (int): Expected total iteration number final_ratio (float): Expected LR ratio at n_iter = total_iter_length """ self.total_length = total_iter_length self.effective_length = total_iter_length - warmup_steps self.final_ratio = final_ratio self.warmup_steps = warmup_steps def __call__(self, n_iter) -> float: if n_iter < self.warmup_steps: alpha = 1.0 * n_iter / self.warmup_steps elif n_iter >= self.total_length: alpha = self.final_ratio else: actual_iter = n_iter - self.warmup_steps alpha = np.exp( actual_iter / self.effective_length * np.log(self.final_ratio) ) return alpha if "__main__" == __name__: lr_scheduler = IterExponential( total_iter_length=50000, final_ratio=0.01, warmup_steps=200 ) lr_scheduler = IterExponential( total_iter_length=50000, final_ratio=0.01, warmup_steps=0 ) x = np.arange(100000) alphas = [lr_scheduler(i) for i in x] import matplotlib.pyplot as plt plt.plot(alphas) plt.savefig("lr_scheduler.png")