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lrschedule.py
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lrschedule.py
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import numpy as np
# https://github.com/tensorflow/tensor2tensor/issues/280#issuecomment-339110329
def noam_learning_rate_decay(init_lr, global_step, warmup_steps=4000):
# Noam scheme from tensor2tensor:
warmup_steps = float(warmup_steps)
step = global_step + 1.
lr = init_lr * warmup_steps**0.5 * np.minimum(
step * warmup_steps**-1.5, step**-0.5)
return lr
def step_learning_rate_decay(init_lr, global_step,
anneal_rate=0.98,
anneal_interval=30000):
return init_lr * anneal_rate ** (global_step // anneal_interval)
def cyclic_cosine_annealing(init_lr, global_step, T, M):
"""Cyclic cosine annealing
https://arxiv.org/pdf/1704.00109.pdf
Args:
init_lr (float): Initial learning rate
global_step (int): Current iteration number
T (int): Total iteration number (i,e. nepoch)
M (int): Number of ensembles we want
Returns:
float: Annealed learning rate
"""
TdivM = T // M
return init_lr / 2.0 * (np.cos(np.pi * ((global_step - 1) % TdivM) / TdivM) + 1.0)