This repository contains implementations for Lookahead Optimizer: k steps forward, 1 step back in TensorFlow and PyTorch.
Lookahead improves the learning stability and lowers the variance of its inner optimizer with negligible computation and memory cost. It is simple to incorporate into an existing machine learning pipeline.
In PyTorch:
optimizer = # {any optimizer} e.g. torch.optim.Adam
if args.lookahead:
optimizer = Lookahead(optimizer, la_steps=args.la_steps, la_alpha=args.la_alpha)
In TensorFlow:
optimizer = # {any optimizer} e.g. tf.train.AdamOptimizer
if args.lookahead:
optimizer = Lookahead(optimizer, la_steps=args.la_steps, la_alpha=args.la_alpha)
We found that evaluation performance is typically better using the slow weights. This can be done in PyTorch with something like this in your eval loop:
if args.lookahead:
optimizer._backup_and_load_cache()
val_loss = eval_func(model)
optimizer._clear_and_load_backup()
Experiments in the paper were based off the following repositories.
CIFAR-10/100: Cutout
Penn Treebank: awd-lstm-lm
ImageNet: PyTorch examples
Neural Machine Translation: tensor2tensor
If you have questions or suggestions, please feel free to open an issue. Please cite as:
@article{zhang2019lookahead,
title={Lookahead Optimizer: k steps forward, 1 step back},
author={Zhang, Michael R and Lucas, James and Hinton, Geoffrey and Ba, Jimmy},
journal={arXiv preprint arXiv:1907.08610},
year={2019}
}