YellowFin is an auto-tuning optimizer based on momentum SGD which requires no manual specification of learning rate and momentum. It measures the objective landscape on-the-fly and tunes momentum as well as learning rate using local quadratic approximation.
The implementation here can be a drop-in replacement for any optimizer in Tensorflow. It supports both minimize
and apply_gradients
like any tensorflow optimizer after from yellowfin import YFOptimizer
. We also provide interface to manually set the learning rate schedule at every iteration for finer control (See Detailed Guideline section).
For more technical details, please refer to our paper YellowFin and the Art of Momentum Tuning.
For more usage details, please refer to the inline documentation of tuner_utils/yellowfin.py
. Example usage can be found here for CIFAR and PTB.
YellowFin is under active development. Many members of the community have kindly submitted issues and pull requests. We are incorporating fixes and smoothing things out. As a result the repository code is in flux. Please make sure you use the latest version and submit any issues you might have!
[2017.08.06] Switched to logrithmic smoothing to accelerate adaptation to curvature range trends.
[2017.08.06] Added feature to correct estimation bias from sparse gradient.
[2017.08.11] Added Multipe GPU training support with better standardized code structure.
[2017.08.16] Replace numpy root solver with closed form solution using Vieta's substitution for cubic eqaution. It solves the stability issue of the numpy root solver.
[2017.10.29] Major fixe for stability. We added eps to protect fractions in our code, as well as an adaptive clipping feature to properly deal with exploding gradient (manual clipping is still supported as described in the detailed instruction below).
Please clone the master branch and follow the instructions to run YellowFin on ResNet for CIFAR10, Bottleneck Resnet on CIRAR100 for image recognition, LSTM on Penn Treebank for language modeling, Char Rnn LSTM on TinyShakespeare and LSTM on Wall Street Journal dataset for constituency parsing. The CIFAR and PTB models we use are slightly adapted from official Tensorflow ResNet and LSTM. The Char Rnn LSTM and the Parsing LSTM are adapted from Char Rnn repo and Parsing LSTM repo respectively. Thanks to the researchers for developing the models.
YellowFin is tested under Tensorflow 1.1 and Python 2.7.
Please use the data/download.sh script to download CIFAR10/100 and Penn Treebank dataset. It may take a few minutes depending on the network speed. Other datasets are self-included in the repo.
cd data
bash download.sh
The experiments on 110 layer ResNet with CIFAR10 and 164 layer ResNet with CIFAR100 can be launched using
cd cifar/scripts
python CIFAR10-release.py --log_dir=path_to_log --opt_method=YF (for CIFAR10)
python CIFAR100-release.py --log_dir=path_to_log --opt_method=YF (for CIFAR100)
The experiments on multiple-layer LSTM on Penn Treebank can be launched using
cd ptb/scripts
python PTB-release.py --opt_method=YF --log_dir=path_to_log
The experiments on Char Rnn LSTM with TinyShakespeare dataset can be launched using
cd char-rnn-tensorflow
python train_YF.py --log_dir=path_to_log --data_dir=./data/tinyshakespeare/ --opt_method=YF
The experiments on constituency parsing with the Wall Street Journal (WSJ) dataset can be launched using
cd parsing
mkdir -p models/wsj && python train.py --data_path=wsj --model_path=models/wsj/model --log_dir=path_to_log --opt_method="YF"
Note the WSJ is not public available. Please contact us or the author of Parsing LSTM repo for the access of the data. The data can be preprocessed following the instructions in Parsing LSTM repo. You should be able to run our scripts on the preprocessed data.
-
Basic use: YFOptimizer() uses the uniform setting (i.e. without tuning) for all the PyTorch and Tensorflow experiments in our paper.
-
Interface for manual finer control: If you want to more finely control the learning rate, please use
lr_factor
in the YFOptimizer class. E.g. if you want to use a manually set constant learning rate, you can assigndesired_lr / self._lr_var
toself.lr_factor
before applying the gradient at each iteration. If you want to use the typical lr-dropping technique after a ceritain number of epochs, please refer to the example here. (The argumentlearning_rate
andmomentum
are dummy, only for backward compatibility) -
Gradient clipping: The default setting uses adaptive gradient clipping to prevent gradient explosion, thresholding norm of gradient to the square root of our estimated maximal curvature. We recommend first fully turning off gradient clipping, and only turning it on when necessary.
- If you want to set the clipping threshold manually, please first use
use_adapt_grad_clip=False
when initializing the YFOptimmizer to turn off the adaptive clipping. You may use theclip_thresh=thresh_norm_of_gradient
argument when initializing the YFOptimizer to threshold the norm of gradient, or you can do the gradient clipping outside of YFOptimizer. - if you want to fully turn off gradient clipping inside YFOptimmizer, please set
use_adapt_grad_clip=False
when initializing YFOptimizer.
- If you want to set the clipping threshold manually, please first use
-
Normalization: When using log probability style losses, please make sure the loss is properly normalized. In some RNN/LSTM cases, the cross_entropy need to be averaged by the number of samples in a minibatch. Sometimes, it also needs to be averaged over the number of classes and the sequence length of each sample in some Tensorflow loss functions. E.g. the cross_etropy loss here need to be normalized by the length of sequence and minibatch size.
If you use YellowFin in your paper, please cite the paper:
@article{zhang2017yellowfin,
title={YellowFin and the Art of Momentum Tuning},
author={Zhang, Jian and Mitliagkas, Ioannis and R{\'e}, Christopher},
journal={arXiv preprint arXiv:1706.03471},
year={2017}
}
We thank Jack Hessel and Mladen Fernežir for contributing to the codebase.
For PyTorch users, we implemented YellowFin PyTorch repo.
We thank the contributors for YellowFin in different deep learning frameworks.