Skip to content

Shengliang/BinaryConnect

 
 

Repository files navigation

Please checkout our latest work,
BinaryNet: Training Deep Neural Networks with Weights and Activations Constrained to +1 or -1,
and the associated github repository.

BinaryConnect

Motivations

The goal of this repository is to enable the reproduction of the experiments described in
BinaryConnect: Training Deep Neural Networks with binary weights during propagations.
You may want to checkout our subsequent work:

Requirements

  • Python, Numpy, Scipy
  • Theano (Bleeding edge version)
  • Pylearn2
  • Lasagne
  • PyTables (only for the SVHN dataset)
  • a fast Nvidia GPU or a large amount of patience

MNIST

python mnist.py

This python script trains an MLP on MNIST with the stochastic version of BinaryConnect. It should run for about 30 minutes on a GTX 680 GPU. The final test error should be around 1.15%. Please note that this is NOT the experiment reported in the article (which is in the "master" branch of the repository).

CIFAR-10

python cifar10.py

This python script trains a CNN on CIFAR-10 with the stochastic version of BinaryConnect. It should run for about 20 hours on a Titan Black GPU. The final test error should be around 8.27%.

SVHN

export SVHN_LOCAL_PATH=/Tmp/SVHN/
python svhn_preprocessing.py

This python script (taken from Pylearn2) computes a preprocessed (GCN and LCN) version of the SVHN dataset in a temporary folder (SVHN_LOCAL_PATH).

python svhn.py

This python script trains a CNN on SVHN with the stochastic version of BinaryConnect. It should run for about 2 days on a Titan Black GPU. The final test error should be around 2.15%.

How to play with it

The python scripts mnist.py, cifar10.py and svhn.py contain all the relevant hyperparameters. It is very straightforward to modify them. binary_connect.py contains the binarization function (called binarization).

Have fun!

About

Training Deep Neural Networks with binary weights during propagations

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Python 100.0%