This repo contains the official implementations of Picking Winning Tickets Before Training by Preserving Gradient Flow.
- The config file for the experiments are under the directory of
configs/
.
python3.6
pip install https://download.pytorch.org/whl/cu90/torch-0.4.1-cp36-cp36m-linux_x86_64.whl
pip install torchvision
pip install tqdm
pip install tensorflow
pip install tensorboardX
pip install easydict
-
Download tiny imagenet from "https://tiny-imagenet.herokuapp.com", and place it in ../data/tiny_imagenet. Please make sure there will be two folders,
train
andval
, under the directory of../data/tiny_imagenet
. In eithertrain
orval
, there will be 200 folders storing the images of each category. Or You can also download the processed data from here. -
For cifar datasets, it will be automatically downloaded.
# CIFAR-100, VGG19, Pruning ratio = 98%
$ python main_prune_non_imagenet.py --config configs/cifar100/vgg19/GraSP_98.json
# CIFAR-10, VGG19, Pruning ratio = 98%
$ python main_prune_non_imagenet.py --config configs/cifar10/vgg19/GraSP_98.json
# For all the experiments, please refer to the folder configs.
To cite this work, please use
@inproceedings{
Wang2020Picking,
title={Picking Winning Tickets Before Training by Preserving Gradient Flow},
author={Chaoqi Wang and Guodong Zhang and Roger Grosse},
booktitle={International Conference on Learning Representations},
year={2020},
url={https://openreview.net/forum?id=SkgsACVKPH}
}