Group Fisher Pruning for Practical Network Compression(ICML2021)

Overview

Group Fisher Pruning for Practical Network Compression (ICML2021)

By Liyang Liu*, Shilong Zhang*, Zhanghui Kuang, Jing-Hao Xue, Aojun Zhou, Xinjiang Wang, Yimin Chen, Wenming Yang, Qingmin Liao, Wayne Zhang

Updates

  • All one stage models of Detection has been released (21/6/2021)

NOTES

All models about detection has been released. The classification models will be released later, because we want to refactor all our code into a Hook , so that it can become a more general tool for all tasks in OpenMMLab.

We will continue to improve this method and apply it to more other tasks, such as segmentation and pose.

The layer grouping algorithm is implemtated based on the AutoGrad of Pytorch, If you are not familiar with this feature and you can read Chinese, then these materials may be helpful to you.

  1. AutoGrad in Pytorch

  2. Hook of MMCV

Introduction

1. Compare with state-of-the-arts.

2. Can be applied to various complicated structures and various tasks.

3. Boosting inference speed on GPU under same flops.

Get Started

1. Creat a basic environment with pytorch 1.3.0 and mmcv-full

Due to the frequent changes of the autograd interface, we only guarantee the code works well in pytorch==1.3.0.

  1. Creat the environment
conda create -n open-mmlab python=3.7 -y
conda activate open-mmlab
  1. Install PyTorch 1.3.0 and corresponding torchvision.
conda install pytorch=1.3.0 cudatoolkit=10.0 torchvision=0.2.2 -c pytorch
  1. Build the mmcv-full from source with pytorch 1.3.0 and cuda 10.0

Please use gcc-5.4 and nvcc 10.0

 git clone https://github.com/open-mmlab/mmcv.git
 cd mmcv
 MMCV_WITH_OPS=1 pip install -e .

2. Install the corresponding codebase in OpenMMLab.

e.g. MMdetection

pip install mmdet==2.13.0

3. Pruning the model.

e.g. Detection

cd detection

Modify the load_from as the path to the baseline model in of xxxx_pruning.py

# for slurm train
sh tools/slurm_train.sh PATITION_NAME JOB_NAME configs/retina/retina_pruning.py work_dir
# for slurm_test
sh tools/slurm_test.sh PATITION_NAME JOB_NAME configs/retina/retina_pruning.py PATH_CKPT --eval bbox
# for torch.dist
# sh tools/dist_train.sh configs/retina/retina_pruning.py 8

4. Finetune the model.

e.g. Detection

cd detection

Modify the deploy_from as the path to the pruned model in custom_hooks of xxxx_finetune.py

# for slurm train
sh tools/slurm_train.sh PATITION_NAME JOB_NAME configs/retina/retina_finetune.py work_dir
# for slurm test
sh tools/slurm_test.sh PATITION_NAME JOB_NAME configs/retina/retina_fintune.py PATH_CKPT --eval bbox
# for torch.dist
# sh tools/dist_train.sh configs/retina/retina_finetune.py 8

Models

Detection

Method Backbone Baseline(mAP) Finetuned(mAP) Download
RetinaNet R-50-FPN 36.5 36.5 Baseline/Pruned/Finetuned
ATSS* R-50-FPN 38.1 37.9 Baseline/Pruned/Finetuned
PAA* R-50-FPN 39.0 39.4 Baseline/Pruned/Finetuned
FSAF R-50-FPN 37.4 37.4 Baseline/Pruned/Finetuned

* indicate with no Group Normalization in heads.

Classification

Coming soon.

Please cite our paper in your publications if it helps your research.

@InProceedings{liu2021group,
  title = {Group Fisher Pruning for Practical Network Compression},
  author =       {Liu, Liyang and Zhang, Shilong and Kuang, Zhanghui and Zhou, Aojun and Xue, Jing-Hao and Wang, Xinjiang and Chen, Yimin and Yang, Wenming and Liao, Qingmin and Zhang, Wayne},
  booktitle = {Proceedings of the 38th International Conference on Machine Learning},
  year = {2021},
  series = {Proceedings of Machine Learning Research},
  month = {18--24 Jul},
  publisher ={PMLR},
}
Owner
Shilong Zhang
Shilong Zhang
Code for the paper "Relation of the Relations: A New Formalization of the Relation Extraction Problem"

This repo contains the code for the EMNLP 2020 paper "Relation of the Relations: A New Paradigm of the Relation Extraction Problem" (Jin et al., 2020)

YYY 27 Oct 26, 2022
Code for a seq2seq architecture with Bahdanau attention designed to map stereotactic EEG data from human brains to spectrograms, using the PyTorch Lightning.

stereoEEG2speech We provide code for a seq2seq architecture with Bahdanau attention designed to map stereotactic EEG data from human brains to spectro

15 Nov 11, 2022
Sound Event Detection with FilterAugment

Sound Event Detection with FilterAugment Official implementation of Heavily Augmented Sound Event Detection utilizing Weak Predictions (DCASE2021 Chal

43 Aug 28, 2022
Co-mining: Self-Supervised Learning for Sparsely Annotated Object Detection, AAAI 2021.

Co-mining: Self-Supervised Learning for Sparsely Annotated Object Detection This repository is an official implementation of the AAAI 2021 paper Co-mi

MEGVII Research 20 Dec 07, 2022
render sprites into your desktop environment as shaped windows using GTK

spritegtk render static or animated sprites into your desktop environment as dynamic shaped windows using GTK requires pycairo and PYGobject: pip inst

hermit 20 Oct 27, 2022
A Neural Net Training Interface on TensorFlow, with focus on speed + flexibility

Tensorpack is a neural network training interface based on TensorFlow. Features: It's Yet Another TF high-level API, with speed, and flexibility built

Tensorpack 6.2k Jan 09, 2023
A simple approach to emable dense segmentation with ViT.

Vision Transformer Segmentation Network This implementation of ViT in pytorch uses a super simple and straight-forward way of generating an output of

HReynaud 5 Jan 03, 2023
Code release for Hu et al. Segmentation from Natural Language Expressions. in ECCV, 2016

Segmentation from Natural Language Expressions This repository contains the code for the following paper: R. Hu, M. Rohrbach, T. Darrell, Segmentation

Ronghang Hu 88 May 24, 2022
A Bayesian cognition approach for belief updating of correlation judgement through uncertainty visualizations

Overview Code and supplemental materials for Karduni et al., 2020 IEEE Vis. "A Bayesian cognition approach for belief updating of correlation judgemen

Ryan Wesslen 1 Feb 08, 2022
3D2Unet: 3D Deformable Unet for Low-Light Video Enhancement (PRCV2021)

3DDUNET This is the code for 3D2Unet: 3D Deformable Unet for Low-Light Video Enhancement (PRCV2021) Conference Paper Link Dataset We use SMOID dataset

1 Jan 07, 2022
NAS-Bench-x11 and the Power of Learning Curves

NAS-Bench-x11 NAS-Bench-x11 and the Power of Learning Curves Shen Yan, Colin White, Yash Savani, Frank Hutter. NeurIPS 2021. Surrogate NAS benchmarks

AutoML-Freiburg-Hannover 13 Nov 18, 2022
Torch implementation of "Enhanced Deep Residual Networks for Single Image Super-Resolution"

NTIRE2017 Super-resolution Challenge: SNU_CVLab Introduction This is our project repository for CVPR 2017 Workshop (2nd NTIRE). We, Team SNU_CVLab, (B

Bee Lim 625 Dec 30, 2022
LSTM model trained on a small dataset of 3000 names written in PyTorch

LSTM model trained on a small dataset of 3000 names. Model generates names from model by selecting one out of top 3 letters suggested by model at a time until an EOS (End Of Sentence) character is no

Sahil Lamba 1 Dec 20, 2021
NeRF Meta-Learning with PyTorch

NeRF Meta Learning With PyTorch nerf-meta is a PyTorch re-implementation of NeRF experiments from the paper "Learned Initializations for Optimizing Co

Sanowar Raihan 78 Dec 18, 2022
Official repository of IMPROVING DEEP IMAGE MATTING VIA LOCAL SMOOTHNESS ASSUMPTION.

IMPROVING DEEP IMAGE MATTING VIA LOCAL SMOOTHNESS ASSUMPTION This is the official repository of IMPROVING DEEP IMAGE MATTING VIA LOCAL SMOOTHNESS ASSU

电线杆 14 Dec 15, 2022
Syed Waqas Zamir 906 Dec 30, 2022
[ICLR 2021] Heteroskedastic and Imbalanced Deep Learning with Adaptive Regularization

Heteroskedastic and Imbalanced Deep Learning with Adaptive Regularization Kaidi Cao, Yining Chen, Junwei Lu, Nikos Arechiga, Adrien Gaidon, Tengyu Ma

Kaidi Cao 29 Oct 20, 2022
Computational inteligence project on faces in the wild dataset

Table of Contents The general idea How these scripts work? Loading data Needed modules and global variables Parsing the arrays in dataset Extracting a

tooraj taraz 4 Oct 21, 2022
Weighing Counts: Sequential Crowd Counting by Reinforcement Learning

LibraNet This repository includes the official implementation of LibraNet for crowd counting, presented in our paper: Weighing Counts: Sequential Crow

Hao Lu 18 Nov 05, 2022
Code and real data for the paper "Counterfactual Temporal Point Processes", available at arXiv.

counterfactual-tpp This is a repository containing code and real data for the paper Counterfactual Temporal Point Processes. Pre-requisites This code

Networks Learning 11 Dec 09, 2022