An implementation of based on pytorch and mmcv

Overview

FisherPruning-Pytorch

An implementation of <Group Fisher Pruning for Practical Network Compression> based on pytorch and mmcv


Main Functions

  • Pruning for fully-convolutional structures, such as one-stage detectors; (copied from the official code)

  • Pruning for networks combining convolutional layers and fully-connected layers, such as faster-RCNN and ResNet;

  • Pruning for networks which involve group convolutions, such as ResNeXt and RegNet.

Usage

Requirements

torch
torchvision
mmcv / mmcv-full
mmcls 
mmdet 

Compatibility

This code is tested with

pytorch=1.3
torchvision=0.4
cudatoolkit=10.0
mmcv-full==1.3.14
mmcls=0.16 
mmdet=2.17

and

pytorch=1.8
torchvision=0.9
cudatoolkit=11.1
mmcv==1.3.16
mmcls=0.16 
mmdet=2.17

Data

Download ImageNet and COCO, then extract them and organize the folders as

- detection
  |- tools
  |- configs
  |- data
  |   |- coco
  |   |   |- train2017
  |   |   |- val2017
  |   |   |- test2017
  |   |   |- annotations
  |
- classification
  |- tools
  |- configs
  |- data
  |   |- imagenet
  |   |   |- train
  |   |   |- val
  |   |   |- test 
  |   |   |- meta
  |
- ...

Commands

e.g. Classification

cd classification
  1. Pruning

    # single GPU
    python tools/train.py configs/xxx_pruning.py --gpus=1
    # multi GPUs (e.g. 4 GPUs)
    python -m torch.distributed.launch --nproc_per_node=4 tools/train.py configs/xxx_pruning.py --launch pytorch
  2. Fine-tune

    In the config file, modify the deploy_from to the pruned model, and modify the samples_per_gpu to 256/#GPUs. Then

    # single GPU
    python tools/train.py configs/xxx_finetune.py --gpus=1
    # multi GPUs (e.g. 4 GPUs)
    python -m torch.distributed.launch --nproc_per_node=4 tools/train.py configs/xxx_finetune.py --launch pytorch
  3. Test

    In the config file, add the attribute load_from to the finetuned model. Then

    python tools/test.py configs/xxx_finetune.py --metrics=accuracy

The commands for pruning and finetuning of detection models are similar to that of classification models. Instructions will be added soon.

Acknowledgments

My project acknowledges the official code FisherPruning.

Owner
Peng Lu
Peng Lu
Face Mask Detection on Image and Video using tensorflow and keras

Face-Mask-Detection Face Mask Detection on Image and Video using tensorflow and keras Train Neural Network on face-mask dataset using tensorflow and k

Nahid Ebrahimian 12 Nov 11, 2022
Geometric Sensitivity Decomposition

Geometric Sensitivity Decomposition This repo is the official implementation of A Geometric Perspective towards Neural Calibration via Sensitivity Dec

16 Dec 26, 2022
Implementation for ACProp ( Momentum centering and asynchronous update for adaptive gradient methdos, NeurIPS 2021)

This repository contains code to reproduce results for submission NeurIPS 2021, "Momentum Centering and Asynchronous Update for Adaptive Gradient Meth

Juntang Zhuang 15 Jun 11, 2022
Spatial Sparse Convolution Library

SpConv: Spatially Sparse Convolution Library PyPI Install Downloads CPU (Linux Only) pip install spconv CUDA 10.2 pip install spconv-cu102 CUDA 11.1 p

Yan Yan 1.2k Jan 07, 2023
ProMP: Proximal Meta-Policy Search

ProMP: Proximal Meta-Policy Search Implementations corresponding to ProMP (Rothfuss et al., 2018). Overall this repository consists of two branches: m

Jonas Rothfuss 212 Dec 20, 2022
A Pytorch implementation of SMU: SMOOTH ACTIVATION FUNCTION FOR DEEP NETWORKS USING SMOOTHING MAXIMUM TECHNIQUE

SMU_pytorch A Pytorch Implementation of SMU: SMOOTH ACTIVATION FUNCTION FOR DEEP NETWORKS USING SMOOTHING MAXIMUM TECHNIQUE arXiv https://arxiv.org/ab

Fuhang 36 Dec 24, 2022
Code for SentiBERT: A Transferable Transformer-Based Architecture for Compositional Sentiment Semantics (ACL'2020).

SentiBERT Code for SentiBERT: A Transferable Transformer-Based Architecture for Compositional Sentiment Semantics (ACL'2020). https://arxiv.org/abs/20

Da Yin 66 Aug 13, 2022
Code for the paper "Benchmarking and Analyzing Point Cloud Classification under Corruptions"

ModelNet-C Code for the paper "Benchmarking and Analyzing Point Cloud Classification under Corruptions". For the latest updates, see: sites.google.com

Jiawei Ren 45 Dec 28, 2022
Usable Implementation of "Bootstrap Your Own Latent" self-supervised learning, from Deepmind, in Pytorch

Bootstrap Your Own Latent (BYOL), in Pytorch Practical implementation of an astoundingly simple method for self-supervised learning that achieves a ne

Phil Wang 1.4k Dec 29, 2022
Speckle-free Holography with Partially Coherent Light Sources and Camera-in-the-loop Calibration

Speckle-free Holography with Partially Coherent Light Sources and Camera-in-the-loop Calibration Project Page | Paper Yifan Peng*, Suyeon Choi*, Jongh

Stanford Computational Imaging Lab 19 Dec 11, 2022
[PAMI 2020] Show, Match and Segment: Joint Weakly Supervised Learning of Semantic Matching and Object Co-segmentation

Show, Match and Segment: Joint Weakly Supervised Learning of Semantic Matching and Object Co-segmentation This repository contains the source code for

Yun-Chun Chen 60 Nov 25, 2022
neural image generation

pixray Pixray is an image generation system. It combines previous ideas including: Perception Engines which uses image augmentation and iteratively op

dribnet 398 Dec 17, 2022
Public implementation of "Learning from Suboptimal Demonstration via Self-Supervised Reward Regression" from CoRL'21

Self-Supervised Reward Regression (SSRR) Codebase for CoRL 2021 paper "Learning from Suboptimal Demonstration via Self-Supervised Reward Regression "

19 Dec 12, 2022
PyElecCL - Electron Monte Carlo Second Checks

PyElecCL Python program to perform second checks for electron Monte Carlo radiat

Reese Haywood 3 Feb 22, 2022
Classification of EEG data using Deep Learning

Graduation-Project Classification of EEG data using Deep Learning Epilepsy is the most common neurological disease in the world. Epilepsy occurs as a

Osman Alpaydın 5 Jun 24, 2022
Tensorflow implementation of "Learning Deconvolution Network for Semantic Segmentation"

Tensorflow implementation of Learning Deconvolution Network for Semantic Segmentation. Install Instructions Works with tensorflow 1.11.0 and uses the

Fabian Bormann 224 Apr 15, 2022
A library that allows for inference on probabilistic models

Bean Machine Overview Bean Machine is a probabilistic programming language for inference over statistical models written in the Python language using

Meta Research 234 Dec 29, 2022
This repository accompanies the ACM TOIS paper "What can I cook with these ingredients?" - Understanding cooking-related information needs in conversational search

In this repository you find data that has been gathered when conducting in-situ experiments in a conversational cooking setting. These data include tr

6 Sep 22, 2022
scikit-learn: machine learning in Python

scikit-learn is a Python module for machine learning built on top of SciPy and is distributed under the 3-Clause BSD license. The project was started

scikit-learn 52.5k Jan 08, 2023
Text-to-SQL in the Wild: A Naturally-Occurring Dataset Based on Stack Exchange Data

SEDE SEDE (Stack Exchange Data Explorer) is new dataset for Text-to-SQL tasks with more than 12,000 SQL queries and their natural language description

Rupert. 83 Nov 11, 2022