Code for IntraQ, PyTorch implementation of our paper under review

Overview

IntraQ: Learning Synthetic Images with Intra-Class Heterogeneity for Zero-Shot Network Quantization paper

Requirements

Python >= 3.7.10

Pytorch == 1.7.1

Reproduce results

Stage1: Generate data.

cd data_generate

Please install all required package in requirements.txt.

"--save_path_head" in run_generate_cifar10.sh/run_generate_cifar100.sh is the path where you want to save your generated data pickle.

For cifar10/100

bash run_generate_cifar10.sh
bash run_generate_cifar100.sh

For ImageNet

"--save_path_head" in run_generate.sh is the path where you want to save your generated data pickle.

"--model" in run_generate.sh is the pre-trained model you want (also is the quantized model). You can use resnet18/mobilenet_w1/mobilenetv2_w1.

bash run_generate.sh

Stage2: Train the quantized network

cd ..
  1. Modify "qw" and "qa" in cifar10_resnet20.hocon/cifar100_resnet20.hocon/imagenet.hocon to select desired bit-width.

  2. Modify "dataPath" in cifar10_resnet20.hocon/cifar100_resnet20.hocon/imagenet.hocon to the real dataset path (for construct the test dataloader).

  3. Modify the "Path_to_data_pickle" in main_direct.py (line 122 and line 135) to the data_path and label_path you just generate from Stage1.

  4. Use the below commands to train the quantized network. Please note that the model that generates the data and the quantized model should be the same.

For cifar10/100

python main_direct.py --model_name resnet20_cifar10 --conf_path cifar10_resnet20.hocon --id=0

python main_direct.py --model_name resnet20_cifar100 --conf_path cifar100_resnet20.hocon --id=0

For ImageNet, you can choose the model by modifying "--model_name" (resnet18/mobilenet_w1/mobilenetv2_w1)

python main_direct.py --model_name resnet18 --conf_path imagenet.hocon --id=0

Evaluate pre-trained models

The pre-trained models and corresponding logs can be downloaded here

Please make sure the "qw" and "qa" in *.hocon, *.hocon, "--model_name" and "--model_path" are correct.

For cifar10/100

python test.py --model_name resnet20_cifar10 --model_path path_to_pre-trained model --conf_path cifar10_resnet20.hocon

python test.py --model_name resnet20_cifar100 --model_path path_to_pre-trained model --conf_path cifar100_resnet20.hocon

For ImageNet

python test.py --model_name resnet18/mobilenet_w1/mobilenetv2_w1 --model_path path_to_pre-trained model --conf_path imagenet.hocon

Results of pre-trained models are shown below:

Model Bit-width Dataset Top-1 Acc.
resnet18 W4A4 ImageNet 66.47%
resnet18 W5A5 ImageNet 69.94%
mobilenetv1 W4A4 ImageNet 51.36%
mobilenetv1 W5A5 ImageNet 68.17%
mobilenetv2 W4A4 ImageNet 65.10%
mobilenetv2 W5A5 ImageNet 71.28%
resnet-20 W3A3 cifar10 77.07%
resnet-20 W4A4 cifar10 91.49%
resnet-20 W3A3 cifar100 64.98%
resnet-20 W4A4 cifar100 48.25%
Py-FEAT: Python Facial Expression Analysis Toolbox

Py-FEAT is a suite for facial expressions (FEX) research written in Python. This package includes tools to detect faces, extract emotional facial expressions (e.g., happiness, sadness, anger), facial

Computational Social Affective Neuroscience Laboratory 147 Jan 06, 2023
This is a repository with the code for the ACL 2019 paper

The Story of Heads This is the official repo for the following papers: (ACL 2019) Analyzing Multi-Head Self-Attention: Specialized Heads Do the Heavy

231 Nov 15, 2022
Fast mesh denoising with data driven normal filtering using deep variational autoencoders

Fast mesh denoising with data driven normal filtering using deep variational autoencoders This is an implementation for the paper entitled "Fast mesh

9 Dec 02, 2022
Video Swin Transformer - PyTorch

Video-Swin-Transformer-Pytorch This repo is a simple usage of the official implementation "Video Swin Transformer". Introduction Video Swin Transforme

Haofan Wang 116 Dec 20, 2022
PyTorch implementation of paper "Neural Scene Flow Fields for Space-Time View Synthesis of Dynamic Scenes", CVPR 2021

Neural Scene Flow Fields PyTorch implementation of paper "Neural Scene Flow Fields for Space-Time View Synthesis of Dynamic Scenes", CVPR 20

Zhengqi Li 585 Jan 04, 2023
End-to-End Speech Processing Toolkit

ESPnet: end-to-end speech processing toolkit system/pytorch ver. 1.3.1 1.4.0 1.5.1 1.6.0 1.7.1 1.8.1 1.9.0 ubuntu20/python3.9/pip ubuntu20/python3.8/p

ESPnet 5.9k Jan 04, 2023
Lightweight, Portable, Flexible Distributed/Mobile Deep Learning with Dynamic, Mutation-aware Dataflow Dep Scheduler; for Python, R, Julia, Scala, Go, Javascript and more

Apache MXNet (incubating) for Deep Learning Apache MXNet is a deep learning framework designed for both efficiency and flexibility. It allows you to m

The Apache Software Foundation 20.2k Jan 05, 2023
JFB: Jacobian-Free Backpropagation for Implicit Models

JFB: Jacobian-Free Backpropagation for Implicit Models

Typal Research 28 Dec 11, 2022
Offical implementation for "Trash or Treasure? An Interactive Dual-Stream Strategy for Single Image Reflection Separation".

Trash or Treasure? An Interactive Dual-Stream Strategy for Single Image Reflection Separation (NeurIPS 2021) by Qiming Hu, Xiaojie Guo. Dependencies P

Qiming Hu 31 Dec 20, 2022
Using Clinical Drug Representations for Improving Mortality and Length of Stay Predictions

Using Clinical Drug Representations for Improving Mortality and Length of Stay Predictions Usage Clone the code to local. https://github.com/tanlab/MI

Computational Biology and Machine Learning lab @ TOBB ETU 3 Oct 18, 2022
TART - A PyTorch implementation for Transition Matrix Representation of Trees with Transposed Convolutions

TART This project is a PyTorch implementation for Transition Matrix Representati

Lee Sael 2 Jan 19, 2022
Code for Overinterpretation paper Overinterpretation reveals image classification model pathologies

Overinterpretation This repository contains the code for the paper: Overinterpretation reveals image classification model pathologies Authors: Brandon

Gifford Lab, MIT CSAIL 17 Dec 10, 2022
Text Generation by Learning from Demonstrations

Text Generation by Learning from Demonstrations The README was last updated on March 7, 2021. The repo is based on fairseq (v0.9.?). Paper arXiv Prere

38 Oct 21, 2022
Pytorch code for paper "Image Compressed Sensing Using Non-local Neural Network" TMM 2021.

NL-CSNet-Pytorch Pytorch code for paper "Image Compressed Sensing Using Non-local Neural Network" TMM 2021. Note: this repo only shows the strategy of

WenxueCui 7 Nov 07, 2022
A Jinja extension (compatible with Flask and other frameworks) to compile and/or compress your assets.

A Jinja extension (compatible with Flask and other frameworks) to compile and/or compress your assets.

Jayson Reis 94 Nov 21, 2022
Reproduced Code for Image Forgery Detection papers.

Image Forgery Detection With over 4.5 billion active internet users, the amount of multimedia content being shared every day has surpassed everyone’s

Umar Masud 15 Dec 06, 2022
Implementation of FitVid video prediction model in JAX/Flax.

FitVid Video Prediction Model Implementation of FitVid video prediction model in JAX/Flax. If you find this code useful, please cite it in your paper:

Google Research 62 Nov 25, 2022
Deep Learning for Natural Language Processing SS 2021 (TU Darmstadt)

Deep Learning for Natural Language Processing SS 2021 (TU Darmstadt) Task Training huge unsupervised deep neural networks yields to strong progress in

2 Aug 05, 2022
[ICCV 2021] Group-aware Contrastive Regression for Action Quality Assessment

CoRe Created by Xumin Yu*, Yongming Rao*, Wenliang Zhao, Jiwen Lu, Jie Zhou This is the PyTorch implementation for ICCV paper Group-aware Contrastive

Xumin Yu 31 Dec 24, 2022
Implementation of paper: "Image Super-Resolution Using Dense Skip Connections" in PyTorch

SRDenseNet-pytorch Implementation of paper: "Image Super-Resolution Using Dense Skip Connections" in PyTorch (http://openaccess.thecvf.com/content_ICC

wxy 114 Nov 26, 2022