Home

Awesome

Awesome Model Quantization Awesome

This repo collects papers, documents, and codes about model quantization for anyone who wants to research it. We are continuously improving the project. Welcome to PR the works (papers, repositories) that the repo misses.

Table of Contents

Awesome_Efficient_LLM_Diffusion

We highlight our newly released awesome open-source project "Awesome Efficient LLM_Diffusion". Specifically, this project focuses on recent methods for compression and acceleration of generative models, such as large language models and diffusion models. Welcome to Star the Repo or PR any work you like!

https://github.com/efficient-ml/awesome-efficient-llm-diffusion AwesomeGitHub Repo stars

Benchmark

BiBench

The paper BiBench: Benchmarking and Analyzing Network Binarization (ICML 2023) a rigorously designed benchmark with in-depth analysis for network binarization. For details, please refer to:

BiBench: Benchmarking and Analyzing Network Binarization [Paper] [Project]

Haotong Qin, Mingyuan Zhang, Yifu Ding, Aoyu Li, Zhongang Cai, Ziwei Liu, Fisher Yu, Xianglong Liu.

<details><summary>Bibtex</summary><pre><code>@inproceedings{qin2023bibench, title={BiBench: Benchmarking and Analyzing Network Binarization}, author={Qin, Haotong and Zhang, Mingyuan and Ding, Yifu and Li, Aoyu and Cai, Zhongang and Liu, Ziwei and Yu, Fisher and Liu, Xianglong}, booktitle={International Conference on Machine Learning (ICML)}, year={2023} }</code></pre></details>

survey

MQBench

The paper MQBench: Towards Reproducible and Deployable Model Quantization Benchmark (NeurIPS 2021) is a benchmark and framework for evaluating the quantization algorithms under real-world hardware deployments. For details, please refer to:

MQBench: Towards Reproducible and Deployable Model Quantization Benchmark [Paper] [Project]

Yuhang Li, Mingzhu Shen, Jian Ma, Yan Ren, Mingxin Zhao, Qi Zhang, Ruihao Gong, Fengwei Yu, Junjie Yan.

<details><summary>Bibtex</summary><pre><code>@article{2021MQBench, title = "MQBench: Towards Reproducible and Deployable Model Quantization Benchmark", author= "Yuhang Li* and Mingzhu Shen* and Jian Ma* and Yan Ren* and Mingxin Zhao* and Qi Zhang* and Ruihao Gong and Fengwei Yu and Junjie Yan", journal = "https://openreview.net/forum?id=TUplOmF8DsM", year = "2021" }</code></pre></details>

survey

Survey_Papers

Survey_of_Binarization

Our survey paper Binary Neural Networks: A Survey (Pattern Recognition) is a comprehensive survey of recent progress in binary neural networks. For details, please refer to:

Binary Neural Networks: A Survey [Paper] [Blog]

Haotong Qin, Ruihao Gong, Xianglong Liu*, Xiao Bai, Jingkuan Song, and Nicu Sebe.

<details><summary>Bibtex</summary><pre><code>@article{Qin:pr20_bnn_survey, title = "Binary neural networks: A survey", author = "Haotong Qin and Ruihao Gong and Xianglong Liu and Xiao Bai and Jingkuan Song and Nicu Sebe", journal = "Pattern Recognition", volume = "105", pages = "107281", year = "2020" }</code></pre></details>

survey

Survey_of_Quantization

The survey paper A Survey of Quantization Methods for Efficient Neural Network Inference (ArXiv) is a comprehensive survey of recent progress in quantization. For details, please refer to:

A Survey of Quantization Methods for Efficient Neural Network Inference [Paper]

Amir Gholami* , Sehoon Kim* , Zhen Dong* , Zhewei Yao* , Michael W. Mahoney, Kurt Keutzer. (* Equal contribution)

<details><summary>Bibtex</summary><pre><code>@misc{gholami2021survey, title={A Survey of Quantization Methods for Efficient Neural Network Inference}, author={Amir Gholami and Sehoon Kim and Zhen Dong and Zhewei Yao and Michael W. Mahoney and Kurt Keutzer}, year={2021}, eprint={2103.13630}, archivePrefix={arXiv}, primaryClass={cs.CV} }</code></pre></details>

Papers

Keywords: qnn: quantized neural networks | bnn: binarized neural networks | hardware: hardware deployment | snn: spiking neural networks | other


2024

2023

2022

2021

2020

2019

2018

2017

2016

2015

Star History

Star History Chart