EasyFL_with_PgFed

shellmiao b3971f95df fix: fix error 11 ماه پیش
applications b3971f95df fix: fix error 11 ماه پیش
docker f919f838c2 [Release] v0.1.0 2 سال پیش
docs c17c736a64 feat: add implementation of iccv2023 1 سال پیش
easyfl cc550c43cc fix: fix id 11 ماه پیش
examples f919f838c2 [Release] v0.1.0 2 سال پیش
kubernetes f919f838c2 [Release] v0.1.0 2 سال پیش
protos f919f838c2 [Release] v0.1.0 2 سال پیش
requirements ce4bffeb81 [Fix] Remove dependency on tqdm version 2 سال پیش
.dockerignore f919f838c2 [Release] v0.1.0 2 سال پیش
.gitignore 20189eced1 [Feature] Federated Unsupervised Person Re-identification (#14) 1 سال پیش
.readthedocs.yaml f919f838c2 [Release] v0.1.0 2 سال پیش
LICENSE f919f838c2 [Release] v0.1.0 2 سال پیش
Makefile f919f838c2 [Release] v0.1.0 2 سال پیش
README.md c17c736a64 feat: add implementation of iccv2023 1 سال پیش
requirements.txt f919f838c2 [Release] v0.1.0 2 سال پیش
setup.cfg f919f838c2 [Release] v0.1.0 2 سال پیش
setup.py f919f838c2 [Release] v0.1.0 2 سال پیش

README.md

EasyFL: A Low-code Federated Learning Platform

[![PyPI](https://img.shields.io/pypi/v/easyfl)](https://pypi.org/project/easyfl) [![docs](https://img.shields.io/badge/docs-latest-blue)](https://easyfl.readthedocs.io/en/latest/) [![license](https://img.shields.io/github/license/easyfl-ai/easyfl.svg)](https://github.com/easyfl-ai/easyfl/blob/master/LICENSE) [![maintained](https://img.shields.io/badge/Maintained%3F-YES-yellow.svg)](https://github.com/easyfl-ai/easyfl/graphs/commit-activity) [![Downloads](https://pepy.tech/badge/easyfl)](https://pepy.tech/project/easyfl) [📘 Documentation](https://easyfl.readthedocs.io/en/latest/) | [🛠️ Installation](https://easyfl.readthedocs.io/en/latest/get_started.html)

Introduction

EasyFL is an easy-to-use federated learning (FL) platform based on PyTorch. It aims to enable users with various levels of expertise to experiment and prototype FL applications with little/no coding.

You can use it for:

  • FL Research on algorithm and system
  • Proof-of-concept (POC) of new FL applications
  • Prototype of industrial applications
  • Learning FL implementations

We currently focus on horizontal FL, supporting both cross-silo and cross-device FL. You can learn more about federated learning from these resources.

Major Features

Easy to Start

EasyFL is easy to install and easy to learn. It does not have complex dependency requirements. You can run EasyFL on your personal computer with only three lines of code (Quick Start).

Out-of-the-box Functionalities

EasyFL provides many out-of-the-box functionalities, including datasets, models, and FL algorithms. With simple configurations, you simulate different FL scenarios using the popular datasets. We support both statistical heterogeneity simulation and system heterogeneity simulation.

Flexible, Customizable, and Reproducible

EasyFL is flexible to be customized according to your needs. You can easily migrate existing CV or NLP applications into the federated manner by writing the PyTorch codes that you are most familiar with.

Multiple Training Modes

EasyFL supports standalone training, distributed training, and remote training. By developing the code once, you can easily speed up FL training with distributed training on multiple GPUs. Besides, you can even deploy it to Kubernetes with Docker using remote training.

Getting Started

You can refer to Get Started for installation and Quick Run for the simplest way of using EasyFL.

For more advanced usage, we provide a list of tutorials on:

Projects & Papers

We have released the source code for the following papers under the applications folder:

:bulb: We will release the source codes of these projects in this repository. Please stay tuned.

We have been doing research on federated learning for several years, the following are our additional publications.

  • EasyFL: A Low-code Federated Learning Platform For Dummies, IEEE Internet-of-Things Journal. [paper]
  • Federated Unsupervised Domain Adaptation for Face Recognition, ICME'22. [paper]
  • Optimizing Federated Unsupervised Person Re-identification via Camera-aware Clustering, MMSP'22. [paper]

Join Our Community

Please join our community on Slack: easyfl.slack.com

We will post updated features and answer questions on Slack.

License

This project is released under the Apache 2.0 license.

Citation

If you use this platform or related projects in your research, please cite this project.

@article{zhuang2022easyfl,
  title={Easyfl: A low-code federated learning platform for dummies},
  author={Zhuang, Weiming and Gan, Xin and Wen, Yonggang and Zhang, Shuai},
  journal={IEEE Internet of Things Journal},
  year={2022},
  publisher={IEEE}
}

Main Contributors

Weiming Zhuang :octocat:
Xin Gan :octocat: