APPFL (Advanced Privacy-Preserving Federated Learning) is a Python framework enabling researchers to easily build and benchmark privacy-aware federated learning solutions. It supports flexible algorithm development, differential privacy, secure communications, and runs efficiently on HPC and multi-GPU setups.

Features

  • Implements differential privacy and client authentication
  • Modular plug-and-play aggregation, scheduling, trainers
  • Supports synchronous and asynchronous FL algorithms
  • Multi-GPU training via PyTorch DDP
  • Integrates with MONAI for healthcare workflows
  • Scalable on HPC using MPI/gRPC-based client-server setup

Project Samples

Project Activity

See All Activity >

License

MIT License

Follow Appfl

Appfl Web Site

Other Useful Business Software
Optimize every aspect of hiring with Greenhouse Recruiting Icon
Optimize every aspect of hiring with Greenhouse Recruiting

Hire for what's next.

What’s next for many of us is changing. Your company’s ability to hire great talent is as important as ever – so you’ll be ready for whatever’s ahead. Whether you need to scale your team quickly or improve your hiring process, Greenhouse gives you the right technology, know-how and support to take on what’s next.
Learn More
Rate This Project
Login To Rate This Project

User Reviews

Be the first to post a review of Appfl!

Additional Project Details

Operating Systems

Linux, Mac, Windows

Programming Language

Python

Related Categories

Python Federated Learning Frameworks

Registered

2025-07-15