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
Stop Cyber Threats with VM-Series Next-Gen Firewall on Azure Icon
Stop Cyber Threats with VM-Series Next-Gen Firewall on Azure

Native application identity and user-based security for your Azure cloud

Gain integrated visibility across all traffic in a single pass. Deploy Palo Alto Networks VM-Series to determine application identity and content while automating security policy updates via rich APIs.
Get a free trial
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