FederatedScope
Federated Learning Platform
A comprehensive platform for federated learning, providing an event-driven architecture and flexible customization for various tasks in academia and industry.
An easy-to-use federated learning platform
1k stars
15 watching
214 forks
Language: Python
last commit: 7 months ago federated-learningmachine-learningpytorch
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