fedn
Federated Learning Framework
An open source federated learning framework designed to be secure, scalable and easy-to-use for enterprise environments
FEDn: An enterprise-ready open source federated learning framework. This repository contains the Python framework, CLI and API.
145 stars
7 watching
36 forks
Language: Python
last commit: 2 months ago edge-aiedge-mlfederated-learningfederated-machine-learningfedmlfleet-learningkeras-tensorflowpytorchscikit-learntensorflow
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