openfl
Collaborative Learning Framework
A Python framework for collaborative machine learning without sharing sensitive data
An Open Framework for Federated Learning.
738 stars
22 watching
208 forks
Language: Jupyter Notebook
last commit: 2 months ago
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collaborative-learningdeep-learningdistributed-computingdistributed-learningfedavgfedcurvfederated-analyticsfederated-deep-learningfederated-learningfederated-learning-frameworkfedoptfedproxkeras-federated-learningmachine-learningopenflprivacy-preserving-machine-learningpythonpytorch-federated-learningsecure-computationtensorflow-federated-learning
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