FATE
Data Collaboration Platform
Enables secure collaboration on data among multiple parties while protecting privacy and security
An Industrial Grade Federated Learning Framework
6k stars
138 watching
2k forks
Language: Python
last commit: 3 months ago
Linked from 2 awesome lists
algorithmfatefederated-learningmachine-learningprivacy-preserving
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