Rosetta
AI privacy framework
Provides privacy-preserving solutions for artificial intelligence without requiring expertise in cryptography or trusted execution environments.
A Privacy-Preserving Framework Based on TensorFlow
566 stars
29 watching
110 forks
Language: C++
last commit: almost 3 years ago
Linked from 3 awesome lists
federated-learninghomomorphic-encryptionprivacy-preserving-machine-learningsecure-computationsecure-multiparty-computationzero-knowledge-proofs
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