Federated Learning homomorphic encryption sample for API
Last updated: Nov 27, 2024
Federated Learning homomorphic encryption sample for API
Download and review sample files that show how to run a Federated Learning experiment with Fully Homomorphic Encryption (FHE).
Homomorphic encryption
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FHE is an advanced, optional method to provide additional security and privacy for your data by encrypting data sent between parties and the aggregator. This method still creates a computational result that is the same as if the computations
were done on unencrypted data. For more details on applying homomorphic encryption in Federated Learning, see Applying encryption.
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