Abstract

This lecture overviews  that has many applications in distributed Machine Learning and privacy protection.  It covers the following topics in detail: Centralized/Decentralized Learning, Federated Learning principles and platforms, Federated Learning Algorithms (Federated Averaging Algorithm, FedProx algorithm, FedMA algorithm) and Privacy Principles & Technologies, notably: Differential Privacy, Homomorphic Encryption, Zero-knowledge Proof Technologies, Secure Multiparty Computation.

Star-like Federated Learning topology.

Homomorphic Encryption.

Federated-Learning-v1.2-Summary

Understanding Questionnaire

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