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TEE-based Selective Testing of Local Workers in Federated Learning Systems

4 November 2021
Wensheng Zhang
Trent Muhr
    FedML
ArXiv (abs)PDFHTML
Abstract

This paper considers a federated learning system composed of a central coordinating server and multiple distributed local workers, all having access to trusted execution environments (TEEs). In order to ensure that the untrusted workers correctly perform local learning, we propose a new TEE-based approach that also combines techniques from applied cryptography, smart contract and game theory. Theoretical analysis and implementation-based evaluations show that, the proposed approach is secure, efficient and practical.

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