Trust Driven On-Demand Scheme for Client Deployment in Federated Learning
Mario Chahoud, Azzam Mourad, Hadi Otrok, Jamal Bentahar, Mohsen, Guizani

TL;DR
This paper proposes a trust-based client selection scheme for federated learning that leverages containerization and genetic algorithms to enhance security, stability, and efficiency by identifying and isolating malicious clients.
Contribution
It introduces a novel trust mechanism integrated into the on-demand client deployment process, utilizing Docker and genetic algorithms for secure, reliable federated learning.
Findings
Trust-based client selection reduces malicious disruptions.
Docker monitoring enhances participant validation.
Dynamic trust adjustment improves system stability.
Abstract
Containerization technology plays a crucial role in Federated Learning (FL) setups, expanding the pool of potential clients and ensuring the availability of specific subsets for each learning iteration. However, doubts arise about the trustworthiness of devices deployed as clients in FL scenarios, especially when container deployment processes are involved. Addressing these challenges is important, particularly in managing potentially malicious clients capable of disrupting the learning process or compromising the entire model. In our research, we are motivated to integrate a trust element into the client selection and model deployment processes within our system architecture. This is a feature lacking in the initial client selection and deployment mechanism of the On-Demand architecture. We introduce a trust mechanism, named "Trusted-On-Demand-FL", which establishes a relationship of…
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Taxonomy
TopicsCryptography and Data Security · Privacy-Preserving Technologies in Data · Cloud Data Security Solutions
