IITM Journal of Information Technology

ISSN (P) 2395-5457 | Single Blind Peer Reviewed Journal

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INSTITUTE OF INNOVATION IN TECHNOLOGY & MANAGEMENT
Affiliated to GGSIPU, NAAC Grade ‘A’, ISO 14001:2015, 17020:2012, 21001:2018 & 50001:2018 Certified,
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Expanding Federated Learning using Distributed Ledger Technologies for Resilience

Narinder K. Seera1, Ms. Harsha Aggarwal2
1Associate Professor, 2Assistant Professor
1,2Institute of Innovation in Technology & Management, Janakpuri, New Delhi 

Abstract:  Federated Learning (FL) has emerged as a distributed platform for machine learning models that ensures users’ data privacy, however trained models are vulnerable to challenges such as unreliable clients, single points of failure (server), data poisoning, and trust issues among clients. To address these issues, DLT (Distributed Ledger Technology) offers resilience by providing transparency among clients, decentralized model aggregation, and tamper-proof transaction recording. Integrating DLT with FL not only ensures secure and verifiable model updates but also enhances fault tolerance through consensus mechanisms. This research is an attempt to explore how blockchain-based DLT architecture can strengthen the resilience of trained models by providing security and reliability in heterogeneous environments. The chapter discusses the components of the DLT-based architecture and how resilience is ensured.

Keywords:  Federated Learning, Distributed Ledgers, Smart Contracts, Blockchain, Model Aggregation

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