CRSPApr 5, 2021

Federated Learning Meets Blockchain in Edge Computing: Opportunities and Challenges

arXiv:2104.01776v1578 citations
Originality Highly original
AI Analysis

It proposes a new paradigm for enhancing security and scalability in intelligent mobile edge computing networks, though it is conceptual and incremental on existing technologies.

This article explores the integration of federated learning and blockchain, termed FLchain, to address data privacy and communication overhead issues in mobile edge computing by enabling decentralized, secure AI training without centralized data collection. It identifies key design topics like communication cost and resource allocation, and discusses applications in edge data sharing and caching.

Mobile edge computing (MEC) has been envisioned as a promising paradigm to handle the massive volume of data generated from ubiquitous mobile devices for enabling intelligent services with the help of artificial intelligence (AI). Traditionally, AI techniques often require centralized data collection and training in a single entity, e.g., an MEC server, which is now becoming a weak point due to data privacy concerns and high data communication overheads. In this context, federated learning (FL) has been proposed to provide collaborative data training solutions, by coordinating multiple mobile devices to train a shared AI model without exposing their data, which enjoys considerable privacy enhancement. To improve the security and scalability of FL implementation, blockchain as a ledger technology is attractive for realizing decentralized FL training without the need for any central server. Particularly, the integration of FL and blockchain leads to a new paradigm, called FLchain, which potentially transforms intelligent MEC networks into decentralized, secure, and privacy-enhancing systems. This article presents an overview of the fundamental concepts and explores the opportunities of FLchain in MEC networks. We identify several main topics in FLchain design, including communication cost, resource allocation, incentive mechanism, security and privacy protection. The key solutions for FLchain design are provided, and the lessons learned as well as the outlooks are also discussed. Then, we investigate the applications of FLchain in popular MEC domains, such as edge data sharing, edge content caching and edge crowdsensing. Finally, important research challenges and future directions are also highlighted.

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