Federated Edge Intelligence and Edge Caching Mechanisms

Author:

Karras Aristeidis1ORCID,Karras Christos1ORCID,Giotopoulos Konstantinos C.2ORCID,Tsolis Dimitrios3ORCID,Oikonomou Konstantinos4ORCID,Sioutas Spyros1ORCID

Affiliation:

1. Computer Engineering and Informatics Department, University of Patras, 26504 Patras, Greece

2. Department of Management Science and Technology, University of Patras, 26334 Patras, Greece

3. Department of History and Archaeology, University of Patras, 26504 Patras, Greece

4. Department of Informatics, Ionian University, 49100 Kerkira, Greece

Abstract

Federated learning (FL) has emerged as a promising technique for preserving user privacy and ensuring data security in distributed machine learning contexts, particularly in edge intelligence and edge caching applications. Recognizing the prevalent challenges of imbalanced and noisy data impacting scalability and resilience, our study introduces two innovative algorithms crafted for FL within a peer-to-peer framework. These algorithms aim to enhance performance, especially in decentralized and resource-limited settings. Furthermore, we propose a client-balancing Dirichlet sampling algorithm with probabilistic guarantees to mitigate oversampling issues, optimizing data distribution among clients to achieve more accurate and reliable model training. Within the specifics of our study, we employed 10, 20, and 40 Raspberry Pi devices as clients in a practical FL scenario, simulating real-world conditions. The well-known FedAvg algorithm was implemented, enabling multi-epoch client training before weight integration. Additionally, we examined the influence of real-world dataset noise, culminating in a performance analysis that underscores how our novel methods and research significantly advance robust and efficient FL techniques, thereby enhancing the overall effectiveness of decentralized machine learning applications, including edge intelligence and edge caching.

Funder

European Regional Development Fund of the European Union and Greek national funds

Publisher

MDPI AG

Subject

Information Systems

Reference63 articles.

1. Advances and open problems in federated learning;Kairouz;Found. Trends Mach. Learn.,2021

2. Achieving security and privacy in federated learning systems: Survey, research challenges and future directions;Flanagan;Eng. Appl. Artif. Intell.,2021

3. Federated machine learning: Concept and applications;Yang;ACM Trans. Intell. Syst. Technol. (TIST),2019

4. McMahan, B., Moore, E., Ramage, D., Hampson, S., and y Arcas, B.A. (2017, January 6–11). Communication-efficient learning of deep networks from decentralized data. Proceedings of the Artificial Intelligence and Statistics (PMLR 2017), Sydney, NSW, Australia.

5. Ensemble distillation for robust model fusion in federated learning;Lin;Adv. Neural Inf. Process. Syst.,2020

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