Abstract
This paper proposes a novel three-tier architecture for federated learning to optimize edge computing environments. The proposed architecture addresses the challenges associated with client data heterogeneity and computational constraints. It introduces a scalable, privacy-preserving framework that enhances the efficiency of distributed machine learning. Through experimentation, the paper demonstrates the architecture’s capability to manage non-IID data sets more effectively than traditional federated learning models. Additionally, the paper highlights the potential of this innovative approach to significantly improve model accuracy, reduce communication overhead, and facilitate broader adoption of federated learning technologies.
Original language | English |
---|---|
Title of host publication | IET 6G and Future Networks Conference (IET 6G 2024) |
Pages | 62-68 |
Number of pages | 7 |
Volume | 2024 |
Edition | 4 |
DOIs | |
Publication status | Published - 19 Jul 2024 |
Event | IET 6G and Future Networks Conference, IET 6G 2024 - London, United Kingdom Duration: 24 Jun 2024 → 25 Jun 2024 |
Publication series
Name | IET Conference Proceedings |
---|---|
Publisher | Institution of Engineering and Technology |
Conference
Conference | IET 6G and Future Networks Conference, IET 6G 2024 |
---|---|
Country/Territory | United Kingdom |
City | London |
Period | 24/06/24 → 25/06/24 |
Bibliographical note
Publisher Copyright:© The Institution of Engineering & Technology 2024.
Keywords
- Convergence
- Edge Computing
- Federated Learning
- Multiglobal Models
- Non-Iid