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JAIT 2026 Vol.17(2): 378-389
doi: 10.12720/jait.17.2.378-389

Benchmarking Federated Learning in Edge Computing Environments: A Systematic Review and Performance Evaluation

Sales G. Aribe Jr. * and Gil Nicholas T. Cagande
Information Technology Department, Bukidnon State University, Malaybalay City, Philippines
Email: sg.aribe@buksu.edu.ph (S.G.A.J.); gilcagande@buksu.edu.ph (G.N.T.C.)
*Corresponding author

Manuscript received September 22, 2025; revised October 17, 2025; accepted November 27, 2025; published February 23, 2026.

Abstract—Federated Learning (FL) has emerged as a transformative approach for distributed machine learning, particularly in edge computing environments where data privacy, low latency, and bandwidth efficiency are critical. This paper presents a systematic review and performance evaluation of FL techniques tailored for edge computing. It categorizes state-of-the-art methods into four dimensions: optimization strategies, communication efficiency, privacy-preserving mechanisms, and system architecture. Using benchmarking datasets such as MNIST, CIFAR-10, FEMNIST, and Shakespeare, it assesses five leading FL algorithms across key performance metrics including accuracy, convergence time, communication overhead, energy consumption, and robustness to non-Independent and Identically Distributed (IID) data. Results indicate that SCAFFOLD achieves the highest accuracy (0.90) and robustness, while Federated Averaging (FedAvg) excels in communication and energy efficiency. Visual insights are provided by a taxonomy diagram, dataset distribution chart, and a performance matrix. Problems including data heterogeneity, energy limitations, and repeatability still exist despite advancements. To enable the creation of more robust and scalable FL systems for edge-based intelligence, this analysis identifies existing gaps and provides an organized research agenda in the future.
 
Keywords—edge computing, Federated Learning (FL), machine learning, non-Independent and Identically Distributed (IID) data, privacy reservation

Cite: Sales G. Aribe Jr. and Gil Nicholas T. Cagande, "Benchmarking Federated Learning in Edge Computing Environments: A Systematic Review and Performance Evaluation," Journal of Advances in Information Technology, Vol. 17, No. 2, pp. 378-389, 2026. doi: 10.12720/jait.17.2.378-389

Copyright © 2026 by the authors. This is an open access article distributed under the Creative Commons Attribution License which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited (CC BY 4.0).

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