1 Department of Electrical and Information Engineering, College of Engineering, Covenant University, Ota, Ogun State, Nigeria.
2 Department of Computer Science, School of Computing and Engineering Sciences, Babcock University Ilishan-Remo, Ogun, Nigeria.
3 School of Geography and Natural Sciences, Northumbria University, United Kingdom.
4 College of Business, Southern New Hampshire University, Manchester, New Hampshire, USA.
5 College of Business, Lamar University, Beaumont,Texas, U. S. A.
International Journal of Science and Research Archive, 2026, 18(01), 499-512
Article DOI: 10.30574/ijsra.2026.18.1.3301
Received on 05 December 2025; revised on 12 January 2026; accepted on 14 January 2026
The convergence of federated learning and hybrid cloud computing represents a transformative paradigm for privacy-preserving data intelligence. This review examines federated learning implementations in hybrid cloud environments, analyzing security mechanisms, privacy-preserving capabilities, and scalability challenges. We explore architectural frameworks and deployment strategies while analyzing security and privacy challenges from technical, organizational, and regulatory perspectives. The study highlights synergistic benefits of combining federated learning with hybrid cloud infrastructure and discusses emerging trends including homomorphic encryption, differential privacy, and blockchain integration. Through comprehensive literature analysis of publications from 2016 to 2024, key findings reveal that federated learning in hybrid clouds offers unprecedented opportunities for privacy-preserving analytics while introducing unique challenges in communication efficiency and cross-environment orchestration. Organizations can effectively leverage federated learning by implementing layered security architectures and maintaining continuous adaptation to evolving privacy regulations. This analysis provides valuable insights for practitioners and researchers navigating the intersection of federated learning and hybrid cloud computing.
Federated Learning; Hybrid Cloud Computing; Privacy-Preserving Machine Learning; Data Intelligence; Distributed Learning; Edge Computing; Security Architectures
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Emmanuel Ezeakile, Abdulateef Oluwakayode Disu, Cynthia Alabi, Toyosi Mustapha and Moses Oluwasegun Odewale. Federated learning for privacy-preserving, secure and scalable data intelligence in hybrid cloud systems. International Journal of Science and Research Archive, 2026, 18(01), 499-512. Article DOI: https://doi.org/10.30574/ijsra.2026.18.1.3301.
Copyright © 2026 Author(s) retain the copyright of this article. This article is published under the terms of the Creative Commons Attribution Liscense 4.0







