Naseh, D. orcid.org/0009-0006-0767-7622, Bozorgchenani, A. orcid.org/0000-0003-1360-6952, Shinde, S.S. et al. (1 more author) (2026) Unlocking distributed intelligence: A comprehensive survey on federated split learning’s evolution, challenges, and future frontiers. Computer Networks, 285. 112402. ISSN: 1389-1286
Abstract
Federated Split Learning (FSL) has emerged as a transformative paradigm that synergizes the parallel processing and scalability of Federated Learning (FL) with the computational efficiency and enhanced privacy of Split Learning (SL). This comprehensive survey provides a systematic exploration of FSL, beginning with a detailed taxonomy of Distributed Machine Learning (DML) paradigms, tracing the progression from foundational concepts to advanced frameworks such as Federated Split Transfer Learning (FSTL) and Generalized Federated Split Transfer Learning (GFSTL). It then delves into the core challenges inherent to FSL, including privacy and security risks, system and data heterogeneity, computational and system constraints, communication overhead, and model optimization complexities. The heart of the survey presents a detailed categorization and analysis of FSL’s diverse applications across key domains, including the Internet of Things (IoT) and Edge Computing (EC), wireless networks, healthcare, vehicular networks, Large Language Models (LLMs), and Earth Observation (EO). To ground this research, the survey further discusses standardized evaluation methodologies and implementation frameworks, followed by a quantitative visualization of survey data and research trends. The work concludes by synthesizing critical research gaps and outlining promising future directions. Unlike existing surveys that focus on isolated aspects, this work uniquely bridges challenges, solutions, and applications through a unified framework, incorporating network-specific analysis and quantitative trend visualization. By synthesizing insights from over 100 recent research articles and providing a critical analysis of evaluation methodologies, this survey offers an essential roadmap for researchers and practitioners developing scalable, efficient, and privacy-aware distributed intelligence for the 6G and AI era.
Metadata
| Item Type: | Article |
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| Authors/Creators: |
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| Copyright, Publisher and Additional Information: | © 2026 The Authors. This is an open access article under the terms of the Creative Commons Attribution License (CC-BY 4.0), which permits unrestricted use, distribution and reproduction in any medium, provided the original work is properly cited. |
| Keywords: | Federated split learning; Distributed machine learning; Edge computing; Internet of Things; Wireless networks; Healthcare analytics; Vehicular networks; Large language models; 6G networks; Privacy preservation |
| Dates: |
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| Institution: | The University of Leeds |
| Academic Units: | The University of Leeds > Faculty of Engineering & Physical Sciences (Leeds) > School of Electronic & Electrical Engineering (Leeds) The University of Leeds > Faculty of Engineering & Physical Sciences (Leeds) > School of Computing (Leeds) |
| Date Deposited: | 02 Jun 2026 09:21 |
| Last Modified: | 02 Jun 2026 09:21 |
| Status: | Published |
| Publisher: | Elsevier |
| Identification Number: | 10.1016/j.comnet.2026.112402 |
| Open Archives Initiative ID (OAI ID): | oai:eprints.whiterose.ac.uk:241546 |
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