English

AdaptSFL: Adaptive Split Federated Learning in Resource-constrained Edge Networks

Machine Learning 2025-06-05 v4 Artificial Intelligence Distributed, Parallel, and Cluster Computing

Abstract

The increasing complexity of deep neural networks poses significant barriers to democratizing them to resource-limited edge devices. To address this challenge, split federated learning (SFL) has emerged as a promising solution by of floading the primary training workload to a server via model partitioning while enabling parallel training among edge devices. However, although system optimization substantially influences the performance of SFL under resource-constrained systems, the problem remains largely uncharted. In this paper, we provide a convergence analysis of SFL which quantifies the impact of model splitting (MS) and client-side model aggregation (MA) on the learning performance, serving as a theoretical foundation. Then, we propose AdaptSFL, a novel resource-adaptive SFL framework, to expedite SFL under resource-constrained edge computing systems. Specifically, AdaptSFL adaptively controls client-side MA and MS to balance communication-computing latency and training convergence. Extensive simulations across various datasets validate that our proposed AdaptSFL framework takes considerably less time to achieve a target accuracy than benchmarks, demonstrating the effectiveness of the proposed strategies.

Keywords

Cite

@article{arxiv.2403.13101,
  title  = {AdaptSFL: Adaptive Split Federated Learning in Resource-constrained Edge Networks},
  author = {Zheng Lin and Guanqiao Qu and Wei Wei and Xianhao Chen and Kin K. Leung},
  journal= {arXiv preprint arXiv:2403.13101},
  year   = {2025}
}

Comments

16 pages, 12 figures

R2 v1 2026-06-28T15:26:25.785Z