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GAPSL: A Gradient-Aligned Parallel Split Learning on Heterogeneous Data

Machine Learning 2026-03-20 v1

Abstract

The increasing complexity of neural networks poses significant challenges for democratizing FL on resource?constrained client devices. Parallel split learning (PSL) has emerged as a promising solution by offloading substantial computing workload to a server via model partitioning, shrinking client-side computing load, and eliminating the client-side model aggregation for reduced communication and deployment costs. Since PSL is aggregation-free, it suffers from severe training divergence stemming from gradient directional inconsistency across clients. To address this challenge, we propose GAPSL, a gradient-aligned PSL framework that comprises two key components: leader gradient identification (LGI) and gradient direction alignment (GDA). LGI dynamically selects a set of directionally consistent client gradients to construct a leader gradient that captures the global convergence trend. GDA employs a direction-aware regularization to align each client's gradient with the leader gradient, thereby mitigating inter-device gradient directional inconsistency and enhancing model convergence. We evaluate GAPSL on a prototype computing testbed. Extensive experiments demonstrate that GAPSL consistently outperforms state-of-the-art benchmarks in training accuracy and latency.

Keywords

Cite

@article{arxiv.2603.18540,
  title  = {GAPSL: A Gradient-Aligned Parallel Split Learning on Heterogeneous Data},
  author = {Zheng Lin and Ons Aouedi and Wei Ni and Symeon Chatzinotas and Xianhao Chen},
  journal= {arXiv preprint arXiv:2603.18540},
  year   = {2026}
}

Comments

13 pages, 21 figures