NICCLGFeb 6

Makespan Minimization in Split Learning: From Theory to Practice

arXiv:2602.06693v1h-index: 26
Originality Incremental advance
AI Analysis

This addresses the challenge of efficient distributed machine learning for IoT systems with computational constraints, though it is incremental as it builds on existing work.

The paper tackles the problem of minimizing training time in split learning for heterogeneous IoT devices by optimizing client-helper assignment and task scheduling, achieving a 5-approximation algorithm for homogeneous tasks and developing a heuristic that outperforms prior methods in heterogeneous settings.

Split learning recently emerged as a solution for distributed machine learning with heterogeneous IoT devices, where clients can offload part of their training to computationally-powerful helpers. The core challenge in split learning is to minimize the training time by jointly devising the client-helper assignment and the schedule of tasks at the helpers. We first study the model where each helper has a memory cardinality constraint on how many clients it may be assigned, which represents the case of homogeneous tasks. Through complexity theory, we rule out exact polynomial-time algorithms and approximation schemes even for highly restricted instances of this problem. We complement these negative results with a non-trivial polynomial-time 5-approximation algorithm. Building on this, we then focus on the more general heterogeneous task setting considered by Tirana et al. [INFOCOM 2024], where helpers have memory capacity constraints and clients have variable memory costs. In this case, we prove that, unless P=NP, the problem cannot admit a polynomial-time approximation algorithm for any approximation factor. However, by adapting our aforementioned 5-approximation algorithm, we develop a novel heuristic for the heterogeneous task setting and show that it outperforms heuristics from prior works through extensive experiments.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes