Learning-Augmented Online Scheduling with Parsimonious Preemption
摘要
Learning-augmented algorithms have emerged as a powerful paradigm to surpass traditional worst-case lower bounds by integrating potentially noisy predictions. While this framework has seen success in online scheduling, existing work primarily optimizes job latency while relying on frequent, ``blind'' preemptions. This ignores the fundamental trade-off between algorithmic performance and preemption complexity. We provide the first systematic study of learning-augmented scheduling that curbs preemption while optimizing latency. We establish that the gap between theoretical latency bounds and preemption overhead can be bridged with solid analytical foundations. Our results include -competitive algorithms for single and unrelated parallel machines with only preemptions per job under accurate predictions, with overhead scaling logarithmically with the prediction error. By providing the first bounded-preemption guarantees for unrelated and malleable machines, we extend the theoretical reach of the learning-augmented framework to more constrained and realistic settings. Finally, our algorithms are validated through experiments.
引用
@article{arxiv.2605.23255,
title = {Learning-Augmented Online Scheduling with Parsimonious Preemption},
author = {Mugen Blue and Sungjin Im and Alexander Lindermayr},
journal= {arXiv preprint arXiv:2605.23255},
year = {2026}
}