Machine Learning for Energy-Performance-aware Scheduling
Abstract
A Bayesian Optimization approach using Gaussian Processes automates scheduling configuration optimization on heterogeneous multi-core systems while approximating the Pareto Frontier for energy-time trade-offs.
In the post-Dennard era, optimizing embedded systems requires navigating complex trade-offs between energy efficiency and latency. Traditional heuristic tuning is often inefficient in such high-dimensional, non-smooth landscapes. In this work, we propose a Bayesian Optimization framework using Gaussian Processes to automate the search for optimal scheduling configurations on heterogeneous multi-core architectures. We explicitly address the multi-objective nature of the problem by approximating the Pareto Frontier between energy and time. Furthermore, by incorporating Sensitivity Analysis (fANOVA) and comparing different covariance kernels (e.g., Matérn vs. RBF), we provide physical interpretability to the black-box model, revealing the dominant hardware parameters driving system performance.
Community
Machine Learning for Energy-Performance-aware Scheduling.
@misc
{HuShi2026mlcpusched,
title={Machine Learning for Energy-Performance-aware Scheduling},
author={Zheyuan Hu and Yifei Shi},
year={2026},
eprint={2601.23134},
archivePrefix={arXiv},
primaryClass={cs.AR},
url={https://arxiv.org/abs/2601.23134},
}
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