Safe Learning for Near Optimal Scheduling

Geeraerts, Gilles, Guha, Shibashis, Pérez, Guillermo A., Raskin, Jean-François

arXiv.org Artificial Intelligence 

In this paper, we investigate the combination of synthesis techniques and learning techniques to obtain safe and near optimal schedulers for a preemptible task scheduling problem. We study both model-based learning techniques with PAC guarantees and model-free learning techniques based on shielded deep Q-learning. The new learning algorithms have been implemented to conduct experimental evaluations.

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