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A Reinforcement Learning Environment For Job-Shop Scheduling (2104.03760v1)

Published 8 Apr 2021 in cs.LG, cs.AI, and cs.NE

Abstract: Scheduling is a fundamental task occurring in various automated systems applications, e.g., optimal schedules for machines on a job shop allow for a reduction of production costs and waste. Nevertheless, finding such schedules is often intractable and cannot be achieved by Combinatorial Optimization Problem (COP) methods within a given time limit. Recent advances of Deep Reinforcement Learning (DRL) in learning complex behavior enable new COP application possibilities. This paper presents an efficient DRL environment for Job-Shop Scheduling -- an important problem in the field. Furthermore, we design a meaningful and compact state representation as well as a novel, simple dense reward function, closely related to the sparse make-span minimization criteria used by COP methods. We demonstrate that our approach significantly outperforms existing DRL methods on classic benchmark instances, coming close to state-of-the-art COP approaches.

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Authors (3)
  1. Pierre Tassel (3 papers)
  2. Martin Gebser (34 papers)
  3. Konstantin Schekotihin (22 papers)
Citations (38)

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