2023
DOI: 10.48550/arxiv.2302.13941
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A Reinforcement Learning Approach for Scheduling Problems With Improved Generalization Through Order Swapping

Abstract: The scheduling of production resources (such as associating jobs to machines) plays a vital role for the manufacturing industry not only for saving energy but also for increasing the overall efficiency. Among the different job scheduling problems, the Job Shop Scheduling Problem (JSSP) is addressed in this work. JSSP falls into the category of NP-hard Combinatorial Optimization Problem (COP), in which solving the problem through exhaustive search becomes unfeasible. Simple heuristics such as First In, First Ou… Show more

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