AI RESEARCH

Scheduling That Speaks: An Interpretable Programmatic Reinforcement Learning Framework

arXiv CS.LG

ArXi:2605.18454v1 Announce Type: new Deep reinforcement learning (DRL) has recently emerged as a promising approach to solve combinatorial optimization problems such as job shop scheduling. However, the policies learned by DRL are typically represented by deep neural networks (DNNs), whose opaque neural architectures and non-interpretable policy decisions can lead to critical trust and usability concerns for human decision makers. In addition, the computational requirements of DNNs can further hinder practical deployment in resource constrained environments.