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ScheduleNet: Learn to solve multi-agent scheduling problems with reinforcement learning

2021-06-06 07:08:58
Junyoung Park, Sanjar Bakhtiyar, Jinkyoo Park

Abstract

We propose ScheduleNet, a RL-based real-time scheduler, that can solve various types of multi-agent scheduling problems. We formulate these problems as a semi-MDP with episodic reward (makespan) and learn ScheduleNet, a decentralized decision-making policy that can effectively coordinate multiple agents to complete tasks. The decision making procedure of ScheduleNet includes: (1) representing the state of a scheduling problem with the agent-task graph, (2) extracting node embeddings for agent and tasks nodes, the important relational information among agents and tasks, by employing the type-aware graph attention (TGA), and (3) computing the assignment probability with the computed node embeddings. We validate the effectiveness of ScheduleNet as a general learning-based scheduler for solving various types of multi-agent scheduling tasks, including multiple salesman traveling problem (mTSP) and job shop scheduling problem (JSP).

Abstract (translated)

URL

https://arxiv.org/abs/2106.03051

PDF

https://arxiv.org/pdf/2106.03051.pdf


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