Fast and Robust Resource-Constrained Scheduling with Graph Neural Networks

F. Teichteil-Königsbuch, G. Povéda, Guillermo González de Garibay Barba, Tim Luchterhand, S. Thiébaux
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Abstract

Resource-Constrained Project Scheduling Problems (RCPSPs) are NP-complete, which makes it challenging to efficiently solve large instances and robustify solutions in the presence of uncertainty. To remedy this, we learn to efficiently mimic the solutions produced by Constraint Programming (CP) solver, using a Graph Neural Network (GNN) architecture designed to capture the structure of RCPSPs. Since the GNN solution may violate constraints, we ensure schedule feasibility at inference time by extracting the task ordering from the GNN schedule and post-processing it with the well-known Schedule Generation Scheme (SGS). We find that SIREN, the resulting algorithm, produces schedules that are of higher quality than those produced by the CP solver within the same computation time budget. The speed and solution quality of SIREN make it suitable as a component of an on-line scenario-based optimisation procedure for RCPSPs with stochastic durations. This leads to the SERENE system, which robustly selects, in real-time, the best next tasks to start in order to minimise the average makespan over the scenarios. Empirically, SERENE achieves better average makespan over different realisations of uncertainty than deterministic algorithms that continuously reschedule on the basis of either the worst, best or average task durations.
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基于图神经网络的快速鲁棒资源约束调度
资源约束项目调度问题(rcpsp)是np完全的,这使得在存在不确定性的情况下有效求解大型实例和鲁棒化解决方案具有挑战性。为了解决这个问题,我们学习有效地模拟约束规划(CP)求解器产生的解决方案,使用旨在捕获rcpsp结构的图神经网络(GNN)架构。由于GNN解决方案可能违反约束,我们通过从GNN调度中提取任务顺序并使用众所周知的调度生成方案(SGS)进行后处理来确保调度在推理时的可行性。我们发现,在相同的计算时间预算内,结果算法SIREN产生的调度质量比CP求解器产生的调度质量高。SIREN的速度和溶液质量使其适合作为具有随机持续时间的rcpsp的在线基于场景的优化程序的组成部分。这就产生了SERENE系统,它可以实时地选择最好的下一个任务来开始,以最小化场景的平均完工时间。根据经验,与确定性算法相比,SERENE在不同的不确定性实现中获得了更好的平均完工时间,确定性算法根据最差、最佳或平均任务持续时间不断重新调度。
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