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An Update on the Comparison of MIP, CP and Hybrid Approaches for Mixed Resource Allocation and Scheduling

机译:MIP,CP和混合方法用于混合资源分配和调度的比较方法的更新

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We consider a well known resource allocation and scheduling problem for which different approaches like mixed-integer programming (MIP), constraint programming (CP), constraint integer programming (CIP), logic-based Benders decompositions (LBBD) and SAT-modulo theories (SMT) have been proposed and experimentally compared in the last decade. Thanks to the recent improvements in CP Optimizer, a commercial CP solver for solving generic scheduling problems, we show that a standalone tiny CP model can out-perform all previous approaches and close all the 335 instances of the benchmark. The article explains which components of the automatic search of CP Optimizer are responsible for this success. We finally propose an extension of the original benchmark with larger and more challenging instances.
机译:我们考虑一个众所周知的资源分配和调度问题,针对该问题,采用了多种方法,例如混合整数规划(MIP),约束规划(CP),约束整数规划(CIP),基于逻辑的Benders分解(LBBD)和SAT模理论( SMT)已在过去十年中提出并进行了实验比较。得益于用于解决通用调度问题的商用CP解算器CP Optimizer的最新改进,我们证明了独立的小型CP模型可以胜过所有以前的方法,并且可以关闭基准的335个实例。本文介绍了CP Optimizer自动搜索的哪些组件是成功的原因。我们最终建议在更大和更具挑战性的情况下扩展原始基准。

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