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Further Explorations in State-Space Search for Optimal Task Scheduling

机译:状态空间搜索的进一步探索优化任务调度

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The problem of task scheduling with communication delays is NP-hard. State-space search algorithms such as A* have been shown to be a promising approach to solving this problem optimally. A recently proposed state-space model for task scheduling, known as Allocation-Ordering (AO), allows state-space search methods to be applied to the problem of optimal task scheduling without the need for duplicate avoidance mechanisms. This paper examines the performance of two parallel search algorithms when applied to both the AO model and the older ELS state-space model. This suggests that its use may provide an advantage with many different variations on state-space search. This paper explores the application of AO to some of these variants, namely depth-first branch-and-bound (DFBnB) and parallel search. We also present an update to the formulation of AO that prevents invalid states from being considered during a search. An evaluation shows that AO gives a clear advantage to DFBnB and allows greater scalability for parallel search algorithms. The update to AO's formulation has no significant impact on performance either way.
机译:具有通信延迟的任务调度问题是NP-Hard。状态空间搜索算法如*,已被证明是一个有希望的方法来解决这个问题的最佳方法。最近提出的任务调度的状态空间模型,称为分配排序(AO),允许状态空间搜索方法应用于最佳任务调度的问题,而无需重复避免机制。本文在应用于AO模型和较旧的ELS状态空间模型时检查两个并行搜索算法的性能。这表明其使用可以提供具有对状态空间搜索的许多不同变化的优点。本文探讨了AO对这些变体中的一些,即深度第一分支(DFBNB)和并行搜索。我们还提供了一个更新的AO,其防止在搜索期间考虑无效状态。评估表明,AO对DFBNB提供了明显的优势,并允许更大的并行搜索算法可扩展性。对AO的制定的更新对任何一种方式都没有显着影响。

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