Stochastic Cellular Automata Model to Reduce Rule Space Cardinality Applied to Task Scheduling with Many Processors

T. I. D. Carvalho, G. Oliveira
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引用次数: 2

Abstract

Task scheduling consists of allocating the parallel program tasks into the processors of a multiprocessing system. This paper investigates cellular automata (CA) based models for solving the scheduling problem. A standard genetic algorithm (GA) is employed to evolve appropriate CA rules, that is transition rules able to schedule parallel programs. We identified that the state-of-art CA-based schedulers suffer when trying to manage eight or more processors. This difficulty is mainly due to the severe increment in the rule space cardinality when the number of states per cell are increased to represent more processors. We propose a non-standard cellular automata model able to minimize this problem. A new definition of local neighborhood is proposed here, which is denominated as Mapping-Reduce. In addition, the transition rule related to the mapping-reduce neighborhood uses a nondeterministic output, which printed a stochastic characteristic for the new CA model. By using the new CA model we were able to simplify the complexity of the transition rules employed in the proposed CA-based scheduler model. Simulations based on the new model were carried out using a family of four parallel programs that solve equations by Gaussian elimination. Based on the experiments using 4, 8 and 16 processors, it was noted that the results of the CAbased scheduling approach were improved for architectures with a higher number of nodes. Moreover, the evolved rules had shown a better generalization ability when applied to schedule new parallel programs which is a critical point related to the main motivation for the employment of CA in scheduling.
降低规则空间基数的随机元胞自动机模型在多处理器任务调度中的应用
任务调度包括将并行程序任务分配到多处理系统的处理器中。本文研究了基于元胞自动机(CA)的调度问题求解模型。采用标准的遗传算法(GA)进化出合适的CA规则,即能够调度并行程序的迁移规则。我们发现,最先进的基于ca的调度器在尝试管理8个或更多处理器时会受到影响。这种困难主要是由于当每个单元的状态数量增加以表示更多处理器时,规则空间基数会严重增加。我们提出了一个非标准的元胞自动机模型来最小化这个问题。本文提出了一种新的局部邻域的定义,并将其命名为Mapping-Reduce。此外,与映射-约简邻域相关的转换规则使用了不确定性输出,这为新的CA模型打印了随机特征。通过使用新的CA模型,我们能够简化在提议的基于CA的调度器模型中使用的转换规则的复杂性。利用高斯消去法求解方程组的四个并行程序对新模型进行了仿真。基于4、8和16个处理器的实验,注意到基于caba的调度方法在节点数量较多的体系结构上的结果得到了改善。此外,演化出的规则在调度新的并行程序时显示出较好的泛化能力,这是与CA在调度中使用的主要动机相关的一个关键点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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