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首页> 外文期刊>Journal of Parallel and Distributed Computing >A hybrid heuristic-genetic algorithm for task scheduling in heterogeneous processor networks
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A hybrid heuristic-genetic algorithm for task scheduling in heterogeneous processor networks

机译:异构处理器网络中任务调度的混合启发式遗传算法

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摘要

Efficient task scheduling on heterogeneous distributed computing systems (HeDCSs) requires the consideration of the heterogeneity of processors and the inter-processor communication. This paper presents a two-phase algorithm, called H2GS, for task scheduling on HeDCSs. The first phase implements a heuristic list-based algorithm, called LDCP, to generate a high quality schedule. In the second phase, the LDCP-generated schedule is injected into the initial population of a customized genetic algorithm, called GAS, which proceeds to evolve shorter schedules. GAS employs a simple genome composed of a two-dimensional chromosome. A mapping procedure is developed which maps every possible genome to a valid schedule. Moreover, GAS uses customized operators that are designed for the scheduling problem to enable an efficient stochastic search. The performance of each phase of H2GS is compared to two leading scheduling algorithms, and H2GS outperforms both algorithms. The improvement in performance obtained by H2GS increases as the inter-task communication cost increases.
机译:异构分布式计算系统(HeDCS)上的有效任务调度需要考虑处理器的异构性和处理器间的通信。本文提出了一种称为H2GS的两阶段算法,用于在HeDCS上进行任务调度。第一阶段实施称为LDCP的基于启发式列表的算法,以生成高质量的计划。在第二阶段中,将LDCP生成的进度表注入到定制遗传算法(称为GAS)的初始种群中,该算法会逐步发展出较短的进度表。 GAS使用由二维染色体组成的简单基因组。制定了将每个可能的基因组映射到有效时间表的作图程序。此外,GAS使用专为计划问题设计的自定义运算符,以实现高效的随机搜索。将H2GS的每个阶段的性能与两种领先的调度算法进行比较,并且H2GS优于两种算法。 H2GS获得的性能改进随着任务间通信成本的增加而增加。

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