网格系统DAG调度的改进遗传算法

Beibei Zhu, Hongze Qiu
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引用次数: 0

摘要

分布式系统在高性能计算的发展中起着至关重要的作用。在分析这些系统时,主要关注的是DAG调度。DAG调度问题可以描述为优先级约束任务图到处理器的调度和映射,以使完成时间最小化。已知这是一个np完全问题。几项研究表明,基于进化原理的遗传算法通常比其他算法表现得更好。本文将通过改进遗传算子提出一种改进的遗传算法,实验研究表明,改进的遗传算法收敛速度快,能够得到最优解。
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A modified genetic algorithm for DAG scheduling in grid systems
Distributed systems play a vital role in the improvement of high performance computing. Of primary concern when analyzing these systems is DAG scheduling. The problem of DAG scheduling can be stated as scheduling and mapping of the precedence-constrained task graph to processors so that the completion time can be minimized. It is known to be a NP-complete problem. Several studies have demonstrated that genetic algorithm based on the principles of evolution perform better than others generally. In this paper, we will propose an modified genetic algorithm by improving genetic operators and experimental studies show that the modified genetic algorithm converge quickly and can get optimal solution.
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