Multiobjective Scheduling on Distributed Heterogeneous Computing and Grid Environments Using a Parallel Micro-CHC Evolutionary Algorithm

Sergio Nesmachnow, S. Iturriaga
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引用次数: 4

Abstract

This work presents the application of a parallel micro-CHC evolutionary algorithm to the scheduling problem in heterogeneous computing environments, to minimize the make span and weighted response ratio objectives. The studied problem is NP-hard, and significant effort has been made to develop efficient methods to compute accurate schedules in reduced execution times. Efficient numerical results are reported in the experimental analysis performed on both well-known and new large problem instances that model medium-sized grid environments. The parallel micro-CHC achieves a high problem solving efficacy and shows a good scalability behavior when facing high dimension instances.
基于并行微chc进化算法的分布式异构网格环境下多目标调度
本文将并行微chc进化算法应用于异构计算环境下的调度问题,以最小化调度时间跨度和加权响应比目标。所研究的问题是np困难的,并且已经付出了大量的努力来开发在减少执行时间内计算精确调度的有效方法。在模拟中型网格环境的已知和新的大型问题实例上进行了实验分析,并取得了有效的数值结果。并行微chc在面对高维实例时具有较高的问题求解效率和良好的可扩展性。
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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