云计算中基于遗传算法的多目标优化调度方法

Rajeshwari Sissodia, M. Rauthan, V. Barthwal
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引用次数: 1

摘要

针对云计算中的任务调度问题,提出了一种多目标优化方法。首先,着眼于云计算中资源和任务的多样性。本文提出了一个资源成本模型,该模型更详细地定义了任务对资源的需求。基于该资源成本模型,提出了一种多目标优化调度方法。该方法将makespan、wall clock时间、执行时间和成本作为优化问题的约束条件。针对多目标任务调度问题,提出一种多目标改进遗传算法(MOIGA)。实验结果表明,与先到先服务(FCFS)、轮询(RR)和最短作业优先(SJF)算法相比,MOIGA算法最大限度地减少了完工时间、时钟时间、执行时间和成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Multi-Objective Optimization Scheduling Method Based on the Genetic Algorithm in Cloud Computing
For task-scheduling problems in cloud computing, a multi-objective optimization method is proposed here. First, with an aim toward the biodiversity of resources and tasks in cloud computing. This paper propose a resource cost model that defines the demand of tasks on resources with more details. A multi-objective optimization scheduling method has been proposed based on this resource cost model. This method considers the makespan, wall clock time , execution time and the costs as constraints of the optimization problem. This paper proposed a multi-objective improved genetic algorithm (MOIGA) to address multi-objective task scheduling problems. The experiment results showed that the MOIGA algorithm minimizes makespan, wall clock time, execution time and cost when compared with First Come First Serve (FCFS), Round Robin (RR) and Shortest Job First (SJF).
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