A prediction-based ACO algorithm to dynamic tasks scheduling in cloud environment

Haitao Hu, Hongyan Wang
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引用次数: 13

Abstract

In recent years, cloud computing has gained more and more attention. Task and resource scheduling becomes one of the key problems in cloud computing. This paper refers to a new prediction-based algorithm based on Ant Colony Optimization which combines the available computing resources (referred as Virtual Machines, VMs) with arriving jobs with various Quality of Service constraints (QoS, defined by users). The traditional Ant Colony Optimization algorithms usually contain properties of computing resources but without taking users' constraints into consideration and ignore the heterogeneity of cloud resources. Therefore, an algorithm in this paper is proposed which classifies the jobs into two species. And then users' QoS constraints are sorted as well as computing resources according to their computing capabilities. This paper aims at proposing an ant colony optimization (ACO) algorithm to schedule jobs with various QoS parameters on VMs with different resource parameters. Experiment results show that the proposed prediction-based algorithm outperforms the ACO algorithm to some extent in finding the best dispatch of tasks to VMs.
一种基于预测的蚁群算法用于云环境下的动态任务调度
近年来,云计算越来越受到人们的关注。任务和资源调度是云计算中的关键问题之一。本文提出了一种基于蚁群优化的基于预测的新算法,该算法将可用的计算资源(称为虚拟机,vm)与具有各种服务质量约束(QoS,由用户定义)的到达作业相结合。传统的蚁群优化算法通常包含计算资源的属性,但没有考虑用户的约束,忽略了云资源的异构性。因此,本文提出了一种将作业分为两类的算法。然后根据用户的计算能力对用户的QoS约束和计算资源进行排序。本文提出了一种蚁群优化算法,用于在不同资源参数的虚拟机上调度不同QoS参数的作业。实验结果表明,本文提出的基于预测的算法在寻找虚拟机任务的最佳调度方面优于蚁群算法。
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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