Task scheduling for cloud computing using multi-objective hybrid bacteria foraging algorithm

Sobhanayak Srichandan , Turuk Ashok Kumar , Sahoo Bibhudatta
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引用次数: 107

Abstract

Cloud computing is the delivery of computing services over the internet. Cloud services allow individuals and other businesses organization to use data that are managed by third parties or another person at remote locations. Most Cloud providers support services under constraints of Service Level Agreement (SLA) definitions. The SLAs are composed of different quality of service (QoS) rules promised by the provider. A cloud environment can be classified into two types: computing clouds and data clouds. In computing cloud, task scheduling plays a vital role in maintaining the quality of service and SLA. Efficient task scheduling is one of the major steps for effectively harnessing the potential of cloud computing. This paper explores the task scheduling algorithm using a hybrid approach, which combines desirable characteristics of two of the most widely used biologically-inspired heuristic algorithms, the genetic algorithms (GAs) and the bacterial foraging (BF) algorithms in the computing cloud. The main contributions of this article are twofold. First, the scheduling algorithm minimizes the makespan and second; it reduces the energy consumption, both economic and ecological perspectives. Experimental results show that the performance of the proposed algorithm outperforms than those of other algorithms regarding convergence, stability, and solution diversity.

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基于多目标混合细菌觅食算法的云计算任务调度
云计算是指通过互联网提供计算服务。云服务允许个人和其他企业组织使用由第三方或远程位置的其他人管理的数据。大多数云提供商在服务水平协议(SLA)定义的约束下支持服务。sla由提供商承诺的不同服务质量(QoS)规则组成。云环境可以分为计算云和数据云两种。在计算云中,任务调度在维护服务质量和SLA方面起着至关重要的作用。高效的任务调度是有效利用云计算潜力的主要步骤之一。本文探讨了一种混合方法的任务调度算法,该方法结合了两种最广泛使用的生物启发式算法,遗传算法(GAs)和细菌觅食算法(BF)在计算云中的理想特性。本文的主要贡献有两个方面。首先,调度算法使最大完工时间最小化;从经济和生态的角度来看,它减少了能源消耗。实验结果表明,该算法在收敛性、稳定性和解的多样性方面优于其他算法。
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