Load Balancing in Cloud Environment using Stackelberg's Approach

B. Vinayagasundaram, R. Swathy
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Abstract

Cloud Computing, one of the latest standard of large scale and parallel computing, attracts more users requiring utility computing with better and fast service. Load balancing is one of the key parameters that determine a cloud data center's performance. One of the main problems with respect to load balancing is that all the physical hosts in a data center are not efficiently used resulting in an imbalance and suboptimal performance. This paper has focused on how the physical hosts for deploying requested tasks is selected based on the requirement of the request by using Stackelberg's approach. Most of the works that has been done previously in this area utilize a series of algorithms that selects the optimal host in the data center based on the intelligence that is confined to the algorithm alone and doesn't have a holistic approach that considers the unutilized resources amongst all hosts within a data center. The proposed model in this work makes a decision of which physical host must be allocated to a requestbased on the requirements of the incoming task, current load on the data center hosts, available or unused resources in the data center. The model uses First-in-First-out allocation strategy for task assignments. Simulation results compared with the existing works show that the proposed approach has decreased the failure number of task deployment events obviously, and reduced the makespan.
基于Stackelberg方法的云环境负载平衡
云计算作为大规模、并行计算的最新标准之一,以更好、更快的服务吸引了更多需要效用计算的用户。负载平衡是决定云数据中心性能的关键参数之一。关于负载平衡的一个主要问题是,数据中心中的所有物理主机都没有得到有效的使用,从而导致不平衡和性能次优。本文主要讨论如何使用Stackelberg方法根据请求的需求选择用于部署请求任务的物理主机。以前在该领域所做的大部分工作都是利用一系列算法来选择数据中心中基于智能的最佳主机,这些智能仅局限于算法,而没有考虑数据中心中所有主机中未利用资源的整体方法。本文中提出的模型根据传入任务的需求、数据中心主机上的当前负载、数据中心中可用或未使用的资源来决定必须将哪个物理主机分配给请求。该模型采用先进先出分配策略进行任务分配。仿真结果表明,该方法明显减少了任务部署事件的失败次数,缩短了完工时间。
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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