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Fine-Grained Resource Provisioning and Task Scheduling for Heterogeneous Applications in Distributed Green Clouds

机译:分布式绿云中异构应用程序的细粒度资源供应和任务调度

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An increasing number of enterprises have adopted cloud computing to manage their important business applications in distributed green cloud(DGC)systems for low response time and high cost-effectiveness in recent years.Task scheduling and resource allocation in DGCs have gained more attention in both academia and industry as they are costly to manage because of high energy consumption.Many factors in DGCs,e.g.,prices of power grid,and the amount of green energy express strong spatial variations.The dramatic increase of arriving tasks brings a big challenge to minimize the energy cost of a DGC provider in a market where above factors all possess spatial variations.This work adopts a G/G/1 queuing system to analyze the performance of servers in DGCs.Based on it,a single-objective constrained optimization problem is formulated and solved by a proposed simulated-annealing-based bees algorithm(SBA)to find SBA can minimize the energy cost of a DGC provider by optimally allocating tasks of heterogeneous applications among multiple DGCs,and specifying the running speed of each server and the number of powered-on servers in each GC while strictly meeting response time limits of tasks of all applications.Realistic databased experimental results prove that SBA achieves lower energy cost than several benchmark scheduling methods do.
机译:近年来,越来越多的企业采用云计算来管理分布式绿色云(DGC)系统中的重要业务应用程序,以缩短响应时间并提高成本效益.DGC中的任务调度和资源分配在学术界和学术界都得到了越来越多的关注DGC中的许多因素(例如,电网价格和绿色能源的数量)都表现出强烈的空间变化。到达任务的急剧增加带来了最大的挑战,即如何最大程度地减少能源消耗。在上述因素均具有空间变化的市场中,DGC供应商的能源成本。本文采用G / G / 1排队系统分析DGC中服务器的性能。在此基础上,提出了单目标约束优化问题。并通过提出的基于模拟退火的蜜蜂算法(SBA)进行求解,以发现SBA可以通过最佳分配het的任务来最小化DGC提供者的能源成本多个DGC之间的异构应用程序,并在严格满足所有应用程序任务的响应时间限制的同时,指定每个服务器的运行速度和每个GC中已加电的服务器数量。实际的数据库实验结果证明,SBA的能源成本要低于几个基准调度方法。

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