云数据中心中能源感知作业调度与仿真

Purushottam Assudani, Mehvash Khan, Mukesh Kumar, Tejas V. Bhutada
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引用次数: 0

摘要

虚拟化技术是云系统使用的一种技术,用户可以通过虚拟机来利用云资源。这些虚拟机处理用户发出的任务请求。由于低效率的硬件利用率是对未来和环境的关注,有效的工作负载平衡和虚拟机分配有助于降低硬件使用和结果的高效工作。也就是说,本文提出了一个任务调度框架,其中任务将通过需要的抢占和云的分类分配给运行在活动主机(服务器)上的虚拟机。我们所考虑的算法将把cloudlets分为三种不同的类型,并根据特定主机的先到先服务的资源时间为它们分配VM。这反过来又会通过让更少的机器在活动状态下运行,同时保持对活动服务器的有效利用,从而减少能源消耗。使用CloudSim框架可以很好地实现这种模拟
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Energy Aware Job Scheduling and Simulation in a Cloud Datacenter
Virtualization technology is used by cloud systems for the users to utilize cloud resources through Virtual Machines.These VM’s process the task requests made by users. Ever since inefficient hardware utilization is the concernfor the future and the environment, efficient work load balancing and allocation of VMs helps to bring down thehardware usage and results to efficient working. That being said, this paper proposes task scheduling frameworkwhere the task will be assigned to a VMs running on the active hosts(servers) through preemption as required andclassification of the cloudlets. The algorithm that we have taken into consideration will categorize the cloudletsinto three distinct types and allocate them a VM based on first come, first served resource time in regards to thatparticular host. This in turn will reduce the energy consumption by having lesser machines running in the activestate meanwhile preserving efficient utilization of the active servers. Such kind of simulations are fairly achievedusing the CloudSim framework
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来源期刊
International Journal of Next-Generation Computing
International Journal of Next-Generation Computing COMPUTER SCIENCE, THEORY & METHODS-
自引率
66.70%
发文量
60
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