Evaluating Energy Consumption in a Different Virtualization within a Cloud System

I. M. Murwantara, P. Yugopuspito
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引用次数: 3

Abstract

Cloud computing manages the isolation of processes within Virtual Machines by utilizing resources via hypervisor. In the last decade, specific application such as Big Data that mostly run in the Virtualized environment has attracted many Cloud providers. This opportunity has increased the growth of alternative technology such as Docker and Kubernete that made enhancement on top of a single host virtualization. However, diverse virtualization technology may have different characteristics, which may also affect the consumption of energy. This work provides information on the impact of workload into Cloud computing services by measuring the energy usage of three different virtualization technologies namely Virtual Machine, Docker and Kubernete in an Openstack system, Opensource Cloud computing environment. In order to trigger processes in the system under measurement, we use a workload technique that simulates incoming users to the system. A method of energy measurement without physical powermeter for several Virtualized systems is reported. Our experiment result shows that using similar workloads, for different virtualization technology, consumes a significant distinctive amount of energy.
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评估云系统中不同虚拟化的能耗
云计算通过管理程序利用资源来管理虚拟机内进程的隔离。在过去的十年中,像大数据这样在虚拟化环境中运行的特定应用吸引了许多云提供商。这个机会促进了Docker和Kubernete等替代技术的发展,这些技术在单主机虚拟化的基础上进行了增强。但是,不同的虚拟化技术可能具有不同的特性,这也可能影响能源的消耗。这项工作通过测量三种不同虚拟化技术(即Openstack系统、开源云计算环境中的Virtual Machine、Docker和Kubernete)的能源使用情况,提供了有关工作负载对云计算服务影响的信息。为了触发被测量系统中的流程,我们使用一种工作负载技术来模拟进入系统的用户。本文报道了一种针对多个虚拟化系统的无需物理功率计的能量测量方法。我们的实验结果表明,对于不同的虚拟化技术,使用相似的工作负载所消耗的能量有很大的不同。
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