Efficient Virtual Machine Sizing for Hosting Containers as a Service (SERVICES 2015)

Sareh Fotuhi Piraghaj, A. V. Dastjerdi, R. Calheiros, R. Buyya
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引用次数: 42

Abstract

There has been a growing effort in decreasing energy consumption of large-scale cloud data centers via maximization of host-level utilization and load balancing techniques. However, with the recent introduction of Container as a Service (CaaS) by cloud providers, maximizing the utilization at virtual machine (VM) level becomes essential. To this end, this paper focuses on finding efficient virtual machine sizes for hosting containers in such a way that the workload is executed with minimum wastage of resources on VM level. Suitable VM sizes for containers are calculated, and application tasks are grouped and clustered based on their usage patterns obtained from historical data. Furthermore, tasks are mapped to containers and containers are hosted on their associated VM types. We analyzed clouds' trace logs from Google cluster and consider the cloud workload variances, which is crucial for testing and validating our proposed solutions. Experimental results showed up to 7.55% improvement in the average energy consumption compared to baseline scenarios where the virtual machine sizes are fixed. In addition, comparing to the baseline scenarios, the total number of VMs instantiated for hosting the containers is also improved by 68% on average.
托管容器即服务的高效虚拟机分级(SERVICES 2015)
在通过最大化主机级利用率和负载平衡技术来降低大型云数据中心的能耗方面,人们付出了越来越多的努力。然而,随着云提供商最近引入容器即服务(CaaS),最大限度地提高虚拟机(VM)级别的利用率变得至关重要。为此,本文的重点是为托管容器找到有效的虚拟机大小,以便在VM级别上以最小的资源浪费来执行工作负载。计算适合容器的VM大小,并根据从历史数据中获得的应用程序任务的使用模式对应用程序任务进行分组和集群。此外,任务被映射到容器,容器被托管在与其关联的虚拟机类型上。我们分析了来自Google集群的云跟踪日志,并考虑了云工作负载差异,这对于测试和验证我们提出的解决方案至关重要。实验结果显示,与虚拟机大小固定的基线场景相比,平均能耗提高了7.55%。此外,与基线场景相比,为承载容器而实例化的虚拟机总数平均也提高了68%。
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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