HEaRS: A Hierarchical Energy-Aware Resource Scheduler for Virtualized Data Centers

Hui Chen, Meina Song, Junde Song, Ada Gavrilovska, K. Schwan
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引用次数: 11

Abstract

With the increasing popularity of Internet-based cloud services, energy efficiency in large-scale Internet data centers has become important not only to curtail energy costs and alleviate environmental concern, but also because such systems can quickly reach the limits of power available to them. This paper investigates to what extent and how energy usage improvements through consolidation can benefit from taking into account the environmental influences and effects seen in data center systems. Toward that end, we present experimental results obtained in a fully instrumented, small scale data center and then use these results to propose a hierarchical energy-aware resource scheduler (HEaRS) for cluster workload placement and server provisioning, also considers the physical environment in which data center systems operate. Specifically, at the rack level, HEaRS tries to maintain a `thermal balance' across the rack to avoid hot spots and reduce cooling costs. At the chassis level, HEaRS utilizes the proportional plus integral controller to achieve a balance in the levels of usage of electrical current between the two power domains in the chassis, which helps the chassis reach its most energy efficient state. Finally, at server level, HEaRS can employ known methods like dynamic voltage and frequency scaling or core idling to reduce power consumption. This results in a hierarchical set of controllers that jointly, implement holistic solutions to energy-aware resource scheduling for an entire rack, and this hierarchical solution can then be further extended to entire data centers. Our initial experiment result show opportunities for gains, with up to 16\% in energy usage compared to methods that are not aware of the physical environment and up to 15\% improvements in application performance.
用于虚拟化数据中心的分层能源感知资源调度程序
随着基于互联网的云服务的日益普及,大规模互联网数据中心的能源效率变得非常重要,这不仅是为了降低能源成本和减轻环境问题,而且还因为这样的系统可以很快达到可用功率的极限。本文研究了考虑到数据中心系统中所看到的环境影响和影响,通过整合来改善能源使用可以在多大程度上以及如何受益。为此,我们介绍了在一个完全仪器化的小型数据中心中获得的实验结果,然后使用这些结果提出了用于集群工作负载放置和服务器配置的分层能源感知资源调度器(hear),并考虑了数据中心系统运行的物理环境。具体来说,在机架层面,HEaRS试图在机架上保持“热平衡”,以避免出现热点并降低冷却成本。在底盘层面,HEaRS利用比例加积分控制器在底盘的两个功率域之间实现电流使用水平的平衡,从而帮助底盘达到最节能的状态。最后,在服务器级别,hear可以采用诸如动态电压和频率缩放或核心空转等已知方法来降低功耗。这就产生了一组分层的控制器,它们共同实现了整个机架的能源感知资源调度的整体解决方案,并且这种分层解决方案可以进一步扩展到整个数据中心。我们最初的实验结果显示了收益的机会,与不了解物理环境的方法相比,能源使用可达16%,应用性能可提高15%。
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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