Energy-Aware Scheduling in Virtualized Datacenters

Íñigo Goiri, F. Julià, Ramon Nou, J. L. Berral, Jordi Guitart, J. Torres
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引用次数: 107

Abstract

The reduction of energy consumption in large-scale datacenters is being accomplished through an extensive use of virtualization, which enables the consolidation of multiple workloads in a smaller number of machines. Nevertheless, virtualization also incurs some additional overheads (e.g. virtual machine creation and migration) that can influence what is the best consolidated configuration, and thus, they must be taken into account. In this paper, we present a dynamic job scheduling policy for power-aware resource allocation in a virtualized datacenter. Our policy tries to consolidate workloads from separate machines into a smaller number of nodes, while fulfilling the amount of hardware resources needed to preserve the quality of service of each job. This allows turning off the spare servers, thus reducing the overall datacenter power consumption. As a novelty, this policy incorporates all the virtualization overheads in the decision process. In addition, our policy is prepared to consider other important parameters for a datacenter, such as reliability or dynamic SLA enforcement, in a synergistic way with power consumption. The introduced policy is evaluated comparing it against common policies in a simulated environment that accurately models HPC jobs execution in a virtualized datacenter including power consumption modeling and obtains a power consumption reduction of 15% with respect to typical policies.
虚拟化数据中心的能源感知调度
大规模数据中心的能耗降低是通过广泛使用虚拟化来实现的,虚拟化支持在更少的机器中整合多个工作负载。然而,虚拟化也会带来一些额外的开销(例如,虚拟机的创建和迁移),这些开销可能会影响最佳的整合配置,因此,必须考虑到这些开销。在本文中,我们提出了一种动态作业调度策略,用于虚拟化数据中心中功率感知的资源分配。我们的策略试图将来自不同机器的工作负载整合到数量较少的节点中,同时满足保持每个作业的服务质量所需的硬件资源数量。这允许关闭备用服务器,从而降低数据中心的总体功耗。作为一种新颖的策略,该策略在决策过程中包含了所有虚拟化开销。此外,我们的策略准备以与功耗协同的方式考虑数据中心的其他重要参数,例如可靠性或动态SLA实施。将引入的策略与模拟环境中的常见策略进行比较,该环境准确地模拟了虚拟化数据中心中HPC作业的执行,包括功耗建模,与典型策略相比,该策略的功耗降低了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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