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Adaptive power management for autonomic resource configuration in large-scale computer systems.

机译:用于大型计算机系统中自主资源配置的自适应电源管理。

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摘要

In order to run and manage resource-intensive high-performance applications, large-scale computing and storage platforms have been evolving rapidly in various domains in both academia and industry. The energy expenditure consumed to operate and maintain these cloud computing infrastructures is a major factor to influence the overall profit and efficiency for most cloud service providers. Moreover, considering the mitigation of environmental damage from excessive carbon dioxide emission, the amount of power consumed by enterprise-scale data centers should be constrained for protection of the environment.;Generally speaking, there exists a trade-off between power consumption and application performance in large-scale computing systems and how to balance these two factors has become an important topic for researchers and engineers in cloud and HPC communities. Therefore, minimizing the power usage while satisfying the Service Level Agreements have become one of the most desirable objectives in cloud computing research and implementation. Since the fundamental feature of the cloud computing platform is hosting workloads with a variety of characteristics in a consolidated and on-demand manner, it is demanding to explore the inherent relationship between power usage and machine configurations. Subsequently, with an understanding of these inherent relationships, researchers are able to develop effective power management policies to optimize productivity by balancing power usage and system performance.;In this dissertation, we develop an autonomic power-aware system management framework for large-scale computer systems. We propose a series of techniques including coarse-grain power profiling, VM power modelling, power-aware resource auto-configuration and full-system power usage simulator. These techniques help us to understand the characteristics of power consumption of various system components. Based on these techniques, we are able to test various job scheduling strategies and develop resource management approaches to enhance the systems' power efficiency.
机译:为了运行和管理资源密集型高性能应用程序,大型计算和存储平台已在学术界和工业界的各个领域迅速发展。操作和维护这些云计算基础架构所消耗的能源支出是影响大多数云服务提供商的整体利润和效率的主要因素。此外,考虑到减轻二氧化碳过量排放对环境的损害,应限制企业规模的数据中心消耗的电量以保护环境。通常,在功耗和应用程序性能之间需要权衡取舍在大型计算系统中,如何平衡这两个因素已成为云和HPC社区中的研究人员和工程师的重要课题。因此,在满足服务水平协议的同时使功耗最小化已成为云计算研究和实施中最可取的目标之一。由于云计算平台的基本功能是以整合和按需方式托管具有各种特征的工作负载,因此需要探索功耗与机器配置之间的内在联系。随后,在了解了这些固有关系之后,研究人员能够制定有效的电源管理策略,以通过平衡用电量和系统性能来优化生产力。本文,我们为大型计算机开发了一种自主的电源感知系统管理框架。系统。我们提出了一系列技术,包括粗粒度功耗分析,VM功耗建模,功耗感知资源自动配置以及整个系统功耗模拟器。这些技术有助于我们了解各种系统组件的功耗特征。基于这些技术,我们能够测试各种作业调度策略并开发资源管理方法以提高系统的电源效率。

著录项

  • 作者

    Zhang, Ziming.;

  • 作者单位

    University of North Texas.;

  • 授予单位 University of North Texas.;
  • 学科 Computer science.
  • 学位 Ph.D.
  • 年度 2015
  • 页码 119 p.
  • 总页数 119
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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