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Energy efficient computing, clusters, grids and clouds: A taxonomy and survey

机译:节能计算,集群,网格和云:分类和调查

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摘要

Cloud computing continues to play a major role in transforming the IT industry by facilitating elastic on-demand provisioning of computational resources including processors, storage and networks. This is necessarily accompanied by the creation, and refreshes, of large-scale systems including cluster, grids and datacenters from which such resources are provided. These systems consume substantial amounts of energy, with associated costs, leading to significant CO_2 emissions. In 2014, these systems consumed 70 billion kWh of energy in US; this is 1.8% of the US total energy consumption, and future consumption is expected to continue around this level with approximately 73 billion kWh by 2020. The energy bills for major cloud service providers are typically the second largest item in their budgets due to the increased number of computational resources. Energy efficiency in these systems serves the providers interests in saving money to enable reinvestment, reduce supply costs and also reduces CO_2 emissions. In this paper, we discuss energy consumption in large scale computing systems, such as scientific high performance computing systems, clusters, grids and clouds, and whether it is possible to decrease energy consumption without detrimental impact on service quality and performance. We discuss a number of approaches, reported in the literature, that claim to improve the energy efficiency of such large scale computing systems, and identify a number of open challenges. Key findings include: (i) in clusters and grids, use of system level efficiency techniques might increase their energy consumption; (ⅱ) in (virtu-alized) clouds, efficient scheduling and resource allocation can lead to substantially greater economies than consolidation through migration; and (ⅲ) in clusters, switching off idle resources is more energy efficient, however in (production) clouds, performance is affected due to demand fluctuation.
机译:云计算通过促进弹性按需按需供应包括处理器,存储和网络在内的计算资源,继续在转变IT行业中发挥重要作用。这必然伴随着大型系统的创建和更新,包括集群,网格和数据中心,从中提供此类资源。这些系统消耗大量能源,并伴有相关成本,导致大量的CO_2排放。 2014年,这些系统在美国消耗了700亿千瓦时的能源;这是美国总能源消耗的1.8%,预计到2020年,未来的能源消耗将继续保持在该水平附近,约为730亿千瓦时。主要的云服务提供商的能源费用通常是其预算中的第二大项目,因为计算资源数量。这些系统中的能效服务于提供商,希望节省资金以进行再投资,降低供应成本并减少CO_2排放。在本文中,我们讨论了大型计算系统(例如科学的高性能计算系统,集群,网格和云)中的能耗,以及是否有可能在不影响服务质量和性能的情况下降低能耗。我们讨论了文献中报道的许多方法,这些方法声称可以提高此类大型计算系统的能效,并确定许多开放性挑战。主要发现包括:(i)在集群和网格中,使用系统级效率技术可能会增加其能耗; (ⅱ)在(虚拟化的)云中,有效的调度和资源分配比通过迁移进行整合可以带来更大的经济效益; (ⅲ)在集群中,关闭空闲资源的能源效率更高,但是在(生产)云中,性能会受到需求波动的影响。

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  • 来源
    《Sustainable Computing》 |2017年第6期|13-33|共21页
  • 作者

    Muhammad Zakarya; Lee Gillam;

  • 作者单位

    Department of Computer Science, University of Surrey, UK,Abdul Wali Khan University, Mardan, Pakistan;

    Department of Computer Science, University of Surrey, UK;

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  • 正文语种 eng
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