Energy Efficiency Dilemma: P2P-cloud vs. Datacenter

Leila Sharifi, N. Rameshan, Felix Freitag, L. Veiga
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引用次数: 22

Abstract

Energy consumption is increasing in the IT sector and a remarkable part of this energy is consumed in data centers. Numerous techniques have been proposed to solve the energy efficiency issue in cloud systems. Recently, there are some efforts to decentralize the cloud via distributing data centers in diverse geographical positions. In this paper, we elaborate on the energy consumption of different cloud architectures, from a mega-datacenter to a P2P-cloud that provides extreme decentralization in terms of datacenter size. P2P-cloud is defined as a set of commodity host machines, connected to each other to serve a community. Our evaluation results reveal the fact that the more decentralized the system is, the less energy may be consumed in the system. Studying the energy efficiency of P2P-cloud infrastructure shows that the additional system design complexity involved is warranted with improved energy-efficiency and better locality for some services. Our analysis indicates that such P2P-cloud outperforms the classic datacenter model as long as it meets the locality conditions, which are commonplace in communities. Moreover, we illustrate how much energy can be saved for MapReduce applications with a diverse range of specifications by switching to P2P-cloud.
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能源效率困境:p2p云与数据中心
IT部门的能源消耗正在增加,其中很大一部分是在数据中心消耗的。已经提出了许多技术来解决云系统中的能源效率问题。最近,通过将数据中心分布在不同的地理位置来分散云计算的一些努力。在本文中,我们详细阐述了不同云架构的能耗,从大型数据中心到在数据中心规模方面提供极端去中心化的p2p云。p2p云被定义为一组商品主机,它们相互连接以服务于一个社区。我们的评估结果揭示了一个事实,即系统越分散,系统消耗的能量越少。对p2p云基础设施能源效率的研究表明,提高能源效率和某些服务更好的局部性保证了额外的系统设计复杂性。我们的分析表明,只要满足社区中常见的局部性条件,这种p2p云就优于经典的数据中心模型。此外,我们还说明了通过切换到p2p云,可以为具有各种规格的MapReduce应用程序节省多少能源。
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