云计算中三种能效调度算法的实验比较

Sudhir Goyal, S. Bawa, Bhupinder Singh
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引用次数: 4

摘要

目前,随着科学和工程应用的高性能计算(HPC)服务器部署的增加,导致了大量的能源消耗。云计算是一种经济有效的解决方案,因为它允许在物理服务器的共享基础设施上托管存储、计算和受支持的网络服务。然而,IT公司对云基础设施日益增长的需求正在急剧增加,数据中心正在消耗更多的能源。节能调度是一种有效的解决方案,可以简化资源使用,降低能源消耗。本文在私有学术云上演示了贪婪调度算法、轮询调度算法和功率感知递减调度算法的资源分配和能耗分析。本文分析了不同调度场景在云计算中的工作情况,并论证了在学术工作量下PABFD算法的能效提升潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Experimental Comparison of Three Scheduling Algorithms for Energy Efficiency in Cloud Computing
Nowadays, with the increased deployment of servers to facilitate high performance computing (HPC) for scientific and engineering applications lead to large consumption of energy. Cloud computing is a cost-effective solution, as it allows to host storage, computational and supported network services on a shared infrastructure of physical servers. However, the growing demand of cloud infrastructure among the IT companies is drastically increasing, by which data centers are drawing more energy. Energy efficient scheduling is one effective solution to streamline the resource usage as well as reduce the energy consumption. The proposed work in this paper demonstrates the resource allocation and makes an energy consumption analysis of Greedy, Round Robin and Power Aware Best Fit Decreasing scheduling algorithms on a private academic cloud. This paper provides an insight into the working of different scheduling scenarios for cloud computing and demonstrates the potential for the improvement of energy efficiency of PABFD algorithm under academic workload.
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