绿色云计算中的预测反相关虚拟机布局算法

Rachael Shaw, E. Howley, E. Barrett
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引用次数: 15

摘要

与能源相关的成本和环境可持续性对云计算从业者和下一代数据中心的发展提出了重大挑战。高效的资源管理是当今数据中心运行中高能耗的最大原因之一。虚拟机(VM)放置是一种很有前途的技术,可以节省能源和改善资源管理。由于云应用程序的动态性,虚拟机放置算法面临的一个关键挑战是准确预测未来资源需求的能力。此外,文献很少考虑基于共地资源消耗的安置策略,这有可能改善分配决策。使用真实工作负载跟踪,本研究对最广泛使用的预测模型进行了比较研究,并介绍了一种新的预测反相关VM放置方法。我们的实证结果表明,与一些最常用的安置政策相比,所提出的方法可以减少18%的能源消耗,同时减少47%以上的服务违规行为。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Predictive Anti-Correlated Virtual Machine Placement Algorithm for Green Cloud Computing
Energy related costs and environmental sustainability present a significant challenge for cloud computing practitioners and the development of next generation data centers. In efficient resource management is one of the greatest causes of high energy consumption in the operation of data centers today. Virtual Machine (VM) placement is a promising technique to save energy and improve resource management. A key challenge for VM placement algorithms is the ability to accurately forecast future resource demands due to the dynamic nature of cloud applications. Furthermore, the literature rarely considers placement strategies based on co-located resource consumption which has the potential to improve allocation decisions. Using real workload traces this work presents a comparative study of the most widely used prediction models and introduces a novel predictive anti-correlated VM placement approach. Our empirical results demonstrate how the proposed approach reduces energy by 18% while also reducing service violations by over 47% compared to some of the most commonly used placement policies.
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