通过高维负载配置文件改进企业虚拟机整合

A. Wolke, Carl Pfeiffer
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引用次数: 3

摘要

现代企业数据中心利用虚拟机整合将虚拟机分配给虚拟化服务器,以提高能源效率。一个关键问题是在保持服务质量的同时尽量减少所需的虚拟化服务器数量。一种很有前途的方法是利用企业vm显示的重复负载模式来提高分配效率。本文表明,在计算时间受限的情况下,装箱启发式算法可以获得与整数线性规划相同的分配质量。在基于从企业数据中心获得的CPU负载概况的模拟中,矢量箱装箱启发式方法之间没有显著差异。我们进一步表明,在几百个虚拟机的集群中进行整合就足够了,因为解决方案的质量不会随着更大的集群而提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving Enterprise VM Consolidation with High-Dimensional Load Profiles
Modern enterprise data centers take advantage of virtual machine consolidation to allocate virtual machines to virtualized servers to increase energy efficiency. One key problem is to minimize the number of virtualized servers required while maintaining service quality. A promising approach is to exploit recurring load patterns exhibited by enterprise VMs for increased allocation efficiency. This paper shows that bin packing heuristics can deliver the same allocation quality as integer linear programs if calculation time is constrained. There were no significant differences between vector bin packing heuristics in simulations based on CPU load profiles obtained from enterprise data centers. We further show that consolidating in clusters of a few hundred virtual machines is sufficient as solution quality does not improve with larger clusters.
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