使用两阶段集群的可伸缩关联感知虚拟机整合

Xi Li, Anthony Ventresque, Jesús Omana Iglesias, John Murphy
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引用次数: 18

摘要

服务器整合是数据中心中节省能源和提高资源利用率的最常见和最有效的方法,而虚拟机(VM)放置是实现服务器整合的常用方法。然而,考虑到当今IT基础设施的规模以及合并后共存的VM之间资源争用的风险,VM的放置是具有挑战性的。因此,需要考虑待共置虚拟机之间的相关性。但是,现有的解决方案无法解决当虚拟机数量增加到一个数量级时出现的可伸缩性问题,这使得计算每对虚拟机之间的相关性变得不现实。在本文中,我们提出了一种关联感知的VM整合解决方案ScalCCon1,它使用一种新的两阶段集群方案来解决上述可扩展性问题。我们提出并演示了与使用单阶段集群的解决方案相比,使用两阶段集群方案的好处(当考虑17,446个vm时,执行时间最多减少84%)。此外,与现有的基于关联的方法相比,我们的解决方案设法减少了所需的物理机器(pm)的数量,以及性能违规的数量。
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Scalable correlation-aware virtual machine consolidation using two-phase clustering
Server consolidation is the most common and effective method to save energy and increase resource utilization in data centers, and virtual machine (VM) placement is the usual way of achieving server consolidation. VM placement is however challenging given the scale of IT infrastructures nowadays and the risk of resource contention among co-located VMs after consolidation. Therefore, the correlation among VMs to be co-located need to be considered. However, existing solutions do not address the scalability issue that arises once the number of VMs increases to an order of magnitude that makes it unrealistic to calculate the correlation between each pair of VMs. In this paper, we propose a correlation-aware VM consolidation solution ScalCCon1, which uses a novel two-phase clustering scheme to address the aforementioned scalability problem. We propose and demonstrate the benefits of using the two-phase clustering scheme in comparison to solutions using one-phase clustering (up to 84% reduction of execution time when 17, 446 VMs are considered). Moreover, our solution manages to reduce the number of physical machines (PMs) required, as well as the number of performance violations, compared to existing correlation-based approaches.
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