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Managing Overloaded Hosts for Dynamic Consolidation of Virtual Machines in Cloud Data Centers under Quality of Service Constraints

机译:在服务质量约束下管理超载主机以动态整合云数据中心中的虚拟机

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摘要

Dynamic consolidation of virtual machines (VMs) is an effective way to improve the utilization of resources and energy efficiency in cloud data centers. Determining when it is best to reallocate VMs from an overloaded host is an aspect of dynamic VM consolidation that directly influences the resource utilization and quality of service (QoS) delivered by the system. The influence on the QoS is explained by the fact that server overloads cause resource shortages and performance degradation of applications. Current solutions to the problem of host overload detection are generally heuristic based, or rely on statistical analysis of historical data. The limitations of these approaches are that they lead to suboptimal results and do not allow explicit specification of a QoS goal. We propose a novel approach that for any known stationary workload and a given state configuration optimally solves the problem of host overload detection by maximizing the mean intermigration time under the specified QoS goal based on a Markov chain model. We heuristically adapt the algorithm to handle unknown nonstationary workloads using the Multisize Sliding Window workload estimation technique. Through simulations with workload traces from more than a thousand PlanetLab VMs, we show that our approach outperforms the best benchmark algorithm and provides approximately 88 percent of the performance of the optimal offline algorithm.
机译:动态整合虚拟机(VM)是提高云数据中心资源利用率和能效的有效途径。确定何时最佳从过载的主机重新分配VM是动态VM整合的一个方面,它直接影响系统所利用的资源利用率和服务质量(QoS)。服务器过载导致资源短缺和应用程序性能下降这一事实可以解释对QoS的影响。当前主机过载检测问题的解决方案通常基于启发式,或依赖于历史数据的统计分析。这些方法的局限性在于它们导致次优结果,并且不允许显式指定QoS目标。我们提出一种新颖的方法,该方法对于任何已知的固定工作量和给定的状态配置,都将基于Markov链模型,通过在指定QoS目标下最大化平均迁移时间,来最佳地解决主机过载检测问题。我们使用“多大小滑动窗口”工作负载估算技术,对算法进行启发式调整,以处理未知的非平稳工作负载。通过对来自一千多个PlanetLab VM的工作负载跟踪进行的模拟,我们证明了我们的方法优于最佳基准算法,并提供了最佳离线算法性能的约88%。

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