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Stability Analysis of a Statistical Model for Cloud Resource Management

机译:云资源管理统计模型的稳定性分析

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In this paper, we presented a comprehensive stability analysis of statistical models derived from the network usage data to design an efficient and optimal resource management in a Cloud data centre. In recent years, it has been noticed that network has a significant impact on the HPC and business critical applications when they are run in a cloud environment. The existing VM placement algorithms lack capabilities to deploy such applications in an effective way and cause performance degradation. As a result, there is an urge for a network-aware VM placement algorithm which will consider the application behaviour and system capability. Our approach uses static models based on simple probability distribution concept and partition (number theory) to characterise and predict the resource usage behaviour of the VMs. However, the stability of those models is a key requirement to ensure a persistent placement of the VMs which can prevent their frequent migration and keep the infrastructure rigid. The paper investigates the stability of the models with respect to time. Sticky HDP-HMM method was proven highly capable to model the monitoring data with a certain accuracy. The refined data was further used to estimate the resource consumption of each VM and physical host running in the infrastructure. A stability parameter has been defined to determine the level of steadiness of the models that gives us a clear indication on whether the models can be used further to derive an optimal placement decision for new VMs. The paper ends with a discussion on instance based stability analysis and future work.
机译:在本文中,我们提出了对从网络使用情况数据得出的统计模型的全面稳定性分析,以在Cloud数据中心中设计高效且最佳的资源管理。近年来,已经注意到,当网络在云环境中运行时,网络会对HPC和关键业务应用程序产生重大影响。现有的VM放置算法缺乏以有效方式部署此类应用程序并导致性能下降的功能。结果,迫切需要一种可感知网络的VM放置算法,该算法将考虑应用程序的行为和系统功能。我们的方法使用基于简单概率分布概念和分区(数论)的静态模型来表征和预测VM的资源使用行为。但是,这些模型的稳定性是确保VM持久放置的关键要求,可以防止VM频繁迁移并保持基础架构的刚性。本文研究了模型相对于时间的稳定性。事实证明,粘性HDP-HMM方法非常有能力以一定的精度对监视数据进行建模。经过提炼的数据还用于估计基础架构中运行的每个VM和物理主机的资源消耗。已经定义了稳定性参数来确定模型的稳定性级别,这为我们提供了关于模型是否可以进一步用于为新VM得出最佳放置决策的明确指示。本文最后讨论了基于实例的稳定性分析和未来的工作。

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