Performance Modeling to Support Multi-tier Application Deployment to Infrastructure-as-a-Service Clouds

W. Lloyd, S. Pallickara, O. David, J. Lyon, M. Arabi, K. Rojas
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引用次数: 27

Abstract

Infrastructure-as-a-service (IaaS) clouds support migration of multi-tier applications through virtualization of diverse application stack(s) of components which may require various operating systems and environments. To maximize performance of applications deployed to IaaS clouds while minimizing deployment costs, it is necessary to create virtual machine images to host application components with consideration for component dependencies that may affect load balancing of physical resources of VM hosts including CPU time, disk and network bandwidth. This paper presents results of an investigation utilizing physical machine (PM) and virtual machine (VM) resource utilization statistics to build performance models to predict application performance and rank performance of application component deployment configurations deployed across VMs. Our objective was to predict which component compositions provide best performance while requiring the fewest number of VMs. Eighteen individual resource utilization statistics were investigated for use as independent variables to predict service execution time using four different modeling approaches. Overall CPU time was the strongest predictor of execution time. The strength of individual predictors varied with respect to the resource utilization profiles of the applications. CPU statistics including idle time and number of context switches were good predictors when the test application was more disk I/O bound, while disk I/O statistics were better predictors when the application was more CPU bound. All performance models built were effective at determining the best performing service composition deployments validating the utility of our approach.
支持向基础设施即服务云部署多层应用程序的性能建模
基础设施即服务(IaaS)云通过虚拟化不同的组件应用程序栈来支持多层应用程序的迁移,这些组件可能需要不同的操作系统和环境。为了最大限度地提高部署到IaaS云的应用程序的性能,同时最大限度地降低部署成本,有必要创建虚拟机映像来托管应用程序组件,同时考虑可能影响VM主机物理资源(包括CPU时间、磁盘和网络带宽)负载平衡的组件依赖关系。本文介绍了一项利用物理机(PM)和虚拟机(VM)资源利用率统计数据构建性能模型的调查结果,以预测应用程序性能,并对跨VM部署的应用程序组件部署配置的性能进行排名。我们的目标是预测哪些组件组合在需要最少vm数量的情况下提供最佳性能。研究了18个单独的资源利用率统计数据,并将其用作独立变量,使用四种不同的建模方法来预测服务执行时间。总体CPU时间是执行时间的最强预测器。单个预测因子的强度随应用程序的资源利用概况而变化。CPU统计信息(包括空闲时间和上下文切换次数)可以很好地预测测试应用程序的磁盘I/O绑定情况,而磁盘I/O统计信息可以更好地预测应用程序的CPU绑定情况。所构建的所有性能模型都有效地确定了性能最佳的服务组合部署,从而验证了我们的方法的实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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