Autonomic SLA-Driven Provisioning for Cloud Applications

N. Bonvin, Thanasis G. Papaioannou, K. Aberer
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引用次数: 98

Abstract

Significant achievements have been made for automated allocation of cloud resources. However, the performance of applications may be poor in peak load periods, unless their cloud resources are dynamically adjusted. Moreover, although cloud resources dedicated to different applications are virtually isolated, performance fluctuations do occur because of resource sharing, and software or hardware failures (e.g. unstable virtual machines, power outages, etc.). In this paper, we propose a decentralized economic approach for dynamically adapting the cloud resources of various applications, so as to statistically meet their SLA performance and availability goals in the presence of varying loads or failures. According to our approach, the dynamic economic fitness of a Web service determines whether it is replicated or migrated to another server, or deleted. The economic fitness of a Web service depends on its individual performance constraints, its load, and the utilization of the resources where it resides. Cascading performance objectives are dynamically calculated for individual tasks in the application workflow according to the user requirements. By fully implementing our framework, we experimentally proved that our adaptive approach statistically meets the performance objectives under peak load periods or failures, as opposed to static resource settings.
云应用程序的自主sla驱动配置
云资源自动化配置取得重要成果。但是,除非动态调整其云资源,否则应用程序的性能在高峰负载期间可能会很差。此外,虽然专用于不同应用程序的云资源实际上是隔离的,但由于资源共享和软件或硬件故障(例如虚拟机不稳定、断电等),确实会出现性能波动。在本文中,我们提出了一种分散的经济方法,用于动态调整各种应用程序的云资源,以便在存在不同负载或故障的情况下统计地满足其SLA性能和可用性目标。根据我们的方法,Web服务的动态经济适应性决定了它是否被复制或迁移到另一台服务器,或者被删除。Web服务的经济适用性取决于其单独的性能约束、负载以及其所在资源的利用率。级联性能目标是根据用户需求动态计算应用程序工作流中单个任务的性能目标。通过完全实现我们的框架,我们通过实验证明,与静态资源设置相反,我们的自适应方法在统计上满足峰值负载期间或故障下的性能目标。
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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