Tommi Nylander, Johan Ruuskanen, Karl-Erik Årzén, M. Maggio
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引用次数: 2
摘要
抵消云数据中心内性能可变性的有趣方法包括立即或在指定的等待时间之后发送多个请求克隆。在本文中,我们提出了一个利用后一种概念的云应用程序的性能模型,称为推测执行。研究了处理器共享排队原则下流行的join - short - queue负载均衡策略。利用此设置的近同步服务属性,我们使用简化的同步服务模型对推测执行进行建模。我们的模型是近似的,但是足够精确,即使对于高利用率的场景也是有用的。此外,该模型对任何可能是经验的到达间隔和服务时间分布都是有效的。我们给出了初步的仿真结果,显示了我们提出的模型的前景。
Towards Performance Modeling of Speculative Execution for Cloud Applications
Interesting approaches to counteract performance variability within cloud datacenters include sending multiple request clones, either immediately or after a specified waiting time. In this paper we present a performance model of cloud applications that utilize the latter concept, known as speculative execution. We study the popular Join-Shortest-Queue load-balancing strategy under the processor sharing queuing discipline. Utilizing the near-synchronized service property of this setting, we model speculative execution using a simplified synchronized service model. Our model is approximate, but accurate enough to be useful even for high utilization scenarios. Furthermore, the model is valid for any, possibly empirical, inter-arrival and service time distributions. We present preliminary simulation results, showing the promise of our proposed model.