Mitigating Large Response Time Fluctuations through Fast Concurrency Adapting in Clouds

Jianshu Liu, Shungeng Zhang, Qingyang Wang, Jinpeng Wei
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引用次数: 1

Abstract

Dynamically reallocating computing resources to handle bursty workloads is a common practice for web applications (e.g., e-commerce) in clouds. However, our empirical analysis on a standard n-tier benchmark application (RUBBoS) shows that simply scaling an n-tier application by reallocating hardware resources without fast adapting soft resources (e.g., server threads, connections) may lead to large response time fluctuations. This is because soft resources control the workload concurrency of component servers in the system: adding or removing hardware resources such as Virtual Machines (VMs) can implicitly change the workload concurrency of dependent servers, causing either under- or over-utilization of the critical hardware resource in the system. To quickly identify the optimal soft resource allocation of each server in the system and stabilize response time fluctuation, we propose a novel Scatter-Concurrency-Throughput (SCT) model based on the monitoring of each server’s real-time concurrency and throughput. We then implement a Concurrency-aware system Scaling (ConScale) framework which integrates the SCT model to fast adapt the soft resource allocations of key servers during the system scaling process. Our experiments using six realistic bursty workload traces show that ConScale can effectively mitigate the response time fluctuations of the target web application compared to the state-of-the-art cloud scaling strategies such as EC2-AutoScaling.
通过云中的快速并发适应减轻大的响应时间波动
动态重新分配计算资源来处理突发工作负载是云中的web应用程序(例如电子商务)的常见做法。然而,我们对标准n层基准应用程序(RUBBoS)的实证分析表明,仅仅通过重新分配硬件资源来扩展n层应用程序,而不快速适应软资源(例如,服务器线程,连接)可能会导致响应时间波动很大。这是因为软资源控制着系统中组件服务器的工作负载并发性:添加或删除硬件资源(如虚拟机)可以隐式地改变依赖服务器的工作负载并发性,从而导致系统中关键硬件资源的使用不足或过度。为了快速识别系统中各服务器的最佳软资源分配和稳定响应时间波动,我们提出了一种基于监控各服务器实时并发和吞吐量的SCT (Scatter-Concurrency-Throughput)模型。然后,我们实现了一个并发感知系统扩展(ConScale)框架,该框架集成了SCT模型,以便在系统扩展过程中快速适应关键服务器的软资源分配。我们使用六个实际突发工作负载跟踪的实验表明,与最先进的云扩展策略(如EC2-AutoScaling)相比,ConScale可以有效地减轻目标web应用程序的响应时间波动。
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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