Performance Tuning and Modeling for Big Data Applications in Docker Containers

Kejiang Ye, Yunjie Ji
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引用次数: 24

Abstract

Docker container is experiencing a rapid development with the support from industry and being widely used in large scale production cloud environment, due to the benefits of speedy launching time and tiny memory footprint. However the performance of big data applications (e.g., Spark) running in Docker containers is still not clear due to the complex parameter configuration and interference between neighbor containers. This paper investigates the impacts of docker configuration and resource interference on the performance of big data applications in a typical container environment. In particular, we first conduct a series of experiments to measure the performance impact by adjusting the docker configuration parameters, such as resource limits, and observe the Spark performance is not linear with increasing resource allocation for containers. Then, we evaluate the interference between multiple containers by controlling the resource competition and detect the performance interference phenomenon between multiple containers. Finally, we propose a performance prediction model based on the Support Vector Regression (SVR) to predict the application performance with different configurations and resource competition settings. Experimental results show the prediction error is less than 10% for all the four typical Spark applications.
Docker容器中大数据应用的性能调优和建模
Docker容器由于其启动时间快、内存占用小等优点,在业界的支持下得到了快速的发展,并被广泛应用于大规模生产云环境中。但是运行在Docker容器中的大数据应用(如Spark),由于参数配置复杂和相邻容器之间的干扰,其性能仍然不明确。本文研究了典型容器环境下docker配置和资源干扰对大数据应用性能的影响。特别是,我们首先进行了一系列实验,通过调整docker配置参数(如资源限制)来衡量对性能的影响,并观察到Spark性能随着容器资源分配的增加而不是线性的。然后,我们通过控制资源竞争来评估多个容器之间的干扰,并检测多个容器之间的性能干扰现象。最后,我们提出了一个基于支持向量回归(SVR)的性能预测模型来预测不同配置和资源竞争设置下的应用程序性能。实验结果表明,四种典型Spark应用的预测误差均小于10%。
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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