SPARK Job Performance Analysis and Prediction Tool

Rekha Singhal, Chetan Phalak, P. Singh
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引用次数: 3

Abstract

Spark is one of most widely deployed in-memory big data technology for parallel data processing across cluster of machines. The availability of these big data platforms on commodity machines has raised the challenge of assuring performance of applications with increase in data size. We have build a tool to assist application developer and tester to estimate an application execution time for larger data size before deployment. Conversely, the tool may also be used to estimate the competent cluster size for desired application performance in production environment. The tool can be used for detailed profiling of Spark job, post execution, to understand performance bottleneck. This tool incorporates different configurations of Spark cluster to estimate application performance. Therefore, it can also be used with optimization techniques to get tuned value of Spark parameters for an optimal performance. The tool's key innovations are support for different configurations of Spark platform for performance prediction and simulator to estimate Spark stage execution time which includes task execution variability due to HDFS, data skew and cluster nodes heterogeneity. The tool using model [3] has been shown to predict within 20% error bound for Wordcount, Terasort,Kmeans and few SQL workloads.
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SPARK工作绩效分析和预测工具
Spark是部署最广泛的内存大数据技术之一,用于跨机器集群并行处理数据。这些大数据平台在商用机器上的可用性提出了在数据量增加的情况下确保应用程序性能的挑战。我们已经构建了一个工具来帮助应用程序开发人员和测试人员在部署之前估计更大数据规模的应用程序执行时间。相反,该工具也可用于估计生产环境中所需应用程序性能所需的集群大小。该工具可用于详细分析Spark作业、后期执行情况,了解性能瓶颈。该工具结合了Spark集群的不同配置来评估应用程序性能。因此,它也可以与优化技术一起使用,以获得最佳性能的Spark参数的调优值。该工具的关键创新是支持不同配置的Spark平台,用于性能预测和模拟器,以估计Spark阶段执行时间,包括由于HDFS,数据倾斜和集群节点异构而导致的任务执行可变性。使用模型[3]的工具已被证明可以预测Wordcount、Terasort、Kmeans和少数SQL工作负载的误差范围在20%以内。
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