Performance Assurance Model for HiveQL on Large Data Volume

Amit Sangroya, Rekha Singhal
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引用次数: 6

Abstract

Fast growth of application data has led the migration of existing reporting applications to Big data open source technologies such as Hive and Hadoop. Their wide acceptance also considers their use for servicing on-line analytic queries. Ensuring performance assurance of Hive queries will be required to maintain desired level of application performance. Hive query execution time may increase with increase in data size and change in the cluster size. In this paper, we propose a regression based analytical model to predict execution time of Hive query with growth in data volume. A Hive query is executed as DAG of MapReduce (MR) jobs on Hadoop system, this requires predictive model for MR job execution time. We propose multiple linear regression to compute models for various sub phases of MR job execution and build a consolidated model for predicting the execution time of a MR job on large data volume. We introduce ratio of a phase output record size to its input record size and number of map waves as additional sensitive parameters for predicting MR job execution time. The model is validated with MapReduce benchmark and real world financial application for prediction error within 10 %.
大数据量下HiveQL的性能保证模型
应用程序数据的快速增长导致现有报表应用程序迁移到大数据开源技术,如Hive和Hadoop。它们的广泛接受也考虑到它们用于服务在线分析查询。确保Hive查询的性能保证将需要维持期望的应用程序性能水平。Hive查询执行时间可能会随着数据量的增加和集群大小的变化而增加。在本文中,我们提出了一个基于回归的分析模型来预测Hive查询的执行时间随数据量的增长。Hive查询在Hadoop系统上作为MapReduce (MR)任务的DAG执行,这就需要建立MR任务执行时间的预测模型。我们提出了多元线性回归来计算MR作业执行各个子阶段的模型,并建立了一个统一的模型来预测大数据量下MR作业的执行时间。我们引入相位输出记录大小与输入记录大小的比率和映射波数量作为预测MR作业执行时间的附加敏感参数。通过MapReduce基准测试和实际金融应用验证了该模型的预测误差在10%以内。
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