A Combined Analytical Modeling Machine Learning Approach for Performance Prediction of MapReduce Jobs in Cloud Environment

Ehsan Ataie, E. Gianniti, D. Ardagna, A. Movaghar
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引用次数: 20

Abstract

Nowadays MapReduce and its open source implementation, Apache Hadoop, are the most widespread solutions for handling massive dataset on clusters of commodity hardware. At the expense of a somewhat reduced performance in comparison to HPC technologies, the MapReduce framework provides fault tolerance and automatic parallelization without any efforts by developers. Since in many cases Hadoop is adopted to support business critical activities, it is often important to predict with fair confidence the execution time of submitted jobs, for instance when SLAs are established with end-users. In this work, we propose and validate a hybrid approach exploiting both queuing networks and support vector regression, in order to achieve a good accuracy without too many costly experiments on a real setup. The experimental results show how the proposed approach attains a 21% improvement in accuracy over applying machine learning techniques without any support from analytical models.
云环境下MapReduce作业性能预测的组合分析建模机器学习方法
如今,MapReduce及其开源实现Apache Hadoop是在商用硬件集群上处理海量数据的最广泛的解决方案。与HPC技术相比,MapReduce框架的性能有所降低,但它提供了容错和自动并行化,而开发人员无需付出任何努力。由于在许多情况下采用Hadoop来支持关键业务活动,因此预测提交作业的执行时间通常非常重要,例如,当与最终用户建立sla时。在这项工作中,我们提出并验证了一种利用排队网络和支持向量回归的混合方法,以便在没有太多昂贵的真实设置实验的情况下获得良好的准确性。实验结果表明,在没有任何分析模型支持的情况下,与应用机器学习技术相比,该方法的准确性提高了21%。
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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