流处理系统参数自动调优的研究

Muhammad Bilal, M. Canini
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引用次数: 48

摘要

优化大数据流应用程序的性能已经成为一项艰巨而耗时的任务:参数可能会从数百甚至数千种可能的配置中进行调整。在本文中,我们提出了一个流处理系统参数自动调优的框架。我们的框架支持标准的黑盒优化算法以及一种新颖的灰盒优化算法。通过优化Apache Storm中的三个基准应用程序,我们展示了自动参数调优的多重好处。结果表明,采用基于拉丁超立方体的启发式采样方法的爬坡算法具有最佳的爬坡效果。我们的灰盒算法提供了类似的结果,同时速度快了2到5倍。
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Towards automatic parameter tuning of stream processing systems
Optimizing the performance of big-data streaming applications has become a daunting and time-consuming task: parameters may be tuned from a space of hundreds or even thousands of possible configurations. In this paper, we present a framework for automating parameter tuning for stream-processing systems. Our framework supports standard black-box optimization algorithms as well as a novel gray-box optimization algorithm. We demonstrate the multiple benefits of automated parameter tuning in optimizing three benchmark applications in Apache Storm. Our results show that a hill-climbing algorithm that uses a new heuristic sampling approach based on Latin Hypercube provides the best results. Our gray-box algorithm provides comparable results while being two to five times faster.
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