Quality-driven disorder handling for m-way sliding window stream joins

Yuanzhen Ji, Jun Sun, A. Nica, Zbigniew Jerzak, Gregor Hackenbroich, C. Fetzer
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引用次数: 13

Abstract

Sliding window join is one of the most important operators for stream applications. To produce high quality join results, a stream processing system must deal with the ubiquitous disorder within input streams which is caused by network delay, parallel processing, etc. Disorder handling involves an inevitable tradeoff between the latency and the quality of produced join results. To meet different requirements of stream applications, it is desirable to provide a user-configurable result-latency vs. result-quality tradeoff. Existing disorder handling approaches either do not provide such configurability, or support only user-specified latency constraints. In this work, we advocate the idea of quality-driven disorder handling, and propose a buffer-based disorder handling approach for sliding window joins, which minimizes sizes of input-sorting buffers, thus the result latency, while respecting user-specified result-quality requirements. The core of our approach is an analytical model which directly captures the relationship between sizes of input buffers and the produced result quality. Our approach is generic. It supports m-way sliding window joins with arbitrary join conditions. Experiments on real-world and synthetic datasets show that, compared to the state of the art, our approach can reduce the result latency incurred by disorder handling by up to 95% while providing the same level of result quality.
m-way滑动窗口流连接的质量驱动无序处理
滑动窗口连接是流应用程序中最重要的操作符之一。为了产生高质量的连接结果,流处理系统必须处理由网络延迟、并行处理等引起的输入流中普遍存在的无序。无序处理涉及在延迟和生成的连接结果质量之间进行不可避免的权衡。为了满足流应用程序的不同需求,最好提供用户可配置的结果延迟与结果质量之间的权衡。现有的混乱处理方法要么不提供这种可配置性,要么只支持用户指定的延迟约束。在这项工作中,我们提倡质量驱动的无序处理思想,并提出了一种基于缓冲区的滑动窗口连接的无序处理方法,该方法最小化了输入排序缓冲区的大小,从而减少了结果延迟,同时尊重用户指定的结果质量要求。我们方法的核心是一个分析模型,它直接捕捉输入缓冲区大小和生成结果质量之间的关系。我们的方法是通用的。它支持任意连接条件的m-way滑动窗口连接。在真实世界和合成数据集上的实验表明,与目前的技术水平相比,我们的方法可以在提供相同水平的结果质量的同时,将无序处理引起的结果延迟减少高达95%。
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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