自适应并行压缩事件匹配

Mohammad Sadoghi, H. Jacobsen
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引用次数: 7

摘要

在事件流上以布尔表达式表示的大量模式集合的有效处理在从以用户为中心的处理和个性化到实时数据分析的主要数据密集型应用程序中起着核心作用。一方面,新兴的以用户为中心的应用,包括计算广告和选择性信息传播,要求确定并在发布时向最终用户呈现相关内容。另一方面,实时数据分析的应用,包括基于推送的多查询优化、计算金融和入侵检测,需要满足严格的亚秒级处理要求,并提供高频事件处理。我们通过提出新颖的自适应并行压缩事件匹配算法(A-PCM)和在线事件流重新排序技术(OSR),利用向多核架构的转变来实现这些事件处理需求,从而释放出前所未有的并行度,适合高度并行的事件处理。在我们的综合评估中,我们证明了我们提出的技术的效率。我们表明,自适应并行压缩事件匹配算法可以维持高达233,863个事件/秒的事件速率,而最先进的顺序事件匹配算法在处理多达500万个布尔表达式时只能维持36个事件/秒。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive parallel compressed event matching
The efficient processing of large collections of patterns expressed as Boolean expressions over event streams plays a central role in major data intensive applications ranging from user-centric processing and personalization to real-time data analysis. On the one hand, emerging user-centric applications, including computational advertising and selective information dissemination, demand determining and presenting to an end-user the relevant content as it is published. On the other hand, applications in real-time data analysis, including push-based multi-query optimization, computational finance and intrusion detection, demand meeting stringent subsecond processing requirements and providing high-frequency event processing. We achieve these event processing requirements by exploiting the shift towards multi-core architectures by proposing novel adaptive parallel compressed event matching algorithm (A-PCM) and online event stream re-ordering technique (OSR) that unleash an unprecedented degree of parallelism amenable for highly parallel event processing. In our comprehensive evaluation, we demonstrate the efficiency of our proposed techniques. We show that the adaptive parallel compressed event matching algorithm can sustain an event rate of up to 233,863 events/second while state-of-the-art sequential event matching algorithms sustains only 36 events/second when processing up to five million Boolean expressions.
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