基于MapReduce架构的业务流程分布式遵从性监控

Daniela Loreti, F. Chesani, A. Ciampolini, P. Mello
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引用次数: 10

摘要

在物联网时代,大量来自不同来源的事件数据以流的形式被收集起来。由于需要对这些日志进行在线处理以提取有关底层业务流程的进一步知识,因此支持运行时监视变得越来越重要。特别是,越来越多的注意力已经转向一致性检查,作为一种识别事件序列何时偏离预期行为的方法。尽管一致性验证技术在小日志文件上相当简单,但在处理大数据时可能会表现出较差的性能,这使得通过分布式计算提高可伸缩性的可能性越来越有吸引力。在本文中,我们采用了一个以前实现的框架来进行遵从性验证(它为监视规范提供了一个高级的基于逻辑的符号),并展示了如何将其有效地分布在一组计算节点上,以便在处理大量事件日志时支持可扩展的运行时监视。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Distributed Compliance Monitoring of Business Processes over MapReduce Architectures
In the era of IoT, large volumes of event data from different sources are collected in the form of streams. As these logs need to be online processed to extract further knowledge about the underlying business process, it is becoming more and more important to give support to run-time monitoring. In particular, increasing attention has been turned to conformance checking as a way to identify when a sequence of events deviates from the expected behavior. Albeit rather straightforward on a small log file, conformance verification techniques may show poor performance when dealing with big data, making increasingly attractive the possibility to improve scalability through distributed computation. In this paper, we adopt a previously implemented framework for compliance verification (which provides a high-level logic-based notation for the monitoring specification) and we show how it can be efficiently distributed on a set of computing nodes to support scalable run-time monitoring when dealing with large volumes of event logs.
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