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A distributed approach to compliance monitoring of business process event streams

机译:分布式方法来监视业务流程事件流

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In recent years, the significant advantages brought to business processes by process mining account for its evolution as a major concern in both industrial and academic research. In particular, increasing attention has been turned to compliance monitoring as a way to identify when a sequence of events deviates from the expected behaviour. As we are entering the IoT era, an increasing variety of smart objects can be introduced in business processes (e.g., tags to track products in a plant, smartphones and badge swiping to draw the activities of customers and employees in a shopping centre, etc.). All these objects produce large volumes of log data in the form of streams, which need to be run-time analysed to extract further knowledge about the underlying business process and to identify unexpected, non-conforming events.Albeit rather straightforward on a small log file, compliance verification techniques may show poor performances when dealing with big data and streams, thus calling for scalable approaches.This work investigates the possibility of spreading the compliance monitoring task over a network of computing nodes, achieving the desired scalability. The monitor is realised through the existing SCIFF framework for compliance checking, which provides a high level logic-based language for expressing the properties to be monitored and nicely supports the partitioning of the monitoring task. The distributed computation is achieved through a MapReduce approach and the adoption of an existing general engine for large scale stream processing. Experimental results show the feasibility of the approach as well as the advantages in performance brought to the compliance monitoring task.
机译:近年来,过程挖掘为业务流程带来的显着优势使其成为工业和学术研究中的主要关注点。尤其是,越来越多的注意力转向了法规遵从性监视,以识别事件序列何时偏离预期的行为。随着我们进入物联网时代,可以在业务流程中引入越来越多的智能对象(例如,用于跟踪工厂中产品的标签,智能手机和刷卡以吸引购物中心中客户和员工的活动等)。 )。所有这些对象都以流的形式产生大量日志数据,需要对这些对象进行运行时分析,以提取有关基础业务流程的更多知识并识别意外的,不符合标准的事件。 ,合规性验证技术在处理大数据和流时可能表现不佳,因此需要可扩展的方法。这项工作研究了将合规性监视任务分散在计算节点网络上,以实现所需的可扩展性的可能性。该监视器是通过用于合规性检查的现有SCIFF框架实现的,该框架提供了一种基于逻辑的高级语言来表示要监视的属性,并很好地支持监视任务的分区。分布式计算是通过MapReduce方法并采用现有的通用引擎进行大规模流处理来实现的。实验结果表明该方法的可行性以及合规性监视任务带来的性能优势。

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