A Review on Complex Event Processing Systems for Big Data

K. Tawsif, J. Hossen, J. E. Raja, M. Z. H. Jesmeen, E. Arif
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引用次数: 12

Abstract

Over the years, huge volumes of data are continuously generated due to the increasing number of applications, efficient methods are therefore required to determine the event patterns of interest and manage highly dynamic events in real-time. There has been increasing demand for active systems within Internet of Things, which can automatically react to events that come from various sources. Complex Event Processing (CEP) is an impressive technology that can deal with large amount of data from various sources depending on the consistency of data to generate exact result to process dynamic data in real-time. Thus, understanding existing CEP methods and tools is essential to develop a robust and effective CEP system. In this paper, we had briefly described about event processing, CEP with different engines and CEP for uncertainty. This paper reviewed CEP tools available in the market from 2010 to 2017. It has been found that there are many commercialized and open-source CEP tools in current market, where commercialized tools are used for business intelligence purpose and open-source tools are mostly used for academic purposes. Most of the available processing tools are Query-based and very few are working with Machine learning. There is a huge potential for further research in the use of Machine Learning in Complex Event Processing.
面向大数据的复杂事件处理系统综述
多年来,由于应用程序数量的增加,不断产生大量数据,因此需要有效的方法来确定感兴趣的事件模式并实时管理高度动态的事件。物联网中对主动系统的需求不断增加,这些系统可以自动对来自各种来源的事件做出反应。复杂事件处理(CEP)是一项令人印象深刻的技术,它可以根据数据的一致性来处理来自各种来源的大量数据,从而生成精确的结果来实时处理动态数据。因此,了解现有的CEP方法和工具对于开发稳健有效的CEP系统至关重要。本文简要介绍了事件处理、不同引擎的CEP和不确定性的CEP。本文回顾了2010年至2017年市场上可用的CEP工具。我们发现目前市场上有很多商业化的和开源的CEP工具,其中商业化的工具主要用于商业智能目的,开源的工具主要用于学术目的。大多数可用的处理工具都是基于查询的,很少使用机器学习。在复杂事件处理中使用机器学习的进一步研究有巨大的潜力。
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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