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Real Time Anomaly Detection in Massive Data Streams with ELK Stack

机译:使用ELK堆栈的海量数据流中的实时异常检测

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摘要

Real time anomaly detection is very popular topic nowadays this because the number of data generated every day is larger and larger. Facing with the phenomena of Big Data is not an easy task. The main aim of this research is to fine appropriate architecture for real-time big data analytic and its main task is to detect anomalies in this real-time data. In this paper we show the implementation of anomaly detection algorithm in real time infrastructure in order to find anomalies as soon as possible. We have proposed architecture for real time anomaly detection by adding some new components and the main part of the infrastructure is Timelion which enable implementation of different algorithms for anomaly detection. The research is focused to develop infrastructure to monitor e-dnevnik (education national system in Macedonia) application server and to detect errors in order to scale up the performance.
机译:由于每天生成的数据数量越来越大,因此实时异常检测是当今非常流行的话题。面对大数据现象并非易事。本研究的主要目的是为实时大数据分析优化合适的体系结构,其主要任务是检测实时数据中的异常。在本文中,我们展示了异常检测算法在实时基础架构中的实现,以便尽早发现异常。我们通过添加一些新的组件,提出了用于实时异常检测的体系结构,而基础架构的主要部分是Timelion,它可以实现用于异常检测的不同算法。这项研究的重点是开发基础结构,以监视e-dnevnik(马其顿的国家教育系统)应用服务器并检测错误以扩大性能。

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