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Real-Time Network Traffic Classification Based on CDH Pattern Matching

机译:基于CDH模式匹配的实时网络流量分类

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摘要

In recent years, with the rapid development of the Internet, the data scale of application behavior and application traffic have exploded. How to classify the real-time traffic of network becomes a big challenge. How to balance the accuracy and real-time of traffic classification is a difficult problem in technology. Therefore, this paper proposes a pattern matching real-time traffic classification method named PM, which first uses jpcap to accept network traffic data in real time, and then uses pattern matching to perform real-time matching traffic characteristics to achieve traffic classification. Among them, the use of the distributed message system kafka and the parallel computing framework Spark significantly improve the execution efficiency of the program. The experimental results show that PM has good performance in terms of accuracy.
机译:近年来,随着Internet的快速发展,应用程序行为和应用程序流量的数据规模猛增。如何对网络的实时流量进行分类成为一个很大的挑战。如何在流量分类的准确性和实时性之间取得平衡是技术上的难题。因此,本文提出一种模式匹配的实时流量分类方法,称为PM,首先使用jpcap实时接收网络流量数据,然后使用模式匹配对流量特征进行实时匹配,以实现流量分类。其中,使用分布式消息系统kafka和并行计算框架Spark可以显着提高程序的执行效率。实验结果表明,在精度方面,PM具有良好的性能。

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