Evaluating Deep Packet Inspection in Large-scale Data Processing

F. Angiulli, A. Furfaro, D. Saccá, Ludovica Sacco
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Abstract

The Internet has evolved to the point that gigabytes and even terabytes of data are generated and processed on a daily basis. Such a stream of data is characterised by high volume, velocity and variety and is referred to as Big Data. Traditional data processing tools can no longer be used to process big data, because they were not designed to handle such a massive amount of data. This problem concerns also cyber security, where tools like intrusion detection systems employ classification algorithms to analyse the network traffic. Achieving a high accuracy attack detection becomes harder when the amount of data increases and the algorithms must be efficient enough to keep up with the throughput of a huge data stream. Due to the challenges posed by a big data environment, some monitoring systems have already shifted from deep packet inspection to flow-level inspection. The goal of this paper is to evaluate the applicability of an existing intrusion detection technique that performs deep packet inspection in a big data setting. We have conducted several experiments with Apache Spark to assess the performance of the technique when classifying anomalous packets, showing that it benefits from the use of Spark.
大规模数据处理中的深度包检测评价
互联网已经发展到每天产生和处理千兆字节甚至兆兆字节的数据。这种数据流的特点是量大、速度快、种类多,被称为大数据。传统的数据处理工具不能再用于处理大数据,因为它们不是为处理如此大量的数据而设计的。这个问题也涉及到网络安全,像入侵检测系统这样的工具使用分类算法来分析网络流量。当数据量增加时,实现高精度的攻击检测变得更加困难,并且算法必须足够高效以跟上庞大数据流的吞吐量。由于大数据环境带来的挑战,一些监控系统已经从深度包检测转向流级检测。本文的目标是评估在大数据环境下执行深度数据包检测的现有入侵检测技术的适用性。我们已经使用Apache Spark进行了几个实验,以评估该技术在分类异常数据包时的性能,表明它受益于使用Spark。
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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