深度包检测的CPU/GPU混合模式匹配算法

Yi-Shan Lin, Chun-Liang Lee, Yaw-Chung Chen
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引用次数: 13

摘要

由于高速网络中应用之间的通信频繁,深度包检测(DPI)对网络应用感知起着重要作用。基于签名的网络入侵检测系统(NIDS)包含DPI技术,该技术通过模式匹配算法对入侵报文的有效负载进行检测,在整体检测性能中占主导地位。基于软件平台的并行编程实现高效的模式匹配算法具有成本低、可扩展性高等优点,目前的研究主要集中在并行编程上。中央处理单元(CPU)或图形处理单元(GPU)都参与其中。我们的研究重点是设计一种基于CPU和GPU协同的模式匹配算法。在本文中,我们提出了一种改进的设计,并介绍了这种新颖的方法,一种长度有限的混合CPU/GPU模式匹配算法(LHPMA)。在初步实验中,展示了LHPMA的性能并与之前的工作进行了比较,结果表明LHPMA比其他测试算法实现了更高的吞吐量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Length-bounded Hybrid CPU/GPU Pattern Matching Algorithm for Deep Packet Inspection
Since frequent communication between the applications took place in high speed networks, deep packet inspection (DPI) plays an important role to the network application awareness. The signature-based network intrusion detection system (NIDS) contains the DPI technique that examines the incoming packet payloads by employing the pattern matching algorithm, which dominates the overall inspection performance. Existing studies focused on implementing efficient pattern matching algorithms by parallel programming on software platform because of the advantages of lower cost and higher scalability. Either the central processing unit (CPU) or the graphic processing unit (GPU) was involved. Our studies focused on designing a pattern matching algorithm based on the cooperation between both CPU and GPU. In this paper, we present an enhanced design for our previous work and introduce this novel method, a length-bounded hybrid CPU/GPU pattern matching algorithm (LHPMA). In the preliminary experiment, the performance and comparison with the previous work are displayed, and the results show that the LHPMA achieves higher throughput than other tested algorithms.
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