基于报头字段的分布式包捕获和处理网络流量分区

R. Gad, Martin Kappes, Robin Mueller-Bady, I. Medina-Bulo
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引用次数: 7

摘要

维护计算机网络的正常运行对于确保信息技术基础设施的正常运行至关重要。因此,网络流量数据的获取是第一步。然而,获取网络流量可能非常具有挑战性,例如,在性能和资源需求方面。在本文中,我们分析了使用包头数据有效地将实时网络流量数据划分为子集的可能性,目的是实现分布式数据包捕获和处理。目标是以协调的方式使用多个传感器,以便在参与的传感器之间分配整体任务。我们的结果表明,基于包头数据有效地划分实时网络流量是可能的。此外,我们实现了一个分布式数据包捕获系统的原型,该系统实现了比单个不协调传感器更高的捕获率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Header Field Based Partitioning of Network Traffic for Distributed Packet Capturing and Processing
Maintaining correctly operating computer networks is paramount for assuring properly operating information technology infrastructures. Thereby, the acquisition of network traffic data is one of the first steps. The acquisition of network traffic, however, can be very challenging, e.g., with respect to performance and resource requirements. In this paper, we analyze the possibility of using packet header data for efficiently partitioning live network traffic data into subsets with the aim on enabling distributed packet capturing and processing. The goal is to employ multiple sensors in a coordinated fashion such that the overall task is distributed among the participating sensors. Our results show that efficiently partitioning live network traffic based on packet header data is possible. Furthermore, we implemented a prototype of a distributed packet capturing system that achieves significantly higher capture rates than a single, uncoordinated sensor.
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