飞马:精确搜寻网络流中的冰山和异常

S. Gangam, P. Sharma, S. Fahmy
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引用次数: 19

摘要

准确的在线网络监控对于发现网络中的攻击、故障和异常,判断网络中的流量属性至关重要。由于链路带宽大,流量也随之增加,因此很难在线收集和分析详细的流量记录。传统的解决方案将数据收集与分析分离,采用采样和草图来处理大量的监控流量。我们提出了一个新的系统,Pegasus,利用商业上可用的位于路由器和交换机附近的计算和存储设备。Pegasus基于流量模式和用户查询自适应地管理监视器和聚合器之间的数据传输。我们用帕伽索斯探测全球冰山或全球重磅炸弹。冰山是具有共同属性的流,它贡献了网络流量的很大一部分。例如,DDoS攻击检测是具有共同目的IP的冰山检测问题。其他应用程序包括识别“顶级通话者”、顶级目的地、蠕虫检测和端口扫描。在PlanetLab上使用Abilene跟踪、sFlow跟踪和部署Pegasus作为实时监控服务的实验表明,我们的系统是准确的,并且随着流量和监视器数量的增加而扩展良好。
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Pegasus: Precision hunting for icebergs and anomalies in network flows
Accurate online network monitoring is crucial for detecting attacks, faults, and anomalies, and determining traffic properties across the network. With high bandwidth links and consequently increasing traffic volumes, it is difficult to collect and analyze detailed flow records in an online manner. Traditional solutions that decouple data collection from analysis resort to sampling and sketching to handle large monitoring traffic volumes. We propose a new system, Pegasus, to leverage commercially available co-located compute and storage devices near routers and switches. Pegasus adaptively manages data transfers between monitors and aggregators based on traffic patterns and user queries. We use Pegasus to detect global icebergs or global heavy-hitters. Icebergs are flows with a common property that contribute a significant fraction of network traffic. For example, DDoS attack detection is an iceberg detection problem with a common destination IP. Other applications include identification of “top talkers,” top destinations, and detection of worms and port scans. Experiments with Abilene traces, sFlow traces from an enterprise network, and deployment of Pegasus as a live monitoring service on PlanetLab show that our system is accurate and scales well with increasing traffic and number of monitors.
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