利用商品SDN系统对大象流进行实时检测、隔离和监控

S. Madanapalli, Minzhao Lyu, Himal Kumar, H. Gharakheili, V. Sivaraman
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引用次数: 13

摘要

企业和运营商网络的运营商越来越需要实时了解其网络中的流量模式,以便他们可以更好地进行资源管理(拥塞检测、动态路由、容量调度)和安全保护(检测入侵和容量攻击)。特别令人感兴趣的是运输大量货物的大象流,因为它们需要的资源最多,造成的破坏也最大。目前用于检测和监视象流的技术是基于基于软件的数据包分析或基于硬件的检查,这些技术要么不可扩展,要么代价高昂。在本文中,我们设计、实现并评估了一个基于sdn的解决方案,该解决方案可扩展(到每秒数十千兆)且价格低廉(使用商用OpenFlow交换机构建)。我们首先开发了一个系统架构,该架构明智地将软件数据包检测与硬件流表计数器相结合,以识别和监控大流量。然后,我们使用从校园网获取的真实流量跟踪来调整算法参数,以便在软件负载和硬件表大小之间进行所需的权衡。最后,我们在商用OpenFlow硬件交换机上对我们的解决方案进行了原型设计,以及开源控制器和数据包检测软件,并在真实的校园网中演示了10Gbps的运行。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real-time detection, isolation and monitoring of elephant flows using commodity SDN system
Operators of enterprise and carrier networks in-creasingly require real-time visibility into traffic patterns in their network, so they can do better resource management (congestion detection, dynamic routing, capacity scheduling) and security protection (detection of intrusions and volumetric attacks). Of particular interest are elephant flows that transfer large volumes, since they demand most resources and can inflict most damage. Today's techniques for detecting and monitoring elephant flows are based on software-based packet analysis or hardware-based inspection, which are either unscalable or expensive. In this paper we design, implement, and evaluate an SDN-based solution that is scalable (to tens of Gigabits-per-second) and inexpensive (built using commodity OpenFlow switches). We first develop a system architecture that judiciously combines software packet inspection with hardware flow-table counters to identify and monitor heavy flows. We then use real traffic traces taken from a campus network to tune our algorithm parameters for desired trade-off between software load and hardware table size. Finally, we prototype our solution on a commodity OpenFlow hardware switch together with open-source controller and packet inspection software, and demonstrate operation at 10Gbps in a real campus network.
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