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Improved Flow Awareness by Spatio-Temporal Collaborative Sampling in Software Defined Networks

机译:软件定义网络中的时空协同采样改进了流动意识

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General traffic analysis based on Deep Packet Inspection (DPI) techniques at the gateways or access points cannot grasp the detailed knowledge of network applications going among internal nodes, and the statistics-based reports of routers are also lack of flow-level recognition of the traffic in the form of only five tuple. Therefore, network-wise accurate flow-awareness by packet sampling is highly desired for fine-grained quality of service guarantee, internal network management, traffic engineering, and security analysis and so on. In this paper, we propose a Spatio-Temporal Collaborative Sampling (STCS) problem based on the Software-Defined Networking (SDN) technique. The goal of STCS is to maximize the network-wise sampling accuracy of both elephant and mice flows, which considers both of the comprehensive influences of nodes and the effect on sampling accuracy imposed by the collaborative strategy among nodes in the time dimension. We present a approach to calculate the near optimal solution of STCS in two steps: 1) Top-K nodes selection by iterative comprehensive influence, and 2) spatio-temporal cosampling solution based on the local value maximization strategy. We evaluate the proposed approach by a realistic large-scale topology, and the results show that the sampling accuracy can be effectively improved by the method, especially for mice flows, and the redundant ratio of sampled packets is reduced by 34.4%.
机译:基于深度数据包检查(DPI)技术的通用流量分析在网关或接入点中无法掌握内部节点中的网络应用的详细知识,路由器的统计数据报告也缺乏流量的流量识别以五元组的形式。因此,对于细粒度的服务保证,内部网络管理,交通工程和安全性分析,非常需要通过数据包采样进行网络方面准确的流量意识。在本文中,我们提出了一种基于软件定义的网络(SDN)技术的时空协同采样(STC)问题。 STC的目标是最大化大象和小鼠流量的网络明智的采样精度,这考虑了节点的全面影响以及时间尺寸中节点之间的协作策略所施加的采样精度的影响。我们提出了一种方法来计算STC的近优化解决方案的两个步骤:1)基于局部价值最大化策略的迭代综合影响和2)两步的Top-K节点选择。我们通过逼真的大规模拓扑评估所提出的方法,结果表明,通过该方法可以有效地改善采样精度,特别是对于小鼠流动,采样分组的冗余比率减少了34.4%。

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