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Machine Learning in Software Defined Networks: Data collection and traffic classification

机译:软件定义网络中的机器学习:数据收集和流量分类

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Software Defined Networks (SDNs) provides a separation between the control plane and the forwarding plane of networks. The software implementation of the control plane and the built in data collection mechanisms of the OpenFlow protocol promise to be excellent tools to implement Machine Learning (ML) network control applications. A first step in that direction is to understand the type of data that can be collected in SDNs and how information can be learned from that data. In this work we describe a simple architecture deployed in an enterprise network that gathers traffic data using the OpenFlow protocol. We present the data-sets that can be obtained and show how several ML techniques can be applied to it for traffic classification. The results indicate that high accuracy classification can be obtained with the data-sets using supervised learning.
机译:软件定义的网络(SDNS)提供了控制平面和网络的转发平面之间的分离。控制平面的软件实现以及开放流协议的内置数据收集机制承诺是实现机器学习(ML)网络控制应用的优异工具。沿着该方向的第一步是理解可以在SDN中收集的数据类型以及如何从该数据中学习信息。在这项工作中,我们描述了一种在企业网络中部署的简单架构,该架构使用OpenFlow协议收集流量数据。我们介绍了可以获得的数据集,并展示如何将ML技术应用于运输分类。结果表明,使用监督学习的数据集可以获得高精度分类。

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