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Machine Learning-Based Multipath Routing for Software Defined Networks

机译:基于机器学习的多路径路由软件定义网络

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Network softwarization has recently been enabled via the software-defined networking (SDN) paradigm, which separates the data plane from control plane allowing for a flexible and centralized control of networks. This separation facilitates implementation of machine learning techniques for network management and optimization. In this work, a machine learning-based multipath routing (MLMR) framework is proposed for software-defined networks with quality-of-service (QoS) constraints and flow rules space constraints. The QoS-aware multipath routing problem in SDN is modeled as multicommodity network flow problem with side constraints, that is known to be NP-hard. The proposed framework utilizes network status estimates, and their corresponding routing configurations available at the network central controller to learn a mapping function between them. Once the mapping function is learned, it is applied on live-inputs of network status and routing requests to predict a multipath routing solutions in real-time. Performance evaluations of the MLMR framework on real traces of network traffic verify its accuracy and resilience to noise in training data. Furthermore, the MLMR framework demonstrates more than 98.99% improvement in computational efficiency.
机译:最近通过软件定义的网络(SDN)范例启用了网络软态,其将数据平面与控制平面分开,允许灵活和集中控制网络。这种分离有助于实施网络管理和优化的机器学习技术。在这项工作中,针对具有服务质量(QoS)约束和流规则空间约束的软件定义网络,提出了一种基于机器学习的多路径路由(MLMR)框架。 SDN中的QoS感知多径路由问题被建模为具有侧约束的多个商品网络流问题,已知为NP-Hard。所提出的框架利用网络状态估计,以及网络中央控制器可用的相应路由配置,以学习它们之间的映射函数。一旦了解映射函数,它就会应用于网络状态的实时输入和路由请求,以实时预测多径路由解决方案。网络流量实际痕迹MLMR框架的性能评估验证了其准确性和恢复性对训练数据的噪声。此外,MLMR框架的计算效率提高了98.99%以上。

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