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Bayesian Machine Learning Algorithm for Flow Prediction in SDN Switches

机译:贝叶斯机器学习算法用于SDN交换机中的流量预测

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Software Defined Network (SDN) has been devised to solve many problems related to the current structure of the computer networks. SDN reallocates the control planes of all Networking Function Devices (NFDs) to a central entity (called controller) and keeps forwarding planes locally at each NFDs (called switches). Notwithstanding, segregation of data and control plans impose latency and overheads to SDN-based networks as a NFD needs to consult the controller how to handle each traffic. In order to overcome such shortcoming of SDN, this paper makes use of the Bayesian Machine Learning (BML) to allow switches to infer the underlying stochastic process by which controller classifies packets into flows. Based on this inference a switch can assign those packets whose flows are not given previously by the controller to the most appropriate flow. Extensive simulation conducted to assess the performance of the proposed algorithm highlights its advantages compared to the standard mechanism defined in the-state-of-the-art SDN implementation.
机译:已经设计了软件定义网络(SDN)以解决与计算机网络的当前结构有关的许多问题。 SDN将所有网络功能设备(NFD)的控制平面重新分配给中央实体(称为控制器),并在每个NFD(称为交换机)本地保持转发平面。尽管如此,由于NFD需要咨询控制器如何处理每种流量,因此数据和控制计划的隔离会给基于SDN的网络带来延迟和开销。为了克服SDN的这种缺点,本文利用贝叶斯机器学习(BML)来允许交换机推断控制器将数据包分类为流的底层随机过程。基于该推断,交换机可以将其流量未由控制器先前指定的那些数据包分配给最合适的流量。与最新SDN实现中定义的标准机制相比,进行了广泛的仿真,以评估所提出算法的性能,突显了其优势。

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