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Learning-based Orchestrator for Intelligent Software-defined Networking Controllers

机译:基于学习的智能软件定义网络控制器的乐队

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This paper presents an overview of our learning-based orchestrator for intelligent Open vSwitch that we present this using Machine Learning in Software-Defined Networking technology. The first task consists of extracting relevant information from the Data flow generated from a SDN and using them to learn, to predict and to accurately identify the optimal destination OVS using Reinforcement Learning and QLearning Algorithm. The second task consists to select this using our hybrid orchestrator the optimal Intelligent SDN controllers with Supervised Learning. Therefore, we propose as a solution using Intelligent Software-Defined Networking controllers (SDN) frameworks, OpenFlow deployments and a new intelligent hybrid Orchestration for multi SDN controllers. After that, we feeded these feature to a Convolutional Neural Network model to separate the classes that wea??re working on. The result was very promising the model achieved an accuracy of 72.7% on a database of 16 classes. In any case, this paper sheds light to researchers looking for the trade-offs between SDN performance and IA customization.
机译:本文概述了我们基于学习的乐观开放式vswitch,我们在软件定义的网络技术中使用机器学习提供了这一点。第一任务包括从SDN生成的数据流中提取相关信息,并使用它们学习,以便使用加强学习和QLearning算法准确地识别最佳目的地OV。第二项任务组成了使用我们的混合协调仪器的最佳智能SDN控制器,具有监督学习。因此,我们建议使用智能软件定义的网络控制器(SDN)框架,Openflow部署以及用于多SDN控制器的新智能混合编排的解决方案。之后,我们向卷积神经网络模型馈送这些功能,以将WEA的课程分开。结果非常有前途的模型在16级数据库上实现了72.7%的准确性。无论如何,本文向研究人员揭示了寻找SDN性能与IA定制之间的权衡的研究人员。

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