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PhD Forum: Data traffic classification using deep learning models

机译:PHD论坛:使用深度学习模型的数据流量分类

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The growth in data traffic is exponential with the usage of network applications in mundane activities. The network operators are posed with the challenge of providing Quality of Experience (QoE) to the deluge of internet users. Network traffic classification plays a significant role in network resource management with prominent security, billing, and accounting applications. In this paper, the network data traffic classification is performed using the Deep Learning (DL) models. The previous data traffic mechanism fails when the scale in data generated is in Exabytes per day from the perspective of the internet user. The network resource management is automated by classification of the traffic without intervening by the operator. The dataset is collected from the campus network for different applications.The network traffic classification is performed using the AlexNet, ResNet, and GoogLeNet DL models. The accuracy obtained for ResNet is 95%, AlexNet is 75%, and GoogLeNet is 91%. The challenge in network traffic classification is converting the packet capture files to the data type requirements of the Convolution Neural Networks (CNN) as an image. The four different network applications are considered for traffic classification. In the next-generation network architecture, artificial intelligence will be an integral part. It reduces the human intervention in traffic characterization and analysis, which aids in meeting the QoE requirements of the users.
机译:数据流量的增长是在平凡的活动中使用网络应用的指数。网络运营商因提供经验质量(QoE)到互联网用户的挑战而构成。网络流量分类在网络资源管理中发挥着重要作用,具有突出的安全性,计费和会计应用程序。在本文中,使用深度学习(DL)模型来执行网络数据流量分类。当从互联网用户的角度来看,当生成的数据中的规模处于Exabytes中,之前的数据流量机制失败。通过运营商的流量分类,网络资源管理是自动的。数据集是从校园网络收集的,以进行不同的应用程序。使用AlexNet,Reset和Googlenet DL模型执行网络流量分类。 Reset获得的准确性为95%,AlexNet为75%,Googlenet为91%。网络流量分类中的挑战正在将数据包捕获文件转换为卷积神经网络(CNN)作为图像的数据类型要求。四种不同的网络应用程序被考虑用于流量分类。在下一代网络架构中,人工智能将是一个组成部分。它减少了人力资料和分析的人为干预,有助于满足用户的QoE要求。

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