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Efficiency of Supervised Machine Learning Algorithms in Regular and Encrypted VoIP Classification within NFV Environment

机译:NFV环境中定期加密VoIP分类中监督机器学习算法的效率

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Cloudification of all computing environments is an undergoing process. The process has overpassed the classical Virtual Machines (VM) and Software-Defined Networking (SDN) approach and has moved towards dockerizing, microservices, app functions, network functions etc. 5G penetration is another trend, and it is built on such platforms. In this environment we are investigating the efficiency of supervised machine learning algorithms for classification of regular and encrypted Voice over IP (VoIP) traffic that 5G relies on, within a virtualized Network Functions Virtualization (NFV) environment and an east-west based network traffic. We are using statistical methods for classification of network packets without the need of inspecting the payload data and without the source, destination and port information of the packets. The efficiency is analyzed from a point of precision of the classification, but also from a point of time consumption, as adding delay to the original traffic may cause a problem, especially within 5G environments where packet delay is crucial.
机译:所有计算环境的Closeration是一个正在进行的过程。该过程已经超越了经典的虚拟机(VM)和软件定义的网络(SDN)方法,并已向Dockerizing,微服务,应用功能,网络功能等移动。5G渗透是另一个趋势,它建立在这些平台上。在这种环境中,我们正在调查监督机器学习算法的效率,以便在虚拟化网络功能虚拟化(NFV)环境和基于东西的网络流量的虚拟化网络功能中的常规和加密语音上的分类(VoIP)流量的分类。我们使用统计方法来分类网络数据包,而无需检查有效载荷数据,没有数据包的源,目的地和端口信息。从分类的精度分析了效率,而且从时间点消耗的点,因为向原始流量的增加延迟可能导致问题,尤其是在分组延迟至关重要的5G环境中。

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