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METHOD OF PREDICTING DEMAND OF VIRTUAL NETWORK FUNCTION RESOURCES TO WHICH MACHINE LEARNING IS APPLIED

机译:应用机器学习预测虚拟网络功能资源需求的方法

摘要

The present invention relates to a technique in which demand prediction of resources of virtual network functions (VNFs) that provide a core technology in a network virtualization environment is performed using machine learning technology. In the present invention, in order to predict VNF resource information, not only are the resources of the VNFs as data but also information of surrounding VNFs that are directly or indirectly related are used, and prediction is possible even in a dynamically changed network environment. In addition, service function chain (SFC) data among various pieces of network information is used to reduce a time required for machine learning according to a size of an entire network.
机译:本发明涉及一种技术,其中使用机器学习技术执行对在网络虚拟化环境中提供核心技术的虚拟网络功能(VNF)的资源的需求预测。在本发明中,为了预测VNF资源信息,不仅使用VNF的资源作为数据,而且使用直接或间接相关的周围VNF的信息,并且即使在动态变化的网络环境中也可以进行预测。另外,各种网络信息之间的服务功能链(SFC)数据用于根据整个网络的大小减少机器学习所需的时间。

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