Invention Application
- Patent Title: METHOD OF PREDICTING DEMAND OF VIRTUAL NETWORK FUNCTION RESOURCES TO WHICH MACHINE LEARNING IS APPLIED
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Application No.: US16691505Application Date: 2019-11-21
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Publication No.: US20200167610A1Publication Date: 2020-05-28
- Inventor: Won Ki HONG , Jae Hyoung YOO , Do Young LEE , Hee Gon KIM
- Applicant: POSTECH Research and Business Development Foundation
- Priority: com.zzzhc.datahub.patent.etl.us.BibliographicData$PriorityClaim@44bcef3f com.zzzhc.datahub.patent.etl.us.BibliographicData$PriorityClaim@42b8ba9
- Main IPC: G06K9/62
- IPC: G06K9/62 ; G06N3/04 ; G06F9/50

Abstract:
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.
Public/Granted literature
- US11341372B2 Method of predicting demand of virtual network function resources to which machine learning is applied Public/Granted day:2022-05-24
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