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네트워크와 AI 기술 동향
Trends in Network and AI Technologies 원문보기

전자통신동향분석 = Electronics and telecommunications trends, v.35 no.5, 2020년, pp.1 - 13  

김태연 (지능네트워크연구실) ,  고남석 (데이터중심네트워크연구실) ,  양선희 (네트워크연구본부) ,  김선미 (네트워크연구본부)

Abstract AI-Helper 아이콘AI-Helper

Recently, network infrastructure has evolved into a BizTech agile autonomous network to cope with the dynamic changes in the service environment. This survey presents the expectations from two different perspectives of the harmonization of network and artificial intelligence (AI) technologies. First...

주제어

표/그림 (6)

참고문헌 (36)

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