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NTIS 바로가기정보처리학회논문지. KIPS transactions on computer and communication systems 컴퓨터 및 통신 시스템, v.9 no.12, 2020년, pp.291 - 306
(아주대학교 라이프케어사이언스랩) , 조위덕 (아주대학교 전자공학부)
Nowadays, Data-Network-AI (DNA)-based intelligent services and applications have become a reality to provide a new dimension of services that improve the quality of life and productivity of businesses. Artificial intelligence (AI) can enhance the value of IoT data (data collected by IoT devices). Th...
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