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NTIS 바로가기전자통신동향분석 = Electronics and telecommunications trends, v.36 no.1, 2021년, pp.1 - 11
권오욱 (언어지능연구실) , 이기영 (언어지능연구실) , 이요한 (언어지능연구실) , 노윤형 (언어지능연구실) , 조민수 (언어지능연구실) , 황금하 (언어지능연구실) , 임수종 (언어지능연구실) , 최승권 (언어지능연구실) , 김영길 (언어지능연구실)
In this study, we introduce trends in and the future of digital personal assistants. Recently, digital personal assistants have begun to handle many tasks like humans by communicating with users in human language on smart devices such as smart phones, smart speakers, and smart cars. Their capabiliti...
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