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基于网络演进的人工智能技术方向研究 被引量:6

Study on the direction of artificial intelligence technology based on network evolution
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摘要 国家战略把人工智能(AI)及物联网(IoT)/5G同时定位为信息基础设施的重要组成部分,其中人工智能属于新技术基础设施,IoT/5G属于通信网络基础设施。这引出了“通信技术与人工智能技术融合发展”的技术方向。对于电信运营商而言,如何将人工智能技术与网络融合,重构网络技术架构,将“AI能力”作为“服务”开放,将是重要的技术演进方向。基于这一命题,探讨了未来AI和网络技术的发展方向,为未来AI技术与IoT/5G网络架构的融合发展方向提供了参考思路。 The national strategy positions artificial intelligence(AI)and Internet of things(IoT)/5G as important components of information technology facilities at the same time.Among them,AI belongs to new technology infra-structure,and IoT/5G belongs to communication network infrastructure.It leads to the technical direction of“inte-grate and develop communication and AI technology”.For telecom operators,how to integrate AI technology with the network,reconstruct network technology architecture,and open“AI ability”as a“service”will be an important technology evolution direction.Based on this proposition,the development direction of AI and network technology in the future was discussed,and a reference idea for the integration development and application direction of AI tech-nology with the network architecture of IoT/5G in the future was provided.
作者 杨震 赵建军 黄勇军 李洁 陈楠 YANG Zhen;ZHAO Jianjun;HUANG Yongjun;LI Jie;CHEN Nan(E-Surfing Internet of Things Technology Co.,Ltd.,Shanghai 200122,China)
出处 《电信科学》 2022年第12期27-34,共8页 Telecommunications Science
关键词 人工智能 物联网 5G 智能内生 算网融合 AI Internet of things 5G intelligent-endogenesis computing and network integration
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