随着GenAI的加速采用,中国的LLM使用量达到6亿用户

币界网Published on 2024-08-13Last updated on 2024-08-13

币界网报道:

中国大陆有超过6亿人正在使用大型语言模型(LLMs)。中国政府允许这些LLM用于商业用途,使用与ChatGPT等人工智能(AI)产品相同的技术。

中国国家互联网信息办公室(CAC)主任庄荣文提供了估计数字,他表示,生成性人工智能服务正在“有力地推动经济和社会增长”。据新华社报道,CAC还在中国大陆担任互联网监管机构。

中国当局平均每天批准一个法学硕士

目前,在中国政府的批准下,已有188多种LLM向公众开放。在过去六个月里,当局平均每天批准一个新的LLM用于商业用途。

然而,根据不同公司的媒体报道和新闻稿,2024年1月,只有14个LLM和基于人工智能的商业应用程序获得了商业用途的批准。

越来越多的商业LLM用户表明,生成式人工智能在世界第二大经济体中得到了快速采用。这是在OpenAI于2022年11月30日发布ChatGPT 20个月后发布的,这引发了全球的兴奋。

在今天发表的一次采访中,庄表示,CAC的主要职责之一是“积极促进生成性人工智能的发展和治理”

庄指出,中国一直在努力将GenAI应用于制造业、农业、教育、医疗保健和医药等多个领域。这样做是为了振兴过时的产业,促进真正的经济增长,并在技术进步方面与美国持平。

根据北京的一份战略草案,它已经计划到2026年为人工智能技术制定至少50套标准。

建议的标准将涵盖多个领域,包括法学硕士培训、人工智能安全、治理、工业应用、计算系统、软件、数据中心以及半导体的技术要求和测试方法。

法学硕士在中国的广泛发展一直是一个备受批评的话题

早在7月,百度联合创始人兼首席执行官李彦宏在上海举行的世界人工智能大会的一次小组讨论中重申了他的声明,即中国的法学硕士太多了。根据《南华早报》的一篇报道,李还敦促设计师创建更多基于人工智能的有用应用程序。

李说,

“2023年,中国出现了100多个LLM之间的激烈竞争,导致了资源的严重浪费,特别是计算能力。”

在同一次会议上,人工智能独角兽MiniMax的创始人兼首席执行官严俊杰预测,未来将发生重大的行业合并。他说,LLMs将主要由大约五家公司创立。随着时间的推移,小玩家要么加入大玩家,要么逐渐淡出。

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