男女羞羞视频在线观看,国产精品黄色免费,麻豆91在线视频,美女被羞羞免费软件下载,国产的一级片,亚洲熟色妇,天天操夜夜摸,一区二区三区在线电影
Global EditionASIA 中文雙語Fran?ais
Opinion
Home / Opinion / Chinese Perspectives

Concerted efforts necessary to bridge AI talent gap

By Fang Shouen | China Daily | Updated: 2025-03-11 07:03
Share
Share - WeChat
SONG CHEN/CHINA DAILY

Artificial intelligence is not only driving economic transformation but also reshaping global competition. Recognizing its significance, major economies have adopted national strategies to gain a competitive edge in AI development.

Fang Shouen

According to the World Economic Forum, trends in AI and information processing technology are expected to create 11 million jobs, while simultaneously displacing 9 million others between 2025 and 2030. And McKinsey& Company estimates that China could face a shortfall of up to 4 million AI professionals by 2030. Bridging this gap with a robust pipeline of top-tier AI talents is critical to the success of national AI strategy.

Yet the current AI education system faces several bottlenecks that are hindering the development of a skilled workforce. First, AI curriculums and teaching resources lag behind technological and industrial advancements. AI is characterized by interdisciplinary depth, rapid innovation cycles and close integration with industry. But the traditional university structure, with its rigid departmental boundaries, often fails to foster interdisciplinary collaboration or meet the evolving needs of industries.

Second, faculty members often lack hands-on engineering experience. While the number of AI PhD advisers in China has grown by 40 percent in the past five years, less than 25 percent have industry backgrounds, according to Tsinghua University's 2023 China AI Development Report. Worse, a Ministry of Industry and Information Technology report says that nearly 70 percent of companies believe AI graduates lack practical skills for real-world applications.

And third, industry-academia collaboration in China remains insufficient. In the United States, universities leverage partnerships with industries to integrate cutting-edge technologies and real-world applications into AI education. But China's AI talent development ecosystem is yet to achieve such a synergy. Most university-industry partnerships in China are confined to general research areas.

To address these challenges, the following measures should be taken. To begin with, a tiered and specialized AI talent training system should be developed, and AI talent development categorized into foundational research, technological innovation and applied AI fields.

While a national AI education advisory committee should be established to guide curriculum design and update teaching content regularly, cross-disciplinary coursework needs to be strengthened and fast-track AI education pathways, expanded to accelerate talent output.

There is also a need to build a dual-track faculty training model, with the education department entrusting some universities and leading enterprises to build industry-academia innovation laboratories in specific sub-fields of AI, and providing policy and financial support for it. Using these integrated innovation laboratories, a flexible talent system should be established to recruit or invite personnel from enterprises to teach in universities.

Universities should also establish a mechanism for young teachers to undergo six to twelve months of paid training at leading AI companies before starting to teach, and invite frontline engineers from enterprises to participate in practical teaching activities to provide students with more practical and forward-looking guidance.

And last, it is important to enhance industry-academia collaboration, by allowing industry-academia innovation laboratories to promote research cooperation among universities, research institutions and enterprises, and explore paid mechanisms to integrate advanced manufacturing equipment and core technological resources from enterprises into the talent development process.

It is also recommended to open green approval channels for school-enterprise cooperation projects, reduce the patent approval period to six months, and transform research results into industrial or commercial use.

With AI reshaping industries and global competitiveness, the ability to cultivate high-level talents will be a defining factor in national success. So governments, universities and enterprises must collaborate to reform AI education, and ensure the workforce of the future is capable of driving innovation.

The author is secretary of the Party Committee of Tongji University and a member of the 14th National Committee of the Chinese People's Political Consultative Conference. The views don't necessarily reflect those of China Daily.

If you have a specific expertise, or would like to share your thought about our stories, then send us your writings at opinion@chinadaily.com.cn, and comment@chinadaily.com.cn.

Most Viewed in 24 Hours
Top
BACK TO THE TOP
English
Copyright 1995 - . All rights reserved. The content (including but not limited to text, photo, multimedia information, etc) published in this site belongs to China Daily Information Co (CDIC). Without written authorization from CDIC, such content shall not be republished or used in any form. Note: Browsers with 1024*768 or higher resolution are suggested for this site.
License for publishing multimedia online 0108263

Registration Number: 130349
FOLLOW US
主站蜘蛛池模板: 犍为县| 普安县| 阆中市| 兰坪| 砚山县| 乐东| 北碚区| 枝江市| 杭锦后旗| 察哈| 凤凰县| 河间市| 菏泽市| 天柱县| 洮南市| 乌海市| 剑河县| 钦州市| 屏南县| 宜丰县| 乌兰察布市| 陇南市| 安塞县| 增城市| 扬州市| 玉田县| 乌苏市| 乐平市| 定边县| 昭平县| 和田县| 舒城县| 简阳市| 聂荣县| 响水县| 蚌埠市| 濉溪县| 贵港市| 吉隆县| 天镇县| 布尔津县| 五寨县| 尚志市| 灌云县| 南宫市| 嵩明县| 西林县| 南投市| 方城县| 岐山县| 马尔康县| 年辖:市辖区| 河曲县| 承德市| 翁源县| 文昌市| 临洮县| 防城港市| 乌海市| 诏安县| 灵寿县| 上饶市| 黔西| 阿巴嘎旗| 含山县| 馆陶县| 宣恩县| 偏关县| 宜君县| 吴江市| 建平县| 宣恩县| 孝义市| 清丰县| 宣汉县| 屏东市| 金坛市| 洛宁县| 湖南省| 琼海市| 上蔡县| 华容县|