The impact of artificial intelligence on the digital transformation of Chinese trade unions

Junliang Ren , Changtu Wang

Elect Elect Eng Res ›› 2022, Vol. 2 ›› Issue (1) : 96 -104.

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Elect Elect Eng Res ›› 2022, Vol. 2 ›› Issue (1) :96 -104. DOI: 10.37420/j.eeer.2022.007
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The impact of artificial intelligence on the digital transformation of Chinese trade unions
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Abstract

In the digital era of the 21st century, artificial intelligence, as a cutting-edge technology, is causing profound changes globally. China, as a populous country, is renowned worldwide for its rapid economic and social development and rapid technological progress. In this context, the digital transformation of Chinese trade unions, as an important bridge connecting the government, enterprises, and employees, has become an inevitable choice to enhance work efficiency and strengthen public service capabilities. Artificial intelligence has a positive impact on the digital empowerment of Chinese trade unions, including promoting the improvement of trade union work efficiency, enhancing the quality and scope of trade union services, meeting the diverse needs of employees, and strengthening the organizational power and influence of trade unions, promoting the sustainable development of the Chinese trade union cause. By utilizing artificial intelligence technology, the digital transformation of trade unions can be propelled, elevating the intelligence and precision level of trade union work. Trade unions should actively embrace artificial intelligence technology, continuously explore innovation to adapt to the development needs of the digital economy era.

Keywords

Artificial Intelligence / Chinese Labor Union / Digital Construction.

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Junliang Ren, Changtu Wang. The impact of artificial intelligence on the digital transformation of Chinese trade unions. Elect Elect Eng Res, 2022, 2(1): 96-104 DOI:10.37420/j.eeer.2022.007

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