


Tsinghua University clarifies: Only a few graduates go abroad, and the leading private companies for employment this year are Huawei and BYD
News from this site on January 17, according to the official WeChat account of Tsinghua University: The overall proportion of Tsinghua graduates going abroad (overseas) for further study is 8.0%, among which the proportion of undergraduates going abroad (overseas) for further study is 8.0% 15.6%, and the proportion of master's students who go abroad for further study is 5.9%, which is not the "80% of Tsinghua graduates go abroad" as reported online. In addition, according to the registration information of the "Tsinghua People" mini program of the Tsinghua Alumni Association, most of the Tsinghua alumni who have studied abroad and completed their studies in the past 20 years have returned to work in China.

In addition, The employment rate of this year’s graduates in key units in important fields related to the national economy and people’s livelihood is 83.0%. The units cover many important industry fields such as national defense technology, manufacturing, energy industry, information and communications, Internet, public management and services, universities and scientific research institutes. In the past ten years or so, the employment rate of Tsinghua graduates in key units in important domestic fields has been over 80%.
Data show that the employment rate of graduates outside Beijing is 53.8%. In the past ten years, most graduates have gone to find jobs outside Beijing. The number of people employed in the national defense and military industries and in the western region continues to rise.
Among the employers of Tsinghua graduates, the top two state-owned enterprises are China Aerospace and State Grid, and the top two private enterprises are Huawei and BYD.

# This site’s inquiry found that Tsinghua University had refuted the rumor last year. The official releases a report on the employment quality of graduates every year. In the past five years, The number of Tsinghua graduates going abroad for further study accounts for the highest proportion of 16.5% of the total number of graduates, and in 2022 it will only be 7.1%.

The above is the detailed content of Tsinghua University clarifies: Only a few graduates go abroad, and the leading private companies for employment this year are Huawei and BYD. For more information, please follow other related articles on the PHP Chinese website!

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According to the news from this site on January 17, according to the official WeChat account of Tsinghua University: the overall proportion of Tsinghua graduates in 2023 going abroad (overseas) for further study is 8.0%, of which the proportion of undergraduate students going abroad (overseas) for further study is 15.6%, and the proportion of master's students going abroad (overseas) The proportion of students pursuing further education is 5.9%, which is not the popular saying on the Internet that "80% of Tsinghua graduates go abroad." In addition, according to the registration information of the Tsinghua Alumni Association’s “Tsinghua People” mini program, most of the Tsinghua alumni who have studied abroad and completed their studies in the past 20 years have returned to work in China. In addition, the employment rate of this year's graduates in key units in important fields related to the national economy and people's livelihood is 83.0%, and the main units contracted by include national defense technology, manufacturing, energy industry, information and communications, Internet, public management and services, universities and research institutes Many important industry areas such as

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