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Training System of English Emergency Language Talents under the Multicultural Background of Free Trade Port

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DOI: 10.23977/aduhe.2023.051109 | Downloads: 9 | Views: 360

Author(s)

Xiaolan Deng 1, Dazhong Shu 2

Affiliation(s)

1 School of Foreign Languages, University of Sanya, Sanya, Hainan, 572022, China
2 School of Digital Economics, University of Sanya, Sanya, Hainan, 572022, China

Corresponding Author

Xiaolan Deng

ABSTRACT

English is the universal language in the world. With the establishment of free trade port and the development of trading, the demand for English talents in China is also rising. For the exchange and development of economy and culture, China needs to provide a training system for emergency language talents, provide diversified talents for the free trade port, and promote the occurrence of transactions and the display of culture. This paper mainly uses the methods of survey, interview and performance test to collect the relevant data of English emergency personnel training. The survey data shows that the comprehensive score of emergency talents of English majors in China is generally above 80. With the influence of the talent training model, the scores of the experimental group have been improved.

KEYWORDS

Free Trade Port, Multicultural Background, Emergency Language, Talent Training

CITE THIS PAPER

Xiaolan Deng, Dazhong Shu, Training System of English Emergency Language Talents under the Multicultural Background of Free Trade Port. Adult and Higher Education (2023) Vol. 5: 62-70. DOI: http://dx.doi.org/10.23977/aduhe.2023.051109.

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