Computer Science ›› 2019, Vol. 46 ›› Issue (11A): 159-162.

• Data Science • Previous Articles     Next Articles

Study on Interdisciplinary Model of Construction of Big Data Discipline in China

NING Hui-cong   

  1. (Chinese Institute of Electronics,Beijing 100036,China)
  • Online:2019-11-10 Published:2019-11-20

Abstract: With the vigorous development of new generation of information technology represented by big data,cloud computing and artificial intelligence,digital economy has become an important engine to drive China’s economic growth.It is a great significance to speed up the construction of big data discipline and train new generation of information technology talents.At present,there are many universities and research institutes at home and abroad to carry out the training of big data talents,but there is no mature model on how to carry out the construction of big data discipline.Therefore,this paper summarized the existing achievements of the construction of big data discipline at home and abroad,and used the Delphi method (expert investigation method) and case analysis method to conduct analyse.Lastly,combined with interdisciplinary research and personnel training mechanism,the interdisciplinary model of “point”“line”“lane” and “three-dimensional” in the construction of big data discipline in China was proposed to provide useful refe-rence for the interdisciplinary development research of the construction of big data discipline in our country.

Key words: Big data, Data science, Interdisciplinary, Discipline construction

CLC Number: 

  • TP391
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