What professional category does big data belong to?
The professional categories of big data are: 1. Data science and big data technology, undergraduate majors, referred to as data science or big data; 2. Big data technology and application, majors in higher vocational colleges.
1. Data Science and Big Data Technology
Undergraduate major, referred to as data science Or big data.
The schooling lasts four years and is awarded an engineering degree or a science degree.
aims to cultivate high-level big data talents with big data thinking, application of big data thinking and analysis application technology.
2. Big data technology and application
Major in higher vocational colleges.
The schooling lasts four years and is awarded an engineering degree or a science degree.
aims to train students to systematically master data management and data mining methods, and become capable of big data analysis and processing, data warehouse management, comprehensive deployment of big data platforms, big data platform application software development and data Senior professional big data technical talents with product visual presentation and analysis capabilities.
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