Exploration of Teaching Computer Information Technology Course in Universities under Big Data
Keywords:
Big data, Computer information technology, Course teachingAbstract
As a key link in this wave, the teaching exploration of the "Computer Information Technology" course in universities is not only related to the cultivation of technical talents, but also an important force to promote the development of the entire society. Based on this, the article explores the teaching of "Computer Information Technology" course in universities under big data, analyzes the significance of teaching "Computer Information Technology" course in universities under big data, elaborates on the teaching problems of "Computer Information Technology" course in universities under big data, and provides teaching strategies for "Computer Information Technology" course in universities under big data, aiming to provide useful insights and suggestions for the teaching of computer information technology courses in universities and lay a solid foundation for cultivating future technical talents.
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