location:Home > 2026 Vol.9 Feb.N01    > Construction and Implementation of an Artificial Intelligence Practice Curriculum System in the Context of Smart Agriculture

2026 Vol.9 Feb.N01   

  • Title: Construction and Implementation of an Artificial Intelligence Practice Curriculum System in the Context of Smart Agriculture
  • Name: Yanwen Li1; Zhifang Bi2; Juxia Li1
  • Company: 1) College of Information Science and Engineering, Shanxi Agricultural University, Taigu 030801, china; 2) Basic Department, Shanxi Agricultural University, Taigu 030801, china
  • Abstract:

    In response to common challenges in the Artificial Intelligence course for computer science majors in agricultural and forestry universities—such as the disconnect between teaching and agricultural applications, lack of resources, and the gap between theory and practice—this study, under the strategic background of "New Agricultural Science" and "Smart Agriculture," conducts a reform exploration of practical course teaching. The reform is guided by industrial demands and centered on ability cultivation. It focuses on identifying integration points between "artificial intelligence and smart agriculture," constructing a blended practical curriculum system, systematically building an agricultural-featured experimental platform, developing a high-quality teaching case library, innovating a thematic teaching model, and establishing a multidimensional evaluation and feedback mechanism. This paper systematically elaborates on the specific content, implementation methods, and effectiveness of the reform. Practice has proven that this reform significantly enhances students' ability to apply agricultural AI technology, their innovative practical skills, and comprehensive professional competence. It also strengthens the alignment of the course with the needs of the modern agricultural industry, providing a replicable and scalable practical paradigm for curriculum reform in similar institutions.


  • Keyword: artificial intelligence; smart agriculture; new agricultural science; project-based learning
  • DOI: 10.12250/jpciams2026090210
  • Citation form: Yanwen Li,Zhifang Bi,Juxia Li.Construction and Implementation of an Artificial Intelligence Practice Curriculum System in the Context of Smart Agriculture[J]. Computer Informatization and Mechanical System,2026,Vol.9,pp.
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Tsuruta Institute of Medical Information Technology
Address:[502,5-47-6], Tsuyama, Tsukuba, Saitama, Japan TEL:008148-28809 fax:008148-28808 Japan,Email:jpciams@hotmail.com,2019-09-16