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2026, 01, v.36 122-128
新一代人工智能背景下大学物理教学改革探讨
基金项目(Foundation): 中国人民公安大学双一流建设项目(2023jxyj57)
邮箱(Email): lushuhua@ppsuc.edu.cn;
DOI: 10.27024/j.wlygc.2025.07.16.03
摘要:

新一代人工智能(Artificial Intelligence, AI)背景下,大数据、智能涌现等新技术对教育教学产生重大影响。物理学是自然科学的基础,其学科思想和方法对人工智能的起源与发展产生重要推动作用。为更好把握前沿技术发展趋势,紧扣时代发展脉搏,本文以“人工智能+”课程思想为指导,探讨在大学物理教学理念、教学内容及教学模式等方面进行改革尝试;提出转变教学理念、积极拥抱人工智能,通过AI辅助教学提升人工智能素养,构建AI教学助手与课程知识图谱,体现教学时代性并深化教学内容的内涵与外延等改革创新举措,以期提升新时代大学物理及相关课程教学质量,实现教学相长。

Abstract:

New technologies including big data and intelligence emergence etc., have a significant impact on education and teaching. Physics, as the foundation of natural science, plays a vital role in promoting the origin and development of artificial intelligence via its discipline ideas and methods. In order to follow the development trends of frontier technology and the pulse of The Times, in this paper, the reform attempts in the teaching concept, teaching content and teaching mode of college physics, have been discussed based on the course idea of “AI+”. And we propose some innovation measures including changing teaching concept to embrace artificial intelligence, using AI assist teaching to improve AI literacy and construct curriculum knowledge maps, and deepening the connotation and extension of teaching content. That is so as to improve the quality of college physics and others teaching in the new era.

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基本信息:

DOI:10.27024/j.wlygc.2025.07.16.03

中图分类号:G642.0;O4-4

引用信息:

[1]卢树华,田方,尹晓英.新一代人工智能背景下大学物理教学改革探讨[J].物理与工程,2026,36(01):122-128.DOI:10.27024/j.wlygc.2025.07.16.03.

基金信息:

中国人民公安大学双一流建设项目(2023jxyj57)

发布时间:

2026-03-02

出版时间:

2026-03-02

网络发布时间:

2026-03-02

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