通过聚合物科学研讨会将数据驱动的材料信息学引入本科课程

IF 2.9 3区 教育学 Q2 CHEMISTRY, MULTIDISCIPLINARY
Mona Amrihesari,  and , Blair Brettmann*, 
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引用次数: 0

摘要

随着人工智能和机器学习在从材料发现到数据驱动问题解决等科学学科中的快速发展,将这些工具集成到广泛应用中的机会越来越多。这些方法在研究中的成功采用可以通过在本科教育期间的基础接触得到加强。本研究的目的是在聚合物科学与工程课程中,通过一个实践性的、以应用为中心的研讨会,向本科生介绍基本的机器学习概念。指导学生完成机器学习工作流程的关键步骤,包括数据清洗、模型训练、性能评估和结果解释,使用通过视觉检查生成的聚合物溶解度数据集。研讨会的有效性通过研讨会前和研讨会后的学生调查来评估,这表明学生对应用机器学习技术的理解和信心有了显著的提高。本工作坊整合为教材课程,在拓展教材应用的同时,向学生介绍新概念。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Introducing Data-Driven Materials Informatics into Undergraduate Courses through a Polymer Science Workshop

With the rapid growth of artificial intelligence and machine learning across scientific disciplines from materials discovery to data-driven problem solving, there is increasing opportunity to integrate these tools into a broad range of applications. Successful adoption of these approaches in research can be enhanced by foundational exposure during undergraduate education. The objective of this study is to introduce fundamental machine learning concepts to undergraduate students through a hands-on, application-focused workshop during a polymer science and engineering course. Students were guided through key steps of the machine learning workflow, including data cleaning, model training, performance evaluation, and result interpretation, using a polymer solubility data set generated via visual inspection. The effectiveness of the workshop was assessed through pre- and postworkshop student surveys, which indicated a measurable improvement in students’ understanding and confidence in applying machine learning techniques. The integration of this workshop into a materials course introduces the students to the new concepts while extending the application of the course material.

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来源期刊
Journal of Chemical Education
Journal of Chemical Education 化学-化学综合
CiteScore
5.60
自引率
50.00%
发文量
465
审稿时长
6.5 months
期刊介绍: The Journal of Chemical Education is the official journal of the Division of Chemical Education of the American Chemical Society, co-published with the American Chemical Society Publications Division. Launched in 1924, the Journal of Chemical Education is the world’s premier chemical education journal. The Journal publishes peer-reviewed articles and related information as a resource to those in the field of chemical education and to those institutions that serve them. JCE typically addresses chemical content, activities, laboratory experiments, instructional methods, and pedagogies. The Journal serves as a means of communication among people across the world who are interested in the teaching and learning of chemistry. This includes instructors of chemistry from middle school through graduate school, professional staff who support these teaching activities, as well as some scientists in commerce, industry, and government.
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