Student Perceptions of Learning through Original and AI-Generated Python Programs from a Software Quality Perspective

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Název: Student Perceptions of Learning through Original and AI-Generated Python Programs from a Software Quality Perspective
Jazyk: English
Autoři: Mark Frydenberg, Anqi Xu, Jennifer Xu
Zdroj: Information Systems Education Journal. 2025 23(4):34-56.
Dostupnost: Information Systems and Computing Academic Professionals. Box 488, Wrightsville Beach, NC 28480. e-mail: publisher@isedj.org; Web site: http://isedj.org
Peer Reviewed: Y
Page Count: 23
Datum vydání: 2025
Druh dokumentu: Journal Articles
Reports - Research
Tests/Questionnaires
Education Level: Higher Education
Postsecondary Education
Descriptors: Student Attitudes, Programming, Computer Software, Quality Assurance, Artificial Intelligence, Computer Science Education, Evaluation, Introductory Courses, Problem Based Learning, Coding, College Students
ISSN: 1545-679X
Abstrakt: This study explores student perceptions of learning to code by evaluating AI-generated Python code. In an experimental exercise given to students in an introductory Python course at a business university, students wrote their own solutions to a Python program and then compared their solutions with AI-generated code. They evaluated both solutions using a software quality assessment framework, focusing on the correctness, efficiency, understandability, consistency, and maintainability, which provided a guide to evaluating code beyond simply correctness of the solution. Research examines how students perceive and utilize generative AI, considering their motivations, outcomes, and experiences. Findings suggest that while students see significant potential in using AI tools to enhance their coding process and appreciate the efficiency and compactness of the AI-generated code, they often prefer their own solutions due to familiarity and features used. This research aims to inform future studies on student application of AI tools in learning to code and provides educators with a model for evaluating AI's impact on student learning.
Abstractor: As Provided
Entry Date: 2025
Přístupové číslo: EJ1467909
Databáze: ERIC
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