The Impact of Prompt Engineering and a Generative AI-Driven Tool on Autonomous Learning: A Case Study

This study evaluates “I Learn with Prompt Engineering”, a self-paced, self-regulated elective course designed to equip university students with skills in prompt engineering to effectively utilize large language models (LLMs), foster self-directed learning, and enhance academic English proficiency th...

وصف كامل

التفاصيل البيبلوغرافية
الحاوية / القاعدة:Education Sciences
المؤلفون الرئيسيون: Kovan Mzwri, Márta Turcsányi-Szabo
التنسيق: مقال
اللغة:الإنجليزية
منشور في: MDPI AG 2025-02-01
الموضوعات:
الوصول للمادة أونلاين:https://www.mdpi.com/2227-7102/15/2/199
_version_ 1849538664620621824
author Kovan Mzwri
Márta Turcsányi-Szabo
author_facet Kovan Mzwri
Márta Turcsányi-Szabo
author_sort Kovan Mzwri
collection DOAJ
container_title Education Sciences
description This study evaluates “I Learn with Prompt Engineering”, a self-paced, self-regulated elective course designed to equip university students with skills in prompt engineering to effectively utilize large language models (LLMs), foster self-directed learning, and enhance academic English proficiency through generative AI applications. By integrating prompt engineering concepts with generative AI tools, the course supports autonomous learning and addresses critical skill gaps in language proficiency and market-ready capabilities. The study also examines EnSmart, an AI-driven tool powered by GPT-4 and integrated into Canvas LMS, which automates academic test content generation and grading and delivers real-time, human-like feedback. Performance evaluation, structured questionnaires, and surveys were used to evaluate the course’s impact on prompting skills, academic English proficiency, and overall learning experiences. Results demonstrated significant improvements in prompt engineering skills, with accessible patterns like “Persona” proving highly effective, while advanced patterns such as “Flipped Interaction” posed challenges. Gains in academic English were most notable among students with lower initial proficiency, though engagement and practice time varied. Students valued EnSmart’s intuitive integration and grading accuracy but identified limitations in question diversity and adaptability. The high final success rate demonstrated that proper course design (taking into consideration Panadero’s four dimensions of self-regulated learning) can facilitate successful autonomous learning. The findings highlight generative AI’s potential to enhance autonomous learning and task automation, emphasizing the necessity of human oversight for ethical and effective implementation in education.
format Article
id doaj-art-ca866a8a01cc4da1978b99bb33a95694
institution Directory of Open Access Journals
issn 2227-7102
language English
publishDate 2025-02-01
publisher MDPI AG
record_format Article
spelling doaj-art-ca866a8a01cc4da1978b99bb33a956942025-08-20T02:44:38ZengMDPI AGEducation Sciences2227-71022025-02-0115219910.3390/educsci15020199The Impact of Prompt Engineering and a Generative AI-Driven Tool on Autonomous Learning: A Case StudyKovan Mzwri0Márta Turcsányi-Szabo1Doctoral School of Informatics, Eötvös Loránd University, Pázmány Péter stny. 1/C, 1117 Budapest, HungaryDepartment of Media & Educational Technology, Faculty of Informatics, Eötvös Loránd University, Pázmány Péter stny. 1/C, 1117 Budapest, HungaryThis study evaluates “I Learn with Prompt Engineering”, a self-paced, self-regulated elective course designed to equip university students with skills in prompt engineering to effectively utilize large language models (LLMs), foster self-directed learning, and enhance academic English proficiency through generative AI applications. By integrating prompt engineering concepts with generative AI tools, the course supports autonomous learning and addresses critical skill gaps in language proficiency and market-ready capabilities. The study also examines EnSmart, an AI-driven tool powered by GPT-4 and integrated into Canvas LMS, which automates academic test content generation and grading and delivers real-time, human-like feedback. Performance evaluation, structured questionnaires, and surveys were used to evaluate the course’s impact on prompting skills, academic English proficiency, and overall learning experiences. Results demonstrated significant improvements in prompt engineering skills, with accessible patterns like “Persona” proving highly effective, while advanced patterns such as “Flipped Interaction” posed challenges. Gains in academic English were most notable among students with lower initial proficiency, though engagement and practice time varied. Students valued EnSmart’s intuitive integration and grading accuracy but identified limitations in question diversity and adaptability. The high final success rate demonstrated that proper course design (taking into consideration Panadero’s four dimensions of self-regulated learning) can facilitate successful autonomous learning. The findings highlight generative AI’s potential to enhance autonomous learning and task automation, emphasizing the necessity of human oversight for ethical and effective implementation in education.https://www.mdpi.com/2227-7102/15/2/199generative AI-driven educational toolsprompt engineeringautonomous learninggenerative AI Canvas LMS integrationAI-driven assessmentAI-driven feedback
spellingShingle Kovan Mzwri
Márta Turcsányi-Szabo
The Impact of Prompt Engineering and a Generative AI-Driven Tool on Autonomous Learning: A Case Study
generative AI-driven educational tools
prompt engineering
autonomous learning
generative AI Canvas LMS integration
AI-driven assessment
AI-driven feedback
title The Impact of Prompt Engineering and a Generative AI-Driven Tool on Autonomous Learning: A Case Study
title_full The Impact of Prompt Engineering and a Generative AI-Driven Tool on Autonomous Learning: A Case Study
title_fullStr The Impact of Prompt Engineering and a Generative AI-Driven Tool on Autonomous Learning: A Case Study
title_full_unstemmed The Impact of Prompt Engineering and a Generative AI-Driven Tool on Autonomous Learning: A Case Study
title_short The Impact of Prompt Engineering and a Generative AI-Driven Tool on Autonomous Learning: A Case Study
title_sort impact of prompt engineering and a generative ai driven tool on autonomous learning a case study
topic generative AI-driven educational tools
prompt engineering
autonomous learning
generative AI Canvas LMS integration
AI-driven assessment
AI-driven feedback
url https://www.mdpi.com/2227-7102/15/2/199
work_keys_str_mv AT kovanmzwri theimpactofpromptengineeringandagenerativeaidriventoolonautonomouslearningacasestudy
AT martaturcsanyiszabo theimpactofpromptengineeringandagenerativeaidriventoolonautonomouslearningacasestudy
AT kovanmzwri impactofpromptengineeringandagenerativeaidriventoolonautonomouslearningacasestudy
AT martaturcsanyiszabo impactofpromptengineeringandagenerativeaidriventoolonautonomouslearningacasestudy