Effects Of A Prompt Engineering Intervention On Undergraduate Students' AI Self-efficacy, AI Knowledge And Prompt Engineering Ability: A Mixed Methods Study · The Large Language Model Bible Contribute to LLM-Bible

Effects Of A Prompt Engineering Intervention On Undergraduate Students' AI Self-efficacy, AI Knowledge And Prompt Engineering Ability: A Mixed Methods Study

Woo David James, Wang Deliang, Yung Tim, Guo Kai. Arxiv 2024

[Paper]    
Applications GPT Model Architecture Prompting RAG Reinforcement Learning Training Techniques

Prompt engineering is critical for effective interaction with large language models (LLMs) such as ChatGPT. However, efforts to teach this skill to students have been limited. This study designed and implemented a prompt engineering intervention, examining its influence on undergraduate students’ AI self-efficacy, AI knowledge, and proficiency in creating effective prompts. The intervention involved 27 students who participated in a 100-minute workshop conducted during their history course at a university in Hong Kong. During the workshop, students were introduced to prompt engineering strategies, which they applied to plan the course’s final essay task. Multiple data sources were collected, including students’ responses to pre- and post-workshop questionnaires, pre- and post-workshop prompt libraries, and written reflections. The study’s findings revealed that students demonstrated a higher level of AI self-efficacy, an enhanced understanding of AI concepts, and improved prompt engineering skills because of the intervention. These findings have implications for AI literacy education, as they highlight the importance of prompt engineering training for specific higher education use cases. This is a significant shift from students haphazardly and intuitively learning to engineer prompts. Through prompt engineering education, educators can faciitate students’ effective navigation and leverage of LLMs to support their coursework.

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