Using customized GPT to develop prompting proficiency in architectural AI-generated images
- URL: http://arxiv.org/abs/2504.13948v2
- Date: Fri, 25 Apr 2025 06:54:32 GMT
- Title: Using customized GPT to develop prompting proficiency in architectural AI-generated images
- Authors: Juan David Salazar Rodriguez, Sam Conrad Joyce, Julfendi,
- Abstract summary: This research investigates the use of customized GPT models to enhance prompting proficiency among architecture students when generating AI-driven images.<n>ANOVA results indicated statistically significant improvements in word count, similarity, and concreteness, especially in the group supported by AI personas and structured prompting guides.
- Score: 0.40964539027092906
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: This research investigates the use of customized GPT models to enhance prompting proficiency among architecture students when generating AI-driven images. Prompt engineering is increasingly essential in architectural education due to the widespread adoption of generative AI tools. This study utilized a mixed-methods experimental design involving architecture students divided into three distinct groups: a control group receiving no structured support, a second group provided with structured prompting guides, and a third group supported by both structured guides and interactive AI personas. Students engaged in reverse engineering tasks, first guessing provided image prompts and then generating their own prompts, aiming to boost critical thinking and prompting skills. Variables examined included time spent prompting, word count, prompt similarity, and concreteness. Quantitative analysis involved correlation assessments between these variables and a one-way ANOVA to evaluate differences across groups. While several correlations showed meaningful relationships, not all were statistically significant. ANOVA results indicated statistically significant improvements in word count, similarity, and concreteness, especially in the group supported by AI personas and structured prompting guides. Qualitative feedback complemented these findings, revealing enhanced confidence and critical thinking skills in students. These results suggest tailored GPT interactions substantially improve students' ability to communicate architectural concepts clearly and effectively.
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