From Individual Prompts to Collective Intelligence: Mainstreaming Generative AI in the Classroom
Junaid Qadir, Muhammad Salman Khan

TL;DR
This paper advocates for integrating generative AI into collaborative learning in engineering education, emphasizing peer-to-peer engagement to enhance understanding and creativity, while addressing equity concerns.
Contribution
It introduces a novel pedagogical approach combining generative AI with collective intelligence activities, supported by empirical evidence from undergraduate courses.
Findings
Students value human-AI collaboration for deeper understanding.
Group work enhances creativity more than AI alone.
Timing of AI consultation impacts learning outcomes.
Abstract
Engineering classrooms are increasingly experimenting with generative AI (GenAI), but most uses remain confined to individual prompting and isolated assistance. This narrow framing risks reinforcing equity gaps and only rewarding the already privileged or motivated students. We argue instead for a shift toward collective intelligence (CI)-focused pedagogy, where GenAI acts as a catalyst for peer-to-peer learning. We implemented Generative CI (GCI) activities in two undergraduate engineering courses, engaging 140 students through thinking routines -- short, repeatable scaffolds developed by Harvard Project Zero to make thinking visible and support collaborative sense-making. Using routines such as Question Sorts and Peel the Fruit, combined with strategic AI consultation, we enabled students to externalize their reasoning, compare interpretations, and iteratively refine ideas. Our…
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Taxonomy
TopicsInnovative Teaching and Learning Methods · Teaching and Learning Programming · Biomedical and Engineering Education
