Learning AI Without a STEM Background: Mixed-Methods Evidence from a Diverse, Mixed-Cohort AIED Program
Valentina Kuskova, Dmitry Zaytsev, Richard Johnson

TL;DR
This study evaluates a novel AI education model that integrates non-STEM learners and adults, emphasizing ethical reasoning and applied AI literacy over technical skills, showing increased confidence and engagement.
Contribution
It introduces and assesses an inclusive AI education approach that prioritizes ethical judgment and socio-technical understanding for diverse, non-traditional learners.
Findings
Significant gains in learners' confidence and perceived relevance of AI.
Emphasis on responsibility, judgment, and contextual reasoning over technical mastery.
High engagement levels in dialogic and scenario-based learning activities.
Abstract
Despite growing interest in AI education, most AIED initiatives remain narrowly targeted toward STEM-prepared students, limiting participation by non-STEM learners and adults seeking to engage with AI in public-interest, policy, or workforce contexts. This paper presents and evaluates an NSF-funded, innovative mixed-cohort AI education model that intentionally integrates non-STEM undergraduates and adult learners into a shared learning environment centered on ethical reasoning, socio-technical judgment, and applied AI literacy rather than technical proficiency alone. Drawing on mixed-methods data from course surveys, open-ended reflections, and educator reports, we examine learners' academic agency, confidence navigating AI concepts, critical engagement with ethical tradeoffs, and perceived expansion of postsecondary and career trajectories. Quantitative results indicate significant…
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