Date
Publisher
arXiv
Many institutions are currently grappling with teaching artificial
intelligence (AI) in the face of growing demand and relevance in our world. The
Computing Research Association (CRA) has conducted 32 moderated virtual
roundtable discussions of 202 experts committed to improving AI education.
These discussions slot into four focus areas: AI Knowledge Areas and Pedagogy,
Infrastructure Challenges in AI Education, Strategies to Increase Capacity in
AI Education, and AI Education for All. Roundtables were organized around
institution type to consider the particular goals and resources of different AI
education environments. We identified the following high-level community needs
to increase capacity in AI education. A significant digital divide creates
major infrastructure hurdles, especially for smaller and under-resourced
institutions. These challenges manifest as a shortage of faculty with AI
expertise, who also face limited time for reskilling; a lack of computational
infrastructure for students and faculty to develop and test AI models; and
insufficient institutional technical support. Compounding these issues is the
large burden associated with updating curricula and creating new programs. To
address the faculty gap, accessible and continuous professional development is
crucial for faculty to learn about AI and its ethical dimensions. This support
is particularly needed for under-resourced institutions and must extend to
faculty both within and outside of computing programs to ensure all students
have access to AI education. We have compiled and organized a list of resources
that our participant experts mentioned throughout this study. These resources
contribute to a frequent request heard during the roundtables: a central
repository of AI education resources for institutions to freely use across
higher education.
What is the application?
Who age?
Why use AI?
Study design
