Integrity and Pedagogical Efficacy
Analysis of existing literature reveals a distinct duality in AI adoption: while platforms enhance visualization and personalized feedback in fields like anatomy and engineering, they simultaneously introduce challenges regarding assessment integrity [2][4]. The evidence suggests that while faculty hold positive attitudes toward AI-driven efficiency, there is a clear tension between performance expectancy and the current lack of standardized governance. The takeaway is that sustainable integration relies on shifting from ad-hoc usage to institutionalized, discipline-specific policy frameworks [4][5].