Comprehensive AI Literacy: The Case for Centering Human Agency
- URL: http://arxiv.org/abs/2512.16656v1
- Date: Thu, 18 Dec 2025 15:25:38 GMT
- Title: Comprehensive AI Literacy: The Case for Centering Human Agency
- Authors: Sri Yash Tadimalla, Justin Cary, Gordon Hull, Jordan Register, Daniel Maxwell, David Pugalee, Tina Heafner,
- Abstract summary: We are witnessing the rise of a dangerous gap, where a focus on the functional, operational skills of using AI tools is eclipsing the development of critical and ethical reasoning about them.<n>This position paper argues for a systemic shift toward comprehensive AI literacy that centers human agency.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: The rapid assimilation of Artificial Intelligence technologies into various facets of society has created a significant educational imperative that current frameworks are failing to effectively address. We are witnessing the rise of a dangerous literacy gap, where a focus on the functional, operational skills of using AI tools is eclipsing the development of critical and ethical reasoning about them. This position paper argues for a systemic shift toward comprehensive AI literacy that centers human agency - the empowered capacity for intentional, critical, and responsible choice. This principle applies to all stakeholders in the educational ecosystem: it is the student's agency to question, create with, or consciously decide not to use AI based on the task; it is the teacher's agency to design learning experiences that align with instructional values, rather than ceding pedagogical control to a tool. True literacy involves teaching about agency itself, framing technology not as an inevitability to be adopted, but as a choice to be made. This requires a deep commitment to critical thinking and a robust understanding of epistemology. Through the AI Literacy, Fluency, and Competency frameworks described in this paper, educators and students will become agents in their own human-centric approaches to AI, providing necessary pathways to clearly articulate the intentions informing decisions and attitudes toward AI and the impact of these decisions on academic work, career, and society.
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