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Learning Context: A Unified Framework and Roadmap for Context-Aware AI in Education

Published: December 30, 2025 | arXiv ID: 2512.24362v1

By: Naiming Liu , Brittany Bradford , Johaun Hatchett and more

Potential Business Impact:

AI tutors understand students better to help them learn.

Business Areas:
Machine Learning Artificial Intelligence, Data and Analytics, Software

We introduce a unified Learning Context (LC) framework designed to transition AI-based education from context-blind mimicry to a principled, holistic understanding of the learner. This white paper provides a multidisciplinary roadmap for making teaching and learning systems context-aware by encoding cognitive, affective, and sociocultural factors over the short, medium, and long term. To realize this vision, we outline concrete steps to operationalize LC theory into an interoperable computational data structure. By leveraging the Model Context Protocol (MCP), we will enable a wide range of AI tools to "warm-start" with durable context and achieve continual, long-term personalization. Finally, we detail our particular LC implementation strategy through the OpenStax digital learning platform ecosystem and SafeInsights R&D infrastructure. Using OpenStax's national reach, we are embedding the LC into authentic educational settings to support millions of learners. All research and pedagogical interventions are conducted within SafeInsights' privacy-preserving data enclaves, ensuring a privacy-first implementation that maintains high ethical standards while reducing equity gaps nationwide.

Page Count
33 pages

Category
Computer Science:
Computers and Society