AICYHCDec 23, 2025

From Pilots to Practices: A Scoping Review of GenAI-Enabled Personalization in Computer Science Education

arXiv:2512.20714v12 citationsh-index: 1AI
Originality Synthesis-oriented
AI Analysis

It addresses the problem of scaling personalized education in computer science for higher education, but is incremental as it synthesizes existing evidence rather than introducing new methods.

This scoping review analyzed 32 studies (2023-2025) to map how generative AI enables personalized computer science education, finding that designs with features like explanation-first guidance and graduated hint ladders show more positive learning outcomes than unconstrained chat interfaces.

Generative AI enables personalized computer science education at scale, yet questions remain about whether such personalization supports or undermines learning. This scoping review synthesizes 32 studies (2023-2025) purposively sampled from 259 records to map personalization mechanisms and effectiveness signals in higher-education computer science contexts. We identify five application domains: intelligent tutoring, personalized materials, formative feedback, AI-augmented assessment, and code review, and analyze how design choices shape learning outcomes. Designs incorporating explanation-first guidance, solution withholding, graduated hint ladders, and artifact grounding (student code, tests, and rubrics) consistently show more positive learning processes than unconstrained chat interfaces. Successful implementations share four patterns: context-aware tutoring anchored in student artifacts, multi-level hint structures requiring reflection, composition with traditional CS infrastructure (autograders and rubrics), and human-in-the-loop quality assurance. We propose an exploration-first adoption framework emphasizing piloting, instrumentation, learning-preserving defaults, and evidence-based scaling. Recurrent risks include academic integrity, privacy, bias and equity, and over-reliance, and we pair these with operational mitigation. The evidence supports generative AI as a mechanism for precision scaffolding when embedded in audit-ready workflows that preserve productive struggle while scaling personalized support.

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