LLM-driven personalization of CS1 RegEx worksheets based on learner profiles raises completion to over 99% and boosts correctness by 18.2% for at-risk students while preserving perceived difficulty.
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Coding-assistant AI tools generate slides that educators judge accurate and pedagogically sound, students rate them equal to instructor slides, and cannot reliably identify them as AI-generated.
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Beyond One-Size-Fits-All Exercises: Personalizing Computer Science Worksheets with Large Language Models
LLM-driven personalization of CS1 RegEx worksheets based on learner profiles raises completion to over 99% and boosts correctness by 18.2% for at-risk students while preserving perceived difficulty.
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AI-Generated Slides: Are They Good? Can Students Tell?
Coding-assistant AI tools generate slides that educators judge accurate and pedagogically sound, students rate them equal to instructor slides, and cannot reliably identify them as AI-generated.