CS-Guide: Leveraging LLMs and Student Reflections to Provide Frequent, Scalable Academic Monitoring Feedback to Computer Science Students
Published:Dec 22, 2025 20:43
•1 min read
•ArXiv
Analysis
The article proposes a system, CS-Guide, that uses Large Language Models (LLMs) and student reflections to offer frequent and scalable feedback to computer science students. This approach aims to improve academic monitoring. The use of LLMs suggests an attempt to automate and personalize feedback, potentially addressing the challenges of providing timely and individualized support in large classes. The focus on student reflections indicates an emphasis on metacognition and self-assessment.
Key Takeaways
- •Proposes a system (CS-Guide) for automated feedback in computer science education.
- •Utilizes LLMs and student reflections for feedback generation.
- •Aims to provide frequent and scalable academic monitoring.
- •Focuses on metacognition and self-assessment through student reflections.
Reference
“The article's core idea revolves around using LLMs to analyze student work and reflections to provide feedback.”