AILINKPREVIEWER: Enhancing Code Reviews with LLM-Powered Link Previews
By: Panya Trakoolgerntong , Tao Xiao , Masanari Kondo and more
Potential Business Impact:
Shows what links mean in computer code.
Code review is a key practice in software engineering, where developers evaluate code changes to ensure quality and maintainability. Links to issues and external resources are often included in Pull Requests (PRs) to provide additional context, yet they are typically discarded in automated tasks such as PR summarization and code review comment generation. This limits the richness of information available to reviewers and increases cognitive load by forcing context-switching. To address this gap, we present AILINKPREVIEWER, a tool that leverages Large Language Models (LLMs) to generate previews of links in PRs using PR metadata, including titles, descriptions, comments, and link body content. We analyzed 50 engineered GitHub repositories and compared three approaches: Contextual LLM summaries, Non-Contextual LLM summaries, and Metadata-based previews. The results in metrics such as BLEU, BERTScore, and compression ratio show that contextual summaries consistently outperform other methods. However, in a user study with seven participants, most preferred non-contextual summaries, suggesting a trade-off between metric performance and perceived usability. These findings demonstrate the potential of LLM-powered link previews to enhance code review efficiency and to provide richer context for developers and automation in software engineering. The video demo is available at https://www.youtube.com/watch?v=h2qH4RtrB3E, and the tool and its source code can be found at https://github.com/c4rtune/AILinkPreviewer.
Similar Papers
LAURA: Enhancing Code Review Generation with Context-Enriched Retrieval-Augmented LLM
Software Engineering
Helps computers write better code suggestions.
CodeGenLink: A Tool to Find the Likely Origin and License of Automatically Generated Code
Software Engineering
Shows where computer code comes from.
Uncovering Code Insights: Leveraging GitHub Artifacts for Deeper Code Understanding
Software Engineering
Helps computers understand computer code better.