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Autori principali: Grees, Yousab, Iaremchuk, Polina, Ehsani, Ramtin, Parra, Esteban, Chatterjee, Preetha, Haiduc, Sonia
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2507.16063
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author Grees, Yousab
Iaremchuk, Polina
Ehsani, Ramtin
Parra, Esteban
Chatterjee, Preetha
Haiduc, Sonia
author_facet Grees, Yousab
Iaremchuk, Polina
Ehsani, Ramtin
Parra, Esteban
Chatterjee, Preetha
Haiduc, Sonia
contents Commit messages in a version control system provide valuable information for developers regarding code changes in software systems. Commit messages can be the only source of information left for future developers describing what was changed and why. However, writing high-quality commit messages is often neglected in practice. Large Language Model (LLM) generated commit messages have emerged as a way to mitigate this issue. We introduce the AI-Powered Commit Explorer (APCE), a tool to support developers and researchers in the use and study of LLM-generated commit messages. APCE gives researchers the option to store different prompts for LLMs and provides an additional evaluation prompt that can further enhance the commit message provided by LLMs. APCE also provides researchers with a straightforward mechanism for automated and human evaluation of LLM-generated messages. Demo link https://youtu.be/zYrJ9s6sZvo
format Preprint
id arxiv_https___arxiv_org_abs_2507_16063
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle AI-Powered Commit Explorer (APCE)
Grees, Yousab
Iaremchuk, Polina
Ehsani, Ramtin
Parra, Esteban
Chatterjee, Preetha
Haiduc, Sonia
Software Engineering
Artificial Intelligence
Commit messages in a version control system provide valuable information for developers regarding code changes in software systems. Commit messages can be the only source of information left for future developers describing what was changed and why. However, writing high-quality commit messages is often neglected in practice. Large Language Model (LLM) generated commit messages have emerged as a way to mitigate this issue. We introduce the AI-Powered Commit Explorer (APCE), a tool to support developers and researchers in the use and study of LLM-generated commit messages. APCE gives researchers the option to store different prompts for LLMs and provides an additional evaluation prompt that can further enhance the commit message provided by LLMs. APCE also provides researchers with a straightforward mechanism for automated and human evaluation of LLM-generated messages. Demo link https://youtu.be/zYrJ9s6sZvo
title AI-Powered Commit Explorer (APCE)
topic Software Engineering
Artificial Intelligence
url https://arxiv.org/abs/2507.16063