SEAIJun 18, 2025

Uncovering Intention through LLM-Driven Code Snippet Description Generation

arXiv:2506.15453v11 citationsh-index: 252025 International Conference on Smart Computing, IoT and Machine Learning (SIML)
Originality Synthesis-oriented
AI Analysis

This work addresses the problem of automating code documentation for developers and users, but it is incremental as it evaluates an existing LLM on a specific dataset without introducing new methods.

The study investigated how well an LLM (Llama) can generate descriptions for code snippets, using 400 samples from NPM packages, and found it correctly identified 79.75% of original descriptions as 'Example' and produced descriptions with an average similarity score of 0.7173, indicating relevance but room for improvement.

Documenting code snippets is essential to pinpoint key areas where both developers and users should pay attention. Examples include usage examples and other Application Programming Interfaces (APIs), which are especially important for third-party libraries. With the rise of Large Language Models (LLMs), the key goal is to investigate the kinds of description developers commonly use and evaluate how well an LLM, in this case Llama, can support description generation. We use NPM Code Snippets, consisting of 185,412 packages with 1,024,579 code snippets. From there, we use 400 code snippets (and their descriptions) as samples. First, our manual classification found that the majority of original descriptions (55.5%) highlight example-based usage. This finding emphasizes the importance of clear documentation, as some descriptions lacked sufficient detail to convey intent. Second, the LLM correctly identified the majority of original descriptions as "Example" (79.75%), which is identical to our manual finding, showing a propensity for generalization. Third, compared to the originals, the produced description had an average similarity score of 0.7173, suggesting relevance but room for improvement. Scores below 0.9 indicate some irrelevance. Our results show that depending on the task of the code snippet, the intention of the document may differ from being instructions for usage, installations, or descriptive learning examples for any user of a library.

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