An Empirical study on LLM-based Log Retrieval for Software Engineering Metadata Management
Paper in proceeding, 2025

Developing autonomous driving systems (ADSs) involves generating and storing extensive log data from test drives, which is essential for verification, research, and simulation. However, these high-frequency logs, recorded over varying durations, pose challenges for developers attempting to locate specific driving scenarios. This difficulty arises due to the wide range of signals representing various vehicle components and driving conditions, as well as unfamiliarity of some developers' with the detailed meaning of these signals. Traditional SQL-based querying exacerbates this challenge by demanding both domain expertise and database knowledge, often yielding results that are difficult to verify for accuracy.This paper introduces a Large Language Model (LLM)-supported approach that combines signal log data with video recordings from test drives, enabling natural language based scenario searches while reducing the need for specialized knowledge. By leveraging scenario distance graphs and relative gap indicators, it provides quantifiable metrics to evaluate the reliability of query results. The method is implemented as an API for efficient database querying and retrieval of relevant records, paired with video frames for intuitive visualization. Evaluation on an open industrial dataset demonstrates improved efficiency and reliability in scenario retrieval, eliminating dependency on a single data source and conventional SQL.

Metadata Management

Data Retrieval

Software Testing

LLMs

Autonomous Driving

Author

Simin Sun

University of Gothenburg

Chalmers, Computer Science and Engineering (Chalmers), Interaction Design and Software Engineering

Yuchuan Jin

Zenseact AB

Miroslaw Staron

Chalmers, Computer Science and Engineering (Chalmers), Software Engineering (Chalmers)

University of Gothenburg

Proceedings of the 29th International Conference on Evaluation and Assessment in Software Engineering Ease 2025 Edition Ease 2025

938-948
9798400713859 (ISBN)

29th International Conference on Evaluation and Assessment of Software Engineering, EASE 2025
Istanbul, Turkey,

Subject Categories (SSIF 2025)

Computer Sciences

DOI

10.1145/3756681.3756989

More information

Latest update

2/27/2026