SEAIJun 16, 2025

Querying Large Automotive Software Models: Agentic vs. Direct LLM Approaches

arXiv:2506.13171v13 citationsh-index: 322025 2nd International Generative AI and Computational Language Modelling Conference (GACLM)
Originality Incremental advance
AI Analysis

This addresses the challenge of interacting with large software models in the automotive industry, where efficiency and privacy are critical, though it is incremental as it builds on existing LLM and agent methods.

The paper tackled the problem of querying large automotive software models by comparing direct prompting and agentic LLM approaches, finding that the agentic approach achieves comparable accuracy but with significantly higher efficiency in token usage, making it the only viable solution for large models.

Large language models (LLMs) offer new opportunities for interacting with complex software artifacts, such as software models, through natural language. They present especially promising benefits for large software models that are difficult to grasp in their entirety, making traditional interaction and analysis approaches challenging. This paper investigates two approaches for leveraging LLMs to answer questions over software models: direct prompting, where the whole software model is provided in the context, and an agentic approach combining LLM-based agents with general-purpose file access tools. We evaluate these approaches using an Ecore metamodel designed for timing analysis and software optimization in automotive and embedded domains. Our findings show that while the agentic approach achieves accuracy comparable to direct prompting, it is significantly more efficient in terms of token usage. This efficiency makes the agentic approach particularly suitable for the automotive industry, where the large size of software models makes direct prompting infeasible, establishing LLM agents as not just a practical alternative but the only viable solution. Notably, the evaluation was conducted using small LLMs, which are more feasible to be executed locally - an essential advantage for meeting strict requirements around privacy, intellectual property protection, and regulatory compliance. Future work will investigate software models in diverse formats, explore more complex agent architectures, and extend agentic workflows to support not only querying but also modification of software models.

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