Leveraging LLMs for Grammar Adaptation: A Study on Metamodel-Grammar Co-Evolution
Journal article, 2026

In model-driven engineering, metamodel evolution leads to the need to adapt corresponding grammars to maintain consistency, which typically requires tedious manual work. Existing rule-based methods can achieve partial automation but have limitations when handling complex grammar scenarios. This paper proposes a Large Language Model-based approach that automatically applies adaptations to new grammars after evolution by learning grammar adaptations from previous versions. We evaluated this approach on six real-world Xtext domain-specific languages, using four DSLs as a training set to develop prompting strategies, two DSLs as a test set for validation, and conducting a longitudinal case study on QVTo. The evaluation used three Large Language Models (Claude Sonnet 4.5, ChatGPT 5.1, Gemini 3) and measured grammar adaptation quality from three dimensions: grammar rule-level adaptation consistency, output similarity, and metamodel conformance. Results show that on the test set, all three LLMs achieved 100% adaptation consistency and output similarity, while the rule-based approach achieved only 84.21% on DOT and 62.50% on Xcore. In the QVTo longitudinal study, the LLM-based approach successfully reused learned adaptations across all three evolution steps without manual grammar editing, while the rule-based approach required manual adjustments in two of three transitions. However, on large-scale grammars (EAST-ADL, 297 rules), LLMs' adaptation consistency was far below 90%. This study demonstrates the advantages of LLM-based approaches in handling complex grammar scenarios, while revealing their limitations in large-scale grammar adaptation.

Large language models

Grammar

Evolution

Domain-specific language

Metamodel

Author

Weixing Zhang

Karlsruhe Institute of Technology (KIT)

Bowen Jiang

Karlsruhe Institute of Technology (KIT)

Rahul Sharma

Karlsruhe Institute of Technology (KIT)

Regina Hebig

University of Rostock

Daniel Strüber

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

University of Gothenburg

Journal of Object Technology

1660-1769 (ISSN)

Vol. 25 3 169-182

SEMLA: Software Engineering for Machine Learning - integrated approach

Swedish Research Council (VR) (2021-04881), 2022-01-01 -- 2024-12-31.

Subject Categories (SSIF 2025)

Natural Language Processing

Software Engineering

Computer Systems

DOI

10.5381/jot.2026.25.3.a13

More information

Latest update

7/16/2026