Master Thesis MSTR-2025-92

BibliographyHartmann, Johannes: Integrating language reasoning models and language action models for automated service composition: an experimental study.
University of Stuttgart, Faculty of Computer Science, Electrical Engineering, and Information Technology, Master Thesis No. 92 (2025).
69 pages, english.
Abstract

Automated service composition is still an open field of research. A major challenge poses the connection of semantic and syntactic information. Recent advancements in AI such as large language models brought about new directions of study. In this work we explore the combination of two new types of AI models, namely Large Reasoning Models (LRMs) and Large Action Models (LAMs). LRMs excel in reasoning and logical thinking and may bridge the gap between natural language requirements and the syntactical service descriptions. LAMs are trained to interact with the environment and execute plans, therefore they are suitable for composition execution. We developed a system architecture and prototype combining the two model types to solve automated service composition tasks. We extended an existing benchmark with additional domains to increase diversity. Using the prototype we conducted experiments with different LRMs to evaluate the performance of the new approach. The results revealed performance differences between the used models and domains. Overall the prototype was able to solve given tasks but further research is required to improve consistency and efficiency. This work is a first step in researching the combined capabilities of LRMs and LAMs.

Full text and
other links
Volltext
Department(s)University of Stuttgart, Institute of Architecture of Application Systems, Architecture of Application Systems
Superviser(s)Georgievski, Dr. Ilche
Entry dateMarch 16, 2026
New Report   New Article   New Monograph   Computer Science