Smart City Gnosys

Smart city article details

Title Leveraging Llms For Dynamic Iot Systems Generation Through Mixed-Initiative Interaction
ID_Doc 35098
Authors Adnan B.; Miryala S.; Sambu A.; Vaidhyanathan K.; De Sanctis M.; Spalazzese R.
Year 2025
Published Proceedings - 2025 IEEE 22nd International Conference on Software Architecture, ICSA-C 2025
DOI http://dx.doi.org/10.1109/ICSA-C65153.2025.00073
Abstract IoT systems face significant challenges adapting to user needs, often under-specified and evolving with changing environmental contexts. To address these complexities, users should be able to explore possibilities. At the same time, IoT systems must learn and support users in providing proper services, e.g., to serve novel experiences. The IoT-Together paradigm aims to meet this demand through the Mixed-Initiative Interaction (MII) paradigm that facilitates a collaborative synergy between users and IoT systems, enabling the co-creation of intelligent and adaptive solutions that are precisely aligned with user-defined goals. This work is a realization of IoT-Together by integrating Large Language Models (LLMs) into its architecture. The presented work enables intelligent goal interpretation through a three-pass dialogue framework and dynamic IoT systems generation according to user needs. To demonstrate the efficacy of our methodology, we design and implement the system in the context of a smart city tourism case study. We evaluated the system performance using agent-based simulation and user studies. Results indicate efficient and accurate service identification and high adaptation quality. The empirical evidence indicates that integrating Large Language Models (LLMs) into IoT architectures can significantly enhance the architectural adaptability of the system while ensuring real-world usability. © 2025 IEEE.
Author Keywords Dynamic IoT System Generation; IoT-Together Paradigm; LLMs; Mixed-Initiative Interaction; Self-Adaptation; Software Architecture; Software Engineering


Similar Articles


Id Similarity Authors Title Published
32187 View0.867Darwish D.Integration Of Llms In Smart Cities For Sustainable Energy SolutionsRevolutionizing Urban Development and Governance With Emerging Technologies (2025)
44384 View0.867Marripudugala M.Real-Time Iot Data Analytics Using Advanced Large Language Model Techniques2024 Global Conference on Communications and Information Technologies, GCCIT 2024 (2024)
32107 View0.86Olivieri A.C.; Bocchi Y.; Rizzo G.Integration In The Internet Of Things: A Semantic Middleware Approach To Seamless Integration Of Heterogeneous TechnologiesPervasive Computing: Next Generation Platforms for Intelligent Data Collection (2016)