Smart City Gnosys

Smart city article details

Title Interfacing Multi-Modal Ai With Iot: Unlocking New Frontiers
ID_Doc 32791
Authors Delsi Robinsha S.; Amutha B.
Year 2025
Published Multimodal Generative AI
DOI http://dx.doi.org/10.1007/978-981-96-2355-6_14
Abstract The combination of artificial intelligence and the Internet of Things has recently altered our way of perceiving and interacting with the world around us. We examine the possible relationships between multi-modal AI and Internet of Things technologies in the chapter “Interfacing Multi-modal AI with IoT” from the book Unlocking the Potential. We aim to find the good changes that can come from integrating these two systems. Understanding and analysing complicated real-life occurrences is made easier by multi-modal approaches within the framework of artificial intelligence. These approaches integrate the competency of numerous data modalities, such as text, images, and sensor data. With the combination of multi-modal AI and an abundance of data facilities powered by IoT devices, new possibilities for producing various forms of creativity and efficiency in various sectors emerge. An introduction to AI and the Internet of Things, outlining their fundamental concepts so that the reader may grasp their interconnection, is the first stop on this path. Our research also delves into the feasibility and efficacy of combining various forms of AI to address practical issues. Compatibility with the Internet of Things (IoT), real-time processing, data integration, and artificial intelligence (AI) are some of the problems that this book aims to solve. In addition, there is the investigation of how predictive analytics using automation that makes use of machine learning, AI, and data from the Internet of Things could revolutionise entire industries. All of this would be useful for learning about smart automation, predictive maintenance, and customer-specific services. This article presents reasons and examples to show how the health sector, manufacturing, transportation, and smart cities can all be transformed by integrating AI and the Internet of Things. When we think about the future of AI and the Internet of Things working together, some methodologies and trends are starting to emerge, such as quantum computing, federated learning, and edge computing. Furthermore, AS and personalised services backed by AI and IoT bring up ethical questions, as well as potential dangers and invasions of privacy. Combining multi-modal AI with the Internet of Things poses a disruptive danger, and this book provides a general view or outlook on that risk. In the coming age of the digital, this document could serve as a valuable resource for academics, technocrats, and legislators looking for a forum to debate and plan the further development of AI and the Internet of Things, as well as their potential applications as problem-solving tools and sources of economic benefit. © The Editor(s) (if applicable) and The Author(s), under exclusive license to Springer Nature Singapore Pte Ltd. 2025.
Author Keywords AI-enabled automation; Artificial Intelligence; Data; Edge computing; Federated learning; Images; Internet of Things; Multi-model; Text


Similar Articles


Id Similarity Authors Title Published
59777 View0.887Thangiah M.; Vaithilingam A.C.; Perumal I.; Gudlur V.V.R.Unveiling The Complexities: Exploring The Challenges And Opportunities In Intelligent System ImplementationIntelligent Systems of Computing and Informatics in Sustainable Urban Development (2025)
56480 View0.884Nagaraj A.The Role Of Ai In Enhancing Iot-Cloud ApplicationsThe Role of AI in Enhancing IoT-Cloud Applications (2023)
56857 View0.88Tee C.; Ong T.S.; Sayeed M.S.The Smart Life Revolution: Embracing Ai And Iot In SocietyThe Smart Life Revolution: Embracing AI and IoT in Society (2025)
27178 View0.88Prerna; Sharma S.From Data To Decisions: Cloud, Iot, And Ai IntegrationIntegration of Cloud Computing and IoT: Trends, Case Studies and Applications (2024)
14845 View0.88Luzolo P.H.; Elrawashdeh Z.; Tchappi I.; Galland S.; Outay F.Combining Multi-Agent Systems And Artificial Intelligence Of Things: Technical Challenges And GainsInternet of Things (Netherlands), 28 (2024)
34923 View0.88Donta P.K.; Hazra A.; Lovén L.Learning Techniques For The Internet Of ThingsLearning Techniques for the Internet of Things (2024)
19747 View0.875Sharma D.M.; Venkatramulu S.; Raja M.A.M.; Vikram G.; Alagappan C.; Boopathi S.Development Of Self Sustaining System By Integration Of Ai And IotThe Convergence of Self-Sustaining Systems With AI and IoT (2024)
980 View0.873Rastgar R.; Amjadi F.A Comprehensive Survey On Ai-Driven Iot Applications: Innovations, Challenges, And Future DirectionsICIS 2024 - 19th Iranian Conference on Intelligent Systems (2024)
17221 View0.872Alam F.; Mehmood R.; Katib I.; Albogami N.N.; Albeshri A.Data Fusion And Iot For Smart Ubiquitous Environments: A SurveyIEEE Access, 5 (2017)
10471 View0.871Thillaiarasu N.; Tripathi S.L.; Dhinakaran V.Artificial Intelligence For Internet Of Things: Design Principle, Modernization, And TechniquesArtificial Intelligence for Internet of Things: Design Principle, Modernization, and Techniques (2022)