Smart City Gnosys

Smart city article details

Title Ai-Optimized Hardware Design For Internet Of Things (Iot) Devices
ID_Doc 7082
Authors Vishnu Kumar P.; Kulkarni A.; Mendhe D.; Keshar D.K.; Tilak Babu S.B.G.; Rajesh N.
Year 2024
Published 5th International Conference on Recent Trends in Computer Science and Technology, ICRTCST 2024 - Proceedings
DOI http://dx.doi.org/10.1109/ICRTCST61793.2024.10578352
Abstract The Internet of Things (IoT) has emerged as a transformative paradigm, connecting billions of devices to the Internet and enabling seamless communication and data exchange. As the IoT ecosystem continues to expand, there is an increasing demand for energy-efficient, high-performance hardware tailored to the unique requirements of AI-powered applications deployed on IoT devices. This research focuses on the design and optimization of hardware architectures to meet the computational demands of AI algorithms in IoT environments. The proposed AI-optimized hardware design leverages the latest advancements in semiconductor technology and integrates specialized processing units for efficient execution of machine learning tasks. The architecture is tailored to address the constraints of IoT devices, including limited power resources, stringent size constraints, and the need for real-time processing. Key components of the design include low-power processors, hardware accelerators, and memory hierarchies optimized for AI workloads. Additionally, the system employs advanced algorithms for task offloading and distributed processing, enabling collaborative and energy-efficient execution of AI tasks across a network of interconnected IoT devices. The proposed AI-optimized hardware design is evaluated through simulations and real-world experiments, demonstrating superior performance in terms of energy efficiency, processing speed, and scalability. The results showcase the potential of the designed hardware to unlock new possibilities for AI applications in diverse IoT scenarios, ranging from smart cities and industrial automation to healthcare and environmental monitoring. The proposed research serves as a foundation for the development of next-generation IoT devices capable of seamlessly integrating AI capabilities while meeting the stringent requirements of the IoT ecosystem. © 2024 IEEE.
Author Keywords Custom Hardware Accelerators; Edge Computing; Hardware-Software Co-design; Low-power Design; Memory Optimization; Neural Processing Unit (NPU); Quantum Computing; Security and Privacy; Sensor Fusion


Similar Articles


Id Similarity Authors Title Published
6706 View0.877Pazmiño Ortiz L.A.; Maldonado Soliz I.F.; Guevara Balarezo V.K.Advancing Tinyml In Iot: A Holistic System-Level Perspective For Resource-Constrained AiFuture Internet, 17, 6 (2025)
6522 View0.86Dhanalakshmi M.; Nand Kishor Kumar G.; Himabindu G.; Gosavi V.R.; Sundar Ganesh C.S.; Premanand R.Advanced Machine Learning Innovations In Embedded Systems And Narrowband Internet Of Things (Nb-Iot) DevicesIntegrating Artificial Intelligence Into the Energy Sector (2025)
10471 View0.858Thillaiarasu 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)
5918 View0.854Mohammadi Makrani H.; He Z.; Rafatirad S.; Sayadi H.Accelerated Machine Learning For On-Device Hardware-Assisted Cybersecurity In Edge PlatformsProceedings - International Symposium on Quality Electronic Design, ISQED, 2022-April (2022)
7584 View0.852Yugank H.K.; Sharma R.; Gupta S.H.An Approach To Analyse Energy Consumption Of An Iot SystemInternational Journal of Information Technology (Singapore), 14, 5 (2022)
34110 View0.85Agnihotri P.; Luthra M.; Rodriguez M.; Koldehofe B.Iot-Opt: The Swiss Army Knife To Model And Validate The Performance Of Iot ProductsMiddleware 2022 - Proceedings of the 23rd International Middleware Conference Demos and Posters, Part of Middleware 2022 (2022)