The convergence of Internet of Things (IoT) ecosystems with Tiny Machine Learning (TinyML) has redefined the paradigms of distributed analytics and computational intelligence. Traditional cloud-centric models impose high latency, excessive energy consumption, and increased privacy risks, limiting real-time responsiveness for mission-critical applications. This paper introduces an integrated edge analytics framework leveraging TinyML-enabled IoT devices for low-latency, energy-efficient, and adaptive decision-making. The proposed architecture unifies lightweight embedded learning, confidence-triggered inference offloading, and collaborative edge-to-cloud synchronization to enhance analytic performance at the periphery of the network. Empirical simulations conducted on embedded-class processors demonstrate latency reduction exceeding 50% and energy savings up to 42% compared to conventional edge–cloud paradigms, without compromising inference accuracy. This study contributes a scalable foundation for intelligent IoT infrastructures capable of performing dynamic analytics under constrained computational and communication environments, advancing the vision of sustainable and autonomous edge intelligence. Keywords: TinyML, Edge Analytics, IoT, Embedded Intelligence, Energy Efficiency, Adaptive Offloading, Distributed Learning.
Hagag, M. (2025). Enhancing Edge Analytics Using TinyML and IoT: Toward Energy-Efficient and Intelligent Data Processing in Distributed Environments. Journal of Communication Sciences and Information Technology, 2025(3), 25-38. doi: 10.21608/jcsit.2025.438575.1022
MLA
Mariam Mahmoud Hagag. "Enhancing Edge Analytics Using TinyML and IoT: Toward Energy-Efficient and Intelligent Data Processing in Distributed Environments", Journal of Communication Sciences and Information Technology, 2025, 3, 2025, 25-38. doi: 10.21608/jcsit.2025.438575.1022
HARVARD
Hagag, M. (2025). 'Enhancing Edge Analytics Using TinyML and IoT: Toward Energy-Efficient and Intelligent Data Processing in Distributed Environments', Journal of Communication Sciences and Information Technology, 2025(3), pp. 25-38. doi: 10.21608/jcsit.2025.438575.1022
VANCOUVER
Hagag, M. Enhancing Edge Analytics Using TinyML and IoT: Toward Energy-Efficient and Intelligent Data Processing in Distributed Environments. Journal of Communication Sciences and Information Technology, 2025; 2025(3): 25-38. doi: 10.21608/jcsit.2025.438575.1022