Enhancing Edge Analytics Using TinyML and IoT: Toward Energy-Efficient and Intelligent Data Processing in Distributed Environments

Document Type : Original Article

Author

Department of Data science, faculty of artificial intelligence, Egyptian Russian University, badr, Cairo, Egypt

Abstract

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.

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