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MRI India Journals Vol. 13 No. 2 (2026)

Edge AI Architectures for Real-Time Data Analytics in Internet of Things Ecosystems

Authors

  • Wanchai Wijesekara Department of Electrical and Computer Engineering, Chiang Thon College of Management, Thailand

Keywords:

Edge AI Internet of Things Real-Time Data Analytics Edge Computing Federated Learning Deep Learning IoT Ecosystems

Abstract

The rapid expansion of the Internet of Things (IoT) has led to an exponential increase in data generation from distributed smart devices, requiring efficient, low-latency, and scalable computing architectures for real-time analytics. Traditional cloud-centric models are often insufficient for handling the stringent latency, bandwidth, and privacy requirements of modern IoT ecosystems. To address these challenges, Edge AI has emerged as a transformative paradigm that brings intelligence closer to data sources by integrating artificial intelligence capabilities at the network edge. This research proposes an Edge AI Architecture for Real-Time Data Analytics in Internet of Things Ecosystems, designed to enable fast, scalable, and intelligent processing of IoT-generated data. The framework integrates edge computing nodes, lightweight deep learning models, stream processing pipelines, and federated learning mechanisms to ensure real-time decision-making with minimal communication overhead. The proposed architecture leverages distributed inference, adaptive resource allocation, and hierarchical data processing to reduce latency and improve system responsiveness. Additionally, the integration of privacy-preserving learning techniques ensures secure and efficient handling of sensitive IoT data. Experimental analysis demonstrates that edge-based AI systems significantly outperform traditional cloud-only approaches in terms of latency reduction, bandwidth optimization, and real-time prediction accuracy. The study contributes a scalable and energy-efficient Edge AI framework that supports intelligent IoT applications such as smart cities, healthcare monitoring, industrial automation, and autonomous systems. The results confirm that Edge AI is a critical enabler for next-generation real-time IoT analytics.

 

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Published

2026-05-28

How to Cite

Wijesekara, W. (2026). Edge AI Architectures for Real-Time Data Analytics in Internet of Things Ecosystems. Multidisciplinary Journal of Research in Engineering and Technology, 13(2), 43–47. Retrieved from https://journals.mriindia.com/index.php/mjret/article/view/3166

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