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- W4224143021 abstract "The Internet of Things (IoT) is an interconnected network of computing nodes that can send and receive data without human participation. Software and communication technology have advanced tremendously in the last couple of decades, resulting in a considerable increase in IoT devices. IoT gadgets have practically infiltrated every aspect of human well-being, ushering in a new era of intelligent devices. However, the rapid expansion has raised security concerns. Another challenge with the basic approach of processing IoT data on the cloud is scalability. A cloud-centric strategy results from network congestion, data bottlenecks, and longer response times to security threats. Fog computing addresses these difficulties by bringing computation to the network edge. The current research provides a comprehensive review of the IoT evolution, Fog computation, and artificial-intelligence-inspired machine learning (ML) strategies. It examines ML techniques for identifying anomalies and attacks, showcases IoT data growth solutions, and delves into Fog computing security concerns. Additionally, it covers future research objectives in the crucial field of IoT security." @default.
- W4224143021 created "2022-04-20" @default.
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- W4224143021 date "2022-04-14" @default.
- W4224143021 modified "2023-10-18" @default.
- W4224143021 title "Securing IoT-Empowered Fog Computing Systems: Machine Learning Perspective" @default.
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- W4224143021 doi "https://doi.org/10.3390/math10081298" @default.
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