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Title Advanced Deep Learning Integration For Iot Ecosystem For Content Classification
ID_Doc 6499
Authors Rao S.; Gongada T.N.; Khan H.; Anand R.; Sindhwani N.; Gupta A.
Year 2024
Published 2024 11th International Conference on Reliability, Infocom Technologies and Optimization (Trends and Future Directions), ICRITO 2024
DOI http://dx.doi.org/10.1109/ICRITO61523.2024.10522345
Abstract The incorporation of sophisticated deep learning methods into the IoT ecosystem has great potential for improving content categorization skills in different IoT applications. This abstract presents a summary of the approaches, difficulties, and possible advantages linked to this integration. In the domain of IoT, a substantial volume of data is produced by sensors, devices, and other sources, requiring effective techniques for handling and examining this data. Deep learning is a strong method for content categorization in IoT contexts because it can automatically build hierarchical representations of data. The paper explores the essential elements of incorporating deep learning into the IoT ecosystem for content classification. These components include acquiring and preprocessing data, selecting and training models, performing edge computing and inference, optimizing models, enabling continuous learning and adaptation, and addressing security and privacy concerns. Moreover, it emphasizes the need for a smooth interface with IoT platforms and apps to allow developers to fully use these enhanced capabilities. Developers may simplify the process of deploying and using deep learning models for AI-powered IoT applications by using APIs, SDKs, and libraries. The incorporation of sophisticated deep learning methods into the IoT ecosystem for content categorization can transform a range of IoT applications, such as smart cities, industrial automation, healthcare, and others. This connection facilitates intelligent decision-making, automation, and optimization, hence creating a more efficient, responsive, and intelligent IoT infrastructure. © 2024 IEEE.
Author Keywords AI; API; Deep learning; edge computing; IoT; Optimization


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