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Forthcoming Networks and Sustainability in the AIoT Era

Second International Conference FoNeS-AIoT 2024 - Volume 1
E-bookPDFE-book
Classement des ventes 100236dans
CHF236.00

Description

This book introduces a groundbreaking approach to enhancing IoT device security, providing a comprehensive overview of its applications and methodologies. Covering a wide array of topics, from crime prediction to cyberbullying detection, from facial recognition to analyzing email spam, it addresses diverse challenges in contemporary society. Aimed at researchers, practitioners, and policymakers, this book equips readers with practical tools to tackle real-world issues using advanced machine learning algorithms. Whether you're a data scientist, law enforcement officer, or urban planner, this book is a valuable resource for implementing predictive models and enhancing public safety measures. It is a comprehensive guide for implementing machine learning solutions across various domains, ensuring optimal performance and reliability. Whether you're delving into IoT security or exploring the potential of AI in urban landscapes, this book provides invaluable insights and tools to navigate the evolving landscape of technology and data science.

The book provides a comprehensive overview of the challenges and solutions in contemporary cybersecurity. Through case studies and practical examples, readers gain a deeper understanding of the security concerns surrounding IoT devices and learn how to mitigate risks effectively. The book's interdisciplinary approach caters to a diverse audience, including academics, industry professionals, and government officials, who seek to address the growing cybersecurity threats in IoT environments. Key uses of this book include implementing robust security measures for IoT devices, conducting research on machine learning algorithms for attack detection, and developing policies to enhance cybersecurity in IoT ecosystems. By leveraging advanced machine learning techniques, readers can effectively detect and mitigate cyber threats, ensuring the integrity and reliability of IoT systems. Overall, this book is a valuable resource for anyone involved in designing, implementing, or regulating IoT devices and systems.

Détails

Autres ISBN/GTIN9783031628719
Type de produitE-book
ReliureE-book
FormatPDF
Indications sur le formatfiligrane
Date de parution25.06.2024
Edition24001 A. 2024
No. de série1035
Pages458 pages
LangueAnglais
Taille fichier53617 Kbytes
IllustrationsVIII, 458 p. 236 illus., 202 illus. in color.
N° article51151287
CataloguesVC
Source des données n°5412707
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