Deep Learning Approaches for Security Threats in IoT Environments by Mohamed Abdel-Basset, Nour Moustafa, Hossam Hawash
English | December 8, 2022 | ISBN: 1119884144 | 384 pages | MOBI | 15 Mb
English | December 8, 2022 | ISBN: 1119884144 | 384 pages | MOBI | 15 Mb
Deep Learning Approaches for Security Threats in IoT Environments
An expert discussion of the application of deep learning methods in the IoT security environment
In Deep Learning Approaches for Security Threats in IoT Environments, a team of distinguished cybersecurity educators deliver an insightful and robust exploration of how to approach and measure the security of Internet-of-Things (IoT) systems and networks. In this book, readers will examine critical concepts in artificial intelligence (AI) and IoT, and apply effective strategies to help secure and protect IoT networks. The authors discuss supervised, semi-supervised, and unsupervised deep learning techniques, as well as reinforcement and federated learning methods for privacy preservation.
This book applies deep learning approaches to IoT networks and solves the security problems that professionals frequently encounter when working in the field of IoT, as well as providing ways in which smart devices can solve cybersecurity issues.
Readers will also get access to a companion website with PowerPoint presentations, links to supporting videos, and additional resources. They’ll also find:
Perfect for professionals working in the AI, cybersecurity, and IoT industries, Deep Learning Approaches for Security Threats in IoT Environments will also earn a place in the libraries of undergraduate and graduate students studying deep learning, cybersecurity, privacy preservation, and the security of IoT networks.
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