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Machine Learning for Embedded System Security (1 ed)

Author: Basel Halak
SKU: BF-0326

Original price was: $109.99.Current price is: $7.00.

  • Publisher: Springer
  • Author: Basel Halak
  • Language: ‎English
  • Format: ‎PDF
  • Pages: 175 pages

Description

Machine Learning for Embedded System Security 1st ed. 2022 Edition

This book comprehensively covers the state-of-the-art security applications of machine learning techniques. The first part explains the emerging solutions for anti-tamper design, IC counterfeit detection, and hardware Trojan identification. It also explains the latest development of deep-learning-based modeling attacks on physically unclonable functions and outlines the design principles of more resilient PUF architectures. The second discusses the use of machine learning to mitigate the risks of security attacks on cyber-physical systems, with a particular focus on power plants. The third part provides an in-depth insight into the principles of malware analysis in embedded systems and describes how the usage of supervised learning techniques provides an effective approach to tackling software vulnerabilities.

  • Discusses emerging technologies used to develop intelligent tamper detection techniques using machine learning;
  • Includes a comprehensive summary of how machine learning is used to combat IC counterfeiting and to detect Trojans;
  • Describes how machine learning algorithms are used to enhance the security of physically unclonable functions (PUFs);
  • It describes, in detail, the principles of state-of-the-art countermeasures for hardware, software, and cyber-physical attacks on embedded systems.

Additional information

Author

Publisher

Springer

Format

PDF

Language

English

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