Deep Learning for Computational Problems in Hardware Security

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The book discusses a broad overview of traditional machine learning methods and state-of-the-art deep learning practices for hardware security applications, in particular the techniques of launching potent "modeling attacks" on Physically Unclonable Function (PUF) circuits, which are promising hardware security primitives. The volume is self-contained and includes a comprehensive background on PUF circuits, and the necessary mathematical foundation of traditional and advanced machine learning techniques such as support vector machines, logistic regression, neural networks, and deep learning. This book can be used as a self-learning resource for researchers and practitioners of hardware security, and will also be suitable for graduate-level courses on hardware security and application of machine learning in hardware security. A stand-out feature of the book is the availability of reference software code and datasets to replicate the experiments described in the book.

Discusses the various challenges present in the hardware security domain and how deep learning can solve it better Introduces different deep learning-based techniques to solve several important hardware security problems Describes machine learning methods and state-of-the-art deep learning practices for hardware security applications

Autorentext

Pranesh Santikellur is a Ph.D. student and a Senior Research Fellow in the Department of Computer Science and Engineering at the Indian Institute of Technology, Kharagpur. He received his B.E. degree in Electronics & Communication Engineering from Visvesvaraya Technological University, Belgaum, India, in 2010. He has a total of 6 years of industry experience at Horner Engineering India Pvt. Ltd. and Processor Systems. His primary research interest lies in hardware security, deep learning, and programmable logic controller security. He is an IEEE student member.

Rajat Subhra Chakraborty is an Associate Professor in the Department of Computer Science & Engineering of the Indian Institute of Technology, Kharagpur, India. He has professional experience working in National Semiconductor and Advanced Micro Devices (AMD). His research interest lies in the areas of hardware security, VLSI design, digital watermarking, and digital image forensics, in which he has published 4 books and over 100 papers in international journals and conferences of repute. He holds 2 granted U.S. patents. His publications have received over 3600 citations to date. Dr. Chakraborty has a Ph.D. in Computer Engineering from Case Western Reserve University, USA, and is a senior member of IEEE and ACM.


Inhalt
Chapter 1: Introduction.- Chapter 2: Fundamental Concepts of Machine Learning.- Chapter 3: Supervised Machine Learning Algorithms for PUF Modeling Attacks.- Chapter 4: Deep Learning based PUF Modeling Attacks.- Chapter 5: Tensor Regression based PUF Modeling Attack.- Chapter 6: Binarized Neural Network based PUF Modeling.- Chapter 7: Conclusions and Future Work.

Weitere Informationen

  • Allgemeine Informationen
    • GTIN 09789811940194
    • Lesemotiv Verstehen
    • Genre Electrical Engineering
    • Auflage 1st edition 2023
    • Sprache Englisch
    • Anzahl Seiten 100
    • Herausgeber Springer Nature Singapore
    • Größe H235mm x B155mm x T6mm
    • Jahr 2023
    • EAN 9789811940194
    • Format Kartonierter Einband
    • ISBN 9811940193
    • Veröffentlichung 17.09.2023
    • Titel Deep Learning for Computational Problems in Hardware Security
    • Autor Rajat Subhra Chakraborty , Pranesh Santikellur
    • Untertitel Modeling Attacks on Strong Physically Unclonable Function Circuits
    • Gewicht 166g

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