
Machine Learning for Semiconductor Materials
CRC Press
1st Edition
Published on 21. August 2025
Book
Hardback
208 pages
978-1-032-79688-8 (ISBN)
Description
Machine Learning for Semiconductor Materials studies recent techniques and methods of machine learning to mitigate the use of technology computer-aided design (TCAD). It provides various algorithms of machine learning, such as regression, decision tree, support vector machine, K-means clustering and so forth. This book also highlights semiconductor materials and their uses in multi-gate devices and the analog and radio-frequency (RF) behaviours of semiconductor devices with different materials.
Features:
Focuses on semiconductor materials and the use of machine learning to facilitate understanding and decision-making
Covers RF and noise analysis to formulate the frequency behaviour of semiconductor devices at high frequency
Explores pertinent biomolecule detection methods
Reviews recent methods in the field of machine learning for semiconductor materials with real-life applications
Examines the limitations of existing semiconductor materials and steps to overcome the limitations of existing TCAD software
This book is aimed at researchers and graduate students in semiconductor materials, machine learning and electrical engineering.
Features:
Focuses on semiconductor materials and the use of machine learning to facilitate understanding and decision-making
Covers RF and noise analysis to formulate the frequency behaviour of semiconductor devices at high frequency
Explores pertinent biomolecule detection methods
Reviews recent methods in the field of machine learning for semiconductor materials with real-life applications
Examines the limitations of existing semiconductor materials and steps to overcome the limitations of existing TCAD software
This book is aimed at researchers and graduate students in semiconductor materials, machine learning and electrical engineering.
More details
Series
Language
English
Place of publication
London
United Kingdom
Publishing group
Taylor & Francis Ltd
Target group
College/higher education
Professional and scholarly
Academic and Postgraduate
Illustrations
80 s/w Abbildungen, 2 s/w Photographien bzw. Rasterbilder, 78 s/w Zeichnungen, 13 s/w Tabellen
13 Tables, black and white; 78 Line drawings, black and white; 2 Halftones, black and white; 80 Illustrations, black and white
Dimensions
Height: 240 mm
Width: 161 mm
Thickness: 17 mm
Weight
508 gr
ISBN-13
978-1-032-79688-8 (9781032796888)
Copyright in bibliographic data and cover images is held by Nielsen Book Services Limited or by the publishers or by their respective licensors: all rights reserved.
Schweitzer Classification
Other editions
Additional editions

Neeraj Gupta | Rashmi Gupta | Rekha Yadav
Machine Learning for Semiconductor Materials
E-Book
08/2025
CRC Press
€73.99
Available for download

Neeraj Gupta | Rashmi Gupta | Rekha Yadav
Machine Learning for Semiconductor Materials
E-Book
08/2025
CRC Press
€73.99
Available for download
Persons
Neeraj Gupta is an Associate Professor at Amity University Haryana with over 16 years of teaching experience. His expertise includes VLSI design, low-power and analog design, AI and embedded systems. He has published 40+ papers, two book chapters, one book and 12 patents and has received the Best Researcher and Best Teacher Award (2024).
Rashmi Gupta is an Assistant Professor at Amity University Haryana with 13+ years of experience. Her research interests include AI, software engineering and IoT. She has authored 20+ papers, two book chapters, one book and five patents.
Rekha Yadav is an Assistant Professor at DCRUST, Murthal. She specializes in semiconductor device modeling and VLSI design, with 15 years of experience, over 30 publications and four book chapters.
Sandeep Dhariwal is an Associate Professor at Alliance University, Bengaluru. With 14+ years of experience, he focuses on low-power CMOS and semiconductor modeling. He has published 40+ articles, three books and holds three patents.
Rajkumar Sarma is a Postdoctoral Researcher at the University of Limerick, Ireland. With 11+ years of experience, his research spans digital VLSI, FPGA prototyping and quantum architectures. He has 25+ publications, 15+ patents and two books.
Rashmi Gupta is an Assistant Professor at Amity University Haryana with 13+ years of experience. Her research interests include AI, software engineering and IoT. She has authored 20+ papers, two book chapters, one book and five patents.
Rekha Yadav is an Assistant Professor at DCRUST, Murthal. She specializes in semiconductor device modeling and VLSI design, with 15 years of experience, over 30 publications and four book chapters.
Sandeep Dhariwal is an Associate Professor at Alliance University, Bengaluru. With 14+ years of experience, he focuses on low-power CMOS and semiconductor modeling. He has published 40+ articles, three books and holds three patents.
Rajkumar Sarma is a Postdoctoral Researcher at the University of Limerick, Ireland. With 11+ years of experience, his research spans digital VLSI, FPGA prototyping and quantum architectures. He has 25+ publications, 15+ patents and two books.
Content
1. Semiconductor Materials: Current Applications and Limitations of Advanced Semiconductor Devices 2. Machine Learning: Introduction and Features 3. Fault Detection in Semiconductor Manufacturing: A Classification Analysis of the SECOM Dataset 4. Predictive Modelling for Yield Enhancement 5. Deep Learning for Image Classification in Semiconductor Inspection 6. Machine Learning for Semiconductor Devices 7. Numerical Simulation-Based Biosensing Performance Exploration of a Cylindrical BioFET Using Machine Learning 8. Semiconductor Materials for EV and Renewable Energy 9. Performance Comparison of Vertical TFET Using Triple Metal Gate Structures and Insights of Machine Learning Approach: A Comprehensive Study 10. Design and Performance Exploration of Macaroni Channel-Based Ge/Si Interfaced Nanowire FET for Analog and High-Frequency Applications Using Machine Learning