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Machine Learning For Semiconductor Materials 1st Edition Neeraj Gupta Rashmi Gupta Rekha Yadav Sandeep Dhariwal Rajkumar Sarma

  • SKU: BELL-238085918
Machine Learning For Semiconductor Materials 1st Edition Neeraj Gupta Rashmi Gupta Rekha Yadav Sandeep Dhariwal Rajkumar Sarma
$ 35.00 $ 45.00 (-22%)

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Machine Learning For Semiconductor Materials 1st Edition Neeraj Gupta Rashmi Gupta Rekha Yadav Sandeep Dhariwal Rajkumar Sarma instant download after payment.

Publisher: CRC Press
File Extension: PDF
File size: 5.37 MB
Author: Neeraj Gupta & Rashmi Gupta & Rekha Yadav & Sandeep Dhariwal & Rajkumar Sarma
Language: English
Year: 2026
Edition: 1

Product desciption

Machine Learning For Semiconductor Materials 1st Edition Neeraj Gupta Rashmi Gupta Rekha Yadav Sandeep Dhariwal Rajkumar Sarma by Neeraj Gupta & Rashmi Gupta & Rekha Yadav & Sandeep Dhariwal & Rajkumar Sarma instant download after payment.

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.

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