Nanophotonics and Machine Learning, 2023
Concepts, Fundamentals, and Applications

Springer Series in Optical Sciences Series, Vol. 241

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Language: English

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Nanophotonics and Machine Learning
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178 p. · 15.5x23.5 cm · Paperback

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Nanophotonics and Machine Learning
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178 p. · 15.5x23.5 cm · Hardback

This book, the first of its kind, bridges the gap between the increasingly interlinked fields of nanophotonics and artificial intelligence (AI). While artificial intelligence techniques, machine learning in particular, have revolutionized many different areas of scientific research, nanophotonics holds a special position as it simultaneously benefits from AI-assisted device design whilst providing novel computing platforms for AI. This book is aimed at both researchers in nanophotonics who want to utilize AI techniques and researchers in the computing community in search of new photonics-based hardware. The book guides the reader through the general concepts and specific topics of relevance from both nanophotonics and AI, including optical antennas, metamaterials, metasurfaces, and other photonic devices on the one hand, and different machine learning paradigms and deep learning algorithms on the other. It goes on to comprehensively survey inverse techniques for device design, AI-enabled applications in nanophotonics, and nanophotonic platforms for AI. This book will be essential reading for graduate students, academic researchers, and industry professionals from either side of this fast-developing, interdisciplinary field. 

 

Chapter1. Fundamentals of nanophotonics.- Chapter2. Nanophotonic devices and platforms. - Chapter3. Fundamentals of machine learning.- Chapter4. DL-assisted inverse design in nanophotonics.- Chapter5. DL-enabled applications in nanophotonics.- Chapter6. Nanophotonic and optical platforms for DL.

Yuebing Zheng:

Yuebing Zheng is an Associate Professor of Mechanical Engineering and Materials Science & Engineering at the University of Texas at Austin, USA, directing Zheng Research Group. He is holding the Temple Foundation Endowed Teaching Fellowship in Engineering #2. Yuebing received his Ph.D. in Engineering Science and Mechanics (with Prof. Tony Jun Huang) from the Pennsylvania State University, USA, in 2010. He was a postdoctoral researcher in Chemistry and Biochemistry (with Prof. Paul S. Weiss) at the University of California, Los Angeles from 2010 to 2013.  His research group innovates optical manipulation and measurement for biological and nanoscale world. He received University Co-op Research Excellence Award for Best Paper, Materials Today Rising Star Award, NIH Director’s New Innovator Award, NASA Early Career Faculty Award, ONR Young Investigator Award, and Beckman Young Investigator Award.

 

Kan Yao is currently a postdoctoral fellow in the University of Texas at Austin. He received his PhD degree in Electrical Engineering in 2017 from Northeastern University (Boston, USA), where he worked with Prof. Yongmin Liu. Before the enrollment in a PhD program, he spent 3 years in Chinese Academy of Sciences as a research assistant and in Soochow University (Suzhou, China) as a visiting scholar. Kan obtained bachelor’s and master’s degrees from the University of Science and Technology of China (2006) and Chinese Academy of Sciences (2009), respectively. His research interests include nanophotonics, plasmonics, metamaterials and metasurfaces, light-matter interactions, transformation optics, and other topics concerning field/wave phenomena. 

Provides the first book-level coverage of intelligent nanophotonics Presents the fundamental concepts of both photonics and machine learning in an accessible way Summarizes applications to nanophotonic inverse design and characterization, and computing