Machine Learning-Augmented Spectroscopies for Intelligent Materials Design, ISBN: 9783031148071
Machine Learning-Augmented Spectroscopies for Intelligent Materials Design
  • By (author) Andrejevic Nina

Available for Order

HKD $2,109.00

within 14 to 24 business days
Brief Description

The thesis contains several pioneering results at the intersection of state-of-the-art materials characterization techniques and machine learning. The use of machine learning empowers the information extraction capability of neutron and photon spectroscopies. In particular, new knowledge and new physics insights to aid spectroscopic analysis may hold great promise for next-generation quantum technology. As a prominent example, the so-called proximity effect at topological material interfaces promises to enable spintronics without energy dissipation and quantum computing with fault tolerance, yet the characteristic spectral features to identify the proximity effect have long been elusive. The work presented within permits a fine resolution of its spectroscopic features and a determination of the proximity effect which could aid further experiments with improved interpretability. A few novel machine learning architectures are proposed in this thesis work which leverage the case when the data is scarce and utilize the internal symmetry of the system to improve the training quality. The work sheds light on future pathways to apply machine learning to augment experiments.
show more


Book Details
Publisher:
Springer Nature
Binding:
Hardcover
Date of Pub.:
Oct 7, 2022
Edition:
2022
Language:
-
ISBN:
9783031148071
Dimensions:
-
Weights:
335.66g
Contact Us
Contact Person
Ms. Annie Chau
Email Address
annie.chau@apbookshop.com
Fax No.
+852 2391-7430
Office Hours
Mon to Fri: 9am to 6pm
Sat, Sun and Public Holidays: Closed
General Enquiry
Machine Learning-Augmented Spectroscopies for Intelligent Materials Design, ISBN: 9783031148071  
This site use cookies. By continuing to browse this site you are agreeing to our use of cookies.