Deep Learning Spectroscopy
FOCUS · S32 · ID: 48674
Presentations
-
Prediction of materials properties from core-loss spectrum using neural network
ORAL · Invited
–
Presenters
-
Teruyasu Mizoguchi
The University of Tokyo, University of Tokyo
Authors
-
Teruyasu Mizoguchi
The University of Tokyo, University of Tokyo
-
-
Review and Prospect: Deep Learning in Nuclear Magnetic Resonance Spectroscopy
ORAL · Invited
–
Presenters
-
Xiaobo Qu
Department of Electronic Science, Xiamen University
Authors
-
Xiaobo Qu
Department of Electronic Science, Xiamen University
-
-
Investigation of featurization approaches for supervised machine learning in X-ray spectroscopy
ORAL
–
Presenters
-
Yiming Chen
University of California, San Diego
Authors
-
Yiming Chen
University of California, San Diego
-
Chi Chen
University of California, San Diego
-
Chengjun Sun
Argonne National Laboratory
-
Steve M Heald
Argonne National Laboratory
-
Shyue Ping Ong
University of California, San Diego
-
Maria K Chan
Argonne National Laboratory
-
-
Combining machine learning and XANES spectra featurization to make chemical environment predictions of CdTe materials
ORAL
–
Presenters
-
Justin Pothoof
University of Washington
Authors
-
Justin Pothoof
University of Washington
-
Arun Kumar Mannodi Kanakkithodi
Purdue University
-
Srisuda Rojsatien
Arizona State University
-
Xinyue Wang
University of Washington
-
Amy Stegmann
University of Washington
-
Yu-Hsuan Hsiao
University of Washington
-
Mariana Bertoni
Arizona State University
-
Maria K Chan
Argonne National Laboratory
-
-
Deep-learning-enabled optical ellipsometry for complex thin films and 2D materials
ORAL
–
Presenters
-
ziyang wang
The Pennsylvania State University
Authors
-
ziyang wang
The Pennsylvania State University
-
Yuxuan Lin
University of California, Berkeley
-
Shengxi Huang
The Pennsylvania State University, Pennsylvania State University, Department of Electrical Engineering, The Pennsylvania State University, University Park, Pennsylvania 16802, United States
-
Kunyan Zhang
Pennsylvania State University
-
Wenjing Wu
Columbia University
-
-
Machine Learning-Accelerated Spectral Imaging Analysis for Nanomaterials
ORAL
–
Publication: H. Jia, C. Wang, C. Wang, P. Clancy. Machine Learning-Accelerated Spectral Imaging Analysis for Nanomaterials. Nano Letters. 2022. (in prep.)
Presenters
-
Haili Jia
Johns Hopkins University
Authors
-
Haili Jia
Johns Hopkins University
-
Canhui Wang
Johns Hopkins University
-
Chao Wang
Johns Hopkins University
-
Paulette Clancy
Johns Hopkins University
-
-
Elucidating proximity magnetism through polarized neutron reflectometry and machine learning
ORAL
–
Publication: N. Andrejevic, Z. Chen, et al. "Elucidating proximity magnetism through polarized neutron reflectometry and machine learning." arXiv preprint arXiv:2109.08005 (2021).
Presenters
-
Nina Andrejevic
Massachusetts Institute of Technology MI
Authors
-
Nina Andrejevic
Massachusetts Institute of Technology MI
-
Zhantao Chen
Massachusetts Institute of Technology MI, Massachusetts Institute of Technology
-
Thanh Nguyen
Massachusetts Institute of Technology MI
-
Mingda Li
Massachusetts Institute of Technology, Massachusetts Institute of Technology MI
-
-
Predicting X-Ray Absorption Spectra of Materials Using Graph-based Neural Networks
ORAL
–
Presenters
-
Fanchen Meng
Brookhaven National Laboratory
Authors
-
Fanchen Meng
Brookhaven National Laboratory
-
Matthew R Carbone
Brookhaven National Laboratory
-
Deyu Lu
Brookhaven National Laboratory
-
-
Identifying charge density and dielectric environment of graphene using Raman spectroscopy and deep learning
ORAL
–
Presenters
-
Zhuofa Chen
Boston University
Authors
-
Zhuofa Chen
Boston University
-
Yousif Khaireddin
Boston University
-
Anna K Swan
Boston University
-