Machine Learning in Molecular Sciences

Author:   Chen Qu ,  Hanchao Liu
Publisher:   Springer International Publishing AG
Edition:   2023 ed.
Volume:   36
ISBN:  

9783031371950


Pages:   317
Publication Date:   02 October 2023
Format:   Hardback
Availability:   Manufactured on demand   Availability explained
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Machine Learning in Molecular Sciences


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Overview

Machine learning and artificial intelligence have propelled research across various molecular science disciplines thanks to the rapid progress in computing hardware, algorithms, and data accumulation. This book presents recent machine learning applications in the broad research field of molecular sciences. Written by an international group of renowned experts, this edited volume covers both the machine learning methodologies and state-of-the-art machine learning applications in a wide range of topics in molecular sciences, from electronic structure theory to nuclear dynamics of small molecules, to the design and synthesis of large organic and biological molecules. This book is a valuable resource for researchers and students interested in applying machine learning in the research of molecular sciences.

Full Product Details

Author:   Chen Qu ,  Hanchao Liu
Publisher:   Springer International Publishing AG
Imprint:   Springer International Publishing AG
Edition:   2023 ed.
Volume:   36
Weight:   0.658kg
ISBN:  

9783031371950


ISBN 10:   303137195
Pages:   317
Publication Date:   02 October 2023
Audience:   Professional and scholarly ,  Professional & Vocational
Format:   Hardback
Publisher's Status:   Active
Availability:   Manufactured on demand   Availability explained
We will order this item for you from a manufactured on demand supplier.

Table of Contents

An Introduction to Machine Learning in Molecular Sciences.- Graph Neural Networks for Molecules.- Voxelized representations of atomic systems for machine learning applications.- Development of exchange-correlation functionals assisted by machine learning.- Machine-Learning for Static and Dynamic Electronic Structure Theory.- Data Quality, Data Sampling and Data Fitting: A Tutorial Guide for Constructing Full-dimensional Accurate Potential Energy Surfaces (PESs) of Molecules and Reactions.- Machine Learning Applications in Chemical Kinetics and Thermochemistry.- Synthesize in A Smart Way: A Brief Introduction to Intelligence and Automation in Organic Synthesis.- Machine Learning for Protein Engineering.

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Author Information

Chen Qu is currently a research associate of National Institute of Standards and Technology. His current research focuses on applying machine learning methods to predict important chemical properties such as gas chromatography retention indices and mass spectra. He received his Ph.D. at Emory University, where he conducted research primarily on machine learning potential energy surfaces, under the guidance of Prof. Joel Bowman.   Hanchao Liu is currently a machine learning engineer at Google. His work focuses on building large-scale machine learning infrastructures and platforms. Dr. Liu received his Ph.D. in computational chemistry at Emory University under the tutelage of Prof. Joel Bowman, where he applied computational and machine learning methods to study the vibrational dynamics and spectra of various forms of water.

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