Visualization in Science Education

Visualization in Science Education
Author: John K. Gilbert
Publisher: Springer Science & Business Media
Total Pages: 375
Release: 2006-03-30
Genre: Science
ISBN: 1402036132

This book addresses key issues concerning visualization in the teaching and learning of science at any level in educational systems. It is the first book specifically on visualization in science education. The book draws on the insights from cognitive psychology, science, and education, by experts from five countries. It unites these with the practice of science education, particularly the ever-increasing use of computer-managed modelling packages.

The Cambridge Handbook of Multimedia Learning

The Cambridge Handbook of Multimedia Learning
Author: Richard E. Mayer
Publisher: Cambridge University Press
Total Pages: 688
Release: 2005-08-15
Genre: Education
ISBN: 9780521838733

This 2005 book constitutes comprehensive coverage of research and theory in the field of multimedia learning.

Journal of the American Chemical Society

Journal of the American Chemical Society
Author: American Chemical Society
Publisher:
Total Pages: 1318
Release: 1917
Genre: Chemistry
ISBN:

Issues for 1898-1901 include Review of American chemical research, v. 4-7; 1879-1937, the society's Proceedings.

The Sceptical Chymist

The Sceptical Chymist
Author: Robert Boyle
Publisher: BoD – Books on Demand
Total Pages: 182
Release: 2020-07-30
Genre: Fiction
ISBN: 3752370815

Reproduction of the original: The Sceptical Chymist by Robert Boyle

Quantum Chemistry in the Age of Machine Learning

Quantum Chemistry in the Age of Machine Learning
Author: Pavlo O. Dral
Publisher: Elsevier
Total Pages: 702
Release: 2022-09-16
Genre: Science
ISBN: 0323886043

Quantum chemistry is simulating atomistic systems according to the laws of quantum mechanics, and such simulations are essential for our understanding of the world and for technological progress. Machine learning revolutionizes quantum chemistry by increasing simulation speed and accuracy and obtaining new insights. However, for nonspecialists, learning about this vast field is a formidable challenge. Quantum Chemistry in the Age of Machine Learning covers this exciting field in detail, ranging from basic concepts to comprehensive methodological details to providing detailed codes and hands-on tutorials. Such an approach helps readers get a quick overview of existing techniques and provides an opportunity to learn the intricacies and inner workings of state-of-the-art methods. The book describes the underlying concepts of machine learning and quantum chemistry, machine learning potentials and learning of other quantum chemical properties, machine learning-improved quantum chemical methods, analysis of Big Data from simulations, and materials design with machine learning. Drawing on the expertise of a team of specialist contributors, this book serves as a valuable guide for both aspiring beginners and specialists in this exciting field. - Compiles advances of machine learning in quantum chemistry across different areas into a single resource - Provides insights into the underlying concepts of machine learning techniques that are relevant to quantum chemistry - Describes, in detail, the current state-of-the-art machine learning-based methods in quantum chemistry

Machine Learning in Chemistry

Machine Learning in Chemistry
Author: Hugh M. Cartwright
Publisher: Royal Society of Chemistry
Total Pages: 564
Release: 2020-07-15
Genre: Science
ISBN: 1788017897

Progress in the application of machine learning (ML) to the physical and life sciences has been rapid. A decade ago, the method was mainly of interest to those in computer science departments, but more recently ML tools have been developed that show significant potential across wide areas of science. There is a growing consensus that ML software, and related areas of artificial intelligence, may, in due course, become as fundamental to scientific research as computers themselves. Yet a perception remains that ML is obscure or esoteric, that only computer scientists can really understand it, and that few meaningful applications in scientific research exist. This book challenges that view. With contributions from leading research groups, it presents in-depth examples to illustrate how ML can be applied to real chemical problems. Through these examples, the reader can both gain a feel for what ML can and cannot (so far) achieve, and also identify characteristics that might make a problem in physical science amenable to a ML approach. This text is a valuable resource for scientists who are intrigued by the power of machine learning and want to learn more about how it can be applied in their own field.