Navigating Molecular Networks

Navigating Molecular Networks

EnglishPaperback / softback
Sukumar, N.
Springer, Berlin
EAN: 9783031762895
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Detailed information

This book delves into the foundational principles governing the treatment of molecular networks and "chemical space"—the comprehensive domain encompassing all physically achievable molecules—from the perspectives of vector space, graph theory, and data science. It explores similarity kernels, network measures, spectral graph theory, and random matrix theory, weaving intriguing connections between these diverse subjects. Notably, it emphasizes the visualization of molecular networks. The exploration continues by delving into contemporary generative deep learning models, increasingly pivotal in the pursuit of new materials possessing specific properties, showcasing some of the most compelling advancements in this field. Concluding with a discussion on the meanings of discovery, creativity, and the role of artificial intelligence (AI) therein.

Its primary audience comprises senior undergraduate and graduate students specializing in physics, chemistry, and materials science. Additionally, it caters to those interested in the potential transformation of material discovery through computational, network, AI, and machine learning (ML) methodologies.

EAN 9783031762895
ISBN 3031762894
Binding Paperback / softback
Publisher Springer, Berlin
Publication date January 9, 2025
Pages 108
Language English
Dimensions 235 x 155
Country Switzerland
Authors Sukumar, N.
Edition 2025 ed.
Series SpringerBriefs in Materials