This contributed volume explores the integration of machine learning and cheminformatics within materials science, focusing on predictive modeling techniques.

This contributed volume explores the integration of machine learning and cheminformatics within materials science, focusing on predictive modeling techniques. It begins with foundational concepts in materials informatics and cheminformatics, emphasizing quantitative structure-property relationships (QSPR). The volume then presents various methods and tools, including advanced QSPR models, quantitative read-across structure-property relationship (q-RASPR) models, optimization strategies with minimal data, and in silico studies using different descriptors. Additionally, it explores machine learning algorithms and their applications in materials science, alongside innovative modeling approaches for quantum-theoretic properties. Overall, the book serves as a comprehensive resource for understanding and applying machine learning in the study and development of advanced materials and is a useful tool for students, researchers and professionals working in these areas.

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Discusses the computational design of new materials and their applications Includes cases studies and examples Includes contributions by leading experts in this field
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Product details

ISBN
9783031787355
Published
2025-04-03
Publisher
Springer International Publishing AG
Height
235 mm
Width
155 mm
Age
Research, P, UP, 06, 05
Language
Product language
Engelsk
Format
Product format
Innbundet
Number of pages
17