Machine Learning And Data Mining In Materials Science
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Machine Learning and Data Mining in Materials Science
Author | : Norbert Huber,Surya R. Kalidindi,Benjamin Klusemann,Christian Johannes Cyron |
Publsiher | : Frontiers Media SA |
Total Pages | : 235 |
Release | : 2020-04-22 |
Genre | : Electronic Book |
ISBN | : 9782889636518 |
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Materials Data Science
Author | : Stefan Sandfeld |
Publsiher | : Springer Nature |
Total Pages | : 629 |
Release | : 2024 |
Genre | : Electronic Book |
ISBN | : 9783031465659 |
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Materials Informatics
Author | : Olexandr Isayev,Alexander Tropsha,Stefano Curtarolo |
Publsiher | : John Wiley & Sons |
Total Pages | : 304 |
Release | : 2019-12-04 |
Genre | : Technology & Engineering |
ISBN | : 9783527341214 |
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Provides everything readers need to know for applying the power of informatics to materials science There is a tremendous interest in materials informatics and application of data mining to materials science. This book is a one-stop guide to the latest advances in these emerging fields. Bridging the gap between materials science and informatics, it introduces readers to up-to-date data mining and machine learning methods. It also provides an overview of state-of-the-art software and tools. Case studies illustrate the power of materials informatics in guiding the experimental discovery of new materials. Materials Informatics: Methods, Tools and Applications is presented in two parts?Methodological Aspects of Materials Informatics and Practical Aspects and Applications. The first part focuses on developments in software, databases, and high-throughput computational activities. Chapter topics include open quantum materials databases; the ICSD database; open crystallography databases; and more. The second addresses the latest developments in data mining and machine learning for materials science. Its chapters cover genetic algorithms and crystal structure prediction; MQSPR modeling in materials informatics; prediction of materials properties; amongst others. -Bridges the gap between materials science and informatics -Covers all the known methodologies and applications of materials informatics -Presents case studies that illustrate the power of materials informatics in guiding the experimental quest for new materials -Examines the state-of-the-art software and tools being used today Materials Informatics: Methods, Tools and Applications is a must-have resource for materials scientists, chemists, and engineers interested in the methods of materials informatics.
Materials Science and Engineering
Author | : Chandrika Kamath,Ya Ju Fan |
Publsiher | : Elsevier Inc. Chapters |
Total Pages | : 542 |
Release | : 2013-07-10 |
Genre | : Technology & Engineering |
ISBN | : 9780128059326 |
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Data mining is the process of uncovering patterns, associations, anomalies, and statistically significant structures and events in data. It borrows and builds on ideas from many disciplines, ranging from statistics to machine learning, mathematical optimization, and signal and image processing. Data mining techniques are becoming an integral part of scientific endeavors in many application domains, including astronomy, bioinformatics, chemistry, materials science, climate, fusion, and combustion. In this chapter, we provide a brief introduction to the data mining process and some of the algorithms used in extracting information from scientific data sets.
Data Mining and Machine Learning
Author | : Mohammed J. Zaki,Wagner Meira, Jr |
Publsiher | : Cambridge University Press |
Total Pages | : 779 |
Release | : 2020-01-30 |
Genre | : Business & Economics |
ISBN | : 9781108473989 |
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New to the second edition of this advanced text are several chapters on regression, including neural networks and deep learning.
Machine Learning in 2D Materials Science
Author | : Parvathi Chundi,Venkataramana Gadhamshetty,Bharat K. Jasthi,Carol Lushbough |
Publsiher | : CRC Press |
Total Pages | : 249 |
Release | : 2023-11-13 |
Genre | : Technology & Engineering |
ISBN | : 9781000987430 |
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Data science and machine learning (ML) methods are increasingly being used to transform the way research is being conducted in materials science to enable new discoveries and design new materials. For any materials science researcher or student, it may be daunting to figure out if ML techniques are useful for them or, if so, which ones are applicable in their individual contexts, and how to study the effectiveness of these methods systematically. KEY FEATURES • Provides broad coverage of data science and ML fundamentals to materials science researchers so that they can confidently leverage these techniques in their research projects. • Offers introductory material in topics such as ML, data integration, and 2D materials. • Provides in-depth coverage of current ML methods for validating 2D materials using both experimental and simulation data, researching and discovering new 2D materials, and enhancing ML methods with physical properties of materials. • Discusses customized ML methods for 2D materials data and applications and high-throughput data acquisition. • Describes several case studies illustrating how ML approaches are currently leading innovations in the discovery, development, manufacturing, and deployment of 2D materials needed for strengthening industrial products. • Gives future trends in ML for 2D materials, explainable AI, and dealing with extremely large and small, diverse datasets. Aimed at materials science researchers, this book allows readers to quickly, yet thoroughly, learn the ML and AI concepts needed to ascertain the applicability of ML methods in their research.
Machine Learning and Data Mining
Author | : Igor Kononenko,Matjaz Kukar |
Publsiher | : Horwood Publishing |
Total Pages | : 484 |
Release | : 2007-04-30 |
Genre | : Computers |
ISBN | : 1904275214 |
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Good data mining practice for business intelligence (the art of turning raw software into meaningful information) is demonstrated by the many new techniques and developments in the conversion of fresh scientific discovery into widely accessible software solutions. Written as an introduction to the main issues associated with the basics of machine learning and the algorithms used in data mining, this text is suitable foradvanced undergraduates, postgraduates and tutors in a wide area of computer science and technology, as well as researchers looking to adapt various algorithms for particular data mining tasks. A valuable addition to libraries and bookshelves of the many companies who are using the principles of data mining to effectively deliver solid business and industry solutions.
Machine Learning in Materials Science
Author | : Keith T. Butler,Felipe Oviedo,Pieremanuele Canepa |
Publsiher | : American Chemical Society |
Total Pages | : 176 |
Release | : 2022-06-16 |
Genre | : Technology & Engineering |
ISBN | : 9780841299467 |
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Machine Learning for Materials Science provides the fundamentals and useful insight into where Machine Learning (ML) will have the greatest impact for the materials science researcher. This digital primer provides example methods for ML applied to experiments and simulations, including the early stages of building an ML solution for a materials science problem, concentrating on where and how to get data and some of the considerations when choosing an approach. The authors demonstrate how to build more robust models, how to make sure that your colleagues trust the results, and how to use ML to accelerate or augment simulations, by introducing methods in which ML can be applied to analyze and process experimental data. They also cover how to build integrated closed-loop experiments where ML is used to plan the course of a materials optimization experiment and how ML can be utilized in the discovery of materials on computers.