Startseite Machine Learning in Science, Technology, Engineering and Mathematics
series: Machine Learning in Science, Technology, Engineering and Mathematics
Reihe

Machine Learning in Science, Technology, Engineering and Mathematics

  • Herausgegeben von: Vigor Yang , Yingjie Liu und Xingjian Wang
eISSN: : 2944-2508
ISSN: 2944-2494
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The proposed MLSTEM series will include foundational, theoretical, and applications-oriented books, covering fundamentals, practical applications, and computational methodologies. The series will address several key problems:

Fragmented Information: Many existing resources on machine learning (ML) are fragmented, requiring readers to consult multiple disparate sources. Each volume of the M-TEC series offers cohesive, self-contained knowledge, providing readers with a comprehensive and consistent learning experience. This eliminates the hassle of piecing together information from various references.

Integration of Theory and Practice: Current literature often focuses either on the theoretical aspects or the practical applications of ML, but rarely both. The M-TEC series bridges this gap by integrating theory with practice. It helps readers understand how theoretical concepts can be effectively applied in real-world settings, enhancing their ability to implement ML solutions in various domains.

Accessibility: Designed to be accessible to a wide audience, including students, researchers, and professionals, the M-TEC series presents complex ML topics in a clear and concise manner. This approach ensures that readers, regardless of their background, can easily grasp and apply ML concepts. By demystifying complex theories and providing practical examples, the series makes ML accessible and usable for a broader audience.

Overall, the M-TEC series provides a unified, comprehensive resource that simplifies the learning and application of ML, making it an invaluable tool for anyone looking to master this transformative technology.

Information zu Autoren / Herausgebern

Vigor Yang is a Professor of Aerospace Engineering and a faculty member of the Machine Learning PhD program at the Georgia Institute of Technology. He is also the founding director of the Jame C. Wu Laboratory of Artificial Intelligence for Technology, Engineering, and Computing (ArTEC). His research is at the interface between engineering and data sciences. He is a member of the U.S. National Academy of Engineering, an academician of Academia Sinica, and a foreign member of the Chinese Academy of Engineering and Indian National Academy of Engineering.

Yingjie Liu is a professor in School of Mathematics and a faculty member of the Machine Learning PhD program at the Georgia Institute of Technology. His research is on the development and analysis of numerical methods for solving partial differential equations. The work includes the back and forth error compensation and correction (BFECC) method, central schemes and central discontinuous Galerkin methods on overlapping cells, hierarchical reconstruction (HR) limiting method, and neural networks with local converging inputs (NNLCI).

Xingjian Wang is an associate professor in the Department of Energy and Power at the Tsinghua University. His research areas encompass the interdisciplinary study of engineering science and machine learning, reduced-order modeling, and theories and analyses of complex fluid flows and combustion. He received the Statistics in Physical Engineering Sciences Award from the American Statistical Association in 2019.

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Heruntergeladen am 6.10.2025 von https://www.degruyterbrill.com/serial/mlstem-b/html
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