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Machine Learning for Engineers
Details
Machine learning and artificial intelligence are ubiquitous terms for improving technical processes. However, practical implementation in real-world problems is often difficult and complex.
This textbook explains learning methods based on analytical concepts in conjunction with complete programming examples in Python, always referring to real technical application scenarios. It demonstrates the use of physics-informed learning strategies, the incorporation of uncertainty into modeling, and the development of explainable, trustworthy artificial intelligence with the help of specialized databases.
Therefore, this textbook is aimed at students of engineering, natural science, medicine, and business administration as well as practitioners from industry (especially data scientists), developers of expert databases, and software developers.
Algorithms Illustrated with Fully Executed Program Examples in Python Explainable and Trustworthy AI for Technical Processes With Programming Exercises and Solutions
Autorentext
Dr. Marcus J. Neuer has developed machine learning and explainable artificial intelligence for usable, profitable applications in various research and industry projects. He leads the research and development department at innoRIID GmbH and teaches at RWTH Aachen as well as the University of Applied Sciences for Business, FHDW. His algorithms are successfully used today in various products, including in the fields of nuclear safety and the process industry.
Klappentext
Machine learning and artificial intelligence are ubiquitous technologies for improving technical processes. However, practical implementation in real-world problems is often difficult and complex.
This textbook explains learning methods based on analytical concepts in conjunction with complete programming examples in Python, always referring to real technical application scenarios. It demonstrates the use of physics-informed learning strategies, the incorporation of uncertainty into modeling, and the development of explainable, trustworthy artificial intelligence with the help of specialized databases.
Therefore, this textbook is aimed at students of engineering, natural sciences, medicine, and business administration as well as practitioners from industry (especially data scientists), developers of expert databases, and software developers.
Excerpts from the Content
- Introduction to Working with Data
- Mathematical Fundamentals and Data Preprocessing
- Supervised and Unsupervised Learning Methods
- Physics-Informed and Stochastic Learning Methods
- Semantic Technologies and Explainable, Trustworthy Artificial Intelligence The Author
Dr. Marcus J. Neuer has developed machine learning and explainable artificial intelligence for usable, profitable applications in various research and industry projects. He leads the research and development department at innoRIID GmbH and teaches at RWTH Aachen as well as the University of Applied Sciences for Business, FHDW. His algorithms are successfully used today in various products, including in the fields of nuclear safety and the process industry.
The translation was done with the help of artificial intelligence. A subsequent human revision was done primarily in terms of content.
Inhalt
1 Introduction to Working with Data.- 2 Data as a Stochastic Process.- 3 Exploratory Analysis (Data Cleaning, Histograms, Principal Component Analysis, Mathematical Transformations).- 4 Fundamentals of Supervised and Unsupervised Learning Methods.- 5 Physics-Informed Learning Methods (Optimization Methods for Data Preprocessing, Integration of Transformatively-Enriched Data, Integration of Mathematical Models).- 6 Stochastic Learning Methods (Mixture-Density Networks, Credal Networks).- 7 Semantic Databases.- 8 Explainable, Trustworthy Artificial Intelligence.
Weitere Informationen
- Allgemeine Informationen
- GTIN 09783662699942
- Genre Information Technology
- Lesemotiv Verstehen
- Anzahl Seiten 260
- Größe H235mm x B155mm x T14mm
- Jahr 2024
- EAN 9783662699942
- Format Kartonierter Einband
- ISBN 366269994X
- Veröffentlichung 30.11.2024
- Titel Machine Learning for Engineers
- Autor Marcus J. Neuer
- Untertitel Introduction to Physics-Informed, Explainable Learning Methods for AI in Engineering Applications
- Gewicht 447g
- Herausgeber Springer Berlin Heidelberg
- Sprache Englisch