Machine learning for the physical sciences, Requiao Da Cunha, Carlo
Автор: Christopher M. Bishop Название: Pattern Recognition and Machine Learning ISBN: 1493938436 ISBN-13(EAN): 9781493938438 Издательство: Springer Рейтинг: Цена: 76160.00 T Наличие на складе: Ожидается поступление. Описание: Familiarity with multivariate calculus and basic linear algebra is required, and some experience in the use of probabilities would be helpful though not essential as the book includes a self-contained introduction to basic probability theory.
Автор: Bradley Efron , Trevor Hastie Название: Computer Age Statistical Inference, Student Edition ISBN: 1108823416 ISBN-13(EAN): 9781108823418 Издательство: Cambridge Academ Рейтинг: Цена: 33790.00 T Наличие на складе: Есть у поставщика Поставка под заказ. Описание: Computing power has revolutionized the theory and practice of statistical inference. Now in paperback, and fortified with 130 class-tested exercises, this book explains modern statistical thinking from classical theories to state-of-the-art prediction algorithms. Anyone who applies statistical methods to data will value this landmark text.
Автор: Zollanvari, Amin Название: Machine Learning with Python ISBN: 3031333411 ISBN-13(EAN): 9783031333415 Издательство: Springer Рейтинг: Цена: 60550.00 T Наличие на складе: Есть у поставщика Поставка под заказ. Описание: This book is meant as a textbook for undergraduate and graduate students who are willing to understand essential elements of machine learning from both a theoretical and a practical perspective. The choice of the topics in the book is made based on one criterion: whether the practical utility of a certain method justifies its theoretical elaboration for students with a typical mathematical background in engineering and other quantitative fields. As a result, not only does the book contain practically useful techniques, it also presents them in a mathematical language that is accessible to both graduate and advanced undergraduate students. The textbook covers a range of topics including nearest neighbors, linear models, decision trees, ensemble learning, model evaluation and selection, dimensionality reduction, assembling various learning stages, clustering, and deep learning along with an introduction to fundamental Python packages for data science and machine learning such as NumPy, Pandas, Matplotlib, Scikit-Learn, XGBoost, and Keras with TensorFlow backend. Given the current dominant role of the Python programming language for machine learning, the book complements the theoretical presentation of each technique by its Python implementation. In this regard, two chapters are devoted to cover necessary Python programming skills. This feature makes the book self-sufficient for students with different programming backgrounds and is in sharp contrast with other books in the field that assume readers have prior Python programming experience. As such, the systematic structure of the book, along with the many examples and exercises presented, will help the readers to better grasp the content and be equipped with the practical skills required in day-to-day machine learning applications.
Автор: Marc Peter Deisenroth, A. Aldo Faisal, Cheng Soon Ong Название: Mathematics for Machine Learning ISBN: 110845514X ISBN-13(EAN): 9781108455145 Издательство: Cambridge Academ Рейтинг: Цена: 42230.00 T Наличие на складе: Есть у поставщика Поставка под заказ. Описание: This self-contained textbook introduces all the relevant mathematical concepts needed to understand and use machine learning methods, with a minimum of prerequisites. Topics include linear algebra, analytic geometry, matrix decompositions, vector calculus, optimization, probability and statistics.
Автор: Hemanth Название: Smart Applications with Advanced Machine Learning and Human-Centred Problem Design ISBN: 3031097521 ISBN-13(EAN): 9783031097522 Издательство: Springer Рейтинг: Цена: 186330.00 T Наличие на складе: Есть у поставщика Поставка под заказ. Описание: This book brings together the most recent, quality research papers accepted and presented in the 3rd International Conference on Artificial Intelligence and Applied Mathematics in Engineering (ICAIAME 2021) held in Antalya, Turkey between 1-3 October 2021. Objective of the content is to provide important and innovative research for developments-improvements within different engineering fields, which are highly interested in using artificial intelligence and applied mathematics. As a collection of the outputs from the ICAIAME 2021, the book is specifically considering research outcomes including advanced use of machine learning and careful problem designs on human-centred aspects. In this context, it aims to provide recent applications for real-world improvements making life easier and more sustainable for especially humans. The book targets the researchers, degree students, and practitioners from both academia and the industry.
Автор: Li, Chong Название: Reinforcement Learning for Cyber-Physical Systems with Cybersecurity Case Studies ISBN: 1138543535 ISBN-13(EAN): 9781138543539 Издательство: Taylor&Francis Рейтинг: Цена: 84710.00 T Наличие на складе: Есть у поставщика Поставка под заказ. Описание: This book introduces reinforcement learning, and provides novel ideas and use cases to demonstrate the benefits of using reinforcement learning for Cyber Physical Systems. Two important case studies on applying reinforcement learning to cybersecurity problems are included.
Автор: Pyzer-Knapp Название: Deep Learning for Physical Scientists: Acceleratin g Research with Machine Learning ISBN: 1119408334 ISBN-13(EAN): 9781119408338 Издательство: Wiley Рейтинг: Цена: 65420.00 T Наличие на складе: Есть у поставщика Поставка под заказ. Описание: Discover the power of machine learning in the physical sciences with this one-stop resource from a leading voice in the field Deep Learning for Physical Scientists: Accelerating Research with Machine Learning delivers an insightful analysis of the transformative techniques being used in deep learning within the physical sciences. The book offers readers the ability to understand, select, and apply the best deep learning techniques for their individual research problem and interpret the outcome. Designed to teach researchers to think in useful new ways about how to achieve results in their research, the book provides scientists with new avenues to attack problems and avoid common pitfalls and problems.
Practical case studies and problems are presented, giving readers an opportunity to put what they have learned into practice, with exemplar coding approaches provided to assist the reader. From modelling basics to feed-forward networks, the book offers a broad cross-section of machine learning techniques to improve physical science research. Readers will also enjoy: A thorough introduction to the basic classification and regression with perceptrons An exploration of training algorithms, including back propagation and stochastic gradient descent and the parallelization of training An examination of multi-layer perceptrons for learning from descriptors and de-noising data Discussions of recurrent neural networks for learning from sequences and convolutional neural networks for learning from images A treatment of Bayesian optimization for tuning deep learning architectures Perfect for academic and industrial research professionals in the physical sciences, Deep Learning for Physical Scientists: Accelerating Research with Machine Learning will also earn a place in the libraries of industrial researchers who have access to large amounts of data but have yet to learn the techniques to fully exploit that access.
Perfect for academic and industrial research professionals in the physical sciences, Deep Learning for Physical Scientists: Accelerating Research with Machine Learning will also earn a place in the libraries of industrial researchers who have access to large amounts of data but have yet to learn the techniques to fully exploit that access. This book introduces the reader to the transformative techniques involved in deep learning. A range of methodologies are addressed including:*Basic classification and regression with perceptrons *Training algorithms, such as back propagation and stochastic gradient descent and the parallelization of training*Multi-Layer Perceptrons for learning from descriptors, and de-noising data*Recurrent neural networks for learning from sequences*Convolutional neural networks for learning from images*Bayesian optimization for tuning deep learning architecturesEach of these areas has direct application to physical science research, and by the end of the book, the reader should feel comfortable enough to select the methodology which is best for their situation, and be able to implement and interpret outcome of the deep learning model.
The book is designed to teach researchers to think in new ways, providing them with new avenues to attack problems, and avoid roadblocks within their research. This is achieved through the inclusion of case-study like problems at the end of each chapter, which will give the reader a chance to practice what they have just learnt in a close-to-real-world setting, with example 'solutions' provided through an online resource. Market Description This book introduces the reader to the transformative techniques involved in deep learning.
A range of methodologies are addressed including: * Basic classification and regression with perceptrons* Training algorithms, such as back propagation and stochastic gradient descent and the parallelization of training* Multi-Layer Perceptrons for learning from descriptors, and de-noising data* Recurrent neural networks for learning from sequences* Convolutional neural networks for learning from images* Bayesian optimization for tuning deep learning architectures Each of these areas has direct application to physical science research, and by the end of the book, the reader should feel comfortable enough to select the methodology which is best for their situation, and be able to implement and interpret outcome of the deep learning model. The book is designed to teach researchers to think in new ways, providing them with new avenues to attack problems, and avoid roadblocks within their research. This is achieved through the inclusion of case-study like problems at the end of each chapter, which will give the reader a chance to practice what they have just learnt in a close-to-real-world setting, with example 'solutions' provided through an online resource.
Through a series of recent breakthroughs, deep learning has boosted the entire field of machine learning. Now, even programmers who know close to nothing about this technology can use simple, efficient tools to implement programs capable of learning from data.
The updated edition of this practical book uses concrete examples, minimal theory, and three production-ready Python frameworks--scikit-learn, Keras, and TensorFlow--to help you gain an intuitive understanding of the concepts and tools for building intelligent systems. You'll learn a range of techniques, starting with simple linear regression and progressing to deep neural networks. With exercises in each chapter to help you apply what you've learned, all you need is programming experience to get started.
Over the last decade, there has been a significant shift from traditional mechanistic and empirical modelling into statistical and data-driven modelling for applications in reaction engineering. In particular, the integration of machine learning and first-principle models has demonstrated significant potential and success in the discovery of (bio)chemical kinetics, prediction and optimisation of complex reactions, and scale-up of industrial reactors.
Summarising the latest research and illustrating the current frontiers in applications of hybrid modelling for chemical and biochemical reaction engineering, Machine Learning and Hybrid Modelling for Reaction Engineering fills a gap in the methodology development of hybrid models. With a systematic explanation of the fundamental theory of hybrid model construction, time-varying parameter estimation, model structure identification and uncertainty analysis, this book is a great resource for both chemical engineers looking to use the latest computational techniques in their research and computational chemists interested in new applications for their work.
Автор: Zhuge Hai Название: Cyber-Physical-Social Intelligence: On Human-Machine-Nature Symbiosis ISBN: 9811373108 ISBN-13(EAN): 9789811373107 Издательство: Springer Рейтинг: Цена: 111790.00 T Наличие на складе: Есть у поставщика Поставка под заказ. Описание: 1 Introduction1.1 Cyber-Physical Society1.2 Data1.2.1 General definition of data1.2.2 Data for computing1.2.3 The philosophy of between material and mind1.2.4 Views on Big Data1.2.5 Big networks of data and humans1.2.6 The shift of science paradigm1.2.7 The fourth industrial revolution1.2.8 Observed system, data, information, knowledge, humans and machines1.2.9 Problems2 Discovering Implicit Semantic Link in Cyber-Physical Society2.1 Semantic Link2.2 A brief history of Semantic Link Network2.3 Knowledge flowing through semantic links2.4 Modeling with local views and global views2.5 The Big Gap2.6 The Levels of Representation2.7 The semantic link networks that enable intelligence3 Dimensions on Data3.1 Different views of Dimension3.2 Dimensions on Big Data3.3 Multi-dimensional category space3.4 Complex multi-dimensional space and the tasks of analysis4 Multi-Dimensional Analytics4.1 Data operation dimension4.2 System behavior dimension4.3 Value dimension4.4 Time dimension4.5 Human dimension4.6 Strategic planning on multiple dimensions an example5 Unconventional Mapping from Data Space into Knowledge Space5.1 Mapping Representations into Wikipedia5.2 Mapping data space into knowledge space with cognition5.3 Mapping data into human-level concepts5.4 Mapping from representation into knowledge through complex modeling5.5 From correlation to knowledge5.6 Human representation and machine representation5.7 Knowledge flow through cognitive systems 6 Cyber-Physical-Social Infrastructure6.1 The development of Cyber-Infrastructure6.2 Big gaps between humans and machines 6.3 Incorporating cognitive architecture into cyber-infrastructure7 Communities of Cognition and Practice8 New Paradigm of Science8.1 The evolving paradigm of science8.2 Science process with data, concept, motivation, thinking, knowledge and interaction9 The Nature of Big Data Computing9.1 The computing nature 9.2 Problem-driven, data-driven, and data-based problem driven9.3 Beyond Turing test9.4 Analogical mapping 9.5 Toward an open interactive computing10 Mapping through Social Space11 The Emergence of Cyber-Physical-Social Intelligence11.1 Fundamental problem11.2 Methodology11.3 Understanding: extensible mapping from reality into mental space 11.4 Cyber-Physical-Social-Mental Computing11.5 Laws of the complex system12 Conclusion13 References
Автор: McClarren Ryan G. Название: Machine Learning for Engineers: Using Data to Solve Problems for Physical Systems ISBN: 3030703878 ISBN-13(EAN): 9783030703875 Издательство: Springer Рейтинг: Цена: 51230.00 T Наличие на складе: Есть у поставщика Поставка под заказ. Описание: All engineers and applied scientists will need to harness the power of machine learning to solve the highly complex and data intensive problems now emerging.
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