Skip to main content

Machine Learning for Real World Applications

  • Book
  • Oct 2024
  • Latest edition

Overview

  • Offers a diverse set of machine learning applications
  • Is a trustworthy source of theoretical and technical learning content
  • Establishes a foundation for future research

Part of the book series: Transactions on Computer Systems and Networks (TCSN)

Buy print copy

Keywords

  • Artificial Intelligence
  • Machine Learning
  • Deep Learning
  • Neural Network
  • Convolution Neural Networks
  • Real-world Applications
  • Sustainable Smart City Measurement Framework
  • Machine Learning for Healthcare
  • Deep Learning-based Speech Recognition Systems

About this book

This book provides a comprehensive coverage of machine learning techniques ranging from fundamental to advanced. The content addresses topics within the scope of the book from the ground up, providing readers with a trustworthy source of theoretical and technical learning content. The book emphasizes not only the theoretical features but also their practical and implementation aspects in real-world applications. These applications are crucial because they provide comprehensive experimental work that supports the validity of the offered approaches as well as clear instructions on how to apply such models in comparable and distinct settings and contexts. Furthermore, the chapters shed light on the problems and possibilities that researchers might use to direct their future research efforts. The book is beneficial for undergraduate and postgraduate students, researchers, and industry personnel.

Editors and Affiliations

  • Dept. of Business, Mgmt. & Accounting, University of Maryland Eastern Shore, Princess Anne, USA

    Dinesh K. Sharma

  • Department of Computer Science and Application, Atal Bihari Vajpayee Vishwavidyalaya, Bilaspur, India

    H.S. Hota

  • College of Engineering and Applied Sciences, American University of Kuwait, Kuwait, Kuwait

    Aaron Rasheed Rababaah

About the editors

Dinesh K. Sharma is a Professor of Quantitative Methods and Computer Applications in the Department of Business, Management, and Accounting at the University of Maryland Eastern Shore, USA. He earned his MS in Mathematics, MS in Computer Science, Ph.D. in Operations Research, and a second Ph.D. in Management. Professor Sharma has over twenty-nine years of teaching experience, has served on several committees to supervise Ph.D. students, and acts as an external Ph.D. thesis examiner for several universities in India. Dr. Sharma's research interests include mathematical programming, artificial intelligence and machine learning techniques, supply chain management, healthcare management, and portfolio management. He has published over 250 refereed journal articles and conference proceedings, two forthcoming edited books (Springer and Taylor & Francis), and has also won sixteen best paper awards. Professor Sharma has collaborated on many funded research grants. Professor Sharma is the Editor of the Journal of Global Information Technology and the Review of Business and Technology Research, is on the editorial board of several journals, and is a paper reviewer for several additional journals and conferences. Additionally, he is a member of Decision Sciences, USA, and a life member of the Operational Research Society of India. He has served as a program chair and coordinator of several international conferences in many countries.

H.S. HOTA is a Professor of Computer Science in the Department of Computer Science and Application and Dean Faculty of Science at Atal Bihari Vajpayee University in Bilaspur, India. Prior to joining Atal Bihari Vajpayee University, he worked as an Associate Professor at the same university and as an Assistant Professor at Guru Ghasidas Central University, Bilaspur, India. He earned his Ph.D. from Guru Ghasidas Central University in Bilaspur, India. His research interests include Artificial Intelligence and Machine Learning, Business Intelligence, Information Security including Cloud Security, Data Mining, and Evolutionary Computing, and he has published over 75 refereed journal articles in reputable journals. In the conference proceedings, more than 60 articles have been published. He has also won five best paper awards at international conferences. He has also been to several countries and spoken at international conferences as a keynote speaker. He has three patents related to the application of machine learning in different domains in his credit, and he has published one book and three edited books are in the pipeline from internationally reputed publishers. He is also actively involved in various administrative activities of the university. He is also a member of the editorial boards of five international journals as well as a reviewer for many reputed journals of Elsevier and Inderscience. He is a member of many academic bodies, including the Computer Society of India (CSI) and the Indian Science Congress.

Aaron Rasheed Rababaah is an Associate Professor at the College of Engineering and Applied Sciences at the American University of Kuwait (Jan 2016 - Present). He held the following academic positions in the USA: Associate Professor and Assistant Professor at the University of Maryland Eastern Shore, Post-Doc researcher and Instructor at Tennessee State University, and Adjunct Instructor at Indiana University of South Bend. He finished a B.Sc. in Industrial Engineering from the University of Jordan, Jordan, a M.Sc. in Applied Computer Science from the University of Indiana, USA, and a Ph.D. in Computer Information and Systems Engineering from Tennessee State University, USA. He has 5 years of experience in IE and 12 years in teaching at the college level. He has a research interest in Machine Intelligence and Computing Education He has published 4 books, 90 refereed journal and conference papers, and 50 professional presentations. He was awarded several awards in education, research, andindustry. He has supervised, advised, and referred senior projects, master theses, doctoral dissertations, and a number of journals. He has been funded by the USA Department of Defense, the US Army, NASA, USA NSF, and the MD Department of Education.



Bibliographic Information

  • Book Title: Machine Learning for Real World Applications

  • Editors: Dinesh K. Sharma, H.S. Hota, Aaron Rasheed Rababaah

  • Series Title: Transactions on Computer Systems and Networks

  • Publisher: Springer Singapore

  • eBook Packages: Mathematics and Statistics, Mathematics and Statistics (R0)

  • Copyright Information: The Editor(s) (if applicable) and The Author(s), under exclusive license to Springer Nature Singapore Pte Ltd. 2024

  • Hardcover ISBN: 978-981-97-1899-3Due: 21 October 2024

  • Softcover ISBN: 978-981-97-1902-0Due: 21 October 2024

  • eBook ISBN: 978-981-97-1900-6Due: 21 October 2024

  • Series ISSN: 2730-7484

  • Series E-ISSN: 2730-7492

  • Edition Number: 1

  • Number of Pages: X, 240

  • Number of Illustrations: 65 b/w illustrations, 20 illustrations in colour

Publish with us