SalePaperback
Light: A Very Short Introduction
₹299 ₹269
Save: 10%
Management: A Very Short Introduction
₹299 ₹269
Save: 10%
Machine Learning 1st Edition
Publisher:
Oxford India
| Author:
Dr S. Sridhar
| Language:
English
| Format:
Paperback
Publisher:
Oxford India
Author:
Dr S. Sridhar
Language:
English
Format:
Paperback
₹710 ₹639
Save: 10%
In stock
Ships within:
3-5 Days
In stock
ISBN:
SKU
9780190127275
Category Computer Engineering/IT Engineering
Category: Computer Engineering/IT Engineering
Page Extent:
This book on Machine Learning is designed as a textbook for undergraduate and post-graduate students of engineering. It provides a comprehensive coverage of fundamentals of machine learning. Spread over 16 chapters, the book starts with an overview of machine learning and discusses the need for understanding data and necessary mathematics. It goes on to explain the basics of learning theory, regression analysis, decision tree, and decision rule-based classification algorithms. The book provides an introduction to Bayesian learning and probabilistic graphical models. Important topics such as support vector machines, artificial neural networks, ensemble learning, clustering algorithms, reinforcement algorithms, and genetic algorithms are discussed in depth. It ends with the latest developments in deep learning. A perfect balance between theoretical and mathematical exposition is provided with several numerical examples, review questions, and Python programs. It will also be useful for engineering professionals and IT employees who want to learn the basics of the subject. Key features. Adopts an ‘Algorithmic Approach’ to illustrate the concepts of machine learning in a simple language with 100+ numerical problems. Adapts ‘Minimal Mathematics Strategy’ with more emphasis on understanding the basics of machine learning. Has ‘Comprehensive Coverage’ of all topics that are relevant to machine learning with 100+ figures and Python codes. Provides ‘Simple Explanation’ to topics such as clustering, support vector machines, genetic algorithms, artificial neural networks, ensemble learning, and deep learning. Contains ‘Appendices’ that discuss the basics of Python and Python packages such as NumPy, Pandas, Scikit-learn, Matplotlib, SciPy, and Keras.
Be the first to review “Machine Learning 1st Edition” Cancel reply
Description
This book on Machine Learning is designed as a textbook for undergraduate and post-graduate students of engineering. It provides a comprehensive coverage of fundamentals of machine learning. Spread over 16 chapters, the book starts with an overview of machine learning and discusses the need for understanding data and necessary mathematics. It goes on to explain the basics of learning theory, regression analysis, decision tree, and decision rule-based classification algorithms. The book provides an introduction to Bayesian learning and probabilistic graphical models. Important topics such as support vector machines, artificial neural networks, ensemble learning, clustering algorithms, reinforcement algorithms, and genetic algorithms are discussed in depth. It ends with the latest developments in deep learning. A perfect balance between theoretical and mathematical exposition is provided with several numerical examples, review questions, and Python programs. It will also be useful for engineering professionals and IT employees who want to learn the basics of the subject. Key features. Adopts an ‘Algorithmic Approach’ to illustrate the concepts of machine learning in a simple language with 100+ numerical problems. Adapts ‘Minimal Mathematics Strategy’ with more emphasis on understanding the basics of machine learning. Has ‘Comprehensive Coverage’ of all topics that are relevant to machine learning with 100+ figures and Python codes. Provides ‘Simple Explanation’ to topics such as clustering, support vector machines, genetic algorithms, artificial neural networks, ensemble learning, and deep learning. Contains ‘Appendices’ that discuss the basics of Python and Python packages such as NumPy, Pandas, Scikit-learn, Matplotlib, SciPy, and Keras.
About Author
Dr S. Sridhar is Professor at the Department of Information Science and Technology, College of Engineering, Guindy Campus, Anna University, Chennai. Dr M. Vijayalakshmi is Associate Professor at the Department of Information Science and Technology, College of Engineering, Guindy Campus, Anna University, Chennai.
Reviews
There are no reviews yet.
Be the first to review “Machine Learning 1st Edition” Cancel reply
[wt-related-products product_id="test001"]
Related products
RELATED PRODUCTS
Digital Forensics In The Era Of Artificial Intelligence
Save: 15%
Driving 5g Mobile Communications With Artificial Intelligence Towards 6g
Save: 15%
Introduction To Programming And Problem-Solving Scala, 2nd Edition
Save: 15%
Iot And Ai Technologies For Sustainable Living A Practical Handbook
Save: 15%
Machine Learning For Healthcare , Handling And Managing Data
Save: 15%
Secure Data Science Integrating Cyber Security And Data Science
Save: 15%
Sensors Cloud And Fog , The Enabling Technologies For The Internet Of Things
Save: 15%
Reviews
There are no reviews yet.