NEURAL NETWORKS: A CLASSROOM APPROACH, 2ND EDN
NEURAL NETWORKS: A CLASSROOM APPROACH, 2ND EDN is backordered and will ship as soon as it is back in stock.
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Book Details
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Author: Satish Kumar
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Brand: McGraw-Hill Education
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Edition: 2nd Edition
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Binding: Paperback
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Number of Pages: 760
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Release Date: 01-07-2017
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ISBN: 9781259006166
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Languages: English
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Dimensions: 9.0 x 6.6 x 1.2 inches
About The Book
Neural Networks: A Classroom Approach (2nd Edition) by Satish Kumar offers an updated and accessible introduction to neural networks, balancing both theoretical insights and practical applications. This revised edition emphasizes the underlying geometry of foundational neural network models while providing heuristic explanations of theoretical results, making complex concepts easier to understand.
The book stands out for its easy-to-read format, with a perfect blend of theory and practice, without sacrificing the necessary mathematical rigor. Kumar has successfully incorporated excellent pictorial descriptions and engaging pedagogy, ensuring that the learning experience is both comprehensive and enjoyable. Students will appreciate the intuitive approach to the subject, which allows them to grasp the concepts clearly while still being exposed to the necessary technical details.
Whether you're a student or professional looking to enhance your understanding of neural networks, this book serves as an ideal guide to mastering the topic. The inclusion of real-world applications, along with theoretical foundations, makes it a valuable resource for those looking to apply neural network models in practical settings. With this edition, readers will gain a deep and well-rounded understanding of neural networks, from the basics to more advanced topics.

