Deep Learning: A Visual Approach by Andrew Glassner (Author)
- Publisher: COMPUTER SCIENCE
- Availability: In Stock
- SKU: 58431
- Number of Pages: 771
Rs.1,590.00
Rs.2,095.00
Tags: AI and Computer Vision , AI and Data Science , AI and Deep Learning for Beginners , AI and Machine Learning , AI and Neural Networks , AI and Pattern Recognition , AI and Visual Learning , AI Book by Andrew Glassner , AI Concepts with Illustrations , AI Education , AI for Beginners , AI for Researchers , AI Fundamentals , AI Illustrated , AI Learning Resources , AI Research , Andrew Glassner , Andrew Glassner Book , Artificial Intelligence , Artificial Neural Networks , best books , Best Price , Best Selling Books , Data Science , Deep Learning A Visual Approach , Deep Learning Algorithms , Deep Learning Basics , Deep Learning Book , Deep Learning for Data Scientists , Deep Learning for Students , Deep Learning Models , Deep Learning Techniques , Deep Learning Theories , Illustrated AI Concepts , Illustrated Deep Learning Guide , Illustrated Edition , Machine Learning Applications , Machine Learning Concepts , Machine Learning for Everyone , Machine Learning Illustrated , Neural Networks , Neural Networks Explained , ONLINE BOOKS , Online Bookshop , Visual Guide to Deep Learning , Visual Learning AI
Deep Learning: A Visual Approach by Andrew Glassner (Author)
Illustrated Edition
Deep Learning: A Visual Approach by Andrew Glassner is a uniquely designed book that explains deep learning concepts through clear illustrations and engaging visuals. It provides an intuitive understanding of machine learning and neural networks, making complex topics accessible to beginners and professionals alike.
Key Features:
- Illustrated Explanations – Uses diagrams and visuals to simplify deep learning principles.
- Step-by-Step Learning – Covers fundamentals like neural networks, backpropagation, and optimization.
- Practical Applications – Discusses real-world use cases in AI, such as image recognition and NLP.
- Mathematics Made Easy – Breaks down complex equations into digestible visual representations.
- Hands-On Approach – Includes examples and coding exercises for a practical learning experience.
Who Should Read This?
- Beginners looking for an intuitive introduction to deep learning.
- Professionals in AI/ML wanting a fresh perspective on neural networks.
- Students who prefer visual learning over dense theoretical explanations.
This book is ideal for anyone interested in AI, whether you're new to the field or looking to strengthen your understanding through a visual approach.