Description
This book offers a comprehensive introduction to the core concepts of deep learning, making it suitable for both beginners and those with prior experience in machine learning. With the rapid evolution of the field, the focus is on ideas that are likely to remain relevant over time. The book covers key architectures and techniques to provide a solid foundation for future specialization in deep learning.
Key Features:
Target Audience: Suitable for newcomers and experienced practitioners in machine learning.
Content Structure: Organized into bite-sized chapters that build upon each other in a linear progression, ideal for a two-semester undergraduate or postgraduate course.
Practical Focus: Emphasizes the real-world application of techniques, providing clear, practical insights rather than abstract theory.
Mathematical Foundation: Includes a self-contained introduction to probability theory, ensuring accessibility for readers with varying mathematical backgrounds.
Multi-Perspective Approach: Concepts are explained through textual descriptions, diagrams, mathematical formulas, and pseudo-code for a well-rounded understanding.
This book equips readers with the essential knowledge required for further exploration or research in deep learning.
Reviews
There are no reviews yet.