Deep Learning Book — screenshot of deeplearningbook.org

Deep Learning Book

This is the definitive Deep Learning book from Goodfellow, Bengio, and Courville. I refer to it for a solid foundation in both theoretical and practical aspects of deep learning.

Visit deeplearningbook.org →

Questions & Answers

What is the Deep Learning book?
The Deep Learning book is an MIT Press textbook authored by Ian Goodfellow, Yoshua Bengio, and Aaron Courville. It serves as a foundational resource for students and practitioners interested in machine learning and deep learning. The full text is available online for free.
Who should read the Deep Learning book?
This book is intended for students and practitioners who want to enter the field of machine learning, with a specific focus on deep learning. It covers topics from applied math basics to modern practical deep networks and research.
How does the Deep Learning book stand out compared to other resources?
Authored by leading experts in the field, including two of the pioneers (Bengio and Goodfellow), it offers a comprehensive and authoritative treatment of deep learning. Its availability for free online is also a significant differentiator, despite the print version being sold.
When is the Deep Learning book a useful resource?
This book is useful for gaining a deep, foundational understanding of deep learning concepts, from linear algebra and probability basics to advanced topics like generative models. It's suitable for initial learning and as a reference for specific technical details.
What is the structure of the Deep Learning book?
The book is structured into three parts: Applied Math and Machine Learning Basics, Modern Practical Deep Networks, and Deep Learning Research. It covers topics ranging from feedforward networks and regularization to generative models and Monte Carlo methods.