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Chollet F. Deep Learning with Python 3ed 2026 Final
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Description:
Textbook in PDF format
The bestselling book on Python deep learning, now covering generative AI, Keras 3, PyTorch, and JAX!
Deep Learning with Python, Third Edition puts the power of deep learning in your hands. This new edition includes the latest Keras and TensorFlow features, Generative AI models, and added coverage of PyTorch and JAX. Learn directly from the creator of Keras and step confidently into the world of Deep Learning with Python.
This book was written for anyone who wishes to explore Deep Learning from scratch or broaden their understanding of Deep Learning. Whether youâre a practicing Machine Learning engineer, a software developer, or a college student, youâll find value in these pages.
Youâll explore Deep Learning in an approachable wayâstarting simply and working up to state-of-the-art techniques. We hope youâll find that this book strikes a balance between intuition, theory, and hands-on practice. It avoids mathematical notation, preferring instead to explain the core ideas of Deep Learning via functioning code paired with explanations of the underlying principles. Youâll train Machine Learning models from scratch in a number of different problem domains and learn practical recommendations for writing Deep Learning programs and deploying them in the real world.
After reading this book, youâll have a solid understanding of what Deep Learning is, when itâs applicable, and what its limitations are. Youâll be familiar with the standard workflow for approaching and solving Machine Learning problems, and youâll know how to address commonly encountered issues.
In Deep Learning with Python, Third Edition youâll discover:
Deep learning from first principles
The latest features of Keras 3
A primer on JAX, PyTorch, and TensorFlow
Image classification and image segmentation
Time series forecasting
Large Language models
Text classification and machine translation
Text and image generationâbuild your own GPT and diffusion models!
Scaling and tuning models
With over 100,000 copies sold, Deep Learning with Python makes it possible for developers, data scientists, and machine learning enthusiasts to put deep learning into action. In this expanded and updated third edition, Keras creator François Chollet offers insights for both novice and experienced machine learning practitioners. You'll master state-of-the-art deep learning tools and techniques, from the latest features of Keras 3 to building AI models that can generate text and images.
About the technology:
In less than a decade, deep learning has changed the worldâtwice. First, Python-based libraries like Keras, TensorFlow, and PyTorch elevated neural networks from lab experiments to high-performance production systems deployed at scale. And now, through Large Language Models and other generative AI tools, Deep Learning is again transforming business and society. In this new edition, Keras creator François Chollet invites you into this amazing subject in the fluid, mentoring style of a true insider.
About the book:
Deep Learning with Python, Third Edition makes the concepts behind Deep Learning and generative AI understandable and approachable. This complete rewrite of the bestselling original includes fresh chapters on transformers, building your own GPT-like LLM, and generating images with diffusion models. Each chapter introduces practical projects and code examples that build your understanding of deep learning, layer by layer.
What's inside:
Hands-on, code-first learning
Comprehensive, from basics to generative AI
Intuitive and easy math explanations
Examples in Keras, PyTorch, JAX, and TensorFlow
About the reader:
For readers with intermediate Python skills. No previous experience with Machine Learning or linear algebra required.
But this book can also be valuable to many different types of readers:
If youâre a data scientist familiar with machine learning, this book will provide you with a solid, practical introduction to deep learning, the fastest-growing and most significant subfield of machine learning.
If youâre a deep learning researcher or practitioner looking to get started with the Keras framework, youâll find this book to be the ideal Keras crash course.
If youâre a graduate student studying deep learning in a formal setting, youâll find this book to be a practical complement to your education, helping you build intuition around the behavior of deep neural networks and familiarizing you with key best practices.
Even technically minded people who donât code regularly will find this book useful as an introduction to both basic and advanced deep learning concepts. To understand the code examples, youâll need reasonable Python proficiency. You donât need previous experience with machine learning or deep learning: this book covers, from scratch, all the necessary basics. You donât need an advanced mathematics background eitherâhigh-school-level mathematics should suffice to follow along.
About the author:
François Chollet is the co-founder of Ndea and the creator of Keras. Matthew Watson is a software engineer at Google working on Gemini and a core maintainer of Keras.
Contents:
What is deep learning?
The mathematical building blocks of neural networks
Introduction to TensorFlow, PyTorch, JAX, and Keras
Classification and regression
Fundamentals of machine learning
The universal workflow of machine learning
A deep dive on Keras
Image classification
ConvNet architecture patterns
Interpreting what ConvNets learn
Image segmentation
Object detection
Timeseries forecasting
Text classification
Language models and the Transformer
Text generation
Image generation
Best practices for the real world
The future of AI
Conclusions