ManningBooks

ManningBooks

Devtalk Sponsor

Deep Learning with Python, Third Edition (Manning)

The bestselling book on Python deep learning, now covering generative AI, Keras 3, PyTorch, and JAX!

François Chollet and Matthew Watson

Deep Learning with Python (Third Edition) by François Chollet and Matthew Watson (Manning Publications) provides an updated and comprehensive introduction to modern deep learning practices.


:brain: Overview

This edition reflects the current state of deep learning as of 2024–2025. It expands on previous versions with new material, refreshed code, and broader framework coverage.

Key updates

  • Keras 3 and TensorFlow integration – updated examples aligned with the latest Keras and TensorFlow APIs.

  • Coverage of modern architectures – new chapters on transformers, large language models (LLMs), and diffusion-based generative models.

  • Multi-framework perspective – introduces PyTorch and JAX, helping readers compare workflows and performance across popular tools.

  • Expanded content – approximately 30% more material than the previous edition, including deeper coverage of real-world use cases and scaling.

  • Practical and conceptual balance – emphasizes conceptual understanding and clear explanations over complex mathematical derivations.


:books: Contents at a glance

The book follows a clear, incremental learning path:

  1. Core principles – foundations of deep learning and mathematical basics.

  2. Frameworks – using Keras, TensorFlow, PyTorch, and JAX for model development.

  3. Applications – classification, regression, computer vision, and sequence modeling.

  4. Text and language – natural language processing and transformer-based architectures.

  5. Generative models – image and text generation, diffusion models, and LLMs.

  6. Practical topics – tuning, scaling, and deploying deep learning systems.

  7. Future perspectives – trends and research directions in AI.


:busts_in_silhouette: Intended audience

This book is suitable for:

  • Software developers and data practitioners with intermediate Python knowledge.

  • Engineers interested in learning deep learning through hands-on implementation.

  • Readers seeking a unified introduction to multiple frameworks and model families.

It is not intended as a purely theoretical text or as a comprehensive reference for advanced mathematical foundations.


:light_bulb: Learning recommendations

  • Work through the code examples as you read; most chapters include runnable snippets.

  • Compare the same models implemented in different frameworks for a deeper understanding.

  • Use the chapters on generative AI as a base for experimentation or small projects.

  • Engage in study groups or code reviews to discuss approaches and outcomes.


Deep Learning with Python, Third Edition serves as both an accessible starting point and an up-to-date reference for developers looking to understand or apply deep learning using current frameworks and techniques.


Don’t forget you can get 45% off with your Devtalk discount! Just use the coupon code “devtalk.com” at checkout :+1:

Most Liked

dyowee

dyowee

I read halfway through first version of this a long time ago. Maybe it is time for me to read this version completely. :slight_smile:

ManningBooks

ManningBooks

Devtalk Sponsor

Having in mind recent developments in the field, it definitely is! :wink:

dyowee

dyowee

Thanks!

Where Next?

Popular Ai topics Top

ManningBooks
Before deploying an AI model into production, you need to know more than just its accuracy. Will it be fast enough for your users? Will i...
New
ManningBooks
In Build a Reasoning Model (From Scratch), acclaimed ML research engineer Sebastian Raschka takes you inside the black box of reasoning-e...
New
ManningBooks
Based on Ilya Sutskever’s famous “must-read” list of ~30 AI papers, this book walks you through the research that shaped today’s deep lea...
New
ManningBooks
Learn AI Data Engineering in a Month of Lunches is a fast, friendly guide to integrating large language models into your data workflows. ...
New
New
ManningBooks
Build an AI Agent (From Scratch) is a step-by-step guide to creating a working AI agent, starting with the bare essentials and growing yo...
New
ManningBooks
Grokking AI Algorithms, Second Edition introduces the most important AI algorithms using relatable illustrations, interesting examples, a...
New
ManningBooks
The bestselling book on Python deep learning, now covering generative AI, Keras 3, PyTorch, and JAX! François Chollet and Matthew ...
New
New
ManningBooks
After ChatGPT used RLHF to become production-ready, this foundational technique exploded in popularity. In The RLHF Book, AI expert Natha...
New

Other popular topics Top

ohm
Which, if any, games do you play? On what platform? I just bought (and completed) Minecraft Dungeons for my Nintendo Switch. Other than ...
New
AstonJ
Or looking forward to? :nerd_face:
485 12328 258
New
PragmaticBookshelf
Design and develop sophisticated 2D games that are as much fun to make as they are to play. From particle effects and pathfinding to soci...
New
AstonJ
Curious to know which languages and frameworks you’re all thinking about learning next :upside_down_face: Perhaps if there’s enough peop...
New
Rainer
My first contact with Erlang was about 2 years ago when I used RabbitMQ, which is written in Erlang, for my job. This made me curious and...
New
AstonJ
poll poll Be sure to check out @Dusty’s article posted here: An Introduction to Alternative Keyboard Layouts It’s one of the best write-...
New
AstonJ
I ended up cancelling my Moonlander order as I think it’s just going to be a bit too bulky for me. I think the Planck and the Preonic (o...
New
DevotionGeo
The V Programming Language Simple language for building maintainable programs V is already mentioned couple of times in the forum, but I...
New
New
PragmaticBookshelf
Author Spotlight: VM Brasseur @vmbrasseur We have a treat for you today! We turn the spotlight onto Open Source as we sit down with V...
New