Shop ALLMAX
Buy New
To see product details, add this item to your cart.
Ships from: ProMediaEtc
Sold by: ProMediaEtc
To see product details, add this item to your cart. You can always remove it later.
Shipper / Seller
Returns
30-day refund/replacement
30-day refund/replacement
This item can be returned in its original condition for a full refund or replacement within 30 days of receipt. You may receive a partial or no refund on used, damaged or materially different returns.
Read full return policy
Payment
Secure transaction
Your transaction is secure
We work hard to protect your security and privacy. Our payment security system encrypts your information during transmission. We don’t share your credit card details with third-party sellers, and we don’t sell your information to others. Learn more
To see product details, add this item to your cart. You can always remove it later.
Fast & Free Shipping – Good condition. It may show normal signs of use, such as light writing, highlighting, or library markings, but all pages are intact and the book is fully readable. A solid, complete copy that's ready to enjoy. Fast & Free Shipping – Good condition. It may show normal signs of use, such as light writing, highlighting, or library markings, but all pages are intact and the book is fully readable. A solid, complete copy that's ready to enjoy. See less
Access codes and supplements are not guaranteed with used items.
Ships from and sold by MegaReads.
Added to

Sorry, there was a problem.

There was an error retrieving your Wish Lists. Please try again.

Sorry, there was a problem.

List unavailable.
Kindle app logo image

Download the free Kindle app and start reading Kindle books instantly on your smartphone, tablet, or computer - no Kindle device required.

Read instantly on your browser with Kindle for Web.

Using your mobile phone camera - scan the code below and download the Kindle app.

QR code to download the Kindle App

  • Hands-On Machine Learning with Scikit-Learn, Keras, and TensorFlow: Concepts, Tools, and Techniques to Build Intelligent Systems

Follow the author

Get new release updates & improved recommendations
Something went wrong. Please try your request again later.

Hands-On Machine Learning with Scikit-Learn, Keras, and TensorFlow: Concepts, Tools, and Techniques to Build Intelligent Systems

4.8 out of 5 stars (3,439)

Purchase options and add-ons

Through a series of recent breakthroughs, deep learning has boosted the entire field of machine learning. Now, even programmers who know close to nothing about this technology can use simple, efficient tools to implement programs capable of learning from data. This practical book shows you how.

By using concrete examples, minimal theory, and two production-ready Python frameworksâ??Scikit-Learn and TensorFlowâ??author Aurélien Géron helps you gain an intuitive understanding of the concepts and tools for building intelligent systems. Youâ??ll learn a range of techniques, starting with simple linear regression and progressing to deep neural networks. With exercises in each chapter to help you apply what youâ??ve learned, all you need is programming experience to get started.

  • Explore the machine learning landscape, particularly neural nets
  • Use Scikit-Learn to track an example machine-learning project end-to-end
  • Explore several training models, including support vector machines, decision trees, random forests, and ensemble methods
  • Use the TensorFlow library to build and train neural nets
  • Dive into neural net architectures, including convolutional nets, recurrent nets, and deep reinforcement learning
  • Learn techniques for training and scaling deep neural nets

Frequently bought together

This item: Hands-On Machine Learning with Scikit-Learn, Keras, and TensorFlow: Concepts, Tools, and Techniques to Build Intelligent Systems
$99.99
Get it Jun 15 - 18
Only 1 left in stock - order soon.
Ships from and sold by ProMediaEtc.
+
$40.00
Get it as soon as Friday, Jun 12
In Stock
Ships from and sold by Amazon.com.
+
$34.94
Get it as soon as Friday, Jun 12
In Stock
Ships from and sold by Amazon.com.
Total price: $00
To see our price, add these items to your cart.
Details
Added to Cart
Some of these items ship sooner than the others.
Choose items to buy together.

Customers also bought or read

Loading...

From the brand

Editorial Reviews

About the Author

Aurélien Géron is a machine learning consultant and trainer. A former Googler, he led YouTube's video classification team from 2013 to 2016. He was also a founder and CTO of Wifirst (a leading Wireless ISP in France) from 2002 to 2012, and a founder and CTO of two consulting firms -- Polyconseil (telecom, media and strategy) and Kiwisoft (machine learning and data privacy).

Product details

  • Publisher ‏ : ‎ O'Reilly Media
  • Publication date ‏ : ‎ October 15, 2019
  • Edition ‏ : ‎ 2nd
  • Language ‏ : ‎ English
  • Print length ‏ : ‎ 848 pages
  • ISBN-10 ‏ : ‎ 1492032646
  • ISBN-13 ‏ : ‎ 978-1492032649
  • Item Weight ‏ : ‎ 2.85 pounds
  • Dimensions ‏ : ‎ 7 x 1.5 x 9.5 inches
  • Best Sellers Rank: #155,962 in Books (See Top 100 in Books)
  • Customer Reviews:
    4.8 out of 5 stars (3,439)

About the author

Follow authors to get new release updates, plus improved recommendations.
Aurélien Géron
Brief content visible, double tap to read full content.
Full content visible, double tap to read brief content.

Aurélien Géron is a Machine Learning consultant. A former Googler, he led the YouTube video classification team from 2013 to 2016. He was also a founder and CTO of Wifirst from 2002 to 2012, a leading Wireless ISP in France, and a founder and CTO of Polyconseil in 2001, the firm that now manages the electric car sharing service Autolib'.

Before this he worked as an engineer in a variety of domains: finance (JP Morgan and Société Générale), defense (Canada's DOD), and healthcare (blood transfusion). He published a few technical books (on C++, WiFi, and Internet architectures), and was a Computer Science lecturer in a French engineering school.

A few fun facts: he taught his 3 children to count in binary with their fingers (up to 1023), he studied microbiology and evolutionary genetics before going into software engineering, and his parachute didn't open on the 2nd jump.

Customer reviews

4.8 out of 5 stars
3,439 global ratings

Customers say

Customers find this machine learning book to be a great reference that effectively introduces basic data science principles and techniques. The content is well-organized with step-by-step instructions and comprehensive coverage of complex topics, making it easy to read and understand. They appreciate the writing quality, with one customer noting it's written in a friendly tone, and value the included Python code examples. Customers consider the book worth its price.
AI Generated from the text of customer reviews

Select to learn more

116 customers mention content, 104 positive, 12 negative
Customers praise the book's content, describing it as excellent and a great reference, with one customer noting it as one of the best data science books ever written.
Great book, very summarised and direct to the subject, it shows everything you need to initiate or improve your skills about data science.Read more
Good book. Has a nice mix of theory and applications with step by step instructions. Now with figures in color.Read more
Great content but similar to others the printing is awful. I’m only 40 pages in and several pages are in the wrong order!...Read more
...In summary, it is an excellent book if you are looking for real-life examples with python code and you have a good basic idea in ML.Read more
67 customers mention informative, 67 positive, 0 negative
Customers find the book informative and practical for machine learning, particularly praising its introduction of basic data science principles and techniques.
...many textbooks and this is one of those books that is interesting, informative and well structured and includes so many great details....Read more
Wonderful book! Just what I expected. Very practical, hands-on like the title says....Read more
One of the best reference book for Tensorflow 2.0Read more
Best book on machine learning for the begineer.Read more
47 customers mention clarity, 42 positive, 5 negative
Customers find the book well-explained and comprehensive, with step-by-step instructions throughout, and one customer notes it provides a framework for working through machine learning projects.
...the top of all the line of codes for ease of finding and it was well structured for that I will give it three stars....Read more
...great and even if one does not know python programming it is easy to follow along....Read more
...is very good and provides step by step instruction that makes it easy to follow and understand the concept behind each test....Read more
...is not your thing, Géron walks you through machine learning with clear examples and ample explanations....Read more
33 customers mention comprehensive, 30 positive, 3 negative
Customers find the book comprehensive, with detailed content and thorough coverage of complex topics. One customer notes that each chapter includes summaries of mathematical concepts, while another appreciates the extensive references to papers.
...Really comprehensive and easy to follow.Read more
I followed the book step-by-step. It's comprehensive and most of the code works....Read more
...interest is Reinforcement Learning and Géron gives an excellent overview - to dive deep, one would probably still want to refer to Sutton & Barto's...Read more
I am happy with the book, it covers a lot of topics. Good colors, good paper, thin.Read more
20 customers mention readability, 16 positive, 4 negative
Customers find the book easy to read and understand, with clear tables, and one customer notes that it provides the whole picture without losing important details.
I have read many books, this one is very good. Clear, details, hands-on approach. I recommend it 100%.Read more
...The book is easy to read and to understand (a fairly complex topic). It is an invaluable resource!Read more
Very clear book with valuable applicable examples....Read more
Decent content but it looks like the printer ran out of ink, it's blurry and incredibly difficult to readRead more
19 customers mention writing quality, 18 positive, 1 negative
Customers praise the writing quality of the book, with one customer noting it is written in a friendly tone, while another describes it as one of the best deep learning books available.
Well written, intermediate level ML book.Read more
Well written book well balanced between technical vs. being descriptive.Read more
A nice educational, very well written and up to date overview of machine learning techniques + tons of practical and well documented code in python...Read more
Wonderfully written and code that you can download to follow along on your computer....Read more
15 customers mention code, 12 positive, 3 negative
Customers appreciate the code in the book, with one mentioning that it includes real-life examples with Python code, while another notes that the source code is fully disclosed in Python 3.
Wonderfully written and code that you can download to follow along on your computer....Read more
A nice combination of ML practice guidelines, source code, and ideas behind them.Read more
...Even if you're well veresed in modelling you'll learn some good coding techniques put in layman's terms.Read more
...I'm writing this review in July of 2021. Half of the code no longer compiles, or throws run-time exceptions and warnings....Read more
10 customers mention value for money, 8 positive, 2 negative
Customers find the book worth the money.
...if there are some chapters you end up liking less then it's still worth the money. One heads up is that it's not an easy read....Read more
...The book is not cheap, but the paper quality is the worse! I have bought cheaper books for a way better paper quality...Read more
...Definietly worth the price!Read more
Its quality is ok, but I think it is too expensiveRead more
Best book to learn Machine Learning from the scratch
5 out of 5 stars
Best book to learn Machine Learning from the scratch
Received, haven’t completed yet but the content is pretty good. It is a combination of theory and practicals. Topics explained with examples and provided codes for practice on terminal as you read. The chapters have questions so you can treat it as a course. In the end, there is project checklist to create a project and other appendix. I am not sure if the content will be too hard or too theoretical later but for now it looks good.
Thank you for your feedback
Sorry, there was an error
Sorry we couldn't load the review

Top reviews from the United States

  • 5 out of 5 stars
    Best book to learn Machine Learning from the scratch
    Reviewed in the United States on May 2, 2026
    Brief content visible, double tap to read full content.
    Full content visible, double tap to read brief content.

    Received, haven’t completed yet but the content is pretty good. It is a combination of theory and practicals. Topics explained with examples and provided codes for practice on terminal as you read. The chapters have questions so you can treat it as a course. In the end, there is project checklist to create a project and other appendix.

    I am not sure if the content will be too hard or too theoretical later but for now it looks good.

    Best book to learn Machine Learning from the scratch
    Best book to learn Machine Learning from the scratch
    Best book to learn Machine Learning from the scratch
    5 out of 5 stars
    Best book to learn Machine Learning from the scratch
    Reviewed in the United States on May 2, 2026

    Received, haven’t completed yet but the content is pretty good. It is a combination of theory and practicals. Topics explained with examples and provided codes for practice on terminal as you read. The chapters have questions so you can treat it as a course. In the end, there is project checklist to create a project and other appendix.

    I am not sure if the content will be too hard or too theoretical later but for now it looks good.

    Sending feedback...
    Thank you for your feedback.
    Sending feedback...
    Thanks, we'll investigate in the next few days.
  • 5 out of 5 stars
    Terrific ML book, and one of my favorite programming books in general
    Reviewed in the United States on April 8, 2023
    Brief content visible, double tap to read full content.
    Full content visible, double tap to read brief content.

    I've been following this book since its first edition, about time I write a review! It really does strike the perfect balance between code and theory. Everything is clear and written in a friendly tone. It'll get you started in applying everything from basic linear regression through decision tree, all the way to deep learning. My favorite is chapter 2, which is a step-by-step guide on exploring a data project, it's like having a professional guide you. I'm an experienced software developer, and I owe this book a lot for introducing me to many concepts. I'm old-school, so sitting down with a book and copying code examples takes me back and is a familiar experience. For some people, copy pasting might be more intuitive but you really can learn from doing things by hand. The full code is on github, but I recommend using it for reference only. What this book isn't, and doesn't pretend to be, is an introduction to Python. Some basic programming knowledge is needed, but if you want to work in the field, you'd need that anyway, and you shouldn't be afraid to dive into it. Looks like I'll be checking the 3rd edition!

    9 people found this helpful
    Sending feedback...
    Thank you for your feedback.
    Sending feedback...
    Thanks, we'll investigate in the next few days.
  • 5 out of 5 stars
    The Best Textbook I've Ever Bought
    Reviewed in the United States on June 14, 2021
    Brief content visible, double tap to read full content.
    Full content visible, double tap to read brief content.

    I'm currently getting my MS in health data science and this was the book we had to get for my machine learning class. I was annoyed when the teacher said the class would be textbook heavy and he was only going lecture on high level concepts, I thought there was no way textbook would be able to a carry a class and boy was I wrong. This is hands down the best textbook I've ever bought! I never expected a data science text book to be easy to read but this book flows so well!, its easily digestible and it gives great examples with data that is easily available. You can write completely functional ML code from this book alone but one of the best features is that the book has GitHub site broken down chapter by chapter that helps fill the code out. If you are someone like me who hadn't had any experience with Matplotlib the github was super helpful because it covers in depth how to make really nice plots for the various models. I would recommend this book to anyone who is doing machine learning. The only thing I would change about this book is when it gets into decision trees, RF, various boosting types, XGB, as it moves through the models it only gives an example of the classification form of the model or the regression for of the model and I think it would be helpful if it gave examples for both for each model. But with that being said this was a pretty minimal thing I would change and I would still buy the book again even if they didn't change it! It's definitely worth the money!

    9 people found this helpful
    Sending feedback...
    Thank you for your feedback.
    Sending feedback...
    Thanks, we'll investigate in the next few days.
  • 5 out of 5 stars
    Must have to get a FLAG machine learning position; Much better than 1st edition
    Reviewed in the United States on February 1, 2020
    Brief content visible, double tap to read full content.
    Full content visible, double tap to read brief content.

    I took a machine learning graduate course in my master program. I had a top conference paper. The professor used 1st edition of this book as one textbook for the course. I had a 1st edition of the book but did not have time to read. Now I buy the 2nd edition because the Tensorflow 2 has merged with Keras, which means we can avoid to learn the hard syntax of tensorflow 1.0, and there are a lot of new advances in machine learning, such as generative models. Also to my surprise, the book is colorful. That makes the book is more interesting.

    Each chapter has summary of math. That is better than some programming machine learning books that do not have any math. If you have some backgrounds in math of machine learning, this book can save you time because it gives you the whole picture without lost. If you are very interested in some equations and want to derive them, you can use Pattern Recognition and Machine Learning book.

    The Github has a lot of python projects of machine learning. The codes are well-written. If you can write codes like the codes in the projects, you will have the potential to enter Google.

    Go Google, the book is a must have.

    5 people found this helpful
    Sending feedback...
    Thank you for your feedback.
    Sending feedback...
    Thanks, we'll investigate in the next few days.
  • 4 out of 5 stars
    Nice ML book, but not for a beginner
    Reviewed in the United States on July 19, 2022
    Brief content visible, double tap to read full content.
    Full content visible, double tap to read brief content.

    This book covers many topics of ML and explains them with good examples. However, I believe it should be a little bit tough for a beginner. Similarly, it could not be the best book for an advanced reader because it gives pointers for advanced topics but does not go in-depth like mathematical explanation. In summary, it is an excellent book if you are looking for real-life examples with python code and you have a good basic idea in ML.

    5 people found this helpful
    Sending feedback...
    Thank you for your feedback.
    Sending feedback...
    Thanks, we'll investigate in the next few days.
  • 5 out of 5 stars
    Publication Quality on My Print Copy is GREAT!
    Reviewed in the United States on November 25, 2019
    Brief content visible, double tap to read full content.
    Full content visible, double tap to read brief content.

    The book was worth the wait! The publication quality of the print edition is great. Love the color illustrations. The one thing that I miss is that having bought the print edition, it would be sweet to have an offer to acquire the electronic edition at a reduced price but since Amazon now seems to be handling O'Reilly book sales and probably wants to sell as many Kindle editions as possible, a PDF copy of Hands-On Machine Learning, 2nd Ed., does not seem to be in my future at a bargain price. My review is preliminary - I've read bits of the online draft version-and the clarity and superb organization of Géron's writing convinced me that I wanted a finished copy of the book. My current avocational interest is Reinforcement Learning and Géron gives an excellent overview - to dive deep, one would probably still want to refer to Sutton & Barto's 2nd Ed. book (available on Amazon or for free online) or David Silver's excellent 2015 UCL lectures, also available online.. I will slowly work my way through Géron's book in its entirety but my primary reason for owning the book is as a reference. It makes a great roadmap to the current state of machine learning and, best of all, it makes learning about ML fun!

    15 people found this helpful
    Sending feedback...
    Thank you for your feedback.
    Sending feedback...
    Thanks, we'll investigate in the next few days.
  • 5 out of 5 stars
    Excellent book
    Reviewed in the United States on September 19, 2020
    Brief content visible, double tap to read full content.
    Full content visible, double tap to read brief content.

    I am only about to start with chapter 4 but if the rest of the book is of the same quality as the first few chapters then it definitely deserves 5 stars. The title of the book covers the content, and the book comes loaded with practical advice as well as working code samples. In fact is comes with complete projects in the form of Jupyter Notebooks. You really cannot go wrong buying this book, certainly given the price. Even if there are some chapters you end up liking less then it's still worth the money.

    One heads up is that it's not an easy read. That is partly because of the nature of the material, and partly because the author thankfully goes into the technical details of the what and how (and does so in a very accessible way). There is no "handwaving"! As a result the text is a bit dense and it can make for slow reading, but on the other hand it then leaves you with the satisfaction of a rather good understanding of the topic.

    One more thing - it probably does not hurt to be well versed in Pandas, especially matrix-wide operations in a single line of code.

    4 people found this helpful
    Sending feedback...
    Thank you for your feedback.
    Sending feedback...
    Thanks, we'll investigate in the next few days.
  • 5 out of 5 stars
    Gold Medal Winner
    Reviewed in the United States on May 15, 2020
    Brief content visible, double tap to read full content.
    Full content visible, double tap to read brief content.

    The Tokyo Olympics of 2020 got postponed to 2021. If there were a contest for best AI/ML book at the Olympics this year this book would have earned the gold medal ! I loved it so much that I read it at least twice, and each time I underlined/highlighted/took-notes. I love how lucidly the author explains concepts. He does an excellent job of explaining topics such as the model, the learning algorithm (also called the optimization algorithm), regularization hyperparameter, generalization etc. The examples are great and even if one does not know python programming it is easy to follow along. (I learned python a few months later, which made it even easier and more interesting to follow the examples in this and other books). While no one single book can teach one ML/AI, this book would make the Mount Rushmore of AI/ML books (along with (1) Intro to Statistical Learning by Hastie etc (2) Intro to Machine Learning by Alpaydin (3) Deep Learning by Goodfellow, Bengio etc). I highly recommend this book to anyone aspiring to get into the field of ML/AI.

    7 people found this helpful
    Sending feedback...
    Thank you for your feedback.
    Sending feedback...
    Thanks, we'll investigate in the next few days.

Top reviews from other countries

    Translated by Amazon
    See original
  • 5 out of 5 stars
    Livro excepcional
    Reviewed in Brazil on July 14, 2025
    Brief content visible, double tap to read full content.
    Full content visible, double tap to read brief content.

    Livro excelente e muito bem didático.

    Sending feedback...
    Thanks, we'll investigate in the next few days.
    Translated from Portuguese by Amazon
    See original
  • 5 out of 5 stars
    Fabulous book - jam-packed
    Reviewed in the United Kingdom on September 18, 2023
    Brief content visible, double tap to read full content.
    Full content visible, double tap to read brief content.

    This book should be regarded as a "gold-standard" for technical books. It balances theory and practice, has exercises (actually with answers!) and covers a tremendous breadth and depth.

    The book starts out in a refreshingly unconventional way of giving you a crash course in ML concepts before diving in to an end-to-end project. I note that one reviewer didn't like that but I liked it a lot. While a lot of it will go over your head if you lack experience (and the author assumes you don't have much), it gives you appreciation of what an overall real-life project might look like. The rest of the book is spent unpacking each of those stages.

    The first part of the book looks at more "classical" or traditional machine learning concepts like linear regression, logistic regression, SVMs, decision trees, ensemble learning and unsupervised models. Along the way you learn a lot of data science best-practises and how to train and test things properly.

    The second part dives into deep learning, progressing from general neural networks to CNNs, RNNs, LSTMs, autoencoders and GANs. You get a flavour of how GPT models work. Other topics covered in this section are Tensorflow and Keras (including a part on deploying models) and a chapter on another paradigm: reinforcement learning.

    Geron doesn't shy away from the math but gives you enough theory to appreciate the detail if you like that, and explains it in intuitive ways and with code. Some of the formulas can look intimidating but they are unpacked and explained well.

    There are review questions and/or exercises at the end of each chapter. One of my biggest frustrations with technical books in general is when they give you questions but no answers. Here, you get answers and also worked code in the provided notebooks, which is amazing. Other technical authors: take note. The exercises are often quite challenging to implement or at least open-ended, but I believe that to be a good thing. I learnt a lot from doing them (I'll admit I didn't do all of them!).

    The writing is clear, engaging and often humourous.

    To sum up, if you want to learn more about ML, I highly recommend this book. This review is for the 2nd edition but I'll be buying the 3rd edition and will definitely be re-reading. There is so much great information to take in. Thanks to the author for this masterpiece.

    Sending feedback...
    Thanks, we'll investigate in the next few days.
  • 5 out of 5 stars
    Great resource
    Reviewed in Canada on July 24, 2025
    Brief content visible, double tap to read full content.
    Full content visible, double tap to read brief content.

    Excellent book for getting into machine learning. Plenty of example code.

    Sending feedback...
    Thanks, we'll investigate in the next few days.
  • 5 out of 5 stars
    Great Job. Good Book received in wonderful good conditions due to good packaging done.
    Reviewed in Singapore on December 23, 2022
    Brief content visible, double tap to read full content.
    Full content visible, double tap to read brief content.

    Good Packaging done. Great Job.

    Sending feedback...
    Thanks, we'll investigate in the next few days.
  • 5 out of 5 stars
    Worth your money
    Reviewed in Japan on December 15, 2020
    Brief content visible, double tap to read full content.
    Full content visible, double tap to read brief content.

    This second edition book is totally worth your money

    Sending feedback...
    Thanks, we'll investigate in the next few days.