---
product_id: 72169186
title: "Hands-on Machine Learning with Scikit-Learn, Keras, and TensorFlow: Concepts, Tools, and Techniques to Build Intelligent Systems"
price: "NT$3801"
currency: TWD
in_stock: true
reviews_count: 13
url: https://www.desertcart.tw/products/72169186-hands-on-machine-learning-with-scikit-learn-keras-and-tensorflow
store_origin: TW
region: Taiwan
---

# Hands-on coding with Scikit-Learn, Keras & TensorFlow Comprehensive ML curriculum Covers classical & deep learning techniques Hands-on Machine Learning with Scikit-Learn, Keras, and TensorFlow: Concepts, Tools, and Techniques to Build Intelligent Systems

**Price:** NT$3801
**Availability:** ✅ In Stock

## Summary

> 🚀 Unlock AI mastery with the ultimate hands-on ML guide!

## Quick Answers

- **What is this?** Hands-on Machine Learning with Scikit-Learn, Keras, and TensorFlow: Concepts, Tools, and Techniques to Build Intelligent Systems
- **How much does it cost?** NT$3801 with free shipping
- **Is it available?** Yes, in stock and ready to ship
- **Where can I buy it?** [www.desertcart.tw](https://www.desertcart.tw/products/72169186-hands-on-machine-learning-with-scikit-learn-keras-and-tensorflow)

## Best For

- Customers looking for quality international products

## Why This Product

- Free international shipping included
- Worldwide delivery with tracking
- 15-day hassle-free returns

## Key Features

- • **Code-First Learning:** Follow along with fully worked examples and GitHub notebooks—no local setup headaches.
- • **Master ML End-to-End:** From foundational algorithms to cutting-edge deep learning, build real-world AI systems confidently.
- • **Broad Algorithm Coverage:** Explore everything from linear regression and SVMs to GANs, RNNs, and reinforcement learning.
- • **Trusted Industry Standard:** Join 3,360+ readers rating it 4.8 stars—your go-to resource for professional machine learning mastery.
- • **Balanced Theory & Practice:** Intuitive math explanations paired with practical exercises and solutions to deepen understanding.

## Overview

Hands-on Machine Learning with Scikit-Learn, Keras, and TensorFlow is a bestselling O'Reilly book that expertly blends theory and practice to teach machine learning and deep learning. It covers classical algorithms, neural networks, and reinforcement learning with clear explanations, practical exercises, and ready-to-run code notebooks, making it the definitive resource for professionals and aspiring AI innovators.

## Description

From the brand Sharing the knowledge of experts O'Reilly's mission is to change the world by sharing the knowledge of innovators. For over 40 years, we've inspired companies and individuals to do new things (and do them better) by providing the skills and understanding that are necessary for success. Our customers are hungry to build the innovations that propel the world forward. And we help them do just that. Sharing the knowledge of experts O'Reilly's mission is to change the world by sharing the knowledge of innovators. For over 40 years, we've inspired companies and individuals to do new things (and do them better) by providing the skills and understanding that are necessary for success. Our customers are hungry to build the innovations that propel the world forward. And we help them do just that. Your partner in learning AI / Machine Learning Software Development Data & Data Science

Review: Fabulous book - jam-packed - 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.
Review: Ultra readable, extremely practical and great support resources on github - Loved this book, I recommend whenever I'm asked by people who want to get practical with ML. The chapters follow a logical order and are well worth working though carefully, following all the code with the result being that you'll get a very solid foundation for ML, covering both the data science driven statistical methods (first half of the book) and xNN/RL (2nd half). It fills the gap between books that are too hello world/simplistic and the other end which is greek alphabet soup. Loved the fact you can just spin up a colab notebook and point it at the github for the book and just get on with playing with all the examples...no messing around with lots of local machine setup. Oh and if you need a refresher on python or linear algebra, then he has that covered too, just look at the github only chapters. If I could give 6 stars, I would...just buy it! Am now waiting for the 3rd edition, avail in US but not in UK yet...

## Technical Specifications

| Specification | Value |
|---------------|-------|
| Best Sellers Rank | 128,428 in Books ( See Top 100 in Books ) 607 in Computing & Internet Programming |
| Customer reviews | 4.8 4.8 out of 5 stars (3,365) |
| Dimensions  | 17.78 x 3.81 x 24.13 cm |
| Edition  | 2nd New edition |
| ISBN-10  | 1492032646 |
| ISBN-13  | 978-1492032649 |
| Item weight  | 1.29 kg |
| Language  | English |
| Print length  | 856 pages |
| Publication date  | 14 Oct. 2019 |
| Publisher  | OReilly |

## Images

![Hands-on Machine Learning with Scikit-Learn, Keras, and TensorFlow: Concepts, Tools, and Techniques to Build Intelligent Systems - Image 1](https://m.media-amazon.com/images/I/81R5BmGtv-L.jpg)

## Customer Reviews

### ⭐⭐⭐⭐⭐ Fabulous book - jam-packed
*by H***. on 18 September 2023*

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.

### ⭐⭐⭐⭐⭐ Ultra readable, extremely practical and great support resources on github
*by R***N on 23 November 2022*

Loved this book, I recommend whenever I'm asked by people who want to get practical with ML. The chapters follow a logical order and are well worth working though carefully, following all the code with the result being that you'll get a very solid foundation for ML, covering both the data science driven statistical methods (first half of the book) and xNN/RL (2nd half). It fills the gap between books that are too hello world/simplistic and the other end which is greek alphabet soup. Loved the fact you can just spin up a colab notebook and point it at the github for the book and just get on with playing with all the examples...no messing around with lots of local machine setup. Oh and if you need a refresher on python or linear algebra, then he has that covered too, just look at the github only chapters. If I could give 6 stars, I would...just buy it! Am now waiting for the 3rd edition, avail in US but not in UK yet...

### ⭐⭐⭐⭐⭐ Amazing book on ML
*by C***G on 14 August 2021*

Have been advised by many people this is possibly the best book on ML but held off on owning a hard copy as I found it a bit expensive so I grabbed this one roughly 50% off. The level of detail is amazing and everything ML related is nicely explained. It's nice to see the book was printed in colour which makes the code easier to follow and reproduce. I also liked the layout very much and found it helped to make the book flow - will happily read this cover to cover. The quality of the paper is on thin side but to be fair the content is worth more - I own other similar size ML books printed in black and white that cost more with half the content because it was printed on thick paper. Highly recommended for anyone with an interest in ML.

## Frequently Bought Together

- Hands-On Machine Learning with Scikit-Learn, Keras, and TensorFlow: Concepts, Tools, and Techniques to Build Intelligent Systems
- Deep Learning (Adaptive Computation and Machine Learning series)
- Deep Learning with Python, Second Edition

---

## Why Shop on Desertcart?

- 🛒 **Trusted by 1.3+ Million Shoppers** — Serving international shoppers since 2016
- 🌍 **Shop Globally** — Access 737+ million products across 21 categories
- 💰 **No Hidden Fees** — All customs, duties, and taxes included in the price
- 🔄 **15-Day Free Returns** — Hassle-free returns (30 days for PRO members)
- 🔒 **Secure Payments** — Trusted payment options with buyer protection
- ⭐ **TrustPilot Rated 4.5/5** — Based on 8,000+ happy customer reviews

**Shop now:** [https://www.desertcart.tw/products/72169186-hands-on-machine-learning-with-scikit-learn-keras-and-tensorflow](https://www.desertcart.tw/products/72169186-hands-on-machine-learning-with-scikit-learn-keras-and-tensorflow)

---

*Product available on Desertcart Taiwan*
*Store origin: TW*
*Last updated: 2026-05-05*