---
product_id: 415435842
title: "The Hundred-Page Machine Learning Book (The Hundred-Page Books)"
price: "388.78 DT"
currency: TND
in_stock: true
reviews_count: 13
url: https://www.desertcart.tn/products/415435842-the-hundred-page-machine-learning-book-the-hundred-page-books
store_origin: TN
region: Tunisia
---

# The Hundred-Page Machine Learning Book (The Hundred-Page Books)

**Price:** 388.78 DT
**Availability:** ✅ In Stock

## Quick Answers

- **What is this?** The Hundred-Page Machine Learning Book (The Hundred-Page Books)
- **How much does it cost?** 388.78 DT with free shipping
- **Is it available?** Yes, in stock and ready to ship
- **Where can I buy it?** [www.desertcart.tn](https://www.desertcart.tn/products/415435842-the-hundred-page-machine-learning-book-the-hundred-page-books)

## Best For

- Customers looking for quality international products

## Why This Product

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

## Description

Master machine learning through clarity, not complexity―in a book engineered to teach with exceptional conciseness. Translated into 11 languages and used in thousands of universities worldwide, this book takes a unique approach: it assumes that your time is valuable. Instead of drowning you in theory or skimming the surface, it delivers a complete education in modern machine learning, focusing on what matters in practice. From fundamental algorithms that form the backbone of many applications, to cutting-edge deep learning and neural networks, you'll understand how these tools work and how to use them. What sets this book apart is its careful progression through key concepts. You'll start with essential mathematical concepts and gradually progress through the most practically important machine learning algorithms. You'll learn practical skills like feature engineering, regularization, handling imbalanced datasets, ensembles, and model evaluation that help turn theory into working systems. The book covers not just supervised learning, but also clustering, topic modeling, metric learning, learning to rank, and recommendation systems, giving you a complete toolkit for solving modern machine learning challenges. This isn't just another theoretical textbook. Every chapter reflects the author's real-world experience, focusing on techniques that work in practice. Whether you're building a recommendation system, analyzing customer data, or working with images and text, you'll find practical guidance here. This isn't a high-level overview either. The book explores each concept with precisely the right level of technical detail—enough to create those crucial "a-ha!" moments of understanding, but not so much that you get overwhelmed by mathematical notation or theoretical abstractions. It hits that sweet spot where complex ideas click into place naturally, making it valuable for both newcomers looking to build a strong foundation and experienced practitioners seeking to expand their toolkit. What's Inside Supervised and unsupervised learning algorithms, including deep neural networks Clear, intuitive explanations of algorithms and mathematics that preserve essential details Practical techniques for building, debugging, and evaluating models Advanced topics including ensembles, recommender systems, and metric learning About the Reader The book assumes a basic foundation in college-level mathematics. However, it's entirely self-contained, introducing all necessary mathematical concepts through intuitive explanations. This approach ensures that readers with basic mathematical knowledge can follow along without getting lost in complex equations. Endorsements Peter Norvig , Research Director at Google , co-author of AIMA, the most popular AI textbook in the world: "Burkov has undertaken a very useful but impossibly hard task in reducing all of machine learning to 100 pages. He succeeds well in choosing the topics — both theory and practice — that will be useful to practitioners, and for the reader who understands that this is the first 100 (or actually 150) pages you will read, not the last, provides a solid introduction to the field." Aurélien Géron , Senior AI Engineer, author of the bestseller Hands-On Machine Learning with Scikit-Learn, Keras, and TensorFlow: "The breadth of topics the book covers is amazing for just 100 pages (plus few bonus pages!). Burkov doesn't hesitate to go into the math equations: that's one thing that short books usually drop. I really liked how the author explains the core concepts in just a few words. The book can be very useful for newcomers in the field, as well as for old-timers who can gain from such a broad view of the field." More endorsements on themlbook.com

Review: I admire what the author achieved here - The advantage of short books like this is that if they are well written the author has to think carefully about what to write and how to write it. That's certainly been done here. After a crash course in what ML is and some mathematical notation, a few popular ML algorithms are introduced, before Burkov takes a look at what a learning algorithm fundamentally does: optimising a particular function (normally by minimising a loss function). Other parts of the book go into ML practice, deep learning, practical problems and solutions, and tips and tricks for situations you might run into (e.g. handling multiple outputs). Unsupervised learning, word embeddings and ranking and recommendation systems are discussed. The book's conclusion talks about other areas to learn about which weren't present. The book is dense in parts, no doubt about it. Burkov lays down all the mathematical formulae but also explains things pretty well and touches on the intuition behind key ideas, along with useful pictures and diagrams. That is one of the things I liked the most: it is rigorous, concise, but not unclear. Another thing I really liked is that it touches on very practical problem discussed less frequently elsewhere (e.g. imbalanced datasets) and interesting approaches you won't find in more traditional resources (like one and zero shot learning). In contrast to what some other reviewers on the back of book say, I'd say that this book is probably not the best one for absolute beginners. It would be much more useful when you know what ML is and have done a project or two, at least. To sum up, if you want an information packed ML book that has both theory and useful practical tips, read this.
Review: Amazing book - This book is one of the best books I have read on machine learning. It’s beautifully written with concise and clear explanations. The author does an amazing job in only communicating the necessary on such a broad and deep project. I got the hard copy and it’s a pleasure to have. Thank you

## Technical Specifications

| Specification | Value |
|---------------|-------|
| Best Sellers Rank | 800,370 in Books ( See Top 100 in Books ) 727 in Computer Science (Books) |
| Customer Reviews | 4.6 out of 5 stars 1,254 Reviews |

## Images

![The Hundred-Page Machine Learning Book (The Hundred-Page Books) - Image 1](https://m.media-amazon.com/images/I/51XgdTo3xrL.jpg)

## Customer Reviews

### ⭐⭐⭐⭐⭐ I admire what the author achieved here
*by H***. on 27 October 2023*

The advantage of short books like this is that if they are well written the author has to think carefully about what to write and how to write it. That's certainly been done here. After a crash course in what ML is and some mathematical notation, a few popular ML algorithms are introduced, before Burkov takes a look at what a learning algorithm fundamentally does: optimising a particular function (normally by minimising a loss function). Other parts of the book go into ML practice, deep learning, practical problems and solutions, and tips and tricks for situations you might run into (e.g. handling multiple outputs). Unsupervised learning, word embeddings and ranking and recommendation systems are discussed. The book's conclusion talks about other areas to learn about which weren't present. The book is dense in parts, no doubt about it. Burkov lays down all the mathematical formulae but also explains things pretty well and touches on the intuition behind key ideas, along with useful pictures and diagrams. That is one of the things I liked the most: it is rigorous, concise, but not unclear. Another thing I really liked is that it touches on very practical problem discussed less frequently elsewhere (e.g. imbalanced datasets) and interesting approaches you won't find in more traditional resources (like one and zero shot learning). In contrast to what some other reviewers on the back of book say, I'd say that this book is probably not the best one for absolute beginners. It would be much more useful when you know what ML is and have done a project or two, at least. To sum up, if you want an information packed ML book that has both theory and useful practical tips, read this.

### ⭐⭐⭐⭐⭐ Amazing book
*by H***D on 7 February 2025*

This book is one of the best books I have read on machine learning. It’s beautifully written with concise and clear explanations. The author does an amazing job in only communicating the necessary on such a broad and deep project. I got the hard copy and it’s a pleasure to have. Thank you

### ⭐⭐⭐⭐ too expensive but has some essential parts
*by J***O on 29 December 2019*

This books price is a shame. Aside from that the content is good for the most part. Sadly it doesnt explain back propagation which would have been nice and theres no gaussian section which seemed odd. The best part about this book for me is its one of the few that actually explains the notation properly. I find that this subject appears a lot more difficult because of the dense notation which many books go out of their way not to define. This one does a good job of making sure you understand what all the letters and subscripts mean, and for that I was very happy

## Frequently Bought Together

- The Hundred-Page Machine Learning Book (The Hundred-Page Books)
- Hands-On Machine Learning with Scikit-Learn, Keras, and TensorFlow: Concepts, Tools, and Techniques to Build Intelligent Systems
- Machine Learning Engineering

---

## 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.tn/products/415435842-the-hundred-page-machine-learning-book-the-hundred-page-books](https://www.desertcart.tn/products/415435842-the-hundred-page-machine-learning-book-the-hundred-page-books)

---

*Product available on Desertcart Tunisia*
*Store origin: TN*
*Last updated: 2026-06-02*