The Hundred-Page Machine Learning Book
$49.99
608 in stock
Refresh Stock LevelInformation
Shipping
We currently offer free shipping on all orders over $100. Standard media mail shipping is $7.50 plus $1 for each additional book. Electronics are $35 shipping on all items.
Books
We get our books from a national distributor and although we strive to present up to date stock counts, stock constantly fluctuates. We perform a stock check when you add your book to the cart to ensure that it is available for shipping from the distributor. You can also check stock status by clicking the refresh stock link on the product page for the most up to date stock at the distributor. If an item is on backorder, you may place an order and we will update you on the estimated ship date as soon as we can confirm with the distributor.
Return & exchange
If you are not satisfied with your purchase you can return it to us within 14 days for an exchange or refund. More info.
Assistance
Can’t find what you’re looking for? We have access to over 13 million titles, reach out and see if we can help!
Contact us on (575) 322-6867, or email us at business@rabsbooks.com.
| Weight | 1.3 lbs |
|---|---|
| Dimensions | 9.25 × 7.5 × 0.56 in |
Description
As its title says, it’s the hundred-page machine learning book. It was written by an expert in machine learning holding a Ph.D. in Artificial Intelligence with almost two decades of industry experience in computer science and hands-on machine learning.
This is a unique book in many aspects. It is the first successful attempt to write an easy to read book on machine learning that isn’t afraid of using math. It’s also the first attempt to squeeze a wide range of machine learning topics in a systematic way and without loss in quality.
The book contains only those parts of the huge body of material on machine learning developed since the 1960s that have proven to have a significant practical value. A beginner in machine learning will find in this book just enough details to get a comfortable level of understanding of the field and start asking the right questions. Practitioners with experience will use this book as a collection of pointers to the directions of further self-improvement.
The book also comes in handy when brainstorming at the beginning of a project, when you try to answer the question whether a given technical or business problem is “machine-learnable” and, if yes, which techniques you should try to solve it.
The book comes with a wiki which contains pages that extend some book chapters with additional information: Q&A, code snippets, further reading, tools, and other relevant resources. Thanks to the continuously updated wiki this book like a good wine keeps getting better after you buy it.
Andriy Burkov



Reviews
There are no reviews yet.