derrierloisirs.fr
» » Introduction to Machine Learning with Python: A Guide for Data Scientists

Download Introduction to Machine Learning with Python: A Guide for Data Scientists ePub

by Andreas C. Müller,Sarah Guido

Download Introduction to Machine Learning with Python: A Guide for Data Scientists ePub
  • ISBN 1449369413
  • ISBN13 978-1449369415
  • Language English
  • Author Andreas C. Müller,Sarah Guido
  • Publisher O'Reilly Media; 1 edition (October 21, 2016)
  • Pages 400
  • Formats docx azw doc lrf
  • Category Technology
  • Subcategory Computer Science
  • Size ePub 1495 kb
  • Size Fb2 1785 kb
  • Rating: 4.4
  • Votes: 400

Coupon

This book is for current and aspiring machine learning practitioners looking to implement solutions to real-world . Authors Andreas Müller and Sarah Guido focus on the practical aspects of using machine learning algorithms, rather than the math behind them.

This book is for current and aspiring machine learning practitioners looking to implement solutions to real-world machine learning problems. Familiarity with the NumPy and matplotlib libraries will help you get even more from this book. With this book, you’ll learn: Fundamental concepts and applications of machine learning. Advantages and shortcomings of widely used machine learning algorithms. How to represent data processed by machine learning, including which data aspects to focus on.

Authors Andreas Müller and Sarah Guido focus on the practical aspects of using machine learning algorithms, rather than the math behind them. Advanced methods for model evaluation and parameter tuning

Authors Andreas Müller and Sarah Guido focus on the practical aspects of using machine learning algorithms, rather . You’ll learn the steps necessary to create a successful machine-learning application with Python and the scikit-learn library.

Andreas Müller received his PhD in machine learning from the University of Bonn. In the last four years, he has been maintainer and one of the core contributor of scikit-learn, a machine learning toolkit widely used in industry and academia, and author and contributor to several other widely used machine learning packages.

Andreas Müller, Sarah Guido. Andreas C. MÃ1⁄4ller, Sarah Guido Download, Free Download Introduction T. ONTINUE READING. Introduction To Machine Learning With Python: A Guide For Data Scientists PDF, Introduction To Machine Learning With Python: A Guide For Data Scientists PDF Download, Download Introduction To Machine Learning With Python: A Guide For Data Scientists PDF, Introduction To Machine Learning With Python: A Guide For Data Scientists Download PDF, Introduction To Machine Learning With Python: A Guide For Data Scientists by.

Электронная книга "Introduction to Machine Learning with Python: A Guide for Data Scientists", Andreas C. Müller, Sarah Guido

Электронная книга "Introduction to Machine Learning with Python: A Guide for Data Scientists", Andreas C. Müller, Sarah Guido. Эту книгу можно прочитать в Google Play Книгах на компьютере, а также на устройствах Android и iOS. Выделяйте текст, добавляйте закладки и делайте заметки, скачав книгу "Introduction to Machine Learning with Python: A Guide for Data Scientists" для чтения в офлайн-режиме.

Authors Andreas Muller and Sarah Guido focus on the practical aspects of. .This book is very basic introduction to Machine Learning and there are better books for example hands on machine learning with.

Authors Andreas Muller and Sarah Guido focus on the practical aspects of using machine learning algorithms, rather than the math behind them. This book is very basic introduction to Machine Learning and there are better books for example hands on machine learning with scikit-learn and tensorflow. The examples in the book uses a library that the author did which makes difficult to really learn how to do the analysis in python.

For example: An Introduction to Machine Learning with Python by Andreas C. Müller and Sarah Guido . Müller and Sarah Guido (O’Reilly).

February 7, 2017 Books Authors Andreas Müller and Sarah Guido focus on the practical aspects of using machine learning algorithms, rather than the math behind them.

February 7, 2017 Books. With this book, you’ll learn

Andreas Muller received his PhD in machine learning from the University of Bonn. Sarah is a data scientist who has spent a lot of time working in start-ups. She loves Python, machine learning, large quantities of data, and the tech world.

Andreas Muller received his PhD in machine learning from the University of Bonn.

Talk about Introduction to Machine Learning with Python: A Guide for Data Scientists


Anyshoun
Fantastic introduction to machine learning in Python. The examples are well written, and do a very nice job of introducing both the implementation and the concept for each model. I'm halfway thru the book, and am really enjoying it.

I have a background in math and wrote software professionally for a number of years, but haven't spent much time doing either for the past 5-10 years. This book is technical enough to keep me interested, and accessible enough to allow me to ramp up on the language and the scikit framework.

An added bonus - the instructions actually allowed me to set up my development environment, and the code in the book actually runs!

100% recommend for someone looking to get started in ML with Python.
Ballardana
This is a great book, and I'd say it is even great for those that are not familiar with python (you just obviously won't be able to run the code). For anyone with some basic understanding of linear algebra/statistics, the authors are able to present to you all the important (and sometimes subtle but significant) details, without the usage of equations, and more importantly, how they all relate to one another.

All the concepts mentioned here are heavily backed with well thought of and well presented figures, in such a way that again I'd suggest you don't even need python to understand. If you do know python, loading the data sets and reproducing the figures is just a few lines of easy to understand code away (with the exception of the mglearn library includes which does some "plotting magic" for you. However, I believe each of them were appropriate. You can ignore them and make the plots in your own way, or just print the variables, it just may not look as publication friendly).

Normally, I hesitate purchasing books that claim they may explain algorithms without the need of equations, and I expect them rather to be cook books of lightly and disjointly explained techniques (like an encyclopedia). However, I do not think such is true of this book. The power of scikit-learn is demonstrated and the algorithms behind them explained intuitively, and are referred as to how they fit together and complement each other.

As with any introductory read, a supplement is needed from time to time and the authors' reference to Elements of Statistical Learning is a useful one (equation heavy). There are points in the book where the author defers to elements of statistical learning. I found these points suitable since further explanation would be out of scope.

I read this book on my free time while on vacation, and much of the time I didn't have access to a computer. The concepts were so well presented that it was just a nice leisurely read. When I finally had time to access a computer, I was able to try the techniques on my data sets with some browsing back and forth through the book again, but otherwise with little effort.

Finally, since I myself am a researcher, I would recommend this book to any other researcher willing to start delving into the world of machine learning. Further reading will always be necessary, but this book will give you such a good intuitive understanding and overview of the subject matter that you'll know what to do to proceed next, and how to do it without running in circles. Even better, you'll likely already have applied it to your research!
Golden freddi
The book is printed in black-and-white making it *really* hard to understand which classes / data points the authors are referring to.

Nevertheless, this is a good intro book and a nice companion to online classes that do not provide written notes.
Mala
A healthy discussion of the skills and techniques you'll need to perform best-practices machine learning and data science. Very concise code examples and practical demos!
Anen
Good introduction to machine learning.
I ℓ٥ﻻ ﻉ√٥υ
I bought this book to help me get up and running quick for a project in an "Introduction to Machine Learning" independent study course. Of the books I bought for the same task, this was by far the most helpful for building practical machine learning applications.

The book is a great introduction to the scikit-learn framework which, in my opinion, is an extremely elegant machine learning tool kit.

Reading this book helped me improve the quality of the code I was developing for the project which dramatically improved the speed I could produce new results for the project.

If you are looking for an extremely theoretical text on machine learning, then you might want to look elsewhere.
If you are looking for a guided introduction to the "bread-and-butter tools" of a great machine learning framework in Python, buy this.
Vital Beast
I've attended Andreas ODCS sessions, where he works thru the examples, and adds color commentary.
A clear writer/speaker - Very good, look forward to his next book(s)
An excellent book for beginners in ML.