Skip to content

Latest commit

 

History

History
385 lines (252 loc) · 26.6 KB

README.md

File metadata and controls

385 lines (252 loc) · 26.6 KB

python-machine-learning-book

Python Machine Learning* code repository.

Google Group

What you can expect are 400 pages rich in useful material just about everything you need to know to get started with machine learning ... from theory to the actual code that you can directly put into action! This is not yet just another "this is how scikit-learn works" book. I aim to explain all the underlying concepts, tell you everything you need to know in terms of best practices and caveats, and we will put those concepts into action mainly using NumPy, scikit-learn, and Theano.

You are not sure if this book is for you? Please checkout the excerpts from the Foreword and Preface, or take a look at the FAQ section for further information.


1st edition, published September 23rd 2015
Paperback: 454 pages
Publisher: Packt Publishing
Language: English
ISBN-10: 1783555130
ISBN-13: 978-1783555130
Kindle ASIN: B00YSILNL0

Table of Contents and Code Notebooks

Simply click on the ipynb/nbviewer links next to the chapter headlines to view the code examples (currently, the internal document links are only supported by the NbViewer version). Please note that these are just the code examples accompanying the book, which I uploaded for your convenience; be aware that these notebooks may not be useful without the formulae and descriptive text.


  1. Machine Learning - Giving Computers the Ability to Learn from Data [dir] [ipynb] [nbviewer]
  2. Training Machine Learning Algorithms for Classification [dir] [ipynb] [nbviewer]
  3. A Tour of Machine Learning Classifiers Using Scikit-Learn [dir] [ipynb] [nbviewer]
  4. Building Good Training Sets – Data Pre-Processing [dir] [ipynb] [nbviewer]
  5. Compressing Data via Dimensionality Reduction [dir] [ipynb] [nbviewer]
  6. Learning Best Practices for Model Evaluation and Hyperparameter Optimization [dir] [ipynb] [nbviewer]
  7. Combining Different Models for Ensemble Learning [dir] [ipynb] [nbviewer]
  8. Applying Machine Learning to Sentiment Analysis [dir] [ipynb] [nbviewer]
  9. Embedding a Machine Learning Model into a Web Application [dir] [ipynb] [nbviewer]
  10. Predicting Continuous Target Variables with Regression Analysis [dir] [ipynb] [nbviewer]
  11. Working with Unlabeled Data – Clustering Analysis [dir] [ipynb] [nbviewer]
  12. Training Artificial Neural Networks for Image Recognition [dir] [ipynb] [nbviewer]
  13. Parallelizing Neural Network Training via Theano [dir] [ipynb] [nbviewer]

  • Equation Reference [PDF] [TEX]

Citing this Book

You are very welcome to re-use the code snippets or other contents from this book in scientific publications and other works; in this case, I would appreciate citations to the original source:

BibTeX:

@Book{raschka2015python,
 author = {Raschka, Sebastian},
 title = {Python Machine Learning},
 publisher = {Packt Publishing},
 year = {2015},
 address = {Birmingham, UK},
 isbn = {1783555130}
 }

MLA:

Raschka, Sebastian. Python machine learning. Birmingham, UK: Packt Publishing, 2015. Print.



Sebastian Raschka’s new book, Python Machine Learning, has just been released. I got a chance to read a review copy and it’s just as I expected - really great! It’s well organized, super easy to follow, and it not only offers a good foundation for smart, non-experts, practitioners will get some ideas and learn new tricks here as well.
– Lon Riesberg at Data Elixir

Superb job! Thus far, for me it seems to have hit the right balance of theory and practice…math and code!
Brian Thomas

I've read (virtually) every Machine Learning title based around Scikit-learn and this is hands-down the best one out there.
Jason Wolosonovich

The best book I've seen to come out of PACKT Publishing. This is a very well written introduction to machine learning with Python. As others have noted, a perfect mixture of theory and application.
Josh D.

A book with a blend of qualities that is hard to come by: combines the needed mathematics to control the theory with the applied coding in Python. Also great to see it doesn't waste paper in giving a primer on Python as many other books do just to appeal to the greater audience. You can tell it's been written by knowledgeable writers and not just DIY geeks.
Amazon Customer

Sebastian Raschka created an amazing machine learning tutorial which combines theory with practice. The book explains machine learning from a theoretical perspective and has tons of coded examples to show how you would actually use the machine learning technique. It can be read by a beginner or advanced programmer.

Longer reviews

If you need help to decide whether this book is for you, check out some of the "longer" reviews linked below. (If you wrote a review, please let me know, and I'd be happy to add it to the list).


Links

Translations



Bonus Notebooks (not in the book)


"Related Content" (not in the book)


SciPy 2016

We had such a great time at SciPy 2016 in Austin! It was a real pleasure to meet and chat with so many readers of my book. Thanks so much for all the nice words and feedback! And in case you missed it, Andreas Mueller and I gave an Introduction to Machine Learning with Scikit-learn; if you are interested, the video recordings of Part I and Part II are now online!

PyData Chicago 2016

I attempted the rather challenging task of introducing scikit-learn & machine learning in just 90 minutes at PyData Chicago 2016. The slides and tutorial material are available at "Learning scikit-learn -- An Introduction to Machine Learning in Python."


Note

I have set up a separate library, mlxtend, containing additional implementations of machine learning (and general "data science") algorithms. I also added implementations from this book (for example, the decision region plot, the artificial neural network, and sequential feature selection algorithms) with additional functionality.



Translations



Dear readers,
first of all, I want to thank all of you for the great support! I am really happy about all the great feedback you sent me so far, and I am glad that the book has been so useful to a broad audience.

Over the last couple of months, I received hundreds of emails, and I tried to answer as many as possible in the available time I have. To make them useful to other readers as well, I collected many of my answers in the FAQ section (below).

In addition, some of you asked me about a platform for readers to discuss the contents of the book. I hope that this would provide an opportunity for you to discuss and share your knowledge with other readers:

(And I will try my best to answer questions myself if time allows! :))

The only thing to do with good advice is to pass it on. It is never of any use to oneself.
— Oscar Wilde


Examples and Applications by Readers

Once again, I have to say (big!) THANKS for all the nice feedback about the book. I've received many emails from readers, who put the concepts and examples from this book out into the real world and make good use of them in their projects. In this section, I am starting to gather some of these great applications, and I'd be more than happy to add your project to this list -- just shoot me a quick mail!

FAQ

General Questions

Questions about the Machine Learning Field

Questions about ML Concepts and Statistics

Cost Functions and Optimization
Regression Analysis
Tree models
Model evaluation
Logistic Regression
Neural Networks and Deep Learning
Other Algorithms for Supervised Learning
Unsupervised Learning
Semi-Supervised Learning
Ensemble Methods
Preprocessing, Feature Selection and Extraction
Naive Bayes
Other
Programming Languages and Libraries for Data Science and Machine Learning

Questions about the Book

Contact

I am happy to answer questions! Just write me an email or consider asking the question on the Google Groups Email List.

If you are interested in keeping in touch, I have quite a lively twitter stream (@rasbt) all about data science and machine learning. I also maintain a blog where I post all of the things I am particularly excited about.