Ipython sources for each chapter of the book
This repository holds all the ipython source and data for the "Learning scikit-learn: machine learning in Python" book, by Raúl Garreta and Guillermo Moncecchi (http://www.packtpub.com/learning-scikit-learn-machine-in-python/book). For the planned 2nd edition, we added Diego Garat as a new author.
Chapter 1 (2nd ed.) - A Gentle Introduction to Machine Learning with Python and Scikit-learn - Extended version, including classification, clustering and regression!. Warning:Python 3
Chapter 2 - Supervised Learning - Image Recognition with Support Vector Machines
Chapter 2 - Supervised Learning - Text Classification with Naive Bayes
Chapter 2 - Supervised Learning - Explaining Titanic Hypothesis with Decision Trees
Chapter 3 - Unsupervised Learning - Clustering Handwritten Digits
Chapter 3 - Unsupervised Learning - Principal Component Analysis
Chapter 4 - Advanced Features - Feature Engineering and Selection
No comments:
Post a Comment