This lesson is still being designed and assembled (Pre-Alpha version)
Toggle navigation
Home
Code of Conduct
Setup
Episodes
Introduction
Data Cleaning, Imputation, Cross-Validation
Linear and Logistic Regression
Training, Validation, Test Data and Overfitting
Linear Classifiers
Lunch Break
Decision trees and random forests
Navie Bayes and Kernel Methods
Clustering: K-means and Hierarchical Clustering
Dimensionality reduction
Principal and independent component analysis
Neural Networks and Back Propagation
Lunch Break
Deep Learning and Convolutional Neural Networks
All in one page (Beta)
Extras
Reference
About
Discussion
Figures
Instructor Notes
License
Improve this page
Introduction to Machine Learning with Python