Table of Contents
- Thinking probabilistically, a Bayesian inference primer
- Probabilistic programming, a PyMC3 primer
- Learning to juggle with more than one parameter - Multiparametric and Hierarchical models
- Understanding and predicting data with linear regression models
- Classifying outcomes with logistic regression
- Too many or too few parameters? Finding the right number the Bayesian way
- Clustering and learning about subgroups in you data with mixture models
- Infinitely large models, decision analysis and optimization

