Skip to content

anuragreddygv323/bayesian-machine-learning

 
 

Repository files navigation

Bayesian machine learning notebooks

This repository is a collection of notebooks covering various topics of Bayesian methods for machine learning.

Basics

  • Gaussian processes. Introduction to Gaussian processes. Example implementations with plain NumPy/SciPy as well as with libraries scikit-learn and GPy.

  • Bayesian optimization. Introduction to Bayesian optimization. Example implementations with plain NumPy/SciPy as well as with libraries scikit-optimize and GPyOpt. Hyperparameter tuning as application example.

  • Variational auto-encoder. A guide to variational auto-encoders described as a journey from expectation maximization (EM) algorithm via variational inference to stochastic variational inference. Example implementation with Keras.

  • ...

Applications

About

Notebooks related to Bayesian methods for machine learning

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Jupyter Notebook 99.7%
  • Python 0.3%