There are 8 repositories under bayesian-machine-learning topic.
Notebooks about Bayesian methods for machine learning
Python package for Bayesian Machine Learning with scikit-learn API
A bare-bones TensorFlow framework for Bayesian deep learning and Gaussian process approximation
Code for "A-NICE-MC: Adversarial Training for MCMC"
This contains a number of IP[y]: Notebooks that hopefully give a light to areas of bayesian machine learning.
BayesianNonparametrics in julia
This is a GitHub repository for our Bayeisan Machine Learning textbook, which includes the PDF for the book and accompanying Python notebooks.
Key words: Bayesian analysis, Probabilistic programming, Data analysis, Bayesian machine learning... Using Python with its library PyMC3, pandas...
Bayesian methods for machine learning course at CentraleSupélec
Bayesian Actor-Critic with Neural Networks. Developing an OpenAI Gym toolkit for Bayesian AC reinforcement learning.
Library for Bayesian machine learning
Exploration of TensorFlow-2 and TensorFlow probability to implement Bayesian Neural Networks, Normalizing flows, real NVPs and Autoencoders. Exploration of Bayesian Modelling and Variational Inference with Pyro.
Exercises on Bayesian linear regression, Gaussian Processes, Metropolis-Hastings Inference for Bayesian Logistic Regression, K-means and Probabilistic PCA. Made at Institut EURECOM (FR)
Assignment code for Bayesian ML course on Coursera
Platform for automatic processing of (aq-tngapms) Air Quality using TNGAPMS
A Bayesian approach to predictive uncertainty in chemotherapy patients at risk of acute care utilization
This is a collection of algorithms and models written in Python for probabilistic programming. The main focus of the package is on Bayesian reasoning by using Bayesian networks, Markov networks, and their mixing.
The aim of this project is to apply Bayesian Machine Learning Algorithm to predict the diagnosis condition of the patients.
Bayesian Machine Learning Project
Repo of udemy bayesian machine learning A/B test
Numerical experiments to illustrate theoretical points of the article: A non-asymptotic analysis for stein variational gradient descent, Korba et al., 2021
Bayesian Machine Learning