StephenElston / CSCI_E_82A_Probabalistic_ProgrammingLinks
☆30Updated 3 years ago
Alternatives and similar repositories for CSCI_E_82A_Probabalistic_Programming
Users that are interested in CSCI_E_82A_Probabalistic_Programming are comparing it to the libraries listed below
Sorting:
- ☆90Updated 4 years ago
- Presented at Scipy Conference 2019☆127Updated 5 years ago
- Materials for class on topics in deep learning (STAT 991, UPenn/Wharton)☆95Updated 2 years ago
- ☆38Updated 4 years ago
- Statistical Rethinking (2nd Ed) with Tensorflow Probability☆272Updated 3 years ago
- Inference case studies in jupyter☆93Updated 6 years ago
- Sample code for the Model-Based Machine Learning book.☆294Updated 4 years ago
- Repo for PyData 2018 tuorial☆12Updated 6 years ago
- ☆231Updated 3 years ago
- In which I play with the ideas surrounding causality☆53Updated 2 years ago
- Statistical Rethinking course in pymc3☆143Updated 5 years ago
- An introduction to Bayesian statistics using Python and (coming soon) R.☆134Updated last year
- Course notes for Computational Statistics and Statistical Compuing☆63Updated 6 years ago
- Jupyter notebooks with the Python equivalent to the R code sections in Blitzstein and Hwang's Introduction To Probability, Second Edition☆73Updated 6 years ago
- ☆45Updated 5 years ago
- Materials for "Bayesian Methods for Machine Learning" Coursera MOOC☆135Updated 4 years ago
- Bayesian Bandits☆68Updated last year
- vanilla machine learning☆111Updated 2 years ago
- Applied Probability Theory for Everyone☆117Updated 9 months ago
- My solutions to the assignments in the book: "A Student’s Guide to Bayesian Statistics" by Ben Lambert.☆69Updated last year
- Example PyMC3 project for performing Bayesian data analysis using a probabilistic programming approach to machine learning.☆105Updated 6 years ago
- Statistical Rethinking with PyTorch and Pyro☆164Updated 2 months ago
- Lectures for INFO8004 Advanced Machine Learning, ULiège☆113Updated 3 months ago
- Introductory overview of Bayesian inference☆44Updated 6 years ago
- In which I try to demystify the fundamental concepts behind Bayesian deep learning.☆123Updated 7 years ago
- PyData San Luis 2017 Tutorial: An Introduction to Gaussian Processes in PyMC3☆15Updated 7 years ago
- legend☆205Updated last year
- Hidden Markov models in PyMC3☆99Updated last year
- Material for ODSC Europe presentation -- Probabilistic Deep Learning in TensorFlow, the why and the how☆72Updated 5 years ago
- Materials of the Nordic Probabilistic AI School 2019.☆129Updated 5 years ago