ronojoy / pylearnLinks
Bayesian machine learning in Python
☆76Updated 9 years ago
Alternatives and similar repositories for pylearn
Users that are interested in pylearn are comparing it to the libraries listed below
Sorting:
- Bayesian dessert for Lasagne☆84Updated 7 years ago
- Some iPython Notebooks I have created for personal learning☆65Updated last year
- bayesian bootstrapping in python☆121Updated 3 years ago
- Uncertainty quantification book chapter☆50Updated 9 years ago
- PyMC3 codes of Lee and Wagenmakers' Bayesian Cognitive Modeling - A Pratical Course☆96Updated 7 years ago
- PyMC3 tutorial for DataScience LA (January 2017)☆67Updated 7 years ago
- Edward content including papers, posters, and talks☆91Updated 4 years ago
- Advanced Scikit-learn training session☆118Updated 9 years ago
- Python (PyMC) adaptation of the R code from "Doing Bayesian Data Analysis"☆64Updated 8 years ago
- ☆80Updated 8 years ago
- A simple example of containerized data science with python and Docker.☆51Updated 7 years ago
- ☆42Updated 6 years ago
- Understanding Probabilistic Topic Models with Simulation in Python☆64Updated 7 years ago
- Probabilistic programming in Python workshop at Oslo universitetssykehus HF☆36Updated 9 years ago
- Ordered Weighted L1 regularization for classification and regression in Python☆52Updated 6 years ago
- Tutorial teaching the basics of Keras and some deep learning concepts☆104Updated 8 years ago
- Numerical machines in Python☆94Updated 10 years ago
- Python solver for mixed-effects models☆97Updated 3 weeks ago
- ☆98Updated 7 years ago
- Machine Learning with Scikit-Learn (material for pydata Amsterdam 2016)☆30Updated 9 years ago
- ☆91Updated 4 years ago
- Advanced git and github course material☆39Updated 7 years ago
- Personal project to compare hierarchical linear regression in PyMC3 and PyStan, as presented at http://pydata.org/london2016/schedule/pre…☆128Updated 9 years ago
- A library for creating and using probabilistic graphical models☆76Updated 7 years ago
- PyMC Example Notebooks☆74Updated 11 years ago
- Tutorial on interpreting and understanding machine learning models☆69Updated 6 years ago
- Talk on "Tree models with Scikit-Learn: Great learners with little assumptions" presented at PyPata Paris 2015☆50Updated 10 years ago
- My Tutorial for PyData London☆25Updated 10 years ago
- Bayesian Inference Tools in Python☆108Updated 2 years ago
- ☆58Updated 9 years ago