rio-group / machine-learning-courseLinks
Jupyter notebooks with the slides and material of RIO's machine learning course
☆16Updated 6 years ago
Alternatives and similar repositories for machine-learning-course
Users that are interested in machine-learning-course are comparing it to the libraries listed below
Sorting:
- Jupyter/IPython notebooks about evolutionary computation.☆258Updated 8 years ago
- Tutorial on "Modern Optimization Methods in Python"☆251Updated 10 months ago
- Bayesian Inference Tools in Python☆109Updated 2 years ago
- Experiments in Bayesian Machine Learning☆69Updated 6 years ago
- Code and data for the second edition of the textbook `Machine Learning: An Algorithm Perspective" by Stephen Marsland.☆148Updated 4 years ago
- Notebooks on how to use Distributed Evolutionary Algorithm in Python (DEAP)☆237Updated 4 years ago
- Material for my lectures at the ESAC statistics conference, Oct 27-31 2014☆68Updated 11 years ago
- Lecture Slides, Exercises, and Deployment Materials for "Foundations of Numerical Computing"☆81Updated 3 years ago
- Kohonen vector quantizers (SOM, NG, GNG)☆71Updated 7 years ago
- Lectures for INFO8004 Advanced Machine Learning, ULiège☆116Updated 9 months ago
- PyData San Luis 2017 Tutorial: An Introduction to Gaussian Processes in PyMC3☆15Updated 8 years ago
- Koolmogorov is a Python library based on CompLearn☆70Updated 8 years ago
- Tutorial on interpreting and understanding machine learning models☆69Updated 7 years ago
- Collection of jupyter notebooks for demonstrating software.☆169Updated 2 years ago
- IPython widgets, interactive plots, interactive machine learning☆150Updated 6 years ago
- python library implementing ensemble methods for regression, classification and visualisation tools including Voronoi tesselations.☆125Updated 5 years ago
- A Python package for performing Maximum Likelihood Estimates☆128Updated 5 years ago
- vanilla machine learning☆112Updated 2 years ago
- PyMC3 tutorial for DataScience LA (January 2017)☆67Updated 7 years ago
- Slides and materials for most of my talks by year☆92Updated 2 years ago
- ☆30Updated 5 years ago
- Materials for "Bayesian Methods for Machine Learning" Coursera MOOC☆137Updated 5 years ago
- Code for Allen Downey's book Think Complexity, published by O'Reilly Media.☆116Updated last year
- Course notes for Computational Statistics and Statistical Compuing☆63Updated 6 years ago
- Tutorial on "Efficient Python for High-Performance Computing"☆121Updated 10 months ago
- ☆177Updated last year
- Source code for the book "Building Probabilistic Graphical Models in Python"☆30Updated 8 years ago
- Machine Learning in High Energy Physics 2016☆76Updated 6 years ago
- Gaussian Process and Uncertainty Quantification Summer School 2017☆26Updated 3 years ago
- Course of Machine Learning in Science and Industry at Heidelberg university☆47Updated 8 years ago