thunder-project / thunder-regression
algorithms for mass univariate regression
☆12Updated 6 years ago
Alternatives and similar repositories for thunder-regression:
Users that are interested in thunder-regression are comparing it to the libraries listed below
- A Bayesian testing framework written in Python.☆94Updated 10 years ago
- ☆14Updated last year
- Machine Learning Open Source Software☆23Updated 6 years ago
- ADENINE: A Data ExploratioN PipelINE☆15Updated 6 years ago
- Python edition of ActivePapers☆41Updated last year
- The Path of the PyData Ninja☆16Updated 9 years ago
- ☆10Updated 10 years ago
- vIPer: a new tool for IPython notebooks.☆60Updated 10 years ago
- Sklearn transformers that work with Pandas dataframes☆12Updated 4 years ago
- Capturing Structure Implicitly from Noisy Time-Series having Limited DataUpdated 7 years ago
- scikit-learn addon to operate on set/"group"-based features☆41Updated 8 years ago
- build process for turning ipython notebooks into markdown files for your jekyll blog☆18Updated 10 years ago
- Nonparametric Active Sampling☆11Updated 6 years ago
- Describing and explaining CS notation to make research papers more accessible.☆8Updated 5 years ago
- Interactive notebooks for trying analyses and exploring datasets☆32Updated 9 years ago
- Dask and Spark interactions☆21Updated 8 years ago
- Low-level primitives for collapsed Gibbs sampling in python and C++☆33Updated last year
- How to use nbstripout☆12Updated 5 years ago
- Repo for experiments on pyspark and sklearn☆79Updated 11 years ago
- Simple validator for submissions to DrivenData competitions☆19Updated 5 years ago
- How to make those 3D data visualizations☆23Updated 7 years ago
- The Union of Intersections Framework in Python☆14Updated this week
- Predicting sales with Pandas☆15Updated 9 years ago
- Extended Mean Field Restricted Boltzmann Machine☆16Updated 8 years ago
- These are the IPython notebook files for the CSC 432 Spring '13 course.☆23Updated 10 years ago
- A tool that evolves small brains capable of scanning and classifying an image.☆14Updated 8 years ago
- Talk and demo notebooks for PyData Chicago, August 2016: http://pydata.org/chicago2016/schedule/presentation/15/☆11Updated 8 years ago
- A thorough, straightforward, un-intimidating introduction to Gaussian processes in NumPy.