amueller / Odscon Sf 2015
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Material for ODSCON San Francisco 2015
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Slides and Notebooks for Open Data Science Conference
Materials for the Scikit-learn tutorial at ODSC SF. Please download the materials and install scikit-learn and the jupyter notebook to follow along. Please use Jupyter / IPython in Version 4.0 or higher. The tutorial requires scikit-learn 0.15 or higher (current is 0.17).
Please check back for changes to the material. It is recommended to update right before the tutorial.
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