ipython-books / minibook-codeLinks
[DEPRECATED]
☆55Updated 10 years ago
Alternatives and similar repositories for minibook-code
Users that are interested in minibook-code are comparing it to the libraries listed below
Sorting:
- My IPython startup files.☆109Updated 10 years ago
- Code for Pythonic visualization blog post☆40Updated 8 years ago
- Code for Learning with Data Blog☆64Updated 8 years ago
- ☆57Updated 10 years ago
- Presentation at Perth Data Science Meetup, February 2015☆72Updated 10 years ago
- Introduction to Data Science with Python☆66Updated 7 years ago
- Machine Learning with Scikit-Learn (material for pydata Amsterdam 2016)☆30Updated 9 years ago
- Advanced git and github course material☆39Updated 7 years ago
- Computational Statistics II Tutorial at SciPy 2015☆48Updated 10 years ago
- Scripts to Analyze Pronto's Data Release☆24Updated 9 years ago
- Building Python Data Applications with Blaze and Bokeh Tutorial, SciPy 2015☆144Updated 10 years ago
- Uncertainty quantification book chapter☆49Updated 10 years ago
- EuroScipy 2014 tutorial: Introduction to predictive analytics with pandas and scikit-learn☆85Updated 10 years ago
- PyData NYC 2015 conference☆95Updated 9 years ago
- Very concise notes on machine learning and statistics.☆383Updated 13 years ago
- A collection of ipython notebooks I've made for various projects☆11Updated 10 years ago
- Slides and notebooks for PyData Strata San Jose☆50Updated 10 years ago
- Materials for the IPython/Jupyter workshop at the NGCM Summer Academy, at Southampton University, Boldrewood campus.☆47Updated 7 years ago
- Example Jupyter notebooks of lightning visualizations☆56Updated 9 years ago
- Bayesian Analysis in PyMC3.☆79Updated 11 years ago
- The Hacker Within at the University of California - Berkeley☆101Updated 2 years ago
- Recent builds of Numpy, Scipy, Matplotlib, iPython and PyMC for OSX☆490Updated 9 years ago
- Materials for a workshop on developing undergraduate classes on Bayesian statistics.☆47Updated 9 years ago
- A compendium of the pitfalls and problems that arise when using standard statistical methods☆246Updated 11 years ago
- Notebooks covering introductory material to ML, ML with sklearn and tips.☆77Updated 6 years ago
- Advance Tutorial For SciPy☆80Updated 8 years ago
- Modeling Social Data, Applied Mathematics, Columbia University (Spring 2015)☆33Updated 6 years ago
- PyData Seattle 2015: Python Data Bikeshed☆127Updated 10 years ago
- UW Software Engineering for Data Science Website☆20Updated 8 months ago
- Talk on "Tree models with Scikit-Learn: Great learners with little assumptions" presented at PyPata Paris 2015☆50Updated 10 years ago