natebrix / capitoltour
This code computes optimal tours through the 48 continental US state capitols. Thanks to Randy Olson for the display code and concept.
☆27Updated 8 years ago
Related projects ⓘ
Alternatives and complementary repositories for capitoltour
- ETL data pipeline for SixFifty modelling & analytics☆13Updated 4 years ago
- Simple validator for submissions to DrivenData competitions☆19Updated 5 years ago
- A tool that evolves small brains capable of scanning and classifying an image.☆13Updated 8 years ago
- Material and slides for Boston NLP meetup May 23rd 2016☆17Updated 8 years ago
- Small Keras examples to get you started☆20Updated 7 years ago
- 📈🔍 Exploring open data from Zürich☆14Updated 5 years ago
- The Path of the PyData Ninja☆16Updated 9 years ago
- Toolkit of queries for examining a PostgreSQL database, in executable IPython Notebook format.☆18Updated 10 years ago
- PyDataLondonTutorial☆26Updated 8 years ago
- Exploring item combinations with a bar chart☆10Updated 3 years ago
- Material for some talks I have given☆62Updated 2 months ago
- Materials for Machine Learning with H2O Open Platform at ODSC Masterclass Summit 2017☆12Updated 7 years ago
- ☆9Updated 4 years ago
- Amazon access control challenge☆25Updated 10 years ago
- Analysis & Implementation of deep learning papers☆11Updated 6 years ago
- ☆9Updated 8 years ago
- scikit-learn course for 2017 NGCM Summer Academy☆17Updated 7 years ago
- Examples of how Python can speed up tasks that are cumbersome in Excel☆13Updated 8 years ago
- Creating user interfaces for data science with Jupyter widgets☆11Updated 7 years ago
- Miscellaneous Jupyter Notebooks for my course.☆22Updated 8 years ago
- An in depth tutorial on sklearn's Pipeline and FeatureUnion classes.☆16Updated 7 years ago
- ☆41Updated 9 years ago
- Book: Practical Probabilistic Machine Learning in Python☆10Updated 3 years ago
- Because you're computing conversion rates wrong☆16Updated 7 years ago
- These are the IPython notebook files for the CSC 432 Spring '13 course.☆23Updated 9 years ago
- Predict people interest in renting specific NYC apartments. The challenge combines structured data, geolocalization, time data, free text…☆17Updated 7 years ago
- ☆12Updated 7 years ago
- Python code for Hadley Whickham's article on Tidy Data.☆34Updated 8 years ago