Skip to content

Instantly share code, notes, and snippets.

@andy-esch
Created March 6, 2019 13:59
Show Gist options
  • Star 0 You must be signed in to star a gist
  • Fork 0 You must be signed in to fork a gist
  • Save andy-esch/126d3ae1faf7680dc343384034d90c3b to your computer and use it in GitHub Desktop.
Save andy-esch/126d3ae1faf7680dc343384034d90c3b to your computer and use it in GitHub Desktop.
Maps & Machine Learning: Maps & Machine Learning: Best Practices for Great Cartography in Data Science

ODSC East (Boston) - 2019

Making good maps in data science is hard. Maps are another form of data visualization with its own set of design principles to bring out the story in the data. Data scientists need for maps varies, but a very common use case is to quickly generate a data visualization iteratively to better understand model outputs, spatial variations in the data, and more.

In this mini-tutorial, I will cover best practices for data scientists needing maps -- ideas pulled from cartography and honed over the years working in the intersection of open source GIS and data science. Using open source tools, I will show how to make patterns more apparent, how to build interactive maps so that it is easier to explore data on larger and smaller scales, and some list some cartographic tips and tricks. The goal is that data viz with maps will be made easier so that you can think about your data science problems instead of worrying about visualizing data on a map.

Sign up for free to join this conversation on GitHub. Already have an account? Sign in to comment