Introducing spatial data science
These materials introduce ‘spatial data science’ or might also be considered a course in ‘advanced GIS’ which is what it was developed to be when it was Geog 315 at Victoria University of Wellington.
I am happy to discuss developing any or all of these materials into short intensive one/two/three day courses to suit the needs of organisations grappling with connecting their geospatial and data analytics workflows.
Content | Hands-on materials |
---|---|
1. Introducing R for geospatial | |
Open science, open source, and doing GIS in code Starting R |
Software setup Introducing R and RStudio |
2. Making maps | |
Choropleth map design Bonus material on zoomed-in maps |
Making maps |
3. Wrangling spatial data | |
The myth of tidy data Data wrangling Handling tables Spatial data wrangling |
Spatial data manipulation |
4. Clustering analysis | |
Clustering analysis Applications of clustering analysis |
Geographic cluster analysis |
5. Raster data | |
Introducing raster data Working with rasters |
|
6. Simple statistical models | |
From overlay to regression models Regression models More on regression |
Building a simple statistical model |
7. Where to from here? | |
Other spatial analysis methods Network analysis Time geography Simulation models |
See also Spatial analysis & modelling |