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Within 2 weeks, our 2-day crash course on Applied spatial modelling with R (April 13-14, 2016) will be given at the University of Leuven, Belgium: https://lstat.kuleuven.be/training/applied-spatial-modelling-with-r
You’ll learn during this course the following elements:
- The sp package to handle spatial data (spatial points, lines, polygons, spatial data frames)
- Importing spatial data and setting the spatial projection
- Plotting spatial data on static and interactive maps
- Adding graphical components to spatial maps
- Manipulation of geospatial data, geocoding, distances, …
- Density estimation, kriging and spatial point pattern analysis
- Spatial regression
More information: https://lstat.kuleuven.be/training/applied-spatial-modelling-with-r. Registration can be done at https://lstat.kuleuven.be/forms/courses
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