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GIS Programming Module 3

 



The purpose of this weeks module was to create models in ArcGIS Pro using both model builder, and python scripting. The above photo shows the successful output of my script which adds XY coordinates to the hospitals shapefile, adds a 1000-meter buffer, and dissolves the buffer into a single feature. Seen below is the flowchart for the script.




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