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SUMMARY:Python Geospatial Data and Mapping: Part 1
DESCRIPTION:Geospatial data are an important component of data visualization and analysis in the social sciences\, humanities\, and elsewhere. The Python programming language is a great platform for exploring these data and integrating them into your research. This is a two part online workshop. \nGeospatial Data and Mapping in Python\, Part 1: Getting started with spatial dataframes (Oct 3rd)\nPart one of this two-part workshop series will introduce basic methods for working with geospatial data in Python using the GeoPandas library(link is external). Participants will learn how to import and export spatial data and store them as GeoPandas GeoDataFrames (or spatial dataframes). We will explore and compare several methods for mapping the data including the GeoPandas plot function and the matplotlib library. We will review coordinate reference systems and methods for reading\, defining and transforming these. Note\, this workshop focuses on vector spatial data. \nGeospatial Data and Mapping in Python\, Part 2: Geoprocessing and analysis (Oct 5th) \nPart two of this two-part workshop series will dive deeper into data driven mapping in Python\, using color palettes and data classification to communicate information with maps. We will also introduce basic methods for processing spatial data\, which are the building blocks of common spatial analysis workflows. Note\, this workshop focuses on vector spatial data. \nKnowledge Requirements\nYou’ll probably get the most out of this workshop if you have a basic foundation in Python and Pandas\, similar to what you would have from taking the D-Lab Python Fundamentals workshop series. Here are a couple of suggestions for materials to check out prior to the workshop. \nD-Lab Workshops: \n\nPython Fundamentals\nPandas\n\nWorkshop Materials: https://github.com/dlab-berkeley/Python-Geospatial-Fundamentals \nSoftware Requirements:Installation Instructions for Python Anaconda \n 
URL:https://grad.berkeley.edu/event/python-geospatial-data-and-mapping-part-1/
LOCATION:Online via Zoom
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