Spatial Analysis and Geospatial Data Science With Python

Learn how to process and visualize geospatial data and perform spatial analysis using Python.

Ratings 4.09 / 5.00
Spatial Analysis and Geospatial Data Science With Python

What You Will Learn!

  • The course introduces you to the most essential Geopython Libraries
  • Learn how to visualize Geospatial data in Python (static and interactive maps)
  • Perform Spatial Data analysis with Python
  • Learn how to pre-process geospatial data.
  • Learn the essentials of Geopandas Library, the workhorse of Geospatial data science in Python.
  • Perform Geocoding and Reverse Geocoding using free Open source Solutions.
  • Unleash the power of Locational analytics in Data science.
  • Reinforce your knowledge with Geospatial data science Excercises and Projects.

Description

Geospatial data science is a subset of data science that focuses on spatial data and its unique techniques. It is beyond creating maps and merely focusing on where things happen but instead incorporates spatial analysis and insights derived from spatial data. In this course, we lay the foundation for a career in Geospatial Data Science. You will get introduced with Geopandas, the workhorse of Geospatial data science Python libraries.


The topics covered in this course widely touch on some of the most used spatial technique in Geospatial data science. We will be learning how to read spatial data effectively, manipulate and process spatial data, and carry out spatial operations. A large portion of the course deals with spatial operations like Buffer analysis, Spatial joins and Nearest Neighbourhood analysis. Each video contains a brief overview of the topic and a walkthrough with code examples. We conclude each section Geospatial data science assignment and project, that will help you learn more effectively.


We will also cover spatial data visualization using both Geopandasa and other interactive libraries like Folium, IpyLeaflet and Plotly Express. We cover how to make stunning Geo visualization for the most widely used map types.


The final section covers some advance features including Geocoding, reverse geocoding, accessing OpenStreetMap data in Python and some advanced tips and tricks to process large Geospatial datasets.


At the end of this course, you will be able to perform most of Geospatial data science operations in Python and also build a strong foundational knowledge in Geospatial Python.

Who Should Attend!

  • Students who want to learn Python for Geospatial Data Science.
  • Students who like to take their first steps in the Geospatial data science career.
  • Python users who are interested in Spatial Data Science.
  • GIS users who are new to python and Jupyter notebooks for Geographic data analysis.

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Tags

  • GIS
  • Python
  • Spatial Analysis
  • Geospatial

Subscribers

2819

Lectures

36

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