Data is everywhere, but now over 80% of data is spatial. Whether it’s a coordinate, address, place name, or postal code, location information is at the heart of digital transformation. Spatial data science allows organizations to combine information, find patterns, make predictions and build insight—helping them to see data, challenges, and the world differently.
Shannon Kalisky and Alberto Nieto explore how to combine industry-leading spatial analytics with modern data science frameworks to support your end-to-end analytical processes. As organizations navigate the new waves of innovation brought on by artificial intelligence, spatial problem solving will be key in accurately defining problems, finding answers, and building explainable workflows.
What you'll learn
- Learn how to harness spatial analytics
- Title: See what others can’t with spatial analysis and data science (sponsored by Esri)
- Release date: February 2020
- Publisher(s): O'Reilly Media, Inc.
- ISBN: 0636920371892
You might also like
Writing Better SQL: Improve a SQL Query
Improve SQL queries by making them faster and easier to understand
Explore Docker in a sandboxed environment.
Go is rapidly becoming the preferred language for building web services. While there are plenty of …
Querying Data the Right Way
Learn how cutting-edge data technologies work to optimize query performance