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Applied Geospatial Data Science with Python

You're reading from   Applied Geospatial Data Science with Python Leverage geospatial data analysis and modeling to find unique solutions to environmental problems

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Product type Paperback
Published in Feb 2023
Publisher Packt
ISBN-13 9781803238128
Length 308 pages
Edition 1st Edition
Languages
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Author (1):
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David S. Jordan David S. Jordan
Author Profile Icon David S. Jordan
David S. Jordan
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Table of Contents (17) Chapters Close

Preface 1. Part 1:The Essentials of Geospatial Data Science
2. Chapter 1: Introducing Geographic Information Systems and Geospatial Data Science FREE CHAPTER 3. Chapter 2: What Is Geospatial Data and Where Can I Find It? 4. Chapter 3: Working with Geographic and Projected Coordinate Systems 5. Chapter 4: Exploring Geospatial Data Science Packages 6. Part 2: Exploratory Spatial Data Analysis
7. Chapter 5: Exploratory Data Visualization 8. Chapter 6: Hypothesis Testing and Spatial Randomness 9. Chapter 7: Spatial Feature Engineering 10. Part 3: Geospatial Modeling Case Studies
11. Chapter 8: Spatial Clustering and Regionalization 12. Chapter 9: Developing Spatial Regression Models 13. Chapter 10: Developing Solutions for Spatial Optimization Problems 14. Chapter 11: Advanced Topics in Spatial Data Science 15. Index 16. Other Books You May Enjoy

Summary

In this chapter, we introduced you to different types of spatial optimization that you can solve using Python. We kicked this chapter off by discussing LSCPs, where you found the optimal number of facilities needed to serve the emergency service demand of a community.

Then, we transitioned our focus to discussing route-based optimization problems, including TSP, VRP, and CVRP.

You explored three different case studies in this section using two different integer linear programming formulations (MTZ and DFJ), which help the optimization abide by the global constraint that a person or vehicle can only visit each stop once.

You were also introduced to a handful of new packages, including Spopt, which is PySAL’s spatial optimization library. You also learned about PuLP for solving integer optimization problems. Lastly, you set up a Google Maps API to gather real-world distances in the form of an O-D Cost Matrix from Google Map’s street network.

We covered...

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