Book Image

Geospatial Data Analytics on AWS

By : Scott Bateman, Janahan Gnanachandran, Jeff DeMuth
Book Image

Geospatial Data Analytics on AWS

By: Scott Bateman, Janahan Gnanachandran, Jeff DeMuth

Overview of this book

Managing geospatial data and building location-based applications in the cloud can be a daunting task. This comprehensive guide helps you overcome this challenge by presenting the concept of working with geospatial data in the cloud in an easy-to-understand way, along with teaching you how to design and build data lake architecture in AWS for geospatial data. You’ll begin by exploring the use of AWS databases like Redshift and Aurora PostgreSQL for storing and analyzing geospatial data. Next, you’ll leverage services such as DynamoDB and Athena, which offer powerful built-in geospatial functions for indexing and querying geospatial data. The book is filled with practical examples to illustrate the benefits of managing geospatial data in the cloud. As you advance, you’ll discover how to analyze and visualize data using Python and R, and utilize QuickSight to share derived insights. The concluding chapters explore the integration of commonly used platforms like Open Data on AWS, OpenStreetMap, and ArcGIS with AWS to enable you to optimize efficiency and provide a supportive community for continuous learning. By the end of this book, you’ll have the necessary tools and expertise to build and manage your own geospatial data lake on AWS, along with the knowledge needed to tackle geospatial data management challenges and make the most of AWS services.
Table of Contents (23 chapters)
1
Part 1: Introduction to the Geospatial Data Ecosystem
4
Part 2: Geospatial Data Lakes using Modern Data Architecture
10
Part 3: Analyzing and Visualizing Geospatial Data in AWS
16
Part 4: Accessing Open Source and Commercial Platforms and Services

Quality and Temporal Geospatial Data Concepts

Geospatial data is everywhere, in every industry, and in nearly every file format. The good news is that this broad range of data can be stored, transformed, analyzed, and visualized on AWS. In this chapter, we will talk about some of the different scenarios, file formats, workflows, and data normalization challenges that are common in geospatial data. Whether you are in oil and gas, healthcare, retail, power and utility, agriculture, or mining, to name a few, you have probably already done some work with GIS data. GIS data is ubiquitous in everyday applications, so it’s highly likely you have worked with geospatial data and didn’t even know it. In this chapter, you will learn about the importance of quality and time dimensions in your geospatial data through the following topics:

  • Quality impact on geospatial data
  • Transmission methods
  • Streaming data
  • Understanding file formats
  • Normalizing data
  • Considering...