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PostGIS Cookbook

You're reading from   PostGIS Cookbook For web developers and software architects this book will provide a vital guide to the tools and capabilities available to PostGIS spatial databases. Packed with hands-on recipes and powerful concepts

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Product type Paperback
Published in Jan 2014
Publisher
ISBN-13 9781849518666
Length 484 pages
Edition Edition
Languages
Tools
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Toc

Table of Contents (18) Chapters Close

PostGIS Cookbook
Credits
About the Authors
About the Reviewers
www.PacktPub.com
Preface
1. Moving Data In and Out of PostGIS FREE CHAPTER 2. Structures that Work 3. Working with Vector Data – The Basics 4. Working with Vector Data – Advanced Recipes 5. Working with Raster Data 6. Working with pgRouting 7. Into the Nth Dimension 8. PostGIS Programming 9. PostGIS and the Web 10. Maintenance, Optimization, and Performance Tuning 11. Using Desktop Clients Index

Extending inheritance – table partitioning


Table partitioning is an approach specific to PostgreSQL that extends inheritance to model tables that typically do not vary from each other in the available fields, but where the child tables represent logical partitioning of the data based on a variety of factors, be it time, value ranges, classifications, or, in our case, spatial relationships. The advantages of partitioning include improved query performance due to smaller indexes and targeted scans of data, bulk loads, and deletes that bypass the costs of maintenance functions like VACUUM. It can thus be used to put commonly used data on a faster and more expensive storage, and the remaining data on a slower and cheaper storage. In combination with PostGIS, we get the novel power of spatial partitioning, which is a really powerful feature for large datasets.

Getting ready

We could use many examples of large datasets that could benefit from partitioning. In our case, we will use a contour dataset...

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