Geoprocessing with Python
- Length: 360 pages
- Edition: 1
- Language: English
- Publisher: Manning Publications
- Publication Date: 2016-05-23
- ISBN-10: 1617292141
- ISBN-13: 9781617292149
- Sales Rank: #848359 (See Top 100 Books)
Summary
Geoprocessing with Python teaches you how to use the Python programming language, along with free and open source tools, to read, write, and process geospatial data.
Purchase of the print book includes a free eBook in PDF, Kindle, and ePub formats from Manning Publications.
About the Technology
This book is about the science of reading, analyzing, and presenting geospatial data programmatically, using Python. Thanks to dozens of open source Python libraries and tools, you can take on professional geoprocessing tasks without investing in expensive proprietary packages like ArcGIS and MapInfo. The book shows you how.
About the Book
Geoprocessing with Python teaches you how to access available datasets to make maps or perform your own analyses using free tools like the GDAL, NumPy, and matplotlib Python modules. Through lots of hands-on examples, you’ll master core practices like handling multiple vector file formats, editing geometries, applying spatial and attribute filters, working with projections, and performing basic analyses on vector data. The book also covers how to manipulate, resample, and analyze raster data, such as aerial photographs and digital elevation models.
What’s Inside
- Geoprocessing from the ground up
- Read, write, process, and analyze raster data
- Visualize data with matplotlib
- Write custom geoprocessing tools
- Three additional appendixes available online
About the Reader
To read this book all you need is a basic knowledge of Python or a similar programming language.
About the Author
Chris Garrard works as a developer for Utah State University and teaches a graduate course on Python programming for GIS.
Table of Contents
Chapter 1 Introduction
Chapter 2 Python basics
Chapter 3 Reading and writing vector data
Chapter 4 Working with different vector file formats
Chapter 5 Filtering data with OGR
Chapter 6 Manipulating geometries with OGR
Chapter 7 Vector analysis with OGR
Chapter 8 Using spatial reference systems
Chapter 9 Reading and writing raster data
Chapter 10 Working with raster data
Chapter 11 Map algebra with NumPy and SciPy
Chapter 12 Map classification
Chapter 13 Visualizing data
appendix A Installation
appendix B References