Book Image

Geospatial Development By Example with Python

By : Pablo Carreira
5 (1)
Book Image

Geospatial Development By Example with Python

5 (1)
By: Pablo Carreira

Overview of this book

From Python programming good practices to the advanced use of analysis packages, this book teaches you how to write applications that will perform complex geoprocessing tasks that can be replicated and reused. Much more than simple scripts, you will write functions to import data, create Python classes that represent your features, and learn how to combine and filter them. With pluggable mechanisms, you will learn how to visualize data and the results of analysis in beautiful maps that can be batch-generated and embedded into documents or web pages. Finally, you will learn how to consume and process an enormous amount of data very efficiently by using advanced tools and modern computers’ parallel processing capabilities.
Table of Contents (17 chapters)
Geospatial Development By Example with Python
Credits
About the Author
About the Reviewers
www.PacktPub.com
Preface
Index

Sort the countries by area size


You programmed three functions so far; now, let's add another one to our list by converting the code that generated a list of country names to a function and add this function to world_areas.py, as follows:

def get_country_names(datasource):
    """Returns a list of country names."""
    layer = datasource.GetLayerByIndex(0)
    country_names = []
    layer.ResetReading()
    for feature in layer:
        country_names.append(feature.GetFieldAsString(4))
    return country_names

Now, we have four functions, which are:

  • open_shapefile

  • transform_geometries

  • calculate_areas

  • get_country_names

All these functions return iterables, with each item sharing the same index on all of them, thus making it easy to combine the information.

So, let's take advantage of this feature to sort the countries by area size and return a list of the five biggest countries and their areas. For this, add another function, as follows:

def get_biggest_countries(countries, areas, elements=5):
    """Returns a list of n countries sorted by area size."""    
    countries_list = [list(country) 
                      for country in zip(areas, countries)]

    sorted_countries = sorted(countries_list, 
                              key=itemgetter(0), reverse=True) 
    return sorted_countries[:5]

In the first line, the two lists are zipped together, producing a list of country-area pairs. Then, we used the Python list's sorted method, but as we don't want the lists to be sorted by both values, we will define the key for sorting. Finally, the list is sliced, returning only the desired number of values.

  1. In order to run this code, you need to import the itemgetter function and put it at the beginning of the code but after from __future__ imports, as follows:

    from operator import itemgetter
  2. Now, edit the testing part of your code to look similar to the following:

    datasource = open_shapefile("../data/world_borders_simple.shp")
    transformed_geoms = transform_geometries(datasource, 4326, 3395)
    country_names = get_country_names(datasource)
    country_areas = calculate_areas(transformed_geoms)
    biggest_countries = get_biggest_countries(country_names, 
                                              country_areas)
    for item in biggest_countries:
        print("{}\t{}".format(item[0], item[1])) 
  3. Now, run the code and take a look at the results, as follows:

    Opening ../data/world_borders_simple.shp
    Number of features: 246
    82820725.1423 Russia
    51163710.3726 Canada
    35224817.514 Greenland
    21674429.8403 United States
    14851905.8596 China
    
    Process finished with exit code 0