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Library for performing queries and transformations on GeoJSON data (with emphasis on support for abstract graph representations).

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geoql

Library for performing queries and transformations on GeoJSON data (with emphasis on support for abstract graph representations).

PyPI version and link.

Package Installation and Usage

The package is available on PyPI:

python -m pip install geoql

The library can be imported in the usual ways:

import geoql
from geoql import geoql

Examples

An example of usage is provided below:

import geojson
from geoql import geoql
import geoleaflet
import requests

url = 'https://raw.githubusercontent.com/Data-Mechanics/geoql/master/examples/'

# Boston ZIP Codes regions.
z = geoql.loads(requests.get(url + 'example_zips.geojson').text, encoding="latin-1")

# Extract of street data.
g = geoql.loads(requests.get(url + 'example_extract.geojson').text, encoding="latin-1")

g = g.properties_null_remove()\
     .tags_parse_str_to_dict()\
     .keep_by_property({"highway": {"$in": ["residential", "secondary", "tertiary"]}})
g = g.keep_within_radius((42.3551, -71.0656), 0.75, 'miles') # 0.75 miles from Boston Common.
g = g.keep_that_intersect(z) # Only those entries found in a Boston ZIP Code regions.
g = g.node_edge_graph() # Converted into a graph with nodes and edges.
g.dump(open('example_extract.geojson', 'w'))
open('leaflet.html', 'w').write(geoleaflet.html(g)) # Create visualization.

An alternative example of usage is provided below (the below usage is deprecated but will remain supported):

import geojson
import geoql
import geoleaflet
import requests

url = 'https://raw.githubusercontent.com/Data-Mechanics/geoql/master/examples/'

# Boston ZIP Codes regions.
z = geojson.loads(requests.get(url + 'example_zips.geojson').text, encoding="latin-1")

# Extract of street data.
g = geojson.loads(requests.get(url + 'example_extract.geojson').text, encoding="latin-1")

g = geoql.features_properties_null_remove(g)
g = geoql.features_tags_parse_str_to_dict(g)
g = geoql.features_keep_by_property(g, {"highway": {"$in": ["residential", "secondary", "tertiary"]}})
g = geoql.features_keep_within_radius(g, (42.3551, -71.0656), 0.75, 'miles') # Within 0.75 of Boston Common.
g = geoql.features_keep_intersecting_features(g, z) # Only those entries found in a Boston ZIP Code regions.
g = geoql.features_node_edge_graph(g) # Converted into a graph with nodes and edges.
open('example_extract.geojson', 'w').write(geojson.dumps(g))
open('leaflet.html', 'w').write(geoleaflet.html(g)) # Create visualization.

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Library for performing queries and transformations on GeoJSON data (with emphasis on support for abstract graph representations).

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