forked from petewarden/geodict
-
Notifications
You must be signed in to change notification settings - Fork 0
A simple Python library/tool for pulling location information from unstructured text
rburhum/geodict
Folders and files
Name | Name | Last commit message | Last commit date | |
---|---|---|---|---|
Repository files navigation
geodict ------- A simple Python library/command-line tool for pulling location information from unstructured text Installing ---------- This library uses a large geo-dictionary of countries, regions and cities, all stored in a MySQL database. The source data required is included in this project. To get started: - Enter the details of your MySQL server and account into geodict_config.py - Install the MySQLdb module for Python ('easy_install MySQL-python' may do the trick) - cd into the folder you've unpacked this to, and run ./populate_database.py This make take several minutes, depending on your machine, since there's over 2 million cities Running ------- Once you've done that, give the command-line tool a try: ./geodict.py < testinput.txt That should produce something like this: Spain Italy Bulgaria New Zealand Barcelona, Spain Wellington New Zealand Alabama Wisconsin Those are the actual strings that the tool picked out as locations. If you want more information on each of them in a machine-readable format you can specify JSON or CSV: ./geodict.py -f json < testinput.txt [{"found_tokens": [{"code": "ES", "matched_string": "Spain", "lon": -4.0, "end_index": 4, "lat": 40.0, "type": "COUNTRY", "start_index": 0}]}, {"found_tokens": [{"code": "IT", "matched_string": "Italy", "lon": 12.833299999999999, "end_index": 10, "lat": 42.833300000000001, "type": "COUNTRY", "start_index": 6}]}, {"found_tokens": [{"code": "BG", "matched_string": "Bulgaria", "lon": 25.0, "end_index": 19, "lat": 43.0, "type": "COUNTRY", "start_index": 12}]}, {"found_tokens": [{"code": "NZ", "matched_string": "New Zealand", "lon": 174.0, "end_index": 42, "lat": -41.0, "type": "COUNTRY", "start_index": 32}]}, {"found_tokens": [{"matched_string": "Barcelona", "lon": 2.1833300000000002, "end_index": 52, "lat": 41.383299999999998, "type": "CITY", "start_index": 44}, {"code": "ES", "matched_string": "Spain", "lon": -4.0, "end_index": 59, "lat": 40.0, "type": "COUNTRY", "start_index": 55}]}, {"found_tokens": [{"matched_string": "Wellington", "lon": 174.78299999999999, "end_index": 70, "lat": -41.299999999999997, "type": "CITY", "start_index": 61}, {"code": "NZ", "matched_string": "New Zealand", "lon": 174.0, "end_index": 82, "lat": -41.0, "type": "COUNTRY", "start_index": 72}]}, {"found_tokens": [{"code": "AL", "matched_string": "Alabama", "lon": -86.807299999999998, "end_index": 196, "lat": 32.798999999999999, "type": "REGION", "start_index": 190}]}, {"found_tokens": [{"code": "WI", "matched_string": "Wisconsin", "lon": -89.638499999999993, "end_index": 332, "lat": 44.256300000000003, "type": "REGION", "start_index": 324}]}] ./geodict.py -f csv < testinput.txt location,type,lat,lon Spain,country,40.0,-4.0 Italy,country,42.8333,12.8333 Bulgaria,country,43.0,25.0 New Zealand,country,-41.0,174.0 "Barcelona, Spain",city,41.3833,2.18333 Wellington New Zealand,city,-41.3,174.783 Alabama,region,32.799,-86.8073 Wisconsin,region,44.2563,-89.6385 For more of a real-world test, try feeding in the front page of the New York Times: curl -L "http://newyorktimes.com/" | ./geodict.py Georgia Brazil United States Iraq China Brazil Pakistan Afghanistan Erlanger, Ky Japan China India India Ecuador Ireland Washington Iraq Guatemala The tool just treats its input as plain text, so in production you'd want to use something like beautiful soup to strip the tags out of the HTML, but even with messy input like that it's able to work reasonably well. Developers ---------- To use this from within your own Python code import geodict_lib and then call locations = geodict_lib.find_locations_in_text(text) The code itself may be a bit non-idiomatic, I'm still getting up to speed with Python! Credits ------- © Pete Warden, 2010 <pete@mailana.com> - http://www.openheatmap.com/ World cities data is from MaxMind: http://www.maxmind.com/app/worldcities All code is licensed under the GPL V3. For more details on the license see the included gpl.txt file or go to http://www.gnu.org/licenses/
About
A simple Python library/tool for pulling location information from unstructured text
Resources
Stars
Watchers
Forks
Releases
No releases published
Packages 0
No packages published