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Fast, accurate open source geocoding in Python

Project description

Documentation Status Downloads contributions welcome

Whereabouts

A light-weight, fast geocoder for Python using DuckDB. Try it out online at Huggingface

Description

Whereabouts is an open-source geocoding library for Python, allowing you to geocode and standardize address data all within your own environment:

Features:

  • Two line installation
  • No additional database setup required. Uses DuckDB to run all queries
  • No need to send data to an external geocoding API
  • Fast (Geocode 1000s / sec depending on your setup)
  • Robust to typographical errors

Performance

Whereabouts performs well compared with other geocoders, with accuracy just below Google's geocoding API. The charts below show the accuracy when calculated at apartment / unit, house, street and suburb level, comparing Whereabouts with Google, Mapbox and Nominatim.

Geocoding accuracy on a set residential awddresses Geocoding accuracy on a set of business addresses

Requirements

  • Python 3.8+
  • requirements.txt (found in repo)

Installation: via uv / pip / conda

whereabouts can be installed either from this repo or using pip / uv / conda.

uv add whereabouts

Installation from this repo

Firstly, clone the repo

git clone https://github.com/ajl2718/whereabouts.git

Then create a uv project via:

uv venv

This will install all the required dependences that are listed in the pyproject.toml file.

Download a geocoder database or create your own

You will need a geocoding database to match addresses against. You can either download a pre-built database or create your own using a dataset of high quality reference addresses for a given country, state or other geographic region.

Option 1: Download a pre-built geocoder database

Pre-built geocoding database are available from Huggingface. The list of available databases can be found here

As an example, to install the small size geocoder database for California:

python -m whereabouts download us_ca_sm

or for the small size geocoder database for all of Australia:

python -m whereabouts download au_all_sm

Option 2: Create a geocoder database

Rather than using a pre-built database, you can create your own geocoder database if you have your own address file. This file should be a single csv or parquet file with the following columns:

Column name Description Data type
ADDRESS_DETAIL_PID Unique identifier for address int
ADDRESS_LABEL The full address str
ADDRESS_SITE_NAME Name of the site. This is usually null str
LOCALITY_NAME Name of the suburb or locality str
POSTCODE Postcode of address int
STATE The state, region or territory for the address str
LATITUDE Latitude of geocoded address float
LONGITUDE Longitude of geocoded address float

These fields should be specified in a setup.yml file. Once the setup.yml is created and a reference dataset is available, the geocoding database can be created:

python -m whereabouts setup_geocoder setup.yml

An example setup.yml file is provided with this repo. Note that the state names listed are specific to Australia and should be changed according to the country's data you are working with.

Geocoding examples

Geocode a list of addresses

from whereabouts.Matcher import Matcher

matcher = Matcher(db_name='au_all_sm')
matcher.geocode(addresslist, how='standard')

For more accurate geocoding you can use trigram phrases rather than token phrases. Note you will need one of the large databases to use trigram geocoding.

matcher.geocode(addresslist, how='trigram')

How it works

The algorithm employs simple record linkage techniques, making it suitable for implementation in around 10 lines of SQL. It is based on the following papers

Documentation

Work in progress: https://whereabouts.readthedocs.io/en/latest/

License Disclaimer for Third-Party Data

Note that while the code from this package is licensed under the MIT license, the pre-built databases use data from data providers that may have restrictions for particular use cases:

Users of this software must comply with the terms and conditions of the respective data licenses, which may impose additional restrictions or requirements. By using this software, you agree to comply with the relevant licenses for any third-party data.

Citing

To cite this repo, please use the following

@software{whereabouts_2024,
  author = {Alex Lee},
  doi = {[10.5281/zenodo.1234](https://doi.org/10.5281/zenodo.13627073)},
  month = {10},
  title = {{Whereabouts}},
  url = {https://github.com/ajl2718/whereabouts},
  version = {0.3.14},
  year = {2024}
}

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