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A package containing algorithms for sortition - democratic lotteries.

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sortition-algorithms

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A package containing algorithms for sortition - democratic lotteries.

About

This library implements algorithms for sortition - the random selection of representative citizen panels (also known as citizens' assemblies, juries, or deliberative panels). Unlike simple random sampling, these algorithms use stratified selection to ensure the chosen panel reflects the demographic composition of the broader population.

What is Sortition?

Sortition creates representative groups by randomly selecting people while respecting demographic quotas. For example, if your population is 52% women and 48% men, sortition ensures your panel maintains similar proportions rather than risking an all-male or all-female selection through pure chance.

Key Features

  • Stratified Random Selection: Respects demographic quotas while maintaining randomness
  • Household Diversity: Optional address checking to ensure geographic and household spread
  • Multiple Algorithms: Choose from maximin, leximin, nash, or legacy selection methods
  • Flexible Data Sources: Works with CSV files, Google Sheets, or direct Python data structures
  • Transparency: Detailed reporting of selection process and quota fulfillment

Quick Example

from sortition_algorithms import run_stratification, read_in_features, read_in_people, Settings

# Load your data
features = read_in_features("demographics.csv")  # Age, Gender, Location quotas
people = read_in_people("candidates.csv", Settings(), features)

# Select a representative panel of 100 people
success, selected_panels, messages = run_stratification(
    features, people, number_people_wanted=100, settings=Settings()
)

if success:
    panel = selected_panels[0]  # Set of selected person IDs
    print(f"Selected {len(panel)} people for the panel")

Research Background

The algorithms are described in this paper (open access).

Other relevant papers:

Installing the library

pip install sortition-algorithms

(Or uv add ... or ...)

Optional dependencies

There are two sets of optional dependencies:

# Install the library to use the leximin algorithm
# This requires a commercial/academic license to use
pip install 'sortition-algorithms[gurobi]'

# Install the basic Command Line Interface
pip install 'sortition-algorithms[cli]'

The Command Line Interface

The library includes a CLI for common operations:

# CSV workflow
python -m sortition_algorithms csv \
  --settings config.toml \
  --features-csv demographics.csv \
  --people-csv candidates.csv \
  --selected-csv selected.csv \
  --remaining-csv remaining.csv \
  --number-wanted 100

# Google Sheets workflow
python -m sortition_algorithms gsheet \
  --settings config.toml \
  --auth-json-file credentials.json \
  --gsheet-name "Citizen Panel Selection" \
  --number-wanted 100

Documentation

For detailed usage instructions, API reference, and advanced examples:

Starting Development

Prerequisites

The recommended prerequisites are:

Set Up

To install a virtualenv with the required dependencies and set up pre-commit hooks:

just install

Get going

# run all the tests
just test

# run all the tests that aren't slow
just test

# run all the code quality checks
just check

The CI/CD pipeline will be triggered when you open a pull request, merge to main, or when you create a new release.

To finalize the set-up for publishing to PyPI, see here. For activating the automatic documentation with MkDocs, see here. To enable the code coverage reports, see here.

Releasing a new version

  • Create an API Token on PyPI.
  • Add the API Token to your projects secrets with the name PYPI_TOKEN by visiting this page.
  • Create a new release on Github.
  • Create a new tag in the form *.*.*.

For more details, see here.


Repository initiated with fpgmaas/cookiecutter-uv.

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