Giddy is an open-source python library for exploratory spatiotemporal data analysis and the analysis of geospatial distribution dynamics. It is under active development for the inclusion of newly proposed analytics that consider the role of space in the evolution of distributions over time.
Below are six choropleth maps of U.S. state per-capita incomes from 1929 to 2004 at a fifteen-year interval.
Online documentation is available here.
Above shows the rose diagram (directional LISAs) for US states incomes across 1969-2009 conditional on relative incomes in 1969.
Install the stable version released on the Python Package Index from the command line:
pip install giddy
Install the development version on pysal/giddy:
pip install git+https://github.com/pysal/giddy
PySAL-giddy is under active development and contributors are welcome.
If you have any suggestion, feature request, or bug report, please open a new issue on GitHub. To submit patches, please follow the PySAL development guidelines and open a pull request. Once your changes get merged, you’ll automatically be added to the Contributors List.
If you are having issues, please talk to us in the discord channel.
The project is licensed under the BSD license.
@software{wei_kang_2024_10520458,
author = {Wei Kang and
Sergio Rey and
James Gaboardi and
Philip Stephens and
Nicholas Malizia and
Stefanie Lumnitz and
Levi John Wolf and
Charles Schmidt and
Jay Laura and
Eli Knaap},
title = {pysal/giddy},
publisher = {Zenodo},
doi = {10.5281/zenodo.1322825},
url = {https://doi.org/10.5281/zenodo.1322825}
}
Award #1421935 New Approaches to Spatial Distribution Dynamics