Source: pointpats Maintainer: Debian Science Maintainers Uploaders: Josenilson Ferreira da Silva Section: python Priority: optional Build-Depends: debhelper-compat (= 13), jdupes, dh-sequence-python3, libjs-mathjax, libjs-requirejs, pybuild-plugin-pyproject, python3-all, python3-coverage, python3-doc , python3-geopandas , python3-libpysal, python-libpysal-doc , python3-matplotlib, python3-sphinx-rtd-theme , python3-myst-parser , python3-nbsphinx , python3-numpy, python3-numpydoc , python3-pandas, python-pandas-doc , python3-pytest-xdist , python3-pytest , python3-pytest-cov , python3-pytest-mpl , python3-scipy, python-scipy-doc , python3-setuptools, python3-setuptools-scm, python3-shapely , python3-sklearn, python3-sphinx , python3-sphinx-bootstrap-theme , python3-sphinxcontrib.bibtex , python-statsmodels-doc Standards-Version: 4.7.0 Vcs-Browser: https://salsa.debian.org/science-team/pointpats Vcs-Git: https://salsa.debian.org/science-team/pointpats.git Homepage: https://github.com/pysal/pointpats Rules-Requires-Root: no Testsuite: autopkgtest-pkg-pybuild Package: python3-pointpats Architecture: all Depends: ${misc:Depends}, ${python3:Depends} Recommends: python3-geopandas Suggests: python-pointpats-doc, python3-sklearn, python3-shapely Description: statistical analysis of planar point patterns The main objective of this module is to provide methods and functions for analyzing spatial patterns in point data. This includes the detection and characterization of different types of patterns, such as clusters, scatters or random patterns. . The project is integrated with the PySAL library, which is a broader library for spatial analysis in Python. This means that PointPatterns can be used in conjunction with other tools available in the PySAL ecosystem. . One of the main features of the module is to provide methods to calculate descriptive statistics, detect spatial clusters, perform orbit analysis and even perform statistical tests to evaluate the significance of observed patterns. Package: python-pointpats-doc Architecture: all Section: doc Depends: ${misc:Depends}, ${sphinxdoc:Depends} Suggests: python3-doc, python-scipy-doc, python-libpysal-doc, python-pandas-doc, python-statsmodels-doc Description: statistical analysis of planar point patterns (common documentation) The main objective of this module is to provide methods and functions for analyzing spatial patterns in point data. This includes the detection and characterization of different types of patterns, such as clusters, scatters or random patterns. . The project is integrated with the PySAL library, which is a broader library for spatial analysis in Python. This means that PointPatterns can be used in conjunction with other tools available in the PySAL ecosystem. . One of the main features of the module is to provide methods to calculate descriptive statistics, detect spatial clusters, perform orbit analysis and even perform statistical tests to evaluate the significance of observed patterns. . This package installs the common documentation package.