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authorV3n3RiX <venerix@redcorelinux.org>2017-10-09 18:53:29 +0100
committerV3n3RiX <venerix@redcorelinux.org>2017-10-09 18:53:29 +0100
commit4f2d7949f03e1c198bc888f2d05f421d35c57e21 (patch)
treeba5f07bf3f9d22d82e54a462313f5d244036c768 /dev-python/seaborn/metadata.xml
reinit the tree, so we can have metadata
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+<?xml version="1.0" encoding="UTF-8"?>
+<!DOCTYPE pkgmetadata SYSTEM "http://www.gentoo.org/dtd/metadata.dtd">
+<pkgmetadata>
+ <maintainer type="person">
+ <email>horea.christ@gmail.com</email>
+ <name>Horea Christian</name>
+ </maintainer>
+ <maintainer type="project">
+ <email>proxy-maint@gentoo.org</email>
+ <name>Proxy Maintainers</name>
+ </maintainer>
+ <maintainer type="project">
+ <email>python@gentoo.org</email>
+ <name>Python</name>
+ </maintainer>
+ <longdescription lang="en">
+ Seaborn is a library for making attractive and informative statistical graphics
+ in Python. It is built on top of matplotlib and tightly integrated with the
+ PyData stack, including support for numpy and pandas data structures and
+ statistical routines from scipy and statsmodels.
+
+ Some of the features that seaborn offers are
+
+ * Several built-in themes that improve on the default matplotlib aesthetics
+ * Tools for choosing color palettes to make beautiful plots that reveal
+ patterns in your data
+ * Functions for visualizing univariate and bivariate distributions or for
+ comparing them between subsets of data
+ * Tools that fit and visualize linear regression models for different kinds
+ of independent and dependent variables
+ * Functions that visualize matrices of data and use clustering algorithms to
+ discover structure in those matrices
+ * A function to plot statistical timeseries data with flexible estimation and
+ representation of uncertainty around the estimate
+ * High-level abstractions for structuring grids of plots that let you easily
+ build complex visualizations
+ </longdescription>
+ <upstream>
+ <remote-id type="pypi">seaborne</remote-id>
+ <remote-id type="github">mwaskom/seaborn</remote-id>
+ </upstream>
+</pkgmetadata>