PyRank
  • Insights
  • PyPI
  • GitHub
  • Search
  • Compare
  • Advisories
  • Ecosystem
  • About

Plotnine Python Packages

Python packages with the GitHub topic plotnine. Sorted by relevance, with stars and monthly downloads.
ponnhide
patchworklib

Patchwork for matplotlib: A subplot manager for intuitive layouts in matplotlib and seaborn.

10K 436 27
mshin77
a11yviz

a11yviz: Accessibility toolkit for plotnine, plotly, and Quarto (Python package version 0.1.3)

3K 0 0
nanxstats
ggsci

🦄 Scientific journal and sci-fi themed color palettes for plotnine

638 11 0
stefur
swemaps

Maps of Sweden in GeoParquet

435 2 1
Meghansaha
artpack

Create data that displays generative art when mapped into a 'plotnine' plot. Functionality includes specialized data frame creation for geometric shapes, tools that define artistic color palettes, tools for geometrically transforming data, and other miscellaneous tools that are helpful when using 'plotnine' for generative art.

313 1 0
krassowski
plotnine3d

3D geoms for plotnine (grammar of graphics in Python)

232 13 4
caotianze
plotnineseqsuite

A Python package for visualizing sequence data using ggplot2 style

212 17 0
caotianze
pyggseqlogo

Python version of ggseqlogo. Based on plotnine (Python version of ggplot2). A derivative of plotnineSeqSuite.

161 4 0
jfilter
deep-plots

📉 Visualize your Deep Learning training in static graphics

128 5 1
talwrii
kitty-plotnine

kitty-plotnine (k-nine) is a command-line tool to create one-line graph plots from your shell (bash, zsh etc) using plotnine's implementation of the Grammar of Graphics

106 12 0
Yasser03
pipeplotly

PipePlotly is a Python library that streamlines the creation of interactive Plotly charts by using a pipeline-based workflow. It acts as a bridge between the "Grammar of Graphics" philosophy and the power of Plotly, making data visualization more readable and maintainable.

78 1 0
ponnhide
sangerseq-viewer

Patchwork for matplotlib: A subplot manager for intuitive layouts in matplotlib and seaborn.

63 436 27
    • Data from PyPI, GitHub, ClickHouse, and BigQuery