
Introducing ACMetric package!
Current version: 1.3.2
This package is created to help you use ACMetric's brand colors and build plots without hours of tuning. Enjoy!
Installing on Google Colab
Setting up in Google Colab is described here.
Importing
We recommend importing it along with matplotlib
and seaborn
.
%matplotlib inline # display plots in the notebook right away
%config InlineBackend.figure_format='retina' # high resolution
import matplotlib.pyplot as plt
import seaborn as sns
import acmetric_plotting as ac
And it is ready to go!
Some things you need to know
ac.display_colors()
will show you a table with all the colors available and their names.
ac.colors
module contains ACMetric colors, you can access them by writing ac.colors.coral
, ac.colors.sky_60
, etc.
ac.palette
is a matplotlib
color palette. You can call it and choose a color you like by index, e.g. ac.palette[3]
.
ac.cmap
is a gradient colormap that can be used in seaborn
heatmap and other plots.
Run ac.params.layout_color('black')
to make axes and text black. Run ac.params.layout_color('default')
to make them grey again.
Now 4 kinds of plots are available in the package: bar chart, pie chart, scatter plot and box plot. You can make them using ac.bar
, ac.pie
, ac.scatter
and ac.box
. All the possible parameters can be found in the docstring.
Note: it doesn't mean you can't build other kinds of plots. Just import matplotlib
or seaborn
, and all the plots you create will also be ACMetric branded!