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I am using pandas and matplotlib to generate bar-graphs with lots of bars.

I know how to cycle through a list of selected colors (How to give a pandas/matplotlib bar graph custom colors). The question is what colors to select so that my graph prints nicely on a paper (it is for a research paper). What I am most interested in is sufficient contrast between the columns and a selection of colors that looks pleasant. I would like to have multiple colors instead of gray-scale or single-hue colorschemes.

Are there any predetermined schemes to select from that people use?

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look into cubehelix – tcaswell Dec 20 '12 at 16:12
Cubehelix is awesome. I read the paper from Dave Green. Exactly what I wanted. Got excellent looking and printing graphs on the first try. If your comment was an answer I would accept it. – vkontori Dec 21 '12 at 1:41
added as answer – tcaswell Dec 21 '12 at 2:55
up vote 10 down vote accepted

In 1.5 matplotlib will ship with 4 new rationally designed color maps:

  • 'viridis' (will be default color map in 2.0)
  • 'magma'
  • 'plasma'
  • 'inferno'.

The process of designing these color maps is presented in https://youtu.be/xAoljeRJ3lU .

enter image description here

The tool developed for this process can be installed by pip install viscm

I would suggest the cubehelix color map. It is designed to have correct luminosity ordering in both color and gray-scale

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So your requirements are "lots of colors" and "no two colors should map to the same grayscale value when printed", right? The second criteria should be met by any "sequential" colormaps (which increase or decrease monotically in luminance). I think out of all the choices in matplotlib, you are left with cubehelix (already mentioned), gnuplot, and gnuplot2:

3 colormaps, showing luminance and hue

The white line is the luminance of each color, so you can see that each color will map to a different grayscale value when printed. The black line is hue, showing they cycle through a variety of colors.

Note that cubehelix is actually a function (from matplotlib._cm import cubehelix), and you can adjust the parameters of the helix to produce more widely-varying colors, as shown here. In other words, cubehelix is not a colormap, it's a family of colormaps. Here are 2 variations:

enter image description here

enter image description here

For less wildly-varying colors (more pleasant for many things, but maybe not for your bar graphs), maybe try the ColorBrewer 3-color maps, YlOrRd, PuBuGn, YlGnBu:

3 colormaps with monotonic luminance but less hue variation


I wouldn't recommend using only this color to identify bar graphs, though. You should always use text labels as the primary identifier. Also note that some of these produce white bars that completely blend in with the background, since they are intended for heatmaps, not chart colors:

from matplotlib import pyplot as plt
import pandas, numpy as np  # I find np.random.randint to be better

# Make the data
x = [{i:np.random.randint(1,5)} for i in range(10)]
df = pandas.DataFrame(x)

# Make a list by cycling through the colors you care about
# to match the length of your data.
cmap = plt.get_cmap('cubehelix')
indices = np.linspace(0, cmap.N, len(x))
my_colors = [cmap(int(i)) for i in indices]

# Specify this list of colors as the `color` option to `plot`.
df.plot(kind='bar', stacked=True, color=my_colors)

gnuplot bar graph

gnuplot2 bar graph

cubehelix bar graph

YlGnBu bar graph

And these are the new guys:

new guys colorbars

viridis bar graph

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Can you add a note to your answer here re the new color maps? I know I can just edit it myself, but that seem rude. – tcaswell Aug 17 '15 at 11:59
@tcaswell done :) can you give me any advice on stackoverflow.com/q/31888825/125507 ? – endolith Aug 20 '15 at 5:03

I am not aware of predetermined schemes. I usually use a few colours for publication plots. I mostly take two things into consideration when choosing colours:

  1. Colour-blindness: this page on wikipedia has lots of good info about choosing colours that are distinguishable to most color-blind people. If you notice on the "tips for editors" section, once you take the guidelines into account there are only a few sets of colours available. (A good rule of thumb is to never mix red and green!) You can also use the linked colour-blind simulators to see if your plot would be well visible.
  2. Luminance: most of the journals in my field will publish in B&W by default. Even though most people read the papers online, I still like to make sure that the plots can be understood when printed in grayscale. So I take care to use colours that have different luminances. To test, a good way is to just desaturate the image produced, and you'll have a good idea of how it looks when printed in grayscale. In many cases (particularly line or scatter plots), I also use other things than colour to distinguish between sets (eg. line styles, different markers).

If no colours are specified in matplotlib plots, it has a default set of colours that it cycles through. This answer has a good explanation on how to change that default set of colours. You can customise that to your preferred set of colours, so the plots would use them in turn.

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