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I would like to make the colors of the points on the scatter plot correspond to the value of the void fraction, but on a logarithmic scale to amplify differences. I did this, but now when I do plt.colorbar(), it displays the log of the void fraction, when I really want the actual void fraction. How can I make a log scale on the colorbar with the appropriate labels of the void fraction, which belongs to [0.00001,1]?

Here is an image of the plot I have now, but the void fraction colorbar is not appropriately labeled to correspond to the true void fraction, instead of the log of it.

current plot

fig = plt.figure()
plt.title('Colorbar: void fraction')

Thanks for your help.

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2 Answers 2

up vote 27 down vote accepted

The way that matplotlib does color mapping is in two steps, first a Normalize function (wrapped up by the sub-classes of matplotlib.colors.Normalize) which maps the data you hand in to [0, 1]. The second step maps values in [0,1] -> RGBA space.

You just need to use the LogNorm normalization class, passed in with the norm kwarg.


When you want to scale/tweak data for plotting, it is better to let matplotlib do the transformations than to do it your self.

  • Normalize doc
  • LogNorm doc
  • matplotlib.color doc
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Perfect, thank you! –  Cokes Jun 20 '13 at 18:55
The result is in Fig 2. pubs.rsc.org/en/content/articlehtml/2014/cp/c3cp55039g I added Stack Overflow in the acknowledgements! –  Cokes Jan 17 '14 at 22:51
Thank you! IF only the docs hinted at where to look. There are all these fantastic functions with fantastic parameters offering fantastic possibilities but nothing on how to use them. –  EndsOfInvention May 15 '14 at 11:36
Please suggest edits to the docs based on what you now understand –  tcaswell May 15 '14 at 12:05

You can use the .set_ticks() and .set_ticklabels() methods of the colorbar to do this:

import pylab as pl

# fake data
x,y = [np.arange(500) + np.random.randn(500)*50 for ii in xrange(2)]
c = np.exp(np.arange(500))
pts = pl.scatter(x,y,c=np.log10(c),cmap=pl.cm.jet)
cb = pl.colorbar(pts)

cmin,cmax = cb.get_clim()
ticks = np.linspace(cmin,cmax,10)
cb.set_ticklabels(['%.3g' %10**t for t in ticks])
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This is doing it the hard way and I don't think will re-map correctly if you use set_clim. –  tcaswell Jun 19 '13 at 22:13
Yep, your answer is definitely better - I wasn't aware of Normalize, and you posted your answer just as I was finishing mine! –  ali_m Jun 19 '13 at 22:44
I wonder if I can combine your two approaches. Using Normalize doesn't automatically label the colorbar very well. It has only one label at the moment! Thanks. –  Cokes Jun 25 '13 at 17:50
@Cokes You should ask a new question about how to tune the colorbar you have. –  tcaswell Jun 25 '13 at 18:10

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