Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

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.scatter(x,y,edgecolors='none',s=marker_size,c=np.log(void_fraction))
plt.colorbar()
plt.title('Colorbar: void fraction')

Thanks for your help.

share|improve this question

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.

plt.scatter(x,y,edgecolors='none',s=marker_size,c=void_fraction,
                norm=matplotlib.colors.LogNorm())

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
share|improve this answer
    
Perfect, thank you! –  Cokes Jun 20 '13 at 18:55
4  
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
1  
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_ticks(ticks)
cb.set_ticklabels(['%.3g' %10**t for t in ticks])
share|improve this answer
    
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

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.