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I am trying to use imshow in matplotlib to plot data as a heatmap, but some of the values are NaNs. I'd like the NaNs to be rendered as a special color not found in the colormap.

example:

import numpy as np
import matplotlib.pyplot as plt
f = plt.figure()
ax = f.add_subplot(111)
a = np.arange(25).reshape((5,5)).astype(float)
a[3,:] = np.nan
ax.imshow(a, interpolation='nearest')
f.canvas.draw()

The resultant image is unexpectedly all blue (the lowest color in the jet colormap). However, if I do the plotting like this:

ax.imshow(a, interpolation='nearest', vmin=0, vmax=24)

--then I get something better, but the NaN values are drawn the same color as vmin... Is there a graceful way that I can set NaNs to be drawn with a special color (eg: gray or transparent)?

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A few years later (matplotlib.__version__=='1.2.1'), this works without a problem. –  Frédéric Grosshans Mar 4 '14 at 16:24

2 Answers 2

up vote 31 down vote accepted

Hrm, it appears I can use a masked array to do this:

masked_array = np.ma.array (a, mask=np.isnan(a))
cmap = matplotlib.cm.jet
cmap.set_bad('w',1.)
ax.imshow(masked_array, interpolation='nearest', cmap=cmap)

This should suffice, though I'm still open to suggestions. :]

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It definitely does the trick. Official docs show nothing more. –  Agos May 11 '11 at 15:36
2  
A side point - I think doing this will override the default matplotlib.cm.jet, so I usually make a copy: import copy; cmap=copy.copy(matplotlib.cm.jet). Also, if you want to set 0-values to a different color, something like cmap._init(); cm._lut[:,0] = (1,1,1,1) should work. –  keflavich Feb 23 '13 at 19:56
    
There is also set_over and set_under to control the coloring of out of range values. The default behaviour is to match the top/bottom of the color range. –  tcaswell Nov 3 '14 at 13:41

It did not work for me. I was getting error message, so did workaround:

a[3,:] = -999
masked_array=np.ma.masked_where(a==-999, a)
cmap = matplotlib.cm.jet
cmap.set_bad('w',1.)
ax.imshow(masked_array, interpolation='nearest', cmap=cmap)
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2  
it would probably be helpful if you posted what error you were getting. –  Adam Fraser May 7 '12 at 19:52

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