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So i'm trying to implement a symlog style colour scale in matplotlib, I'm doing this by scaling my values onto the region of 0-1 and then using custom colourbar ticks and labels.

I'm scaling my values in three sections, using masks, but it's not working as I expect it should;

I first do this:

negMask = ma.masked_greater_equal(Z, -10**thresh, copy=True).mask
posMask = ma.masked_less_equal(Z, 10**thresh, copy=True).mask
linMask = ma.masked_outside(Z, -10**thresh, 10**thresh, copy=True).mask

To get the three masks i'll want. Then I start scaling the to the 0-1 region:

sizeNeg = int(np.ceil(log10(-minZ)) - thresh)
sizePos = int(np.ceil(log10(maxZ)) - thresh)
sizeLin = 2
totSize = sizeNeg + sizePos + sizeLin

Z.mask = negMask
Z = (-np.log10(-Z) - thresh) / totSize

If I stop here, and plot it, then it behaves as expected, here's a small section of the plot:

enter image description here

Where you can see it plots the negative values, but then not the positive parts - as they're masked.

So then I change the mask to the one for the positive values;

Z.mask = posMask
Z = (np.log10(Z) - thresh + sizeNeg + sizeLin) / totSize

But when I do this, all the values that were masked before, are now all just 1.0. The data that was there is gone.

Here's an example of what I mean:

$ python
Python 2.6.6 (r266:84292, Sep 11 2012, 05:25:09) 
[GCC 4.4.6 20120305 (Red Hat 4.4.6-4)] on linux2
Type "help", "copyright", "credits" or "license" for more information.
>>> import numpy as np
>>> from numpy.ma import masked_where as mw
>>> a = np.arange(0,10,1)
>>> a = mw(False, a)
>>> a
masked_array(data = [0 1 2 3 4 5 6 7 8 9],
             mask = False,
       fill_value = 999999)

>>> mask1 = mw(a>4,a).mask
>>> mask2 = mw(a<6,a).mask
>>> mask1
array([False, False, False, False, False,  True,  True,  True,  True,  True], dtype=bool)
>>> mask2
array([ True,  True,  True,  True,  True,  True, False, False, False, False], dtype=bool)
>>> a.mask = mask1
>>> a
masked_array(data = [0 1 2 3 4 -- -- -- -- --],
             mask = [False False False False False  True  True  True  True  True],
       fill_value = 999999)

>>> a = np.log10(a)
__main__:1: RuntimeWarning: divide by zero encountered in log10
>>> a
masked_array(data = [-- 0.0 0.301029995664 0.47712125472 0.602059991328 -- -- -- -- --],
             mask = [ True False False False False  True  True  True  True  True],
       fill_value = 999999)

>>> a.mask = mask2
>>> a
masked_array(data = [-- -- -- -- -- -- 1.0 1.0 1.0 1.0],
             mask = [ True  True  True  True  True  True False False False False],
       fill_value = 999999)

Using np.log10 on a masked array spoils the masked values, so that when you unmask them they are just all 1.0.

I know I could split my array into three separate ones, one for each region, but how do I combine them again afterwards?

share|improve this question
    
Show the (full) traceback as well, please. –  Evert Mar 15 '13 at 12:32
    
Note: the last line of your question is chopped off; perhaps not important, but probably good to edit your question and conclude the sentence. –  Evert Mar 15 '13 at 12:33
    
Try using numpy.ma.log10() in your example. Not sure if that will help solve your original problem, since the plot routines (mpl?) may not use the numpy.ma routines, but perhaps for that, MaskedArray.compress() can be of use –  Evert Mar 15 '13 at 13:50
    
numpy.ma.log10() seems to have solved it. Thanks. –  will Mar 15 '13 at 14:15

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