# Combining two matplotlib colormaps

I would like to merge two colormaps into one, such that I can use one `cmap` for negative values and the other one for positive values.

At the moment I do it with masked arrays and plotting one image with one `cmap` and the other image with the other, resulting in: with the following data

``````dat = np.random.rand(10,10) * 2 - 1
pos = np.ma.masked_array(dat, dat<0)
neg = np.ma.masked_array(dat, dat>=0)
``````

I plotted `pos` with `gist_heat_r` and `neg` with `binary`.

I would like to have a single colorbar with the combined `cmap`'s, so this is not the correct approach for me.

So, how do I take two existing `cmaps`'s and merge them into one?

EDIT: I admit, this is a duplicate, but the answer that's given is much more clear here. Also the example images make it more clear.

• Interesting question. But for your case, you would normally use a diverging colormap (two hues, one for positive numbers another for negative ones). your combination of reds and greys is available in `plt.cm.RdGy`. This yields a continuous map around zero. If I'm not mistaken you have a discontinuity at 0. Is that what you want? – hitzg Jun 25 '15 at 13:44
• Thank you for your answer, but that is not what I want. The positive and negative values mean something else. And to stay coherent in the paper I'm writing, I would like to use the same cmap in all pictures, which it the one for positive values. – johnbaltis Jun 25 '15 at 13:47
• possible duplicate of stacking colormaps – tmdavison Jun 25 '15 at 14:02

## 1 Answer

Colormaps are basically just interpolation functions which you can call. They map values from the interval [0,1] to colors. So you can just sample colors from both maps and then combine them:

``````import numpy as np
import matplotlib.pyplot as plt
import matplotlib.colors as mcolors

data = np.random.rand(10,10) * 2 - 1

# sample the colormaps that you want to use. Use 128 from each so we get 256
# colors in total
colors1 = plt.cm.binary(np.linspace(0., 1, 128))
colors2 = plt.cm.gist_heat_r(np.linspace(0, 1, 128))

# combine them and build a new colormap
colors = np.vstack((colors1, colors2))
mymap = mcolors.LinearSegmentedColormap.from_list('my_colormap', colors)

plt.pcolor(data, cmap=mymap)
plt.colorbar()
plt.show()
``````

Result: NOTE: I understand that you might have specific needs for this, but in my opinion this is not a good approach: How will you distinguish -0.1 from 0.9? -0.9 from 0.1?

One way to prevent this is to sample the maps only from ~0.2 to ~0.8 (e.g.: `colors1 = plt.cm.binary(np.linspace(0.2, 0.8, 128))`) so they wont go all the way up to black: • This is exactly what I wanted, thanks! Clean solution, perfect! – johnbaltis Jun 25 '15 at 14:14
• @johnbaltis I just added some thoughts. See my edit – hitzg Jun 25 '15 at 14:16
• Any idea how to do it in a function where the two colors maps names are given as parameters? plt.cm[color_map_name] doesn't seem to to work – Noam Peled Aug 18 '16 at 21:27
• Regarding the worry on same different values mapping to same color. Some times this is desired, such as if your data is an angle. Then 0=2*pi for instance. In that case to choose colors as `colors1 = plt.cm.gray(np.linspace(0., 1, 128))` and `colors2 = plt.cm.hot_r(np.linspace(0., 1, 128))` makes a lot of sense. – Mikael Fremling Sep 19 '16 at 13:47
• @NoamPeled use `getattr`. Like such (adding the predefined matplotlib colormap to your list of colormaps to stack): `cmaplist.append(getattr(plt.cm,'coolwarm')(np.linspace(0,1,256,endpoint=False)+0.5/256))`. Note for my purposes I needed some specific endpoint customization to avoid overlaps. ( wanted to have multiple 1-D heatmaps with different colormaps on a single pcolormesh. Here for details: stackoverflow.com/questions/43761430/… – Vlox May 4 '17 at 20:47