# Opacity misleading when plotting two histograms at the same time with matplotlib

Let's say I have two histograms and I set the opacity using the parameter of hist: 'alpha=0.5'

I have plotted two histograms yet I get three colors! I understand this makes sense from an opacity point of view.

But! It makes is very confusing to show someone a graph of two things with three colors. Can I just somehow set the smallest bar for each bin to be in front with no opacity?

Example graph

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If you don't actually want to have `alpha<1` than just figure out what color the translucent color on top of white is and use opaque bars that color. – tcaswell Aug 26 '13 at 22:01
You should include the code you have used to produce the plot, as less people are likely to write the entire code for you, rather than fixing your existing code. – hooy Aug 27 '13 at 10:02
What's the code you used to generate this graph? – tommy.carstensen Dec 8 '14 at 9:30

The usual way this issue is handled is to have the plots with some small separation. This is done by default when `plt.hist` is given multiple sets of data:

``````import pylab as plt

x = 200 + 25*plt.randn(1000)
y = 150 + 25*plt.randn(1000)
n, bins, patches = plt.hist([x, y])
``````

You instead which to stack them (this could be done above using the argument `histtype='barstacked'`) but notice that the ordering is incorrect.

This can be fixed by individually checking each pair of points to see which is larger and then using `zorder` to set which one comes first. For simplicity I am using the output of the code above (e.g n is two stacked arrays of the number of points in each bin for x and y):

``````n_x = n[0]
n_y = n[1]
for i in range(len(n[0])):
if n_x[i] > n_y[i]:
zorder=1
else:
zorder=0
plt.bar(bins[:-1][i], n_x[i], width=10)
plt.bar(bins[:-1][i], n_y[i], width=10, color="g", zorder=zorder)
``````

Here is the resulting image:

By changing the ordering like this the image looks very weird indeed, this is probably why it is not implemented and needs a hack to do it. I would stick with the small separation method, anyone used to these plots assumes they take the same x-value.

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