# Create a 100 % stacked area chart with matplotlib

I was wondering how to create a 100 % stacked area chart in matplotlib. At the matplotlib page I couldn't find an example for it.

Somebody here can show me how to achieve that?

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Have you tried anything? You will typically get a better response on SO if you have mostly working code. As it stands this question reads and 'please do my work for me'. The example @LogicalKnight pointed to is a good start and gets you 95% of the way there. –  tcaswell Jun 1 '13 at 19:37

A simple way to achieve this is to make sure that for every x-value, the y-values sum to 100.

I assume that you have the y-values organized in an array as in the example below, i.e.

``````y = np.array([[17, 19,  5, 16, 22, 20,  9, 31, 39,  8],
[46, 18, 37, 27, 29,  6,  5, 23, 22,  5],
[15, 46, 33, 36, 11, 13, 39, 17, 49, 17]])
``````

To make sure the column totals are 100, you have to divide the `y` array by its column sums, and then multiply by 100. This makes the y-values span from 0 to 100, making the "unit" of the y-axis percent. If you instead want the values of the y-axis to span the interval from 0 to 1, don't multiply by 100.

Even if you don't have the y-values organized in one array as above, the principle is the same; the corresponding elements in each array consisting of y-values (e.g. `y1`, `y2` etc.) should sum to 100 (or 1).

The below code is a modified version of the example @LogicalKnight linked to in his comment.

``````import numpy as np
from matplotlib import pyplot as plt

fnx = lambda : np.random.randint(5, 50, 10)
y = np.row_stack((fnx(), fnx(), fnx()))
x = np.arange(10)

# Make new array consisting of fractions of column-totals,
# using .astype(float) to avoid integer division
percent = y /  y.sum(axis=0).astype(float) * 100

fig = plt.figure()

ax.stackplot(x, percent)
ax.set_title('100 % stacked area chart')
ax.set_ylabel('Percent (%)')
ax.margins(0, 0) # Set margins to avoid "whitespace"

plt.show()
``````

This gives the output shown below.

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Thanks a lot for the proper help! I'm currently fighting a bit with mpl 1.2.1 and numpy to plot the data in the first place, and haven't had time to look at this issue again. Hence, I'm really happy to get this nice piece of code! Cheers Thomas –  Thomas Becker Jun 4 '13 at 7:06