I am trying to do a Kernel Density Estimation (KDE) plot with seaborn and locate the median. The code looks something like this:

import seaborn as sns
import numpy as np
import matplotlib.pyplot as plt

sns.set_palette("hls", 1)
data = np.random.randn(30)
sns.kdeplot(data, shade=True)

# x_median, y_median = magic_function()
# plt.vlines(x_median, 0, y_median)


As you can see I need a magic_function() to fetch the median x and y values from the kdeplot. Then I would like to plot them with e.g. vlines. However, I can't figure out how to do that. The result should look something like this (obviously the black median bar is wrong here):

enter image description here

I guess my question is not strictly related to seaborn and also applies to other kinds of matplotlib plots. Any ideas are greatly appreciated.

  • I'm a bit confused about your goal. Why aren't you just plotting np.median(data)?
    – mwaskom
    Mar 10, 2015 at 16:06
  • 1
    @mwaskom: I think I tried that. but the KDE median does not necessarily coincide with the data median. And what would be the y value?
    – n1000
    Mar 10, 2015 at 17:00

1 Answer 1


You need to:

  1. Extract the data of the kde line
  2. Integrate it to calculate the cumulative distribution function (CDF)
  3. Find the value that makes CDF equal 1/2, that is the median
import numpy as np
import scipy
import seaborn as sns
import matplotlib.pyplot as plt

sns.set_palette("hls", 1)
data = np.random.randn(30)
p=sns.kdeplot(data, shade=True)

x,y = p.get_lines()[0].get_data()

#care with the order, it is first y
#initial fills a 0 so the result has same length than x
cdf = scipy.integrate.cumtrapz(y, x, initial=0)

nearest_05 = np.abs(cdf-0.5).argmin()

x_median = x[nearest_05]
y_median = y[nearest_05]

plt.vlines(x_median, 0, y_median)



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