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I have a set of data which I want plotted as a line-graph. For each series, some data is missing (but different for each series). Currently matplotlib does not draw lines which skip missing data: for example

import matplotlib.pyplot as plt

xs = range(8)
series1 = [1, 3, 3, None, None, 5, 8, 9]
series2 = [2, None, 5, None, 4, None, 3, 2]

plt.plot(xs, series1, linestyle='-', marker='o')
plt.plot(xs, series2, linestyle='-', marker='o')

plt.show()

results in a plot with gaps in the lines. How can I tell matplotlib to draw lines through the gaps? (I'd rather not have to interpolate the data).

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3 Answers 3

up vote 8 down vote accepted

You can mask the NaN values this way:

import numpy as np
import matplotlib.pyplot as plt

xs = np.arange(8)
series1 = np.array([1, 3, 3, None, None, 5, 8, 9]).astype(np.double)
s1mask = np.isfinite(series1)
series2 = np.array([2, None, 5, None, 4, None, 3, 2]).astype(np.double)
s2mask = np.isfinite(series2)

plt.plot(xs[s1mask], series1[s1mask], linestyle='-', marker='o')
plt.plot(xs[s2mask], series2[s2mask], linestyle='-', marker='o')

plt.show()

This leads to

Plot

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+1) nice idea to use a mask –  Theodros Zelleke Jan 18 '13 at 13:44
    
This works perfectly, thank you. –  gravenimage Jan 18 '13 at 13:54
    
Do you have a reference about numpy.double(None) being nan? I could not find anything in the NumPy page on data types. –  EOL Jan 18 '13 at 14:05
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Without interpolation you'll need to remove the None's from the data. This also means you'll need to remove the X-values corresponding to None's in the series. Here's an (ugly) one liner for doing that:

  x1Clean,series1Clean = zip(* filter( lambda x: x[1] is not None , zip(xs,series1) ))

The lambda function returns False for None values, filtering the x,series pairs from the list, it then re-zips the data back into its original form.

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what if your series contains 0? You should definitely use lambda x: x is not None –  Thorsten Kranz Jan 18 '13 at 13:27
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For what it may be worth, after some trial and error I would like to add one clarification to Thorsten's solution. Hopefully saving time for users who looked elsewhere after having tried this approach.

I was unable to get success with an identical problem while using

from pyplot import *

and attempting to plot with

plot(abscissa[mask],ordinate[mask])

It seemed it was required to use import matplotlib.ptyplot as plt to get the proper NaNs handling, though I cannot say why.

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