# Plotting large numbers of points and edges in matplotlib

I have some points (about 3000) and edges (about 6000) in this type of format:

``````points = numpy.array([1,2],[4,5],[2,7],[3,9],[9,2])
edges = numpy.array([0,1],[3,4],[3,2],[2,4])
``````

where the edges are indices into points, so that the start and end coordinates of each edges is given by:

``````points[edges]
``````

I am looking for a faster / better way to plot them. Currently I have:

``````from matplotlib import pyplot as plt
x = points[:,0].flatten()
y = points[:,1].flatten()
plt.plot(x[edges.T], y[edges.T], 'y-') # Edges
plt.plot(x, y, 'ro') # Points
plt.savefig('figure.png')
``````

I read about lineCollections, but am unsure how to use them. Is there a way to use my data more directly? What is the bottleneck here?

Some more realistic test data, time to plot is about 132 seconds:

``````points = numpy.random.randint(0, 100, (3000, 2))
edges = numpy.random.randint(0, 3000, (6000, 2))
``````
-
Perhaps jbdeaton.com/2011/speed-up-plot-rendering-in-pythonmatplotlib might be of some help. Add rasterized=True to the plot() call. –  David Poole Nov 9 '11 at 17:27

You could also just do it in a single plot call, which is considerably faster than two (though probably essentially the same as adding a LineCollection).

``````import numpy
import matplotlib.pyplot as plt

points = numpy.array([[1,2],[4,5],[2,7],[3,9],[9,2]])
edges = numpy.array([[0,1],[3,4],[3,2],[2,4]])

x = points[:,0].flatten()
y = points[:,1].flatten()

plt.plot(x[edges.T], y[edges.T], linestyle='-', color='y',
markerfacecolor='red', marker='o')

plt.show()
``````
-

Well, I found the following which is much faster:

``````from matplotlib import pyplot as plt
from matplotlib.collections import LineCollection
lc = LineCollection(points[edges])
fig = plt.figure()