Unless your graphic is huge, many of those 3 million points are going to overlap.
(A 400x600 image only has 240K dots...)
So the easiest thing to do would be to take a sample of say, 1000 points, from your data:
and just plot that.
import matplotlib.pyplot as plt
import matplotlib.cm as cm
import numpy as np
fig = plt.figure()
ax = fig.add_subplot(111)
Or, if you need to pay more attention to outliers, then perhaps you could bin your data using
np.histogram, and then compose a
delta_sample which has representatives from each bin.
Unfortunately, when using
np.histogram I don't think there is any easy way to associate bins with individual data points. A simple, but approximate solution is to use the location of a point in or on the bin edge itself as a proxy for the points in it: