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I have a large (~6GB) text file in a simple format

x1 y1 z1
x2 y2 z2

Since I may load this data more than once, I've created a np.memmap file for efficiency reasons:

X,Y,Z = np.memmap(f_np_mmap,dtype='float32',mode='r',shape=shape).T

What I'm trying to do is plot:

plt.scatter(X, Y, 
           alpha=.01, s=.001, marker='s', linewidth=0)

This works perfectly for smaller datasets. However, for this larger dataset I run out of memory. I've checked that plt.scatter is taking all the memory; I can step through X,Y,Z just fine. Is there a way I "rasterize" the canvas so I do not run out of memory? I do not need to zoom and pan around the image, it is going straight to disk. I realize that I can bin the data and plot that, but I'm not sure how to do this with a custom colormap and an alpha value.

share|improve this question
matplotlib makes internal copies of the data for self defense reasons (if it just kept a reference the data could/would change under it). I would look into using PathCollection (or what it uses underneath) directly. – tcaswell Nov 27 '13 at 19:13
The other option is to write a custom sub-class of Axes which overrides the draw function and generate an artist for each point, raster it and composite it down, and then throw the artists away before making the next one. – tcaswell Nov 27 '13 at 19:14
@tcaswell The first approach would help only if the internal representation was the problem, but it doesn't solve the underlying size issue. Your second solution is interesting, how could I rasterize/composite an artist? – Hooked Nov 27 '13 at 19:17
I think the internal represenation is the problem, someplace there is the moral equivalent of _internal_data = np.array(input_data) and if you are color mapping, the scatter object will end up being at least 6*N*64 B (N rows, 6 or 7 floats (XYZ, RGB(maybe A), 64bits) – tcaswell Nov 27 '13 at 19:21
and give me a bit to see if I can make it work, but have a look at the code for matplotlib.axes.Axes.draw – tcaswell Nov 27 '13 at 19:24
up vote 7 down vote accepted

@tcaswell's suggestion to override the Axes.draw method is definitely the most flexible way to approach this.

However, you can use/abuse blitting to do this without subclassing Axes. Just use draw_artist each time without restoring the canvas.

There's one additional trick: We need to have a special save method, as all of the others draw the canvas before saving, which will wipe out everything we've drawn on it previously.

Also, as tcaswell notes, calling draw_artist for every item is rather slow, so for a large number of points, you'll want to chunk your input data. Chunking will give a significant speedup, but this method is always going to be slower than drawing a single PathCollection.

At any rate, either one of these answers should alleviate your memory problems. Here's a simplistic example.

import numpy as np
import matplotlib.pyplot as plt
from matplotlib import _png
from itertools import izip

def main():
    # We'll be saving the figure's background, so let's make it transparent.
    fig, ax = plt.subplots(facecolor='none')

    # You'll have to know the extent of the input beforehand with this method.
    ax.axis([0, 10, 0, 10])

    # We need to draw the canvas before we start adding points.

    # This won't actually ever be drawn. We just need an artist to update.
    col = ax.scatter([5], [5], color=[0.1, 0.1, 0.1], alpha=0.3)

    for xy, color in datastream(int(1e6), chunksize=int(1e4)):

    save(fig, 'test.png')

def datastream(n, chunksize=1):
    """Returns a generator over "n" random xy positions and rgb colors."""
    for _ in xrange(n//chunksize):
        xy = 10 * np.random.random((chunksize, 2))
        color = np.random.random((chunksize, 3))
        yield xy, color

def save(fig, filename):
    """We have to work around `fig.canvas.print_png`, etc calling `draw`."""
    renderer = fig.canvas.renderer
    with open(filename, 'w') as outfile:
                       renderer.width, renderer.height,
                       outfile, fig.dpi)


enter image description here

Also, you might notice that the top and left spines are getting drawn over. You could work around this by re-drawing those two spines (ax.draw_artist(ax.spines['top']), etc) before saving.

share|improve this answer
Thanks, this works quite well. I just want to add for anyone else using it, that a higher resolution image can be obtained by setting the dpi in the fig, ax = plt.subplots(facecolor='none', dpi=700) call not the save function since it seems to be too late by then. – Hooked Nov 27 '13 at 20:49
@Hooked - Good point! The same goes for any other changes to the figure... Basically, everything needs to be set up before that initial call to fig.canvas.draw(). After that, we're just drawing on top of a "fixed" raster image. – Joe Kington Nov 27 '13 at 20:57

Something like this (sorry for the long code, most of it is copied from the stardard axes.Axes.draw):

from operator import itemgetter
class generator_scatter_axes(matplotlib.axes.Axes):
    def __init__(self, *args, **kwargs):
        matplotlib.axes.Axes.__init__(self, *args, **kwargs)
        self._big_data = None
    def draw(self, renderer=None, inframe=None):
        # copied from original draw (so you can still add normal artists ect)
        if renderer is None:
            renderer = self._cachedRenderer

        if renderer is None:
            raise RuntimeError('No renderer defined')
        if not self.get_visible():

        locator = self.get_axes_locator()
        if locator:
            pos = locator(self, renderer)

        artists = []

        if self.axison and not inframe:
            if self._axisbelow:
            artists.extend([self.xaxis, self.yaxis])
        if not inframe:
        if self.legend_ is not None:

        # the frame draws the edges around the axes patch -- we
        # decouple these so the patch can be in the background and the
        # frame in the foreground.
        if self.axison and self._frameon:

        if self.figure.canvas.is_saving():
            dsu = [(a.zorder, a) for a in artists]
            dsu = [(a.zorder, a) for a in artists
                   if not a.get_animated()]

        # add images to dsu if the backend support compositing.
        # otherwise, does the manaul compositing  without adding images to dsu.
        if len(self.images) <= 1 or renderer.option_image_nocomposite():
            dsu.extend([(im.zorder, im) for im in self.images])
            _do_composite = False
            _do_composite = True


        # rasterize artists with negative zorder
        # if the minimum zorder is negative, start rasterization
        rasterization_zorder = self._rasterization_zorder
        if (rasterization_zorder is not None and
            len(dsu) > 0 and dsu[0][0] < rasterization_zorder):
            dsu_rasterized = [l for l in dsu if l[0] < rasterization_zorder]
            dsu = [l for l in dsu if l[0] >= rasterization_zorder]
            dsu_rasterized = []

        # the patch draws the background rectangle -- the frame below
        # will draw the edges
        if self.axison and self._frameon:

        if _do_composite:
            # make a composite image blending alpha
            # list of (mimage.Image, ox, oy)

            zorder_images = [(im.zorder, im) for im in self.images
                             if im.get_visible()]
            zorder_images.sort(key=lambda x: x[0])

            mag = renderer.get_image_magnification()
            ims = [(im.make_image(mag), 0, 0, im.get_alpha()) for z, im in zorder_images]

            l, b, r, t = self.bbox.extents
            width = mag * ((round(r) + 0.5) - (round(l) - 0.5))
            height = mag * ((round(t) + 0.5) - (round(b) - 0.5))
            im = mimage.from_images(height,

            im.is_grayscale = False
            l, b, w, h = self.bbox.bounds
            # composite images need special args so they will not
            # respect z-order for now

            gc = renderer.new_gc()

            renderer.draw_image(gc, round(l), round(b), im)

        if dsu_rasterized:
            for zorder, a in dsu_rasterized:

        for zorder, a in dsu:
        # new bits
        if self._big_data is not None:

            for x, y, z in self._big_data:
                # add the (single point) to the axes
                a = self.scatter(x, y, color='r',
                            alpha=1, s=10, marker='s', linewidth=0)
                # add the point, in Agg this will render + composite
                # remove the artist from the axes, shouldn't let the render know
                # delete the artist for good measure
                del a
        # end new bits
        # again, from original to clean up
        self._cachedRenderer = renderer

use it like such:

In [42]: fig = figure()

In [43]: ax = generator_scatter_axes(fig, [.1, .1, .8, .8])

In [44]: fig.add_axes(ax)
Out[44]: <__main__.generator_scatter_axes at 0x56fe090>

In [45]: ax._big_data = rand(500, 3)

In [46]: draw()

I changed your scatter function to have shapes that are visible in small numbers. This will be very slow as you are setting up a scatter object every time. I would either take sensible chunks of your data and plot those, or replace the call to scatter to the underlying artist objects, or use Joe's suggestion and just update a single artist.

share|improve this answer
Is it possible in draw to get zoom level, and depending on the zoom and dpi to plot either a rectangle (with min and max of data for chunks of data) or plot the data itself? Something like Level-of-Detail plotting so that we could plot large data, then only after zooming in see the details. Perhaps I need to develop a new artist for this. But wanted to know if zoom level can be known. – dashesy Mar 18 at 21:55
At dryw time the Axes knows what it's view limits are. Have a look at the draw method of Line2D which uses this knowledge to (in some cases) only look at a subset of the data. – tcaswell Mar 18 at 22:07

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