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I have a chart that is rendered takes 3 seconds and then subcharts that can be made from said chart where things are added to it. I want to cache the axes from the main chart so that I can retrieve it and modify it later when rendering the subcharts. How can I get past this error?

Heres a sample test code:

import pylibmc
cache = pylibmc.Client([""], binary=True, behaviors={"tcp_nodelay": True, "ketama": True})
import matplotlib.pyplot as plt

cache_name = 'test'
fig = plt.figure(figsize=(20, 7))
ax = fig.add_axes([0, 0.15, 0.98, 0.85])
cache.set(cache_name, ax, 300)

Which gives the following error:

cPickle.PicklingError: Can't pickle <type 'function'>: attribute lookup __builtin__.function failed

Is there anyway I could get this to work?

share|improve this question
Is the data structure the part that take 3 seconds or the actual plot by matplotlib? There have been discussions about this before and apparently nothing has been done in terms of making matplotlib serializable. – jdi May 4 '12 at 5:49
Matplotlib Plotting. Since their candlestick plots suck, I am plotting a candlestick chart using individual bars. And since I cant get bar to work through a list (diff colors, values, error bars) I am adding each bar individually thorough a loop (about 400 items) which is likely causing it to take that long. Sample script here: If I could cache those final set of bars, the time wouldn't be that important. – NoviceCoding May 4 '12 at 6:51
So in that sample loop, the axis creation takes time? And you do that 400 times to produce a collection of axis that take 3 seconds? – jdi May 4 '12 at 15:44
Each time in that loop takes about .01 to .03s x 400 puts me at around 4-5 seconds to place all the bars on the image. Everything else is really quick. If I could either cache the collection of bars or speed up adding the bars (possibly adding them by batch) I'd be golden. – NoviceCoding May 4 '12 at 16:08
up vote 3 down vote accepted

There are discussion out there regarding the desire for matplotlib figures to be able to be serialized. I haven't seen anything that reports this has been addressed or even accepted as a goal. So if you try to send them over the wire to memcached, its obviously going to fail. The discussions that I have found when searching suggest that the current design of matplotlib doesn't cater to this goal easily, and it would require a refactor of the internals. Reference:

What you could do, to dramatically reduce your execution time, is to reorganize your data into a dataset, and only call once. The dataset can then be serialized and stored in whatever format you want (into memcached for instance).

Here is a code example showing the test between your approach, and one that combines them into a dataset. You can view it here more easily if you want:

import matplotlib.pyplot as plt
from random import randint 
from time import time 

DATA = [
    (i, randint(5,30), randint(5,30), randint(30,35), randint(1,5)) \
    for i in xrange(1, 401)

def mapValues(group):
    ind, open_, close, high, low = group
    if open_ > close: # if open is higher then close
        height = open_ - close # heigth is drawn at bottom+height
        bottom = close
        yerr = (open_ - low, high - open_)
        color = 'r' # plot as a white barr
        height = close - open_ # heigth is drawn at bottom+height
        bottom = open_
        yerr = (close - low, high - close)
        color = 'g' # plot as a black bar

    return (ind, height, bottom, yerr, color)

# Test 1
def test1():
    fig = plt.figure()
    ax = fig.add_subplot(111)

    data = map(mapValues, DATA)

    start = time()

    for group in data: 

        ind, height, bottom, yerr, color = group, height=height, bottom=bottom, yerr=zip(yerr), 
                color=color, ecolor='k', zorder=10,
                error_kw={'barsabove': False, 'zorder': 0, 'capsize': 0}, 

    return time()-start

# Test 2
def test2():
    fig = plt.figure()
    ax = fig.add_subplot(111)

    # plotData can be serialized
    plotData = zip(*map(mapValues, DATA))

    ind, height, bottom, yerr, color = plotData

    start = time(), height=height, bottom=bottom, yerr=zip(*yerr), 
            color=color, ecolor='k', zorder=10,
            error_kw={'barsabove': False, 'zorder': 0, 'capsize': 0}, 

    return time()-start

def doTest(fn):
    end = fn()
    print "%s - Sec: %0.3f, ms: %0d" % (fn.__name__, end, end*1000)

if __name__ == "__main__":



test1 - Sec: 1.592, ms: 1592
test2 - Sec: 0.358, ms: 357
share|improve this answer
Thank a bunch. The charting went from 5s to 1.7s thanks so much! Still hoping for a matplotlib caching mechanism in the long run! – NoviceCoding May 6 '12 at 19:33

As of matplotlib 1.2 you should be able to pickle and unpickle figures.

This is very much an "experimental" feature, but if you do find any issues, please let us know on the mpl mailing list or by raising an issue on


share|improve this answer

Looking at the documentation, it would appear that fig.add_axes() takes a tuple as an argument, where you're passing a list. As such, it's not returning the Axes object (since it isn't being created), so ax is being assigned the function itself.

share|improve this answer
This is not correct. The various methods can take a sequence, be it a list or tuple. Either way. add_axes() is returning an Axis object. The problem is that the OP is trying to send the Axis instance across the wire to memcached, which wants to be able to serialize the object. matplotlib objects can't be serialized. Its basically choking on the various internals of the axis. Take a look at the value of ax.__dict__. You will see its a huge reference of other matplotlib objects, including the figure, etc. – jdi May 4 '12 at 21:39

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