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After these instructions in the Python interpreter one gets a window with a plot:

from matplotlib.pyplot import *
# other code

Unfortunately, I don't know how to continue to interactively explore the figure created by show() while the program does further calculations.

Is it possible at all? Sometimes calculations are long and it would help if they would proceed during examination of intermediate results.

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I can not confirm, that the selected solution from nosklo on 16:52 is working. For me draw does not open a window to display the plot, only the blocking show at the end displays the solution. However, his reply from 17:00 is correct. Switching interactive mode on via ion() fixes the problem. – H. Brandsmeier Sep 25 '11 at 10:45

13 Answers 13

up vote 102 down vote accepted

Use matplotlib's calls that won't block:

Using draw():

from matplotlib.pyplot import plot, draw, show
print 'continue computation'

# at the end call show to ensure window won't close.

Using interactive mode:

from matplotlib.pyplot import plot, ion, show
ion() # enables interactive mode
plot([1,2,3]) # result shows immediatelly (implicit draw())

print 'continue computation'

# at the end call show to ensure window won't close.
share|improve this answer
With matplotlib 0.98.3 the right import is from matplotlib.pyplot import plot, draw, show – meteore Jan 21 '09 at 7:55
draw() doesn't work for me, it doesn't open any window. However using show(block=False) instead of draw() seems to do the trick in matplotlib 1.1. – rumpel Mar 7 '13 at 14:04
@nosklo, did you see? You made it into a python tutorial – Jan Jul 15 '13 at 20:55
@naught101 I think it is time to ask another question. You can use clf() or maybe you want to close() and open another window. – nosklo Oct 17 '13 at 11:16
@noskolo what if I have several figures, how to plot and show Fig1 while continue the background to go on? I'd like this figure being open till the next fig being generated, so at the end I have all figs open and the code is finished. With your current solution, it keeps me waiting to close Fig1 and then the code goes on. Thanks!! – physiker Mar 7 at 10:23

Use the keyword 'block' to override the blocking behavior, e.g.

from matplotlib.pyplot import show, plot


# your code

to continue your code.

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but this will close the plot window immediately, won't keep the plot open. – LWZ Feb 9 '13 at 5:47
Yeah, that's true if you call your script from command line. If you are in the Ipython shell, the window won't be closed. – Jan Feb 11 '13 at 9:36
check @Nico 's answer for a trick that will leave the window open in the general case. – Jan Jan 20 '14 at 8:29

It is better to always check with the library you are using if it supports usage in a non-blocking way.

But if you want a more generic solution, or if there is no other way, you can run anything that blocks in a separated process by using the multprocessing module included in python. Computation will continue:

from multiprocessing import Process
from matplotlib.pyplot import plot, show

def plot_graph(*args):
    for data in args:

p = Process(target=plot_graph, args=([1, 2, 3],))

print 'yay'
print 'computation continues...'
print 'that rocks.'

print 'Now lets wait for the graph be closed to continue...:'

That has the overhead of launching a new process, and is sometimes harder to debug on complex scenarios, so I'd prefer the other solution (using matplotlib's nonblocking API calls)

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Thanks! Since I don't have Python 2.6 yet on my system, I used threading.Thread as a substitute for Process. I observed that subsequent print statements become unbearably slow (third print, I issued KeyboardInterrupt after 1 min wait). Is this an effect of using threading instead of multiprocessing? – meteore Jan 21 '09 at 7:28
@meteore: Yes, threading sucks. You can always get multiprocessing for python <2.6 from here: pyprocessing.berlios.de – nosklo Jan 21 '09 at 10:52
This is absolutely excellent. Do you have an idea why the print statements are not executed when in Emacs (python mode) until the plot window is closed? – meteore Jan 21 '09 at 13:41
In Ubuntu 8.10 (Intrepid) the package (for python <2.6) is called python-processing and you import it with 'import processing' – meteore Jan 23 '09 at 9:16
Didn't you missed the if __name__ == '__main__':? – Wernight Mar 19 '13 at 13:11


from matplotlib.pyplot import *
# other code
# [...]

# Put
# at the very end of your script
# to make sure Python doesn't bail out
# before you finished examining.

The show() documentation says:

In non-interactive mode, display all figures and block until the figures have been closed; in interactive mode it has no effect unless figures were created prior to a change from non-interactive to interactive mode (not recommended). In that case it displays the figures but does not block.

A single experimental keyword argument, block, may be set to True or False to override the blocking behavior described above.

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You may want to read this document in matplotlib's documentation, titled:

Using matplotlib in a python shell

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In my case, I wanted to have several windows pop up as they are being computed. For reference, this is the way:

from matplotlib.pyplot import draw, figure, show
f1, f2 = figure(), figure()
af1 = f1.add_subplot(111)
af2 = f2.add_subplot(111)
print 'continuing computation'

PS. A quite useful guide to matplotlib's OO interface.

share|improve this answer

Well, I had great trouble figuring out the non-blocking commands... But finally, I managed to rework the "Cookbook/Matplotlib/Animations - Animating selected plot elements" example, so it works with threads (and passes data between threads either via global variables, or through a multiprocess Pipe) on Python 2.6.5 on Ubuntu 10.04.

The script can be found here: Animating_selected_plot_elements-thread.py - otherwise pasted below (with fewer comments) for reference:

import sys
import gtk, gobject
import matplotlib
import pylab as p
import numpy as nx 
import time

import threading 

ax = p.subplot(111)
canvas = ax.figure.canvas

# for profiling
tstart = time.time()

# create the initial line
x = nx.arange(0,2*nx.pi,0.01)
line, = ax.plot(x, nx.sin(x), animated=True)

# save the clean slate background -- everything but the animated line
# is drawn and saved in the pixel buffer background
background = canvas.copy_from_bbox(ax.bbox)

# just a plain global var to pass data (from main, to plot update thread)
global mypass

# http://docs.python.org/library/multiprocessing.html#pipes-and-queues
from multiprocessing import Pipe
global pipe1main, pipe1upd
pipe1main, pipe1upd = Pipe()

# the kind of processing we might want to do in a main() function,
# will now be done in a "main thread" - so it can run in
# parallel with gobject.idle_add(update_line)
def threadMainTest():
    global mypass
    global runthread
    global pipe1main

    print "tt"

    interncount = 1

    while runthread: 
        mypass += 1
        if mypass > 100: # start "speeding up" animation, only after 100 counts have passed
            interncount *= 1.03

# main plot / GUI update
def update_line(*args):
    global mypass
    global t0
    global runthread
    global pipe1upd

    if not runthread:
        return False 

    if pipe1upd.poll(): # check first if there is anything to receive
        myinterncount = pipe1upd.recv()

    update_line.cnt = mypass

    # restore the clean slate background
    # update the data
    # just draw the animated artist
    # just redraw the axes rectangle

    if update_line.cnt>=500:
        # print the timing info and quit
        print 'FPS:' , update_line.cnt/(time.time()-tstart)

        print "exiting"

    return True

global runthread

update_line.cnt = 0
mypass = 0



global t0
t0 = threading.Thread(target=threadMainTest)

# start the graphics update thread

print "out" # will never print - show() blocks indefinitely! 

Hope this helps someone,

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On my system show() does not block, although I wanted the script to wait for the user to interact with the graph (and collect data using 'pick_event' callbacks) before continuing.

In order to block execution until the plot window is closed, I used the following:

fig = plt.figure()
ax = fig.add_subplot(1,1,1)

# set processing to continue when window closed
def onclose(event):
fig.canvas.mpl_connect('close_event', onclose)

fig.show() # this call does not block on my system
fig.canvas.start_event_loop_default() # block here until window closed

# continue with further processing, perhaps using result from callbacks

Note, however, that canvas.start_event_loop_default() produced the following warning:

C:\Python26\lib\site-packages\matplotlib\backend_bases.py:2051: DeprecationWarning: Using default event loop until function specific to this GUI is implemented

although the script still ran.

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Thank you! Spyder imports -pylab at startup which is generally useful, but means show() won't block when ioff() - this allows you to fix this behaviour! – lost Nov 26 '12 at 16:24

In many cases it is more convenient til save the image as a .png file on the hard drive. Here is why:


  • You can open it, have a look at it and close it down any time in the process. This is particularly convenient when your application is running for a long time.
  • Nothing pops up and you are not forced to have the windows open. This is particularly convenient when you are dealing with many figures.
  • Your image is accessible for later reference and is not lost when closing the figure window.


  • The only thing I can think of is that you will have to go and finder the folder and open the image yourself.
share|improve this answer
If you're trying to generate a lot of images, I heartily agree. – fantabolous Oct 15 '14 at 1:37
The draw back png's are not interactive :\ – Inverse Apr 26 '15 at 20:13

I also wanted my plots to display run the rest of the code (and then keep on displaying) even if there is an error (I sometimes use plots for debugging). I coded up this little hack so that any plots inside this with statement behave as such.

This is probably a bit too non-standard and not advisable for production code. There is probably a lot of hidden "gotchas" in this code.

from contextlib import contextmanager

def keep_plots_open(keep_show_open_on_exit=True, even_when_error=True):
    To continue excecuting code when plt.show() is called
    and keep the plot on displaying before this contex manager exits
    (even if an error caused the exit).
    import matplotlib.pyplot
    show_original = matplotlib.pyplot.show
    def show_replacement(*args, **kwargs):
        kwargs['block'] = False
        show_original(*args, **kwargs)
    matplotlib.pyplot.show = show_replacement

    pylab_exists = True
        import pylab
    except ImportError: 
        pylab_exists = False
    if pylab_exists:
        pylab.show = show_replacement

    except Exception, err:
        if keep_show_open_on_exit and even_when_error:
            print "*********************************************"
            print "Error early edition while waiting for show():" 
            print "*********************************************"
            import traceback
            print traceback.format_exc()
            print "*********************************************"
        matplotlib.pyplot.show = show_original
        if pylab_exists:
            pylab.show = show_original
    if keep_show_open_on_exit:

# ***********************
# Running example
# ***********************
import pylab as pl
import time
if __name__ == '__main__':
    with keep_plots_open():
        pl.plot([1,2,3], [4,5,6])     
        pl.plot([3,2,1], [4,5,6])

        pl.plot([1,2,3], [4,5,6])

        print '...'
        print '...'
        print '...'

If/when I implement a proper "keep the plots open (even if an error occurs) and allow new plots to be shown", I would want the script to properly exit if no user interference tells it otherwise (for batch execution purposes).

I may use something like a time-out-question "End of script! \nPress p if you want the plotting output to be paused (you have 5 seconds): " from Corner cases for my wait for user input interruption implementation.

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If I understand the question properly, using Ipython (or Ipython QT or Ipython notebook) would allow you to work interactively with the chart while calculations go one in the background. http://ipython.org/

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In my opinion, the answers in this thread provide methods which don't work for every systems and in more complex situations like animations. I suggest to have a look at the answer of MikeTex in the following thread, where a robust method has been found: How to wait until matplotlib animation ends?

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If you are working in console, i.e. IPython you could use plt.show(block=False) as pointed out in the other answers. But if you're lazy you could just type:


Which will be the same.

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