100

I have been playing with Numpy and matplotlib in the last few days. I am having problems trying to make matplotlib plot a function without blocking execution. I know there are already many threads here on SO asking similar questions, and I 've googled quite a lot but haven't managed to make this work.

I have tried using show(block=False) as some people suggest, but all I get is a frozen window. If I simply call show(), the result is plotted properly but execution is blocked until the window is closed. From other threads I 've read, I suspect that whether show(block=False) works or not depends on the backend. Is this correct? My back end is Qt4Agg. Could you have a look at my code and tell me if you see something wrong? Here is my code. Thanks for any help.

from math import *
from matplotlib import pyplot as plt
print plt.get_backend()



def main():
    x = range(-50, 51, 1)
    for pow in range(1,5):   # plot x^1, x^2, ..., x^4

        y = [Xi**pow for Xi in x]
        print y

        plt.plot(x, y)
        plt.draw()
        #plt.show()             #this plots correctly, but blocks execution.
        plt.show(block=False)   #this creates an empty frozen window.
        _ = raw_input("Press [enter] to continue.")


if __name__ == '__main__':
    main()

PS. I forgot to say that I would like to update the existing window every time I plot something, instead of creating a new one.

  • 1
    have you try matplotlib interactive mode with plt.ion() before plt.show()? It should then be non-blocking as each plot is spawned into a child thread. – Anzel Feb 1 '15 at 23:41
  • @Anzel I just tried it, but it seems to make no difference. – opetroch Feb 1 '15 at 23:52
  • 3
    How are you running your script? If I run your example code from the terminal/command prompt, it seems to work fine, but I think I've had trouble in the past when trying to do things like this from the IPython QtConsole or IDEs. – Marius Feb 2 '15 at 0:10
  • 1
    @Marius Aha!! You are right. Indeed I am running it from the console of my IDE (PyCharm). When running it from the cmd prompt, plt.show(block=False), works fine! Will I be asking too much if I ask you if you have found any idea/solution to that? Thanks a lot! – opetroch Feb 2 '15 at 0:19
  • I don't really know sorry. I don't really understand the details of how matplotlib interacts with the console, so I generally just switch to running from the command prompt if I need to do this stuff with matplotlib. – Marius Feb 2 '15 at 0:29
132

I spent a long time looking for solutions, and found this answer.

It looks like, in order to get what you (and I) want, you need the combination of plt.ion(), plt.show() (not with blocking=False, that's deprecated) and, most importantly, plt.pause(.001) (or whatever time you want). The pause is needed because the GUI events happen while the main code is sleeping, including drawing. It's possible that this is implemented by picking up time from a sleeping thread, so maybe IDEs mess with that—I don't know.

Here's an implementation that works for me on python 3.5:

import numpy as np
from matplotlib import pyplot as plt

def main():
    plt.axis([-50,50,0,10000])
    plt.ion()
    plt.show()

    x = np.arange(-50, 51)
    for pow in range(1,5):   # plot x^1, x^2, ..., x^4
        y = [Xi**pow for Xi in x]
        plt.plot(x, y)
        plt.draw()
        plt.pause(0.001)
        input("Press [enter] to continue.")

if __name__ == '__main__':
    main()
  • 1
    Your answer helped me a lot in solving a similar issue I was having. Previously, I had plt.draw followed by plt.show(block = False) but then it stopped working: Figure not responding, closing it crashed iPython. My solution was removing every instance of plt.draw() and replacing it with plt.pause(0.001). Instead of having it followed by plt.show(block = False) like plt.draw was before, it was preceded by plt.ion() and plt.show(). I now have a MatplotlibDeprecationWarning but it let me plot my figures, so I'm happy with this solution. – blue_chip Mar 8 '16 at 6:06
  • 3
    Note that in python 2.7, you need to use raw_input not input. See here – Chris Aug 17 '16 at 23:11
  • Really useful workaround when the reactive "animate" approach is not possible! Anyone know how to get rid of the deprecation warning? – Frederic Fortier Sep 5 '17 at 0:22
  • Please can someone tell me why i get a freezen command prompt when I try to add plt.ion before plt.show? – Gabriel Augusto Nov 23 '17 at 17:54
  • @GabrielAugusto I'm not sure what could cause that, and I'm not sure quite what you mean. I just tested this example in Python 3.6 and it still works. If you used the same pattern and it freezes, there might be something wrong with your installation. You should check if normal plotting works first. If you tried something different, there's not a lot to do about it in the comments. In either case, you might consider asking a separate question. – krs013 Nov 27 '17 at 23:23
17

A simple trick that works for me is the following:

  1. Use the block = False argument inside show: plt.show(block = False)
  2. Use another plt.show() at the end of the .py script.

Example:

import matplotlib.pyplot as plt

plt.imshow(add_something)
plt.xlabel("x")
plt.ylabel("y")

plt.show(block=False)

#more code here (e.g. do calculations and use print to see them on the screen

plt.show()

Note: plt.show() is the last line of my script.

  • 4
    This produces (for me, on Linux, Anaconda, Python 2.7, default backend) a blank window which remains blank until the very end of execution, when it finally gets filled in. Not useful for updating a plot in the midst of execution. :-( – sh37211 May 4 '17 at 3:05
  • @sh37211 Not sure what your goal. In some cases that you try to plot something but after the plot command you have other commands, then this is useful since it allows you to plot and get the other commands executed. See this post for more on this: stackoverflow.com/questions/458209/…. If you want to update a plot then it should be another way. – serafeim May 4 '17 at 13:48
13

You can avoid blocking execution by writing the plot to an array, then displaying the array in a different thread. Here is an example of generating and displaying plots simultaneously using pf.screen from pyformulas 0.2.8:

import pyformulas as pf
import matplotlib.pyplot as plt
import numpy as np
import time

fig = plt.figure()

canvas = np.zeros((480,640))
screen = pf.screen(canvas, 'Sinusoid')

start = time.time()
while True:
    now = time.time() - start

    x = np.linspace(now-2, now, 100)
    y = np.sin(2*np.pi*x) + np.sin(3*np.pi*x)
    plt.xlim(now-2,now+1)
    plt.ylim(-3,3)
    plt.plot(x, y, c='black')

    # If we haven't already shown or saved the plot, then we need to draw the figure first...
    fig.canvas.draw()

    image = np.fromstring(fig.canvas.tostring_rgb(), dtype=np.uint8, sep='')
    image = image.reshape(fig.canvas.get_width_height()[::-1] + (3,))

    screen.update(image)

#screen.close()

Result:

Sine animation

Disclaimer: I'm the maintainer for pyformulas.

Reference: Matplotlib: save plot to numpy array

3

A lot of these answers are super inflated and from what I can find, the answer isn't all that difficult to understand.

You can use plt.ion() if you want, but I found using plt.draw() just as effective

For my specific project I'm plotting images, but you can use plot() or scatter() or whatever instead of figimage(), it doesn't matter.

plt.figimage(image_to_show)
plt.draw()
plt.pause(0.001)

Or

fig = plt.figure()
...
fig.figimage(image_to_show)
fig.canvas.draw()
plt.pause(0.001)

If you're using an actual figure.
I used @krs013, and @Default Picture's answers to figure this out
Hopefully this saves someone from having launch every single figure on a separate thread, or from having to read these novels just to figure this out

1

Live Plotting

import numpy as np
import matplotlib.pyplot as plt

x = np.linspace(0, 2 * np.pi, 100)
# plt.axis([x[0], x[-1], -1, 1])      # disable autoscaling
for point in x:
    plt.plot(point, np.sin(2 * point), '.', color='b')
    plt.draw()
    plt.pause(0.01)
# plt.clf()                           # clear the current figure

if the amount of data is too much you can lower the update rate with a simple counter

cnt += 1
if (cnt == 10):       # update plot each 10 points
    plt.draw()
    plt.pause(0.01)
    cnt = 0

Holding Plot after Program Exit

This was my actual problem that couldn't find satisfactory answer for, I wanted plotting that didn't close after the script was finished (like MATLAB),

If you think about it, after the script is finished, the program is terminated and there is no logical way to hold the plot this way, so there are two options

  1. block the script from exiting (that's plt.show() and not what I want)
  2. run the plot on a separate thread (too complicated)

this wasn't satisfactory for me so I found another solution outside of the box

SaveToFile and View in external viewer

For this the saving and viewing should be both fast and the viewer shouldn't lock the file and should update the content automatically

Selecting Format for Saving

vector based formats are both small and fast

  • SVG is good but coudn't find good viewer for it except the web browser which by default needs manual refresh
  • PDF can support vector formats and there are lightweight viewers which support live updating

Fast Lightweight Viewer with Live Update

For PDF there are several good options

  • On Windows I use SumatraPDF which is free, fast and light (only uses 1.8MB RAM for my case)

  • On Linux there are several options such as Evince (GNOME) and Ocular (KDE)

Sample Code & Results

Sample code for outputing plot to a file

import numpy as np
import matplotlib.pyplot as plt

x = np.linspace(0, 2 * np.pi, 100)
y = np.sin(2 * x)
plt.plot(x, y)
plt.savefig("fig.pdf")

after first run, open the output file in one of the viewers mentioned above and enjoy.

Here is a screenshot of VSCode alongside SumatraPDF, also the process is fast enough to get semi-live update rate (I can get near 10Hz on my setup just use time.sleep() between intervals) pyPlot,Non-Blocking

1

Iggy's answer was the easiest for me to follow, but I got the following error when doing a subsequent subplot command that was not there when I was just doing show:

MatplotlibDeprecationWarning: Adding an axes using the same arguments as a previous axes currently reuses the earlier instance. In a future version, a new instance will always be created and returned. Meanwhile, this warning can be suppressed, and the future behavior ensured, by passing a unique label to each axes instance.

In order to avoid this error, it helps to close (or clear) the plot after the user hits enter.

Here's the code that worked for me:

def plt_show():
    '''Text-blocking version of plt.show()
    Use this instead of plt.show()'''
    plt.draw()
    plt.pause(0.001)
    input("Press enter to continue...")
    plt.close()
0

The Python package drawnow allows to update a plot in real time in a non blocking way.
It also works with a webcam and OpenCV for example to plot measures for each frame.
See the original post.

protected by Sheldore Mar 21 at 2:04

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