# How do I display real-time graphs in a simple UI for a python program?

I have a complicated algorithm that updates 3 histograms that are stored in arrays. I want to debug my algorithm, so I was thinking of showing the arrays as histograms in a user interface. What is the easiest way to do this. (Rapid application development is more important than optimized code.)

I have some experience with Qt (in C++) and some experience with matplotlib.

(I'm going to leave this question open for a day or two because it's hard for me to evaluate the solutions without a lot more experience that I don't have. Hopefully, the community's votes will help choose the best answer.)

• If rapid development is what you're after, I'd recommend Tkinter. It's far more intuitive IMO than PyQt. Commented Nov 9, 2010 at 1:31
• @Neil: There is an example of making an animated graph here: stackoverflow.com/questions/4098131/matplotlib-update-a-plot/… . Perhaps that will help you? Commented Nov 9, 2010 at 1:54
• @unutbu nice +1, why didn't you put as an answer? Commented Nov 9, 2010 at 2:05
• @Bernardo: It's Joe Kington's answer, so he deserves the credit :) Commented Nov 9, 2010 at 2:15
• @unutbu Please add it as he's not here to add it. Anyway, you deserve the credit for reading the question and making the connection. Commented Nov 9, 2010 at 2:24

Edit: Nowadays, it is easier and better to use `matplotlib.animation`:

``````import numpy as np
import matplotlib.pyplot as plt
import matplotlib.animation as animation

def animate(frameno):
x = mu + sigma * np.random.randn(10000)
n, _ = np.histogram(x, bins, normed=True)
for rect, h in zip(patches, n):
rect.set_height(h)
return patches

mu, sigma = 100, 15
fig, ax = plt.subplots()
x = mu + sigma * np.random.randn(10000)
n, bins, patches = plt.hist(x, 50, normed=1, facecolor='green', alpha=0.75)

ani = animation.FuncAnimation(fig, animate, blit=True, interval=10,
repeat=True)
plt.show()
``````

There is an example of making an animated graph here. Building on this example, you might try something like:

``````import numpy as np
import matplotlib.pyplot as plt

plt.ion()
mu, sigma = 100, 15
fig = plt.figure()
x = mu + sigma*np.random.randn(10000)
n, bins, patches = plt.hist(x, 50, normed=1, facecolor='green', alpha=0.75)
for i in range(50):
x = mu + sigma*np.random.randn(10000)
n, bins = np.histogram(x, bins, normed=True)
for rect,h in zip(patches,n):
rect.set_height(h)
fig.canvas.draw()
``````

I can get about 14 frames per second this way, compared to 4 frames per second using the code I first posted. The trick is to avoid asking matplotlib to draw complete figures. Instead call `plt.hist` once, then manipulate the existing `matplotlib.patches.Rectangle`s in `patches` to update the histogram, and call `fig.canvas.draw()` to make the updates visible.

• This works well but the plotting window turns not responding or closes on its own.. any suggestion?
– DevC
Commented Feb 12, 2014 at 12:45
• @DevC: Nowadays, it is better to use `matplotlib.animation`. I've added an example, above. Commented Feb 12, 2014 at 13:05
• Here you can find example animation videos: jakevdp.github.io/blog/2012/08/18/matplotlib-animation-tutorial Commented Sep 10, 2014 at 20:29
• how is this done with real time emotion detection using webcam with opencv python? Commented Oct 2, 2018 at 15:39

For realtime plotting, I recommend trying Chaco, pyqtgraph, or any of the opengl-based libraries like glumpy or visvis. Matplotlib, wonderful as it is, is generally not suitable for this kind of application.

Edit: the developers of glumpy, visvis, galry, and pyqtgraph are all collaborating on a visualization library called vispy. It is still early in development, but promising and already quite powerful.

• The vispy website includes a gallery of several applications and the code corresponding to these applications.
– Mark
Commented Nov 27, 2014 at 18:43

I recommend using matplotlib in interactive mode, if you call `.show` once then it will pop up in its own window, if you don't then it exists only in memory and can be written to a file when you're done with it.

Ouh, now see, when you say real time you mean you want a refresh rate higher than 5 Hz matplotlib won't do the job. I had this problem before, I went for PyQwt that works with PyQt.

• PyQwt is currently considered unmaintained. Hopefully that will change in the future, but beware for now..
– Luke
Commented Feb 9, 2013 at 21:19