In the answers to how to dynamically update a plot in a loop in ipython notebook (within one cell), an example is given of how to dynamically update a plot inside a Jupyter notebook within a Python loop. However, this works by destroying and re-creating the plot on every iteration, and a comment in one of the threads notes that this situation can be improved by using the new-ish %matplotlib nbagg magic, which provides an interactive figure embedded in the notebook, rather than a static image.

However, this wonderful new nbagg feature seems to be completely undocumented as far as I can tell, and I'm unable to find an example of how to use it to dynamically update a plot. Thus my question is, how does one efficiently update an existing plot in a Jupyter/Python notebook, using the nbagg backend? Since dynamically updating plots in matplotlib is a tricky issue in general, a simple working example would be an enormous help. A pointer to any documentation on the topic would also be extremely helpful.

To be clear what I'm asking for: what I want to do is to run some simulation code for a few iterations, then draw a plot of its current state, then run it for a few more iterations, then update the plot to reflect the current state, and so on. So the idea is to draw a plot and then, without any interaction from the user, update the data in the plot without destroying and re-creating the whole thing.

Here is some slightly modified code from the answer to the linked question above, which achieves this by re-drawing the whole figure every time. I want to achieve the same result, but more efficiently using nbagg.

%matplotlib inline
import time
import pylab as pl
from IPython import display
for i in range(10):

Here is an example that updates a plot in a loop. It updates the data in the figure and does not redraw the whole figure every time. It does block execution, though if you're interested in running a finite set of simulations and saving the results somewhere, it may not be a problem for you.

%matplotlib notebook

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

def pltsin(ax, colors=['b']):
    x = np.linspace(0,1,100)
    if ax.lines:
        for line in ax.lines:
            y = np.random.random(size=(100,1))
        for color in colors:
            y = np.random.random(size=(100,1))
            ax.plot(x, y, color)

fig,ax = plt.subplots(1,1)
for f in range(5):
    pltsin(ax, ['b', 'r'])

I put this up on nbviewer here.

There is an IPython Widget version of nbagg that is currently a work in progress at the Matplotlib repository. When that is available, that will probably be the best way to use nbagg.

EDIT: updated to show multiple plots

  • 1
    Great, that seems to work nicely. The lack of interactivity while it's running is not a big problem for me. One slightly odd thing: if I change the while True: to a for loop, when the loop ends I get two static images of the last plot, rather than an interactive nbagg one. Any idea why that is? – Nathaniel Dec 28 '15 at 6:35
  • I changed the while to a for loop and tried it on tmpnb.org, and but I'm not seeing a second image or a loss of interactivity. Shot in the dark, but you could try moving the loop around the call to the function, rather than having the loop in the function. for f in range(10): pltsin(ax) time.sleep(1) – pneumatics Dec 28 '15 at 15:53
  • How does one plot two lines overlaid together on this plot? – jfhc Apr 27 '16 at 13:10
  • 2
    @pneumatics Unfortunately it has some problems with Matplotlib 2.0 on Retina display: in the loop plots are twice smaller that usually. – Alexander Rodin Apr 15 '17 at 21:40
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    It doesn't work for me either (on mac) – Ziofil Oct 5 '18 at 0:33

I'm using jupyter-lab and this works for me (adapt it to your case):

from IPython.display import clear_output
from matplotlib import pyplot as plt
import collections
%matplotlib inline

def live_plot(data_dict, figsize=(7,5), title=''):
    for label,data in data_dict.items():
        plt.plot(data, label=label)
    plt.legend(loc='center left') # the plot evolves to the right

Then in a loop you populate a dictionary and you pass it to live_plot():

data = collections.defaultdict(list)
for i in range(100):

make sure you have a few cells below the plot, otherwise the view snaps in place each time the plot is redrawn.

  • 1
    this creates a new plot each time rather than updating the existing plot – pneumatics Oct 14 '18 at 17:33
  • Correct. I haven't found a better way of having a dynamical plot in jupyter-lab. – Ziofil Oct 15 '18 at 14:14
  • Is there a way to set how long it waits between iterations? rather than just having a 'wait = True' – Ahmad Moussa May 20 at 5:00

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