107

Environment: Python 2.7, matplotlib 1.3, IPython notebook 1.1, linux, chrome. The code is in one single input cell, using --pylab=inline

I want to use IPython notebook and pandas to consume a stream and dynamically update a plot every 5 seconds.

When I just use print statement to print the data in text format, it works perfectly fine: the output cell just keeps printing data and adding new rows. But when I try to plot the data (and then update it in a loop), the plot never show up in the output cell. But if I remove the loop, just plot it once. It works fine.

Then I did some simple test:

i = pd.date_range('2013-1-1',periods=100,freq='s')
while True:
    plot(pd.Series(data=np.random.randn(100), index=i))
    #pd.Series(data=np.random.randn(100), index=i).plot() also tried this one
    time.sleep(5)

The output will not show anything until I manually interrupt the process (ctrl+m+i). And after I interrupt it, the plot shows correctly as multiple overlapped lines. But what I really want is a plot that shows up and gets updated every 5 seconds (or whenever the plot() function gets called, just like what print statement outputs I mentioned above, which works well). Only showing the final chart after the cell is completely done is NOT what i want.

I even tried to explicitly add draw() function after each plot(), etc. None of them works. Wonder how to dynamically update a plot by a for/while loop within one cell in IPython notebook.

132

use IPython.display module:

%matplotlib inline
import time
import pylab as pl
from IPython import display
for i in range(10):
    pl.plot(pl.randn(100))
    display.clear_output(wait=True)
    display.display(pl.gcf())
    time.sleep(1.0)
6
  • 7
    this is not smooth option, the plot is recreated from scratch with cell going up and down in between
    – denfromufa
    Sep 25 '14 at 21:11
  • 4
    Adding clear_output(wait=True) solves this problem. See wabu's answer below.
    – ahwillia
    Oct 3 '14 at 1:08
  • 3
    You can do better these days with %matplotlib nbagg which gives you a live figure to play with.
    – tacaswell
    Aug 18 '15 at 0:40
  • @tcaswell I've added a new question asking how one uses nbagg to achieve this. (Pinging you in case you're interested in answering it.) stackoverflow.com/questions/34486642/…
    – Nathaniel
    Dec 28 '15 at 1:24
  • 3
    this works but also destroys anything else in the cell like the printed measures. Is there a way really just updating the plot and keeping everything else in place?
    – KIC
    Dec 26 '18 at 19:14
36

A couple of improvement's on HYRY's answer:

  • call display before clear_output so that you end up with one plot, rather than two, when the cell is interrupted.
  • catch the KeyboardInterrupt, so that the cell output isn't littered with the traceback.
import matplotlib.pylab as plt
import pandas as pd
import numpy as np
import time
from IPython import display
%matplotlib inline

i = pd.date_range('2013-1-1',periods=100,freq='s')

while True:
    try:
        plt.plot(pd.Series(data=np.random.randn(100), index=i))
        display.display(plt.gcf())
        display.clear_output(wait=True)
        time.sleep(1)
    except KeyboardInterrupt:
        break
5
  • 8
    Indeed, display.display(gcf()) should go BEFORE display.clear_output(wait=True)
    – herrlich10
    Jul 31 '15 at 14:28
  • Thanks, @csta. Added it. Nov 15 '15 at 14:00
  • 1
    @herrlich10 Why should display be called before clear_output? Shouldn't you first clear the output and then display the new data, instead of doing it the other way around? Mar 16 '18 at 11:30
  • 1
    I am still getting a screen flicker with the graph updates, however it's not all the time. Is there a workaround to this? Sep 6 '19 at 16:26
  • If you are also trying to print text at the beginning of the loop, I find that this causes the graph to disappear, so that it is only visible for a split second. I do not have this problem when the display() call is placed after clear_output().
    – Neil Traft
    Feb 21 at 3:26
33

You can further improve this by adding wait=True to clear_output:

display.clear_output(wait=True)
display.display(pl.gcf())
2
  • 1
    +1. This is very important. I think HYRY's answer should be updated with this info.
    – ahwillia
    Oct 2 '14 at 18:04
  • 5
    This is good, but has the annoying side effect of clearing the print output as well.
    – Peter
    Feb 18 '15 at 10:23
5

I tried many methods, but I found this as the simplest and the easiest way -> to add clear_output(wait=True), for example,

from IPython.display import clear_output

for i in range(n_iterations):
     clear_output(wait=True)
     x = some value
     y = some value
     plt.plot(x, y, '-r')
     plt.show()

This overwrites on the same plot, and gives an illusion of plot animation

4

Adding label to the other solutions posted here will keep adding new labels in every loop. To deal with that, clear the plot using clf.

For example:

for t in range(100):
   if t % refresh_rate == 0:
     
     plt.clf()
     plt.plot(history['val_loss'], 'r-', lw=2, label='val')
     plt.plot(history['training_loss'], 'b-', lw=1, label='training')
     plt.legend()
     display.clear_output(wait=True)
     display.display(plt.gcf())
1
  • 4
    Thanks plt.clf() works. However is there anyway to get rid of the flicker from the updates? Sep 6 '19 at 16:40
2

Try to add show() or gcf().show() after the plot() function. These will force the current figure to update (gcf() returns a reference for the current figure).

2
  • 2
    thanks. gcf().show() also works. Need to add the clear_output() suggested by HYRY to show stuff on the same fig Jan 26 '14 at 21:14
  • Is this in addition to "display.display(pl.gcf())"? Sep 6 '19 at 16:28
1

You can do it like this. It accepts x,y as list and output a scatter plot plus a linear trend on the same plot.

from IPython.display import clear_output
from matplotlib import pyplot as plt
%matplotlib inline
    
def live_plot(x, y, figsize=(7,5), title=''):
    clear_output(wait=True)
    plt.figure(figsize=figsize)
    plt.xlim(0, training_steps)
    plt.ylim(0, 100)
    x= [float(i) for i in x]
    y= [float(i) for i in y]
    
    if len(x) > 1:
        plt.scatter(x,y, label='axis y', color='k') 
        m, b = np.polyfit(x, y, 1)
        plt.plot(x, [x * m for x in x] + b)

    plt.title(title)
    plt.grid(True)
    plt.xlabel('axis x')
    plt.ylabel('axis y')
    plt.show();

you just need to call live_plot(x, y) inside a loop. Here's how it looks: enter image description here

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