I am using IPython with --pylab=inline and would sometimes like to quickly switch to the interactive, zoomable Matplotlib GUI for viewing plots (the one that pops up when you plot something in a terminal Python console). How could I do that? Preferably without leaving or restarting my notebook.

The problem with inline plots in IPy notebook is that they are of a limited resolution and I can't zoom into them to see some smaller parts. With the Maptlotlib GUI that starts from a terminal I can select a rectangle of the graph that I want to zoom into and the axes adjust accordingly. I tried experimenting with

from matplotlib import interactive
interactive(True)

and

interactive(False)

but that didn't do anything. I couldn't find any hint online either.

  • 4
    Another possible solution to your original problem is enabling zooming in your inline plots, which is now possible as i've described here: stackoverflow.com/a/22949003/145823 – yonilevy Apr 8 '14 at 21:59
  • 2
    %matplotlib notebook works – muon Jan 8 '16 at 20:39
up vote 96 down vote accepted

According to the documentation, you should be able to switch back and forth like this:

In [2]: %matplotlib inline 
In [3]: plot(...)

In [4]: %matplotlib qt  # wx, gtk, osx, tk, empty uses default
In [5]: plot(...) 

and that will pop up a regular plot window (a restart on the notebook may be necessary).

I hope this helps.

  • 2
    It's %pylab qt. Not working in OS X. Maybe in Ubuntu it will help. – metakermit Jan 11 '13 at 14:44
  • 11
    Unfortunately, you can't switch to and fro. If you try to switch after having started with pylab=inline or pylab=qt, you get: This call to matplotlib.use() has no effect because the the backend has already been chosen; matplotlib.use() must be called before pylab, matplotlib.pyplot, or matplotlib.backends is imported for the first time. – Charl Botha Apr 17 '13 at 15:52
  • 3
    I downvoted this because it didn't work for me, and still doesn't, but apparently this is issue 1927 and it should have been fixed with merge 2179. @yarox, if you edit your answer to incorporate this info I'll undo my downvote. – askewchan Jun 20 '13 at 21:13
  • 2
    works fine here on OSX as well, using ipython v1.1.0 and MPL 1.3.0 – K.-Michael Aye Oct 18 '13 at 17:57
  • 4
    Not working on win 7 – Sibbs Gambling Nov 15 '13 at 1:40

If all you want to do is to switch from inline plots to interactive and back (so that you can pan/zoom), it is better to use %matplotlib magic.

#interactive plotting in separate window
%matplotlib qt 

and back to html

#normal charts inside notebooks
%matplotlib inline 

%pylab magic imports a bunch of other things and may even result in a conflict. It does "from pylab import *".

You also can use new notebook backend (added in matplotlib 1.4):

#interactive charts inside notebooks, matplotlib 1.4+
%matplotlib notebook 

If you want to have more interactivity in your charts, you can look at mpld3 and bokeh. mpld3 is great, if you don't have ton's of data points (e.g. <5k+) and you want to use normal matplotlib syntax, but more interactivity, compared to %matplotlib notebook . Bokeh can handle lots of data, but you need to learn it's syntax as it is a separate library.

Also you can check out pivottablejs (pip install pivottablejs)

from pivottablejs import pivot_ui
pivot_ui(df)

However cool interactive data exploration is, it can totally mess with reproducibility. It has happened to me, so I try to use it only at the very early stage and switch to pure inline matplotlib/seaborn, once I got the feel for the data.

Starting with matplotlib 1.4.0 there is now an an interactive backend for use in the notebook

%matplotlib notebook

There are a few version of IPython which do not have that alias registered, the fall back is:

%matplotlib nbagg

If that does not work update you IPython.

To play with this, goto tmpnb.org

and paste

%matplotlib notebook

import pandas as pd
import numpy as np
import matplotlib

from matplotlib import pyplot as plt
import seaborn as sns

ts = pd.Series(np.random.randn(1000), index=pd.date_range('1/1/2000', periods=1000))
ts = ts.cumsum()

df = pd.DataFrame(np.random.randn(1000, 4), index=ts.index,
                  columns=['A', 'B', 'C', 'D'])
df = df.cumsum()
df.plot(); plt.legend(loc='best')    

into a code cell (or just modify the existing python demo notebook)

A better solution for your problem might be the Charts library. It enables you to use the excellent Highcharts javascript library to make beautiful and interactive plots. Highcharts uses the HTML svg tag so all your charts are actually vector images.

Some features:

  • Vector plots which you can download in .png, .jpg and .svg formats so you will never run into resolution problems
  • Interactive charts (zoom, slide, hover over points, ...)
  • Usable in an IPython notebook
  • Explore hundreds of data structures at the same time using the asynchronous plotting capabilities.

Disclaimer: I'm the developer of the library

  • A pretty nice library! I'll be sure to try it out :) – metakermit May 22 '15 at 13:10
  • Thanks! Let me know what you think on github and submit an issue if you experience any problems :) – arnoutaertgeerts May 22 '15 at 13:11
  • While this answer is definitely relevant, I would not necessarily call it "a better solution". That is what caused a downvote in the past, most likely. – volodymyr Nov 4 '15 at 15:10

I'm using ipython in "jupyter QTConsole" from Anaconda at www.continuum.io/downloads on 5/28/20117.

Here's an example to flip back and forth between a separate window and an inline plot mode using ipython magic.

>>> import matplotlib.pyplot as plt

# data to plot
>>> x1 = [x for x in range(20)]

# Show in separate window
>>> %matplotlib
>>> plt.plot(x1)
>>> plt.close() 

# Show in console window
>>> %matplotlib inline
>>> plt.plot(x1)
>>> plt.close() 

# Show in separate window
>>> %matplotlib
>>> plt.plot(x1)
>>> plt.close() 

# Show in console window
>>> %matplotlib inline
>>> plt.plot(x1)
>>> plt.close() 

# Note: the %matplotlib magic above causes:
#      plt.plot(...) 
# to implicitly include a:
#      plt.show()
# after the command.
#
# (Not sure how to turn off this behavior
# so that it matches behavior without using %matplotlib magic...)
# but its ok for interactive work...
  • 1
    When I try to use %matplotlib I get an error which ends with ImportError: No module named 'PyQt4' – user3731622 Nov 16 '17 at 1:52
  • I get the exact same problem as user3731622. What can be done? This is for most of the answers on this page – mkheifetz Mar 6 at 19:28
  • @mkheifetz @user3731622 You may need to install the package: sudo apt-get install python-pyqt5 or sudo apt-get install python-pyqt5 – ttb Aug 28 at 15:27

Restart kernel and clear output (if not starting with new notebook), then run

%matplotlib tk

For more info go to Plotting with matplotlib

Your Answer

 

By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

Not the answer you're looking for? Browse other questions tagged or ask your own question.