What exactly is the use of %matplotlib inline
?
10 Answers
%matplotlib
is a magic function in IPython. I'll quote the relevant documentation here for you to read for convenience:
IPython has a set of predefined ‘magic functions’ that you can call with a command line style syntax. There are two kinds of magics, line-oriented and cell-oriented. Line magics are prefixed with the % character and work much like OS command-line calls: they get as an argument the rest of the line, where arguments are passed without parentheses or quotes. Lines magics can return results and can be used in the right hand side of an assignment. Cell magics are prefixed with a double %%, and they are functions that get as an argument not only the rest of the line, but also the lines below it in a separate argument.
%matplotlib inline
sets the backend of matplotlib to the 'inline' backend:
With this backend, the output of plotting commands is displayed inline within frontends like the Jupyter notebook, directly below the code cell that produced it. The resulting plots will then also be stored in the notebook document.
When using the 'inline' backend, your matplotlib graphs will be included in your notebook, next to the code. It may be worth also reading How to make IPython notebook matplotlib plot inline for reference on how to use it in your code.
If you want interactivity as well, you can use the nbagg backend with %matplotlib notebook
(in IPython 3.x), as described here.
Provided you are running IPython, the %matplotlib inline
will make your plot outputs appear and be stored within the notebook.
According to documentation
To set this up, before any plotting or import of
matplotlib
is performed you must execute the%matplotlib magic command
. This performs the necessary behind-the-scenes setup for IPython to work correctly hand in hand withmatplotlib
; it does not, however, actually execute any Python import commands, that is, no names are added to the namespace.A particularly interesting backend, provided by IPython, is the
inline
backend. This is available only for the Jupyter Notebook and the Jupyter QtConsole. It can be invoked as follows:
%matplotlib inline
With this backend, the output of plotting commands is displayed inline within frontends like the Jupyter notebook, directly below the code cell that produced it. The resulting plots will then also be stored in the notebook document.
If you want to add plots to your Jupyter notebook, then %matplotlib inline
is a standard solution. And there are other magic commands will use matplotlib
interactively within Jupyter.
%matplotlib
: any plt
plot command will now cause a figure window to open, and further commands can be run to update the plot. Some changes will not draw automatically, to force an update, use plt.draw()
%matplotlib notebook
: will lead to interactive plots embedded within the notebook, you can zoom and resize the figure
%matplotlib inline
: only draw static images in the notebook
TL;DR
%matplotlib inline
- Displays output inline
IPython kernel has the ability to display plots by executing code. The IPython kernel is designed to work seamlessly with the matplotlib plotting library to provide this functionality.
%matplotlib
is a magic command which performs the necessary behind-the-scenes setup for IPython to work correctly hand-in-hand withmatplotlib
; it does not execute any Python import commands, that is, no names are added to the namespace.
Display output in separate window
%matplotlib
Display output inline
(available only for the Jupyter Notebook and the Jupyter QtConsole)
%matplotlib inline
Display with interactive backends
(valid values 'GTK3Agg', 'GTK3Cairo', 'MacOSX', 'nbAgg', 'Qt4Agg', 'Qt4Cairo', 'Qt5Agg', 'Qt5Cairo', 'TkAgg', 'TkCairo', 'WebAgg', 'WX', 'WXAgg', 'WXCairo', 'agg', 'cairo', 'pdf', 'pgf', 'ps', 'svg', 'template'
)
%matplotlib gtk
Example - GTK3Agg - An Agg rendering to a GTK 3.x canvas (requires PyGObject and pycairo or cairocffi).
More details about matplotlib interactive backends: here
Starting with
IPython 5.0
andmatplotlib 2.0
you can avoid the use of IPython’s specific magic and usematplotlib.pyplot.ion()
/matplotlib.pyplot.ioff()
which have the advantages of working outside of IPython as well.
If you don't know what backend is , you can read this: https://matplotlib.org/tutorials/introductory/usage.html#backends
Some people use matplotlib interactively from the python shell and have plotting windows pop up when they type commands. Some people run Jupyter notebooks and draw inline plots for quick data analysis. Others embed matplotlib into graphical user interfaces like wxpython or pygtk to build rich applications. Some people use matplotlib in batch scripts to generate postscript images from numerical simulations, and still others run web application servers to dynamically serve up graphs. To support all of these use cases, matplotlib can target different outputs, and each of these capabilities is called a backend; the "frontend" is the user facing code, i.e., the plotting code, whereas the "backend" does all the hard work behind-the-scenes to make the figure.
So when you type %matplotlib inline , it activates the inline backend. As discussed in the previous posts :
With this backend, the output of plotting commands is displayed inline within frontends like the Jupyter notebook, directly below the code cell that produced it. The resulting plots will then also be stored in the notebook document.
inline
) by entering:%matplotlib --list
. – Luis