One of the most important improvisations of Python that are my favorites are IPython and IPython Notebook.

I was watching and repeating what's shown in this video and found some issues.

As specified in the video, I use ipython --pylab to launch IPython. And I use ipython notebook --pylab to launch IPython Notebook.

Issues: scatter() would not work in IPython NoteBook (I get a NameError) but works fine in IPython. Same is the case with the function rand(). I guess pylab is loaded along with matplotlib, scipy, numpy, random and other essential libraries.

Please tell me if I am wrong. By the way, both my IPython and IPython NoteBook load from my Anaconda Dist., if that means anything.

Also any resource where I can know what all is loaded when I use --pylab would help.


  • I would recommend against using --pylab. Instead use %matplotlib inline at the begin of your notebook. Afterwards you can import the packages you would like to use without cluttering up your namespace. – cel Jan 11 '15 at 15:44
  • Thank you and I will remember your advice not to use the flag of pylab. And yes %matplotlib inline did work. I now understand more about --pylab. – Anand Surampudi Jan 11 '15 at 16:42
up vote 2 down vote accepted

This is what the pylab flag does:

import numpy
import matplotlib
from matplotlib import pylab, mlab, pyplot
np = numpy
plt = pyplot

from IPython.core.pylabtools import figsize, getfigs

from pylab import *
from numpy import *

That said, it is recommended that you launch the notebook without the flag (just ipython notebook) and then run:

%matplotlib inline

For more details see No Pylab Thanks.

Regarding your scatter problem, you should try the following:

%matplotlib inline
import matplotlib.pyplot as plt

plt.scatter([1,2], [1,2])
  • Thanks a lot @elyase. I got it worked. I will sure work around it without using the flag --pylab. "No PyLab Please" article is really helpful and my understanding has surely grown. – Anand Surampudi Jan 11 '15 at 16:43

Here's another example of why you shouldn't use %pylab inline:

Before %pylab inline: bool(all(i for i in range(3))) => False

After %pylab inline: bool(all(i for i in range(3))) => True

The %pylab inline statement imports numpy.all, which has a different behavior. See help(all) before and after %pylab inline to see. Also, try print(', '.join(sorted(globals().keys()))) before & after to see the vast number of things that get imported.

As mentioned by others, %matplotlib inline avoids this and the subsequent subtle / hard-to-find issues that it causes.

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