I would like to execute a long running Python script from within a Jupyter notebook so that I can hack on the data structures generated mid-run.

The script has many dependencies and command line arguments and is executed with a specific virtualenv. Is it possible to interactively run a Python script inside a notebook from a specified virtualenv (different to that of the Jupyter installation)?


  • no, I don't think so. – cel Nov 3 '15 at 11:29
  • 1
    Another way to solve your problem is to use an IDE like PyCharm. Just choose which virtualenv you want to use for your project and add a few breakpoints. When the execution pauses at you breakpoints, you will be able to run python code interactively. You could also take a look at pdb (docs.python.org/3.5/library/pdb.html) – elgehelge Oct 28 '16 at 12:37

Here's what worked for me (non conda python): (MacOS, brew version of python. if you are working with system python, you may (will) need prepend each command with sudo)

first activate virtualenv

if starting afresh then, e.g., you could use virtualenvwrapper

$pip install virtualenvwrapper
$mkvirtualenv -p python2 py2env 
$workon py2env

# This will activate virtualenv


# Then install jupyter within the active virtualenv
(py2env)$ pip install jupyter

# jupyter comes with ipykernel, but somehow you manage to get an error due to ipykernel, then for reference ipykernel package can be installed using:
(py2env)$ pip install ipykernel

Next, set up the kernel

(py2env)$ python -m ipykernel install --user --name py2env --display-name "Python2 (py2env)"

then start jupyter notebook (the venv need not be activated for this step)

(py2env)$ jupyter notebook
# or
#$ jupyter notebook

in the jupyter notebook dropdown menu: Kernel >> Change Kernel >> <list of kernels> you should see Python2 (py2env) kernel

This also makes it easy to identify python version of kernel, and maintain either side by side.

here is the link to detail docs http://ipython.readthedocs.io/en/stable/install/kernel_install.html

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  • 2
    Good stuff here, thanks. I wanted to mention that the first time I did the ipykernel install step, it didn't take. Not sure what happened (other than nothing). The second time I ran it, I got the message that the kernel had been created. – Mike Lane Feb 28 '17 at 6:40

A bit more simple solution to get notebook kernels available in other notebooks.

I'm using Linux + virtualenv + virtualenvwrapper. If you are using different setup, change some commands to the appropriate ones, but you should get the idea.

mkvirtualenv jupyter2
workon jupyter2
(jupyter2) pip install jupyter
(jupyter2) ipython kernel install --name "jupyter2_Python_2" --user

last command creates ~/.local/share/jupyter/kernels/jupyter2\ python\ 2/ directory

same stuff for 3

mkvirtualenv -p /usr/bin/python3 jupyter3
// this uses python3 as default python in virtualenv
workon jupyter3
(jupyter3) pip install jupyter
(jupyter3) ipython kernel install --name "jupyter3_Python_3" --user

When done you should see both kernels, no matter what env are you using to start jupyter. You can delete links to kernels directly in ~/.local/share/jupyter/kernels/. To specify location provide options to ipython kernel install (--help) or just copy directories from ~/.local/share/jupyter/kernels/ to ~/envs/jupyter3/share/jupyter if you want to run multiple kerenels from one notebook only.

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I found this link to be very useful:


Make sure that you pip install jupyter into your virtualenv. In case the link goes away later, here's the gist:

You need to create a new kernel. You specify your kernel with a JSON file. Your kernels are usually located at ~/.ipython/kernels. Create a directory with the name of your virtualenv and create your kernel.json file in it. For instance, one of my paths looks like ~./ipython/kernels/datamanip/kernel.json

Here's what my kernel.json file looks like:

  "display_name": "Data Manipulation (Python2)",
  "language": "python",
  "codemirror_mode": {
    "version": 3,
  "argv": [
    "from IPython.kernel.zmq.kernelapp import main; main()",

I am not certain exactly what the codemirror_mode object is doing, but it doesn't seem to do any harm.

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  • Not sure if you are still on SO and active. Any chance you can provide the gist link you mentioned? – David Feb 4 '17 at 20:02
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    I had to manually change the path for the python binary to the one for my newly-created virtual environment. – ionox0 Feb 24 '17 at 15:10

It is really simple, based on the documentation

You can use a virtualenv for your IPython notebook. Follow the following steps, actually no need for step one, just make sure you activated your virtualenv via source ~/path-to-your-virtualenv/

  1. Install the ipython kernel module into your virtualenv

    workon my-virtualenv-name # activate your virtualenv, if you haven't already pip install ipykernel

  2. (The most important step) Now run the kernel "self-install" script:

    python -m ipykernel install --user --name=my-virtualenv-name Replacing the --name parameter as appropriate.

  3. You should now be able to see your kernel in the IPython notebook menu: Kernel -> Change kernel and be able to switch to it (you may need to refresh the page before it appears in the list). IPython will remember which kernel to use for that notebook from then on.

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  • For step 1, do you pip install ipython kernel using the pip in your scripts folder of your virtual env? For step 2, do you run the scripts using the python.exe found in the script folder of your virtual env? For step 3, from which directory must you run your notebook? – Johnny Apple Oct 6 '17 at 4:01

@singer's solution didn't work for me. Here's what worked:

. /path/to/virtualenv/.venv/bin/activate
python -m ipykernel install --user --name .venv --display-name .venv

Reference: Kernels for different environments (official docs)

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  • also at ipython.readthedocs ipython.readthedocs.io/en/stable/install/kernel_install.html .. for up-to-date reference – muon Feb 10 '17 at 21:47
  • Yeah that's an up-to-date reference, but if the text changes then my reference will be invalid. So that's why I gave a git link. – A T Feb 11 '17 at 6:00
  • sorry didn't check your link :( – muon Feb 11 '17 at 21:12

the nb_canda is useful:

conda install nb_conda

so,you can create and select your own python kernel with conda virtual environment,and manage the packages in venv


List item


conda environment manager Conda tab in jupyter notebook allows you to manage your environments right from within your notebook.

Change Kernel You can also select which kernel to run a notebook in by using the Change kernel option in Kernel menu

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