I'm trying to set a good environnement for doing some scientific stuff with python. To do so, I installed Jupyter & miniconda.

Then I want to be able to have different environnement and use them with Jupyter notebooks. So I created two custom envs with conda : py27 and py35.

> conda env list
# conda environments:
py27                     /Users/***/miniconda3/envs/py27
py35                     /Users/***/miniconda3/envs/py35
root                  *  /Users/***/miniconda3

Then on my notebook I have two kernels python 2 and python 3. Inside a notebook, I get the following with the python3 kernel :

> import sys
> print(sys.executable)

And this with the python2 kernel :

> import sys
> print(sys.executable)
  • How can I set the sys.executable to miniconda env for python2 ?
  • How can I bind a conda env with a notebook kernel ?
  • Is doing source activate py35 has a link with jupyter notebook ?

I think I really missed something.

Thank you everyone.

--- edit

I have multiple jupyter bin :

> where jupyter

I have only one kernel here /usr/local/share/jupyter/kernels/python2. But inside Jupyter, I have two kernels, python2 and python3. Where can I find the other one ?

I modified kernel.json from /usr/local/share/jupyter/kernels/python2 :

 "display_name": "Python 2",
 "language": "python",
 "argv": [

And then :

import sys

So nothing has changed


6 Answers 6


For Anaconda I suggest you a much easier and proper solution; just give a look at the nb_conda_kernels package.

It allows you to "manage your conda environment-based kernels inside the Jupyter Notebook".

Is should be included since Anaconda version 4.1.0, otherwise simply use

conda install nb_conda

Now you should be able to manage all direcly from the Notebook interface.

  • 15
    This package works great! You just install it while an environment is activated. That environment shows up immediately in notebook's new menu selection. So you have to do this with each environment you want added to the list.
    – omasoud
    Mar 19, 2017 at 6:10
  • 1
    Installing nb_conda has the disadvantage of cluttering the conda environment. Is there a workaround? Nov 21, 2017 at 12:56
  • 1
    @Quickbeam2k1 you only need to install it into the environment that you're running the Jupyter notebook from. This allows you to install Jupyter into the root environment and run notebooks in various other environments without having to install Jupyter in each one. Jan 25, 2018 at 16:35
  • Did they change something? Last time I tried this, it wasn't possible due to dependencies of nb_conda kernels with Jupyter. Jan 25, 2018 at 18:42
  • 6
    As I tried today(Feb 1, 2018), after installing nb_conda in root env, all envs appear in the kernel list in the Jupyter notebook file browser, no need to install nb_conda_kernels in other env.
    – Leo
    Feb 1, 2018 at 12:54

Assuming your conda-env is named cenv, it is as simple as :

    $ conda activate cenv
    (cenv)$ conda install ipykernel
    (cenv)$ ipython kernel install --user --name=<any_name_for_kernel>
    (cenv($ conda deactivate

If you restart your jupyter notebook/lab you will be able to see the new kernel available.

PS: If you are using virtualenv etc. the above steps hold good.

  • That is the way I always use it. I am failing to get it to work though, when I have openjdk in the conda environment. JAVA_HOME is usually set when the env is activated. This doesn't happen when I install it as an ipython kernel. Any ideas for this scenario? Jul 22, 2019 at 14:36

Not sure what else did help, but for me crucial was to install nb_conda_kernels in root conda environment. Attempting to install it in specific conda environment did not end up in having Jupyter Notebook be able to use other conda environment other than default one.

conda install -n root nb_conda_kernels

jupyter notebook
  • 1
    Yes. I had to do this as well, although it's kinda counter-intuative, since nb_conda is only supposed to go inside the envs you want as kernels.
    – kett
    Mar 21, 2019 at 17:41

I found the solution. The setup for the kernels where located here ~/Library/Jupyter/kernels/.

Then I modified the kernel.json file and set the right path to python.

Now it's working.


This worked for me:

source activate {environment_name}
python -m ipykernel install --user --name={environment_name};

Incase ipykernel is not installed, use this command:

conda install -c anaconda ipykernel

What has worked for me is: creating virtual environment, install ipykernel, register the virtual environmentin the jupyter kernel and load jupyter notebook:

$ conda create -n testEnv python=3.6
$ conda activate testEnv
(testEnv)$ conda install ipykernel
(testEnv)$ ipython kernel install --user --name=testEnv
(testEnv)$ jupyter notebook

After this, in the jupyter notebook you should be able to find created environment among the list of other kernels

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