188

I installed Anaconda (with Python 2.7), and installed Tensorflow in an environment called tensorflow. I can import Tensorflow successfully in that environment.

The problem is that Jupyter Notebook does not recognize the new environment I just created. No matter I start Jupyter Notebook from the GUI Navigator or from the command line within the tensorflow env, there is only one kernel in the menu called Python [Root], and Tensorflow cannot be imported. Of course, I clicked on that option multiple times, saved file, re-opened, but these did not help.

Strangely, I can see the two environments when I open the Conda tab on the front page of Jupyter. But when I open the Files tab, and try to new a notebook, I still end up with only one kernel.

I looked at this question: Link Conda environment with Jupyter Notebook But there isn't such a directory as ~/Library/Jupyter/kernels on my computer! This Jupyter directory only has one sub-directory called runtime.

I am really confused. Are Conda environments supposed to become kernels automatically? (I followed https://ipython.readthedocs.io/en/stable/install/kernel_install.html to manually set up the kernels, but was told that ipykernel was not found.)

  • 20
    Run conda install ipykernel in that environment. – Thomas K Sep 21 '16 at 13:31
  • 1
    conda install ipykernel seems to install jupyter in the environment... Am I missing something? – Dror Aug 10 '18 at 9:22
  • presumably ipykernel has jupyter as a dependency? – kevinkayaks Sep 18 '18 at 17:51

10 Answers 10

311

I don't think the other answers are working any more, as conda stopped automatically setting environments up as jupyter kernels. You need to manually add kernels for each environment in the following way:

source activate myenv
python -m ipykernel install --user --name myenv --display-name "Python (myenv)"

As documented here:http://ipython.readthedocs.io/en/stable/install/kernel_install.html#kernels-for-different-environments Also see this issue.

Addendum: You should be able to install the nb_conda_kernels package with conda install nb_conda_kernels to add all environments automatically, see https://github.com/Anaconda-Platform/nb_conda_kernels

  • 14
    Is is possible to somehow flag is at the most up to date solution as of today? – N. CHATURV3DI Sep 28 '17 at 12:14
  • 1
    This worked for me Dec 2017 – Monica Heddneck Dec 14 '17 at 21:07
  • 1
    Only this worked for me! conda install nb_conda - didn't help. Thanks! – Deil Jan 17 '18 at 20:52
  • 2
    Correction to my previous comment: the new env does not show up only the first time. After you deactivate and activate the env again, and then open jupyter, then it shows up properly. – R71 Jun 12 '18 at 6:38
  • 6
    If this isn't working for you try running conda install ipykernel this answer assumes that you already have that installed on your environment. – Ken Myers Aug 23 '18 at 15:09
86

The annoying thing is that in your tensorflow environment, you can run jupyter notebook without installing jupyter in that environment. Just run

(tensorflow) $ conda install jupyter

and the tensorflow environment should now be visible in Jupyter Notebooks started in any of your conda environments as something like Python [conda env:tensorflow].

  • 6
    I had the same problem as Thomas K, and the solution shared by Octavius solved my problem as well. However, there is one catch, if you have Python 3 version of Anaconda, then you would be able to see only your current active environment, and it should have it's own Jupyter. But if you install Python 2 version of Anaconda, it can handle all the environments. – rkmalaiya Feb 13 '17 at 0:39
  • 6
    you can do "conda install nb_conda" as well in Python2 version of anaconda to manage your envs from Jupyter itself. – rkmalaiya Feb 13 '17 at 0:42
  • 7
    @rkmalaiya is correct. If your running Miniconda3 or Anaconda3, perform conda install nb_conda in one of your sourced conda environments (which has jupyter notebook installed). You can then switch kernels/conda envs in the jupyter notebook browser. – Harsha Manjunath Mar 20 '17 at 19:49
  • That's interesting as installing tensorflow either with the tensorflow websites instructions or using conda install tensorflow have both messed up conda on two different machines in two different ways. The first time I've had any problems with jupyter and conda was right after installing tensorflow. – kpierce8 Dec 15 '17 at 17:35
  • 1
    Can report this method works on Sep 2018 with Anaconda 5.2 Python 3.6 – jdr5ca Sep 13 '18 at 7:07
56

@HarshaManjunath's comment mentions that when using Anaconda3 (or Miniconda3) you need to install nb_conda into the conda environment (in addition to jupyter):

(py35) $ conda install nb_conda

Note that this does not currently work with python 3.6 environments. The info for the package does say there is a python 3.6 version, it just does not work yet.

$ conda info nb_conda
...
nb_conda 2.0.0 py36_0
---------------------
file name   : nb_conda-2.0.0-py36_0.tar.bz2
name        : nb_conda
version     : 2.0.0
build string: py36_0
build number: 0
channel     : defaults
size        : 30 KB
arch        : x86_64
date        : 2016-12-20
license     : BSD
md5         : 24d433439f2fdd1d27e49c27688c2589
noarch      : None
platform    : linux
url         : https://repo.continuum.io/pkgs/free/linux-64/nb_conda-2.0.0-py36_0.tar.bz2
dependencies:
    _nb_ext_conf
    nb_conda_kernels
    notebook >=4.2
    python 3.6*

To use python 3.6 in a Jupyter notebook, you can run jupyter from within the python 3.6 environment. You just will not be able to see or switch to other environments from within Jupyter.

$ conda create -n py36_test -y python=3.6 jupyter
$ source activate py36_test
(py36_test) $ which jupyter
/home/schowell/anaconda3/envs/py36_test/bin/jupyter
(py36_test) $ jupyter notebook

Notice that I am running Python 3.6.1 in this notebook: enter image description here

  • Hi Sorry to opening this thread again. However I tried everything as advised here and still dont see tensorflow env in jupyter. I have jupyter installed in the tensorflow env. I have python 3.6.1 installed there. I tried installing conda nb_conda but it says conflict with py3.6. So that didn't get installed rest everything else I have tried and doesn't seem to work. Any advice? – Baktaawar Apr 4 '17 at 21:01
  • ok. I checked again. My issue is that my jupyter when opened up with Python 3 kernel is not able to import any modules. I am not sure why is that. And also it doesn't show other env too – Baktaawar Apr 4 '17 at 21:08
  • @Baktaawar I noticed that same error. I wanted to flesh out this answer but ran into that and didn't have time to solve it. I think this is a bug that should be reported as a git issue. – Steven C. Howell Apr 4 '17 at 21:27
  • Just found a git issue for the same. Apparently nb_conda doesn't work for py36 which means we cannot use py36 env in jupyter without nb_conda? Any hack anyone knows? github.com/ContinuumIO/anaconda-issues/issues/1423 – Baktaawar Apr 4 '17 at 21:34
  • 1
    @Baktaawar, see my updated answer demonstrating how to use python 3.6 in the notebook. You can run a python 3.6 environment, you just have to start jupyter with that environment active. Conda environments can be thought of as self contained python installations. If you install Jupyter into your system python you would likewise only see one python kernel option. nb_conda's purpose is only to "[provide] Conda environment and package access extension from within Jupyter" not make it so you can run Jupyter from your chosen python installation. – Steven C. Howell Apr 5 '17 at 1:06
37

Just run conda install ipykernel in your new environment, only then you will get a kernel with this env. This works even if you have different versions installed in each envs and it doesn't install jupyter notebook again. You can start youe notebook from any env you will be able to see newly added kernels.

  • 9
    This is the best answer as of Jan 2018. Jupyter should auto-discover your kernel on startup if you simply conda install ipykernel inside your conda environment. Worst case, you can use python -m ipykernel install --user --name mykernel to manually generate the kernel, but you wouldn't want to do this if it's already auto-discovered, or it will show up twice in the kernel list. – colllin Jan 5 '18 at 19:17
  • 1
    this will also install Jupiter and all it's dependencies. It works but somehow it's not optimal – Quickbeam2k1 Mar 2 '18 at 10:19
31

I had to run all the commands mentioned in the top 3 answers to get this working:

conda install jupyter
conda install nb_conda
conda install ipykernel
python -m ipykernel install --user --name mykernel
  • 3
    This was what worked for me as well, but I didn't need conda install nb_conda – Ken Myers Aug 23 '18 at 15:36
  • This worked for me! – Siddharth Vashishtha Dec 20 '18 at 4:59
  • 2
    Amazing distillation! – Bao-Tin Hoang Dec 27 '18 at 8:50
  • I just needed the first 3 commands to show the environment kernel as an option when I run jupyter lab inside that specific environment – Igor Fobia Jan 18 at 10:10
  • 2
    Worked for me too. My god this was frustrating to figure out. – Trevor Bye Jan 24 at 19:26
7

We have struggle a lot with this issue, and here's what works for us. If you use the conda-forge channel, it's important to make sure you are using updated packages from conda-forge, even in your Miniconda root environment.

So install Miniconda, and then do:

conda config --add channels conda-forge --force
conda update --all  -y
conda install nb_conda_kernels -y
conda env create -f custom_env.yml -q --force
jupyter notebook

and your custom environment will show up in Jupyter as an available kernel, as long as ipykernel was listed for installation in your custom_env.yml file, like this example:

name: bqplot
channels:
- conda-forge
- defaults
dependencies:
- python>=3.6
- bqplot
- ipykernel

Just to prove it working with a bunch of custom environments, here's a screen grab from Windows:

enter image description here

6

I ran into this same problem where my new conda environment, myenv, couldn't be selected as a kernel or a new notebook. And running jupter notebook from within the env gave the same result.

My solution, and what I learned about how Jupyter notebooks recognizes conda-envs and kernels:

Installing jupyter and ipython to myenv with conda:

conda install -n myenv ipython jupyter

After that, running jupter notebook outside any env listed myenv as a kernel along with my previous environments.

Python [conda env:old]
Python [conda env:myenv]

Running the notebook once I activated the environment:

source activate myenv
jupyter notebook

hides all my other environment-kernels and only shows my language kernels:

python 2
python 3
R
2

This has been so frustrating, My problem was that within a newly constructed conda python36 environment, jupyter refused to load “seaborn” - even though seaborn was installed within that environment. It seemed to be able to import plenty of other files from the same environment — for example numpy and pandas but just not seaborn. I tried many of the fixes suggested here and on other threads without success. Until I realised that Jupyter was not running kernel python from within that environment but running the system python as kernel. Even though a decent looking kernel and kernel.json were already present in the environment. It was only after reading this part of the ipython documentation: https://ipython.readthedocs.io/en/latest/install/kernel_install.html#kernels-for-different-environments and using these commands:

source activate other-env
python -m ipykernel install --user --name other-env --display-name "Python (other-env)"

I was able to get everything going nicely. (I didn’t actually use the —user variable).

One thing I have not yet figured is how to set the default python to be the "Python (other-env)" one. At present an existing .ipynb file opened from the Home screen will use the system python. I have to use the Kernel menu “Change kernel” to select the environment python.

2
    $ conda install nb_conda_kernels

(in the conda environment where you run jupyter notebook) will make all conda envs available automatically. For access to other environments, the respective kernels must be installed. Here's the ref.

1

While @coolscitist's answer worked for me, there is also a way that does not clutter your kernel environment with the complete jupyter package+deps. It is described in the ipython docs and is (I suspect) only necessary if you run the notebook server in a non-base environment.

conda activate name_of_your_kernel_env
conda install ipykernel
python -m ipykernel install --prefix=/home/your_username/.conda/envs/name_of_your_jupyter_server_env --name 'name_of_your_kernel_env'

You can check if it works using

conda activate name_of_your_jupyter_server_env 
jupyter kernelspec list

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