This is fairly straightforward to fix, but it involves understanding three different concepts:
- How Unix/Linux/OSX use
$PATH to find executables (
%PATH% in Windows)
- How Python installs and finds packages
- How Jupyter knows what Python to use
For the sake of completeness, I'll try to do a quick ELI5 on each of these, so you'll know how to solve this issue in the best way for you.
1. Unix/Linux/OSX $PATH
When you type any command at the prompt (say,
python), the system has a well-defined sequence of places that it looks for the executable. This sequence is defined in a system variable called
PATH, which the user can specify. To see your
PATH, you can type
The result is a list of directories on your computer, which will be searched in order for the desired executable. From your output above, I assume that it contains this:
$ echo $PATH
Probably with some other paths interspersed as well. What this means is that when you type
python, the system will go to
/usr/bin/python. When you type
ipython, in this example, the system will go to
/Library/Frameworks/Python.framework/Versions/3.5/bin/ipython, because there is no
It's always important to know what executable you're using, particularly when you have so many installations of the same program on your system. Changing the path is not too complicated; see e.g. How to permanently set $PATH on Linux?.
Windows - How to set environment variables in Windows 10
2. How Python finds packages
When you run python and do something like
import matplotlib, Python has to play a similar game to find the package you have in mind. Similar to
$PATH in unix, Python has
sys.path that specifies these:
>>> import sys
Some important things: by default, the first entry in
sys.path is the current directory. Also, unless you modify this (which you shouldn't do unless you know exactly what you're doing) you'll usually find something called
site-packages in the path: this is the default place that Python puts packages when you install them using
python setup.py install, or
conda, or a similar means.
The important thing to note is that each python installation has its own site-packages, where packages are installed for that specific Python version. In other words, if you install something for, e.g.
~/anaconda/bin/python can't use that package, because it was installed on a different Python! This is why in our twitter exchange I recommended you focus on one Python installation, and fix your
$PATH so that you're only using the one you want to use.
There's another component to this: some Python packages come bundled with stand-alone scripts that you can run from the command line (examples are
pep8, etc.) By default, these executables will be put in the same directory path as the Python used to install them, and are designed to work only with that Python installation.
That means that, as your system is set-up, when you run
python, you get
/usr/bin/python, but when you run
ipython, you get
/Library/Frameworks/Python.framework/Versions/3.5/bin/ipython which is associated with the Python version at
/Library/Frameworks/Python.framework/Versions/3.5/bin/python! Further, this means that the packages you can import when running
python are entirely separate from the packages you can import when running
ipython or a Jupyter notebook: you're using two completely independent Python installations.
So how to fix this? Well, first make sure your
$PATH variable is doing what you want it to. You likely have a startup script called something like
~/.bashrc that sets this
$PATH variable. On Windows, you can modify the user specific environment variables. You can manually modify that if you want your system to search things in a different order. When you first install anaconda/miniconda, there will be an option to do this automatically (add Python to the PATH): say yes to that, and then
python will always point to
~/anaconda/python, which is probably what you want.
3. How Jupyter knows what Python to use
We're not totally out of the water yet. You mentioned that in the Jupyter notebook, you're getting a kernel error: this indicates that Jupyter is looking for a non-existent Python version.
Jupyter is set-up to be able to use a wide range of "kernels", or execution engines for the code. These can be Python 2, Python 3, R, Julia, Ruby... there are dozens of possible kernels to use. But in order for this to happen, Jupyter needs to know where to look for the associated executable: that is, it needs to know which path the
python sits in.
These paths are specified in jupyter's
kernelspec, and it's possible for the user to adjust them to their desires. For example, here's the list of kernels that I have on my system:
$ jupyter kernelspec list
Each of these is a directory containing some metadata that specifies the kernel name, the path to the executable, and other relevant info.
You can adjust kernels manually, editing the metadata inside the directories listed above.
The command to install a kernel can change depending on the kernel. IPython relies on the ipykernel package which contains a command to install a python kernel: for example
$ python -m ipykernel install
It will create a kernelspec associated with the Python executable you use to run this command. You can then choose this kernel in the Jupyter notebook to run your code with that Python.
You can see other options that ipykernel provides using the help command:
$ python -m ipykernel install --help
usage: ipython-kernel-install [-h] [--user] [--name NAME]
[--display-name DISPLAY_NAME] [--prefix PREFIX]
Install the IPython kernel spec.
-h, --help show this help message and exit
--user Install for the current user instead of system-wide
--name NAME Specify a name for the kernelspec. This is needed to
have multiple IPython kernels at the same time.
Specify the display name for the kernelspec. This is
helpful when you have multiple IPython kernels.
--prefix PREFIX Specify an install prefix for the kernelspec. This is
needed to install into a non-default location, such as
--sys-prefix Install to Python's sys.prefix. Shorthand for
--prefix='/Users/bussonniermatthias/anaconda'. For use
Note: the recent version of anaconda ships with an extension for the notebook that should automatically detect your various conda environments if the
ipykernel package is installed in it.
Wrap-up: Fixing your Issue
So with that background, your issue is quite easy to fix:
PATH so that the desired Python version is first. For example, you could run
export PATH="/path/to/python/bin:$PATH" to specify (one time) which Python you'd like to use. To do this permanently, add that line to your
.bashrc (note that anaconda can do this automatically for you when you install it). I'd recommend using the Python that comes with anaconda or miniconda: this will allow you to
conda install all the tools you need.
Make sure the packages you want to use are installed for that python. If you're using conda, you can type, e.g.
conda install jupyter matplotlib scikit-learn to install those packages for
Make sure that your Jupyter kernels point to the Python versions you want to use. When you
conda install jupyter it should set this up for
anaconda/bin/python automatically. Otherwise you can use the
jupyter kernelspec command or
python -m ipykernel install command to adjust existing kernels or install new ones.
For installing modules into other Python Jupyter kernels not managed by Anaconda, you need to copy the path to the Python executable for the kernel and run
/path/to/python -m pip install <package>