This is the repository for the Scipy 2016 tutorial. The tutorial will be presented as a set of Jupyter notebooks with exercises sprinkled throughout.
We strongly, strongly, strongly encourage you to use conda
to install the required packages for this tutorial. There are non-Python dependencies required that make manual installation or installing with pip
very involved.
Note also that this tutorial is written for Python 3.5. Most things will still work on Python 3.4. No guarantees of any kind are made that it will be compatible with Python 2.
This tutorial uses the Viridis colormap pretty much everywhere we can use a colormap. This colormap was first made available in matplotlib 1.5.0. Please upgrade if you have an earlier version installed.
Download the environment.yml
file in the root of this repository, e.g.
wget https://raw.githubusercontent.com/barbagroup/numba_tutorial_scipy2016/master/environment.yml
and then create the environment with
conda env create -f environment.yml
This will create a conda environment named numbatutorial
with all of the required packages.
You can activate the environment with
source activate numbatutorial
or on Windows:
activate numbatutorial
conda install jupyter ipython numpy numba line_profiler matplotlib
pip install line_profiler
Note: Do not use conda
to install line_profiler
; the version available in conda
default channels is out of date.
To install (specifically) Numba using pip
, you need to have LLVM 3.7 installed on your machine with both libraries and header files.
You should be able to do a
sudo apt-get install llvm-3.7-dev
You may also need to install libedit-dev
You can follow instructions here for getting LLVM installed on Windows.
http://llvm.org/docs/GettingStartedVS.html
Install XCode which includes LLVM
If your llvm-config
(or llvm-config.exe
) file is in a non-standard location, set the LLVM_CONFIG
environment variable to point at the llvm-config
binary.
Then
pip install llvmlite
If that installed successfully then you can continue to install the rest of the dependencies (which are must less fussy)
pip install numpy matplotlib jupyter ipython numba line_profiler
or
pip install -r requirements.txt
No hands-on work requires these, but if you want to play with some of the examples. If you installed using either environments.yml
or requirements.txt
these are already installed.
conda install cython dask
pip install cython dask
We recommend you also install the Jupyter notebook extensions.
pip install https://github.com/ipython-contrib/IPython-notebook-extensions/archive/master.zip --user
Once they are installed, start a notebook server
jupyter notebook
and (assuming port 8888) navigate to http://localhost:8888/nbextensions
where you can choose which extensions to enable. One that is helpful (for us!) when using Numba in the notebook is the Skip-Traceback
extension. You're welcome to enable whichever extensions you like (we're also fans of Codefolding
and the Comment/Uncomment Hotkey
).
Once you have downloaded all of the requires libraries/packages, you can run the check_install.py
script to confirm that everything is working as expected. Either download the file directly or clone this repository and then run
python check_install.py
Check out the video of the live tutorial at SciPy 2016 (filmed Monday 11 July).