# Minimal C kernel for Jupyter ## Use with Docker (recommended) * `docker pull brendanrius/jupyter-c-kernel` * `docker run -p 8888:8888 brendanrius/jupyter-c-kernel` * Copy the given URL containing the token, and browse to it. ## Manual installation * Make sure you have the following requirements installed: * gcc * jupyter * python 3 * pip ### Step-by-step: * `pip install jupyter-c-kernel` * `install_c_kernel` * `jupyter-notebook`. Enjoy! ## Example of notebook ![Example of notebook](example-notebook.png?raw=true "Example of notebook") ## Custom compilation flags You can use custom compilation flags like so: ![Custom compulation flag](custom_flags.png?raw=true "Example of notebook using custom compilation flags") Here, the `-lm` flag is passed so you can use the math library. ## Contributing The docker image installs the kernel in editable mode, meaning that you can change the code in real-time in Docker. For that, just run the docker box like that: ```bash git clone https://github.com/brendan-rius/jupyter-c-kernel.git cd jupyter-c-kernel docker run -v $(pwd):/jupyter/jupyter_c_kernel/ -p 8888:8888 brendanrius/jupyter-c-kernel ``` This clones the source, run the kernel, and binds the current folder (the one you just cloned) to eh corresponding folder in Docker. Now, if you change the source, it will be reflected in [http://localhost:8888](http://localhost:8888) instantly. Do not forget to click "restart" the kernel on the page as it does not auto-restart. ### Version control Create branches named `issue-X` where `X` is the number of the issue. Rebase instead of merge. ## License [MIT](LICENSE.txt)