Skip to content

JaymzZh/notebook

 
 

Repository files navigation

Jupyter Notebook

Google Group Build Status Documentation Status

The Jupyter HTML notebook is a web-based notebook environment for interactive computing.

Usage

Local installation

Launch with:

$ jupyter notebook

In a Docker container

If you have a Docker daemon running, e.g. reachable on localhost, start a container with:

$ docker run --rm -it -p 8888:8888 -v "$(pwd):/notebooks" jupyter/notebook

In your browser open the URL http://localhost:8888/. All notebooks from your session will be saved in the current directory.

On other platforms without docker, this can be started using docker-machine by replacing localhost with an IP from docker-machine ip <MACHINE>. With the deprecated boot2docker, this IP will be boot2docker ip.

Installation

For a local installation, make sure you have pip installed and run:

$ pip install notebook

Dev quickstart

  • ensure that you have node/npm installed (e.g. brew install node on OS X)
  • Clone this repo and cd into it
  • pip install --pre -e .

NOTE: For Debian/Ubuntu systems, if you're installing the system node you need to use the 'nodejs-legacy' package and not the 'node' package.

Ubuntu Trusty

sudo apt-get install nodejs-legacy npm python-virtualenv python-dev
# ensure setuptools/pip are up-to-date
pip install --upgrade setuptools pip
git clone https://github.com/jupyter/notebook.git
cd notebook
pip install --pre -e .
jupyter notebook

FreeBSD

cd /usr/ports/www/npm
sudo make install    # (Be sure to select the "NODE" option)
cd /usr/ports/devel/py-pip
sudo make install
cd /usr/ports/devel/py-virtualenv
sudo make install
cd /usr/ports/shells/bash
sudo make install
mkdir -p ~/.virtualenvs
python2.7 -m virtualenv ~/.virtualenvs/notebook
bash
source ~/.virtualenvs/notebook/bin/activate
pip install --upgrade setuptools pip pycurl
git clone https://github.com/jupyter/notebook.git
cd notebook
pip install -r requirements.txt -e .
jupyter notebook

Packages

No packages published

Languages

  • JavaScript 61.3%
  • Python 31.0%
  • CSS 4.5%
  • HTML 3.1%
  • Shell 0.1%