How To Set Up Jupyter Notebook with Python 3 on Ubuntu 18.04

Introduction

An open-source web application, Jupyter Notebook lets you create and share interactive code, visualizations, and more. This tool can be used with several programming languages, including Python, Julia, R, Haskell, and Ruby. It is often used for working with data, statistical modeling, and machine learning.

This tutorial will walk you through setting up Jupyter Notebook to run from an Ubuntu 18.04 server, as well as teach you how to connect to and use the notebook. Jupyter Notebooks (or simply Notebooks) are documents produced by the Jupyter Notebook app which contain both computer code and rich text elements (paragraph, equations, figures, links, etc.) which aid in presenting and sharing reproducible research.

By the end of this guide, you will be able to run Python 3 code using Jupyter Notebook running on a remote server.

Prerequisites

In order to complete this guide, you should have a fresh Ubuntu 18.04 server instance with a basic firewall and a non-root user with sudo privileges configured. You can learn how to set this up by running through our initial server setup tutorial.

Step 1 — Set Up Python

To begin the process, we’ll install the dependencies we need for our Python programming environment from the Ubuntu repositories. Ubuntu 18.04 comes preinstalled with Python 3.6. We will use the Python package manager pip to install additional components a bit later.

We first need to update the local apt package index and then download and install the packages:

  • sudo apt update

 

Next, install pip and the Python header files, which are used by some of Jupyter’s dependencies:

  • sudo apt install python3-pip python3-dev

 

We can now move on to setting up a Python virtual environment into which we’ll install Jupyter.

Step 2 — Create a Python Virtual Environment for Jupyter

Now that we have Python 3, its header files, and pip ready to go, we can create a Python virtual environment to manage our projects. We will install Jupyter into this virtual environment.

To do this, we first need access to the virtualenv command which we can install with pip.

Upgrade pip and install the package by typing:

  • sudo -H pip3 install –upgrade pip
  • sudo -H pip3 install virtualenv

 

The -H flag ensures that the security policy sets the home environment variable to the home directory of the target user.

With virtualenv installed, we can start forming our environment. Create and move into a directory where we can keep our project files. We’ll call this my_project_dir, but you should use a name that is meaningful for you and what you’re working on.

  • mkdir ~/my_project_dir
  • cd ~/my_project_dir

 

Within the project directory, we’ll create a Python virtual environment. For the purpose of this tutorial, we’ll call it my_project_env but you should call it something that is relevant to your project.

  • virtualenv my_project_env

 

This will create a directory called my_project_env within your my_project_dir directory. Inside, it will install a local version of Python and a local version of pip. We can use this to install and configure an isolated Python environment for Jupyter.

Before we install Jupyter, we need to activate the virtual environment. You can do that by typing:

  • source my_project_env/bin/activate

 

Your prompt should change to indicate that you are now operating within a Python virtual environment. It will look something like this: (my_project_env)user@host:~/my_project_dir$.

You’re now ready to install Jupyter into this virtual environment.

Step 3 — Install Jupyter

With your virtual environment active, install Jupyter with the local instance of pip.

Note: When the virtual environment is activated (when your prompt has (my_project_env) preceding it), use pip instead of pip3, even if you are using Python 3. The virtual environment’s copy of the tool is always named pip, regardless of the Python version.

  • pip install jupyter

 

At this point, you’ve successfully installed all the software needed to run Jupyter. We can now start the Notebook server.

Step 4 — Run Jupyter Notebook

You now have everything you need to run Jupyter Notebook! To run it, execute the following command:

  • jupyter notebook

 

A log of the activities of the Jupyter Notebook will be printed to the terminal. When you run Jupyter Notebook, it runs on a specific port number. The first Notebook you run will usually use port 8888. To check the specific port number Jupyter Notebook is running on, refer to the output of the command used to start it:

Output

[I 21:23:21.198 NotebookApp] Writing notebook server cookie secret to /run/user/1001/jupyter/notebook_cookie_secret [I 21:23:21.361 NotebookApp] Serving notebooks from local directory: /home/sammy/my_project_dir [I 21:23:21.361 NotebookApp] The Jupyter Notebook is running at: [I 21:23:21.361 NotebookApp] http://localhost:8888/?token=1fefa6ab49a498a3f37c959404f7baf16b9a2eda3eaa6d72 [I 21:23:21.361 NotebookApp] Use Control-C to stop this server and shut down all kernels (twice to skip confirmation). [W 21:23:21.361 NotebookApp] No web browser found: could not locate runnable browser. [C 21:23:21.361 NotebookApp] Copy/paste this URL into your browser when you connect for the first time, to login with a token: http://localhost:8888/?token=1fefa6ab49a498a3f37c959404f7baf16b9a2eda3eaa6d72

If you are running Jupyter Notebook on a local computer (not on a server), you can navigate to the displayed URL to connect to Jupyter Notebook. If you are running Jupyter Notebook on a server, you will need to connect to the server using SSH tunneling as outlined in the next section.

At this point, you can keep the SSH connection open and keep Jupyter Notebook running or you can exit the app and re-run it once you set up SSH tunneling. Let’s choose to stop the Jupyter Notebook process. We will run it again once we have SSH tunneling set up. To stop the Jupyter Notebook process, press CTRL+C, type Y, and then ENTER to confirm. The following output will be displayed:

Output

[C 21:28:28.512 NotebookApp] Shutdown confirmed [I 21:28:28.512 NotebookApp] Shutting down 0 kernels

We’ll now set up an SSH tunnel so that we can access the Notebook.

Step 5 — Connect to the Server Using SSH Tunneling

In this section we will learn how to connect to the Jupyter Notebook web interface using SSH tunneling. Since Jupyter Notebook will run on a specific port on the server (such as :8888, :8889 etc.), SSH tunneling enables you to connect to the server’s port securely.

The next two subsections describe how to create an SSH tunnel from 1) a Mac or Linux, and 2) Windows. Please refer to the subsection for your local computer.

SSH Tunneling with a Mac or Linux

If you are using a Mac or Linux, the steps for creating an SSH tunnel are similar to using SSH to log in to your remote server, except that there are additional parameters in the ssh command. This subsection will outline the additional parameters needed in the ssh command to tunnel successfully.

SSH tunneling can be done by running the following SSH command in a new local terminal window:

  • ssh -L 8888:localhost:8888 your_server_username@your_server_ip

 

The ssh command opens an SSH connection, but -L specifies that the given port on the local (client) host is to be forwarded to the given host and port on the remote side (server). This means that whatever is running on the second port number (e.g. 8888) on the server will appear on the first port number (e.g. 8888) on your local computer.

Optionally change port 8888 to one of your choosing to avoid using a port already in use by another process.

server_username is your username (e.g. sammy) on the server which you created and your_server_ip is the IP address of your server.

For example, for the username sammy and the server address 203.0.113.0, the command would be:

  • ssh -L 8888:localhost:8888 sammy@203.0.113.0

 

If no error shows up after running the ssh -L command, you can move into your programming environment and run Jupyter Notebook:

  • jupyter notebook

 

You’ll receive output with a URL. From a web browser on your local machine, open the Jupyter Notebook web interface with the URL that starts with http://localhost:8888. Ensure that the token number is included, or enter the token number string when prompted at http://localhost:8888.

SSH Tunneling with Windows and Putty

If you are using Windows, you can create an SSH tunnel using Putty.

First, enter the server URL or IP address as the hostname as shown:

Set Hostname for SSH Tunnel

Next, click SSH on the bottom of the left pane to expand the menu, and then click Tunnels. Enter the local port number you want to use to access Jupyter on your local machine. Choose 8000 or greater to avoid ports used by other services, and set the destination as localhost:8888 where :8888 is the number of the port that Jupyter Notebook is running on.

Now click the Add button, and the ports should appear in the Forwarded ports list:

Forwarded ports list

Finally, click the Open button to connect to the server via SSH and tunnel the desired ports. Navigate to http://localhost:8000 (or whatever port you chose) in a web browser to connect to Jupyter Notebook running on the server. Ensure that the token number is included, or enter the token number string when prompted at http://localhost:8000.

Step 6 — Using Jupyter Notebook

This section goes over the basics of using Jupyter Notebook. If you don’t currently have Jupyter Notebook running, start it with the jupyter notebook command.

You should now be connected to it using a web browser. Jupyter Notebook is a very powerful tool with many features. This section will outline a few of the basic features to get you started using the Notebook. Jupyter Notebook will show all of the files and folders in the directory it is run from, so when you’re working on a project make sure to start it from the project directory.

To create a new Notebook file, select New > Python 3 from the top right pull-down menu:

Create a new Python 3 notebook

This will open a Notebook. We can now run Python code in the cell or change the cell to markdown. For example, change the first cell to accept Markdown by clicking Cell > Cell Type > Markdown from the top navigation bar. We can now write notes using Markdown and even include equations written in LaTeX by putting them between the $$ symbols. For example, type the following into the cell after changing it to markdown:

# First Equation

Let us now implement the following equation:
$$ y = x^2$$

where $x = 2$

To turn the markdown into rich text, press CTRL+ENTER, and the following should be the results:

results of markdown

You can use the markdown cells to make notes and document your code. Let’s implement that equation and print the result. Click on the top cell, then press ALT+ENTER to add a cell below it. Enter the following code in the new cell.

x = 2
y = x**2
print(y)

To run the code, press CTRL+ENTER. You’ll receive the following results:

first equation results

You now have the ability to import modules and use the Notebook as you would with any other Python development environment!

Conclusion

Congratulations! You should now be able to write reproducible Python code and notes in Markdown using Jupyter Notebook. To get a quick tour of Jupyter Notebook from within the interface, select Help > User Interface Tour from the top navigation menu to learn more.

From here, you can begin a data analysis and visualization project by reading Data Analysis and Visualization with pandas and Jupyter Notebook in Python 3.

If you’re interested in digging in more, you can read our series on Time Series Visualization and Forecasting.

Originally posted on DigitalOcean Community Tutorials
Author: DigitalOcean

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