Tag Archives: deep learning

Setting up Jupyter for Deep Learning on EC2

This post is a simple guide on setting up an EC2 server for deep learning as quickly as possible.

Launching an Instance

In EC2, select ‘Launch Instance’. Select your AMI, choose Deep Learning AMI (Ubuntu). You could use the Amazon Linux version, I just personally prefer Ubuntu.


For actual deep learning, you will want to select a p* instance, ideally a p3 instance. If you are initially testing and writing prototype code, you will probably want to select a small t* instance. You can change this later on the EC2 Dashboard.

Move to Review and Launch. On the security groups you will need to open ports 22, 443 and 8888

Click ‘Launch’ and select your key pair (or create a new one).

On security, while we are opening 22, 443 and 8888 to the world it should not be a security risk. For SSH only the person with your key pair should be able to SSH in. For 443 and 8888, these are for Jupyter. As long as your Jupyter instance remains password or token protected (it is by default) it should not be a security risk.

Configuring HTTPS

SSH into the server with:

It is a good idea to update any packages using

Create a Jupyter config

Create a certificate directory

Create a self-signed certificate valid for one year

Edit your Jupyter config

Edit the file to include the following four lines

Note: I don’t set a password as I think it is safer to use the token (you will need to be SSH’d into the server to obtain the token)

Running Notebooks

Now run:

Copy and paste the URL into your browser. It will look like https://localhost:8888/?token=ef0f…

Change ‘localhost’ to be the IP or DNS of your server.

You will get a warning screen

As this is your own self-signed certificate, click Advanced and Proceed.

At this point you will have your notebook interface!

Installing additional packages

The AMI comes with most packages you need installed. If you need to install anything else, go to the terminal. Ensure you activate the conda environment you are using in your notebook e.g. if you are using Tensorflow Python 3, run

Then install your package via conda