Book Image

Jupyter Cookbook

By : Dan Toomey
Book Image

Jupyter Cookbook

By: Dan Toomey

Overview of this book

Jupyter has garnered a strong interest in the data science community of late, as it makes common data processing and analysis tasks much simpler. This book is for data science professionals who want to master various tasks related to Jupyter to create efficient, easy-to-share, scientific applications. The book starts with recipes on installing and running the Jupyter Notebook system on various platforms and configuring the various packages that can be used with it. You will then see how you can implement different programming languages and frameworks, such as Python, R, Julia, JavaScript, Scala, and Spark on your Jupyter Notebook. This book contains intuitive recipes on building interactive widgets to manipulate and visualize data in real time, sharing your code, creating a multi-user environment, and organizing your notebook. You will then get hands-on experience with Jupyter Labs, microservices, and deploying them on the web. By the end of this book, you will have taken your knowledge of Jupyter to the next level to perform all key tasks associated with it.
Table of Contents (17 chapters)
Title Page
Copyright and Credits
Packt Upsell
Contributors
Preface
Index

Running your Notebook in AWS


Amazon Web Services (AWS) is a secure cloud platform that can be used to deploy web services. In our case, we want to install Jupyter on AWS and deploy our Notebook onto that service.

Getting ready

Signing up for AWS is easy enough at aws.amazon.com. Get ready though; the variety of services offered is amazing. For our implementation, we only need a smaller scale server (I selected micro) running Linux (I selected Ubuntu). Unless you are developing a Notebook that would draw a large audience to require a larger machine size, this should suffice.

How to do it...

For AWS, you have to use your own SSH shell; there is no browser SSH connection available (though I was able to do so on GC in a previous section).

There appears to be a delay in deploying on AWS. I am not sure why! There are no hardware changes involved, and all software and allocating another micro instance should be very quick.

Once your VM is running, connect via SSH to your instance. The connection information...