Skip to content

Jupyter notebooks and AWS CloudFormation template to show how Hudi, Iceberg, and Delta Lake work

License

Notifications You must be signed in to change notification settings

dacort/modern-data-lake-storage-layers

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

4 Commits
 
 
 
 
 
 
 
 
 
 

Repository files navigation

Modern Data Lake Storage Layers

This repository contains supporting assets for my research in modern Data Lake storage layers like Apache Hudi, Apache Iceberg, and Delta Lake.

Specifically, there's a CloudFormation template to create an EMR cluster and EMR Studio with the necessary requirements and Jupyter notebooks with the example walkthroughs.

You can view the corresponding blog post and video

Pre-requisites

You'll need an AWS Account in which you have administrator privileges and the ability to deploy a CloudFormation template. The template will create an EMR Cluster and S3 bucket that will incur charges - be sure to either shut down the cluster when done or delete the CloudFormation stack. In order to delete the CloudFormation stack, you'll need to:

  • Manually delete any EMR Studio Workspaces you created
  • Manually empty the S3 bucket created by CloudFormation
  • Manually delete the VPC created by CloudFormation due to auto-created rules

Overview

The included CloudFormation template creates a new VPC and EMR Cluster for you to be able to run the notebooks. An EMR Studio is also created and you can find the Studio URL in the Outputs tab of your CloudFormation Stack.

Once the stack is done creating, you'll need to navigate to EMR Studio and create a new workspace attached to the "data-lakes" cluster.

Inside the workspace you either upload each notebook individually from the notebooks/ folder or simply connect to this repository by using the "Git" icon on the left-hand side.