Skip to content

Latest commit

 

History

History
50 lines (36 loc) · 1.8 KB

readme.md

File metadata and controls

50 lines (36 loc) · 1.8 KB

Workshop: Analytics on AWS

Contributors:

  • Vikas Omer | Amazon Web Services | Linkedin
  • Aneesh Chandra PN | Amazon Web Services | Linkedin

Lab Architecture

Architecture Diagram

Learning outcomes from this workshop?

  • Design serverless data lake architecture
  • Build a data processing pipeline and Data Lake using Amazon S3 for storing data
  • Use Amazon Kinesis for real-time streaming data
  • Use AWS Glue to automatically catalog datasets
  • Run interactive ETL scripts in an Amazon SageMaker Jupyter notebook connected to an AWS Glue development endpoint
  • Use EMR to run a Spark transformation job
  • Load data to Amazon Redshift from Glue
  • Intro into Amazon Redshift Best design practices.
  • Query data using Amazon Athena & visualize it using Amazon QuickSight

Pre-requisites:

  • You need to have access to an AWS account with AdminstratorAccess
  • This lab should be executed in us-east-1 region
  • Best is to follow links from this guide & open them in new a tab
  • Run this lab in a modern browser

Modules

Module Link
Ingest and Store link
Catalog Data link
Transform Data with AWS Glue link
Transform Data with EMR link
Analyze with Athena link
Visualize with Quicksight link
Lambda link
Redshift link
Cleanup link

Please do check on the pre-requisites for each module before starting the activities within the module.

Also, do not forget to clean up the resources at the end of the workshop!

Build on!