This blog post discusses optimizing data pipelines in cloud environments, focusing on AWS services. It describes a serverless data pipeline using AWS Glue, Amazon S3, and Amazon QuickSight. The post explains how to extract data from sources like DynamoDB, transform it using AWS Glue jobs, and load it into an S3-based data lake. It then covers strategies for optimizing AWS Glue performance, such as scaling cluster capacity and minimizing data scans. The article also addresses improving data insights with Amazon QuickSight’s SPICE in-memory caching. Finally, it demonstrates how to automate and optimize the entire pipeline using AWS Step Functions and CloudWatch event triggering, ensuring timely and efficient data processing and analysis.

Want to be the hero of cloud?

Great, we are here to help you become a cloud services hero!

Let's start!
Book a meeting!