This blog post discusses optimizing data pipelines in cloud environments, focusing on AWS services. It outlines a typical serverless data pipeline using AWS Glue, Amazon S3, and Amazon QuickSight. The post explains how to extract, transform, and load data from various sources into a centralized data lake using AWS Glue jobs. It then describes methods to optimize the ETL process, including scaling cluster capacity, using the latest AWS Glue version, and leveraging AWS Glue Workflows. The article also covers optimizing data insights with Amazon QuickSight’s SPICE feature. Finally, it demonstrates how to automate 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!