This blog post discusses optimizing data pipelines in cloud environments using AWS services. It outlines a serverless data pipeline architecture utilizing AWS Glue, Amazon S3, Amazon Athena, and Amazon QuickSight. The article explains how to extract, transform, and load data from various sources into a centralized data lake on S3 using AWS Glue jobs. It provides tips for optimizing AWS Glue performance, including scaling cluster capacity, using the latest version, and minimizing data scans. The post also covers improving data insights with QuickSight’s SPICE in-memory caching and automating the entire pipeline using AWS Step Functions and CloudWatch event triggering. The solution ensures efficient data processing, up-to-date insights, and optimal timing for refreshing QuickSight datasets.

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!