AWS Storage Blog
Category: Amazon Q
Build intelligent ETL pipelines using AWS Model Context Protocol and Amazon Q
Data scientists and engineers spend hours writing complex data pipelines to extract, transform, and load (ETL) data from various sources into their data lakes for data integration and creating unified data models to build business insights. The process involves understanding the source and target systems, discovering schemas, mapping source and target, writing and testing ETL […]
Derive intelligent storage insights using S3 Metadata and Model Context Protocol (MCP)
Organizations face mounting challenges in managing and operationalizing their ever-growing data assets for machine learning and analytics workflows. When dealing with billions and trillions of objects, teams struggle to find what data they have and how to efficiently find specific datasets. Without proper data discovery and metadata management, teams spend valuable time searching for relevant […]
How to consume tabular data from Amazon S3 Tables for insights and business reporting
When was the last time you found yourself trying to look at rows and rows of data in a spreadsheet struggling to interpret and draw conclusions? Many analysts and engineers experience the same challenge every day. Whether it’s analyzing sales trends, monitoring operational metrics, or understanding customer behavior, the challenge lies not just in interpreting […]
Real-time monitoring of AWS Elastic Disaster Recovery using Amazon Q Developer
The ability to monitor and manage workloads in real-time is a foundational requirement for ensuring that you can meet your resilience objectives. Having visibility into key user activities and the performance of critical business functions, enables you to automate responses to events that can impact business operations. Effective monitoring is crucial for not only achieving […]
