This content originally appeared on DEV Community and was authored by Jatin Goel
Think of AWS as a city, and data services as the different buildings: you have storage warehouses, office buildings, libraries, and even power plants working together to keep the city running.
In this post, we’ll take a beginner-friendly tour of five key AWS data services: S3, RDS, Redshift, Glue, and Lake Formation.
1. Amazon S3 – The Universal Storage Warehouse
Analogy: Imagine a giant, secure warehouse where you can store anything—books, photos, or even boxes of receipts. That’s Amazon S3 (Simple Storage Service).
- What it does: Stores virtually unlimited files (structured or unstructured).
- Real-world example: A media company storing terabytes of videos and images.
- Why it matters: Your data lake often starts here—dump everything in S3 first, then decide how to use it later.
- AWS Reference: Amazon S3 Documentation
2. Amazon RDS – The Apartment Building for Databases
Analogy: Need a cozy apartment where your data can live neatly in rows and columns? That’s Amazon RDS (Relational Database Service). AWS handles the plumbing (patching, backups, scaling), so you don’t have to.
- What it does: Runs relational databases like MySQL, PostgreSQL, Oracle, and SQL Server.
- Real-world example: An e-commerce site storing customer orders and product catalogs.
- Why it matters: Perfect for transactional data where relationships (like customers ↔ orders) are important.
- AWS Reference: Amazon RDS Documentation
3. Amazon Redshift – The Library for Analytics
Analogy: Picture a massive library optimized for reading, not writing. That’s Amazon Redshift, a data warehouse. It’s designed for analyzing large volumes of historical data.
- What it does: Performs complex queries across petabytes of structured data.
- Real-world example: A retail company analyzing sales data across thousands of stores to find seasonal trends.
- Why it matters: When you want to answer big questions (“Which product categories grew fastest last quarter?”), Redshift shines.
- AWS Reference: Amazon Redshift Documentation
4. AWS Glue – The Data Factory
Analogy: Imagine a factory where raw materials (data) come in messy, and workers clean, sort, and label them before shipping. That’s AWS Glue, a serverless ETL (Extract, Transform, Load) service.
- What it does: Cleans, transforms, and organizes your data before moving it into databases or warehouses.
- Real-world example: A travel company consolidating messy booking data from different systems into a clean, consistent format.
- Why it matters: Without Glue, you’d spend endless hours cleaning data by hand.
- AWS Reference: https://docs.aws.amazon.com/glue/
5. AWS Lake Formation – The City Planner
Analogy: If S3 is the warehouse and Glue is the factory, Lake Formation is the city planner that decides how the buildings connect, who can enter, and how traffic flows.
- What it does: Helps you build and manage secure data lakes on AWS.
- Real-world example: A financial company ensuring only certain teams can access sensitive customer records while still allowing analysts to query anonymized data.
- Why it matters: Security and governance are essential when dealing with enterprise-scale data.
- AWS Reference: AWS Lake Formation Documentation
Conclusion
AWS offers a rich set of tools to store, process, and analyze data: from S3 for storage to Redshift for analytics, RDS for relational databases, Glue for transformations, and Lake Formation for governance.
Together, they form the backbone of a modern data platform in the cloud.
Further Reading & Learning Resources
AWS Hands-On Tutorials & Labs
Dive into step-by-step tutorials, reference architectures, self-paced labs, and whitepapers to build your practical knowledge of big data workflows on AWS Getting Started Guide
This content originally appeared on DEV Community and was authored by Jatin Goel

Jatin Goel | Sciencx (2025-09-06T13:06:36+00:00) From Warehouses to Libraries: Understanding Data on AWS the Easy Way. Retrieved from https://www.scien.cx/2025/09/06/from-warehouses-to-libraries-understanding-data-on-aws-the-easy-way/
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