Choosing the Right Data Architecture: Warehouse, Lake, or Lakehouse?


As companies continue to scale their data operations, choosing the right architecture becomes a crucial decision. Should you stick with a traditional Data Warehouse, explore a flexible Data Lake, or go for the emerging Data Lakehouse?
We recently explored these models in-depth in our latest AQE Digital blog post. Here's a snapshot:
Data Warehouse
Best for structured, consistent data and high-performance analytics.
Data Lake
Designed for raw, multi-source data storage with maximum flexibility.
Data Lakehouse
A hybrid that aims to give you the best of both worlds: data science flexibility + data warehouse performance.
If you're at a crossroads deciding how to evolve your stack—this guide will give you the clarity you need.
👉 Read the complete article to understand which architecture fits your data strategy: Data Warehouse vs. Data Lake vs. Data Lakehouse
Subscribe to my newsletter
Read articles from Priyansh Shah directly inside your inbox. Subscribe to the newsletter, and don't miss out.
Written by
