quartz/content/AI&DATA/Data Engineering/Data Warehouse.md

10 lines
1.3 KiB
Markdown
Raw Blame History

This file contains invisible Unicode characters

This file contains invisible Unicode characters that are indistinguishable to humans but may be processed differently by a computer. If you think that this is intentional, you can safely ignore this warning. Use the Escape button to reveal them.

# Data Warehouse
A Data Warehouse (DWH), also known as an Enterprise Data Warehouse (EDW), represents the traditional approach to data collection, a practice [established over 30 years ago](https://tdwi.org/articles/2016/02/01/data-warehousing-30.aspx). The DWH is crucial for integrating data from numerous sources, serving as a single source of truth, and managing data through processes such as cleaning, historical tracking, and data consolidation. It facilitates enhanced executive insight into corporate performance through management dashboards, reports, or ad-hoc analyses.
Data Warehouses are instrumental in analyzing various types of business data. Their importance is particularly evident when analytic demands clash with the performance of operational databases. Running complex queries on a database necessitates a temporary fixed state, which can disrupt transactional databases. In such scenarios, a data warehouse is utilized to perform the analytics, allowing the transactional database to continue handling transactions efficiently.
Another key characteristic of DWHs is their capability to analyze data from diverse origins (for example, combining Google Analytics with CRM data). This is possible due to the data being heavily transformed and structured through the [ETL](https://www.ssp.sh/brain/etl) (Extract, Transform, Load) process.