Home / Companies / Sigma / Blog / Post Details
Content Deep Dive

6 Data Modeling Techniques To Elevate Your Data Culture

Blog post from Sigma

Post Details
Company
Date Published
Author
Rachel Serpa
Word Count
1,066
Language
English
Hacker News Points
-
Summary

Many organizations aim to be more data-driven, yet a significant portion of enterprise data remains unused due to issues like limited access and low data literacy. Investing in robust data models and analytics tools can help transform raw data into actionable insights, thereby increasing data value and adoption. Data modeling, which involves organizing and presenting data in ways useful to analysts, is essential for understanding large data volumes, but it can be complex. To facilitate effective collaboration between business teams and data scientists, it is crucial to establish a common data language and familiarize all stakeholders with basic data modeling concepts. Data models can be categorized into three types: conceptual, logical, and physical, each with varying complexity and audience comprehension levels. Various techniques such as hierarchical, relational, and star schema models cater to different analytical needs. As self-service analytics tools become more prevalent, domain experts can now engage more deeply with data modeling, leveraging automation and visual interfaces to contribute significantly to data analysis and decision-making processes. Understanding fundamental data organization concepts is vital for utilizing business intelligence tools effectively, and modern tools like Sigma make these concepts more accessible, enabling a stronger data culture within organizations.