Data modeling refers to the architecture that allows data analysis to use data in decision-making processes. A combined approach is needed to maximize data insights.
While the terms data analysis and data modeling are often intertwined, they are two different concepts. Simply put, data analysis is about using data and information to drive business decisions, while data modeling refers to the architecture that makes analysis possible. In other words, data modeling and data analysis work best when they are used together.
But how do organizations embed data into every decision and process? The answer starts with effective data modeling and continues with data analysis. Let’s compare the two concepts below and learn how overlapping them can benefit your business.
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Data modeling is a data strategy that focuses on transforming raw data into structural, often visual representations that help analysts derive more meaningful insights from the data.
Data modeling seeks to map out the types of data your organization uses and where it is stored within systems. Additionally, it illustrates relationships between data types and finds ways to group and organize data by establishing formats and attributes.
SEE: 6 Tips for Creating Effective Big Data Models
“A data model can be compared to a roadmap, an architect’s blueprint or any formal diagram that facilitates a deeper understanding of what is being designed,” analysts from IBM said.
Companies must build models around business needs, translate business needs into data structures, create concrete database designs and be ready to evolve as businesses change.
These are the three most common data model types:
SEE: Use TechRepublic’s big data modeler job description for your next job listing.
Data analysis is a holistic data strategy that involves examining, interpreting, cleaning, transforming, migrating and modeling data to extract useful information for internal and external business goals. While data modeling creates the architecture that helps data teams derive valuable data insights, data analysis actually puts the model in motion and leverages data to drive outcomes.
Some of the most common data analysis approaches include:
SEE: 3 Steps for Better Data Modeling With IT, Data Scientists and Business Analysts
Data modeling and analytics are both integral to data management and data-driven operations. Organizations on a data transformation journey cannot choose one over the other but have to engage in both concepts to fully develop data architectures and use their data to improve their operations.
As mentioned, data modeling is the roadmap and blueprint used to build the hardware and software where databases will be connected. Then, data analysis comes into play once the model is built and is strictly concerned with using that data to improve decision-making. It relies on the infrastructure that data modeling provides, but data analysis itself is not concerned with changing the data infrastructure.
For effective data-driven businesses, data modeling and data analysis share a lot of common ground. They must both be aligned with business goals and priorities. Additionally, both are part of a strong data culture. When they are used together, companies can serve customers better, increase sales, make better decisions, meet governance and privacy standards and ultimately back up all business decisions with higher-quality data.
SEE: Explore the top data modeling tools.
Ray is a Content and Communication Specialist with more than 15 years of experience. He currently works at Publicize and as a writer for TechRepublic and eSecurity Planet. His work has been published in Microsoft, VentureBeat, Forbes, Entrepreneur, The Sunday Mail, FinTech Times, Spiceworks, Dice Insights, Horasis, and the Nature Conservancy, among others