How can you reduce data redundancy in a dimensional model?

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Data redundancy is a common issue in data modeling, especially when dealing with complex and large datasets. It occurs when the same data is stored in multiple places, leading to inconsistency, waste of storage space, and potential errors. In this article, you will learn how to reduce data redundancy in a dimensional model, a popular approach for designing data warehouses and business intelligence systems.

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