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Unit 3: Dimensional Data Warehouse




          needs. This unit on data warehousing dimensions explains the importance of dimensions and  Notes
          dimension granularity and stresses the importance of flattening hierarchies—with the goal
          being to make data more accessible and useful to users. It also focuses on fact and dimension
          table.

          3.1 Dimensional Model

          Dimensional model comprises of a fact table and numerous dimensional tables and is used for
          assessing summarized data. Since Business Intelligence reports are used in assessing the facts
          (aggregates) across various dimensions, dimensional data modelling prefer the modelling
          technique in a BI environment.
          Facts are normally calculated data like dollars’ worth or Sales or income. They correspond to the
          aim of a conclusion support analysis.
          Dimensions define the axis of enquiry of a fact.


                 Example: For example, Product, Region and Time are the axes of enquiry of the Sales
          detail.
          One such enquiry could be a scenario where the user might require to see the Sales (in dollars)
          for a specific item in a market over a specific time span of time. In this case, we are calculating the
          fact (Sales) over three dimensions (Product, Region and Time). Thus we can say that dimensions
          give different views of the facts. They give structure to the otherwise unstructured facts.
          It typically contains the attributes for the SQL answer set. Figure 3.1 shows an example of
          dimensional model.

                               Figure 3.1: Example of Dimensional Model

































          Source: www.oedewaldt.com/movies/dimensional%20modeling.pptý




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