Dimensional data model is most often used in data warehousing systems. This is different from the 3rd normal form, commonly used for transactional (OLTP) type systems. As you can imagine, the same data would then be stored differently in a dimensional model than in a 3rd normal form model.
To understand dimensional data modeling, let's define some of the
terms commonly used in this type of modeling:
Dimension: A category of information. For example, the time
dimension.
Attribute: A unique level within a dimension. For example, Month
is an attribute in the Time Dimension.
Hierarchy: The specification of levels that represents
relationship between different attributes within a dimension. For example, one
possible hierarchy in the Time dimension is Year → Quarter → Month → Day.
Fact Table: A fact table is a
table that contains the measures of interest. For example, sales amount would
be such a measure. This measure is stored in the fact table with the
appropriate granularity. For example, it can be sales amount by store by day.
In this case, the fact table would contain three columns: A date column, a
store column, and a sales amount column.
Lookup
Table:
The lookup table provides the detailed information about the attributes. For
example, the lookup table for the Quarter attribute would include a list of all
of the quarters available in the data warehouse. Each row (each quarter) may
have several fields, one for the unique ID that identifies the quarter, and one
or more additional fields that specifies how that particular quarter is
represented on a report (for example, first quarter of 2001 may be represented
as "Q1 2001" or "2001 Q1").
A dimensional model includes fact tables and lookup tables. Fact
tables connect to one or more lookup tables, but fact tables do not have direct
relationships to one another. Dimensions and hierarchies are represented by
lookup tables. Attributes are the non-key columns in the lookup tables.
In designing data models for data warehouses / data marts, the
most commonly used schema types are Star Schema and Snowflake Schema.
Whether one uses a star or a snowflake largely depends on personal
preference and business needs. Personally, I am partial to snowflakes, when there is a business case to
analyze the information at that particular level.
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- kareem