In computing, a snowflake schema is a logical arrangement of tables in a multidimensional database such that the entity relationship diagram resembles a snowflake in shape. The snowflake schema is represented by centralized fact tables which are connected to multiple dimensions.
The snowflake schema is similar to the star schema. However, in the snowflake schema, dimensions are normalized into multiple related tables, whereas the star schema's dimensions are normalized with each dimension represented by a single table. A complex snowflake shape emerges when the dimensions of a snowflake schema are elaborate, having multiple levels of relationships, and the child tables have multiple parent tables ("forks in the road"). The "snowflaking" effect only affects the dimension tables and NOT the fact tables.
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Star and snowflake schemas are most commonly found in dimensional data warehouses and data marts where speed of data retrieval is more important than the efficiency of data manipulations. As such, the tables in these schemas are not normalized much, and are frequently designed at a level of normalization short of third normal form.
Deciding whether to employ a star schema or a snowflake schema should involve considering the relative strengths of the database platform in question and the query tool to be employed. Star schemas should be favored with query tools that largely expose users to the underlying table structures, and in environments where most queries are simpler in nature. Snowflake schemas are often better with more sophisticated query tools that create a layer of abstraction between the users and raw table structures for environments having numerous queries with complex criteria.
Normalization splits up data to avoid redundancy (duplication) by moving commonly repeating groups of data into new tables. Normalization therefore tends to increase the number of tables that need to be joined in order to perform a given query, but reduces the space required to hold the data and the number of places where it needs to be updated if the data changes.
From a space storage point of view, the dimensional tables are typically small compared to the fact tables. This often removes the storage space benefit of snowflaking the dimension tables, as compared with a star schema.
Some database developers compromise by creating an underlying snowflake schema with views built on top of it that perform many of the necessary joins to simulate a star schema. This provides the storage benefits achieved through the normalization of dimensions with the ease of querying that the star schema provides. The tradeoff is that requiring the server to perform the underlying joins automatically can result in a performance hit when querying as well as extra joins to tables that may not be necessary to fulfill certain queries.
The example schema shown to the right is a snowflaked version of the star schema example provided in the star schema article.
The following example query is the snowflake schema equivalent of the star schema example code which returns the total number of units sold by brand and by country for 1997. Notice that the snowflake schema query requires many more joins than the star schema version in order to fulfill even a simple query. The benefit of using the snowflake schema in this example is that the storage requirements are lower since the snowflake schema eliminates many duplicate values from the dimensions themselves.
SELECT B.Brand, G.Country, SUM (F.Units_Sold) FROM Fact_Sales F INNER JOIN Dim_Date D ON F.Date_Id = D.Id INNER JOIN Dim_Store S ON F.Store_Id = S.Id INNER JOIN Dim_Geography G ON S.Geography_Id = G.Id INNER JOIN Dim_Product P ON F.Product_Id = P.Id INNER JOIN Dim_Brand B ON P.Brand_Id = B.Id INNER JOIN Dim_Product_Category C ON P.Product_Category_Id = C.Id WHERE D.Year = 1997 AND C.Product_Category = 'tv' GROUP BY B.Brand, G.Country