Data Warehousing Schemas
A schema is a collection of database objects, including tables, views, indexes, and synonyms. There are a variety of ways of arranging schema objects in the schema models designed for data warehousing. Most data warehouses use a dimensional model.
Star Schemas
The star schema is the simplest data warehouse schema. It is called a star schema because the diagram of a star schema resembles a star, with points radiating from a center. The center of the star consists of one or more fact tables and the points of the star are the dimension tables.
Other Schemas
Some schemas use third normal form rather than star schemas or the dimensional model.
Snowflake Schema :
Galaxy Schema
Data Warehousing Objects
The following types of objects are commonly used in data warehouses:
- Fact tables are the central tables in your warehouse schema. Fact tables typically contain facts and foreign keys to the dimension tables. Fact tables represent data usually numeric and additive that can be analyzed and examined. Examples include Sales, Cost, and Profit.
- Dimension tables, also known as lookup or reference tables, contain the relatively static data in the warehouse. Examples are stores or products.
Fact Tables
A fact table is a table in a star schema that contains facts. A fact table typically has two types of columns: those that contain facts, and those that are foreign keys to dimension tables. A fact table might contain either detail-level facts or facts that have been aggregated.
Creating a New Fact Table
You must define a fact table for each star schema. A fact table typically has two types of columns: those that contain facts, and those that are foreign keys to dimension tables. From a modeling standpoint, the primary key of the fact table is usually a composite key that is made up of all of its foreign keys;
Dimensions
A dimension is a structure, often composed of one or more hierarchies, that categorizes data. Several distinct dimensions, combined with measures, enable you to answer business questions. Commonly used dimensions are Customer, Product, and Time.
Typical Levels in a Dimension Hierarchy
Dimension data is typically collected at the lowest level of detail and then aggregated into higher level totals, which is more useful for analysis. For example, in the Total_Customer dimension, there are four levels: Total_Customer, Regions, Territories, and Customers. Data collected at the Customers level is aggregated to the Territories level. For the Regions dimension, data collected for several regions such as Western Europe or Eastern Europe might be aggregated as a fact in the fact table into totals for a larger area such as Europe.
Hierarchies
Hierarchies are logical structures that use ordered levels as a means of organizing data. A hierarchy can be used to define data aggregation. For example, in a Time dimension, a hierarchy might be used to aggregate data from the Month level to the Quarter level to the Year level. A hierarchy can also be used to define a navigational drill path and establish a family structure.
Levels
Levels represent a position in a hierarchy. For example, a Time dimension might have a hierarchy that represents data at the Month, Quarter, and Year levels. Levels range from general to very specific, with the root level as the highest, or most general level. The levels in a dimension are organized into one or more hierarchies.
Level Relationships
Level relationships specify top-to-bottom ordering of levels from most general (the root) to most specific information and define the parent-child relationship between the levels in a hierarchy.
You can define hierarchies where each level rolls up to the previous level in the dimension or you can define hierarchies that skip one or multiple levels.
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