A data warehouse (DW) is a database specifically structured/designed to aid in querying, analyzing and reporting (generating reports out of) of current and historical data. DWs are central repositories of integrated data from one or more disparate sources. Basic difference between a data warehouse and a set of DB tables is how the data is organized/structured.

A data warehouse is a subject-oriented, integrated, time-variant, and non-volatile collection of data used for querying, analyzing and reporting for decision-support purposes.

Data Mart is the access layer of the data warehouse. It serves a particular department like Marketing, HR, etc. Dedicated to business function and unit specifications, data marts make the information more focused and faster to find.

Some differences between Data mart and Data warehouse:

  • Data Warehouses have multiple subject areas with more detailed information. They are integrating all sources of data. Dimensional modelling is not necessary, but it feeds dimensional models
  • Data Marts usually hold one subject area with not that detailed information - often summarized. Concentrate on integrating information from one subject area or source system. Built on dimensional models like star-schema.

There are many products readily available that provide data warehousing capability e.g. MSAccess, Essbase (Hyperion, now Oracle), Cognos, Business Objects, MicroStrategy, ...

Basics of Data Warehousing:

  • Dimensional Modelling - Consist of the identify the measurements, or facts, that are given the context by their related dimensions. The grain of the fact table describes the level of detail at which the facts are recorded.

Main steps of relational modelling:

  • Choose the business process
  • Declare the grain
  • Identify the dimensions
  • Identify the fact

Online Analytical Processing (OLAP) and it's types (ROLAP, MOLAP, HOLAP, ...): Describes basics of the DB designs and pros/cons of each way. - A variety of different design patterns are used in a data warehouse environment. Some common approaches include: Normalized (5NF); DataVault; Anchor Modelling; Dimensional (5,6); other temporal (e.g. 6NF). - SQL: Describes how a Data Warehouse can be queried. Following is a list of basic keywords that every data warehouse developer must know: - JOIN - GROUPBY

At a high level the Data Warehousing can be divided into:

  • Tools (IBM Cognos, Microsoft Business Intelligence, Oracle Business Intelligence Enterprise, dition(OBIEE), Business Objects Enterprise XI, Jaspersoft, Talend Open studio, Pentaho, Qlikview etc) readily available and how to use them. Used for small to medium sized data sets. This usually requires [at least] knowledge of tool's:
    • data model and
    • user interface
  • Building your own data warehouse for specific usecases. Used when dealing with really huge data sets (e.g. the data collected by Google, Yahoo, Facebook or a couters/performance-management-data from a large telecommunication network. This usually requires [at least] knowledge of:
    • scalability, high availability and clustering concepts.
    • data warehouse (schema, queries, data model, ...) design.
    • available databases (Oracle, Clustra, Greenplum, MySQL, DB2, ...)
    • problem domain (implicit).
    • relevant GUI/UI (SWING, JSP, ...) and business logic (J2EE, C++, ...) technologies