Ways in which a Data warehouse is different from OLTP systems.
Workload: Data warehouses are designed to accommodate ad hoc
queries. You might not know the workload of your data warehouse in advance, so
a data warehouse should be optimized to perform well for a wide variety of
possible query operations.
OLTP systems support only predefined operations.
Your applications might be specifically tuned or designed to support only these
operations.
Data modifications: A data
warehouse is updated on a regular basis by the ETL process (run nightly or
weekly) using bulk data modification techniques. The end users of a data
warehouse do not directly update the data warehouse.
In OLTP systems, end users routinely issue
individual data modification statements to the database. The OLTP database is
always up to date, and reflects the current state of each business transaction.
Schema
Design: Data warehouses often use denormalized or partially denormalized schemas
(such as a star schema) to optimize query performance.
OLTP systems often use fully normalized schemas to
optimize update/insert/delete performance, and to guarantee data consistency.
Typical
Operations: A typical data warehouse query scans thousands or
millions of rows. For example, "Find the total sales for all customers
last month."
A typical OLTP operation accesses only a handful of
records. For example, "Retrieve the current order for this customer."
Historical
Data: Data warehouses usually store many months or years of data. This is to
support historical analysis.
OLTP systems usually store data from only a few
weeks or months. The OLTP system stores only historical data as needed to
successfully meet the requirements of the current transaction.
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