Bagikan melalui


Row Sampling Transformation

The Row Sampling transformation is used to obtain a randomly selected subset of an input dataset. You can specify the exact size of the output sample, and specify a seed for the random number generator.

There are many applications for random sampling. For example, a company that wanted to randomly select 50 employees to receive prizes in a lottery could use the Row Sampling transformation on the employee database to generate the exact number of winners.

The Row Sampling transformation is also useful during package development for creating a small but representative dataset. You can test package execution and data transformation with richly representative data, but more quickly because a random sample is used instead of the full dataset. Because the sample dataset used by the test package is always the same size, using the sample subset also makes it easier to identify performance problems in the package.

The Row Sampling transformation creates a sample dataset by selecting a specified number of the transformation input rows. Because the selection of rows from the transformation input is random, the resultant sample is representative of the input. You can also specify the seed that is used by the random number generator, to affect how the transformation selects rows.

Using the same random seed on the same transformation input always creates the same sample output. If no seed is specified, the transformation uses the tick count of the operating system to create the random number. Therefore, you could use the same seed during testing, to verify the transformation results during the development and testing of the package, and then change to a random seed when the package is moved into production.

This transformation is similar to the Percentage Sampling transformation, which creates a sample dataset by selecting a percentage of the input rows. See Percentage Sampling Transformation.

The Row Sampling transformation includes the SamplingValue custom property. This property can be updated by a property expression when the package is loaded. For more information, see Integration Services Expression Reference, Using Property Expressions in Packages, and Transformation Custom Properties.

This transformation has one input and two outputs. It has no error output.

Configuring the Row Sampling Transformation

You can set properties through SSIS Designer or programmatically.

For more information about the properties that you can set in the Row Sampling Transformation Editor dialog box, see Row Sampling Transformation Editor.

The Advanced Editor dialog box reflects the properties that can be set programmatically. For more information about the properties that you can set in the Advanced Editor dialog box or programmatically, click one of the following topics:

For more information about how to set properties, see How to: Set the Properties of a Data Flow Component.

Integration Services icon (small) Stay Up to Date with Integration Services

For the latest downloads, articles, samples, and videos from Microsoft, as well as selected solutions from the community, visit the Integration Services page on MSDN or TechNet:

For automatic notification of these updates, subscribe to the RSS feeds available on the page.