Skip to main content

Configure Spark Running Environment

This section provides information on how to enable and configure the Spark running environment, which leverages Spark's faster in-memory processing to deliver better execution performance.

Limitations

Note

When a recipe containing a user-defined function is applied to text data, any non-printing (control) characters cause records to be truncated by the Spark running environment during job execution. In these cases, please execute the job on the Trifacta Photon running environment.

  • You cannot publish through Cloudera Navigator for Spark jobs.

Enable Spark Execution Environment

The Spark execution environment is enabled by default.

Note

If you have not done so already, please enable and configure the Spark Job Service. See Configure for Spark.

Use Spark Execution Environment

When Spark execution is enabled, it is available like any other execution environment in the application. When executing a job, select the Spark option from the drop-down in the Run Job page. See Run Job Page.

Change Limits

For more information on changing limits and other tuning parameters, see Configure for Spark.

Change Spark settings per job

You can enable a set of Spark properties that users are permitted to override on individual jobs. For more information, see Enable Spark Job Overrides.

Enable user-specific overrides

You can also enable user-specific overrides for Spark jobs executed on the cluster.

Note

The user-specific overrides take precedence over the Spark settings applied to the output objects.

For more information, see Configure User-Specific Props for Cluster Jobs.