Table of Contents

Search

  1. Preface
  2. Data integration tasks
  3. Mapping tasks
  4. Dynamic mapping tasks
  5. Synchronization tasks
  6. Data transfer tasks
  7. Replication tasks
  8. Masking tasks
  9. Masking rules
  10. PowerCenter tasks

Tasks

Tasks

Guidelines to get an accurate recommendation

Guidelines to get an accurate recommendation

Use the following guidelines to get an accurate recommendation during the tuning job:
  • Use sample data that closely matches the actual volume of the data that the
    mapping
    task will process.
  • Make sure that the mapping logic handles duplicate data in the target. The tuning job will write data to the target multiple times.
  • Set resource limits on your cloud environment by configuring the appropriate Spark properties before you tune the
    mapping
    task. Your cloud service provider charges you for the resources that each run uses.
    For example, if you know that you can allocate only 4 GB to the Spark driver, you can configure
    spark.driver.memory=4G
    in the
    mapping
    task. CLAIRE will honor the pre-defined Spark property to create a tuning recommendation for other Spark properties.

0 COMMENTS

We’d like to hear from you!