Table of Contents

Search

  1. Preface
  2. Transformations
  3. Source transformation
  4. Target transformation
  5. Access Policy transformation
  6. Aggregator transformation
  7. B2B transformation
  8. Chunking transformation
  9. Cleanse transformation
  10. Data Masking transformation
  11. Data Services transformation
  12. Deduplicate transformation
  13. Expression transformation
  14. Filter transformation
  15. Hierarchy Builder transformation
  16. Hierarchy Parser transformation
  17. Hierarchy Processor transformation
  18. Input transformation
  19. Java transformation
  20. Java transformation API reference
  21. Joiner transformation
  22. Labeler transformation
  23. Lookup transformation
  24. Machine Learning transformation
  25. Mapplet transformation
  26. Normalizer transformation
  27. Output transformation
  28. Parse transformation
  29. Python transformation
  30. Rank transformation
  31. Router transformation
  32. Rule Specification transformation
  33. Sequence transformation
  34. Sorter transformation
  35. SQL transformation
  36. Structure Parser transformation
  37. Transaction Control transformation
  38. Union transformation
  39. Vector Embedding transformation
  40. Velocity transformation
  41. Verifier transformation
  42. Web Services transformation

Transformations

Transformations

Unmatched groups of multiple-occurring fields

Unmatched groups of multiple-occurring fields

You can normalize more than one group of multiple-occurring fields in a Normalizer transformation. When you include more than one group and the occurs values do not match, configure the mapping to avoid validation errors.
Use one of the following methods to process groups of multiple-occurring fields with different occurs values.
Write the normalized data to different targets
You can use multiple-occurring fields with different occurs values when you write the normalized data to different targets.
For example, the source data includes an Expenses field with four occurs and an Income field with three occurs. You can configure the mapping to write the normalized expense data to one target and to write the normalized income data to a different target.
Use the same occurs value for multiple occurring fields
You can configure the multiple-occurring fields to use the same number of occurs, and then use the generated fields that you need. When you use the same number of occurs for multiple-occurring fields, you can write the normalized data to the same target.
For example, when the source data includes an Expenses field with four occurs and an Income field with three occurs, you can configure both fields to have four occurs.
When you configure the Normalizer field mappings, you can connect the four expense fields and the three income fields, leaving the unnecessary income output field unused. Then, you can configure the mapping to write all normalized data to the same target.

0 COMMENTS

We’d like to hear from you!