Page tree

 

Support | BlogContact Us | 844.332.2821

 

Contents:

This documentation applies to Trifacta Wrangler. Download this free product.
Registered users of this product or Trifacta Wrangler Enterprise should login to Product Docs through the application.

Contents:


Create Backup

After you have created the flow and the datasets within the flow and before applying recipe steps to change the data, create a duplicate of the flow. This becomes a snapshot of your original dataset. Since the imported datasets are not affected, the storage overhead for creating backups is relatively low. See Flow View Page.

Track Source Row Information

You can mark the original row numbers of your source data. In the first step in your recipe after initial parsing, add the following:

derive value:SOURCEROWNUMBER() as:'sourceRowNumber

This step generates a new column that contains the source row number from the source dataset.

NOTE: Source row information can become invalid if you perform multi-dataset operations such as lookups, unions, and joins. For more precise tracking of source information, you should consider creating multi-column keys, including the source row number information. For more information, see Generate Primary Keys.

See SOURCEROWNUMBER Function.

Track Steps Affecting a Column

To see all of the steps in your current recipe that reference a specific column, select Show related steps... from the column menu.

All steps are highlighted in the Recipe panel.  

NOTE: If another column is dependent on the selected column, all steps pertaining to that column are highlighted as well.

For more information, see Column Menus.

Track Column Value Changes

Trifacta® Wrangler enables you to easily move between steps in your transform recipe so that you can check the state of your dataset at any point during the transformation. In some cases, you may want to be able to track the changes made to an individual column side-by-side with the original column. This section provides a generalized approach for tracking column changes in this manner. 

NOTE: Use this workflow only if it is important to monitor which values have changed in a column. For most use cases, the Transformer page provides sufficient visibility over your sample data to manage column values.

Steps:

In the following sequence, the original column is called StringFor numeric columns, you can perform more detailed analysis between original and modified column values.

  1. After you have completed your general setup steps of your transform, create a copy of the original column:

    derive value:String as:'String_orig'

    You can paste Wrangle steps into the Transformer Page.

  2. You now have a copy of the original column before any manipulations were applied to it.
  3. Add any transforms to your recipe, including any that change the values of String. In the example below, the following transform has been applied:

    set col:String value:TRIM(String)

  4. At the point in your recipe where you would like to test the column for changes, insert the following:

    derive value:(String != String_orig) as:'String_changes'

  5. The String_changes column now contains true values where the values in String have been changed from their original values (String_orig). 
  6. To see just the values that are different, sort in descending order.

    Tip: You can reposition this test anywhere in your recipe after you have created the String_orig column.

  7. Before you run your recipe, you may want to remove the tracking columns that you generated (String_orig and String_changes in our example).

Figure: Example tracking column changes

Track Row Changes

Steps:

  1. Create a copy of the flow. In its name, identify that it is your original. See Flow View Page.
  2. In the other flow, create your recipes as normal. 
  3. When done, you can add the following steps:
    1. Union the two datasets together.
    2. Sort them by a key column.
    3. Add the deduplicate transform.

      NOTE: This method may not work if your recipe includes joins or added or removed columns.

  4. If the rows are exact duplicates, they are removed. The remaining rows contain data that has been changed.

Your Rating: Results: PatheticBadOKGoodOutstanding! 9 rates

This page has no comments.