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Publishing the updated data pipeline to selected jobs from canvas

PreviousViewing the run history of a specific schedulerNextFetching the latest data pipeline to a specific scheduler

Last updated 21 days ago

Use this procedure to republish the data pipeline to schedulers. When you update the dataset, delete a recipe or add a new recipe to the data pipeline, you can republish the new flow to scheduler using the republish option on the canvas. This updates the canvas on the selected schedulers.

To publish the changes made in the data pipeline to all or specific scheduler(s) in a project:

  1. Select the project to navigate to the canvas view page.

  2. Click the Actions drop-down and select Publish to Schedulers on the canvas. This displays Republish canvas to schedulers dialog.

    This displays the list of schedulers to which you want to publish the latest or updated data pipeline.

  3. Select the check boxes corresponding to the jobs to which you want to update the latest canvas. This enables the Yes, Republish button.

  4. Click Yes, Republish to republish or update the latest data pipeline to the selected jobs.

You can now navigate to the respective job page to see the latest data pipeline. From the next schedule, the job run is performed on the new modelling pipeline.