Airtable node
Trello node
Bannerbear node

Send Airtable data as tasks to Trello

Published 4 years ago

Created by

tanay1337
tanaypant

Template description

In this workflow, we'll automate the export of all the submissions which have a total score greater than 15 for a final review on Trello. The workflow will also generate social media assets for the organizers and add them to the Trello card.

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