Typeform Trigger node
APITemplate.io node

Create an invoice based on the Typeform submission

Published 3 years ago

Created by

harshil1712
ghagrawal17

Categories

Template description

This workflow allows you to create an invoice with the information received via Typeform submission.

Typeform node: This node triggers the workflow. Whenever the form is submitted, the node triggers the workflow. We will use the information received in this node to generate the invoice.

APITemplate.io node: This node generates the invoice using the information from the previous node.

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