Receive updates when a form submission occurs in your Webflow website
Receive Updates When a Form Submission Occurs in Your Webflow Website
This n8n workflow provides a simple way to get real-time notifications or trigger subsequent actions whenever a form is submitted on your Webflow website. It acts as a listener for Webflow form submission events, allowing you to integrate Webflow forms with other services in your n8n ecosystem.
What it does
- Listens for Webflow Form Submissions: The workflow is triggered automatically every time a form is submitted on your configured Webflow site.
Prerequisites/Requirements
- n8n Instance: You need a running n8n instance (cloud or self-hosted).
- Webflow Account: An active Webflow account with a website containing forms.
- Webflow Credential in n8n: You will need to set up a Webflow OAuth2 credential in n8n to allow it to connect to your Webflow account and receive webhook events.
Setup/Usage
- Import the workflow: Import the provided JSON into your n8n instance.
- Configure the Webflow Trigger node:
- Click on the "Webflow Trigger" node.
- Select your existing Webflow credential or create a new one.
- Choose the "Form Submission" trigger event.
- Save the node.
- Activate the workflow: Once configured, activate the workflow by toggling the "Active" switch in the top right corner of the n8n editor.
After activation, n8n will automatically set up the necessary webhook in your Webflow site. From then on, any form submission will trigger this workflow, and you can then add further nodes to process the form data (e.g., send to Slack, Google Sheets, CRM, etc.).
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