HTTP Request node
Split Out node

Get custom_fields from the Stripe API

Published 4 months ago

Created by

solomon
Solomon

Template description

The Stripe API does not provide custom fields in invoice or charge data. So you have to get it from the Checkout Sessions endpoint.

But that endpoint is not easy for begginners. It has dictionary parameters and pagination settings.

This workflows solves that problem by having a preconfigured GET request that gets all the checkout sessions from the last 7 days.

It then transforms the data to make it easier to work with and allows you to filter by the custom_fields you want to get.
.

Check out my other templates

👉 https://n8n.io/creators/solomon/

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