Slack node
Notion node
Item Lists node
+3

Report number of weekly created records in an app

Published 1 year ago

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n8n-team
n8n Team

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Template description

This template shows how you can create reports on data in an app and share a summary in another app.

Specifically, this example checks a Notion database for new submissions, filters for submissions with a specific tag, and then sends a Slack message with the number created this week.

Setup instructions are located inside the workflow template.

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