Slack node

Get a Slack alert when a workflow went wrong

Published 3 years ago

Created by

pauline
Pauline

Template description

This workflow allows you to have a Slack alert when one of your n8n workflows gets an issue.

  • Error trigger: This node launched the workflow when one of your active workflows gets an issue

  • Slack node: This node sends you a customized message to alert you and to check the error

⚠️ You don't have to activate this workflow for it to be effective

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