Slack node
Code node
+6

Ask a human for help when the AI doesn't know the answer

Published 10 months ago

Created by

deborah
Deborah

Categories

Template description

This is a workflow that tries to answer user queries using the standard GPT-4 model. If it can't answer, it sends a message to Slack to ask for human help. It prompts the user to supply an email address.

This workflow is used in Advanced AI examples | Ask a human in the documentation.

To use this workflow:

  1. Load it into your n8n instance.
  2. Add your credentials as prompted by the notes.
  3. Configure the Slack node to use your Slack details, or swap out Slack for a different service.

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