Todoist node
+2

Use AI to organize your Todoist Inbox

Published 3 months ago

Created by

mutasem
Mutasem

Categories

Template description

How it works

This workflow adds a priority to each Todoist item in your inbox, based on a list of projects that you add in the workflow.

Setup

  1. Add your Todoist credentials
  2. Add your OpenAI credentials
  3. Set your project names and add priority

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