Slack node
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+9

Create a Follow-Up Email draft from Google Meet Recording – With OpenAI Whisper

Published 6 days ago

Created by

dataki
Dataki

Template description

Disclaimer: This template only works on self-hosted n8n instances and needs a community node.

This workflow is designed to streamline the process of creating professional follow-up emails based on Google Meet recordings. It leverages OpenAI's transcription and summarization capabilities to extract key points, action items, and next steps, then drafts an email in Gmail for easy review and sending.

Important :

  1. Custom n8n Installation with ffmpeg (Recommended):
    The workflow is optimized for instances of n8n with ffmpeg installed. This allows for seamless conversion of Google Meet recordings from MP4 to MP3 format, significantly reducing file size and improving processing efficiency.

  2. OAuth Configuration Required:
    For self-hosted n8n instances, ensure OAuth authentication is properly configured for Google Drive and Gmail. This is essential for accessing recordings and creating email drafts securely.

  3. Privacy Considerations:
    Before sending Google Meet recordings to OpenAI for processing, verify compliance with the data protection standards of the country or company you belong to. As this workflow is shared publicly, the creator is not responsible for ensuring compliance with regulations in your region or company.

Workflow Overview:

  1. Detects when a Google Meet recording is uploaded to a designated Google Drive folder.
  2. Converts the recording to MP3 (if ffmpeg is available) and processes it through OpenAI for transcription.
  3. Summarizes the meeting and generates a professional follow-up email draft in Gmail, ready for your review and customization.

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