HTTP Request node
Webhook node
Respond to Webhook node

Generate Text-to-Speech Using Elevenlabs via API

Published 9 months ago

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This workflow provides an API endpoint to generate speech from text using Elevenlabs.io, a popular text-to-speech service.

Step 1: Configure Custom Credentials in n8n

To set up your credentials in n8n, create a new custom authentication entry with the following JSON structure:

{
  "headers": {
    "xi-api-key": "your-elevenlabs-api-key"
  }
}

Replace "your-elevenlabs-api-key" with your actual Elevenlabs API key.

Step 2: Send a POST Request to the Webhook

Send a POST request to the workflow's webhook endpoint with these two parameters:

  • voice_id: The ID of the voice from Elevenlabs that you want to use.
  • text: The text you want to convert to speech.

This workflow has been a significant time-saver in my video production tasks. I hope it proves just as useful to you!

Happy automating!
The n8Ninja

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