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Send Google Sheets data as a message to a Discord channel

n8n Teamn8n Team
3300 views
2/3/2026
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This workflow sends a message to a Discord channel when a new row is added or a row is updated in a Google Sheet. The message will send all data rows in the Google Sheet.

Prerequisites

How it works

Using a code node, we can use the obtained Google Sheet data to create a custom message that will be sent to Discord. The message will be sent to the Discord channel specified in the Discord node.

Setup

This workflow requires that you set up a Discord webhook and have an existing Google Sheet with data. See how to set up a Discord webhook here.

Send Google Sheets Data as a Message to a Discord Channel

This n8n workflow simplifies the process of extracting specific data from a Google Sheet and posting it as a formatted message to a Discord channel. It's ideal for sharing updates, reports, or any tabular data from Google Sheets with your team or community on Discord.

What it does

  1. Reads Data from Google Sheets: It connects to a specified Google Sheet and retrieves all rows from the first sheet.
  2. Formats Data with Custom Code: It uses a Code node to transform the raw data from Google Sheets into a user-friendly, formatted string suitable for a Discord message. This step allows for customization of how the data appears.
  3. Posts Message to Discord: The formatted data is then sent as a message to a designated Discord channel using a Discord bot or webhook.

Prerequisites/Requirements

  • n8n Account: A running instance of n8n.
  • Google Sheets Account: Access to the Google Sheet you wish to read data from.
    • Google Sheets Credential: An n8n credential configured for Google Sheets (OAuth2 recommended).
  • Discord Account: A Discord server and channel where you want to post messages.
    • Discord Credential: An n8n credential configured for Discord (e.g., Bot Token or Webhook URL).

Setup/Usage

  1. Import the Workflow:
    • Download the provided JSON for this workflow.
    • In your n8n instance, go to "Workflows" and click "New".
    • Click the "Import from JSON" button and paste the workflow JSON or upload the file.
  2. Configure Google Sheets Node:
    • Click on the "Google Sheets" node.
    • Select your Google Sheets credential. If you don't have one, create a new OAuth2 credential for Google Sheets.
    • Enter the Spreadsheet ID of your Google Sheet.
    • Ensure the Operation is set to "Get All" and Sheet Name is "Sheet1" (or adjust if your data is on a different sheet).
  3. Configure Code Node:
    • Click on the "Code" node.
    • The existing code is designed to iterate through items and format them. You might need to adjust the JavaScript code within this node to specifically format the columns and rows from your Google Sheet data as desired for your Discord message. For example, you can access data using item.json.columnName.
  4. Configure Discord Node:
    • Click on the "Discord" node.
    • Select your Discord credential. If you don't have one, create a new credential (e.g., a Bot Token or Webhook URL).
    • Set the Operation to "Send Message".
    • In the Text field, reference the output of the "Code" node. For example, {{ $('Code').item.json.formattedMessage }} if your code node outputs a property named formattedMessage.
    • Specify the Channel ID where the message should be posted.
  5. Activate the Workflow:
    • Once all credentials and settings are configured, click the "Activate" toggle in the top right corner of the n8n editor to enable the workflow.
    • You can manually test the workflow by clicking "Execute Workflow".

This workflow provides a flexible foundation for sharing Google Sheets data on Discord. Remember to customize the "Code" node to perfectly match your data's structure and your desired message format.

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