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Send daily inspirational quotes with Gemini translation to Telegram subscribers

ShohaniShohani
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2/3/2026
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Send daily inspirational quotes with AI translation to Telegram subscribers

This n8n workflow creates an automated daily quote bot that fetches inspirational quotes, translates them using AI, adds emoji "stickers," and sends them to registered Telegram subscribers. Perfect for content creators, coaches, or anyone wanting to share daily motivation with their audience.

Who's it for

  • Content creators and social media managers
  • Life coaches and motivational speakers
  • Community managers running Telegram channels
  • Anyone wanting to automate daily inspirational content
  • Developers learning n8n automation with AI integration

How it works

The workflow operates on two main flows:

Daily Quote Distribution:

  1. Schedule Trigger runs daily to fetch a random inspirational quote
  2. HTTP Request fetches quotes from the ZenQuotes API (free service)
  3. Google Gemini AI translates the quote to your target language and adds relevant emoji "stickers"
  4. Google Sheets retrieves the list of registered subscribers
  5. Telegram sends the formatted quote (original + translated + emojis) to all subscribers

User Registration:

  1. Telegram Trigger listens for new messages to your bot
  2. Google Sheets automatically registers new users who interact with the bot

Requirements

  • Telegram Bot Token - Create a bot via @BotFather on Telegram
  • Google Gemini API - For AI translation and emoji enhancement
  • Google Sheets - To store subscriber list (free Google account)
  • ZenQuotes API - Free, no API key required

How to set up

  1. Create Telegram Bot: Message @BotFather on Telegram, create a new bot, and save the token
  2. Set up Google Sheets: Create a spreadsheet with columns: registered_users, date
  3. Configure Gemini API: Get your API key from Google AI Studio
  4. Update the Set Fields node: Configure your target language and bot preferences
  5. Test the workflow: Send a message to your bot to register, then manually trigger the quote sending

How to customize the workflow

  • Change target language: Modify the AI prompt in the LLM Chain node to translate to any language
  • Adjust sending schedule: Update the Schedule Trigger to send quotes at your preferred time/frequency
  • Customize quote sources: Replace the HTTP Request with other quote APIs or your own content
  • Add quote categories: Enhance the AI prompt to categorize quotes (motivational, business, life, etc.)
  • Include user preferences: Expand Google Sheets to store user language preferences for personalized translations

Good to know

  • The workflow automatically handles new subscriber registration
  • Supports MarkdownV2 formatting for rich text in Telegram
  • Uses emoji "stickerization" to make quotes more engaging and visual
  • Demo bot working with this workflow is @sgsbot on Telegram

Send Daily Inspirational Quotes with Gemini Translation to Telegram Subscribers

This n8n workflow automates the process of fetching daily inspirational quotes, translating them into multiple languages using Google Gemini, and then sending these translated quotes to a Telegram channel. It ensures your subscribers receive fresh, multilingual inspiration every day.

What it Does

  1. Schedules Daily Execution: The workflow is triggered once every day at a specified time.
  2. Fetches Inspirational Quote: It reads a random inspirational quote from a Google Sheet.
  3. Translates Quote with Google Gemini: The fetched quote is sent to the Google Gemini Chat Model to be translated into a predefined set of languages.
  4. Formats Output: The original quote and its translations are formatted into a single, readable message.
  5. Sends to Telegram: The formatted multilingual quote is then posted to a specified Telegram chat or channel.

Prerequisites/Requirements

  • n8n Instance: A running n8n instance.
  • Google Sheets Account: A Google Sheets spreadsheet containing your list of inspirational quotes.
  • Google Gemini API Key: Access to the Google Gemini API for translation. This will need to be configured as a credential in n8n for the "Google Gemini Chat Model" node.
  • Telegram Bot Token: A Telegram bot token and the chat ID of the channel/group where you want to send the quotes. This will need to be configured as a credential in n8n for the "Telegram" node.

Setup/Usage

  1. Import the Workflow:

    • Download the provided JSON file.
    • In your n8n instance, click "Workflows" in the left sidebar.
    • Click "New" and then "Import from JSON".
    • Paste the JSON content or upload the file.
  2. Configure Credentials:

    • Google Sheets:
      • Open the "Google Sheets" node.
      • Select or create a new Google Sheets credential. You'll need to authenticate with your Google account and grant n8n access to your spreadsheets.
      • Configure the "Spreadsheet ID" and "Sheet Name" to point to your quotes sheet.
    • Google Gemini Chat Model:
      • Open the "Google Gemini Chat Model" node.
      • Select or create a new credential for Google Gemini. You will typically need to provide an API key.
    • Telegram:
      • Open the "Telegram" node.
      • Select or create a new Telegram credential. You'll need to provide your Telegram Bot Token.
      • Enter the Chat ID of your target Telegram channel or group. You can get this by adding your bot to the channel/group and then forwarding a message from the channel to @RawDataBot or a similar bot to find the chat ID.
  3. Customize the Workflow (Optional):

    • Schedule Trigger: Adjust the "Schedule Trigger" node to set your preferred daily time for sending quotes.
    • Edit Fields (Set): The "Edit Fields" node (Set node) is likely used to format the prompt for the Gemini model and then format the final message for Telegram. You can modify the prompt for translation or the output message structure here.
    • Translation Languages: If you want to change the target languages for translation, you'll need to adjust the prompt sent to the "Google Gemini Chat Model" node.
  4. Activate the Workflow:

    • Once all credentials and configurations are set, click the "Activate" toggle in the top right corner of the n8n editor to enable the workflow.

The workflow will now run automatically at your scheduled time, delivering multilingual inspirational quotes to your Telegram subscribers.

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