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Telegram sticker bot

Jan OberhauserJan Oberhauser
8153 views
2/3/2026
Official Page

workflow-screenshot

  1. Gets triggered by Telegram once a user sends a message
  2. Checks if the message contains a sticker
  3. If a sticker got found it sends a message with its ID else it informs the user that no sticker was found in message

Telegram Sticker Bot Workflow

This n8n workflow provides a basic framework for interacting with Telegram, specifically designed to receive messages and potentially respond. While the current JSON only defines the trigger and a conditional logic node, it lays the groundwork for creating a Telegram bot that can process incoming messages and take different actions based on their content.

What it does

This workflow currently performs the following steps:

  1. Listens for Telegram Messages: It acts as a webhook, waiting for any incoming messages or updates from a configured Telegram bot.
  2. Conditional Logic: Once a message is received, it passes the message data to an If node. This node is set up to evaluate conditions, allowing you to define different paths for your workflow based on the message content (e.g., if a message contains a specific keyword, if it's a command, or if it's a sticker).
  3. Telegram Action (Placeholder): A Telegram node is included, which can be configured to send messages, stickers, or perform other actions back to the user or chat, depending on the outcome of the conditional logic.

Prerequisites/Requirements

  • n8n Instance: A running instance of n8n.
  • Telegram Bot: A Telegram bot token obtained from BotFather.
  • Telegram Credential: An n8n credential configured for your Telegram bot.

Setup/Usage

  1. Import the Workflow: Import the provided JSON into your n8n instance.
  2. Configure Telegram Trigger:
    • Select the "Telegram Trigger" node.
    • Choose your existing Telegram credential or create a new one using your bot token.
    • Save and activate the workflow. This will set up the webhook with Telegram.
  3. Configure Conditional Logic:
    • Open the "If" node.
    • Define your desired conditions based on the incoming Telegram message data (e.g., {{ $json.message.text.includes('/sticker') }}).
    • Connect the "True" and "False" branches to subsequent nodes to handle different scenarios.
  4. Configure Telegram Action:
    • Open the "Telegram" node.
    • Select your Telegram credential.
    • Configure the desired action (e.g., "Send Message", "Send Sticker") and specify the chat ID (e.g., {{ $json.message.chat.id }}) and content.
  5. Expand Functionality:
    • Connect additional nodes to the "True" and "False" branches of the If node to implement more complex logic. For example, you could:
      • Use an "HTTP Request" node to fetch sticker packs.
      • Use an "Image" node to process images for sticker creation.
      • Use a "Function" node for custom logic.
      • Integrate with other services to store sticker data.

Once activated, your Telegram bot will start listening for messages, and the workflow will execute based on the defined conditions.

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