N8N español - bot multi idioma NoCode
Tutorial: https://comunidad-n8n.com/bot-multi-idioma-no-code/
Comunidad de telegram: https://t.me/comunidadn8n
BOT: https://t.me/NocodeTranslateBot
n8n Español - Bot Multi-idioma No-Code
This n8n workflow demonstrates a basic multi-language bot interaction using Telegram. It listens for messages on Telegram, and although the current JSON doesn't define specific language logic, it sets up the foundational components for a bot to respond to user input.
What it does
This workflow provides a starting point for building a Telegram bot. The current configuration includes:
- Telegram Trigger: Listens for incoming messages from a configured Telegram bot.
- Start Node: A standard starting point for the workflow execution.
- If Node: This node is included, indicating the intention to implement conditional logic based on the incoming Telegram message. This is where multi-language detection or command parsing would typically be configured.
- HTTP Request Node: Available for making external API calls, which could be used for translation services, database lookups, or other integrations.
- Execute Command Node: Allows for running shell commands on the n8n host, useful for advanced system interactions.
- Telegram Node: Sends messages back to the user or group in Telegram.
Prerequisites/Requirements
- n8n Instance: A running n8n instance to host the workflow.
- Telegram Bot: A Telegram bot created via BotFather. You will need its API Token.
- Telegram Credential: An n8n credential configured for your Telegram bot.
Setup/Usage
- Import the Workflow: Copy the provided JSON and import it into your n8n instance as a new workflow.
- Configure Telegram Trigger:
- Select your existing Telegram credential or create a new one using your Telegram bot's API Token.
- Activate the workflow.
- Configure Telegram Node:
- Select the same Telegram credential used for the trigger.
- The
Chat IDfor sending messages back can usually be dynamically retrieved from the incoming trigger data (e.g.,{{ $json.message.chat.id }}). - The
Textfield should contain the message you want the bot to send.
- Implement Logic (If Node):
- The "If" node is currently present but not configured. To make this a multi-language bot, you would configure conditions here. For example:
- Check
{{ $json.message.text }}for keywords (e.g., "hello", "hola", "bonjour"). - Integrate with a language detection API via the "HTTP Request" node and then use the "If" node to branch based on the detected language.
- Check
- The "If" node is currently present but not configured. To make this a multi-language bot, you would configure conditions here. For example:
- Test the Workflow: Send a message to your Telegram bot to trigger the workflow and observe its execution.
This workflow serves as a flexible template. You can expand upon the "If" node and "HTTP Request" node to add more sophisticated multi-language capabilities, integrate with translation APIs, or connect to other services for dynamic responses.
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