Telegram node
Telegram Trigger node
+5

Telegram AI bot assistant: ready-made template for voice & text messages

Published 1 month ago

Created by

yulia
Yulia

Template description

Free template for voice & text messages with short-term memory

This n8n workflow template is a blueprint for an AI Telegram bot that processes both voice and text messages. Ready to use with minimal setup.

The bot remembers the last several messages (10 by default), understands commands and provides responses in HTML.

You can easily swap GPT-4 and Whisper for other language and speech-to-text models to suit your needs.

Core Features

  • Text: send or forward messages
  • Voice: transcription via Whisper

Extend this template by adding LangChain tools.

Requirements

  • Telegram Bot API
  • OpenAI API (for GPT-4 and Whisper)

💡 New to Telegram bots? Check our step-by-step guide on creating your first bot and setting up OpenAI access.

Use Cases

  • Personal AI assistant
  • Customer support automation
  • Knowledge base interface
  • Integration hub for services that you use:

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