Manage ClickUp Tasks with Natural Language via Telegram Bot and GPT-4.1
📌 What It Does
This workflow connects a Telegram bot with your ClickUp workspace, allowing you to create, read, update, and delete tasks just by sending a message. The AI agent interprets natural language commands and takes the appropriate action — all without needing to open ClickUp.
It’s like having a personal assistant inside Telegram that manages your task list for you.
✅ Prerequisites
To use this workflow, you'll need the following credentials set up in n8n:
- Telegram Bot API Credential (used in all Telegram nodes)
- ClickUp OAuth2 Credential (for task operations)
- OpenAI Credential (to power the AI agent that parses your commands)
⚠️ Before First Use
Make sure to add your bot's user ID to the Ignore Bot Messages node.
This prevents infinite loops caused by the bot responding to its own messages.
If you're unsure of your bot's ID:
- Temporarily disable the two Telegram tool nodes connected to the AI Agent.
- Send a test message from the bot and capture its ID.
- Add that ID to the ignore filter, then re-enable the nodes.
⚙️ How It Works
- Trigger: The workflow starts when your Telegram bot receives a message.
- Ignore Self: If the message was sent by the bot itself, the workflow stops.
- AI Analysis: The message is passed to an AI agent (OpenAI) that determines what action to take.
- Decision Tree:
- 📌 Create a new task in ClickUp
- ✏️ Update an existing task
- 🔍 Find a task and return its details
- 🗑️ Delete a task
- ❓ Ask for more details if input is unclear
- ✅ Send confirmation or feedback to the user
💡 Example Use Cases
- “Add a task called ‘Follow up with supplier’ for tomorrow.”
- “What tasks are due this week?”
- “Update the task ‘Website Launch’ to ‘in progress’.”
- “Delete the task ‘Old client notes’.”
This workflow is ideal for solo operators, remote teams, or anyone who wants to manage ClickUp while on the go — without switching apps.
🛠️ Setup Instructions
- Telegram Bot:
- Create a Telegram bot using BotFather
- Add your Telegram credential to all Telegram nodes in this workflow
- Bot ID Filter:
- Add your bot’s Telegram user ID to the
Ignore Bot Messagesnode
- Add your bot’s Telegram user ID to the
- OpenAI Setup:
- Add your OpenAI credential to the AI Agent node
- ClickUp Integration:
- Connect your ClickUp credential
- Set your workspace, list, and folder IDs in the task creation and search nodes
🚀 How to Use
- Save the Telegram bot to your contacts
- Open the Telegram chat with your bot and send a message like:
"Add a task to follow up with invoices every Friday" - The bot will reply with confirmation or ask for clarification
- The task will appear in your ClickUp workspace within seconds
🔧 Customization Options
- Add new intents to the AI agent to support more actions (e.g., time tracking or comments)
- Customize the bot’s responses for branding or tone
- Add notifications or reminders using additional Telegram nodes
✨ Why It's Useful
This workflow eliminates the friction of switching between Telegram and your task manager. It reduces manual data entry, saves time, and gives you a simple way to manage your to-do list using natural language — even on mobile.
Perfect for freelancers, managers, or team leads who want a faster, more intuitive way to stay organized.
Manage ClickUp Tasks with Natural Language via Telegram Bot and GPT-4
This n8n workflow empowers you to interact with your ClickUp tasks using natural language commands sent through a Telegram bot. By leveraging an AI Agent powered by an OpenAI Chat Model and simple memory, it transforms your conversational input into actionable task management.
What it does
This workflow simplifies task management by:
- Listening for Telegram Messages: It acts as a Telegram bot, constantly monitoring for incoming messages.
- Processing with an AI Agent: Each incoming message is fed to an AI Agent (likely a LangChain agent) that interprets the natural language intent.
- Utilizing an OpenAI Chat Model: The AI Agent uses an OpenAI Chat Model (e.g., GPT-4) to understand the user's request and determine the appropriate action.
- Maintaining Context with Simple Memory: A simple memory buffer helps the AI Agent remember previous interactions, allowing for more fluid and contextual conversations.
- Conditional Logic: An "If" node is present, suggesting that the workflow can branch its execution based on certain conditions, likely determined by the AI Agent's output (e.g., if the intent is to create a task vs. list tasks). (Note: While the "If" node is present, its specific conditions and subsequent actions are not defined in the provided JSON. It indicates a capability for branching logic.)
Prerequisites/Requirements
To use this workflow, you will need:
- n8n Instance: A running n8n instance.
- Telegram Bot Token: A Telegram bot configured and its API token.
- OpenAI API Key: An API key for OpenAI to use their chat models (e.g., GPT-3.5, GPT-4).
- ClickUp Account (Implied): While not explicitly shown in the provided JSON, the directory name strongly suggests integration with ClickUp. You would likely need a ClickUp API token or credential configured within the AI Agent's tools (which are not detailed in this JSON).
Setup/Usage
- Import the Workflow: Download the provided JSON and import it into your n8n instance.
- Configure Credentials:
- Telegram Trigger: Set up your Telegram Bot credential with your bot's API token.
- OpenAI Chat Model: Configure your OpenAI credential with your API key.
- (Implied) ClickUp Credentials: If the AI Agent is configured to interact with ClickUp, ensure you have the necessary ClickUp credentials set up in n8n.
- Activate the Workflow: Once credentials are configured, activate the workflow.
- Interact via Telegram: Send messages to your Telegram bot. The AI Agent will interpret your requests and, based on its configuration, perform actions (e.g., create tasks, retrieve information) in ClickUp.
This workflow provides a powerful foundation for building a natural language interface to your task management system, making it easier and more intuitive to stay organized.
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