Automate Facebook group posting with Telegram messages and Google Sheets
What this template does
Automates posting to Facebook Groups via Airtop browser automation. Reads group links from Google Sheets, opens each group in a logged-in Airtop profile, types your prepared message, and submits with human-like delays. The message text is sent from your Telegram bot, so you can provide content directly in Telegram and it will be published to the selected groups.
How it works
- Telegram Trigger starts the run.
- Google Sheets — Get Group List reads rows with the
linkcolumn (Facebook Group URL). - Airtop — Start Browser → Create a window opens Facebook in a persistent profile.
- For each row:
- Load a page visits the group link.
- Scroll / Click / Type text fills the composer.
- Wait nodes add delays for realistic behavior.
- Loop Over Items controls batching and session termination.
Requirements
- n8n v1.105+
- Airtop profile logged into Facebook
- Google Sheet with a
linkcolumn - Telegram bot credentials stored in n8n (no secrets in nodes)
Setup steps
- Import the JSON template.
- Open Google Sheets node → pick your spreadsheet and sheet with
link. - Configure Telegram Trigger with your bot credentials.
- In Airtop — Start Browser, set
profileNameto your prepared FB profile. - The Type text node automatically uses the message you send to your Telegram bot (no need to hardcode it).
- Tune Wait nodes (1–5s between actions; longer if needed).
- Test on one group before scaling.
Safety & compliance
- No hardcoded API keys in HTTP nodes.
- Follow Facebook Terms: avoid spam, rotate content, throttle frequency.
- Post only where you have permission.
- Keep credentials in n8n’s Credentials storage.
Troubleshooting
- Composer not found → adjust the element description/selector in Airtop nodes.
- Slow loads → increase Wait durations.
- No rows → verify sheet selection and the
linkcolumn name. - Access issues → ensure your Airtop profile is logged in and allowed to post.
n8n Workflow: Telegram-Triggered Google Sheets Data Processing
This n8n workflow automates the processing of data received via a Telegram message. It acts as a listener for specific Telegram commands, extracts relevant information, and then processes it through a series of steps including data manipulation and potential looping for batch operations.
What it does
This workflow streamlines the handling of incoming Telegram messages by:
- Listening for Telegram Messages: It continuously monitors a configured Telegram bot for new messages.
- Processing Incoming Data: It takes the message content from Telegram and prepares it for further steps.
- Editing Fields: It modifies or adds fields to the incoming data, likely to standardize it or extract specific values.
- Looping Over Items: It's designed to handle multiple items or process data in batches, indicating that the preceding steps might generate a list of items.
- Conditional Logic (Switch): It introduces conditional branching, allowing different actions to be taken based on certain criteria within the processed data.
- Waiting for a Duration: It can pause the workflow's execution for a specified period, potentially to respect API rate limits or introduce delays between operations.
- Google Sheets Integration: It interacts with Google Sheets, suggesting that data might be read from or written to a spreadsheet.
- Airtop Integration: It includes an Airtop node, indicating potential integration with Airtop for further data processing or actions.
Prerequisites/Requirements
To use this workflow, you will need:
- n8n Instance: A running n8n instance.
- Telegram Bot: A configured Telegram Bot token and a chat ID to receive messages.
- Google Account: Access to Google Sheets with appropriate permissions.
- Airtop Account: An Airtop account and credentials if the Airtop node is intended to perform actions.
Setup/Usage
- Import the Workflow: Download the provided JSON and import it into your n8n instance.
- Configure Telegram Trigger:
- Set up your Telegram Bot credentials in n8n.
- Configure the "Telegram Trigger" node to listen for messages from your bot. You might need to specify a webhook URL or polling interval.
- Configure Google Sheets:
- Set up your Google Sheets credentials in n8n.
- Configure the "Google Sheets" node with the Spreadsheet ID and Sheet Name it should interact with.
- Configure Airtop (if applicable):
- Set up your Airtop credentials in n8n.
- Configure the "Airtop" node according to the specific actions you want it to perform.
- Adjust "Edit Fields" and "Switch" Nodes: Modify the logic within the "Edit Fields" and "Switch" nodes to match your specific data transformation and conditional routing needs.
- Activate the Workflow: Once configured, activate the workflow to start listening for Telegram messages.
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