Auto scrape X image posts & publish to Telegram with Google Sheets storage
Who’s it for
This automation template is designed for content creators, social media managers, and automation enthusiasts who want to automatically scrape X (Twitter) posts with images and publish them directly to a Telegram channel — without writing a single line of code.
With this workflow, you can keep your Telegram community constantly updated with the latest tweets from any account. It collects, cleans, and shares content in a fully automated cycle.
How It Works
- Trigger – Start scraping from a specific X (Twitter) account using its unique ID and username.
- Fetch Data – The workflow calls the Twitter API (or a scraping endpoint) to gather recent tweets.
- Format & Filter – Extracts key fields (author name, username, text, URL, creation date, images, video) and keeps only tweets containing text and at least one image.
- Remove Duplicates – Ensures no tweet is processed or posted twice.
- Save to Google Sheets – Stores cleaned tweet data for backup and future use.
- Clean Text – Removes unwanted links and hashtags for a polished message.
- Loop & Publish – Sends each tweet (text + image) to your Telegram channel.
- Delay – Waits 3 minutes between each post to prevent spamming.
How to Use
- Enter the Twitter ID and username of the target account.
- Connect your Google Sheets account to store scraped tweets.
- Connect your Telegram bot and specify the channel for publication.
- Run the workflow — tweets will be automatically scraped, filtered, saved, and posted to Telegram.
Requirements
- A valid Twitter API connection or alternative scraping endpoint.
- A Google Sheet to store tweet data.
- A Telegram Bot linked to your channel.
- n8n (or any compatible automation platform) to run the workflow.
Need help
Auto Scrape X Image Posts & Publish to Telegram with Google Sheets Storage
This n8n workflow automates the process of scraping image posts from X (formerly Twitter), storing their details in Google Sheets, and then publishing these images to a Telegram channel. It's designed to help you curate and share visual content from X efficiently.
What it does
- Manually Trigger: The workflow starts when manually triggered.
- Scrape X Posts: It makes an HTTP request to an external API (likely a scraping service) to fetch image posts from X.
- Process Scraped Data: The raw data from the scraper is processed using a Code node to extract relevant information (like image URLs, post text, etc.).
- Remove Duplicates: It then removes any duplicate posts based on a defined criterion (likely the post URL or ID) to prevent redundant entries.
- Store in Google Sheets: The unique post details are appended to a specified Google Sheet, acting as a database for all scraped content.
- Loop Over Items: The workflow then iterates through each unique post.
- Wait: A short delay is introduced for each item, possibly to respect API rate limits or to space out Telegram posts.
- Publish to Telegram: Finally, for each post, it sends the image and associated text to a designated Telegram channel or chat.
Prerequisites/Requirements
- n8n Instance: A running n8n instance.
- X (Twitter) Scraper API: Access to an external API capable of scraping X posts (e.g., a custom API or a third-party scraping service). You will need the API endpoint and any necessary authentication.
- Google Sheets: A Google account with access to Google Sheets. You will need to create a spreadsheet and potentially a specific sheet within it to store the data.
- Telegram Bot: A Telegram bot token and the chat ID of the channel/group where you want to publish the posts.
- n8n Credentials:
- Google Sheets API credentials (OAuth2 or Service Account).
- Telegram API credentials (Bot Token).
- HTTP Request credentials (if your scraping API requires authentication, e.g., API Key, Bearer Token).
Setup/Usage
- Import the Workflow: Import the provided JSON into your n8n instance.
- Configure Credentials:
- Google Sheets Node: Set up your Google Sheets credential. Specify the Spreadsheet ID and Sheet Name where the data will be stored.
- HTTP Request Node: Configure the URL for your X scraping API. Add any required headers or query parameters for authentication or specific search queries.
- Telegram Node: Set up your Telegram credential using your bot token. Enter the Chat ID of your target Telegram channel/group.
- Review Code Node: The "Code" node is responsible for parsing the data from your X scraper. You might need to adjust the JavaScript code within this node to correctly extract the relevant fields (e.g.,
image_url,post_text,post_link) based on the exact structure of the data returned by your chosen X scraper API. - Configure Remove Duplicates: Ensure the "Remove Duplicates" node is configured to use a unique identifier from your X posts (e.g., a post ID or URL) to effectively prevent duplicates.
- Adjust Wait Time: Modify the "Wait" node's duration if you need to adjust the delay between publishing posts to Telegram.
- Activate the Workflow: Once all configurations are complete, activate the workflow.
- Execute Manually: Click "Execute workflow" on the "Manual Trigger" node to run the workflow.
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