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Generate structured article summaries with Telegram, Claude AI & Jina Reader

DahianaDahiana
72 views
2/3/2026
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Article summarizer bot

Send any URL to your Telegram bot and get an AI summary instantly.

What it does

  • Receives URLs via Telegram
  • Fetches clean article content (removes ads, navbars)
  • Generates AI summary
  • Sends formatted summary back to Telegram

How to set up

  1. Create Telegram bot

    • Message @BotFather on Telegram
    • Run /newbot and follow prompts
    • Copy your bot token
    • Add credentials to n8n
  2. Get API keys (optional but recommended)

    • Jina AI: Sign up at jina.ai/reader
    • Add keys to nodes
  3. Configure AI model and output parser format

Requirements

  • Telegram bot token
  • OpenRouter API key or any other LLM you have

How to customize

  • Change summary format: Edit prompt in "Summarize Article" node
  • Update Output Parser schema (title, tags, etc)
  • Save to database: Enable Google Sheets node or add Notion/Airtable
  • Different language: Modify prompt to force specific language

Generate Structured Article Summaries with Telegram, Claude AI & Jina Reader

This n8n workflow automates the process of generating structured summaries for articles shared via Telegram, leveraging the power of AI and web content extraction. It allows users to quickly get key insights from articles without leaving their chat application.

What it does

This workflow streamlines the article summarization process through the following steps:

  1. Listens for Telegram Messages: It acts as a Telegram bot, waiting for incoming messages, specifically those containing URLs.
  2. Filters for URLs: It checks if the received message contains a valid URL. If not, it ignores the message.
  3. Extracts Article Content: For valid URLs, it uses the Jina Reader API to extract the clean, main content of the article from the provided URL, bypassing ads and irrelevant elements.
  4. Generates Structured Summary with AI: It then sends the extracted article content to a Claude AI model (via OpenRouter) to generate a structured summary. This summary is designed to include key information like the article's title, author, publication date, and a concise summary.
  5. Parses AI Output: The AI's response is parsed to extract the structured summary components.
  6. Stores Data in Google Sheets: The extracted article URL, title, author, publication date, and summary are recorded in a Google Sheet for archival and tracking purposes.
  7. Sends Summary to Telegram: Finally, it sends the generated structured summary back to the user in the Telegram chat where the original URL was shared.

Prerequisites/Requirements

To use this workflow, you will need:

  • Telegram Bot Token: A Telegram bot set up with a token for the Telegram Trigger and Telegram nodes.
  • OpenRouter API Key: An API key for OpenRouter to access the Claude AI model.
  • Jina Reader API Key: An API key for Jina Reader to extract clean article content.
  • Google Sheets Credential: A Google Sheets credential configured in n8n to write data to a spreadsheet.
  • Google Sheet: A Google Sheet with appropriate columns (e.g., URL, Title, Author, Date, Summary) to store the article data.

Setup/Usage

  1. Import the workflow: Download the JSON provided and import it into your n8n instance.
  2. Configure Credentials:
    • Set up your Telegram Bot credential for the Telegram Trigger and Telegram nodes.
    • Set up your OpenRouter credential for the OpenRouter Chat Model node.
    • Set up your Jina Reader credential for the HTTP Request node (this is implicitly used for the Jina Reader API call).
    • Set up your Google Sheets credential for the Google Sheets node.
  3. Update Google Sheets Node: In the Google Sheets node, select your spreadsheet and sheet name, and ensure the column mappings are correct based on your sheet's structure.
  4. Activate the workflow: Once all credentials are set and configurations are updated, activate the workflow.
  5. Use: Send an article URL to your configured Telegram bot. The bot will process the URL, summarize the article, and send the structured summary back to you, while also logging the details in your Google Sheet.

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