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Track GitHub trending repositories with ScrapeOps & Google Sheets

Ian KerinsIan Kerins
10 views
2/3/2026
Official Page

Overview

This n8n template tracks GitHub Trending repositories (daily/weekly/monthly), parses the trending page into structured data (rank, repo name, stars, language, etc.), and stores results in Google Sheets with automatic deduping. It’s designed for teams who want a simple “trending feed” for engineering research, developer tooling discovery, and weekly reporting.

Who is this for?

  • Developers, PMs, DevRel, and tooling teams who want a lightweight trend radar
  • Anyone building a curated list of fast-rising open source projects
  • Teams who want Sheets-based tracking without manual copy/paste

What problems it solves

  • Automatically collects GitHub Trending data on a schedule
  • Prevents duplicate rows using a stable dedupe_key
  • Updates existing rows when values change (rank/stars/score)

How it works

  1. A schedule triggers the workflow.
  2. Inputs define the trending window (daily, weekly, or monthly) and optional languages.
  3. ScrapeOps fetches the GitHub Trending HTML reliably.
  4. The workflow parses repositories and ranks from the HTML.
  5. Cleaned rows are written to Google Sheets using Append or Update Row matching on dedupe_key.

Setup steps (~5–10 minutes)

  1. ScrapeOps
  1. Google Sheets
  • Duplicate this sheet/create a Sheet and add a trending_raw tab.
  • Add columns used by the workflow (e.g. captured_at, since, source_url, rank_on_page, full_name, repo_url, stars_total, forks_total, stars_in_period, score, dedupe_key).
  • In the Google Sheets node, choose Append or Update Row and set Column to match on = dedupe_key.
  1. Customize
  • Change since to daily/weekly/monthly in the Inputs node.
  • Add languages via languages_csv (example: any,python,go,rust).
  • Adjust delay if needed.

Pre-conditions

  • ScrapeOps account + API key configured in n8n
  • Google Sheets credentials connected in n8n
  • A Sheet tab named trending_raw with matching columns

Disclaimer

This template uses ScrapeOps as a community node. You are responsible for complying with GitHub’s Terms of Service, robots directives, and applicable laws in your jurisdiction. Scraping targets can change at any time; you may need to update wait times and parsing logic accordingly. Use responsibly for legitimate business purposes.

n8n Workflow: Basic Google Sheets Data Processing Template

This n8n workflow provides a foundational structure for processing data and writing it to Google Sheets. It includes core nodes for scheduling, data manipulation, and looping, making it a versatile template for various data automation tasks.

What it does

This workflow demonstrates a basic data processing pipeline:

  1. Triggers on a Schedule: The workflow starts automatically based on a predefined schedule.
  2. Edits Fields: It includes a placeholder for modifying or setting data fields as needed.
  3. Loops Over Items: It's configured to process data in batches, allowing for iterative operations on multiple items.
  4. Waits: A Wait node is included, which can be used to introduce delays between operations, useful for rate limiting or staggering tasks.
  5. Executes Custom Code: A Code node is present for executing custom JavaScript logic, enabling advanced data transformations or conditional processing.
  6. Writes to Google Sheets: Finally, it includes a Google Sheets node, ready to append or update data in a specified spreadsheet.

Prerequisites/Requirements

  • n8n Instance: An active n8n instance to import and run the workflow.
  • Google Sheets Account: A Google account with access to Google Sheets.
  • Google Sheets Credentials: Configured Google Sheets OAuth2 or API Key credentials within n8n.

Setup/Usage

  1. Import the Workflow:
    • Download the provided JSON content.
    • In your n8n instance, go to "Workflows" and click "New".
    • Click the "Import from JSON" button and paste the workflow JSON.
  2. Configure Google Sheets Credentials:
    • Click on the "Google Sheets" node.
    • In the node settings, select or create a new Google Sheets credential. Follow the n8n documentation for setting up Google Sheets credentials if you haven't already.
  3. Customize the Workflow:
    • Schedule Trigger: Adjust the "Schedule Trigger" node to define how often you want the workflow to run (e.g., daily, hourly).
    • Edit Fields (Set): Modify this node to transform or add specific data fields before writing to Google Sheets.
    • Loop Over Items (Split in Batches): Configure the batch size if you are processing a large number of items.
    • Wait: Adjust the delay duration if necessary.
    • Code: Implement your custom JavaScript logic here to perform any advanced data manipulation.
    • Google Sheets:
      • Specify the "Spreadsheet ID" and "Sheet Name" where you want to write the data.
      • Choose the "Operation" (e.g., Append Row, Update Row).
      • Map the data fields from previous nodes to the columns in your Google Sheet.
  4. Activate the Workflow: Once configured, activate the workflow by toggling the "Active" switch in the top right corner of the workflow editor.

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