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CYBERPULSE AI redOps: credential trap sim: fake login page simulation

Adnan TariqAdnan Tariq
73 views
2/3/2026
Official Page

📝 Description:

Simulate a phishing login page to test user behavior and SOC response. This controlled workflow sends trap links to predefined targets and logs simulated interaction results—without capturing real credentials.

✅ Who’s It For:

Red Teams conducting phishing awareness campaigns

SOCs validating alert triggers for credential-based phishing

GRC/Compliance teams performing control testing

⚙️ How It Works:

Loads test targets from Google Sheets

Generates trap page URLs (non-malicious)

Fakes login interaction upon click

Logs timestamped event and status to Google Sheet

📦 Requirements:

Google Sheets credentials

Optional: Use Vercel/Cloudflare to deploy a real HTML page for advanced simulation

No sensitive data is collected

📁 File Templates:

RedOps_CredentialTrapSim_Log_Template.xlsx

email name team payload response status module timestamp jane@org.com Jane Doe HR fake-login.com User clicked Simulated Credential_Trap_Sim 2025-07-27T11:00:00Z

🧠 Customization Tips:

Change trap content using a public static site

Connect to real EDR/alert system for end-to-end SOC validation

Adjust payload wording for different awareness campaigns

⚠️ Ethics & Warning:

This module is 100% simulated and does not capture real credentials. Use only in authorized environments with informed consent. It is designed for training, awareness, and control testing under ethical guidelines.

🔗 Part of the CYBERPULSE AI RedOps Suite 🌐 https://cyberpulsesolutions.com 📧 info@cyberpulsesolutions.com

n8n CyberPulse Credential Trap Simulation

This n8n workflow provides a basic framework for simulating a credential trap or fake login page scenario. It allows for manual initiation and includes a placeholder for logging collected "credentials" into a Google Sheet, with a conditional check that can be customized.

What it does

  1. Manually Triggered: The workflow is initiated manually by clicking the 'Execute workflow' button.
  2. Edit Fields (Placeholder): A "Set" node is included, likely intended for transforming or preparing data, such as simulated credentials, before further processing.
  3. Conditional Logic: An "If" node is present, suggesting a conditional check that could be used to validate or categorize the simulated credentials (e.g., check for specific patterns, valid formats, or known fake credentials).
  4. Log to Google Sheets: A "Google Sheets" node is included, indicating that the workflow is designed to write data (likely the simulated credentials) to a Google Sheet.

Prerequisites/Requirements

  • n8n Instance: A running n8n instance to import and execute the workflow.
  • Google Account: A Google account with access to Google Sheets for storing the simulated data.
  • Google Sheets Credential in n8n: You will need to set up a Google Sheets credential in your n8n instance to allow the workflow to interact with your spreadsheets.

Setup/Usage

  1. Import the Workflow:
    • Copy the provided JSON code.
    • In your n8n instance, go to "Workflows".
    • Click "New" -> "Import from JSON".
    • Paste the JSON code and click "Import".
  2. Configure Credentials:
    • Click on the "Google Sheets" node.
    • Select or create a new Google Sheets credential. Ensure it has the necessary permissions to write to your desired spreadsheet.
  3. Configure Google Sheet:
    • Specify the "Spreadsheet ID" and "Sheet Name" in the "Google Sheets" node where you want the data to be written.
    • Ensure the target sheet exists and is accessible.
  4. Customize Edit Fields (Set) Node:
    • The "Edit Fields" (Set) node is currently a placeholder. You would typically use this to define the structure of the "fake login" data you want to process, or to extract specific fields from an incoming webhook (if you were to add one).
  5. Customize Conditional Logic (If) Node:
    • The "If" node needs to be configured with the specific conditions you want to evaluate. For example, you might check if a 'username' or 'password' field exists, or if certain values match.
  6. Execute the Workflow:
    • Click the "Execute Workflow" button on the "Manual Trigger" node to run the workflow.
    • Observe the output in the Google Sheet.

Note: This workflow is a foundational template. To fully simulate a credential trap, you would typically integrate it with a webhook trigger that receives data from a fake login page (not included in this JSON), and further enrich the "Edit Fields" and "If" nodes to process and validate the incoming data.

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