CYBERPULSE AI redOps: phishing simulation with redirect tracking
Description:
Simulate cloaked phishing links that redirect through a controlled proxy. This module tracks if secure email gateways (SEGs) or sandboxes trigger the redirect before users do. Logs access, response, and timestamps in Google Sheets.
Who’s It For:
Red Teams simulating real-world phishing redirects
Security teams testing gateway/sandbox behavior
Awareness teams tracking click-throughs
How It Works:
Loads target list from Google Sheets
Generates dynamic redirect links per target
Emails the links using Gmail or SMTP
Simulates access via webhook or internal call
Logs metadata and redirect access to Sheets
Requirements:
Google Sheet Requirements
- Sheet Name:
Redirect_Logs - Required Columns: name, team, email, module, status, payload, response, timestamp
Google Sheets credentials
Email service (Gmail, SMTP, or custom node)
Optional: Real endpoint for link redirection (e.g., Vercel Function, Cloudflare Worker)
Setup Instructions
- Clone or copy the provided Google Sheet template (linked below).
- Set up the webhook trigger in the Redirect Proxy node.
- Use URL shortener node (optional) to obfuscate redirect links.
- Connect Google Sheets node and map fields: timestamp, IP, user-agent, original URL.
- Configure redirection logic using IF and Set nodes.
- Run a test redirect to validate Google Sheet logging.
File Templates:
RedOps_RedirectCloak_Log_Template.xlsx
email name team payload response status module timestamp test@org.com John Doe IT redirect.link/... Redirect triggered Simulated RedirectCloak 2025-07-27T12:00:00Z
Customization
- Redirect Logic: Modify the
HTTP ResponseorSetnode to redirect to real servers or simulation targets. - Tracking Format: Adjust the structure of the logged data — include fields like user-agent, referrer, campaign ID, etc.
- Redirection Endpoint: Host the redirection logic on a public API gateway (e.g., AWS API Gateway, Vercel Edge Function) if deploying outside of n8n.
- Obfuscation: Integrate a URL shortener (like Bitly) or a custom domain to hide the true destination during simulations.
Ethics Note:
This module is intended for internal simulations only and does not contain malicious payloads. Always use with authorization and red team awareness protocols.
🔗 Part of the CYBERPULSE AI RedOps Suite 🌐 https://cyberpulsesolutions.com 📧 info@cyberpulsesolutions.com
n8n Workflow: Phishing Simulation Redirect Tracking (Placeholder)
This n8n workflow is a foundational template designed to interact with Google Sheets and transform data. While the directory name suggests a "Phishing Simulation with Redirect Tracking" purpose, the current JSON definition primarily focuses on data manipulation and storage within Google Sheets, acting as a placeholder or initial step for a more complex process.
What it does
This workflow currently performs the following steps:
- Manual Trigger: Initiates the workflow upon a manual click of the 'Execute workflow' button within n8n.
- Edit Fields (Set): Includes a "Set" node, which is typically used to add, remove, or modify fields in the incoming data. In its current state, it acts as a placeholder for data transformation.
- Google Sheets Interaction: Contains a Google Sheets node, indicating an intention to read from or write data to a Google Sheet. This would likely be used to store or retrieve simulation data, user interactions, or tracking information.
- Sticky Note: A "Sticky Note" is present, serving as a comment or reminder within the workflow, likely for documentation or future development.
Prerequisites/Requirements
To fully utilize and expand this workflow, you will need:
- n8n Instance: A running instance of n8n.
- Google Account: A Google account with access to Google Sheets.
- Google Sheets Credential: An n8n credential configured for Google Sheets (OAuth 2.0 recommended).
Setup/Usage
- Import the Workflow: Import the provided JSON into your n8n instance.
- Configure Google Sheets Credential:
- Click on the "Google Sheets" node.
- Under "Credentials," select an existing Google Sheets credential or create a new one.
- Follow the n8n documentation for setting up Google Sheets OAuth 2.0 credentials if you need to create a new one.
- Customize "Edit Fields (Set)":
- Open the "Edit Fields (Set)" node.
- Configure it to add, remove, or modify data fields as required for your specific phishing simulation or data tracking needs.
- Expand the Workflow: This workflow serves as a starting point. To implement a full phishing simulation with redirect tracking, you would need to add nodes for:
- Sending emails (e.g., Email, SendGrid, Mailgun).
- Creating unique tracking URLs (e.g., using a Code node or URL Shortener).
- Handling webhooks for redirect tracking (e.g., Webhook node).
- Conditional logic (e.g., IF node) based on user interactions.
- Further data storage and analysis.
- Execute: Once configured and expanded, you can execute the workflow manually by clicking the "Execute workflow" button on the "Manual Trigger" node.
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