Credit Repair Virtual Assistant – Manual Disputes + GHL Management

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TYPE OF WORK

Part Time

SALARY

400/Monthly Paid Biweekly

HOURS PER WEEK

20

DATE UPDATED

Aug 9, 2025

JOB OVERVIEW

About Us

TAR Associates, home of the CSK Legacy Dojo, is a credit & capital strategy powerhouse. We don’t just fix credit, we rebuild legacies. Our approach is hands on, strategic, and fully personalized. We work with personal credit repair, business credit structuring, and high limit funding, giving our clients results without gimmicks or cookie-cutter methods.

We are seeking a detail-oriented, humble, and highly organized Credit Repair Virtual Assistant with experience in manual credit repair, GoHighLevel (GHL), and credit report analysis to join our growing team.

Position Overview

This is NOT a click and send preomade templates role. We create personalized, humanized dispute letters using ChatGPT, Gemini and custom strategies for each client based on their specific credit report and situation.

You will:
• Manually analyze 3-bureau credit reports (Experian, Equifax, TransUnion)
• Draft custom dispute letters (Metro 2 + Consumer Law focus) using ChatGPT (we’ll train on our style)
• Manage client accounts in GoHighLevel (GHL)
• Send client updates & progress reports through GHL
• Prepare detailed credit analysis reports for clients
• Track every dispute, certified mailing, and piece of documentation sent to credit bureaus, original creditors, and collection agencies, keeping an organized system for follow-ups and escalations
• Submit complaints to the FTC, CFPB, Better Business Bureau, and Attorney General when needed (training provided)
• Coordinate escalation tactics, including arbitration & lawyer letters (training provided)
• Clean CheckSystems & Early Warning records
• Suppress / clean secondary bureaus (LexisNexis, Innovis, Clarity, SageStream, etc.)
• Update and correct personal identifying information on credit reports to help prevent re-verification


Required Skills & Qualifications
• Experience in credit repair (manual dispute experience preferred over automated software)
• Strong understanding of credit reports, scoring models, and personal data updates
• Familiarity with CheckSystems, Early Warning, and secondary bureau cleaning
• Familiarity with GoHighLevel (GHL) or willingness to learn quickly
• Knowledge of ChatGPT and ability to adapt AI outputs into humanized, compliant letters
• Highly organized, able to track disputes, documentation, and timelines without errors
• Attention to detail and ability to keep multiple client files updated and accurate
• Clear written English and ability to communicate professionally with clients
• Coachable and humble, willing to learn and follow proven processes without arrogance
• High-speed internet & secure computer


Preferred (but not required)
• Knowledge of Metro 2 compliance standards
• Experience with DisputeFox (not for templates, for client management purposes only)
• Familiarity with secondary bureau suppression (LexisNexis, SageStream, etc.)
• Understanding of business credit repair or funding prep

Tools We Use
• GoHighLevel (CRM & client portal)
• DisputeFox (client data organization)
• ChatGPT & Gemini (for drafting custom letters)
• Google Drive & Docs
• ClickUp (task management)
Email, Slack, WhatsApp, & Zoom for communication

Work Schedule & Pay
• Part-Time (approx. 15–20 hours/week)
• Must be available during U.S. business hours (9 AM–5 PM EST)
• $400/month – paid bi-weekly
• Growth opportunities available as client base expands

How to Apply

Send the following:
1. Your resume (PDF preferred)
2. A short description of your credit repair experience (include specific tasks you’ve done)
3. Example of a custom dispute letter you’ve written (you can redact personal info)
4. Your availability & timezone
5. Your experience with GHL and ChatGPT

???? This is not a quick-turnover role, we are looking for someone who wants to grow with us, master our methods, and become a key player in a high-impact credit repair operation.

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