Prop Firm Deal Finder Details

Prop Firm Deal Finder (PFDF) is a free MCP server that gives AI assistants real-time access to live discount codes across 20+ proprietary trading firms. It provides 6 tools: get_deals (all current discounts), search_firms (search by name/asset class), compare_firms (side-by-side comparison of challenges), find_cheapest (cheapest challenge by account size with PFDF code applied), get_firm_details (15+ data points per firm), and get_discount_code (universal PFDF code). Covers firms like Topstep, Apex Trader Funding, MyFundedFutures, FTMO, The Funded Trader, and 14 more. No API key required. Install via npx propfirmdealfinder-mcp-server or connect remotely at https://web-production-6607c.up.railway.app/mcp

Use Case

Traders use PFDF to instantly find the cheapest prop firm challenge with the best discount code applied. Instead of manually visiting 20+ firm websites, users ask their AI assistant (Claude, ChatGPT, Cursor, etc.) questions like "What's the cheapest 50K futures challenge right now?" or "Compare Topstep vs Apex pricing" and get real-time answers with savings calculated. The universal discount code PFDF works at all partner firms for 5-80% off.

Available Tools (6)

Examples & Tutorials

Quick Start

npx propfirmdealfinder-mcp-server

No API key needed. Works instantly with Claude, ChatGPT, Cursor, and any MCP-compatible client.

Example Queries


  • "What are the best prop firm deals right now?"

  • "Compare Topstep vs Apex Trader Funding"

  • "What's the cheapest 50K futures challenge?"

  • "How do I use the PFDF discount code?"
  • Remote Connection

    Connect via Streamable HTTP (no install needed):

    URL: https://web-production-6607c.up.railway.app/mcp

    Links


  • Website: https://propfirmdealfinder.com

  • GitHub: https://github.com/chrisbusbin-pixel/propfirmdealfinder-mcp-server

  • npm: https://www.npmjs.com/package/propfirmdealfinder-mcp-server
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    Last Updated4/5/2026

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