fraktom
  • Fraktom Documentation
  • Introduction
  • Platform Overview
  • Getting Started
  • How We Simulate Real On-Chain Behavior
  • How Fraktom integrates Real-Time Solana Data with Helius
  • Why Fraktom?
  • Roadmap Highlights
  • Community + Support
  • Final Words
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Platform Overview

Fraktom is built around a simulation system designed to replicate the fast-paced, high-risk nature of Solana memecoin trading.

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Last updated 10 days ago

Each component of the platform is designed to provide realistic learning experiences through interactivity, decision-making, and feedback.

1. Simulated Trading Environment

A fully interactive UI mimics real-world token launches and on-chain conditions. Users engage with simulated tokens, wallet flows, and liquidity metrics, making real-time decisions under time pressure. Every action mirrors the volatility and unpredictability of actual memecoin environments, without the financial risk.

2. Quiz & Scenario Engine

At the heart of Trado is a scenario engine powered by real Solana case studies — including rug pulls, stealth launches, pump & dumps, and fake influencer-driven hype.

Each scenario presents users with a time-sensitive situation requiring a judgment call.

For example:

Your decision affects your simulated PnL, instinct score, and leaderboard position — giving you feedback with every choice.

3. Fake Trading Layer

All trades on Trado are executed using Fake SOL, a test balance designed for risk-free experimentation.

This allows users to:

  • Practice high-speed sniping

  • Respond accordingly to volatility in real time

  • Detect rug behavior as it unfolds

Trade data is tracked via a user dashboard to monitor accuracy, decisions, and simulated profit/loss.

4. Leaderboards & Progress

Trado tracks user performance across core metrics:

  • Decision accuracy

  • Time to action

  • Rug avoidance rate

  • Scenario score performance

Top performers are ranked on live leaderboards, while long-term progress is saved to user profiles to reflect personal improvement over time.