Created on 1st March 2025
•
Trading is a high-risk skill game that demands extensive research, experience, and emotional control. Many aspiring traders struggle with:
Time-Consuming Learning Curve – Technical and fundamental analysis require deep understanding and practice.
Access to Alpha – Profitable trading signals are often locked behind exclusive groups.
Emotional Trading – Retail traders frequently make impulsive decisions, leading to significant losses.
This project democratizes access to profitable trading strategies by enabling users to own their trading IP, leverage AI-driven insights, and follow proven strategies in a transparent, decentralized way.
Expert traders sign up and verify their identity via Humanity Protocol to claim a "Trader" credential.
Upon signing up, a Story IP Collection is deployed, allowing traders to own the intellectual property of all their posted trades.
Strategy Selection & AI Assistance
Experienced traders (Chefs) design and share reputable trading strategies.
Users can invest in these strategies, with performance fees allocated to Chefs when trades are profitable.
Before execution, a fine-tuned LLM with RAG-enhanced sentiment and trading data evaluates trades against user-defined criteria.
Trade Execution: Two Modes
BLUE PILL (Beginner Mode) – One-click auto-trading. The AI handles everything, allowing users to earn without prior Web3 knowledge.
RED PILL (Advanced Mode) – Users customize AI parameters, set personal trading goals, and selectively follow specific traders.
This approach bridges the gap between experienced traders and newcomers, ensuring transparency, automation, and ownership in the trading ecosystem.
Our development process follows an agile methodology with weekly sprints:
Managing IPs on chain
Solidity contracts for IP tokenization and profit distribution
Extensive testing on multiple testnets before mainnet deployment
AI Model Training:
Fine-tuning of base models on proprietary trading datasets
Continuous improvement via feedback loops from successful/unsuccessful trades
Regular retraining with new market data
Frontend Iterations:
User testing with both beginner and experienced traders
UX optimizations for both BLUE PILL and RED PILL modes
Progressive enhancement for users with varying levels of Web3 experience
Integration Testing:
End-to-end testing of the complete trade lifecycle
Load testing for concurrent users and high-frequency trading scenarios
Cross-chain transaction verification and testing
Tracks Applied (11)
Humanity Protocol
Flow
Wormhole network
Flow
zircuit
Story
Sui | Walrus
Base
Chainlink
ora