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πŸ¦€ ClawHub

Trading DevBox

by @uu-z

Trading strategy development sandbox. User describes trading intent in natural language, agent writes a Python backtest strategy and returns results.

Versionv0.1.0
Downloads3,618
Installs23
TERMINAL
clawhub install trading-devbox

πŸ“– About This Skill


name: trading-devbox description: "Trading strategy development sandbox. User describes trading intent in natural language, agent writes a Python backtest strategy and returns results." user-invocable: true

Trading DevBox

Help users develop and backtest trading strategies from natural language descriptions.

When to Use

  • User describes a trading idea or intent (e.g. "SOL 跌 10% δΉ°ε…₯,梨 30% ζ­’η›ˆ")
  • User asks to write, backtest, or optimize a trading strategy
  • User mentions keywords: η­–η•₯, ε›žζ΅‹, backtest, strategy, trading
  • Workflow

    1. Parse the user's trading intent into structured parameters: - Asset (e.g. SOL, BTC, ETH) - Entry condition (e.g. price drops 10%) - Exit condition (e.g. take profit at 30%, stop loss at 5%) - Timeframe (e.g. 1h, 4h, 1d)

    2. Confirm the parsed parameters with the user before proceeding.

    3. Generate a Python backtest strategy using backtrader:

    mkdir -p /tmp/trading-devbox && cat > /tmp/trading-devbox/strategy.py << 'PYEOF'
    import backtrader as bt
    import sys
    import json

    class UserStrategy(bt.Strategy): params = dict( entry_drop_pct=10, take_profit_pct=30, stop_loss_pct=5, )

    def __init__(self): self.order = None self.buy_price = None

    def next(self): if self.order: return if not self.position: # entry: price dropped by entry_drop_pct from recent high high = max(self.data.close.get(size=20) or [self.data.close[0]]) drop = (high - self.data.close[0]) / high * 100 if drop >= self.p.entry_drop_pct: self.order = self.buy() self.buy_price = self.data.close[0] else: pnl = (self.data.close[0] - self.buy_price) / self.buy_price * 100 if pnl >= self.p.take_profit_pct or pnl <= -self.p.stop_loss_pct: self.order = self.sell()

    if __name__ == '__main__': print(json.dumps({"status": "ok", "message": "Strategy generated"})) PYEOF python3 /tmp/trading-devbox/strategy.py

    4. Report the result to the user in a clear format.

    Response Format

    Always respond in the user's language. Structure the response as:

  • Parsed intent summary
  • Strategy parameters
  • Execution result or next steps
  • ⚑ When to Use

    TriggerAction
    - User asks to write, backtest, or optimize a trading strategy
    - User mentions keywords: η­–η•₯, ε›žζ΅‹, backtest, strategy, trading