1. IF price forms:
- Higher highs + higher lows → TREND = BUY
- Lower highs + lower lows → TREND = SELL
ELSE → NO TRADE
2. IF:
- Trend = BUY
- Price retraces to support zone
- Bullish engulfing candle forms
- TDI green crosses above red (optional)
THEN:
- Execute BUY
3. IF:
- Trend = SELL
- Price retraces to resistance
- Bearish engulfing forms
- TDI confirms
THEN:
- Execute SELL
4. Risk per trade = 1% of account
Lot size = calculated dynamically based on stop loss
5. SL = below/above last structure
OR
SL = fixed 15–30 pips (gold), 10–20 pips (forex)
6. TP = 2x stop loss (minimum RR 1:2)
OR
TP at next support/resistance
7. Max trades per day = 3
Max daily loss = 3%
IF daily loss hit → STOP TRADING
8. Trade ONLY between:
- 13:00 – 17:00 UTC (London)
- 17:00 – 21:00 UTC (NY overlap)
Avoid:
- Asian session
9. IF:
- Market is ranging (no clear trend)
- Spread too high
- High-impact news upcoming (within 15 mins)
- Low volatility
THEN:
- DO NOT TRADE
10. IF price reaches +1R:
- Move SL to entry
11. At 1.5R:
- Close 50% position
- Let rest run
12. - Max open trades = 2
- Max correlation exposure (don’t trade similar pairs)
- Emergency shutdown if equity drops 10%
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