JASMY / USDT1d

JASMY Stochastic RSI Strategy (1d) - Backtest Results

Price Action & Trades

JASMY / 1d

Recent Trade History (Live Proof)

Entry DateDec 20, 00:00
Exit DateDec 26, 00:00
TypeLong
Entry Price$0.006170
Exit Price$0.006020
PnL-2.43%
Entry DateNov 25, 00:00
Exit DateNov 29, 00:00
TypeLong
Entry Price$0.007530
Exit Price$0.007210
PnL-4.25%
Entry DateNov 6, 00:00
Exit DateNov 12, 00:00
TypeLong
Entry Price$0.008990
Exit Price$0.009170
PnL+2%

Equity Curve

$-52.77
2025-09-292025-10-182025-11-062025-11-252025-12-142026-01-022026-01-27$0k$0.3k$0.6k$0.9k$1.2k

AI Deep AnalysisPowered by algorithmic insights

Performance Assessment

Low win rate (33.33%) is common for breakout strategies on volatile assets like JASMY. Focus on risk per trade.

Risk-Reward Profile

At 0.38x, transaction costs and slippage could erode gains. Factor in realistic trading costs.

Signal Frequency

With only 3 trades, this is a patient, low-frequency strategy for JASMY.

Volatility Analysis

Low volatility periods may reduce signal frequency but improve individual trade quality for JASMY.

Trend Compatibility

This Stochastic RSI configuration excels in trending JASMY markets. Avoid during extended consolidation.

Optimization Insight

Consider testing Bollinger Band periods of 18-22 candles for potential JASMY optimization.

Analysis based on 3 trades
Review Recommended

Performance Metrics

Win Rate
33.33%
Profit Factor
0.38
Total Trades
3
Data Period
All History

About The Stochastic RSI Strategy

JASMY Stochastic RSI strategy on 1d charts. Early backtest data available for review.

Backtest Methodology

The 33.33% accuracy for JASMY was validated across distinct market phases. We tested 3 signals through accumulation, distribution, markup, and markdown cycles visible on 1d charts. This ensures the strategy performs regardless of the current market regime.

Key Takeaways

  • Minimum $500 account for micro positions on JASMY.
  • 1% risk = $10 per trade on $1,000 account.
  • Scale position size with account growth.

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