LIT LIT / DMAIL Crypto vs PYTH PYTH / DMAIL Crypto

Stats Comprehensive Analytics for the Selected Time Period

Detailed statistical analysis including performance metrics, risk indicators, technical analysis, and advanced ratios.

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Asset LIT / DMAILPYTH / DMAIL
📈 Performance Metrics
Start Price 3.611.52
End Price 56.3421.42
Price Change % +1,459.52%+1,312.63%
Period High 140.3022.48
Period Low 1.660.63
Price Range % 8,335.0%3,445.1%
🏆 All-Time Records
All-Time High 140.3022.48
Days Since ATH 2 days3 days
Distance From ATH % -59.8%-4.7%
All-Time Low 1.660.63
Distance From ATL % +3,287.1%+3,277.9%
New ATHs Hit 25 times35 times
📌 Easy-to-Understand Stats
Avg Daily Change % 12.88%6.51%
Biggest Jump (1 Day) % +86.35+7.27
Biggest Drop (1 Day) % -83.66-1.73
Days Above Avg % 29.7%25.3%
Extreme Moves days 6 (1.7%)8 (2.3%)
Stability Score % 0.0%0.0%
Trend Strength % 54.5%58.0%
Recent Momentum (10-day) % +102.40%+77.43%
📊 Statistical Measures
Average Price 8.253.00
Median Price 4.481.74
Price Std Deviation 10.923.31
🚀 Returns & Growth
CAGR % +1,759.99%+1,574.14%
Annualized Return % +1,759.99%+1,574.14%
Total Return % +1,459.52%+1,312.63%
⚠️ Risk & Volatility
Daily Volatility % 18.27%10.66%
Annualized Volatility % 349.02%203.64%
Max Drawdown % -91.83%-73.50%
Sharpe Ratio 0.1090.116
Sortino Ratio 0.1790.154
Calmar Ratio 19.16521.417
Ulcer Index 62.6333.13
📅 Daily Performance
Win Rate % 54.5%58.0%
Positive Days 187199
Negative Days 156144
Best Day % +195.40%+129.10%
Worst Day % -67.66%-33.36%
Avg Gain (Up Days) % +9.37%+6.41%
Avg Loss (Down Days) % -6.85%-5.91%
Profit Factor 1.641.50
🔥 Streaks & Patterns
Longest Win Streak days 139
Longest Loss Streak days 86
💹 Trading Metrics
Omega Ratio 1.6391.497
Expectancy % +1.99%+1.23%
Kelly Criterion % 3.11%3.26%
📅 Weekly Performance
Best Week % +361.14%+64.64%
Worst Week % -41.38%-40.25%
Weekly Win Rate % 58.5%58.5%
📆 Monthly Performance
Best Month % +268.92%+208.20%
Worst Month % -52.26%-52.94%
Monthly Win Rate % 61.5%61.5%
🔧 Technical Indicators
RSI (14-period) 77.0385.38
Price vs 50-Day MA % +133.33%+142.75%
Price vs 200-Day MA % +410.93%+435.69%

Performance Metrics: Shows the price at the start and end of the period, total change, and the highest/lowest prices reached during this time frame. | All-Time Records: All-time records show the highest and lowest prices ever reached during this period, how far the current price is from those extremes, and how long ago they occurred. | Easy-to-Understand Stats: Easy-to-understand metrics including typical daily price movements, biggest single-day gains/losses, how often price stayed above average, stability measures, and short-term momentum trends. | Returns & Growth: CAGR (Compound Annual Growth Rate) shows the annualized return rate if this growth continued consistently, while annualized and total returns show performance scaled to different time periods. | Risk & Volatility: Risk metrics show price volatility (daily and annualized), maximum drawdown (worst peak-to-trough decline), and various ratios (Sharpe, Sortino, Calmar, Treynor, Information) that measure risk-adjusted returns. | Daily Performance: Daily performance shows positive vs negative days, win rate, best and worst single days, average gains/losses on up/down days, gain/loss ratio, and profit factor (total gains divided by total losses). | Trading Metrics: Trading metrics include Omega ratio (probability-weighted gains vs losses), payoff ratio (avg win/avg loss), expectancy (expected return per trade), Kelly Criterion (optimal position sizing %), and price efficiency (trending vs choppy).

📊 Asset Correlations

Correlation coefficient ranges from -1 (perfectly inverse) to +1 (perfectly correlated).

LIT (LIT) vs PYTH (PYTH): 0.898 (Strong positive)

Correlation shows how closely asset prices move together: +1.0 means perfect positive correlation (move in sync), 0 means no relationship, -1.0 means perfect negative correlation (move opposite). Lower correlation can help with portfolio diversification.

Data sources

LIT: Kraken
PYTH: Kraken