Professional Seasonal Analysis for Trading

QRAFT AI-Enhanced U.S. Large Cap Momentum ETF (AMOM)

Seasonality Analysis

ETFs 7 Years Analyzed

QRAFT AI-Enhanced U.S. Large Cap Momentum ETF Annual Seasonality Statistics

11.04%
Avg Annual Return
58.3%
Avg Monthly Win Rate
8/12
Positive Months
7
Years Analyzed

QRAFT AI-Enhanced U.S. Large Cap Momentum ETF Monthly Seasonality Performance

Month Avg Return Win Rate Strength
January 0.73%
71%
Moderate
February -3.03%
14%
Very Weak
March -2.53%
43%
Weak
April 2.90%
71%
Strong
May 3.36%
71%
Very Strong
June 3.52%
86%
Very Strong
July 3.19%
86%
Very Strong
August 1.69%
43%
Weak
September -1.44%
29%
Very Weak
October 2.23%
71%
Strong
November BEST 3.66%
71%
Very Strong
December WORST -3.23%
43%
Weak

QRAFT AI-Enhanced U.S. Large Cap Momentum ETF 2026 vs Historical Pattern

Current Position
99.65
Historical Avg Position
32.76
Deviation
+66.89
Performance
Significantly Above Average

QRAFT AI-Enhanced U.S. Large Cap Momentum ETF Interactive Seasonality Chart

Interactive Seasonality Chart

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QRAFT AI-Enhanced U.S. Large Cap Momentum ETF Pattern Scanner

Pattern Scanner

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QRAFT AI-Enhanced U.S. Large Cap Momentum ETF Seasonal Historical Performance

Historical Performance

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About QRAFT AI-Enhanced U.S. Large Cap Momentum ETF (AMOM) Seasonality

QRAFT AI-Enhanced U.S. Large Cap Momentum ETF (AMOM) has been analyzed using 7 years of historical data to identify seasonal patterns. Classified under ETFs, QRAFT AI-Enhanced U.S. Large Cap Momentum ETF shows distinct seasonal tendencies based on historical data.

The strongest month for QRAFT AI-Enhanced U.S. Large Cap Momentum ETF is historically November, with an average return of 3.66% and a win rate of 71%. Conversely, December tends to be the weakest month, averaging -3.23% return.

Looking at the full calendar year, QRAFT AI-Enhanced U.S. Large Cap Momentum ETF has an average annual return of 11.04% with an overall monthly win rate of 58.3%. Out of 12 months, 8 typically show positive average returns.

The seasonal pattern for QRAFT AI-Enhanced U.S. Large Cap Momentum ETF has a consistency score of 66.4 (Good), based on 8 years of data. Higher consistency means the seasonal pattern has been more reliable across different market conditions.

QRAFT AI-Enhanced U.S. Large Cap Momentum ETF Seasonality FAQ

What is the best month to buy QRAFT AI-Enhanced U.S. Large Cap Momentum ETF (AMOM)?

Historically, November has been the best month for QRAFT AI-Enhanced U.S. Large Cap Momentum ETF, with an average return of 3.66% and a win rate of 71%. However, past performance does not guarantee future results.

What is the worst month for QRAFT AI-Enhanced U.S. Large Cap Momentum ETF (AMOM)?

Based on historical data, December has been the weakest month for QRAFT AI-Enhanced U.S. Large Cap Momentum ETF, with an average return of -3.23%. This is a historical observation and does not guarantee future results.

How reliable is AMOM seasonality data?

The seasonality analysis for QRAFT AI-Enhanced U.S. Large Cap Momentum ETF is based on 7 years of historical price data. While seasonal patterns can provide useful insights, they should be combined with other forms of analysis. Past patterns do not guarantee future performance.

How can I use QRAFT AI-Enhanced U.S. Large Cap Momentum ETF seasonality in my trading?

Use QRAFT AI-Enhanced U.S. Large Cap Momentum ETF (AMOM) seasonality as one factor in your analysis. Identify historically strong and weak months, combine with other research methods. SeasOptima provides premium tools including interactive charts, pattern scanning, and historical performance data for deeper analysis.

More ETFs Seasonality Analysis

Statistical information based on historical data. Does not constitute investment advice or recommendation. Past performance does not guarantee future results.