Pacer S&P World 3AI Top 300 ETF
ETF
WDAI
Price as of:
$27.82
+ $0.47
+ 1.70%
Primary Theme
N/A
fund company
N/A
Name
As of 06/01/2026Price
Aum/Mkt Cap
YIELD
Annualized forward dividend yield. Multiplies the most recent dividend payout amount by its frequency and divides by the previous close price.
Exp Ratio
Expense ratio is the fund’s total annual operating expenses, including management fees, distribution fees, and other expenses, expressed as a percentage of average net assets.
Watchlist
Vitals
YTD Return
N/A
1 yr return
N/A
3 Yr Avg Return
N/A
5 Yr Avg Return
N/A
Net Assets
$1.1 M
Holdings in Top 10
N/A
52 WEEK LOW AND HIGH
$27.4
$25.53
$27.82
Expenses
OPERATING FEES
Expense Ratio 0.60%
SALES FEES
Front Load N/A
Deferred Load N/A
TRADING FEES
Turnover N/A
Redemption Fee N/A
Min Investment
Standard (Taxable)
N/A
IRA
N/A
Fund Classification
Fund Type
Exchange Traded Fund
Name
As of 06/01/2026Price
Aum/Mkt Cap
YIELD
Annualized forward dividend yield. Multiplies the most recent dividend payout amount by its frequency and divides by the previous close price.
Exp Ratio
Expense ratio is the fund’s total annual operating expenses, including management fees, distribution fees, and other expenses, expressed as a percentage of average net assets.
Watchlist
WDAI - Profile
Distributions
- YTD Total Return N/A
- 3 Yr Annualized Total Return N/A
- 5 Yr Annualized Total Return N/A
- Capital Gain Distribution Frequency N/A
- Net Income Ratio N/A
- Dividend Yield 0.0%
- Dividend Distribution Frequency None
Fund Details
-
Legal NamePacer S&P World 3AI Top 300 ETF
-
Fund Family NameN/A
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Inception DateMay 07, 2026
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Shares OutstandingN/A
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Share ClassN/A
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CurrencyUSD
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Domiciled CountryUS
Fund Description
div style="margin-bottom:6pt;text-align:justify"span style="-sec-ix-redline:true;color:#000000;font-family:'Times New Roman',serif;font-size:10pt;font-weight:400;line-height:120%"The Fund employs a “passive management” (or indexing) investment approach designed to track the total return performance, before fees and expenses, of the Index./spanspan style="color:#000000;font-family:'Times New Roman',serif;font-size:10pt;font-weight:400;line-height:120%" /span/divdiv style="margin-bottom:6pt;text-align:justify"span style="color:#000000;font-family:'Times New Roman',serif;font-size:10pt;font-style:italic;font-weight:700;line-height:120%"The Index/span/divdiv style="margin-bottom:6pt;text-align:justify"span style="-sec-ix-redline:true;color:#000000;font-family:'Times New Roman',serif;font-size:10pt;font-weight:400;line-height:120%"The Index uses an objective, rules-based methodology to provide exposure to 300 stocks within the Samp;P World Index® (the “Samp;P World Index”) with the highest 3AI Alpha Intelligence Scores. 3AI refers to the machine learning technology firm, 3AI, that provides the 3AI Alpha Intelligence Scores used by the Index Provider in the construction of the Index. 3AI leverages artificial intelligence (“AI”) and machine learning to generate the 3AI Alpha Intelligence Scores. Samp;P Dow Jones Indices LLC (the “Index Provider”) compiles, maintains and calculates the Index./span/divdiv style="margin-bottom:6pt;text-align:justify"span style="color:#000000;font-family:'Times New Roman',serif;font-size:10pt;font-weight:400;line-height:120%"The Index’s initial universe is derived from the component companies of the Samp;P World Index. The Samp;P World Index is comprised of large- and mid-cap stocks from 24 developed markets./span/divdiv style="margin-bottom:6pt;text-align:justify"span style="color:#000000;font-family:'Times New Roman',serif;font-size:10pt;font-weight:400;line-height:120%;text-decoration:underline"3AI Alpha Intelligence Score/span/divdiv style="margin-bottom:6pt;text-align:justify"span style="color:#000000;font-family:'Times New Roman',serif;font-size:10pt;font-weight:400;line-height:120%"The 3AI Alpha Intelligence Scores represent the 12-month excess return forecast of a stock relative to a global universe of approximately 20,000 equity securities. This universe includes all stocks with a market capitalization above $50 million. The 3AI Alpha Intelligence Score is determined using 3AI’s proprietary forecasting models through the application of machine learning techniques, by analyzing company data and business-cycle data./span/divdiv style="margin-bottom:6pt;text-align:justify"span style="color:#000000;font-family:'Times New Roman',serif;font-size:10pt;font-weight:400;line-height:120%;text-decoration:underline"3AI’s Alpha Forecast Models/span/divdiv style="margin-bottom:6pt;text-align:justify"span style="color:#000000;font-family:'Times New Roman',serif;font-size:10pt;font-weight:400;line-height:120%"The 3AI Alpha Intelligence Score is generated using 3AI’s proprietary forecasting systems, utilizing an end-to-end machine learning production process that begins with raw data and culminates in the 12-month excess return forecasts. Machine learning is a subset of /span/divdiv style="margin-bottom:6pt;text-align:justify"span style="color:#000000;font-family:'Times New Roman',serif;font-size:10pt;font-weight:400;line-height:120%"artificial intelligence (“AI”) that enables the development of models that learn patterns from large datasets, which can subsequently be used to make predictions on new data. /span/divdiv style="margin-bottom:6pt;text-align:justify"span style="color:#000000;font-family:'Times New Roman',serif;font-size:10pt;font-weight:400;line-height:120%"3AI’s models analyze hundreds of proprietary 3AI data signals (also known as factors) sourced from financial statements, analyst forecasts, market data, and macroeconomics. This breadth of data signals enables 3AI’s models to conduct deep due diligence assessment of every stock covered—encompassing fundamentals, technical analysis, future expectation, institutional sentiment, valuation and the U.S. business cycle. /span/divdiv style="margin-bottom:6pt;text-align:justify"span style="color:#000000;font-family:'Times New Roman',serif;font-size:10pt;font-weight:400;line-height:120%"Additionally, 3AI’s model incorporates a Bayesian Believability Layer that seeks to enhance forecasting accuracy by continually observing and learning from its own forecasting performance./span/divdiv style="margin-bottom:6pt;text-align:justify"span style="-sec-ix-redline:true;color:#000000;font-family:'Times New Roman',serif;font-size:10pt;font-weight:400;line-height:120%"3AI seeks to source its data exclusively from reputable mainstream providers, including financial statements and accounting disclosures, corporate earnings reports, market trading and liquidity data, analyst consensus forecasts, corporate actions, macroeconomic indicators, economic think tanks, surveys, and research institutions. Examples of reputable mainstream data providers include regulatory filings of public companies and standardized financial statement databases (e.g., Worldscope); market pricing and trading data from regulated securities exchanges and trading venues; aggregated analyst estimates derived from institutional broker estimate systems; and corporate action information disseminated by issuers and exchanges./span/divdiv style="margin-bottom:6pt;text-align:justify"span style="color:#000000;font-family:'Times New Roman',serif;font-size:10pt;font-style:italic;font-weight:400;line-height:120%"3AI Alpha Intelligence Score Calculation /span/divdiv style="margin-bottom:6pt;text-align:justify"span style="color:#000000;font-family:'Times New Roman',serif;font-size:10pt;font-weight:400;line-height:120%"3AI conducts the following process to calculate a stock’s 3AI Alpha Intelligence Score:/span/divdiv style="margin-bottom:6pt;padding-left:36pt;text-align:justify;text-indent:-18pt"span style="color:#000000;font-family:'Times New Roman',serif;font-size:10pt;font-weight:700;line-height:120%"1./spanspan style="color:#000000;font-family:'Times New Roman',serif;font-size:10pt;font-weight:700;line-height:120%;padding-left:10.5pt"Data Signal Generation: /spanspan style="color:#000000;font-family:'Times New Roman',serif;font-size:10pt;font-weight:400;line-height:120%"Raw data is collected and used to generate data signals (also known as factors). 3AI’s proprietary process transforms the data to make the data robust for machine learning. Imputation algorithms are used to generate missing data inputs where data is insufficient or non-existent to result in a feature library for the AI learning system./span/divdiv style="margin-bottom:6pt;padding-left:36pt;text-align:justify;text-indent:-18pt"span style="color:#000000;font-family:'Times New Roman',serif;font-size:10pt;font-weight:700;line-height:120%"2./spanspan style="color:#000000;font-family:'Times New Roman',serif;font-size:10pt;font-weight:700;line-height:120%;padding-left:10.5pt"Single Stock Alpha Forecast Generation:/spanspan style="color:#000000;font-family:'Times New Roman',serif;font-size:10pt;font-weight:400;line-height:120%" 3AI generates a Single Stock Alpha forecast for each company using company-level stock data to forecast relative stock performance attributable to company and stock-specific information using advanced deep factor-based AI models. /span/divdiv style="margin-bottom:6pt;padding-left:36pt;text-align:justify"span style="color:#000000;font-family:'Times New Roman',serif;font-size:10pt;font-weight:400;line-height:120%"To produce the Single Stock Forecasts, 3AI’s models use hundreds of single stock factors, grouped into the following categories: accounting forensics; forecast, sentiment and surprise; clarity of business model; company physics models; credit risk models; financial change; shareholder treatment; technical indicators; valuation models; and other quantitative approaches (including correlation and beta analysis). /span/divdiv style="margin-bottom:6pt;padding-left:36pt;text-align:justify;text-indent:-18pt"span style="color:#000000;font-family:'Times New Roman',serif;font-size:10pt;font-weight:700;line-height:120%"3./spanspan style="color:#000000;font-family:'Times New Roman',serif;font-size:10pt;font-weight:700;line-height:120%;padding-left:10.5pt"Business Cycle Alpha Forecasts Generation:/spanspan style="color:#000000;font-family:'Times New Roman',serif;font-size:10pt;font-weight:400;line-height:120%" 3AI generates Business Cycle Alpha forecasts by using macroeconomic data to forecast relative sector performance attributable to the Business Cycle using advanced deep factor-based AI models. /span/divdiv style="margin-bottom:6pt;padding-left:36pt;text-align:justify"span style="color:#000000;font-family:'Times New Roman',serif;font-size:10pt;font-weight:400;line-height:120%"To produce the Business Cycle Alpha Stock Forecasts, 3AI’s models use proprietary macroeconomic factors from the following categories: U.S. Government bond yields; commodity and market indicators; economic, business and market confidence surveys; economic cycle indicators; manufacturing and supply chain indicators; and inflationary indicators./span/divdiv style="margin-bottom:6pt;padding-left:36pt;text-align:justify;text-indent:-18pt"span style="color:#000000;font-family:'Times New Roman',serif;font-size:10pt;font-weight:700;line-height:120%"4./spanspan style="color:#000000;font-family:'Times New Roman',serif;font-size:10pt;font-weight:700;line-height:120%;padding-left:10.5pt"Final 3AI Alpha Intelligence Score Generation:/spanspan style="color:#000000;font-family:'Times New Roman',serif;font-size:10pt;font-weight:400;line-height:120%" Single Stock Alpha and Business Cycle Alpha forecasts are combined and passed through a Bayesian Believability Layer to generate final 3AI Alpha Intelligence Scores. /span/divdiv style="margin-bottom:6pt;padding-left:36pt;text-align:justify"span style="color:#000000;font-family:'Times New Roman',serif;font-size:10pt;font-weight:400;line-height:120%"The Bayesian Believability Layer continuously monitors and learns from the model’s prior forecasts—identifying the conditions, stock types, and environments where the models’ signals have historically been most effective. This layer serves as an essential safeguard, helping to enhance the accuracy of the 3AI Alpha Intelligence Scores./span/divdiv style="margin-bottom:6pt;text-align:justify;text-indent:36pt"span style="color:#000000;font-family:'Times New Roman',serif;font-size:10pt;font-style:italic;font-weight:400;line-height:120%"Model Training/span/divdiv style="margin-bottom:6pt;text-align:justify"span style="color:#000000;font-family:'Times New Roman',serif;font-size:10pt;font-weight:400;line-height:120%"3AI’s model training process involves sequentially training the models using only data available up to a specified historical point and subsequently validating their predictive accuracy on unseen future periods. This method helps ensure genuine out-of-sample validity, prevent look-ahead bias and overfitting, and confirm that forecasts are robust under real-world market conditions. /span/divdiv style="margin-bottom:6pt;text-align:justify"span style="color:#000000;font-family:'Times New Roman',serif;font-size:10pt;font-weight:400;line-height:120%"Additionally, 3AI’s dataset includes an extensively deep history of global equities spanning multiple economic cycles, including delisted and failed companies. This breadth enables the models to learn from a full range of outcomes, thereby helping to mitigate survivorship bias and enhance the models’ statistical reliability./span/divdiv style="margin-bottom:6pt;text-align:justify;text-indent:36pt"span style="color:#000000;font-family:'Times New Roman',serif;font-size:10pt;font-style:italic;font-weight:400;line-height:120%"Score Validation and Human Oversight/span/divdiv style="margin-bottom:6pt;text-align:justify"span style="color:#000000;font-family:'Times New Roman',serif;font-size:10pt;font-weight:400;line-height:120%"3AI provides ongoing oversight through score validation procedures and human oversight. The score validation process includes monitoring universe stability, performing raw data completeness and accuracy audits of raw data, performing data signal correlation and stability checks against historical norms, performing regular forecast stability verification, and verifying final pre-delivery data completeness./span/divdiv style="margin-bottom:6pt;text-align:justify"span style="color:#000000;font-family:'Times New Roman',serif;font-size:10pt;font-weight:400;line-height:120%"Additionally, 3AI integrates human oversight at multiple levels, including data signal development and refinement; model interpretation through explainability; and ongoing data and model quality monitoring./span/divdiv style="margin-bottom:6pt;text-align:justify"span style="color:#000000;font-family:'Times New Roman',serif;font-size:10pt;font-weight:400;line-height:120%;text-decoration:underline"Index Construction/span/divdiv style="margin-bottom:6pt;text-align:justify"span style="color:#000000;font-family:'Times New Roman',serif;font-size:10pt;font-weight:400;line-height:120%"At each quarterly rebalancing, the Index Provider calculates a z-score for each company in the Samp;P World Index using the raw 3AI Alpha Intelligence Score. A z-score is a way to standardize data by measuring how far a value lies from the mean in units of standard deviation. The z-scores are winsorized at +3 and -3 (i.e., winsorization is applied to z-scores to limit extreme outliers by capping at 3 and flooring at -3), then ranked in descending order. The top 300 ranked companies are selected for inclusion in the Index, subject to the following rules designed to reduce turnover:/span/divdiv style="margin-bottom:6pt;padding-left:36pt;text-align:justify;text-indent:-18pt"span style="color:#000000;font-family:'Times New Roman',serif;font-size:10pt;font-weight:400;line-height:120%"1./spanspan style="color:#000000;font-family:'Times New Roman',serif;font-size:10pt;font-weight:400;line-height:120%;padding-left:10.5pt"The Index Provider ranks all eligible securities in the Samp;P World Index by their 3AI Alpha Intelligence Score./span/divdiv style="margin-bottom:6pt;padding-left:36pt;text-align:justify;text-indent:-18pt"span style="color:#000000;font-family:'Times New Roman',serif;font-size:10pt;font-weight:400;line-height:120%"2./spanspan style="color:#000000;font-family:'Times New Roman',serif;font-size:10pt;font-weight:400;line-height:120%;padding-left:10.5pt"Any current constituent of the Index that is ranked within the top 360 will be eligible for inclusion in the Index./span/divdiv style="margin-bottom:6pt;padding-left:36pt;text-align:justify;text-indent:-18pt"span style="color:#000000;font-family:'Times New Roman',serif;font-size:10pt;font-weight:400;line-height:120%"3./spanspan style="color:#000000;font-family:'Times New Roman',serif;font-size:10pt;font-weight:400;line-height:120%;padding-left:10.5pt"If the target count of 300 securities is not reached after selecting from eligible current constituents of the Index, the Index Provider will select from the eligible universe in descending rank order of the winsorized z-scores until the target count is reached./span/divdiv style="margin-bottom:6pt;text-align:justify"span style="color:#000000;font-family:'Times New Roman',serif;font-size:10pt;font-weight:400;line-height:120%"Index components are weighted based on their winsorized z-scores. The maximum weight of each constituent is capped at 4.5%. The aggregate weight of constituents within each Global Industry Classification Standard (GICS®) sector is capped at 40%. Exposure to the United States is capped at the maximum of 60% and the weight of the United States in the Samp;P World Index. Exposure for every other country is capped at the weight of such country in the Samp;P World Index plus 10%. Weight above individual company, sector, and country limitations are typically redistributed among the other Index constituents in proportion to their weights./span/divdiv style="margin-bottom:6pt;text-align:justify"span style="-sec-ix-redline:true;color:#000000;font-family:'Times New Roman',serif;font-size:10pt;font-weight:400;line-height:120%"As of January 30, 2026, the companies included in the Index had a market capitalization of $2.7 billion to $4.6 trillion. Also as of January 30, 2026, the Index had significant exposure to the information technology sector./spanspan style="color:#000000;font-family:'Times New Roman',serif;font-size:10pt;font-weight:400;line-height:120%" /span/divdiv style="margin-bottom:6pt;text-align:justify"span style="color:#000000;font-family:'Times New Roman',serif;font-size:10pt;font-weight:400;line-height:120%"The Index is typically reconstituted and rebalanced quarterly as of the close of business on the third Friday of March, June, September, and December based on data as of the last business days of February, May, August, and November, respectively. /span/divdiv style="margin-bottom:6pt;text-align:justify"span style="color:#000000;font-family:'Times New Roman',serif;font-size:10pt;font-style:italic;font-weight:700;line-height:120%"The Fund’s Investment Strategy/span/divdiv style="margin-bottom:6pt;text-align:justify"span style="color:#000000;font-family:'Times New Roman',serif;font-size:10pt;font-weight:400;line-height:120%"The Fund attempts to invest all, or substantially all, of its assets in the component securities that make up the Index. The Adviser expects that, over time, the correlation between the Fund’s performance and that of the Index, before fees and expenses, will be 95% or better./span/divdiv style="margin-bottom:6pt;text-align:justify"span style="color:#000000;font-family:'Times New Roman',serif;font-size:10pt;font-weight:400;line-height:120%"The Fund will generally use a “replication” strategy to achieve its investment objective, meaning it will invest in all component securities of the Index in the same approximate proportion as in the Index./span/divdiv style="margin-bottom:6pt;text-align:justify"span style="color:#000000;font-family:'Times New Roman',serif;font-size:10pt;font-weight:400;line-height:120%"The Fund is non-diversified and therefore may invest a larger percentage of its assets in the securities of a single company than diversified funds. /span/divdiv style="margin-bottom:6pt;text-align:justify"span style="-sec-ix-redline:true;color:#000000;font-family:'Times New Roman',serif;font-size:10pt;font-weight:400;line-height:120%"To the extent the Index concentrates (/spanspan style="-sec-ix-redline:true;color:#000000;font-family:'Times New Roman',serif;font-size:10pt;font-style:italic;font-weight:400;line-height:120%"i.e./spanspan style="-sec-ix-redline:true;color:#000000;font-family:'Times New Roman',serif;font-size:10pt;font-weight:400;line-height:120%", holds more than 25% of its total assets) in the securities of a particular industry or group of related industries, the Fund will concentrate its investments to approximately the same extent as the Index. As of January 30, 2026, the Index was not concentrated in any industry or group of industries./span/div
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WDAI - Performance
Return Ranking - Trailing
| Period | WDAI Return | Category Return Low | Category Return High | Rank in Category (%) |
|---|---|---|---|---|
| YTD | N/A | N/A | N/A | N/A |
| 1 Yr | N/A | N/A | N/A | N/A |
| 3 Yr | N/A* | N/A | N/A | N/A |
| 5 Yr | N/A* | N/A | N/A | N/A |
| 10 Yr | N/A* | N/A | N/A | N/A |
* Annualized
Return Ranking - Calendar
| Period | WDAI Return | Category Return Low | Category Return High | Rank in Category (%) |
|---|---|---|---|---|
| 2025 | N/A | N/A | N/A | N/A |
| 2024 | N/A | N/A | N/A | N/A |
| 2023 | N/A | N/A | N/A | N/A |
| 2022 | N/A | N/A | N/A | N/A |
| 2021 | N/A | N/A | N/A | N/A |
Total Return Ranking - Trailing
| Period | WDAI Return | Category Return Low | Category Return High | Rank in Category (%) |
|---|---|---|---|---|
| YTD | N/A | N/A | N/A | N/A |
| 1 Yr | N/A | N/A | N/A | N/A |
| 3 Yr | N/A* | N/A | N/A | N/A |
| 5 Yr | N/A* | N/A | N/A | N/A |
| 10 Yr | N/A* | N/A | N/A | N/A |
* Annualized
Total Return Ranking - Calendar
| Period | WDAI Return | Category Return Low | Category Return High | Rank in Category (%) |
|---|---|---|---|---|
| 2025 | N/A | N/A | N/A | N/A |
| 2024 | N/A | N/A | N/A | N/A |
| 2023 | N/A | N/A | N/A | N/A |
| 2022 | N/A | N/A | N/A | N/A |
| 2021 | N/A | N/A | N/A | N/A |
WDAI - Holdings
Concentration Analysis
| WDAI | Category Low | Category High | WDAI % Rank | |
|---|---|---|---|---|
| Net Assets | 1.1 M | N/A | N/A | N/A |
| Number of Holdings | N/A | N/A | N/A | N/A |
| Net Assets in Top 10 | N/A | N/A | N/A | N/A |
| Weighting of Top 10 | N/A | N/A | N/A | N/A |
Top 10 Holdings
Asset Allocation
| Weighting | Return Low | Return High | WDAI % Rank | |
|---|---|---|---|---|
| Stocks | 0.00% | N/A | N/A | N/A |
| Preferred Stocks | 0.00% | N/A | N/A | N/A |
| Other | 0.00% | N/A | N/A | N/A |
| Convertible Bonds | 0.00% | N/A | N/A | N/A |
| Cash | 0.00% | N/A | N/A | N/A |
| Bonds | 0.00% | N/A | N/A | N/A |
WDAI - Expenses
Operational Fees
| WDAI Fees (% of AUM) | Category Return Low | Category Return High | Rank in Category (%) | |
|---|---|---|---|---|
| Expense Ratio | 0.60% | N/A | N/A | N/A |
| Management Fee | 0.60% | N/A | N/A | N/A |
| 12b-1 Fee | N/A | N/A | N/A | N/A |
| Administrative Fee | N/A | N/A | N/A | N/A |
Sales Fees
| WDAI Fees (% of AUM) | Category Return Low | Category Return High | Rank in Category (%) | |
|---|---|---|---|---|
| Front Load | N/A | N/A | N/A | N/A |
| Deferred Load | N/A | N/A | N/A | N/A |
Trading Fees
| WDAI Fees (% of AUM) | Category Return Low | Category Return High | Rank in Category (%) | |
|---|---|---|---|---|
| Max Redemption Fee | N/A | N/A | N/A | N/A |
Related Fees
Turnover provides investors a proxy for the trading fees incurred by mutual fund managers who frequently adjust position allocations. Higher turnover means higher trading fees.
| WDAI Fees (% of AUM) | Category Return Low | Category Return High | Rank in Category (%) | |
|---|---|---|---|---|
| Turnover | N/A | N/A | N/A | N/A |
WDAI - Distributions
Dividend Yield Analysis
| WDAI | Category Low | Category High | WDAI % Rank | |
|---|---|---|---|---|
| Dividend Yield | 0.00% | N/A | N/A | N/A |
Dividend Distribution Analysis
| WDAI | Category Low | Category High | Category Mod | |
|---|---|---|---|---|
| Dividend Distribution Frequency | None |
Net Income Ratio Analysis
| WDAI | Category Low | Category High | WDAI % Rank | |
|---|---|---|---|---|
| Net Income Ratio | N/A | N/A | N/A | N/A |
Capital Gain Distribution Analysis
| WDAI | Category Low | Category High | Capital Mode | |
|---|---|---|---|---|
| Capital Gain Distribution Frequency |