**Contents:**

- If an input value is missing or null, it is not factored in the computation. For example, for the first row in the dataset, the rolling average of previous values is the value in the first row.
The row from which to extract a value is determined by the order in which the rows are organized based on the

`order`

parameter.If you are working on a randomly generated sample of your dataset, the values that you see for this function might not correspond to the values that are generated on the full dataset during job execution.

- The function takes a column name and two optional integer parameters that determine the window backward and forward of the current row.
- The default integer parameter values are
`-1`

and`0`

, which computes the rolling average from the current row back to the first row of the dataset.

- The default integer parameter values are
- This function works with the following transforms:

For more information on a non-rolling version of this function, see AVERAGE Function.

## Basic Usage

**Column example:**

`derive type:single value:ROLLINGAVERAGE(myCol)`

**Output: **Generates a new column containing the rolling average of all values in the `myCol`

column from the first row of the dataset to the current one.

**Rows before example:**

`window value:ROLLINGAVERAGE(myNumber, 3)`

**Output:** Generates the new column, which contains the rolling average of the current row and the three previous row values in the `myNumber`

column.

**Rows before and after example:**

`window value:ROLLINGAVERAGE(myNumber, 3, 2)`

**Output:** Generates the new column , which contains the rolling average of the three previous row values, the current row value, and the two rows after the current one in the `myNumber`

column.

## Syntax and Arguments

`window value:ROLLINGAVERAGE(col_ref, rowsBefore_integer, rowsAfter_integer) order: order_col [group: group_col]`

Argument | Required? | Data Type | Description |
---|---|---|---|

col_ref | Y | string | Name of column whose values are applied to the function |

rowsBefore_integer | N | integer | Number of rows before the current one to include in the computation |

rowsAfter_integer | N | integer | Number of rows after the current one to include in the computation |

For more information on the `order`

and `group`

parameters, see Window Transform.

For more information on syntax standards, see Language Documentation Syntax Notes.

### col_ref

Name of the column whose values are used to compute the rolling average.

- Multiple columns and wildcards are not supported.

**
Usage Notes:
**

Required? | Data Type | Example Value |
---|---|---|

Yes | String (column reference to Integer or Decimal values) | `myColumn` |

### rowsBefore_integer, rowsAfter_integer

Integers representing the number of rows before or after the current one from which to compute the rolling average, including the current row. For example, if the first value is `5`

, the current row and the five rows before it are used in the computation. Negative values for `k`

compute the rolling average from rows preceding the current one.

`rowBefore=0`

generates the current row value only.`rowBefore=-1`

uses all rows preceding the current one.- If
`rowsAfter`

is not specified, then the value`0`

is applied. - If a
`group`

parameter is applied, then these parameter values should be no more than the maximum number of rows in the groups.

**
Usage Notes:
**

Required? | Data Type | Example Value |
---|---|---|

No | Integer | `4` |

## Examples

**Tip:** For additional examples, see Common Tasks.

### Example - Compute prior quarter values

**Source:**

Date | Amount |
---|---|

12/31/15 | 118 |

11/30/15 | 6 |

10/31/15 | 443 |

9/30/15 | 785 |

8/31/15 | 77 |

7/31/15 | 606 |

6/30/15 | 421 |

5/31/15 | 763 |

4/30/15 | 305 |

3/31/15 | 824 |

2/28/15 | 135 |

1/31/15 | 523 |

**Transform:**

Using the `ROLLINGAVERAGE`

function, you can generate a column containing the rolling average of the current month and the two previous months:

`window value: ROLLINGAVERAGE(Amount, 3, 0) order: -Date`

Note the sign of the second parameter and the `order`

parameter. The sort is in the reverse order of the `Date`

parameter, which preserves the current sort order. As a result, the second parameter, which identifies the number of rows to use in the calculation, must be positive to capture the previous months.

Technically, this computation does not capture the prior quarter, since it includes the current quarter as part of the computation. You can use the following column to capture the rolling average of the preceding month, which then becomes the true rolling average for the prior quarter. The `window`

column refers to the name of the column generated from the previous step:

`window value: NEXT(window, 1) order: -Date`

Note that the order parameter must be preserved. This new column, `window1`

, contains your prior quarter rolling average:

`rename col:window1 to:'Amount_PriorQtr'`

You can reformat this numeric value:

`set col:Amount_PriorQtr value:NUMFORMAT(Amount_PriorQtr, '###.00')`

You can use the following transform to calculate the net change. This formula computes the change as a percentage of the prior quarter and then formats it as a two-digit percentage.

`derive type:single value:NUMFORMAT(((Amount - Amount_PriorQtr) / Amount_PriorQtr) * 100, '##.##') as:'NetChangePct_PriorQtr' `

**Results:**

**NOTE: **You might notice that there are computed values for `Amount_PriorQtr`

for February and March. These values do not factor in a full three months because the data is not present. The January value does not exist since there is no data preceding it.

Date | Amount | Amount_PriorQtr | NetChangePct_PriorQtr |
---|---|---|---|

12/31/15 | 118 | 411.33 | -71.31 |

11/30/15 | 6 | 435.00 | -98.62 |

10/31/15 | 443 | 489.33 | -9.47 |

9/30/15 | 785 | 368.00 | 113.32 |

8/31/15 | 77 | 596.67 | -87.1 |

7/31/15 | 606 | 496.33 | 22.1 |

6/30/15 | 421 | 630.67 | -33.25 |

5/31/15 | 763 | 421.33 | 81.09 |

4/30/15 | 305 | 494.00 | -38.26 |

3/31/15 | 824 | 329.00 | 150.46 |

2/28/15 | 135 | 523.00 | -.74.19 |

1/31/15 | 523 |

### Example - Rolling window functions

`ROLLINGSUM`

- computes a rolling sum from a window of rows before and after the current row. See ROLLINGSUM Function.`ROLLINGAVERAGE`

- computes a rolling average from a window of rows before and after the current row. See ROLLINGAVERAGE Function.`ROWNUMBER`

- computes the row number for each row, as determined by the ordering column. See ROWNUMBER Function.

The following dataset contains sales data over the final quarter of the year.

**Source:**

Date | Sales |
---|---|

10/2/16 | 200 |

10/9/16 | 500 |

10/16/16 | 350 |

10/23/16 | 400 |

10/30/16 | 190 |

11/6/16 | 550 |

11/13/16 | 610 |

11/20/16 | 480 |

11/27/16 | 660 |

12/4/16 | 690 |

12/11/16 | 810 |

12/18/16 | 950 |

12/25/16 | 1020 |

1/1/17 | 680 |

Transform:

First, you want to maintain the row information as a separate column. Since data is ordered already by the `Date`

column, you can use the following:

`window value:ROWNUMBER() order:Date`

Rename this column to `rowId`

for week of quarter.

Now, you want to extract month and week information from the `Date`

values. Deriving the month value:

`derive type:single value:MONTH(Date) as:'Month'`

Deriving the quarter value:

`derive type:single value:(1 + FLOOR(((month-1)/3))) as:'QTR'`

Deriving the week-of-quarter value:

`window value:ROWNUMBER() order:Date group:QTR`

Rename this column `WOQ`

(week of quarter).

Deriving the week-of-month value:

`window value:ROWNUMBER() group:Month order:Date`

Rename this column `WOM`

(week of month).

Now, you perform your rolling computations. Compute the running total of sales using the following:

`window value: ROLLINGSUM(Sales, -1, 0) order: Date group:QTR`

The `-1`

parameter is used in the above computation to gather the rolling sum of all rows of data from the current one to the first one. Note that the use of the `QTR`

column for grouping, which moves the value for the `01/01/2017`

into its own computational bucket. This may or may not be preferred.

Rename this column `QTD`

(quarter to-date). Now, generate a similar column to compute the rolling average of weekly sales for the quarter:

`window value: ROUND(ROLLINGAVERAGE(Sales, -1, 0)) order: Date group:QTR`

Since the `ROLLINGAVERAGE`

function can compute fractional values, it is wrapped in the `ROUND`

function for neatness. Rename this column `avgWeekByQuarter`

.

**Results:**

When the unnecessary columns are dropped and some reordering is applied, your dataset should look like the following:

Date | WOQ | Sales | QTD | avgWeekByQuarter |
---|---|---|---|---|

10/2/16 | 1 | 200 | 200 | 200 |

10/9/16 | 2 | 500 | 700 | 350 |

10/16/16 | 3 | 350 | 1050 | 350 |

10/23/16 | 4 | 400 | 1450 | 363 |

10/30/16 | 5 | 190 | 1640 | 328 |

11/6/16 | 6 | 550 | 2190 | 365 |

11/13/16 | 7 | 610 | 2800 | 400 |

11/20/16 | 8 | 480 | 3280 | 410 |

11/27/16 | 9 | 660 | 3940 | 438 |

12/4/16 | 10 | 690 | 4630 | 463 |

12/11/16 | 11 | 810 | 5440 | 495 |

12/18/16 | 12 | 950 | 6390 | 533 |

12/25/16 | 13 | 1020 | 7410 | 570 |

1/1/17 | 1 | 680 | 680 | 680 |

### Example - Rolling computations for racing splits

`ROLLINGAVERAGE`

- computes a rolling average from a window of rows before and after the current row. See ROLLINGAVERAGE Function.`ROLLINGMIN`

- computes a rolling minimum from a window of rows. See ROLLINGMIN Function.`ROLLINGMAX`

- computes a rolling maximum from a window of rows. See ROLLINGMAX Function.`ROLLINGSTDEV`

- computes a rolling standard deviation from a window of rows. See ROLLINGSTDEV Function.`ROLLINGVAR`

- computes a rolling variance from a window of rows. See ROLLINGVAR Function.

**Source:**

In this example, the following data comes from times recorded at regular intervals during a three-lap race around a track. The source data is in cumulative time in seconds (`time_sc`

). You can use ROLLING and other windowing functions to break down the data into more meaningful metrics.

lap | quarter | time_sc |
---|---|---|

1 | 0 | 0.000 |

1 | 1 | 19.554 |

1 | 2 | 39.785 |

1 | 3 | 60.021 |

2 | 0 | 80.950 |

2 | 1 | 101.785 |

2 | 2 | 121.005 |

2 | 3 | 141.185 |

3 | 0 | 162.008 |

3 | 1 | 181.887 |

3 | 2 | 200.945 |

3 | 3 | 220.856 |

**Transform:**

**Primary key: **Since the quarter information repeats every lap, there is no unique identifier for each row. The following steps create this identifer:

`settype col: lap,quarter type: 'String'`

`derive type:single value: MERGE(['l',lap,'q',quarter]) as: 'splitId'`

**Get split times:** Use the following transform to break down the splits for each quarter of the race:

`derive type:single value: ROUND(time_sc - PREV(time_sc, 1), 3) order: splitId as: 'split_time_sc'`

**Compute rolling computations: **You can use the following types of computations to provide rolling metrics on the current and three previous splits:

`derive type:single value: ROLLINGAVERAGE(split_time_sc, 3) order: splitId as: 'ravg'`

`derive type:single value: ROLLINGMAX(split_time_sc, 3) order: splitId as: 'rmax'`

`derive type:single value: ROLLINGMIN(split_time_sc, 3) order: splitId as: 'rmin'`

`derive type:single value: ROUND(ROLLINGSTDEV(split_time_sc, 3), 3) order: splitId as: 'rstdev'`

`derive type:single value: ROUND(ROLLINGVAR(split_time_sc, 3), 3) order: splitId as: 'rvar'`

**Results:**

When the above transforms have been completed, the results look like the following:

lap | quarter | splitId | time_sc | split_time_sc | rvar | rstdev | rmin | rmax | ravg |
---|---|---|---|---|---|---|---|---|---|

1 | 0 | l1q0 | 0 | ||||||

1 | 1 | l1q1 | 20.096 | 20.096 | 0 | 0 | 20.096 | 20.096 | 20.096 |

1 | 2 | l1q2 | 40.53 | 20.434 | 0.029 | 0.169 | 20.096 | 20.434 | 20.265 |

1 | 3 | l1q3 | 61.031 | 20.501 | 0.031 | 0.177 | 20.096 | 20.501 | 20.344 |

2 | 0 | l2q0 | 81.087 | 20.056 | 0.039 | 0.198 | 20.056 | 20.501 | 20.272 |

2 | 1 | l2q1 | 101.383 | 20.296 | 0.029 | 0.17 | 20.056 | 20.501 | 20.322 |

2 | 2 | l2q2 | 122.092 | 20.709 | 0.059 | 0.242 | 20.056 | 20.709 | 20.39 |

2 | 3 | l2q3 | 141.886 | 19.794 | 0.113 | 0.337 | 19.794 | 20.709 | 20.214 |

3 | 0 | l3q0 | 162.581 | 20.695 | 0.139 | 0.373 | 19.794 | 20.709 | 20.373 |

3 | 1 | l3q1 | 183.018 | 20.437 | 0.138 | 0.371 | 19.794 | 20.709 | 20.409 |

3 | 2 | l3q2 | 203.493 | 20.475 | 0.113 | 0.336 | 19.794 | 20.695 | 20.35 |

3 | 3 | l3q3 | 222.893 | 19.4 | 0.252 | 0.502 | 19.4 | 20.695 | 20.252 |

You can reduce the number of steps by applying a `window`

transform such as the following:

`window value: window1 = lap,rollingaverage(split_time_sc, 0, 3), rollingmax(split_time_sc, 0, 3),rollingmin(split_time_sc, 0, 3),round(rollingstdev(split_time_sc, 0, 3), 3),round(rollingvar(split_time_sc, 0, 3), 3) group: lap order: lap`

However, you must rename all of the generated `windowX`

columns.

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