# Ways to Calculate rolling subtotal

Say I have a table structured like this:

``````id     dt        val
a     1/1/2012   23
a     2/1/2012   24
a     6/1/2013   12
a     7/1/2013   56
b     1/1/2009   34
b     3/1/2009   78
``````

Every `id` has a `dt` in the form of a month, and a value. There may be months missing, but there will never be duplicate months.

I need to calculate a 12-month rolling average for each data point. For example, the fourth row would be (56+12)/12. The third row would be (12)/12. The second row would be (24+23)/12, etc. I need to identify the month (and value) of the maximum moving average for a given ID.

Is this something I can even do in SQL itself, or do I need to export the dataset and use some other method? There are millions of rows, so I'd like to do it in SQL if I can. I've looked at a few of the MA methods and I'm not sure if they will work for what I'm trying to do.

The SQL I am using is a derivative used with Teradata. It supports most of the standard functions that I've needed to use.

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This is something I'm working on: stackoverflow.com/questions/13280677/… –  Jeffrey Kramer Aug 1 '13 at 20:17

Just use a subquery as the expression:

``````SELECT id,
dt,
val,
(
SELECT SUM(val)/12
FROM mytable t2
WHERE t2.id = t.id
AND t2.dt > DATEADD(mm, -12, t.dt)
AND t2.dt < t.dt
) val12MonthAvg
FROM mytable t
``````

However with millions or rows it's likely to be very slow.

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Oh DUH! Thanks, I had a mental block there, this worked fine. Thanks so much! –  Jeffrey Kramer Aug 1 '13 at 20:20
Speed is okay, I just need to run it once to look at something out of curiosity. –  Jeffrey Kramer Aug 1 '13 at 20:22

Assumptions:

• Your date format is m/d/yyyy (I used format mm/dd/yyyy)
• id on this table is an FK to some other entity where id is the PK
• you are meant to take the date of the chosen row, and look for that row and all rows less than 12 months older for that id, and sum the val's in those rows

I'll write this in Oracle SQL because that's what I'm using and you didn't specify ;)

Query Summary:

• "Chosen" is the instance of your table to serve as the input row
• "Lookback" gathers all rows including your Chosen row and up to 12 months back minus 1 day
``````WITH DateTable
AS (SELECT 'a' id, TO_DATE ('01/01/2012', 'mm/dd/yyyy') dt, 23 val FROM DUAL
UNION
SELECT 'a', TO_DATE ('1/1/2012', 'mm/dd/yyyy'), 23 FROM DUAL
UNION
SELECT 'a', TO_DATE ('02/01/2012', 'mm/dd/yyyy'), 24 FROM DUAL
UNION
SELECT 'a', TO_DATE ('06/01/2013', 'mm/dd/yyyy'), 12 FROM DUAL
UNION
SELECT 'a', TO_DATE ('07/01/2013', 'mm/dd/yyyy'), 56 FROM DUAL
UNION
SELECT 'b', TO_DATE ('01/01/2009', 'mm/dd/yyyy'), 34 FROM DUAL
UNION
SELECT 'b', TO_DATE ('03/01/2009', 'mm/dd/yyyy'), 78 FROM DUAL)
SELECT chosen.id, chosen.dt, SUM (lookback.val)/12
FROM DateTable chosen, DateTable lookback
WHERE   chosen.id = 'a' --your input id
AND chosen.dt = TO_DATE ('07/01/2013', 'mm/dd/yyyy') --your input date
AND chosen.id = lookback.id
AND lookback.dt > ADD_MONTHS (chosen.dt, -12)
AND lookback.dt <= chosen.dt
GROUP BY chosen.id, chosen.dt;
``````

And if you want to query on dates/months not present in any row, do this:

``````WITH DateTable
AS (SELECT 'a' id, TO_DATE ('01/01/2012', 'mm/dd/yyyy') dt, 23 val FROM DUAL
UNION
SELECT 'a', TO_DATE ('1/1/2012', 'mm/dd/yyyy'), 23 FROM DUAL
UNION
SELECT 'a', TO_DATE ('02/01/2012', 'mm/dd/yyyy'), 24 FROM DUAL
UNION
SELECT 'a', TO_DATE ('06/01/2013', 'mm/dd/yyyy'), 12 FROM DUAL
UNION
SELECT 'a', TO_DATE ('07/01/2013', 'mm/dd/yyyy'), 56 FROM DUAL
UNION
SELECT 'b', TO_DATE ('01/01/2009', 'mm/dd/yyyy'), 34 FROM DUAL
UNION
SELECT 'b', TO_DATE ('03/01/2009', 'mm/dd/yyyy'), 78 FROM DUAL),
InputData
AS (SELECT 'b' id, TO_DATE ('12/15/2009', 'mm/dd/yyyy') dt FROM DUAL)
SELECT InputData.id, InputData.dt, SUM (lookback.val)/12
FROM DateTable lookback, InputData
WHERE  lookback.id = InputData.id
AND lookback.dt > ADD_MONTHS (InputData.DT, -12)
AND lookback.dt <= InputData.DT
GROUP BY InputData.id, InputData.dt;
``````
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I think you should take a look at the Windowing functions in Teradata. (Note: all latest ANSI SQL complaint databases support windowing functions to enable users process row-by-row operations instead of set-based ones).

So, using windowing functions I would write something like this:

```SELECT ID ,DT ,VAL ,(SUM(VAL)OVER(PARTITION BY YEAR(DT)) )/12.00 AS L12M_mov_avg FROM some.table;```

the code above is not tested - but, to just highlight the use of windowing functions.

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