I am trying to create a function that computes a windowed moving average in **SQLServer 2008**. I am quite new to SQL so I am having a fair bit of difficulty. The data that I am trying to perform the moving average on needs to be grouped by day (it is all timestamped data) and then a variable moving average window needs to be applied to it.

I already have a function that groups the data by day (and @id) which is shown at the bottom. I have a few questions:

**Would it be better to call the grouping function inside the moving average function or should I do it all at once?**

**Is it possible to get the moving average for the dates input into the function, but go back n days to begin the moving average so that the first n days of the returned data will not have 0 for their average?** (ie. if they want a 7 day moving average from 01-08-2011 to 02-08-2011 that I start the moving average calculation on 01-01-2011 so that the first day they defined has a value?)

I am in the process of looking into how to do the moving average, and know that a moving window seems to be the best option *(currentSum = prevSum + todayCount - nthDayAgoCount) / nDays* but I am still working on figuring out the SQL implementation of this.

I have a grouping function that looks like this (some variables removed for visibility purposes):

```
SELECT
'ALL' as GeogType,
CAST(v.AdmissionOn as date) as dtAdmission,
CASE WHEN @id IS NULL THEN 99 ELSE v.ID END,
COUNT(*) as nVisits
FROM dbo.Table1 v INNER JOIN dbo.Table2 t ON v.FSLDU = t.FSLDU5
WHERE v.AdmissionOn >= '01-01-2010' AND v.AdmissionOn < DATEADD(day,1,'02-01-2010')
AND v.ID = Coalesce(@id,ID)
GROUP BY
CAST(v.AdmissionOn as date),
CASE WHEN @id IS NULL THEN 99 ELSE v.ID END
ORDER BY 2,3,4
```

Which returns a table like so:

```
ALL 2010-01-01 1 103
ALL 2010-01-02 1 114
ALL 2010-01-03 1 86
ALL 2010-01-04 1 88
ALL 2010-01-05 1 84
ALL 2010-01-06 1 87
ALL 2010-01-07 1 82
```

**EDIT:** To answer the first question I asked:

I ended up creating a function which declared a temporary table and inserted the results from the count function into it, then used the example from `user662852`

to compute the moving average.