# aggregating monthly sums and then getting the mean of all monthly sums

The list below is sum of data corresponding to each month in a time series using the following snippet:

``````aggregate(data, by=list(Year=format(DateTime, "%Y"), Month=format(DateTime, "%m")), sum, na.rm=TRUE)

Year Month        x
1   1981    01 62426.43
2   1982    01 70328.87
3   1983    01 67516.34
4   1984    01 64454.00
5   1985    01 78801.46
6   1986    01 73865.18
7   1987    01 64224.96
8   1988    01 72362.39
9   1981    02 74835.16
10  1982    02 75275.58
11  1983    02 67457.39
12  1984    02 64981.99
13  1985    02 56490.10
14  1986    02 62759.89
15  1987    02 65144.44
16  1988    02 67704.67
``````

This part is easy...but I am tripping up on trying to get an average of all the monthly sums for each month (i.e. one average of the sums for each month) If I do the following:

``````aggregate(data, by=list(Month=format(DateTime, "%m")), sum, na.rm=TRUE)
``````

I just get a sum of all months in the time series, which is what i dont want. Can i achieve the desired result in one aggregate statement, or do I need more code...Any help would be appreciated.

-
i dont know why its not showing up on here but someone mentioned 'why not just take the mean?'. That cant be done because the data is energy, so i need to sum the data first to get total energy for each month. Then I want to get a mean of all those monthly sums to get 12 mean values (1 per month). –  RWJ Feb 6 '12 at 17:12

You can do it with 2 `aggregate` statements:

``````aggregate(x~Month, aggregate(data, by=list(Year=format(DateTime, "%Y"), Month=format(DateTime, "%m")), sum, na.rm=TRUE), mean)
``````
-
Perfect...Thanks James –  RWJ Feb 6 '12 at 17:20
You could also have done it with a single call to `aggregate`:
``````aggregate(data,