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I want to solve the windowing functions written in postgresSQL by using R language.

As I know, R has aggregate() to calculate group wise data. Whether it has any library to support windowing function ?

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Hi. You need an example that demonstrate what you did with window postegre sql function . – agstudy Dec 10 '12 at 10:19

You can use aggregate and merge if you are familiar with SQL syntax. Taking one of the example from the PostgreSQL manual, we would use

empsalary <- data.frame(depname=rep(c("develop", "personnel", "sales"), c(5, 2, 3)),
                        empno=c(11, 7, 9, 8, 10, 5, 2, 3, 1, 4), 
                        salary=c(5200, 4200, 4500, 6000, 5200, 3500, 3900, 4800, 5000, 4800)) 
merge(empsalary, aggregate(salary ~ depname, empsalary, mean), by="depname")

to reproduce the first example (compute average salary by depname).

     depname empno salary.x salary.y
1    develop    11     5200 5020.000
2    develop     7     4200 5020.000
3    develop     9     4500 5020.000
4    develop     8     6000 5020.000
5    develop    10     5200 5020.000
6  personnel     5     3500 3700.000
7  personnel     2     3900 3700.000
8      sales     3     4800 4866.667
9      sales     1     5000 4866.667
10     sales     4     4800 4866.667

You may probably want to look at what plyr has to offer for more elaborated construction.

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Correct, the above solution creates a new data.frame. You could also simulate the merge as follows: m <- with(empsalary, rep(tapply(salary, depname, mean), table(depname))), and cbind the resulting vector in your original data.frame. E.g., for avg perc. of salary, we could use empsalary$avg.perc <- empsalary$salary/m*100. – chl Dec 10 '12 at 11:44
Thank you for your reply. Suppose I want to solve the below query in R language: SELECT depname, empno, (salary * avg(salary) OVER (PARTITION BY depname))*100,(cost * avg(cost) OVER (PARTITION BY depname))*100 FROM empsalary then, Do I need to write a separate merge and create a temp data frame for each windowing function and merge all for final result..? – Vinoth S Dec 10 '12 at 12:04
Nope. You can use what I proposed (compute mean by group and expand by row, then add as a new column to your data.frame); you would just add a second aggregate step, replacing salary with cost. (BTW, don't remove your comments, otherwise future readers won't be able to follow the conversation.) – chl Dec 10 '12 at 12:26
I removed the comment as I have unfortunately posted it without completing. Anyway Thank you for your valuable reply :) – Vinoth S Dec 10 '12 at 12:56

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