# Some specific calculation in a data.frame

how do I make a calculation based on the result of a previous line in R? To make it more clearly, just imagine the following dataframe:

``````user   rev   total_rev
A      10    10
A      10    20
A      20    40
A      10    50
B      50    50
C      50    50
C      10    60
C      20    80
``````

where user is an unique ID variable and rev a metric variable (for example revenue), which I want to aggregate into the new variable "total_rev". It should contain the sum of the variable "rev" up to the specific line, thus someting like the following calculation has to be conducted for each line:

``````> total_rev[i] = total_rev[i-1] + rev[i]
``````

where i is the actual line

Note that the calculation has to start from zero for each user. I've already tried to solve this with a loop, which worked for a small testcase, but the dateframe is quite huge and the calculation on the complete data set just didn't want to end.

-
Welcome to SO. This question is very straightforward and should be resolvable from some quick research on your part. `R` is vectorized and has wonderful aggregation tools. Look around a bit on here and google for `cumulative sums` and the `split-apply-combine` strategy of data manipulation. –  Justin Sep 12 '13 at 15:49

``````library(plyr)
mydata<-mtcars
ddply(mydata,.(cyl),transform,mpg=cumsum(mpg))
``````

``````library(plyr)
ddply(yourdata,.(user),transform,total_rev=cumsum(rev))

user rev total_rev
1    A  10        10
2    A  10        20
3    A  20        40
4    A  10        50
5    B  50        50
6    C  50        50
7    C  10        60
8    C  20        80
``````
-
Thank you very much, works perfect! :) –  user2635656 Sep 12 '13 at 16:23

When dealing with huge database, `data.table` is a good option

``````> library(data.table)
> DT <- data.table(df)
> DT[, total:= cumsum(rev), by=list(user) ]
> DT
user rev total_rev total
1:    A  10        10    10
2:    A  10        20    20
3:    A  20        40    40
4:    A  10        50    50
5:    B  50        50    50
6:    C  50        50    50
7:    C  10        60    60
8:    C  20        80    80
``````
-

You could use `?ave` and `?cumsum`:

``````ave(df\$rev, df\$user, cumsum)
``````

E.g.:

``````df <- read.table(textConnection("user   rev   total_rev
A      10    10
A      10    20
A      20    40
A      10    50
B      50    50
C      50    50
C      10    60

df\$total <- ave(df\$rev, df\$user, cumsum)
#  user rev total_rev total
#1    A  10        10    10
#2    A  10        20    20
#3    A  20        40    40
#4    A  10        50    50
#5    B  50        50    50
#6    C  50        50    50
#7    C  10        60    60
#8    C  20        80    80
``````
-