# Add multiple columns to R data.table in one function call?

I have a function that returns two values in a list. Both values need to be added to a data.table in two new columns. Evaluation of the function is costly, so I would like to avoid having to compute the function twice. Here's the example:

``````library(data.table)
example(data.table)
DT
x y  v
1: a 1 42
2: a 3 42
3: a 6 42
4: b 1  4
5: b 3  5
6: b 6  6
7: c 1  7
8: c 3  8
9: c 6  9
``````

Here's an example of my function. Remember I said it's costly compute, on top of that there is no way to deduce one return value from the other given values (as in the example below):

``````myfun <- function (y, v)
{
ret1 = y + v
ret2 = y - v
return(list(r1 = ret1, r2 = ret2))
}
``````

Here's my way to add two columns in one statement. That one needs to call myfun twice, however:

``````DT[,new1:=myfun(y,v)\$r1][,new2:=myfun(y,v)\$r2]

x y  v new1 new2
1: a 1 42   43  -41
2: a 3 42   45  -39
3: a 6 42   48  -36
4: b 1  4    5   -3
5: b 3  5    8   -2
6: b 6  6   12    0
7: c 1  7    8   -6
8: c 3  8   11   -5
9: c 6  9   15   -3
``````

Any suggestions on how to do this? I could save `r2` in a separate environment each time I call myfun, I just need a way to add two columns by reference at a time.

• Why not have your function take in a data frame and return a data frame directly? `myfun <- function (y, v) { ret1 = y + v ret2 = y - v return(list(r1 = ret1, r2 = ret2)) } – Etienne Low-Décarie Jul 4 '12 at 18:55
• @Etienne Because that copies the inputs to create a new output. Florian is using `data.table` for its memory efficiency with large datasets; it doesn't copy `x`,`y` or `v` at all, even once. Think 20GB datasets in RAM. – Matt Dowle Jul 5 '12 at 8:58

You could store the output of your function call:

``````z <- myfun(DT\$y,DT\$v)
#      x y  v new1 new2
# [1,] a 1 42   43  -41
# [2,] a 3 42   45  -39
# [3,] a 6 42   48  -36
# [4,] b 1  4    5   -3
# [5,] b 3  5    8   -2
# [6,] b 6  6   12    0
``````

but this also seems to work:

``````DT[, c("new1","new2") := myfun(y,v), with = FALSE]
``````

New in `data.table` v1.8.3 on R-Forge, the `with = FALSE` is no longer needed here, for convenience :

``````DT[, c("new1","new2") := myfun(y,v)]
``````

Up to the minute live NEWS is here.

• wow, that second one is amazing, thanks! just ran it with `debug(myfun)` to see how often it gets called: it's once. great. – Florian Oswald Jul 3 '12 at 10:33
• +10 from me too. I've just raised FR#2120 to "Drop needing `with=FALSE` for LHS of `:=`" – Matt Dowle Jul 3 '12 at 10:44
• Note that list recycling is also done; e.g., `c("a","b","c","d"):=list(1,2)` puts 1 into `a` and `c`, and 2 into `b` and `d`. If any of the columns don't exist they'll be added by reference. Not sure how useful `:=` recycling is in practice. It's more for `c("a","b","c"):=NULL` which deletes those 3 columns. Internally that's a recycle of NULL to a (semantic) list length 3. – Matt Dowle Jul 3 '12 at 10:49
• @MatthewDowle oh yes, just wanted to ask that. the `c("a","b","c"):=NULL` is very useful. – Florian Oswald Jul 3 '12 at 12:38
• another useful `:=` usage can be ``:=`(colname=colvalue,...)`. I often prefer this one because you might just replace `:=` with `list` to have a read-only preview of data to be written by reference when `:=` used. – jangorecki Jan 16 '15 at 10:53

To build on the previous answer, one can use `lapply` with a function that output more than one column. It's is then possible to use the function with more columns of the data.table.

`````` myfun <- function(a,b){
res1 <- a+b
res2 <- a-b
list(res1,res2)
}

DT <- data.table(z=1:10,x=seq(3,30,3),t=seq(4,40,4))
DT

## DT
##     z  x  t
## 1:  1  3  4
## 2:  2  6  8
## 3:  3  9 12
## 4:  4 12 16
## 5:  5 15 20
## 6:  6 18 24
## 7:  7 21 28
## 8:  8 24 32
## 9:  9 27 36
## 10: 10 30 40

col <- colnames(DT)
DT[, paste0(c('r1','r2'),rep(col,each=2)):=unlist(lapply(.SD,myfun,z),
recursive=FALSE),.SDcols=col]
## > DT
##     z  x  t r1z r2z r1x r2x r1t r2t
## 1:  1  3  4   2   0   4   2   5   3
## 2:  2  6  8   4   0   8   4  10   6
## 3:  3  9 12   6   0  12   6  15   9
## 4:  4 12 16   8   0  16   8  20  12
## 5:  5 15 20  10   0  20  10  25  15
## 6:  6 18 24  12   0  24  12  30  18
## 7:  7 21 28  14   0  28  14  35  21
## 8:  8 24 32  16   0  32  16  40  24
## 9:  9 27 36  18   0  36  18  45  27
## 10: 10 30 40  20   0  40  20  50  30
``````

The answer can not be used such as when the function is not vectorized.

For example in the following situation it will not work as intended:

``````myfun <- function (y, v, g)
{
ret1 = y + v + length(g)
ret2 = y - v + length(g)
return(list(r1 = ret1, r2 = ret2))
}
DT
#    v y                  g
# 1: 1 1                  1
# 2: 1 3                4,2
# 3: 1 6              9,8,6

DT[,c("new1","new2"):=myfun(y,v,g)]
DT
#    v y     g new1 new2
# 1: 1 1     1    5    3
# 2: 1 3   4,2    7    5
# 3: 1 6 9,8,6   10    8
``````

It will always add the size of column `g`, not the size of each vector in `g`

A solution in such case is:

``````DT[, c("new1","new2") := data.table(t(mapply(myfun,y,v,g)))]
DT
#    v y     g new1 new2
# 1: 1 1     1    3    1
# 2: 1 3   4,2    6    4
# 3: 1 6 9,8,6   10    8
``````

In case a function return a matrix you can achieve the same behavior by wrapping the function with one converting the matrix into list first. I wonder if data.table should handle it automatically?

``````matrix2list <- function(mat){
unlist(apply(mat,2,function(x) list(x)),FALSE)
}

DT <- data.table(A=1:10)

myfun <- function(x) matrix2list(cbind(x+1,x-1))

DT[,c("c","d"):=myfun(A)]

##>DT
##      A  c d
##  1:  1  2 0
##  2:  2  3 1
##  3:  3  4 2
##  4:  4  5 3
##  5:  5  6 4
##  6:  6  7 5
##  7:  7  8 6
##  8:  8  9 7
##  9:  9 10 8
## 10: 10 11 9
``````

Why not have your function take in a data frame and return a data frame directly?

``````myfun <- function (DT)
{
DT\$ret1 = with(DT, y + v)
DT\$ret2 = with(DT, y - v)
return(DT)
}
``````
• Because that copies the whole of `DT`, twice. Florian is using `data.table` for its memory efficiency with large datasets; it doesn't copy `x`,`y` or `v` at all, even once. – Matt Dowle Jul 5 '12 at 8:55