# fast way to apply an if loop within a for loop

This is my df :

``````a <- data.frame(x1 = 1:3, x2 = 0, GF = c("Pelagic", "Demersal", "Cephalopod"), Pelagic = 6, Demersal = 7, Cephalopod = 8)
``````

I have a list like this :

``````GF_list <- c("Pelagic", "Demersal", "Cephalopod")
``````

I want to attribute to the x2 column the value corresponding to the GF of the line. So I do this

``````for (i in 1 : nrow(a)) {
for (j in 1 : length(GF_list)) {
if (a\$GF[i] == GF_list[j]) {
a\$x2[i] <- a[i,(ncol(a) + (- length(GF_list) + j))]
}}
}
``````

But it takes a very long time ... (I have a large data frame)

Does it exist a faster way to applicate this attribution ? I think about a way which eliminates the first loop : "for (i in 1 : nrow(a))"

Thank you

So you want to select a different column from each row? You can do complicated extractions from a data.frame with a numeric matrix. Here's how it might work

``````a\$x2 <- a[cbind(1:nrow(a), match(GF_list, names(a)))]
``````

The matrix has a column for row numbers and column numbers. We use `match()` to find the right column for each row.

• @Loulou This should be the fastest way Mar 24 '17 at 3:11

One way is using `apply` row-wise and select the value of column from the `GF` column of that row.

``````a\$x2 <- apply(a, 1, function(x) x[x[["GF"]]])
a
#  x1 x2         GF Pelagic Demersal Cephalopod
#1  1  6    Pelagic       6        7          8
#2  2  7   Demersal       6        7          8
#3  3  8 Cephalopod       6        7          8
``````

Here is a solution which gives a numeric result:

``````i <- 1:nrow(a)
j <- which(a\$GF %in% GF_list)
as.matrix(a[,(ncol(a)-length(GF_list)+1):ncol(a)])[cbind(i,j)]
``````