I believe that something close to the following (which uses the relatively new `set()`

function) will be quickest:

```
DT <- data.table(id = c("A","B","C"), x1 = c(10,20,30), x2 = c(20,30,10))
total <- DT[ , x1 + x2]
rr <- seq_len(nrow(DT))
for(j in 2:3) set(DT, rr, j, DT[[j]]/total)
DT
# id x1 x2
# [1,] A 0.3333333 0.6666667
# [2,] B 0.4000000 0.6000000
# [3,] C 0.7500000 0.2500000
```

FWIW, calls to `set()`

takes the following form:

```
# set(x, i, j, value), where:
# x is a data.table
# i contains row indices
# j contains column indices
# value is the value to be assigned into the specified cells
```

My suspicion about the relative speed of this, compared to other solutions, is based on this passage from data.table's NEWS file, in the section on changes in Version 1.8.0:

```
o New function set(DT,i,j,value) allows fast assignment to elements
of DT. Similar to := but avoids the overhead of [.data.table, so is
much faster inside a loop. Less flexible than :=, but as flexible
as matrix subassignment. Similar in spirit to setnames(), setcolorder(),
setkey() and setattr(); i.e., assigns by reference with no copy at all.
M = matrix(1,nrow=100000,ncol=100)
DF = as.data.frame(M)
DT = as.data.table(M)
system.time(for (i in 1:1000) DF[i,1L] <- i) # 591.000s
system.time(for (i in 1:1000) DT[i,V1:=i]) # 1.158s
system.time(for (i in 1:1000) M[i,1L] <- i) # 0.016s
system.time(for (i in 1:1000) set(DT,i,1L,i)) # 0.027s
```