# How can I speed up this row-by-row operation in data.table

I have a `data.table` with `xe5` rows and approx 100 columns. I am looking to find the first 3 column index such that the value is not `NA` or `0`.

``````m <- matrix(rep(NA_integer_, 1e6), ncol=10)
for(i in 1:nrow(m)){
set.seed(i);
m[i, sample(1:10, 5)] =  1L:5L
}
DT <- data.table(m);
DT
V1 V2 V3 V4 V5 V6 V7 V8 V9 V10
1: NA  5  1  2  3 NA  4 NA NA  NA
2: NA  1 NA NA  3  5  2 NA NA   4
3: NA  1  4  3 NA NA NA  2  5  NA
4:  2  4  3 NA  5  1 NA NA NA  NA
5:  5  4  1 NA NA NA  2  3 NA  NA
---
99996: NA NA  2  3  5  1 NA NA  4  NA
99997:  2 NA NA NA  1 NA NA  3  5   4
99998:  5 NA  4  2 NA  1  3 NA NA  NA
99999: NA  5 NA  1 NA  4 NA  2 NA   3
100000:  5 NA NA NA  2  3  1 NA NA   4

f <- function(x){return(list(which(!is.na(x) & x!=0L)[1:3L]))}

#Here is what apply do
system.time(test <- apply(m, FUN=f, MAR=1))
utilisateur     système      écoulé
1.30        0.00        1.29
``````

I find it very slow, this might not be a task for `data.table`, I am looking for a fast way of getting this answer (any method is welcome).

-

First, you could use the fact that `0 /0` is `NaN` which will also give `TRUE` for `is.na`. This'll reduce to condition to one `!is.na`. Second, you can vectorise using `which` with `arr.ind = TRUE` that'll give a `row` and `col` index. We can use that to split by `row` and get the first three `col` values as follows:

``````system.time(tt <- data.table(which(!is.na(DT[, lapply(.SD, function(x) x/0)]),
arr.ind=TRUE), key="row")[, col[1:3], by="row"])
user  system elapsed
0.360   0.000   0.359
``````

Edit: an alternative way:

``````DT <- DT[, lapply(.SD, function(x) !is.na(x/0))]
out <- data.table(matrix(numeric(3e5), ncol=3))
system.time({
for (i in as.integer(seq_along(DT))) {
for (j in 1:3) {
zeros <- .subset2(DT, i) & (out[[j]] == 0)
out[zeros, names(out)[j] := i]
DT[zeros, c(names(DT)[i]) := FALSE]
}
}
})
``````

Not sure if it's the fastest though.

-
first one is faster on my pc –  eddi Jul 1 at 18:37
getting rid of the `arrayInd` fluff will bring the first solution's time down by about 25% - `t = which(!is.na(m/0)); n = nrow(m); data.table(row = (t-1L) %% n + 1L, col = (t-1L) %/% n + 1L, key = 'row')[, col[1:3], by = row]` –  eddi Jul 1 at 18:54
Cool thanks, I still can't determine a rule when `apply(,MAR=1)` is faster than `data.table[,,by='row']` –  statquant Jul 1 at 20:04
@statquant apply coerces a data.frame (data.table) to a matrix, I think the memory issue will kick in before by = row becomes faster –  mnel Jul 1 at 22:45
On my real case (3e5*201) the alternative way is fastest, though >15seconds –  statquant Jul 2 at 7:24
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