# Get index of data.table column that matches a value

``````DT = data.table(
id = 1:5,
a  = c(0,1,0,2,5),
b  = c(1,0,2,4,4),
c  = c(1,2,0,0,5))

#     id a b c
# 1:  1  0 1 1
# 2:  2  1 0 2
# 3:  3  0 2 0
# 4:  4  2 4 0
# 5:  5  5 4 5
``````

I want to identify the first column from the left which has 0, and put the column index in `idx`.

``````#     id a b c idx
# 1:  1  0 1 1 2
# 2:  2  1 0 2 3
# 3:  3  0 2 0 2
# 4:  4  2 4 0 4
# 5:  5  5 4 5 NA
``````

(Non-`data.table` solutions, e.g., with `dplyr` are also welcome)

An idea via base R can be,

``````replace(max.col(-DT[, -1] == 0, ties.method = 'first') + 1, rowSums(DT == 0) == 0, NA)

#or break it into two lines If you want,
i1 <- max.col(-DT[,-1] == 0, ties.method = 'first') + 1
replace(i1, rowSums(DT == 0) == 0, NA)

#[1]  2  3  2  4 NA
``````

A `data.table` solution could be:

``````DT[, idx := apply(.SD, 1, function(x) first(which(x == 0 )))]

#   id a b c idx
#1:  1 0 1 1   2
#2:  2 1 0 2   3
#3:  3 0 2 0   2
#4:  4 2 4 0   4
#5:  5 5 4 5  NA
``````

One `dplyr` possibility could be:

``````DT %>%
mutate(idx = if_else(rowSums(. == 0) == 0,
NA_integer_,
max.col(- ., ties.method = "first")))

id a b c idx
1  1 0 1 1   2
2  2 1 0 2   3
3  3 0 2 0   2
4  4 2 4 0   4
5  5 5 4 5  NA
``````

And the same in `data.table`:

``````DT[, idx := ifelse(rowSums(.SD == 0) == 0,
NA_integer_,
max.col(- .SD, ties.method = "first"))]
``````
• Oh did not see you there. Why are you calling it `dplyr` possibility? Actually why load `dplyr` to do something that is in data.table format with a function that comes from base R? – Sotos Nov 7 '19 at 14:05
• The OP mentioned that he/she is also potentially interested in some `dplyr` possibilities. It could be easily rewritten into `base R` format (as you already did), but if somebody insists on doing it in `dplyr`, then he/she can use it :) – tmfmnk Nov 7 '19 at 14:08
• The only dplyr part is the pipe (so it is just magrittr?). If we want to use dplyr (tidyverse) then use related functions, for example `if_else` instead of `ifelse`? – zx8754 Nov 8 '19 at 7:07
• @zx8754 `mutate()` is from `dplyr`. Using `if_else()` is a good point, updated it accordingly. – tmfmnk Nov 8 '19 at 7:15
``````DT[, idx := which(.SD == 0)[1] + 1L, by = id]
DT
#    id a b c idx
# 1:  1 0 1 1   2
# 2:  2 1 0 2   3
# 3:  3 0 2 0   2
# 4:  4 2 4 0   4
# 5:  5 5 4 5  NA
``````

Too long in a comment, hence comm wiki. Similar to Sotos and tmfmnk, if value will not be found in `id`, then you can avoid the `rowSums`:

``````DT[, idx := {
x <- max.col(.SD==0, "first")
replace(x, x==1L, NA_integer_)
}]
``````

timing code:

``````library(data.table)
set.seed(0L)
nr <- 1e7
DT <- data.table(id=1:nr, a=sample(0:5, nr, TRUE), b=sample(0:5, nr, TRUE), c=sample(0:5, nr, TRUE))
DT0 <- copy(DT)
DT1 <- copy(DT)
DT2 <- copy(DT)
DT3 <- copy(DT)
DT4 <- copy(DT)

mtd0 <- function() {
replace(max.col(-DT0[, -1] == 0, ties.method = 'first') + 1, rowSums(DT == 0) == 0, NA)

#or break it into two lines If you want,
i1 <- max.col(-DT0[,-1] == 0, ties.method = 'first') + 1
replace(i1, rowSums(DT0 == 0) == 0, NA)
}

mtd1 <- function() {
DT1[, idx := apply(.SD, 1, function(x) first(which(x == 0 )))]
}

mtd2 <- function() {
DT2[, idx := which(.SD == 0)[1], by = id]
}

mtd3 <- function() {
DT2[, idx := fifelse(rowSums(.SD == 0) == 0,
NA_integer_,
max.col(-.SD, ties.method = "first"))]
}

mtd4 <- function() {
DT4[, idx := {
x <- max.col(.SD==0, "first")
replace(x, x==1L, NA_integer_)
}]
}

bench::mark(mtd0(), mtd1(), mtd2(),
mtd3(), mtd4(), check=FALSE)
``````

timings:

``````# A tibble: 5 x 13
expression      min   median `itr/sec` mem_alloc `gc/sec` n_itr  n_gc total_time result    memory    time   gc
<bch:expr> <bch:tm> <bch:tm>     <dbl> <bch:byt>    <dbl> <int> <dbl>   <bch:tm> <list>    <list>    <list> <list>
1 mtd0()     136.98ms 145.67ms    5.41     347.8MB    1.80      3     1    554.1ms <dbl [1,~ <df[,3] ~ <bch:~ <tibb~
2 mtd1()        8.66s    8.66s    0.115     76.3MB    0.346     1     3      8.66s <df[,5] ~ <df[,3] ~ <bch:~ <tibb~
3 mtd2()        57.3s    57.3s    0.0175    22.6MB    0.436     1    25      57.3s <df[,5] ~ <df[,3] ~ <bch:~ <tibb~
4 mtd3()       86.6ms  90.69ms   10.3      171.7MB    1.72      6     1   582.21ms <df[,5] ~ <df[,3] ~ <bch:~ <tibb~
5 mtd4()       48.9ms  50.12ms   18.4       97.6MB    1.84     10     1   544.43ms <df[,5] ~ <df[,3] ~ <bch:~ <tibb~
``````