# find the min in the vector but no 0

My df is like this

``````  df <- data.frame(t1 = c(10, 20, 30, 1, 0), t2 = c(30, 0, 40, 0, 0), t3 = c(10, 0, 3, 10, 0))
``````

what I want to do is to find the `min` in the `df` row but not 0 I do

``````df<- df%>% rowwise() %>%
do({
th <- c(.\$t1, .\$t2, .\$t3,)

data.frame(., t_s_last = min(th[th > 0))
})
``````

but it works but not for the rows that contain sth more than 0. how to make this returning 0 if there are just 0 in the row (row 5)?

• Are you values are always integers >= 0 ? – David Arenburg Aug 31 '15 at 17:26

We can use `apply` with an `if/else` condition

`````` apply(df, 1, function(x) if(all(x==0)) 0 else min(x[x> 0]))
``````

Or another option is `rowMins` from `library(matrixStats)`. We replace the '0' values in the dataset with `NA`, use `rowMins` with `na.rm=TRUE`, and replace the 'Inf' values with 0.

`````` library(matrixStats)
is.na(df) <- df==0
v1 <- rowMins(as.matrix(df), na.rm=TRUE)
v1[is.infinite(v1)] <- 0
v1
# 10 20  3  1  0
``````

We can also use the `if/else` within the `do`

``````library(dplyr)
df %>%
rowwise() %>%
do({th <- unlist(.[.>0])
data.frame(., t_s_last = if(all(th==0)) 0 else min(th))})
#  t1 t2 t3 t_s_last
#1 10 30 10       10
#2 20  0  0       20
#3 30 40  3        3
#4  1  0 10        1
#5  0  0  0        0
``````
• Thanks a lot. I like `dplyr` so I will mark this answer – Mateusz1981 Aug 31 '15 at 11:28

I'm guessing that because you are looking for values above zero, all your values are >=0 and integers. Thus, we could play around with log transformation in order to convert all the zeroes to `Inf` and thus being always the largest. This will help us avoid running by row operations, rather vectorize using the minus of the `max.col` function

``````df[cbind(1:nrow(df), max.col(-abs(log(df))))]
##  10 20  3  1  0
``````
• taking absolute value of the log will screw up the ordering - compare `abs(log(0.2))` vs `abs(log(1.2))` – eddi Aug 31 '15 at 15:22
• @eddi that only true for non-integer values. I've edited the answer – David Arenburg Aug 31 '15 at 16:39
• Doesn't have to be integers, just need to have no numbers between 0 and 1. Maybe you can fix with smth like `log(df) + 1000` - I think that covers the smallest numbers R can represent. – eddi Aug 31 '15 at 18:17
• Yeah I know that, but restricting to x in (0 | >=1) seems awkward to me. I'm guessing OP has integers >= 0 (I'e asked him). If not, I'll probably delete as this is getting ridiculously specific – David Arenburg Aug 31 '15 at 18:22

Here is another approach that uses `dplyr` and `tidyr`. A bit longer than answer from @akrun. But possibly more readable without the use of `do`:

``````library(dplyr)
library(tidyr)

df %>%
mutate(id = row_number()) %>%
gather(time, value, t1:t3) %>%
group_by(id) %>%
mutate(ts = ifelse(all(value == 0), 0, min(value[value != 0])))  %>%