I've got data big enough to need `data.table`

for the first time ever, and I've been very pleased with how easy it's been so far. I've read quite a bit of documentation today (certainly not nearly all of it), but I haven't found this yet.

I've got a data table keyed by `placeid`

and `t2`

, with one other column, `t1`

. What I'd like to do is set `t1`

to `0`

in each row where `t2`

is at its minimum, by `placeid`

.

```
## Sample data
set.seed(47)
require(data.table)
dt <- data.table(placeid = rep(letters[1:3], each = 3), t1 = runif(9), t2 = runif(9))
setkeyv(dt, cols=c("placeid", "t2"))
```

As `t2`

is in the key, the row I want to change is the first one within each grouping. I was able to get it to work with an `ifelse`

statement, but **is there a better way to do it using the i argument of [.data.table?**

I was hoping one of these would work, though on thinking tiny bit more it makes sense that they don't:

```
dt[1, t1 := 0, by = placeid] ## changes only first row
dt[which.min(t2), t1 := 0, by = placeid] ## changes only global min row
```

What I did find to work (the result being the desired output):

```
dt[, t1 := ifelse(t2 == min(t2), 0, t1), by = placeid] # works
```

`dt[,t1:=t1*(t2!=min(t2)),by='placeid']`

– Josh O'Brien Oct 1 '13 at 11:16