Let's say I have `data.table`

looking like this:

```
dt <- data.table(
a = c( "A", "B", "C", "C" ),
b = c( "U", "V", "W", "X" ),
c = c( 0.1, 0.2, 0.3, 0.4 ),
min = c( 0, 1, 2, 3 ),
max = c( 11, 12, 13, 14 ),
val = c( 100, 200, 300, 400 ),
key = "a"
)
```

My actual `data.table`

has much more columns and up to a couple of million rows. About 10% of the rows have a duplicated key `a`

. Those rows I'd like to aggregate with a function looking like this one:

```
comb <- function( x ){
k <- which.max( x[ ,c ] )
list( b = x[ k, b ], c = x[ k, c ], min = min( x[ , min ] ), max = max( x[ , max ] ), val = sum( x[ ,val ] ) )
}
```

However, calling

```
dt <- dt[ , comb(.SD), by = a ]
```

is very slow and I'm wondering how I could improve this. Any help is appreciated.

`if`

/`else`

in your function to check if`nrow(x)>1`

and only do all those calculations if that's the case. And I believe`dt[,list(b=b[which.max(c)],c=max(c),min=min(min),max=max(max),val=sum(val)),by=a]`

should be faster than working with`.SD`

here. – Roland May 27 '13 at 10:06`which.max(c)`

multiple times. I'm afraid if I call`dt[ , list( ... ) ]`

I'd have to put`which.max(c)`

everywhere where I need it's value? – Beasterfield May 27 '13 at 10:51