Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

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.

share|improve this question
Two ideas: Use 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
@Roland the reason why I capsule that in a function is, because in my real example, I need the value of 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
Yes, you would. I cannot really test alternatives for performance with you example. Can you provide a (much) bigger toy data.table that reflects the ratio of unique key values to total rows? –  Roland May 27 '13 at 10:58
Thanks @Roland, I'll do some benchmarking on my own and present the results later. –  Beasterfield May 27 '13 at 11:09

1 Answer 1

up vote 2 down vote accepted

By placing c in the key and using .N to get the maximum we can avoid which.max (untested):

setkey(dt, a, c)
dt[, c(.SD[.N], min = min[1], val = sum(val)), by = a][, -c(4, 6), with = FALSE]

ADDED: or this variation:

dt[, c(.SD[.N, c(1:2, 4), with = FALSE], min = min[1], val = sum(val)), by = a]

ADDED 2: We only used .SD because you indicated you had many columns but if you are willing to write them out then the above could be written:

dt[, list(b = b[.N], c = c[.N], min = min[1], max = max[.N], val = sum(val)), by = a]

ADDED 3: Yet another variation:

dt[, c("min", "val") := list(min[1], sum(val)), by = a][, .SD[.N], by = a]


Microbenchmarking the four solutions gave the following boxplot (n = 10):

enter image description here

share|improve this answer
I am not sure why, but the c( .SD[.N], ... ) seems to be quite expensive as my microbenchmarks show. But using .N instead of which.max in @Rolands comment is a great idea which gives me at the moment the best results. –  Beasterfield May 27 '13 at 12:54
See the ADDED 2. –  G. Grothendieck May 27 '13 at 13:12
Thanks, works great –  Beasterfield May 27 '13 at 14:11

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.