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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
1  
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]

Benchmarks

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

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