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The data.table package in R provides the option:

which: ‘TRUE’ returns the integer row numbers of ‘x’ that ‘i’ matches to.

However, I see no way of obtaining, within j, the integer row numbers of 'x' within the groups established using by.

For example, given...

DT = data.table(x=rep(c("a","b","c"),each=3), y=c(1,3,6))

...I would like to know the indices into DT for each value of y.

The value to me is that I am using a data.table in parallel with Another Data Structure (ADS) to which I intend to perform groupwise computations based on the efficiently computed groupings of the data.table.

For example, assuming ADS is a vector with a value for each row in DT:

ADS<-sample(100,nrow(DT))

I can, as a workaround, compute the groupwise mean of ADS determined by DT$y the group if I first add a new sequence column to the data.table.

DT[,seqNum:=seq_len(nrow(DT))]
DT[,mean(ADS[seqNum]),by=y]

Which gives the result I want at the cost of adding a new column.

I realize that in this example I can get the same answer using tapply:

tapply(ADS,DT$y,mean)

However, I will not then get the performance benefit of data.tables efficient grouping (especially when the 'by' columns are indexed).

Perhaps there is some syntax I am overlooking???

Perhaps this is an easy feature to add to data.table and I should request it (wink, wink)???

Proposed syntax: optionally set '.which' to the group indices, allowing to write:

DT[,mean(ADS[.which]),by=y,which=TRUE]
share|improve this question
    
I'm afraid I don't follow. Can you give an example of a computation that you want to perform between ADS and DT? –  Blue Magister Sep 13 '12 at 18:27
    
Blue, I did give a working example... my last line of code is computing the groupwise mean in ADS using indices from DT. In my real application, the ADS data structure is NOT a vector but a 'GenomicRanges' object, and my DT is meta-data about the ranges. In any case Josh and Matthew, below, are 'on the case'. Thanks! –  malcook Sep 14 '12 at 2:48

2 Answers 2

A keyed data.table will be sorted so that groups are stored in contiguous blocks. In that case, you could use .N to extract the group-wise indexing information:

DT <- data.table(x=rep(c("a","b","c"),each=3), y=c(1,3,6))
setkey(DT, y)

ii <- DT[,.N, by=y]
ii[, start := cumsum(N) - N[1] + 1][,end := cumsum(N)][, N := NULL]
#    y start end
# 1: 1     1   3
# 2: 3     4   6
# 3: 6     7   9

(Personally, I'd probably just add an indexing column like your suggested seqNum. Seems simpler, I don't think it will affect performance too much unless you are really pushing the limits.)

share|improve this answer
    
+10! Maybe OP wants.I? Wink, wink. –  Matt Dowle Sep 13 '12 at 23:33
    
+11! (is that a factorial?) And, yes, OP (thats me) really wants .I (or .which when which = TRUE). Is it on the table for implementation? –  malcook Sep 14 '12 at 2:41
    
@josh-obrien, I don't like adding seqNum since that assumes there is no seqNum column already in use, and it is destructive change to an object I don't want to be modifying. Thx. –  malcook Sep 14 '12 at 2:51
2  
@malcook Yes it's FR#1962 "Add .I (row numbers of .SD in x) alongside .N, .SD and .BY". It would be quite handy. –  Matt Dowle Sep 14 '12 at 13:45

Available since data.table 1.8.3 you can use .I in the j of a data.table to get the row indices by groups...

DT[ , list( yidx = list(.I) ) , by = y ]
#   y  yidx
#1: 1 1,4,7
#2: 3 2,5,8
#3: 6 3,6,9
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