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I have a keyed data.table, x, and realize that I need to merge it using a different multicolumn key.

I want to avoid (i) setting and resetting x's key and (ii) keeping track of copies of x with different keys. Here's some sample data and my current approach:

n    <- 10
m    <- 2
samp <- function(n) sample(1:9,n,replace=T)
x    <- data.table(A = samp(n),B = samp(n),C = samp(n),key="A")
y    <- x[samp(m),list(B,C,D=samp(m))]

# this works:
#    B C A D
# 1: 7 6 6 5
# 2: 9 4 6 2

So that approach works, but I get the comment

...j is a named list. It's very inefficient...

The named list is .SD. Is there a better or more standard way to do this?

It seems that using key or keyby without .SD has no effect:

key(x[,,keyby="B,C"]) # A
key(x[,,key="B,C"]) # A
share|improve this question
I think your current option is using merge(x, y, by=c("B","C")). Also, keyby is something very different from what you seem to think it is - it's just a by, with the only difference being that the end result is keyed by the by column(s). But I would like this as a feature (assuming it's not already there and I just don't know how to use it). – eddi Jun 7 '13 at 19:14
You are right: I never use keyby, but just noticed that it gave the desired output in this case. Now that I know what it's for, I wouldn't want to use keyby here, since it would combine rows with duplicated values of the temporary key. I didn't even think of using merge (having become so used to the x[y] syntax), but that does seem like what I ought to do. If no other answer comes along, maybe I should accept that. – Frank Jun 7 '13 at 19:22
another option is doing data.table(x, key=c("B","C"))[y] (I think how well this option works is case-specific) – eddi Jun 7 '13 at 19:30
Regarding eddi's answer using merge, in a copy of x and y are being made (for your case as the keys don't match the by argument). Of course keys are being created on the copy. – Arun Jun 7 '13 at 20:04
@Arun Okay, thanks for pointing that out. Also, if/when @eddi posts that answer, it should have all.y=TRUE to exactly match the question, I think. – Frank Jun 7 '13 at 20:29
up vote 3 down vote accepted

In version 1.9.5, the on argument was added, with this usage note in the changelog:

data.tables can join now without having to set keys by using the new on argument. For example: DT1[DT2, on=c(x = "y")] would join column 'y' of DT2 with 'x' of DT1. DT1[DT2, on="y"] would join on column 'y' on both data.tables.

In this case, since the merge-column names are the same in x and y, x[y,on=c("B","C")] works.

Historical answer (around version 1.8.11): As of version 1.8.11 [.data.table will have a key argument, which is equivalent to calling setkeyv beforehand. It's not exactly what this question is looking for, but I don't see a way of achieving this without copying the entire data (bad imo), so I think this is a reasonable compromise, but please let me know if you think otherwise.

Edit from Matthew

Specifically adding an argument named key to [.data.table was a new suggestion in the last few days that I haven't responded to yet. We've discussed secondary keys in the past, set2key for example. Secondary keys won't copy the data.

We'll discuss it off list but I think key in [.data.table will likely change name or be done differently. Reminder to internet: v1.8.11 is in development, unstable and experimental. When it gets published to CRAN, then it can be relied on.

share|improve this answer
+1. Yeah, I like this new option and will probably use it. I've made a longer reply on the mailing list. – Frank Sep 29 '13 at 4:49

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