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As the title states, I'm trying to create a column in a data.table which would act as a unique identifier of another column. My dataset is a few hundred million observations, but here's a play set and the code I've worked up so far:

# I use a key because there are many more columns, but they are irrelevant here
myDT <- data.table(Addy=c("12hig", "12hig", "12hig", "1AbHN", "198aM"),key="Addy")

    Addy
1: 12hig
2: 12hig
3: 12hig
4: 198aM
5: 1AbHN

uniqueDT <- unique(myDT[,list(Addy)]) # is this inefficient?
uniqueDT[,mrpId := seq(1,nrow(uniqueDT),1)]

Addy mrpId
1: 12hig     1
2: 198aM     2
3: 1AbHN     3


myDT[J(uniqueDT)]
    Addy mrpId
1: 12hig     1
2: 12hig     1
3: 12hig     1
4: 198aM     2
5: 1AbHN     3

My code above gets the job done, but I don't really know if it's efficient. Is there a more data.table-esque way of doing this?

Edit:

You might be wondering why I'm creating unique identifiers from unique identifiers. Well, the idea here is to basically create a hash. The 'Addy' column data are very long strings, and I need to do operations on this data, so I think it better to operate on a smaller number of bytes.

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  • As to your larger question, if you set Addy as your key (which you likely should), I'm a bit skeptical that you'll get much if any speedup by by using an alternative column containing the very same grouping information. My strong guess (but it is only a guess) is that behind the scenes -- whether they contain very short or very long strings -- any two keyed columns use the same machinery to id, subset, and operate on subgroups of the data.table. Mar 27, 2015 at 19:22
  • Interesting, I'll keep that in mind. As of right now though, after a few operations in R the data is getting exported to other programs that aren't as memory efficient as data.table.
    – mrp
    Mar 27, 2015 at 20:16
  • @frank Yea, Matt Dowle's final edit covers this. However I searched for this question and didn't find that question, or this one: stackoverflow.com/questions/28910376/…
    – mrp
    Mar 28, 2015 at 4:22
  • @mrp I don't mean the dupe vote as a criticism; I upvoted your question, too. Good find on that other question.
    – Frank
    Mar 28, 2015 at 17:43

2 Answers 2

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This should be fast, and is at least a bit more straightforward:

myDT[, mrpID:=.GRP, by=Addy]
myDT
    Addy mrpID
1: 12hig     1
2: 12hig     1
3: 12hig     1
4: 198aM     2
5: 1AbHN     3
0
0

Aside from data.table, the base factor class seems to be what you need:

myDT[, mrpID:=as.numeric(as.factor(Addy))]
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  • I tried going this route, but running as.numeric(as.factor()) turned out to be a fairly slow operation.
    – mrp
    Mar 27, 2015 at 19:22
  • Also, when doing something like this, you need to take special measures to ensure that values returned are in ascending order. (Try this to see what I mean: as.numeric(as.factor(c("C","B","A"))).) You can get around that particular problem with x <- c("C", "B", "A"); as.numeric(factor(x, levels=unique(x))) Mar 27, 2015 at 19:26

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