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I have a data.table structure like so (except mine is really huge):

dt <- data.table(x=1:5, y=3:7, key='x')

I want to look up rows in that structure by another variable whose name is x (notice - the same as the name of the key of dt):

x <- 3:4
dt2 <- dt[ J(x) ]

This doesn't work, because the lookup sees the column name first, and the local variable is obscured:

dt2
#    x y
# 1: 1 3
# 2: 2 4
# 3: 3 5
# 4: 4 6
# 5: 5 7

I thought about the with argument for [.data.table, but that only applies to the j argument, not the i argument.

Is there something similar for the i argument?

If not, such a thing would be handy whenever I'm using a local variable and I don't know the complete list of column names in dt, to avoid conflicts.

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There is an item in the NEWS for 1.8.2 that suggests a ..() syntax is planned, to evaluate in the calling frame. It doesn't appear to be within 1.8.7 –  mnel Feb 27 '13 at 0:34

4 Answers 4

up vote 7 down vote accepted

There is an item in the NEWS for 1.8.2 that suggests a ..() syntax will be added at some point, allowing this

New DT[.(...)] syntax (in the style of package plyr) is identical to DT[list(...)], DT[J(...)] and DT[data.table(...)]. We plan to add ..(), too, so that .() and ..() are analogous to the file system's ./ and ../; i.e., .() evaluates within the frame of DT and ..() in the parent scope.

In the mean time, you can get from the appropriate environment

dt[J(get('x', envir = parent.frame(3)))]
##    x y
## 1: 3 5
## 2: 4 6

or you could eval the whole call to list(x) or J(x)

dt[eval(list(x))]
dt[eval(J(x))]
dt[eval(.(x))]
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You must be using a different dt or a different x. –  BondedDust Feb 27 '13 at 1:29
    
Ah, yes my x <- 2:3 (I could have sworn I copied from the question, (although it was in the 5 min grace period) –  mnel Feb 27 '13 at 1:31
    
@Dwin, fixed with the correct x –  mnel Feb 27 '13 at 1:32
    
Thanks @mnel, it looks like this uses an indexed join and merge() doesn't, so I'm going to switch my accepted answer to yours. I previously tried I() instead of eval() and got a lot of warnings, I didn't think of trying eval(). –  Ken Williams Feb 27 '13 at 15:23
    
@mnel, I'm wondering where the 3 in parent.frame(3) came from? (As opposed to 2) –  Ricardo Saporta Feb 28 '13 at 5:01

New answer, now that I think I understand what was requested:

> X <- data.table(x=x)
> merge(dt, X)
   x y
1: 3 6
2: 4 7
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you could save two keystrokes by data.table(x) –  mnel Feb 27 '13 at 3:54
    
Nice concise answer. –  Ken Williams Feb 27 '13 at 15:05
1  
I just realized (from benchmarking) this doesn't use the index on dt, so unfortunately this won't work. I thought I read somewhere that merge was supposed to use the index when possible though? –  Ken Williams Feb 27 '13 at 15:24

This is a large data set so an environment lookup using qdap should be fast. But it doesn't work on data.table (at least not with my skill set) so I wrap it up as a data.table object at the end.

library(qdap)
data.table(x, y=lookup(x, dt))
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That doesn't seem very efficient if df already has an index on its key, and if it's numerical data. A complete hash table would have to be built first, right? –  Ken Williams Feb 27 '13 at 17:05
    
You said you did benchmarking so I'd be curious as to the results with the actual large data set you have. I'm not sure they way to answer your question is to benchmark it and see. I have no idea how long it takes to build a data.table object or how long making the environment would take on this task. I know that in previous tests of simple lookups an environment lookup is faster than data.table. Not that data.table is by any means slow at this but this is not where dats.table shines. –  Tyler Rinker Feb 27 '13 at 17:17
    
But please share your results on an actual data set (important over artificial small tasks which data.table is not designed for) as I'm sure it would be enlightening to future searchers. –  Tyler Rinker Feb 27 '13 at 17:18
    
Sure, I can share the benchmark results - though not the data itself. –  Ken Williams Feb 27 '13 at 21:52
    
What does your solution look like when there are more than 2 columns in dt? I have 5 columns. Do I create a lookup that returns entries from 1:nrow(dt)? –  Ken Williams Feb 27 '13 at 23:00

Adding some benchmarking results, by request.

dt is a 53080731 x 5 data.table object, keyed by a numeric column with around 100 unique values, fairly evenly distributed. x is a vector containing 5 of those values.

library(microbenchmark)
> mb <- microbenchmark(
+     dt[eval(J(x))],
+     merge(dt, data.table(x)),
+     times=10
+ )
> mb
Unit: milliseconds
                     expr      min       lq    median       uq      max neval
           dt[eval(J(x))]  127.324  127.549  133.5305  154.410  159.433    10
 merge(dt, data.table(x)) 5028.349 5083.792 5129.6590 5170.451 5250.255    10

@Tyler, if you can assist me with how to use qdap::lookup() for this case with multiple columns, I can add that too.

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