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I have a bunch of data.tables in a list. I want to apply unique() to each data.table in my list, but doing so destroys all my data.table keys.

Here's an example:

A <- data.table(a = rep(c("a","b"), each = 3), b = runif(6), key = "a")
B <- data.table(x = runif(6), b = runif(6), key = "x")

blah <- unique(A)

Here, blah still has a key, and everything is right in the world:

key(blah)

# [1] "a"

But if I add the data.tables to a list and use lapply(), the keys get destroyed:

dt.list <- list(A, B)

unique.list <- lapply(dt.list, unique) # Keys destroyed here

lapply(unique.list, key) 

# [[1]]
# NULL

# [[2]]
# NULL

This probably has to do with me not really understanding what it means for keys to be assigned "by reference," as I've had other problems with keys disappearing.

So:

  • Why does lapply not retain my keys?
  • What does it mean to say keys are assigned "by reference"?
  • Should I even be storing data.tables in a list?
  • How can I safely store/manipulate data.tables without fear of losing my keys?

EDIT:

For what it's worth, the dreaded for loop works just fine, too:

unique.list <- list()

for (i in 1:length(dt.list)) {
  unique.list[[i]] <- unique(dt.list[[i]])
}

lapply(unique.list, key)

# [[1]]
# [1] "a"

# [[2]]
# [1] "x"

But this is R, and for loops are evil.

share|improve this question
1  
interestingly, unique.list[[1]] != unique(A). My guess, though just plainly a guess, is that perhaps what is getting called in the lapply statement is the {base} unique and not the {data.table} unique. –  Ricardo Saporta Feb 18 '13 at 1:55
    
I think you're right. I just noticed that – along with keys being destroyed – unique isn't even doing its job when passed through lapply –  Paul Murray Feb 18 '13 at 2:22
1  
@PaulMurray +1 Good question, but destroy seems a little strong. It doesn't retain them in this case. –  Matt Dowle Feb 18 '13 at 9:24
1  
@MatthewDowle "edited for language" –  Paul Murray Feb 18 '13 at 17:05
1  
or you should have gone all the way like "data.table and lapply annihilate table keys" –  statquant Feb 19 '13 at 19:44

2 Answers 2

up vote 8 down vote accepted

Interestingly, notice the difference between these two different results

lapply(dt.list, unique) 
lapply(dt.list, function(x) unique(x)) 

If you use the latter, the results are as you would expect.


The seemingly unexpected behavior is due to the fact that the first lapply statement is invoking unique.data.frame (ie from {base}) while the second is invoking unique.data.table

share|improve this answer
    
Wow, thanks. And weird. This works as a solution, but I still want to know what's going on. Am I the only one that wants to store data.tables in lists? I'm going to submit this as a bug report – think that's fair? –  Paul Murray Feb 18 '13 at 2:05
1  
@Plmrry I think when you store your data.tables as list, you lose a large benefit of what data.table offers, namely the memory efficiency by avoiding unnecessary duplication. Personally, I store a list of the names of my data.tables and then grab them by get( name ). A bit uglier code, but faster. –  Ricardo Saporta Feb 18 '13 at 2:15
    
@Plmrry as for the bug report, it might not be a bug, but just the way that match.fun() works. I couldnt say though –  Ricardo Saporta Feb 18 '13 at 2:19
    
Yeah, it's looking like I should just abandon storing data.tables in lists. I have a couple functions that scrape XML and spit out a list of relational tables, but I suppose I should just keep them as-is in the environment and save them all as RData... I'm still searching for "best practices" when it comes to dealing with a lot of data tables (or frames), especially when I want to be able to pass them as arguments. –  Paul Murray Feb 18 '13 at 2:33
    
@PaulMurray I tend to have one large table rather than a list of many smaller ones. For something like scraping I'd probably scrape into a list of data.table, yes, but then use rbindlist to create the big one. insert() rows by reference is on the wish list. –  Matt Dowle Feb 18 '13 at 9:28

Good question. It turns out that it's documented in ?lapply (see Note section) :

For historical reasons, the calls created by lapply are unevaluated, and code has been written (e.g. bquote) that relies on this. This means that the recorded call is always of the form FUN(X[[0L]], ...), with 0L replaced by the current integer index. This is not normally a problem, but it can be if FUN uses sys.call or match.call or if it is a primitive function that makes use of the call. This means that it is often safer to call primitive functions with a wrapper, so that e.g. lapply(ll, function(x) is.numeric(x)) is required in R 2.7.1 to ensure that method dispatch for is.numeric occurs correctly.

share|improve this answer
    
Thanks! Of course it was in the manual all along... –  Paul Murray Feb 18 '13 at 17:03

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