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Suppose I have a list of files that I want to combine into a single data.table. My basic way of approaching this problem is to do something like this:

files <- dir(...) # The list of files to be combined

read.data <- function(loadfile) {
    data.dt <- data.table(read.csv(loadfile));
}

data.dt <- data.table(file = files)[, read.data(file), by = file]

The problem with this approach is when you get empty data.tables (resulting from empty files that just contain the header row).

Error in `[.data.table`(data.table(file = files), , read.data(file),  :
columns of j don't evaluate to consistent types for each group

Is there a way to get data.table to properly join up blank or NULL values seamlessly? That way you could just do something like

if(dim(data.dt)[1] == 0) {
    data.dt <- NULL
}

And that should fix most of the problems I am having.

EDIT: I should point out that I have already implemented this logic using plyr routines. ldply() worked flawlessly, but unfortunately is very slow and memory intensive once you try to pass more than a small number of files.

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2  
This is not a place I would expect the plyr overheads to have much affect. Most of the time will be taken up by read.csv and the final merge. How many files are you loading? How does the speed of ldply compare to llply? You might also try setting stringsAsFactors = F - figuring out factor orders correctly creates a surprisingly large slow down. – hadley Sep 8 '11 at 14:25

That's a new bug in data.table. I've raised here so it doesn't get forgotten.

A simpler example is :

DT = data.table(a=1:3,b=1:9)
DT
      a b
[1,] 1 1
[2,] 2 2
[3,] 3 3
[4,] 1 4
[5,] 2 5
[6,] 3 6
[7,] 1 7
[8,] 2 8
[9,] 3 9
DT[,if (a==2) NULL else sum(b),by=a]
Error in `[.data.table`(DT, , if (a == 2) NULL else sum(b), by = a) : 
  columns of j don't evaluate to consistent types for each group

The following error is correct :

DT[,if (a==2) 42 else sum(b),by=a]
Error in `[.data.table`(DT, , if (a == 2) 42 else sum(b), by = a) : 
  columns of j don't evaluate to consistent types for each group

and is corrected using :

DT[,if (a==2) 42L else sum(b),by=a]
     a V1
[1,] 1 12
[2,] 2 42
[3,] 3 18

but I can't think of a workaround for NULL until the bug is fixed.

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