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My question is related to assignment by reference versus copying in data.table. I want to know if one can delete rows by reference, similar to

DT[ , someCol := NULL]

I want to know about

DT[someRow := NULL, ]

I guess there's a good reason for why this function doesn't exist, so maybe you could just point out a good alternative to the usual copying approach, as below. In particular, going with my favourite from example(data.table),

DT = data.table(x = rep(c("a", "b", "c"), each = 3), y = c(1, 3, 6), v = 1:9)
#      x y v
# [1,] a 1 1
# [2,] a 3 2
# [3,] a 6 3
# [4,] b 1 4
# [5,] b 3 5
# [6,] b 6 6
# [7,] c 1 7
# [8,] c 3 8
# [9,] c 6 9

Say I want to delete the first row from this data.table. I know I can do this:

DT <- DT[-1, ]

but often we may want to avoid that, because we are copying the object (and that requires about 3*N memory, if N object.size(DT), as pointed out here. Now I found set(DT, i, j, value). I know how to set specific values (like here: set all values in rows 1 and 2 and columns 2 and 3 to zero)

set(DT, 1:2, 2:3, 0) 
#      x y v
# [1,] a 0 0
# [2,] a 0 0
# [3,] a 6 3
# [4,] b 1 4
# [5,] b 3 5
# [6,] b 6 6
# [7,] c 1 7
# [8,] c 3 8
# [9,] c 6 9

But how can I erase the first two rows, say? Doing

set(DT, 1:2, 1:3, NULL)

sets the entire DT to NULL.

My SQL knowledge is very limited, so you guys tell me: given data.table uses SQL technology, is there an equivalent to the SQL command

DELETE FROM table_name
WHERE some_column=some_value

in data.table?

share|improve this question
I don't think it is that data.table() uses SQL technology so much as one can draw a parallel between the different operations in SQL and the various arguments to a data.table. To me, the reference to "technology" somewhat implies that data.table is sitting on top of a SQL database somewhere, which AFAIK is not the case. – Chase May 28 '12 at 21:15
thanks chase. yeah, i guess that sql analogy was a wild guess. – Florian Oswald May 29 '12 at 21:44

Good question. data.table can't delete rows by reference yet.

data.table can add and delete columns by reference since it over-allocates the vector of column pointers, as you know. The plan is to do something similar for rows and allow fast insert and delete. A row delete would use memmove in C to budge up the items (in each and every column) after the deleted rows. Deleting a row in the middle of the table would still be quite inefficient compared to a row store database such as SQL, which is more suited for fast insert and delete of rows wherever those rows are in the table. But still, it would be a lot faster than copying a new large object without the deleted rows.

On the other hand, since column vectors would be over-allocated, rows could be inserted (and deleted) at the end, instantly; e.g., a growing time series.

share|improve this answer
thanks matthew. good to know there is not some fundamental reason that prevents you from implementing this. good stuff. see you around! – Florian Oswald May 29 '12 at 21:43
Looking forward to this shipping... – Sim Dec 19 '12 at 6:06
@statquant I think I should fix the 37 bugs, and finish fread first. After that it's pretty high. – Matt Dowle Apr 19 '13 at 18:07
@MatthewDowle sure, thanks again for everything you are doing. – statquant Apr 19 '13 at 18:26
@vc273 Thanks for the encouragement. Will try. – Matt Dowle Jan 17 '14 at 22:20

the approach that i have taken in order to make memory use be similar to in-place deletion is to subset a column at a time and delete. not as fast as a proper C memmove solution, but memory use is all i care about here. something like this:

DT = data.table(col1 = 1:1e6)
cols = paste0('col', 2:100)
for (col in cols){ DT[, col := 1:1e6, with = F] }
keep.idxs = sample(1e6, 9e5, FALSE) # keep 90% of entries
DT.subset = data.table(col1 = DT[['col1']][keep.idxs]) # this is the subsetted table
for (col in cols){
  DT.subset[, col := DT[[col]][keep.idxs], with = F]
  DT[, col:= NULL, with = F] #delete
share|improve this answer
+1 Nice memory efficient approach. So ideally we need to delete a set of rows by reference actually don't we, I hadn't thought of that. It'll have to be a series of memmoves to budge up the gaps, but that's ok. – Matt Dowle Jan 21 '14 at 20:50
Would this work as a function, or does the use in a function and return force it to make memory copies? – rpierce Feb 21 '14 at 16:06
it would work in a function, since data.tables are always references. – vc273 Feb 21 '14 at 19:26
thanks, nice one. To speed up a little bit (especially with many columns) you change DT[, col:= NULL, with = F] in set(DT, NULL, col, NULL) – Michele Jul 7 '14 at 17:13

Instead or trying to set to NULL, try setting to NA (matching the NA-type for the first column)

set(DT,1:2, 1:3 ,NA_character_)
share|improve this answer
yeah, that works I guess. My problem is that I have a lot of data and I want to get rid of exactly those rows with NA, possibly without having to copy DT to get rid of those rows. thanks for your comment anyway! – Florian Oswald May 29 '12 at 21:48

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