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I have a large data.table, with many missing values scattered throughout its ~200k rows and 200 columns. I would like to re code those NA values to zeros as efficiently as possible.

I see two options:
1: Convert to a data.frame, and use something like this
2: Some kind of cool data.table sub setting command

I'll be happy with a fairly efficient solution of type 1. Converting to a data.frame and then back to a data.table won't take too long.

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Why do you want to convert the data.table to a data.frame? A data.table is a data.frame. Any data.frame operation will just work. –  Andrie Aug 29 '11 at 20:38
@Andrie. a key difference is that you cant access a column in a data.table by specifying column number. so DT[,3] will not give the third column. i think this makes the solution proposed in the link unviable here. i am sure there is an elegant approach using some data.table wizardry! –  Ramnath Aug 29 '11 at 20:57
@Ramnath: you're exactly right! At the moment, I'm converting to a data.frame and looping through the columns to replace the NAs, but I'm looking for some elegant data.table wizardry! –  Zach Aug 29 '11 at 20:58
@Ramnath, AFAIK, DT[, 3, with=FALSE] returns the third column. –  Andrie Aug 29 '11 at 21:07
@Andrie. but there is still a problem mydf[is.na(mydf) == TRUE] does the job on data frames, while mydt[is.na(mydt) == TRUE] gives me something strange even if i use with=FALSE –  Ramnath Aug 29 '11 at 21:14

3 Answers 3

up vote 40 down vote accepted

Here's a solution using data.table's := operator, building on Andrie and Ramnath's answers.

require(data.table)  # v1.6.6
require(gdata)       # v2.8.2

dt1 = create_dt(2e5, 200, 0.1)
[1] 200000    200    # more columns than Ramnath's answer which had 5 not 200

f_andrie = function(dt) remove_na(dt)

f_gdata = function(dt, un = 0) gdata::NAToUnknown(dt, un)

f_dowle = function(dt) {     # see EDIT later for more elegant solution
    na.replace = function(v,value=0) { v[is.na(v)] = value; v }
    for (i in names(dt))

system.time(a_gdata = f_gdata(dt1)) 
   user  system elapsed 
 18.805  12.301 134.985 

system.time(a_andrie = f_andrie(dt1))
Error: cannot allocate vector of size 305.2 Mb
Timing stopped at: 14.541 7.764 68.285 

  user  system elapsed 
 7.452   4.144  19.590     # EDIT has faster than this

identical(a_gdata, dt1)   
[1] TRUE

Note that f_dowle updated dt1 by reference. If a local copy is required then an explicit call to the copy function is needed to make a local copy of the whole dataset. data.table's setkey, key<- and := do not copy-on-write.

Next, let's see where f_dowle is spending its time.

                  self.time self.pct total.time total.pct
"na.replace"           5.10    49.71       6.62     64.52
"[.data.table"         2.48    24.17       9.86     96.10
"is.na"                1.52    14.81       1.52     14.81
"gc"                   0.22     2.14       0.22      2.14
"unique"               0.14     1.36       0.16      1.56
... snip ...

There, I would focus on na.replace and is.na, where there are a few vector copies and vector scans. Those can fairly easily be eliminated by writing a small na.replace C function that updates NA by reference in the vector. That would at least halve the 20 seconds I think. Does such a function exist in any R package?

The reason f_andrie fails may be because it copies the whole of dt1, or creates a logical matrix as big as the whole of dt1, a few times. The other 2 methods work on one column at a time (although I only briefly looked at NAToUnknown).

EDIT (more elegant solution as requested by Ramnath in comments) :

f_dowle2 = function(DT) {
    for (i in names(DT))

  user  system elapsed 
 6.468   0.760   7.250   # faster, too

identical(a_gdata, dt1)   
[1] TRUE

I wish I did it that way to start with!

EDIT2 (over 1 year later, now)

There is also set(). This can be faster if there are a lot of column being looped through, as it avoids the (small) overhead of calling [,:=,] in a loop. set is a loopable :=. See ?set.

f_dowle3 = function(DT) {
    # either of the following for loops

    # by name :
    for (j in names(DT))

    # or by number (slightly faster than by name) :
    for (j in seq_len(ncol(DT)))
share|improve this answer
+! great answer! is it possible to have a more intuitive equivalent of the eval(parse)... stuff. on a broader note, i think it would be useful to have operations that work on all elements of the data.table. –  Ramnath Aug 30 '11 at 20:53
@Ramnath See edit: avoids eval(parse) and is much faster, too. Yes we could do ops that work on all elements. There is an open roadmap for data.table - feel free to add feature requests there and that way it won't get forgotten. –  Matt Dowle Aug 30 '11 at 22:25
Your 2nd block of code seems to be the most data.table appropriate way to do this. Thanks! –  Zach Aug 31 '11 at 2:08
hmmm, the current version of data.table seems to break your most recent function. Also, create_dt no longer exists! –  Zach Nov 6 '12 at 22:14
@Zach Hi. create_dt is in Andrie's answer. What's the error? When you say current version, you mean 1.8.2 on CRAN, or 1.8.3 on R-Forge? –  Matt Dowle Nov 7 '12 at 0:03

My understanding is that the secret to fast operations in R is to utilise vector (or arrays, which are vectors under the hood.)

In this solution I make use of a data.matrix which is an array but behave a bit like a data.frame. Because it is an array, you can use a very simple vector substitution to replace the NAs:

A little helper function to remove the NAs. The essence is a single line of code. I only do this to measure execution time.

remove_na <- function(x){
  dm <- data.matrix(x)
  dm[is.na(dm)] <- 0

A little helper function to create a data.table of a given size.

create_dt <- function(nrow=5, ncol=5, propNA = 0.5){
  v <- runif(nrow * ncol)
  v[sample(seq_len(nrow*ncol), propNA * nrow*ncol)] <- NA
  data.table(matrix(v, ncol=ncol))

Demonstration on a tiny sample:

dt <- create_dt(5, 5, 0.5)

            V1        V2        V3        V4        V5
[1,]        NA 0.8983897        NA 0.4976992 0.9347052
[2,] 0.3721239 0.9446753        NA 0.7176185 0.2121425
[3,] 0.5728534        NA 0.6870228 0.9919061        NA
[4,]        NA        NA        NA        NA 0.1255551
[5,] 0.2016819        NA 0.7698414        NA        NA

            V1        V2        V3        V4        V5
[1,] 0.0000000 0.8983897 0.0000000 0.4976992 0.9347052
[2,] 0.3721239 0.9446753 0.0000000 0.7176185 0.2121425
[3,] 0.5728534 0.0000000 0.6870228 0.9919061 0.0000000
[4,] 0.0000000 0.0000000 0.0000000 0.0000000 0.1255551
[5,] 0.2016819 0.0000000 0.7698414 0.0000000 0.0000000
share|improve this answer
That's a very nice example dataset. I'll try and improve on remove_na. That timing of 21.57s includes the create_dt (including runif and sample) together with the remove_na. Any chance you could edit to split out the 2 times? –  Matt Dowle Aug 30 '11 at 11:44
Is there a small bug in create_dt? It seems to always create a 5 column data.table regardless of ncol passed in. –  Matt Dowle Aug 30 '11 at 18:17
@MatthewDowle Well spotted. Error removed (as well as the timings) –  Andrie Aug 30 '11 at 19:11

Here is a solution using NAToUnknown in the gdata package. I have used Andrie's solution to create a huge data table and also included time comparisons with Andrie's solution.

dt1 = create_dt(2e5, 200, 0.1)

f_gdata  = function(dt, un = 0) gdata::NAToUnknown(dt, un)
f_Andrie = function(dt) remove_na(dt)

system.time(a_gdata  <- f_gdata(dt1))

user  system elapsed 
4.224   2.962   7.388 

system.time(a_andrie <- f_Andrie(dt1))

 user  system elapsed 
4.635   4.730  20.060 

identical(a_gdata, g_andrie)  

share|improve this answer
+1 Good find. Interesting - it's the first time I see timings with similar user time but really big difference in elapsed time. –  Andrie Aug 30 '11 at 19:14
@Andrie I tried using rbenchmark to benchmark solutions using more replications, but got an out of memory error possibly due to the size of the data frame. if you can run benchmark on both these solutions with multiple replications, those results would be interesting as i am not really sure why i am getting a 3x speedup –  Ramnath Aug 30 '11 at 19:16
@Ramnath To get things correct, the timings in this answer are for ncol=5 I think (should take much longer) due to the bug in create_dt. –  Matt Dowle Aug 30 '11 at 23:00

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