Announcing Stack Overflow Documentation

We started with Q&A. Technical documentation is next, and we need your help.

Whether you're a beginner or an experienced developer, you can contribute.

Sign up and start helping → Learn more about Documentation →

I have a data table in R:

DT <- data.table(x=rep(c(1,2,3),each=4), y=c("A","B"), v=sample(1:100,12))
      x y  v
 [1,] 1 A 12
 [2,] 1 B 62
 [3,] 1 A 60
 [4,] 1 B 61
 [5,] 2 A 83
 [6,] 2 B 97
 [7,] 2 A  1
 [8,] 2 B 22
 [9,] 3 A 99
[10,] 3 B 47
[11,] 3 A 63
[12,] 3 B 49

I can easily sum the variable v by the groups in the data.table:

out <- DT[,list(SUM=sum(v)),by=list(x,y)]
     x  y SUM
[1,] 1 A  72
[2,] 1 B 123
[3,] 2 A  84
[4,] 2 B 119
[5,] 3 A 162
[6,] 3 B  96

However, I would like to have the groups (y) as columns, rather than rows. I can accomplish this using reshape:

out <- reshape(out,direction='wide',idvar='x', timevar='y')
     x SUM.A SUM.B
[1,] 1    72   123
[2,] 2    84   119
[3,] 3   162    96

Is there a more efficient way to reshape the data after aggregating it? Is there any way to combine these operations into one step, using the data.table operations?

share|improve this question
Your displayed values do not reflect the y argument you are using. – 42- Aug 1 '11 at 17:33
@DWin: Thanks, that should be fixed now. – Zach Aug 1 '11 at 18:13
up vote 62 down vote accepted

The data.table package implements faster melt/dcast functions (in C). It also has additional features by allowing to melt and cast multiple columns. Please see the new Efficient reshaping using data.tables on Github.

melt/dcast functions for data.table have been available since v1.9.0 and the features include:

  • There is no need to load reshape2 package prior to casting. But if you want it loaded for other operations, please load it before loading data.table.

  • dcast is also a S3 generic. No more dcast.data.table(). Just use dcast().

  • melt:

    • is capable of melting on columns of type 'list'.

    • gains variable.factor and value.factor which by default are TRUE and FALSE respectively for compatibility with reshape2. This allows for directly controlling the output type of variable and value columns (as factors or not).

    • melt.data.table's na.rm = TRUE parameter is internally optimised to remove NAs directly during melting and is therefore much more efficient.

    • NEW: melt can accept a list for measure.vars and columns specified in each element of the list will be combined together. This is faciliated further through the use of patterns(). See vignette or ?melt.

  • dcast:

    • accepts multiple fun.aggregate and multiple value.var. See vignette or ?dcast.

    • use rowid() function directly in formula to generate an id-column, which is sometimes required to identify the rows uniquely. See ?dcast.

  • Old benchmarks:

    • melt : 10 million rows and 5 columns, 61.3 seconds reduced to 1.2 seconds.
    • dcast : 1 million rows and 4 columns, 192 seconds reduced to 3.6 seconds.

Reminder of Cologne (Dec 2013) presentation slide 32 : Why not submit a dcast pull request to reshape2?

share|improve this answer
To be fair, it took a while...but Arun posted a solution on another post that I replicated here. What do you think? – Christoph_J Mar 19 '13 at 23:52
@Zach, as long as you're editing, why not provide a bit more information on where/how to get it...? – Arun Nov 25 '13 at 19:20
@Arun Done. Thanks for the suggestion. – Zach Nov 25 '13 at 19:40
Zach, I've expanded it a bit and also provided info from NEWS so that users can get an idea easily. Hope it's alright. – Arun Nov 25 '13 at 21:39
@Arun: Wow, thank you! That looks great. – Zach Nov 25 '13 at 22:43

This feature is now implemented into data.table (from version 1.8.11 on), as can be seen in Zach's answer above.

I just saw this great chunk of code from Arun here on SO. So I guess there is a data.table solution. Applied to this problem:

DT <- data.table(x=rep(c(1,2,3),each=1e6), 

out <- DT[,list(SUM=sum(v)),by=list(x,y)]
# edit (mnel) to avoid setNames which creates a copy
# when calling `names<-` inside the function
out[, as.list(setattr(SUM, 'names', y)), by=list(x)]
   x        A        B
1: 1 26499966 28166677
2: 2 26499978 28166673
3: 3 26500056 28166650

This gives the same results as DWin's approach:

tapply(DT$v,list(DT$x, DT$y), FUN=sum)
         A        B
1 26499966 28166677
2 26499978 28166673
3 26500056 28166650

Also, it is fast:

   out <- DT[,list(SUM=sum(v)),by=list(x,y)]
   out[, as.list(setattr(SUM, 'names', y)), by=list(x)]})
##  user  system elapsed 
## 0.64    0.05    0.70 
system.time(tapply(DT$v,list(DT$x, DT$y), FUN=sum))
## user  system elapsed 
## 7.23    0.16    7.39 


So that this solution also works for non-balanced data sets (i.e. some combinations do not exist), you have to enter those in the data table first:

DT <- data.table(x=c(rep(c(1,2,3),each=4),3,4), y=c("A","B"), v=sample(1:100,14))

out <- DT[,list(SUM=sum(v)),by=list(x,y)]
setkey(out, x, y)

intDT <- expand.grid(unique(out[,x]), unique(out[,y]))
setnames(intDT, c("x", "y"))
out <- out[intDT]

out[, as.list(setattr(SUM, 'names', y)), by=list(x)]


Combining the comments with the above, here's the 1-line solution:

DT[, sum(v), keyby = list(x,y)][CJ(unique(x), unique(y)), allow.cartesian = T][,
   setNames(as.list(V1), paste(y)), by = x]

It's also easy to modify this to have more than just the sum, e.g.:

DT[, list(sum(v), mean(v)), keyby = list(x,y)][CJ(unique(x), unique(y)), allow.cartesian = T][,
   setNames(as.list(c(V1, V2)), c(paste0(y,".sum"), paste0(y,".mean"))), by = x]
#   x A.sum B.sum   A.mean B.mean
#1: 1    72   123 36.00000   61.5
#2: 2    84   119 42.00000   59.5
#3: 3   187    96 62.33333   48.0
#4: 4    NA    81       NA   81.0
share|improve this answer
Good benchmarking! – mnel Mar 19 '13 at 23:49
Thanks. And thanks for the edit! – Christoph_J Mar 19 '13 at 23:51
Thanks! That's some excellent code. One question: what can I do if the each subgroup doesn't necessarily have all the columns? E.g. if there was a value for y of C, that was only present when x=4? – Zach Apr 4 '13 at 20:08
I think that data.table's cross-join (CJ) would work as a replacement for expand.grid above. intDT<-out[,list(x,y)]; setkey(intDT,x,y); intDT<-intDT[CJ(unique(x),unique(y))]; It runs faster on my system, which I would expect for a pure data.table solution. – Matt May 16 '13 at 19:36
@Frank My answer has now floated to the top. See that for the most current way to reshape a data.table. This answer will work if you have an old version of data.table or want to hack something together yourself. – Zach Oct 29 '14 at 20:25

Data.table objects inherit from 'data.frame' so you can just use tapply:

> tapply(DT$v,list(DT$x, DT$y), FUN=sum)
   AA  BB
a  72 123
b  84 119
c 162  96
share|improve this answer
+1 nice use of tapply. i often forget the power of base R – Ramnath Aug 1 '11 at 17:43
Will this function be significantly faster than using tapply on a data.frame? – Zach Aug 1 '11 at 17:50
I don't know. I'm guessing not. Fastest would be DT[, sum(v), by=list(x, y) ] but it doesn't result in the layout you requested. – 42- Aug 1 '11 at 17:58
I suppose it's best to think about this as a 2-step operation. Step one is DT[, sum(v), by=list(x, y)], which works great. Step 2 is to reshape the result from long to wide... I'm trying to figure out the best way to do this with a data table – Zach Aug 1 '11 at 18:05
i benchmarked the three approaches using dcast, tapply and data.table and found that tapply works the fastest by an order of magnitude which is surprising given that data.table is optimized. i suspect it is on account of not defining keys on which the data.table optimization works – Ramnath Aug 1 '11 at 21:25

You can use dcast from reshape2 library. Here is the code

mydf = data.table(
  x = rep(1:3, each = 4),
  y = rep(c('A', 'B'), times = 2),
  v = rpois(12, 30)

dcast(mydf, x ~ y, fun = sum, value_var = "v")

NOTE: The tapply solution would be much faster.

share|improve this answer
There are now a melt and dcast method of data.tables, wahoo! – Zach Nov 25 '13 at 15:53
I think the dcast function uses the data.frame and NOT a custom function for data.tables. – Ramnath Nov 25 '13 at 16:00
I think there's a new custom function in the data.table package, see ?dcast.data.table – Zach Nov 25 '13 at 16:23
You are correct. It has been added in 1.8.11, which is not yet on CRAN. – Ramnath Nov 25 '13 at 16:36
ah that makes sense. I'm using the r-forge version. – Zach Nov 25 '13 at 18:51

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.