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# Proper/fastest way to reshape a data.table

I have a data table in R:

``````library(data.table)
set.seed(1234)
DT <- data.table(x=rep(c(1,2,3),each=4), y=c("A","B"), v=sample(1:100,12))
DT
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)]
out
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')
out
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?

-
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

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`?

-
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:

``````library(data.table)
set.seed(1234)
DT <- data.table(x=rep(c(1,2,3),each=1e6),
y=c("A","B"),
v=sample(1:100,12))

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:

``````system.time({
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
``````

UPDATE

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:

``````library(data.table)
set.seed(1234)
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)]
``````

Summary

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
``````
-
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
``````
-
+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

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

# USE RESHAPE2
library(reshape2)
dcast(mydf, x ~ y, fun = sum, value_var = "v")
``````

NOTE: The `tapply` solution would be much faster.

-
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