# How to speed up transposing a data.frame by group?

I have this `data.frame` with equal length groups (`id`)

``````id  |  amount
--------------
A  |   10
A  |   54
A  |   23
B  |   34
B  |   76
B  |   12
``````

which I would like to transpose by group `id` to this:

`````` id |
----------------------
A  | 10  |  54 | 23
B  | 34  |  76 | 12
``````

What is the most efficient way of doing this?

I've previously used `reshape` and `dcast` but they are very slow indeed! (I have A LOT of data and would love to speed up this bottleneck)

Is there a better strategy? Using `data.table` or matrices?? Any help would be much appreciated!

``````# Little data.frame
df <- data.frame(id=c(2,2,2,5,5,5), amount=as.integer(c(10,54,23,34,76,12)))

# Not so little data.frame
set.seed(10)
df <- data.frame(id = rep(sample(1:10000, 10000, replace=F),100), amount=as.integer(floor(runif(1000000, -100000,100000))))

# Create time variable
df\$time <- ave(as.numeric(df\$id), df\$id, FUN = seq_along)

# The base R reshape strategy
system.time(df.reshape <-reshape(df, direction = "wide", idvar="id", timevar="time"))
user  system elapsed
6.36    0.31    6.69

# The reshape2 dcast strategy
require(reshape2)
a <- system.time(mm <- melt(df,id.vars=c('id','time'),measure.vars=c('amount')))
b <- system.time(df.dcast <- dcast(mm,id~variable+time,fun.aggregate=mean))
a+b
user  system elapsed
14.44    0.00   14.45
``````

UPDATE Using the fact that each group is equal in length you can use the `matrix`-function.

``````df.matrix <- data.frame(id=unique(df\$id), matrix(df\$amount, nrow=(length(unique(df\$id))), byrow=T))
user  system elapsed
0.03    0.00    0.03
``````

Note: This method assumes that the data.frame is presorted by `id`.

-
Maybe you should provide an example that runs in less than two minutes ? :) –  juba Jan 31 '13 at 13:50
@juba - sorry about that, I've made it smaller! I'm eager to find something that will work for lots and lots of data. :) –  jenswirf Jan 31 '13 at 13:59
It might be most efficient to not transpose. Any particular reason why you are doing this? –  Roland Jan 31 '13 at 14:39

This is not a problem of `reshape`. `aggregate` from base should be able to handle this.

``````df.out <- aggregate(amount ~ id, data=df, c)
# running on the small data
#   id amount.1 amount.2 amount.3
# 1  2       10       54       23
# 2  5       34       76       12
``````

Isn't this what you wanted?

Okay, seems like an adapted version of `DWin`'s solution is the fastest. However, the result will be ordered by `id`. If you don't want that, then `Aditya`'s seems to be the one to use.

Here are the functions and the benchmarking results:

• Using `aggregate`:

``````AGG <- function() {
df.agg <- aggregate(amount ~ id, data=df, c)
}
``````
• Using `Aditya`'s

``````SEC <- function() {
df.sec <- cbind(data.frame(id = unique(df\$id)),
matrix(as.numeric(unlist(tapply(df\$amount, df\$id, identity))),
nrow = length(unique(df\$id)), byrow = T))
}
``````
• Using modified version of `Dwin`'s:

``````DWIN_M <- function() {
df1 <- df[with(df, order(id)), ]
idx <- df\$id[!duplicated(df\$id)]
df.dwin <- cbind(data.frame(id=idx),
as.data.frame(matrix(df1\$amount,
nrow=length(idx), byrow=TRUE)))
}
``````
• Benchmarking:

``````require(rbenchmark)
benchmark(AGG(), SEC(), DWIN_M(), replications=3, order="elapsed")

#      test replications elapsed relative user.self sys.self user.child sys.child
# 3 DWIN_M()            3   4.175    1.000     4.148    0.000          0         0
# 2    SEC()            3  17.568    4.208    17.449    0.016          0         0
# 1    AGG()            3  24.529    5.875    24.306    0.044          0         0
``````

Let me know if I've made any errors.

-
that took 6.436 seconds on my system –  Aditya Sihag Jan 31 '13 at 14:26
@Aditya, yes, `aggregate` is slower. of course, `tapply` is better here! If there were more than 1 `amount` column, `aggregate` makes more sense. –  Arun Jan 31 '13 at 14:58
@Dwin, why did you delete the post? It seems to be really fast (except that the results will be sorted). –  Arun Jan 31 '13 at 15:04
@Arun - Awesome work! But am I missing something or is aggregate NOT transposing the data? –  jenswirf Jan 31 '13 at 15:07
@Arun - Yes, it absolutely must be ordered! Presorting it is quite fast though.. –  jenswirf Jan 31 '13 at 15:28

A matrix approach would use:

``````  system.time({ df.reshape <-matrix(df\$amount, nrow=10000, byrow=TRUE);
rownames(df.reshape)<- df\$id[1:10000]
} )
user  system elapsed
0.010   0.006   0.016
``````
-

try this out:

`````` dFrame<-data.frame(id = c(rep("A",3),rep("B",3)),amount = c(10,54,23,34,76,12))
newFrame<-cbind(data.frame(id = unique(dFrame\$id)),matrix(as.numeric(unlist(tapply(dFrame\$amount,dFrame\$id,identity))),nrow=length(unique(dFrame\$id)),byrow=T))
``````

The bracketing might be off, i've tried to be careful - i don't have an R interpreter available at the moment

benchmark result based on the df sample code you provide:

``````  replications elapsed relative user.self sys.self user.child sys.child
1            1   4.193        1     4.056    0.064          0         0
``````
-
you can probably speed this up a bit more by caching the result of unique(dFrame\$id) –  Aditya Sihag Jan 31 '13 at 14:28