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.