# How to make groups in a data.frame equal length?

I have this data.frame:

``````df <- data.frame(id=c('A','A','B','B','B','C'), amount=c(45,66,99,34,71,22))

id | amount
-----------
A  |   45
A  |   66
B  |   99
B  |   34
B  |   71
C  |   22
``````

which I need to expand so that each `by` group in the data.frame is of equal length (filling it out with zeroes), like so:

``````id | amount
-----------
A  |   45
A  |   66
B  |   99
B  |   34
B  |   71
C  |   22
``````

What is the most efficient way of doing this?

NOTE

Benchmarking the some of the solutions provided with my actual 1 million row data.frame I got:

``````             plyr   | data.table  |  unstack
-----------------------------------
Elapsed:   139.87s  |    0.09s    |   2.00s
``````
-
Once again, it would be nice to have the code that gives you this `data.frame` (either using `dput` or by copying your code) in addition to these tables. –  Arun Jan 31 '13 at 9:09
@Arun, is the first line of code insufficient? –  Roman Luštrik Jan 31 '13 at 9:10
aha, dint notice that at all. sincere apologies! –  Arun Jan 31 '13 at 9:13

One way using `data.table`

``````df <- structure(list(V1 = structure(c(1L, 1L, 2L, 2L, 2L, 3L),
.Label = c("A  ", "B  ", "C  "), class = "factor"),
V2 = c(45, 66, 99, 34, 71, 22)),
.Names = c("V1", "V2"),
class = "data.frame", row.names = c(NA, -6L))

require(data.table)
dt <- data.table(df, key="V1")

# get maximum index
idx <- max(dt[, .N, by=V1]\$N)

# get final result
dt[, list(V2 = c(V2, rep(0, idx-length(V2)))), by=V1]

#     V1 V2
# 1: A   45
# 2: A   66
# 3: A    0
# 4: B   99
# 5: B   34
# 6: B   71
# 7: C   22
# 8: C    0
# 9: C    0
``````
-

I'm sure there is a base R solution, but here is one that uses `ddply` in the `plyr` package

``````library(plyr)
##N: How many values should be in each group
N = 3
ddply(df, "id", summarize,
amount = c(amount, rep(0, N-length(amount))))
``````

gives:

``````  id amount
1  A     45
2  A     66
3  A      0
4  B     99
5  B     34
6  B     71
7  C     22
8  C      0
9  C      0
``````
-
As long as `N` is the maximum you don't need a `max` there? –  Arun Jan 31 '13 at 9:16
@Arun Good point, thanks. –  csgillespie Jan 31 '13 at 9:17

Here's another way in base R using `unstack` and `stack`.

``````# ensure character id col
df <- transform(df, id=as.character(id))
# break into a list by id
u <- unstack(df, amount ~ id)
# get max length
max.len <- max(sapply(u, length))
# pad the short ones with 0s
filled <- lapply(u, function(x) c(x, numeric(max.len - length(x))))
# recombine into data.frame
stack(filled)

#   values ind
# 1     45   A
# 2     66   A
# 3      0   A
# 4     99   B
# 5     34   B
# 6     71   B
# 7     22   C
# 8      0   C
# 9      0   C
``````
-

``````out <- by(df, INDICES = df\$id, FUN = function(x, N) {
x <- droplevels(x)
lng <- nrow(x)
dif <- N - lng
if (dif == 0) return(x)
make.list <- lapply(1:dif, FUN = function(y) data.frame(id = levels(x\$id), amount = 0))
rbind(x, do.call("rbind", make.list))
}, N = max(table(df\$id))) # N could also be an integer
do.call("rbind", out)

id amount
A.1  A     45
A.2  A     66
A.3  A      0
B.3  B     99
B.4  B     34
B.5  B     71
C.6  C     22
C.2  C      0
C.3  C      0
``````
-
Got this: `Error in data.frame(id = levels(x\$id), amount = 0) : arguments imply differing number of rows: 0, 1` –  jenswirf Jan 31 '13 at 9:41
Add `browser()` right before `droplevels()` and go through the function step-by-step and see where it went wrong. I've tried your example and it worked... –  Roman Luštrik Jan 31 '13 at 10:07