69

I have the following data frame:

data.frame(a = c(1,2,3),b = c(1,2,3))
  a b
1 1 1
2 2 2
3 3 3

and I want to turn it into:

  a b
1 1 1
2 2 2
3 3 3
4 1 1
5 2 2
6 3 3
7 1 1
8 2 2
9 3 3

or repeat it N times. Is there an easy function to do this in R? Thanks!

124
1

EDIT: updated to a better modern R answer.

You can use replicate(), then rbind the result back together. The rownames are automatically altered to run from 1:nrows.

d <- data.frame(a = c(1,2,3),b = c(1,2,3))
n <- 3
do.call("rbind", replicate(n, d, simplify = FALSE))

A more traditional way is to use indexing, but here the rowname altering is not quite so neat (but more informative):

 d[rep(seq_len(nrow(d)), n), ]

Here are improvements on the above, the first two using purrr functional programming, idiomatic purrr:

purrr::map_dfr(seq_len(3), ~d)

and less idiomatic purrr (identical result, though more awkward):

purrr::map_dfr(seq_len(3), function(x) d)

and finally via indexing rather than list apply using dplyr:

d %>% slice(rep(row_number(), 3))
| improve this answer | |
  • 4
    Beware zero row data frames. seq_len is probably a better option – hadley Jan 6 '12 at 9:17
  • 1
    Thanks, I vagued out on that (I always think it's seq_along and wasn't putting in the effort). I appreciate the heads up. – mdsumner Jan 6 '12 at 13:34
31
0

For data.frame objects, this solution is several times faster than @mdsummer's and @wojciech-sobala's.

d[rep(seq_len(nrow(d)), n), ]

For data.table objects, @mdsummer's is a bit faster than applying the above after converting to data.frame. For large n this might flip. microbenchmark.

Full code:

packages <- c("data.table", "ggplot2", "RUnit", "microbenchmark")
lapply(packages, require, character.only=T)

Repeat1 <- function(d, n) {
  return(do.call("rbind", replicate(n, d, simplify = FALSE)))
}

Repeat2 <- function(d, n) {
  return(Reduce(rbind, list(d)[rep(1L, times=n)]))
}

Repeat3 <- function(d, n) {
  if ("data.table" %in% class(d)) return(d[rep(seq_len(nrow(d)), n)])
  return(d[rep(seq_len(nrow(d)), n), ])
}

Repeat3.dt.convert <- function(d, n) {
  if ("data.table" %in% class(d)) d <- as.data.frame(d)
  return(d[rep(seq_len(nrow(d)), n), ])
}

# Try with data.frames
mtcars1 <- Repeat1(mtcars, 3)
mtcars2 <- Repeat2(mtcars, 3)
mtcars3 <- Repeat3(mtcars, 3)

checkEquals(mtcars1, mtcars2)
#  Only difference is row.names having ".k" suffix instead of "k" from 1 & 2
checkEquals(mtcars1, mtcars3)

# Works with data.tables too
mtcars.dt <- data.table(mtcars)
mtcars.dt1 <- Repeat1(mtcars.dt, 3)
mtcars.dt2 <- Repeat2(mtcars.dt, 3)
mtcars.dt3 <- Repeat3(mtcars.dt, 3)

# No row.names mismatch since data.tables don't have row.names
checkEquals(mtcars.dt1, mtcars.dt2)
checkEquals(mtcars.dt1, mtcars.dt3)

# Time test
res <- microbenchmark(Repeat1(mtcars, 10),
                      Repeat2(mtcars, 10),
                      Repeat3(mtcars, 10),
                      Repeat1(mtcars.dt, 10),
                      Repeat2(mtcars.dt, 10),
                      Repeat3(mtcars.dt, 10),
                      Repeat3.dt.convert(mtcars.dt, 10))
print(res)
ggsave("repeat_microbenchmark.png", autoplot(res))
| improve this answer | |
14
0

The package dplyr contains the function bind_rows() that directly combines all data frames in a list, such that there is no need to use do.call() together with rbind():

df <- data.frame(a = c(1, 2, 3), b = c(1, 2, 3))
library(dplyr)
bind_rows(replicate(3, df, simplify = FALSE))

For a large number of repetions bind_rows() is also much faster than rbind():

library(microbenchmark)
microbenchmark(rbind = do.call("rbind", replicate(1000, df, simplify = FALSE)),
               bind_rows = bind_rows(replicate(1000, df, simplify = FALSE)),
               times = 20)
## Unit: milliseconds
##       expr       min        lq      mean   median        uq       max neval cld
##      rbind 31.796100 33.017077 35.436753 34.32861 36.773017 43.556112    20   b
##  bind_rows  1.765956  1.818087  1.881697  1.86207  1.898839  2.321621    20  a 
| improve this answer | |
  • 1
    I guess slice(rep(row_number(), 3)) is better, per Max's benchmark. Oh, just saw your bench... personally, I'd think scaling up the size of the DF somewhat would be the right direction, rather than the number of tables, but I don't know. – Frank Aug 11 '17 at 15:34
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    Nice one! When I benchmark it, slice(df, rep(row_number(), 3)) turns out to be a tiny bit slower than bind_rows(replicate(...)) (1.9 vs. 2.1 ms). In any case, I thought it was useful to have a dplyr-solution as well... – Stibu Aug 11 '17 at 15:42
  • 2
    @Frank You are probably right. I didn't check what happens for large data frames, since I just used the one that was provided in the question. – Stibu Aug 11 '17 at 15:45
5
0
d <- data.frame(a = c(1,2,3),b = c(1,2,3))
r <- Reduce(rbind, list(d)[rep(1L, times=3L)])
| improve this answer | |
  • 4
    Care to elaborate what you just did and how it compares to mdsumner's answer? Perhaps paste in some results? – Roman Luštrik Jan 7 '12 at 1:28
2
0

Just use simple indexing with repeat function.

mydata<-data.frame(a = c(1,2,3),b = c(1,2,3)) #creating your data frame  
n<-10           #defining no. of time you want repetition of the rows of your dataframe

mydata<-mydata[rep(rownames(mydata),n),] #use rep function while doing indexing 
rownames(mydata)<-1:NROW(mydata)    #rename rows just to get cleaner look of data
| improve this answer | |
  • i guess that this is the same @Max Ghenis solution – Simon C. Jan 7 at 17:47
2
0

Even simpler:

library(data.table)
my_data <- data.frame(a = c(1,2,3),b = c(1,2,3))
rbindlist(replicate(n = 3, expr = my_data, simplify = FALSE)
| improve this answer | |
  • 1
    From data.table package – Mostafa Aug 22 '19 at 14:42
2
0

With the -package, you could use the special symbol .I together with rep:

df <- data.frame(a = c(1,2,3), b = c(1,2,3))
dt <- as.data.table(df)

n <- 3

dt[rep(dt[, .I], n)]

which gives:

   a b
1: 1 1
2: 2 2
3: 3 3
4: 1 1
5: 2 2
6: 3 3
7: 1 1
8: 2 2
9: 3 3
| improve this answer | |
  • Is there a way to use this method to duplicate columnwise? – Stephen Feb 17 at 21:52
  • 1
    @Stephen for a dataframe you could do something like: df[, rep(seq_along(df), n)]; for a data.table you could do: cols <- rep(seq_along(mydf), n); mydf[, ..cols] – Jaap Feb 18 at 13:32

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