# Replicate each row of data.frame and specify the number of replications for each row

``````df <- data.frame(var1=c('a', 'b', 'c'), var2=c('d', 'e', 'f'), freq=1:3)
``````

What is the simplest way to expand the first two columns of the data.frame above, so that each row appears the number of times specified in the column 'freq'?

In other words, go from this:

``````df
var1 var2 freq
1    a    d    1
2    b    e    2
3    c    f    3
``````

To this:

``````df.expanded
var1 var2
1    a    d
2    b    e
3    b    e
4    c    f
5    c    f
6    c    f
``````

Here's one solution:

``````df.expanded <- df[rep(row.names(df), df\$freq), 1:2]
``````

Result:

``````    var1 var2
1      a    d
2      b    e
2.1    b    e
3      c    f
3.1    c    f
3.2    c    f
``````
• Great! I always forget you can use square brackets that way. I keep thinking of indexing just for subsetting or reordering. I had another solution that is far less elegant and no doubt less efficient. I might post anyway so that others can compare. – wkmor1 May 24 '10 at 10:30
• For large `data.frame` more efficient is to replace `row.names(df)` with `seq.int(1,nrow(df))` or `seq_len(nrow(df))`. – Marek May 25 '10 at 11:54
• This worked fantastically for a big data frame -- 1.5million rows, 5 cols, went very quick. Thanks! – gabe Nov 21 '12 at 6:16
• 1:2 hard codes the solution to this example, 1:ncol(df) will work for an arbitrary dataframe. – vladiim Aug 30 '18 at 6:28

Use `expandRows()` from the `splitstackshape` package:

``````library(splitstackshape)
expandRows(df, "freq")
``````

Simple syntax, very fast, works on `data.frame` or `data.table`.

Result:

``````    var1 var2
1      a    d
2      b    e
2.1    b    e
3      c    f
3.1    c    f
3.2    c    f
``````

old question, new verb in tidyverse:

``````library(tidyr) # version >= 0.8.0
df <- data.frame(var1=c('a', 'b', 'c'), var2=c('d', 'e', 'f'), freq=1:3)
df %>%
uncount(freq)

var1 var2
1      a    d
2      b    e
2.1    b    e
3      c    f
3.1    c    f
3.2    c    f
``````

@neilfws's solution works great for `data.frame`s, but not for `data.table`s since they lack the `row.names` property. This approach works for both:

``````df.expanded <- df[rep(seq(nrow(df)), df\$freq), 1:2]
``````

The code for `data.table` is a tad cleaner:

``````# convert to data.table by reference
setDT(df)
df.expanded <- df[rep(seq(.N), freq), !"freq"]
``````
• another alternative: `df[rep(seq(.N), freq)][, freq := NULL]` – Jaap Apr 10 '17 at 6:04

In case you have to do this operation on very large data.frames I would recommend converting it into a data.table and use the following, which should run much faster:

``````library(data.table)
dt <- data.table(df)
dt.expanded <- dt[ ,list(freq=rep(1,freq)),by=c("var1","var2")]
dt.expanded[ ,freq := NULL]
dt.expanded
``````

See how much faster this solution is:

``````df <- data.frame(var1=1:2e3, var2=1:2e3, freq=1:2e3)
system.time(df.exp <- df[rep(row.names(df), df\$freq), 1:2])
##    user  system elapsed
##    4.57    0.00    4.56
dt <- data.table(df)
system.time(dt.expanded <- dt[ ,list(freq=rep(1,freq)),by=c("var1","var2")])
##    user  system elapsed
##    0.05    0.01    0.06
``````
• I get an error: `Error in rep(1, freq) : invalid 'times' argument`. And given that there is already a data.table answer to this question, you may want to describe how your approach is different or when it is better than the current data.table answer. Or if there's not a major difference, you could add it as a comment to the existing answer instead. – Sam Firke Jul 7 '15 at 16:20
• @SamFirke: Thank you for your comment. Strange, I just tried it again and I get no such error. Do you use the original `df`from the OP's question? My answer is better because the other answer is kind of misusing the `data.table` package by using `data.frame` syntax, see the FAQ of `data.table`: " It is generally bad practice to refer to columns by number rather than name." – vonjd Jul 7 '15 at 16:37
• Thanks for the explanation. Your code works for me on the sample `df` posted by the OP, but when I tried to benchmark this on a larger data.frame I got that error. The data.frame I used was: `set.seed(1) dfbig <- data.frame(var1=sample(letters, 1000, replace = TRUE), var2=sample(LETTERS, 1000, replace = TRUE), freq=sample(1:10, 1000, replace = TRUE))` On the tiny data.frame, the base answer does well in my benchmarking, it just doesn't scale well to bigger data.frames. The other three answers ran successfully with this larger data.frame. – Sam Firke Jul 7 '15 at 17:06
• @SamFirke: This is indeed strange, it should work there too and I don't know why it doesn't. Do you want to create a question out of it or shall I? – vonjd Jul 7 '15 at 17:18
• Good idea. Can you? I don't know `data.table` syntax so I shouldn't be the one judging the answers. – Sam Firke Jul 7 '15 at 17:22