248

Working with a data frame similar to this:

set.seed(100)  
df <- data.frame(cat = c(rep("aaa", 5), rep("bbb", 5), rep("ccc", 5)), val = runif(15))             
df <- df[order(df$cat, df$val), ]  
df  
   cat        val  
1  aaa 0.05638315  
2  aaa 0.25767250  
3  aaa 0.30776611  
4  aaa 0.46854928  
5  aaa 0.55232243  
6  bbb 0.17026205  
7  bbb 0.37032054  
8  bbb 0.48377074  
9  bbb 0.54655860  
10 bbb 0.81240262  
11 ccc 0.28035384  
12 ccc 0.39848790  
13 ccc 0.62499648  
14 ccc 0.76255108  
15 ccc 0.88216552 

I am trying to add a column with numbering within each group. Doing it this way obviously isn't using the powers of R:

 df$num <- 1  
 for (i in 2:(length(df[,1]))) {  
   if (df[i,"cat"]==df[(i-1),"cat"]) {  
     df[i,"num"]<-df[i-1,"num"]+1  
     }  
 }  
 df  
   cat        val num  
1  aaa 0.05638315   1  
2  aaa 0.25767250   2  
3  aaa 0.30776611   3  
4  aaa 0.46854928   4  
5  aaa 0.55232243   5  
6  bbb 0.17026205   1  
7  bbb 0.37032054   2  
8  bbb 0.48377074   3  
9  bbb 0.54655860   4  
10 bbb 0.81240262   5  
11 ccc 0.28035384   1  
12 ccc 0.39848790   2  
13 ccc 0.62499648   3  
14 ccc 0.76255108   4  
15 ccc 0.88216552   5  

What would be a good way to do this?

2
  • 1
    I would suggest to add something like "seq along levels" or "counting along replicates" in the question title as this is how I found this question and it is exactly what I was looking for Dec 17, 2019 at 9:25
  • 5
    @crazysantaclaus If that were the title, I wouldn't have found what I was looking for :-( I was literally looking for "how to number rows within groups in a data frame"
    – Zimano
    Jan 30, 2020 at 15:47

11 Answers 11

396
Answer recommended by R Language Collective

Use ave, ddply, dplyr or data.table:

df$num <- ave(df$val, df$cat, FUN = seq_along)

or:

library(plyr)
ddply(df, .(cat), mutate, id = seq_along(val))

or:

library(dplyr)
df %>% group_by(cat) %>% mutate(id = row_number())

or (the most memory efficient, as it assigns by reference within DT):

library(data.table)
DT <- data.table(df)

DT[, id := seq_len(.N), by = cat]
DT[, id := rowid(cat)]
9
  • 5
    It might be worth mentioning that ave gives a float instead of an int here. Alternately, could change df$val to seq_len(nrow(df)). I just ran into this over here: stackoverflow.com/questions/42796857/…
    – Frank
    Mar 14, 2017 at 22:07
  • 2
    Interestingly this data.table solution seems to be quicker than using frank: library(microbenchmark); microbenchmark(a = DT[, .(val ,num = frank(val)), by = list(cat)] ,b =DT[, .(val , id = seq_len(.N)), by = list(cat)] , times = 1000L)
    – hannes101
    Jul 28, 2017 at 12:23
  • 4
    Thanks! The dplyr solution is good. But if, like me, you kept getting weird errors when trying this approach, make sure that you are not getting conflicts between plyr and dplyr as explained in this post It can be avoided by explicitly calling dplyr::mutate(...)
    – EcologyTom
    Apr 10, 2018 at 14:16
  • 4
    another data.table method is setDT(df)[, id:=rleid(val), by=.(cat)]
    – chinsoon12
    May 23, 2018 at 0:14
  • How to modify library(plyr) and library(dplyr) answers to make the ranking val column in descending order? Jul 24, 2018 at 9:31
35

For making this question more complete, a base R alternative with sequence and rle:

df$num <- sequence(rle(df$cat)$lengths)

which gives the intended result:

> df
   cat        val num
4  aaa 0.05638315   1
2  aaa 0.25767250   2
1  aaa 0.30776611   3
5  aaa 0.46854928   4
3  aaa 0.55232243   5
10 bbb 0.17026205   1
8  bbb 0.37032054   2
6  bbb 0.48377074   3
9  bbb 0.54655860   4
7  bbb 0.81240262   5
13 ccc 0.28035384   1
14 ccc 0.39848790   2
11 ccc 0.62499648   3
15 ccc 0.76255108   4
12 ccc 0.88216552   5

If df$cat is a factor variable, you need to wrap it in as.character first:

df$num <- sequence(rle(as.character(df$cat))$lengths)
2
  • 3
    Just noticed, this solutions requires cat column to be sorted?
    – zx8754
    Apr 26, 2019 at 20:01
  • @zx8754 yes, unless you want to number by consecutive occurances of cat
    – Jaap
    Apr 26, 2019 at 20:44
14

Here is a small improvement trick that allows sort 'val' inside the groups:

# 1. Data set
set.seed(100)
df <- data.frame(
  cat = c(rep("aaa", 5), rep("ccc", 5), rep("bbb", 5)), 
  val = runif(15))             

# 2. 'dplyr' approach
df %>% 
  arrange(cat, val) %>% 
  group_by(cat) %>% 
  mutate(id = row_number())
1
  • Can you not sort after the group_by?
    – zcoleman
    Jan 9, 2019 at 20:40
12

Another dplyr possibility could be:

df %>%
 group_by(cat) %>%
 mutate(num = 1:n())

   cat      val   num
   <fct>  <dbl> <int>
 1 aaa   0.0564     1
 2 aaa   0.258      2
 3 aaa   0.308      3
 4 aaa   0.469      4
 5 aaa   0.552      5
 6 bbb   0.170      1
 7 bbb   0.370      2
 8 bbb   0.484      3
 9 bbb   0.547      4
10 bbb   0.812      5
11 ccc   0.280      1
12 ccc   0.398      2
13 ccc   0.625      3
14 ccc   0.763      4
15 ccc   0.882      5
1
  • 6
    In some cases instead of 1:n() using seq_len(n()) is safer, in the event that in your sequence of operations you have a situation where n() might return 0, because 1:0 gives you a length two vector while seq_len(0) gives a length zero vector, thus avoiding a length mismatch error with mutate(). Jul 11, 2019 at 19:26
9

I would like to add a data.table variant using the rank() function which provides the additional possibility to change the ordering and thus makes it a bit more flexible than the seq_len() solution and is pretty similar to row_number functions in RDBMS.

# Variant with ascending ordering
library(data.table)
dt <- data.table(df)
dt[, .( val
   , num = rank(val))
    , by = list(cat)][order(cat, num),]

    cat        val num
 1: aaa 0.05638315   1
 2: aaa 0.25767250   2
 3: aaa 0.30776611   3
 4: aaa 0.46854928   4
 5: aaa 0.55232243   5
 6: bbb 0.17026205   1
 7: bbb 0.37032054   2
 8: bbb 0.48377074   3
 9: bbb 0.54655860   4
10: bbb 0.81240262   5
11: ccc 0.28035384   1
12: ccc 0.39848790   2
13: ccc 0.62499648   3
14: ccc 0.76255108   4

# Variant with descending ordering
dt[, .( val
   , num = rank(desc(val)))
    , by = list(cat)][order(cat, num),]

Edit on 2021-04-16 to make the switch between descending and ascending order more fail-safe

8

Here is an option using a for loop by groups rather by rows (like OP did)

for (i in unique(df$cat)) df$num[df$cat == i] <- seq_len(sum(df$cat == i))
4

Using the rowid() function in data.table:

> set.seed(100)  
> df <- data.frame(cat = c(rep("aaa", 5), rep("bbb", 5), rep("ccc", 5)), val = runif(15))
> df <- df[order(df$cat, df$val), ]  
> df$num <- data.table::rowid(df$cat)
> df
   cat        val num
4  aaa 0.05638315   1
2  aaa 0.25767250   2
1  aaa 0.30776611   3
5  aaa 0.46854928   4
3  aaa 0.55232243   5
10 bbb 0.17026205   1
8  bbb 0.37032054   2
6  bbb 0.48377074   3
9  bbb 0.54655860   4
7  bbb 0.81240262   5
13 ccc 0.28035384   1
14 ccc 0.39848790   2
11 ccc 0.62499648   3
15 ccc 0.76255108   4
12 ccc 0.88216552   5
1
  • 1
    Thanks for your answer but it seems to be already covered in the last suggestion in @mnel's answer
    – eli-k
    Jan 10, 2020 at 14:02
2

Very simple, tidy solutions.

Row number for entire data.frame

library(tidyverse)

iris %>%
  mutate(row_num = seq_along(Sepal.Length)) %>%
  head

    Sepal.Length Sepal.Width Petal.Length Petal.Width    Species row_num
1            5.1         3.5          1.4         0.2     setosa       1
2            4.9         3.0          1.4         0.2     setosa       2
3            4.7         3.2          1.3         0.2     setosa       3
..           ...         ...          ...         ...     ......     ...
148          6.5         3.0          5.2         2.0  virginica     148
149          6.2         3.4          5.4         2.3  virginica     149
150          5.9         3.0          5.1         1.8  virginica     150

Row number by group in data.frame

iris %>% 
  group_by(Species) %>% 
  mutate(num_in_group=seq_along(Species)) %>% 
  as.data.frame


    Sepal.Length Sepal.Width Petal.Length Petal.Width    Species num_in_group
1            5.1         3.5          1.4         0.2     setosa            1
2            4.9         3.0          1.4         0.2     setosa            2
3            4.7         3.2          1.3         0.2     setosa            3
..           ...         ...          ...         ...     ......           ..
48           4.6         3.2          1.4         0.2     setosa           48
49           5.3         3.7          1.5         0.2     setosa           49
50           5.0         3.3          1.4         0.2     setosa           50
51           7.0         3.2          4.7         1.4 versicolor            1
52           6.4         3.2          4.5         1.5 versicolor            2
53           6.9         3.1          4.9         1.5 versicolor            3
..           ...         ...          ...         ...     ......           ..
98           6.2         2.9          4.3         1.3 versicolor           48
99           5.1         2.5          3.0         1.1 versicolor           49
100          5.7         2.8          4.1         1.3 versicolor           50
101          6.3         3.3          6.0         2.5  virginica            1
102          5.8         2.7          5.1         1.9  virginica            2
103          7.1         3.0          5.9         2.1  virginica            3
..           ...         ...          ...         ...     ......           ..
148          6.5         3.0          5.2         2.0  virginica           48
149          6.2         3.4          5.4         2.3  virginica           49
150          5.9         3.0          5.1         1.8  virginica           50
1

In devel version of dplyr

library(dplyr)
df %>%
  mutate(num = row_number(), .by = "cat")
0

Another base R solution would be to split the data frame per cat, after that using lapply: add a column with number 1:nrow(x). The last step is to have your final data frame back with do.call, that is:

        df_split <- split(df, df$cat)
        df_lapply <- lapply(df_split, function(x) {
          x$num <- seq_len(nrow(x))
          return(x)
        })
        df <- do.call(rbind, df_lapply)
0

A collapse/data.table solution which uses a grouped cumulative sum on a sequence of ones.

library(data.table)
library(collapse)

set.seed(100) 
df <- data.table(cat = c(rep("aaa", 5), rep("bbb", 5), rep("ccc", 5)), 
                 val = runif(15))
setorder(df, cat, val)

df[, id := fcumsum(alloc(1L, .N), g = cat)][]
#>     cat        val id
#>  1: aaa 0.05638315  1
#>  2: aaa 0.25767250  2
#>  3: aaa 0.30776611  3
#>  4: aaa 0.46854928  4
#>  5: aaa 0.55232243  5
#>  6: bbb 0.17026205  1
#>  7: bbb 0.37032054  2
#>  8: bbb 0.48377074  3
#>  9: bbb 0.54655860  4
#> 10: bbb 0.81240262  5
#> 11: ccc 0.28035384  1
#> 12: ccc 0.39848790  2
#> 13: ccc 0.62499648  3
#> 14: ccc 0.76255108  4
#> 15: ccc 0.88216552  5

Created on 2023-06-07 with reprex v2.0.2

1
  • Perhaps one of several "pure" {collapse} options: X |> fgroup_by(cat) |> fmutate(id = seq_along(val)), where X is df.
    – Friede
    Apr 19 at 15:57

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