# Select first and last row from grouped data

Question

Using `dplyr`, how do I select the top and bottom observations/rows of grouped data in one statement?

Data & Example

Given a data frame:

``````df <- data.frame(id=c(1,1,1,2,2,2,3,3,3),
stopId=c("a","b","c","a","b","c","a","b","c"),
stopSequence=c(1,2,3,3,1,4,3,1,2))
``````

I can get the top and bottom observations from each group using `slice`, but using two separate statements:

``````firstStop <- df %>%
group_by(id) %>%
arrange(stopSequence) %>%
slice(1) %>%
ungroup

lastStop <- df %>%
group_by(id) %>%
arrange(stopSequence) %>%
slice(n()) %>%
ungroup
``````

Can I combine these two statements into one that selects both top and bottom observations?

• Nov 28, 2018 at 8:04

There is probably a faster way:

``````df %>%
group_by(id) %>%
arrange(stopSequence) %>%
filter(row_number()==1 | row_number()==n())
``````
• `rownumber() %in% c(1, n())` would obviate the need to run vector scan twice Sep 4, 2016 at 12:20
• @MichaelChirico I suspect you omitted an `_`? i.e. `filter(row_number() %in% c(1, n()))` Oct 11, 2017 at 11:03

Just for completeness: You can pass `slice` a vector of indices:

``````df %>% arrange(stopSequence) %>% group_by(id) %>% slice(c(1,n()))
``````

which gives

``````  id stopId stopSequence
1  1      a            1
2  1      c            3
3  2      b            1
4  2      c            4
5  3      b            1
6  3      a            3
``````
• might even be faster than `filter` - have not tested this, but see here Jul 3, 2018 at 16:42
• @Tjebo Unlike filter, slice can return the same row multiple times, eg `mtcars[1, ] %>% slice(c(1, n()))` so in that sense the choice between them depends on what you want returned. I'd expect the timings to be close unless `n` is very large (where slice might be favored), but haven't tested either. Jul 3, 2018 at 16:47

Not `dplyr`, but it's much more direct using `data.table`:

``````library(data.table)
setDT(df)
df[
df[order(id, stopSequence), .(rows = .I[c(1L,.N)]), by=id]\$rows
]
#  rows stopId stopSequence
# 1:  1      a            1
# 2:  1      c            3
# 3:  2      b            1
# 4:  2      c            4
# 5:  3      b            1
# 6:  3      a            3
``````

More detailed explanation:

``````# 1) get row numbers of first/last observations from each group
#    * basically, we sort the table by id/stopSequence, then,
#      grouping by id, name the row numbers of the first/last
#      observations for each id; since this operation produces
#      a data.table
#    * .I is data.table shorthand for the row number
#    * here, to be maximally explicit, I've named the variable rows
#      as row_num to give other readers of my code a clearer
#      understanding of what operation is producing what variable
first_last = df[order(id, stopSequence), .(rows = .I[c(1L,.N)]), by=id]
idx = first_last\$rows

# 2) extract rows by number
df[idx]
``````

Be sure to check out the Getting Started wiki for getting the `data.table` basics covered

• Or `df[ df[order(stopSequence), .I[c(1,.N)], keyby=id]\$V1 ]`. Seeing `id` appear twice is weird to me. Jul 21, 2015 at 17:22
• You can set keys in the `setDT` call. So an `order` call no need here. Feb 1, 2017 at 7:52
• @ArtemKlevtsov - you may not always want to set the keys, though. Apr 23, 2017 at 22:57
• Or `df[order(stopSequence), .SD[c(1L,.N)], by = id]`. See here Jul 11, 2017 at 9:33
• @JWilliman that won't necessarily be exactly the same, since it won't reorder on `id`. I think `df[order(stopSequence), .SD[c(1L, .N)], keyby = id]` should do the trick (with the minor difference to the solution above that the result will be `key`ed Oct 11, 2017 at 11:13

using `which.min` and `which.max` :

``````library(dplyr, warn.conflicts = F)
df %>%
group_by(id) %>%
slice(c(which.min(stopSequence), which.max(stopSequence)))

#> # A tibble: 6 x 3
#> # Groups:   id [3]
#>      id stopId stopSequence
#>   <dbl> <fct>         <dbl>
#> 1     1 a                 1
#> 2     1 c                 3
#> 3     2 b                 1
#> 4     2 c                 4
#> 5     3 b                 1
#> 6     3 a                 3
``````

benchmark

It is also much faster than the current accepted answer because we find the min and max value by group, instead of sorting the whole stopSequence column.

``````# create a 100k times longer data frame
df2 <- bind_rows(replicate(1e5, df, F))
bench::mark(
mm =df2 %>%
group_by(id) %>%
slice(c(which.min(stopSequence), which.max(stopSequence))),
jeremy = df2 %>%
group_by(id) %>%
arrange(stopSequence) %>%
filter(row_number()==1 | row_number()==n()))
#> Warning: Some expressions had a GC in every iteration; so filtering is disabled.
#> # A tibble: 2 x 6
#>   expression      min   median `itr/sec` mem_alloc `gc/sec`
#>   <bch:expr> <bch:tm> <bch:tm>     <dbl> <bch:byt>    <dbl>
#> 1 mm           22.6ms     27ms     34.9     14.2MB     21.3
#> 2 jeremy      254.3ms    273ms      3.66    58.4MB     11.0
``````

Something like:

``````library(dplyr)

df <- data.frame(id=c(1,1,1,2,2,2,3,3,3),
stopId=c("a","b","c","a","b","c","a","b","c"),
stopSequence=c(1,2,3,3,1,4,3,1,2))

first_last <- function(x) {
bind_rows(slice(x, 1), slice(x, n()))
}

df %>%
group_by(id) %>%
arrange(stopSequence) %>%
do(first_last(.)) %>%
ungroup

## Source: local data frame [6 x 3]
##
##   id stopId stopSequence
## 1  1      a            1
## 2  1      c            3
## 3  2      b            1
## 4  2      c            4
## 5  3      b            1
## 6  3      a            3
``````

With `do` you can pretty much perform any number of operations on the group but @jeremycg's answer is way more appropriate for just this task.

• Hadn't considered writing a function - certainly a good way of doing something more complex. Jul 21, 2015 at 1:57
• This seems overcomplicated compared to just using `slice`, like `df %>% arrange(stopSequence) %>% group_by(id) %>% slice(c(1,n()))` Jul 21, 2015 at 5:01
• Not disagreeing (and I pointed to jeremycg's as a better answer in the post) but having a `do` example here might help others when `slice` won't work (i.e. more complex operations on a group). And, you shld post your comment as an answer (it's the best one). Jul 21, 2015 at 11:44

I know the question specified `dplyr`. But, since others already posted solutions using other packages, I decided to have a go using other packages too:

Base package:

``````df <- df[with(df, order(id, stopSequence, stopId)), ]
merge(df[!duplicated(df\$id), ],
df[!duplicated(df\$id, fromLast = TRUE), ],
all = TRUE)
``````

data.table:

``````df <-  setDT(df)
df[order(id, stopSequence)][, .SD[c(1,.N)], by=id]
``````

sqldf:

``````library(sqldf)
min <- sqldf("SELECT id, stopId, min(stopSequence) AS StopSequence
FROM df GROUP BY id
ORDER BY id, StopSequence, stopId")
max <- sqldf("SELECT id, stopId, max(stopSequence) AS StopSequence
FROM df GROUP BY id
ORDER BY id, StopSequence, stopId")
sqldf("SELECT * FROM min
UNION
SELECT * FROM max")
``````

In one query:

``````sqldf("SELECT *
FROM (SELECT id, stopId, min(stopSequence) AS StopSequence
FROM df GROUP BY id
ORDER BY id, StopSequence, stopId)
UNION
SELECT *
FROM (SELECT id, stopId, max(stopSequence) AS StopSequence
FROM df GROUP BY id
ORDER BY id, StopSequence, stopId)")
``````

Output:

``````  id stopId StopSequence
1  1      a            1
2  1      c            3
3  2      b            1
4  2      c            4
5  3      a            3
6  3      b            1
``````

This works fine:

``````df %>%
group_by(id) %>%
arrange(stopSequence) %>%
slice(1,n())

# A tibble: 6 × 3
# Groups:   id [3]
#     id stopId stopSequence
#  <dbl> <chr>         <dbl>
#1     1 a                 1
#2     1 c                 3
#3     2 b                 1
#4     2 c                 4
#5     3 b                 1
#6     3 a                 3
``````

Using `data.table`:

``````# convert to data.table
setDT(df)
# order, group, filter
df[order(stopSequence)][, .SD[c(1, .N)], by = id]

id stopId stopSequence
1:  1      a            1
2:  1      c            3
3:  2      b            1
4:  2      c            4
5:  3      b            1
6:  3      a            3
``````

Another approach with lapply and a dplyr statement. We can apply an arbitrary number of whatever summary functions to the same statement:

``````lapply(c(first, last),
function(x) df %>% group_by(id) %>% summarize_all(funs(x))) %>%
bind_rows()
``````

You could for example be interested in rows with the max stopSequence value as well and do:

``````lapply(c(first, last, max("stopSequence")),
function(x) df %>% group_by(id) %>% summarize_all(funs(x))) %>%
bind_rows()
``````

A different base R alternative would be to first `order` by `id` and `stopSequence`, `split` them based on `id` and for every `id` we select only the first and last index and subset the dataframe using those indices.

``````df[sapply(with(df, split(order(id, stopSequence), id)), function(x)
c(x[1], x[length(x)])), ]

#  id stopId stopSequence
#1  1      a            1
#3  1      c            3
#5  2      b            1
#6  2      c            4
#8  3      b            1
#7  3      a            3
``````

Or similar using `by`

``````df[unlist(with(df, by(order(id, stopSequence), id, function(x)
c(x[1], x[length(x)])))), ]
``````