I am using the mtcars
dataset. I want to find the number of records for a particular combination of data. Something very similar to the count(*)
group by clause in SQL. ddply()
from plyr is working for me
library(plyr)
ddply(mtcars, .(cyl,gear),nrow)
has output
cyl gear V1
1 4 3 1
2 4 4 8
3 4 5 2
4 6 3 2
5 6 4 4
6 6 5 1
7 8 3 12
8 8 5 2
Using this code
library(dplyr)
g <- group_by(mtcars, cyl, gear)
summarise(g, length(gear))
has output
length(cyl)
1 32
I found various functions to pass in to summarise()
but none seem to work for me. One function I found is sum(G)
, which returned
Error in eval(expr, envir, enclos) : object 'G' not found
Tried using n()
, which returned
Error in n() : This function should not be called directly
What am I doing wrong? How can I get group_by()
/ summarise()
to work for me?
There's a special function n()
in dplyr to count rows (potentially within groups):
library(dplyr)
mtcars %>%
group_by(cyl, gear) %>%
summarise(n = n())
#Source: local data frame [8 x 3]
#Groups: cyl [?]
#
# cyl gear n
# (dbl) (dbl) (int)
#1 4 3 1
#2 4 4 8
#3 4 5 2
#4 6 3 2
#5 6 4 4
#6 6 5 1
#7 8 3 12
#8 8 5 2
But dplyr also offers a handy count
function which does exactly the same with less typing:
count(mtcars, cyl, gear) # or mtcars %>% count(cyl, gear)
#Source: local data frame [8 x 3]
#Groups: cyl [?]
#
# cyl gear n
# (dbl) (dbl) (int)
#1 4 3 1
#2 4 4 8
#3 4 5 2
#4 6 3 2
#5 6 4 4
#6 6 5 1
#7 8 3 12
#8 8 5 2