# How to get row from R data.frame

I have a data.frame with column headers.

How can I get a specific row from the data.frame as a list (with the column headers as keys for the list)?

Specifically, my data.frame is

```      A    B    C
1 5    4.25 4.5
2 3.5  4    2.5
3 3.25 4    4
4 4.25 4.5  2.25
5 1.5  4.5  3
```

And I want to get a row that's the equivalent of

``````> c(a=5, b=4.25, c=4.5)
a   b   c
5.0 4.25 4.5
``````

``````x[r,]
``````

where r is the row you're interested in. Try this, for example:

``````#Add your data
x <- structure(list(A = c(5,    3.5, 3.25, 4.25,  1.5 ),
B = c(4.25, 4,   4,    4.5,   4.5 ),
C = c(4.5,  2.5, 4,    2.25,  3   )
),
.Names    = c("A", "B", "C"),
class     = "data.frame",
row.names = c(NA, -5L)
)

#The vector your result should match
y<-c(A=5, B=4.25, C=4.5)

#Test that the items in the row match the vector you wanted
x[1,]==y
``````

This page (from this useful site) has good information on indexing like this.

Logical indexing is very R-ish. Try:

`````` x[ x\$A ==5 & x\$B==4.25 & x\$C==4.5 , ]
``````

Or:

``````subset( x, A ==5 & B==4.25 & C==4.5 )
``````

Try:

``````> d <- data.frame(a=1:3, b=4:6, c=7:9)

> d
a b c
1 1 4 7
2 2 5 8
3 3 6 9

> d[1, ]
a b c
1 1 4 7

> d[1, ]['a']
a
1 1
``````

If you don't know the row number, but do know some values then you can use subset

``````x <- structure(list(A = c(5,    3.5, 3.25, 4.25,  1.5 ),
B = c(4.25, 4,   4,    4.5,   4.5 ),
C = c(4.5,  2.5, 4,    2.25,  3   )
),
.Names    = c("A", "B", "C"),
class     = "data.frame",
row.names = c(NA, -5L)
)

subset(x, A ==5 & B==4.25 & C==4.5)
``````
• do you mean this instead? subset(x, A==5 && B==4.25 && C==4.5) Jul 8, 2010 at 20:23
• No, it should have been: `subset(x, A ==5 & B==4.25 & C==4.5)` Aug 20, 2013 at 0:24

10 years later ---> Using tidyverse we could achieve this simply and borrowing a leaf from Christopher Bottoms. For a better grasp, see `slice()`.

``````library(tidyverse)
x <- structure(list(A = c(5,    3.5, 3.25, 4.25,  1.5 ),
B = c(4.25, 4,   4,    4.5,   4.5 ),
C = c(4.5,  2.5, 4,    2.25,  3   )
),
.Names    = c("A", "B", "C"),
class     = "data.frame",
row.names = c(NA, -5L)
)

x
#>      A    B    C
#> 1 5.00 4.25 4.50
#> 2 3.50 4.00 2.50
#> 3 3.25 4.00 4.00
#> 4 4.25 4.50 2.25
#> 5 1.50 4.50 3.00

y<-c(A=5, B=4.25, C=4.5)
y
#>    A    B    C
#> 5.00 4.25 4.50

#The slice() verb allows one to subset data row-wise.
x <- x %>% slice(1) #(n) for the nth row, or (i:n) for range i to n, (i:n()) for i to last row...

x
#>   A    B   C
#> 1 5 4.25 4.5

#Test that the items in the row match the vector you wanted
x[1,]==y
#>      A    B    C
#> 1 TRUE TRUE TRUE
``````

Created on 2020-08-06 by the reprex package (v0.3.0)