I want to make a grouped filter using `dplyr`

, in a way that within each group only that row is returned which has the minimum value of variable `x`

.

My problem is: As expected, in the case of multiple minima *all* rows with the minimum value are returned. But in my case, **I only want the first row** if multiple minima are present.

Here's an example:

```
df <- data.frame(
A=c("A", "A", "A", "B", "B", "B", "C", "C", "C"),
x=c(1, 1, 2, 2, 3, 4, 5, 5, 5),
y=rnorm(9)
)
library(dplyr)
df.g <- group_by(df, A)
filter(df.g, x == min(x))
```

As expected, all minima are returned:

```
Source: local data frame [6 x 3]
Groups: A
A x y
1 A 1 -1.04584335
2 A 1 0.97949399
3 B 2 0.79600971
4 C 5 -0.08655151
5 C 5 0.16649962
6 C 5 -0.05948012
```

With ddply, I would have approach the task that way:

```
library(plyr)
ddply(df, .(A), function(z) {
z[z$x == min(z$x), ][1, ]
})
```

... which works:

```
A x y
1 A 1 -1.04584335
2 B 2 0.79600971
3 C 5 -0.08655151
```

**Q: Is there a way to approach this in dplyr?** (For speed reasons)

`filter(df.g, rank(x) == 1)`

?`rank(x)==1`

give the desired results?`min_rank`

helps here. He needs the first min value (look at`plyr`

solution). 2) In whatever programming language you write, the algorithmic complexity of`rank`

(ties=min, max, first etc..) will be bigger than just computing`min`

.`rank(x, ties.method="first")==1`

works, as min and min_rank do not differentiate between multiple minima.`which.min`

to be premature optimisation. AFAIK it's a natural choice, reads well, easy to understand, fast as it happens to be O(n) too.9more comments