You can also try using `table()`

to help you subset:

```
set.seed(123)
df <- data.frame(a = rep(LETTERS[1:4], each=4),
b = c(sample(6,4), sample(6,4), sample(6,4), sample(6,4)))
df[df$b %in% which(colSums(table(df)) == length(unique(df$a))), ]
# a b
# 3 A 6
# 4 A 3
# 5 B 6
# 7 B 3
# 10 C 3
# 11 C 6
# 14 D 3
# 16 D 6
```

## Update

In retrospect, `ave()`

can be very handy here. First create a vector to match your conditions to:

```
(counts <- ave(df$b, df$b, FUN = length))
# [1] 2 3 4 4 4 2 4 3 3 4 4 2 1 4 2 4
```

Then, match your desired condition:

```
df[counts == 4, ]
# a b
# 3 A 6
# 4 A 3
# 5 B 6
# 7 B 3
# 10 C 3
# 11 C 6
# 14 D 3
# 16 D 6
```