Using dplyr to summarise a dataset, I want to call n_distinct to count the number of unique occurrences in a column. However, I also want to do another summarise() for all unique occurrences in a column where a condition in another column is satisfied.

Example dataframe named "a":

```
A B
1 Y
2 N
3 Y
1 Y
```

`a %>% summarise(count = n_distinct(A))`

However I also want to add a count of `n_distinct(A)`

where `B == "Y"`

The result should be:

```
count
3
```

when you add the condition the result should be:

```
count
2
```

The end result I am trying to achieve is both statements merged into one call that gives me a result like

```
count_all count_BisY
3 2
```

What is the appropriate way to go about this with dplyr?

`a %>% summarise(count = n_distinct(a$A[a$B == 'Y']))`

`data.frame(A = c(1:3,1), B = c('Y', 'N', 'Y', 'Y')) %>% summarise(count = n_distinct(A[B == 'Y']), count_all = n_distinct(A))`

works for me (with dplyr 0.7.6).1more comment