I have a dataset similar to the following and my end goal is to make a table showing variables like mean salary per gender and the females' mean salary as a proportion of men's.

```
library(dplyr)
x <- data.frame(Department = c("Dep1", "Dep1","Dep2", "Dep2","Dep3"),
Gender = c("F", "M", "F", "M", "F"),
Salary = seq(10,14))
Department Gender Salary
1 Dep1 F 10
2 Dep1 M 11
3 Dep2 F 12
4 Dep2 M 13
5 Dep3 F 14
```

Step 1: First I calculate the needed summary statistics using summarise.

```
Table <- x %>% group_by(Department, Gender) %>% summarise(Count = n(),
AverageSalary = mean(Salary, na.rm = T),
MedianSalary = median(Salary, na.rm = T))
```

Step 2: To calculate the proportion and add the new columns to "Table" I use a tip I got from this forum a few days ago.

```
Table %>% group_by(Department) %>%
mutate(`AvgSalaryWomen/Men` = AverageSalary[Gender == "F"]/AverageSalary[Gender == "M"],
`MedianSalaryWomen/Men` = MedianSalary[Gender == "F"]/MedianSalary[Gender == "M"])
```

My challenge is that Dep3 doesn't have any males and so I get the following error message:

```
Error in mutate_impl(.data, dots) :
Column `AvgSalaryWomen/Men` must be length 1 (the group size), not 0
```

What I was hoping for was something like this

```
Department Gender Count AverageSalary MedianSalary AvgSalaryWomen.Men MedianSalaryWomen.Men
1 Dep1 F 1 10 10 0.9090909 0.9090909
2 Dep1 M 1 11 11 0.9090909 0.9090909
3 Dep2 F 1 12 12 0.9230769 0.9230769
4 Dep2 M 1 13 13 0.9230769 0.9230769
5 Dep3 F 1 14 14 NA NA
```

or this

```
Department Gender Count AverageSalary MedianSalary AvgSalaryWomen.Men MedianSalaryWomen.Men
1 Dep1 F 1 10 10 0.9090909 0.9090909
2 Dep1 M 1 11 11 NA NA
3 Dep2 F 1 12 12 0.9230769 0.9230769
4 Dep2 M 1 13 13 NA NA
5 Dep3 F 1 14 14 NA NA
```

Is there an easy way to obtain either of these two results? I'm guessing that alternative 1 would be the easiest. Thanks in advance!