This question already has an answer here:

- How to sum a variable by group 13 answers

Suppose I have data in an R table which looks like this:

```
Id Name Price sales Profit Month Category Mode
1 A 2 5 8 1 X K
1 A 2 6 9 2 X K
1 A 2 5 8 3 X K
1 B 2 4 6 1 Y L
1 B 2 3 4 2 Y L
1 B 2 5 7 3 Y L
2 C 2 5 11 1 X M
2 C 2 5 11 2 X L
2 C 2 5 11 3 X K
2 D 2 8 10 1 Y M
2 D 2 8 10 2 Y K
2 D 2 5 7 3 Y K
3 E 2 5 9 1 Y M
3 E 2 5 9 2 Y L
3 E 2 5 9 3 Y M
3 F 2 4 7 1 Z M
3 F 2 5 8 2 Z L
3 F 2 5 8 3 Z M
```

If I use the `table`

function on this data like:

```
table(df$Category, df$Mode)
```

It will show me under each mode which category has how many observations. It's like counting the number of items in each category under each mode.

But what if I want the table to show under each `Category`

which `Mode`

earned how much `Profit`

(sum or mean) and not the total count?

Is there any way to do this with the `table`

function or another function in R?

`tmp = aggregate(df$Category, by=list(Category=df$Mode), FUN=sum)`

or`tmp = aggregate(df$Category, by=list(Category=df$Mode), FUN=NROW)`

(notice "sum" is lowercase and "NROW" is all caps). – Eric Leschinski Feb 10 '18 at 2:16