I have a data.frame like so:

```
category count
A 11
B 1
C 45
A 1003
D 20
B 207
E 634
E 40
A 42
A 7
B 44
B 12
```

Each row represents a specific element with a category type and a count of that element. I would like to produce a frequency distribution of counts per category, but the categories are at the moment redundant.

How do I retrieve a table of redundant category counts? i.e. I want a table that looks like:

```
category count
A 11234
B 4005
C 100023
D 65567
E 54654
... ...
```

I almost got there using lapply:

```
df.nrcounts <- lapply(unique(df.counts$category),
function(x) c(category=x, count=sum(subset(df.counts, category==x)$count)))
```

but I can't seem to coerce the output to a proper dataframe. I can't quite get my head around using the function.