I have a dataset that contains the feeding data of 3 animals, consisting of the animals' tag ids (1,2,3), the type (A,B) and amount (kg) of feed given at each 'meal':

```
Animal FeedType Amount(kg)
Animal1 A 10
Animal2 B 7
Animal3 A 4
Animal2 A 2
Animal1 B 5
Animal2 B 6
Animal3 A 2
```

Using this, I want to be able to output the matrix below which has `unique('Animal')`

as its rows, `unique('FeedType')`

as its columns and the cumulative Feed Amount (kg) in the corresponding cells of the matrix.

```
A B
Animal1 10 5
Animal2 2 13
Animal3 6 0
```

I started coding a solution using two for loops as below:

```
dataframe = read_delim(input_url, header=TRUE, sep = ";")
animal_feed_matrix = matrix(0,nrow(unique('Animal')),nrow(unique('FeedType')))
for (i in 1:length(unique('Animal')) ){
a= unique('Animal')[i]
for (j in 1:length(unique('FeedType')) ){
ft= unique('FeedType')[j]
animal_feed_matrix[i,j] = sum(dataframe [(dataframe ['Animal']==a & dataframe ['FeedType']==ft),'Amount(kg)'])
}
}
```

But I am aware that this is a very inefficient way to tackle the problem, (plus the code above needs to be completed in order to work). I am aware that R has **levels**, and **factors**, which I sense can solve the problem more elegantly.

**P.S:** This question is somewhat similar to mine but even if the solution to my problem is contained within, it escapes me.