# R dataframe sums of values that satisfy unique conditions

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.

-

In base R:

``````out <- with(mydf, tapply(Amount, list(Animal, FeedType), sum))

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

Then, to change `NA` to `0` (as in your example), just do:

``````out[is.na(out)] <- 0
``````
-
Wow, that is quite powerful for a single line of code. Works like a charm! Just a brief question: the 'out' matrix is too sparse now because I have too many FeedType columns. How can I omit the FeedTypes that occur less than a certain numer of times? (e.g. I want to exclude column 'FeedTypeA' in 'out' if in 'mydf' it has occurred only once) –  Zhubarb Aug 6 '13 at 9:20
@Berkan I'd probably preprocess the original dataframe, excluding FeedTypes below a certain threshold before you run `by`. But, you can just remove columns from the resulting matrix with something like: `out[,!colnames(out)=="A",drop=FALSE]` (the `drop=FALSE` is unnecessary in large matrices, but prevents coercing the example matrix with just two columns to a vector). –  Thomas Aug 6 '13 at 9:26

You can do it with function `dcast()` from library `reshape2`.

``````library(reshape2)
dcast(df,Animal~FeedType,sum,value.var="Amount")
Animal  A  B
1 Animal1 10  5
2 Animal2  2 13
3 Animal3  6  0
``````
-
Thank you, but the code gives an error: [Using Subsector as value column: use value.var to override. Error in vaggregate(.value = value, .group = overall, .fun = fun.aggregate, : could not find function ".fun]. Also, in this one-liner where do I specify that the 'sum' is on Amount? –  Zhubarb Aug 6 '13 at 9:13
Function dcast() automatically use third column (if there is only three) to calculate sum. Updated example to more general solution with argument value.var= (to show which column to use). For your error - it seems that in your session sum is used as some variable. See this SO question –  Didzis Elferts Aug 6 '13 at 9:22