# Apply function conditionally

I have a dataframe like this:

``````experiment iter  results
A       1     30.0
A       2     23.0
A       3     33.3
B       1     313.0
B       2     323.0
B       3     350.0
....
``````

Is there a way to tally results by applying a function with conditions. In the above example, that condition is all iterations of a particular experiment.

``````A   sum of results (30 + 23, + 33.3)
B   sum of results (313 + 323 + 350)
``````

I am thinking of "apply" function, but can't find a way to get it work.

There are a lot of alternatives to do this. Note that if you are interested in another function different from `sum`, then just change the argument `FUN=any.function`, e.g, if you want `mean`, `var` `length`, etc, then just plug those functions into `FUN` argument, e.g, `FUN=mean`, `FUN=var` and so on. Let's explore some alternatives:

`aggregate` function in base.

``````> aggregate(results ~ experiment, FUN=sum, data=DF)
experiment results
1          A    86.3
2          B   986.0
``````

Or maybe `tapply` ?

``````> with(DF, tapply(results, experiment, FUN=sum))
A     B
86.3 986.0
``````

Also `ddply` from plyr package

``````> # library(plyr)
> ddply(DF[, -2], .(experiment), numcolwise(sum))
experiment results
1          A    86.3
2          B   986.0

> ## Alternative syntax
> ddply(DF, .(experiment), summarize, sumResults = sum(results))
experiment sumResults
1          A       86.3
2          B      986.0
``````

Also the `dplyr` package

``````> require(dplyr)
> DF %>% group_by(experiment) %>% summarise(sumResults = sum(results))
Source: local data frame [2 x 2]

experiment  sumResults
1          A        86.3
2          B       986.0
``````

Using `sapply` and `split`, equivalent to `tapply`.

``````> with(DF, sapply(split(results, experiment), sum))
A     B
86.3 986.0
``````

If you are concern about timing, `data.table` is your friend:

``````> # library(data.table)
> DT <- data.table(DF)
> DT[, sum(results), by=experiment]
experiment    V1
1:          A  86.3
2:          B 986.0
``````

Not so popular, but doBy package is nice (equivalent to `aggregate`, even in syntax!)

``````> # library(doBy)
> summaryBy(results~experiment, FUN=sum, data=DF)
experiment results.sum
1          A        86.3
2          B       986.0
``````

Also `by` helps in this situation

``````> (Aggregate.sums <- with(DF, by(results, experiment, sum)))
experiment: A
[1] 86.3
-------------------------------------------------------------------------
experiment: B
[1] 986
``````

If you want the result to be a matrix then use either `cbind` or `rbind`

``````> cbind(results=Aggregate.sums)
results
A    86.3
B   986.0
``````

`sqldf` from sqldf package also could be a good option

``````> library(sqldf)
> sqldf("select experiment, sum(results) `sum.results`
from DF group by experiment")
experiment sum.results
1          A        86.3
2          B       986.0
``````

`xtabs` also works (only when `FUN=sum`)

``````> xtabs(results ~ experiment, data=DF)
experiment
A     B
86.3 986.0
``````