I have a dataframe that consists of functions I want to apply let f1 and f2 represent these functions that take **dbh** and **ht** as arguments.

```
spcd region function
122 'OR_W' f1
141 'OR_W' f2
```

I also have a dataframe that looks like

```
spcd region dbh ht
122 'OR_W' 12 101
122 'OR_W' 13 141
122 'OR_W' 15 122
141 'OR_W' 12 101
```

etc

I want to apply the functions stored in the first data frame to the rows in the second dataframe to produce something like this

```
spcd region dbh ht output
122 'OR_W' 12 101 <output of f1>
122 'OR_W' 13 141 <output of f1>
122 'OR_W' 15 122 <output of f1>
141 'OR_W' 12 101 <output of f2>
```

Where `<output of f1>`

is the output of the first function with the inputs of dbh and ht.

I think that dplyr's group_by would be useful for this, by grouping on spcd and region in the second dataframe, and then applying the correct function for each row in that group.

Is there a way to apply a function, row-wise, to a group within a dplyr group_by object?

`Map(function(f,x)apply(x,1,f),c(data1$function),split(data2,spcd))`

. If and only if`data1$function`

you can try using`is.function(data[1,3])`

to see whether they are stored as functions or not – Onyambu Dec 24 '17 at 3:50`purrr::invoke_map`

variant, but you need to make the example reproducible to get a proper answer. – alistaire Dec 24 '17 at 5:03