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I'm trying to find the names of all the functions used in an arbitrary legal R expression, but I can't find a function that will flag the below example as a function instead of a name.

test <- expression(
    this_is_a_function <- function(var1, var2){

    this_is_a_function(var1-1, var2)
})

all.vars(test, functions = FALSE)

[1] "this_is_a_function" "var1"              "var2" 

all.vars(expr, functions = FALSE) seems to return functions declarations (f <- function(){}) in the expression, while filtering out function calls ('+'(1,2), ...).

Is there any function - in the core libraries or elsewhere - that will flag 'this_is_a_function' as a function, not a name? It needs to work on arbitrary expressions, that are syntactically legal but might not evaluate correctly (e.g '+'(1, 'duck'))

I've found similar questions, but they don't seem to contain the solution.

If clarification is needed, leave a comment below. I'm using the parser package to parse the expressions.

Edit: @Hadley

I have expressions with contain entire scripts, which usually consist of a main function containing nested function definitions, with a call to the main function at the end of the script.

Functions are all defined inside the expressions, and I don't mind if I have to include '<-' and '{', since I can easy filter them out myself.

The motivation is to take all my R scripts and gather basic statistics about how my use of functions has changed over time.

Edit: Current Solution

A Regex-based approach grabs the function definitions, combined with the method in James' comment to grab function calls. Usually works, since I never use right-hand assignment.

function_usage <- function(code_string){
    # takes a script, extracts function definitions

    require(stringr)

    code_string <- str_replace(code_string, 'expression\\(', '')

    equal_assign <- '.+[ \n]+<-[ \n]+function'
    arrow_assign <- '.+[ \n]+=[ \n]+function'

    function_names <- sapply(
        strsplit(
            str_match(code_string, equal_assign), split = '[ \n]+<-'),    
        function(x) x[1])

    function_names <- c(function_names, sapply(
        strsplit(
            str_match(code_string, arrow_assign), split = '[ \n]+='),    
            function(x) x[1]))

        return(table(function_names))    
    }
share|improve this question
1  
Perhaps setdiff(all.names(test),all.vars(test)) gets you close? –  James Jan 11 '13 at 11:14
1  
I find your example confusing: you have this_is_a_fuction and this_is_a_function. Is it intentional or a typo? –  flodel Jan 11 '13 at 11:50
1  
Maybe doing grepl([(]) (apologies if I screwed up the syntax) and counting backwards from the parenthesis would be a sneaky way to go about it. –  Carl Witthoft Jan 11 '13 at 12:17
1  
In your real problem do you actually have an expression, a quoted call or a function? (use is.call to determine by expression and call) Where are the functions defined? Inside or outside of the expression? Do you want to include the functions <- and { in your results? –  hadley Jan 11 '13 at 15:46
1  
FYI quote('+'(1, 'duck')) is 1 + "duck" - the parser automatically standardises function calls. –  hadley Jan 12 '13 at 17:08
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2 Answers

up vote 4 down vote accepted

Short answer: is.function checks whether a variable actually holds a function. This does not work on (unevaluated) calls because they are calls. You also need to take care of masking:

mean <- mean (x)

Longer answer:

IMHO there is a big difference between the two occurences of this_is_a_function.

In the first case you'll assign a function to the variable with name this_is_a_function once you evaluate the expression. The difference is the same difference as between 2+2 and 4.
However, just finding <- function () does not guarantee that the result is a function:

f <- function (x) {x + 1} (2)

The second occurrence is syntactically a function call. You can determine from the expression that a variable called this_is_a_function which holds a function needs to exist in order for the call to evaluate properly. BUT: you don't know whether it exists from that statement alone. however, you can check whether such a variable exists, and whether it is a function.

The fact that functions are stored in variables like other types of data, too, means that in the first case you can know that the result of function () will be function and from that conclude that immediately after this expression is evaluated, the variable with name this_is_a_function will hold a function.

However, R is full of names and functions: "->" is the name of the assignment function (a variable holding the assignment function) ...

After evaluating the expression, you can verify this by is.function (this_is_a_function). However, this is by no means the only expression that returns a function: Think of

f <- function () {g <- function (){}}
> body (f)[[2]][[3]]
function() {
}
> class (body (f)[[2]][[3]])
[1] "call"
> class (eval (body (f)[[2]][[3]]))
[1] "function"

all.vars(expr, functions = FALSE) seems to return functions declarations (f <- function(){}) in the expression, while filtering out function calls ('+'(1,2), ...).

I'd say it is the other way round: in that expression f is the variable (name) which will be asssigned the function (once the call is evaluated). + (1, 2) evaluates to a numeric. Unless you keep it from doing so.

e <- expression (1 + 2)
> e <- expression (1 + 2)
> e [[1]]
1 + 2
> e [[1]][[1]]
`+`
> class (e [[1]][[1]])
[1] "name"
> eval (e [[1]][[1]])
function (e1, e2)  .Primitive("+")
> class (eval (e [[1]][[1]]))
[1] "function"
share|improve this answer
    
Thanks for the very thoughtful answer; it seems that what I want to do is quite difficult without evaluating the code. I think the most pragmatic approach for me now is to try use Regex to find lines of the form f <- function(x){} –  RyanGrannell Jan 12 '13 at 11:20
    
It's slightly better to use quote here, rather than expression. Expression is a somewhat more complicated data structure (it's like a list of quoted calls), and unfortunately does not align well with what expression means in other languages or in more casual conversation. –  hadley Jan 13 '13 at 15:58
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Instead of looking for function definitions, which is going to be effectively impossible to do correctly without actually evaluating the functions, it will be easier to look for function calls.

The following function recursively spiders the expression/call tree returning the names of all objects that are called like a function:

find_calls <- function(x) {
  # Base case
  if (!is.recursive(x)) return()

  recurse <- function(x) {
    sort(unique(as.character(unlist(lapply(x, find_calls)))))
  }

  if (is.call(x)) {
    f_name <- as.character(x[[1]])
    c(f_name, recurse(x[-1]))
  } else {
    recurse(x)
  }
}

It works as expected for a simple test case:

x <- expression({
  f(3, g())
  h <- function(x, y) {
    i()
    j()
    k(l())
  }
})
find_calls(x)
# [1] "{"        "<-"       "f"        "function" "g"        "i"        "j"  
# [8] "k"        "l"       
share|improve this answer
    
I really like your solution. Does find_calls(x) behave differently than setdiff(all.names(x), all.vars(x)), ignoring all.names(x)'s 'unique' parameter? –  RyanGrannell Jan 13 '13 at 11:54
    
@RyanGrannell I don't know - you'd need to read the (C) source code to be sure. –  hadley Jan 13 '13 at 15:56
    
@RyanGrannell I prefer to trust simple code which I understand –  hadley Jan 13 '13 at 16:54
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