Suppose I'm calling function PackageFuncA which exists within a 3rd party package (i.e. a library from CRAN). PackageFuncA in turn calls PackageFuncB within the same 3rd party package. Is there a way to call PackageFuncA such that when it calls PackageFuncB, it will in fact call my own implimentation of PackageFuncB? In other words, can I intercept the call to PackageFuncB?

I think the solution involves creating my own PackageFuncB function and then calling PackageFuncA within the same environment and not the PackageFuncA's environment, but I couldn't get it to work with do.call nor eval.

  • Would it be easier to create your own PackageFunA and alter the call to PackageFunB so that it calls your function instead?
    – joran
    Nov 20, 2011 at 19:25
  • See ?assignInNamespace
    – Andrie
    Nov 20, 2011 at 19:44
  • joran - I'd rather not maintain my own version of PackageFuncA, especially since its more than just a few lines of code.
    – Suraj
    Nov 20, 2011 at 19:54
  • Andrie - I actually want my version of PackageFuncB to be a wrapper around the 3rd party PackageFuncB. So my func gets called first, I do some work, then pass on to the real PackageFuncB. So I don't want to replace the existing function.
    – Suraj
    Nov 20, 2011 at 19:56
  • also I wouldn't want to affect the functionality of PackageFuncB in other parts of my code, just in one instance where I want to redirect the call
    – Suraj
    Nov 20, 2011 at 20:10

2 Answers 2


Here is a one-liner that does it. Here PackageFuncA is stats::acf and PackageFuncB is stats:::plot.acf which we want to replace with my.plot.acf . my.plot.acf prints "Hello" and then calls the real stats:::plot.acf .

# we want this to run in place of stats:::plot.acf
my.plot.acf <- function(x, ...) { cat("Hello\n"); stats:::plot.acf(x, ...) }

# this does it
acf <- with(proto(environment(acf), acf = stats::acf, plot.acf = my.plot.acf), acf)

# test

A proto object is an environment such that any function inserted into the object via the proto function has its environment automatically reset to that object. The first arg of proto() is the parent of the proto object.

In the example above, its been set up so that the acf variable refers to the version of acf that was inserted into the proto object (which is the same as the original except its environment has been modified to be the proto object). When the new acf function is run plot.acf is a free variable (i.e. not defined in acf) so it is looked up in acf's parent and that is the environment in the proto object where it finds the new plot.acf. acf might have other free variables but in those cases as they are not found in the proto object it looks into the parent of the proto object which is the original environment of the original acf. In terms of diagrams we have this where <- means left side is parent of right side:

environment(stats::acf) <- proto object <- revised acf

and the proto object contains both the plot.acf and the revised acf .

We have also set the environment of the new plot.acf to the proto object. We may or may not have needed to do this. In many cases it won't matter. If it were important not to set the environment of the new plot.acf then it would be done like this because proto never sets the environment of functions inserted using [[...]] :

acf <- with(p <- proto(environment(acf), acf = stats::acf), acf)
p[["plot.acf"]] <- my.plot.acf

In this example, both approaches work.

It would be possible to do all this with plain environments at the expense of having to use several lines of code:

# create new environment whose parent is the original acf's parent
e <- new.env(parent = environment(stats::acf))

# the next statement is only need to overwrite any acf you already might have from
# trying other code.  If you were sure there was no revised acf already defined 
# then the next line could be omitted.  Its a bit safer to include it.
acf <- stats::acf

# This sets the environment of the new acf.  If there were no acf already here 
# then it would copy it from stats::acf .
environment(acf) <- e

# may or may not need next statement.  In this case it doesn't matter.
environment(my.plot.acf) <- e

e$plot.acf <- my.plot.acf


In this case we have not placed the revised acf in e as in the proto example but only set its parent. In fact, placing the revised acf into e or the proto object is not strictly necessary but was only done in the proto case because proto has the side effect of resetting the environment and it was that side effect we were after. On the other hand it is necessary to put the revised plot.acf in e or the proto object in order that it be encountered prior to the original one.

You might want to read this paper and, in particular, the section on Proxies starting page 21 since the technique shown here is an example of a proxy object.

  • works perfectly! I'll have to stare at this a bit before I figure out why. A brief walk-through of what's happening would be a huge help, if you have the time.
    – Suraj
    Nov 21, 2011 at 2:08

Make a new copy of PackageFuncA, reset its environment, and write your own version of PackageFuncB.

environment(PackageFuncA) <- globalenv()  # makes a new copy of PackageFuncA

PackageFuncB <- function(...) ....   # will be called from your new PackageFuncA

You might have to do a bit of editing if PackageFuncA uses un-exported functions from its original package. Also, if you don't want the new PackageFuncB to be used elsewhere, you can wrap it inside your new PackageFuncA instead of placing it in the global environment.

Your Answer

Reminder: Answers generated by Artificial Intelligence tools are not allowed on Stack Overflow. Learn more

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge that you have read and understand our privacy policy and code of conduct.

Not the answer you're looking for? Browse other questions tagged or ask your own question.