This is probably not correct terminology, but hopefully I can get my point across.

I frequently end up doing something like:

myVar = 1
f <- function(myvar) { return(myVar); }
# f(2) = 1 now

R happily uses the variable outside of the function's scope, which leaves me scratching my head, wondering how I could possibly be getting the results I am.

Is there any option which says "force me to only use variables which have previously been assigned values in this function's scope"? Perl's use strict does something like this, for example. But I don't know that R has an equivalent of my.

EDIT: Thank you, I am aware of that I capitalized them differently. Indeed, the example was created specifically to illustrate this problem!

I want to know if there is a way that R can automatically warn me when I do this.

EDIT 2: Also, if Rkward or another IDE offers this functionality I'd like to know that too.

  • Just to clarify: it seems your initial question involves forcing local scope, but your edits and the answers involve code checking (static analysis). Which are you really trying to get at? The static checking is answered, but the forcing of local variables is does not quite seem answered. – Iterator Nov 1 '11 at 15:06
  • @Xodarap - You got lots of good answers below, but I think my answer has a couple of useful solutions - even though I'm late to the party ;-) – Tommy Nov 18 '11 at 17:09
  • Regarding EDIT2: RStudio IDE will "warn" you of a symbol "myVar" not being in scope even asking if you meant "myvar" – GWD Mar 30 '19 at 8:28

11 Answers 11


As far as I know, R does not provide a "use strict" mode. So you are left with two options:

1 - Ensure all your "strict" functions don't have globalenv as environment. You could define a nice wrapper function for this, but the simplest is to call local:

# Use "local" directly to control the function environment
f <- local( function(myvar) { return(myVar); }, as.environment(2))
f(3) # Error in f(3) : object 'myVar' not found

# Create a wrapper function "strict" to do it for you...
strict <- function(f, pos=2) eval(substitute(f), as.environment(pos))
f <- strict( function(myvar) { return(myVar); } )
f(3) # Error in f(3) : object 'myVar' not found

2 - Do a code analysis that warns you of "bad" usage.

Here's a function checkStrict that hopefully does what you want. It uses the excellent codetools package.

# Checks a function for use of global variables
# Returns TRUE if ok, FALSE if globals were found.
checkStrict <- function(f, silent=FALSE) {
    vars <- codetools::findGlobals(f)
    found <- !vapply(vars, exists, logical(1), envir=as.environment(2))
    if (!silent && any(found)) {
        warning("global variables used: ", paste(names(found)[found], collapse=', '))


And trying it out:

> myVar = 1
> f <- function(myvar) { return(myVar); }
> checkStrict(f)
Warning message:
In checkStrict(f) : global variables used: myVar
| improve this answer | |

checkUsage in the codetools package is helpful, but doesn't get you all the way there. In a clean session where myVar is not defined,

f <- function(myvar) { return(myVar); }


<anonymous>: no visible binding for global variable ‘myVar’

but once you define myVar, checkUsage is happy.

See ?codetools in the codetools package: it's possible that something there is useful:

> findGlobals(f)
[1] "{"      "myVar"  "return"
> findLocals(f)
| improve this answer | |
  • Thanks Ben, I guess checkUsage isn't what I want. – Xodarap Jun 6 '11 at 2:23
  • @BenBolker +1 - Thanks Ben, had not looked at this package before. In my answer I managed to use findGlobals to solve the problem... – Tommy Nov 18 '11 at 17:26

Using get(x, inherits=FALSE) will force local scope.

 myVar = 1

 f2 <- function(myvar) get("myVar", inherits=FALSE)

f3 <- function(myvar){
 myVar <- myvar
 get("myVar", inherits=FALSE)


> f2(8)    
Error in get("myVar", inherits = FALSE) : object 'myVar' not found
> f3(8)
[1] 8
| improve this answer | |

You need to fix the typo: myvar != myVar. Then it will all work...

Scope resolution is 'from the inside out' starting from the current one, then the enclosing and so on.

Edit Now that you clarified your question, look at the package codetools (which is part of the R Base set):

R> library(codetools)
R> f <- function(myVAR) { return(myvar) }
R> checkUsage(f)
<anonymous>: no visible binding for global variable 'myvar'
| improve this answer | |
  • Thanks, I'm aware that this was the problem. I was asking if R has an automated way to detect when this happens (i.e. when I use a variable in a function outside of its scope). – Xodarap Jun 2 '11 at 16:18
  • 6
    This solution doesn't work if myvar has already been defined in the global environment ... – Ben Bolker Jun 2 '11 at 18:29

You are of course doing it wrong. Don't expect static code checking tools to find all your mistakes. Check your code with tests. And more tests. Any decent test written to run in a clean environment will spot this kind of mistake. Write tests for your functions, and use them. Look at the glory that is the testthat package on CRAN.

| improve this answer | |
  • Or alternatively the RUnit package. – Paul Hiemstra Nov 17 '11 at 22:07
  • 8
    ...but dont' expect your tests to find all mistakes either! Use all tools to your disposal - static checks, unit tests and actually running the code as the user would :). Then be prepared to fix more bugs when the REAL users finally gets their hands on it. – Tommy Nov 18 '11 at 17:30

There is a new package modules on CRAN which addresses this common issue (see the vignette here). With modules, the function raises an error instead of silently returning the wrong result.

# without modules
myVar <- 1
f <- function(myvar) { return(myVar) }
[1] 1

# with modules
m <- module({
  f <- function(myvar) { return(myVar) }
Error in m$f(2) : object 'myVar' not found

This is the first time I use it. It seems to be straightforward so I might include it in my regular workflow to prevent time consuming mishaps.

| improve this answer | |

you can dynamically change the environment tree like this:

a <- 1

f <- function(){
    b <- 1

environment(f) <- new.env(parent = baseenv())


Inside f, b can be found, while a cannot.

But probably it will do more harm than good.

| improve this answer | |
  • Setting the parent to baseenv is a bit restrictive - you can't call stats functions like runif then. I have a slightly different (I dare not say "better" ;-) approach in my answer. – Tommy Nov 18 '11 at 17:35

You can test to see if the variable is defined locally:

myVar = 1
f <- function(myvar) { 
if( exists('myVar', environment(), inherits = FALSE) ) return( myVar) else cat("myVar was not found locally\n")

> f(2)
myVar was not found locally

But I find it very artificial if the only thing you are trying to do is to protect yourself from spelling mistakes.

The exists function searches for the variable name in the particular environment. inherits = FALSE tells it not to look into the enclosing frames.

| improve this answer | |
  • 2
    To communicate with user you should use message, warning or stop. In that way suppressWarnings, suppressMessages or tryCatch can handle it. – Marek Jun 3 '11 at 7:59

environment(fun) = parent.env(environment(fun))

will remove the 'workspace' from your search path, leave everything else. This is probably closest to what you want.

| improve this answer | |
  • 1
    This will not work if your function loads a library or do anything else that updates the searchpath, because the new enrivonment is inserted between the function's env and .GlobalEnv. See stackoverflow.com/a/45893738/538603 – Michael Schubert Aug 27 '17 at 9:53

@Tommy gave a very good answer and I used it to create 3 functions that I think are more convenient in practice.


to make a function strict, you just have to call


instead of



my_fun1 <- function(a,b,c){a+b+c}
my_fun2 <- function(a,b,c){a+B+c}
B <- 1
my_fun1(1,2,3)        # 6
strict(my_fun1,1,2,3) # 6
my_fun2(1,2,3)        # 5
strict(my_fun2,1,2,3) # Error in (function (a, b, c)  : object 'B' not found


To get a diagnosis, execute checkStrict1(f) with optional Boolean parameters to show more ore less.

checkStrict1("my_fun1") # nothing
checkStrict1("my_fun2") # my_fun2  : B

A more complicated case:

A <- 1 # unambiguous variable defined OUTSIDE AND INSIDE my_fun3
# B unambiguous variable defined only INSIDE my_fun3
C <- 1 # defined OUTSIDE AND INSIDE with ambiguous name (C is also a base function)
D <- 1 # defined only OUTSIDE my_fun3 (D is also a base function)
E <- 1 # unambiguous variable defined only OUTSIDE my_fun3
# G unambiguous variable defined only INSIDE my_fun3
# H is undeclared and doesn't exist at all
# I is undeclared (though I is also base function)
# v defined only INSIDE (v is also a base function)
my_fun3 <- function(a,b,c){
  a+b+A+B+C+D+E+G+H+I+v+ my_fun1(1,2,3)
checkStrict1("my_fun3",show_global_functions = TRUE ,show_ambiguous = TRUE , show_inexistent = TRUE)

# my_fun3  : E 
# my_fun3  Ambiguous : D 
# my_fun3  Inexistent : H 
# my_fun3  Global functions : my_fun1

I chose to show only inexistent by default out of the 3 optional additions. You can change it easily in the function definition.


Get a diagnostic of all your potentially problematic functions, with the same parameters.

my_fun2         : B 
my_fun3         : E 
my_fun3         Inexistent : H


strict <- function(f1,...){
  function_text <- deparse(f1)
  function_text <- paste(function_text[1],function_text[2],paste(function_text[c(-1,-2,-length(function_text))],collapse=";"),"}",collapse="") 
  strict0 <- function(f1, pos=2) eval(substitute(f1), as.environment(pos))
  f1 <- eval(parse(text=paste0("strict0(",function_text,")")))

checkStrict1 <- function(f_str,exceptions = NULL,n_char = nchar(f_str),show_global_functions = FALSE,show_ambiguous = FALSE, show_inexistent = TRUE){
  functions <-  c(lsf.str(envir=globalenv()))
  f <- try(eval(parse(text=f_str)),silent=TRUE)
  if(inherits(f, "try-error")) {return(NULL)}
  vars <- codetools::findGlobals(f)
  vars <- vars[!vars %in% exceptions]
  global_functions <- vars %in% functions

  in_global_env <- vapply(vars, exists, logical(1), envir=globalenv())
  in_local_env  <- vapply(vars, exists, logical(1), envir=as.environment(2))
  in_global_env_but_not_function <- rep(FALSE,length(vars))
  for (my_mode in c("logical", "integer", "double", "complex", "character", "raw","list", "NULL")){
    in_global_env_but_not_function <- in_global_env_but_not_function | vapply(vars, exists, logical(1), envir=globalenv(),mode = my_mode)
  found     <- in_global_env_but_not_function & !in_local_env
  ambiguous <- in_global_env_but_not_function & in_local_env
  inexistent <- (!in_local_env) & (!in_global_env)
    if(any(found))           {cat(paste(f_str,paste(rep(" ",n_char-nchar(f_str)),collapse=""),":",                  paste(names(found)[found], collapse=', '),"\n"))}
    if(show_ambiguous        & any(ambiguous))       {cat(paste(f_str,paste(rep(" ",n_char-nchar(f_str)),collapse=""),"Ambiguous :",        paste(names(found)[ambiguous], collapse=', '),"\n"))}
    if(show_inexistent       & any(inexistent))      {cat(paste(f_str,paste(rep(" ",n_char-nchar(f_str)),collapse=""),"Inexistent :",       paste(names(found)[inexistent], collapse=', '),"\n"))}
    if(show_global_functions & any(global_functions)){cat(paste(f_str,paste(rep(" ",n_char-nchar(f_str)),collapse=""),"Global functions :", paste(names(found)[global_functions], collapse=', '),"\n"))}
  } else {return(invisible(TRUE))}

checkStrictAll <-  function(exceptions = NULL,show_global_functions = FALSE,show_ambiguous = FALSE, show_inexistent = TRUE){
  functions <-  c(lsf.str(envir=globalenv()))
  n_char <- max(nchar(functions))  
  invisible(sapply(functions,checkStrict1,exceptions,n_char = n_char,show_global_functions,show_ambiguous, show_inexistent))
| improve this answer | |

What works for me, based on @c-urchin 's answer, is to define a script which reads all my functions and then excludes the global environment:

filenames <- Sys.glob('fun/*.R')
for (filename in filenames) {
    source(filename, local=T)
    funname <- sub('^fun/(.*).R$', "\\1", filename)
    eval(parse(text=paste('environment(',funname,') <- parent.env(globalenv())',sep='')))

I assume that

  • all functions and nothing else are contained in the relative directory ./fun and
  • every .R file contains exactly one function with an identical name as the file.

The catch is that if one of my functions calls another one of my functions, then the outer function has to also call this script first, and it is essential to call it with local=T:

source('readfun.R', local=T)

assuming of course that the script file is called readfun.R.

| improve this answer | |

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