Error: C stack usage is too close to the limit - r

I'm attempting to run some fairly deep recursive code in R and it keeps giving me this error:
Error: C stack usage is too close to the limit
My output from CStack_info() is:
Cstack_info()
size current direction eval_depth
67108864 8120 1 2
I have plenty of memory on my machine, I'm just trying to figure out how I can increase the CStack for R.
EDIT: Someone asked for a reproducible example. Here's some basic sample code that causes the problem. Running f(1,1) a few times you'll get the error. Note that I've already set --max-ppsize = 500000 and options(expressions=500000) so if you don't set those you might get an error about one of those two things instead. As you can see, the recursion can go pretty deep here and I've got no idea how to get it to work consistently. Thanks.
f <- function(root=1,lambda=1) {
x <- c(0,1);
prob <- c(1/(lambda+1),lambda/(lambda+1));
repeat {
if(root == 0) {
break;
}
else {
child <- sample(x,2,replace=TRUE,prob);
if(child[1] == 0 && child[2] == 0) {
break;
}
if(child[1] == 1) {
child[1] <- f(root=child[1],lambda);
}
if(child[2] == 1 && child[1] == 0) {
child[2] <- f(root=child[2],lambda);
}
}
if(child[1] == 0 && child[2] == 0) {
break;
}
if(child[1] == 1 || child[2] == 1) {
root <- sample(x,1,replace=TRUE,prob);
}
}
return(root)
}

The stack size is an operating system parameter, adjustable per-process (see setrlimit(2)). You can't adjust it from within R as far as I can tell, but you can adjust it from the shell before starting R, with the ulimit command. It works like this:
$ ulimit -s # print default
8192
$ R --slave -e 'Cstack_info()["size"]'
size
8388608
8388608 = 1024 * 8192; R is printing the same value as ulimit -s, but in bytes instead of kilobytes.
$ ulimit -s 16384 # enlarge stack limit to 16 megs
$ R --slave -e 'Cstack_info()["size"]'
size
16777216
To make a permanent adjustment to this setting, add the ulimit command to your shell startup file, so it's executed every time you log in. I can't give more specific directions than that, because it depends on exactly which shell you have and stuff. I also don't know how to do it for logging into a graphical environment (which will be relevant if you're not running R inside a terminal window).

I suspect that, regardless of stack limit, you'll end up with recursions that are too deep. For instance, with lambda = Inf, f(1) leads to an immediate recursion, indefinitely. The depth of the recursion seems to be a random walk, with some probability r of going deeper, 1 - r of finishing the current recursion. By the time you've hit the stack limit, you've made a large number of steps 'deeper'. This implies that r > 1 / 2, and the very large majority of time you'll just continue to recurse.
Also, it seems like it is almost possible to derive an analytic or at least numerical solution even in the face of infinite recursion. One can define p as the probability that f(1) == 1, write implicit expressions for the 'child' states after a single iteration, and equate these with p, and solve. p can then be used as the chance of success in a single draw from a binomial distribution.

This error is not due to memory it is due to recursion. A function is calling itself. This isn't always obvious from examining the definition of only one function. To illustrate the point, here is a minimal example of 2 functions that call each other:
change_to_factor <- function(x){
x <- change_to_character(x)
as.factor(x)
}
change_to_character <- function(x){
x <- change_to_factor(x)
as.character(x)
}
change_to_character("1")
Error: C stack usage 7971600 is too close to the limit
The functions will continue to call each other recursively and will theoretically never complete, even if you increase the limit it will still be exceeded. It is only checks within your system that prevent this from occurring indefinitely and consuming all of the compute resources of your machine. You need to alter the functions to ensure that they won't indefinitely call itself (or each other) recursively.

This happened to me for a completely different reason. I accidentally created a superlong string while combining two columns:
output_table_subset = mutate(big_data_frame,
combined_table = paste0(first_part, second_part, col = "_"))
instead of
output_table_subset = mutate(big_data_frame,
combined_table = paste0(first_part, second_part, sep = "_"))
Took me for ever to figure it out as I never expected the paste to have caused the problem.

I encountered the same problem of receiving the "C stack usage is too close to the limit" error (albeit for another application than the one stated by user2045093 above). I tried zwol's proposal but it didn't work out.
To my own surprise, I could solve the problem by installing the newest version of R for OS X (currently: version 3.2.3) as well as the newest version of R Studio for OS X (currently: 0.99.840), since I am working with R Studio.
Hopefully, this may be of some help to you as well.

One issue here can be that you're calling f inside itself
plop <- function(a = 2){
pouet <- sample(a)
plop(pouet)
}
plop()
Erreur : évaluations trop profondément imbriquées : récursion infinie / options(expressions=) ?
Erreur pendant l'emballage (wrapup) : évaluations trop profondément imbriquées : récursion infinie / options(expressions=) ?

Mine is perhaps a more unique case, but may help the few who have this exact problem:
My case has absolutely nothing to do with space usage, still R gave the:
C stack usage is too close to the limit
I had a defined function which is an upgrade of the base function:
saveRDS()
But,
Accidentally, this defined function was called saveRDS() instead of safe_saveRDS().
Thus, past that definition, when the code got to the line wihch actually uses saveRDS(...) (which calls the original base version, not the upgraded one), it gave the above error and crushed.
So, if you're getting that error when calling some saving function, see if you didn't accidentally run over it.

On Linux, I have permanently increased the size of the stack and memlock memories by doing so :
sudo vi /etc/security/limits.conf
Then, add the following lines at the end of the file.
* soft memlock unlimited
* hard memlock unlimited
* soft stack unlimited
* hard stack unlimited

For everyone's information, I am suddenly running into this with R 3.6.1 on Windows 7 (64-bit). It was not a problem before, and now stack limits seem to be popping up everywhere, when I try to "save(.)" data or even do a "save.image(.)". It's like the serialization is blowing these stacks away.
I am seriously considering dropping back to 3.6.0. Didn't happen there.

I often include a commented-out source("path/to/file/thefile.R") line at the top of an R script, e.g. thefile.R, so I can easily copy-paste this into the terminal to run it. I get this error if I forget to comment out the line, since running the file runs the file, which runs the file, which runs the file, ...
If that is the cause, the solution is simple: comment out the line.

Not sure if we re listing issues here but it happened to me with leaflet().
I was trying to map a dataframe in which a date column was of class POSIXlt.
Changing back to POSIXct solved the issue.

As Martin Morgan wrote... The problem is that you get too deep inside of recursion. If the recursion does not converge at all, you need to break it by your own. I hope this code is going to work, because It is not tested. However at least point should be clear here.
f <- function(root=1,lambda=1,depth=1) {
if(depth > 256){
return(NA)
}
x <- c(0,1);
prob <- c(1/(lambda+1),lambda/(lambda+1));
repeat {
if(root == 0) {
break;
} else {
child <- sample(x,2,replace=TRUE,prob);
if(child[1] == 0 && child[2] == 0) {
break;
}
if(child[1] == 1) {
child[1] <- f(root=child[1],lambda,depth+1);
}
if(child[2] == 1 && child[1] == 0) {
child[2] <- f(root=child[2],lambda,depth+1);
}
}
if(child[1] == NA | child[2] == NA){
return NA;
}
if(child[1] == 0 && child[2] == 0) {
break;
}
if(child[1] == 1 || child[2] == 1) {
root <- sample(x,1,replace=TRUE,prob);
}
}
return(root)
}

If you're using plot_ly check which columns you are passing. It seems that for POSIXdt/ct columns, you have to use as.character() before passing to plotly or you get this exception!

Here is how I encountered this error message. I met this error message when I tried to print a data.table in the console. It turned out it was because I mistakenly made a super super long string (by using collapse in paste() when I shouldn't) in a column.

The package caret has a function called createDataPartition that always results in error when the dataset to be partitioned has more than 1m rows.
Just for your info.

I faced the same issue. This problem won't be solved by reinstalling R or Rstudio or by increasing the stack size. Here is a solution that solved this problem -
If you are sourcing a.R inside b.R and at the same time sourcing b.R inside a.R, then the stack will fill up very fast.
Problem
This is the first file a.R in which b.R is sourced
#---- a.R File -----
source("/b.R")
...
...
#--------------------
This is the second file b.R, in which a.R is sourced
#---- b.R File -----
source("/a.R")
...
...
#--------------------
Solution
Source only one file to avoid the recursive calling of files within each other
#---- a.R File -----
source("/b.R")
...
...
#--------------------
#---- b.R File -----
...
...
#--------------------
OR
#---- a.R File -----
...
...
...
#--------------------
#---- b.R File -----
source("/a.R")
...
...
#--------------------

Another way to cause the same problem:
library(debug)
mtrace(lapply)
The recursive call isn't as obvious here.

Related

How to deal with C stack usage error in R [duplicate]

I'm attempting to run some fairly deep recursive code in R and it keeps giving me this error:
Error: C stack usage is too close to the limit
My output from CStack_info() is:
Cstack_info()
size current direction eval_depth
67108864 8120 1 2
I have plenty of memory on my machine, I'm just trying to figure out how I can increase the CStack for R.
EDIT: Someone asked for a reproducible example. Here's some basic sample code that causes the problem. Running f(1,1) a few times you'll get the error. Note that I've already set --max-ppsize = 500000 and options(expressions=500000) so if you don't set those you might get an error about one of those two things instead. As you can see, the recursion can go pretty deep here and I've got no idea how to get it to work consistently. Thanks.
f <- function(root=1,lambda=1) {
x <- c(0,1);
prob <- c(1/(lambda+1),lambda/(lambda+1));
repeat {
if(root == 0) {
break;
}
else {
child <- sample(x,2,replace=TRUE,prob);
if(child[1] == 0 && child[2] == 0) {
break;
}
if(child[1] == 1) {
child[1] <- f(root=child[1],lambda);
}
if(child[2] == 1 && child[1] == 0) {
child[2] <- f(root=child[2],lambda);
}
}
if(child[1] == 0 && child[2] == 0) {
break;
}
if(child[1] == 1 || child[2] == 1) {
root <- sample(x,1,replace=TRUE,prob);
}
}
return(root)
}
The stack size is an operating system parameter, adjustable per-process (see setrlimit(2)). You can't adjust it from within R as far as I can tell, but you can adjust it from the shell before starting R, with the ulimit command. It works like this:
$ ulimit -s # print default
8192
$ R --slave -e 'Cstack_info()["size"]'
size
8388608
8388608 = 1024 * 8192; R is printing the same value as ulimit -s, but in bytes instead of kilobytes.
$ ulimit -s 16384 # enlarge stack limit to 16 megs
$ R --slave -e 'Cstack_info()["size"]'
size
16777216
To make a permanent adjustment to this setting, add the ulimit command to your shell startup file, so it's executed every time you log in. I can't give more specific directions than that, because it depends on exactly which shell you have and stuff. I also don't know how to do it for logging into a graphical environment (which will be relevant if you're not running R inside a terminal window).
I suspect that, regardless of stack limit, you'll end up with recursions that are too deep. For instance, with lambda = Inf, f(1) leads to an immediate recursion, indefinitely. The depth of the recursion seems to be a random walk, with some probability r of going deeper, 1 - r of finishing the current recursion. By the time you've hit the stack limit, you've made a large number of steps 'deeper'. This implies that r > 1 / 2, and the very large majority of time you'll just continue to recurse.
Also, it seems like it is almost possible to derive an analytic or at least numerical solution even in the face of infinite recursion. One can define p as the probability that f(1) == 1, write implicit expressions for the 'child' states after a single iteration, and equate these with p, and solve. p can then be used as the chance of success in a single draw from a binomial distribution.
This error is not due to memory it is due to recursion. A function is calling itself. This isn't always obvious from examining the definition of only one function. To illustrate the point, here is a minimal example of 2 functions that call each other:
change_to_factor <- function(x){
x <- change_to_character(x)
as.factor(x)
}
change_to_character <- function(x){
x <- change_to_factor(x)
as.character(x)
}
change_to_character("1")
Error: C stack usage 7971600 is too close to the limit
The functions will continue to call each other recursively and will theoretically never complete, even if you increase the limit it will still be exceeded. It is only checks within your system that prevent this from occurring indefinitely and consuming all of the compute resources of your machine. You need to alter the functions to ensure that they won't indefinitely call itself (or each other) recursively.
This happened to me for a completely different reason. I accidentally created a superlong string while combining two columns:
output_table_subset = mutate(big_data_frame,
combined_table = paste0(first_part, second_part, col = "_"))
instead of
output_table_subset = mutate(big_data_frame,
combined_table = paste0(first_part, second_part, sep = "_"))
Took me for ever to figure it out as I never expected the paste to have caused the problem.
I encountered the same problem of receiving the "C stack usage is too close to the limit" error (albeit for another application than the one stated by user2045093 above). I tried zwol's proposal but it didn't work out.
To my own surprise, I could solve the problem by installing the newest version of R for OS X (currently: version 3.2.3) as well as the newest version of R Studio for OS X (currently: 0.99.840), since I am working with R Studio.
Hopefully, this may be of some help to you as well.
One issue here can be that you're calling f inside itself
plop <- function(a = 2){
pouet <- sample(a)
plop(pouet)
}
plop()
Erreur : évaluations trop profondément imbriquées : récursion infinie / options(expressions=) ?
Erreur pendant l'emballage (wrapup) : évaluations trop profondément imbriquées : récursion infinie / options(expressions=) ?
Mine is perhaps a more unique case, but may help the few who have this exact problem:
My case has absolutely nothing to do with space usage, still R gave the:
C stack usage is too close to the limit
I had a defined function which is an upgrade of the base function:
saveRDS()
But,
Accidentally, this defined function was called saveRDS() instead of safe_saveRDS().
Thus, past that definition, when the code got to the line wihch actually uses saveRDS(...) (which calls the original base version, not the upgraded one), it gave the above error and crushed.
So, if you're getting that error when calling some saving function, see if you didn't accidentally run over it.
On Linux, I have permanently increased the size of the stack and memlock memories by doing so :
sudo vi /etc/security/limits.conf
Then, add the following lines at the end of the file.
* soft memlock unlimited
* hard memlock unlimited
* soft stack unlimited
* hard stack unlimited
For everyone's information, I am suddenly running into this with R 3.6.1 on Windows 7 (64-bit). It was not a problem before, and now stack limits seem to be popping up everywhere, when I try to "save(.)" data or even do a "save.image(.)". It's like the serialization is blowing these stacks away.
I am seriously considering dropping back to 3.6.0. Didn't happen there.
I often include a commented-out source("path/to/file/thefile.R") line at the top of an R script, e.g. thefile.R, so I can easily copy-paste this into the terminal to run it. I get this error if I forget to comment out the line, since running the file runs the file, which runs the file, which runs the file, ...
If that is the cause, the solution is simple: comment out the line.
Not sure if we re listing issues here but it happened to me with leaflet().
I was trying to map a dataframe in which a date column was of class POSIXlt.
Changing back to POSIXct solved the issue.
As Martin Morgan wrote... The problem is that you get too deep inside of recursion. If the recursion does not converge at all, you need to break it by your own. I hope this code is going to work, because It is not tested. However at least point should be clear here.
f <- function(root=1,lambda=1,depth=1) {
if(depth > 256){
return(NA)
}
x <- c(0,1);
prob <- c(1/(lambda+1),lambda/(lambda+1));
repeat {
if(root == 0) {
break;
} else {
child <- sample(x,2,replace=TRUE,prob);
if(child[1] == 0 && child[2] == 0) {
break;
}
if(child[1] == 1) {
child[1] <- f(root=child[1],lambda,depth+1);
}
if(child[2] == 1 && child[1] == 0) {
child[2] <- f(root=child[2],lambda,depth+1);
}
}
if(child[1] == NA | child[2] == NA){
return NA;
}
if(child[1] == 0 && child[2] == 0) {
break;
}
if(child[1] == 1 || child[2] == 1) {
root <- sample(x,1,replace=TRUE,prob);
}
}
return(root)
}
If you're using plot_ly check which columns you are passing. It seems that for POSIXdt/ct columns, you have to use as.character() before passing to plotly or you get this exception!
Here is how I encountered this error message. I met this error message when I tried to print a data.table in the console. It turned out it was because I mistakenly made a super super long string (by using collapse in paste() when I shouldn't) in a column.
The package caret has a function called createDataPartition that always results in error when the dataset to be partitioned has more than 1m rows.
Just for your info.
I faced the same issue. This problem won't be solved by reinstalling R or Rstudio or by increasing the stack size. Here is a solution that solved this problem -
If you are sourcing a.R inside b.R and at the same time sourcing b.R inside a.R, then the stack will fill up very fast.
Problem
This is the first file a.R in which b.R is sourced
#---- a.R File -----
source("/b.R")
...
...
#--------------------
This is the second file b.R, in which a.R is sourced
#---- b.R File -----
source("/a.R")
...
...
#--------------------
Solution
Source only one file to avoid the recursive calling of files within each other
#---- a.R File -----
source("/b.R")
...
...
#--------------------
#---- b.R File -----
...
...
#--------------------
OR
#---- a.R File -----
...
...
...
#--------------------
#---- b.R File -----
source("/a.R")
...
...
#--------------------
Another way to cause the same problem:
library(debug)
mtrace(lapply)
The recursive call isn't as obvious here.

Available stack size is not used by R, returning "Error: node stack overflow"

I have written a recursive code in R.
Before invoking R, I set the stack size to 96 MB at the shell with:
ulimit -s 96000
I invoked R with maximum protection pointer stack size of 500000 with:
R --max-ppsize 500000
And I changed the maximum recursion depth to 500000:
options(expression = 500000)
I both used the binary R package at Arch Linux repositories (without memory profiling) and also a binary compiled by me with memory profiling option. Both are of version 3.4.2
I used two versions of the code with and without gc().
The problem is that R exits the code with "node stack overflow" error while only 16 MB of the 93 MB of total available stack is used and depth is just below one percent of the expressions option of 5e5:
size current direction eval_depth
93388800 16284704 1 4958
Error: node stack overflow
The current stack usage change between the last two iterations were around 10K. The only passed and saved object is a numeric vector of 19 items.
The recursive portion of the code is below:
network_recursive <- function(called)
{
print(Cstack_info())
callers <- list_caller[[called + 1]] # get the callers of the called
callers <- callers[!bool[callers + 1]] # subset for nofriends - new friends
new_friend_no <- length(callers) # number of new friends
print(list(called, callers) )
if (new_friend_no > 0) # if1 still new friends
{
friends <<- friends + new_friend_no # increment friend no
print(friends)
bool[callers + 1] <<- T # toggle friends
sapply(callers, network_recursive) # recurse network control
} # close if1
print("end of recursion")
}
What may be the reason for this stack overflow?
Some notes on the R source code, related to the issue.
The portion of the code that triggers the error is lines 5987-5988 from src/main/eval.c:
5975 #ifdef USE_BINDING_CACHE
5976 if (useCache) {
5977 R_len_t n = LENGTH(constants);
5978 # ifdef CACHE_MAX
5979 if (n > CACHE_MAX) {
5980 n = CACHE_MAX;
5981 smallcache = FALSE;
5982 }
5983 # endif
5984 # ifdef CACHE_ON_STACK
5985 /* initialize binding cache on the stack */
5986 vcache = R_BCNodeStackTop;
5987 if (R_BCNodeStackTop + n > R_BCNodeStackEnd)
5988 nodeStackOverflow();
5989 while (n > 0) {
5990 SETSTACK(0, R_NilValue);
5991 R_BCNodeStackTop++;
5992 n--;
5993 }
5994 # else
5995 /* allocate binding cache and protect on stack */
5996 vcache = allocVector(VECSXP, n);
5997 BCNPUSH(vcache);
5998 # endif
5999 }
6000 #endif
Off the top of my head, I see that you used options(expression = 500000), but the field in the list returned by "options()" is called 'expressions' (with an s). If you typed it in the way you described in your question, then the 'expressions' field remained at 5000, not the 500000 you intended to set it as. So this might be why you maxed out while only using what you thought was 1% of the stack depth.
The node stack has its own limit, which is fixed (defined in Defn.h, R_BCNODESTACKSIZE). If you have a real example where the limit is too small, please submit a bug report, we could increase it or also add a command line option for it. The "node stack" is used by the byte-code interpreter, which interprets byte-code produced by the byte-code compiler. Cstack_info() does not display the node stack usage. The node stack is not allocated on the C stack.
Programs based on deep recursion will be very slow in R anyway as function calls are quite expensive. For practical purposes, when a limit related to recursion depth is hit, it might be better to rewrite the program to avoid recursion rather then increasing the limits.
Just as an experiment one might disable the just-in-time compiler and by that reduce the stress on the node stack. It won't be completely eliminated, because some packages are already compiled at installation by default, including base and recommended packages, so e.g. sapply is compiled. Also, this might on the other hand increase the stress on the recursively eliminated expressions, and the program will run even slower.

How to exit from the script in R

I have a function like this
Squ <- function(x, expected.result){
result <- x*x
if(result != expected.result){
stop("We have some error /n/n")
return(NULL)
}
return(result)
}
I am running below three lines.
Squ(2, 4)
Squ(3, 7)
Squ(4, 16)
Ideally i expected this script will stop in second line i.e.Squ(3, 7) as if condition is true in the function but it didn't stop & runs the script completely. How to write the script to get stop if conditions met true.
Thanks,
Mani
Normally, running R code interactively means you'll keep running new lines of code even when there is an error. If you want the code to stop as soon as there's any kind of error, you should wrap the calls to Squ in a function. You'll have to edit the function if you want to save the values of each test, but it looks like you already know what each value should be and you're trying to find the first error. Using a function will give you the first error message and then halt execution.
test_Squ <- function() {
Squ(2, 4)
Squ(3, 7)
Squ(4, 16)
print("All code ran without throwing an error")
}
test_Squ()
# Error in Squ(3, 7) : We have some error /n/n
Let me know if you have a more specific use case in mind and I'll edit my answer.

R script with user input from command line [duplicate]

This question already has answers here:
How to include interactive input in script to be run from the command line
(3 answers)
Closed 5 years ago.
I cannot find a solution to this particular problem, even though more or less similar questions have been questioned before in:
Run R script from command line
http://www.cureffi.org/2014/01/15/running-r-batch-mode-linux/
Running a script from bash is easy enough, however once one needs user interaction I couldn't find a solution. Please consider the example:
userInput<-function(question) {
n = 0
while(n < 1 ){
n <- readline(question)
n <- ifelse(grepl("\\D",n),-1,as.integer(n))
if(is.na(n)){break} # breaks when hit enter
}
return(n)
}
investedLow<- userInput("Invested value in low risk since last time: ")
Now if I save this script as test.R and run it for R --no-save < teste.R the entire script is run and the time for user input does not happen.
The script works fine in Rstudio, for example.
How to wait for user input in a script to be run in the command line?
Here is a total hack, repurposing a very specific purpose-built package for your more-general question:
library(getPass)
userInput<-function(question) {
n = 0
while(n < 1 ){
n <- getPass::getPass(msg = question)
n <- ifelse(grepl("\\D",n),-1,as.integer(n))
if(is.na(n)){break} # breaks when hit enter
}
return(n)
}
investedLow <- userInput("Invested value in low risk since last time: ")
print(investedLow)
Maybe the worst part about this is that getPass hides the user input. There must be a way to modify the source code to fix that.
Update: The getPass author pointed out that the solution could be as simple as using readLines slightly differently:
cat(question)
readLines(file("stdin"), n=1)

R / Rstudio : is there a watch function to continuously monitor some values?

I have a lot of different operations running on quite a big dataframe. It starts to be a pain for maintenance, especially with some data being improperly formatted, and I'm looking at some options to make my life easier.
The problem is that at one point in the flow of operations NAs are introduced in several lines, including the id (certainly due to some bad subsetting). Now I cannot find the culprit easily because I have each time to str() it, or to view() it in Rstudio... This takes time and I already did it once without finding the bad operation...
So I'm curious if there is some package answering to this problem or a way to program something "daemon-like", to pop up a warning message when a specific value appears.
A while loop doesn't help, because it evaluates all the statements, and of course at one point the condition is not true and it doesn't print when it stops ...
while(nrow(df[is.na(df$id),]) > 0){
statements OK
breaking statement
other OK statements
}
I'll look for other options but I wanted to ask before...
EDIT : thanks for the useful comments, I'll definitely will look more into those functions. However I tried also to build myself a watch function (see my answer).
Ok, I guess I have finally built something quite like it :
This is a function to source a file line per line until a given condition is met :
watchIt <- function(file,watchexpression,startwatchline){
line <- 1
sourceList <- scan(file = "source_test.R", what="character", sep="\n", blank.lines.skip = FALSE)
maxLines <- length(sourceList)
while(startwatchline > line && maxLines >= line){
cat("l")
eval(parse(text=sourceList[line]))
line <- line+1
cat(line)
cat(" ")
}
while(eval(parse(text=watchexpression)) == FALSE && maxLines >= line){
cat(" L")
eval(parse(text=sourceList[line]))
line <- line+1
cat(line)
cat(" ")
}
if(maxLines <= line) {
cat("End of file reached without condition getting TRUE")
}
else{
cat("Condition evaluated to TRUE on line :")
cat(line)
cat("\n")
cat(sourceList[line])
}
}
So this is how I use it :
watchIt("source_test.R","nrow(df[is.na(df$id),]) > 0",10)
This puts "source_test.R" in a list, each line a new list item, and, starting from line 10, I test if the resultant dataframe as NAs in the id field. The execution stops either when the condition evaluates TRUE or when the end of the list items is reached.
Still I'm waiting for some other/better answers... Also, this is kind of my fourth function I managed to create in R, so I guess there might be ameliorations to be made to it...

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