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I am using the pblapply function with the cl argument set to an integer instead of a cluster object. This results in pblapply calling mclapply instead of parLapply. There's no need to worry about entering the correct objects into the clusterExport function this way, which I find improves my overall workflow. However, if I need to manually interrupt the call to pblapply within RStudio (clicking the stop sign), the session hangs, and I end up with a bunch of runaway cores that need to be manually killed via terminal.

Note, this issue is specific to RStudio; running the same code from the terminal using Rscript and manually interrupting via CTRL-C will successfully stop the cluster. Is there a more graceful and efficient way to handle this issue when confined to RStudio?

Here's an example of my solution when working with parLapply. Can this be translated to work with mclapply instead?

tryCatch({
    cl <- makeCluster(detectCores()-1, "SOCK")
    clusterEvalQ(cl, {
        library(...) # load necessary libraries to each socket
    }
    clusterExport(cl, list=c("some_function", "some_list"))
    parLapply(cl, some_list, function(x) some_function(x))
    stopCluster(cl)
}, error=function(e) {
    stopCluster(cl)
    return(e)
}, finally = {
    try(stopCluster(cl), silent = T)
})

Here's an example using pblapply/mclapply without any exception handling.

pblapply(cl = detectCores()-1, some_list, function(x) some_function(x))

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