For several efforts I'm involved in at the moment, I am running large datasets with numerous parameter combinations through a series of functions. The functions have a wrapper (so I can `mclapply`

) for ease of operation on a cluster. However, I run into two major challenges.

a) My parameter combinations are large (think 20k to 100k). Sometimes particular combinations **will** fail (e.g. survival is too high and mortality is too low so the model never converges as a hypothetical scenario). It's difficult for me to suss out ahead of time exactly which combinations will fail (life would be easier if I could do that). But for now I have this type of setup:

```
failsafe <- failwith(NULL, my_wrapper_function)
# This is what I run
# Note that input_variables contains a list of variables in each list item
results <- mclapply(input_variables, failsafe, mc.cores = 72)
# On my local dual core mac, I can't do this so the equivalent would be:
results <- llply(input_variables, failsafe, .progress = 'text')
```

The skeleton for my wrapper function looks like this:

```
my_wrapper_function <- function(tlist) {
run <- tryCatch(my_model(tlist$a, tlist$b, tlist$sA, tlist$Fec, m = NULL) , error=function(e) NULL)
...
return(run)
}
```

Is this the most efficient approach? If for some reason a particular combination of variables crashes the model, I need it to return a `NULL`

and carry on with the rest. However, I still have issues that this fails less than gracefully.

b) Sometimes a certain combination of inputs **does not** crash the model but takes too long to converge. I set a limit on the computation time on my cluster (say 6 hours) so I don't waste my resources on something that is stuck. How can I include a timeout such that if a function call takes more than x time on a single list item, it should move on? Calculating the time spent is trivial but a function mid simulation can't be interrupted to check the time, right?

Any ideas, solutions or tricks are appreciated!