5

When reading through parfib.hs code on github, I saw this comment about memory allocation for monadic version:

Monad-par version:
fib(38) non-threaded: 23.3s 23.1s
fib(38) 1 thread :    24.7s 24.5s
fib(38) 4 threads:     8.2s 31.3s
fib(40) 4 threads:    20.6s 78.6s **240GB allocated**

Is there any paper or blog post that explains this huge memory footprint? The memory allocation of non-monadic version is documented in the code comment as 17GB (for fib(42)). I searched through par monad papers and presentation by Simon Marlow but I haven't seen any analysis of the memory footprints for parfib.

1
  • 3
    Note that 240GB allocated during a run doesn't necessarily indicate that there was any moment at which the run was using 240GB. Haskell (and other functional-language-based) programs tend to do a lot of allocation and de-allocation -- which is why so much of the optimization research on GHC focuses on the allocation strategies and garbage collector. Oct 9, 2011 at 18:21

1 Answer 1

4

I think that was my comment in the source code. The biggest problem is that the default implementation of monad-par uses an elegant but potentially inefficient architecture where the Par computation generates a trace of Par actions as a lazy data structure. This is great for separating out the scheduler logic, but the compiler is not fully deforesting (eliminating) the intermediate data structure.

There are various well-known ways to make this better. It's just taking us time to implement them. If you look at some of the recent development (on branches) on the github repository we are beginning to populate monad-par with some of the alternate scheduling strategies explored in its predecessor work ("Haskell CnC").

We are hoping to change the default scheduler in the next major release to something with a parfib behavior significantly closer to "raw" par/pseq.

Your Answer

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

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