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I'm new to Erlang, so for training I try to implement standard functions from scratch. I've tried to create parallel implementation of map/2 function from lists module. But my implementation works very slow. Could you point me, if I did any principal mistakes in my implementation:

enter image description here

-module( my_pmap ).
-export([ pmap/2 ]).
-export([ map/4, collect/3 ]).

map( F, Value, Indx, SenderPid ) ->
        SenderPid ! { Indx, F( Value ) }.

pmap( F, List ) ->
        CollectorPid = spawn_link( my_pmap, collect, [ length( List ), [], self() ] ),
                fun( X, Indx ) ->
                        spawn_link( my_pmap, map, [ F, X, Indx, CollectorPid ] ),
                        Indx + 1
                List ),
        Mapped =
                        { collected, M } ->
        Sorted = lists:sort(
                        fun( { Indx1, _ }, { Indx2, _ } ) ->
                                Indx1 < Indx2
                        Mapped ),
        [ Val || { _Indx, Val } <- Sorted ].

collect( 0, List, SenderPid ) ->
        SenderPid ! { collected, List };
collect( N, List, SenderPid ) when N > 0 ->
                Mapped ->
                        collect( N - 1, [ Mapped | List ], SenderPid )

And here is results of testing:

1> c(my_pmap).
2> timer:tc( my_pmap, pmap, [ fun(X) -> X*X*X*X end, lists:seq( 1, 10000 ) ] ).
3> timer:tc( lists, map, [ fun(X) -> X*X*X*X end, lists:seq( 1, 10000 ) ] ).   

As you might have seen 0,137804 sec. vs. 0,044136 sec.


share|improve this question
My guess is that your function executes so fast that the advantages of parallelism is outweighed by the overhead of spawning the processes and collecting the answers. Try using fun(X) -> timer:sleep(1), X*X*X*X end as your function and you should see a real difference. –  legoscia Aug 6 '12 at 12:47
@legoscia Oh, really =) Thanks ) –  stemm Aug 6 '12 at 12:55
You can try also to partition in group of elements. That is, each process is in charge of mapping a set of elements instead of just one. –  Diego Sevilla Aug 6 '12 at 22:10
@Diego Sevilla Great idea, thanks! –  stemm Aug 6 '12 at 22:47

1 Answer 1

up vote 3 down vote accepted

The comments are correct. The problem is that spawning processes are cheap but it does have a cost. Multiplying A number three times is very fast and the overhead of spawning a new process kills your performance.

Partitioning the list into fragments and processing each fragment in a separate process will probably be faster. If you know you have 8 cores, you could try to split it in 8 fragments. Things like pmap can be implemented in Erlang, but it is not a strength of Erlang. A system like the Haskell GHC runtime has sparks which is a better tool for fine-grained parallelism like this. Also, multiplying like that is an obvious candidate for either SIMD instructions in SSE or a GPU. Erlang has no solution for this either, but again, GHC has accelerate and repa which are libraries for handling this situation.

On the other hand, you can get a good speedup in Erlang by simply using processes to handle a couple of fragments as hinted. Also note that parallel computation often performs badly at low N (like 10000) because of the communication overhead. You need way larger problems to reap the benefits.

share|improve this answer
@I GIVE CRAP ANSWERS thanks for explanation. I'm not yet a specialist in Erlang, but what about SMP? Isn't it give any improvement in performance on multicore systems? –  stemm Aug 8 '12 at 11:08
No, it won't with 10000 processes. Calculating X * X * X * X is 3 multiplications. Spawning a process means allocating a process structure, populating it, putting it on the run-queue, context switching to it. Carry out the calculation and removing the process context again. You need more work in each process for it to warrant the overhead. –  I GIVE CRAP ANSWERS Aug 8 '12 at 12:53

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