parfor slower than for

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Qammar Abbas
Qammar Abbas am 20 Sep. 2021
Kommentiert: Qammar Abbas am 21 Sep. 2021
Hi Community members,
I am trying to run a very simple parfor loop and a for loop to compare results. However, to my surprise parfor is almost 100 times slower than for loop. Can anyone please explain this? I intend to run a code with almost 10000000000 iterations and need to decide how to make it fastest. Your suggestions will be very helpful in this regard.
arr=[];
tic
parfor x=1:50
arr(x) = x;
end
toc
Elapsed time is 0.385357 seconds.
arr=[];
tic
for x=1:50
arr(x) = x;
end
toc
Elapsed time is 0.004795 seconds.

Antworten (2)

Raymond Norris
Raymond Norris am 20 Sep. 2021
There are several considerations
  • How many dedicated workers? Most often, more workers, the lower the amount of time.
  • Amount of time to run the unit of work. Does it take more time to send the code then to run the code?
Your example is trivial. If your code really takes 0.005s to run all your sims, then parfor is not needed. Conversely, here's a better trivial example
tic
parfor idx = 1:50
pause(2)
end
toc
  5 Kommentare
Qammar Abbas
Qammar Abbas am 21 Sep. 2021
Though your idea is very good but I cannot do this because my cell arrays a and b are very large and strcat will generate another large array which has to be saved (in AB in your case) and my MATLAB runs out of memory. Therefore, I have opted to use a loop generating each combination explicitly and directly writing it to a file without storing in any variable, just to avoid memory run out error. Any other suggestions will be appreciated.
Qammar Abbas
Qammar Abbas am 21 Sep. 2021
For more details, please see the Actual problem I posted.

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Jan
Jan am 20 Sep. 2021
The main work in you example is the iterative growing of the array. This is a waste of time in sequential and parallel code. Pre-allocate the output properly.
Starting parallel threads must take some time. For such a trivial code, the overhead is expected to be higher than the payload. Compare this with instructing 8 people to say the numbers 1 to 50. It is much faster to do this by your own.
  3 Kommentare
Walter Roberson
Walter Roberson am 20 Sep. 2021
a{x} and b{x} have to be transfered through to the worker. That requires communications time while the worker sends back its iteration number and the controller gathers the data and sends it over, and the worker puts it into the appropriate internal variables. Then you do the strcat() on the worker, which is not much work.
Then you do the fprintf(), which is not much work. You did not use 'W' permissions, so the fprintf() flushes the file after the fprintf(), which requires talking to the operating system which has to talk to the file system, which has to process the flush()
If you were writing much more data, then you would run into problems that the files are all on the same drive, and drive writing is usually most efficient when at two (sometimes four) processes per controller are writing. Not per drive, but rather per controller . The reason is that the memory bandwidth is per controller so you can use up all of the memory bandwidth with just one drive. Two processes allows there to be I/O requests in the queue immediately after one I/O has finished -- and these days a lot of drives are able to re-order I/O requests according to rotational latency requirements.
Steven Lord
Steven Lord am 20 Sep. 2021
There's more information on the poster's actual use case in this other Answers post.

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