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Can I to use OpenMP on a machine with a single core cpu? There will be some improvement in the performance?

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The parallelization won't really help performance, but it could improve overall utilization. – Anirudh Ramanathan Nov 4 '12 at 23:59
might actually make your code slower – pyCthon Nov 5 '12 at 0:13
It will almost surely make your code slower. – R.. Nov 5 '12 at 1:26
It makes no sense from performance perspective for compute-bound codes but it might make sense from a developer's perspective to run OpenMP code on a single-core CPU. – Hristo Iliev Nov 5 '12 at 10:11
My idea is to run a loop for in parallel. Will this do? – Javier Ramírez Nov 5 '12 at 16:33

Yes, you can. You can annotate the code with the OpenMP directives and still run the application in a sequential manner, you just to need to compile and run the application without the OpenMP flag (e.g fopenmp).

You can use openMP on a single core and still have improvement in performance, if you are running a multithreaded program in single-core CPU with hyperthreading.

There are memory bound algorithms that take advantage of hyper-threading because during execution some threads still waiting for memory and others continue execution. In rare cases (this happen to me) the gains by hyper-threading can came from a improvement on branch prediction.

Nevertheless, most than not using OpenMP in a single core will slow down your application even if you are using a single thread, because of the overhead intrinsic to the openMP directives. Furthermore, threads are "fighting" for the same resources.

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