Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

For using all the cores of a quad core processor what do I need to change in my code is it about adding support of multi threading or is it which is taken care by OS itself. I am having FreeBSD and language I am using is C++. I want to give complete CPU cycles to my application at least 90%.

share|improve this question
9  
Be warned. Threading is a headache and adding threading support to an existing application is even worse. –  Yacoby Mar 30 '10 at 13:20
7  
Often, the easiest way to utilise a 4-core CPU is to run 4 copies of your program. If this is nontrivial due to your datastructures, chances are all thread solutions suggested will also be hard. –  MSalters Mar 30 '10 at 13:28
1  
You can use actor-based concurrency without (programmer-visible) shared state to eliminate much of the headaches attached to multi-threaded programming, but this only works if your architecture can be modelled that way. –  JUST MY correct OPINION Mar 30 '10 at 14:01

7 Answers 7

You need some form of parallelism. Multi-threading or multi-processing would be fine.

Usually, multiple threads are easier to handle (since they can access shared data) than multiple processes. However, usually, multiple threads are harder to handle (since they access shared data) than multiple processes. And, yes, I wrote this deliberately.

If you have a SIMD scenario, Ninefingers' suggestion to look at OpenMP is also very good. (If you don't know what SIMD means, see Ninefingers' helpful comment below.)

share|improve this answer
    
Was the self-contradiction deliberate? I'd agree, there are advantages/disadvantages to both fork() and threading. –  Ninefingers Mar 30 '10 at 13:30
1  
I thought so. +1. –  Ninefingers Mar 30 '10 at 13:33
1  
+1 for the self-contradiction :-) –  Sebastian Mar 30 '10 at 14:14
1  
SIMD = Single Instruction, Multiple Data. Doing the same thing over multiple data items, basically, like, say, multiplying vectors. –  Ninefingers Mar 30 '10 at 14:31
    
@Ninefingers: Thanks! –  sbi Mar 30 '10 at 20:22

For multi-threaded applications in C++ may I suggest Boost.Thread which should help you access the full potential of your quad-core machine.

As for changing your code, you might want to consider making things as immutable as possible. State transitions between threads are much more difficult to debug. There a plethora of things that could potentially happen in unexpected ways. See this SO thread.

share|improve this answer

Another option not mentioned here, threading aside, is the use of OpenMP available via the -fopenmp and the libgomp library, both of which I have installed on my FreeBSD 8 system.

These give you #pragma directives to parallelise certain loops, while statements etc i.e. the bits you can parallelise. It takes care of threading and cpu association for you. Note it is a general solution and therefore might not be the optimum way to parallelise, but it will allow you to parallelise certain routines.

Take a look at this: https://computing.llnl.gov/tutorials/openMP/

As for using threads/processes themselves, certain routines and ways of working lend themselves to it. Can you break tasks out into such a way? Does it make sense to fork() your process or create a thread? If so, do so, but if not, don't try to force your application to be multi-threaded just because. An example I usually give is the greatest common divisor algorithm - it relies on the step before all the time in the traditional implementation therefore is difficult to make parallel.

Also note it is well known that for certain algorithms, parallelisation is actually slower for small values of whatever you are doing in parallel, because although the jobs complete more quickly, the associated time cost of forking and joining (be that threads or processes) actually pushes the time above that of a serial implementation.

share|improve this answer

I think your only option is to run several threads. If your application is single-threaded, then it will only run on one of the cores (at a time), but if you have more threads, they can run simultaneously.

share|improve this answer
1  
Another option is, as mentioned, run multiple copies of the same program. Depending on the nature of the problem, this may or may not be easy (see en.wikipedia.org/wiki/Embarrassingly_parallel ). –  KeithB Mar 30 '10 at 18:54

I want to give complete CPU cycles to my application at least 90%.

Why? Your chip's not hot enough?

Seriously, it takes world experts dozens if not hundreds of hours to parallelize and load-balance an application so that it uses 90% of all four cores. Your CPU is already paid for and it costs the same whether you use it or not. (Actually, it costs slightly less to run, electrically speaking, if you don't use it.) How much is your time worth? How many hours are you willing to invest in order to make more effective use of a resource that may have cost you $300 and is probably sitting idle most of the time anyway?

It's possible to get speedups through parallelism, but it's expensive in human time. You need a good reason to justify it. (Learning how is a good enough reason.)

All the good books I know on parallel programming are for languages other than C++, and for good reason. If you want interesting stuff on parallelism check out Implicit Parallel Programmin in pH or Concurrent Programming in ML or the Fortress Project.

share|improve this answer
    
Nobody reading this answer will be surprised by my answer to "How are you taking advantage of multicore" stackoverflow.com/questions/363341/… :-) –  Norman Ramsey Mar 31 '10 at 1:15

You need to add support to your application for parallelism through the use of Threading.

Once you have support for parallelism, it's up to the OS to assign your threads to CPU cores.

share|improve this answer

The first thing I think you should look at is whether your application and its algorithms are suited to be executed in parellel (or possibly as a set of serial tasks that can be processed independently). If this is not the case, it will be difficult to multithread it or break it up into parallel processes, and you may need to look into modifying the way it works.

Once you have established that you will be able to benefit from parallel processing you have the option to either use several processes or threads. The choice depends a lot on the nature of your application and how independent the parallel processes can be. It is easier to coordinate and share data between threads since they are in the same process, but also quite a bit more challenging to develop and debug.

Boost.Thread is a good library if you decide to go down the multi-threaded route.

share|improve this answer

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

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