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.

Is it better to use a float instead of an int in CUDA?

Does a float decrease bank conflicts and insure coalescence? (or has it nothing to do with this?)

share|improve this question
    
they have same size, but different purpose –  Anycorn Aug 18 '10 at 5:46

4 Answers 4

Bank conflicts when reading shared memory are all about the amount of data read. So, since int and float are the same size (at least I think they are on all CUDA platforms), there's no difference.

Coalescence usually refers to global memory accesses - and again, this is to do with the number of bytes read, not the datatype.

share|improve this answer

Both int and float are four bytes, so it doesn't make any difference (if you're accessing them both the same way) which you use in terms of coalescing your global memory accesses or bank conflicts on shared memory accesses.

Having said that, you may have better performance with floats since the devices are designed to crunch them as fast as possible, ints are often used for control and indexes etc. and hence have lower performance. Of course it's really more complicated than that - if you had nothing but floats then the integer hardware would sit idle which would be a waste.

share|improve this answer

Bank conflicts and coalescence are all about memory access patterns (whether the threads within a warp all read/write to different locations with uniform stride). Thus, these concerns are independent of data type (float, int, double, etc.)

Note that data type does have an impact on the computation performance. Single precision float is faster than double precision etc. The beefy FPUs in the GPUs generally means that doing calculations in fixed point is unnecessary and may even be detrimental.

share|improve this answer

Take a look at the "Mathematical Functions" section of CUDA Developers Guide. Using device runtime functions (intrinsic functions) may provide better performance for various types. You may perform multiple operations in one operation within less clock cycles.

For some of the functions of SectionC.1,a less accurate, but faster version exists inthe device runtime component; it has the same name prefixed with __ (such as __sinf(x)).. The compiler has an option (-use_fast_math ) that forces each function in Table to compile to its intrinsic counterpart... selectively replace mathematical function calls by calls to intrinsic functions only where it is merited by the performance gains and where changed properties such as reduced accuracy and different special case handling can be tolerated.

  • For example instead of using => use: x/y => __fdividef(x, y); sinf(x) => __sinf(x)

And you may find more methods like x+c*y being performed with one function..

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.