3

My goal is to take advantage of cache memory in my application and searching for online examples shows that using __ldg should be relatively straightforward.

NVIDIA has documentation for GPU optimization (found here: https://www.olcf.ornl.gov/wp-content/uploads/2013/02/GPU_Opt_Fund-CW1.pdf) which provides the straightforward example:

__global__ void kernel ( int *output, int *input)
{
  ...
  output[idx] = __ldg( &input[idx] );
}

However when I try to compile this I get the following error message:

error: identifier "__ldg" is undefined.  

Searching Google for a solution to this error message has been unfortunately unhelpful. Any suggestions what may be wrong with this simple example?
Is there a compiler flag that I am missing?

For reference my device is compute capability 3.5 and I am working with CUDA 5.5.

Thank you.

  • 4
    What is your compile command line? To take advantage of a cc3.5 device, you need to compile for that architecture with -arch=sm_35 or similar. – Robert Crovella Jun 5 '14 at 20:27
  • I'm fairly certain that this was the issue. I was using sample code from nVidia and their makefile calls multiple flags and I thought it would just use the highest capability available, but removing the lower compute capability flags resulted in correct compilation. Thanks. – user3280204 Jun 5 '14 at 23:11
  • @user3280204 if compiling for the correct architecture solved the problem, I believe you should accept the answer given below. – BRabbit27 Aug 7 '14 at 8:12
8

The __ldg() intrinsic is only available on compute capability 3.5 (or newer) architecture.

That means:

  1. It must be run on a compute 3.5 (or newer) GPU
  2. It must be compiled for a compute 3.5 (or newer) GPU
  3. It cannot also be compiled for an older architecture.

That means:

  1. This won't work: nvcc -arch=sm_30 ...
  2. This will work: nvcc -arch=sm_35 ...
  3. This won't work: nvcc -gencode arch=compute30,code=sm_30 -gencode arch=compute_35,code=sm_35 ...
6

For an implementation of __ldg that generalizes to arbitrary types and correctly falls back on compute capability less than 3.5, see the BryanCatanzaro/generics Github project.

Here is a bare bones template:

template<typename T>
__device__ __forceinline__ T ldg(const T* ptr) {
#if __CUDA_ARCH__ >= 350
    return __ldg(ptr);
#else
    return *ptr;
#endif
}

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