As you are discovering,
cudaMemset works like the C standard library
memset. Quoting from the documentation:
cudaError_t cudaMemset ( void * devPtr,
Fills the first count bytes of the memory area pointed to by devPtr
with the constant byte value value.
value is a byte value. If you do something like:
const int value = 5;
what you are asking to happen is that each byte of
devPtr will be set to 5. If
devPtr was a an array of integers, the result would be each integer word would have the value 84215045. This is probably not what you had in mind.
Using the runtime API, what you could do is write your own generic kernel to do this. It could be as simple as
__global__ void initKernel(T * devPtr, const T val, const size_t nwords)
int tidx = threadIdx.x + blockDim.x * blockIdx.x;
int stride = blockDim.x * gridDim.x;
for(; tidx < nwords; tidx += stride)
devPtr[tidx] = val;
(standard disclaimer: written in browser, never compiled, never tested, use at own risk).
Just instantiate the template for the types you need and call it with a suitable grid and block size, paying attention to the last argument now being a word count, not a byte count as in
cudaMemset. This isn't really any different to what
cudaMemset does anyway, using that API call results in a kernel launch which is do too different to what I posted above.
Alternatively, if you can use the driver API, there is
cuMemsetD32, which do the same thing, but for half and full 32 bit word types. If you need to do set 64 bit or larger types (so doubles or vector types), your best option is to use your own kernel.