According to this question and reference NVIDIA CUDA Programming Guide the realloc
function is not implemented:
The CUDA in-kernel
malloc()
function allocates at leastsize
bytes from the device heap and returns a pointer to the allocated memory or NULL if insufficient memory exists to fulfill the request. The returned pointer is guaranteed to be aligned to a 16-byte boundary.The CUDA in-kernel
free()
function deallocates the memory pointed to byptr
, which must have been returned by a previous call tomalloc()
. Ifptr
is NULL, the call tofree()
is ignored. Repeated calls tofree()
with the sameptr
has undefined behavior.
I am currectly stuck with some portion of GMP library (or more strictly my attempt to port it on CUDA), which relies on this functionaliy:
__host__ __device__ static void * // generate this function for both CPU and GPU
gmp_default_realloc (void *old, size_t old_size, size_t new_size)
{
mp_ptr p;
#if __CUDA_ARCH__ // this directive separates device and host code
/* ? */
#else
p = (mp_ptr) realloc (old, new_size); /* host code has realloc from glibc */
#endif
if (!p)
gmp_die("gmp_default_realoc: Virtual memory exhausted.");
return p;
}
Essentially I can just simply call malloc
with new_size
, then call memcpy
(or maybe memmove
), then free
previous block, but this requires obligatory moving of data (large arrays), which I would like to avoid.
Is there any effective efficient way to implement (standard C or C++) realloc
function (i.e. inside kernel) ? Let's say that I have some large array of dynamically allocated data (already allocated by malloc
), then in some other place realloc
is invoked in order to request some larger amount of memory for that block. In short I would like to avoid copying whole data array into new location and I ask specifically how to do it (of course if it's possible at all).
I am not especially familiar with PTX ISA or underlying implementation of in-kernel heap functions, but maybe it's worth a look into that direction ?
realloc
will copy data in some cases. If your question is how do I implementrealloc
(anywhere) without a data copy, for the general case, I don't think it can be done. What is your question, exactly? The word effective doesn't really tell me. Stated another way, your question title is this: "Implementing realloc in CUDA without moving data" I would ask Can you do that on the host? Becauserealloc
doesn't guarantee that.unsigned long
objects), thenrealloc
is used to obtain more memory. It's simply the case for artibratry precision numbers, where one cannot determine how much memory is needed. I know that C99/C11 standards do not guarantee that data is preserved, but generally it's mostly the case.realloc
will often have to do a data copy. I think this claim is doubtful: "I know that C99/C11 standards do not guarantee that data is preserved, but generally it's mostly the case". Even if it's true, not all cases can be handled (even in host code) without the need for a data copy in some cases. Therefore I doubt your question is possible (implement realloc without a data copy) whether you are talking host or GPU.malloc
,calloc
orrealloc
have to be contiguous and nothing really guarantess that larger block will "fit" into available free space (this affects both host and device memory in the same way).