I wrote my own cudaMelloc
as follows, which I plan to apply in tensorflow serving (GPU) to trace the cudaMelloc
calls via the LD_PRELOAD
mechanism (could be used to limit the GPU usage for each tf serving container with proper modification as well).
typedef cudaError_t (*cu_malloc)(void **, size_t);
/* cudaMalloc wrapper function */
cudaError_t cudaMalloc(void **devPtr, size_t size)
{
//cudaError_t (*cu_malloc)(void **devPtr, size_t size);
cu_malloc real_cu_malloc = NULL;
char *error;
real_cu_malloc = (cu_malloc)dlsym(RTLD_NEXT, "cudaMalloc");
if ((error = dlerror()) != NULL) {
fputs(error, stderr);
exit(1);
}
cudaError_t res = real_cu_malloc(devPtr, size);
printf("cudaMalloc(%d) = %p\n", (int)size, devPtr);
return res;
}
I compile the above code into a dynamic lib file using the following command:
nvcc --compiler-options "-DRUNTIME -shared -fpic" --cudart=shared -o libmycudaMalloc.so mycudaMalloc.cu -ldl
When applied to a vector_add program compiled with command nvcc -g --cudart=shared -o vector_add_dynamic vector_add.cu
, it works well:
root@ubuntu:~# LD_PRELOAD=./libmycudaMalloc.so ./vector_add_dynamic
cudaMalloc(800000) = 0x7ffe22ce1580
cudaMalloc(800000) = 0x7ffe22ce1588
cudaMalloc(800000) = 0x7ffe22ce1590
But when I apply it to tensorflow serving using the following command, the cudaMelloc
calls do not refer to the dynamic lib I wrote.
root@ubuntu:~# LD_PRELOAD=/root/libmycudaMalloc.so ./tensorflow_model_server --port=8500 --rest_api_port=8501 --model_name=resnet --model_base_path=/models/resnet
So here's my questions:
Is it because that tensorflow-serving is built in a fully static manner, such that tf-serving refers to the
libcudart_static.a
instead oflibcudart.so
?If so, how could I build tf-serving to enable dynamic linking?