0

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:

  1. Is it because that tensorflow-serving is built in a fully static manner, such that tf-serving refers to the libcudart_static.a instead of libcudart.so?

  2. If so, how could I build tf-serving to enable dynamic linking?

1 Answer 1

1

Is it because that tensorflow-serving is built in a fully static manner, such that tf-serving refers to the libcudart_static.a instead of libcudart.so?

It probably isn't built fully-static. You can see whether it is or not by running:

readelf -d tensorflow_model_server | grep NEEDED

But it probably is linked with libcudart_static.a. You can see whether it is or not with:

readelf -Ws tensorflow_model_server | grep ' cudaMalloc$'

If you see unresolved (U) symbol (as you would for the vector_add_dynamic binary), then LD_PRELOAD should work. But you'll probably see a defined (T or t) symbol instead.

If so, how could I build tf-serving to enable dynamic linking?

Sure: it's open-source. All you have to do is figure out how to build it, then how to build it without libcudart_static.a, and then figure out what (if anything) breaks when you do so.

1
  • thx for your reply, I plan to dig into the building process of tf serving
    – flyingrose
    Jun 20, 2021 at 5:26

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.