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can anyone describe me the difference between __global__ and __device__ ?
when I should use from __device__ and when use __global__ ?

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6 Answers 6

up vote 24 down vote accepted

Global functions are also called "kernels" - it's the functions that you may call from the host side using CUDA kernel call semantics (<<<...>>>)

Device functions can only be called from other device or global functions. __device__ functions cannot be called from host code.

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2  
Just as an addendum, __global__ functions can also be called from the device using CUDA kernel semantics (<<<...>>>) if you are using dynamic parallelism - that requires CUDA 5.0 and compute capability 3.5 or higher. –  Tom Sep 11 '12 at 17:44

Differences between __device__ and __global__ functions are:

__device__ functions can be called only from the device, and it is executed only in the device.

__global__ functions can be called from the host, and it is executed in the device.

Therefore, you call __device__ functions from kernels functions, and you don't have to set the kernel settings. You can also "overload" a function, e.g : you can declare void foo(void) and __device__ foo (void), then one is executed on the host and can only be called from a host function. The other is executed on the device and can only be called from a device or kernel function.

You can also visit the following link: http://code.google.com/p/stanford-cs193g-sp2010/wiki/TutorialDeviceFunctions, it was useful for me.

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__global__ is for cuda kernels, functions that are callable from the host directly. __device__ functions can be called from __global__ and __device__ functions but not from host.

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I will explain it with an example:

main()
{
    // Your main function. Executed by CPU
}

__global__ void calledFromCpuForGPU(...)
{
  //This function is called by CPU and suppose to be executed on GPU
}

__device__ void calledFromGPUforGPU(...)
{
  // This function is called by GPU and suppose to be executed on GPU
}

i.e. when we want a host(CPU) function to call a device(GPU) function, then 'global' is used. Read this: "https://code.google.com/p/stanford-cs193g-sp2010/wiki/TutorialGlobalFunctions"

And when we want a device(GPU) function (rather kernel) to call another kernel function we use 'device'. Read this "https://code.google.com/p/stanford-cs193g-sp2010/wiki/TutorialDeviceFunctions"

This should be enough to understand the difference.

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global function is the definition of kernel. Whenever it is called from CPU, that kernel is launched on the GPU. However each thread executing that kernel, might require to execute some code again and again, for example swapping of two integers. Thus, here we can write a helper function, just like we do in a c program. And for threads executing on GPU, a helper function should be declared as device. Thus, a device function is called from threads of a kernel - one instance for one thread . While, a global function is called from CPU thread.

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I am recording some unfounded speculations here for the time being (I will substantiate these later when I come across some authoritative source)...

  1. __device__ functions can have a return type other than void but __global__ functions must always return void.

  2. __global__ functions can be called from within other kernels running on the GPU to launch additional GPU threads (as part of CUDA dynamic parallelism model (aka CNP)) while __device__ functions run on the same thread as the calling kernel.

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