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I know it sound weird, but here is my scenario:

I need to do a matrix-matrix multiplication (A(n*k)*B(k*n)), but I only needs the diagonal elements to be evaluated for the output matrix. I searched cublas library and didn't find any level 2 or 3 functions that can do that. So, I decided to distribute each row of A and each column of B into CUDA threads. For each thread (idx), I need to calculate the dot product "A[idx,:]*B[:,idx]" and save it as the corresponding diagonal output. Now since this dot product also takes some time, and I wonder whether I could somehow call cublas function here (say cublasSdot) to achieve it.

If I missed some cublas function that can achieve my goal directly (only calculate the diagonal elements for a matrix-matrix multiplication), this question could be discarded.

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2 Answers 2

up vote 6 down vote accepted

Yes it can.

"The language interface and Device Runtime API available in CUDA C/C++ is a subset of the CUDA Runtime API available on the Host. The syntax and semantics of the CUDA Runtime API have been retained on the device in order to facilitate ease of code reuse for API routines that may run in either the host or device environments. A kernel can also call GPU libraries such as CUBLAS directly without needing to return to the CPU." Source

Here you can see and Matrix-Vector Multiplication using cuda and CUBLAS library function cublasSgemv.

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7  
Note that dynamic parallelism, the feature that allows nested kernel calls, is only supported on the Kepler GK110, a chip that is just now being released. The GK110 is only available in the premium priced compute products, with the mid level product being the Tesla K20 at USD 3200. –  Roger Dahl Nov 14 '12 at 2:34
    
So for tesla m2090, which is a fermi gpu, dynamic parallism may not be supported, right? –  Hailiang Zhang Nov 14 '12 at 6:43
    
It's definitively not supported, you may create a different kernel to do that on the GPU –  RSFalcon7 Nov 14 '12 at 10:18

Make sure you are using the device library to call the cublas. You can't use the same library that you used to call it from the host; details about using the cuda device library can be found on cuda toolkit: http://docs.nvidia.com/cuda/cublas/index.html#device-api

Look at the cuda 5 samples under 7_CUDALibraries/ .

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