Actually multiplying the matrix with a ones vector using
cublas_gemv() is a very efficient way, unless you are considering write your own kernel by hand.
You can easily profile the mem bandwidth of
cublas_gemv(). It's very close to that of simply reading the whole matrix data once, which can be seen as the theoretical peak performance of matrix row/col summation.
The extra operation "x1.0" won't lead to much performance reduction because:
cublas_gemv() is basically a mem bandwidth bound operation, extra arithmetic instructions won't be the bottleneck;
- FMA instruction further reduce the instruction throughput;
- mem of ones vector is usually much smaller than that of the matrix, and can be easily cache by GPU to reduce to mem bandwidth.
cublas_gemv() also help you deal with the matrix layout problem. It works on row/col-major and arbitrary padding.
I also asked a similar question about this. My experiment shows
cublas_gemv() is better than segmented reduce using
Thrust::reduce_by_key, which is another approach of matrix row summation.