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Employee of NVIDIA Corporation. Opinions expressed on stackoverflow.com are my own.


Mar
3
awarded  Good Answer
Jan
6
answered C++: Long delay on cv::gpu::GpuMat::upload after upgrade to GTX970
Dec
4
revised CUDA exp() expf() and __expf()
Updated with latest link
Nov
19
awarded  Yearling
Oct
27
revised printf inside CUDA __global__ function
added 156 characters in body
Oct
16
reviewed Reject Issue Deploying with Laravel Forge
Oct
16
reviewed Reject iOSPorts Invalid credentials (error code : 49)
Sep
30
awarded  Explainer
Sep
24
awarded  Autobiographer
Sep
18
awarded  Nice Answer
Sep
15
comment MEX cuda code with dynamic parallelism - unable to compile
When you added -fPIC to the second nvcc, did you actually do --compiler-options -fPIC
Sep
3
awarded  Enlightened
Sep
3
awarded  Nice Answer
Aug
5
answered Is it possible to automatically repeat several executions on NVVP?
Jul
31
answered cudaDeviceSynchronize is very slow
Jul
31
comment CUDA Compilation error : Instruction '{atom,red}.shared' requires .target sm_12 or higher
Your example makes no sense, you're passing an int to a float argument, the parameter old is pointless, etc. Also you haven't said what variable you are passing and what the runtime error is. Your example should be sscce.org. Besides that, as @RobertCrovella said you won't be able to do shared memory atomics with a sm_11 GPU.
Jul
30
revised Profile C application with mixed CUDA
added 473 characters in body
Jul
30
comment Profile C application with mixed CUDA
@JoachimPileborg using your example if you halve the time spent in the function you don't halve the percentage, it's not like your application is going to idle for the saved time it will finish earlier! What you're describing is something different (akin in some respects to weak scaling) since you're trying to increase the work in a fixed amount of time, whereas the original question is about doing a fixed amount of work in a reduced amount of time.
Jul
29
revised Profile C application with mixed CUDA
added 148 characters in body
Jul
29
comment Profile C application with mixed CUDA
@JoachimPileborg I don't follow your logic. If you reduce the time spent in one portion of your application, t1opt < t1, (e.g. by parallelisation) and the remainder, t2, remains constant then the percentage time spent in the optimised part will be lower, t1opt/(t1opt+t2) < t1/(t1+t2). Amdahl's Law captures that fairly well.