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Nov
22
awarded  Popular Question
Aug
27
awarded  Popular Question
Oct
7
comment CUFFT | cannot figure out a simple example
That's it! And as the unitary mode was at the end of the array, it was lost, hence the lose of half the energy. I will improve the presentation next time
Oct
7
accepted CUFFT | cannot figure out a simple example
Oct
6
revised CUFFT | cannot figure out a simple example
added 244 characters in body
Oct
5
comment CUFFT | cannot figure out a simple example
I've just recomputed it in double precision and it works. But I can't explain why, probably something wrong in my memory layout.
Oct
5
revised CUFFT | cannot figure out a simple example
edited body
Oct
5
comment CUFFT | cannot figure out a simple example
Sorry I didn't copy/paste the correct line, in my code the sense of the copy is correct.I update
Oct
5
revised CUFFT | cannot figure out a simple example
added 2 characters in body
Oct
5
revised CUFFT | cannot figure out a simple example
added 11 characters in body
Oct
5
revised CUFFT | cannot figure out a simple example
deleted 1 characters in body
Oct
5
asked CUFFT | cannot figure out a simple example
Oct
2
accepted CUDA | Interest of the number of multiprocessors - confusion with SMs
Oct
1
comment CUDA | Interest of the number of multiprocessors - confusion with SMs
Ok fine, thank you for the clarification!
Sep
30
comment CUDA | Interest of the number of multiprocessors - confusion with SMs
If SMs and the multiprocessor given in the video card properties then why, when it is said that there are only two multiprocessors, am I able to launch many more SMs simultaneously?
Sep
29
asked CUDA | Interest of the number of multiprocessors - confusion with SMs
Jul
29
accepted Understanding cuda heap memory limitations per thread
Jul
29
comment Understanding cuda heap memory limitations per thread
In fact it is for a kind of reduce function. I want a temp array to store the partial sums from the shared blocks, so indeed there could be sync problems between blocks, but a method provided in B.5 of the programming guide is quite robust. But yes, an alloc from host is preferable. I'll think about it.
Jul
29
comment Understanding cuda heap memory limitations per thread
Ok I wasn't used to this test, I'll have a look.
Jul
29
comment Understanding cuda heap memory limitations per thread
I am testing by the return of the printf, and the failure is caused by a cudaerror: unspecified launch failure. I edited the code which is compilable.