François Laenen

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seen Jun 29 at 22:46

Jul
29
revised Understanding cuda heap memory limitations per thread
added 53 characters in body
Jul
29
revised Understanding cuda heap memory limitations per thread
added 346 characters in body
Jul
29
asked Understanding cuda heap memory limitations per thread
Jul
29
comment cudaMemGetInfo not constant?
Ok. I will post another question about heap size for which I cannot find answer.
Jul
29
comment cudaMemGetInfo not constant?
Ok I get it better now. So for example, a pointer returned by cudaMalloc from host won't be usable by another context, because it will be loaded in the VAS of the first context?
Jul
29
accepted CUDA | Cannot get high throughput using hostalloc
Jul
29
answered CUDA | Cannot get high throughput using hostalloc
Jul
29
accepted CUDA Reduction - atomic vs single thread summation
Jul
29
comment cudaMemGetInfo not constant?
Ok thanks! I still have difficulties with the concept of cuda context, but I'm reading the documentation.
Jul
29
accepted cudaMemGetInfo not constant?
Jul
29
accepted Netcdf C++| How to write a record for single variables?
Jul
29
asked cudaMemGetInfo not constant?
Jul
24
comment CUDA Reduction - atomic vs single thread summation
A little add also: in fact, I searched for a solution without cutting my kernel in two, because the reduction will be used among other operations, in a device function. But there is neither syncing at the end of a device function. I found a nice way though, which is working with 10^5 elements: put a __threadfence() in the if block when retrieving shared memory into global memory, so that each thread 0 of each block will ensure that all threads are able to see its writing. And you can add smth more robust. In fact there is an example in the cuda prog. guide, section B5.
Jul
24
awarded  Commentator
Jul
24
comment CUDA Reduction - atomic vs single thread summation
Note also that atomic is NOT a safe way to ensure syncing between blocks, especially as your number of blocks increase. When I try with 10^5 elements, 512 threads per bloc hence 196 blocks, I get the "nan" result. It just helps to slow down the summation processes, letting the time to the other threads from the other blocks to write their results, but this is definitely not a neat way to cope with it. Another kernel is better
Jul
24
comment CUDA Reduction - atomic vs single thread summation
Ok, sad... Using another kernel works fine too, enforcing device synchronization. Thank you for the explanation!
Jul
24
comment CUDA Reduction - atomic vs single thread summation
Ok I think I got it! The global array will not necessarily been written when entering the loop because all blocks won't have been synchronized. So what is the command for a "global" syncthread?
Jul
24
comment CUDA Reduction - atomic vs single thread summation
Indeed when I add a __syncthreads() inside the for loop, the simple sum is working! But I don't get it. I'm doing the sum with only one single thread on a global array, so why should I care about syncing in the for loop?
Jul
24
revised CUDA Reduction - atomic vs single thread summation
added 20 characters in body
Jul
24
asked CUDA Reduction - atomic vs single thread summation