Robert Crovella

Jan 12, 2023 21:10
This particular item in the programming guide, however, would need a bug to get it looked at.
Jan 12, 2023 21:10
The section of the programming guide that contains that code snippet seems to be mostly unchanged from CUDA 8.0 programming guide, which has cc2.x devices in view. The L1 design definitely went through changes from cc2.x->cc3.x->cc5.x, then (from my perspective, in this area) there has been less change. In my view, filing issues against the github samples should be equivalent to filing bugs; I'll bring your concern to the attention of the marketing manager who covers cuda samples.
Jan 12, 2023 20:46
if you want an "authoritative answer" my suggestion is to file a bug, requesting a clarification of the docs
Jan 12, 2023 20:46
my sense is that the volatile decorator is probably not needed, given today's definition of CUDA and CUDA GPUs. This is predicated on a few things: 1. I don't remember and don't wish to test the exact behavior of the L1 in Fermi and Kepler GPUs. 2. GPU designers in the future don't decide to create a GPU that has a write-back L1 or L1 design that would allow for a cacheline to be updated on a write. 3. The aforementioned calculateTotalSum isn't doing anything unusual like using warp-synchronous reduction. There are a few other possible caveats perhaps, that are a bit more obscure.
Jan 12, 2023 20:46
I don't know for certain that it is needed. I said I wouldn't spend time on this without knowing what is in there. I never said the documentation is perfect. The existence of this question (and probably many others) seems to make that self-evident. Anyone who wants to see an improvement in the documentation can file a bug. Regarding volatile, given the uncertainties that may exist, including the volatile decorator certainly seems to be the conservative approach
Jan 12, 2023 20:46
I said calculateTotalSum not calculatePartialSum. calculateTotalSum apparently does its work entirely with result in global memory. So what it is doing matters.
Jan 12, 2023 20:46
I personally would not even try to study the question without knowing what calculateTotalSum looks like. I also note this statement immediately prior to that code snippet in the programming guide: "In the code sample below, the visibility of memory operations on the result variable is ensured by declaring it as volatile... "
Jan 12, 2023 20:46
In what way does the linked sample declare any global buffer as volatile ?
 
Dec 19, 2022 03:16
You should provide a short, complete test case, not via an external link. You should indicate the GPU you are running on, the CUDA version you are using, the OS, and the exact compile command line you used to compile the code. Since timing is involved, you should clearly have the timing methodology visible in the code, or if you are using a profiler, then show the console session from running the profiler on your code. For this particular case I would also suggest including a complete sample run/program output. My guess is you are compiling this code with -G.
2
 
Sep 9, 2022 04:16
You can replace const int y = corr_indexes[i] % n_attrs; with const int y = corr_indexes[i] - n_attrs*x;
 
Jul 16, 2020 04:13
Good luck. Bye. Sorry.
Jul 16, 2020 04:13
It is basically a CMAKE/CUDA question, no longer a CUDA question. Your CUDA 11.0 install will work properly with Ubuntu 20.04, it's just that we're having trouble getting CMAKE to find it.
Jul 16, 2020 04:13
OK. I understand why you are getting that output. The symbolic link method won't work. It would be necessary to find out how to get CMAKE 3.16 to use your desired nvcc install, and I don't have the means to do that in the next few minutes. Feel free to post a question that is updated to where you are at now.
Jul 16, 2020 04:11
what is the output
Jul 16, 2020 04:10
cmake .. -DUSE_CUDA=ON -DR_LIB=ON
Jul 16, 2020 04:09
sudo ln -s -T /usr/local/cuda-11.0/bin/nvcc /usr/bin/nvcc
Jul 16, 2020 04:08
ok, one more thing to try, then I give up.
Jul 16, 2020 04:06
let's try this:
export CUDACXX=/usr/local/cuda-11.0/bin
cmake .. -DUSE_CUDA=ON -DR_LIB=ON
Jul 16, 2020 04:05
which nvcc
Jul 16, 2020 04:05
what is the output of:
Jul 16, 2020 04:03
let's try this:
export CUDACXX=nvcc
cmake .. -DUSE_CUDA=ON -DR_LIB=ON
Jul 16, 2020 04:01
cmake .. -DUSE_CUDA=ON -DR_LIB=ON
Jul 16, 2020 04:01
export CUDACXX=/usr/local/cuda-11.0/bin/nvcc
Jul 16, 2020 03:59
let's try this:
Jul 16, 2020 03:58
I don't think it could be the same. Let's take a look at the output
Jul 16, 2020 03:57
cmake .. -DUSE_CUDA=ON -DR_LIB=ON -DCUDAToolkit_ROOT=/usr/local/cuda-11.0/bin
Jul 16, 2020 03:57
then redo this:
Jul 16, 2020 03:57
sudo mv /usr/bin/nvcc /usr/bin/nvcc_old
Jul 16, 2020 03:57
let's do this:
Jul 16, 2020 03:49
crap the environment variable naming scheme in CMAKE changed between 3.16 the version you are using, and 3.18 the latest version. hang on.
Jul 16, 2020 03:48
(add the bin at the end)
Jul 16, 2020 03:47
cmake .. -DUSE_CUDA=ON -DR_LIB=ON -DCUDAToolkit_ROOT=/usr/local/cuda-11.0/bin
Jul 16, 2020 03:47
then try this:
Jul 16, 2020 03:47
same error?
Jul 16, 2020 03:47
cmake .. -DUSE_CUDA=ON -DR_LIB=ON -DCUDAToolkit_ROOT=/usr/local/cuda-11.0/
Jul 16, 2020 03:46
try this:
Jul 16, 2020 03:46
nvcc
Jul 16, 2020 03:46
cmake is not using the correct compiler
Jul 16, 2020 03:44
(whatever you did before)
Jul 16, 2020 03:44
cmake .. -DUSE_CUDA=ON -DR_LIB=ON
Jul 16, 2020 03:44
or
Jul 16, 2020 03:44
once you are in that directory, you can do: cmake .. -DUSE_CUDA=ON
Jul 16, 2020 03:43
once you are in that directory, you can do:
Jul 16, 2020 03:43
cd ~/xgboost/build
Jul 16, 2020 03:43
so type:
Jul 16, 2020 03:43
So you were in ~/xgboost/build
Jul 16, 2020 03:43
bill@magicMaker:~/xgboost/build$ cmake .. -DUSE_CUDA=ON
Jul 16, 2020 03:42
You need to do that in the same directory you were in before when you did that, specifically this one:
Jul 16, 2020 03:41
OK it's working now. Your CMAKE should pick up, find, and use CUDA 11, and CUDA 11 should not complain about your GNU version.
Jul 16, 2020 03:40
and tell me what it says