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I'm a bit of a CUDA newbie so was just wondering if someone could help me out with a problem I'm having.

I'm trying to profile my code but it's just stopped working on my latest change to the codebase - I'm using a GeForce GT 330 GPU with compute capability 1.0 and CUDA 4.2. My __global__ function that's being called is named smooth which you will see below.

Everything was working fine up until I decided to pin my host data in my code.

To get the command line profiler set up I'm executing the following lines:

export CUDA_PROFILE=1
export CUDA_PROFILE_CONFIG=config.txt
export CUDA_PROFILE_LOG=profile.dat

And my config file looks like this:

branch
divergent_branch
gld_request
gst_request

However when I run my program my output file profile.dat looks like this with no results below:

# CUDA_PROFILE_LOG_VERSION 2.0
# CUDA_DEVICE 0 GeForce GT 330
# CUDA_CONTEXT 1
# TIMESTAMPFACTOR fffff69076ffa6f0
method,gputime,cputime,occupancy,branch,divergent_branch,gld_request,gst_request

Interestingly if I change CUDA_PROFILE_LOG to CUDA_PROFILE_LOG=profile%d.datit produces two files: profile0.dat:

# CUDA_PROFILE_LOG_VERSION 2.0
# CUDA_DEVICE 0 GeForce GT 330
# CUDA_CONTEXT 1
# TIMESTAMPFACTOR fffff690775c7d78
method,gputime,cputime,occupancy,branch,divergent_branch,gld_request,gst_request

(tail) profile1.dat:

method=[ smooth ] gputime=[ 277.216 ] cputime=[ 4.000 ] occupancy=[ 0.375 ] 
method=[ smooth ] gputime=[ 145.856 ] cputime=[ 4.000 ] occupancy=[ 0.125 ] 
method=[ smooth ] gputime=[ 2098.944 ] cputime=[ 3.000 ] occupancy=[ 0.500 ] 
method=[ smooth ] gputime=[ 2104.288 ] cputime=[ 5.000 ] occupancy=[ 0.500 ] 
method=[ smooth ] gputime=[ 2109.696 ] cputime=[ 4.000 ] occupancy=[ 0.500 ] 
method=[ smooth ] gputime=[ 1816.224 ] cputime=[ 5.000 ] occupancy=[ 0.500 ] 
method=[ smooth ] gputime=[ 1180.576 ] cputime=[ 3.000 ] occupancy=[ 0.500 ] 
method=[ smooth ] gputime=[ 274.656 ] cputime=[ 4.000 ] occupancy=[ 0.375 ] 
method=[ smooth ] gputime=[ 145.504 ] cputime=[ 4.000 ] occupancy=[ 0.125 ] 
method=[ memcpyDtoH ] gputime=[ 30.816 ] cputime=[ 84.000 ] 

This has some results but as you can see the counters I've specified in the config do not appear.

I've had a look at some other questions and can safely say that my kernel does get called and I don't exit via a getchar call. If I check out the previous version of my code, it profiles exactly as I'd like. I'm just wondering if anyone has any suggestions to get this to work?

I'm happy to share more details if needed.

EDIT I've narrowed it down to commenting out and in the line:

cudaMallocHost((void **)&a_pinned, a_bytes);

where a_pinned is of type float*, size_t a_bytes = sizeof(float) * a.size(); and a is a std::vector<float>

The strange thing is I'm not even using a_pinned when copying to the device, I'm still using vector a here.

share|improve this question
    
CUDA_PROFILE_LOG=profile%d.dat is the right way to go as it looks like we are dealing with multiple contexts. also you can try and debug using %p to get output on process basis. –  Travis G Mar 3 '13 at 20:35
1  
Are you sure all those signals are supported on CC 1.0? Try dropping gld* to simplify. Also make sure you call cudaDeviceReset() on application exit/cleanup, since the Cuda tools rely on this to flush data. –  harrism Mar 4 '13 at 2:31
    
For a GT330, you should be compiling for compute capability 1.2, but I think the underlying problem is what @harrism said - not all profile counters are supported on all architectures (gld_request and gst_request should be Fermi/Kepler only IIRC). –  talonmies Mar 4 '13 at 7:03
    
@talonmies if you look here (developer.nvidia.com/cuda-gpus) it says 330* is 1.0 and 330M is 1.2. I also found this svn.ece.lsu.edu/svn/gp/cuda/stream/.cuda-profile-config which says that gld_request is available for all CC's? Unfortunately I tried making a simple example of my code to post on here but it worked so it might be more code specific than I first thought. I'll investigate and post further results. –  Sarah Tattersall Mar 4 '13 at 9:31

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