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I have three questions to ask

  1. If I create only one block of threads in cuda and execute the parallel program on it then is it possible that more than one processors would be given to single block so that my program get some benefit of multiprocessor platform ? To be more clear, If I use only one block of threads then how many processors will be allocated to it because so far as I know (I might have misunderstood it) one warp is given only single processing element.
  2. can I synchronize the threads of different blocks ? if yes please give some hints to do it.
  3. How to find out warp size ? it is fixed for a particular hardware ?

5 Answers 5

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1 is it possible that more than one processors would be given to single block so that my program get some benefit of multiprocessor platform

Simple answer: No.

The CUDA programming model maps one threadblock to one multiprocessor (SM); the block cannot be split across two or more multiprocessors and, once started, it will not move from one multiprocessor to another.

As you have seen, CUDA provides __syncthreads() to allow threads within a block to synchronise. This is a very low cost operation, and that's partly because all the threads within a block are in close proximity (on the same SM). If they were allowed to split then this would no longer be possible. In addition, threads within a block can cooperate by sharing data in the shared memory; the shared memory is local to a SM and hence splitting the block would break this too.

2 can I synchronize the threads of different blocks ?

Not really no. There are some things you can do, like get the very last block to do something special (see the threadFenceReduction sample in the SDK) but general synchronisation is not really possible. When you launch a grid, you have no control over the scheduling of the blocks onto the multiprocessors, so any attempt to do global synchronisation would risk deadlock.

3 How to find out warp size ? it is fixed for a particular hardware ?

Yes, it is fixed. In fact, for all current CUDA capable devices (both 1.x and 2.0) it is fixed to 32. If you are relying on the warp size then you should ensure forward-compatibility by checking the warp size.

In device code you can just use the special variable warpSize. In host code you can query the warp size for a specific device with:

cudaError_t result;
int deviceID;
struct cudaDeviceProp prop;

result = cudaGetDevice(&deviceID);
if (result != cudaSuccess)
{
    ...
}
result = cudaGetDeviceProperties(&prop, deviceID);
if (result != cudaSuccess)
{
    ...
}

int warpSize = prop.warpSize;
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  • 1
    minor addition: in device level, warpSize is defined, like threadIdx and the rest
    – Anycorn
    May 26, 2010 at 15:46
  • Thanks for the reply. Can u just give a look at the code which I had posted earliar and suggest me something regarding this code to synchronize the blocks. Thanks again for your reply.
    – Vickey
    Jun 6, 2010 at 5:51
0
  1. As of cuda 2.3 one processor per thread block. It might be different in cuda 3/Fermi processors, I do not remember

  2. not really but... (depending on your requirements you may find workaround) read this post CUDA: synchronizing threads

3
  • 1. it means I'll not get any benefit if I use only one block since only one processor is assigned to one block ? 2. I saw the post, but I need to synchronize threads across blocks 3. also I need to update a global array. Update means insert and delete elements
    – Vickey
    May 23, 2010 at 21:16
  • @Vic 1-basically no benefit. 2-that post mentions thread fence operation which may provide some benefit. 3-not sure what you ask
    – Anycorn
    May 23, 2010 at 22:44
  • @Vickey it may be worth posting more details about your specific problem (either in a new question here or on the nvidia forums) since it may be possible to avoid the need for global synchronisation.
    – Tom
    May 26, 2010 at 15:33
0

#3. You can query SIMDWidth using cuDeviceGetProperties - see doc

2
  • there is predefined variable warpSize you can use
    – Anycorn
    May 24, 2010 at 16:38
  • Thanks for your post. I'm grateful to you. please see the post again. I have pasted some code. Please see this code and express your view.
    – Vickey
    May 24, 2010 at 16:41
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To synchronize threads across multiple blocks (at least as far as memory updates are concerned), you can use the new __threadfence_system() call, which is only available on Fermi devices (Compute Capability 2.0 and better). This function is described in the CUDA Programming guide for CUDA 3.0.

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  • Note that __threadfence_system() is not the same as synchronisation. A threadfence merely ensures that all memory operations from the thread are visible to the system. It does not synchronise, i.e. it does not cause threads to wait at this point until all threads within the grid have reach this point.
    – Tom
    May 26, 2010 at 15:30
-1

Can I synchronize threads of different block with following approach. Please do tell me if there is any problem in this approch (I think there will be some but since I'm not much experienced in cuda I might have not considered some facts)

__global__ void sync_func(int *glob_var){ int i = 0 ; //local variable to each thread int total_threads = blockDim.x *threadDim.x while(*glob_var != total_threads){ if(i == 0){ atomicAdd(int *glob_var, 1); i = 1; } }

execute the code which is to be executed at the same time by all threads; }

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  • I have done a minor change which was a bug by mistak. Now as I understood, atomicAdd() adds a value atomically in global memory or shared memory for blocks. Since in this code all the blocks will be in for loop till the last block executes the loop for once(the last block may be somewaht lagging) and hence it shoud provide synchronization(almost, since last block will need to execute . Can u please explain in some more detail that why this code will not work.
    – Vickey
    Jun 5, 2010 at 12:32
  • Firstly, you should ask this as a separate question rather than post a new question as an answer to your first question! No one gets points for answering via comments. Secondly, there is no such variable as threadDim.x. Thirdly aaa correctly said that you have no control over the scheduling. For example if total_threads exceeds the number that can be executed on a GPU then it will be impossible for glob_var to ever reach total_threads and you will have deadlock.
    – Tom
    Jun 6, 2010 at 14:41

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