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As a quick backdrop for my question, with x86, it is guaranteed that a individual memory access that is 4-byte aligned for a 32-bit word, or 8-byte aligned for a 64-bit word will be atomic. Thus you can create "benign data-races", where at least one thread writes to a memory address with another thread reading from the same address, and the reader will not see the results of an incomplete write. Either the reading thread will see the entire effect of the write or it won't.

What are the requirements in the CUDA programming model to create these types of "benign" data-race conditions? For instance, if two separate threads write a 64-bit value to the same global memory address from two separate, but concurrently running blocks on two different SM's, will each atomically write their entire 64-bit values, with a third observer only reading back a fully updated 64-bit memory block? Or would the writes take place with a smaller granularity, and thus a third observer would only see a partial write if it attempted to read back from the memory address after the two threads had simultaneously written to it?

I understand that race-conditions are normally something to avoid, but if the requirements for memory ordering are relaxed, then there is no need to explicitly use atomic read/write functions. That being said, this is predicated on what the atomicity of an individual read/write is (i.e., how many bits, and on what alignment). Does anyone know where I can find this information?

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Update: @Heatsink has kindly notified me that it is indeed possible to force some memory coherency by using the __threadfence() function.

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Unless atomic functions are used, CUDA specifically does not guarantee any coherency when accessing global memory that has been updated by any thread scheduled in the same kernel call. It is only safe to read memory that was written by a previous kernel or memory copy.

So, not only can you not assume anything about memory access patterns -- you can't even know when an update done to global memory by one thread may become visible to another thread, or indeed, if will become visible at all.

Of course, given the way the hardware is implemented in a given architecture, you may be able to find a way to implement some type of non-blocking synchronization between threads. However, I sincerely doubt that it would be possible to do that safely between blocks. What the threads in one block see will depend on which SM the block runs, which blocks have run before, and where the updates done by those blocks currently are in the cache hierarchy.

When considering threads within a block, the discussion is moot, as threads in a block can communicate with shared memory, the behavior of which is carefully specified by CUDA.

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I'm not so much interested in inter-thread synchronization as I am in assuring that given a "non-atomic" write by multiple threads, what is the maximum number of bytes that can be written by a thread such that the write is consistent and not a partial write. For instance, if I run Kernel A, and two threads from that kernel in different blocks and SM's write to global address B, what is the maximum number of bytes that can be written to by the threads such that a viewer of address B after the kernel has completed sees a complete write, and not a partial write. –  Jason Jun 29 '12 at 20:51
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I understand your question now. Sorry for not answering your actual question in my reply. The GPU will serve the memory requests for an entire warp simultaneously. It will put together as many separate 32-, 64- and 128 bit transactions that are necessary to serve all 32 threads. For simultaneous writes by different warps, my guess is that the end results depends on how the GPU decides to string the transactions together to serve that particular warp at that particular time. There's some information about this in the CUDA C Programming Guide, chapter 5.3.2.1 and 5.3.2.2. –  Roger Dahl Jun 30 '12 at 0:27
    
@RogerDahl CUDA's documentation is not as clear as it could be, but it does provide some coherency guarantees. The __threadfence function makes a thread's memory accesses visible to all threads in the device. The data has to be marked volatile to be read properly. –  Heatsink Jun 30 '12 at 0:40
    
@Heatsink: Thank you. I will update the answer. –  Roger Dahl Jun 30 '12 at 0:58
    
@RogerDahl Thanks for the link to the C Programming Guide ... I'll take a look through that to see what I can find. –  Jason Jun 30 '12 at 5:54

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