'radix_sort: failed to get memory buffer' when executing accumarray on gpuArrays of certain size
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Hello,
I'm trying to use accumarray on large gpuArrays, but get the error 'radix_sort: failed to get memory buffer'.
This is a minimal example that gives me the error:
a = randi(intmax, 2^28-2048, 1, 'gpuArray');
b = gpuArray(randi(3, 2^28-2048, 3, 'uint16'));
c = accumarray(b,a);
When I do the same with arrays of size [2^28-2047 1] and [2^28-2047 3] it works.
This is my gpuDevice after creating a and b:
CUDADevice with properties:
Name: 'GeForce GTX 1080 Ti'
Index: 1
ComputeCapability: '6.1'
SupportsDouble: 1
DriverVersion: 10.1000
ToolkitVersion: 9.1000
MaxThreadsPerBlock: 1024
MaxShmemPerBlock: 49152
MaxThreadBlockSize: [1024 1024 64]
MaxGridSize: [2.1475e+09 65535 65535]
SIMDWidth: 32
TotalMemory: 1.1718e+10
AvailableMemory: 7.6692e+09
MultiprocessorCount: 28
ClockRateKHz: 1683000
ComputeMode: 'Default'
GPUOverlapsTransfers: 1
KernelExecutionTimeout: 1
CanMapHostMemory: 1
DeviceSupported: 1
DeviceSelected: 1
Shouldn't this be enough memory for this kind of operation?
I'm running version 9.5.0.944444 (R2018b) on Linux.
I can work around this problem but I'd like to understand it so I can adapt my code accordingly.
Best wishes,
Daniel
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Antworten (2)
Ganesh Regoti
am 31 Jul. 2019
I have run the code on TitanV and it works fine. The array of larger size is working fine. So, I think there is no memory issue in it.
Try to clear the memory of GPU device through reset command. Here is the link
Now, try to re-run the code.
6 Kommentare
Joss Knight
am 17 Aug. 2019
Bearbeitet: Joss Knight
am 17 Aug. 2019
This isn't strictly true. MATLAB holds onto a quarter of GPU memory, once assigned, as an optimisation to prevent unnecessary device synchronization. Memory is then re-used. MATLAB will never return an out-of-memory error because it is holding onto the memory of a variable that has gone out of scope. However, it appears that in this case the NVIDIA thrust library is allocating its own memory buffer and MATLAB doesn't know about this, so it doesn't know to free up its memory pool to make space. This should be fixed for you in MATLAB R2019a.
In the meantime, try
feature('GpuAllocPoolSizeKb', 0);
as a temporary measure to turn off the pooling of memory that's causing this issue.
Joss Knight
am 17 Aug. 2019
Bearbeitet: Joss Knight
am 17 Aug. 2019
There is an issue in an NVIDIA library that is not functioning correctly when memory is limited. This is fixed in CUDA 10 / MATLAB R2019a.
In the meantime, try
poolSize = feature('GpuAllocPoolSizeKb', 0);
as a temporary measure to turn off the pooling of memory that's underlying this issue. When you are ready to enable pooling again use
feature('GpuAllocPoolSizeKb', poolSize);
This is advisable since turning off pooling will significantly reduce performance.
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