numerical instabilites for GPU results
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I run this code
T=randn(10000,64);
data=randn(1000,64,10);
Tg=gpuArray(T);
datag=gpuArray(data);
res=zeros(10000,1000);
resg=gpuArray(res);
for i=1:10
res=res+T*data(:,:,i)';
end
for i=1:10
resg=resg+Tg*datag(:,:,i)';
end
resg=gather(resg);
norm(res-resg,'fro')/norm(res,'fro')
where I would expect "res" (CPU comptuted) and "resg" (GPU computed) to be the same, but they are not.
I am running this on a Tesla Card, i.e.
gpuDevice
ans =
parallel.gpu.CUDADevice handle
Package: parallel.gpu
Properties:
Name: 'Tesla C1060'
Index: 1
ComputeCapability: '1.3'
SupportsDouble: 1
DriverVersion: 3.2000
MaxThreadsPerBlock: 512
MaxShmemPerBlock: 16384
MaxThreadBlockSize: [512 512 64]
MaxGridSize: [65535 65535]
SIMDWidth: 32
TotalMemory: 4.2948e+09
FreeMemory: 4.0671e+09
MultiprocessorCount: 30
ComputeMode: 'Default'
GPUOverlapsTransfers: 1
KernelExecutionTimeout: 0
CanMapHostMemory: 1
DeviceSupported: 1
DeviceSelected: 1
Methods, Events, Superclasses
3 Commenti
James Tursa
il 18 Mag 2011
I would presume that this is simply the difference in how the BLAS matrix multiply routines are coded on the GPU vs CPU (different blocking, etc). What kind of differences are you seeing?
Felix
il 18 Mag 2011
Gaszton
il 19 Mag 2011
I runned the code on my gt425m:
ans =
2.4946e-016
Risposta accettata
Più risposte (1)
Edric Ellis
il 19 Mag 2011
I've just run this using R2011a on Linux and Windows using C1060 cards, and in each case the final "norm" calculation gives a result of around 2e-16. So, this should work! Could you post the output of running
parallel.internal.gpu.CUDADriverVersion
and
ver distcomp
4 Commenti
Felix
il 19 Mag 2011
Edric Ellis
il 20 Mag 2011
Very strange, I've run on a whole series of different x64 Linux machines here and not seen the problem. That driver is slightly older than the ones we use here, perhaps you could try updating. Also, do you know if it's the matrix multiplication that is introducing the problem?
Felix
il 20 Mag 2011
Sean de Wolski
il 14 Mar 2012
Copying Felix' first post with license censored:
Here it is:
parallel.internal.gpu.CUDADriverVersion
ans =
260.19.26
ver distcomp
-------------------------------------------------------------------------------------
MATLAB Version 7.12.0.635 (R2011a)
MATLAB License Number: ############
Operating System: Linux 2.6.30.10-105.2.23.fc11.x86_64 #1 SMP Thu Feb 11 07:06:34 UTC 2010 x86_64
Java VM Version: Java 1.6.0_17-b04 with Sun Microsystems Inc. Java HotSpot(TM) 64-Bit Server VM mixed mode
-------------------------------------------------------------------------------------
Parallel Computing Toolbox Version 5.1 (R2011a)
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