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So I have a program that I am running on unbuntu 10.04 LTS with python 2.6, pycuda 2011.2.2 on a GTS 240, CUDA 4.0 and it works perfectly.

When I try to run it on a different machine, using pycuda 2012.1, GTX 550 Ti, and CUDA 3.2 I get:

pytools.prefork.ExecError: error invoking 'nvcc --preprocess -arch sm_21 -I/usr/local/lib/python2.6/dist-packages/pycuda-2012.1-py2.6-linux-x86_64.egg/pycuda/../include/pycuda /tmp/ --compiler-options -P': [Errno 12] Cannot allocate memory

The part of the code that does this:

d_y = gpuarray.to_gpu(tempy)

py = d_y.__pow__(2).get()

d_z = gpuarray.to_gpu(tempz)
d_do = gpuarray.to_gpu(tempdobss)
d_do = d_y.__add__(dsun/rsun)
pdo = d_do.__pow__(2).get()

d_x = gpuarray.to_gpu(tempx)
px = d_x.__pow__(2).get()

pz = d_z.__pow__(2).get()

pdobbs = px + pdo + pz
dsunsP = px + py + pz 

sqrtsDobss = gpuarray.to_gpu(pdobbs)
sqrtsDobss = cumath.sqrt(sqrtsDobss)

It does this on the last line of this set. I assumed it was an out of memory problem, but the card it errors on has 2 Gigs of memory (where as the one it works on only has 1). I know the versions of PyCuda are different, am I doing something wrong for the newer version?

share|improve this question
Have you verified that samples from the CUDA SDK work properly on the second machine? – Brendan Wood Jul 11 '12 at 16:24
Yes, they all run perfectly. That was the first thing I checked. A few other programs I wrote with PyCuda work too. – HillaryD Jul 11 '12 at 16:56
Is the problem machine running Python 2.7? – talonmies Jul 11 '12 at 18:28
The error you are seeing is a low level python interpreter error unrelated to PyCUDA or CUDA. I would investigate an alternative Python version, if one is available on the platform with the problem – talonmies Jul 11 '12 at 19:25
No that isn't what the error means. The interpreter can't allocate resources to run a fork command to fork nvcc. Nothing to do with the GPU or CUDA, it is some sort of Python internal resource exhaustion error. – talonmies Jul 11 '12 at 19:29

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