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Using Python/Numpy, I'm trying to import a file; however, the script returns an error that I believe is a memory error:

In [1]: import numpy as np

In [2]: npzfile = np.load('cuda400x400x2000.npz')

In [3]: U = npzfile['U']
SystemError                               Traceback (most recent call last)
<ipython-input-3-0539104595dc> in <module>()
----> 1 U = npzfile['U']

/usr/lib/pymodules/python2.7/numpy/lib/npyio.pyc in __getitem__(self, key)
    232             if bytes.startswith(format.MAGIC_PREFIX):
    233                 value = BytesIO(bytes)
--> 234                 return format.read_array(value)
    235             else:
    236                 return bytes

/usr/lib/pymodules/python2.7/numpy/lib/format.pyc in read_array(fp)
    456             # way.
    457             # XXX: we can probably chunk this to avoid the memory hit.
--> 458             data = fp.read(int(count * dtype.itemsize))
    459             array = numpy.fromstring(data, dtype=dtype, count=count)

SystemError: error return without exception set

If properly loaded, U will contain 400*400*2000 doubles, so that's about 2.5 GB. It seems the system has enough memory available:

bogeholm@bananabot ~/Desktop $ free -m
             total       used       free     shared    buffers     cached
Mem:          7956       3375       4581          0         35       1511
-/+ buffers/cache:       1827       6128
Swap:        16383          0      16383

Is this a memory issue? Can it be fixed in any way other than buying more RAM? The box is Linux Mint DE with Python 2.7.3rc2 and Numpy 1.6.2.



share|improve this question
Are you using a 32-bit python binary? (e.g. what does import platform; platform.architecture() return?) –  Joe Kington Jun 10 '13 at 15:38
@JoeKington, that returns ('64bit', 'ELF') –  trolle3000 Jun 10 '13 at 16:05
Hmm... Well, that's odd. Now that I think about it, though, if numpy.load uses numpy.fromstring under-the-hood, you'll need twice the amount of memory available. If numpy.frombuffer were used, you'd only need the memory used by the original string (it would use the same memory buffer as the original string). Might be worth looking into as a pull request. In the meantime, you could use a local version of numpy.load that uses frombuffer in place of fromstring. –  Joe Kington Jun 10 '13 at 18:42
Strangely, it works in Python 3! –  trolle3000 Jun 11 '13 at 14:24
I think the comment on line 457 of format.py sums up the problem with the numpy implementation pretty well! –  DaveP Jun 19 '13 at 7:17

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