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Given a raw binary representation of a numpy array, what is the complete set of metadata needed to unambiguously restore the array?

For example,

>>> np.fromstring( np.array([42]).tostring())
array([  2.07507571e-322])

which is to be expected (with a hindsight, at least): here the I haven't told fromstring to expect ints, so it goes with the default float.

But it seems to me that just specifying the dtype=np.float64 or similar may or may not be sufficient. For example,

>>> a = np.array([42.])
>>> a.dtype
>>> a.dtype.byteorder

which the docs tell me means 'native order'. Meaning, it's going to be interpreted differently on a big-endian and little-endian machines --- or am I missing something simple?

share|improve this question
sys.byteorder gives the endianness of the machine. It looks like you'd have to save this value too. – unutbu Dec 2 '12 at 19:02
to save/load numpy array in a platform-independent way you could use numpy.save/.load functions. – J.F. Sebastian Dec 2 '12 at 21:03
@J.F.Sebastian: For a single array, yes. In my case, I've 10 to a 100 thousand arrays, which I'm dumping to an sqlite db (along with other, non-array stuff). Besides, I'm just curious as to what it takes to be platform-independent :-). – ev-br Dec 2 '12 at 21:43
@unutbu: Thanks, that's good to know! Mind making it an answer? – ev-br Dec 2 '12 at 21:44
@Zhenya For several arrays you can use np.savez and np.load. To make sure you have all the needed metadata, see the npy format spec and implementation: github.com/numpy/numpy/blob/master/doc/neps/npy-format.txt github.com/numpy/numpy/blob/v1.5.0/numpy/lib/format.py – jorgeca Dec 2 '12 at 22:55
up vote 3 down vote accepted

sys.byteorder gives the endianness of the machine.

However, as @J.F.Sebastain, @seberg and @jorgeca have suggested, np.savez is a better way to go. The help docstring shows

import io
content = io.BytesIO()
np.savez(content, x=x, y=y)

which means you could save the string content to an sqlite database.

Then, when you SELECT this string from the database, it can be re-converted into numpy arrays with

data = np.load(content)
share|improve this answer
Why do you use tempfile instead of StringIO? – seberg Dec 3 '12 at 1:13
@seberg: Yes, you are right -- thanks for the correction! A StringIO (or future compatibility, a BytesIO) would be better here. – unutbu Dec 3 '12 at 3:13

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