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I am attempting to speed up a binary file parser I wrote last year by doing the parsing/data accumulation in numpy. numpy's ability to define customized data structures and slurp data from a binary file into them looks like what I need, except some of the fields in these files are unsigned integers of "nonstandard" length (e.g. 6 bytes). Since I am using Python 2.7, I made my own emulated version of int.from_bytes to handle these fields, but if there is any way to read these fields to integers natively in numpy, that would obviously be much faster and preferable.

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up vote 3 down vote accepted

Numpy doesn't support arbitrary-bytelength integers, and using ctypes bitfields would be more trouble than it's worth.

I'd suggest using vectorised slicing to convert your data to the next-higher standard size integer:

buf = "000000111111222222"
a = np.ndarray(len(buf), np.dtype('>i1'), buf)
e = np.zeros(len(buf) / 6, np.dtype('>i8'))
for i in range(3):
    e.view(dtype='>i2')[i + 1::4] = a.view(dtype='>i2')[i::3]
[hex(x) for x in e]
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I keep getting ValueErrors when I try to call ndarray.view unless I call it with the same type it was created as. What are the rules for avoiding this? –  dpitch40 Jul 16 '12 at 20:14
@dpitch40 it should usually be OK to use ndarray.view to alias an array; it might be an issue with your version of numpy. You can also use the ndarray constructor with the underlying buffer, using arr.data. –  ecatmur Jul 16 '12 at 21:58
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