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Implementing a system where, when it comes to the heavy mathematical lifting, I want to do as little as possible.

I'm aware that there are issues with memoisation with numpy objects, and as such implemented a lazy-key cache to avoid the whole "Premature optimisation" argument.

def magic(numpyarg,intarg):
    key = str(numpyarg)+str(intarg)

        ret = self._cache[key]
        return ret

    ... here be dragons ...
    return value

but since string conversion takes quite a while...

t=timeit.Timer("str(a)","import numpy;a=numpy.random.rand(10,10)")
t.timeit(number=100000)/100000 = 0.00132s/call

What do people suggest as being 'the better way' to do it?

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possible duplicate of How to hash a large object (dataset) in Python? –  tcaswell Mar 19 at 16:43
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2 Answers

up vote 11 down vote accepted

Borrowed from this answer... so really I guess this is a duplicate:

>>> import hashlib
>>> import numpy
>>> a = numpy.random.rand(10, 100)
>>> b = a.view(numpy.uint8)
>>> hashlib.sha1(b).hexdigest()
>>> t=timeit.Timer("hashlib.sha1(a.view(numpy.uint8)).hexdigest()", 
                   "import hashlib;import numpy;a=numpy.random.rand(10,10)") 
>>> t.timeit(number=10000)/10000
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Nice! For multidimensional arrays this gives a different hash (for the "same" array) depending on whether it's fortran or c contiguous. If that's an issue, calling np.ascontiguousarray should solve it. –  jorgeca Jan 27 at 16:00
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There is a package for this joblib. Found from this question.

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