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I am prototyping a new system in Python; the functionality is mostly numerical.

An important requirement is the ability to use different linear algebra back-ends: from individual user implementations to generic libraries, such as Numpy. The linear algebra implementation (that is, the back-end) must be independent from the interface.

My initial architectural attempt is as follows:

(1) Define the system interface

>>> v1 = Vector([1,2,3])
>>> v2 = Vector([4,5,6])
>>> print v1 * v2
>>> # prints "Vector([4, 10, 18])"

(2) Implement the code allowing to use that interface independently of the back-end

# this example uses numpy as the back-end, but I mean
# to do this for a general back-end
import numpy 
def numpy_array(*args): # creates a numpy array from the arguments
    return numpy.array(*args)

class VectorBase(type):
    def __init__(cls, name, bases, attrs):
        engine = attrs.pop("engine", None)
        if not engine:
            raise RuntimeError("you need to specify an engine")
        # this implementation would change depending on `engine`
        def new(cls, *args):
            return numpy_array(*args)   
        setattr(cls, "new", classmethod(new))

class Vector(object):   
    __metaclass__ = VectorBase        
    # I could change this at run time
    # and offer alternative back-ends
    engine = "numpy"  
    def create(cls, v):
        nv = cls()
        nv._v = v
        return nv    
    def __init__(self, *args):  
        self._v = None
        if args:
            self._v =*args)
    def __repr__(self):
        l = [item for item in self._v]
        return "Vector(%s)" % repr(l)
    def __mul__(self, other):
            return Vector.create(self._v * other._v)
        except AttributeError:
            return Vector.create(self._v * other)
    def __rmul__(self, other):
        return self.__mul__(other)

This simple example works as follows: the Vector class keeps a reference to a vector instance made by the back-end (numpy.ndarray in the example); all arithmetic calls are implemented by the interface, but their evaluation is deferred to the back-end.

In practice, the interface overloads all the appropriate operators and defers to the back-end (the example only shows __mul__ and __rmul__, but you can follow that the same would be done for every operation).

I am willing to loose some performance in exchange of customizability. Even while my example works, it does not feel right -- I would be crippling the back-end with so many constructor calls! This begs for a different metaclass implementation, allowing for a better call deferment.

So, how would you recommend that I implement this functionality? I need to stress the importance of keeping all of the system's Vector instances homogeneous and independent of the linear algebra back-end.

share|improve this question
It doesn't appear to me that your current implementation is keeping the Vector instances independent of the back-end. Quite the contrary, each one is a numpy_array. Seems to me that to do this would require either a separate back-end-independent representation to be maintained or an interface for each type and its attributes present in the system -- which would likely be more that just Vectors...Matrix immediately comes to mind, for example. If this is correct, can you enumerate them? – martineau Jun 5 '11 at 18:18
Since you've already awarded the bounty (as well as ignored my question), I -- and likely most others -- are dissuaded to provide any further help or input. – martineau Jun 8 '11 at 13:04
@martineau: sorry, away from computer access for a while. As for your question, the example I present is can definitively be improved. What I am looking for is a way to (1) truly decouple interface from back-end (it seems that I will go with metaclasses), and (2) avoid crippling the backend. So, what's your take? A design pattern like "Strategy" using regular objects, or a metaclass, or abstract base classes, or a combination? – Escualo Jun 8 '11 at 17:47
up vote 6 down vote accepted

You should check out PEP-3141 and the standard lib module ABCMeta.

For a detailed explanation of how to use ABCMeta, the always helpful PyMOTW has a nice write-up.

share|improve this answer
Yes, I have been experimenting with ABCs, and they may be the way to go, but I am still not 100% convinced that I will marry this approach. The issue is that ABCs still impose a "layer" which may cripple the linear algebra back-end. I may just need to play with three approaches: metaclass, abstract class, and ABCs and profile them. Thanks. – Escualo Jun 2 '11 at 15:34
The bounty is yours, but I still need more input on the architecture (in addition to the mechanism for implementing an abstract interface). – Escualo Jun 7 '11 at 20:28
Ok Arrieta, I'll write something up and add a more detailed answer to cover it. Please keep the question unlocked. – synthesizerpatel Jun 7 '11 at 21:26

Just FYI, you can easily configure and build NumPy to use Intel's Math Kernel Library or AMD's Core Math Library instead of the usual ATLAS + LAPACK. This is as simple as creating a site.cfg file with the blas_libs, lapack_libs, library_dirs, and include_dirs variables set appropriately. (Details for setting these options for MKL and ACML are readily Googleable.) Place it alongside the script and build as usual.

To switch between these standard linear algebra libraries, you could build a different instance of NumPy for each and manage them using virtualenvs, for example.

I know that doesn't give you the flexibility you need to use your own custom math libraries, but just thought I'd throw that out there. And though I haven't looked into it, I imagine you might also be able to get NumPy to build against a custom library with less effort than it would take to build your own front-end, especially if you want to retain the extensive functionality of the NumPy/SciPy edifice.

share|improve this answer
Thanks, that is useful - not so much because it solves my problem, but because I can refer to the NumPy source code and see how they did it ;) - that may very well be the answer to my question. – Escualo Jun 11 '11 at 21:25

Why not simply make a "virtual" class (AbstractVector) which is like Vector in your example, and make different subclasses of it for each implementation?

An engine could be chosen by doing Vector = NumPyVector or something like that.

share|improve this answer

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