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Is it possible to create a multi-dimensional array of different types in Python? The way I usually solve it is [([None] * n) for i in xrange(m)], but I don't want to use list. I want something which is really a continuous array of pointers in memory, not a list. (Each list itself is continuous, but when you make a list of lists, the different lists may be spread in different places in RAM.)

Also, writing [([None] * n) for i in xrange(m)] is quite a convoluted way of initializing an empty array, in contrast to something like empty_array(m, n). Is there a better alternative?

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As has been said before, this is not the sort of consideration you want to be doing. Work out what you want to do (and let us know) and we'll help you define the data structure for it. But one of the great things about Python is that you don't have to worry about all the low-level memory stuff like in C. –  katrielalex Feb 5 '11 at 21:32

2 Answers 2

up vote 2 down vote accepted

If you're using numpy, by chance, numpy object arrays are "continuous arrays of pointers in memory".

However, they defeat the usual purpose of numpy arrays, and often wind up being a bad answer to the problem at hand...

(contiguous memory of the same type --> fast calculations on the entire array... Object arrays don't allow this, as they're just arrays of pointers to python objects.).

Nonetheless, np.empty((m,n), dtype=np.object) does what you want.

E.g.

x = np.empty((3,4), dtype=np.object)
print x
x[2,3] = range(5)
x[1,2] = 2
x[1,3] = (item*2 for item in xrange(10))
print x

Which yields:

Initial array:
[[None None None None]
 [None None None None]
 [None None None None]]

Modified array:
[[None None None None]
 [None None 2 <generator object <genexpr> at 0x8700d9c>]
 [None None None [0, 1, 2, 3, 4]]]

Just be aware that it's going to be much slower and much less memory efficient than "normal" numpy arrays! (i.e. Even a None object takes up quite a bit of memory compared to a (numpy, not python) float, and you've got the additional overhead of the pointer stored in the array. A big object array will use tons of memory!)

However, if what you need is effectively a multi-dimensional list, and you're not going to be appending to it or changing its size frequently, they can be damned convenient. They're essentially meant to be equivalent to matlab's cell arrays, and while there's less of a need for that sort of a data structure in python (python has lists), sometimes it's handy!

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In many cases such arrays are not required as there are more elegant solutions to these problems. Explain what you want to do so someone can give some hints.

Anyway, if you really, really need such data structure, use array.array.

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Did you confirm that array.array allows objects of different types in an array before posting your answer? –  Ram Rachum Feb 6 '11 at 16:48

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