# Convert numpy array to tuple

Note: This is asking for the reverse of the usual tuple-to-array conversion.

I have to pass an argument to a (wrapped c++) function as a nested tuple. For example, the following works

``````X = MyFunction( ((2,2),(2,-2)) )
``````

whereas the following do not

``````X = MyFunction( numpy.array(((2,2),(2,-2))) )
X = MyFunction( [[2,2],[2,-2]] )
``````

Unfortunately, the argument I would like to use comes to me as a numpy array. That array always has dimensions 2xN for some N, which may be quite large.

Is there an easy way to convert that to a tuple? I know that I could just loop through, creating a new tuple, but would prefer if there's some nice access the numpy array provides.

If it's not possible to do this as nicely as I hope, what's the prettiest way to do it by looping, or whatever?

-

``````>>> arr = numpy.array(((2,2),(2,-2)))
>>> tuple(map(tuple, arr))
((2, 2), (2, -2))
``````
-

Here's a function that'll do it:

``````def totuple(a):
try:
return tuple(totuple(i) for i in a)
except TypeError:
return a
``````

And an example:

``````>>> array = numpy.array(((2,2),(2,-2)))
>>> totuple(array)
((2, 2), (2, -2))
``````
-
Nice generalization. As a python newbie, though, I wonder if it's considered good style to use exceptions for a condition that is almost as common as the non-exceptional state. At least in c++, flow control by exceptions is usually frowned upon. Would it be better to test if `type(a)==numpy.ndarray`? –  Mike Apr 5 '12 at 15:36
This is pretty common in python because of the concept of "duck-typing" and EAFT, more here: docs.python.org/glossary.html#term-duck-typing. The advantage of this approach is that it'll convert any nested sequence into nested tuples, not just an array. One thing I should have done that I've fixed is specify which errors I want handled by the except block. –  Bi Rico Apr 5 '12 at 16:53
Very interesting. Thanks for the information! –  Mike Apr 5 '12 at 19:10

Another option

``````tuple([tuple(row) for row in myarray])
``````

If you are passing NumPy arrays to C++ functions, you may also wish to look at using Cython or SWIG.

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I was not satisfied, so I finally used this:

i: a=numpy.array([[1,2,3],[4,5,6]])

i: a

o: array([[1, 2, 3], [4, 5, 6]])

i: tuple(a.reshape(1, -1)[0])

o: (1, 2, 3, 4, 5, 6)

I don't know if it's quicker, but it looks more effective ;)

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That was not the shape that I wanted for the tuple. –  Mike Aug 12 '13 at 18:32