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I was wondering why many functions - especially in numpy - utilize tuples as function parameters?

e.g.:

a = numpy.ones( (10, 5) )

What could possibly be the use for that? Why not simply have something such as the following, since clearly the first parameters will always denote the size of the array?

a = numpy.ones(10, 5)

Is it because there might be additional parameters, such as dtype? even if so,

a = numpy.ones(10, 5, dtype=numpy.int)

seems much cleaner to me, than using the convoluted tuple convention.

Thanks for your replies

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3  
Tuples make sense in cases where those numbers are going to be passed around together -- effectively, as a single value -- or where one can reasonably expect the caller to want to treat them that way. –  Charles Duffy Mar 16 '12 at 18:23
1  
Note that NumPy is not entirely consistent: ndarray.reshape takes either a variable number of arguments or a tuple of them. –  larsmans Mar 16 '12 at 18:43
1  
@larsmans - True, but for whatever it's worth, I'm fairly sure that was a relatively recent change (~1.3, maybe?). I definitely remember having to explicitly do x.reshape((nrows, ncols)) instead of x.reshape(nrows, ncols). –  Joe Kington Mar 17 '12 at 16:02

4 Answers 4

up vote 3 down vote accepted

Because you want to be able to do:

a = numpy.ones(other_array.shape)

and other_array.shape is a tuple. There are a few functions that are not consistent with this and work as you've described, e.g. numpy.random.rand()

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Darn beat me to it. –  mklauber Mar 16 '12 at 18:28
2  
If np.ones took a variable number of arguments, np.ones(*other.shape) would have worked just fine, so this is not the whole story. –  larsmans Mar 16 '12 at 18:31
    
@mklauber: I'm sorry, I deleted my comment because I was getting the distinct impression I was confusing the issue because I don't know how the numpy function works. I had originally said that the way os.path.join works bothers me, because I have to say os.path.join(*args) if I already have a list of pathnames to join. It seems more appropriate to me to use a list or array as a function parameter than a variable number of parameters, because I am asking the function to work on one list of items that are the same kind of things. It's also consistent with str.join. –  zigg Mar 16 '12 at 18:50
2  
np.ones(*other.shape) wouldn't work for functions that take multiple arguments. Explicitly passing a single argument in allows that function to pass that same argument on to other functions. –  user297250 Mar 16 '12 at 19:21

I think one of the benefits of this is that it can lead to consistency between the various methods. I'm not that familiar with numpy, but it would seem to me the first use case that comes to mind is if numpy can return the size of an array, that size, as one variable, can be directly passed to another numpy method, without having to know anything about the internals of how that size item is built.

The other part of it is that size of an array may have two components but it's discussed as one value, not as two.

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My guess: this is because in functions like np.ones, shape can be passed as a keyword argument when it's a single value. Try

np.ones(dtype=int, shape=(2, 3))

and notice that you get the same value as you would have gotten from np.ones((2, 3), dtype=int).

[This works in Python more generally:

>>> def f(a, b):
...     return a + b
... 
>>> f(b="foo", a="bar")
'barfoo'

]

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This is the best answer, consistency can't be it - other functions do use variable numbers of arguments. –  Izkata Mar 29 '12 at 14:38

In order for python to tell the difference between foo(1, 2), foo(1, dtype='int') and foo(1, 2, dtype='int') you would have to use keyword-only arguments which weren't formally introduced until python 3. It is possible to use **kargs to implement keyword only arguments in python 2.x but it's unnatural and does not seem Pythonic. I think for that reason array does not allow array(1, 2) but reshape(1, 2) is ok because reshape does not take any keywords.

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