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Unless I'm mistaken, creating a function in Python works like this:

def my_func(param1, param2):
    # stuff

However, you don't actually give the types of those parameters. Also, if I remember, Python is a strongly typed language, as such, it seems like Python shouldn't let you pass in a parameter of a different type than the function creator expected. However, how does Python know that the user of the function is passing in the proper types? Will the program just die if it's the wrong type, assuming the function actually uses the parameter? Do you have to specify the type?

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9 Answers 9

up vote 43 down vote accepted

Python is strongly typed because every object has a type, every object knows its type, it's impossible to accidentally or deliberately use an object of a type "as if" it was an object of a different type, and all elementary operations on the object are delegated to its type.

This has nothing to do with names. A name in Python doesn't "have a type": if and when a name's defined, the name refers to an object, and the object does have a type (but that doesn't in fact force a type on the name: a name is a name is a name).

A name in Python can perfectly well refer to different objects at different times (as in most programming languages, though not all) -- and there is no constraint on the name such that, if it has once referred to an object of type X, it's then forevermore constrained to refer only to other objects of type X. Constraints on names are not part of the concept of "strong typing", though some enthusiasts of static typing (where names do get constrained, and in a static, AKA compile-time, fashion, too) do misuse the term this way.

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4  
+1, better than my answer –  TM. Mar 22 '10 at 17:10
4  
So it seems strong typing is not so strong, in this particular case, it's weaker than static typing.IMHO, compile time typing constraint on name/variable/reference is actually quite important, thus I boldly claim python is not as good as static typing on this aspect. Please correct me if I'm wrong. –  liang Oct 13 '13 at 14:25
    
@liang That's an opinion, so you cannot be right or wrong. It is certainly also my opinion, and I've tried many languages. The fact that I cannot use my IDE to find out the type (and thus members) of the parameters is a major drawback of python. If this drawback is more important than the advantages of duck typing depends on the person you ask. –  Maarten Bodewes - owlstead Nov 1 '13 at 0:57

The other answers have done a good job at explaining duck typing and the simple answer by tzot:

Python does not have variables, like other languages where variables have a type and a value; it has names pointing to objects, which know their type.

However, one interesting thing has changed since 2010 with the implementaion of PEP 3107 when the question was first asked. You can now actually specify the type of an attribute and the type of the return value like this:

def pick(l: list, index: int) -> int:
    return l[index]

We can here see that pick takes 2 parameters, a list l and an integer index. It should also return an integer.

So here it is implied that l is a list of integers which we can see without much effort, but for more complex functions it can be a bit confusing as to what the list should contain. We also want the default value of index to be 0. To solve this you may choose to write pick like this instead:

def pick(l: "list of ints", index: int = 0) -> int:
    return l[index]

But it is important to note that Python wont raise a TypeError if you pass a float into index, the reason for this is one of the main points in Python's design philosophy: "We're all consenting adults here", which means you be aware of what you can pass to a function and what you can't. If you really want to write type safe code you can use the isinstance function to check that the passed argument is of the proper type or a subclass of it like this:

def pick(l: list, index: int = 0) -> int:
    if not isinstance(l, list):
        raise TypeError
    return l[index]

PEP 3107 does not only improve code readability but also has several fitting usecases which you can read about here.


Previously when one documented Python code with for example Sphinx similar functionality could be obtained by writing docstrings formatted like this:

def pick(l, index):
    """
    :param l: list of integers
    :type l: list
    :param index: index at which to pick an integer from *l*
    :type index: int
    :returns: integer at *index* in *l*
    :rtype: int
    """
    return l[index]

However, this takes a couple of extra lines, the exact number depends on how explicit you want to be and how you format your docstring but it should be clear to you how PEP 3107 provides an alternative that is in many ways superior.

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You don't specify a type. The method will only fail (at runtime) if it tries to access attributes that are not defined on the parameters that are passed in.

So this simple function:

def no_op(param1, param2):
    pass

... will not fail no matter what two args are passed in.

However, this function:

def call_quack(param1, param2):
    param1.quack()
    param2.quack()

... will fail at runtime if param1 and param2 do not both have callable attributes named quack.

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+1: The attributes and methods are not determined statically. The concept of how would this "proper type" or "wrong type" are established by whether or not the type works properly in the function. –  S.Lott Mar 22 '10 at 15:09

Python is not strongly typed in the sense of static or compile-time type checking.

Most Python code falls under so-called "Duck Typing" -- for example, you look for a method read on an object -- you don't care if the object is a file on disk or a socket, you just want to read N bytes from it.

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7  
Python is strongly typed. It is also dynamically typed. –  Daniel Newby Mar 22 '10 at 7:13

As Alex Martelli explains,

The normal, Pythonic, preferred solution is almost invariably "duck typing": try using the argument as if it was of a certain desired type, do it in a try/except statement catching all exceptions that could arise if the argument was not in fact of that type (or any other type nicely duck-mimicking it;-), and in the except clause, try something else (using the argument "as if" it was of some other type).

Read the rest of his post for helpful information.

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Python doesn't care what you pass in to its functions. When you call my_func(a,b), the param1 and param2 variables will then hold the values of a and b. Python doesn't know that you are calling the function with the proper types, and excepts the programmer to take care of that. If your function will be called with different types of parameters, you can wrap code accessing them with try/except blocks and evaluate the parameters in whatever way you want.

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3  
Python does not have variables, like other languages where variables have a type and a value; it has names pointing to objects, which know their type. –  tzot Apr 2 '10 at 21:49
    
This explanation by tzot I like most :-) –  Hartmut Oct 1 '13 at 13:38

In python everything has a type. Python function will do anything it is asked to do if the type of arguments support it.

Example: foo will add everything that can be __add__ed ;) without worrying much about its type. So that means ,to avoid failure ,you should provide only those things that support addition.

def foo(a,b):
    return a + b

class Bar(object):
    pass

class Zoo(object):
    def __add__(self,other):
        return 'zoom'

if __name__=='__main__':
    print foo(1,2)
    print foo('james','bond')
    print foo(Zoo(),Zoo())
    print foo(Bar(),Bar()) # should fail
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You never specify the type; Python has the concept of duck typing; basically the code that processes the parameters will make certain assumptions about them - perhaps by calling certain methods that a parameter is expected to implement. If the parameter is of the wrong type, then an exception will be thrown.

In general it is up to your code to ensure that you are passing around objects of the proper type - there is no compiler to enforce this ahead of time.

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Many languages have variables, which are of a specific type and have a value. Python does not have variables; it has objects, and you use names to refer to these objects.

In other languages, when you say:

a = 1

then a (typically integer) variable changes its contents to the value 1.

In Python,

a = 1

means “use the name a to refer to the object 1”. You can do the following in an interactive Python session:

>>> type(1)
<type 'int'>

The function type is called with the object 1; since every object knows its type, it's easy for type to find out said type and return it.

Likewise, whenever you define a function

def funcname(param1, param2):

the function receives two objects, and names them param1 and param2, regardless of their types. If you want to make sure the objects received are of a specific type, code your function as if they are of the needed type(s) and catch the exceptions that are thrown if they aren't. The exceptions thrown are typically TypeError (you used an invalid operation) and AttributeError (you tried to access an inexistent member (methods are members too) ).

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