A question on idomatic Python. Suppose I have a function:

def a_function(list_of_things):
    for item in list_of_things:

Now suppose it's difficult for me to be sure that the input argument is a list. Even now, I can hear the sweet pythonista chorus imploring me: "Use duck-typing and exceptions!"

def a_function(list_of_things):
        for item in list_of_things:
        pass # . . . or something

And this is great, unless I pass in a map, or a string, or anything else that is iterable in a fashion that I find to be "wrong" for this particular application.

I don't write a ton of Python, but I manage to run into this and related situations often enough for it to annoy me regularly. More generally, I want to use duck typing and exceptions, as seems to be the convention in Python, but getting an incorrect input type that passes my exception is possible in a lot of cases; so many that exceptions seem like the wrong answer as often as not (or at least quite often).

Even if exceptions do seem like the right answer, I'm still afraid when I use them, because what if I just haven't thought of the corner case where a bad type will pass, leaving my code, for lack of a better term, "ducked".

So I end up resorting to things like type and isinstance. From my reading, it seems like explicit type checking is considered evil in Python, but what else to do? Note that I almost never compose class hierarchies in my Python, so I don't have issues with subclasses and type checks, but others might.

I've thought of four possible answers, all of which seem equally likely to me:

  1. You should be using exceptions, but you're doing it wrong. Do it like this . . .
  2. You should be using exceptions. If bad types pass your checks, it's indicative of some problem in your design (what problem?)
  3. You're doing the right thing. Explicit type-checking is preferable in these situations.
  4. You don't know about <python thing for this situation>? Do some research!

Is is one of these, or something else?

Note - I found a lot of questions on SO that beat around the bush about this, but I'm looking for people to speak to this specific "genre" of problem if they can.

  • 2
    Why would a map, string, or other iterable be "wrongly" iterable? Your example function doesn't depend on anything but iterability. Anyway, if you need, say, a sequence, you could try isinstance(collections.Sequence), or isinstance(collections.abc.Sequence) in Python 3, but the usual way would be to just assume the caller did the right thing and rely on unit tests to make sure your code works. – user2357112 Jan 19 '16 at 18:08
  • 1
    Only check, if a wrong type leads to a wrong but valid answer (and a string is valid parameter, if you want a sequence of single characters). Anything else is up to the caller. The "bug" is not silent, because you have tests, to check, if the result is correct. – Daniel Jan 19 '16 at 18:14
  • 1
    It's just an example, there are other cases, such as add - what an ambiguous function name, it looks like you can do math with a collection... – Andrew Williamson Jan 19 '16 at 18:15
  • 2
    When using duck-typing... don't use exceptions to try to save the caller. You write a function that works with sequences and test it heavily with a list. If a user passes something else that doesn't work the way that you think it should, that's on the caller. If the bowels of your code blows up because of a funky data type... that's on the caller too. If it quacks like a duck but turns out to be an elephant... that's the elephants problem. – tdelaney Jan 19 '16 at 18:20
  • 1
    In a high-stakes environment, it makes sense to do heavy type checking with the knowledge that you have eliminated some possible uses of the code. So, by the time you hit terror, check away! For me, my lower data layers tend to be paranoid but for instance, instead of isinstance(x, int) I int(x) and let the exceptions fly. Also, caller should have been been testing the code (and reading the docs for the functions being called) ... you just have to decide who wears the big boy pants. – tdelaney Jan 19 '16 at 18:51

A best practice is, to be type agnostic. The for-loop raises an exception for any non-iterable type. The documentation should state clearly, that an iterable type is required. Functions using your function should have unit or integration tests, so that unexpected behavior is discovered.


Type Check- You rightly mentioned that type checking is considered evil in Python. We should care what an object does, not what it is. e.g - If I iterate on an input then my code should work for all iterable and I should never check it's type.

Exception handling - Let it throw exception, If we try to handle it either we will catch all kind of exception or we will miss any.

Lets validate behavior of python built-in and we can follow same -

  1. hash(input) It will throw exception if input is not hash able-


    TypeError: unhashable type: 'list'

Dictionary and Set both use hash() function. If you try to create dictionary with mutable key, it will also throw same exception

TypeError: unhashable type: 'list'

Now try with set

set(([1,2], 5,6))
TypeError: unhashable type: 'list'
  1. filter(function_object, any_iterable)`

    filter(bool, 1245)

    It will throw TypeError: 'int' object is not iterable

    Now apply iter on int object


    TypeError: 'int' object is not iterable

So filter internally use iter() and throw same exception what it get from iter()


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