488

This is what I normally do in order to ascertain that the input is a list/tuple - but not a str. Because many times I stumbled upon bugs where a function passes a str object by mistake, and the target function does for x in lst assuming that lst is actually a list or tuple.

assert isinstance(lst, (list, tuple))

My question is: is there a better way of achieving this?

0

20 Answers 20

328

In python 2 only (not python 3):

assert not isinstance(lst, basestring)

Is actually what you want, otherwise you'll miss out on a lot of things which act like lists, but aren't subclasses of list or tuple.

12
  • 97
    Yes, this is the correct answer. In Python 3, basestring is gone, and you just check for isinstance(lst, str).
    – steveha
    Commented Dec 2, 2009 at 19:11
  • 5
    There are lots of things you can iterate like lists, eg set, generator expressions, iterators. There are exotic things like mmap, less exotic things like array which act pretty much like lists, and probably lots more I've forgotten. Commented Dec 4, 2009 at 6:57
  • 57
    It's worth noting that this doesn't guarantee that lst is iterable, whilst the original did (eg an int would pass this check) Commented Feb 28, 2012 at 4:25
  • 11
    @PeterGibson - A combination of the two will provide a valid, more restrictive check and ensure 1) lst is iterable, 2) lst is not a string. assert isinstance(lst, (list, tuple)) and assert not isinstance(lst, basestring)
    – strongMA
    Commented Jun 19, 2013 at 21:34
  • 7
    Well, this solution only checks for string derived types, but what about integers, doubles or any other non-iterable type? Commented Aug 4, 2013 at 21:58
174

Remember that in Python we want to use "duck typing". So, anything that acts like a list can be treated as a list. So, don't check for the type of a list, just see if it acts like a list.

But strings act like a list too, and often that is not what we want. There are times when it is even a problem! So, check explicitly for a string, but then use duck typing.

Here is a function I wrote for fun. It is a special version of repr() that prints any sequence in angle brackets ('<', '>').

def srepr(arg):
    if isinstance(arg, basestring): # Python 3: isinstance(arg, str)
        return repr(arg)
    try:
        return '<' + ", ".join(srepr(x) for x in arg) + '>'
    except TypeError: # catch when for loop fails
        return repr(arg) # not a sequence so just return repr

This is clean and elegant, overall. But what's that isinstance() check doing there? That's kind of a hack. But it is essential.

This function calls itself recursively on anything that acts like a list. If we didn't handle the string specially, then it would be treated like a list, and split up one character at a time. But then the recursive call would try to treat each character as a list -- and it would work! Even a one-character string works as a list! The function would keep on calling itself recursively until stack overflow.

Functions like this one, that depend on each recursive call breaking down the work to be done, have to special-case strings--because you can't break down a string below the level of a one-character string, and even a one-character string acts like a list.

Note: the try/except is the cleanest way to express our intentions. But if this code were somehow time-critical, we might want to replace it with some sort of test to see if arg is a sequence. Rather than testing the type, we should probably test behaviors. If it has a .strip() method, it's a string, so don't consider it a sequence; otherwise, if it is indexable or iterable, it's a sequence:

def is_sequence(arg):
    return (not hasattr(arg, "strip") and
            hasattr(arg, "__getitem__") or
            hasattr(arg, "__iter__"))

def srepr(arg):
    if is_sequence(arg):
        return '<' + ", ".join(srepr(x) for x in arg) + '>'
    return repr(arg)

EDIT: I originally wrote the above with a check for __getslice__() but I noticed that in the collections module documentation, the interesting method is __getitem__(); this makes sense, that's how you index an object. That seems more fundamental than __getslice__() so I changed the above.

10
  • 2
    @stantonk, thank you for saying so, but I think that there was already an accepted answer when I wrote this and I don't really expect the accepted answer to be changed.
    – steveha
    Commented May 25, 2012 at 4:29
  • @steveha: srepr is a very interesting idea. But I hold a different opinion than you on whether it needs to special-case str. Yes, str is by far the most obvious and common iterable that would cause an infinite recursion in srepr. But I can easily imagine user-defined iterables that behave in the same way (with or without good reason). Rather than special-case str, we should admit that this approach may run into an infinite recursion, and agree to some way of dealing with it. I'll post my suggestion in an answer.
    – max
    Commented Oct 29, 2012 at 7:19
  • 1
    I think this is definitely the right path. However, to handle the special case (of string in this scenario), I think we're better off asking the question "how would a human tell the difference?" For example, consider a function argument that can be a list of email addresses or a single email address (keeping in mind that a string is simply a list of characters). Give this variable to a human. How could the tell which it is? The easiest way I can think of is to see how many characters are in each item of the list. If it's greater than 1, the argument certainly can't be a list of characters.
    – Josh
    Commented Dec 13, 2012 at 16:56
  • 1
    I've thought about this a bit, and discussed it with a few other people, and I think srepr() is fine as-is. We need a recursive function to handle things like a list nested inside another list; but for strings we would rather have them printed as "foo" than as <'f', 'o', 'o'>. So an explicit check for a string makes good sense here. Also, there really aren't any other examples of data types where iterating always returns an iterable and recursion will always cause stack overflow, so we don't need a special property to test for this ("Practicality beats purity").
    – steveha
    Commented Mar 21, 2013 at 18:43
  • 1
    This does not work in Python 3, because strings have an __iter__() method in Python 3, but not in Python 2. You are missing parentheses in is_sequence(), it should read: return (not hasattr(arg, "strip") and (hasattr(arg, "__getitem__") or hasattr(arg, "__iter__")))
    – MiniQuark
    Commented Apr 6, 2017 at 7:46
126
H = "Hello"

if type(H) is list or type(H) is tuple:
    ## Do Something.
else
    ## Do Something.
10
  • 12
    Except it doesn't use the Python idiom of duck typing as other commenters have pointed out (though it does answer the question directly and cleanly). Commented Sep 18, 2015 at 23:54
  • 8
    This answer less acceptable than others because it doesn't allow for duck typing and also it fails in the simple case of subclassing (a typical example is the namedtuple class).
    – user197030
    Commented Feb 18, 2016 at 19:07
  • 14
    "Not allowing for duck typing" does not make the answer any less acceptable, especially given that this answer actually answers the question.
    – Petri
    Commented Feb 15, 2017 at 13:24
  • 8
    I've upvoted this answer, but if isinstance( H, (list, tuple) ): ... is shorter and clearer.
    – Dawn
    Commented Jul 6, 2017 at 13:53
  • 7
    Alternative syntax: if type(H) in [list, tuple]: Commented Aug 8, 2018 at 18:51
115

Python 3:

import collections.abc

if isinstance(obj, collections.abc.Sequence) and not isinstance(obj, str):
    print("`obj` is a sequence (list, tuple, etc) but not a string or a dictionary.")

Changed in version 3.3: Moved global namespace of "Collections Abstract Base Classes" from abc to collections.abc module. For backwards compatibility, they will continue to be visible in this module as well until version 3.8 where it will stop working.

Python 2:

import collections

if isinstance(obj, collections.Sequence) and not isinstance(obj, basestring):
    print "`obj` is a sequence (list, tuple, etc) but not a string or unicode or dictionary."
7
  • 5
    Wow! This works really nicely, and is much much succinct than any of the other correct answers. I had no idea that the built-in types inherit from collections.Sequence but I tested it and I see that they do. So does xrange. Even better, this test excludes dict, which has both __getitem__ and __iter__. Commented Jun 28, 2016 at 15:25
  • 1
    @SteveJorgensen Method Resolution Order defines the class search path used by Python to search for the right method to use in classes. Sequence is an abstract class. Commented Feb 27, 2018 at 12:36
  • 3
    In Python3, you can replace isinstance(obj, basestring) with isinstance(obj, str), and that should work. Commented Mar 5, 2018 at 21:36
  • 3
    in Python 3 you need and not isinstance(obj, bytes) ... if you want a list of things, and not just to enumerate bytes... Commented Mar 8, 2019 at 14:26
  • 2
    In Python 3 you actually want and not isinstance(obj, (str, collections.abc.ByteString))
    – sparkyb
    Commented Sep 9, 2020 at 16:48
41

Python with PHP flavor:

def is_array(var):
    return isinstance(var, (list, tuple))
3
  • 6
    Python is a duck-typed language, so you really should check if var has attribute __getitem__. Also the name is misleading, as there is also array module. And the var could also be a numpy.ndarray or any other type, which has __getitem__. See stackoverflow.com/a/1835259/470560 for the correct answer.
    – peterhil
    Commented Aug 26, 2012 at 12:03
  • 11
    @peterhil str also has __getitem__ therefore your check doesn't exclude str
    – erikbstack
    Commented Jan 23, 2015 at 13:50
  • 11
    So does a dict. Checking for __getitem__ is bad advice here.
    – Petri
    Commented Feb 15, 2017 at 13:18
13

Try this for readability and best practices:

Python2 - isinstance()

import types
if isinstance(lst, types.ListType) or isinstance(lst, types.TupleType):
    # Do something

Python3 - isinstance()

import typing
if isinstance(lst, typing.List) or isinstance(lst, typing.Tuple):
    # Do something

Hope it helps.

2
  • Python 3.6.5: AttributeError: module 'types' has no attribute 'ListType' Commented Aug 3, 2018 at 20:26
  • 1
    In Python 3, it is: from typing import List --> isinstance([1, 2, 3], List = True, and isinstance("asd", List) = False Commented Aug 3, 2018 at 20:28
11

Generally speaking, the fact that a function which iterates over an object works on strings as well as tuples and lists is more feature than bug. You certainly can use isinstance or duck typing to check an argument, but why should you?

That sounds like a rhetorical question, but it isn't. The answer to "why should I check the argument's type?" is probably going to suggest a solution to the real problem, not the perceived problem. Why is it a bug when a string is passed to the function? Also: if it's a bug when a string is passed to this function, is it also a bug if some other non-list/tuple iterable is passed to it? Why, or why not?

I think that the most common answer to the question is likely to be that developers who write f("abc") are expecting the function to behave as though they'd written f(["abc"]). There are probably circumstances where it makes more sense to protect developers from themselves than it does to support the use case of iterating across the characters in a string. But I'd think long and hard about it first.

1
  • 20
    "But I'd think long and hard about it first." I wouldn't. If the function is supposed to be a list-y function, then yes, it should treat them the same (i.e., given a list, spit it out backwards, things like that). However, if it is a function where one of the arguments can be either a string or a list of strings (which is a pretty common need) then forcing the developer using that function to always enter their parameter inside of an array seems a bit much. Also, think about how you'd handle, say, JSON input. You'd definitely want to treat a lists of objects different from a string. Commented Nov 29, 2011 at 0:55
6

This is not intended to directly answer the OP, but I wanted to share some related ideas.

I was very interested in @steveha answer above, which seemed to give an example where duck typing seems to break. On second thought, however, his example suggests that duck typing is hard to conform to, but it does not suggest that str deserves any special handling.

After all, a non-str type (e.g., a user-defined type that maintains some complicated recursive structures) may cause @steveha srepr function to cause an infinite recursion. While this is admittedly rather unlikely, we can't ignore this possibility. Therefore, rather than special-casing str in srepr, we should clarify what we want srepr to do when an infinite recursion results.

It may seem that one reasonable approach is to simply break the recursion in srepr the moment list(arg) == [arg]. This would, in fact, completely solve the problem with str, without any isinstance.

However, a really complicated recursive structure may cause an infinite loop where list(arg) == [arg] never happens. Therefore, while the above check is useful, it's not sufficient. We need something like a hard limit on the recursion depth.

My point is that if you plan to handle arbitrary argument types, handling str via duck typing is far, far easier than handling the more general types you may (theoretically) encounter. So if you feel the need to exclude str instances, you should instead demand that the argument is an instance of one of the few types that you explicitly specify.

1
  • 1
    Hmm, I like the way you think. I think you cannot argue that my code is practical: there is exactly one common case, str, that the special-case code handles. But maybe there should be a new standard property that code can inspect, .__atomic__ let's say, that signals that something cannot be broken down any further. It's probably too late to add another builtin function atomic() to Python, but maybe we can add from collections import atomic or something.
    – steveha
    Commented Oct 29, 2012 at 19:21
6

I find such a function named is_sequence in tensorflow.

def is_sequence(seq):
  """Returns a true if its input is a collections.Sequence (except strings).
  Args:
    seq: an input sequence.
  Returns:
    True if the sequence is a not a string and is a collections.Sequence.
  """
  return (isinstance(seq, collections.Sequence)
and not isinstance(seq, six.string_types))

And I have verified that it meets your needs.

5

The str object doesn't have an __iter__ attribute

>>> hasattr('', '__iter__')
False 

so you can do a check

assert hasattr(x, '__iter__')

and this will also raise a nice AssertionError for any other non-iterable object too.

Edit: As Tim mentions in the comments, this will only work in python 2.x, not 3.x

3
  • 11
    Careful: In Python 3 hasattr('','__iter__') returns True. And of course that makes sense since you can iterate over a string. Commented Dec 2, 2009 at 20:23
  • 1
    Really? I didn't know that. I always thought this was an elegant solution to the problem, oh well.
    – Moe
    Commented Dec 2, 2009 at 21:08
  • 1
    This test didn't work on pyodbc.Row. It has no iter__() but it more or less behaves like a list (it even defines "__setitem"). You can iterate its elements just fine. The len() function works and you can index its elements. I am struggling to find the right combination that catches all list types, but excludes strings. I think I will settle for a check on "getitem" and "len" while explicitly excluding basestring.
    – haridsv
    Commented Jan 15, 2010 at 6:13
2

I do this in my testcases.

def assertIsIterable(self, item):
    #add types here you don't want to mistake as iterables
    if isinstance(item, basestring): 
        raise AssertionError("type %s is not iterable" % type(item))

    #Fake an iteration.
    try:
        for x in item:
            break;
    except TypeError:
        raise AssertionError("type %s is not iterable" % type(item))

Untested on generators, I think you are left at the next 'yield' if passed in a generator, which may screw things up downstream. But then again, this is a 'unittest'

2

In "duck typing" manner, how about

try:
    lst = lst + []
except TypeError:
    #it's not a list

or

try:
    lst = lst + ()
except TypeError:
    #it's not a tuple

respectively. This avoids the isinstance / hasattr introspection stuff.

You could also check vice versa:

try:
    lst = lst + ''
except TypeError:
    #it's not (base)string

All variants do not actually change the content of the variable, but imply a reassignment. I'm unsure whether this might be undesirable under some circumstances.

Interestingly, with the "in place" assignment += no TypeError would be raised in any case if lst is a list (not a tuple). That's why the assignment is done this way. Maybe someone can shed light on why that is.

2

Another version of duck-typing to help distinguish string-like objects from other sequence-like objects.

The string representation of string-like objects is the string itself, so you can check if you get an equal object back from the str constructor:

# If a string was passed, convert it to a single-element sequence
if var == str(var):
    my_list = [var]

# All other iterables
else: 
    my_list = list(var)

This should work for all objects compatible with str and for all kinds of iterable objects.

1

simplest way... using any and isinstance

>>> console_routers = 'x'
>>> any([isinstance(console_routers, list), isinstance(console_routers, tuple)])
False
>>>
>>> console_routers = ('x',)
>>> any([isinstance(console_routers, list), isinstance(console_routers, tuple)])
True
>>> console_routers = list('x',)
>>> any([isinstance(console_routers, list), isinstance(console_routers, tuple)])
True
1

Python 3 has this:

from typing import List

def isit(value):
    return isinstance(value, List)

isit([1, 2, 3])  # True
isit("test")  # False
isit({"Hello": "Mars"})  # False
isit((1, 2))  # False

So to check for both Lists and Tuples, it would be:

from typing import List, Tuple

def isit(value):
    return isinstance(value, List) or isinstance(value, Tuple)
0
0
assert (type(lst) == list) | (type(lst) == tuple), "Not a valid lst type, cannot be string"
3
  • 2
    is this an okay way to do this?
    – ersh
    Commented Apr 17, 2019 at 8:40
  • 1
    Welcome to SO. An explanation of why this code answers the question would be helpful.
    – Nick
    Commented Apr 17, 2019 at 8:55
  • Yeah of course, I use methods similar to this since the pipe is treated as an or so you are asserting that the type must be a list or type tuple outputting a custom message error for error handling. I believe it answers the question, but I was curious as if it is an effective way of doing this as I am still trying to get the hang of writing the most optimized code. I am unsure however if this code misses out of things that may act like lists/tuples but aren't subclasses of either, as how the accepted answer addresses that possibility. Thanks!
    – ersh
    Commented Apr 18, 2019 at 5:38
0
assert type(lst).__name__ in ('tuple', 'list')

It is also easy to expand for more check, e.g. numpy array (ndarray) without importing numpy.

-1

Just do this

if type(lst) in (list, tuple):
    # Do stuff
2
  • 5
    isinstance(lst, (list, tuple))
    – Davi Lima
    Commented Aug 31, 2017 at 15:40
  • @DaviLima OK, that is another way. But type() is recommended for in-built types and isinstance for Classes.
    – ATOzTOA
    Commented Aug 31, 2017 at 19:22
-3

in python >3.6

import collections
isinstance(set(),collections.abc.Container)
True
isinstance([],collections.abc.Container)
True
isinstance({},collections.abc.Container)
True
isinstance((),collections.abc.Container)
True
isinstance(str,collections.abc.Container)
False
1
  • 6
    In the last check you use a type str, not a string. Try isinstance('my_string', collections.abc.Container) and you will see that it will return True. This is because abc.Container supplies the __contains__ method, and strings have it, of course.
    – Georgy
    Commented Mar 11, 2020 at 16:01
-6

I tend to do this (if I really, really had to):

for i in some_var:
   if type(i) == type(list()):
       #do something with a list
   elif type(i) == type(tuple()):
       #do something with a tuple
   elif type(i) == type(str()):
       #here's your string
4
  • 5
    You almost never should do this. What happens if I some_var is an instance of a class that is a subclass of list()? Your code won't have any idea what to do with it, even though it will work perfectly under the "do something with a list" code. And you rarely need to care about the difference between a list and a tuple. Sorry, -1.
    – steveha
    Commented Dec 2, 2009 at 20:11
  • 1
    No need to write type(tuple()) -- tuple will do. Same for list. Also, both str and unicode extend basestring, which is the real string type, so you want to check for that instead. Commented Jan 9, 2011 at 1:35
  • @DrBloodmoney: Accidental downvote. Please (trivially) edit your answer to enable me to remove the downvote.
    – SabreWolfy
    Commented Apr 26, 2012 at 9:27
  • Equality doesn't seem like a meaningful comparison for types, to me. I'd test for identity instead: type(i) is list. Also, type(list()) is just list itself... Finally, this doesn't work gracefully with subclasses. If i is in fact and OrderedDict, or some kind of namedtuple, this code will treat is as a string.
    – bukzor
    Commented Jun 7, 2013 at 22:01

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