Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free.

This question already has an answer here:

In Python, when should you use lists and when tuples?

Sometimes you don't have a choice, for example if you have

"hello %s you are %s years old" % x

then x must be a tuple.

But if I am the one who designs the API and gets to choose the data types, then what are the guidelines?

share|improve this question

marked as duplicate by devnull, gnat, jonrsharpe Jun 1 '14 at 12:55

This question has been asked before and already has an answer. If those answers do not fully address your question, please ask a new question.

7 Answers 7

up vote 101 down vote accepted

There's also a strong culture of tuples being for heterogenous collections, similar to what you'd use structs for in C, and lists being for homogenous collections, similar to what you'd use arrays for. But I've never quite squared this with the mutability issue mentioned in the other answers. Mutability has teeth to it (you actually can't change a tuple), while homogeneity is not enforced, and so seems to be a much less interesting distinction.

share|improve this answer
@Ned so, say you wanted to implement a Point class. Would you use a tuple or a list to hold x, y, z coordinates? You would want to change the values (go with list), but at the same time order and position is meaningful and consistent (go with tuple?). –  Arlen Aug 23 '11 at 15:13
You're missing the semantics of it by comparing to the wrong feature of struct. Tuples are useful when position has relevance - the best example comes from coordinates in mathematics, which even uses the same syntax: (x, y, z) –  Izkata Apr 18 '13 at 19:08
I've never heard this before, nor have I spotted it as a pattern in code (and I've read a lot of Python code). –  larsmans Sep 19 '13 at 13:11
Mutability aside, why don't we always use dicts instead of tuples? This would give the advantage of naming the fields, which would make accessing individual elements much more readable... –  GreenAsJade Feb 19 at 5:48
Arlen: Mutable points are actually a really bad idea. Stick with immutable points and create new ones, they're cheap enough. If you are dealing with millions of points, use the Flyweight pattern and keep a cache of recently used points. –  John Cowan Mar 31 at 13:37

Tuples are fixed size in nature whereas lists are dynamic.
In other words, a tuple is immutable whereas a list is mutable.

  1. You can't add elements to a tuple. Tuples have no append or extend method.
  2. You can't remove elements from a tuple. Tuples have no remove or pop method.
  3. You can find elements in a tuple, since this doesn’t change the tuple.
  4. You can also use the in operator to check if an element exists in the tuple.

  • Tuples are faster than lists. If you're defining a constant set of values and all you're ever going to do with it is iterate through it, use a tuple instead of a list.

  • It makes your code safer if you “write-protect” data that does not need to be changed. Using a tuple instead of a list is like having an implied assert statement that this data is constant, and that special thought (and a specific function) is required to override that.

  • Some tuples can be used as dictionary keys (specifically, tuples that contain immutable values like strings, numbers, and other tuples). Lists can never be used as dictionary keys, because lists are not immutable.

Source: Dive into Python 3

share|improve this answer
The "write-protect" analogy only goes so far: the membership of a tuple cannot be changed but mutable elements of a tuple can be changed: l = list(); t = (l, l); l.append(1) –  Ned Deily Nov 10 '09 at 15:06
@mike: how's that? –  jldupont Nov 10 '09 at 16:32
What makes you think tuples are faster then lists? –  Winston Ewert Jan 1 '12 at 2:41
Tuples aren't faster than list. In [220]: t_range = tuple(range(100000)) In [221]: 99999 in t_range Out[221]: True In [222]: l_range = range(100000) In [223]: 99999 in l_range Out[223]: True In [224]: %%timeit .....: 99999 in l_range .....: 100 loops, best of 3: 2.97 ms per loop In [225]: %%timeit .....: 99999 in t_range .....: 100 loops, best of 3: 3.01 ms per loop –  kracekumar Nov 1 '13 at 16:29
@kracekumar: That's because in your example you first created a list and then made it a tuple. Obviously it is slower. Look at this: $ python -m timeit "for x in xrange(10000):" " ''.join( ['a','b','c','d','e','f','g'] )" 1000 loops, best of 3: 1.91 msec per loop $ python -m timeit "for x in xrange(10000):" " ''.join( ('a','b','c','d','e','f','g') )" 1000 loops, best of 3: 1.17 msec per loop –  LeartS Mar 28 '14 at 15:37

I believe (and I am hardly well-versed in Python) that the main difference is that a tuple is immutable (it can't be changed in place after assignment) and a list is mutable (you can append, change, subtract, etc).

So, I tend to make my tuples things that shouldn't change after assignment and my lists things that can.

share|improve this answer
Well, why would you not use a list even if you don't plan to mutate? –  KalEl Sep 19 '13 at 10:49
@KalEl A few of the other answers on this post explain why one might choose to use a tuple over a list. –  thornomad Sep 19 '13 at 13:20

Must it be mutable? Use a list. Must it not be mutable? Use a tuple.

Otherwise, it's a question of choice.

For collections of heterogeneous objects (like a address broken into name, street, city, state and zip) I prefer to use a tuple. They can always be easily promoted to named tuples.

Likewise, if the collection is going to be iterated over, I prefer a list. If it's just a container to hold multiple objects as one, I prefer a tuple.

share|improve this answer
This is the only good answer here. It states the truth, not just mutable/immutable stuff which everyone knows. –  Oleh Prypin Sep 25 '12 at 16:44
Why would you use a tuple, and even a named tuple, instead of a dict? –  GreenAsJade Feb 19 at 5:50

The first thing you need to decide is whether the data structure needs to be mutable or not. As has been mentioned, lists are mutable, tuples are not. This also means that tuples can be used for dictionary keys, wheres lists cannot.

In my experience, tuples are generally used where order and position is meaningful and consistant. For example, in creating a data structure for a choose your own adventure game, I chose to use tuples instead of lists because the position in the tuple was meaningful. Here is one example from that data structure:

pages = {'foyer': {'text' : "some text", 
          'choices' : [('open the door', 'rainbow'),
                     ('go left into the kitchen', 'bottomless pit'),
                     ('stay put','foyer2')]},}

The first position in the tuple is the choice displayed to the user when they play the game and the second position is the key of the page that choice goes to and this is consistent for all pages.

Tuples are also more memory efficient than lists, though I'm not sure when that benefit becomes apparent.

Also check out the chapters on lists and tuples in Think Python.

share|improve this answer
What makes you think tuples are more memory efficient then lists? –  Winston Ewert Jan 1 '12 at 2:42
+1 - while mutability/immutability is an important consideration, position having relevance is the primary reason - mathematics even uses the same syntax for coordinate systems: (x, y, z) –  Izkata Apr 18 '13 at 19:10
Why don't you use dicts instead of tuples, which have named entries? It's not clear to me why the position is significant in your case: one is the action the other is the result ... how should I (the reader) know in advance that this is the order of these things? In your case it's debatable, but I see wider tuples used a lot where the access of them becomes next_thing = result_tuple[5]. 5? Really? Why 5? Wouldn't it be better to say next_thing = result['next_item'] ? –  GreenAsJade Feb 19 at 5:47

But if I am the one who designs the API and gets to choose the data types, then what are the guidelines?

For input parameters it's best to accept the most generic interface that does what you need. It is seldom just a tuple or list - more often it's sequence, sliceable or even iterable. Python's duck typing usually gets it for free, unless you explicitly check input types. Don't do that unless absolutely unavoidable.

For the data that you produce (output parameters) just return what's most convenient for you, e.g. return whatever datatype you keep or whatever your helper function returns.

One thing to keep in mind is to avoid returning a list (or any other mutable) that's part of your state, e.g.

class ThingsKeeper
    def __init__(self):
        self.__things = []

    def things(self):
        return self.__things  #outside objects can now modify your state

    def safer(self):
        return self.__things[:]  #it's copy-on-write, shouldn't hurt performance
share|improve this answer
So if you have a function, and it has a dreaded default method parameter (say, a list), and you return that parameter, code outside can now mess with the list? –  Robert Grant Feb 19 at 9:56
@RobertGrant Correct! One more reason to use the "None as the default with the if in the function prologue" pattern. It might be more verbose but avoids nasty surprises like this one. –  Rafał Dowgird Feb 19 at 11:13
Yeah, that makes perfect sense (and I would say I think that eliminates the need for the default parameters to behave the way they do, but then I get yelled at :)). Thanks. –  Robert Grant Feb 20 at 13:13

A minor but notable advantage of a list over a tuple is that lists tend to be slightly more portable. Standard tools are less likely to support tuples. JSON, for example, does not have a tuple type. YAML does, but its syntax is ugly compared to its list syntax, which is quite nice.

In those cases, you may wish to use a tuple internally then convert to list as part of an export process. Alternately, you might want to use lists everywhere for consistency.

share|improve this answer

Not the answer you're looking for? Browse other questions tagged or ask your own question.