(Python Tutorial – 025)
In this article, you’ll learn everything about Python tuples. More specifically, what are tuples, how to create them, when to use them and various methods you should be familiar with.
A tuple in Python is similar to a list. The difference between the two is that we cannot change the elements of a tuple once it is assigned whereas we can change the elements of a list.
Creating a Tuple
A tuple is created by placing all the items (elements) inside parentheses
(), separated by commas. The parentheses are optional, however, it is a good practice to use them.
A tuple can have any number of items and they may be of different types (integer, float, list, string, etc.).
# Different types of tuples # Empty tuple my_tuple = () print(my_tuple) # Tuple having integers my_tuple = (1, 2, 3) print(my_tuple) # tuple with mixed datatypes my_tuple = (1, "Hello", 3.4) print(my_tuple) # nested tuple my_tuple = ("mouse", [8, 4, 6], (1, 2, 3)) print(my_tuple)
() (1, 2, 3) (1, 'Hello', 3.4) ('mouse', [8, 4, 6], (1, 2, 3))
A tuple can also be created without using parentheses. This is known as tuple packing.
my_tuple = 3, 4.6, "dog" print(my_tuple) # tuple unpacking is also possible a, b, c = my_tuple print(a) # 3 print(b) # 4.6 print(c) # dog
(3, 4.6, 'dog') 3 4.6 dog
Creating a tuple with one element is a bit tricky.
Having one element within parentheses is not enough. We will need a trailing comma to indicate that it is, in fact, a tuple.
my_tuple = ("hello") print(type(my_tuple)) # <class 'str'> # Creating a tuple having one element my_tuple = ("hello",) print(type(my_tuple)) # <class 'tuple'> # Parentheses is optional my_tuple = "hello", print(type(my_tuple)) # <class 'tuple'>
<class 'str'> <class 'tuple'> <class 'tuple'>
Access Tuple Elements
There are various ways in which we can access the elements of a tuple.
We can use the index operator
 to access an item in a tuple, where the index starts from 0.
So, a tuple having 6 elements will have indices from 0 to 5. Trying to access an index outside of the tuple index range(6,7,… in this example) will raise an
The index must be an integer, so we cannot use float or other types. This will result in
Likewise, nested tuples are accessed using nested indexing, as shown in the example below.
# Accessing tuple elements using indexing my_tuple = ('p','e','r','m','i','t') print(my_tuple) # 'p' print(my_tuple) # 't' # IndexError: list index out of range # print(my_tuple) # Index must be an integer # TypeError: list indices must be integers, not float # my_tuple[2.0] # nested tuple n_tuple = ("mouse", [8, 4, 6], (1, 2, 3)) # nested index print(n_tuple) # 's' print(n_tuple) # 4
p t s 4
2. Negative Indexing
Python allows negative indexing for its sequences.
The index of -1 refers to the last item, -2 to the second last item and so on.
# Negative indexing for accessing tuple elements my_tuple = ('p', 'e', 'r', 'm', 'i', 't') # Output: 't' print(my_tuple[-1]) # Output: 'p' print(my_tuple[-6])
We can access a range of items in a tuple by using the slicing operator colon
# Accessing tuple elements using slicing my_tuple = ('p','r','o','g','r','a','m','i','z') # elements 2nd to 4th # Output: ('r', 'o', 'g') print(my_tuple[1:4]) # elements beginning to 2nd # Output: ('p', 'r') print(my_tuple[:-7]) # elements 8th to end # Output: ('i', 'z') print(my_tuple[7:]) # elements beginning to end # Output: ('p', 'r', 'o', 'g', 'r', 'a', 'm', 'i', 'z') print(my_tuple[:])
('r', 'o', 'g') ('p', 'r') ('i', 'z') ('p', 'r', 'o', 'g', 'r', 'a', 'm', 'i', 'z')
Slicing can be best visualized by considering the index to be between the elements as shown below. So if we want to access a range, we need the index that will slice the portion from the tuple.
Changing a Tuple
Unlike lists, tuples are immutable.
This means that elements of a tuple cannot be changed once they have been assigned. But, if the element is itself a mutable data type like list, its nested items can be changed.
We can also assign a tuple to different values (reassignment).
# Changing tuple values my_tuple = (4, 2, 3, [6, 5]) # TypeError: 'tuple' object does not support item assignment # my_tuple = 9 # However, item of mutable element can be changed my_tuple = 9 # Output: (4, 2, 3, [9, 5]) print(my_tuple) # Tuples can be reassigned my_tuple = ('p', 'r', 'o', 'g', 'r', 'a', 'm', 'i', 'z') # Output: ('p', 'r', 'o', 'g', 'r', 'a', 'm', 'i', 'z') print(my_tuple)
(4, 2, 3, [9, 5]) ('p', 'r', 'o', 'g', 'r', 'a', 'm', 'i', 'z')
We can use
+ operator to combine two tuples. This is called concatenation.
We can also repeat the elements in a tuple for a given number of times using the
* operations result in a new tuple.
# Concatenation # Output: (1, 2, 3, 4, 5, 6) print((1, 2, 3) + (4, 5, 6)) # Repeat # Output: ('Repeat', 'Repeat', 'Repeat') print(("Repeat",) * 3)
(1, 2, 3, 4, 5, 6) ('Repeat', 'Repeat', 'Repeat')
Deleting a Tuple
As discussed above, we cannot change the elements in a tuple. It means that we cannot delete or remove items from a tuple.
Deleting a tuple entirely, however, is possible using the keyword del.
# Deleting tuples my_tuple = ('p', 'r', 'o', 'g', 'r', 'a', 'm', 'i', 'z') # can't delete items # TypeError: 'tuple' object doesn't support item deletion # del my_tuple # Can delete an entire tuple del my_tuple # NameError: name 'my_tuple' is not defined print(my_tuple)
Traceback (most recent call last): File "<string>", line 12, in <module> NameError: name 'my_tuple' is not defined
Methods that add items or remove items are not available with tuple. Only the following two methods are available.
Some examples of Python tuple methods:
my_tuple = ('a', 'p', 'p', 'l', 'e',) print(my_tuple.count('p')) # Output: 2 print(my_tuple.index('l')) # Output: 3
Other Tuple Operations
1. Tuple Membership Test
We can test if an item exists in a tuple or not, using the keyword
# Membership test in tuple my_tuple = ('a', 'p', 'p', 'l', 'e',) # In operation print('a' in my_tuple) print('b' in my_tuple) # Not in operation print('g' not in my_tuple)
True False True
2. Iterating Through a Tuple
We can use a
for loop to iterate through each item in a tuple.
# Using a for loop to iterate through a tuple for name in ('John', 'Kate'): print("Hello", name)
Hello John Hello Kate
Advantages of Tuple over List
Since tuples are quite similar to lists, both of them are used in similar situations. However, there are certain advantages of implementing a tuple over a list. Below listed are some of the main advantages:
- We generally use tuples for heterogeneous (different) data types and lists for homogeneous (similar) data types.
- Since tuples are immutable, iterating through a tuple is faster than with list. So there is a slight performance boost.
- Tuples that contain immutable elements can be used as a key for a dictionary. With lists, this is not possible.
- If you have data that doesn’t change, implementing it as tuple will guarantee that it remains write-protected.
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