Python Iterator
An iterator is an object that contains a countable number of values.
Iterators are iterable objects, which means you can iterate over all values.
Technically, in Python, an iterator is an object that implements the iterator protocol, which contains methods iter() and next().
Iterator VS Iterable object (Iterable)
Lists, tuples, dictionaries and sets are all iterable objects. They are iterable containers from which you can get an Iterator.
All these objects have iter() methods for getting iterators:
Instances
Return an iterator from a tuple, and print Each value:
mytuple = ("apple", "banana", "cherry") myit = iter(mytuple) print(next(myit)) print(next(myit)) print(next(myit))
Running instance
apple banana cherry
Even strings are iterable objects and can return iterators:
Instance
Strings are also iterable objects, containing a series of characters:
mystr = "banana" myit = iter(mystr) print(next(myit)) print(next(myit)) print(next(myit)) print(next(myit)) print(next(myit)) print(next(myit))
Running instance
b a n a n a
Traversing iterator
We can also use a for loop Traverse the iterable object:
Instance
Iterate over the values of the tuple:
mytuple = ("apple", "banana", "cherry") for x in mytuple: print(x)
Run the instance
python_iterator_loop_1.py apple banana cherry
Instance
Iterate over the characters in the string:
mystr = "banana" for x in mystr: print(x)
Run the example
python_iterator_loop_2.py b a n a n a
Tip: The for loop actually creates an iterator object, and for each loop Execute next() method.
Creating an iterator
To create an object/class as an iterator, the iter() and next() methods must be implemented for the object.
As you learned in the Python Classes/Objects chapter, all classes have a function called init() which allows you to do some initialization when creating an object. The
iter() method works similarly, you can perform operations (initialization, etc.) but must always return the iterator object itself. The
next() method also allows you to perform operations and must return the next item in the sequence.
Example
Create an iterator that returns numbers, starting from 1, and each sequence will increase by 1 (returns 1, 2, 3, 4, 5, etc.) :
class MyNumbers: def __iter__(self): self.a = 1 return self def __next__(self): x = self.a self.a += 1 return x myclass = MyNumbers() myiter = iter(myclass) print(next(myiter)) print(next(myiter)) print(next(myiter)) print(next(myiter)) print(next(myiter))
Running Example
python_iterator_create_1.py 1 2 3 4 5
StopIteration
If you have enough next() statements, or use them in a for loop, the above example will go on forever.
To prevent iteration from taking forever, we can use the StopIteration statement.
In the next() method, we can add a termination condition to raise an error if the iteration completes the specified number of times:
Example
Stop after 20 iterations:
class MyNumbers: def __iter__(self): self.a = 1 return self def __next__(self): if self.a <= 20: x = self.a self.a += 1 return x else: raise StopIteration myclass = MyNumbers() myiter = iter(myclass) for x in myiter: print(x)
Running instance
python_iterator_create_2.py 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20
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