


How can you implement custom iterators in Python using __iter__ and __next__?
Jun 19, 2025 am 01:12 AMTo implement a custom iterator, you need to define the __iter__ and __next__ methods in the class. ① The __iter__ method returns the iterator object itself, usually self, to be compatible with iterative environments such as for loops; ② The __next__ method controls the value of each iteration, returns the next element in the sequence, and when there are no more items, StopIteration exception should be thrown; ③ The status must be tracked correctly and the termination conditions must be set to avoid infinite loops; ④ Complex logic such as file line filtering can be encapsulated, and resource cleaning and memory management can be paid attention to; ⑤ For simple logic, you can consider using the generator function yield instead, but you need to choose a suitable method based on the specific scenario.
To implement custom iterators in Python, you need to define both __iter__
and __next__
methods in your class. These two special methods allow your object to be iterable and control how the iteration behaves step by step.
Understanding __iter__
and __next__
The __iter__
method should return the iterator object itself — usually self
. This is what makes your object compatible with for-loops and other iteration contexts.
The __next__
method defines what happens each time the next item is requested. It should return the next value in the sequence or raise StopIteration
when there are no more items to return.
If you don't raise StopIteration
at the end of your sequence, your iterator will keep running indefinitely, which can cause problems like infinite loops.
Creating a Simple Custom Iterator
Let's say you want to create an iterator that goes through a range of numbers but skips every second number.
class SkipEvenIterator: def __init__(self, max_value): self.current = 0 self.max_value = max_value def __iter__(self): Return self def __next__(self): if self.current > self.max_value: raise StopIteration result = self.current self.current = 2 return result
Now you can use this in a loop:
for num in SkipEvenIterator(10): print(num)
This would output: 0, 2, 4, 6, 8, 10.
A few things to remember:
- Your
__next__
method must track state correctly. - Always include a stopping condition to avoid infinite loops.
- You can store any kind of state inside your object — integers, strings, even other objects.
Handling More Complex Iteration Logic
Sometimes you might not just want to iterate over numbers. For example, imagine iterating over lines in a file that match a certain pattern.
In these cases, your __iter__
could open a file or prepare a data source, and __next__
processes it line by line or item by item.
Here's a simplified version:
class GrepLikeIterator: def __init__(self, filename, keyword): self.filename = filename self.keyword = keyword self.file = None self.line = None def __iter__(self): self.file = open(self.filename, 'r') Return self def __next__(self): While True: line = self.file.readline() if not line: self.file.close() raise StopIteration if self.keyword in line: return line.strip()
This lets you do something like:
for line in GrepLikeIterator('data.txt', 'error'): print(line)
Just make sure:
- You properly handle resource cleanup (like closing files).
- Avoid loading large datasets into memory all at once.
- Make sure your logic doesn't accidentally skip values ??or repeat them unintentionally.
When to Use Generators Instead
While implementing __iter__
and __next__
gives you full control, sometimes using a generator function with yield
is simpler and cleaner. If your iteration logic isn't too complex, consider writing a generator instead.
For example:
def skip_even_generator(max_value): current = 0 While current <= max_value: yield current current = 2
You can still use this in a for-loop, and Python handles the state automatically.
But if you need to encapsulate state and behavior together — especially when combining with other object-oriented features — defining a custom iterator class is the right approach.
So yeah, implementing custom iterators in Python means writing classes with __iter__
and __next__
, handling state yourself, and making sure to stop cleanly. Not too hard once you get the hang of it, but definitely easy to mess up small details like forgetting to raise StopIteration
.
The above is the detailed content of How can you implement custom iterators in Python using __iter__ and __next__?. For more information, please follow other related articles on the PHP Chinese website!

Hot AI Tools

Undress AI Tool
Undress images for free

Undresser.AI Undress
AI-powered app for creating realistic nude photos

AI Clothes Remover
Online AI tool for removing clothes from photos.

Clothoff.io
AI clothes remover

Video Face Swap
Swap faces in any video effortlessly with our completely free AI face swap tool!

Hot Article

Hot Tools

Notepad++7.3.1
Easy-to-use and free code editor

SublimeText3 Chinese version
Chinese version, very easy to use

Zend Studio 13.0.1
Powerful PHP integrated development environment

Dreamweaver CS6
Visual web development tools

SublimeText3 Mac version
God-level code editing software (SublimeText3)

Hot Topics

A common method to traverse two lists simultaneously in Python is to use the zip() function, which will pair multiple lists in order and be the shortest; if the list length is inconsistent, you can use itertools.zip_longest() to be the longest and fill in the missing values; combined with enumerate(), you can get the index at the same time. 1.zip() is concise and practical, suitable for paired data iteration; 2.zip_longest() can fill in the default value when dealing with inconsistent lengths; 3.enumerate(zip()) can obtain indexes during traversal, meeting the needs of a variety of complex scenarios.

InPython,iteratorsareobjectsthatallowloopingthroughcollectionsbyimplementing__iter__()and__next__().1)Iteratorsworkviatheiteratorprotocol,using__iter__()toreturntheiteratorand__next__()toretrievethenextitemuntilStopIterationisraised.2)Aniterable(like

To call Python code in C, you must first initialize the interpreter, and then you can achieve interaction by executing strings, files, or calling specific functions. 1. Initialize the interpreter with Py_Initialize() and close it with Py_Finalize(); 2. Execute string code or PyRun_SimpleFile with PyRun_SimpleFile; 3. Import modules through PyImport_ImportModule, get the function through PyObject_GetAttrString, construct parameters of Py_BuildValue, call the function and process return

The descriptor protocol is a mechanism used in Python to control attribute access behavior. Its core answer lies in implementing one or more of the __get__(), __set__() and __delete__() methods. 1.__get__(self,instance,owner) is used to obtain attribute value; 2.__set__(self,instance,value) is used to set attribute value; 3.__delete__(self,instance) is used to delete attribute value. The actual uses of descriptors include data verification, delayed calculation of properties, property access logging, and implementation of functions such as property and classmethod. Descriptor and pr

ForwardreferencesinPythonallowreferencingclassesthatarenotyetdefinedbyusingquotedtypenames.TheysolvetheissueofmutualclassreferenceslikeUserandProfilewhereoneclassisnotyetdefinedwhenreferenced.Byenclosingtheclassnameinquotes(e.g.,'Profile'),Pythondela

Processing XML data is common and flexible in Python. The main methods are as follows: 1. Use xml.etree.ElementTree to quickly parse simple XML, suitable for data with clear structure and low hierarchy; 2. When encountering a namespace, you need to manually add prefixes, such as using a namespace dictionary for matching; 3. For complex XML, it is recommended to use a third-party library lxml with stronger functions, which supports advanced features such as XPath2.0, and can be installed and imported through pip. Selecting the right tool is the key. Built-in modules are available for small projects, and lxml is used for complex scenarios to improve efficiency.

When multiple conditional judgments are encountered, the if-elif-else chain can be simplified through dictionary mapping, match-case syntax, policy mode, early return, etc. 1. Use dictionaries to map conditions to corresponding operations to improve scalability; 2. Python 3.10 can use match-case structure to enhance readability; 3. Complex logic can be abstracted into policy patterns or function mappings, separating the main logic and branch processing; 4. Reducing nesting levels by returning in advance, making the code more concise and clear. These methods effectively improve code maintenance and flexibility.

Python multithreading is suitable for I/O-intensive tasks. 1. It is suitable for scenarios such as network requests, file reading and writing, user input waiting, etc., such as multi-threaded crawlers can save request waiting time; 2. It is not suitable for computing-intensive tasks such as image processing and mathematical operations, and cannot operate in parallel due to global interpreter lock (GIL). Implementation method: You can create and start threads through the threading module, and use join() to ensure that the main thread waits for the child thread to complete, and use Lock to avoid data conflicts, but it is not recommended to enable too many threads to avoid affecting performance. In addition, the ThreadPoolExecutor of the concurrent.futures module provides a simpler usage, supports automatic management of thread pools and asynchronous acquisition
