There are three main ways to implement the Singleton pattern in Python: 1. Use a decorator to control the creation and reuse of class instances by defining closure functions. The advantages are that the code is clear and reusable, but the debugging is not intuitive enough; 2. Rewrite the \_\_new\_\_ method to maintain instances within the class. The advantages are more native and object-oriented, but you need to pay attention to multi-threaded safety issues; 3. Use the natural singleton characteristics of the module to directly create instances in the module and export and use, which is simple and easy to maintain but poor flexibility. Choose the appropriate method according to actual needs: flexibly control the selection of decorators, object-oriented selection of \_\_new\_\_, and use the modules simply globally.
Singleton is a commonly used design pattern to ensure that a class has only one instance and provides a global access point. In Python, there are several common implementation methods. Let me briefly talk about how to operate it.

Implement Singleton with a decorator
Decorators are one of the very practical features in Python. They are used to achieve the simple and efficient Singleton mode.
You can define a decorator that creates an instance on the first call, and then return this instance every time:

def singleton(cls): instances = {} def get_instance(*args, **kwargs): If cls not in instances: instances[cls] = cls(*args, **kwargs) return instances[cls] return get_instance @singleton class MySingleton: pass
The advantage of this method is that the code is clear, reusable, and it is suitable for multiple classes. The disadvantage is that it may not be very intuitive when debugging, because what is actually returned is the function wrapped by the decorator, not the original class itself.
Implementation using the __new__
method
This is another common practice, suitable for situations where you don't want to use a decorator.

You can override the __new__
method in the class to control the creation process of the object:
class Singleton: _instance = None def __new__(cls, *args, **kwargs): if not isinstance(cls._instance, cls): cls._instance = super().__new__(cls, *args, **kwargs) return cls._instance
This way, each call to Singleton()
will return the same instance. This method is more "native" and does not require additional encapsulation, but you should pay attention to handling security issues in multi-threaded situations (locking can be added).
Using module-level singleton
Python modules are naturally singletons, because modules will only be imported once. If you don't pursue an object-oriented approach, you can put some state or configuration in the module:
For example, create a my_singleton.py
file:
class MySingleton: pass instance = MySingleton()
Then just import this instance
in other places:
from my_singleton import instance
This method is the easiest and easiest to maintain. However, the flexibility is not as good as the first two, because the initialization logic cannot be dynamically controlled once loaded.
Basically these are the methods. Different implementation methods can be selected for different scenarios: if you want to control flexibly, use a decorator, and if you want an object-oriented style, rewrite __new__
. If it is just a simple global variable, it is enough to use a module.
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