Table of Contents
How to Implement getattr on a Module
Attempted Implementation and Challenges
Possible Solutions
Conclusion
Home Backend Development Python Tutorial How to Implement getattr Functionality for Modules in Python?

How to Implement getattr Functionality for Modules in Python?

Oct 29, 2024 pm 08:48 PM

How to Implement getattr Functionality for Modules in Python?

How to Implement getattr on a Module

In Python, objects can have dynamic attributes that are not defined in their class definition. This dynamic behavior is achieved through the getattr method, which is called when an attribute lookup fails on an object. Unfortunately, modules do not inherently support __getattr__.

The goal is to mimic getattr functionality on a module such that when an attribute is not found, an instance of a predefined class is created with the same name and the method with that name is invoked on that instance.

Attempted Implementation and Challenges

An attempt was made to implement getattr on a module as follows:

<code class="python">class A(object):
    def salutation(self, accusative):
        print "hello", accusative

# intentionally on the module, not the class
def __getattr__(mod, name):
    return getattr(A(), name)

if __name__ == "__main__":
    salutation("world")  # hoping for __getattr__ to be invoked</code>
Copy after login

However, this approach encounters two obstacles:

  1. xxx methods are exclusively looked up on the class.
  2. TypeError: can't set attributes of built-in/extension type 'module'

Possible Solutions

Wrapper Method:

The sys.modules dictionary is flexible and allows for the creation of a wrapper that intercepts module access. However, this only supports accessing methods through the module, not within the module itself. Moreover, creating a new instance each time can lead to differing behavior compared to the globals approach.

Class Replacement:

As recommended by Guido van Rossum, a hackish approach involves creating a class and replacing sys.modules[__name__] with an instance of that class. This enables the use of __getattr__/__setattr__/__getattribute__. However, it comes with caveats:

  • All other module attributes will be lost after the replacement.
  • For from module import *, all must be defined in the class to support wildcard imports.

Conclusion

While Python modules do not natively support __getattr__, the suggested solutions provide workarounds to achieve similar dynamic attribute resolution for modules.

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