


How Can I Programmatically Retrieve the Source Code of a Python Function?
Dec 17, 2024 am 09:57 AMRetrieving the Source Code of a Python Function
When working with Python functions, you may encounter the need to retrieve their source code programmatically. This is typically useful for introspecting the function's implementation or for debugging purposes.
Probing for Function Metadata
Python provides several mechanisms for inspecting function metadata, including the func_name attribute, which returns the function's name as a string. However, this does not provide direct access to the source code.
Utilizing the inspect Module
To retrieve the source code of a Python function, you can leverage the inspect module. If the function is defined in a source file that is available on the filesystem, you can employ the inspect.getsource(foo) function.
import inspect def foo(arg1, arg2): # do something with args a = arg1 + arg2 return a lines = inspect.getsource(foo) print(lines)
This will print the source code of the foo function as it appears in the source file.
Limitations of Source Code Retrieval
It is important to note that if the function is compiled from a string, stream, or imported from a compiled file, you may not be able to retrieve its source code.
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