


How Can I Modify Non-Global Variables in Outer Scopes in Python?
Modifying Non-Global Variables in Outer Scope in Python
In Python, variables within a function typically belong to the local scope, unless explicitly declared as global. However, it is sometimes necessary to modify variables defined in an outer (enclosing) but non-global scope. This question explores how to achieve this.
Given the example code:
def A(): b = 1 def B(): # Access to 'b' is possible here. print(b) # Direct modification of 'b' fails. B() A()
The variable b in function B resides in a non-global, enclosing scope. Attempts to modify b directly result in an UnboundLocalError. The global keyword can't be used since b is not declared at the global level.
Python 3 Solution:
Nonlocal Scope (Python 3.x) can be used to solve this issue:
def A(): b = 1 def B(): nonlocal b # Nonlocal keyword b = 2 B() print(b) # Output: 2 A()
Python 2 Solution:
Mutable Objects (Python 2.x):
Instead of reassigning variables directly, use mutable objects (e.g., lists, dicts) and mutate their values:
def A(): b = [] def B(): b.append(1) # Mutation of 'b' B() B() print(b) # Output: [1, 1] A()
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