The performance impact of a function definition is negligible and comparable to defining a local variable.
The body of the function is compiled only once, all that you end up with during execution of the code-block is loading the compiled block (
LOAD_CONST), and the result of the
MAKE FUNCTION byte code is then stored in a local variable:
>>> import dis
>>> def foo():
... def bar():
... print 'boo!'
2 0 LOAD_CONST 1 (<code object bar at 0x106c447b0, file "<stdin>", line 2>)
3 MAKE_FUNCTION 0
6 STORE_FAST 0 (bar)
4 9 LOAD_CONST 2 ('boo!')
14 LOAD_CONST 0 (None)
Now, if you call that function containing nested functions thousands of times, you do notice a performance impact for that
>>> import timeit
>>> def nonlocal(): pass
>>> def callnonlocal(): nonlocal()
>>> def calllocal():
... def localf(): pass
>>> timeit.timeit('callnonlocal()', 'from __main__ import callnonlocal')
>>> timeit.timeit('calllocal()', 'from __main__ import calllocal')
Do note that that difference will get smaller the more actual code you put into your functions though. The above examples are very contrived and focus solely on the impact of
MAKE_FUNCTION byte code on execution times.
Better optimize for readability and maintainability first.