In Python, if I have a child function within a parent function, is the child function "initialised" (created) every time the parent function is called? Is there any overhead associated with nesting a function within another?
问题:
回答1:
Yes, a new object would be created each time. It's likely not an issue unless you have it in a tight loop. Profiling will tell you if it's a problem.
In [80]: def foo():
....: def bar():
....: pass
....: return bar
....:
In [81]: id(foo())
Out[81]: 29654024
In [82]: id(foo())
Out[82]: 29651384
回答2:
The code object is pre-compiled so that part has no overhead. The function object gets built on every invocation -- it binds the function name to the code object, records default variables, etc.
Executive summary: It's not free.
>>> from dis import dis
>>> def foo():
def bar():
pass
return bar
>>> dis(foo)
2 0 LOAD_CONST 1 (<code object bar at 0x1017e2b30, file "<pyshell#5>", line 2>)
3 MAKE_FUNCTION 0
6 STORE_FAST 0 (bar)
4 9 LOAD_FAST 0 (bar)
12 RETURN_VALUE
回答3:
There is an impact, but in most situations it is so small that you shouldn't worry about it - most non-trivial applications probably already have performance bottlenecks whose impacts are several orders of magnitude larger than this one. Worry instead about the readability and reusability of the code.
Here some code that compares the performance of redefining a function each time through a loop to reusing a predefined function instead.
import gc
from datetime import datetime
class StopWatch:
def __init__(self, name):
self.name = name
def __enter__(self):
gc.collect()
self.start = datetime.now()
def __exit__(self, type, value, traceback):
elapsed = datetime.now()-self.start
print '** Test "%s" took %s **' % (self.name, elapsed)
def foo():
def bar():
pass
return bar
def bar2():
pass
def foo2():
return bar2
num_iterations = 1000000
with StopWatch('FunctionDefinedEachTime') as sw:
result_foo = [foo() for i in range(num_iterations)]
with StopWatch('FunctionDefinedOnce') as sw:
result_foo2 = [foo2() for i in range(num_iterations)]
When I run this in Python 2.7 on my Macbook Air running OS X Lion I get:
** Test "FunctionDefinedEachTime" took 0:00:01.138531 **
** Test "FunctionDefinedOnce" took 0:00:00.270347 **
回答4:
I was curious about this too, so I decided to figure out how much overhead this incurred. TL;DR, the answer is not much.
Python 3.5.2 (default, Nov 23 2017, 16:37:01)
[GCC 5.4.0 20160609] on linux
Type "help", "copyright", "credits" or "license" for more information.
>>> from timeit import timeit
>>> def subfunc():
... pass
...
>>> def no_inner():
... return subfunc()
...
>>> def with_inner():
... def s():
... pass
... return s()
...
>>> timeit('[no_inner() for _ in range(1000000)]', setup='from __main__ import no_inner', number=1)
0.22971350199986773
>>> timeit('[with_inner() for _ in range(1000000)]', setup='from __main__ import with_inner', number=1)
0.2847519510000893
My instinct was to look at percents (with_inner is 24% slower), but that number is misleading in this case, since we'll never actually just return the value of an inner function from an outer function, especially with functions that don't actually do anything.
After making that mistake, I decided to compare it to other common things, to see when this does and does not matter:
>>> def no_inner():
... a = {}
... return subfunc()
...
>>> timeit('[no_inner() for _ in range(1000000)]', setup='from __main__ import no_inner', number=1)
0.3099582109998664
Looking at this, we can see that it takes less time than creating an empty dict (the fast way), so if you're doing anything non-trivial, this probably does not matter at all.
回答5:
The other answers are great and really answer the question well. I wanted to add that most inner functions can be avoided in python using for loops, generating functions, etc.
Consider the following Example:
def foo():
# I need to execute some function on two sets of arguments:
argSet1 = (arg1, arg2, arg3, arg4)
argSet2 = (arg1, arg2, arg3, arg4)
# A Function could be executed on each set of args
def bar(arg1, arg2, arg3, arg4):
return (arg1 + arg2 + arg3 + arg4)
total = bar(argSet1)
total += bar(argSet2)
# Or a loop could be used on the argument sets
total = 0
for arg1, arg2, arg3, arg4 in [argSet1, argSet2]:
total += arg1 + arg2 + arg3 + arg4
This example is a little goofy, but I hope you can see my point nonetheless. Inner functions are often not needed.