Should I avoid converting to a string if a value is already a string?
Sometimes you have to use list comprehension to convert everything to string including strings themselves.
b = [str(a) for a in l]
But do I have to do:
b = [a if type(a)==str else str(a) for a in l]
I was wondering if
str on a string is optimized enough to not create another copy of the string.
I have tried:
>>> x="aaaaaa" >>> str(x) is x True
but that may be because Python can cache strings, and reuses them. But is that behaviour guaranteed for any value of a string?
Testing if an object is already a string is slower than just always converting to a string.
That's because the
str() method also makes the exact same test (is the object already a string). You are a) doing double the work, and b) your test is slower to boot.
Note: for Python 2, using
unicode objects includes an implicit encode to ASCII, and this can fail. You may still have to special case handling of such objects. In Python 3, there is no need to worry about that edge-case.
As there is some discussion around this:
isinstance(s, str)has a different meaning when
scan be a subclass of
str. As subclasses are treated exactly like any other type of object by
__repr__is called on the object), this difference matters here.
- You should use
type(s) is strfor exact type checks. Types are singletons, take advantage of this,
>>> import timeit >>> timeit.timeit("type(s) is str", "s = ''") 0.10074466899823165 >>> timeit.timeit("type(s) == str", "s = ''") 0.1110201120027341
s if type(s) is str else str(s)is significantly slower for the non-string case :
>>> import timeit >>> timeit.timeit("str(s)", "s = None") 0.1823573520014179 >>> timeit.timeit("s if type(s) is str else str(s)", "s = None") 0.29589492800005246 >>> timeit.timeit("str(s)", "s = ''") 0.11716728399915155 >>> timeit.timeit("s if type(s) is str else str(s)", "s = ''") 0.12032335300318664
(The timings for the
s = '' cases are very close and keep swapping places).
All timings in this post were conducted on Python 3.6.0 on a Macbook Pro 15" (Mid 2015), OS X 10.12.3.