首页 > 代码库 > A few things to remember while coding in Python.
A few things to remember while coding in Python.
A few things to remember while coding in Python.
- 17 May 2012 -
UPDATE: There has been much discussion in Hacker News about this article. A few corrections from it.
-
Zen of Python
Learning the culture that surrounds a language brings you one step closer to being a better programmer. If you haven’t read the Zen of Python yet open a Python prompt and type
import this
. For each of the item on the list you can find examples here http://artifex.org/~hblanks/talks/2011/pep20_by_example.htmlOne caught my attention:
Beautiful is better than ugly
Give me a function that takes a list of numbers and returns only the even ones, divided by two.
#----------------------------------------------------------------------- halve_evens_only = lambda nums: map(lambda i: i/2, filter(lambda i: not i%2, nums)) #----------------------------------------------------------------------- def halve_evens_only(nums): return [i/2 for i in nums if not i % 2]
-
Remember the very simple things in Python
-
Swaping two variables:
a, b = b, a
-
The step argument in slice operators. For example:
a = [1,2,3,4,5] >>> a[::2] # iterate over the whole list in 2-increments [1,3,5]
The special case
x[::-1]
is a useful idiom for ‘x reversed’.>>> a[::-1] [5,4,3,2,1]
UPDATE: Do keep in mind
x.reverse()
reverses the list in place and slices gives you the ability to do this:>>> x[::-1] [5, 4, 3, 2, 1] >>> x[::-2] [5, 3, 1]
-
-
Don’t use mutables as defaults
def function(x, l=[]): # Don‘t do this def function(x, l=None): # Way better if l is None: l = []
UPDATE: I realise I haven’t explained why. I would recommend reading the article by Fredrik Lundh. In short it is by design that this happens. “Default parameter values are always evaluated when, and only when, the “def” statement they belong to is executed;”
-
Use
iteritems
rather thanitems
iteritems
usesgenerators
and thus are better while iterating through very large lists.d = {1: "1", 2: "2", 3: "3"} for key, val in d.items() # builds complete list when called. for key, val in d.iteritems() # calls values only when requested.
This is similar with
range
andxrange
wherexrange
only calls values when requested.UPDATE: Do note that the
iteritems
,iterkeys
,itervalues
are removed from Python 3.x. Thedict.keys()
,dict.items()
anddict.values()
return views instead oflists
. http://docs.python.org/release/3.1.5/whatsnew/3.0.html#views-and-iterators-instead-of-lists -
Use
isinstance
rather thantype
Don’t do
if type(s) == type(""): ... if type(seq) == list or type(seq) == tuple: ...
rather:
if isinstance(s, basestring): ... if isinstance(seq, (list, tuple)): ...
For why not to do so: http://stackoverflow.com/a/1549854/504262
Notice I used
basestring
and notstr
as you might be trying to check if a unicode object is a string. For example:>>> a=u‘aaaa‘ >>> print isinstance(a, basestring) True >>> print isinstance(a, str) False
This is because in Python versions below 3.0 there are two string types
str
andunicode
:object | | basestring / / str unicode
-
Learn the various
collections
Python has various container datatypes which are better alternative to the built-in containers like
list
anddict
for specific cases.Generally most use this:UPDATE: I’m sure most do not use this. Carelessness from my side. A few may consider writing it this way:
freqs = {} for c in "abracadabra": try: freqs[c] += 1 except: freqs[c] = 1
Some may say a better solution would be:
freqs = {} for c in "abracadabra": freqs[c] = freqs.get(c, 0) + 1
Rather go for the
collection
typedefaultdict
from collections import defaultdict freqs = defaultdict(int) for c in "abracadabra": freqs[c] += 1
Other collections
namedtuple() # factory function for creating tuple subclasses with named fields deque # list-like container with fast appends and pops on either end Counter # dict subclass for counting hashable objects OrderedDict # dict subclass that remembers the order entries were added defaultdict # dict subclass that calls a factory function to supply missing values
UPDATE: As noted by a few in Hacker News I could have used
Counter
instead ofdefaultdict
.>>> from collections import Counter >>> c = Counter("abracadabra") >>> c[‘a‘] 5
-
When creating classes Python’s magic methods
__eq__(self, other) # Defines behavior for the equality operator, ==. __ne__(self, other) # Defines behavior for the inequality operator, !=. __lt__(self, other) # Defines behavior for the less-than operator, <. __gt__(self, other) # Defines behavior for the greater-than operator, >. __le__(self, other) # Defines behavior for the less-than-or-equal-to operator, <=. __ge__(self, other) # Defines behavior for the greater-than-or-equal-to operator, >=.
There are several others.
-
Conditional Assignments
x = 3 if (y == 1) else 2 It does exactly what it sounds like: "assign 3 to x if y is 1, otherwise assign 2 to x". You can also chain it if you have something more complicated: x = 3 if (y == 1) else 2 if (y == -1) else 1
Though at a certain point, it goes a little too far.
Note that you can use if … else in any expression. For example:
(func1 if y == 1 else func2)(arg1, arg2)
Here
func1
will be called if y is 1 andfunc2
, otherwise. In both cases the corresponding function will be called with arguments arg1 and arg2.Analogously, the following is also valid:
x = (class1 if y == 1 else class2)(arg1, arg2)
where
class1
andclass2
are two classes. -
Use the
Ellipsis
when necessary.UPDATE: As one commenter mentioned in Hacker News “Using Ellipsis for getting all items is a violation of the Only One Way To Do It principle. The standard notation is
[:]
.” I do agree with him. A better example is given using numpy in stackoverflow:The ellipsis is used to slice higher-dimensional data structures.
It’s designed to mean at this point, insert as many full slices (:) to extend the multi-dimensional slice to all dimensions.
Example:
>>> from numpy import arange >>> a = arange(16).reshape(2,2,2,2)
Now, you have a 4-dimensional matrix of order 2x2x2x2. To select all first elements in the 4th dimension, you can use the ellipsis notation
>>> a[..., 0].flatten() array([ 0, 2, 4, 6, 8, 10, 12, 14])
which is equivalent to
>>> a[:,:,:,0].flatten() array([ 0, 2, 4, 6, 8, 10, 12, 14])
Previous suggestion.
When creating a class you can use
__getitem__
to make you class’ object work like a dictionary. Take this class as an example:class MyClass(object): def __init__(self, a, b, c, d): self.a, self.b, self.c, self.d = a, b, c, d def __getitem__(self, item): return getattr(self, item) x = MyClass(10, 12, 22, 14)
Because of
__getitem__
you will be able to get the value ofa
in the objectx
byx[‘a‘]
. This is probably a known fact.This object is used to extend the Python slicing.(http://docs.python.org/library/stdtypes.html#bltin-ellipsis-object). Thus if we add a clause:
def __getitem__(self, item): if item is Ellipsis: return [self.a, self.b, self.c, self.d] else: return getattr(self, item)
We can use
x[...]
to get a list containing all the items.>>> x = MyClass(11, 34, 23, 12) >>> x[...] [11, 34, 23, 12]