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Possible Duplicate:
'has_key()' or 'in'?

I have a Python dictionary like :

mydict = {'name':'abc','city':'xyz','country','def'}

I want to check if a key is in dictionary or not. I am eager to know that which is more preferable from the following two cases and why?

1> if mydict.has_key('name'):
2> if 'name' in mydict:
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    BTW, dict is the name of a built-in Python type so it's best to avoid using it as a variable name in your scripts (although strictly speaking, it's legal to do so). – martineau Sep 17 '10 at 10:58
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    docs are quite clear, no? – SilentGhost Sep 17 '10 at 12:37
  • In Python 3, dict objects no longer have a has_key() method, so version-portability-wise, the in operator is better. – martineau Feb 16 '16 at 1:52
73
if 'name' in mydict:

is the preferred, pythonic version. Use of has_key() is discouraged, and this method has been removed in Python 3.

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    Also, "name" in dict will work with any iterable and not just dictionaries. – Noufal Ibrahim Sep 17 '10 at 9:21
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    What about dict.get(key)? That should also be avoided? – user225312 Sep 17 '10 at 9:22
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    @PulpFiction: dict.get(key) can be useful when you (1) don't wan't a KeyError in case key is not in dict (2) want to use a default value if there is no key (dict.get(key, default)). Point #2 can be done using defaultdict as well. – Manoj Govindan Sep 17 '10 at 9:25
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    dict.get returns the value. It does not (and cannot) reliably tell you if the key is in the dictionary. It's an entirely different purpose. – user79758 Sep 17 '10 at 11:49
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    @Joe, 1) It can reliably tell you that, but using it for just that is of course silly, and 2) Manoj is addressing the issue at a higher level. You usually have a reason for checking if a key is in a dict, and the reasons you have are very often handled more smoothly by get, setdefault, and defaultdict. – Mike Graham Sep 17 '10 at 13:27
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In the same vein as martineau's response, the best solution is often not to check. For example, the code

if x in d:
    foo = d[x]
else:
    foo = bar

is normally written

foo = d.get(x, bar)

which is shorter and more directly speaks to what you mean.

Another common case is something like

if x not in d:
    d[x] = []

d[x].append(foo)

which can be rewritten

d.setdefault(x, []).append(foo)

or rewritten even better by using a collections.defaultdict(list) for d and writing

d[x].append(foo)
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  • Yes, something you could call "intelligent defaults" (or even "intelligent design" ;-) – martineau Sep 17 '10 at 13:29
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    Naw, these are methods and types Python evolved over time. ;) – Mike Graham Sep 17 '10 at 14:50
  • @martineau Generally a design process is incapable of initially producing an good solution. It is not until a solution hit's the real word that it can be improved. generally, given enough random mutations, one of them will be superior to the original design. – aaronasterling Sep 17 '10 at 18:49
  • @AaronMcSmooth Since we're not talking about nature here, I would hope the mutations weren't entirely random. As Frederick Brooks famously said in his 1975 book The Mythical Man-Month, "plan to throw one away; you will, anyhow". The real downside, IMHO, is that often you can't really afford to do that and end up having to be backwards compatible due to numerous dependencies that arose while the evolution was taking place. That's why the best designs are often those that reduce dependencies. – martineau Sep 17 '10 at 23:06
13

In terms of bytecode, in saves a LOAD_ATTR and replaces a CALL_FUNCTION with a COMPARE_OP.

>>> dis.dis(indict)
  2           0 LOAD_GLOBAL              0 (name)
              3 LOAD_GLOBAL              1 (d)
              6 COMPARE_OP               6 (in)
              9 POP_TOP             


>>> dis.dis(haskey)
  2           0 LOAD_GLOBAL              0 (d)
              3 LOAD_ATTR                1 (haskey)
              6 LOAD_GLOBAL              2 (name)
              9 CALL_FUNCTION            1
             12 POP_TOP             

My feelings are that in is much more readable and is to be preferred in every case that I can think of.

In terms of performance, the timing reflects the opcode

$ python -mtimeit -s'd = dict((i, i) for i in range(10000))' "'foo' in d"
 10000000 loops, best of 3: 0.11 usec per loop

$ python -mtimeit -s'd = dict((i, i) for i in range(10000))' "d.has_key('foo')"
  1000000 loops, best of 3: 0.205 usec per loop

in is almost twice as fast.

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    Any speed measures are of course problem specific, usually irrelevant, implementation-dependent, potentially version-dependent, and less important than deprecation and style issues. – Mike Graham Sep 17 '10 at 14:43
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    @Mike Graham, you're mostly right. I did stick worse case in there thought because, IMO, that's where you really want to know. Also, I think that your attitude is (while still absolutely correct), slightly more appropriate to a language like C where it's fast either way unless you really mess something up. In Python it pays to get it right to a greater degree. Also, the core devs have a way of tuning "the one right way" to do something so that, again, performance is a good indicator of good style to a greater extent than normal in a language. – aaronasterling Sep 17 '10 at 18:17
10

My answer is "neither one".

I believe the most "Pythonic" way to do things is to NOT check beforehand if the key is in a dictionary and instead just write code that assumes it's there and catch any KeyErrors that get raised because it wasn't.

This is usually done with enclosing the code in a try...except clause and is a well-known idiom usually expressed as "It's easier to ask forgiveness than permission" or with the acronym EAFP, which basically means it is better to try something and catch the errors instead for making sure everything's OK before doing anything. Why validate what doesn't need to be validated when you can handle exceptions gracefully instead of trying to avoid them? Because it's often more readable and the code tends to be faster if the probability is low that the key won't be there (or whatever preconditions there may be).

Of course, this isn't appropriate in all situations and not everyone agrees with the philosophy, so you'll need to decide for yourself on a case-by-case basis. Not surprisingly the opposite of this is called LBYL for "Look Before You Leap".

As a trivial example consider:

if 'name' in dct:
    value = dct['name'] * 3
else:
    logerror('"%s" not found in dictionary, using default' % name)
    value = 42

vs

try:
    value = dct['name'] * 3
except KeyError:
    logerror('"%s" not found in dictionary, using default' % name)
    value = 42

Although in the case it's almost exactly the same amount of code, the second doesn't spend time checking first and is probably slightly faster because of it (try...except block isn't totally free though, so it probably doesn't make that much difference here).

Generally speaking, testing in advance can often be much more involved and the savings gain from not doing it can be significant. That said, if 'name' in dict: is better for the reasons stated in the other answers.

If you're interested in the topic, this message titled "EAFP vs LBYL (was Re: A little disappointed so far)" from the Python mailing list archive probably explains the difference between the two approached better than I have here. There's also a good discussion about the two approaches in the book Python in a Nutshell, 2nd Ed by Alex Martelli in chapter 6 on Exceptions titled Error-Checking Strategies. (I see there's now a newer 3rd edition, publish in 2017, which covers both Python 2.7 and 3.x).

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    Is there data to support the statement "the savings gain from not doing it can be significant"? As a Java developer, I'm used to thinking that exceptions are expensive and should be for truly exceptional situations. Your recommendation sounds like "exception as goto". Can you cite a source? – duffymo Sep 17 '10 at 11:21
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    Exceptions in Python are expensive. If you expect the key to be missing more than a few percent of the time, the exception cost will probably dominate the runtime of the function. – user79758 Sep 17 '10 at 11:51
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    @duffymo, The prevailing style in Python is to use exceptions. This creates more idiomatic, readable code. Generally speaking, a succeeding try block is pretty cheap but if an exception is raised it's more expensive, but this isn't what dictates the design of 95% of the code you write. – Mike Graham Sep 17 '10 at 12:24
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    @Tim: Did you miss where I said "If you expect the key to be missing more than a few percent of the time"? Exceptions are only about as fast as if statements if they don't happen - if they do happen, your link shows them 2x slower for zero division and my quick timeit shows them 10x slower for dict lookups. Screw "Pythonic", I'll take idioms that runs 10x faster. – user79758 Sep 18 '10 at 21:07
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    @Joe. If you expect something to happen relatively frequently, it's faster to check for it in advance than use exceptions which are slower to handle when they occur. Your code may be more complicated with extra checking, but that's the tradeoff. Exceptions happening should not be the 'normal' program flow and generally are for things that aren't expected to happen often (they're exceptional). – martineau Sep 20 '10 at 19:39

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