491

Is there a way to have a defaultdict(defaultdict(int)) in order to make the following code work?

for x in stuff:
    d[x.a][x.b] += x.c_int

d needs to be built ad-hoc, depending on x.a and x.b elements.

I could use:

for x in stuff:
    d[x.a,x.b] += x.c_int

but then I wouldn't be able to use:

d.keys()
d[x.a].keys()
0

7 Answers 7

865

Yes like this:

defaultdict(lambda: defaultdict(int))

The argument of a defaultdict (in this case is lambda: defaultdict(int)) will be called when you try to access a key that doesn't exist. The return value of it will be set as the new value of this key, which means in our case the value of d[Key_doesnt_exist] will be defaultdict(int).

If you try to access a key from this last defaultdict i.e. d[Key_doesnt_exist][Key_doesnt_exist] it will return 0, which is the return value of the argument of the last defaultdict i.e. int().

11
  • 9
    it works great! could you explain the rational behind this syntax? Commented Oct 12, 2011 at 8:25
  • 47
    @Jonathan: Yes sure, the argument of a defaultdict (in this case is lambda : defaultdict(int)) will be called when you try to access a key that don't exist and the return value of it will be set as the new value of this key which mean in our case the value of d[Key_dont_exist] will be defaultdict(int), and if you try to access a key from this last defaultdict i.e. d[Key_dont_exist][Key_dont_exist] it will return 0 which is the return value of the argument of the last defaultdict i.e. int(), Hope this was helpful.
    – mouad
    Commented Oct 12, 2011 at 14:25
  • 35
    The argument to defaultdict should be a function. defaultdict(int) is a dictionary, while lambda: defaultdict(int) is function that returns a dictionary.
    – has2k1
    Commented Sep 22, 2012 at 4:45
  • 37
    @has2k1 That is incorrect. The argument to defaultdict needs to be a callable. A lambda is a callable.
    – Niels Bom
    Commented Jan 22, 2013 at 15:11
  • 5
    @RickyLevi, if you want to have that working you can just say: defaultdict(lambda: defaultdict(lambda: defaultdict(int)))
    – darophi
    Commented Mar 26, 2019 at 15:21
59

The parameter to the defaultdict constructor is the function which will be called for building new elements. So let's use a lambda !

>>> from collections import defaultdict
>>> d = defaultdict(lambda : defaultdict(int))
>>> print d[0]
defaultdict(<type 'int'>, {})
>>> print d[0]["x"]
0

Since Python 2.7, there's an even better solution using Counter:

>>> from collections import Counter
>>> c = Counter()
>>> c["goodbye"]+=1
>>> c["and thank you"]=42
>>> c["for the fish"]-=5
>>> c
Counter({'and thank you': 42, 'goodbye': 1, 'for the fish': -5})

Some bonus features

>>> c.most_common()[:2]
[('and thank you', 42), ('goodbye', 1)]

For more information see PyMOTW - Collections - Container data types and Python Documentation - collections

3
  • 9
    Just to complete the circle here, you would want to use d = defaultdict(lambda : Counter()) rather than d = defaultdict(lambda : defaultdict(int)) to specifically address the problem as originally posed.
    – gumption
    Commented Jun 20, 2014 at 18:50
  • 5
    @gumption you can just use d = defaultdict(Counter()) no need for a lambda in this case
    – Deb
    Commented Aug 4, 2017 at 8:53
  • 10
    @Deb you have a slight error- remove the inner parentheses so you pass a callable instead of a Counter object. That is: d = defaultdict(Counter) Commented Aug 11, 2018 at 7:00
47

Previous answers have addressed how to make a two-levels or n-levels defaultdict. In some cases you want an infinite one:

def ddict():
    return defaultdict(ddict)

Usage:

>>> d = ddict()
>>> d[1]['a'][True] = 0.5
>>> d[1]['b'] = 3
>>> import pprint; pprint.pprint(d)
defaultdict(<function ddict at 0x7fcac68bf048>,
            {1: defaultdict(<function ddict at 0x7fcac68bf048>,
                            {'a': defaultdict(<function ddict at 0x7fcac68bf048>,
                                              {True: 0.5}),
                             'b': 3})})
3
  • 12
    I love this. It's devilishly simple, but incredibly useful. Thanks!
    – rosstex
    Commented May 9, 2020 at 2:22
  • How can this be used for the following use case: the nth level needs to be an int or a list Commented Sep 24, 2020 at 18:55
  • 2
    @MonsieurBeilto "previous answers have addressed how to make a two-levels or n-levels defaultdict" → stackoverflow.com/a/54266841/695591
    – Clément
    Commented Sep 28, 2020 at 16:41
37

I find it slightly more elegant to use partial:

import functools
dd_int = functools.partial(defaultdict, int)
defaultdict(dd_int)

Of course, this is the same as a lambda.

3
  • 4
    Partial is also better than lambda here because it can be applied recursively :) see my answer below for a generic nested defaultdict factory method.
    – Campi
    Commented Jan 19, 2019 at 12:01
  • @Campi you don't need partial for recursive applications, AFAICT
    – Clément
    Commented Nov 25, 2019 at 20:00
  • 2
    This is also better because it can be pickled (lambdas don't play nice with pickling + multiprocessing)
    – Alex Sax
    Commented May 18, 2022 at 2:36
19

For reference, it's possible to implement a generic nested defaultdict factory method through:

from collections import defaultdict
from functools import partial
from itertools import repeat


def nested_defaultdict(default_factory, depth=1):
    result = partial(defaultdict, default_factory)
    for _ in repeat(None, depth - 1):
        result = partial(defaultdict, result)
    return result()

The depth defines the number of nested dictionary before the type defined in default_factory is used. For example:

my_dict = nested_defaultdict(list, 3)
my_dict['a']['b']['c'].append('e')
4
  • Can you give a usage example? Not working the way I expected this to. ndd = nested_defaultdict(dict) .... ndd['a']['b']['c']['d'] = 'e' throws KeyError: 'b'
    – David Marx
    Commented Feb 14, 2019 at 20:14
  • Hey David, you need to define the depth of your dictionary, in your example 3 (as you defined the default_factory to be a dictionary too. nested_defaultdict(dict, 3) will work for you.
    – Campi
    Commented Feb 16, 2019 at 10:01
  • This was super helpful, thanks! One thing I noticed is that this creates a default_dict at depth=0, which may not always be desired if the depth is unknown at the time of calling. Easily fixable by adding a line if not depth: return default_factory(), at the top of the function, though there's probably a more elegant solution.
    – Brendan
    Commented Oct 30, 2019 at 23:44
  • 1
    Why not for _ in range(depth - 1):?
    – Clément
    Commented Aug 4, 2022 at 23:49
8

Others have answered correctly your question of how to get the following to work:

for x in stuff:
    d[x.a][x.b] += x.c_int

An alternative would be to use tuples for keys:

d = defaultdict(int)
for x in stuff:
    d[x.a,x.b] += x.c_int
    # ^^^^^^^ tuple key

The nice thing about this approach is that it is simple and can be easily expanded. If you need a mapping three levels deep, just use a three item tuple for the key.

2
  • 5
    This solution means it isn't simple to get all of d[x.a], as you need to introspect every key to see if it has x.a as the first element of the tuple. Commented Feb 18, 2011 at 3:02
  • 6
    If you wanted nesting 3 levels deep, then just define it as 3 levels: d = defaultdict(lambda: defaultdict( lambda: defaultdict(int))) Commented Feb 18, 2011 at 3:03
2

defaultdict(lambda: defaultdict(int)) has a flaw, which is that it isn't pickle friendly, thanks to the lambda. While you could define the default function globally, e.g.:

def make_defaultdict_int():
    return defaultdict(int)
dd = defaultdict(make_defaultdict_int)

to work around this, that's rather verbose. Luckily, it's pretty easy to make this work in a pickle-friendly way without that:

dd = defaultdict(defaultdict(int).copy)

That makes a template empty defaultdict(int), and passes a bound copy method from it as the factory function. Because defaultdict and int are pickleable, as are all bound methods of pickleable objects, that renders the structure fully pickleable without any custom definitions or additional imports. On some versions of Python, it's more performant than the equivalent lambda (depending on where the recent optimization efforts have been centered), but even when it isn't, the performance is comparable, and it's no more verbose, so it's my preferred approach even when pickling isn't a concern, simply because it means I don't need to change approaches if/when pickling becomes important.

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