43

I have to merge list of python dictionary. For eg:

dicts[0] = {'a':1, 'b':2, 'c':3}
dicts[1] = {'a':1, 'd':2, 'c':'foo'}
dicts[2] = {'e':57,'c':3}

super_dict = {'a':[1], 'b':[2], 'c':[3,'foo'], 'd':[2], 'e':[57]}    

I wrote the following code:

super_dict = {}
for d in dicts:
    for k, v in d.items():
        if super_dict.get(k) is None:
            super_dict[k] = []
        if v not in super_dict.get(k):
            super_dict[k].append(v)

Can it be presented more elegantly / optimized?

Note I found another question on SO but its about merging exactly 2 dictionaries.

13 Answers 13

37

You can iterate over the dictionaries directly -- no need to use range. The setdefault method of dict looks up a key, and returns the value if found. If not found, it returns a default, and also assigns that default to the key.

super_dict = {}
for d in dicts:
    for k, v in d.iteritems():  # d.items() in Python 3+
        super_dict.setdefault(k, []).append(v)

Also, you might consider using a defaultdict. This just automates setdefault by calling a function to return a default value when a key isn't found.

import collections
super_dict = collections.defaultdict(list)
for d in dicts:
    for k, v in d.iteritems():  # d.items() in Python 3+
        super_dict[k].append(v)

Also, as Sven Marnach astutely observed, you seem to want no duplication of values in your lists. In that case, set gets you what you want:

import collections
super_dict = collections.defaultdict(set)
for d in dicts:
    for k, v in d.iteritems():  # d.items() in Python 3+
        super_dict[k].add(v)
29
from collections import defaultdict

dicts = [{'a':1, 'b':2, 'c':3},
         {'a':1, 'd':2, 'c':'foo'},
         {'e':57, 'c':3} ]

super_dict = defaultdict(set)  # uses set to avoid duplicates

for d in dicts:
    for k, v in d.items():  # use d.iteritems() in python 2
        super_dict[k].add(v)
  • 1
    +1: This seems to be exactly what the question was asking for (unique elements in the values), done in a relatively clear and certainly efficient way (the dictionaries are gone through a single time, and the built-in set makes keeping only unique elements fast). – Eric O Lebigot May 18 '13 at 8:19
13

Merge the keys of all dicts, and for each key assemble the list of values:

super_dict = {}
for k in set(k for d in dicts for k in d):
    super_dict[k] = [d[k] for d in dicts if k in d]

The expression set(k for d in dicts for k in d) builds a set of all unique keys of all dictionaries. For each of these unique keys, we use the list comprehension [d[k] for d in dicts if k in d] to build the list of values from all dicts for this key.

Since you only seem to one the unique value of each key, you might want to use sets instead:

super_dict = {}
for k in set(k for d in dicts for k in d):
    super_dict[k] = set(d[k] for d in dicts if k in d)
  • Pretty solid. I think it could be improved with an explanation. – Edwin Feb 23 '12 at 15:25
  • @Edwin: Thanks, I added a bit of explanation. – Sven Marnach Feb 23 '12 at 15:31
  • @SvenMarnach minor thing -- with the second version, we get a dict of sets instead of a dict of lists -- easily handled if it matters to OP. – Vaughn Cato Feb 23 '12 at 16:00
  • @VaughnCato: Semantically, sets seem to be what the OP wants. So it's a feature of that code, not a bug. – Sven Marnach Feb 23 '12 at 16:05
  • @SvenMarnach: True, I may be taking the question too literally. – Vaughn Cato Feb 23 '12 at 16:09
4

When the value of the keys are in list:

from collections import defaultdict

    dicts = [{'a':[1], 'b':[2], 'c':[3]},
             {'a':[11], 'd':[2], 'c':['foo']},
             {'e':[57], 'c':[3], "a": [1]} ]

super_dict = defaultdict(list)  # uses set to avoid duplicates

for d in dicts:
    for k, v in d.items():  # use d.iteritems() in python 2
        super_dict[k] = list(set(super_dict[k] + v))

combined_dict = {}

for elem in super_dict.keys():
    combined_dict[elem] = super_dict[elem]

combined_dict
## output: {'a': [1, 11], 'b': [2], 'c': [3, 'foo'], 'd': [2], 'e': [57]}
3

Never forget that the standard libraries have a wealth of tools for dealing with dicts and iteration:

from itertools import chain
from collections import defaultdict
super_dict = defaultdict(list)
for k,v in chain.from_iterable(d.iteritems() for d in dicts):
    if v not in super_dict[k]: super_dict[k].append(v)

Note that the if v not in super_dict[k] can be avoided by using defaultdict(set) as per Steven Rumbalski's answer.

2

This may be a bit more elegant:

super_dict = {}
for d in dicts:
    for k, v in d.iteritems():
        l=super_dict.setdefault(k,[])
        if v not in l:
            l.append(v)

UPDATE: made change suggested by Sven

UPDATE: changed to avoid duplicates (thanks Marcin and Steven)

  • Nice. I'd suggest for d in dicts: instead of for i in xrange(len(dicts)). – Sven Marnach Feb 23 '12 at 15:26
  • 1
    @SvenMarnach Nice, i made that change. – Vaughn Cato Feb 23 '12 at 15:28
  • 1
    Minor nit. Duplicates on key 'c': [3, 'foo', 3]. OP's example code shows that the 3 does not repeat. – Steven Rumbalski Feb 23 '12 at 15:33
  • ok. correction. I shouldn't have said the "OP's example code", I should have said the OP's example dictionary: super_dict = {'a':[1], 'b':[2], 'c':[3,'foo'], 'd':[2], 'e':[57]} – Steven Rumbalski Feb 23 '12 at 16:17
  • if v not in l is asymptotically very slow compared to using sets instead of lists. You are essentially emulating sets where Python offers them for free… – Eric O Lebigot May 18 '13 at 8:20
1

For a oneliner, the following could be used:

{key: {d[key] for d in dicts if key in d} for key in {key for d in dicts for key in d}}

although readibility would benefit from naming the combined key set:

combined_key_set = {key for d in dicts for key in d}
super_dict = {key: {d[key] for d in dicts if key in d} for key in combined_key_set}

Elegance can be debated but personally I prefer comprehensions over for loops. :)

(The dictionary and set comprehensions are available in Python 2.7/3.1 and newer.)

1

I am afraid no one has posted this yet..

d = {**one, **two, **three, **four}
print d

this would be suffcient..

  • Your solution replaces values of keys, instead of combining them in a list. This is the result of your solution: {'a': 1, 'b': 2, 'c': 3, 'd': 2, 'e': 57} – TitanFighter Sep 24 '19 at 18:03
0

It seems like most of the answers using comprehensions are not all that readable. In case any gets lost in the mess of answers above this might be helpful (although extremely late...). Just loop over the items of each dict and place them in a separate one.

super_dict = {key:val for d in dicts for key,val in d.items()}
  • 1
    The OP wanted both 'c' values preserved: {'c':[3,'foo']}. – Steven Rumbalski Jul 21 '16 at 15:09
0

My solution is similar to @senderle proposed, but instead of for loop I used map

super_dict = defaultdict(set)
map(lambda y: map(lambda x: super_dict[x].add(y[x]), y), dicts)
0

If you assume that the keys in which you are interested are at the same nested level, you can recursively traverse each dictionary and create a new dictionary using that key, effectively merging them.

merged = {}
for d in dicts:
    def walk(d,merge):
        for key, item in d.items():
            if isinstance(item, dict):
                merge.setdefault(key, {})
                walk(item, merge[key])
            else:
                merge.setdefault(key, [])
                merge[key].append(item)
    walk(d,merged)

For example, say you have the following dictionaries you want to merge.

dicts = [{'A': {'A1': {'FOO': [1,2,3]}}},
         {'A': {'A1': {'A2': {'BOO': [4,5,6]}}}},
         {'A': {'A1': {'FOO': [7,8]}}},
         {'B': {'B1': {'COO': [9]}}},
         {'B': {'B2': {'DOO': [10,11,12]}}},
         {'C': {'C1': {'C2': {'POO':[13,14,15]}}}},
         {'C': {'C1': {'ROO': [16,17]}}}]

Using the key at each level, you should get something like this:

{'A': {'A1': {'FOO': [[1, 2, 3], [7, 8]], 
              'A2': {'BOO': [[4, 5, 6]]}}},
 'B': {'B1': {'COO': [[9]]}, 
       'B2': {'DOO': [[10, 11, 12]]}},
 'C': {'C1': {'C2': {'POO': [[13, 14, 15]]}, 
              'ROO': [[16, 17]]}}}

Note: I assume the leaf at each branch is a list of some kind, but you can obviously change the logic to do whatever is necessary for your situation.

0

The use of defaultdict is good, this also can be done with the use of itertools.groupby.

import itertools
# output all dict items, and sort them by key
dicts_ele = sorted( ( item for d in dicts for item in d.items() ), key = lambda x: x[0] )
# groups items by key
ele_groups = itertools.groupby( dicts_ele, key = lambda x: x[0] )
# iterates over groups and get item value
merged = { k: set( v[1] for v in grouped ) for k, grouped in ele_groups }

and obviously, you can merge this block of code into one-line style

merged = {
    k: set( v[1] for v in grouped )
    for k, grouped in (
        itertools.groupby(
            sorted(
                ( item for d in dicts for item in d.items() ),
                key = lambda x: x[0]
            ),
            key = lambda x: x[0]
        )
    )
}
-2

I'm a bit late to the game but I did it in 2 lines with no dependencies beyond python itself:

flatten = lambda *c: (b for a in c for b in (flatten(*a) if isinstance(a, (tuple, list)) else (a,)))
o = reduce(lambda d1,d2: dict((k, list(flatten([d1.get(k), d2.get(k)]))) for k in set(d1.keys() + d2.keys())), dicts)
# output:
# {'a': [1, 1, None], 'c': [3, 'foo', 3], 'b': [2, None, None], 'e': [None, 57], 'd': [None, 2, None]}

Though if you don't care about nested lists, then:

o2 = reduce(lambda d1,d2: dict((k, [d1.get(k), d2.get(k)]) for k in set(d1.keys() + d2.keys())), dicts)
# output:
# {'a': [[1, 1], None], 'c': [[3, 'foo'], 3], 'b': [[2, None], None], 'e': [None, 57], 'd': [[None, 2], None]}
  • 1
    None values should not be created, as per the question. – Eric O Lebigot May 18 '13 at 8:23

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