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Suppose you have a dictionary like:

{'a': 1,
 'c': {'a': 2,
       'b': {'x': 5,
             'y' : 10}},
 'd': [1, 2, 3]}

How would you go about flattening that into something like:

{'a': 1,
 'c_a': 2,
 'c_b_x': 5,
 'c_b_y': 10,
 'd': [1, 2, 3]}
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Could you try to do the stuff, and if it doesn't work, post the code here and we will help you. We're not going to do the job for you ;) –  Cédric Julien May 17 '11 at 7:30
This is totally not a duplicate of the stated question; vote to unclose (I am editing the description of the other question to not be incorrect.) I will post an answer in these comments. –  ninjagecko May 17 '11 at 8:01
@ninjagecko: You are right. I was lazy, I apologize. Voted to reopen. –  Björn Pollex May 17 '11 at 8:51
Ditto what Space_C0wb0y said. My apologies. –  Josh Caswell May 17 '11 at 18:03
I have posted my answer in the actual answers section, along with a description of major issues the other upvoted answers have, and various other notes and explanations of the intricacies of this problem. –  ninjagecko May 18 '11 at 12:17

10 Answers 10

Basically the same way you would flatten a nested list, you just have to do the extra work for iterating the dict by key/value, creating new keys for your new dictionary and creating the dictionary at final step.

import collections

def flatten(d, parent_key='', sep='_'):
    items = []
    for k, v in d.items():
        new_key = parent_key + sep + k if parent_key else k
        if isinstance(v, collections.MutableMapping):
            items.extend(flatten(v, new_key, sep=sep).items())
            items.append((new_key, v))
    return dict(items)

>>> flatten({'a': 1, 'c': {'a': 2, 'b': {'x': 5, 'y' : 10}}, 'd': [1, 2, 3]})
{'a': 1, 'c_a': 2, 'c_b_x': 5, 'd': [1, 2, 3], 'c_b_y': 10}
share|improve this answer
If you replace the isinstance with a try..except block, this will work for any mapping, even if it is not derived from dict. –  Björn Pollex May 17 '11 at 7:34
Changed it to test for collections.MutableMapping to make it more generic. But for Python < 2.6, try..except is probably the best option. –  Imran May 17 '11 at 7:55
If you want empty dictionaries preserved in flattened version you might want to change if isinstance(v, collections.MutableMapping): to if v and isinstance(v, collections.MutableMapping): –  tarequeh Sep 6 '13 at 0:19
exactly what i wanted... thanks!!! remember to import collections when using this. –  ihightower May 10 at 11:53
Note that new_key = parent_key + sep + k if parent_key else k assumes that keys are always strings, otherwise it will raise TypeError: cannot concatenate 'str' and [other] objects. However, you could fix that by simply coercing k to string (str(k)), or concatenating keys into a tuple instead of a string (tuples can be dict keys, too). –  Scott H Jun 29 at 21:09

note:: This is not a duplicate question, and is in fact a much broader question than the alleged duplicate. I have written generalized machinery below which can be easily adapted for the original poster's needs, demonstrated later. edit: Now that is has been reopened, I can paste in my answer. =)

The following machinery below can be adapted for not only this need, and many similar needs. This answer also discusses problems with other answers, and situations in which performance can be increased, specifically:

  • key namespace clobbering issues
  • asymptotic speed, bad-case scenarios, conditions under which it may be improved
  • alleged duplicate, why it's not a duplicate, how to adapt

You can think of dictionaries as nodes in a tree you are traversing:

from collections import *
from itertools import *
from operator import add

same = lambda x:x       # identity function
_tuple = lambda x:(x,)  # python actually has coercion, avoid it like so

def flattenDict(dictionary, keyReducer=add, keyLift=_tuple, init=()):

    # semi-lazy: goes through all dicts but lazy over all keys
    # reduction is done in a fold-left manner, i.e. final key will be
    #     r((...r((r((r((init,k1)),k2)),k3))...kn))

    def _flattenIter(pairs, _keyAccum=init):
        atoms = ((k,v) for k,v in pairs if not isinstance(v, Mapping))
        submaps = ((k,v) for k,v in pairs if isinstance(v, Mapping))
        def compress(k):
            return keyReducer(_keyAccum, keyLift(k))
        return chain(
                (compress(k),v) for k,v in atoms
                _flattenIter(submap.items(), compress(k))
                for k,submap in submaps
    return dict(_flattenIter(dictionary.items()))

Demonstration (which I'd otherwise put in docstring):

>>> x = {
>>> flattenDict(x)
{('c', 'aa'): 11, ('c', 'bb'): 22, ('b',): 2, ('a',): 1, ('c', 'cc', 'aaa'): 111}

>>> {'_'.join(k):v for k,v in flattenDict(x).items()}
{'a': 1, 'b': 2, 'c_aa': 11, 'c_bb': 22, 'c_cc_aaa': 111}

>>> flattenDict(x, keyReducer=lambda a,b:hash((a,b))%10000)
{9775: 22, 980: 2, 5717: 1, 2539: 111, 6229: 11}

Regarding key namespace clobbering:

Note that there is the issue of key namespace shadowing, for example if there was already a key (1,2), but the key 1->2 got compressed into the tuple (1,2). The same thing can happen with string compression. This should only be an issue if the final keys overlap, but some other answers have this issue when intermediate keys overlap (if they use dict.update).

This issue is either unavoidable, or avoidable, depending on how you look at it. You could wrap the final key as a custom Key object, e.g. x=object(); x.wrapped=key, so that Key(1)!=Key(1). But that's overkill and the use case is too pathological to really care about.

Regarding asymptotic speed:

In the case of a string or tuple concatenation, the asymptotic speed can get pretty bad, being O(sum(depth(node) for all nodes)), which is equivalent to O(N log(N) if the dictionaries form a balanced tree. Furthermore it gets really bad if it's highly nested. A way to see if an implementation fails in this way is to imagine how it would perform on {1:{1:{1:{1:...(N times)...{1:SOME_LARGE_DICTIONARY_OF_SIZE_N}...}}}}.

By the problem definition, this is unavoidable. You can imagine this must be the case because the key of each node must be a joining of higher-level keys (each key implicity traces a path to the root dictionary for every single flattened value).

This issue often arises from doing things like rebuilding the list at every step, but can even occur in lazy implementations as well, like recursively calling generators ("re-yielding").

It turns out that there are only TWO ways to mitigate the deletirious effect deep-nesting has on speed. Not only MUST you avoid rebuilding the list at every step (my answer does this, unlike other answers I see here which append or re-yield etc.), but you must do one or two of the following things:

  1. Have "compressible" key-joining semantics. In more technical terms, the keyReducer func must have the property that it reduces the problem of calculating the key name into an (O(1)) subproblem.

Examples of "compressive" key-joining semantics: * if the keys were numbers and you wanted the final key to be a sum * if the keys were hashes and you wanted the final key to be a symmetric hash

This use case isn't too common, but my solution supports this. The default semantics I use though in my implementation (tuple), as well as the semantics requested by the original poster ('_'.join), are unfortunately not compressible. But if for example you wanted to compress the keys using hash or sum, you could pass it in as reducer=hash or reducer=sum (the default is reducer=tuple; the final key will be r((...r((r((r((init,k1)),k2)),k3))...kn))).

  1. Use lazy evaluation by returning a key-view, or have the keys be part of a linked-list-tree: if the keys are not needed, they are not calculated. I don't bother doing this on the level necessary to make a difference, since merely printing out the keys would negate any benefit; but if you have reasons for wanting only the values of very deeply-nested dictionaries, you could implement this.

Regarding the alleged duplicate of Flatten a dictionary of dictionaries (2 levels deep) of lists in Python:

That question's solution can be implemented in terms of this one by doing sorted( sum(flatten(...),[]) ). The reverse is not possible: while it is true that the values of flatten(...) can be recovered from the alleged duplicate by mapping a higher-order accumulator, one cannot recover the keys. (edit: Also it turns out that the alleged duplicate owner's question is completely different, in that it only deals with dictionaries exactly 2-level deep, though one of the answers on that page gives a general solution.)

share|improve this answer

Here is a kind of a "functional", "one-liner" implementation. It is recursive, and based on a conditional expression and a dict comprehension.

def flatten_dict(dd, separator='_', prefix=''):
    return { prefix + separator + k if prefix else k : v
             for kk, vv in dd.items()
             for k, v in flatten_dict(vv, separator, kk).items()
             } if isinstance(dd, dict) else { prefix : dd }


In [2]: flatten_dict({'abc':123, 'hgf':{'gh':432, 'yu':433}, 'gfd':902, 'xzxzxz':{"432":{'0b0b0b':231}, "43234":1321}}, '.')
{'abc': 123,
 'gfd': 902,
 'hgf.gh': 432,
 'hgf.yu': 433,
 'xzxzxz.432.0b0b0b': 231,
 'xzxzxz.43234': 1321}
share|improve this answer


test = {'a': 1, 'c': {'a': 2, 'b': {'x': 5, 'y' : 10}}, 'd': [1, 2, 3]}

def parse_dict(init, lkey=''):
    ret = {}
    for rkey,val in init.items():
        key = lkey+rkey
        if isinstance(val, dict):
            ret.update(parse_dict(val, key+'_'))
            ret[key] = val
    return ret



$ python test.py
{'a': 1, 'c_a': 2, 'c_b_x': 5, 'd': [1, 2, 3], 'c_b_y': 10}

I am using python3.2, update for your version of python.

share|improve this answer
You probably want to specify the default value of lkey='' in your function definition instead of when calling the function. See other answers in this regard. –  A-B-B Dec 21 '12 at 10:55

This is not restricted to dictionaries, but every mapping type. Further ist faster as it avoides an if condition. Nevertheless credits go to Imran:

def flatten(d, parent_key=''):
    items = []
    for k, v in d.items():
            items.extend(flatten(v, '%s%s_' % (parent_key, k)).items())
        except AttributeError:
            items.append(('%s%s' % (parent_key, k), v))
    return dict(items)
share|improve this answer

This is similar to both imran's and ralu's answer. It does not use a generator, but instead employs recursion with a closure:

def flatten_dict(d, separator='_'):
  final = {}
  def _flatten_dict(obj, parent_keys=[]):
    for k, v in obj.iteritems():
      if isinstance(v, dict):
        _flatten_dict(v, parent_keys + [k])
        key = separator.join(parent_keys + [k])
        final[key] = v
  return final

>>> print flatten_dict({'a': 1, 'c': {'a': 2, 'b': {'x': 5, 'y' : 10}}, 'd': [1, 2, 3]})
{'a': 1, 'c_a': 2, 'c_b_x': 5, 'd': [1, 2, 3], 'c_b_y': 10}
share|improve this answer
I am not sure if using the term "closure" is correct here, as the function _flatten_dict is never returned, nor is it expected to ever be returned. It can perhaps be referred to as a subfunction or an enclosed function instead. –  A-B-B Dec 21 '12 at 10:59

Davoud's solution is very nice but doesn't give satisfactory results when the nested dict also contains lists of dicts, but his code be adapted for that case:

def flatten_dict(d):
    items = []
    for k, v in d.items():
            if (type(v)==type([])): 
                for l in v: items.extend(flatten_dict(l).items())
        except AttributeError:
            items.append((k, v))
    return dict(items)
share|improve this answer
You could cache the result of type([]) to avoid a function call for every item of the dict. –  bfontaine Dec 27 '14 at 21:42
Please use isinstance(v, list) instead –  Druska Mar 25 at 1:22

Using generators:

def flat_dic_helper(prepand,d):
    if len(prepand) > 0:
        prepand = prepand + "_"
    for k in d:
        if type(i).__name__=='dict':
            r = flat_dic_helper(prepand+k,i)
            for j in r:
                yield j
            yield (prepand+k,i)

def flat_dic(d): return dict(flat_dic_helper("",d))

d={'a': 1, 'c': {'a': 2, 'b': {'x': 5, 'y' : 10}}, 'd': [1, 2, 3]}

>> {'a': 1, 'c_a': 2, 'c_b_x': 5, 'd': [1, 2, 3], 'c_b_y': 10}
share|improve this answer
type(i).__name__=='dict' could be replaced with type(i) is dict or perhaps even better isinstance(d, dict) (or Mapping/MutableMapping). –  Cristian Ciupitu Jun 27 '14 at 18:21

The answers above work really well. Just thought I'd add the unflatten function that I wrote:

def unflatten(d):
    ud = {}
    for k, v in d.items():
        context = ud
        for sub_key in k.split('_')[:-1]:
            if sub_key not in context:
                context[sub_key] = {}
            context = context[sub_key]
        context[k.split('_')[-1]] = v
    return ud

Note: This doesn't account for '_' already present in keys, much like the flatten counterparts.

share|improve this answer

Using Python 3, generators and O(n) memory, O(n) allocations.*

def traverse(d, sep='_', _prefix=''):
    assert isinstance(d, dict)
    for k, v in d.items():
        if isinstance(v, dict):
            yield from traverse(v, sep, "{0}{1}{2}".format(_prefix, k, sep))
            yield ("{0}{1}".format(_prefix, k), v)

def flatten(d):
    return dict(traverse(d))

*edit: not entirely O(n) because of the key.

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