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]}
  • 8
    also, there is a library for it: github.com/ianlini/flatten-dict
    – Ufos
    Commented Aug 31, 2018 at 16:34
  • 1
    see also: stackoverflow.com/questions/14692690
    – dreftymac
    Commented Jan 18, 2019 at 3:39
  • I see very different performance for the approaches suggested in the answers.
    – Fontanka16
    Commented Jun 17, 2021 at 15:30
  • The question should have at the end: "so that all levels' keys on the path to the leaf are concatenated?" Or change the header to "compressing (= concatenating) keys". There should be "concatenat" in the question for those who search. I was searching for a solution that would give a list of the keys on the path to the leaf, not a concatenation. You could say use split() then, but there are other direct ways that this question does not encourage. Commented Sep 14, 2021 at 20:48

32 Answers 32


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.

from collections.abc import MutableMapping

def flatten(dictionary, parent_key='', separator='_'):
    items = []
    for key, value in dictionary.items():
        new_key = parent_key + separator + key if parent_key else key
        if isinstance(value, MutableMapping):
            items.extend(flatten(value, new_key, separator=separator).items())
            items.append((new_key, value))
    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}
  • 9
    If you replace the isinstance with a try..except block, this will work for any mapping, even if it is not derived from dict. Commented May 17, 2011 at 7:34
  • 2
    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
    Commented May 17, 2011 at 7:55
  • 8
    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
    Commented Sep 6, 2013 at 0:19
  • 4
    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
    Commented Jun 29, 2015 at 21:09
  • 2
    Answered my own query: I added one "elif" and that did the trick... elif isinstance(v,list): for idx,val in enumerate(v): new_key = str(parent_key) + sep + str(k) + sep + str(idx) if parent_key else str(k) + sep + str(idx) items.extend(Controller.flatten(v[idx],new_key,sep=sep).items())
    – roneo
    Commented May 28, 2019 at 12:01

If you are already using pandas, you can do it with json_normalize() like so:

import pandas as pd

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

df = pd.json_normalize(d, sep='_')
d_flat = df.to_dict(orient='records')[0]



{'a': 1, 'c_a': 2, 'c_b_x': 5, 'c_b_y': 10, 'd': [1, 2, 3]}
  • 7
    Bit of a shame it doesn't handle lists :)
    – Roelant
    Commented Nov 27, 2018 at 14:32
  • In my application, the pandas approach really dragged down performance compared to @imran's answer
    – Fontanka16
    Commented Jun 17, 2021 at 15:31
  • This does not work if you have integers as keys in the dictionary: 98 if level != 0: # so we skip copying for top level, common case ---> 99 v = new_d.pop(k) 100 new_d[newkey] = v 101 continue KeyError: '6' Commented Sep 12, 2021 at 15:07
  • 2
    @MohammadYusuf I could not convert keys to string using just a parameter in the json_normalize function. It is built-in on the JSON side. Perhaps, they will change it in future. It still is a compact one-liner and good for the standard case of string keys. Commented Sep 13, 2021 at 10:03

There are two big considerations that the original poster needs to consider:

  1. Are there keyspace clobbering issues? For example, {'a_b':{'c':1}, 'a':{'b_c':2}} would result in {'a_b_c':???}. The below solution evades the problem by returning an iterable of pairs.
  2. If performance is an issue, does the key-reducer function (which I hereby refer to as 'join') require access to the entire key-path, or can it just do O(1) work at every node in the tree? If you want to be able to say joinedKey = '_'.join(*keys), that will cost you O(N^2) running time. However if you're willing to say nextKey = previousKey+'_'+thisKey, that gets you O(N) time. The solution below lets you do both (since you could merely concatenate all the keys, then postprocess them).

(Performance is not likely an issue, but I'll elaborate on the second point in case anyone else cares: In implementing this, there are numerous dangerous choices. If you do this recursively and yield and re-yield, or anything equivalent which touches nodes more than once (which is quite easy to accidentally do), you are doing potentially O(N^2) work rather than O(N). This is because maybe you are calculating a key a then a_1 then a_1_i..., and then calculating a then a_1 then a_1_ii..., but really you shouldn't have to calculate a_1 again. Even if you aren't recalculating it, re-yielding it (a 'level-by-level' approach) is just as bad. A good example is to think about the performance on {1:{1:{1:{1:...(N times)...{1:SOME_LARGE_DICTIONARY_OF_SIZE_N}...}}}})

Below is a function I wrote flattenDict(d, join=..., lift=...) which can be adapted to many purposes and can do what you want. Sadly it is fairly hard to make a lazy version of this function without incurring the above performance penalties (many python builtins like chain.from_iterable aren't actually efficient, which I only realized after extensive testing of three different versions of this code before settling on this one).

from collections import Mapping
from itertools import chain
from operator import add

_FLAG_FIRST = object()

def flattenDict(d, join=add, lift=lambda x:(x,)):
    results = []
    def visit(subdict, results, partialKey):
        for k,v in subdict.items():
            newKey = lift(k) if partialKey==_FLAG_FIRST else join(partialKey,lift(k))
            if isinstance(v,Mapping):
                visit(v, results, newKey)
    visit(d, results, _FLAG_FIRST)
    return results

To better understand what's going on, below is a diagram for those unfamiliar with reduce(left), otherwise known as "fold left". Sometimes it is drawn with an initial value in place of k0 (not part of the list, passed into the function). Here, J is our join function. We preprocess each kn with lift(k).

                           /    \
                         ...    kN
                       /  \
                      /    \
           J(J(k0,k1),k2)   k3
                    /   \
                   /     \
             J(k0,k1)    k2
                 /  \
                /    \
               k0     k1

This is in fact the same as functools.reduce, but where our function does this to all key-paths of the tree.

>>> reduce(lambda a,b:(a,b), range(5))
((((0, 1), 2), 3), 4)

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

>>> testData = {
from pprint import pprint as pp

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

>>> pp(dict( flattenDict(testData, join=lambda a,b:a+'_'+b, lift=lambda x:x) ))
{'a': 1, 'b': 2, 'c_aa': 11, 'c_bb': 22, 'c_cc_aaa': 111}    

>>> pp(dict( (v,k) for k,v in flattenDict(testData, lift=hash, join=lambda a,b:hash((a,b))) ))
{1: 12416037344,
 2: 12544037731,
 11: 5470935132935744593,
 22: 4885734186131977315,
 111: 3461911260025554326}


from functools import reduce
def makeEvilDict(n):
    return reduce(lambda acc,x:{x:acc}, [{i:0 for i in range(n)}]+range(n))

import timeit
def time(runnable):
    t0 = timeit.default_timer()
    _ = runnable()
    t1 = timeit.default_timer()
    print('took {:.2f} seconds'.format(t1-t0))

>>> pp(makeEvilDict(8))
{7: {6: {5: {4: {3: {2: {1: {0: {0: 0,
                                 1: 0,
                                 2: 0,
                                 3: 0,
                                 4: 0,
                                 5: 0,
                                 6: 0,
                                 7: 0}}}}}}}}}

import sys

forget = lambda a,b:''

>>> time(lambda: dict(flattenDict(makeEvilDict(10000), join=forget)) )
took 0.10 seconds
>>> time(lambda: dict(flattenDict(makeEvilDict(100000), join=forget)) )
[1]    12569 segmentation fault  python

... sigh, don't think that one is my fault...

[unimportant historical note due to moderation issues]

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

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.)

  • 3
    I am not sure if this is relevant to the question. This solution does not flatten a dictionary item of a list of dictionaries, i.e. {'a': [{'aa': 1}, {'ab': 2}]}. The flattenDict function can be altered easily to accommodate this case.
    – Stewbaca
    Commented Mar 2, 2016 at 19:25
  • Use join(partialKey + '_',lift(k) if you need the underscores as in the question. Commented Sep 12, 2021 at 14:52
  • If you have integers as keys in the dictionary, you need to change lift(k) to str(lift(k)) to avoid in visit(subdict, results, partialKey) 9 def visit(subdict, results, partialKey): 10 for k,v in subdict.items(): ---> 11 newKey = lift(k) if partialKey==_FLAG_FIRST else join(partialKey + ',',lift(k)) 12 if isinstance(v,Mapping): 13 visit(v, results, newKey) TypeError: can only concatenate str (not "int") to str. Commented Sep 12, 2021 at 15:08
  • 1
    @questionto42: There is no change necessary; that is the purpose of the lift parameter. You can just set flattenDict(..., join=lambda a,b:a+'_'+b, lift=repr) (or str but that's not a good idea due to key collsions 1<->'1') rather than leaving lift as the identity function and modifying the general-purpose code.
    – ninjagecko
    Commented Sep 12, 2021 at 20:05
  • Now that looks like higher science :) I see your point with the collisions, though. Commented Sep 12, 2021 at 20:19

If you're using pandas there is a function hidden in pandas.io.json._normalize1 called nested_to_record which does this exactly.

from pandas.io.json._normalize import nested_to_record    

flat = nested_to_record(my_dict, sep='_')

1 In pandas versions 0.24.x and older use pandas.io.json.normalize (without the _)

  • 2
    What worked for me was from pandas.io.json._normalize import nested_to_record. Notice the underscore (_) before normalize.
    – Eyal Levin
    Commented Oct 6, 2019 at 12:20
  • 3
    @EyalLevin Good catch! This changed in 0.25.x, I've updated the answer. :) Commented Oct 7, 2019 at 13:57
  • 1
    This does not work if you have integers as keys in the dictionary. --> 103 v = new_d.pop(k) 104 new_d.update(nested_to_record(v, newkey, sep, level + 1, max_level)) 105 new_ds.append(new_d) KeyError: '6' Commented Sep 12, 2021 at 14:59

Not exactly what the OP asked, but lots of folks are coming here looking for ways to flatten real-world nested JSON data which can have nested key-value json objects and arrays and json objects inside the arrays and so on. JSON doesn't include tuples, so we don't have to fret over those.

I found an implementation of the list-inclusion comment by @roneo to the answer posted by @Imran :


import collections
def flatten(dictionary, parent_key=False, separator='.'):
    Turn a nested dictionary into a flattened dictionary
    :param dictionary: The dictionary to flatten
    :param parent_key: The string to prepend to dictionary's keys
    :param separator: The string used to separate flattened keys
    :return: A flattened dictionary

    items = []
    for key, value in dictionary.items():
        new_key = str(parent_key) + separator + key if parent_key else key
        if isinstance(value, collections.abc.MutableMapping):
            items.extend(flatten(value, new_key, separator).items())
        elif isinstance(value, list):
            for k, v in enumerate(value):
                items.extend(flatten({str(k): v}, new_key).items())
            items.append((new_key, value))
    return dict(items)

Test it:

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

>> {'a': 1, 'c.a': 2, 'c.b.x': 5, 'c.b.y': 10, 'd.0': 1, 'd.1': 2, 'd.2': 3}

Annd that does the job I need done: I throw any complicated json at this and it flattens it out for me.

All credits to https://github.com/ScriptSmith .

2023-06-14 Update for python >= 3.10

Since Python 3.10, collections.MutableMapping has changed to collections.abc.MutableMapping. Hence code above is edited to reflect the same. If your python version is before 3.10, please change it back to collections.MutableMapping at your side.
Ref: https://stackoverflow.com/a/71902541/4355695

  • 4
    This is my favorite answer so far since it handles nested lists of dicts. Commented Apr 30, 2021 at 20:11
  • 1
    Thanks. I think this is best one, as it works with lists as well.
    – Marcin
    Commented Nov 23, 2021 at 5:25
  • In case: any comes across an error: AttributeError: module 'collections' has no attribute 'MutableMapping' Use, from collections.abc import MutableMapping. collections.MutableMapping has been deprecated.
    – anyfactor
    Commented Oct 16, 2022 at 0:34
  • what about creating multiple rows of data Commented May 19, 2023 at 20:34
  • @geekidharsh didn't get you.. if you're referring to a list of nested dicts you want to flatten, then: assuming data holds the list.. data_flat = [flatten(row) for row in data]
    – Nikhil VJ
    Commented Jun 14, 2023 at 17:52

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}
  • 1
    This doesn't work for general dictionaries, specifically, with tuple keys, eg substitute ('hgf',2) for the 2nd key in your test throws TypeError Commented Jul 3, 2019 at 19:22
  • 1
    @alancalvitti This assumes it to be a string, or something else that supports the + operator. For anything else you'll need to adapt prefix + separator + k to the appropriate function call to compose the objects. Commented Jul 5, 2019 at 13:31
  • 1
    Another issue relevant to tuple keys. I've posted separately how to generalize based on your method. However it cannot correctly handle ninjageko's example: {'a_b':{'c':1}, 'a':{'b_c':2}} Commented Jul 5, 2019 at 15:39
  • 8
    I was getting worried, seeing no answers utilizing recursion. What's wrong with our youth these days?
    – Jakov
    Commented Nov 15, 2019 at 9:47
  • 1
    does nothing if a dict has nested list of dicts, like this: {'name': 'Steven', 'children': [{'name': 'Jessica', 'children': []}, {'name': 'George', 'children': []}]}
    – Gergely M
    Commented May 25, 2020 at 10:34


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.

  • 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.
    – Asclepius
    Commented Dec 21, 2012 at 10:55

This is not restricted to dictionaries, but every mapping type that implements .items(). 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)
  • 2
    If d is not a dict but a custom mapping type that doesn't implement items, your function would fail right then and there. So, it it does not work for every mapping type but only those that implement items(). Commented Feb 19, 2019 at 23:08
  • 1
    @user6037143 have you ever encountered a mapping type that doesn't implement items? I'd be curious to see one. Commented Apr 17, 2019 at 23:35
  • 2
    @user6037143, no you haven't by definition if items is not implemented it's no mapping type. Commented Apr 18, 2019 at 20:00
  • 1
    @DavoudTaghawi-Nejad, could you modify this to handle general keys eg tuples which should not be internally flattened. Commented Jul 3, 2019 at 19:48

How about a functional and performant solution in Python3.5?

from functools import reduce

def _reducer(items, key, val, pref):
    if isinstance(val, dict):
        return {**items, **flatten(val, pref + key)}
        return {**items, pref + key: val}

def flatten(d, pref=''):
        lambda new_d, kv: _reducer(new_d, *kv, pref), 

This is even more performant:

def flatten(d, pref=''):
        lambda new_d, kv: \
            isinstance(kv[1], dict) and \
            {**new_d, **flatten(kv[1], pref + kv[0])} or \
            {**new_d, pref + kv[0]: kv[1]}, 

In use:

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

# {'d': [1, 2, 3], 'cby': 10, 'cbx': 5, 'ca': 2, 'a': 1}
  • 2
    How about a readable and working solution? ;) Which version did you test this on? I'm Getting "Syntax error" when trying this out in Python 3.4.3. Seems that usage of "**all" is not legit. Commented Nov 22, 2017 at 12:01
  • I works since Python 3.5. Didn't know it doesn't work with 3.4. You're right this isn't very readable. I updated the answer. Hope it's more readable now. :)
    – Rotareti
    Commented Nov 22, 2017 at 14:28
  • 1
    Added missing reduce import. Still find the code hard to understand and I think it's a good example why Guido van Rossum himself discouraged the usage of lambda, reduce, filter and map in 2005 already: artima.com/weblogs/viewpost.jsp?thread=98196 Commented Nov 23, 2017 at 9:40
  • I agree. Python isn't really designed for functional programming. Still I think reduce is great in case you need to reduce dictionaries. I updated the answer. Should look a little more pythonic now.
    – Rotareti
    Commented Nov 23, 2017 at 10:02

If you are a fan of pythonic oneliners:

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



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

You can leave the [0] from the end, if you have a list of dictionaries and not just a single dictionary.

  • It can be a one liner, but the cost of this operation is exaggerate in terms of performance. Commented Dec 17, 2022 at 15:46
  • 300-400 times slower than the fastest solution of all posted approaches here.
    – Chris
    Commented Feb 11 at 1:08

My Python 3.3 Solution using generators:

def flattenit(pyobj, keystring=''):
   if type(pyobj) is dict:
     if (type(pyobj) is dict):
         keystring = keystring + "_" if keystring else keystring
         for k in pyobj:
             yield from flattenit(pyobj[k], keystring + k)
     elif (type(pyobj) is list):
         for lelm in pyobj:
             yield from flatten(lelm, keystring)
      yield keystring, pyobj

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

#your flattened dictionary object
flattened={k:v for k,v in flattenit(my_obj)}

# result: {'c_b_y': 10, 'd': [1, 2, 3], 'c_a': 2, 'a': 1, 'c_b_x': 5}
  • can you extend to handle any valid key type other than str (including tuple)? Instead of string concatenation, join them in a tuple. Commented Jun 13, 2019 at 21:23

Utilizing recursion, keeping it simple and human readable:

def flatten_dict(dictionary, accumulator=None, parent_key=None, separator="."):
    if accumulator is None:
        accumulator = {}

    for k, v in dictionary.items():
        k = f"{parent_key}{separator}{k}" if parent_key else k
        if isinstance(v, dict):
            flatten_dict(dictionary=v, accumulator=accumulator, parent_key=k)

        accumulator[k] = v

    return accumulator

Call is simple:

new_dict = flatten_dict(dictionary)


new_dict = flatten_dict(dictionary, separator="_")

if we want to change the default separator.

A little breakdown:

When the function is first called, it is called only passing the dictionary we want to flatten. The accumulator parameter is here to support recursion, which we see later. So, we instantiate accumulator to an empty dictionary where we will put all of the nested values from the original dictionary.

if accumulator is None:
    accumulator = {}

As we iterate over the dictionary's values, we construct a key for every value. The parent_key argument will be None for the first call, while for every nested dictionary, it will contain the key pointing to it, so we prepend that key.

k = f"{parent_key}{separator}{k}" if parent_key else k

In case the value v the key k is pointing to is a dictionary, the function calls itself, passing the nested dictionary, the accumulator (which is passed by reference, so all changes done to it are done on the same instance) and the key k so that we can construct the concatenated key. Notice the continue statement. We want to skip the next line, outside of the if block, so that the nested dictionary doesn't end up in the accumulator under key k.

if isinstance(v, dict):
    flatten_dict(dict=v, accumulator=accumulator, parent_key=k)

So, what do we do in case the value v is not a dictionary? Just put it unchanged inside the accumulator.

accumulator[k] = v

Once we're done we just return the accumulator, leaving the original dictionary argument untouched.


This will work only with dictionaries that have strings as keys. It will work with hashable objects implementing the __repr__ method, but will yield unwanted results.


here's a solution using a stack. No recursion.

def flatten_nested_dict(nested):
    stack = list(nested.items())
    ans = {}
    while stack:
        key, val = stack.pop()
        if isinstance(val, dict):
            for sub_key, sub_val in val.items():
                stack.append((f"{key}_{sub_key}", sub_val))
            ans[key] = val
    return ans

Simple function to flatten nested dictionaries. For Python 3, replace .iteritems() with .items()

def flatten_dict(init_dict):
    res_dict = {}
    if type(init_dict) is not dict:
        return res_dict

    for k, v in init_dict.iteritems():
        if type(v) == dict:
            res_dict[k] = v

    return res_dict

The idea/requirement was: Get flat dictionaries with no keeping parent keys.

Example of usage:

dd = {'a': 3, 
      'b': {'c': 4, 'd': 5}, 
      'e': {'f': 
                 {'g': 1, 'h': 2}
      'i': 9,


>> {'a': 3, 'c': 4, 'd': 5, 'g': 1, 'h': 2, 'i': 9}

Keeping parent keys is simple as well.


I was thinking of a subclass of UserDict to automagically flat the keys.

class FlatDict(UserDict):
    def __init__(self, *args, separator='.', **kwargs):
        self.separator = separator
        super().__init__(*args, **kwargs)

    def __setitem__(self, key, value):
        if isinstance(value, dict):
            for k1, v1 in FlatDict(value, separator=self.separator).items():
                super().__setitem__(f"{key}{self.separator}{k1}", v1)
            super().__setitem__(key, value)

‌ The advantages it that keys can be added on the fly, or using standard dict instanciation, without surprise:

>>> fd = FlatDict(
...    {
...        'person': {
...            'sexe': 'male', 
...            'name': {
...                'first': 'jacques',
...                'last': 'dupond'
...            }
...        }
...    }
... )
>>> fd
{'person.sexe': 'male', 'person.name.first': 'jacques', 'person.name.last': 'dupond'}
>>> fd['person'] = {'name': {'nickname': 'Bob'}}
>>> fd
{'person.sexe': 'male', 'person.name.first': 'jacques', 'person.name.last': 'dupond', 'person.name.nickname': 'Bob'}
>>> fd['person.name'] = {'civility': 'Dr'}
>>> fd
{'person.sexe': 'male', 'person.name.first': 'jacques', 'person.name.last': 'dupond', 'person.name.nickname': 'Bob', 'person.name.civility': 'Dr'}
  • 1
    Assigning to fd['person'] but maintaining its existing value is quite surprising. That's not how regular dicts work.
    – tbm
    Commented Mar 23, 2020 at 15:53

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}
  • 2
    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.
    – Asclepius
    Commented Dec 21, 2012 at 10:59

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.


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)
  • You could cache the result of type([]) to avoid a function call for every item of the dict.
    – bfontaine
    Commented Dec 27, 2014 at 21:42
  • 2
    Please use isinstance(v, list) instead
    – Druska
    Commented Mar 25, 2015 at 1:22
def flatten(unflattened_dict, separator='_'):
    flattened_dict = {}

    for k, v in unflattened_dict.items():
        if isinstance(v, dict):
            sub_flattened_dict = flatten(v, separator)
            for k2, v2 in sub_flattened_dict.items():
                flattened_dict[k + separator + k2] = v2
            flattened_dict[k] = v

    return flattened_dict

I actually wrote a package called cherrypicker recently to deal with this exact sort of thing since I had to do it so often!

I think the following code would give you exactly what you're after:

from cherrypicker import CherryPicker

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

picker = CherryPicker(dct)

You can install the package with:

pip install cherrypicker

...and there's more docs and guidance at https://cherrypicker.readthedocs.io.

Other methods may be faster, but the priority of this package is to make such tasks easy. If you do have a large list of objects to flatten though, you can also tell CherryPicker to use parallel processing to speed things up.

  • 1
    I like the alternative approach.
    – Gergely M
    Commented May 25, 2020 at 11:56

Using generators:

def flat_dic_helper(prepand,d):
    if len(prepand) > 0:
        prepand = prepand + "_"
    for k in d:
        i = d[k]
        if isinstance(i, 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}
  • 3
    type(i).__name__=='dict' could be replaced with type(i) is dict or perhaps even better isinstance(d, dict) (or Mapping/MutableMapping). Commented Jun 27, 2014 at 18:21

Using flatdict library:

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

import flatdict
f =  flatdict.FlatDict(dic,delimiter='_')
{'a': 1, 'c_a': 2, 'c_b_x': 5, 'c_b_y': 10, 'd': [1, 2, 3]}

Here's an algorithm for elegant, in-place replacement. Tested with Python 2.7 and Python 3.5. Using the dot character as a separator.

def flatten_json(json):
    if type(json) == dict:
        for k, v in list(json.items()):
            if type(v) == dict:
                for k2, v2 in v.items():
                    json[k+"."+k2] = v2


d = {'a': {'b': 'c'}}                   


{'a.b': 'c'}
{'a': {'b': 'c'}}

I published this code here along with the matching unflatten_json function.


If you want to flat nested dictionary and want all unique keys list then here is the solution:

def flat_dict_return_unique_key(data, unique_keys=set()):
    if isinstance(data, dict):
        [unique_keys.add(i) for i in data.keys()]
        for each_v in data.values():
            if isinstance(each_v, dict):
                flat_dict_return_unique_key(each_v, unique_keys)
    return list(set(unique_keys))

I always prefer access dict objects via .items(), so for flattening dicts I use the following recursive generator flat_items(d). If you like to have dict again, simply wrap it like this: flat = dict(flat_items(d))

def flat_items(d, key_separator='.'):
    Flattens the dictionary containing other dictionaries like here: https://stackoverflow.com/questions/6027558/flatten-nested-python-dictionaries-compressing-keys

    >>> example = {'a': 1, 'c': {'a': 2, 'b': {'x': 5, 'y' : 10}}, 'd': [1, 2, 3]}
    >>> flat = dict(flat_items(example, key_separator='_'))
    >>> assert flat['c_b_y'] == 10
    for k, v in d.items():
        if type(v) is dict:
            for k1, v1 in flat_items(v, key_separator=key_separator):
                yield key_separator.join((k, k1)), v1
            yield k, v
  • That's the best functional solution. Thanks Commented Jan 14, 2021 at 17:53
def flatten_nested_dict(_dict, _str=''):
    recursive function to flatten a nested dictionary json
    ret_dict = {}
    for k, v in _dict.items():
        if isinstance(v, dict):
            ret_dict.update(flatten_nested_dict(v, _str = '_'.join([_str, k]).strip('_')))
        elif isinstance(v, list):
            for index, item in enumerate(v):
                if isinstance(item, dict):
                    ret_dict.update(flatten_nested_dict(item,  _str= '_'.join([_str, k, str(index)]).strip('_')))
                    ret_dict['_'.join([_str, k, str(index)]).strip('_')] = item
            ret_dict['_'.join([_str, k]).strip('_')] = v
    return ret_dict
  • this works with lists inside our nested dict, but doesn't have a custom separator option
    – Nikhil VJ
    Commented Jun 4, 2020 at 2:41

Using dict.popitem() in straightforward nested-list-like recursion:

def flatten(d):
    if d == {}:
        return d
        k,v = d.popitem()
        if (dict != type(v)):
            return {k:v, **flatten(d)}
            flat_kv = flatten(v)
            for k1 in list(flat_kv.keys()):
                flat_kv[k + '_' + k1] = flat_kv[k1]
                del flat_kv[k1]
            return {**flat_kv, **flatten(d)}

If you do not mind recursive functions, here is a solution. I have also taken the liberty to include an exclusion-parameter in case there are one or more values you wish to maintain.


def flatten_dict(dictionary, exclude = [], delimiter ='_'):
    flat_dict = dict()
    for key, value in dictionary.items():
        if isinstance(value, dict) and key not in exclude:
            flatten_value_dict = flatten_dict(value, exclude, delimiter)
            for k, v in flatten_value_dict.items():
                flat_dict[f"{key}{delimiter}{k}"] = v
            flat_dict[key] = value
    return flat_dict


d = {'a':1, 'b':[1, 2], 'c':3, 'd':{'a':4, 'b':{'a':7, 'b':8}, 'c':6}, 'e':{'a':1,'b':2}}
flat_d = flatten_dict(dictionary=d, exclude=['e'], delimiter='.')


{'a': 1, 'b': [1, 2], 'c': 3, 'd.a': 4, 'd.b.a': 7, 'd.b.b': 8, 'd.c': 6, 'e': {'a': 1, 'b': 2}}

I tried some of the solutions on this page - though not all - but those I tried failed to handle the nested list of dict.

Consider a dict like this:

d = {
        'owner': {
            'name': {'first_name': 'Steven', 'last_name': 'Smith'},
            'lottery_nums': [1, 2, 3, 'four', '11', None],
            'address': {},
            'tuple': (1, 2, 'three'),
            'tuple_with_dict': (1, 2, 'three', {'is_valid': False}),
            'set': {1, 2, 3, 4, 'five'},
            'children': [
                {'name': {'first_name': 'Jessica',
                          'last_name': 'Smith', },
                 'children': []
                {'name': {'first_name': 'George',
                          'last_name': 'Smith'},
                 'children': []

Here's my makeshift solution:

def flatten_dict(input_node: dict, key_: str = '', output_dict: dict = {}):
    if isinstance(input_node, dict):
        for key, val in input_node.items():
            new_key = f"{key_}.{key}" if key_ else f"{key}"
            flatten_dict(val, new_key, output_dict)
    elif isinstance(input_node, list):
        for idx, item in enumerate(input_node):
            flatten_dict(item, f"{key_}.{idx}", output_dict)
        output_dict[key_] = input_node
    return output_dict

which produces:

  owner.name.first_name: Steven,
  owner.name.last_name: Smith,
  owner.lottery_nums.0: 1,
  owner.lottery_nums.1: 2,
  owner.lottery_nums.2: 3,
  owner.lottery_nums.3: four,
  owner.lottery_nums.4: 11,
  owner.lottery_nums.5: None,
  owner.tuple: (1, 2, 'three'),
  owner.tuple_with_dict: (1, 2, 'three', {'is_valid': False}),
  owner.set: {1, 2, 3, 4, 'five'},
  owner.children.0.name.first_name: Jessica,
  owner.children.0.name.last_name: Smith,
  owner.children.1.name.first_name: George,
  owner.children.1.name.last_name: Smith,

A makeshift solution and it's not perfect.

  • it doesn't keep empty dicts such as the address: {} k/v pair.

  • it won't flatten dicts in nested tuples - though it would be easy to add using the fact that python tuples act similar to lists.


Variation of this Flatten nested dictionaries, compressing keys with max_level and custom reducer.

  def flatten(d, max_level=None, reducer='tuple'):
      if reducer == 'tuple':
          reducer_seed = tuple()
          reducer_func = lambda x, y: (*x, y)
          raise ValueError(f'Unknown reducer: {reducer}')

      def impl(d, pref, level):
        return reduce(
            lambda new_d, kv:
                (max_level is None or level < max_level)
                and isinstance(kv[1], dict)
                and {**new_d, **impl(kv[1], reducer_func(pref, kv[0]), level + 1)}
                or {**new_d, reducer_func(pref, kv[0]): kv[1]},

      return impl(d, reducer_seed, 0)

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