784

Given:

[
  {"name": "Tom", "age": 10},
  {"name": "Mark", "age": 5},
  {"name": "Pam", "age": 7}
]

How do I search by name == "Pam" to retrieve the corresponding dictionary below?

{"name": "Pam", "age": 7}

25 Answers 25

970

You can use a generator expression:

>>> dicts = [
...     { "name": "Tom", "age": 10 },
...     { "name": "Mark", "age": 5 },
...     { "name": "Pam", "age": 7 },
...     { "name": "Dick", "age": 12 }
... ]

>>> next(item for item in dicts if item["name"] == "Pam")
{'age': 7, 'name': 'Pam'}

If you need to handle the item not being there, then you can do what user Matt suggested in his comment and provide a default using a slightly different API:

next((item for item in dicts if item["name"] == "Pam"), None)

And to find the index of the item, rather than the item itself, you can enumerate() the list:

next((i for i, item in enumerate(dicts) if item["name"] == "Pam"), None)
11
  • 314
    Just to save anyone else a little time, if you need a default value in the event "Pam" just ain't in the list: next((item for item in dicts if item["name"] == "Pam"), None)
    – Matt
    Nov 27, 2012 at 22:08
  • 5
    What about [item for item in dicts if item["name"] == "Pam"][0]?
    – Moberg
    Oct 9, 2014 at 11:30
  • 4
    @Moberg, that's still a list comprehension, so it will iterate over the whole input sequence regardless of the position of the matching item. Oct 9, 2014 at 12:02
  • 10
    This will raise stopiteration error if key is not present in dictionary Jun 5, 2018 at 12:25
  • 4
    @Siemkowski: then add enumerate() to generate a running index: next(i for i, item in enumerate(dicts) if item["name"] == "Pam").
    – Martijn Pieters
    Nov 22, 2018 at 12:56
326

This looks to me the most pythonic way:

people = [
{'name': "Tom", 'age': 10},
{'name': "Mark", 'age': 5},
{'name': "Pam", 'age': 7}
]

filter(lambda person: person['name'] == 'Pam', people)

result (returned as a list in Python 2):

[{'age': 7, 'name': 'Pam'}]

Note: In Python 3, a filter object is returned. So the python3 solution would be:

list(filter(lambda person: person['name'] == 'Pam', people))
8
  • 17
    Is worth noting that this answer returns a list with all matches for 'Pam' in people, alternatively we could get a list of all the people that are not 'Pam' by changing the comparison operator to !=. +1
    – Onema
    Nov 12, 2015 at 22:25
  • 4
    Also worth mentioning that the result is a filter object, not a list - if you want to use things like len(), you need to call list() on the result first. Or: stackoverflow.com/questions/19182188/…
    – wasabigeek
    Dec 21, 2017 at 16:06
  • @wasabigeek this is what my Python 2.7 says: people = [ {'name': "Tom", 'age': 10}, {'name': "Mark", 'age': 5}, {'name': "Pam", 'age': 7} ] r = filter(lambda person: person['name'] == 'Pam', people) type(r) list So r is a list
    – PaoloC
    Dec 26, 2017 at 14:32
  • 1
    List comprehensions are considered more Pythonic than map/filter/reduce: stackoverflow.com/questions/5426754/google-python-style-guide
    – jrc
    Nov 11, 2019 at 12:58
  • 10
    Get the first match: next(filter(lambda x: x['name'] == 'Pam', dicts))
    – xgMz
    Dec 12, 2019 at 19:24
107

@Frédéric Hamidi's answer is great. In Python 3.x the syntax for .next() changed slightly. Thus a slight modification:

>>> dicts = [
     { "name": "Tom", "age": 10 },
     { "name": "Mark", "age": 5 },
     { "name": "Pam", "age": 7 },
     { "name": "Dick", "age": 12 }
 ]
>>> next(item for item in dicts if item["name"] == "Pam")
{'age': 7, 'name': 'Pam'}

As mentioned in the comments by @Matt, you can add a default value as such:

>>> next((item for item in dicts if item["name"] == "Pam"), False)
{'name': 'Pam', 'age': 7}
>>> next((item for item in dicts if item["name"] == "Sam"), False)
False
>>>
1
  • 6
    This is the best answer for Python 3.x. If you need a specific element from the dicts, like age, you can write: next((item.get('age') for item in dicts if item["name"] == "Pam"), False)
    – cwhisperer
    Jan 9, 2019 at 7:44
80

You can use a list comprehension:

def search(name, people):
    return [element for element in people if element['name'] == name]
5
  • 9
    This is nice because it returns all matches if there is more than one. Not exactly what the question asked for, but it's what I needed! Thanks! Aug 23, 2016 at 5:32
  • 2
    Note also this returns a list!
    – Abbas
    Apr 27, 2020 at 12:24
  • Is it possible to pass two conditions? such as if element['name'] == name and element['age'] == age? I tried it out, but doesn't seem to work, says element is undefined on the second condition.
    – Martynas
    Jun 24, 2020 at 8:34
  • @Martynas yes, it is possible. Don't forget to add an argument age to the function def search2(name, age, people): and don't forget to pass this argument, as well =). I've just tried two conditions and it works!
    – hotenov
    Aug 19, 2021 at 6:36
  • This returns a list regardless of if the value is present.
    – Juls
    Apr 6, 2023 at 19:32
62

I tested various methods to go through a list of dictionaries and return the dictionaries where key x has a certain value.

Results:

  • Speed: list comprehension > generator expression >> normal list iteration >>> filter.
  • All scale linear with the number of dicts in the list (10x list size -> 10x time).
  • The keys per dictionary does not affect speed significantly for large amounts (thousands) of keys. Please see this graph I calculated: https://i.stack.imgur.com/j2nXV.jpg (method names see below).

All tests done with Python 3.6.4, W7x64.

from random import randint
from timeit import timeit


list_dicts = []
for _ in range(1000):     # number of dicts in the list
    dict_tmp = {}
    for i in range(10):   # number of keys for each dict
        dict_tmp[f"key{i}"] = randint(0,50)
    list_dicts.append( dict_tmp )



def a():
    # normal iteration over all elements
    for dict_ in list_dicts:
        if dict_["key3"] == 20:
            pass

def b():
    # use 'generator'
    for dict_ in (x for x in list_dicts if x["key3"] == 20):
        pass

def c():
    # use 'list'
    for dict_ in [x for x in list_dicts if x["key3"] == 20]:
        pass

def d():
    # use 'filter'
    for dict_ in filter(lambda x: x['key3'] == 20, list_dicts):
        pass

Results:

1.7303 # normal list iteration 
1.3849 # generator expression 
1.3158 # list comprehension 
7.7848 # filter
3
  • I added function z() that implements next as pointed by Frédéric Hamidi above. Here are the results from Py profile.
    – leon
    Mar 24, 2019 at 1:53
  • Does anyone know why a list comprehension c() would be that much faster than simply iterating over the list a() Oct 7, 2022 at 0:28
  • 1
    @knowledge_seeker, this might not be the best analogy but think of generators like indexes in a database and lists like query results in a database. It is much faster to sift through necessary pieces of data to get the end result instead of getting the result of a result of a result, etc. Hope this makes sense.
    – tacan
    May 1, 2023 at 8:01
45
people = [
{'name': "Tom", 'age': 10},
{'name': "Mark", 'age': 5},
{'name': "Pam", 'age': 7}
]

def search(name):
    for p in people:
        if p['name'] == name:
            return p

search("Pam")
2
  • It will return the first dictionary in the list with the given name. Jun 20, 2013 at 10:10
  • 12
    Just to make this very useful routine a little more generic: def search(list, key, value): for item in list: if item[key] == value: return item
    – Jack James
    Aug 20, 2014 at 13:18
13

Have you ever tried out the pandas package? It's perfect for this kind of search task and optimized too.

import pandas as pd

listOfDicts = [
{"name": "Tom", "age": 10},
{"name": "Mark", "age": 5},
{"name": "Pam", "age": 7}
]

# Create a data frame, keys are used as column headers.
# Dict items with the same key are entered into the same respective column.
df = pd.DataFrame(listOfDicts)

# The pandas dataframe allows you to pick out specific values like so:

df2 = df[ (df['name'] == 'Pam') & (df['age'] == 7) ]

# Alternate syntax, same thing

df2 = df[ (df.name == 'Pam') & (df.age == 7) ]

I've added a little bit of benchmarking below to illustrate pandas' faster runtimes on a larger scale i.e. 100k+ entries:

setup_large = 'dicts = [];\
[dicts.extend(({ "name": "Tom", "age": 10 },{ "name": "Mark", "age": 5 },\
{ "name": "Pam", "age": 7 },{ "name": "Dick", "age": 12 })) for _ in range(25000)];\
from operator import itemgetter;import pandas as pd;\
df = pd.DataFrame(dicts);'

setup_small = 'dicts = [];\
dicts.extend(({ "name": "Tom", "age": 10 },{ "name": "Mark", "age": 5 },\
{ "name": "Pam", "age": 7 },{ "name": "Dick", "age": 12 }));\
from operator import itemgetter;import pandas as pd;\
df = pd.DataFrame(dicts);'

method1 = '[item for item in dicts if item["name"] == "Pam"]'
method2 = 'df[df["name"] == "Pam"]'

import timeit
t = timeit.Timer(method1, setup_small)
print('Small Method LC: ' + str(t.timeit(100)))
t = timeit.Timer(method2, setup_small)
print('Small Method Pandas: ' + str(t.timeit(100)))

t = timeit.Timer(method1, setup_large)
print('Large Method LC: ' + str(t.timeit(100)))
t = timeit.Timer(method2, setup_large)
print('Large Method Pandas: ' + str(t.timeit(100)))

#Small Method LC: 0.000191926956177
#Small Method Pandas: 0.044392824173
#Large Method LC: 1.98827004433
#Large Method Pandas: 0.324505090714
1
  • and method3 = """df.query("name == 'Pam'")""", while slightly slower than method 2 for small datasets (still 2 orders of magnitude faster than LC), is twice as fast on my machine for the larger dataset
    – emmagras
    Feb 9, 2022 at 13:25
12

To add just a tiny bit to @FrédéricHamidi.

In case you are not sure a key is in the the list of dicts, something like this would help:

next((item for item in dicts if item.get("name") and item["name"] == "Pam"), None)
1
12

One simple way using list comprehensions is , if l is the list

l = [
{"name": "Tom", "age": 10},
{"name": "Mark", "age": 5},
{"name": "Pam", "age": 7}
]

then

[d['age'] for d in l if d['name']=='Tom']
11
def dsearch(lod, **kw):
    return filter(lambda i: all((i[k] == v for (k, v) in kw.items())), lod)

lod=[{'a':33, 'b':'test2', 'c':'a.ing333'},
     {'a':22, 'b':'ihaha', 'c':'fbgval'},
     {'a':33, 'b':'TEst1', 'c':'s.ing123'},
     {'a':22, 'b':'ihaha', 'c':'dfdvbfjkv'}]



list(dsearch(lod, a=22))

[{'a': 22, 'b': 'ihaha', 'c': 'fbgval'},
 {'a': 22, 'b': 'ihaha', 'c': 'dfdvbfjkv'}]



list(dsearch(lod, a=22, b='ihaha'))

[{'a': 22, 'b': 'ihaha', 'c': 'fbgval'},
 {'a': 22, 'b': 'ihaha', 'c': 'dfdvbfjkv'}]


list(dsearch(lod, a=22, c='fbgval'))

[{'a': 22, 'b': 'ihaha', 'c': 'fbgval'}]
10

You can achieve this with the usage of filter and next methods in Python.

filter method filters the given sequence and returns an iterator. next method accepts an iterator and returns the next element in the list.

So you can find the element by,

my_dict = [
    {"name": "Tom", "age": 10},
    {"name": "Mark", "age": 5},
    {"name": "Pam", "age": 7}
]

next(filter(lambda obj: obj.get('name') == 'Pam', my_dict), None)

and the output is,

{'name': 'Pam', 'age': 7}

Note: The above code will return None incase if the name we are searching is not found.

1
  • This is a lot slower than list comprehensions. Apr 10, 2020 at 15:14
9

Simply using list comprehension:

[i for i in dct if i['name'] == 'Pam'][0]

Sample code:

dct = [
    {'name': 'Tom', 'age': 10},
    {'name': 'Mark', 'age': 5},
    {'name': 'Pam', 'age': 7}
]

print([i for i in dct if i['name'] == 'Pam'][0])

> {'age': 7, 'name': 'Pam'}
2
  • This would crash if Pam isn't in the list.
    – IloneSP
    Nov 23, 2022 at 14:54
  • @Roberto yep, that's true, but you can counter this by saving the result of list comprehension to a variable and check list size before taking the element 0. Or add "try except" clause on top of this line to catch IndexError
    – Teoretic
    Nov 23, 2022 at 15:49
9

Put the accepted answer in a function to easy re-use

def get_item(collection, key, target):
    return next((item for item in collection if item[key] == target), None)

Or also as a lambda

   get_item_lambda = lambda collection, key, target : next((item for item in collection if item[key] == target), None)

Result

    key = "name"
    target = "Pam"
    print(get_item(target_list, key, target))
    print(get_item_lambda(target_list, key, target))

    #{'name': 'Pam', 'age': 7}
    #{'name': 'Pam', 'age': 7}

In case the key may not be in the target dictionary use dict.get and avoid KeyError

def get_item(collection, key, target):
    return next((item for item in collection if item.get(key, None) == target), None)

get_item_lambda = lambda collection, key, target : next((item for item in collection if item.get(key, None) == target), None)
8

This is a general way of searching a value in a list of dictionaries:

def search_dictionaries(key, value, list_of_dictionaries):
    return [element for element in list_of_dictionaries if element[key] == value]
7
dicts=[
{"name": "Tom", "age": 10},
{"name": "Mark", "age": 5},
{"name": "Pam", "age": 7}
]

from collections import defaultdict
dicts_by_name=defaultdict(list)
for d in dicts:
    dicts_by_name[d['name']]=d

print dicts_by_name['Tom']

#output
#>>>
#{'age': 10, 'name': 'Tom'}
7
names = [{'name':'Tom', 'age': 10}, {'name': 'Mark', 'age': 5}, {'name': 'Pam', 'age': 7}]
resultlist = [d    for d in names     if d.get('name', '') == 'Pam']
first_result = resultlist[0]

This is one way...

1
  • 1
    I might suggest [d for x in names if d.get('name', '') == 'Pam'] ... to gracefully handle any entries in "names" which did not have a "name" key.
    – Jim Dennis
    Nov 28, 2016 at 8:30
6

You can try this:

''' lst: list of dictionaries '''
lst = [{"name": "Tom", "age": 10}, {"name": "Mark", "age": 5}, {"name": "Pam", "age": 7}]

search = raw_input("What name: ") #Input name that needs to be searched (say 'Pam')

print [ lst[i] for i in range(len(lst)) if(lst[i]["name"]==search) ][0] #Output
>>> {'age': 7, 'name': 'Pam'} 
5

My first thought would be that you might want to consider creating a dictionary of these dictionaries ... if, for example, you were going to be searching it more a than small number of times.

However that might be a premature optimization. What would be wrong with:

def get_records(key, store=dict()):
    '''Return a list of all records containing name==key from our store
    '''
    assert key is not None
    return [d for d in store if d['name']==key]
2
  • Actually you can have a dictionary with a name=None item in it; but that wouldn't really work with this list comprehension and it's probably not sane to allow it in your data store.
    – Jim Dennis
    Dec 28, 2011 at 8:35
  • 1
    asserts may be skipped if debug mode is off.
    – bluppfisk
    Jun 23, 2018 at 16:16
5

Most (if not all) implementations proposed here have two flaws:

  • They assume only one key to be passed for searching, while it may be interesting to have more for complex dict
  • They assume all keys passed for searching exist in the dicts, hence they don't deal correctly with KeyError occuring when it is not.

An updated proposition:

def find_first_in_list(objects, **kwargs):
    return next((obj for obj in objects if
                 len(set(obj.keys()).intersection(kwargs.keys())) > 0 and
                 all([obj[k] == v for k, v in kwargs.items() if k in obj.keys()])),
                None)

Maybe not the most pythonic, but at least a bit more failsafe.

Usage:

>>> obj1 = find_first_in_list(list_of_dict, name='Pam', age=7)
>>> obj2 = find_first_in_list(list_of_dict, name='Pam', age=27)
>>> obj3 = find_first_in_list(list_of_dict, name='Pam', address='nowhere')
>>> 
>>> print(obj1, obj2, obj3)
{"name": "Pam", "age": 7}, None, {"name": "Pam", "age": 7}

The gist.

2

Here is a comparison using iterating throuhg list, using filter+lambda or refactoring(if needed or valid to your case) your code to dict of dicts rather than list of dicts

import time

# Build list of dicts
list_of_dicts = list()
for i in range(100000):
    list_of_dicts.append({'id': i, 'name': 'Tom'})

# Build dict of dicts
dict_of_dicts = dict()
for i in range(100000):
    dict_of_dicts[i] = {'name': 'Tom'}


# Find the one with ID of 99

# 1. iterate through the list
lod_ts = time.time()
for elem in list_of_dicts:
    if elem['id'] == 99999:
        break
lod_tf = time.time()
lod_td = lod_tf - lod_ts

# 2. Use filter
f_ts = time.time()
x = filter(lambda k: k['id'] == 99999, list_of_dicts)
f_tf = time.time()
f_td = f_tf- f_ts

# 3. find it in dict of dicts
dod_ts = time.time()
x = dict_of_dicts[99999]
dod_tf = time.time()
dod_td = dod_tf - dod_ts


print 'List of Dictionries took: %s' % lod_td
print 'Using filter took: %s' % f_td
print 'Dict of Dicts took: %s' % dod_td

And the output is this:

List of Dictionries took: 0.0099310874939
Using filter took: 0.0121960639954
Dict of Dicts took: 4.05311584473e-06

Conclusion: Clearly having a dictionary of dicts is the most efficient way to be able to search in those cases, where you know say you will be searching by id's only. interestingly using filter is the slowest solution.

2

I would create a dict of dicts like so:

names = ["Tom", "Mark", "Pam"]
ages = [10, 5, 7]
my_d = {}

for i, j in zip(names, ages):
    my_d[i] = {"name": i, "age": j}

or, using exactly the same info as in the posted question:

info_list = [{"name": "Tom", "age": 10}, {"name": "Mark", "age": 5}, {"name": "Pam", "age": 7}]
my_d = {}

for d in info_list:
    my_d[d["name"]] = d

Then you could do my_d["Pam"] and get {"name": "Pam", "age": 7}

2

Ducks will be a lot faster than a list comprehension or filter. It builds an index on your objects so lookups don't need to scan every item.

pip install ducks

from ducks import Dex

dicts = [
  {"name": "Tom", "age": 10},
  {"name": "Mark", "age": 5},
  {"name": "Pam", "age": 7}
]

# Build the index
dex = Dex(dicts, {'name': str, 'age': int})

# Find matching objects
dex[{'name': 'Pam', 'age': 7}]

Result: [{'name': 'Pam', 'age': 7}]

1
  • ducks not supported on Python 3.12 Dec 8, 2023 at 17:08
2

Short and multi words search:

selected_items=[item for item in items if item['name'] in ['Mark','Pam']]
1

You have to go through all elements of the list. There is not a shortcut!

Unless somewhere else you keep a dictionary of the names pointing to the items of the list, but then you have to take care of the consequences of popping an element from your list.

3
  • 1
    In the case of an unsorted list and a missing key this statement is correct, but not in general. If the list is known to be sorted, all elements do not need to be iterated over. Also, if a single record is hit and you know the keys are unique or only require one element, then the iteration may be halted with the single item returned.
    – user25064
    Sep 11, 2014 at 19:03
  • see the answer of @user334856 May 10, 2016 at 11:09
  • @MelihYıldız' maybe I was not clear in my statement. By using a list comprehension user334856 in answer stackoverflow.com/a/8653572/512225 is going through the whole list. This confirms my statement. The answer you refer is another way to say what I wrote.
    – jimifiki
    May 11, 2016 at 9:20
1

I found this thread when I was searching for an answer to the same question. While I realize that it's a late answer, I thought I'd contribute it in case it's useful to anyone else:

def find_dict_in_list(dicts, default=None, **kwargs):
    """Find first matching :obj:`dict` in :obj:`list`.

    :param list dicts: List of dictionaries.
    :param dict default: Optional. Default dictionary to return.
        Defaults to `None`.
    :param **kwargs: `key=value` pairs to match in :obj:`dict`.

    :returns: First matching :obj:`dict` from `dicts`.
    :rtype: dict

    """

    rval = default
    for d in dicts:
        is_found = False

        # Search for keys in dict.
        for k, v in kwargs.items():
            if d.get(k, None) == v:
                is_found = True

            else:
                is_found = False
                break

        if is_found:
            rval = d
            break

    return rval


if __name__ == '__main__':
    # Tests
    dicts = []
    keys = 'spam eggs shrubbery knight'.split()

    start = 0
    for _ in range(4):
        dct = {k: v for k, v in zip(keys, range(start, start+4))}
        dicts.append(dct)
        start += 4

    # Find each dict based on 'spam' key only.  
    for x in range(len(dicts)):
        spam = x*4
        assert find_dict_in_list(dicts, spam=spam) == dicts[x]

    # Find each dict based on 'spam' and 'shrubbery' keys.
    for x in range(len(dicts)):
        spam = x*4
        assert find_dict_in_list(dicts, spam=spam, shrubbery=spam+2) == dicts[x]

    # Search for one correct key, one incorrect key:
    for x in range(len(dicts)):
        spam = x*4
        assert find_dict_in_list(dicts, spam=spam, shrubbery=spam+1) is None

    # Search for non-existent dict.
    for x in range(len(dicts)):
        spam = x+100
        assert find_dict_in_list(dicts, spam=spam) is None

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