# Counting the number of distinct keys in a dictionary in Python

I have a a dictionary mapping keywords to the repetition of the keyword, but I only want a list of distinct words so I wanted to count the number of keywords. Is there a way to count the number of keywords or is there another way I should look for distinct words?

• The keys in a Python dictionary are already distinct from each other. You can't have the exact some keyword as a key twice in a Python dictionary. Therefore, counting the number of keys is the same as counting the number of distinct keys. Apr 28, 2021 at 8:57

len(yourdict.keys())

or just

len(yourdict)

If you like to count unique words in the file, you could just use set and do like

• I know this post is old, but I was curious. Is this the fastest method? Or: is it a reasonably fast method for large dictionaries? Mar 1, 2013 at 3:40
• Both len(yourdict.keys()) and len(yourdict) are O(1). The latter is slightly faster. See my tests below. Apr 17, 2016 at 10:07
• I'd like to note that you can also go for the values (I know the question didn't ask it) with len(yourdict.values())
– ntk4
Sep 23, 2016 at 5:49

The number of distinct words (i.e. count of entries in the dictionary) can be found using the len() function.

> a = {'foo':42, 'bar':69}
> len(a)
2

To get all the distinct words (i.e. the keys), use the .keys() method.

> list(a.keys())
['foo', 'bar']

Calling len() directly on your dictionary works, and is faster than building an iterator, d.keys(), and calling len() on it, but the speed of either will negligible in comparison to whatever else your program is doing.

d = {x: x**2 for x in range(1000)}

len(d)
# 1000

len(d.keys())
# 1000

%timeit len(d)
# 41.9 ns ± 0.244 ns per loop (mean ± std. dev. of 7 runs, 10000000 loops each)

%timeit len(d.keys())
# 83.3 ns ± 0.41 ns per loop (mean ± std. dev. of 7 runs, 10000000 loops each)

If the question is about counting the number of keywords then would recommend something like

def countoccurrences(store, value):
try:
store[value] = store[value] + 1
except KeyError as e:
store[value] = 1
return

in the main function have something that loops through the data and pass the values to countoccurrences function

if __name__ == "__main__":
store = {}
list = ('a', 'a', 'b', 'c', 'c')
for data in list:
countoccurrences(store, data)
for k, v in store.iteritems():
print "Key " + k + " has occurred "  + str(v) + " times"

The code outputs

Key a has occurred 2 times
Key c has occurred 2 times
Key b has occurred 1 times
• PEP 8 naming conventions dictate that countoccurrences() should instead be count_occurrences(). Also, if you import collections.Counter, there's a much better way to do it: from collections import Counter; store = Counter(); for data in list: store[list] += 1. Aug 2, 2018 at 20:59

Some modifications were made on posted answer UnderWaterKremlin to make it python3 proof. A surprising result below as answer.

System specs:

• python =3.7.4,
• conda = 4.8.0
• 3.6Ghz, 8 core, 16gb.
import timeit

d = {x: x**2 for x in range(1000)}
#print (d)
print (len(d))
# 1000

print (len(d.keys()))
# 1000

print (timeit.timeit('len({x: x**2 for x in range(1000)})', number=100000))        # 1

print (timeit.timeit('len({x: x**2 for x in range(1000)}.keys())', number=100000)) # 2

Result:

1) = 37.0100378

2) = 37.002148899999995

So it seems that len(d.keys()) is currently faster than just using len().

In order to count the number of keywords in a dictionary:

def dict_finder(dict_finders):
x=input("Enter the thing you want to find: ")
if x in dict_finders:
print("Element found")
else:
print("Nothing found:")