Given a list of lists, the length of the longest list can be found with the following code.

values = [['a','a'], ['a','b','b'], ['a','b','b','a'], ['a','b','c','a']]

longest = 0
for value in values:
    longest = max(longest, len(value))

[out]: 4

How can the length of the longest list, or the longest list be found, without a loop.

3 Answers 3


This will return the longest list in the list values:

max(values, key=len)

This will return the length of the longest list:

max(map(len, values))
  • The answer from blhsing is great for finding the first, longest sub-list, and it's fast.
    • For a list of 1M lists, varying in length from 1-15, it takes 29.6 ms to return the first list with the maximum length.
values = [['a','a'], ['a','b','b'], ['a','b','b','a'], ['a','b','c','a']]

max(values, key=len)

['a', 'b', 'b', 'a']
  • This pandas solution isn't a competitor with the accepted answer for speed in returning the first, longest list.
  • There are a lot of people using pandas for analysis, so this is a valid question, from that perspecive.
  • This solution is for returning all sub-lists for the max list length, or a specified length.
    • df.len.max() can be substituted with an int, to return lists of a specified length.
  • This solution takes advantage of pandas: Boolean Indexing.
  • This solution is slower, but it's returning a different result
    • The lists have to be loaded in pandas
    • The 'len' column is created
    • The Boolean mask is used to return all the matching lists
    • For a list of 1M lists, varying in length from 1-15, it takes 682 ms to return all the lists with the maximum (or specified) length.
  • It should be noted, max(df.lists, key=len) can be used on a pandas.Series to find the first, longest list.
import pandas as pd

# convert the list of lists to a dataframe
df = pd.DataFrame({'lists': values})

# display(df)
0        [a, a]
1     [a, b, b]
2  [a, b, b, a]
3  [a, b, c, a]

# create column for the length of each list
df['len'] = df.lists.map(len)

          lists  len
0        [a, a]    2
1     [a, b, b]    3
2  [a, b, b, a]    4
3  [a, b, c, a]    4

# select lists with max(len)
max_len = df[df.len == df.len.max()]  # or [df.len == some int] for a specific length

# display(max_len)
          lists  len
2  [a, b, b, a]    4
3  [a, b, c, a]    4


import pandas as pd
import random
import string

# 1M sub-list of 1-15 characters
l = [random.sample(string.ascii_letters, random.randint(1, 15)) for _ in range(10**6)]

%timeit max(l, key=len)
29.6 ms ± 1.74 ms per loop (mean ± std. dev. of 7 runs, 10 loops each)

# function to do all the pandas stuff for testing
def get_max_len(l):
    df = pd.DataFrame({'lists': l})
    df['len'] = df.lists.map(len)
    return df[df.len == df.len.max()]

%timeit get_max_len(l)
682 ms ± 14.9 ms per loop (mean ± std. dev. of 7 runs, 1 loop each)

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.