I have a dataset

cat a
cat b
cat a

I'd like to be able to return something like (showing unique values and frequency)

category | freq |
cat a       2
cat b       1
  • 1
    Try collections.Counter – metatoaster Mar 13 '14 at 21:35
  • 78
    Are you looking for df["category"].value_counts()? – DSM Mar 13 '14 at 21:42
  • When using "df["category"].value_counts()" it says its a int? but it returns the column name as index? Is it a dataframe object or is it somehow combining a series (the counts) and the original unique column values? – yoshiserry Mar 13 '14 at 21:48
  • @yoshiserry it's a Pandas series do type(df['category'].value_counts()) and it will say so – EdChum - Reinstate Monica Mar 13 '14 at 21:50
  • I did, and I was surprised by that but it makes sense the more I think about it. After doing this, value counts on some colums, there are rows I would like to exclude. I know how to remove columns but how do I exclude rows? – yoshiserry Mar 13 '14 at 21:55

14 Answers 14


Use groupby and count:

In [37]:
df = pd.DataFrame({'a':list('abssbab')})


a  2
b  3
s  2

[3 rows x 1 columns]

See the online docs: http://pandas.pydata.org/pandas-docs/stable/groupby.html

Also value_counts() as @DSM has commented, many ways to skin a cat here

In [38]:


b    3
a    2
s    2
dtype: int64

If you wanted to add frequency back to the original dataframe use transform to return an aligned index:

In [41]:
df['freq'] = df.groupby('a')['a'].transform('count')


   a freq
0  a    2
1  b    3
2  s    2
3  s    2
4  b    3
5  a    2
6  b    3

[7 rows x 2 columns]
  • @yoshiserry No, what you see is that it creates a series that aligns with the original dataframe, unlike the other methods which display the unique values and their frequency, if you wanted to just add frequency count back to the dataframe you can use transform for this. It's just another technique, you notice that it has not collapsed the dataframe after assigning back and there are no missing values. Also I think that Dataframes always have an index I don't think you can get rid of it, only reset it, assign a new one or use a column as an index – EdChum - Reinstate Monica Mar 13 '14 at 22:05
  • 4
    In your first code example, df gets assigned as expected, but this line: df.groupby('a').count() returns an empty dataframe. Is it possible that this answer is out of date with pandas 0.18.1? Also, it's a little confusing that your column name 'a' is the same as the value you're searching for 'a'. I would edit it myself but since the code doesn't work for me I can't be sure of my edits. – Alex Jun 29 '16 at 8:54
  • 1
    @Alex you're correct it looks like in the latest versions this doesn't work anymore, seems like a bug to me as I don't see why not – EdChum - Reinstate Monica Jun 29 '16 at 8:55
  • 1
    Why not use df.['a'].value_counts().reset_index() instead of df.groupby('a')['a'].transform('count')? – tandem Nov 6 '18 at 8:50
  • 1
    @tandem, they do different things, calling value_counts will generate a frequency count, if you wanted to add the result back as a new column against your original df then you'd have to use transform as detailed in my answer. – EdChum - Reinstate Monica Nov 6 '18 at 9:05

If you want to apply to all columns you can use:


This will apply a column based aggregation function (in this case value_counts) to each of the columns.

  • 8
    This is the most simplest answer. This should be at the top. – Jeffrey Jose Jul 20 '16 at 4:38
  • 3
    This answer is simply but (I believe) the apply operation does not leverage the advantages that vectorized Numpy arrays as columns provides. As a result, performance could be an issue on larger datasets. – kuanb Jul 13 '17 at 23:57

This short little line of code will give you the output you want.

If your column name has spaces you can use

  • 2
    Or use [] if the column name has space. df['category 1'].value_counts() – Jacob Kalakal Joseph Oct 11 '18 at 23:09

value_counts - Returns object containing counts of unique values

apply - count frequency in every column. If you set axis=1, you get frequency in every row

fillna(0) - make output more fancy. Changed NaN to 0

  • 1
    This is very powerful when counting occurrences of a value across columns for the same row!! – amc Sep 26 '17 at 13:43

In 0.18.1 groupby together with count does not give the frequency of unique values:

>>> df
0  a
1  b
2  s
3  s
4  b
5  a
6  b

>>> df.groupby('a').count()
Empty DataFrame
Columns: []
Index: [a, b, s]

However, the unique values and their frequencies are easily determined using size:

>>> df.groupby('a').size()
a    2
b    3
s    2

With df.a.value_counts() sorted values (in descending order, i.e. largest value first) are returned by default.

  • This is the only solution that worked. – saran3h Apr 22 at 13:20

Using list comprehension and value_counts for multiple columns in a df

[my_series[c].value_counts() for c in list(my_series.select_dtypes(include=['O']).columns)]



If your DataFrame has values with the same type, you can also set return_counts=True in numpy.unique().

index, counts = np.unique(df.values,return_counts=True)

np.bincount() could be faster if your values are integers.


Without any libraries, you could do this instead:

def to_frequency_table(data):
    frequencytable = {}
    for key in data:
        if key in frequencytable:
            frequencytable[key] += 1
            frequencytable[key] = 1
    return frequencytable


>>> {1: 4, 2: 1, 3: 1, 4: 2}

You can also do this with pandas by broadcasting your columns as categories first, e.g. dtype="category" e.g.

cats = ['client', 'hotel', 'currency', 'ota', 'user_country']

df[cats] = df[cats].astype('category')

and then calling describe:


This will give you a nice table of value counts and a bit more :):

    client  hotel   currency    ota user_country
count   852845  852845  852845  852845  852845
unique  2554    17477   132 14  219
top 2198    13202   USD Hades   US
freq    102562  8847    516500  242734  340992
n_values = data.income.value_counts()

First unique value count

n_at_most_50k = n_values[0]

Second unique value count

n_greater_50k = n_values[1]



<=50K    34014
>50K     11208

Name: income, dtype: int64


(11208, 34014)

@metatoaster has already pointed this out. Go for Counter. It's blazing fast.

import pandas as pd
from collections import Counter
import timeit
import numpy as np

df = pd.DataFrame(np.random.randint(1, 10000, (100, 2)), columns=["NumA", "NumB"])


%timeit -n 10000 df['NumA'].value_counts()
# 10000 loops, best of 3: 715 µs per loop

%timeit -n 10000 df['NumA'].value_counts().to_dict()
# 10000 loops, best of 3: 796 µs per loop

%timeit -n 10000 Counter(df['NumA'])
# 10000 loops, best of 3: 74 µs per loop

%timeit -n 10000 df.groupby(['NumA']).count()
# 10000 loops, best of 3: 1.29 ms per loop



Use this code:

import numpy as np
your data:

cat a
cat b
cat a


 df['freq'] = df.groupby('category')['category'].transform('count')
 df =  df.drop_duplicates()

I believe this should work fine for any DataFrame columns list.

def column_list(x):
    column_list_df = []
    for col_name in x.columns:
        y = col_name, len(x[col_name].unique())
return pd.DataFrame(column_list_df)

column_list_df.rename(columns={0: "Feature", 1: "Value_count"})

The function "column_list" checks the columns names and then checks the uniqueness of each column values.

  • You can add a brief explanation of how your code works to improve your answer. – DobromirM May 2 at 12:32

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