I have data like this in a csv file

Symbol  Action  Year
  AAPL     Buy  2001
  AAPL     Buy  2001
   BAC    Sell  2002
   BAC    Sell  2002

I am able to read it and groupby like this


I get

Symbol Year        
AAPL   2001       2
BAC    2002       2

I desire this (order does not matter)

Symbol Year        
AAPL   2001       2
AAPL   2002       0
BAC    2001       0
BAC    2002       2

I want to know if its possible to count for zero occurances

6 Answers 6


You can use this:

df = df.groupby(['Symbol','Year']).count().unstack(fill_value=0).stack()
print (df)


Symbol Year        
AAPL   2001       2
       2002       0
BAC    2001       0
       2002       2
  • 1
    This is a nice solution! Elegant and intuitive and better than using pivot_table, unless the latter has any advantages or specific use-cases. Do you know of any?
    – avg
    Commented Dec 28, 2018 at 6:45
  • 7
    Does this work for only one group by object? it doesn't seem to work and it is fiving me AttributeError: 'Series' object has no attribute 'stack'
    – haneulkim
    Commented Apr 16, 2020 at 5:01

You can use pivot_table with unstack:

print df.pivot_table(index='Symbol', 

Year  Symbol
2001  AAPL      2
      BAC       0
2002  AAPL      0
      BAC       2
dtype: int64

If you need output as DataFrame use to_frame:

print df.pivot_table(index='Symbol', 

Year Symbol        
2001 AAPL         2
     BAC          0
2002 AAPL         0
     BAC          2
  • This makes a beautiful pivot table but using fill_value=0 still doesn't display the rows with a count of 0 for me. I thought fill_value was just for rows with missing data or NaNs?
    – ale19
    Commented May 3, 2016 at 15:53
  • Yes parameter fill_value replace NaN to 0.
    – jezrael
    Commented May 3, 2016 at 16:30

Datatype category

Maybe this feature didn't exist back when this thread was opened, however the datatype "category" can help here:

# create a dataframe with one combination of a,b missing
df = pd.DataFrame({"a":[0,1,1], "b": [0,1,0]})
df = df.astype({"a":"category", "b":"category"})

Dataframe looks like this:

   a  b
0  0  0
1  1  1
2  1  0

And now, grouping by a and b



a  b
0  0    1
   1    0
1  0    1
   1    1

Note the 0 in the rightmost column. This behavior is also documented in the pandas userguide (search on page for "groupby").

  • 2
    I meet this situation when I don't need zero !
    – Mithril
    Commented Jun 4, 2021 at 10:24
  • 2
    @Mithril if you mean that you have a categorical column and .groupby is giving you all possible combinations when you only want the observed combinations, you'll want to use groupby(..., observed=True), as documented here: pandas.pydata.org/pandas-docs/stable/user_guide/…
    – zmbc
    Commented Nov 1, 2022 at 16:09
  • I want all combinations for categorical columns, but not for non-categorical columns. I think this gives combinations for all columns, just because one of the columns is categorical.
    – Denziloe
    Commented Jun 12, 2023 at 18:49

If you want to do this without using pivot_table, you can try the below approach:

midx = pd.MultiIndex.from_product([ df['Symbol'].unique(), df['Year'].unique()], names=['Symbol', 'Year'])
df_grouped_by = df_grouped_by.reindex(midx, fill_value=0)

What we are essentially doing above is creating a multi-index of all the possible values multiplying the two columns and then using that multi-index to fill zeroes into our group-by dataframe.

  • this sets all counts to zero for me, instead of the ones that don't appear in the data
    – KLaz
    Commented Mar 27, 2018 at 16:26

Step 1: Create a dataframe that stores the count of each non-zero class in the column counts

count_df = df.groupby(['Symbol','Year']).size().reset_index(name='counts')

Step 2: Now use pivot_table to get the desired dataframe with counts for both existing and non-existing classes.

df_final = pd.pivot_table(count_df,
                       fill_value = 0,

Now the values of the counts can be extracted as a list with the command


All the answers above are focusing on groupby or pivot table. However, as is well described in this article and in this question, this is a beautiful case for pandas' crosstab function:

import pandas as pd
df = pd.DataFrame({
    "Symbol": 2*['AAPL', 'BAC'],
    "Action": 2*['Buy', 'Sell'],
    "Year": 2*[2001,2002]

pd.crosstab(df["Symbol"], df["Year"]).stack()


Symbol  Year
AAPL    2001    2
        2002    0
BAC     2001    0
        2002    2
  • What if the number of years doesn't match the number of stock symbols? Commented Dec 21, 2022 at 9:15

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