Want to output a Pandas groupby dataframe to CSV. Tried various StackOverflow solutions but they have not worked.

Python 3.6.1, Pandas 0.20.1

groupby result looks like:

id  month   year    count
0   9066    82  32142   895
1   7679    84  30112   749
2   8368    126 42187   872
3   11038   102 34165   976
4   8815    117 34122   767
5   10979   163 50225   1252
6   8726    142 38159   996
7   5568    63  26143   582

Want a csv that looks like

week  count
0   895
1   749
2   872
3   976
4   767
5   1252
6   996
7   582

Current code:

week_grouped = df.groupby('week')
week_grouped.sum() #At this point you have the groupby result
week_grouped.to_csv('week_grouped.csv') #Can't do this - .to_csv is not a df function. 

Read SO solutions:

output groupby to csv file pandas


Result: AttributeError: Cannot access callable attribute 'drop_duplicates' of 'DataFrameGroupBy' objects, try using the 'apply' method

Python pandas - writing groupby output to file


Result: AttributeError: "Cannot access callable attribute 'reset_index' of 'DataFrameGroupBy' objects, try using the 'apply' method"

  • 3
    If you landed up here wanting to know how to save each individual groupby to its own CSV file, see this answer.
    – cs95
    Apr 14, 2019 at 18:27

6 Answers 6


Try doing this:

week_grouped = df.groupby('week')

That'll write the entire dataframe to the file. If you only want those two columns then,

week_grouped = df.groupby('week')
week_grouped.sum().reset_index()[['week', 'count']].to_csv('week_grouped.csv')

Here's a line by line explanation of the original code:

# This creates a "groupby" object (not a dataframe object) 
# and you store it in the week_grouped variable.
week_grouped = df.groupby('week')

# This instructs pandas to sum up all the numeric type columns in each 
# group. This returns a dataframe where each row is the sum of the 
# group's numeric columns. You're not storing this dataframe in your 
# example.

# Here you're calling the to_csv method on a groupby object... but
# that object type doesn't have that method. Dataframes have that method. 
# So we should store the previous line's result (a dataframe) into a variable 
# and then call its to_csv method.

# Like this:
summed_weeks = week_grouped.sum()

# Or with less typing simply
  • 1
    Thanks! - Why does it work when sum() is part of the the to_csv statement but not when sum() is done on its own line?
    – kalmdown
    Dec 1, 2017 at 22:31
  • @kalmdown, if this answered your question, can you please mark it as so? Click the check mark to make it green. Apr 30, 2019 at 13:57
  • @kalmdown, did my reply answer your question? My answer still hasn't been marked as accepted. Jul 25, 2020 at 14:06

Try changing your second line to week_grouped = week_grouped.sum() and re-running all three lines.

If you run week_grouped.sum() in its own Jupyter notebook cell, you'll see how the statement returns the output to the cell's output, instead of assigning the result back to week_grouped. Some pandas methods have an inplace=True argument (e.g., df.sort_values(by=col_name, inplace=True)), but sum does not.

EDIT: does each week number only appear once in your CSV? If so, here's a simpler solution that doesn't use groupby:

df = pd.read_csv('input.csv')
df[['id', 'count']].to_csv('output.csv')
  • In the original data the week appears on multiple rows. In this case the groupby is being used to gather the weeks together so a count can be done per week.
    – kalmdown
    Dec 1, 2017 at 22:34
  • 1
    BTW - Thanks so much for the explanation of why sum is an issue.
    – kalmdown
    Dec 1, 2017 at 22:34

Group By returns key, value pairs where key is the identifier of the group and the value is the group itself, i.e. a subset of an original df that matched the key.

In your example week_grouped = df.groupby('week') is set of groups (pandas.core.groupby.DataFrameGroupBy object) which you can explore in detail as follows:

for k, gr in week_grouped:
    # do your stuff instead of print
    print(type(gr)) # This will output <class 'pandas.core.frame.DataFrame'>
    # You can save each 'gr' in a csv as follows

Or alternatively you can compute aggregation function on your grouped object

result = week_grouped.sum()
# This will be already one row per key and its aggregation result

In your example you need to assign the function result to some variable as by default pandas objects are immutable.

some_variable = week_grouped.sum() 
some_variable.to_csv('week_grouped.csv') # This will work

basically result.csv and week_grouped.csv are meant to be same

  • Thank you for the indepth explanation. Helps to understand the system instead of just the problem.
    – kalmdown
    Dec 1, 2017 at 23:10

I feel that there is no need to use a groupby, you can just drop the columns you do not want too.

df = df.drop(['month','year'], axis=1)
df.to_csv('Your path')
  • 1
    Should be "axis=1"...But yes that will output the rows but not grouped by week or state.
    – kalmdown
    Dec 2, 2017 at 0:55

Pandas groupby generates a lot of information (count, mean, std, ...). If you want to save all of them in a csv file, first you need to convert it to a regular Dataframe:

import pandas as pd
MyGroupDataFrame = MyDataFrame.groupby('id')
pd.DataFrame(MyGroupDataFrame.describe()).to_csv("myTSVFile.tsv", sep='\t', encoding='utf-8')

##Hey, I just discovered this!! We can also try slicing the groupby result and read it in a csv. try this:##

week_grouped = df.groupby('week')

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