Here is my dataframe:

import pandas as pd
df = pd.DataFrame({'A': ['one', 'one', 'two', 'two', 'one'],
                   'B': ['Ar', 'Br', 'Cr', 'Ar', 'Ar'],
                   'C': ['12/15/2011', '11/11/2001', '08/30/2015', '07/3/1999', '03/03/2000'],
                   'D': [1, 7, 3, 4, 5],
                   'F': ['12/1/2011','10/1/2000','8/15/2015','12/1/2011','12/1/2011'] })
df['C'] = pd.to_datetime(df['C'])
df['F'] = pd.to_datetime(df['F'])

I would like to group by column B and then for each group check if column C contains date within 30 days of column F. I would get back an indicator column for the whole group, which should look like

df['indicator'] = [1,0,1,1,1]

here is what I tried:

def date_test(x, y):

    result = False
    for i in x.index:
        if x[i]<y[i]+ pd.Timedelta(days=30):
            result = True

    return result

df['indicator'] = df.groupby('B')['C','F'].transform(date_test).astype('int64')

But I got back TypeError: Transform function invalid for data types

So I guess I cannot pass two columns to transform function. Any thoughts?


I think you're right, the way .transform() works is that the function passed evaluates each column (C and F in this case) separately. See here for more details.

However, I think you can use .apply() and get the results you want:

>>> dfGroup = df.groupby('B')
>>> dfGroup.apply(lambda x: x['C'] < x['F'] + pd.Timedelta(days=30))
>>> B    
    Ar  0     True
        3     True
        4     True
    Br  1    False
    Cr  2     True
    dtype: bool
  • 1
    and to assign : df['indicator'] = df.groupby('B').apply(date_test).swaplevel().reset_index(-1, drop=True) – Boud Nov 22 '16 at 19:12
  • @Boud thank you for adding comment. It seems like the following also works df['indicator'] = df.groupby('B').apply(date_test).reset_index(0, drop=True) or am I missing something – user1700890 Nov 22 '16 at 21:00

I don't know if it will help you but something like :

df = {'1': 'one', '3': 'three', '2': 'two', '5': 'five', '4': 'four', 'indicator':[]}

if 'one' in df.values() == True:

and then run it in a for loop to read all element in your 'C'

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

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