I have a pandas data-frame with a column that indicates if the terms of an account were changed during a particular period with a value of "Y". Here is an example:

import pandas as pd
account = [1, 1, 1, 1, 1, 1, 2, 2, 2, 2, 2, 3, 3, 3]
period = [1, 2, 3, 4, 5, 6, 1, 2, 3, 4, 5, 1, 2, 3]
changed = ["N", "N", "N", "Y", "N", "N", "N", "Y", "N", "N", "N", "N", "N", "N"]

df = pd.DataFrame({'account': account,'period': period,'changed': changed})

print(df)
    account period changed
0    1       1       N
1    1       2       N
2    1       3       N
3    1       4       Y
4    1       5       N
5    1       6       N
6    2       1       N
7    2       2       Y
8    2       3       N
9    2       4       N
10   2       5       N
11   3       1       N
12   3       2       N
13   3       3       N

I want to turn the changed column into a switch that once turns on, stays on for that account. I also want the switch to be converted into 0's and 1's as shown below.

Is there a way to do this without looping through each account. I have millions of accounts.

    account period  changed
0    1       1        0
1    1       2        0
2    1       3        0
3    1       4        1
4    1       5        1
5    1       6        1
6    2       1        0
7    2       2        1
8    2       3        1
9    2       4        1
10   2       5        1
11   3       1        0
12   3       2        0
13   3       3        0
up vote 1 down vote accepted

This is more like a groupby with cumsum problem

(df.changed.eq('Y')).groupby(df['ID']).cumsum().astype(int)
Out[141]: 
0     0
1     0
2     0
3     1
4     1
5     1
6     0
7     1
8     1
9     1
10    1
11    0
12    0
13    0
Name: changed, dtype: int32
  • Sorry that I relabeled my columns. You were so quick that you already had answered. Thanks! your solution works! df['changed'] = (df.changed.eq('Y')).groupby(df['account']).cumsum().astype(int) – DeeeeRoy Oct 11 at 18:13
  • Just make sure you don't have 2 'Y' values for one group, otherwise you'll end up with numbers greater than 1 ! – jpp Oct 11 at 18:20

You can use a Boolean comparison and convert to int. Then use GroupBy + cummax to identify a change has historically occurred by account:

df['changed'] = df['changed'].eq('Y').astype(int)
df['changed'] = df.groupby('account')['changed'].cummax()

print(df)

    account  period  changed
0         1       1        0
1         1       2        0
2         1       3        0
3         1       4        1
4         1       5        1
5         1       6        1
6         2       1        0
7         2       2        1
8         2       3        1
9         2       4        1
10        2       5        1
11        3       1        0
12        3       2        0
13        3       3        0
  • what is 'ID' here? – user8864088 Oct 11 at 18:14
  • ID is now account. df['changed'] = (df['changed'].eq('Y')).astype(int) df['changed'] = df.groupby('account').cummax() This comes out as account period changed 0 1 1 1 1 1 2 2 2 1 3 3 3 1 4 4 4 1 5 5 5 1 6 6 6 2 1 1 7 2 2 2 8 2 3 3 9 2 4 4 10 2 5 5 11 3 1 1 12 3 2 2 13 3 3 3 – DeeeeRoy Oct 11 at 18:15
  • KeyError: 'ID' pandas 0.20 – user8864088 Oct 11 at 18:16
  • @astro123, Change to account.. – jpp Oct 11 at 18:19
  • I am wondering why cummax is changing with account and changed, and not dependent on period. when groping by account aren't both changed and periods are groupded? – user8864088 Oct 11 at 18:50

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