15

Problem

I have the following Pandas dataframe:

    data = {
        'ID':  [100, 100, 100, 100, 200, 200, 200, 200, 200, 300, 300, 300, 300, 300],
        'value': [False, False, True, False, False, True, True, True, False, False, False, True, True, False],
    }
    df = pandas.DataFrame (data, columns = ['ID','value'])

I want to get the following groups:

  • Group 1: for each ID, all False rows until the first True row of that ID
  • Group 2: for each ID, all False rows after the last True row of that ID
  • Group 3: all true rows

enter image description here

Can this be done with pandas?

What I've tried

I've tried

group = df.groupby((df['value'].shift() != df['value']).cumsum())

but this returns an incorrect result.

  • 1
    - Group 1: for each ID, all False rows until the first True row of that ID. - Group 2: for each ID, all False rows after the last True row of that ID. - Group 3: all true rows. – Ford1892 Sep 29 at 15:05
  • Do you ever have False between the True's? – Quang Hoang Sep 29 at 15:17
9

Let us try shift + cumsum create the groupby key: BTW I really like the way you display your expected output

s = df.groupby('ID')['value'].apply(lambda x : x.ne(x.shift()).cumsum())
d = {x : y for x ,y in df.groupby(s)}
d[2]
     ID  value
2   100   True
5   200   True
6   200   True
7   200   True
11  300   True
12  300   True
d[1]
     ID  value
0   100  False
1   100  False
4   200  False
9   300  False
10  300  False
d[3]
     ID  value
3   100  False
8   200  False
13  300  False
| improve this answer | |
  • Thanks, this solves my problem in an elegant way – Ford1892 Sep 29 at 23:04
2

Let's try following your logic:

# 1. all False up to first True
group1 = df.loc[df.groupby('ID')['value'].cumsum() == 0]

# 2. all False after last True
group2 = df.loc[df.iloc[::-1].groupby('ID')['value'].cumsum()==0]

# 3. all True
group3 = df[df['value']]

Output:

    ID      value
0   100     False
1   100     False
4   200     False
9   300     False
10  300     False

    ID      value
3   100     False
8   200     False
13  300     False

    ID      value
2   100     True
5   200     True
6   200     True
7   200     True
11  300     True
12  300     True
| improve this answer | |
1

This works for your example data

df['groups'] = df.groupby('ID').value.apply(lambda x: x.diff().ne(False).cumsum()).astype('int')
for _,df_groups in df.groupby('groups'):
  print(df_groups)
  print('-'*20)

Out:

     ID  value  groups
0   100  False       1
1   100  False       1
4   200  False       1
9   300  False       1
10  300  False       1
--------------------
     ID  value  groups
2   100   True       2
5   200   True       2
6   200   True       2
7   200   True       2
11  300   True       2
12  300   True       2
--------------------
     ID  value  groups
3   100  False       3
8   200  False       3
13  300  False       3
--------------------
| improve this answer | |

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.