6

Following is what my dataframe looks like. Expected_Output is my desired/target column.

   Group  Value1  Value2  Expected_Output
0      1       3       9             True
1      1       7       6             True
2      1       9       7             True
3      2       3       8            False
4      2       8       5            False
5      2       7       6            False

If any Value1 == 7 AND if any Value2 == 9 within a given Group, then I want to return True.

I tried to no avail:

df['Expected_Output']= df.groupby('Group').Value1.isin(7) &  df.groupby('Group').Value2.isin(9)

N.B:- Either True/False or 1/0 can be output.

4
  • So, what's the question? Think you already have a solution?
    – Divakar
    Oct 6 '18 at 15:16
  • @Divakar The question is how to do I get the Expected_Output column as my solution does not work.
    – gibbz00
    Oct 6 '18 at 15:18
  • You said : Expected_Output is my desired column. I thought that gave you the correct results. If not, what is it?
    – Divakar
    Oct 6 '18 at 15:19
  • @Divakar Expected_Output is the correct result. My goal is to create that column based on the first three columns.
    – gibbz00
    Oct 6 '18 at 15:20
10

Use groupby on Group column and then use transform and lambda function as:

g = df.groupby('Group')
df['Expected'] = (g['Value1'].transform(lambda x: x.eq(7).any()))&(g['Value2'].transform(lambda x: x.eq(9).any()))

Or using groupby, apply and merge using parameter how='left' as:

df.merge(df.groupby('Group').apply(lambda x: x['Value1'].eq(7).any()&x['Value2'].eq(9).any()).reset_index(),how='left').rename(columns={0:'Expected_Output'})

Or using groupby, apply and map as:

df['Expected_Output'] = df['Group'].map(df.groupby('Group').apply(lambda x: x['Value1'].eq(7).any()&x['Value2'].eq(9).any()))

print(df)
   Group  Value1  Value2  Expected_Output
0      1       3       9             True
1      1       7       6             True
2      1       9       7             True
3      2       3       8            False
4      2       8       5            False
5      2       7       6            False
1

You can create a dataframe of the expected result by group and then merge it back to the original dataframe.

expected = (
    df.groupby('Group')
    .apply(lambda x: (x['Value1'].eq(7).any() 
                      & x['Value2'].eq(9)).any())
    .to_frame('Expected_Output'))
>>> expected
       Expected_Output
Group                 
1                 True
2                False

>>> df.merge(expected, left_on='Group', right_index=True)
   Group  Value1  Value2  Expected_Output
0      1       3       9             True
1      1       7       6             True
2      1       9       7             True
3      2       3       8            False
4      2       8       5            False
5      2       7       6            False

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