Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I have a pandas data frame as below. I want to get the list of 'Job_No' for all the combinations of ('User_ID', 'Exec_No')

   User_ID Exec_No Job_No
1:    2      1      1   
2:    2      2      2 
3:    3      2      3
4:    1      2      4
5:    1      1      5
6:    3      2      6
7:    2      2      7
8:    1      1      8

The desired output is another data frame that looks like

  User_ID Exec_No Job_No
1:    2      1      [1]   
2:    2      2      [2,7] 
3:    3      2      [3,6]
4:    1      2      [4]
5:    1      1      [5,8]

How do I do this using a few lines of code?

Also, the data frame is expected to have around a million rows. Therefore the performance is also important.

share|improve this question

4 Answers 4

As a note, if you care about performance, storing lists in a DataFrame is not very efficient. After grouping the data, Job_No values can be accessed immediately, no need to create a new DataFrame (memory !) holding lists of Job_No per (User_Id, Exec_No) pair.

In [21]: df
Out[21]:
   User_ID  Exec_No  Job_No
0        2        1       1
1        2        2       2
2        3        2       3
3        1        2       4
4        1        1       5
5        3        2       6
6        2        2       7
7        1        1       8

In [22]: grouped = df.groupby(['User_ID', 'Exec_No'])

In [23]: grouped.get_group((3, 2))
Out[23]:
   User_ID  Exec_No  Job_No
2        3        2       3
5        3        2       6

In [24]: grouped.get_group((3, 2))['Job_No']
Out[24]:
2    3
5    6
Name: Job_No, dtype: int64

In [25]: list(grouped.get_group((3, 2))['Job_No'])
Out[25]: [3, 6]
share|improve this answer

The solution is straight forward.

say if 'df' is the dataframe object, then

grp_df = df.groupby(['User_ID','Exec_No'])
newdf  = grp_df['Job_No']
share|improve this answer
    
The grp_df is a 'GroupBy object', not a DataFrame. Selecting a column from it returns a Groupby object again, so you would still need to do something like grp_df['Job_No'].apply(lambda x: x.values). –  Rutger Kassies May 7 '13 at 7:56

This will give a Series in return:

df.groupby(['User_ID', 'Exec_No']).apply(lambda x: x.Job_No.values)

Wrapping it in a Series in the apply returns a DataFrame:

df.groupby(['User_ID', 'Exec_No']).apply(lambda x: pd.Series([x.Job_No.values]))

User_ID Exec_No        
1       1        [5, 8]
        2           [4]
2       1           [1]
        2        [2, 7]
3       2        [3, 6]

It would be nice if the name= of the Series would be used as the resulting column name, but it isnt.

share|improve this answer

How about this way:

df = pd.DataFrame({'User_ID' : [2,2, 3, 1, 1, 3, 2, 1], 'Exec_No': [1, 2, 2, 2, 1, 2, 2, 1], 'Job_No':[1,2,3,4,5,6,7,8]}, columns=['User_ID', 'Exec_No','Job_No'])

df
User_ID Exec_No Job_No
0    2   1   1
1    2   2   2
2    3   2   3
3    1   2   4
4    1   1   5
5    3   2   6
6    2   2   7
7    1   1   8

Let's do the group by:

df2 = df.groupby(['User_ID', 'Exec_No'], sort=False).apply(lambda x: list(x['Job_No']))
df2    
User_ID  Exec_No
2        1             [1]
         2          [2, 7]
3        2          [3, 6]
1        1          [5, 8]
         2             [4]

and put the way you wanted it:

df2.reset_index()

User_ID Exec_No 0
0    2   1   [1]
1    2   2   [2, 7]
2    3   2   [3, 6]
3    1   1   [5, 8]
4    1   2   [4]
share|improve this answer

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

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