13

I have the following dataframe:

    A   B   C  
A   1   3   0    
B   3   2   5     
C   0   5   4   

All I want is shown below:

my_list = [('A','A',1),('A','B',3),('A','C',0),('B','B',2),('B','C',5),('C','C',4)]

Thanks in advance!

5

IIUC, you can do:

df.stack().reset_index().agg(tuple,1).tolist()

[('A', 'A', 1),
 ('A', 'B', 3),
 ('A', 'C', 0),
 ('B', 'A', 3),
 ('B', 'B', 2),
 ('B', 'C', 5),
 ('C', 'A', 0),
 ('C', 'B', 5),
 ('C', 'C', 4)]
| improve this answer | |
  • thanks for your response, but is there any solution to remove the duplicates like ('A','B',3) and ('B','A',3)? – Phước May 24 at 16:48
3

I feel like make the index and value different should be more clear

[*df.stack().iteritems()]
[(('A', 'A'), 1), (('A', 'B'), 3), (('A', 'C'), 0), (('B', 'A'), 3), (('B', 'B'), 2), (('B', 'C'), 5), (('C', 'A'), 0), (('C', 'B'), 5), (('C', 'C'), 4)]

Or

df.reset_index().melt('index').values.tolist()
| improve this answer | |
3

You can stack and use to_records to obtain a record array from the result:

df.stack().to_frame().to_records().tolist()
# [('A', 'A', 1), ('A', 'B', 3), ('A', 'C', 0), ('B', 'A', 3),...
| improve this answer | |
2

Can also use unstack:

In [1638]: df.unstack().to_frame().to_records().tolist()
Out[1638]: 
[('A', 'A', 1),
 ('A', 'B', 3),
 ('A', 'C', 0),
 ('B', 'A', 3),
 ('B', 'B', 2),
 ('B', 'C', 5),
 ('C', 'A', 0),
 ('C', 'B', 5),
 ('C', 'C', 4)]
| improve this answer | |
1

Hi i think you could done it with splitting the list into parts

with dataframe as data:
    for line in data.readlines():
        parts = line.split(' ') # split line into parts
        part1 = (parts[0])
        part2 = (parts[1])
        part3 = (parts[2])
| improve this answer | |

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