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I want to make pairs from below like dataframe from python What I'd like to do is make pairs with row and column like: (1,a), (4,c), (6,c), (3,d), (2,f), (4,f), (6,f), (6,g)

Is there any way to do this. Thanks in advance.

Example

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  • Could you explain what you mean by "make pairs"? Are these random pairs? How many pairs? etc.
    – busybear
    Dec 11, 2019 at 2:28
  • Sorry for inconvenience but could you see the image by clicking "Example"
    – puhuk
    Dec 11, 2019 at 2:29
  • paste the data as text & not as pictures
    – moys
    Dec 11, 2019 at 2:39
  • Still unclear on what you want exactly. Could you explain what you are starting with and what you expect to get?
    – busybear
    Dec 11, 2019 at 2:39
  • i think OP wants the column & rows names where 1 is present as a tuple
    – moys
    Dec 11, 2019 at 2:40

2 Answers 2

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Data:

     a   b   c    d   e    f   g
1  1.0 NaN NaN  NaN NaN  NaN NaN
2  NaN NaN NaN  NaN NaN  1.0 NaN
3  NaN NaN NaN  1.0 NaN  NaN NaN
4  NaN NaN NaN  1.0 NaN  1.0 NaN

Option 1: You can use np.where:

rows, cols = np.where(df.eq(1))
[*zip(df.index[rows], df.columns[cols])]

Output:

[(1, 'a'), (2, 'f'), (3, 'd'), (4, 'd'), (4, 'f')]

Option 2:

df.stack().index.values

Output:

array([(1, 'a'), (2, 'f'), (3, 'd'), (4, 'd'), (4, 'f')], dtype=object)
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If you have a data frame like this:

     a   b   c    d   e    f    g
1  1.0 NaN NaN  NaN NaN  NaN  NaN
2  NaN NaN NaN  NaN NaN  1.0  NaN
3  NaN NaN NaN  1.0 NaN  NaN  1.0

You can use stack against axis 1 to get

s = df.stack()

1  a    1.0
2  f    1.0
3  d    1.0
   g    1.0
dtype: float64

And a simple to_list() gives

>>> s.index.to_list()

[(1, 'a'), (2, 'f'), (3, 'd'), (3, 'g')]
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