Transpose Pandas DataFrame and change the column headers to a list

Question:

I have the following Pandas sub-dataframe

         col1  name1  name2
522      a     10     0.2
1021     b     72    -0.1

col1 has no duplicate. I want to transpose the dataframe and change the column header to col1 values. Ideally the output should look like

Variable  a     b
name1     10    72
name2     0.2  -0.1

it is easy to transpose the df and label the first column as Variable

df.transpose().reset_index().rename(columns={'index':'Variable'})

the resulting DF will have indices of original DF as column headers (and they are not sorted and don’t start from 1 in my data!). How can I change the rest of column names?

Asked By: Hamed

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Answers:

Need set_index + T:

df = df.set_index('col1').T
print (df)
col1      a     b
name1  10.0  72.0
name2   0.2  -0.1

df = df.set_index('col1').T.rename_axis('Variable').rename_axis(None, 1)
print (df)
             a     b
Variable            
name1     10.0  72.0
name2      0.2  -0.1

If need column from index:

df = df.set_index('col1').T.rename_axis('Variable').rename_axis(None, 1).reset_index()
print (df)
  Variable     a     b
0    name1  10.0  72.0
1    name2   0.2  -0.1
Answered By: jezrael

It’s also possible to do the task with a combination of melt and pivot. The idea is to

df = df.melt('col1').pivot('variable', 'col1', 'value').reset_index().rename_axis(columns=None)

or set_index and unstack twice:

df = df.set_index('col1').unstack().unstack().reset_index(names='Variable').rename_axis(columns=None)

res

Answered By: cottontail