1

I have a pandas dataframe with dense rank matrix and want to select all the cells that have 2. And then transform it to results dataframe like below. I am looping through each column and row with just for-loop but is there a better way?

df looks like

    A   B   C  ........ x 2000 columns 
AA  1   3   2
BB  2   1   3
CC  2   2   1
 .
 .
 .
 x
2000 rows

results_df to be like

    Col1  Col2
0   A     BB
1   A     CC
2   B     CC
3   C     AA

1 Answer 1

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Here is one method.

rows, cols = np.nonzero((df==2).values)

results_df = pandas.DataFrame({
    'Col1':[df.columns[c] for c in cols], 
    'Col2':[df.index[r] for r in rows]
}).sort('Col1').reset_index(drop=True)

For example:

In [88]: df
Out[88]: 
    A  B  C
AA  1  3  2
BB  2  1  3
CC  2  2  1

In [89]: pandas.DataFrame({'Col1':[df.columns[c] for c in cols], 'Col2':[df.index[r] for r in rows]}).sort('Col1').reset_index(drop=True)
Out[89]: 
  Col1 Col2
0    A   BB
1    A   CC
2    B   CC
3    C   AA
1
  • Ah nice. Did not know we can do that
    – E.K.
    Sep 7, 2015 at 21:33

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