Apologies for the vague question name, but I'm not really sure how to call this operation.

I have the following data frame:

```
import pandas as pd
df = pd.DataFrame({
'A': [1, 3, 2, 1, 2],
'B': [2, 1, 3, 2, 3],
'C': [3, 2, 1, 3, 1],
})
print(df)
# A B C
# 0 1 2 3
# 1 3 1 2
# 2 2 3 1
# 3 1 2 3
# 4 2 3 1
```

This data represents a "ranking" of each of the options, `A`

, `B`

and `C`

for each row. So, for example, in row `2`

, `C`

was the best, then `A`

, then `B`

. I would like to construct the "inverted" data frame, where, for each row, I have three columns for the `1`

, `2`

and `3`

position of the ranking, with `A`

, `B`

and `C`

being now the data. So, for the example above, the result would be:

```
out = pd.DataFrame({
1: ['A', 'B', 'C', 'A', 'C'],
2: ['B', 'C', 'A', 'B', 'A'],
3: ['C', 'A', 'B', 'C', 'B'],
})
print(out)
# 1 2 3
# 0 A B C
# 1 B C A
# 2 C A B
# 3 A B C
# 4 C A B
```

Ideally, each row in `df`

should have the three distinct values `1`

, `2`

and `3`

, but there may be cases with repeated values (values out that range don't need to be considered). If possible at all, I would like to resolve this by "concatenating" the names of the options in the same position, and having empty strings or NaN in missing positions. For example, with this input:

```
df_bad = pd.DataFrame({'A': [1], 'B': [2], 'C': [2]})
print(df_bad)
# A B C
# 0 1 2 2
```

I would ideally want to get this output:

```
out_bad = pd.DataFrame({1: ['A'], 2: ['BC'], 3: ['']})
print(out_bad)
# 1 2 3
# 0 A BC
```

Alternatively, I could settle for just getting one of the values instead of the concatenation.

I have been looking through `melt`

, `pivot`

, `pivot_table`

and other functions but I can't figure out the way to get the result I want.