My original df looks like this - df

Note in the data frame:

- The headers are there till row 3 & from row 4 onwards, the values for those headers are starting.
- The numbers of rows & columns merged to create the headers are not same
- The values (from row 4 onwards) can contain missing values.

In Jupyter Notebook, I get something like this - pandas_df

**The requirement: Identify row number i.e., the row from where the values for the headers are starting and from df to df, this row number can vary (i.e., header may include more/less number of rows.**

One can use this code to generate the given table -

```
import numpy as np
data = {'Col1': ['Column1', np.nan, np.nan, np.nan, 11.0, 32.0, 22.0],
'Col2': ['Column2', np.nan, 'Col2PartA', 'P', 'A', 'M', 'C'],
'Col3': [np.nan, np.nan, 'Col2PartB', 'PP', 'HJ', 'KL', 'IO'],
'Col4': ['Column3', 'Col3PartA', np.nan, 10, np.nan, 24, 43],
'Col5': [np.nan, 'Col3PartB', np.nan, 23, np.nan, 21, 56],
'Col6': ['Column4', 'Col4PartA', 'Col4PartA_pt1', 'KLJ', 'TYI', 'MOP', np.nan],
'Col7': [np.nan, np.nan, 'Col4PartA_pt2', 'WER', 'FYI', 'NOI', np.nan],
'Col8': [np.nan, 'Col4PartB', 'Col4PartB_pt1', 'DFG', np.nan, 'UIT', np.nan]}
pandas_df = pd.DataFrame(data)
```

I am expecting some solution around NLP, but if there are any simple logic that would also be a great help.