I know how to do element by element multiplication between two Pandas dataframes. However, things get more complicated when the dimensions of the two dataframes are not compatible. For instance below `df * df2`

is straightforward, but `df * df3`

is a problem:

```
df = pd.DataFrame({'col1' : [1.0] * 5,
'col2' : [2.0] * 5,
'col3' : [3.0] * 5 }, index = range(1,6),)
df2 = pd.DataFrame({'col1' : [10.0] * 5,
'col2' : [100.0] * 5,
'col3' : [1000.0] * 5 }, index = range(1,6),)
df3 = pd.DataFrame({'col1' : [0.1] * 5}, index = range(1,6),)
df.mul(df2, 1) # element by element multiplication no problems
df.mul(df3, 1) # df(row*col) is not equal to df3(row*col)
col1 col2 col3
1 0.1 NaN NaN
2 0.1 NaN NaN
3 0.1 NaN NaN
4 0.1 NaN NaN
5 0.1 NaN NaN
```

In the above situation, **how can I multiply every column of df with df3.col1**?

**My attempt:** I tried to replicate `df3.col1`

`len(df.columns.values)`

times to get a dataframe that is of the same dimension as `df`

:

```
df3 = pd.DataFrame([df3.col1 for n in range(len(df.columns.values)) ])
df3
1 2 3 4 5
col1 0.1 0.1 0.1 0.1 0.1
col1 0.1 0.1 0.1 0.1 0.1
col1 0.1 0.1 0.1 0.1 0.1
```

But this creates a dataframe of dimensions 3 * 5, whereas I am after 5*3. I know I can take the transpose with `df3.T()`

to get what I need but I think this is not that the fastest way.