I have a large pandas dataframe (>100 columns). I need to drop various sets of columns and i'm hoping there is a way of using the old

```
df.drop(df.columns['slices'],axis=1)
```

I've built selections such as:

```
a = df.columns[3:23]
b = df.colums[-6:]
```

as `a`

and `b`

represent column sets I want to drop.

The following

```
list(df)[3:23]+list(df)[-6:]
```

yields the correct selection, but i can't implement it with a `drop`

:

```
df.drop(df.columns[list(df)[3:23]+list(df)[-6:]],axis=1)
```

ValueError: operands could not be broadcast together with shapes (20,) (6,)

I looked around but can't get my answer.

Selecting last n columns and excluding last n columns in dataframe

(Below pertains to the error I receive):

python numpy ValueError: operands could not be broadcast together with shapes

This one feels like they're having a similar issue, but the 'slices' aren't separate: Deleting multiple columns based on column names in Pandas

Cheers

`df.drop(columns=list(df)[3:23]+list(df)[-6:])`