**Solution:** Use `aggfunc='size'`

Using `aggfunc=len`

or `aggfunc='count'`

like all the other answers on this page will not work for DataFrames with more than three columns. By default, pandas will apply this `aggfunc`

to all the columns not found in `index`

or `columns`

parameters.

For instance, if we had two more columns in our original DataFrame defined like this:

```
df = pd.DataFrame({'Account_number':[1, 1, 2 ,2 ,2 ,3 ,3],
'Product':['A', 'A', 'A', 'B', 'B','A', 'B'],
'Price': [10] * 7,
'Quantity': [100] * 7})
```

Output:

```
Account_number Product Price Quantity
0 1 A 10 100
1 1 A 10 100
2 2 A 10 100
3 2 B 10 100
4 2 B 10 100
5 3 A 10 100
6 3 B 10 100
```

If you apply the current solutions to this DataFrame, you would get the following:

```
df.pivot_table(index='Account_number',
columns='Product',
aggfunc=len,
fill_value=0)
```

Output:

```
Price Quantity
Product A B A B
Account_number
1 2 0 2 0
2 1 2 1 2
3 1 1 1 1
```

### Solution

Instead, use `aggfunc='size'`

. Since `size`

always returns the same number for each column, pandas does not call it on every single column and just does it once.

```
df.pivot_table(index='Account_number',
columns='Product',
aggfunc='size',
fill_value=0)
```

Output:

```
Product A B
Account_number
1 2 0
2 1 2
3 1 1
```

`aggfunc='size'`

. See my answer below for more details