# Multiply Series by distributing across MultiIndex levels

This is a MultiIndex version of this question.

Consider a `DataFrame` of sales figures:

``````sales = pd.DataFrame({'year':[2008,2008,2008,2008,2009,2009,2009,2009],
'flavour':['strawberry','strawberry','banana','banana',
'strawberry','strawberry','banana','banana'],
'day':['sat','sun','sat','sun','sat','sun','sat','sun'],
'sales':[10,12,22,23,11,13,23,24]})
sales = sales.set_index(['year','flavour','day'])
>>> sales
year  flavour     day
2008  strawberry  sat    10
sun    12
banana      sat    22
sun    23
2009  strawberry  sat    11
sun    13
banana      sat    23
sun    24
``````

Now I want to multiply each figure by a different number depending on the year and the day, stored as a `Series`:

``````>>> sales = pd.DataFrame([[2008, 'sat', 0], [2008, 'sun', 1], [2009, 'sat', 2], [2009, 'sun', 3]])
>>> sales = sales.set_index([0, 1])
2
0    1
2008 sat  0
sun  1
2009 sat  2
sun  3
``````

Is there a neat way to multiply each figure from `sales` by its associated element of `mul`? This is a very common operation in SQL.

-
yes its the same question; use mul with a level argument – Jeff Apr 7 '14 at 18:37
The confusion might be that `sales` is (unnecessarily) a DataFrame, and I believe this only works on Series. Use `.squeeze()` to convert like so: `sales.squeeze().mul(mul, level=2)` – Dan Allan Apr 7 '14 at 18:41
`sales['sales'].mul(mul, level=2)` would also work – EdChum Apr 7 '14 at 18:44
@DanAllan Does this work with multiple levels? In my real scenario, `mul` also has a multi-index and I always get `Join on level between two MultiIndex objects us ambiguous` – LondonRob Apr 7 '14 at 18:46
@DanAllan you should make that an answer! (I think that joining on two levels in a MI is fixed in master (0.14) / where not ambiguous...) – Andy Hayden Apr 7 '14 at 18:50

It seems that you are defining `sales` for each side of the multiplicand. So defining the 2nd part as `m` (and naming the levels of the index).

``````In [28]: m = pd.DataFrame([[2008, 'sat', 0], [2008, 'sun', 1], [2009, 'sat', 2], [2009, 'sun', 3]],columns=['year','day','value']).set_index(['year','day'])

In [29]: m
Out[29]:
value
year day
2008 sat      0
sun      1
2009 sat      2
sun      3

[4 rows x 1 columns]
``````

Simply merge

``````In [30]: x = pd.merge(sales.reset_index(),m.reset_index(),on=['year','day'])
``````

Set

``````In [31]: x['sales_value'] = x['sales']*x['value']
``````

Reset the index

``````In [32]: x.set_index(['year','flavour','day'])
Out[32]:
sales  value  sales_value
year flavour    day
2008 strawberry sat     10      0            0
banana     sat     22      0            0
strawberry sun     12      1           12
banana     sun     23      1           23
2009 strawberry sat     11      2           22
banana     sat     23      2           46
strawberry sun     13      3           39
banana     sun     24      3           72

[8 rows x 3 columns]
``````

This is being worked on, but is still an open issue. see here. The soln actually is simply to embed this soln in the broadcast numerics (.e.g mul/add ...).

-

The confusion might be that sales is (unnecessarily) a DataFrame, and I believe this only works on Series. Use .squeeze() to convert like so:

``````sales.squeeze().mul(mul, level=2)
``````
-