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I'm using a MultiIndexed pandas DataFrame and would like to multiply a subset of the DataFrame by a certain number.

It's the same as this but with a MultiIndex.

>>> d = pd.DataFrame({'year':[2008,2008,2008,2008,2009,2009,2009,2009], 

>>> d = d.set_index(['year','flavour','day'])                  

>>> d
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

So far, so good. But let's say I spot that all the Saturday figures are only half what they should be! I'd like to multiply all sat sales by 2.

My first attempt at this was:

sat = d.xs('sat', level='day')
sat = sat * 2

but this doesn't work because the variable sat has lost the day level of the index:

>>> sat
year flavour          
2008 strawberry     20
     banana         44
2009 strawberry     22
     banana         46

so pandas doesn't know how to join the new sales figures back onto the old dataframe.

I had a quick stab at:

>>> sat = d.xs('sat', level='day', copy=False)
Traceback (most recent call last):
  File "<stdin>", line 1, in <module>
  File "C:\Python27\lib\site-packages\pandas\core\frame.py", line 2248, in xs
    raise ValueError('Cannot retrieve view (copy=False)')
ValueError: Cannot retrieve view (copy=False)

I have no idea what that error means, but I feel like I'm making a mountain out of a molehill. Does anyone know the right way to do this?

Thanks in advance, Rob

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1 Answer 1

up vote 8 down vote accepted

Note: In soon to be released 0.13 a drop_level argument has been added to xs (thanks to this question!):

In [42]: df.xs('sat', level='day', drop_level=False)
year flavour    day
2008 strawberry sat     10

Another option is to use select (which extracts a sub-DataFrame (copy) of the same data, i.e. it has the same index and so can be updated correctly):

In [11]: d.select(lambda x: x[2] == 'sat') * 2
year flavour    day
2008 strawberry sat     20
     banana     sat     44
2009 strawberry sat     22
     banana     sat     46

In [12]: d.update(d.select(lambda x: x[2] == 'sat') * 2)

Another option is to use an apply:

In [21]: d.apply(lambda x: x*2 if x.name[2] == 'sat' else x, axis=1)

Another option is to use get_level_values (this is probably the most efficient way of these):

In [22]: d[d.index.get_level_values('day') == 'sat'] *= 2

Another option is promote the 'day' level to a column and then use an apply.

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This works, but seems unsatisfying. –  Andy Hayden Jul 9 '13 at 16:26
Yes, it's a working solution but using lambdas for such a (seemingly) simple task feels wrong. The SQL equivalent is UPDATE table SET col = col * 2 WHERE day = 'sat'. I wonder whether xs should include an option to keep the index level selected on. –  LondonRob Jul 9 '13 at 16:40
@LondonRob yeah (update is the thing I don't really like, lambdas aren't too bad), it does I was wondering the same thing, perhaps worth adding as an issue (if we're quick it could be in 0.12 out next week). Definitely some scope for improvement. –  Andy Hayden Jul 9 '13 at 16:43
As a side comment, it seems like using a MultiIndex makes everything harder. I can't really work out what it makes easier!! –  LondonRob Jul 9 '13 at 16:47
@LondonRob d[d.index.get_level_values('day') == 'sat'] *= 2 is I think faster... –  Andy Hayden Jul 10 '13 at 0:09

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