Tengo una dataframe con los artículos vendidos por diferentes tiendas todos los días:
date date_block_num shop_id item_id item_price item_cnt_day day month_year
1953691 24.09.2014 20 5 1039 899.0 1.0 24 09.2014
1953692 27.09.2014 20 5 1015 449.0 1.0 27 09.2014
1953693 07.09.2014 20 5 1329 399.0 1.0 07 09.2014
1953694 27.09.2014 20 5 984 399.0 1.0 27 09.2014
1953695 08.09.2014 20 5 984 399.0 1.0 08 09.2014
Me gustaría obtener los resultados para cada tienda. Entonces intenté:
revenues = {}
for row in transactions_december_2014.sort('shop_id').iterrows():
if last_shop_id == row.shop_id:
revenues[shop_id] += row.item_price * row.item_cnt_day
last_shop_id = row.shop_id
else:
revenues[shop_id] = row.item_price * row.item_cnt_day
print(max(revenues))
Pero me devuelve:
---------------------------------------------------------------------------
AttributeError Traceback (most recent call last)
<ipython-input-26-391a52cd0210> in <module>()
9 # transactions_december_2014.groupby("shop_id").sum(transactions_december_2014.item_price * transactions_december_2014.item_cnt_day)
10 revenues = {}
---> 11 for row in transactions_december_2014.sort('shop_id').iterrows():
12 if last_shop_id == row.shop_id:
13 revenues[shop_id] += row.item_price * row.item_cnt_day
/opt/conda/lib/python3.6/site-packages/pandas/core/generic.py in __getattr__(self, name)
3079 if name in self._info_axis:
3080 return self[name]
-> 3081 return object.__getattribute__(self, name)
3082
3083 def __setattr__(self, name, value):
AttributeError: 'DataFrame' object has no attribute 'sort'
Tambien pensia utilisar groupby
s:
transactions_december_2014.groupby("shop_id").sum(transactions_december_2014.item_price * transactions_december_2014.item_cnt_day)
Pero nunca funciona. Pienso ahora hacer una cosa con lambda
hasta que utiliso bucles for.