1

I have the following code setup that calls and groupBy and apply on a Python Pandas DataFrame.

The bizarre thing is I am unable to slice the grouped data by row (like df.loc[2:5]) without it completely screwing the output (as shown in the debug), how can you drop rows and get this to give the desired output?

Any help would be massively appreciated, I'm running this on a bigger example with more complicated functions, but have pinpointed the issues to the row slicing!

Code:

import pandas as pd
df = pd.DataFrame({'one' : ['AAL', 'AAL', 'AAPL', 'AAPL'], 'two' : [1, 2, 3, 4]})

def net_func(df):
    df_res = daily_func(df, True)
    df_res_valid = daily_func(df, False)
    df_merge = pd.merge(df_res, df_res_valid)
    return df_merge

def daily_func(df, bool_param):

#     df.drop(df.head(1).index, inplace=True)
#     df = df[1:1]
#     df.iloc[1:1,:]
#     df.loc[1:1,:]


    if bool_param:
        df['daily'+str(bool_param)] = 1
    else:
        df['daily'+str(bool_param)] = 0    
    return df

print df.groupby('one').apply(net_func)

Current output:

         one  two  dailyTrue  dailyFalse
one                                     
AAL  0   AAL    1          1           0
     1   AAL    2          1           0
AAPL 0  AAPL    1          1           0
     1  AAPL    2          1           0

Desired output:

         one  two  dailyTrue  dailyFalse
one                                     
AAL  1   AAL    2          1           0
AAPL 1  AAPL    2          1           0

Ideally, I would like to be able to slice by row for each group for example df.loc[3:5] - This would be perfect!

I've tried the commented as follows:

output with df.drop(df.head(1).index, inplace=True):

Empty DataFrame
Columns: [one, two, dailyTrue, dailyFalse]
Index: []

Update: also tried output with df = df[1:1]:

Empty DataFrame
Columns: [one, two, dailyTrue, dailyFalse]
Index: []

Update have also tried df.iloc[1:1,:]:

         one  two  dailyTrue  dailyFalse
one                                     
AAL  0   AAL    1          1           0
     1   AAL    2          1           0
AAPL 0  AAPL    1          1           0
     1  AAPL    2          1           0

and df.loc[1:1,:]:

         one  two  dailyTrue  dailyFalse
one                                     
AAL  0   AAL    1          1           0
     1   AAL    2          1           0
AAPL 0  AAPL    1          1           0
     1  AAPL    2          1           0
  • You need to show the code where you are actually using loc. Your question says it's about loc but your code examples don't use loc at all. loc slices on index names, which will be different in each group. Did you try using iloc? – BrenBarn Mar 17 '16 at 19:52
  • @BrenBarn I'll add this now! Thanks for pointing that out! Have tried many different ways! – jfive Mar 17 '16 at 19:59
  • I've added that in, with the relevant output, thanks again! – jfive Mar 17 '16 at 20:03
1

Consider using the cross section slice, xs after the groupby().apply(), specifying each key accordingly:

print df.groupby('one').apply(net_func).xs(0, level=1)
#       one  two  dailyTrue  dailyFalse
#one                                   
#AAL    AAL    1          1           0
#AAPL  AAPL    1          1           0

print df.groupby('one').apply(net_func).xs(1, level=1)
#       one  two  dailyTrue  dailyFalse
#one                                   
#AAL    AAL    2          1           0
#AAPL  AAPL    2          1           0

Alternatively, use multiple indexing with list of tuples:

print df.groupby('one').apply(net_func).ix[[('AAL', 1), ('AAPL', 1)]]
#         one  two  dailyTrue  dailyFalse
#one                                     
#AAL  1   AAL    2          1           0
#AAPL 1  AAPL    2          1           0

Still more with slice (introduced in pandas 0.14):

print df.groupby('one').apply(net_func).loc[(slice('AAL','AAPL'),slice(1,1)),:]
#         one  two  dailyTrue  dailyFalse
#one                                     
#AAL  1   AAL    2          1           0
#AAPL 1  AAPL    2          1           0
  • I really appreciate this, and I will try straight away, but is there no way to do it inside the function? The reason I ask is because in the actual code there are a lot more steps that happen after the relevant rows are dropped – jfive Mar 17 '16 at 22:06
  • Or, could I use this method you showed to slice n rows from each group at index start:end? – jfive Mar 17 '16 at 22:08
  • These above methods expect multi-index dfs which occur only after you apply your function. Maybe wrapping another function with this output as input? – Parfait Mar 17 '16 at 22:13

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