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I am doing some calculations in pandas and the .loc method is having unexpected results. not sure if it is me misusing the syntax or a bug.

df= pd.DataFrame(index=['series1', 'series2', 'series3'])
df['prev value/unit'] =[99,99,99]
df['value'] = [100,100,100]
df['units'] = [100,100,0]
df['value/unit'] = df['value']/df['units']

creates a dataframe where there will be some div by zero values as shown below. Business logic dictates that if there is a /0 the prior value/unit should be used.

          prev value/unit  value  units  value/unit
series1               99    100    100    1.000000
series2               99    100    100    1.000000
series3               99    100      0         inf

so adding:

df.loc[df.units ==0,'value/unit'] = df['prev value/unit']

has the desired effect and the inf above gets correctly overwritten by 99 (the previous per unit value).

However if there are no div/0.

df.loc[df.units ==0,'value/unit']
#is a empty Series
#Series([], name: value/unit, dtype: float64)

and asigning df['prev value/unit'] to it overwrites all the values!!!!

so e.g.

df= pd.DataFrame(index=['series1', 'series2', 'series3'])
df['prev value/unit'] =[99,99,99]
df['value'] = [100,100,100]
df['units'] = [100,100,100]
df['value/unit'] = df['value']/df['units']
df.loc[df.units ==0,'value/unit'] = df['prev value/unit']

gives:

          prev value/unit  value  units  value/unit
series1               99    100    100          99
series2               99    100    100          99
series3               99    100    100          99

which is totally unexpected. Did I accidentally misuse the .loc syntax or is this a bug? I am specifically using the it to avoid assigning to temporary views of the dataframe. for reference I am using pandas 0.13.1

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1  
This works correctly in 0.14.0; I don't recall the exact issue; give a try and report back. –  Jeff Jun 4 at 12:26
    
have reverted to np.where method proposed by @chrisb in meantime. will check against 0.14.0 later and get back to you. So I haven't abused the syntax for change? –  Joop Jun 4 at 12:42
    
no, the issue was the handling of an empty mask in the row indexer –  Jeff Jun 4 at 12:50
    
confirmed behaviour is different in 0.14.0 –  Joop Jun 5 at 13:55

1 Answer 1

up vote 1 down vote accepted

I'm assuming it has something to do with views/copies, but it certainly seems like unexpected behavior - you might open an issue on github.

https://github.com/pydata/pandas/issues

An alternative way to write the code would be using numpy.where, e.g.

In [86]: import numpy as np
In [87]: df['value/unit'] = np.where(df['units'] == 0, df['prev value/unit'], df['value']/df['units'])

In [88]: df
Out[87]: 
         prev value/unit  value  units  value/unit
series1               99    100    100           1
series2               99    100    100           1
series3               99    100    100           1
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