Python: Pandas Series - Why use loc?

梦想的初衷 提交于 2019-11-26 05:19:02

问题


Why do we use \'loc\' for pandas dataframes? it seems the following code with or without using loc both compile anr run at a simulular speed

%timeit df_user1 = df.loc[df.user_id==\'5561\']

100 loops, best of 3: 11.9 ms per loop

or

%timeit df_user1_noloc = df[df.user_id==\'5561\']

100 loops, best of 3: 12 ms per loop

So why use loc?

Edit: This has been flagged as a duplicate question. But although pandas iloc vs ix vs loc explanation? does mention that *

you can do column retrieval just by using the data frame\'s getitem:

*

df[\'time\']    # equivalent to df.loc[:, \'time\']

it does not say why we use loc, although it does explain lots of features of loc, my specific question is \'why not just omit loc altogether\'? for which i have accepted a very detailed answer below.

Also that other post the answer (which i do not think is an answer) is very hidden in the discussion and any person searching for what i was looking for would find it hard to locate the information and would be much better served by the answer provided to my question.


回答1:


  • Explicit is better than implicit.

    df[boolean_mask] selects rows where boolean_mask is True, but there is a corner case when you might not want it to: when df has boolean-valued column labels:

    In [229]: df = pd.DataFrame({True:[1,2,3],False:[3,4,5]}); df
    Out[229]: 
       False  True 
    0      3      1
    1      4      2
    2      5      3
    

    You might want to use df[[True]] to select the True column. Instead it raises a ValueError:

    In [230]: df[[True]]
    ValueError: Item wrong length 1 instead of 3.
    

    Versus using loc:

    In [231]: df.loc[[True]]
    Out[231]: 
       False  True 
    0      3      1
    

    In contrast, the following does not raise ValueError even though the structure of df2 is almost the same as df1 above:

    In [258]: df2 = pd.DataFrame({'A':[1,2,3],'B':[3,4,5]}); df2
    Out[258]: 
       A  B
    0  1  3
    1  2  4
    2  3  5
    
    In [259]: df2[['B']]
    Out[259]: 
       B
    0  3
    1  4
    2  5
    

    Thus, df[boolean_mask] does not always behave the same as df.loc[boolean_mask]. Even though this is arguably an unlikely use case, I would recommend always using df.loc[boolean_mask] instead of df[boolean_mask] because the meaning of df.loc's syntax is explicit. With df.loc[indexer] you know automatically that df.loc is selecting rows. In contrast, it is not clear if df[indexer] will select rows or columns (or raise ValueError) without knowing details about indexer and df.

  • df.loc[row_indexer, column_index] can select rows and columns. df[indexer] can only select rows or columns depending on the type of values in indexer and the type of column values df has (again, are they boolean?).

    In [237]: df2.loc[[True,False,True], 'B']
    Out[237]: 
    0    3
    2    5
    Name: B, dtype: int64
    
  • When a slice is passed to df.loc the end-points are included in the range. When a slice is passed to df[...], the slice is interpreted as a half-open interval:

    In [239]: df2.loc[1:2]
    Out[239]: 
       A  B
    1  2  4
    2  3  5
    
    In [271]: df2[1:2]
    Out[271]: 
       A  B
    1  2  4
    


来源:https://stackoverflow.com/questions/38886080/python-pandas-series-why-use-loc

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