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


%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.

  • Possible duplicate of pandas iloc vs ix vs loc explanation? – JGreenwell Aug 11 '16 at 1:54
  • @JGreenwell - not really, there they are discussing the difference between .loc, .iloc and .ix but here I am simply asking why use .loc at all, not why use it over .iloc or .ix, Im not interested in iloc or ix, Im trying to understand loc first and why we use it as opposed to just leaving it out with nothing in its place. – Runner Bean Aug 11 '16 at 1:58
  • see the end of the answer by ajcr which includes a general use of both .loc and .iloc vs .ix: or the relavent part "if you're only indexing using labels, or only indexing using integer positions, stick with loc or iloc to avoid unexpected results." – JGreenwell Aug 11 '16 at 2:00
  • 1
    Essentially, there are fall backs and best guesses that pandas makes when you don't specify the indexing technique. So it goes through each of them. On a DataFrame, the default is use .loc on columns. On Series, the default is use .loc on rows, because there is no columns. – Kartik Aug 11 '16 at 2:08
  • 2
    JGreenwell and Kartik - I do not understand. I am not, i repeat, I am not interested in anything to do with .iloc, lets just pretend .iloc does not exist and lets pretend .ix does not exist. I just want to know why I should use .loc rather than just leaving it out all together as in the code in my question. – Runner Bean Aug 11 '16 at 2:08
up vote 36 down vote accepted
  • 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
       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]]
       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
       A  B
    0  1  3
    1  2  4
    2  3  5
    In [259]: df2[['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']
    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]
       A  B
    1  2  4
    2  3  5
    In [271]: df2[1:2]
       A  B
    1  2  4
  • Why didn't you use quote marks around the column name? Wouldn't df[['True']] work correctly? – L S Jun 30 at 18:20

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