17

Can anybody explain why is loc used in python pandas with examples like shown below?

for i in range(0, 2):
  for j in range(0, 3):
    df.loc[(df.Age.isnull()) & (df.Gender == i) & (df.Pclass == j+1),
            'AgeFill'] = median_ages[i,j]
  • 1
    In your example, .loc is used mainly because you try to access a cell via the column index AgeFill. – Jianxun Li Jul 22 '15 at 18:32
21

The use of .loc is recommended here because the methods df.Age.isnull(), df.Gender == i and df.Pclass == j+1 may return a view of slices of the data frame or may return a copy. This can confuse pandas.

If you don't use .loc you end up calling all 3 conditions in series which leads you to a problem called chained indexing. When you use .loc however you access all your conditions in one step and pandas is no longer confused.

You can read more about this along with some examples of when not using .loc will cause the operation to fail in the pandas documentation.

The simple answer is that while you can often get away with not using .loc and simply typing (for example)

df['Age_fill'][(df.Age.isnull()) & (df.Gender == i) & (df.Pclass == j+1)] \
                                                          = median_ages[i,j]

you'll always get the SettingWithCopy warning and your code will be a little messier for it.

In my experience .loc has taken me a while to get my head around and it's been a bit annoying updating my code. But it's really super simple and very intuitive: df.loc[row_index,col_indexer].

For more information see the pandas documentation on Indexing and Selecting Data.

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