4

I need to retrieve multiples rows (which could be duplicated) and if the index does not exist get a default value. An example with Series:

s = pd.Series(np.arange(4), index=['a', 'a', 'b', 'c'])
labels = ['a', 'd', 'f']
result = s.loc[labels]
result = result.fillna(my_default_value)

Now, I'm using DataFrame, an equivalent with names is:

df = pd.DataFrame({
    "Person": {
        "name_1": "Genarito",
        "name_2": "Donald Trump",
        "name_3": "Joe Biden",
        "name_4": "Pablo Escobar",
        "name_5": "Dalai Lama"
    }
})

default_value = 'No name'
names_to_retrieve = ['name_1', 'name_2', 'name_8', 'name_3']
result = df.loc[names_to_retrieve]
result = result.fillna(default_value)

With both examples it's throwing a warning saying:

FutureWarning: Passing list-likes to .loc or [] with any missing label will raise KeyError in the future, you can use .reindex() as an alternative.

In the documentation of the issue it says that you should use reindex but they say that It won't work with duplicates...

Is there any way to work without warnings and duplicated indexes?

Thanks in advance

0

4 Answers 4

2

Let's try merge:

result = (pd.DataFrame({'label':labels})
            .merge(s.to_frame(name='x'), left_on='label', 
                   right_index=True, how='left')
            .set_index('label')['x']
         )

Output:

label
a    0.0
a    1.0
d    NaN
f    NaN
Name: x, dtype: float64
3
  • First of all thank you so much for your answer! If you could make the equivalent of your solution for DataFrames I would appreciate it, otherwise no problem, it's my fault for not having left an example with DataFrames (there I just edited my question) and clarify that i was using them explicitly
    – Genarito
    Feb 5, 2021 at 14:30
  • 2
    @Genarito For DataFrame it's easier, just replace s.to_frame(name='x') (which i had to put their to return s into a dataframe) with your dataframe and remove the last ['x']. Feb 5, 2021 at 14:34
  • You're the best! I'll make some comparisons in terms of performance and i'll mark the accepted answer. Thank you!
    – Genarito
    Feb 5, 2021 at 14:53
2

How about :

on_values = s.loc[s.index.intersection(labels).unique()]
off_values = pd.Series(default_value,index=s.index.difference(labels))
result = pd.concat([on_values,off_values])
4
  • 1
    This works if the order of labels is not important. +1 still. Feb 4, 2021 at 22:39
  • First of all thank you so much for your answer! If I try it with DataFrames it returns two columns, one with the default_value in missing indexes and others with NaN. If you could make the equivalent of your solution for DataFrames I would appreciate it, otherwise no problem, it's my fault for not having left an example with DataFrames (there I just edited my question)
    – Genarito
    Feb 5, 2021 at 14:27
  • 1
    @Genarito change pd.Series(...) to pd.DataFrame(default_value, index=..., columns=df.columns). Feb 5, 2021 at 15:29
  • Thank you again @QuangHoang!
    – Genarito
    Feb 5, 2021 at 16:04
1

Check isin with append

out = s[s.index.isin(labels)]
out = out.append(pd.Series(index=set(labels)-set(s.index),dtype='float').fillna(0))
out
Out[341]: 
a    0.0
a    1.0
d    0.0
f    0.0
dtype: float64
1
  • First of all thank you so much for your answer! If I try it with DataFrames it returns two columns, one with the default_value in missing indexes and others with NaN. If you could make the equivalent of your solution for DataFrames I would appreciate it, otherwise no problem, it's my fault for not having left an example with DataFrames (there I just edited my question)
    – Genarito
    Feb 5, 2021 at 14:33
1

You can write a simple function to handle the rows in labels and missing from labels separately, then join. When True the in_order argument will ensure that if you specify labels = ['d', 'a', 'f'], the output is ordered ['d', 'a', 'f'].

def reindex_with_dup(s: pd.Series or pd.DataFrame, labels, fill_value=np.NaN, in_order=True):
    labels = pd.Series(labels)

    s1 = s.loc[labels[labels.isin(s.index)]]
    
    if isinstance(s, pd.Series):
        s2 = pd.Series(fill_value, index=labels[~labels.isin(s.index)])
    if isinstance(s, pd.DataFrame):
        s2 = pd.DataFrame(fill_value, index=labels[~labels.isin(s.index)],
                          columns=s.columns)
        
    s = pd.concat([s1, s2])

    if in_order:
        s = s.loc[labels.drop_duplicates()]

    return s


reindex_with_dup(s, ['d', 'a', 'f'], fill_value='foo')
#d    foo
#a      0
#a      1
#f    foo
#dtype: object

This retains the .loc behavior that if your index is duplicated and your labels are duplicated it duplicates the selection:

reindex_with_dup(s, ['d', 'a', 'a', 'f', 'f'], fill_value='foo')
#d    foo
#a      0
#a      1
#a      0
#a      1
#f    foo
#f    foo
#dtype: object

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