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What are the key differences between Pandas' `loc` and `iloc` methods for DataFrame slicing?

Mary-Kate Olsen
Release: 2024-12-19 13:00:11
Original
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What are the key differences between Pandas' `loc` and `iloc` methods for DataFrame slicing?

How are iloc and loc different?

iloc and loc are two methods for slicing a DataFrame in Pandas. Both methods can be used to select rows and columns, but they differ in how they interpret the input.

loc gets rows (and/or columns) with particular labels.

iloc gets rows (and/or columns) at integer locations.

To demonstrate, consider a series s of characters with a non-monotonic integer index:

>>> s = pd.Series(list("abcdef"), index=[49, 48, 47, 0, 1, 2])
49    a
48    b
47    c
0     d
1     e
2     f
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s.loc[0]    # value at index label 0
'd'

s.iloc[0]   # value at index location 0
'a'

s.loc[0:1]  # rows at index labels between 0 and 1 (inclusive)
0    d
1    e

s.iloc[0:1] # rows at index location between 0 and 1 (exclusive)
49    a
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Here are some of the differences/similarities between s.loc and s.iloc when passed various objects:

Object Description s.loc[Object] s.iloc[Object]
0 Single item Value at index label 0 (_the string 'd'_) Value at index location 0 (_the string 'a'_)
0:1 Slice Two rows (labels 0 and 1) One row (first row at location 0)
1:47 Slice with out-of-bounds end Zero rows (empty Series) Five rows (location 1 onwards)
1:47:-1 Slice with negative step three rows (labels 1 back to 47) Zero rows (empty Series)
[2, 0] Integer list Two rows with given labels Two rows with given locations
s > 'e' Bool series (indicating which values have the property) One row (containing 'f') NotImplementedError
(s>e).values Bool array One row (containing 'f') Same as loc
999 Int object not in index KeyError IndexError (out of bounds)
-1 Int object not in index KeyError Returns last value in s
lambda x: x.index[3] Callable applied to series (here returning 3rd item in index) s.loc[s.index[3]] s.iloc[s.index[3]]

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