pandas.Index.drop_duplicates#
- Index.drop_duplicates(*, keep='first')[source]#
Return Index with duplicate values removed.
- Parameters:
- keep{‘first’, ‘last’,
False
}, default ‘first’ ‘first’ : Drop duplicates except for the first occurrence.
‘last’ : Drop duplicates except for the last occurrence.
False
: Drop all duplicates.
- keep{‘first’, ‘last’,
- Returns:
- Index
A new Index object with the duplicate values removed.
See also
Series.drop_duplicates
Equivalent method on Series.
DataFrame.drop_duplicates
Equivalent method on DataFrame.
Index.duplicated
Related method on Index, indicating duplicate Index values.
Examples
Generate an pandas.Index with duplicate values.
>>> idx = pd.Index(["llama", "cow", "llama", "beetle", "llama", "hippo"])
The keep parameter controls which duplicate values are removed. The value ‘first’ keeps the first occurrence for each set of duplicated entries. The default value of keep is ‘first’.
>>> idx.drop_duplicates(keep="first") Index(['llama', 'cow', 'beetle', 'hippo'], dtype='object')
The value ‘last’ keeps the last occurrence for each set of duplicated entries.
>>> idx.drop_duplicates(keep="last") Index(['cow', 'beetle', 'llama', 'hippo'], dtype='object')
The value
False
discards all sets of duplicated entries.>>> idx.drop_duplicates(keep=False) Index(['cow', 'beetle', 'hippo'], dtype='object')