DataFrame.nlargest(self, n, columns, keep='first')
[source]
Return the first n
rows ordered by columns
in descending order.
Return the first n
rows with the largest values in columns
, in descending order. The columns that are not specified are returned as well, but not used for ordering.
This method is equivalent to df.sort_values(columns, ascending=False).head(n)
, but more performant.
Parameters: |
|
---|---|
Returns: |
|
See also
DataFrame.nsmallest
n
rows ordered by columns
in ascending order.DataFrame.sort_values
DataFrame.head
n
rows without re-ordering.This function cannot be used with all column types. For example, when specifying columns with object
or category
dtypes, TypeError
is raised.
>>> df = pd.DataFrame({'population': [59000000, 65000000, 434000, ... 434000, 434000, 337000, 11300, ... 11300, 11300], ... 'GDP': [1937894, 2583560 , 12011, 4520, 12128, ... 17036, 182, 38, 311], ... 'alpha-2': ["IT", "FR", "MT", "MV", "BN", ... "IS", "NR", "TV", "AI"]}, ... index=["Italy", "France", "Malta", ... "Maldives", "Brunei", "Iceland", ... "Nauru", "Tuvalu", "Anguilla"]) >>> df population GDP alpha-2 Italy 59000000 1937894 IT France 65000000 2583560 FR Malta 434000 12011 MT Maldives 434000 4520 MV Brunei 434000 12128 BN Iceland 337000 17036 IS Nauru 11300 182 NR Tuvalu 11300 38 TV Anguilla 11300 311 AI
In the following example, we will use nlargest
to select the three rows having the largest values in column “population”.
>>> df.nlargest(3, 'population') population GDP alpha-2 France 65000000 2583560 FR Italy 59000000 1937894 IT Malta 434000 12011 MT
When using keep='last'
, ties are resolved in reverse order:
>>> df.nlargest(3, 'population', keep='last') population GDP alpha-2 France 65000000 2583560 FR Italy 59000000 1937894 IT Brunei 434000 12128 BN
When using keep='all'
, all duplicate items are maintained:
>>> df.nlargest(3, 'population', keep='all') population GDP alpha-2 France 65000000 2583560 FR Italy 59000000 1937894 IT Malta 434000 12011 MT Maldives 434000 4520 MV Brunei 434000 12128 BN
To order by the largest values in column “population” and then “GDP”, we can specify multiple columns like in the next example.
>>> df.nlargest(3, ['population', 'GDP']) population GDP alpha-2 France 65000000 2583560 FR Italy 59000000 1937894 IT Brunei 434000 12128 BN
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Licensed under the 3-clause BSD License.
https://pandas.pydata.org/pandas-docs/version/0.25.0/reference/api/pandas.DataFrame.nlargest.html