Structure of data;

Using Python Pandas I am trying to find the Country & Place with the maximum value.

This returns the maximum value:


But how do I get the corresponding Country and Place name?


12 Answers 12


Assuming df has a unique index, this gives the row with the maximum value:

In [34]: df.loc[df['Value'].idxmax()]
Country        US
Place      Kansas
Value         894
Name: 7

Note that idxmax returns index labels. So if the DataFrame has duplicates in the index, the label may not uniquely identify the row, so df.loc may return more than one row.

Therefore, if df does not have a unique index, you must make the index unique before proceeding as above. Depending on the DataFrame, sometimes you can use stack or set_index to make the index unique. Or, you can simply reset the index (so the rows become renumbered, starting at 0):

df = df.reset_index()
  • 1
    Note this returns the first max row if there are multiple max values.
    – starriet
    Apr 15, 2022 at 6:52
  • For future and others - note the words "Note that idxmax returns index labels."
    – CodeCabbie
    Nov 23, 2022 at 16:39

This will return the entire row with max value

  • Explanation :- The inner expression does a boolean check throughout the length of the dataFrame & that index which satisfies the right hand side of the expression( .max()) returns the index, which in turn calls the complete row of that dataFrame
    – penta
    Feb 22, 2019 at 5:28
  • 3
    Worth noting that this returns all rows if there are multiple same max values.
    – starriet
    Apr 15, 2022 at 6:45

I think the easiest way to return a row with the maximum value is by getting its index. argmax() can be used to return the index of the row with the largest value.

index = df.Value.argmax()

Now the index could be used to get the features for that particular row:

df.iloc[df.Value.argmax(), 0:2]

The country and place is the index of the series, if you don't need the index, you can set as_index=False:

df.groupby(['country','place'], as_index=False)['value'].max()


It seems that you want the place with max value for every country, following code will do what you want:

df.groupby("country").apply(lambda df:df.irow(df.value.argmax()))
  • 1
    that would only return the column names and the dtypes
    – richie
    Apr 1, 2013 at 10:54

Use the index attribute of DataFrame. Note that I don't type all the rows in the example.

In [14]: df = data.groupby(['Country','Place'])['Value'].max()

In [15]: df.index
[Spain  Manchester, UK     London    , US     Mchigan   ,        NewYork   ]

In [16]: df.index[0]
Out[16]: ('Spain', 'Manchester')

In [17]: df.index[1]
Out[17]: ('UK', 'London')

You can also get the value by that index:

In [21]: for index in df.index:
    print index, df[index]
('Spain', 'Manchester') 512
('UK', 'London') 778
('US', 'Mchigan') 854
('US', 'NewYork') 562


Sorry for misunderstanding what you want, try followings:

In [52]: s=data.max()

In [53]: print '%s, %s, %s' % (s['Country'], s['Place'], s['Value'])
US, NewYork, 854
  • correct. But I'm looking for a one line output that says, 'US, Kansas, 894'
    – richie
    Apr 1, 2013 at 10:51
  • Thanks. This would solve the problem for the current dataset where there is just 1 column with values. When there are more columns with values @unutbu's solution would work better. Thanks anyway.
    – richie
    Apr 1, 2013 at 11:19

In order to print the Country and Place with maximum value, use the following line of code.

print(df[['Country', 'Place']][df.Value == df.Value.max()])

You can use:


Using DataFrame.nlargest.

The dedicated method for this is nlargest which uses algorithm.SelectNFrame on the background, which is a performant way of doing: sort_values().head(n)

   x  y  a  b
0  1  2  a  x
1  2  4  b  x
2  3  6  c  y
3  4  1  a  z
4  5  2  b  z
5  6  3  c  z
df.nlargest(1, 'y')

   x  y  a  b
2  3  6  c  y

import pandas
df is the data frame you create.

Use the command:

df1=df[['Country','Place']][df.Value == df['Value'].max()]

This will display the country and place whose value is maximum.


My solution for finding maximum values in columns:


, also minimum:


I'd recommend using nlargest for better performance and shorter code. import pandas


I encountered a similar error while trying to import data using pandas, The first column on my dataset had spaces before the start of the words. I removed the spaces and it worked like a charm!!

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.