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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?

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3 Answers 3

up vote 4 down vote accepted

This gives the row with the maximum value:

In [34]: df.ix[df['Value'].idxmax()]
Country        US
Place      Kansas
Value         894
Name: 7
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Thank you. That was exactly what I was looking for. –  richie Apr 1 '13 at 11:03

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()))
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that would only return the column names and the dtypes –  richie Apr 1 '13 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
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correct. But I'm looking for a one line output that says, 'US, Kansas, 894' –  richie Apr 1 '13 at 10:51
Sorry for misunderstanding, have updated :> –  waitingkuo Apr 1 '13 at 11:11
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 '13 at 11:19

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