# Find row where values for column is maximal in a pandas DataFrame

How can I find the row for which the value of a specific column is maximal?

`df.max()` will give me the maximal value for each column, I don't know how to get the corresponding row.

• Is it possible to get the top 2 values? instead of only the max? – AsheKetchum Mar 15 '17 at 22:04
• You can use `sort_values` and get the index: `df.sort_values('col', ascending=False)[:2].index` – lazy1 Mar 17 '17 at 5:07
• lazy1: avoid unnecessarily sorting an entire series because it's O(N logN) on average, whereas finding max/idxmax is only O(N). – smci Jul 16 at 23:24

You just need the `argmax()` (now called `idxmax`) function. It's straightforward:

``````>>> import pandas
>>> import numpy as np
>>> df = pandas.DataFrame(np.random.randn(5,3),columns=['A','B','C'])
>>> df
A         B         C
0  1.232853 -1.979459 -0.573626
1  0.140767  0.394940  1.068890
2  0.742023  1.343977 -0.579745
3  2.125299 -0.649328 -0.211692
4 -0.187253  1.908618 -1.862934
>>> df['A'].argmax()
3
>>> df['B'].argmax()
4
>>> df['C'].argmax()
1
``````

This function was updated to the name `idxmax` in the Pandas API, though as of Pandas 0.16, `argmax` still exists and performs the same function (though appears to run more slowly than `idxmax`).

You can also just use `numpy.argmax`, such as `numpy.argmax(df['A'])` -- it provides the same thing as either of the two `pandas` functions, and appears at least as fast as `idxmax` in cursory observations.

Previously (as noted in the comments) it appeared that `argmax` would exist as a separate function which provided the integer position within the index of the row location of the maximum element. For example, if you have string values as your index labels, like rows 'a' through 'e', you might want to know that the max occurs in row 4 (not row 'd'). However, in pandas 0.16, all of the listed methods above only provide the label from the `Index` for the row in question, and if you want the position integer of that label within the `Index` you have to get it manually (which can be tricky now that duplicate row labels are allowed).

In general, I think the move to `idxmax`-like behavior for all three of the approaches (`argmax`, which still exists, `idxmax`, and `numpy.argmax`) is a bad thing, since it is very common to require the positional integer location of a maximum, perhaps even more common than desiring the label of that positional location within some index, especially in applications where duplicate row labels are common.

For example, consider this toy `DataFrame` with a duplicate row label:

``````In [19]: dfrm
Out[19]:
A         B         C
a  0.143693  0.653810  0.586007
b  0.623582  0.312903  0.919076
c  0.165438  0.889809  0.000967
d  0.308245  0.787776  0.571195
e  0.870068  0.935626  0.606911
f  0.037602  0.855193  0.728495
g  0.605366  0.338105  0.696460
h  0.000000  0.090814  0.963927
i  0.688343  0.188468  0.352213
i  0.879000  0.105039  0.900260

In [20]: dfrm['A'].idxmax()
Out[20]: 'i'

In [21]: dfrm.iloc[dfrm['A'].idxmax()]  # .ix instead of .iloc in older versions of pandas
Out[21]:
A         B         C
i  0.688343  0.188468  0.352213
i  0.879000  0.105039  0.900260
``````

So here a naive use of `idxmax` is not sufficient, whereas the old form of `argmax` would correctly provide the positional location of the max row (in this case, position 9).

This is exactly one of those nasty kinds of bug-prone behaviors in dynamically typed languages that makes this sort of thing so unfortunate, and worth beating a dead horse over. If you are writing systems code and your system suddenly gets used on some data sets that are not cleaned properly before being joined, it's very easy to end up with duplicate row labels, especially string labels like a CUSIP or SEDOL identifier for financial assets. You can't easily use the type system to help you out, and you may not be able to enforce uniqueness on the index without running into unexpectedly missing data.

So you're left with hoping that your unit tests covered everything (they didn't, or more likely no one wrote any tests) -- otherwise (most likely) you're just left waiting to see if you happen to smack into this error at runtime, in which case you probably have to go drop many hours worth of work from the database you were outputting results to, bang your head against the wall in IPython trying to manually reproduce the problem, finally figuring out that it's because `idxmax` can only report the label of the max row, and then being disappointed that no standard function automatically gets the positions of the max row for you, writing a buggy implementation yourself, editing the code, and praying you don't run into the problem again.

• Per github.com/pydata/pandas/issues/2970, argmax is now idxmax. Just leaving the comment for others who stumble onto this question as I did. – Anov Apr 4 '13 at 19:18
• Based on the second-to-last comment there, it looks like `argmin` and `argmax` will remain part of `DataFrame` and the difference is just whether you want the index or the label. `idxmax` will give you the label of the location where a max occurs. `argmax` will give you the index integer itself. – ely Apr 4 '13 at 19:25
• The information provided to explain the difference between `argmax` and `idxmax`, and how to avoid bugs with duplicated index was great ! I haven't notice that until I read your comment in the other answer. Thanks! – tupan Oct 7 '16 at 13:21
• As regards the use you would like to implement, Pandas 0.24.1 points to the following: 'the behavior of `argmax` will be corrected to return the positional maximum in the future. For now, use `series.values.argmax` or `np.argmax(np.array(values))` to get the position of the maximum row.' – Sam Aug 29 at 10:10
• similarly, the `.ix` method of the second example has been renamed into `.iloc` – Ev. Kounis Oct 30 at 7:12

You might also try `idxmax`:

``````In [5]: df = pandas.DataFrame(np.random.randn(10,3),columns=['A','B','C'])

In [6]: df
Out[6]:
A         B         C
0  2.001289  0.482561  1.579985
1 -0.991646 -0.387835  1.320236
2  0.143826 -1.096889  1.486508
3 -0.193056 -0.499020  1.536540
4 -2.083647 -3.074591  0.175772
5 -0.186138 -1.949731  0.287432
6 -0.480790 -1.771560 -0.930234
7  0.227383 -0.278253  2.102004
8 -0.002592  1.434192 -1.624915
9  0.404911 -2.167599 -0.452900

In [7]: df.idxmax()
Out[7]:
A    0
B    8
C    7
``````

e.g.

``````In [8]: df.loc[df['A'].idxmax()]
Out[8]:
A    2.001289
B    0.482561
C    1.579985
``````
• Thanks Wes. Documentation for idxmax() here: pandas.pydata.org/pandas-docs/dev/generated/… – Will Feb 19 '14 at 3:51
• `df.ix[df['A'].idxmax()].values` to grab the array i wanted. still works. – Yojimbo Feb 19 '15 at 18:19
• Note that you need to be careful trying to use the output of `idxmax` as a feeder into `ix` or `loc` as a means to sub-slice the data and/or to obtain the positional location of the max-row. Because you can have duplicates in the `Index` - see the update to my answer for an example. – ely May 11 '15 at 2:39

Both above answers would only return one index if there are multiple rows that take the maximum value. If you want all the rows, there does not seem to have a function. But it is not hard to do. Below is an example for Series; the same can be done for DataFrame:

``````In [1]: from pandas import Series, DataFrame

In [2]: s=Series([2,4,4,3],index=['a','b','c','d'])

In [3]: s.idxmax()
Out[3]: 'b'

In [4]: s[s==s.max()]
Out[4]:
b    4
c    4
dtype: int64
``````
• Thanks! version for DataFrame: `df[df['A'] == df['A'].max()]` – Dennis Golomazov Oct 12 '16 at 20:13
• This is the actually correct answer (the DataFrame version). – gented Apr 27 '17 at 9:58
``````df.iloc[df['columnX'].argmax()]
``````

`argmax()` would provide the index corresponding to the max value for the columnX. `iloc` can be used to get the row of the DataFrame df for this index.

The direct ".argmax()" solution does not work for me.

The previous example provided by @ely

``````>>> import pandas
>>> import numpy as np
>>> df = pandas.DataFrame(np.random.randn(5,3),columns=['A','B','C'])
>>> df
A         B         C
0  1.232853 -1.979459 -0.573626
1  0.140767  0.394940  1.068890
2  0.742023  1.343977 -0.579745
3  2.125299 -0.649328 -0.211692
4 -0.187253  1.908618 -1.862934
>>> df['A'].argmax()
3
>>> df['B'].argmax()
4
>>> df['C'].argmax()
1
``````

returns the following message :

``````FutureWarning: 'argmax' is deprecated, use 'idxmax' instead. The behavior of 'argmax'
will be corrected to return the positional maximum in the future.
Use 'series.values.argmax' to get the position of the maximum now.
``````

So that my solution is :

``````df['A'].values.argmax()
``````
``````mx.iloc[0].idxmax()
``````

This one line of code will give you how to find the maximum value from a row in dataframe, here 'mx' is the dataframe and iloc[0] indicates the 0th index.

The `idmax` of the DataFrame returns the label index of the row with the maximum value and the behavior of `argmax` depends on version of `pandas` (right now it returns a warning). If you want to use the positional index, you can do the following:

``````max_row = df['A'].values.argmax()
``````

or import numpy as np max_row = np.argmax(df['A'].values)

Note that if you use `np.argmax(df['A'])` behaves the same as `df['A'].argmax()`.