212

I have a DataFrame like this one:

Communications and Search   Business    General Lifestyle
0   0.745763    0.050847    0.118644    0.084746
0   0.333333    0.000000    0.583333    0.083333
0   0.617021    0.042553    0.297872    0.042553
0   0.435897    0.000000    0.410256    0.153846
0   0.358974    0.076923    0.410256    0.153846

I want to create a new column comprised of the column labels of each row’s maximum value. The desired output is like this:

Communications and Search   Business    General Lifestyle  Max
0   0.745763    0.050847    0.118644    0.084746           Communications 
0   0.333333    0.000000    0.583333    0.083333           Business  
0   0.617021    0.042553    0.297872    0.042553           Communications 
0   0.435897    0.000000    0.410256    0.153846           Communications 
0   0.358974    0.076923    0.410256    0.153846           Business 
1
  • This answer handles cases where the max value may not be unique (works if they are unique as well).
    – cottontail
    Nov 16, 2022 at 9:52

5 Answers 5

303

You can use idxmax with axis=1 to find the column with the greatest value on each row:

>>> df.idxmax(axis=1)
0    Communications
1          Business
2    Communications
3    Communications
4          Business
dtype: object

To create the new column 'Max', use df['Max'] = df.idxmax(axis=1).

To find the row index at which the maximum value occurs in each column, use df.idxmax() (or equivalently df.idxmax(axis=0)).

2
  • How can I procede, when I have multiple columns with same max value?
    – Rockbar
    Oct 20, 2023 at 11:58
  • @Rockbar Please ask a new question and make a reproducible pandas example including desired output, or at least an idea if you're not sure what would work best.
    – wjandrea
    Dec 12, 2023 at 3:49
57

And if you want to produce a column containing the name of the column with the maximum value but considering only a subset of columns then you use a variation of @ajcr's answer:

df['Max'] = df[['Communications','Business']].idxmax(axis=1)
0
14

You could apply on dataframe and get argmax() of each row via axis=1

In [144]: df.apply(lambda x: x.argmax(), axis=1)
Out[144]:
0    Communications
1          Business
2    Communications
3    Communications
4          Business
dtype: object

Here's a benchmark to compare how slow apply method is to idxmax() for len(df) ~ 20K

In [146]: %timeit df.apply(lambda x: x.argmax(), axis=1)
1 loops, best of 3: 479 ms per loop

In [147]: %timeit df.idxmax(axis=1)
10 loops, best of 3: 47.3 ms per loop
0
6

Another solution is to flag the position of the maximum values of each row and get the corresponding column names. In particular, this solution works well if multiple columns contain the maximum value for some rows and you want to return all column names with the maximum value for each row:1

case1

Code:

# look for the max values in each row
mxs = df.eq(df.max(axis=1), axis=0)
# join the column names of the max values of each row into a single string
df['Max'] = mxs.dot(mxs.columns + ', ').str.rstrip(', ')

A slight variation: If you want to pick one column randomly when multiple columns contain the maximum value: case2

Code:

mxs = df.eq(df.max(axis=1), axis=0)
df['Max'] = mxs.where(mxs).stack().groupby(level=0).sample(n=1).index.get_level_values(1)

You can also do this for specific columns by selecting the columns:

# for column names of max value of each row
cols = ['Communications', 'Search', 'Business']
mxs = df[cols].eq(df[cols].max(axis=1), axis=0)
df['max among cols'] = mxs.dot(mxs.columns + ', ').str.rstrip(', ')

1: idxmax(1) returns only the first column name with the max value if the max value is the same for multiple columns, which may not be desirable depending on the use case. This solution generalizes idxmax(1); in particular, if the max values are unique in each row, it matches the idxmax(1) solution.

2
  • that's a very neat solution, thank you! How would I introduce (1) either random tie breaks (pick one column randomly when 2 or more columns contain the maximum value) OR (2) according to the maximum value in another range of columns, e.g. ['Comm..1', 'Sea..1', 'Busi..1'], and ties broken according to the maximum of ['Comm..2', 'Sea..2', 'Busi..2'] (i.e. if Comm..1 and Sea..1 contain the max value between ['Comm..1', 'Sea..1', 'Busi..1'] in a row, check whether Comm..2 or Sea..2 contain a higher value in that row.
    – Ivo
    Jan 11, 2023 at 12:38
  • 1
    @Ivo I added a solution for case (1). Case (2) requires a drastically different solution imo, so you might want to ask a new question for it. Cheers.
    – cottontail
    Jan 11, 2023 at 19:08
1

Using numpy argmax is blazing fast. I've tested in a dataframe with 3,744,965 rows and it takes 103ms.

%timeit df.idxmax(axis=1)
7.67 s ± 28.2 ms per loop (mean ± std. dev. of 7 runs, 1 loop each)

%timeit df.columns[df.to_numpy().argmax(axis=1)]
103 ms ± 355 µs per loop (mean ± std. dev. of 7 runs, 10 loops each)

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