This question is motivated by an answer I gave a while ago.

Let's say I have a dataframe like this

import numpy as np
import pandas as pd

df = pd.DataFrame({'a': [1, 2, np.nan], 'b': [3, np.nan, 10], 'c':[np.nan, 5, 34]})

     a     b     c
0  1.0   3.0   NaN
1  2.0   NaN   5.0
2  NaN  10.0  34.0

and I want to replace the NaN by the maximum of the row, I can do

df.apply(lambda row: row.fillna(row.max()), axis=1)

which gives me the desired output

      a     b     c
0   1.0   3.0   3.0
1   2.0   5.0   5.0
2  34.0  10.0  34.0

When I, however, use

df.apply(lambda row: row.fillna(max(row)), axis=1)

for some reason it is replaced correctly only in two of three cases:

     a     b     c
0  1.0   3.0   3.0
1  2.0   5.0   5.0
2  NaN  10.0  34.0

Indeed, if I check by hand

max(df.iloc[0, :])
max(df.iloc[1, :])
max(df.iloc[2, :])

Then it prints


When doing

df.iloc[0, :].max()
df.iloc[1, :].max()
df.iloc[2, :].max()

it prints the expected


My question is why max() fails in 1 of three cases but not in all 3. Why are the NaN sometimes ignored and sometimes not?

  • The only thing that comes to mind is that in the third row the nan is the first entry, while in the other rows it comes later. So maybe it depends on the order in which max handles these values... Dec 13, 2017 at 8:20
  • It is. I just checked, you don't even need pandas for this behaviour, you can just type max([1,2,np.nan]) and max([np.nan,2,3]). Dec 13, 2017 at 8:23
  • 2
    Here it may be a good place to remember that a np.nanmax() exists too and it ignores np.nan altogether.
    – norok2
    Jun 29, 2022 at 14:35

6 Answers 6


The reason is that max works by taking the first value as the "max seen so far", and then checking each other value to see if it is bigger than the max seen so far. But nan is defined so that comparisons with it always return False --- that is, nan > 1 is false but 1 > nan is also false.

So if you start with nan as the first value in the array, every subsequent comparison will be check whether some_other_value > nan. This will always be false, so nan will retain its position as "max seen so far". On the other hand, if nan is not the first value, then when it is reached, the comparison nan > max_so_far will again be false. But in this case that means the current "max seen so far" (which is not nan) will remain the max seen so far, so the nan will always be discarded.


In the first case you are using the numpy max function, which is aware of how to handle numpy.nan.

In the second case you are using the builtin max function from python. This is not aware of how to handle numpy.nan. Presumably this effect is due to the fact that any comparison (>, <, == etc.) of numpy.nan with a float leads to False. An obvious way to implement max would be to iterate the iterable (the row in this case) and check if each value is larger than the previous, and store it as the maximum value if so. Since this larger than comparison will always be False when one of the compared values is numpy.nan, whether the recorded maximum is the number you want or numpy.nan depends entirely on whether the first value is numpy.nan or not.


This is due to the ordering of the elements in the list. First off, if you type

max([1, 2, np.nan])

The result is 2, while

max([np.nan, 2, 3])

gives np.nan. The reason for this is that the max function goes through the values in the list one by one with a comparison like this:

if a > b

now if we look at what we get when comparing to nan, both np.nan > 2 and 1 > np.nan both give False, so in one case the running maximum is replaced with nan and in the other it is not.


the two are different: max() vs df.max().

max(): python built-in function, it must be a non-empty iterable. Check here: https://docs.python.org/2/library/functions.html#max

While pandas dataframe -- df.max(skipna=..), there is a parameter called skipna, the default value is True, which means the NA/null values are excluded. Check here: https://pandas.pydata.org/pandas-docs/stable/generated/pandas.DataFrame.max.html

  • This would then still not explain why not always nan is returned but it is well explained in the other answers...
    – Cleb
    Dec 13, 2017 at 8:31

If possibly it's inf issue, try to replace it as well as nan.

df[column] = df[column].replace([np.inf, -np.inf], 0.0)
df[column] = df[column].replace([np.nan, -np.nan], 0.0)

Using numpy.nanmax(list) results in the exclusion of the NaNs.

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