# Element-wise Maximum of Two DataFrames Ignoring NaNs

I have two dataframes (df1 and df2) that each have the same rows and columns. I would like to take the maximum of these two dataframes, element-by-element. In addition, the result of any element-wise maximum with a number and NaN should be the number. The approach I have implemented so far seems inefficient:

``````def element_max(df1,df2):
import pandas as pd
cond = df1 >= df2
res = pd.DataFrame(index=df1.index, columns=df1.columns)
res[(df1==df1)&(df2==df2)&(cond)]  = df1[(df1==df1)&(df2==df2)&(cond)]
res[(df1==df1)&(df2==df2)&(~cond)] = df2[(df1==df1)&(df2==df2)&(~cond)]
res[(df1==df1)&(df2!=df2)&(~cond)] = df1[(df1==df1)&(df2!=df2)]
res[(df1!=df1)&(df2==df2)&(~cond)] = df2[(df1!=df1)&(df2==df2)]
return res
``````

Any other ideas? Thank you for your time.

``````import scipy as sp
import pandas as pd

A = pd.DataFrame([[1., 2., 3.]])
B = pd.DataFrame([[3., sp.nan, 1.]])

pd.concat([A, B]).max(level=0)
#
#           0    1    2
#      0  3.0  2.0  3.0
#
``````

You can use `where` to test your df against another df, where the condition is `True`, the values from `df` are returned, when false the values from `df1` are returned. Additionally in the case where `NaN` values are in `df1` then an additional call to `fillna(df)` will use the values from `df` to fill those `NaN` and return the desired df:

``````In :
df = pd.DataFrame(np.random.randn(5,3))
df.iloc[1,2] = np.NaN
print(df)
df1 = pd.DataFrame(np.random.randn(5,3))
df1.iloc[0,0] = np.NaN
print(df1)

0         1         2
0  2.671118  1.412880  1.666041
1 -0.281660  1.187589       NaN
2 -0.067425  0.850808  1.461418
3 -0.447670  0.307405  1.038676
4 -0.130232 -0.171420  1.192321
0         1         2
0       NaN -0.244273 -1.963712
1 -0.043011 -1.588891  0.784695
2  1.094911  0.894044 -0.320710
3 -1.537153  0.558547 -0.317115
4 -1.713988 -0.736463 -1.030797

In :
df.where(df > df1, df1).fillna(df)

Out:
0         1         2
0  2.671118  1.412880  1.666041
1 -0.043011  1.187589  0.784695
2  1.094911  0.894044  1.461418
3 -0.447670  0.558547  1.038676
4 -0.130232 -0.171420  1.192321
``````