15

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.

0

2 Answers 2

19

A more readable way to do this in recent versions of pandas is concat-and-max:

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 
#
18

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 [178]:
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 [179]:
df.where(df > df1, df1).fillna(df)

Out[179]:
          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
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