2

I'd like to conditionally replace values, row-by-row in a pandas dataframe so that max(row) will remain, while all other values in the row will be set to None. My intuition goes towards apply() but I am not sure if that's the right choice, or how to do it.

Example (but there may be multiple columns):

tmp= pd.DataFrame({
'A': pd.Series([1,2,3,4,5,6,7,8,9,10], index=range(0,10)),
'B': pd.Series([3,4,1,33,10,9,7,3,10,10], index=range(0,10))
} )

tmp
    A   B
0   1   3
1   2   4
2   3   1
3   4   33
4   5   10
5   6   9
6   7   7
7   8   3
8   9   10
9   10  10

Wanted output:

somemagic(tmp)
    A       B
0   None    3
1   None    4
2   3       None
3   None    33
4   None    10
5   None    9
6   7       None    # on tie I don't really care which one is set to None
7   8       None
8   None    10
9   10      None    # on tie I don't really care which one is set to None

Any suggestions on how to achieve that?

2

You can compared DataFrame values by eq with max:

print (tmp[tmp.eq(tmp.max(axis=1), axis=0)])

mask = (tmp.eq(tmp.max(axis=1), axis=0))
print (mask)
       A      B
0  False   True
1  False   True
2   True  False
3  False   True
4  False   True
5  False   True
6   True   True
7   True  False
8  False   True
9   True   True

df = (tmp[mask])
print (df)
      A     B
0   NaN   3.0
1   NaN   4.0
2   3.0   NaN
3   NaN  33.0
4   NaN  10.0
5   NaN   9.0
6   7.0   7.0
7   8.0   NaN
8   NaN  10.0
9  10.0  10.0

and then you can add NaN if values in columns are equal:

mask = (tmp.eq(tmp.max(axis=1), axis=0))
mask['B'] = mask.B & (tmp.A != tmp.B)
print (mask)
       A      B
0  False   True
1  False   True
2   True  False
3  False   True
4  False   True
5  False   True
6   True  False
7   True  False
8  False   True
9   True  False

df = (tmp[mask])
print (df)
      A     B
0   NaN   3.0
1   NaN   4.0
2   3.0   NaN
3   NaN  33.0
4   NaN  10.0
5   NaN   9.0
6   7.0   NaN
7   8.0   NaN
8   NaN  10.0
9  10.0   NaN

Timings (len(df)=10):

In [234]: %timeit (tmp[tmp.eq(tmp.max(axis=1), axis=0)])
1000 loops, best of 3: 974 µs per loop

In [235]: %timeit (gh(tmp))
The slowest run took 4.32 times longer than the fastest. This could mean that an intermediate result is being cached.
1000 loops, best of 3: 1.64 ms per loop

(len(df)=100k):

In [244]: %timeit (tmp[tmp.eq(tmp.max(axis=1), axis=0)])
100 loops, best of 3: 7.42 ms per loop

In [245]: %timeit (gh(t1))
1 loop, best of 3: 8.81 s per loop

Code for timings:

import pandas as pd

tmp= pd.DataFrame({
'A': pd.Series([1,2,3,4,5,6,7,8,9,10], index=range(0,10)),
'B': pd.Series([3,4,1,33,10,9,7,3,10,10], index=range(0,10))
} )


tmp = pd.concat([tmp]*10000).reset_index(drop=True)
t1 = tmp.copy()

print (tmp[tmp.eq(tmp.max(axis=1), axis=0)])


def top(row):
    data = row.tolist()
    return [d if d == max(data) else None for d in data]

def gh(tmp1):
    return tmp1.apply(top, axis=1)

print (gh(t1))
2
  • I had exactly same in my mind: tmp[tmp.eq(tmp.max(axis=1), axis=0)] :) – Gurupad Hegde May 30 '16 at 12:11
  • Thanks guys! Much appreciated! :) – Ruslan May 30 '16 at 12:14
2

I would suggest you to use apply(). You can use it as below:

In [1]: import pandas as pd

In [2]: tmp= pd.DataFrame({
   ...: 'A': pd.Series([1,2,3,4,5,6,7,8,9,10], index=range(0,10)),
   ...: 'B': pd.Series([3,4,1,33,10,9,7,3,10,10], index=range(0,10))
   ...: } )

In [3]: tmp
Out[3]: 
    A   B
0   1   3
1   2   4
2   3   1
3   4  33
4   5  10
5   6   9
6   7   7
7   8   3
8   9  10
9  10  10

In [4]: def top(row):
   ...:         data = row.tolist()
   ...:         return [d if d == max(data) else None for d in data]
   ...: 

In [5]: df2 = tmp.apply(top, axis=1)

In [6]: df2
Out[6]: 
    A   B
0 NaN   3
1 NaN   4
2   3 NaN
3 NaN  33
4 NaN  10
5 NaN   9
6   7   7
7   8 NaN
8 NaN  10
9  10  10
2
  • Thanks!!! This is exactly what I was looking for. And is can work on any number of columns as well :) – Ruslan May 30 '16 at 11:56
  • I think using apply is slower as vectorized solutions, see timings in my solution. – jezrael May 30 '16 at 12:00

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.