If want check ?
values only in all columns:
df1 = df.loc[:, (df.astype(str) == '?').any()]
More general if want check all possible substrings ?
in all columns:
df2 = df.loc[:, df.apply(lambda x: x.astype(str).str.contains('\?')).any()]
EDIT:
df = pd.DataFrame({'A':list('abcdef'),
'B':[4,5,4,5,5,4],
'C':[7,8,9,'?',2,3],
'D':['?',3,5,7,1,0],
'E':[5,3,6,9,2,'?'],
'F':list('aaabbb')})
print (df)
A B C D E F
0 a 4 7 ? 5 a
1 b 5 8 3 3 a
2 c 4 9 5 6 a
3 d 5 ? 7 9 b
4 e 5 2 1 2 b
5 f 4 3 0 ? b
You can create boolean DataFrame
first and then check any
True per rows and per columns for filtering:
mask = df.apply(lambda x: x.astype(str).str.contains('\?'))
df2 = df.loc[mask.any(axis=1), mask.any()]
print (df2)
C D E
0 7 ? 5
3 ? 7 9
5 3 0 ?
Detail:
print (mask)
A B C D E F
0 False False False True False False
1 False False False False False False
2 False False False False False False
3 False False True False False False
4 False False False False False False
5 False False False False True False
print (mask.any(axis=1))
0 True
1 False
2 False
3 True
4 False
5 True
dtype: bool
print (mask.any())
A False
B False
C True
D True
E True
F False
dtype: bool