# Fast way to get the number of NaNs in a column counted from the last valid value in a DataFrame

Say I have a DataFrame like

``````    A       B
0   0.1880  0.345
1   0.2510  0.585
2   NaN     NaN
3   NaN     NaN
4   NaN     1.150
5   0.2300  1.210
6   0.1670  1.290
7   0.0835  1.400
8   0.0418  NaN
9   0.0209  NaN
10  NaN     NaN
11  NaN     NaN
12  NaN     NaN
``````

I want a new DataFrame of the same shape where each entry represents the number of NaNs counted up to its position started from the last valid value as follows

``````    A       B
0   0       0
1   0       0
2   1       1
3   2       2
4   3       0
5   0       0
6   0       0
7   0       0
8   0       1
9   0       2
10  1       3
11  2       4
12  3       5
``````

I wonder if this can be done efficiently by utilizing some of the Pandas/Numpy functions?

• did you try something ? Apr 20, 2017 at 11:18
• @Dadep I can only do it with double loops and I do not really think I am fast enough. Apr 20, 2017 at 11:21
• How many columns do you have typically? How many rows are there typically? Apr 20, 2017 at 12:03
• @Divakar both larger than 1000 but less than 10k usually. Apr 20, 2017 at 12:10

You can use:

``````a = df.isnull()
b = a.cumsum()
print (df1)
A  B
0   0  0
1   0  0
2   1  1
3   2  2
4   3  0
5   0  0
6   0  0
7   0  0
8   0  1
9   0  2
10  1  3
11  2  4
12  3  5
``````

For better understanding:

``````#add NaN where True in a
#forward filling NaN
#replace NaN to 0, cast to int
#substract b to a4
df1 = pd.concat([a,b,a2, a3, a4, a5], axis=1,
keys=['a','b','where','ffill nan','substract','output'])
print (df1)
a         b    where      ffill nan      substract    output
A      B  A  B     A    B         A    B         A  B      A  B
0   False  False  0  0   0.0  0.0       0.0  0.0         0  0      0  0
1   False  False  0  0   0.0  0.0       0.0  0.0         0  0      0  0
2    True   True  1  1   NaN  NaN       0.0  0.0         0  0      1  1
3    True   True  2  2   NaN  NaN       0.0  0.0         0  0      2  2
4    True  False  3  2   NaN  2.0       0.0  2.0         0  2      3  0
5   False  False  3  2   3.0  2.0       3.0  2.0         3  2      0  0
6   False  False  3  2   3.0  2.0       3.0  2.0         3  2      0  0
7   False  False  3  2   3.0  2.0       3.0  2.0         3  2      0  0
8   False   True  3  3   3.0  NaN       3.0  2.0         3  2      0  1
9   False   True  3  4   3.0  NaN       3.0  2.0         3  2      0  2
10   True   True  4  5   NaN  NaN       3.0  2.0         3  2      1  3
11   True   True  5  6   NaN  NaN       3.0  2.0         3  2      2  4
12   True   True  6  7   NaN  NaN       3.0  2.0         3  2      3  5
``````