# Forward fill column on condition [closed]

My dataframe looks like this;

``````df = pd.DataFrame({'Col1':[0,1,0,0,0,0,0,0,1,0,0,0,0,0,0,0,0,1,0,0,0]
,'Col2':[0,0,0,0,0,0,0,0,0,0,0,0,0,0,0,0,0,0,0,0,0]})
``````

If col1 contains the value 1 in column 2 I want to forward fill with 1 n number of times. For example, if n = 4 then I would need the result to look like this.

``````df = pd.DataFrame({'Col1':[0,1,0,0,0,0,0,0,1,0,0,0,0,0,0,0,0,1,0,0,0]
,'Col2':[0,1,1,1,1,0,0,0,1,1,1,1,0,0,0,0,0,1,1,1,1]})
``````

I think I could do this using a for loop with a counter that resets every time a condition occurs but is there a faster way to produce the same result?

Thanks!

Approach #1 : A NumPy based one with `1D convolution` -

``````N = 4 # window size
K = np.ones(N,dtype=bool)
df['Col2'] = (np.convolve(df.Col1,K)[:-N+1]>0).view('i1')
``````

A more compact one-liner -

``````df['Col2'] = (np.convolve(df.Col1,[1]*N)[:-N+1]>0).view('i1')
``````

Approach #2 : Here's one with `SciPy's binary_dilation` -

``````from scipy.ndimage.morphology import binary_dilation

N = 4 # window size
K = np.ones(N,dtype=bool)
df['Col2'] = binary_dilation(df.Col1,K,origin=-(N//2)).view('i1')
``````

Approach #3 : Squeeze out the best off NumPy with it's strided-view-based tool -

``````from skimage.util.shape import view_as_windows

N = 4 # window size
``````

### Benchmarking

Setup with given sample scaled up by `10,000x` -

``````In [67]: df = pd.DataFrame({'Col1':[0,1,0,0,0,0,0,0,1,0,0,0,0,0,0,0,0,1,0,0,0]
...:                    ,'Col2':[0,0,0,0,0,0,0,0,0,0,0,0,0,0,0,0,0,0,0,0,0]})
...:
...: df = pd.concat([df]*10000)
...: df.index = range(len(df.index))
``````

Timings

``````# @jezrael's soln
In [68]: %%timeit
...: n = 3
...: df['Col2_1'] = df['Col1'].where(df['Col1'].eq(1)).ffill(limit=n).fillna(df['Col1']).astype(int)
5.15 ms ± 25.3 µs per loop (mean ± std. dev. of 7 runs, 100 loops each)

# App-1 from this post
In [72]: %%timeit
...: N = 4 # window size
...: K = np.ones(N,dtype=bool)
...: df['Col2_2'] = (np.convolve(df.Col1,K)[:-N+1]>0).view('i1')
1.41 ms ± 20.9 µs per loop (mean ± std. dev. of 7 runs, 1000 loops each)

# App-2 from this post
In [70]: %%timeit
...: N = 4 # window size
...: K = np.ones(N,dtype=bool)
...: df['Col2_3'] = binary_dilation(df.Col1,K,origin=-(N//2)).view('i1')
2.92 ms ± 13.2 µs per loop (mean ± std. dev. of 7 runs, 100 loops each)

# App-3 from this post
In [35]: %%timeit
...: N = 4 # window size
1.22 ms ± 3.02 µs per loop (mean ± std. dev. of 7 runs, 1000 loops each)

# @yatu's soln
In [71]: %%timeit
...: n = 4
...: ix = (np.flatnonzero(df.Col1 == 1) + np.arange(n)[:,None]).ravel('F')
...: df.loc[ix, 'Col2_5'] = 1
7.55 ms ± 32 µs per loop (mean ± std. dev. of 7 runs, 100 loops each)
``````

For general solution replace non `1` values to missing values by `Series.where` and forward filling `1` values with limit parameter, last replace missing values by originals:

``````n = 3
df['Col2'] = df['Col1'].where(df['Col1'].eq(1)).ffill(limit=n).fillna(df['Col1']).astype(int)

print (df)
Col1  Col2
0      0     0
1      1     1
2      0     1
3      0     1
4      0     1
5      0     0
6      0     0
7      0     0
8      1     1
9      0     1
10     0     1
11     0     1
12     0     0
13     0     0
14     0     0
15     0     0
16     0     0
17     1     1
18     0     1
19     0     1
20     0     1
``````

Here's a NumPy based approach using `np.flatnonzero` to obtain the indices where `Col1` is 1 and taking the broadcast `sum` with an arange up to `n`:

``````n = 4
ix = (np.flatnonzero(df.Col1 == 1) + np.arange(n)[:,None]).ravel('F')
df.loc[ix, 'Col2'] = 1
``````

``````print(df)

Col1  Col2
0      0     0
1      1     1
2      0     1
3      0     1
4      0     1
5      0     0
6      0     0
7      0     0
8      1     1
9      0     1
10     0     1
11     0     1
12     0     0
13     0     0
14     0     0
15     0     0
16     0     0
17     1     1
18     0     1
19     0     1
20     0     1
``````

Something with `reindex`

``````N=4
s=df.loc[df.Col1==1,'Col1']
idx=s.index
s=s.reindex(idx.repeat(N))
s.index=(idx.values+np.arange(N)[:,None]).ravel('F')

df.Col2.update(s)
df
Col1  Col2
0      0     0
1      1     1
2      0     1
3      0     1
4      0     1
5      0     0
6      0     0
7      0     0
8      1     1
9      0     1
10     0     1
11     0     1
12     0     0
13     0     0
14     0     0
15     0     0
16     0     0
17     1     1
18     0     1
19     0     1
20     0     1
``````