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 oneliner 
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 stridedviewbased tool 
from skimage.util.shape import view_as_windows
N = 4 # window size
mask = df.Col1.values==1
w = view_as_windows(mask,N)
idx = len(df)(Nmask[N:].argmax())
if mask[N:].any():
mask[idx:idx+N1] = 1
w[mask[:N+1]] = 1
df['Col2'] = mask.view('i1')
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)
# App1 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)
# App2 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)
# App3 from this post
In [35]: %%timeit
...: N = 4 # window size
...: mask = df.Col1.values==1
...: w = view_as_windows(mask,N)
...: idx = len(df)(Nmask[N:].argmax())
...: if mask[N:].any():
...: mask[idx:idx+N1] = 1
...: w[mask[:N+1]] = 1
...: df['Col2_4'] = mask.view('i1')
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)