Here's a vectorized one with some scaling trickery and leveraging convolution to find the required pattern -

```
# Get the col in context and scale it to the three strings to form an ID array
a = df['Event']
id_ar = (a=='ABD') + 2*(a=='B') + 3*(a=='CDE')
# Mask of those specific strings and hence extract the corresponding masked df
mask = id_ar>0
df1 = df[mask]
# Get pattern col with 1s at places with the pattern found, 0s elsewhere
df1['Pattern'] = (np.convolve(id_ar[mask],[9,1],'same')==28).astype(int)
# Groupby Id col and sum the pattern col for final output
out = df1.groupby(['Id'])['Pattern'].sum()
```

That `convolution`

part might be a bit tricky. The idea there is to use `id_ar`

that has values of `1`

, `2`

and `3`

corresponding to strings `'ABD'`

,'`'B'`

and `'CDE'`

. We are looking for `1`

followed by `3`

, so using the convolution with a kernel `[9,1]`

would result in `1*1 + 3*9 = 28`

as the convolution sum for the window that has `'ABD'`

and then `'CDE'`

. Hence, we look for the conv. sum of `28`

for the match. For the case of `'ABD'`

followed by '`'B'`

and then `'CDE'`

, conv. sum would be different, hence would be filtered out.

Sample run -

1) Input dataframe :

```
In [377]: df
Out[377]:
Id Event SeqNo
0 1 A 1
1 1 B 2
2 1 C 3
3 1 ABD 4
4 1 B 5
5 1 C 6
6 1 A 7
7 1 CDE 8
8 1 D 9
9 1 B 10
10 1 ABD 11
11 1 D 12
12 1 B 13
13 2 A 1
14 2 B 2
15 2 C 3
16 2 ABD 4
17 2 A 5
18 2 C 6
19 2 A 7
20 2 CDE 8
21 2 D 9
22 2 B 10
23 2 ABD 11
24 2 D 12
25 2 B 13
26 2 CDE 14
27 2 A 15
```

2) Intermediate filtered o/p (look at column `Pattern`

for the presence of the reqd. pattern) :

```
In [380]: df1
Out[380]:
Id Event SeqNo Pattern
1 1 B 2 0
3 1 ABD 4 0
4 1 B 5 0
7 1 CDE 8 0
9 1 B 10 0
10 1 ABD 11 0
12 1 B 13 0
14 2 B 2 0
16 2 ABD 4 0
20 2 CDE 8 1
22 2 B 10 0
23 2 ABD 11 0
25 2 B 13 0
26 2 CDE 14 0
```

3) Final o/p :

```
In [381]: out
Out[381]:
Id
1 0
2 1
Name: Pattern, dtype: int64
```

`ABD`

s before one`CDE`

? – Jondiedoop Feb 6 at 17:23