4

I have a dataframe

 Id  Seqno. Event
 1     2    A 
 1     3    B 
 1     5    A 
 1     6    A 
 1     7    D
 2     0    E
 2     1    A 
 2     2    B 
 2     4    A 
 2     6    B

I want to get all the events happened since the count of recent occurrence of Pattern A = 2 for each ID. Seqno. is a sequence number for each ID. The output will be

 Id  Seqno. Event 
 1     5    A 
 1     6    A 
 1     7    D
 2     1    A 
 2     2    B 
 2     4    A 
 2     6    B

so far i tried,

  y=x.groupby('Id').apply( lambda 
  x:x.eventtype.eq('A').cumsum().tail(2)).reset_index()
  p=y.groupby('Id').apply(lambda x:       
  x.iloc[0]).reset_index(drop=True)
  q= x.reset_index()
  s= pd.merge(q,p,on='Id')
  dd= s[s['index']>=s['level_1']]

I was wondering if there is a good way of doing it.

  • Shouldn't group 2 only include the last 2 rows? Since we are looking for the rows with the second occurrence of A onwards.... correct me if I'm wrong. – cs95 Jan 22 at 21:26
  • Thanks @coldspeed. Actually, for each group we are counting A from the last or most recent event. As soon as our count equals to 2 we will return all the rows( including the one with second occurrence) until the end(most recent) event of that group. – No_body Jan 22 at 21:31
  • 1
    The logic still doesn't make sense. For Id 2, you are including row with seq no 1 where count of A is still 1. – Vaishali Jan 22 at 21:34
  • 1
    Yes, @Vaishali, exactly. Still does not make sense to me, OP. – cs95 Jan 22 at 21:35
  • 1
    It's second occurrence counting from the bottom of the group up, then returning everything below – ALollz Jan 22 at 21:38
3

Use groupby with cumsum, subtract it from the count of A's per group, and filter:

g = df['Event'].eq('A').groupby(df['Id'])
df[(g.transform('sum') - g.cumsum()).le(1)]

   Id  Seqno. Event
2   1       5     A
3   1       6     A
4   1       7     D
6   2       1     A
7   2       2     B
8   2       4     A
9   2       6     B
2

Thanks to cold ,ALollz and Vaishali, via the explanation (from the comment) using groupby with cumcount get the count , then we using reindex and ffill

s=df.loc[df.Event=='A'].groupby('Id').cumcount(ascending=False).add(1).reindex(df.index)
s.groupby(df['Id']).ffill()
Out[57]: 
0    3.0
1    3.0
2    2.0
3    1.0
4    1.0
5    NaN
6    2.0
7    2.0
8    1.0
9    1.0
dtype: float64
yourdf=df[s.groupby(df['Id']).ffill()<=2]
yourdf
Out[58]: 
   Id  Seqno. Event
2   1       5     A
3   1       6     A
4   1       7     D
6   2       1     A
7   2       2     B
8   2       4     A
9   2       6     B

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