How do I use groupby on continuous similar values for a pandas dataframe?

Lets say we have a data frame called df:

``````A   B
1   a
1   b
1   c
2   d
2   e
1   f
1   g
``````

I'd like to use groupby to create the following :

``````1: [a,b,c]
2: [d,e]
1: [f,g]
``````

Currently if I use something on the lines of

``````{k: list(v) for k,v in df.groupby("A")["B"]}
``````

I get

``````1: [a,b,c,f,g]
2: [d,e]
``````

I'd like the separation to be based on the data being both similar and continuous.

You can `groupby` by `Series` which is create by `cumsum` of shifted column `A` by `shift`:

``````print (df["A"].ne(df["A"].shift()).cumsum())
0    1
1    1
2    1
3    2
4    2
5    3
6    3
Name: A, dtype: int32

df = df["B"].groupby(df["A"].ne(df["A"].shift()).cumsum()).apply(list).reset_index()
print (df)
A          B
0  1  [a, b, c]
1  2     [d, e]
2  3     [f, g]
``````

For `dict`:

``````d = {k: list(v) for k,v in df['B'].groupby(df["A"].ne(df["A"].shift()).cumsum())}
print (d)
{1: ['a', 'b', 'c'], 2: ['d', 'e'], 3: ['f', 'g']}
``````

``````d  = df["B"].groupby(df["A"].ne(df["A"].shift()).cumsum()).apply(list).to_dict()
print (d)
{1: ['a', 'b', 'c'], 2: ['d', 'e'], 3: ['f', 'g']}
``````

EDIT1:

``````df  = df["B"].groupby([df['A'], df["A"].ne(df["A"].shift()).cumsum()]).apply(list)
df = df.groupby(level=0).apply(lambda x: x.tolist() if len(x) > 1 else x.iat[0]).to_dict()
print (df)
{1: [['a', 'b', 'c'], ['f', 'g']], 2: ['d', 'e']}
``````
• Nice one! Very elegant! Jun 13 '17 at 18:26
• Thanks Is there a way to modify and use the {k: list(v) for k,v in df.groupby("A")["B"]} structure? Also, I'd like it to show as `A B 1 [a,b,c] 2 [d,e] 1 [f.g]` (last element as 1, not 3). Thanks again.
– Abhi
Jun 13 '17 at 18:48
• But there is problem, becuse in `dict` cannot be duplicates keys try `{1:[2,3], 1:[5,7]}` Jun 13 '17 at 18:54
• ah, in that case, would it be possible to have {1: [ [a,b,c] , [f,g] ], 2:[d,e]} ? as a list of lists, for same but separated keys? Thanks
– Abhi
Jun 13 '17 at 18:56
• Hmm, not so easy, but check last edit. If my answer was helpful, don't forget accept it. Thanks. Jun 13 '17 at 19:06