Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

Suppose I have the following DataFrame:

   a         b
0  A  1.516733
1  A  0.035646
2  A -0.942834
3  B -0.157334
4  A  2.226809
5  A  0.768516
6  B -0.015162
7  A  0.710356
8  A  0.151429

And I need to group it given the "edge B"; that means the groups will be:

   a         b
0  A  1.516733
1  A  0.035646
2  A -0.942834
3  B -0.157334

4  A  2.226809
5  A  0.768516
6  B -0.015162

7  A  0.710356
8  A  0.151429

That is. any time I find a 'B' in the column 'a' I want to split my DataFrame.

My current solution is:

#create the dataframe
s = pd.Series(['A','A','A','B','A','A','B','A','A'])
ss = pd.Series(np.random.randn(9))
dff = pd.DataFrame({"a":s,"b":ss})

#my solution
count  = 0
ls = []
for i in s:
    if i=="A":
        ls.append(count)
    else:
        ls.append(count)
        count+=1
dff['grpb']=ls

and I got the dataframe:

    a   b           grpb
0   A   1.516733    0
1   A   0.035646    0
2   A   -0.942834   0
3   B   -0.157334   0
4   A   2.226809    1
5   A   0.768516    1
6   B   -0.015162   1
7   A   0.710356    2
8   A   0.151429    2

Which I can then split with dff.groupby('grpb').

Is there a more efficient way to do this using pandas functions?

share|improve this question

How about:

df.groupby((df.a == "B").shift(1).fillna(0).cumsum())

For example:

>>> df
   a         b
0  A -1.957118
1  A -0.906079
2  A -0.496355
3  B  0.552072
4  A -1.903361
5  A  1.436268
6  B  0.391087
7  A -0.907679
8  A  1.672897
>>> gg = list(df.groupby((df.a == "B").shift(1).fillna(0).cumsum()))
>>> pprint.pprint(gg)
[(0,
     a         b
0  A -1.957118
1  A -0.906079
2  A -0.496355
3  B  0.552072),
 (1,    a         b
4  A -1.903361
5  A  1.436268
6  B  0.391087),
 (2,    a         b
7  A -0.907679
8  A  1.672897)]

(I didn't bother getting rid of the indices; you could use [g for k, g in df.groupby(...)] if you liked.)

share|improve this answer

An alternative is:

In [36]: dff
Out[36]:
   a         b
0  A  0.689785
1  A -0.374623
2  A  0.517337
3  B  1.549259
4  A  0.576892
5  A -0.833309
6  B -0.209827
7  A -0.150917
8  A -1.296696

In [37]: dff['grpb'] = np.NaN

In [38]: breaks = dff[dff.a == 'B'].index

In [39]: dff['grpb'][breaks] = range(len(breaks))

In [40]: dff.fillna(method='bfill').fillna(len(breaks))
Out[40]:
   a         b  grpb
0  A  0.689785     0
1  A -0.374623     0
2  A  0.517337     0
3  B  1.549259     0
4  A  0.576892     1
5  A -0.833309     1
6  B -0.209827     1
7  A -0.150917     2
8  A -1.296696     2

Or using itertools to create 'grpb' is an option too.

share|improve this answer

here's a oneliner:

zip(*dff.groupby(pd.rolling_median((1*(dff['a']=='B')).cumsum(),3,True)))[-1]

[   1         2
0  A  1.516733
1  A  0.035646
2  A -0.942834
3  B -0.157334,
    1         2
4  A  2.226809
5  A  0.768516
6  B -0.015162,
    1         2
7  A  0.710356
8  A  0.151429]
share|improve this answer
    def vGroup(dataFrame, edgeCondition, groupName='autoGroup'):
    groupNum = 0
    dataFrame[groupName] = ''

    #loop over each row
    for inx, row in dataFrame.iterrows():
            if edgeCondition[inx]:
                dataFrame.ix[inx, groupName] = 'edge'
                groupNum += 1
            else:
                dataFrame.ix[inx, groupName] = groupNum

    return dataFrame[groupName]

vGroup(df, df[0] == '  ')
share|improve this answer
    
use iterrows() to loop over each row; then you can do whatever you want. I think this methods is more flexible. – Jerry T Apr 28 '13 at 1:26

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.