37

I want to split the following dataframe based on column ZZ

df = 
        N0_YLDF  ZZ        MAT
    0  6.286333   2  11.669069
    1  6.317000   6  11.669069
    2  6.324889   6  11.516454
    3  6.320667   5  11.516454
    4  6.325556   5  11.516454
    5  6.359000   6  11.516454
    6  6.359000   6  11.516454
    7  6.361111   7  11.516454
    8  6.360778   7  11.516454
    9  6.361111   6  11.516454

As output, I want a new dataframe with the 'N0_YLDF' column split into 4, one new column for each unique value of ZZ. How do I go about this? I can do groupby, but do not know what to do with the grouped object.

77
gb = df.groupby('ZZ')    
[gb.get_group(x) for x in gb.groups]
8

There is another alternative as the groupby returns a generator we can simply use a list-comprehension to retrieve the 2nd value (the frame).

dfs = [x for _, x in df.groupby('ZZ')]
2

In R there is a dataframe method called split. This is for all the R users out there:

def split(df, group):
     gb = df.groupby(group)
     return [gb.get_group(x) for x in gb.groups]
  • shouldn't you put it all into a series? ending with pd.Series(...) – Adam May 23 '17 at 19:47
  • This is amazing. Is there an easy way to get the key which identifies of the group, so I can return a list of tuples, like [ (key, gb.get_group(x) ) for x in gb.group]? – rsmith54 Aug 22 '17 at 19:47
  • I found this, which makes this easy: stackoverflow.com/questions/42513049/… – rsmith54 Aug 22 '17 at 19:59
  • 2
    Just to provide an answer to the comment (which is explained in more detail in the link: [(key, gb.get_group(key)) for key in gb.groups] – de1 Nov 22 '17 at 17:24
0

Store them in a dict, which allows you access to the group DataFrames based on the group keys.

d = dict(tuple(df.groupby('ZZ')))
d[6]

#    N0_YLDF  ZZ        MAT
#1  6.317000   6  11.669069
#2  6.324889   6  11.516454
#5  6.359000   6  11.516454
#6  6.359000   6  11.516454
#9  6.361111   6  11.516454

If you need only a subset of the DataFrame, in this case just the 'NO_YLDF' Series, you can modify the dict comprehension.

d = dict((idx, gp['N0_YLDF']) for idx, gp in df.groupby('ZZ'))
d[6]
#1    6.317000
#2    6.324889
#5    6.359000
#6    6.359000
#9    6.361111
#Name: N0_YLDF, dtype: float64

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