I want to iterate over groups that are grouped by strings or dates.
df = pd.DataFrame({'A': ['foo', 'bar'] * 3,
'B': ['me', 'you', 'me'] * 2,
'C': [5, 2, 3, 4, 6, 9]})
groups = df.groupby('A')
For eg in this code, I have groups by their names 'foo' and 'bar', and I can loop over them using;
for name, group in groups:
print name
My problem is I need to run another loop inside this loop and everytime I need to call different set of groups. like (assume groups has size n)
for name,group in groups:
for name1 in range(name, name + 9): # + 9 to get first 9 groups for every iteration`
Since, name is a string I am unable to do that. In short I just want a method by which I can access groups by numbers so that I can easily call required groups for computation. Something like
groups = df.group('A')
for i in range(0,n):
print group(i)[] + group(i+1)[]
so if I have following groups [g1,g2,g3,g4,g5], i want to iteratively call them in pairs like [g1,g2], [g2,g3], [g3,g4] .... and take the intersection of the 2 groups of series everytime. I am looking for way to call groups [g1,g2,..g5] by index or some no. so that I can use them for loop operations. Currently only way I know to call groups is through the names of the group, as mentioned above in example 'foo' and 'bar'. I want power to do operations such as:
for name,group in groups-1:
print gb.get_group(name)
print gb.get_group(name+1)
I know this might be a simple problem, but I have been struggling for this part since a while. I would appreciate any kind of help.