# How to do a groupby of a list of lists

I have a list that looks like this:

``````list=[
('2013-01-04', u'crid2557171372', 1),
('2013-01-04', u'crid9904536154', 719677),
('2013-01-04', u'crid7990924609', 577352),
('2013-01-04', u'crid7990924609', 399058),
('2013-01-04', u'crid9904536154', 385260),
('2013-01-04', u'crid2557171372', 78873)
]
``````

Issue is the second col with dup id's but different counts. I need to have a list that will roll up the counts so the list looks like this. Is there a group by cluase in python?

``````list=[
('2013-01-04', u'crid9904536154', 1104937),
('2013-01-04', u'crid7990924609', 976410),
('2013-01-04', u'crid2557171372', 78874)
]
``````
-

Let's name your list `a` and not `list` (`list` is a very useful function in Python and we don't want to mask it):

``````import itertools as it

a = [('2013-01-04', u'crid2557171372', 1),
('2013-01-04', u'crid9904536154', 719677),
('2013-01-04', u'crid7990924609', 577352),
('2013-01-04', u'crid7990924609', 399058),
('2013-01-04', u'crid9904536154', 385260),
('2013-01-04', u'crid2557171372', 78873)]

b = []
for k,v in it.groupby(sorted(a, key=lambda x: x[:2]), key=lambda x: x[:2]):
b.append(k + (sum(x[2] for x in v),))
``````

`b` is now:

``````[('2013-01-04', u'crid2557171372', 78874),
('2013-01-04', u'crid7990924609', 976410),
('2013-01-04', u'crid9904536154', 1104937)]
``````
-
grp = lambda x: x[1] ? <-- What is it? –  Adem Öztaş Jan 8 at 9:23
@AdemÖztaş - removed, we don't need it –  eumiro Jan 8 at 9:24

I don't think there's any built-in tool that will do exactly what you want out of the box. However, it's pretty easy to roll your own using a `defaultdict` from the `collections` module:

``````from collections import defaultdict

counts = defaultdict(int)
for date, crid, count in lst:
counts[(date, crid)] += count

new_lst = [(date, crid, count) for (date, crid), count in counts.items()]
``````

This requires only linear running time, so if your data set is large, it may be better than a `groupby` implementation, which requires an `O(log n)` running time sort.

-

The "long" way to it:

``````>>> from collections import defaultdict
>>> d = defaultdict(int)
>>> r = defaultdict(list)
>>> for i in l:
...    d[i[1]] += i[2]
...    r[i[0]].append(d)
...
>>> results = []
>>> for i,v in r.iteritems():
...     for k in v[0]:
...         results.append((i,k,v[0][k]))
...
>>> results
[('2013-01-04', u'crid9904536154', 1104937),
('2013-01-04', u'crid2557171372', 78874),
('2013-01-04', u'crid7990924609', 976410)]
``````
-
That is really confusing. Why are you repeatedly adding `d` to your `r` dict? It's always the same object, so you're just going to have a whole bunch of references to it there. –  Blckknght Jan 8 at 11:19

A minimalist way to do it:

``````from pandas import *
a = [('2013-01-04', u'crid2557171372', 1),
('2013-01-04', u'crid9904536154', 719677),
('2013-01-04', u'crid7990924609', 577352),
('2013-01-04', u'crid7990924609', 399058),
('2013-01-04', u'crid9904536154', 385260),
('2013-01-04', u'crid2557171372', 78873)]

DataFrame(a).groupby([0,1]).sum().reset_index()
``````

out:

``````            0               1        2
0  2013-01-04  crid2557171372    78874
1  2013-01-04  crid7990924609   976410
2  2013-01-04  crid9904536154  1104937
``````
-
I'm not sure you can call a solution using `pandas` "minimalist". It requires installing an extra library to do all the work! –  Blckknght Jan 8 at 11:16
@Blckknght -- True, but if you happen to have it installed and you need to do a lot of these, it is pretty convenient :) –  root Jan 8 at 11:19