GroupBy objects are iterables. To extract the last n elements of an iterable, there's generally no need to create a list from the iterable and slice the last n elements. This will be memory-expensive.
Instead, you can use either
itertools.islice (as suggested by @mtraceur) or
collections.deque. Both work in O(n) time.
Unlike a generator, a Pandas
GroupBy object is an iterable which can be reused. Therefore, you can calculate the number of groups via
len(g) for a
g and then slice
islice. Or, perhaps more idiomatic, you can use
GroupBy.ngroups. Then use
pd.concat to concatenate an iterable of dataframes:
from operator import itemgetter
g = data.groupby(data.index.date, sort=False)
res = pd.concat(islice(map(itemgetter(1), g), max(0, g.ngroups-12), None))
Alternatively, you can use
collections.deque and specify
maxlen, then concatenate as before.
from collections import deque
grouped = data.groupby(data.index.date, sort=False)
res = pd.concat(deque(map(itemgetter(1), grouped), maxlen=12))
As described in the
Once a bounded length
deque is full, when new items are added, a
corresponding number of items are discarded from the opposite end....
They are also useful for tracking transactions and other pools of data
where only the most recent activity is of interest.