groupby iterator returns tuples of the outcome of the grouping function and a new iterator that is tied to the same "outer" iterator the
groupby operator is working on. When you apply
dict() to the iterator returned by
groupby without consuming this "inner" iterator,
groupby will have to advance the "outer" iterator for you. You have to realize that the
groupby function does not act on a sequence, it turns any such sequence to an iterator for you.
Perhaps this is better explained with some metaphors and handwaving. Please follow along as we form a bucket line.
Imagine iterators as a person drawing water in buckets from a well. He has an unlimited number of buckets to use, but the well may be finite. Every time you ask this person for a bucket of water, he'll draw a new bucket from the well of water and pass it to you.
groupby case, you insert another person into your budding bucket chain. This person doesn't immediately pass buckets at all. He passes you the outcome of instructions you gave it plus another person every time you ask for a bucket, whom will then pass you buckets via the
groupby person to whomever is asking, as long as they match the same outcome to the instructions. The
groupby bucket passer will stop passing these buckets if the outcome of the instructions changes. So
well gives buckets to
groupby, who passes this to a per-group person,
group B, and so on.
In your example, the water is numbered, but there can only be 1000 buckets drawn from the well. Here is what happens when you then pass the
groupby person to the
dict() call asks
groupby for a bucket. Now,
groupby asks for one bucket from the person at the well, remembers the outcome of the instructions given, holding on to the bucket. To
dict() he'll pass the outcome of the instructions (
False) plus a new person,
group A. The outcome is stored as the key, and the
group A person, who wants to pull buckets is stored as the value. This person is not yet asking for buckets however, because no-one is asking it to.
dict() call asks
groupby for another bucket.
groupby has these instructions, and goes looking for the next bucket where the outcome changes. It was still holding on to the first bucket, no-one asked for it, so it throws away this bucket. Instead, it asks for the next bucket from the well and uses his instructions. The outcome is the same as before, so it throws this new bucket away too! More water goes over the floor, and so go the next 499 buckets. Only when the bucket with number 501 is passed does the outcome change, so now
groupby finds another person to give instructions to (person
group B), together with the new outcome,
True, passing these two on to
dict() call stores
True as a key, and person
group B as the value.
group B does nothing, no-one is asking it for water.
dict() asks for another bucket.
groupby spills more water, until it holds bucket with the number 999, and the person at the well shrugs his shoulders and states that now the well is empty.
dict() the well is empty, no more buckets are coming, could he please stop asking. It still holds the bucket with number 999, because it never has to make space for the next bucket from the well.
Now you come along, asking
dict() for the thing associated with the key
True, which is person
group B. You pass
group B to
list(), which will therefore ask
group B for all the buckets
group B can get.
group B goes back to
groupby, who holds one bucket only, the bucket with number 999, and the outcome of the instructions for this bucket match what
group B is looking for. So this one bucket
group B gives to
list(), then shrugs his shoulders because there are no more buckets, because
groupby told him so.
You then ask
dict() for the person associated with the key
False, which is person
group A. By now,
groupby has nothing to give any more, the well is dry and he's standing in a puddle of 999 buckets of water with numbers floating around. Your second
list() gets nothing.
The moral of this story? Immediately ask for all buckets of water when talking to
groupby, because he'll spill them all if you do not! Iterators are like the brooms in fantasia, diligently moving water without understanding, and you better hope you run out of water if you do not know how to control them.
Here is code that would do what you expect (with a little bit less water to prevent flooding):
>>> from itertools import groupby
>>> keyfunc = lambda x : x > 5
>>> obj = dict((k, list(v) for k, v in groupby(range(10), keyfunc))
[0, 1, 2, 3, 4, 5]
[6, 7, 8, 9]