You sometimes don't want to fill a histogram *after* creating a huge list. You want to read a DB and fill the histogram event by event. Eg:

```
collection = db["my_collection"]
for event in collection.find():
histogram.fill(event['a_number'])
```

So, if I have 10Bn entries in the collection, I can fill any histogram I need for analysis without putting all data in memory.

I have done this building my own fill_histogram function, but I think there ought be something ready to use... HBOOK FORTRAN library, developed in the 1980s, had "HFILL" as its most used subroutine ever:)

BTW, here is a function which does the job for numpy.histogram, but I could not find in numpy:

```
def hfill(histogram, datum, weight=1):
'''
Bin the right bin in a numpy histogram for datum, with weight.
If datum is outside histogram's bins' range, histogram does not change
'''
for idx, b in enumerate(histogram[1]):
if idx > 0:
if (datum < b and datum >= histogram[1][0]) or (datum <= b and idx == len(histogram[1]) - 1):
histogram[0][idx - 1] += int(weight)
break
```

`collections.Counter`

? docs.python.org/2/library/collections.html#collections.Counter – ev-br Nov 14 '12 at 11:08