# Group data into specified intervals satisfying certain condition

I'd like to sort into new lists those items in this list...

``````truc = [['12', 'brett', 5548],
['22.3', 'troy', 9514],
['8.1', 'hings', 12635],
['34.2', 'dab', 17666],
['4q3', 'sigma', 18065],
['4q3', 'delta', 18068]]
``````

... grouping them using the last field, into bins of size 3500 So, the ideal result would be this:

``````firstSort = [['34.2', 'dab', 17666],
['4q3', 'sigma', 18065],
['4q3', 'delta', 18068]]

secondSort = [['22.3', 'troy', 9514],
['8.1', 'hings', 12635]]

lastSort = ['12', 'brett', 5548]
``````

I tried to use the `itertools.groupby()` function, but i am not capable of find a way to specify the bin size.

-
Yes, you are right. I wanted to mean that the size of the bins would be 3500. I will edit. Thanks! –  peixe Oct 28 '12 at 16:17
If the last field values are 0, 3000 and 6000, what will be the pairing? `[0,3000], [6000]`, or `[0], [3000,6000]`, or `[0,3000,6000]`? –  Alok Singhal Oct 28 '12 at 16:18
would it be enough to specify a function that returns the integer result of key division by 3500? This might group items in a less-than-optimal way, though. –  lserni Oct 28 '12 at 16:18
@jwpat7: Don't you think that he simply mistyped 180688 instead of 18068, which would be logical if you look at the other values? –  BrtH Oct 28 '12 at 16:18
@BrtH yes that was it... –  peixe Oct 28 '12 at 16:23

This is trivial to do without itertools

``````truc = [['12', 'brett', 5548],
['22.3', 'troy', 9514],
['8.1', 'hings', 12635],
['34.2', 'dab', 17666],
['4q3', 'sigma', 18065],
['4q3', 'delta', 18068]]

truc.sort(key=lambda a:a[-1])
groups = [[]]
last_row = None
for row in truc:
if last_row is not None and row[-1] - last_row[-1] > 3500:
groups.append([])
last_row = row
groups[-1].append(row)

import pprint
pprint.pprint(groups)
``````

Output:

``````[[['12', 'brett', 5548]],
[['22.3', 'troy', 9514], ['8.1', 'hings', 12635]],
[['34.2', 'dab', 17666], ['4q3', 'sigma', 18065], ['4q3', 'delta', 18068]]]
``````
-
Not EXACTLY what I wanted to do, but it may give a pretty hint. –  peixe Dec 13 '12 at 11:29

A basic binner with `groupby`:

``````from itertools import groupby
from math import floor

# data must be sorted

data = [ ['12', 'brett', 5548],
['22.3', 'troy', 9514],
['8.1', 'hings', 12635],
['34.2', 'dab', 17666],
['4q3', 'sigma', 18065],
['4q3', 'delta', 18068] ]

groups = []
for k, g in groupby(data, lambda x: floor(x[-1]/3500)):
groups.append(list(g))

print groups
``````

Returns:

``````[
[
['12', 'brett', 5548]
],
[
['22.3', 'troy', 9514]
],
[
['8.1', 'hings', 12635]
],
[
['34.2', 'dab', 17666],
['4q3', 'sigma', 18065],
['4q3', 'delta', 18068]
]
]
``````

You can then coalesce the groups when the maximum of one group less the minimum of the group before turns out to be less than 3500. You would then get,

``````[
[
['12', 'brett', 5548]
],
[
['22.3', 'troy', 9514],
['8.1', 'hings', 12635]
],
[
['34.2', 'dab', 17666],
['4q3', 'sigma', 18065],
['4q3', 'delta', 18068]
]
]
``````

Even with coalescing after the `groupby`, I think that Anurag Uniyal's solution would still achieve better grouping in the average case.

-

using `defaultdict()`:

``````lis=[['12', 'brett', 5548],
['22.3', 'troy', 9514],
['8.1', 'hings', 12635],
['34.2', 'dab', 17666],
['4q3', 'sigma', 18065],
['4q3', 'delta', 18068]]

from collections import defaultdict
d=defaultdict(list)
for i,x in enumerate(lis):
not_append=True
for y in d:
for z in d[y]:
if abs(z[-1]-x[-1])<=3500:
d[y].append(x)
not_append=False
break
else:
if not_append:
d[i].append(x)
print d.values()
``````

output:

``````[[['12', 'brett', 5548]],
[['22.3', 'troy', 9514], ['8.1', 'hings', 12635]],
[['34.2', 'dab', 17666], ['4q3', 'sigma', 18065], ['4q3', 'delta', 18068]]
]
``````
-