# Finding clusters of numbers in a list

I'm struggling with that, since I'm sure that a dozen for-loops is not the solution for this problem:

There is a sorted list of numbers like

``````numbers = [123, 124, 128, 160, 167, 213, 215, 230, 245, 255, 257, 400, 401, 402, 430]
``````

and I want to create a dict with lists of numbers, wherein the difference of the numbers (following each other) is not more than 15. So the output would be this:

``````clusters = {
1 : [123, 124, 128],
2 : [160, 167],
3 : [213, 215, 230, 245, 255, 257],
4 : [400, 401, 402],
5 : [430]
}
``````

My current solution is a bit ugly (I have to remove duplicates at the end…), I'm sure it can be done in a pythonic way.

This is what I do now:

``````clusters = {}
dIndex = 0
for i in range(len(numbers)-1) :
if numbers[i+1] - numbers[i] <= 15 :
if not clusters.has_key(dIndex) : clusters[dIndex] = []
clusters[dIndex].append(numbers[i])
clusters[dIndex].append(numbers[i+1])
else : dIndex += 1
``````
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K-means clustering will probably be useful in this case. –  Blender Apr 4 at 1:10
defaultdict would make your code a bit simpler –  tcaswell Apr 4 at 1:13
Thanks, I'll have a look at both! –  septi Apr 4 at 1:16

Not strictly necessary if your list is small, but I'd probably approach this in a "stream-processing" fashion: define a generator that takes your input iterable, and yields the elements grouped into runs of numbers differing by <= 15. Then you can use that to generate your dictionary easily.

``````def grouper(iterable):
prev = None
group = []
for item in iterable:
if not prev or item - prev <= 15:
group.append(item)
else:
yield group
group = [item]
prev = item
if group:
yield group

numbers = [123, 124, 128, 160, 167, 213, 215, 230, 245, 255, 257, 400, 401, 402, 430]
dict(enumerate(grouper(numbers), 1))
``````

prints:

``````{1: [123, 124, 128],
2: [160, 167],
3: [213, 215, 230, 245, 255, 257],
4: [400, 401, 402],
5: [430]}
``````

As a bonus, this lets you even group your runs for potentially-infinite lists (as long as they're sorted, of course). You could also stick the index generation part into the generator itself (instead of using `enumerate`) as a minor enhancement.

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WOW, really cool function! I was lookig just for that. Thanks @tzaman –  otmezger Apr 18 at 9:55
``````import itertools
import numpy as np

numbers = np.array([123, 124, 128, 160, 167, 213, 215, 230, 245, 255, 257, 400, 401, 402, 430])
nd = [0] + list(np.where(np.diff(numbers) > 15)[0] + 1) + [len(numbers)]

a, b = itertools.tee(nd)
next(b, None)
res = {}
for j, (f, b) in enumerate(itertools.izip(a, b)):
res[j] = numbers[f:b]
``````

If you can use itertools and numpy. Adapted `pairwise` for the iterator tricks. The `+1` is needed to shift the index, adding the `0` and `len(numbers)` onto the list makes sure the first and last entries are included correctly.

You can obviously do this with out `itertools`, but I like `tee`.

-

Using the generator to separate the logic: (one function does one thing)

``````numbers = [123, 124, 128, 160, 167, 213, 215, 230, 245, 255, 257, 400, 401, 402, 430]

def cut_indices(numbers):
# this function iterate over the indices that need to be 'cut'
for i in xrange(len(numbers)-1):
if numbers[i+1] - numbers[i] > 15:
yield i+1

def splitter(numbers):
# this function split the original list into sublists.
px = 0
for x in cut_indices(numbers):
yield numbers[px:x]
px = x
yield numbers[px:]

def cluster(numbers):
# using the above result, to form a dict object.
cluster_ids = xrange(1,len(numbers))
return dict(zip(cluster_ids, splitter(numbers)))

print cluster(numbers)
``````

The above codes give me

``````{1: [123, 124, 128], 2: [160, 167], 3: [213, 215, 230, 245, 255, 257], 4: [400, 401, 402], 5: [430]}
``````
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