# Identify groups of continuous numbers in a list

I'd like to identify groups of continuous numbers in a list, so that:

``````myfunc([2, 3, 4, 5, 12, 13, 14, 15, 16, 17, 20])
``````

Returns:

``````[(2,5), (12,17), 20]
``````

And was wondering what the best way to do this was (particularly if there's something inbuilt into Python).

Edit: Note I originally forgot to mention that individual numbers should be returned as individual numbers, not ranges.

• Is that return value a string? – Mark Byers Jan 28 '10 at 11:59
• Ideally would prefer something that uses a separate type for ranges vs standalone numbers. – mikemaccana Jan 28 '10 at 13:47

## 13 Answers

`more_itertools.consecutive_groups` was added in version 4.0.

Demo

``````import more_itertools as mit

iterable = [2, 3, 4, 5, 12, 13, 14, 15, 16, 17, 20]
[list(group) for group in mit.consecutive_groups(iterable)]
# [[2, 3, 4, 5], [12, 13, 14, 15, 16, 17], [20]]
``````

Code

Applying this tool, we make a generator function that finds ranges of consecutive numbers.

``````def find_ranges(iterable):
"""Yield range of consecutive numbers."""
for group in mit.consecutive_groups(iterable):
group = list(group)
if len(group) == 1:
yield group[0]
else:
yield group[0], group[-1]

iterable = [2, 3, 4, 5, 12, 13, 14, 15, 16, 17, 20]
list(find_ranges(iterable))
# [(2, 5), (12, 17), 20]
``````

The source implementation emulates a classic recipe (as demonstrated by @Nadia Alramli).

Note: `more_itertools` is a third-party package installable via `pip install more_itertools`.

EDIT 2: To answer the OP new requirement

``````ranges = []
for key, group in groupby(enumerate(data), lambda (index, item): index - item):
group = map(itemgetter(1), group)
if len(group) > 1:
ranges.append(xrange(group[0], group[-1]))
else:
ranges.append(group[0])
``````

Output:

``````[xrange(2, 5), xrange(12, 17), 20]
``````

You can replace xrange with range or any other custom class.

Python docs have a very neat recipe for this:

``````from operator import itemgetter
from itertools import groupby
data = [2, 3, 4, 5, 12, 13, 14, 15, 16, 17]
for k, g in groupby(enumerate(data), lambda (i,x):i-x):
print map(itemgetter(1), g)
``````

Output:

``````[2, 3, 4, 5]
[12, 13, 14, 15, 16, 17]
``````

If you want to get the exact same output, you can do this:

``````ranges = []
for k, g in groupby(enumerate(data), lambda (i,x):i-x):
group = map(itemgetter(1), g)
ranges.append((group[0], group[-1]))
``````

output:

``````[(2, 5), (12, 17)]
``````

EDIT: The example is already explained in the documentation but maybe I should explain it more:

The key to the solution is differencing with a range so that consecutive numbers all appear in same group.

If the data was: `[2, 3, 4, 5, 12, 13, 14, 15, 16, 17]` Then `groupby(enumerate(data), lambda (i,x):i-x)` is equivalent of the following:

``````groupby(
[(0, 2), (1, 3), (2, 4), (3, 5), (4, 12),
(5, 13), (6, 14), (7, 15), (8, 16), (9, 17)],
lambda (i,x):i-x
)
``````

The lambda function subtracts the element index from the element value. So when you apply the lambda on each item. You'll get the following keys for groupby:

``````[-2, -2, -2, -2, -8, -8, -8, -8, -8, -8]
``````

groupby groups elements by equal key value, so the first 4 elements will be grouped together and so forth.

I hope this makes it more readable.

`python 3` version may be helpful for beginners

import the libraries required first

``````from itertools import groupby
from operator import itemgetter

ranges =[]

for k,g in groupby(enumerate(data),lambda x:x[0]-x[1]):
group = (map(itemgetter(1),g))
group = list(map(int,group))
ranges.append((group[0],group[-1]))
``````
• almost works in py3k, except it requires `lambda x:x[0]-x[1]`. – SilentGhost Jan 28 '10 at 12:41
• Could you use please use multi-character variable names? For someone not familiar with map() or groupby(), the meanings of k g, i and x are not clear. – mikemaccana Jan 28 '10 at 13:58
• This was copied from the Python documentations with the same variable names. I changed the names now. – Nadia Alramli Jan 28 '10 at 14:00
• You'll need to increment the 2nd number in xrange/range because it is non-inclusive. In other words, `[2,3,4,5] == xrange(2,6)`, not `xrange(2,5)`. It may be worth defining a new inclusive range data type. – IceArdor Apr 29 '14 at 16:37
• Python 3 throws a syntax error on the first example. Here's the first 2 lines updated to work on python 3: `for key, group in groupby(enumerate(data), lambda i: i[0] - i[1]): group = list(map(itemgetter(1), group))` – derek73 Aug 5 '16 at 4:22

The "naive" solution which I find somewhat readable atleast.

``````x = [2, 3, 4, 5, 12, 13, 14, 15, 16, 17, 22, 25, 26, 28, 51, 52, 57]

def group(L):
first = last = L[0]
for n in L[1:]:
if n - 1 == last: # Part of the group, bump the end
last = n
else: # Not part of the group, yield current group and start a new
yield first, last
first = last = n
yield first, last # Yield the last group

>>>print list(group(x))
[(2, 5), (12, 17), (22, 22), (25, 26), (28, 28), (51, 52), (57, 57)]
``````
• I like this answer a lot because it's terse yet readable. However numbers that are outside of ranges should be printed as single digits, not tuples (as I will format the output and have different formatting requirements for individual numbers versus ranges of numbers. – mikemaccana Jan 28 '10 at 13:38
• The other answer looked beautiful and intelligent, but this one is more understandable to me and allowed a beginner like me to expand it according to my needs. – Benny Apr 3 '13 at 8:35
• Could use a list comprehension to print the non-range tuples as single digits: `print([i if i[0] != i[1] else i[0] for i in group(x)])` – Nexus Jul 16 '18 at 23:34

Assuming your list is sorted:

``````>>> from itertools import groupby
>>> def ranges(lst):
pos = (j - i for i, j in enumerate(lst))
t = 0
for i, els in groupby(pos):
l = len(list(els))
el = lst[t]
t += l
yield range(el, el+l)

>>> lst = [2, 3, 4, 5, 12, 13, 14, 15, 16, 17]
>>> list(ranges(lst))
[range(2, 6), range(12, 18)]
``````
• `[j - i for i, j in enumerate(lst)]` is clever :-) – Jochen Ritzel Jan 28 '10 at 12:36

Here it is something that should work, without any import needed:

``````def myfunc(lst):
ret = []
a = b = lst[0]                           # a and b are range's bounds

for el in lst[1:]:
if el == b+1:
b = el                           # range grows
else:                                # range ended
ret.append(a if a==b else (a,b)) # is a single or a range?
a = b = el                       # let's start again with a single
ret.append(a if a==b else (a,b))         # corner case for last single/range
return ret
``````

Please note that the code using `groupby` doesn't work as given in Python 3 so use this.

``````for k, g in groupby(enumerate(data), lambda x:x[0]-x[1]):
group = list(map(itemgetter(1), g))
ranges.append((group[0], group[-1]))
``````

This doesn't use a standard function - it just iiterates over the input, but it should work:

``````def myfunc(l):
r = []
p = q = None
for x in l + [-1]:
if x - 1 == q:
q += 1
else:
if p:
if q > p:
r.append('%s-%s' % (p, q))
else:
r.append(str(p))
p = q = x
return '(%s)' % ', '.join(r)
``````

Note that it requires that the input contains only positive numbers in ascending order. You should validate the input, but this code is omitted for clarity.

Using `groupby` and `count` from `itertools` gives us a short solution. The idea is that, in an increasing sequence, the difference between the index and the value will remain the same.

In order to keep track of the index, we can use an itertools.count, which makes the code cleaner as using `enumerate`:

``````from itertools import groupby, count

def intervals(data):
out = []
counter = count()

for key, group in groupby(data, key = lambda x: x-next(counter)):
block = list(group)
out.append([block[0], block[-1]])
return out
``````

Some sample output:

``````print(intervals([0, 1, 3, 4, 6]))
# [[0, 1], [3, 4], [6, 6]]

print(intervals([2, 3, 4, 5]))
# [[2, 5]]
``````

Here's the answer I came up with. I'm writing the code for other people to understand, so I'm fairly verbose with variable names and comments.

First a quick helper function:

``````def getpreviousitem(mylist,myitem):
'''Given a list and an item, return previous item in list'''
for position, item in enumerate(mylist):
if item == myitem:
# First item has no previous item
if position == 0:
return None
# Return previous item
return mylist[position-1]
``````

And then the actual code:

``````def getranges(cpulist):
'''Given a sorted list of numbers, return a list of ranges'''
rangelist = []
inrange = False
for item in cpulist:
previousitem = getpreviousitem(cpulist,item)
if previousitem == item - 1:
# We're in a range
if inrange == True:
# It's an existing range - change the end to the current item
newrange[1] = item
else:
# We've found a new range.
newrange = [item-1,item]
# Update to show we are now in a range
inrange = True
else:
# We were in a range but now it just ended
if inrange == True:
# Save the old range
rangelist.append(newrange)
# Update to show we're no longer in a range
inrange = False
# Add the final range found to our list
if inrange == True:
rangelist.append(newrange)
return rangelist
``````

Example run:

``````getranges([2, 3, 4, 5, 12, 13, 14, 15, 16, 17])
``````

returns:

``````[[2, 5], [12, 17]]
``````
• `>>> getranges([2, 12, 13])` Outputs: `[[12, 13]]`. Was that intentional? – SilentGhost Jan 28 '10 at 13:42
• Yep, I need to fix for individual numbers (per most of the answers on the page). Working on it now. – mikemaccana Jan 28 '10 at 13:51
• Actually I prefer Nadia's answer, groupby() seems like the standard function I wanted. – mikemaccana Jan 28 '10 at 14:08
``````import numpy as np

myarray = [2, 3, 4, 5, 12, 13, 14, 15, 16, 17, 20]
sequences = np.split(myarray, np.array(np.where(np.diff(myarray) > 1)[0]) + 1)
l = []
for s in sequences:
if len(s) > 1:
l.append((np.min(s), np.max(s)))
else:
l.append(s[0])
print(l)
``````

Output:

``````[(2, 5), (12, 17), 20]
``````

Using numpy + comprehension lists:
With numpy diff function, consequent input vector entries that their difference is not equal to one can be identified. The start and end of the input vector need to be considered.

``````import numpy as np
data = np.array([2, 3, 4, 5, 12, 13, 14, 15, 16, 17, 20])

d = [i for i, df in enumerate(np.diff(data)) if df!= 1]
d = np.hstack([-1, d, len(data)-1])  # add first and last elements
d = np.vstack([d[:-1]+1, d[1:]]).T

print(data[d])
``````

Output:

`````` [[ 2  5]
[12 17]
[20 20]]
``````

Note: The request that individual numbers should be treated differently, (returned as individual, not ranges) was omitted. This can be reached by further post-processing the results. Usually this will make things more complex without gaining any benefit.

A short solution that works without additional imports. It accepts any iterable, sorts unsorted inputs, and removes duplicate items:

``````def ranges(nums):
nums = sorted(set(nums))
gaps = [[s, e] for s, e in zip(nums, nums[1:]) if s+1 < e]
edges = iter(nums[:1] + sum(gaps, []) + nums[-1:])
return list(zip(edges, edges))
``````

Example:

``````>>> ranges([2, 3, 4, 7, 8, 9, 15])
[(2, 4), (7, 9), (15, 15)]

>>> ranges([-1, 0, 1, 2, 3, 12, 13, 15, 100])
[(-1, 3), (12, 13), (15, 15), (100, 100)]

>>> ranges(range(100))
[(0, 99)]

>>> ranges([0])
[(0, 0)]

>>> ranges([])
[]
``````

This is the same as @dansalmo's solution which I found amazing, albeit a bit hard to read and apply (as it's not given as a function).

Note that it could easily be modified to spit out "traditional" open ranges `[start, end)`, by e.g. altering the return statement:

``````    return [(s, e+1) for s, e in zip(edges, edges)]
``````

I copied this answer over from another question that was marked as a duplicate of this one with the intention to make it easier findable (after I just now searched again for this topic, finding only the question here at first and not being satisfied with the answers given).

The versions by Mark Byers, Andrea Ambu, SilentGhost, Nadia Alramli, and truppo are simple and fast. The 'truppo' version encouraged me to write a version that retains the same nimble behavior while handling step sizes other than 1 (and lists as singletons elements that don't extend more than 1 step with a given step size). It is given here.

``````>>> list(ranges([1,2,3,4,3,2,1,3,5,7,11,1,2,3]))
[(1, 4, 1), (3, 1, -1), (3, 7, 2), 11, (1, 3, 1)]
``````