# numpy: How to join arrays? ( to get the union of several ranges)

I use Python with `numpy`.

I have a numpy array of indexes `a`:

``````>>> a
array([[5, 7],
[12, 18],
[20, 29]])
>>> type(a)
<type 'numpy.ndarray'>
``````

I have a numpy array of indexes `b`:

``````>>> b
array([[2, 4],
[8, 11],
[33, 35]])
>>> type(b)
<type 'numpy.ndarray'>
``````

I need to join an array `a` with an array `b`:

`a` + `b` => `[2, 4] [5, 7] [8, 11] [12, 18] [20, 29] [33, 35]`

=> `a` and `b` there are arrays of indexes => `[2, 18] [20, 29] [33, 35]`

( indexes `([2, 4][5, 7][8, 11][12, 18])` go sequentially

=> `2,3,4,5,6,7,8,9,10,11,12,13,14,15,16,17,18` => `[2, 18]` )

For this example:

``````>>> out_c
array([[2, 18],
[20, 29],
[33, 35]])
``````

Can someone please suggest, how do I get `out_c`?

Update: @Geoff suggested solution python union of multiple ranges. Whether this solution the fastest and best in large data arrays?

-
What exactly do you mean by 'integrate' the two arrays? –  StuGrey Apr 3 '13 at 12:34
Maybe I'm just dense, but I can't figure out how you went from `a` and `b` to `out_c`. –  mgilson Apr 3 '13 at 12:34
@StuGrey I updated a question –  Olga Apr 3 '13 at 12:50
Oh, you're trying to get the union of several ranges. –  Geoff Apr 3 '13 at 12:59
Try searching for that: stackoverflow.com/questions/15273693/… –  Geoff Apr 3 '13 at 13:02

``````ranges = np.vstack((a,b))
ranges.sort(0)

# List of non-overlapping ranges
nonoverlapping = (ranges[1:,0] - ranges[:-1,1] > 1).nonzero()[0]

# Starts are 0, and all the starts not overlapped by their predecessor
starts = np.hstack(([0], nonoverlapping + 1))

# Ends are -1 and all the ends who aren't overlapped by their successor
ends = np.hstack(( nonoverlapping, [-1]))

# Result
result = np.vstack((ranges[starts, 0], ranges[ends, 1])).T
``````

(Old answer) Using lists and sets

``````import numpy as np
import itertools

def ranges(s):
""" Converts a list of integers into start, end pairs """
for a, b in itertools.groupby(enumerate(s), lambda(x, y): y - x):
b = list(b)
yield b[0][1], b[-1][1]

def intersect(*args):
""" Converts any number of numpy arrays containing start, end pairs
into a set of indexes """
s = set()
for start, end in np.vstack(args):
s = s | set(range(start,end+1))
return s

a = np.array([[5,7],[12, 18],[20,29]])
b = np.array([[2,4],[8,11],[33,35]])

result = np.array(list(ranges(intersect(a,b))))
``````

# References

-
thanks for the proposed solution –  Olga Apr 4 '13 at 5:45
What did you find to not work with your new solution? I was poking at it right now... –  Jaime Apr 4 '13 at 22:49
With the "non overlapping" caveat, I'd say it works fine, doesn't it? –  Jaime Apr 4 '13 at 23:02
To sort it keeping every start with its end, you can do `ranges.view(dtype=[('',ranges.dtype),]*2).sort(axis=0)`. –  Jaime Apr 4 '13 at 23:20
It has trouble, i.e. it doesn't work, with inputs like `ranges = np.array([[2, 7], [3, 12], [4, 11]])`, not sure if there is a better way than what I came up with to get the `max` of the ends... Or maybe the OP can guarantee this type of overlapping will never happen. –  Jaime Apr 4 '13 at 23:26

Not pretty, but it works. I don't like the final loop, buy couldn't think of a way of doing without it:

``````ab = np.vstack((a,b))
ab.sort(axis=0)

join_with_next = ab[1:, 0] - ab[:-1, 1] <= 1
endpoints = np.concatenate(([0],
np.where(np.diff(join_with_next) == True)[0]  + 2,
[len(ab,)]))
lengths = np.diff(endpoints)
new_lengths = lengths.copy()
if join_with_next[0] == True:
new_lengths[::2] = 1
else:
new_lengths[1::2] = 1
new_endpoints = np.concatenate(([0], np.cumsum(new_lengths)))
print endpoints, lengths
print new_endpoints, new_lengths

starts = endpoints[:-1]
ends = endpoints[1:]
new_starts = new_endpoints[:-1]
new_ends = new_endpoints[1:]
c = np.empty((new_endpoints[-1], 2), dtype=ab.dtype)

for j, (s,e,ns,ne) in enumerate(zip(starts, ends, new_starts, new_ends)):
if e-s != ne-ns:
c[ns:ne] = np.array([np.min(ab[s:e, 0]), np.max(ab[s:e, 1])])
else:
c[ns:ne] = ab[s:e]

>>> c
array([[ 2, 18],
[20, 29],
[33, 35]])
``````
-
thanks for the proposed solution –  Olga Apr 4 '13 at 5:43
You inspired me to keep trying. If you're still interested in this problem, will you check my answer? It seems too simple to be right. –  Geoff Apr 4 '13 at 22:41
... never mind. –  Geoff Apr 4 '13 at 22:45
`ab.sort(0)` ruins the association between start and end pairs. A real sort should be `ab = ab[ab[:,0].argsort(), :]` –  Geoff Apr 4 '13 at 23:01
@Geoff Take a view of the array as a structured array, then it will sort properly (methinks). –  Jaime Apr 4 '13 at 23:04
I think it's a coincidence that the two arrays `a` and `b` both have three rows. This is a good point though, if I'm wrong. –  Geoff Apr 3 '13 at 13:39