# Detect ordered pair in numpy array

I am using a numpy array to hold a list of ordered pairs (representing grid coordinates). The algorithm I am writing needs to check if a newly generated ordered pair is already in this array. Below is a schematic of the code:

``````cluster=np.array([[x1,y1]])
cluster=np.append(cluster,[[x2,y2]],axis=0)
cluster=np.append...etc.

new_spin=np.array([[x,y]])

if new_spin in cluster==False:
do something
``````

The problem with this current code is that it gives false positives. If x or y appear in the cluster, then `new_spin in cluster` evaluates as true. At first I thought a simple fix would be to ask if `x` and `y` appear in `cluster`, but this would not ensure that they appear as an ordered pair. To make sure they appear as an ordered pair I'd have to find the indices where `x` and `y` appear in `cluster` and compare them, which seems very clunky and inelegant, and I'm certain there must be a better solution out there. However, I have not been able to work it out myself.

Thanks for any help.

-
Its a bit annoying because of a small bug that is related to it in numpy <1.7., but if you query the same set many times, you should use sorting, or maybe hack something with `scipy.spatial.cKDTree` if the current bugs in numpy are too annoying. –  seberg Dec 15 '12 at 17:05

Let's work through an example:

``````In [7]: import numpy as np
In [8]: cluster = np.random.randint(10, size = (5,2))
In [9]: cluster
Out[9]:
array([[9, 7],
[7, 2],
[8, 9],
[1, 3],
[3, 4]])

In [10]: new_spin = np.array([[1,2]])

In [11]: new_spin == cluster
Out[11]:
array([[False, False],
[False,  True],
[False, False],
[ True, False],
[False, False]], dtype=bool)
``````

`new_spin == cluster` is a numpy array of dtype `bool`. It is True where the value in `cluster` equals the corresponding value in `new_spin`.

For `new_spin` to be "in" `cluster`, a row of the above boolean array must all be True. We can find such rows by calling the `all(axis = 1)` method:

``````In [12]: (new_spin == cluster).all(axis = 1)
Out[12]: array([False, False, False, False, False], dtype=bool)
``````

So `new_spin` is "in" `cluster`, if `any` of the rows is all True:

``````In [13]:
In [14]: (new_spin == cluster).all(axis = 1).any()
Out[14]: False
``````

By the way, `np.append` is a very slow operation -- slower than Python `list.append`. Chances are, you will get much better performance if you avoid `np.append`. If `cluster` is not too large, you may be better off making cluster a Python list of lists -- at least until you are done appending items. Then, if needed, convert `cluster` to a numpy array with `cluster = np.array(cluster)`.

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I did end up using a list of lists, which can be queried using a simple `(x,y) in cluster` statement without issue (and because one of my friends pointed out that lists should be faster to use than arrays, and I didn't really need it to be an array - I'm just used to working with them as a data type). I like your answer for using arrays, and it's good to know that any and all can accept axes. –  Dylan B Dec 16 '12 at 3:33
@DylanB from the built-in datatypes, `set` is most likely preferable to a list though, since its `in` is much more efficient. –  seberg Dec 16 '12 at 15:41