# Multidimensional Eucledian Distance in Python

I want to calcuate the eucledian distance in multiple dimensions (24 dimensions) between 2 arrays. I'm using Numpy-Scipy.

Here is my code:

``````import numpy,scipy;

A=numpy.array([116.629, 7192.6, 4535.66, 279714, 176404, 443608, 295522, 1.18399e+07, 7.74233e+06, 2.85839e+08, 2.30168e+08, 5.6919e+08, 168989, 7.48866e+06, 1.45261e+06, 7.49496e+07, 2.13295e+07, 3.74361e+08, 54.5, 3349.39, 262.614, 16175.8, 3693.79, 205865]);

B=numpy.array([0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 151246, 6795630, 4566625, 2.0355328e+08, 1.4250515e+08, 3.2699482e+08, 95635, 4470961, 589043, 29729866, 6124073, 222.3]);
``````

However, I used `scipy.spatial.distance.cdist(A[numpy.newaxis,:],B,'euclidean')` to calcuate the eucleidan distance.

But it gave me an error

``````raise ValueError('XB must be a 2-dimensional array.');
``````

I don't seem to understand it.

I looked up `scipy.spatial.distance.pdist` but don't understand how to use it?

Is there any other better way to do it?

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– Michael Mior Feb 23 '12 at 14:16
that was quick and easy! Thanks. – garak Feb 23 '12 at 14:21
So, you have 2, 24-dimensional points? In that case, @Mr.E's answer is the best option. However, when you have more than 2 points, the various `scipy.spatial.distance` functions will be more efficient. – Joe Kington Feb 23 '12 at 14:26
I thought perhaps I was missing something. Posted as an answer if that solves your problem. – Michael Mior Feb 23 '12 at 17:24

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Use either

``````numpy.sqrt(numpy.sum((A - B)**2))
``````

or more simply

``````numpy.linalg.norm(A - B)
``````
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`A` and `B` are 2 points in the 24-D space. You should use `scipy.spatial.distance.euclidean`.

Doc here

``````scipy.spatial.distance.euclidean(A, B)
``````
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Apart from the already mentioned ways of computing the Euclidean distance, here's one that's close to your original code:

``````scipy.spatial.distance.cdist([A], [B], 'euclidean')
``````

or

``````scipy.spatial.distance.cdist(np.atleast_2d(A), np.atleast_2d(B), 'euclidean')
``````

This returns a 1×1 `np.ndarray` holding the L2 distance.

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