I am currently using cosine, euclidean, and chebyshev etc similarity functions in scipy.

The problem is that it only measures the distance between two vectors. That means it will call the function n times if I have n set of vectors to comparing to get the distance from one given vectors set to n sets of vectors.

Is there any library or a better way to do this work faster? Or less call the function?

Make sure that this aims to reduce the computation time ...

  • 1
    Probably you are looking for something that is already implemented in sckit-learn or SciPy's cKDTree – percusse May 24 '18 at 12:11
  • a version of KDTree is also available in Scikit-Learn – DrBwts May 24 '18 at 13:23
  • I fail to see how a KDTree would cut down computation time if OP wants all distances, not just the distances to the nearest neighbours. – Paul Brodersen May 25 '18 at 14:01

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