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I have large 2D arrays with unsorted (X,Y) points, for which I need to know which points are in close proximity to each other (nearest-neighbor lookup). I have used cKDTree and query_ball_tree with succes for arrays with around 500,000 (X,Y) points. However, when I try the same algorithm for datasets of more than 1,000,000 points, query_ball_tree results in a MemoryError.

I use 64-bit Windows with 16Gb of internal memory, and have tried both 32-bit and 64-bit versions of Python and the extension modules (scipy and numpy).

def Construct_SearchTree(AllXyPoints):
    KDsearch = cKDTree(AllXyPoints)  
    return KDsearch.query_ball_tree(KDsearch, Maxdist)

My questions:

1) does anybody know of an alternative to cKDTree / query_ball_tree that consumes less memory? Speed is less important in this case that memory usage.

2) I hoped that switching from 32-bit to 64-bit python & extensions would solve the MemoryError. What could be the reason that it didn't?

Thanks for your incoming help and advice.

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1 Answer 1

  1. I had the same issue with SciPy's KDTree. The sklearn package has a BallTree that uses less memory since it does not make a copy of the data internally so long as your data is a C-style array (the default in numpy). I've tested BallTree with 20 million data points on my 32-bit system and it performed without issue.

    In [0]: from sklearn.neighbors import BallTree
        ... import numpy as np
        ... points = np.random.normal(size=40000000).reshape(20000000, 2) #20 million points
        ... ball_tree = BallTree(points)
        ... distance, index = ball_tree.query([.2345, .312]) #some arbitrary point
        ... ball_tree.data[index[0]]
    
    Out[0]: array([[ 0.23428595,  0.31187815]])
    
  2. It doesn't matter how much memory you have on your system, what matters is how much contiguous memory you can allocate. I don't know exactly what cKDTree tries to do, but it is very memory inefficient in my experience.

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