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Scipy (http://www.scipy.org/) offers two KD Tree classes; the KDTree and the cKDTree.

The cKDTree is much faster, but is less customizable and query-able than the KDTree (as far as I can tell from the docs).

Here is my problem: I have a list of 3million 2 dimensional (X,Y) points. I need to return all of the points within a distance of X units from every point.

With the KDtree, there is an option to do just this: KDtree.query_ball_tree() It generates a list of lists of all the points within X units from every other point. HOWEVER: this list is enormous and quickly fills up my virtual memory (about 744 million items long).

Potential solution #1: Is there a way to parse this list into a text file as it is writing?

Potential solution #2: I have tried using a for loop (for every point in the list) and then finding that single point's neighbors within X units by employing: KDtree.query_ball_point(). HOWEVER: this takes forever as it needs to run the query millions of times. Is there a cKDTree equivalent of this KDTree tool?

Potential solution #3: Beats me, anyone else have any ideas?

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2 Answers

up vote 1 down vote accepted

From scipy 0.12 on, both KD Tree classes have feature parity. Quoting its announcement:

cKDTree feature-complete

Cython version of KDTree, cKDTree, is now feature-complete. Most operations (construction, query, query_ball_point, query_pairs, count_neighbors and sparse_distance_matrix) are between 200 and 1000 times faster in cKDTree than in KDTree. With very minor caveats, cKDTree has exactly the same interface as KDTree, and can be used as a drop-in replacement.

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Ah that would be excellent. I don't have any skill/experience with compiling from source so maybe I will look into that. Otherwise, unless another solution is posted, I will wait for the new release of scipy. –  Dlinet Oct 26 '12 at 15:39
    
@Dlinet Version 0.12 was released last month. –  jorgeca May 11 '13 at 0:05
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Try using KDTree.query_ball_point instead. It takes a single point, or array of points, and produces the points within a given distance of the input point(s).

You can use this function to perform batch queries. Give it, say, 100000 points at a time, and then write the results out to a file. Something like this:

BATCH_SIZE = 100000
for i in xrange(0, len(pts), BATCH_SIZE):
    neighbours = tree.query_ball_point(pts[i:i+BATCH_SIZE], X)
    # write neighbours to a file...
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Unless I am understanding you wrong, I think that is exactly what I have listed as potential solution #2 no? The problem with that method as far as I can tell is it takes forever. –  Dlinet Oct 26 '12 at 15:34
    
What you suggested was to loop over every single point. Here, what I suggested is to use it in a "batch" mode, so you spend less time iterating. –  nneonneo Oct 26 '12 at 16:24
    
Ah interesting, I will look into this. I have never used "batches" before. do you suggest any particular resources for learning more about batches? –  Dlinet Oct 26 '12 at 20:37
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