Ruby & JRuby gem with a fast k-d tree C implementation using FFI bindings with support for latitude/longitude and geo distance range search.
A k-d tree is a space-partitioning data structure for organizing points in a k-dimensional space and are useful for very fast range searches and nearest neighbor searches. k-d trees are a special case of binary space partitioning trees.
Tested on OSX 10.8.2 and Linux 12.10 with
- MRI Ruby 1.9.3 p362, 1.9.3 p385
- JRuby 1.7.2 (1.9.3 p327)
Add this line to your application's Gemfile:
gem 'geokdtree'
And then execute:
$ bundle
Or install it yourself as:
$ gem install geokdtree
# simplest 2d tree
tree = Geokdtree::Tree.new(2)
tree.insert([1, 0])
tree.insert([2, 0])
tree.insert([3, 0])
result = tree.nearest([0, 0])
puts(result.point.inspect) # => [1.0, 0.0]
puts(result.data.inspect) # => nil
# simple 2d tree with point payload.
# abritary objects can be attached to each inserted point
tree = Geokdtree::Tree.new(2)
tree.insert([1, 0], "point 1")
tree.insert([2, 0], "point 2")
tree.insert([3, 0], "point 3")
# single nearest using standard/Euclidean relative distance
result = tree.nearest([0, 0])
puts(result.point.inspect) # => [1.0, 0.0]
puts(result.data.inspect) # => "point 1"
# nearests within range using standard/Euclidean relative distance
results = tree.nearest_range([0, 0], 2)
puts(results.size) # => 2
puts(results[0].point.inspect) # => [2.0, 0.0]
puts(results[0].data.inspect) # => "point 2"
puts(results[1].point.inspect) # => [1.0, 0.0]
puts(results[1].data.inspect) # => "point 1"
# 2d tree with lat/lng points
tree = Geokdtree::Tree.new(2)
tree.insert([40.7, -74.0], "New York")
tree.insert([37.77, -122.41], "San Francisco")
tree.insert([45.50, -73.55], "Montreal")
# single nearest using standard/Euclidean relative distance
result = tree.nearest([34.1, -118.2]) # Los Angeles
puts(result.point.inspect) # => [37.77, -122.41]
puts(result.data.inspect) # => "San Francisco"
# nearests within range using miles relative geo distance
results = tree.nearest_geo_range([47.6, -122.3], 800) # Seattle, within 800 mi
puts(results.size) # => 1
puts(results[0].point.inspect) # => [37.77, -122.41]
puts(results[0].data.inspect) # => "San Francisco"
# nearests within range using kilometer relative geo distance
results = tree.nearest_geo_range([42.35, -71.06], 500, :km) # Boston, within 500 km
puts(results.size) # => 2
puts(results[0].point.inspect) # => [45.5, -73.55]
puts(results[0].data.inspect) # => "Montreal"
puts(results[1].point.inspect) # => [40.7, -74.0]
puts(results[1].data.inspect) # => "New York"
# compute standard/Euclidean distance between two points
d = Geokdtree::Tree.distance([-1, 1], [1, 1])
puts(d) # => 2
# compute geo distance between two points (Montreal, Boston)
d = Geokdtree::Tree.geo_distance([45.5, -73.55], [42.35, -71.06], :km).round(0)
puts(d.inspect) # => 403
- Fort it
- Install gems
$ bundle install
- Compile lib
$ rake compile
- Run specs
$ rake spec
- Clean compiler generated files
$ rake clean
- Fork it
- Create your feature branch
git checkout -b my-new-feature
- Commit your changes
git commit -am 'Add some feature'
- Push to the branch
git push origin my-new-feature
- Create new Pull Request
- Based on the kdtree C code by John Tsiombikas.
Colin Surprenant, @colinsurprenant, http://github.com/colinsurprenant, [email protected]
Geokdtree is distributed under the Apache License, Version 2.0.