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I'm wondering how a geospatial index, such as the one used by MongoDB, works. Can anyone explain what data structure/algorithm is used internally? What time complexity does a search run in?

Links to resources would be great too.

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closed as not constructive by Will Mar 19 '13 at 12:07

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2 Answers 2

up vote 11 down vote accepted

Depending on the data type and usage pattern, either an R-Tree or variant (R*, R+) or a quadtree or perhaps even a kd-tree.

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According to this other SO question:

The current implementation encodes geographic hash codes atop standard MongoDB B-trees. Results of $near queries are exact. One limitation with this encoding, while fast, is that prefix lookups don't give exact results, especially around bit flip areas. MongoDB solves this by doing a grid-neighbor search after the initial prefix scan to pick up any straggler points. This generally ensures that performance remains very high while providing correct results.

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