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What are some general tips/pointers on vectorizing tree operations? Memory layout wise, algorithm wise, etc.

Some domain specific stuff:

  • Each parent node will have quite a few (20 - 200) child nodes.
  • Each node has a low probability of having child nodes.
  • Operations on the tree is mostly conditional walks.
  • The performance of walking over the tree is more important than insertion/deletion/search speeds.
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3 Answers

up vote 7 down vote accepted

Beware, this is very hard to implement. Last year a team of Intel, Oracle and UCSC presented an amazing solution "FAST: Fast Architecture Sensitive Tree Search on Modern CPUs and GPUs". They won the "Best Paper Award 2010" by ACM SIGMOD.

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Because of the random nature of trees it's not immediately obvious how vectorizing walks would be a big plus to you.

I would lay the tree out as a flat array of (parentid, node data) "node" items, sorted by parentid, so you can at least visit the children of a node together. Of course this doesn't give you much if your tree isn't "fat" (ie low number of children on average for a node).

Your best bet though is really just to emphasize on the brute force of SIMD, because you really can't do fancy random jumps through your list with this API.

Edit: I wouldn't throw out the normal tree class you most likely have though, implement the SIMD way and see if you really gain anything, I'm not convinced you will...

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What about using spectral graph theory algorithms? They should be much easy to vectorize, as they deal with matrices.

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