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Approximate nearest-neighbor search (ANNS) algorithms are a key part of the modern deep learning stack due to enabling efficient similarity search over high-dimensional vector space representations (i.e., embeddings) of data. Among various ANNS algorithms, graph-based algorithms are known to achieve the best throughput-recall tradeoffs. Despite the large scale of modern ANNS datasets, existing parallel graph-based implementations suffer from significant challenges to scale to large datasets due to heavy use of locks and other sequential bottlenecks, which 1) prevents them from efficiently scaling to a large number of processors, and 2) results in non-determinism that is undesirable in certain applications.
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M. Manohar
Microsoft (United States)
Zheqi Shen
University of California, Riverside
Guy E. Blelloch
University of California, Riverside
University of Maryland, College Park
Carnegie Mellon University
University of California, Riverside
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Manohar et al. (Tue,) studied this question.
synapsesocial.com/papers/68e785bab6db6435876f8749 — DOI: https://doi.org/10.1145/3627535.3638475