2022
DOI: 10.48550/arxiv.2206.11408
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FINGER: Fast Inference for Graph-based Approximate Nearest Neighbor Search

Abstract: Approximate K-Nearest Neighbor Search (AKNNS) has now become ubiquitous in modern applications, for example, as a fast search procedure with two tower deep learning models. Graph-based methods for AKNNS in particular have received great attention due to their superior performance. These methods rely on greedy graph search to traverse the data points as embedding vectors in a database. Under this greedy search scheme, we make a key observation: many distance computations do not influence search updates so these… Show more

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