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Main Authors: Lu, Lan, Yin, Peiqi, Yang, Isaac, Luo, Tao, Fan, Hua, Zhou, Wenchao, Li, Feifei, Loo, Boon Thau
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2605.10135
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author Lu, Lan
Yin, Peiqi
Yang, Isaac
Luo, Tao
Fan, Hua
Zhou, Wenchao
Li, Feifei
Loo, Boon Thau
author_facet Lu, Lan
Yin, Peiqi
Yang, Isaac
Luo, Tao
Fan, Hua
Zhou, Wenchao
Li, Feifei
Loo, Boon Thau
contents Graph-based ANNS algorithms have gained increasing research interest and market adoption due to their efficiency and accuracy in retrieval. Existing approaches primarily rely on CPUs for graph index construction and retrieval, but this often requires significant time, especially for large-scale and high-dimensional datasets. Some studies have explored GPU-based solutions. However, GPUs are costly and their limited memory makes handling large datasets challenging. In this paper, we propose a novel end-to-end system ScaleGANN that enables users to efficiently construct graph indexes for large-scale, high-dimensional datasets by leveraging low-cost spot GPU resources in a distributed cloud system. ScaleGANN utilized the idea of divide-and-merge, with an optimized vector partitioning algorithm to further improve the indexing time and space efficiency while guaranteeing good index quality. Its novel resource allocation strategy realized multi-GPU indexing parallelism and overall cost-effectiveness for both build and query. Besides, we designed a task scheduler and cost model for better spot instance management and evaluation. We tested our system on large real-world datasets. Experiment results show that our approach can significantly accelerate the index build time to up to 9x times at even 6x lower price compared with the state-of-the-art extendable ANNS benchmark DiskANN.
format Preprint
id arxiv_https___arxiv_org_abs_2605_10135
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle ScaleGANN: Accelerate Large-Scale ANN Indexing by Cost-effective Cloud GPUs
Lu, Lan
Yin, Peiqi
Yang, Isaac
Luo, Tao
Fan, Hua
Zhou, Wenchao
Li, Feifei
Loo, Boon Thau
Databases
Graph-based ANNS algorithms have gained increasing research interest and market adoption due to their efficiency and accuracy in retrieval. Existing approaches primarily rely on CPUs for graph index construction and retrieval, but this often requires significant time, especially for large-scale and high-dimensional datasets. Some studies have explored GPU-based solutions. However, GPUs are costly and their limited memory makes handling large datasets challenging. In this paper, we propose a novel end-to-end system ScaleGANN that enables users to efficiently construct graph indexes for large-scale, high-dimensional datasets by leveraging low-cost spot GPU resources in a distributed cloud system. ScaleGANN utilized the idea of divide-and-merge, with an optimized vector partitioning algorithm to further improve the indexing time and space efficiency while guaranteeing good index quality. Its novel resource allocation strategy realized multi-GPU indexing parallelism and overall cost-effectiveness for both build and query. Besides, we designed a task scheduler and cost model for better spot instance management and evaluation. We tested our system on large real-world datasets. Experiment results show that our approach can significantly accelerate the index build time to up to 9x times at even 6x lower price compared with the state-of-the-art extendable ANNS benchmark DiskANN.
title ScaleGANN: Accelerate Large-Scale ANN Indexing by Cost-effective Cloud GPUs
topic Databases
url https://arxiv.org/abs/2605.10135