LGDBIRSep 29, 2025

Scalable Disk-Based Approximate Nearest Neighbor Search with Page-Aligned Graph

arXiv:2509.25487v29 citationsh-index: 2
Originality Incremental advance
AI Analysis

This work addresses scalability issues for large-scale vector search in AI and ML systems, such as vector databases, by improving disk-based ANNS performance, though it is incremental as it builds on existing disk-based approaches.

The paper tackles the scalability limitations of disk-based approximate nearest neighbor search (ANNS) by proposing PageANN, a framework that aligns graph nodes with SSD pages to reduce I/O operations, resulting in 1.85x-10.83x higher throughput and 51.7%-91.9% lower latency compared to state-of-the-art methods.

Approximate Nearest Neighbor Search (ANNS), as the core of vector databases (VectorDBs), has become widely used in modern AI and ML systems, powering applications from information retrieval to bio-informatics. While graph-based ANNS methods achieve high query efficiency, their scalability is constrained by the available host memory. Recent disk-based ANNS approaches mitigate memory usage by offloading data to Solid-State Drives (SSDs). However, they still suffer from issues such as long I/O traversal path, misalignment with storage I/O granularity, and high in-memory indexing overhead, leading to significant I/O latency and ultimately limiting scalability for large-scale vector search. In this paper, we propose PageANN, a disk-based approximate nearest neighbor search (ANNS) framework designed for high performance and scalability. PageANN introduces a page-node graph structure that aligns logical graph nodes with physical SSD pages, thereby shortening I/O traversal paths and reducing I/O operations. Specifically, similar vectors are clustered into page nodes, and a co-designed disk data layout leverages this structure with a merging technique to store only representative vectors and topology information, avoiding unnecessary reads. To further improve efficiency, we design a memory management strategy that combines lightweight indexing with coordinated memory-disk data allocation, maximizing host memory utilization while minimizing query latency and storage overhead. Experimental results show that PageANN significantly outperforms state-of-the-art (SOTA) disk-based ANNS methods, achieving 1.85x-10.83x higher throughput and 51.7%-91.9% lower latency across different datasets and memory budgets, while maintaining comparable high recall accuracy.

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