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    3. Accelerating Graph Indexing for ANNS on Modern CPUs

    Accelerating Graph Indexing for ANNS on Modern CPUs

    SIGMOD 2025 paper proposing optimizations for graph-based approximate nearest neighbor search indexing on modern CPU architectures, leveraging SIMD instructions and cache-aware algorithms for improved index construction performance.

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    Information

    Websitedl.acm.org
    PublishedApr 4, 2026

    Categories

    1 Item
    Research Papers & Surveys

    Tags

    3 Items
    #cpu-optimization#graph-index#high-performance

    Similar Products

    6 result(s)

    FINGER — Fast Inference for Graph-based ANNS

    FINGER provides a fast inference framework for graph-based approximate nearest neighbor search, optimizing search path traversal to reduce query latency while maintaining high recall. Published at Web 2023.

    Accelerating ANNS in Hierarchical Graphs via Shortcuts

    VLDB 2025 paper proposing efficient level navigation with shortcuts for accelerating approximate nearest neighbor search in hierarchical graph indexes, improving traversal speed across multi-layer graph structures.

    Accelerating Graph-based ANNS with Adaptive Awareness

    SIGKDD 2025 paper proposing adaptive awareness capabilities for graph-based approximate nearest neighbor search, enabling the search algorithm to dynamically adjust its strategy based on local graph characteristics and query properties.

    ARKGraph — All-Range Approximate K-Nearest-Neighbor Graph

    VLDB 2023 paper proposing ARKGraph, a graph-based method for all-range approximate k-nearest neighbor search that adapts to various recall requirements.

    EFANNA — Extremely Fast Approximate Nearest Neighbor Search Based on kNN Graph

    Paper proposing EFANNA, an extremely fast approximate nearest neighbor search algorithm based on kNN graph construction. The method introduces an efficient approximate kNN graph building approach and a search algorithm that achieves state-of-the-art query performance.

    ELPIS — Graph-Based Similarity Search for Scalable Data Science

    VLDB 2023 paper presenting ELPIS, a graph-based similarity search approach that combines graph indexing with learning-based techniques for scalable data science applications on large datasets.

    Overview

    Proposes CPU-specific optimizations for accelerating graph index construction in approximate nearest neighbor search.

    Key Contributions

    • SIMD-optimized graph construction algorithms
    • Cache-aware data layout for graph indexes
    • Parallel construction strategies for modern multi-core CPUs
    • Published in SIGMOD 2025

    Publication

    • Venue: SIGMOD 2025
    • Authors: Wang et al.