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SOAR

SOAR is a set of improved algorithms on top of ScaNN that accelerate vector search by introducing controlled redundancy and multi-cluster assignment, enabling faster approximate nearest neighbor retrieval with smaller indexes in large‑scale vector databases and search systems.

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SOAR

Brand: Google Research
Category: Research Papers & Surveys
Type: Vector search algorithm (on top of ScaNN)
Source: SOAR: New algorithms for even faster vector search with ScaNN

SOAR illustration

Description

SOAR (Spilling with Orthogonality-Amplified Residuals) is a set of improved algorithms built on top of the ScaNN vector search library. It focuses on accelerating approximate nearest neighbor (ANN) search over large-scale embedding datasets by introducing controlled redundancy and multi-cluster assignment. This design enables faster vector similarity search while keeping index sizes relatively small and preserving key index quality metrics.

Key Details

  • Domain: Approximate nearest neighbor (ANN) / vector similarity search
  • Primary use cases: Large-scale embedding search for ML applications (e.g., image, web, media retrieval; retrieval-augmented generation systems)
  • Publication: “SOAR: Improved Indexing for Approximate Nearest Neighbor Search” (NeurIPS 2023)
  • Underlying system: Extends and enhances the ScaNN open-source vector search library

Features

  • Improved indexing for ANN search

    • Introduces a new indexing approach (SOAR) that refines how ScaNN structures and searches large embedding datasets.
  • Controlled redundancy in the vector index

    • Adds mathematically designed redundancy to the index to improve search efficiency.
    • Redundancy is engineered to have minimal impact on overall index size and other index metrics.
  • Multi-cluster assignment

    • Assigns vectors to multiple clusters (multi-cluster assignment) to increase the likelihood that true nearest neighbors are retrieved quickly.
    • Supports faster approximate nearest neighbor retrieval, especially at large scales.
  • Orthogonality-amplified residuals (conceptual)

    • Uses residual-based techniques that emphasize orthogonality properties to make redundancy more effective for search.
    • Designed to complement ScaNN’s existing partitioning and scoring mechanisms.
  • Faster vector search at scale

    • Targets large-scale deployments where brute-force search is infeasible.
    • Aims to reduce latency and computation per query for vector similarity search workloads.
  • Smaller, efficient indexes

    • Seeks a balance between added redundancy and compact index representation, keeping index growth modest while improving recall and performance.
  • Integration with ScaNN

    • Builds directly on the ScaNN library, which is already widely used and open-sourced.
    • Can be applied in settings where ScaNN is used for embedding-based retrieval within production ML systems.

Applications

  • Large-scale embedding retrieval for search and recommendation systems.
  • Retrieval-augmented generation (RAG) workflows requiring fast ANN lookup.
  • Any ML system that relies on efficient vector similarity search over very large collections of embeddings.

Pricing

Not applicable. SOAR is presented as a research contribution and algorithmic improvement to the open-source ScaNN library; no pricing information is provided in the source content.

Surveys

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Information

Websiteresearch.google
PublishedDec 25, 2025

Categories

1 Item
Research Papers & Surveys

Tags

3 Items
#ANN
#vector search
#optimization

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