awesome-repositories.com
المدونة
awesome-repositories.com

اكتشف أفضل مستودعات المصادر المفتوحة باستخدام بحث مدعوم بالذكاء الاصطناعي.

استكشفعمليات بحث منسقةبدائل مفتوحة المصدربرمجيات ذاتية الاستضافةالمدونةخريطة الموقع
المشروعحولكيفية ترتيب النتائجالصحافةخادم MCP
قانونيالخصوصيةالشروط
© 2026 Bringes Technology SRL·VAT RO45896025·hello@awesome-repositories.com
·

2 مستودعات

Awesome GitHub RepositoriesMultivector Search

Retrieval systems that store multiple vectors per document for granular relevance scoring.

Distinguishing note: Distinct from standard single-vector similarity search.

Explore 2 awesome GitHub repositories matching data & databases · Multivector Search. Refine with filters or upvote what's useful.

Awesome Multivector Search GitHub Repositories

اعثر على أفضل المستودعات باستخدام الذكاء الاصطناعي.سنبحث عن أفضل المستودعات المطابقة باستخدام الذكاء الاصطناعي.
  • qdrant/qdrantالصورة الرمزية لـ qdrant

    qdrant/qdrant

    32,372عرض على GitHub↗

    Qdrant is a high-performance vector similarity database designed to store, index, and search high-dimensional vectors alongside structured metadata. It functions as a distributed search engine that manages large-scale data clusters, providing low-latency retrieval and complex filtering capabilities. The system is built to serve as a specialized middleware layer, connecting machine learning pipelines and AI agents to persistent storage for intelligent information retrieval and recommendation tasks. The platform distinguishes itself through advanced retrieval techniques, including support for h

    Retrieves documents with high accuracy using multiple token-level vectors per document.

    Rustai-searchai-search-engineembeddings-similarity
    عرض على GitHub↗32,372
  • lancedb/lancedbالصورة الرمزية لـ lancedb

    lancedb/lancedb

    9,031عرض على GitHub↗

    LanceDB is a vector database and columnar data store designed to function as a versioned dataset manager and vector search engine. It serves as a high-performance backend for indexing and retrieving high-dimensional embeddings, providing the foundation for machine learning data pipelines. The system distinguishes itself through a combination of cloud-native object storage and immutable version tracking, allowing for data time-travel and reproducible AI experiments. It integrates hybrid search capabilities, merging dense vector similarity with BM25 full-text search and SQL-like scalar filters

    Supports late interaction search by matching query vectors against documents containing multiple embeddings.

    HTMLapproximate-nearest-neighbor-searchimage-searchnearest-neighbor-search
    عرض على GitHub↗9,031
  1. Home
  2. Data & Databases
  3. Multivector Search