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фильтрация метаданных

  • A real-time vector database for AI applications offering fast similarity search, scalable indexing, and embeddings management.
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    What is eigenDB?
    eigenDB is a purpose-built vector database tailored for AI and machine learning workloads. It enables users to ingest, index, and query high-dimensional embedding vectors in real time, supporting billions of vectors with sub-second search times. With features such as automated shard management, dynamic scaling, and multi-dimensional indexing, it integrates via RESTful APIs or client SDKs in popular languages. eigenDB also offers advanced metadata filtering, built-in security controls, and a unified dashboard for monitoring performance. Whether powering semantic search, recommendation engines, or anomaly detection, eigenDB delivers a reliable, high-throughput foundation for embedding-based AI applications.
    eigenDB Core Features
    • Real-time similarity search
    • Scalable vector indexing
    • RESTful API access
    • Client SDKs for Python and JavaScript
    • Metadata filtering and hybrid search
    • Enterprise-grade security controls
    • Automated shard management
    • Unified monitoring dashboard
    eigenDB Pro & Cons

    The Cons

    No information about pricing or enterprise features
    No direct mobile or browser extension support
    Limited information on scalability and real-world deployment cases

    The Pros

    Highly performant and fast in-memory vector database
    Lightweight and written in Go for efficiency
    Supports similarity search using HNSW algorithm
    Simple REST API for easy integration
    Open-source with an active development community
  • Open-source library providing vector-based long-term memory storage and retrieval for AI agents to maintain contextual continuity.
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    What is Memor?
    Memor offers a memory subsystem for language model agents, allowing them to store embeddings of past events, user preferences, and contextual data in vector databases. It supports multiple backends such as FAISS, ElasticSearch, and in-memory stores. Using semantic similarity search, agents can retrieve relevant memories based on query embeddings and metadata filters. Memor’s customizable memory pipelines include chunking, indexing, and eviction policies, ensuring scalable, long-term context management. Integrate it within your agent’s workflow to enrich prompts with dynamic historical context and boost response relevance over multi-session interactions.
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