• Home
  • Categories
  • Tags
  • Pricing
  • Submit
    Decorative pattern
    1. Home
    2. Multi Model & Hybrid Databases
    3. Memgraph

    Memgraph

    In-memory graph database with native vector search capabilities powered by USearch. Combines vector embeddings with knowledge graphs for GraphRAG, enabling semantic similarity search alongside graph traversal.

    🌐Visit Website

    About this tool

    Overview

    Memgraph is an in-memory graph database platform that features native vector search capabilities powered by USearch, a high-performance C++ library implementing the Hierarchical Navigable Small World (HNSW) index structure.

    Key Features

    • Native Vector Search: Built-in vector search using HNSW algorithm (since version 3.2)
    • Single Platform: Combines graph database and vector search in one system
    • Production Ready: Fully supported with CREATE VECTOR INDEX, persists across restarts
    • High Performance: In-memory architecture for fast graph traversal and vector queries
    • GraphRAG Support: Seamless integration of vector embeddings with knowledge graphs

    Vector Search Implementation

    Index Types

    Memgraph supports single-store vector index on nodes where:

    • Vector values stored only in the vector index backend (USearch)
    • Property store keeps references (vector index IDs)
    • Efficient memory utilization

    Distance Metrics

    Supports multiple similarity measures:

    • Euclidean distance (L2)
    • Cosine similarity
    • Inner product

    GraphRAG Applications

    Memgraph enables powerful GraphRAG patterns by combining:

    • Graph Database: Stores entities and relationships for multi-hop reasoning
    • Vector Search: Semantic similarity matching for natural language queries
    • Dynamic Updates: Real-time knowledge graph updates

    Example Use Case: Biomedical Knowledge

    • Store biomedical entities (genes, drugs, diseases) as graph nodes
    • Vector embeddings for semantic search
    • Relationship traversal for complex queries
    • Multi-hop reasoning across connected entities

    Use Cases

    • RAG Systems: Retrieval based on semantic similarity + graph context
    • Recommendation Engines: User-item matching with relational context
    • Fraud Detection: Pattern recognition with relationship analysis
    • Knowledge Discovery: Uncover hidden insights through graph connections
    • Question Answering: Combine semantic search with knowledge graphs
    • Research Tools: Link semantically similar concepts across domains

    Integration

    • Python client library
    • Cypher query language (extended for vector operations)
    • REST API
    • Kafka, Pulsar streaming integrations
    • LangChain compatibility for RAG workflows

    Technical Specifications

    • Storage: In-memory with optional disk persistence
    • Query Language: Cypher with vector extensions
    • Vector Index: HNSW via USearch
    • Graph Processing: Native property graph model
    • ACID Transactions: Full transactional support

    Pricing

    Memgraph offers:

    • Open-source Community Edition (free)
    • Enterprise Edition with advanced features
    • Cloud-managed options

    Contact sales for enterprise pricing details.

    Surveys

    Loading more......

    Information

    Websitememgraph.com
    PublishedMar 11, 2026

    Categories

    1 Item
    Multi Model & Hybrid Databases

    Tags

    3 Items
    #Graph Database#Vector Search#In Memory

    Similar Products

    6 result(s)
    CozoDB

    General-purpose, transactional, relational-graph-vector database that uses Datalog for queries. Embeddable but capable of handling large amounts of data and concurrency with HNSW indices for high-performance vector similarity searches.

    Neo4j Vector Search

    An enhancement to the Neo4j graph database providing vector search capabilities through dedicated indexes.

    HelixDB

    HelixDB is a powerful, open-source graph-vector database built in Rust, designed for intelligent data storage for Retrieval-Augmented Generation (RAG) and AI applications. It combines graph database features with vector search, making it directly relevant to AI and machine learning workflows that require vector data management.

    Valkey

    Valkey is an open-source in-memory key-value data store that supports vector search operations, making it useful for AI and machine learning vector database workloads. It is also a specialized open-source vector database designed for efficient management and retrieval of high-dimensional vector data, offering advanced APIs and optimized storage for AI workloads.

    ChromaDB

    ChromaDB (also known as Chroma or chroma-core) is an open-source vector database focused on LLM applications, emphasizing simplicity and in-memory HNSW-based dense vector search. It is suited for prototyping, metadata filtering, and offers a user-friendly interface for building and testing vector search applications, though it currently lacks hybrid and distributed features.

    Neo4j

    Neo4j is a graph database that has added vector search capabilities, providing unique and effective approaches for retrieval augmented generation (RAG) and other AI applications.

    Decorative pattern
    Built with
    Ever Works
    Ever Works

    Connect with us

    Stay Updated

    Get the latest updates and exclusive content delivered to your inbox.

    Product

    • Categories
    • Tags
    • Pricing
    • Help

    Clients

    • Sign In
    • Register
    • Forgot password?

    Company

    • About Us
    • Admin
    • Sitemap

    Resources

    • Blog
    • Submit
    • API Documentation
    All product names, logos, and brands are the property of their respective owners. All company, product, and service names used in this repository, related repositories, and associated websites are for identification purposes only. The use of these names, logos, and brands does not imply endorsement, affiliation, or sponsorship. This directory may include content generated by artificial intelligence.
    Copyright © 2025 Awesome Vector Databases. All rights reserved.·Terms of Service·Privacy Policy·Cookies