• Home
  • Categories
  • Tags
  • Pricing
  • Submit
    Decorative pattern
    1. Home
    2. Vector Database Engines
    3. vector engine for OpenSearch Serverless

    vector engine for OpenSearch Serverless

    An on-demand serverless configuration for OpenSearch Service that simplifies the operational complexities of managing OpenSearch domains, integrated with Knowledge Bases for Amazon Bedrock to support generative AI applications.

    🌐Visit Website

    About this tool

    Vector Engine for OpenSearch Serverless

    Overview Amazon OpenSearch Service as a Vector Database allows you to build vector-driven search and enterprise AI applications with a scalable, secure, and high-performance vector database.

    Features

    • High-performance search across billions of vectors: Seamlessly combines vector embeddings with text-based keyword queries in a single search request. It utilizes advanced nearest neighbor algorithms like ANN (across HNSW and IVF) and exact k-NN vector search with auto-scaling to deliver low-latency similarity searches across billions of vectors. This reduces system complexity and accelerates time-to-market for AI-powered applications such as hybrid, semantic, multi-modal, conversational search, recommendation systems, AI chatbots, and other modern generative AI applications.
    • Cost-optimized scalability, deployment flexibility, and ease-of-use: Scales to billions of high-dimensional vectors while optimizing storage costs with disk-based vector storage and intelligent data lifecycle management. OpenSearch Service simplifies vector database operations, offering an easy-to-use interface for both fully managed and serverless configurations. Users can choose between precise control with managed clusters or automatic resource optimization with serverless to efficiently scale vector workloads without unnecessary costs. Both options ensure fast query responses across all storage levels and leverage intelligent data lifecycle management for cost optimization. Its intuitive console and APIs facilitate straightforward deployment, management, and scaling.
    • Real-time updates for enhanced responsiveness: Supports adding, updating, or deleting vector embeddings in real-time without re-indexing or impacting query performance. This ensures AI models and search applications remain responsive to dynamic data changes, making it suitable for use cases like e-commerce personalization or anomaly detection.
    • Seamless integration with AWS services and third-party AI models: Integrates with various AWS services and third-party AI platforms to support modern generative AI applications. Features include zero-ETL integration with Amazon DynamoDB and Amazon DocumentDB for vector search across operational data, and native two-way integration with Amazon Bedrock for streamlining generative AI workflows (e.g., connecting foundation models to knowledge bases for embedding generation and RAG applications). It is the AWS recommended vector database for Amazon Bedrock. Developers can also leverage Amazon SageMaker for model training and deployment or connect to Amazon Titan or third-party models like OpenAI, Cohere, and DeepSeek via pre-built connectors.
    • Fully managed and open source for increased reliability and innovation: Delivered as a fully managed service that ensures enterprise reliability while benefiting from open-source innovation.

    Pricing Pricing information is not available in the provided content.

    Surveys

    Loading more......

    Information

    Websiteaws.amazon.com
    PublishedJul 1, 2025

    Categories

    1 Item
    Vector Database Engines

    Tags

    3 Items
    #Cloud Native#Serverless#OpenSearch

    Similar Products

    6 result(s)
    Amazon Aurora Serverless v2
    Featured

    An on-demand, auto-scaling configuration for Amazon Aurora DB instances that automatically adjusts compute and memory capacity based on load, integrated with Knowledge Bases for Amazon Bedrock to simplify vectorization and database capacity management.

    LanceDB Cloud

    Fully managed serverless vector database service with automatic scaling and infrastructure management. Seamless transition from LanceDB OSS with the same SDK, starting at $16.03/month with $100 free credits.

    Data Cloud Vector Database
    Featured

    Built into the Salesforce platform, Data Cloud Vector Database ingests various large datasets from customer interactions, classifies and organizes unstructured data, and merges it with structured data to enrich customer profiles and store as metadata in Data Cloud. It enhances generative AI by providing more relevant, accurate, and up-to-date responses through improved data retrieval and semantic search capabilities.

    Amazon Web Services Vector Search

    AWS has introduced vector search in several of its managed database services, including OpenSearch, Bedrock, MemoryDB, Neptune, and Amazon Q, making it a comprehensive platform for vector search solutions.

    AstraDB

    AstraDB (also known as Astra DB by DataStax) is a cloud-native vector database built on Apache Cassandra, supporting real-time AI applications with scalable vector search. It is designed for large-scale deployments and features a user-friendly Data API, robust vector capabilities, and automation for AI-powered applications.

    Google Cloud Vertex AI Vector Search

    Google Cloud Platform offers vector search as part of its Vertex AI suite, enabling scalable and integrated vector search capabilities for AI-driven 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