Production-ready billion scale vector database — Elasticsearch
Elasticsearch's open source vector database offers an efficient way to create, store, and search vector embeddings.
Combine text search and vector search for hybrid retrieval, resulting in the best of both capabilities for greater relevance and accuracy.
Discover the latest innovations that make Elasticsearch and Lucene the top choice for vector databases.
Read blogLearn to use Elasticsearch as a vector database for embeddings, powering search and building use cases like retrieval augmented generation (RAG), summarization, and Q&A.
Discover more on Search LabsElastic is the first to offer better binary quantization (BBQ), an optimization for vector databases with faster, more accurate vector search and 95% memory reduction.
Learn more about BBQElasticsearch — the most widely deployed vector database
A vector database is your starting point …
You need more than a vector database for a great search experience. Elasticsearch offers multiple retrieval types, flexible machine learning models, and advanced search features like aggregations, filtering, and auto-complete.
Run in the cloud, serverless, on-prem, or air gapped.
Use a machine learning model and apply it to your data at ingestion time.
Learn more about inference API & E5 model.
PUT _inference/text_embedding/my-e5-endpoint { "service": "elasticsearch", "service_settings": { "num_allocations": 1, "num_threads": 1, "model_id": ".multilingual-e5-small" } }
PUT _inference/text_embedding/my-e5-endpoint
{
"service": "elasticsearch",
"service_settings": {
"num_allocations": 1,
"num_threads": 1,
"model_id": ".multilingual-e5-small"
}
}
Vector database superset
Choose a vector database based on the vector search experience you want to build.
Some vector databases
Elasticsearch
store embeddings
full support
full support (free)
Generate embeddings
some support
full support (paid)
Search embeddings
full support
full support (free)
Search BM25
some support
full support (free)
Hybrid search (BM25 + Vectors)
full support
full support (free)
Filtering, faceting, aggregations
full support
full support (free)
Search autocomplete
no support
full support (free)
Optimized for multiple data type (text, vector, geo)
some support
full support (free)
Support for several embedding models
full support
full support (paid)
Built-in semantic search model
no support
full support (paid)
Data inference pipelines
some support
full support (paid)
Ingest tools (web crawler*, connectors*, API framework, beats, fleet, agent)
some support
full support (*paid)
Document and field level security
no support
full support (paid)
Observability tools (Kibana)
no support
full support (free)
Search UI components
no support
full support (free)
Elasticsearch — in action
See how organizations are building AI search applications to improve customer experience and help users find exactly what they're looking for.
Customer spotlight
Reed, the UK's largest recruiter, brings job searchers and employers together using vector embeddings in Elasticsearch.
Customer spotlight
Stack Overflow combines the power of human experts with generative AI to accelerate the retrieval of trusted information from developer knowledge bases.
Customer spotlight
Adobe scales, manages multiple use cases, and puts machine learning features to work with Elastic.
Get started implementing vector search
Blogs
Webinars
Demo projects
Frequently asked questions
A vector database stores information as vectors, which are numerical representations of data objects, also known as vector embeddings. It uses vector embeddings for multi-modal search across a massive data set of structured, unstructured, and semi-structured data, such as images, text, videos and audio. Vector databases are built to manage vector embeddings and therefore offer a complete solution for data management.
Vector embeddings leverage a machine learning model to translate text into numbers, allowing you to perform vector searches. By converting data into vectors, embeddings make it easier to compare, search, and analyze similarities between items in this space.
A vector database offers efficiency at scale by enabling seamless data migration across on-premises and cloud environments and providing storage for vector embeddings. Vector databases excel at similarity search, allowing you to find related items easily, which is essential for recommendation systems, image search, and content discovery. With semantic search capabilities, they go beyond simple keyword matching to deliver results based on meaning and context. By storing vector embeddings, they support AI and machine learning applications, making it easier to deploy NLP and recommendation models.
Yes, Elasticsearch is the world's most widely deployed, open source vector database offering you an efficient way to create, store, and search vector embeddings at scale. With Elastic's enterprise-ready vector database, you achieve fast query times and optimal performance, even with rapidly changing data. Built to scale, it delivers relevant, personalized search results while simplifying development processes.
Elastic offers all the benefits of a powerful vector database along with built-in security, regulatory compliance, and high availability. With over a decade of expertise in search, Elastic ensures top-tier search relevance and flexible deployment options. As a unified platform, Elastic minimizes tool sprawl and technical debt while delivering accurate answers with clear source citations.