ATLAS

Vector Search

Build intelligent applications powered by semantic search and generative AI using native, full-featured vector database capabilities.

Illustration of vectors
Illustration of AI Industry

What is vector search?

Generative AI uses vectors to enable intelligent semantic search over unstructured data (text, images, and audio). Vectors are critical in building recommendation engines, anomaly detection, and conversational AI. The wide range of use cases, made possible with native capabilities in MongoDB, deliver transformative user experiences.

The combined power of vectors and MongoDB

Unparalleled simplicity

Avoid the synchronization tax. With Atlas Vector Search built into the core database, there’s no need to sync data between your operational and vector databases—saving time, reducing complexity, and preventing errors. Your operational and vector data stay in one place.

Illustration with an example of how this feature works.
Illustration with an example of how this feature works.

Powerful query capabilities

Easily combine vector queries with filters on meta-data, graph lookups, aggregation pipelines, geo-spatial search, and lexical search for powerful hybrid search use cases within a single database.

Superior scaling for vector search apps

Unlike other solutions, MongoDB’s distributed architecture scales vector search independently from the core database. This enables true workload isolation and optimization for vector queries, resulting in superior performance at scale.

Illustration with an example of how this feature works.

Enterprise-ready vector database

Security and high availability are built in. Because vector data is stored directly in Atlas with your operational data, you can rest assured your workloads are running with the same trusted enterprise-grade security and availability MongoDB is known for.


Atlas Vector Search customer successes

View all customers
10 minutesClinical report creation time
“Only MongoDB Atlas gives us the flexibility and scale at the data platform layer to experiment in how to harness one of the biggest technical advancements the industry has ever seen.”
Louise Lind Skov
Head of Content Digitalisation, Novo Nordisk

FEATURED INTEGRATIONS

Vector search use cases

View all use cases
Search

Semantic Search

Focuses on meaning and prioritizes user intent by deciphering not just what users type but why they're searching, in order to provide more accurate and context-oriented search results.

Learn more
Generative AI

Retrieval-Augmented Generation (RAG)

Implement RAG for your generative AI applications by combining Atlas Vector Search with a large language model (LLM) of your choice.

Start building now
Generative AI

Agentic Systems

Incorporate vector search to provide agentic systems with relevant context and semantic understanding, so they can be more effective and reliable.

Watch the webinar

Learning hub

mdb_vector_search

Future proof your search strategy with gen AI

See how generative AI is shaping the future of search, and how to redefine your strategy for the optimal outcomes.

Read the white paper
general_events_breakout

RAG: Beyond the Chatbot

Explore how retrieval-augmented generation (RAG) can be integrated into enterprise workflows to power impactful use cases beyond simple chatbots.

Read the white paper
general_content_tutorial

Harness the power of Atlas Vector Search

Learn how to get the most out of Atlas Vector Search in various development use cases.

View tutorials
general_features_scale_bigger

Accelerate AI strategy and deployment

Work with AI experts, LLM services, cloud providers, and system integrators in the MongoDB AI Applications Program.

Learn more

FAQ

Get started with Atlas Vector Search

See how you can convert your data into vector embeddings, retrieve them with search capabilities, and build intelligent applications quickly and easily in MongoDB Atlas.
Start building with:
  • Simplified deployment
  • Unified developer experience
  • Horizontal, vertical, independent scale
  • Integrated AI ecosystem
  • 118+ regions worldwide