Milvus
Billion-scale vector search
LanceDB is an open-source, AI-native multimodal lakehouse designed for billion-scale vector search. Founded in 2022 by Chang She and Lei Xu as part of Y Combinator's Winter 2022 batch, LanceDB is built on the Lance columnar format and combines embedded simplicity with cloud-scale performance. The platform enables users to store, query, and filter vectors, metadata, and multi-modal data (text, images, videos, point clouds, and more) with support for vector similarity search, full-text search, and SQL. LanceDB offers blazing fast hybrid search, filter, and rerank over billions of vectors with compute-storage separation for up to 100x cost savings. The platform includes zero-copy automatic versioning, allowing users to manage versions of data without needing extra infrastructure. LanceDB's disk-based architecture with compute-storage separation enables up to 100x cost savings compared to memory-based solutions while supporting multimodal data. Based in San Francisco with approximately 30 employees, LanceDB hit $2.3M in revenue with a 15-person team in 2024.
What this tool does well, and the limitations to keep in mind.
Pros
Cons
Top companies in Vector Databases you can use instead of LanceDB.
Milvus
Billion-scale vector search
Pinecone
Fully managed serverless vector database
Qdrant
High-performance open-source vector search
Chroma
Lightweight embedded vector database
Supabase
pgvector hosting
Weaviate
Open-source vector database
Neo4j
Native graph database with Cypher query language
MongoDB Atlas Vector Search
Elasticsearch
Redis Vector
ClickHouse
Analytics + vector
Vespa
Neon
Serverless Postgres
TigerGraph
Turbopuffer
SingleStore
ArangoDB
Side-by-side comparisons with other tools in this category.
Companies from adjacent layers in the AI stack that work well with LanceDB.