Qdrant
High-performance vector search engine written in Rust. Offers both cloud-managed and self-hosted options with excellent filtering and payload support.
Visit QdrantAt a Glance
Pricing
Free tier (1GB), then $25/mo cloud; open-source self-hosted
Best For
Performance-sensitive workloads with complex filtering needs
Qdrant by Industry
See how Qdrant fits into the AI stack for each industry.
Compare Qdrant
Alternatives to Qdrant
Fully managed vector database with zero operational overhead, excellent developer experience, and seamless scaling from prototype to billions of vecto...
Pricing: Free tier (100K vectors), then $70/mo Starter
Open-source vector database with built-in hybrid search combining vector and keyword matching. Strong module ecosystem for vectorization and ML integr...
Pricing: Free sandbox, then $25/mo Serverless; open-source self-hosted
PostgreSQL extension adding vector similarity search to your existing Postgres database. Supports IVFFlat and HNSW indexes with zero additional infras...
Pricing: Free (open-source PostgreSQL extension)
Related Reading
Vector Databases Compared: Pinecone vs Weaviate vs Qdrant vs Milvus
Choosing the right vector database for your AI application matters more than you think. I've run production workloads on all four—here's what actually performs, scales, and costs in 2026.
5 Common RAG Pipeline Mistakes (And How to Fix Them)
Retrieval-Augmented Generation is powerful, but these common pitfalls can tank your accuracy. Here's what to watch for.
The State of Embedding Models in 2026
A comprehensive comparison of embedding models for semantic search, RAG, and similarity tasks.