Firebolt supports vector search but does not generate embeddings. Unlike dedicated vector databases, which specialize in unstructured data, Firebolt integrates vector search within a high-performance analytical data warehouse. This allows you to run hybrid queries (structured + unstructured) efficiently without managing separate systems.
If you already have embeddings generated from models like OpenAI, Hugging Face, or your own ML pipeline, Firebolt can store and query them at high speed and low latency, enabling AI-powered search and recommendations within your existing analytics environment.