- Published on
How do vector databases work?
- Authors
- Name
- AbnAsia.org
- @steven_n_t
How are embeddings searched in vector databases?
Vector Databases are at the heart of modern AI systems, especially for tasks like search, recommendations, and retrieval-augmented generation (RAG). But how do they efficiently search embeddings?
🔹 Vector databases store unstructured data (e.g. texts and images)
🔹 Vector DBs use a vector search called Approximate Nearest Neighbor.
🔹 ANN is much faster than KNN which has a slow search time.
🔹 ANN groups vectors, searches the nearest group, and refines the search within the group.
Author
AiUTOMATING PEOPLE, ABN ASIA was founded by people with deep roots in academia, with work experience in the US, Holland, Hungary, Japan, South Korea, Singapore, and Vietnam. ABN Asia is where academia and technology meet opportunity. With our cutting-edge solutions and competent software development services, we're helping businesses level up and take on the global scene. Our commitment: Faster. Better. More reliable. In most cases: Cheaper as well.
Feel free to reach out to us whenever you require IT services, digital consulting, off-the-shelf software solutions, or if you'd like to send us requests for proposals (RFPs). You can contact us at [email protected]. We're ready to assist you with all your technology needs.
© ABN ASIA