-

Qdrant Launches Groundbreaking Pure Vector-Based Hybrid Search, Setting Higher Standards for RAG and AI Applications

BERLIN & NEW YORK--(BUSINESS WIRE)--Qdrant, the leading high-performance open-source vector database, today announced the launch of BM42, a pure vector-based hybrid search approach that delivers more accurate and efficient retrieval for modern retrieval-augmented generation (RAG) applications. The BM42 search algorithm marks a significant step forward beyond traditional text-based search for RAG and AI applications.

#Qdrant launches a pure vector-based hybrid search algorithm that delivers more accurate and efficient retrieval for modern RAG applications. A significant step forward beyond traditional text-based search for #AI applications.

Share

BM42 provides enterprises another choice – not just traditional text search or traditional vector search. This pure vector-based hybrid search combines the best of both to achieve better results at lower costs in the realm of RAG. This will help users excel in the unfolding AI-centric world.

Shifting from Keyword to Vector-First Search

Traditional keyword-based search engines, using algorithms like BM25 that have been around for over 50 years, are not optimized for the precise retrieval needed in modern applications and so struggle with specific RAG demands, particularly with short text segments that require further context to inform successful search and retrieval.

“By moving away from keyword-based search to a fully vector-based approach, Qdrant sets a new industry standard,” said Andrey Vasnetsov, Qdrant CTO & Co-Founder. “BM42, for short texts which are more prominent in RAG scenarios, provides the efficiency of traditional text search approaches, plus the context of vectors, so is more flexible, precise and efficient. While Qdrant envisions a future centered on vector-based search, this release helps to make vector search more universally applicable and marks a significant step toward the inevitable shift toward a vector-first approach.”

Qdrant's BM42 introduces a new way of classifying search results and is well suited for RAG applications. Unlike traditional keyword-based search suited for long-form content, Qdrant’s solution integrates sparse and dense vectors to accurately pinpoint relevant information within a document. A sparse vector handles exact term matching. Dense vectors handle semantic relevance and deep meaning.

Boosting Accuracy, Efficiency, and Scalability

Developers often face critical decisions about choosing between sparse or dense vectors or a hybrid approach. Many existing hybrid solutions struggle with scalability and accuracy or are prohibitively expensive. Qdrant's new hybrid search system addresses these challenges, providing an efficient, and cost-effective solution for both new and existing users. Most importantly, BM42 will enable users to quickly jump from prototype to production quickly, and then scale the solution globally.

Learn more about the announcement here: qdrant.tech/articles/bm42

About Qdrant

Qdrant is the leading, high-performance, scalable, open-source vector database and search engine, essential for building the next generation of AI/ML applications. Qdrant is able to handle billions of vectors, supports the matching of semantically complex objects, and is implemented in Rust for performance, memory safety, and scale. Recently, the company was recognized among the top 10 startups on Sifted’s 2024 B2B SaaS Rising 100, which annually ranks Europe's most promising B2B SaaS startups valued under $1bn.

Contacts

For more information, please visit Qdrant's website or contact:
press@qdrant.com

Qdrant


Release Summary
Qdrant launches pure vector-based hybrid search delivering more accurate and efficient retrieval for modern RAG, AI applications.
Release Versions

Contacts

For more information, please visit Qdrant's website or contact:
press@qdrant.com

Social Media Profiles
More News From Qdrant

Qdrant Introduces Tiered Multitenancy to Eliminate Noisy Neighbor Problems in Vector Search

BERLIN & NEW YORK--(BUSINESS WIRE)--Qdrant, the open-source vector search engine used by enterprises and AI-native teams, today announced Tiered Multitenancy, a new capability that helps organizations isolate heavy-traffic tenants, improve performance, and scale vector search workloads more efficiently. It is part of the v1.16 release. Modern AI platforms often serve thousands of small tenants alongside a few large enterprise users with significantly higher throughput requirements. This uneven...

Qdrant Announces Qdrant Edge: The First Vector Search Engine for Embedded AI

BERLIN & NEW YORK--(BUSINESS WIRE)--Qdrant, the leading provider of high-performance, open-source vector search, today announced the private beta of Qdrant Edge, a lightweight, embedded vector search engine designed for AI systems running on devices such as robots, point of sales, home assistants, and mobile phones. Qdrant Edge brings vector-based retrieval to resource-constrained environments where low latency, limited compute, and limited network access are fundamental constraints. It enables...

Qdrant Launches Qdrant Cloud Inference to Unify Embeddings and Vector Search Across Multiple Modalities

BERLIN & NEW YORK--(BUSINESS WIRE)--Qdrant Cloud Inference unifies dense, sparse, and image embeddings with vector search to simplify workflows and accelerate AI development....
Back to Newsroom