-

Qdrant Raises $28M to Advance Massive-Scale AI Applications

Funding Fuels Expansion of Qdrant’s Open-Source Vector Database, Enhancing Scalability and Efficiency for Next-Gen AI Use Cases.

BERLIN--(BUSINESS WIRE)--Qdrant, the leading high-performance, open-source vector database, today announced the successful completion of its Series A funding round, securing a $28M investment led by Spark Capital, with participation from existing investors Unusual Ventures and 42CAP.

Qdrant excels in managing and searching high-dimensional data and in handling billions of vectors with unmatched efficiency and scale, making it indispensable in modern AI and machine learning applications across industries. In the past year, Qdrant has exceeded 5M downloads and has seen tremendous enterprise adoption with companies like Deloitte, Hewlett Packard Enterprise, Bayer, and many more Fortune 500 companies. Qdrant recently also expanded its managed cloud offering through collaborations with AWS, Google Cloud, and Microsoft Azure.

Committed to privacy and security, crucial for modern AI applications, Qdrant now also offers on-premise and hybrid SaaS solutions, meeting diverse enterprise needs in a data-sensitive world. This approach, coupled with its open-source foundation, builds trust and reliability among engineers and developers, making Qdrant a game-changer in the vector database domain.

“We have seen incredible user growth and support from our open-source community in the past two years, a testament to our mission of building the most efficient, scalable, high-performance vector database on the market. We are excited to further accelerate this trajectory with our new partner and investor, Spark Capital, and the continued support of Unusual Ventures and 42CAP. This partnership uniquely positions us to empower enterprises with cutting edge vector search technology to build truly differentiating, next-gen AI applications at scale.” - André Zayarni, CEO & Co-Founder, Qdrant

“All of us at Spark are thrilled to partner with the Qdrant team as they continue to build the most powerful vector search database and infrastructure. Much of the world’s data will eventually be stored in some form of vector space; as the volume of vectorized data multiplies, Qdrant will stand out as the only technology built from scratch with ease of use, speed, and unparalleled scalability in mind.” - Yasmin Razavi, General Partner at Spark Capital

To learn more about Qdrant, please visit qdrant.tech.

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.

Contacts

André Zayarni
CEO & Co-Founder, Qdrant
press@qdrant.com

Qdrant



Contacts

André Zayarni
CEO & Co-Founder, Qdrant
press@qdrant.com

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