KIOXIA AiSAQ Technology Integrated into Milvus Vector Database

KIOXIA Europe today announced that its KIOXIA AiSAQ, which is Approximate Nearest Neighbor Search (ANNS) software technology, has been integrated into the open-source vector database Milvus beginning with version v2.6.4. With this integration, Milvus users can take full advantage of AiSAQ SSD-optimised vector search capabilities, providing developers and enterprises with a practical and cost-efficient path to scaling AI applications without facing the difficulty of scaling DRAM memory size typically associated with large-scale vector search.
“The AI industry is shifting from building massive foundation models to deploying scalable, cost-effective inference solutions that address real-world challenges. RAG (Retrieval Augmented Generation) is central to this transition, and AiSAQ technology was developed to help the community leverage SSD-based vector architectures,” explains Axel Störmann, VP & Chief Technology Officer at KIOXIA Europe GmbH. “Its integration into the Milvus ecosystem enhances ease of adoption within the open-source community and supports developers building faster, more efficient AI applications.”
First announced earlier this year, AiSAQ is an open-source software technology designed to dramatically improve vector scalability by storing all RAG-related database elements on SSDs[1]. As DRAM scalability has become a critical bottleneck for high-volume inference and RAG workloads, AiSAQ technology provides a breakthrough by sharply reducing DRAM requirements while maintaining high-quality vector search accuracy.
With AiSAQ technology now integrated into Milvus, KIOXIA and the open-source community are enabling a new class of scalable, cost-efficient vector search solutions designed to meet the rapidly growing demands of modern AI applications.



