Breaking News

Viltrox Launches AF 75mm F1.8 EVO and AF 90mm F2.2 Lenses COLORFUL Unveils New iGame M15 and M16 Origo Gaming Laptops at COMPUTEX 2026 GIGABYTE Showcases Sleek STEALTH and Elegant WOOD PC Builds at COMPUTEX 2026 GIGABYTE Showcases Industry-leading CQDIMM Performance and Ecosystem Expansion at COMPUTEX 2026 G.SKILL Demos Trident Z5 NeoX RGB Series DDR5 with AMD EXPOT Technology

logo

  • Share Us
    • Facebook
    • Twitter
  • Home
  • Home
  • News
  • Reviews
  • Essays
  • Forum
  • Legacy
  • About
    • Submit News

    • Contact Us
    • Privacy

    • Promotion
    • Advertise

    • RSS Feed
    • Site Map

Search form

KIOXIA AiSAQ technology designed to reduce DRAM requirements in generative AI systems released as open source software

KIOXIA AiSAQ technology designed to reduce DRAM requirements in generative AI systems released as open source software

Enterprise & IT Jan 29,2025 0

KIOXIA, today announced the open-source release of its new All-in-Storage ANNS with Product Quantization (AiSAQ™) technology. A novel "approximate nearest neighbor" search (ANNS) algorithm optimized for SSDs, KIOXIA AiSAQ™[1] software delivers scalable performance for retrieval-augmented generation (RAG) without placing index data in DRAM - and instead searching directly on SSDs.

Generative AI systems demand significant compute, memory, and storage resources. While they have the potential to drive transformative breakthroughs across various industries, their deployment often comes with high costs. RAG is a critical phase of AI that refines large language models (LLMs) with data specific to the company or application.

A central component of RAG is a vector database that accumulates and converts specific data into feature vectors in the database. RAG also utilizes an ANNS algorithm, which identifies vectors that improve the model based on similarity between the accumulated and target vectors. For RAG to be effective, it must rapidly retrieve the information most relevant to a query.

Traditionally, ANNS algorithms are deployed in DRAM to achieve the high-speed performance required for these searches.

KIOXIA AiSAQ™ technology provides a scalable and efficient ANNS solution for billion-scale datasets with negligible memory usage and fast index switching capabilities.

Key Benefits of KIOXIA AiSAQ™ technology:

Allows large-scale databases to operate without relying on limited DRAM resources, enhancing the performance of RAG systems.
Eliminates the need to load index data into DRAM, enabling the vector database to launch instantly. This supports seamless switching between user-specific or application-specific databases on the same server for efficient RAG service delivery.
Optimized for cloud systems by storing indexes in disaggregated storage for sharing across multiple servers. This approach dynamically adjusts vector database search performance for specific users or applications and facilitates the rapid migration of search instances between physical servers.

"The KIOXIA AiSAQ™ solution paves the way for almost infinite scaling of RAG applications in Generative AI Systems based of flash-based SSDs at the core," said Axel Stoermann, Chief Technology Officer & VP at KIOXIA Europe GmbH. "Utilizing SSD-based ANNS, we are reducing the reliance on costly DRAM while matching the performance needs of leading in-memory solutions – enhancing the performance range of large-scale RAG applications significantly."

KIOXIA is demonstrating its commitment to advancing AI by contributing its innovative KIOXIA AiSAQ technology to the community as open-source software => https://github.com/kioxiaamerica/aisaq-diskann

Tags: Kioxia
Previous Post
PlayStation Plus Monthly Games for February 2025
Next Post
be quiet! announces Power Zone 2 Power Supply

Related Posts

  • Kioxia and Dell Technologies First to Deliver High-Density Server with 9.8 PB of Flash Storage

  • KIOXIA introduces new mainstream BG8 series SSDs for PC OEMs

  • KIOXIA Unveils Value-Oriented QLC-based EG7 Series SSDs for PC OEMs

  • Kioxia Announces New SSD Model Optimized for AI GPU-Initiated Workloads

  • Kioxia Sampling UFS 5.0 Embedded Flash Memory Devices for Next-Generation Mobile Applications

  • Kioxia Exceria Plus G3 512GB microSD

  • Kioxia and Sandisk Extend Yokkaichi Joint Venture Agreement Through 2034

  • KIOXIA Unveils EXCERIA PRO G2 SD Memory Card Series

Latest News

Viltrox Launches AF 75mm F1.8 EVO and AF 90mm F2.2 Lenses
Cameras

Viltrox Launches AF 75mm F1.8 EVO and AF 90mm F2.2 Lenses

COLORFUL Unveils New iGame M15 and M16 Origo Gaming Laptops at COMPUTEX 2026
Consumer Electronics

COLORFUL Unveils New iGame M15 and M16 Origo Gaming Laptops at COMPUTEX 2026

GIGABYTE Showcases Sleek STEALTH and Elegant WOOD PC Builds at COMPUTEX 2026
Cooling Systems

GIGABYTE Showcases Sleek STEALTH and Elegant WOOD PC Builds at COMPUTEX 2026

GIGABYTE Showcases Industry-leading CQDIMM Performance and Ecosystem Expansion at COMPUTEX 2026
PC components

GIGABYTE Showcases Industry-leading CQDIMM Performance and Ecosystem Expansion at COMPUTEX 2026

G.SKILL Demos Trident Z5 NeoX RGB Series DDR5 with AMD EXPOT Technology
PC components

G.SKILL Demos Trident Z5 NeoX RGB Series DDR5 with AMD EXPOT Technology

Popular Reviews

Akaso 360 Action camera

Akaso 360 Action camera

Dragon Touch Digital Calendar

Dragon Touch Digital Calendar

be quiet! Pure Loop 3 280mm

be quiet! Pure Loop 3 280mm

Endorfy Thock V2 Wireless Keyboard

Endorfy Thock V2 Wireless Keyboard

Noctua NF-A12x25 G2 fans

Noctua NF-A12x25 G2 fans

Soft2bet and the unseen hardware that makes instant play possible

Soft2bet and the unseen hardware that makes instant play possible

Crucial T710 2TB NVME SSD

Crucial T710 2TB NVME SSD

JSAUX 65Wh Rog Ally Battery

JSAUX 65Wh Rog Ally Battery

Main menu

  • Home
  • News
  • Reviews
  • Essays
  • Forum
  • Legacy
  • About
    • Submit News

    • Contact Us
    • Privacy

    • Promotion
    • Advertise

    • RSS Feed
    • Site Map
  • About
  • Privacy
  • Contact Us
  • Promotional Opportunities @ CdrInfo.com
  • Advertise on out site
  • Submit your News to our site
  • RSS Feed