设为首页   {dede:toptype}中财网 欢迎您~!

新闻发布
新媒体矩阵

KAYTUS Launches All-QLC Flash Storage at AI EXPO 2026 for 10,000-GPU Clusters

KAYTUS’s next-generation all-QLC flash solution delivers fully linear performance scaling for massive GPU clusters, while reducing TCO by 70%, enabling ultra-large-scale computing for the era of agentic AI.

SINGAPORE--(BUSINESS WIRE)--At AI EXPO KOREA 2026, KAYTUS officially launched its All-QLC Flash Storage Solution, engineered to deliver high performance, massive scalability, and cost efficiency for 10,000-GPU clusters. The solution addresses data-delivery bottlenecks in ultra-large-scale AI training, helping maximize GPU resource utilization.

Based on the KR2280 and KR1180 server platforms, the solution is deeply integrated with industry-leading AI-native parallel file systems to eliminate data silos inherent in traditional tiered storage. Purpose-built for read-intensive AI workloads, it overcomes the horizontal scaling limitations of massive clusters. Verified test-data shows that, at exabyte-scale deployment, the solution delivers 10 TB/s aggregate bandwidth and 100 million IOPS. In addition, it reduces five-year TCO by 70% compared with traditional TLC-based solutions, accelerating model innovation for AI cloud providers and intelligent computing centers.

Limitations in Traditional AI Storage Architectures.

The explosive growth of AI is fundamentally transforming enterprise computing and storage requirements. Large-scale AI model training features highly read-intensive workloads that require tens of thousands of GPUs to concurrently access exabyte-scale datasets with sub-millisecond latency. Traditional storage architectures now face three major challenges:

  • Separated Data Silos: Traditional ETL processes require data to be moved from object storage to parallel file systems before training, resulting in time-consuming physical data migration. IDC research indicates that data teams spend 81% of their time on data preparation, slowing business iteration.
  • Workload and Media Mismatch: More than 90% of AI training involves high-frequency concurrent reads. In contrast, traditional TLC flash solutions provide excessive write endurance that is unnecessary for these read-intensive workloads, driving up procurement, space, and power costs for exabyte-scale clusters and resulting in inefficient resource utilization.
  • Scalability Bottlenecks: Traditional file systems were not designed to handle the I/O burst workloads generated by 10,000-GPU clusters. As clusters scale, metadata lock contention and communication overhead introduce latency spikes and degraded overall performance.

KAYTUS Solution: All-QLC Flash Storage for Delivering High Performance, Scalability, and Cost Efficiency.

The next-generation KAYTUS All- QLC Flash Storage Server Solution is purpose-built to unlock the full potential of read-intensive AI training workloads. By tightly integrating flagship compute nodes with industry-leading AI-native parallel file systems, the solution harnesses advanced hardware–software co-design to deliver breakthrough performance, seamless scalability, and superior cost efficiency for ultra-large-scale AI computing environments.

Architectural Innovation: Overcoming AI Training Efficiency Bottlenecks.

The KAYTUS solution establishes a unified namespace with native multi-protocol access across file, object, and block storage. By leveraging high-capacity QLC flash pools and NVMe-oF fully shared interconnects, it redefines the unified data plane for AI storage, effectively eliminating the data silos inherent in traditional tiered architectures. Data can now flow on demand to GPU nodes without cross-system migration, enabling sub-millisecond access, and significantly improving AI training data retrieval efficiency.

  • Hardware Optimization: Engineered for read-intensive workloads, the solution features a PCIe 5.0 direct-connect architecture that doubles single-node I/O bandwidth compared to the previous generation. Combined with NUMA-balanced optimization, it effectively eliminates internal throughput bottlenecks.
  • Software Synergy: The solution integrates NFS over RDMA and native GPU Direct Storage technology, enabling direct data paths from QLC flash to GPU memory. By leveraging a disaggregated architecture that decouples protocol processing from storage states, it eliminates east-west traffic and achieves fully linear scaling of bandwidth and throughput, from petabyte to exabyte scale.

10,000-GPU Cluster Benchmarks: Exceptional Performance, Scalability, and Cost Efficiency

In benchmark testing in an exabyte-scale storage environment for a 10,000-GPU data center, the solution—powered by KR2280 and KR1180 nodes and optimized with industry-leading AI-native parallel file systems—demonstrated its capability to scale seamlessly to support computing clusters of up to 10,000 GPUs.

  • Extreme Performance at Scale: The system delivers 10 TB/s sustained aggregate read bandwidth and 100 million random-read IOPS, enabling concurrent access for tens of thousands of GPUs. Performance scales linearly as additional nodes are added, while GPU utilization remains consistently above 95%, with no storage-side lock contention or queuing, effectively eliminating GPU data starvation.
  • Superior Cost Efficiency: Compared with traditional TLC all-flash solutions, the solution reduces five-year TCO by 70%, cuts power and cooling costs by more than 75%, helping enterprises avoid overpaying for unnecessary extra write endurance.

Metric (1 EB Capacity)

TLC SSD Solution

QLC SSD Solution

Difference

CAPEX

1.0

0.39

65% ↓

Power Cost

1.0

0.29

75% ↓

5-Year TCO

1.0

0.36

70% ↓

(Note: Based on 15.36T TLC vs 61.44T QLC drive units)

 
天猫网友:红酒 高跟鞋 性感seduce
评论:小时候哭着哭着就笑了,长大后笑着笑着就哭了。

搜狐网友:我瘋癫我快樂
评论:我也想做一个优雅的淑女,是生活把老娘逼成了泼妇.

淘宝网友:失魂人*pugss
评论:你复杂的五官,掩饰不了你朴素的智商。

凤凰网友:多愁善感 mature°
评论:我说过我爱你。没说我只爱你。

网易网友:相依°- Janet
评论:我来到我们来过的小路,捡起我们可耻的幸福。

本网网友:别在爱里勉强
评论:吃货都是善良的,因为每天只想着吃,没时间去算计别人

其它网友:幸福如何开始
评论:我是一个很有原则的人,我的原则只有三个字,看心情

腾讯网友:遗忘。Forgotten.
评论:人生如同故事,重要的并不是有多长,而是在有多好。

天涯网友:你真叫我作呕
评论:人生如梦,我总失眠;人生如戏,我总穿帮;人生如歌,我总跑调;人生如战场,我总走火。

百度网友:魂牵于心  7mr°
评论:每当我找到了成功的钥匙,就有人把锁给换了。

相关阅读