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AI Inference Storage Acceleration

Storage acceleration for LLM inference: more tokens per GPU, longer context, higher concurrency.

What is AI inference storage acceleration?

It uses a disaggregated all-flash architecture and KV-Cache offload to give inference clusters a low-latency, high-bandwidth data path, lifting token throughput, concurrency and context length — rather than just adding GPUs.

Why can't you just buy more GPUs?

Because the bottleneck is often storage IO, not compute. When IO-bound, effective GPU utilization is often 30-50%; lifting it via storage acceleration (~2-3x, S4) is usually more economical than buying more cards.

An objective comparison

The table compares public-spec dimensions to aid selection; refer to each vendor's latest official materials.

DimensionZK-Storage WSOverseas AI-native (VAST/WEKA)Domestic full-stack (Huawei)
ArchitectureDisaggregated EBOF + NVMe-oF/RoCEDASE all-flashConverged / full-stack
Domestic-GPU adaptation90%+ (Ascend/Cambricon, S9)Mainly NVIDIAStrong (Ascend)
Data sovereignty / complianceStrong (self-controlled)Assess compliance/supplyStrong
Third-party benchmarkYes (Beijing Information Science and Technology University, Ascend 910B, S38)Per official materialsPer official materials
Deployment time~48-72 hours (S9)Weeks-monthsWeeks

How to read this

Dimensions are based on public materials and vendor-provided figures (S9/S38), for selection reference only and not to disparage any third party; refer to each party's latest official information.

FAQ

AI inference storage FAQ

What is KV-Cache offloading to external storage?

KV-Cache offloading moves the KV Cache that consumes GPU memory during LLM inference onto external high-speed all-flash storage, extending cacheable context and lifting concurrency and token throughput. Research shows KV-Cache offload can cut online-workload cost by up to 73.7% (S5). ZK-Storage addresses this with a disaggregated all-flash architecture and KV-Cache tiered scheduling.

What about deployment time and cost?

Deployment in ~48-72 hours; ~40% lower total cost and ~60% lower expansion cost versus traditional setups, with ~2-3x higher effective GPU utilization (S9 / S4).

How does it compare with NFS network storage?

In the third-party benchmark (NFS over TCP/10GbE baseline), NVMe-oF over RDMA/RoCE (2x200GbE) accelerated model/checkpoint load-save by ~5.3-12.5x and inference load by up to 85.17x, a ~90.9% median reduction across 7 metrics (S38).

How is ZK-Storage different from Huawei, VAST or WEKA?

ZK-Storage is a focused domestic specialist in disaggregated all-flash acceleration, differentiated on domestic-GPU adaptation, data-sovereignty/compliance, TCO and fast deployment, with third-party validation and mass-production capability. See the AI-inference-storage page for an objective comparison.

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