DRACO 8 PB Parallel-FS NVMe AI Storage
Storage Systems

DRACO 8 PB Parallel-FS NVMe AI Storage

SKU: 522027

8 PB usable (NVMe) · 4.8 TB/s read · Parallel FS (Lustre/GPFS-class) · 128× 400G InfiniBand/Ethernet · Multi-rack (32-node)

Made to order
Pricing on request
No-obligation quote · typically a reply within 1 business day
Talk to sales: +91 720 794 8743
✓ 3-yr pan-India onsite SLA ✓ GST input credit ✓ Buy-back & upgrade path ✓ EMI / lease available
Pan-India delivery & onsite install*
Need volume or a custom build? Request a quote.

Key Specifications

See full specs ↓
Usable Capacity8 PB usable (NVMe)
Throughput4.8 TB/s read
IOPS320M random read
Drives768× 15.36 TB NVMe (32 nodes)
Filesystem / ProtocolParallel FS (Lustre/GPFS-class) + NFS/S3, GPUDirect Storage
Networking128× 400G InfiniBand/Ethernet
Form factorMulti-rack
300,000+ devices shipped · 14 years Make-in-India OEM · ISO 9001 · MeitY-recognised · on GeM

“RDP delivered and installed our edge AI pods across 6 sites with predictable INR pricing and onsite SLA.” — [customer / sector, to confirm]

Make in India

Designed, built and supported in India — sovereign by design

Your AI factory on sovereign Indian infrastructure: data residency under DPDP, MeitY-recognised, ISO 27001 / SOC 2 deployment paths, and procurement on GeM.

DPDP data residencyMeitY-recognisedISO 27001 / SOC 2Available on GeMMake-in-India OEM

Overview

The DRACO 8 PB Parallel-FS NVMe AI Storage is a large scale-out parallel-filesystem NVMe storage system built to feed entire GPU superclusters during the largest AI training runs. It delivers 8 PB usable (NVMe) at 4.8 TB/s read with GPUDirect Storage across a clustered namespace, so datasets, checkpoints and weights stream to hundreds of GPU nodes in parallel without the storage becoming the bottleneck — on-premises, in INR, on a GST invoice.

Engineered for supercluster-scale AI/HPC data pipelines, it presents a single parallel namespace over high-speed networking and scales capacity and bandwidth together by adding nodes — delivered racked, configured and validated as one system with one warranty and one support contract.

Key highlights

  • 8 PB usable (NVMe) · 4.8 TB/s read — supercluster-scale bandwidth sized to feed hundreds of GPU nodes.
  • Parallel filesystem + GPUDirect Storage — a single namespace; data streams from NVMe straight to GPU memory across the cluster.
  • Parallel FS (Lustre/GPFS-class) + NFS/S3, GPUDirect Storage — parallel and standard protocols so existing pipelines and schedulers just work.
  • 768× 15.36 TB NVMe (32 nodes) — dense enterprise NVMe with end-to-end data integrity, scaling across nodes.
  • 128× 400G InfiniBand/Ethernet — very high aggregate bandwidth to the GPU fabric; bandwidth grows with capacity.
  • 320M random read — high aggregate random-read IOPS for metadata- and small-file-heavy datasets.
  • On-prem data sovereignty — datasets and weights stay in-house; DPDP-friendly, air-gappable.
  • Make-in-India OEM — predictable INR pricing, GST tax invoice (HSN 8471), pan-India onsite support, GeM-procurable.

Where it fits

  • Supercluster training data lake (primary): streams datasets to a large GPU cluster in parallel without starving any node.
  • Checkpoints & weights: fast parallel write/read of very large checkpoints during long runs.
  • RAG & vector stores: low-latency storage for very large embeddings and indexes.
  • HPC scratch: high-throughput scratch for large simulation alongside AI.

How it works

A clustered parallel filesystem stripes data across many NVMe nodes and presents one namespace over 128× 400G InfiniBand/Ethernet. With GPUDirect Storage, reads bypass the CPU and land directly in GPU memory across the cluster. Capacity and bandwidth scale together as nodes are added. Honest note: real throughput depends on dataset shape, file sizes and the client fabric — we validate it on your data, not just a peak number.

Industry use cases

  • Government & national labs — sovereign data lakes for national AI and HPC.
  • AI/ML & foundation-model teams — feed GPU clusters at full speed.
  • BFSI & healthcare — data-resident storage under compliance.
  • Media & design — fast scratch and asset storage.
  • Energy & manufacturing — large datasets for AI/HPC.
  • Neocloud / AI providers — the high-bandwidth storage tier for a GPU cloud.

Performance — and how to be sure

We don’t publish inflated peak numbers. The honest picture: 8 PB usable (NVMe) at 4.8 TB/s read. Want certainty? Request a free benchmark with your datasets and training loop on this exact configuration before you buy; we’ll send back real sustained throughput, IOPS and GPU-utilisation.

Series & scale path

  • DRACO (flagship storage tier) — this.
  • Tiering: NVMe parallel-FS hot tier (GPU feeding) + object capacity tier (durable datasets/archives).
  • When to step up: add nodes for more capacity and bandwidth — talk to an architect about the tiering.

On-prem vs cloud — the TCO case

For AI data at scale, owning beats renting: cloud egress and per-GB costs add up fast against large datasets, and on-prem keeps data resident. RDP pricing is fixed in INR with a GST input-credit-eligible invoice — ask for a 3-year TCO comparison including egress savings.

Software & integration

Integrates with your stack: Parallel FS (Lustre/GPFS-class) + NFS/S3, GPUDirect Storage, NVIDIA GPUDirect Storage, and standard NFS/S3 clients, with monitoring and quota/multi-tenant management. Works with PyTorch/TensorFlow data loaders, Slurm/Kubernetes and common MLOps tooling.

Power, cooling & rack integration

A Multi-rack (32-node) liquid-cooled system with redundant PSUs — specify rack power and cooling. (Exact power draw, BTU, airflow and footprint figures confirmed on the build sheet.) Full out-of-band management and drive hot-swap.

Deployment, warranty & support

  • Made to order, built, racked and burned-in in India; lead time confirmed at quote.
  • In the box: storage nodes, drives, rails, cabling, quick-start, and the configured parallel filesystem.
  • Onsite warranty + AMC with pan-India coverage, drive-replacement SLA and an RMA/escalation path (exact terms confirmed at quote).

Why RDP

14 years of Make-in-India infrastructure and 300,000+ devices shipped. Indian OEM, INR pricing, GST tax invoice (HSN 8471), pan-India onsite engineers, GeM availability, and DPDP / sovereign-AI-ready deployment.

Buy with confidence

This is an AI storage system, made to order — talk to an RDP solution architect, size capacity, bandwidth and fabric for your AI estate, get a 3-year TCO, and benchmark your own datasets before you commit. Request a quote to begin.

Specifications

Form FactorMulti-rack
Networking128× 400G InfiniBand/Ethernet
CoolingLiquid
Usable Capacity8 PB usable (NVMe)
Throughput4.8 TB/s read
IOPS320M random read
Drives768× 15.36 TB NVMe (32 nodes)
Filesystem / ProtocolParallel FS (Lustre/GPFS-class) + NFS/S3, GPUDirect Storage
SeriesDRACO
Model fitHPC scratch & parallel I/O

Why RDP GPU Mart

  • ✓ Make in India OEM — Hyderabad facility, 14 years, 300,000+ devices shipped.
  • ✓ Sovereign-ready: India data residency (DPDP), MeitY-recognised, ISO 27001 / SOC 2 paths.
  • ✓ INR-transparent: GST invoice, CGST/SGST or IGST, pan-India onsite SLA.
  • ✓ Available on GeM for government and PSU procurement.

FAQ

Is GST invoicing available?

Yes — GST invoice, CGST+SGST or IGST by billing state, eligible for input credit.

Do you deliver and install pan-India?

Yes — pan-India delivery with onsite installation and a 3-year onsite SLA.

What warranty and support is included?

3-year pan-India onsite SLA with AMC and flexible financing options.

Can this be configured to my workload?

Yes — talk to an RDP solutions architect for a custom build or multi-node cluster.

Compare the range

Other Storage Systems in this line

Swipe to compare

QUASAR 100 TB All…DRACO 500 TB Para…DRACO 10 PB Objec…QUASAR 250 TB All…
GPUs
GPU memory
Model fitAI training data & checkpointsHPC scratch & parallel I/OObject store & data lakeAI training data & checkpoints
Networking2× 200G InfiniBand/Ethernet8× 200G InfiniBand/EthernetHigh-throughput Ethernet4× 200G InfiniBand/Ethernet
Chassis
PriceRequest a QuoteRequest a QuoteOn requestRequest a Quote
ViewViewQuoteView

Build the full stack

Pair it with

Designing a GPU cluster, not just one server?

Talk to an RDP solutions architect about the full fabric — networking, storage, rack and power.

Talk to an architect

*Pan-India delivery and onsite installation are subject to location serviceability; standard SLA terms apply. Specifications indicative; final configuration confirmed on quote.

Pricing on requestRequest a Quote