

QUASAR 1× RTX PRO 6000 Blackwell Agentic AI PC
Intel Xeon W-3500 · 256 GB DDR5 ECC · 8 TB NVMe · 96 GB GDDR7 · Tower
Key Specifications
See full specs ↓“RDP delivered and installed our edge AI pods across 6 sites with predictable INR pricing and onsite SLA.” — [customer / sector, to confirm]


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.
Overview
The QUASAR 1× RTX PRO 6000 Blackwell Agentic AI PC runs many AI agents locally — a tower workstation with 1× NVIDIA RTX PRO 6000 Blackwell (96 GB GDDR7) built to run private LLM agents, RAG and automation at scale on your own hardware, offline if needed. It puts serious agentic AI on the desk without sending prompts or data to the cloud — in INR, on a GST invoice.
Engineered for teams running multiple concurrent agents or larger local models, it pairs a high-core Xeon W with a Blackwell GPU, plus large memory and fast NVMe, so local models and agent fleets respond instantly and keep data in-house.
Key highlights
- 1× RTX PRO 6000 Blackwell · 96 GB GDDR7 — run larger local LLMs (up to 70B) and many concurrent agents on-device.
- Blackwell GPU + Xeon W — high-capacity local inference for agent fleets.
- Intel Xeon W-3500 + 256 GB DDR5 ECC — high-core orchestration for many multi-step agents and RAG.
- 8 TB NVMe NVMe — large local model store, vector DB and document corpus; no egress.
- Tower, 10 GbE — quiet desk-side footprint with high-throughput networking.
- Private & offline-capable — prompts, data and models stay on-device; air-gappable.
- Make-in-India OEM — predictable INR pricing, GST tax invoice (HSN 8471), pan-India onsite support, GeM-procurable.
- Upgrade path — step up to an agentic inference server for fleet-scale concurrent agents, or an AI Workstation for heavy fine-tuning.
AI workload fit (what it actually runs — honestly)
- Local agents at scale (primary): run up to 70B models and many concurrent agentic workflows — tool use, RAG, automation and copilots.
- RAG & document AI: on-device retrieval over large local corpora and vector DBs.
- Fine-tuning, vision & speech: QLoRA fine-tuning, local CV, speech and multimodal inference.
- Engineering note: with 96 GB GDDR7 of GPU memory this serves up to 70B quantised models. It is built for responsive local agent fleets, not large-scale training.
AI workload positioning
This sits at the local-agent-fleet stage: the machine that runs many AI agents privately, on the desk. With 96 GB GDDR7 across 1 Blackwell GPU and a high-core Xeon W, it is sized to sustain concurrent local inference and agent loops — where cloud APIs are slow, costly or non-compliant.
Industry use cases
- Software & product teams — private coding copilots and multi-agent development.
- BFSI & legal — confidential document AI and agent fleets under data-residency rules.
- Healthcare — on-device clinical assistants keeping PHI local.
- Design & media — local creative and generative AI at scale.
- Government & defence — air-gapped private agent fleets.
- Research — a shared local-AI workstation for a team.
Performance — and how to be sure
We don’t publish inflated peak numbers. The honest picture: 96 GB GDDR7 across 1 GPUs is sized to run up to 70B models and many concurrent agents locally. Want certainty? Request a free benchmark of your agents and models on this exact configuration before you buy; we’ll send back real tokens/sec, concurrency and latency.
Series & upgrade path
- QUASAR (performance local-AI tier) — this.
- Ladder: mini/edge → agentic AI PC → multi-GPU agentic PC → agentic inference server.
- When to step up: for fleet-scale concurrency, move to an agentic inference server; for heavy fine-tuning, an AI Workstation — talk to an architect.
On-prem vs cloud — the TCO case
Running an agent fleet locally removes per-token API costs and keeps data on-device: for steady agentic use, a one-time machine beats a recurring cloud bill, with full privacy. RDP pricing is fixed in INR with a GST input-credit-eligible invoice — ask for a cost-per-agent comparison vs cloud APIs.
Software & day-one readiness
Ships ready to run agents: NVIDIA driver, CUDA, cuDNN, Docker, with Ollama / vLLM / Triton, a local vector DB and popular agent frameworks pre-configured on Ubuntu or Windows. Optional managed local-AI stack and model library.
Power, cooling & rack integration
A tower workstation with quiet desk-side operation — standard mains power. (Exact power draw, thermal and acoustic figures confirmed on the build sheet.)
Deployment, warranty & support
- Made to order, built and burned-in in India; lead time confirmed at quote.
- In the box: system, power supply, quick-start, and the pre-installed local-AI software stack.
- Onsite warranty + AMC with pan-India coverage 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 a local-AI machine for running agent fleets privately, made to order — talk to an RDP solution architect, size it for your agents and models, and benchmark your own workload on it before you commit. Request a quote to begin.
Specifications
| Use Case | Agentic AI, Computer Vision, Generative AI, Inference, Model Fine-tuning, NLP & Speech, RAG |
| GPU Model | NVIDIA RTX PRO 6000 Blackwell |
| Form Factor | Tower |
| Workload Fit | Local agentic AI & inference |
| GPUs | 1× NVIDIA RTX PRO 6000 Blackwell |
| GPU memory | 96 GB GDDR7 (1× 96 GB) |
| Model fit | up to 70B local |
| CPU | Intel Xeon W-3500 |
| System memory | 256 GB DDR5 ECC |
| Storage | 8 TB NVMe |
| Networking | 10 GbE |
| Chassis | Tower |
| GPU Count | 1 |
| Cooling | Air |
| Series | QUASAR |
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 Agentic AI PCs & Edge AI in this line
Swipe to compare
| RTX 2000 Ada Edge… | Jetson AGX Thor E… | 1× RTX PRO 4500 B… | 1× RTX PRO 4000 B… | |
|---|---|---|---|---|
| GPUs | 1× NVIDIA RTX 2000 Ada | NVIDIA Jetson AGX Thor | 1× NVIDIA RTX PRO 4500 Blackwell | 1× NVIDIA RTX PRO 4000 Blackwell |
| GPU memory | 16 GB GDDR6 (1× 16 GB) | 128 GB unified LPDDR5X | 32 GB GDDR7 (1× 32 GB) | 24 GB GDDR7 (1× 24 GB) |
| Model fit | 7B–14B local | 7B–34B local | 13B–34B local | 7B–34B local |
| Networking | 2.5 GbE + Wi-Fi 6E | 2.5 GbE | 10 GbE | 10 GbE |
| Chassis | Mini / SFF | Embedded / DIN-rail | Tower | Tower / SFF |
| Price | Request a Quote | Request a Quote | Request a Quote | Request a Quote |
| View | View | View | View |
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Designing a GPU cluster, not just one server?
Talk to an RDP solutions architect about the full fabric — networking, storage, rack and power.
*Pan-India delivery and onsite installation are subject to location serviceability; standard SLA terms apply. Specifications indicative; final configuration confirmed on quote.