GPU Computeby viabandwidthHome
UnclaimedProfile compiled by viabandwidth from public sources. The operator hasn’t claimed or reviewed it.
Claim listing →
Pending verificationgpu.fm

Gpu

Network design is often the bottleneck in distributed training. Learn when InfiniBand is worth it, when Ethernet is enough, and how to think about oversubscription, storage traffic, and scale-out planning.

01 / ANALYST READ

Our read

Gpu is currently under verification. Profile data reflects publicly available information and is subject to change as operator verification completes.

Check back once verification is complete for a more detailed read.

Confidence: LowEvidence reviewed: 1 checks
02 / OVERVIEW

Company overview

Operator class
Pending verification
GPU models tracked
RTX4090, H200, MI350X and 17 more
Services
Colocation, GPU compute, Managed services and 1 more
03 / CAPACITY

GPU lineup by use case

Tracked GPU SKUs grouped by the workload they fit best.
Training

For multi-node runs where interconnect and cluster availability decide the outcome.

H200

QuoteClaim to publish
VRAM 141 GBClass Hopper

Best for
Large-scale training where memory bandwidth decides the outcome.

A100

QuoteClaim to publish
VRAM 80 GBClass SXM

Best for
Mature training stacks that value known performance and broad tooling support.

MI300X

QuoteClaim to publish
VRAM 192 GBClass AMD

Best for
Training and inference for teams evaluating the AMD ecosystem.

GB200

QuoteClaim to publish
VRAM 192 GBClass Blackwell

Best for
Frontier-scale training and the highest-throughput inference workloads.

Inference

For predictable production serving, latency targets, and steady utilisation.

RTX4090

QuoteClaim to publish

Best for
RTX4090 workloads.

MI350X

QuoteClaim to publish

Best for
MI350X workloads.

RTX6000

QuoteClaim to publish

Best for
RTX6000 workloads.

RTX3090

QuoteClaim to publish

Best for
RTX3090 workloads.

Fine-tuning

For smaller adaptation jobs, evaluation loops, and budget-controlled development.

A40

QuoteClaim to publish
VRAM 48 GBClass Ampere

Best for
LoRA fine-tuning, evaluation, and teams watching spend closely.

RTXA6000

QuoteClaim to publish
VRAM 48 GBClass Ampere

Best for
Development and fine-tuning with 48 GB of memory at workstation pricing.

04 / TRUST

Verification

Evidence that there's a real operator behind the offer.
Indicator

Verification in progress

Operator classification and network checks are being reviewed. Profile reflects publicly available information.

05 / COMMERCIALS

Pricing

Indicative published rates. Final cluster pricing depends on commit length, storage, networking, and capacity.
Hourly rates
$0.34 – $2,800 /hr
Monthly rates
$1,500 – $6,000 /mo

Across 53 published SKUs spanning RTX4090, H200, MI350X, RTX6000.

07 / NEXT

Talk to Gpu

viabandwidth does not sit between you and the provider. Go straight to their site.
gpu.fm
Pricing pages, quote forms, and sales routes live on the provider’s own site.
Visit gpu.fm
Are you gpu.fm?
Claim this listing to edit logo, contacts, overview, pricing, attachments, and sponsor placement.
Claim listing →

Profile pages, buyer guides, and model explainers stay open. Vendor packages cover what shows on this profile; verification stays independent and is never for sale.