RTX 3050 - Order Now
Home / Blog / Cost & Pricing / LLaMA 3 8B on RTX 5090: Monthly Cost & Token Output
Cost & Pricing

LLaMA 3 8B on RTX 5090: Monthly Cost & Token Output

How much does it cost to run LLaMA 3 8B on an RTX 5090 per month? Full cost breakdown, token throughput, and API price comparison for dedicated GPU hosting.

LLaMA 3 8B on RTX 5090: Monthly Cost & Token Output

Dedicated RTX 5090 hosting for LLaMA 3 8B (8B) inference — fixed monthly pricing with unlimited tokens.

Half a Billion Tokens, One Fixed Price

The RTX 5090 is the fastest consumer GPU you can put LLaMA 3 8B on. At nearly 200 tokens per second, it churns through over 517 million tokens in a month. The bill? £179. Period. No overages, no throttling, no per-token arithmetic.

MetricValue
GPURTX 5090 (32 GB VRAM)
ModelLLaMA 3 8B (8B parameters)
Monthly Server Cost£179/mo
Tokens/Second~199.5 tok/s
Tokens/Day (24h)~17,236,800
Tokens/Month~517,104,000
Effective Cost per 1M Tokens£0.3462

Dedicated GPU vs. Metered APIs

Even budget-friendly API endpoints charge per token. When your monthly volume is measured in hundreds of millions, those fractions add up. Here is how the RTX 5090 compares:

ProviderCost per 1M TokensGigaGPU Savings
GigaGPU (RTX 5090)£0.3462
Together.ai$0.18Comparable
Fireworks$0.20Comparable
Groq$0.05Comparable

At full capacity on Together.ai, that same 517M tokens would cost roughly $93. On GigaGPU, it is £179 — but with 32 GB VRAM, zero rate limits, and total data privacy baked in.

Where Dedicated Wins on Pure Cost

Against Groq’s aggressively low $0.05/1M tokens, the break-even sits at approximately 3,580M tokens/month — well beyond single-stream capacity. However, the RTX 5090’s 32 GB VRAM enables large-batch concurrent inference that can push effective throughput far higher.

For teams that value predictable billing, full data control, and the ability to fine-tune or swap models at will, the dedicated server pays for itself in operational simplicity alone.

Configuration & Performance

  • Massive VRAM headroom: LLaMA 3 8B needs just 8 GB, leaving 24 GB free for deep KV caches and large batch sizes.
  • Quantisation optional: With this much VRAM, FP16 runs comfortably. INT8 can push throughput past 250 tok/s if needed.
  • Multi-user serving: vLLM continuous batching can serve 50+ concurrent users from a single 5090 card.
  • Cluster scaling: Stack multiple RTX 5090 servers for enterprise-grade throughput across thousands of concurrent requests.

Built For

  • High-traffic production chatbots needing sub-50ms time-to-first-token
  • Enterprise RAG systems with dozens of simultaneous users
  • Real-time content generation at scale
  • Parallel batch processing of millions of documents
  • Multi-model deployments sharing a single GPU

Maximum Throughput, Flat Pricing

Deploy LLaMA 3 8B on a dedicated RTX 5090 — 200 tok/s, 32 GB VRAM, £399/month all-in.

View RTX 5090 Dedicated Servers   Calculate Your Savings

Need a Dedicated GPU Server?

Deploy from RTX 3050 to RTX 5090. Full root access, NVMe storage, 1Gbps — UK datacenter.

Browse GPU Servers

gigagpu

We benchmark, deploy, and optimise GPU infrastructure for AI workloads. All data in our guides comes from real-world testing on our UK-based dedicated GPU servers.

Ready to deploy your AI workload?

Dedicated GPU servers from our UK datacenter. NVMe storage, 1Gbps networking, full root access.

Browse GPU Servers Contact Sales

Have a question? Need help?