RTX 3050 - Order Now
Home / Blog / Cost & Pricing / LLaMA 3 8B on RTX 4060: Monthly Cost & Token Output
Cost & Pricing

LLaMA 3 8B on RTX 4060: Monthly Cost & Token Output

How much does it cost to run LLaMA 3 8B on an RTX 4060 per month? Full cost breakdown, token throughput, and API price comparison for dedicated GPU hosting.

LLaMA 3 8B on RTX 4060: Monthly Cost & Token Output

Dedicated RTX 4060 hosting for LLaMA 3 8B (8B) inference — fixed monthly pricing with unlimited tokens.

Monthly Cost Summary

For £49 per month, you get a dedicated RTX 4060 that generates roughly 135.5 million tokens of LLaMA 3 8B output. That works out to an effective rate of £0.36 per million tokens — and the cost stays flat whether you use 10% or 100% of capacity.

MetricValue
GPURTX 4060 (8 GB VRAM)
ModelLLaMA 3 8B (8B parameters)
Monthly Server Cost£49/mo
Tokens/Second~52.3 tok/s
Tokens/Day (24h)~4,518,720
Tokens/Month~135,561,600
Effective Cost per 1M Tokens£0.3615

How £49/Month Compares to API Pricing

Most teams paying per-token through API providers can cut costs by switching to dedicated hardware. Here is where the RTX 4060 lands alongside leading LLaMA 3 8B API endpoints:

ProviderCost per 1M TokensGigaGPU Savings
GigaGPU (RTX 4060)£0.3615
Together.ai$0.18Comparable
Fireworks$0.20Comparable
Groq$0.05Comparable

The per-token rates from API providers look low in isolation, but they scale linearly with usage. A dedicated server caps your spend at £49 regardless of volume.

Break-Even Volume

Against Groq at $0.05/1M tokens (the cheapest API option), the crossover point sits at roughly 980M tokens/month. Below that threshold, Groq costs less per token. Above it, every additional token on your dedicated RTX 4060 is effectively free.

At twice the break-even volume, your effective per-token rate drops to half of Groq’s — and the gap only widens from there. For teams with predictable, high-volume workloads, self-hosted inference on a dedicated GPU delivers compounding savings month over month.

Hardware & Configuration Details

  • VRAM fit: LLaMA 3 8B occupies approximately 8 GB in FP16, which fills the RTX 4060’s 8 GB VRAM completely. This leaves minimal headroom for KV cache, so consider INT8 quantisation to free up memory for batching.
  • Quantisation options: Switching to INT8 or INT4 can boost throughput by 20–40% while retaining strong output quality for most production tasks.
  • Concurrent serving: Pair the GPU with vLLM or TGI for continuous batching, enabling multiple users from one card.
  • Horizontal scaling: Need more throughput? Add additional RTX 4060 nodes behind a load balancer. GigaGPU handles multi-server setups with straightforward configuration.

Ideal Workloads

  • Customer-facing chatbots and internal help desks
  • Document summarisation and content drafting pipelines
  • RAG-powered search and knowledge retrieval
  • Code completion and developer tooling
  • Overnight batch processing of text corpora

Get Started for £49/Month

Claim a dedicated RTX 4060 pre-loaded for LLaMA 3 8B inference. Flat pricing, zero per-token charges, no vendor lock-in.

View RTX 4060 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?